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`tokenizers-linux-x64-musl`
This is the **x86_64-unknown-linux-musl** binary for `tokenizers`
| huggingface/tokenizers/blob/main/bindings/node/npm/linux-x64-musl/README.md |
!--Copyright 2023 The HuggingFace Team. All rights reserved.
Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with
the License. You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on
an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the
specific language governing permissions and limitations under the License.
-->
# BLIP-Diffusion
BLIP-Diffusion was proposed in [BLIP-Diffusion: Pre-trained Subject Representation for Controllable Text-to-Image Generation and Editing](https://arxiv.org/abs/2305.14720). It enables zero-shot subject-driven generation and control-guided zero-shot generation.
The abstract from the paper is:
*Subject-driven text-to-image generation models create novel renditions of an input subject based on text prompts. Existing models suffer from lengthy fine-tuning and difficulties preserving the subject fidelity. To overcome these limitations, we introduce BLIP-Diffusion, a new subject-driven image generation model that supports multimodal control which consumes inputs of subject images and text prompts. Unlike other subject-driven generation models, BLIP-Diffusion introduces a new multimodal encoder which is pre-trained to provide subject representation. We first pre-train the multimodal encoder following BLIP-2 to produce visual representation aligned with the text. Then we design a subject representation learning task which enables a diffusion model to leverage such visual representation and generates new subject renditions. Compared with previous methods such as DreamBooth, our model enables zero-shot subject-driven generation, and efficient fine-tuning for customized subject with up to 20x speedup. We also demonstrate that BLIP-Diffusion can be flexibly combined with existing techniques such as ControlNet and prompt-to-prompt to enable novel subject-driven generation and editing applications. Project page at [this https URL](https://dxli94.github.io/BLIP-Diffusion-website/).*
The original codebase can be found at [salesforce/LAVIS](https://github.com/salesforce/LAVIS/tree/main/projects/blip-diffusion). You can find the official BLIP-Diffusion checkpoints under the [hf.co/SalesForce](https://hf.co/SalesForce) organization.
`BlipDiffusionPipeline` and `BlipDiffusionControlNetPipeline` were contributed by [`ayushtues`](https://github.com/ayushtues/).
<Tip>
Make sure to check out the Schedulers [guide](../../using-diffusers/schedulers) to learn how to explore the tradeoff between scheduler speed and quality, and see the [reuse components across pipelines](../../using-diffusers/loading#reuse-components-across-pipelines) section to learn how to efficiently load the same components into multiple pipelines.
</Tip>
## BlipDiffusionPipeline
[[autodoc]] BlipDiffusionPipeline
- all
- __call__
## BlipDiffusionControlNetPipeline
[[autodoc]] BlipDiffusionControlNetPipeline
- all
- __call__
| huggingface/diffusers/blob/main/docs/source/en/api/pipelines/blip_diffusion.md |
Paper Pages
Paper pages allow people to find artifacts related to a paper such as models, datasets and apps/demos (Spaces). Paper pages also enable the community to discuss about the paper.
<div class="flex justify-center">
<img class="block dark:hidden" width="300" src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/hub/papers-discussions.png"/>
<img class="hidden dark:block" width="300" src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/hub/papers-discussions-dark.png"/>
</div>
## Linking a Paper to a model, dataset or Space
If the repository card (`README.md`) includes a link to a paper on arXiv, the Hugging Face Hub will extract the arXiv ID and include it in the repository's tags. Clicking on the arxiv tag will let you:
* Visit the Paper page.
* Filter for other models or datasets on the Hub that cite the same paper.
<div class="flex justify-center">
<img class="block dark:hidden" width="300" src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/hub/datasets-arxiv.png"/>
<img class="hidden dark:block" width="300" src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/hub/datasets-arxiv-dark.png"/>
</div>
## Claiming authorship to a Paper
The Hub will attempt to automatically match paper to users based on their email.
<div class="flex justify-center">
<img class="block dark:hidden" width="300" src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/hub/papers-authors.png"/>
<img class="hidden dark:block" width="300" src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/hub/papers-authors-dark.png"/>
</div>
If your paper is not linked to your account, you can click in your name in the corresponding Paper page and click "claim authorship". This will automatically re-direct to your paper settings where you can confirm the request. The admin team will validate your request soon. Once confirmed, the Paper page will show as verified.
<div class="flex justify-center">
<img class="block dark:hidden" width="300" src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/hub/papers-settings.png"/>
<img class="hidden dark:block" width="300" src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/hub/papers-settings-dark.png"/>
</div>
## Frequently Asked Questions
### Can I control which Paper pages show in my profile?
Yes! You can visit your Papers in [settings](https://huggingface.co/settings/papers), where you will see a list of verified papers. There, you can click the "Show on profile" checkbox to hide/show it in your profile.
### Do you support ACL anthology?
We're starting with Arxiv as it accounts for 95% of the paper URLs Hugging Face users have linked in their repos organically. We'll check how this evolve and potentially extend to other paper hosts in the future.
### Can I have a Paper page even if I have no model/dataset/Space?
Yes. You can go to [the main Papers page](https://huggingface.co/papers), click search and write the name of the paper or the full Arxiv id. If the paper does not exist, you will get an option to index it. You can also just visit the page `hf.co/papers/xxxx.yyyyy` replacing with the arxiv id of the paper you wish to index.
| huggingface/hub-docs/blob/main/docs/hub/paper-pages.md |
Datasets server API
> API on 🤗 datasets
## Configuration
The service can be configured using environment variables. They are grouped by scope.
### API service
See [../../libs/libapi/README.md](../../libs/libapi/README.md) for more information about the API configuration.
### Common
See [../../libs/libcommon/README.md](../../libs/libcommon/README.md) for more information about the common configuration.
## Endpoints
See https://huggingface.co/docs/datasets-server
- /healthcheck: Ensure the app is running
- /metrics: Return a list of metrics in the Prometheus format
- /webhook: Add, update or remove a dataset
- /is-valid: Tell if a dataset is [valid](https://huggingface.co/docs/datasets-server/valid)
- /splits: List the [splits](https://huggingface.co/docs/datasets-server/splits) names for a dataset
- /first-rows: Extract the [first rows](https://huggingface.co/docs/datasets-server/first_rows) for a dataset split
- /parquet: List the [parquet files](https://huggingface.co/docs/datasets-server/parquet) auto-converted for a dataset
| huggingface/datasets-server/blob/main/services/api/README.md |
!--Copyright 2022 The HuggingFace Team. All rights reserved.
Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with
the License. You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on
an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the
specific language governing permissions and limitations under the License.
⚠️ Note that this file is in Markdown but contain specific syntax for our doc-builder (similar to MDX) that may not be
rendered properly in your Markdown viewer.
-->
# LongT5
## Overview
The LongT5 model was proposed in [LongT5: Efficient Text-To-Text Transformer for Long Sequences](https://arxiv.org/abs/2112.07916)
by Mandy Guo, Joshua Ainslie, David Uthus, Santiago Ontanon, Jianmo Ni, Yun-Hsuan Sung and Yinfei Yang. It's an
encoder-decoder transformer pre-trained in a text-to-text denoising generative setting. LongT5 model is an extension of
T5 model, and it enables using one of the two different efficient attention mechanisms - (1) Local attention, or (2)
Transient-Global attention.
The abstract from the paper is the following:
*Recent work has shown that either (1) increasing the input length or (2) increasing model size can improve the
performance of Transformer-based neural models. In this paper, we present a new model, called LongT5, with which we
explore the effects of scaling both the input length and model size at the same time. Specifically, we integrated
attention ideas from long-input transformers (ETC), and adopted pre-training strategies from summarization pre-training
(PEGASUS) into the scalable T5 architecture. The result is a new attention mechanism we call {\em Transient Global}
(TGlobal), which mimics ETC's local/global attention mechanism, but without requiring additional side-inputs. We are
able to achieve state-of-the-art results on several summarization tasks and outperform the original T5 models on
question answering tasks.*
This model was contributed by [stancld](https://huggingface.co/stancld).
The original code can be found [here](https://github.com/google-research/longt5).
## Usage tips
- [`LongT5ForConditionalGeneration`] is an extension of [`T5ForConditionalGeneration`] exchanging the traditional
encoder *self-attention* layer with efficient either *local* attention or *transient-global* (*tglobal*) attention.
- Unlike the T5 model, LongT5 does not use a task prefix. Furthermore, it uses a different pre-training objective
inspired by the pre-training of [`PegasusForConditionalGeneration`].
- LongT5 model is designed to work efficiently and very well on long-range *sequence-to-sequence* tasks where the
input sequence exceeds commonly used 512 tokens. It is capable of handling input sequences of a length up to 16,384 tokens.
- For *Local Attention*, the sparse sliding-window local attention operation allows a given token to attend only `r`
tokens to the left and right of it (with `r=127` by default). *Local Attention* does not introduce any new parameters
to the model. The complexity of the mechanism is linear in input sequence length `l`: `O(l*r)`.
- *Transient Global Attention* is an extension of the *Local Attention*. It, furthermore, allows each input token to
interact with all other tokens in the layer. This is achieved via splitting an input sequence into blocks of a fixed
length `k` (with a default `k=16`). Then, a global token for such a block is obtained via summing and normalizing the embeddings of every token
in the block. Thanks to this, the attention allows each token to attend to both nearby tokens like in Local attention, and
also every global token like in the case of standard global attention (*transient* represents the fact the global tokens
are constructed dynamically within each attention operation). As a consequence, *TGlobal* attention introduces
a few new parameters -- global relative position biases and a layer normalization for global token's embedding.
The complexity of this mechanism is `O(l(r + l/k))`.
- An example showing how to evaluate a fine-tuned LongT5 model on the [pubmed dataset](https://huggingface.co/datasets/scientific_papers) is below.
```python
>>> import evaluate
>>> from datasets import load_dataset
>>> from transformers import AutoTokenizer, LongT5ForConditionalGeneration
>>> dataset = load_dataset("scientific_papers", "pubmed", split="validation")
>>> model = (
... LongT5ForConditionalGeneration.from_pretrained("Stancld/longt5-tglobal-large-16384-pubmed-3k_steps")
... .to("cuda")
... .half()
... )
>>> tokenizer = AutoTokenizer.from_pretrained("Stancld/longt5-tglobal-large-16384-pubmed-3k_steps")
>>> def generate_answers(batch):
... inputs_dict = tokenizer(
... batch["article"], max_length=16384, padding="max_length", truncation=True, return_tensors="pt"
... )
... input_ids = inputs_dict.input_ids.to("cuda")
... attention_mask = inputs_dict.attention_mask.to("cuda")
... output_ids = model.generate(input_ids, attention_mask=attention_mask, max_length=512, num_beams=2)
... batch["predicted_abstract"] = tokenizer.batch_decode(output_ids, skip_special_tokens=True)
... return batch
>>> result = dataset.map(generate_answer, batched=True, batch_size=2)
>>> rouge = evaluate.load("rouge")
>>> rouge.compute(predictions=result["predicted_abstract"], references=result["abstract"])
```
## Resources
- [Translation task guide](../tasks/translation)
- [Summarization task guide](../tasks/summarization)
## LongT5Config
[[autodoc]] LongT5Config
<frameworkcontent>
<pt>
## LongT5Model
[[autodoc]] LongT5Model
- forward
## LongT5ForConditionalGeneration
[[autodoc]] LongT5ForConditionalGeneration
- forward
## LongT5EncoderModel
[[autodoc]] LongT5EncoderModel
- forward
</pt>
<jax>
## FlaxLongT5Model
[[autodoc]] FlaxLongT5Model
- __call__
- encode
- decode
## FlaxLongT5ForConditionalGeneration
[[autodoc]] FlaxLongT5ForConditionalGeneration
- __call__
- encode
- decode
</jax>
</frameworkcontent>
| huggingface/transformers/blob/main/docs/source/en/model_doc/longt5.md |
!--Copyright 2023 The HuggingFace Team. All rights reserved.
Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with
the License. You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on
an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the
specific language governing permissions and limitations under the License.
-->
# AutoPipeline
`AutoPipeline` is designed to:
1. make it easy for you to load a checkpoint for a task without knowing the specific pipeline class to use
2. use multiple pipelines in your workflow
Based on the task, the `AutoPipeline` class automatically retrieves the relevant pipeline given the name or path to the pretrained weights with the `from_pretrained()` method.
To seamlessly switch between tasks with the same checkpoint without reallocating additional memory, use the `from_pipe()` method to transfer the components from the original pipeline to the new one.
```py
from diffusers import AutoPipelineForText2Image
import torch
pipeline = AutoPipelineForText2Image.from_pretrained(
"runwayml/stable-diffusion-v1-5", torch_dtype=torch.float16, use_safetensors=True
).to("cuda")
prompt = "Astronaut in a jungle, cold color palette, muted colors, detailed, 8k"
image = pipeline(prompt, num_inference_steps=25).images[0]
```
<Tip>
Check out the [AutoPipeline](../../tutorials/autopipeline) tutorial to learn how to use this API!
</Tip>
`AutoPipeline` supports text-to-image, image-to-image, and inpainting for the following diffusion models:
- [Stable Diffusion](./stable_diffusion/overview)
- [ControlNet](./controlnet)
- [Stable Diffusion XL (SDXL)](./stable_diffusion/stable_diffusion_xl)
- [DeepFloyd IF](./deepfloyd_if)
- [Kandinsky 2.1](./kandinsky)
- [Kandinsky 2.2](./kandinsky_v22)
## AutoPipelineForText2Image
[[autodoc]] AutoPipelineForText2Image
- all
- from_pretrained
- from_pipe
## AutoPipelineForImage2Image
[[autodoc]] AutoPipelineForImage2Image
- all
- from_pretrained
- from_pipe
## AutoPipelineForInpainting
[[autodoc]] AutoPipelineForInpainting
- all
- from_pretrained
- from_pipe
| huggingface/diffusers/blob/main/docs/source/en/api/pipelines/auto_pipeline.md |
!--Copyright 2023 The HuggingFace Team. All rights reserved.
Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with
the License. You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on
an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the
specific language governing permissions and limitations under the License.
-->
# Philosophy
🧨 Diffusers provides **state-of-the-art** pretrained diffusion models across multiple modalities.
Its purpose is to serve as a **modular toolbox** for both inference and training.
We aim at building a library that stands the test of time and therefore take API design very seriously.
In a nutshell, Diffusers is built to be a natural extension of PyTorch. Therefore, most of our design choices are based on [PyTorch's Design Principles](https://pytorch.org/docs/stable/community/design.html#pytorch-design-philosophy). Let's go over the most important ones:
## Usability over Performance
- While Diffusers has many built-in performance-enhancing features (see [Memory and Speed](https://huggingface.co/docs/diffusers/optimization/fp16)), models are always loaded with the highest precision and lowest optimization. Therefore, by default diffusion pipelines are always instantiated on CPU with float32 precision if not otherwise defined by the user. This ensures usability across different platforms and accelerators and means that no complex installations are required to run the library.
- Diffusers aims to be a **light-weight** package and therefore has very few required dependencies, but many soft dependencies that can improve performance (such as `accelerate`, `safetensors`, `onnx`, etc...). We strive to keep the library as lightweight as possible so that it can be added without much concern as a dependency on other packages.
- Diffusers prefers simple, self-explainable code over condensed, magic code. This means that short-hand code syntaxes such as lambda functions, and advanced PyTorch operators are often not desired.
## Simple over easy
As PyTorch states, **explicit is better than implicit** and **simple is better than complex**. This design philosophy is reflected in multiple parts of the library:
- We follow PyTorch's API with methods like [`DiffusionPipeline.to`](https://huggingface.co/docs/diffusers/main/en/api/diffusion_pipeline#diffusers.DiffusionPipeline.to) to let the user handle device management.
- Raising concise error messages is preferred to silently correct erroneous input. Diffusers aims at teaching the user, rather than making the library as easy to use as possible.
- Complex model vs. scheduler logic is exposed instead of magically handled inside. Schedulers/Samplers are separated from diffusion models with minimal dependencies on each other. This forces the user to write the unrolled denoising loop. However, the separation allows for easier debugging and gives the user more control over adapting the denoising process or switching out diffusion models or schedulers.
- Separately trained components of the diffusion pipeline, *e.g.* the text encoder, the unet, and the variational autoencoder, each have their own model class. This forces the user to handle the interaction between the different model components, and the serialization format separates the model components into different files. However, this allows for easier debugging and customization. DreamBooth or Textual Inversion training
is very simple thanks to Diffusers' ability to separate single components of the diffusion pipeline.
## Tweakable, contributor-friendly over abstraction
For large parts of the library, Diffusers adopts an important design principle of the [Transformers library](https://github.com/huggingface/transformers), which is to prefer copy-pasted code over hasty abstractions. This design principle is very opinionated and stands in stark contrast to popular design principles such as [Don't repeat yourself (DRY)](https://en.wikipedia.org/wiki/Don%27t_repeat_yourself).
In short, just like Transformers does for modeling files, Diffusers prefers to keep an extremely low level of abstraction and very self-contained code for pipelines and schedulers.
Functions, long code blocks, and even classes can be copied across multiple files which at first can look like a bad, sloppy design choice that makes the library unmaintainable.
**However**, this design has proven to be extremely successful for Transformers and makes a lot of sense for community-driven, open-source machine learning libraries because:
- Machine Learning is an extremely fast-moving field in which paradigms, model architectures, and algorithms are changing rapidly, which therefore makes it very difficult to define long-lasting code abstractions.
- Machine Learning practitioners like to be able to quickly tweak existing code for ideation and research and therefore prefer self-contained code over one that contains many abstractions.
- Open-source libraries rely on community contributions and therefore must build a library that is easy to contribute to. The more abstract the code, the more dependencies, the harder to read, and the harder to contribute to. Contributors simply stop contributing to very abstract libraries out of fear of breaking vital functionality. If contributing to a library cannot break other fundamental code, not only is it more inviting for potential new contributors, but it is also easier to review and contribute to multiple parts in parallel.
At Hugging Face, we call this design the **single-file policy** which means that almost all of the code of a certain class should be written in a single, self-contained file. To read more about the philosophy, you can have a look
at [this blog post](https://huggingface.co/blog/transformers-design-philosophy).
In Diffusers, we follow this philosophy for both pipelines and schedulers, but only partly for diffusion models. The reason we don't follow this design fully for diffusion models is because almost all diffusion pipelines, such
as [DDPM](https://huggingface.co/docs/diffusers/api/pipelines/ddpm), [Stable Diffusion](https://huggingface.co/docs/diffusers/api/pipelines/stable_diffusion/overview#stable-diffusion-pipelines), [unCLIP (DALL·E 2)](https://huggingface.co/docs/diffusers/api/pipelines/unclip) and [Imagen](https://imagen.research.google/) all rely on the same diffusion model, the [UNet](https://huggingface.co/docs/diffusers/api/models/unet2d-cond).
Great, now you should have generally understood why 🧨 Diffusers is designed the way it is 🤗.
We try to apply these design principles consistently across the library. Nevertheless, there are some minor exceptions to the philosophy or some unlucky design choices. If you have feedback regarding the design, we would ❤️ to hear it [directly on GitHub](https://github.com/huggingface/diffusers/issues/new?assignees=&labels=&template=feedback.md&title=).
## Design Philosophy in Details
Now, let's look a bit into the nitty-gritty details of the design philosophy. Diffusers essentially consists of three major classes: [pipelines](https://github.com/huggingface/diffusers/tree/main/src/diffusers/pipelines), [models](https://github.com/huggingface/diffusers/tree/main/src/diffusers/models), and [schedulers](https://github.com/huggingface/diffusers/tree/main/src/diffusers/schedulers).
Let's walk through more in-detail design decisions for each class.
### Pipelines
Pipelines are designed to be easy to use (therefore do not follow [*Simple over easy*](#simple-over-easy) 100%), are not feature complete, and should loosely be seen as examples of how to use [models](#models) and [schedulers](#schedulers) for inference.
The following design principles are followed:
- Pipelines follow the single-file policy. All pipelines can be found in individual directories under src/diffusers/pipelines. One pipeline folder corresponds to one diffusion paper/project/release. Multiple pipeline files can be gathered in one pipeline folder, as it’s done for [`src/diffusers/pipelines/stable-diffusion`](https://github.com/huggingface/diffusers/tree/main/src/diffusers/pipelines/stable_diffusion). If pipelines share similar functionality, one can make use of the [#Copied from mechanism](https://github.com/huggingface/diffusers/blob/125d783076e5bd9785beb05367a2d2566843a271/src/diffusers/pipelines/stable_diffusion/pipeline_stable_diffusion_img2img.py#L251).
- Pipelines all inherit from [`DiffusionPipeline`].
- Every pipeline consists of different model and scheduler components, that are documented in the [`model_index.json` file](https://huggingface.co/runwayml/stable-diffusion-v1-5/blob/main/model_index.json), are accessible under the same name as attributes of the pipeline and can be shared between pipelines with [`DiffusionPipeline.components`](https://huggingface.co/docs/diffusers/main/en/api/diffusion_pipeline#diffusers.DiffusionPipeline.components) function.
- Every pipeline should be loadable via the [`DiffusionPipeline.from_pretrained`](https://huggingface.co/docs/diffusers/main/en/api/diffusion_pipeline#diffusers.DiffusionPipeline.from_pretrained) function.
- Pipelines should be used **only** for inference.
- Pipelines should be very readable, self-explanatory, and easy to tweak.
- Pipelines should be designed to build on top of each other and be easy to integrate into higher-level APIs.
- Pipelines are **not** intended to be feature-complete user interfaces. For future complete user interfaces one should rather have a look at [InvokeAI](https://github.com/invoke-ai/InvokeAI), [Diffuzers](https://github.com/abhishekkrthakur/diffuzers), and [lama-cleaner](https://github.com/Sanster/lama-cleaner).
- Every pipeline should have one and only one way to run it via a `__call__` method. The naming of the `__call__` arguments should be shared across all pipelines.
- Pipelines should be named after the task they are intended to solve.
- In almost all cases, novel diffusion pipelines shall be implemented in a new pipeline folder/file.
### Models
Models are designed as configurable toolboxes that are natural extensions of [PyTorch's Module class](https://pytorch.org/docs/stable/generated/torch.nn.Module.html). They only partly follow the **single-file policy**.
The following design principles are followed:
- Models correspond to **a type of model architecture**. *E.g.* the [`UNet2DConditionModel`] class is used for all UNet variations that expect 2D image inputs and are conditioned on some context.
- All models can be found in [`src/diffusers/models`](https://github.com/huggingface/diffusers/tree/main/src/diffusers/models) and every model architecture shall be defined in its file, e.g. [`unet_2d_condition.py`](https://github.com/huggingface/diffusers/blob/main/src/diffusers/models/unet_2d_condition.py), [`transformer_2d.py`](https://github.com/huggingface/diffusers/blob/main/src/diffusers/models/transformer_2d.py), etc...
- Models **do not** follow the single-file policy and should make use of smaller model building blocks, such as [`attention.py`](https://github.com/huggingface/diffusers/blob/main/src/diffusers/models/attention.py), [`resnet.py`](https://github.com/huggingface/diffusers/blob/main/src/diffusers/models/resnet.py), [`embeddings.py`](https://github.com/huggingface/diffusers/blob/main/src/diffusers/models/embeddings.py), etc... **Note**: This is in stark contrast to Transformers' modeling files and shows that models do not really follow the single-file policy.
- Models intend to expose complexity, just like PyTorch's `Module` class, and give clear error messages.
- Models all inherit from `ModelMixin` and `ConfigMixin`.
- Models can be optimized for performance when it doesn’t demand major code changes, keeps backward compatibility, and gives significant memory or compute gain.
- Models should by default have the highest precision and lowest performance setting.
- To integrate new model checkpoints whose general architecture can be classified as an architecture that already exists in Diffusers, the existing model architecture shall be adapted to make it work with the new checkpoint. One should only create a new file if the model architecture is fundamentally different.
- Models should be designed to be easily extendable to future changes. This can be achieved by limiting public function arguments, configuration arguments, and "foreseeing" future changes, *e.g.* it is usually better to add `string` "...type" arguments that can easily be extended to new future types instead of boolean `is_..._type` arguments. Only the minimum amount of changes shall be made to existing architectures to make a new model checkpoint work.
- The model design is a difficult trade-off between keeping code readable and concise and supporting many model checkpoints. For most parts of the modeling code, classes shall be adapted for new model checkpoints, while there are some exceptions where it is preferred to add new classes to make sure the code is kept concise and
readable long-term, such as [UNet blocks](https://github.com/huggingface/diffusers/blob/main/src/diffusers/models/unet_2d_blocks.py) and [Attention processors](https://github.com/huggingface/diffusers/blob/main/src/diffusers/models/attention_processor.py).
### Schedulers
Schedulers are responsible to guide the denoising process for inference as well as to define a noise schedule for training. They are designed as individual classes with loadable configuration files and strongly follow the **single-file policy**.
The following design principles are followed:
- All schedulers are found in [`src/diffusers/schedulers`](https://github.com/huggingface/diffusers/tree/main/src/diffusers/schedulers).
- Schedulers are **not** allowed to import from large utils files and shall be kept very self-contained.
- One scheduler Python file corresponds to one scheduler algorithm (as might be defined in a paper).
- If schedulers share similar functionalities, we can make use of the `#Copied from` mechanism.
- Schedulers all inherit from `SchedulerMixin` and `ConfigMixin`.
- Schedulers can be easily swapped out with the [`ConfigMixin.from_config`](https://huggingface.co/docs/diffusers/main/en/api/configuration#diffusers.ConfigMixin.from_config) method as explained in detail [here](../using-diffusers/schedulers.md).
- Every scheduler has to have a `set_num_inference_steps`, and a `step` function. `set_num_inference_steps(...)` has to be called before every denoising process, *i.e.* before `step(...)` is called.
- Every scheduler exposes the timesteps to be "looped over" via a `timesteps` attribute, which is an array of timesteps the model will be called upon.
- The `step(...)` function takes a predicted model output and the "current" sample (x_t) and returns the "previous", slightly more denoised sample (x_t-1).
- Given the complexity of diffusion schedulers, the `step` function does not expose all the complexity and can be a bit of a "black box".
- In almost all cases, novel schedulers shall be implemented in a new scheduling file.
| huggingface/diffusers/blob/main/docs/source/en/conceptual/philosophy.md |
!--Copyright 2023 The HuggingFace Team. All rights reserved.
Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with
the License. You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on
an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the
specific language governing permissions and limitations under the License.
-->
# EulerAncestralDiscreteScheduler
A scheduler that uses ancestral sampling with Euler method steps. This is a fast scheduler which can often generate good outputs in 20-30 steps. The scheduler is based on the original [k-diffusion](https://github.com/crowsonkb/k-diffusion/blob/481677d114f6ea445aa009cf5bd7a9cdee909e47/k_diffusion/sampling.py#L72) implementation by [Katherine Crowson](https://github.com/crowsonkb/).
## EulerAncestralDiscreteScheduler
[[autodoc]] EulerAncestralDiscreteScheduler
## EulerAncestralDiscreteSchedulerOutput
[[autodoc]] schedulers.scheduling_euler_ancestral_discrete.EulerAncestralDiscreteSchedulerOutput
| huggingface/diffusers/blob/main/docs/source/en/api/schedulers/euler_ancestral.md |
!--Copyright 2023 The HuggingFace Team. All rights reserved.
Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with
the License. You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on
an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the
specific language governing permissions and limitations under the License.
⚠️ Note that this file is in Markdown but contain specific syntax for our doc-builder (similar to MDX) that may not be
rendered properly in your Markdown viewer.
-->
# Image tasks with IDEFICS
[[open-in-colab]]
While individual tasks can be tackled by fine-tuning specialized models, an alternative approach
that has recently emerged and gained popularity is to use large models for a diverse set of tasks without fine-tuning.
For instance, large language models can handle such NLP tasks as summarization, translation, classification, and more.
This approach is no longer limited to a single modality, such as text, and in this guide, we will illustrate how you can
solve image-text tasks with a large multimodal model called IDEFICS.
[IDEFICS](../model_doc/idefics) is an open-access vision and language model based on [Flamingo](https://huggingface.co/papers/2204.14198),
a state-of-the-art visual language model initially developed by DeepMind. The model accepts arbitrary sequences of image
and text inputs and generates coherent text as output. It can answer questions about images, describe visual content,
create stories grounded in multiple images, and so on. IDEFICS comes in two variants - [80 billion parameters](https://huggingface.co/HuggingFaceM4/idefics-80b)
and [9 billion parameters](https://huggingface.co/HuggingFaceM4/idefics-9b), both of which are available on the 🤗 Hub. For each variant, you can also find fine-tuned instructed
versions of the model adapted for conversational use cases.
This model is exceptionally versatile and can be used for a wide range of image and multimodal tasks. However,
being a large model means it requires significant computational resources and infrastructure. It is up to you to decide whether
this approach suits your use case better than fine-tuning specialized models for each individual task.
In this guide, you'll learn how to:
- [Load IDEFICS](#loading-the-model) and [load the quantized version of the model](#loading-the-quantized-version-of-the-model)
- Use IDEFICS for:
- [Image captioning](#image-captioning)
- [Prompted image captioning](#prompted-image-captioning)
- [Few-shot prompting](#few-shot-prompting)
- [Visual question answering](#visual-question-answering)
- [Image classificaiton](#image-classification)
- [Image-guided text generation](#image-guided-text-generation)
- [Run inference in batch mode](#running-inference-in-batch-mode)
- [Run IDEFICS instruct for conversational use](#idefics-instruct-for-conversational-use)
Before you begin, make sure you have all the necessary libraries installed.
```bash
pip install -q bitsandbytes sentencepiece accelerate transformers
```
<Tip>
To run the following examples with a non-quantized version of the model checkpoint you will need at least 20GB of GPU memory.
</Tip>
## Loading the model
Let's start by loading the model's 9 billion parameters checkpoint:
```py
>>> checkpoint = "HuggingFaceM4/idefics-9b"
```
Just like for other Transformers models, you need to load a processor and the model itself from the checkpoint.
The IDEFICS processor wraps a [`LlamaTokenizer`] and IDEFICS image processor into a single processor to take care of
preparing text and image inputs for the model.
```py
>>> import torch
>>> from transformers import IdeficsForVisionText2Text, AutoProcessor
>>> processor = AutoProcessor.from_pretrained(checkpoint)
>>> model = IdeficsForVisionText2Text.from_pretrained(checkpoint, torch_dtype=torch.bfloat16, device_map="auto")
```
Setting `device_map` to `"auto"` will automatically determine how to load and store the model weights in the most optimized
manner given existing devices.
### Quantized model
If high-memory GPU availability is an issue, you can load the quantized version of the model. To load the model and the
processor in 4bit precision, pass a `BitsAndBytesConfig` to the `from_pretrained` method and the model will be compressed
on the fly while loading.
```py
>>> import torch
>>> from transformers import IdeficsForVisionText2Text, AutoProcessor, BitsAndBytesConfig
>>> quantization_config = BitsAndBytesConfig(
... load_in_4bit=True,
... bnb_4bit_compute_dtype=torch.float16,
... )
>>> processor = AutoProcessor.from_pretrained(checkpoint)
>>> model = IdeficsForVisionText2Text.from_pretrained(
... checkpoint,
... quantization_config=quantization_config,
... device_map="auto"
... )
```
Now that you have the model loaded in one of the suggested ways, let's move on to exploring tasks that you can use IDEFICS for.
## Image captioning
Image captioning is the task of predicting a caption for a given image. A common application is to aid visually impaired
people navigate through different situations, for instance, explore image content online.
To illustrate the task, get an image to be captioned, e.g.:
<div class="flex justify-center">
<img src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/transformers/tasks/idefics-im-captioning.jpg" alt="Image of a puppy in a flower bed"/>
</div>
Photo by [Hendo Wang](https://unsplash.com/@hendoo).
IDEFICS accepts text and image prompts. However, to caption an image, you do not have to provide a text prompt to the
model, only the preprocessed input image. Without a text prompt, the model will start generating text from the
BOS (beginning-of-sequence) token thus creating a caption.
As image input to the model, you can use either an image object (`PIL.Image`) or a url from which the image can be retrieved.
```py
>>> prompt = [
... "https://images.unsplash.com/photo-1583160247711-2191776b4b91?ixlib=rb-4.0.3&ixid=M3wxMjA3fDB8MHxwaG90by1wYWdlfHx8fGVufDB8fHx8fA%3D%3D&auto=format&fit=crop&w=3542&q=80",
... ]
>>> inputs = processor(prompt, return_tensors="pt").to("cuda")
>>> bad_words_ids = processor.tokenizer(["<image>", "<fake_token_around_image>"], add_special_tokens=False).input_ids
>>> generated_ids = model.generate(**inputs, max_new_tokens=10, bad_words_ids=bad_words_ids)
>>> generated_text = processor.batch_decode(generated_ids, skip_special_tokens=True)
>>> print(generated_text[0])
A puppy in a flower bed
```
<Tip>
It is a good idea to include the `bad_words_ids` in the call to `generate` to avoid errors arising when increasing
the `max_new_tokens`: the model will want to generate a new `<image>` or `<fake_token_around_image>` token when there
is no image being generated by the model.
You can set it on-the-fly as in this guide, or store in the `GenerationConfig` as described in the [Text generation strategies](../generation_strategies) guide.
</Tip>
## Prompted image captioning
You can extend image captioning by providing a text prompt, which the model will continue given the image. Let's take
another image to illustrate:
<div class="flex justify-center">
<img src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/transformers/tasks/idefics-prompted-im-captioning.jpg" alt="Image of the Eiffel Tower at night"/>
</div>
Photo by [Denys Nevozhai](https://unsplash.com/@dnevozhai).
Textual and image prompts can be passed to the model's processor as a single list to create appropriate inputs.
```py
>>> prompt = [
... "https://images.unsplash.com/photo-1543349689-9a4d426bee8e?ixlib=rb-4.0.3&ixid=M3wxMjA3fDB8MHxwaG90by1wYWdlfHx8fGVufDB8fHx8fA%3D%3D&auto=format&fit=crop&w=3501&q=80",
... "This is an image of ",
... ]
>>> inputs = processor(prompt, return_tensors="pt").to("cuda")
>>> bad_words_ids = processor.tokenizer(["<image>", "<fake_token_around_image>"], add_special_tokens=False).input_ids
>>> generated_ids = model.generate(**inputs, max_new_tokens=10, bad_words_ids=bad_words_ids)
>>> generated_text = processor.batch_decode(generated_ids, skip_special_tokens=True)
>>> print(generated_text[0])
This is an image of the Eiffel Tower in Paris, France.
```
## Few-shot prompting
While IDEFICS demonstrates great zero-shot results, your task may require a certain format of the caption, or come with
other restrictions or requirements that increase task's complexity. Few-shot prompting can be used to enable in-context learning.
By providing examples in the prompt, you can steer the model to generate results that mimic the format of given examples.
Let's use the previous image of the Eiffel Tower as an example for the model and build a prompt that demonstrates to the model
that in addition to learning what the object in an image is, we would also like to get some interesting information about it.
Then, let's see, if we can get the same response format for an image of the Statue of Liberty:
<div class="flex justify-center">
<img src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/transformers/tasks/idefics-few-shot.jpg" alt="Image of the Statue of Liberty"/>
</div>
Photo by [Juan Mayobre](https://unsplash.com/@jmayobres).
```py
>>> prompt = ["User:",
... "https://images.unsplash.com/photo-1543349689-9a4d426bee8e?ixlib=rb-4.0.3&ixid=M3wxMjA3fDB8MHxwaG90by1wYWdlfHx8fGVufDB8fHx8fA%3D%3D&auto=format&fit=crop&w=3501&q=80",
... "Describe this image.\nAssistant: An image of the Eiffel Tower at night. Fun fact: the Eiffel Tower is the same height as an 81-storey building.\n",
... "User:",
... "https://images.unsplash.com/photo-1524099163253-32b7f0256868?ixlib=rb-4.0.3&ixid=M3wxMjA3fDB8MHxwaG90by1wYWdlfHx8fGVufDB8fHx8fA%3D%3D&auto=format&fit=crop&w=3387&q=80",
... "Describe this image.\nAssistant:"
... ]
>>> inputs = processor(prompt, return_tensors="pt").to("cuda")
>>> bad_words_ids = processor.tokenizer(["<image>", "<fake_token_around_image>"], add_special_tokens=False).input_ids
>>> generated_ids = model.generate(**inputs, max_new_tokens=30, bad_words_ids=bad_words_ids)
>>> generated_text = processor.batch_decode(generated_ids, skip_special_tokens=True)
>>> print(generated_text[0])
User: Describe this image.
Assistant: An image of the Eiffel Tower at night. Fun fact: the Eiffel Tower is the same height as an 81-storey building.
User: Describe this image.
Assistant: An image of the Statue of Liberty. Fun fact: the Statue of Liberty is 151 feet tall.
```
Notice that just from a single example (i.e., 1-shot) the model has learned how to perform the task. For more complex tasks,
feel free to experiment with a larger number of examples (e.g., 3-shot, 5-shot, etc.).
## Visual question answering
Visual Question Answering (VQA) is the task of answering open-ended questions based on an image. Similar to image
captioning it can be used in accessibility applications, but also in education (reasoning about visual materials), customer
service (questions about products based on images), and image retrieval.
Let's get a new image for this task:
<div class="flex justify-center">
<img src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/transformers/tasks/idefics-vqa.jpg" alt="Image of a couple having a picnic"/>
</div>
Photo by [Jarritos Mexican Soda](https://unsplash.com/@jarritos).
You can steer the model from image captioning to visual question answering by prompting it with appropriate instructions:
```py
>>> prompt = [
... "Instruction: Provide an answer to the question. Use the image to answer.\n",
... "https://images.unsplash.com/photo-1623944889288-cd147dbb517c?ixlib=rb-4.0.3&ixid=M3wxMjA3fDB8MHxwaG90by1wYWdlfHx8fGVufDB8fHx8fA%3D%3D&auto=format&fit=crop&w=3540&q=80",
... "Question: Where are these people and what's the weather like? Answer:"
... ]
>>> inputs = processor(prompt, return_tensors="pt").to("cuda")
>>> bad_words_ids = processor.tokenizer(["<image>", "<fake_token_around_image>"], add_special_tokens=False).input_ids
>>> generated_ids = model.generate(**inputs, max_new_tokens=20, bad_words_ids=bad_words_ids)
>>> generated_text = processor.batch_decode(generated_ids, skip_special_tokens=True)
>>> print(generated_text[0])
Instruction: Provide an answer to the question. Use the image to answer.
Question: Where are these people and what's the weather like? Answer: They're in a park in New York City, and it's a beautiful day.
```
## Image classification
IDEFICS is capable of classifying images into different categories without being explicitly trained on data containing
labeled examples from those specific categories. Given a list of categories and using its image and text understanding
capabilities, the model can infer which category the image likely belongs to.
Say, we have this image of a vegetable stand:
<div class="flex justify-center">
<img src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/transformers/tasks/idefics-classification.jpg" alt="Image of a vegetable stand"/>
</div>
Photo by [Peter Wendt](https://unsplash.com/@peterwendt).
We can instruct the model to classify the image into one of the categories that we have:
```py
>>> categories = ['animals','vegetables', 'city landscape', 'cars', 'office']
>>> prompt = [f"Instruction: Classify the following image into a single category from the following list: {categories}.\n",
... "https://images.unsplash.com/photo-1471193945509-9ad0617afabf?ixlib=rb-4.0.3&ixid=M3wxMjA3fDB8MHxwaG90by1wYWdlfHx8fGVufDB8fHx8fA%3D%3D&auto=format&fit=crop&w=3540&q=80",
... "Category: "
... ]
>>> inputs = processor(prompt, return_tensors="pt").to("cuda")
>>> bad_words_ids = processor.tokenizer(["<image>", "<fake_token_around_image>"], add_special_tokens=False).input_ids
>>> generated_ids = model.generate(**inputs, max_new_tokens=6, bad_words_ids=bad_words_ids)
>>> generated_text = processor.batch_decode(generated_ids, skip_special_tokens=True)
>>> print(generated_text[0])
Instruction: Classify the following image into a single category from the following list: ['animals', 'vegetables', 'city landscape', 'cars', 'office'].
Category: Vegetables
```
In the example above we instruct the model to classify the image into a single category, however, you can also prompt the model to do rank classification.
## Image-guided text generation
For more creative applications, you can use image-guided text generation to generate text based on an image. This can be
useful to create descriptions of products, ads, descriptions of a scene, etc.
Let's prompt IDEFICS to write a story based on a simple image of a red door:
<div class="flex justify-center">
<img src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/transformers/tasks/idefics-story-generation.jpg" alt="Image of a red door with a pumpkin on the steps"/>
</div>
Photo by [Craig Tidball](https://unsplash.com/@devonshiremedia).
```py
>>> prompt = ["Instruction: Use the image to write a story. \n",
... "https://images.unsplash.com/photo-1517086822157-2b0358e7684a?ixlib=rb-4.0.3&ixid=M3wxMjA3fDB8MHxwaG90by1wYWdlfHx8fGVufDB8fHx8fA%3D%3D&auto=format&fit=crop&w=2203&q=80",
... "Story: \n"]
>>> inputs = processor(prompt, return_tensors="pt").to("cuda")
>>> bad_words_ids = processor.tokenizer(["<image>", "<fake_token_around_image>"], add_special_tokens=False).input_ids
>>> generated_ids = model.generate(**inputs, num_beams=2, max_new_tokens=200, bad_words_ids=bad_words_ids)
>>> generated_text = processor.batch_decode(generated_ids, skip_special_tokens=True)
>>> print(generated_text[0])
Instruction: Use the image to write a story.
Story:
Once upon a time, there was a little girl who lived in a house with a red door. She loved her red door. It was the prettiest door in the whole world.
One day, the little girl was playing in her yard when she noticed a man standing on her doorstep. He was wearing a long black coat and a top hat.
The little girl ran inside and told her mother about the man.
Her mother said, “Don’t worry, honey. He’s just a friendly ghost.”
The little girl wasn’t sure if she believed her mother, but she went outside anyway.
When she got to the door, the man was gone.
The next day, the little girl was playing in her yard again when she noticed the man standing on her doorstep.
He was wearing a long black coat and a top hat.
The little girl ran
```
Looks like IDEFICS noticed the pumpkin on the doorstep and went with a spooky Halloween story about a ghost.
<Tip>
For longer outputs like this, you will greatly benefit from tweaking the text generation strategy. This can help
you significantly improve the quality of the generated output. Check out [Text generation strategies](../generation_strategies)
to learn more.
</Tip>
## Running inference in batch mode
All of the earlier sections illustrated IDEFICS for a single example. In a very similar fashion, you can run inference
for a batch of examples by passing a list of prompts:
```py
>>> prompts = [
... [ "https://images.unsplash.com/photo-1543349689-9a4d426bee8e?ixlib=rb-4.0.3&ixid=M3wxMjA3fDB8MHxwaG90by1wYWdlfHx8fGVufDB8fHx8fA%3D%3D&auto=format&fit=crop&w=3501&q=80",
... "This is an image of ",
... ],
... [ "https://images.unsplash.com/photo-1623944889288-cd147dbb517c?ixlib=rb-4.0.3&ixid=M3wxMjA3fDB8MHxwaG90by1wYWdlfHx8fGVufDB8fHx8fA%3D%3D&auto=format&fit=crop&w=3540&q=80",
... "This is an image of ",
... ],
... [ "https://images.unsplash.com/photo-1471193945509-9ad0617afabf?ixlib=rb-4.0.3&ixid=M3wxMjA3fDB8MHxwaG90by1wYWdlfHx8fGVufDB8fHx8fA%3D%3D&auto=format&fit=crop&w=3540&q=80",
... "This is an image of ",
... ],
... ]
>>> inputs = processor(prompts, return_tensors="pt").to("cuda")
>>> bad_words_ids = processor.tokenizer(["<image>", "<fake_token_around_image>"], add_special_tokens=False).input_ids
>>> generated_ids = model.generate(**inputs, max_new_tokens=10, bad_words_ids=bad_words_ids)
>>> generated_text = processor.batch_decode(generated_ids, skip_special_tokens=True)
>>> for i,t in enumerate(generated_text):
... print(f"{i}:\n{t}\n")
0:
This is an image of the Eiffel Tower in Paris, France.
1:
This is an image of a couple on a picnic blanket.
2:
This is an image of a vegetable stand.
```
## IDEFICS instruct for conversational use
For conversational use cases, you can find fine-tuned instructed versions of the model on the 🤗 Hub:
`HuggingFaceM4/idefics-80b-instruct` and `HuggingFaceM4/idefics-9b-instruct`.
These checkpoints are the result of fine-tuning the respective base models on a mixture of supervised and instruction
fine-tuning datasets, which boosts the downstream performance while making the models more usable in conversational settings.
The use and prompting for the conversational use is very similar to using the base models:
```py
>>> import torch
>>> from transformers import IdeficsForVisionText2Text, AutoProcessor
>>> device = "cuda" if torch.cuda.is_available() else "cpu"
>>> checkpoint = "HuggingFaceM4/idefics-9b-instruct"
>>> model = IdeficsForVisionText2Text.from_pretrained(checkpoint, torch_dtype=torch.bfloat16).to(device)
>>> processor = AutoProcessor.from_pretrained(checkpoint)
>>> prompts = [
... [
... "User: What is in this image?",
... "https://upload.wikimedia.org/wikipedia/commons/8/86/Id%C3%A9fix.JPG",
... "<end_of_utterance>",
... "\nAssistant: This picture depicts Idefix, the dog of Obelix in Asterix and Obelix. Idefix is running on the ground.<end_of_utterance>",
... "\nUser:",
... "https://static.wikia.nocookie.net/asterix/images/2/25/R22b.gif/revision/latest?cb=20110815073052",
... "And who is that?<end_of_utterance>",
... "\nAssistant:",
... ],
... ]
>>> # --batched mode
>>> inputs = processor(prompts, add_end_of_utterance_token=False, return_tensors="pt").to(device)
>>> # --single sample mode
>>> # inputs = processor(prompts[0], return_tensors="pt").to(device)
>>> # Generation args
>>> exit_condition = processor.tokenizer("<end_of_utterance>", add_special_tokens=False).input_ids
>>> bad_words_ids = processor.tokenizer(["<image>", "<fake_token_around_image>"], add_special_tokens=False).input_ids
>>> generated_ids = model.generate(**inputs, eos_token_id=exit_condition, bad_words_ids=bad_words_ids, max_length=100)
>>> generated_text = processor.batch_decode(generated_ids, skip_special_tokens=True)
>>> for i, t in enumerate(generated_text):
... print(f"{i}:\n{t}\n")
```
| huggingface/transformers/blob/main/docs/source/en/tasks/idefics.md |
!--Copyright 2023 The HuggingFace Team. All rights reserved.
Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with
the License. You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on
an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the
specific language governing permissions and limitations under the License.
-->
# unCLIP
[Hierarchical Text-Conditional Image Generation with CLIP Latents](https://huggingface.co/papers/2204.06125) is by Aditya Ramesh, Prafulla Dhariwal, Alex Nichol, Casey Chu, Mark Chen. The unCLIP model in 🤗 Diffusers comes from kakaobrain's [karlo](https://github.com/kakaobrain/karlo).
The abstract from the paper is following:
*Contrastive models like CLIP have been shown to learn robust representations of images that capture both semantics and style. To leverage these representations for image generation, we propose a two-stage model: a prior that generates a CLIP image embedding given a text caption, and a decoder that generates an image conditioned on the image embedding. We show that explicitly generating image representations improves image diversity with minimal loss in photorealism and caption similarity. Our decoders conditioned on image representations can also produce variations of an image that preserve both its semantics and style, while varying the non-essential details absent from the image representation. Moreover, the joint embedding space of CLIP enables language-guided image manipulations in a zero-shot fashion. We use diffusion models for the decoder and experiment with both autoregressive and diffusion models for the prior, finding that the latter are computationally more efficient and produce higher-quality samples.*
You can find lucidrains' DALL-E 2 recreation at [lucidrains/DALLE2-pytorch](https://github.com/lucidrains/DALLE2-pytorch).
<Tip>
Make sure to check out the Schedulers [guide](../../using-diffusers/schedulers) to learn how to explore the tradeoff between scheduler speed and quality, and see the [reuse components across pipelines](../../using-diffusers/loading#reuse-components-across-pipelines) section to learn how to efficiently load the same components into multiple pipelines.
</Tip>
## UnCLIPPipeline
[[autodoc]] UnCLIPPipeline
- all
- __call__
## UnCLIPImageVariationPipeline
[[autodoc]] UnCLIPImageVariationPipeline
- all
- __call__
## ImagePipelineOutput
[[autodoc]] pipelines.ImagePipelineOutput
| huggingface/diffusers/blob/main/docs/source/en/api/pipelines/unclip.md |
!---
Copyright 2020 The HuggingFace Team. All rights reserved.
Licensed under the Apache License, Version 2.0 (the "License");
you may not use this file except in compliance with the License.
You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software
distributed under the License is distributed on an "AS IS" BASIS,
WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
See the License for the specific language governing permissions and
limitations under the License.
-->
# Research projects
This folder contains various research projects using 🤗 Transformers. They are not maintained and require a specific
version of 🤗 Transformers that is indicated in the requirements file of each folder. Updating them to the most recent version of the library will require some work.
To use any of them, just run the command
```
pip install -r requirements.txt
```
inside the folder of your choice.
If you need help with any of those, contact the author(s), indicated at the top of the `README` of each folder.
| huggingface/transformers/blob/main/examples/research_projects/README.md |
--
title: Introducing our new pricing
thumbnail: /blog/assets/114_pricing-update/thumbnail.png
authors:
- user: sbrandeis
- user: pierric
---
# Introducing our new pricing
As you might have noticed, our [pricing page](https://huggingface.co/pricing) has changed a lot recently.
First of all, we are sunsetting the Paid tier of the Inference API service. The Inference API will still be available for everyone to use for free. But if you're looking for a fast, enterprise-grade inference as a service, we recommend checking out our brand new solution for this: [Inference Endpoints](https://huggingface.co/inference-endpoints).
Along with Inference Endpoints, we've recently introduced hardware upgrades for [Spaces](https://huggingface.co/spaces/launch), which allows running ML demos with the hardware of your choice. No subscription is required to use these services; you only need to add a credit card to your account from your [billing settings](https://huggingface.co/settings/billing). You can also attach a payment method to any of [your organizations](https://huggingface.co/settings/organizations).
Your billing settings centralize everything about our paid services. From there, you can manage your personal PRO subscription, update your payment method, and visualize your usage for the past three months. Usage for all our paid services and subscriptions will be charged at the start of each month, and a consolidated invoice will be available for your records.
**TL;DR**: **At HF we monetize by providing simple access to compute for AI**, with services like AutoTrain, Spaces and Inference Endpoints, directly accessible from the Hub. [Read more](https://huggingface.co/docs/hub/billing) about our pricing and billing system.
If you have any questions, feel free to reach out. We welcome your feedback 🔥
| huggingface/blog/blob/main/pricing-update.md |
!--Copyright 2020 The HuggingFace Team. All rights reserved.
Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with
the License. You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on
an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the
specific language governing permissions and limitations under the License.
⚠️ Note that this file is in Markdown but contain specific syntax for our doc-builder (similar to MDX) that may not be
rendered properly in your Markdown viewer.
-->
# SqueezeBERT
## Overview
The SqueezeBERT model was proposed in [SqueezeBERT: What can computer vision teach NLP about efficient neural networks?](https://arxiv.org/abs/2006.11316) by Forrest N. Iandola, Albert E. Shaw, Ravi Krishna, Kurt W. Keutzer. It's a
bidirectional transformer similar to the BERT model. The key difference between the BERT architecture and the
SqueezeBERT architecture is that SqueezeBERT uses [grouped convolutions](https://blog.yani.io/filter-group-tutorial)
instead of fully-connected layers for the Q, K, V and FFN layers.
The abstract from the paper is the following:
*Humans read and write hundreds of billions of messages every day. Further, due to the availability of large datasets,
large computing systems, and better neural network models, natural language processing (NLP) technology has made
significant strides in understanding, proofreading, and organizing these messages. Thus, there is a significant
opportunity to deploy NLP in myriad applications to help web users, social networks, and businesses. In particular, we
consider smartphones and other mobile devices as crucial platforms for deploying NLP models at scale. However, today's
highly-accurate NLP neural network models such as BERT and RoBERTa are extremely computationally expensive, with
BERT-base taking 1.7 seconds to classify a text snippet on a Pixel 3 smartphone. In this work, we observe that methods
such as grouped convolutions have yielded significant speedups for computer vision networks, but many of these
techniques have not been adopted by NLP neural network designers. We demonstrate how to replace several operations in
self-attention layers with grouped convolutions, and we use this technique in a novel network architecture called
SqueezeBERT, which runs 4.3x faster than BERT-base on the Pixel 3 while achieving competitive accuracy on the GLUE test
set. The SqueezeBERT code will be released.*
This model was contributed by [forresti](https://huggingface.co/forresti).
## Usage tips
- SqueezeBERT is a model with absolute position embeddings so it's usually advised to pad the inputs on the right
rather than the left.
- SqueezeBERT is similar to BERT and therefore relies on the masked language modeling (MLM) objective. It is therefore
efficient at predicting masked tokens and at NLU in general, but is not optimal for text generation. Models trained
with a causal language modeling (CLM) objective are better in that regard.
- For best results when finetuning on sequence classification tasks, it is recommended to start with the
*squeezebert/squeezebert-mnli-headless* checkpoint.
## Resources
- [Text classification task guide](../tasks/sequence_classification)
- [Token classification task guide](../tasks/token_classification)
- [Question answering task guide](../tasks/question_answering)
- [Masked language modeling task guide](../tasks/masked_language_modeling)
- [Multiple choice task guide](../tasks/multiple_choice)
## SqueezeBertConfig
[[autodoc]] SqueezeBertConfig
## SqueezeBertTokenizer
[[autodoc]] SqueezeBertTokenizer
- build_inputs_with_special_tokens
- get_special_tokens_mask
- create_token_type_ids_from_sequences
- save_vocabulary
## SqueezeBertTokenizerFast
[[autodoc]] SqueezeBertTokenizerFast
## SqueezeBertModel
[[autodoc]] SqueezeBertModel
## SqueezeBertForMaskedLM
[[autodoc]] SqueezeBertForMaskedLM
## SqueezeBertForSequenceClassification
[[autodoc]] SqueezeBertForSequenceClassification
## SqueezeBertForMultipleChoice
[[autodoc]] SqueezeBertForMultipleChoice
## SqueezeBertForTokenClassification
[[autodoc]] SqueezeBertForTokenClassification
## SqueezeBertForQuestionAnswering
[[autodoc]] SqueezeBertForQuestionAnswering
| huggingface/transformers/blob/main/docs/source/en/model_doc/squeezebert.md |
!--Copyright 2020 The HuggingFace Team. All rights reserved.
Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with
the License. You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on
an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the
specific language governing permissions and limitations under the License.
⚠️ Note that this file is in Markdown but contain specific syntax for our doc-builder (similar to MDX) that may not be
rendered properly in your Markdown viewer.
-->
# ALBERT
<div class="flex flex-wrap space-x-1">
<a href="https://huggingface.co/models?filter=albert">
<img alt="Models" src="https://img.shields.io/badge/All_model_pages-albert-blueviolet">
</a>
<a href="https://huggingface.co/spaces/docs-demos/albert-base-v2">
<img alt="Spaces" src="https://img.shields.io/badge/%F0%9F%A4%97%20Hugging%20Face-Spaces-blue">
</a>
</div>
## Overview
The ALBERT model was proposed in [ALBERT: A Lite BERT for Self-supervised Learning of Language Representations](https://arxiv.org/abs/1909.11942) by Zhenzhong Lan, Mingda Chen, Sebastian Goodman, Kevin Gimpel, Piyush Sharma,
Radu Soricut. It presents two parameter-reduction techniques to lower memory consumption and increase the training
speed of BERT:
- Splitting the embedding matrix into two smaller matrices.
- Using repeating layers split among groups.
The abstract from the paper is the following:
*Increasing model size when pretraining natural language representations often results in improved performance on
downstream tasks. However, at some point further model increases become harder due to GPU/TPU memory limitations,
longer training times, and unexpected model degradation. To address these problems, we present two parameter-reduction
techniques to lower memory consumption and increase the training speed of BERT. Comprehensive empirical evidence shows
that our proposed methods lead to models that scale much better compared to the original BERT. We also use a
self-supervised loss that focuses on modeling inter-sentence coherence, and show it consistently helps downstream tasks
with multi-sentence inputs. As a result, our best model establishes new state-of-the-art results on the GLUE, RACE, and
SQuAD benchmarks while having fewer parameters compared to BERT-large.*
This model was contributed by [lysandre](https://huggingface.co/lysandre). This model jax version was contributed by
[kamalkraj](https://huggingface.co/kamalkraj). The original code can be found [here](https://github.com/google-research/ALBERT).
## Usage tips
- ALBERT is a model with absolute position embeddings so it's usually advised to pad the inputs on the right rather
than the left.
- ALBERT uses repeating layers which results in a small memory footprint, however the computational cost remains
similar to a BERT-like architecture with the same number of hidden layers as it has to iterate through the same
number of (repeating) layers.
- Embedding size E is different from hidden size H justified because the embeddings are context independent (one embedding vector represents one token), whereas hidden states are context dependent (one hidden state represents a sequence of tokens) so it's more logical to have H >> E. Also, the embedding matrix is large since it's V x E (V being the vocab size). If E < H, it has less parameters.
- Layers are split in groups that share parameters (to save memory).
Next sentence prediction is replaced by a sentence ordering prediction: in the inputs, we have two sentences A and B (that are consecutive) and we either feed A followed by B or B followed by A. The model must predict if they have been swapped or not.
This model was contributed by [lysandre](https://huggingface.co/lysandre). This model jax version was contributed by
[kamalkraj](https://huggingface.co/kamalkraj). The original code can be found [here](https://github.com/google-research/ALBERT).
## Resources
The resources provided in the following sections consist of a list of official Hugging Face and community (indicated by 🌎) resources to help you get started with AlBERT. If you're interested in submitting a resource to be included here, please feel free to open a Pull Request and we'll review it! The resource should ideally demonstrate something new instead of duplicating an existing resource.
<PipelineTag pipeline="text-classification"/>
- [`AlbertForSequenceClassification`] is supported by this [example script](https://github.com/huggingface/transformers/tree/main/examples/pytorch/text-classification).
- [`TFAlbertForSequenceClassification`] is supported by this [example script](https://github.com/huggingface/transformers/tree/main/examples/tensorflow/text-classification).
- [`FlaxAlbertForSequenceClassification`] is supported by this [example script](https://github.com/huggingface/transformers/tree/main/examples/flax/text-classification) and [notebook](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/text_classification_flax.ipynb).
- Check the [Text classification task guide](../tasks/sequence_classification) on how to use the model.
<PipelineTag pipeline="token-classification"/>
- [`AlbertForTokenClassification`] is supported by this [example script](https://github.com/huggingface/transformers/tree/main/examples/pytorch/token-classification).
- [`TFAlbertForTokenClassification`] is supported by this [example script](https://github.com/huggingface/transformers/tree/main/examples/tensorflow/token-classification) and [notebook](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/token_classification-tf.ipynb).
- [`FlaxAlbertForTokenClassification`] is supported by this [example script](https://github.com/huggingface/transformers/tree/main/examples/flax/token-classification).
- [Token classification](https://huggingface.co/course/chapter7/2?fw=pt) chapter of the 🤗 Hugging Face Course.
- Check the [Token classification task guide](../tasks/token_classification) on how to use the model.
<PipelineTag pipeline="fill-mask"/>
- [`AlbertForMaskedLM`] is supported by this [example script](https://github.com/huggingface/transformers/tree/main/examples/pytorch/language-modeling#robertabertdistilbert-and-masked-language-modeling) and [notebook](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/language_modeling.ipynb).
- [`TFAlbertForMaskedLM`] is supported by this [example script](https://github.com/huggingface/transformers/tree/main/examples/tensorflow/language-modeling#run_mlmpy) and [notebook](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/language_modeling-tf.ipynb).
- [`FlaxAlbertForMaskedLM`] is supported by this [example script](https://github.com/huggingface/transformers/tree/main/examples/flax/language-modeling#masked-language-modeling) and [notebook](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/masked_language_modeling_flax.ipynb).
- [Masked language modeling](https://huggingface.co/course/chapter7/3?fw=pt) chapter of the 🤗 Hugging Face Course.
- Check the [Masked language modeling task guide](../tasks/masked_language_modeling) on how to use the model.
<PipelineTag pipeline="question-answering"/>
- [`AlbertForQuestionAnswering`] is supported by this [example script](https://github.com/huggingface/transformers/tree/main/examples/pytorch/question-answering) and [notebook](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/question_answering.ipynb).
- [`TFAlbertForQuestionAnswering`] is supported by this [example script](https://github.com/huggingface/transformers/tree/main/examples/tensorflow/question-answering) and [notebook](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/question_answering-tf.ipynb).
- [`FlaxAlbertForQuestionAnswering`] is supported by this [example script](https://github.com/huggingface/transformers/tree/main/examples/flax/question-answering).
- [Question answering](https://huggingface.co/course/chapter7/7?fw=pt) chapter of the 🤗 Hugging Face Course.
- Check the [Question answering task guide](../tasks/question_answering) on how to use the model.
**Multiple choice**
- [`AlbertForMultipleChoice`] is supported by this [example script](https://github.com/huggingface/transformers/tree/main/examples/pytorch/multiple-choice) and [notebook](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/multiple_choice.ipynb).
- [`TFAlbertForMultipleChoice`] is supported by this [example script](https://github.com/huggingface/transformers/tree/main/examples/tensorflow/multiple-choice) and [notebook](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/multiple_choice-tf.ipynb).
- Check the [Multiple choice task guide](../tasks/multiple_choice) on how to use the model.
## AlbertConfig
[[autodoc]] AlbertConfig
## AlbertTokenizer
[[autodoc]] AlbertTokenizer
- build_inputs_with_special_tokens
- get_special_tokens_mask
- create_token_type_ids_from_sequences
- save_vocabulary
## AlbertTokenizerFast
[[autodoc]] AlbertTokenizerFast
## Albert specific outputs
[[autodoc]] models.albert.modeling_albert.AlbertForPreTrainingOutput
[[autodoc]] models.albert.modeling_tf_albert.TFAlbertForPreTrainingOutput
<frameworkcontent>
<pt>
## AlbertModel
[[autodoc]] AlbertModel
- forward
## AlbertForPreTraining
[[autodoc]] AlbertForPreTraining
- forward
## AlbertForMaskedLM
[[autodoc]] AlbertForMaskedLM
- forward
## AlbertForSequenceClassification
[[autodoc]] AlbertForSequenceClassification
- forward
## AlbertForMultipleChoice
[[autodoc]] AlbertForMultipleChoice
## AlbertForTokenClassification
[[autodoc]] AlbertForTokenClassification
- forward
## AlbertForQuestionAnswering
[[autodoc]] AlbertForQuestionAnswering
- forward
</pt>
<tf>
## TFAlbertModel
[[autodoc]] TFAlbertModel
- call
## TFAlbertForPreTraining
[[autodoc]] TFAlbertForPreTraining
- call
## TFAlbertForMaskedLM
[[autodoc]] TFAlbertForMaskedLM
- call
## TFAlbertForSequenceClassification
[[autodoc]] TFAlbertForSequenceClassification
- call
## TFAlbertForMultipleChoice
[[autodoc]] TFAlbertForMultipleChoice
- call
## TFAlbertForTokenClassification
[[autodoc]] TFAlbertForTokenClassification
- call
## TFAlbertForQuestionAnswering
[[autodoc]] TFAlbertForQuestionAnswering
- call
</tf>
<jax>
## FlaxAlbertModel
[[autodoc]] FlaxAlbertModel
- __call__
## FlaxAlbertForPreTraining
[[autodoc]] FlaxAlbertForPreTraining
- __call__
## FlaxAlbertForMaskedLM
[[autodoc]] FlaxAlbertForMaskedLM
- __call__
## FlaxAlbertForSequenceClassification
[[autodoc]] FlaxAlbertForSequenceClassification
- __call__
## FlaxAlbertForMultipleChoice
[[autodoc]] FlaxAlbertForMultipleChoice
- __call__
## FlaxAlbertForTokenClassification
[[autodoc]] FlaxAlbertForTokenClassification
- __call__
## FlaxAlbertForQuestionAnswering
[[autodoc]] FlaxAlbertForQuestionAnswering
- __call__
</jax>
</frameworkcontent>
| huggingface/transformers/blob/main/docs/source/en/model_doc/albert.md |
--
title: "Case Study: Millisecond Latency using Hugging Face Infinity and modern CPUs"
thumbnail: /blog/assets/46_infinity_cpu_performance/thumbnail.png
authors:
- user: philschmid
- user: jeffboudier
- user: mfuntowicz
---
# Case Study: Millisecond Latency using Hugging Face Infinity and modern CPUs
<script async defer src="https://unpkg.com/medium-zoom-element@0/dist/medium-zoom-element.min.js"></script>
<br>
<div style="background-color: #e6f9e6; padding: 16px 32px; outline: 2px solid; border-radius: 10px;">
December 2022 Update: Infinity is no longer offered by Hugging Face as a commercial inference solution. To deploy and accelerate your models, we recommend the following new solutions:
* [Inference Endpoints](https://huggingface.co/docs/inference-endpoints/index) to easily deploy models on dedicated infrastructure managed by Hugging Face.
* Our open-source optimization libraries, [🤗 Optimum Intel](https://huggingface.co/blog/openvino) and [🤗 Optimum ONNX Runtime](https://huggingface.co/docs/optimum/main/en/onnxruntime/overview), to get the highest efficiency out of training and running models for inference.
* Hugging Face [Expert Acceleration Program](https://huggingface.co/support), a commercial service for Hugging Face experts to work directly with your team to accelerate your Machine Learning roadmap and models.
</div>
## Introduction
Transfer learning has changed Machine Learning by reaching new levels of accuracy from Natural Language Processing (NLP) to Audio and Computer Vision tasks. At Hugging Face, we work hard to make these new complex models and large checkpoints as easily accessible and usable as possible. But while researchers and data scientists have converted to the new world of Transformers, few companies have been able to deploy these large, complex models in production at scale.
The main bottleneck is the latency of predictions which can make large deployments expensive to run and real-time use cases impractical. Solving this is a difficult engineering challenge for any Machine Learning Engineering team and requires the use of advanced techniques to optimize models all the way down to the hardware.
With [Hugging Face Infinity](https://huggingface.co/infinity), we offer a containerized solution that makes it easy to deploy low-latency, high-throughput, hardware-accelerated inference pipelines for the most popular Transformer models. Companies can get both the accuracy of Transformers and the efficiency necessary for large volume deployments, all in a simple to use package. In this blog post, we want to share detailed performance results for Infinity running on the latest generation of Intel Xeon CPU, to achieve optimal cost, efficiency, and latency for your Transformer deployments.
## What is Hugging Face Infinity
Hugging Face Infinity is a containerized solution for customers to deploy end-to-end optimized inference pipelines for State-of-the-Art Transformer models, on any infrastructure.
Hugging Face Infinity consists of 2 main services:
* The Infinity Container is a hardware-optimized inference solution delivered as a Docker container.
* Infinity Multiverse is a Model Optimization Service through which a Hugging Face Transformer model is optimized for the Target Hardware. Infinity Multiverse is compatible with Infinity Container.
The Infinity Container is built specifically to run on a Target Hardware architecture and exposes an HTTP /predict endpoint to run inference.
<br>
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="Product overview" src="assets/46_infinity_cpu_performance/overview.png"></medium-zoom>
<figcaption>Figure 1. Infinity Overview</figcaption>
</figure>
<br>
An Infinity Container is designed to serve 1 Model and 1 Task. A Task corresponds to machine learning tasks as defined in the [Transformers Pipelines documentation](https://huggingface.co/docs/transformers/master/en/main_classes/pipelines). As of the writing of this blog post, supported tasks include feature extraction/document embedding, ranking, sequence classification, and token classification.
You can find more information about Hugging Face Infinity at [hf.co/infinity](https://huggingface.co/infinity), and if you are interested in testing it for yourself, you can sign up for a free trial at [hf.co/infinity-trial](https://huggingface.co/infinity-trial).
---
## Benchmark
Inference performance benchmarks often only measure the execution of the model. In this blog post, and when discussing the performance of Infinity, we always measure the end-to-end pipeline including pre-processing, prediction, post-processing. Please keep this in mind when comparing these results with other latency measurements.
<br>
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="Pipeline" src="assets/46_infinity_cpu_performance/pipeline.png"></medium-zoom>
<figcaption>Figure 2. Infinity End-to-End Pipeline</figcaption>
</figure>
<br>
### Environment
As a benchmark environment, we are going to use the [Amazon EC2 C6i instances](https://aws.amazon.com/ec2/instance-types/c6i), which are compute-optimized instances powered by the 3rd generation of Intel Xeon Scalable processors. These new Intel-based instances are using the ice-lake Process Technology and support Intel AVX-512, Intel Turbo Boost, and Intel Deep Learning Boost.
In addition to superior performance for machine learning workloads, the Intel Ice Lake C6i instances offer great cost-performance and are our recommendation to deploy Infinity on Amazon Web Services. To learn more, visit the [EC2 C6i instance](https://aws.amazon.com/ec2/instance-types/c6i) page.
### Methodologies
When it comes to benchmarking BERT-like models, two metrics are most adopted:
* **Latency**: Time it takes for a single prediction of the model (pre-process, prediction, post-process)
* **Throughput**: Number of executions performed in a fixed amount of time for one benchmark configuration, respecting Physical CPU cores, Sequence Length, and Batch Size
These two metrics will be used to benchmark Hugging Face Infinity across different setups to understand the benefits and tradeoffs in this blog post.
---
## Results
To run the benchmark, we created an infinity container for the [EC2 C6i instance](https://aws.amazon.com/ec2/instance-types/c6i) (Ice-lake) and optimized a [DistilBERT](https://huggingface.co/docs/transformers/model_doc/distilbert) model for sequence classification using Infinity Multiverse.
This ice-lake optimized Infinity Container can achieve up to 34% better latency & throughput compared to existing cascade-lake-based instances, and up to 800% better latency & throughput compared to vanilla transformers running on ice-lake.
The Benchmark we created consists of 192 different experiments and configurations. We ran experiments for:
* Physical CPU cores: 1, 2, 4, 8
* Sequence length: 8, 16, 32, 64, 128, 256, 384, 512
* Batch_size: 1, 2, 4, 8, 16, 32
In each experiment, we collect numbers for:
* Throughput (requests per second)
* Latency (min, max, avg, p90, p95, p99)
You can find the full data of the benchmark in this google spreadsheet: [🤗 Infinity: CPU Ice-Lake Benchmark](https://docs.google.com/spreadsheets/d/1GWFb7L967vZtAS1yHhyTOZK1y-ZhdWUFqovv7-73Plg/edit?usp=sharing).
In this blog post, we will highlight a few results of the benchmark including the best latency and throughput configurations.
In addition to this, we deployed the [DistilBERT](https://huggingface.co/bhadresh-savani/distilbert-base-uncased-emotion) model we used for the benchmark as an API endpoint on 2 physical cores. You can test it and get a feeling for the performance of Infinity. Below you will find a `curl` command on how to send a request to the hosted endpoint. The API returns a `x-compute-time` HTTP Header, which contains the duration of the end-to-end pipeline.
```bash
curl --request POST `-i` \
--url https://infinity.huggingface.co/cpu/distilbert-base-uncased-emotion \
--header 'Content-Type: application/json' \
--data '{"inputs":"I like you. I love you"}'
```
### Throughput
Below you can find the throughput comparison for running infinity on 2 physical cores with batch size 1, compared with vanilla transformers.
<br>
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="Throughput" src="assets/46_infinity_cpu_performance/throughput.png"></medium-zoom>
<figcaption>Figure 3. Throughput: Infinity vs Transformers</figcaption>
</figure>
<br>
| Sequence Length | Infinity | Transformers | improvement |
|-----------------|-------------|--------------|-------------|
| 8 | 248 req/sec | 49 req/sec | +506% |
| 16 | 212 req/sec | 50 req/sec | +424% |
| 32 | 150 req/sec | 40 req/sec | +375% |
| 64 | 97 req/sec | 28 req/sec | +346% |
| 128 | 55 req/sec | 18 req/sec | +305% |
| 256 | 27 req/sec | 9 req/sec | +300% |
| 384 | 17 req/sec | 5 req/sec | +340% |
| 512 | 12 req/sec | 4 req/sec | +300% |
### Latency
Below, you can find the latency results for an experiment running Hugging Face Infinity on 2 Physical Cores with Batch Size 1. It is remarkable to see how robust and constant Infinity is, with minimal deviation for p95, p99, or p100 (max latency). This result is confirmed for other experiments as well in the benchmark.
<br>
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="Latency" src="assets/46_infinity_cpu_performance/latency.png"></medium-zoom>
<figcaption>Figure 4. Latency (Batch=1, Physical Cores=2)</figcaption>
</figure>
<br>
---
## Conclusion
In this post, we showed how Hugging Face Infinity performs on the new Intel Ice Lake Xeon CPU. We created a detailed benchmark with over 190 different configurations sharing the results you can expect when using Hugging Face Infinity on CPU, what would be the best configuration to optimize your Infinity Container for latency, and what would be the best configuration to maximize throughput.
Hugging Face Infinity can deliver up to 800% higher throughput compared to vanilla transformers, and down to 1-4ms latency for sequence lengths up to 64 tokens.
The flexibility to optimize transformer models for throughput, latency, or both enables businesses to either reduce the amount of infrastructure cost for the same workload or to enable real-time use cases that were not possible before.
If you are interested in trying out Hugging Face Infinity sign up for your trial at [hf.co/infinity-trial](https://hf.co/infinity-trial)
## Resources
* [Hugging Face Infinity](https://huggingface.co/infinity)
* [Hugging Face Infinity Trial](https://huggingface.co/infinity-trial)
* [Amazon EC2 C6i instances](https://aws.amazon.com/ec2/instance-types/c6i)
* [DistilBERT](https://huggingface.co/docs/transformers/model_doc/distilbert)
* [DistilBERT paper](https://arxiv.org/abs/1910.01108)
* [DistilBERT model](https://huggingface.co/bhadresh-savani/distilbert-base-uncased-emotion)
* [🤗 Infinity: CPU Ice-Lake Benchmark](https://docs.google.com/spreadsheets/d/1GWFb7L967vZtAS1yHhyTOZK1y-ZhdWUFqovv7-73Plg/edit?usp=sharing)
| huggingface/blog/blob/main/infinity-cpu-performance.md |
--
title: "Welcome spaCy to the Hugging Face Hub"
thumbnail: /blog/assets/23_spacy/thumbnail.png
authors:
- user: osanseviero
- user: ines
---
# Welcome spaCy to the Hugging Face Hub
[spaCy](https://github.com/explosion/spaCy) is a popular library for advanced Natural Language Processing used widely across industry. spaCy makes it easy to use and train pipelines for tasks like named entity recognition, text classification, part of speech tagging and more, and lets you build powerful applications to process and analyze large volumes of text.
Hugging Face makes it really easy to share your spaCy pipelines with the community! With a single command, you can upload any pipeline package, with a pretty model card and all required metadata auto-generated for you. The inference API currently supports NER out-of-the-box, and you can try out your pipeline interactively in your browser. You'll also get a live URL for your package that you can `pip install` from anywhere for a smooth path from prototype all the way to production!
### Finding models
Over 60 canonical models can be found in the [spaCy](https://hf.co/spacy) org. These models are from the [latest 3.1 release](https://explosion.ai/blog/spacy-v3-1), so you can try the latest realesed models right now! On top of this, you can find all spaCy models from the community here https://huggingface.co/models?filter=spacy.
### Widgets
This integration includes support for NER widgets, so all models with a NER component will have this out of the box! Coming soon there will be support for text classification and POS.
<div><a class="text-xs block mb-3 text-gray-300" href="/spacy/en_core_web_sm"><code>spacy/en_core_web_sm</code></a>
<div class="SVELTE_HYDRATER " data-props="{"apiUrl":"https://api-inference.huggingface.co","model":{"author":"spacy","autoArchitecture":"AutoModel","branch":"main","cardData":{"tags":["spacy","token-classification"],"language":["en"],"license":"MIT","model-index":[{"name":"en_core_web_sm","results":[{"tasks":{"name":"NER","type":"token-classification","metrics":[{"name":"Precision","type":"precision","value":0.8424355924},{"name":"Recall","type":"recall","value":0.8335336538},{"name":"F Score","type":"f_score","value":0.8379609817}]}},{"tasks":{"name":"POS","type":"token-classification","metrics":[{"name":"Accuracy","type":"accuracy","value":0.9720712187}]}},{"tasks":{"name":"SENTER","type":"token-classification","metrics":[{"name":"Precision","type":"precision","value":0.9074955788},{"name":"Recall","type":"recall","value":0.8801372122},{"name":"F Score","type":"f_score","value":0.893607046}]}},{"tasks":{"name":"UNLABELED_DEPENDENCIES","type":"token-classification","metrics":[{"name":"Accuracy","type":"accuracy","value":0.9185392711}]}},{"tasks":{"name":"LABELED_DEPENDENCIES","type":"token-classification","metrics":[{"name":"Accuracy","type":"accuracy","value":0.9185392711}]}}]}]},"cardSource":true,"id":"spacy/en_core_web_sm","pipeline_tag":"token-classification","library_name":"spacy","modelId":"spacy/en_core_web_sm","private":false,"siblings":[{"rfilename":".gitattributes"},{"rfilename":"LICENSE"},{"rfilename":"LICENSES_SOURCES"},{"rfilename":"README.md"},{"rfilename":"accuracy.json"},{"rfilename":"config.cfg"},{"rfilename":"en_core_web_sm-any-py3-none-any.whl"},{"rfilename":"meta.json"},{"rfilename":"tokenizer"},{"rfilename":"attribute_ruler/patterns"},{"rfilename":"lemmatizer/lookups/lookups.bin"},{"rfilename":"ner/cfg"},{"rfilename":"ner/model"},{"rfilename":"ner/moves"},{"rfilename":"vocab/lookups.bin"},{"rfilename":"vocab/strings.json"},{"rfilename":"vocab/vectors"}],"tags":["en","spacy","token-classification","license:mit","model-index"],"tag_objs":[{"id":"token-classification","label":"Token Classification","type":"pipeline_tag"},{"id":"spacy","label":"spaCy","type":"library"},{"id":"en","label":"en","type":"language"},{"id":"license:mit","label":"mit","type":"license"},{"id":"model-index","label":"model-index","type":"other"}],"widgetData":[{"text":"My name is Wolfgang and I live in Berlin"},{"text":"My name is Sarah and I live in London"},{"text":"My name is Clara and I live in Berkeley, California."}]},"shouldUpdateUrl":true}" data-target="InferenceWidget"><div class="flex flex-col w-full max-w-full
"> <div class="font-semibold flex items-center mb-2"><div class="text-lg flex items-center"><svg xmlns="http://www.w3.org/2000/svg" xmlns:xlink="http://www.w3.org/1999/xlink" aria-hidden="true" focusable="false" role="img" class="-ml-1 mr-1 text-yellow-500" width="1em" height="1em" preserveAspectRatio="xMidYMid meet" viewBox="0 0 24 24"><path d="M11 15H6l7-14v8h5l-7 14v-8z" fill="currentColor"></path></svg>
Hosted inference API</div> <a target="_blank" href="/docs"><svg class="ml-1.5 text-sm text-gray-400 hover:text-black" xmlns="http://www.w3.org/2000/svg" xmlns:xlink="http://www.w3.org/1999/xlink" aria-hidden="true" focusable="false" role="img" width="1em" height="1em" preserveAspectRatio="xMidYMid meet" viewBox="0 0 32 32"><path d="M17 22v-8h-4v2h2v6h-3v2h8v-2h-3z" fill="currentColor"></path><path d="M16 8a1.5 1.5 0 1 0 1.5 1.5A1.5 1.5 0 0 0 16 8z" fill="currentColor"></path><path d="M16 30a14 14 0 1 1 14-14a14 14 0 0 1-14 14zm0-26a12 12 0 1 0 12 12A12 12 0 0 0 16 4z" fill="currentColor"></path></svg></a></div> <div class="flex items-center text-sm text-gray-500 mb-1.5"><div class="inline-flex items-center"><svg class="mr-1" xmlns="http://www.w3.org/2000/svg" xmlns:xlink="http://www.w3.org/1999/xlink" aria-hidden="true" fill="currentColor" focusable="false" role="img" width="1em" height="1em" preserveAspectRatio="xMidYMid meet" viewBox="0 0 18 18"><path d="M11.075 10.1875H12.1625V11.275H11.075V10.1875Z"></path><path d="M15.425 9.10004H16.5125V10.1875H15.425V9.10004Z"></path><path d="M7.8125 3.66254H8.9V4.75004H7.8125V3.66254Z"></path><path d="M8.90001 12.3625H6.72501V9.09998C6.72472 8.81165 6.61005 8.5352 6.40617 8.33132C6.20228 8.12744 5.92584 8.01277 5.63751 8.01248H2.37501C2.08667 8.01277 1.81023 8.12744 1.60635 8.33132C1.40246 8.5352 1.28779 8.81165 1.28751 9.09998V12.3625C1.28779 12.6508 1.40246 12.9273 1.60635 13.1311C1.81023 13.335 2.08667 13.4497 2.37501 13.45H5.63751V15.625C5.63779 15.9133 5.75246 16.1898 5.95635 16.3936C6.16023 16.5975 6.43667 16.7122 6.72501 16.7125H8.90001C9.18834 16.7122 9.46478 16.5975 9.66867 16.3936C9.87255 16.1898 9.98722 15.9133 9.98751 15.625V13.45C9.98722 13.1616 9.87255 12.8852 9.66867 12.6813C9.46478 12.4774 9.18834 12.3628 8.90001 12.3625V12.3625ZM2.37501 12.3625V9.09998H5.63751V12.3625H2.37501ZM6.72501 15.625V13.45H8.90001V15.625H6.72501Z"></path><path d="M15.425 16.7125H13.25C12.9617 16.7122 12.6852 16.5976 12.4813 16.3937C12.2775 16.1898 12.1628 15.9134 12.1625 15.625V13.45C12.1628 13.1617 12.2775 12.8852 12.4813 12.6814C12.6852 12.4775 12.9617 12.3628 13.25 12.3625H15.425C15.7133 12.3628 15.9898 12.4775 16.1937 12.6814C16.3976 12.8852 16.5122 13.1617 16.5125 13.45V15.625C16.5122 15.9134 16.3976 16.1898 16.1937 16.3937C15.9898 16.5976 15.7133 16.7122 15.425 16.7125ZM13.25 13.45V15.625H15.425V13.45H13.25Z"></path><path d="M15.425 1.48752H12.1625C11.8742 1.48781 11.5977 1.60247 11.3938 1.80636C11.19 2.01024 11.0753 2.28668 11.075 2.57502V5.83752H9.98751C9.69917 5.83781 9.42273 5.95247 9.21885 6.15636C9.01496 6.36024 8.9003 6.63668 8.90001 6.92502V8.01252C8.9003 8.30085 9.01496 8.5773 9.21885 8.78118C9.42273 8.98506 9.69917 9.09973 9.98751 9.10002H11.075C11.3633 9.09973 11.6398 8.98506 11.8437 8.78118C12.0476 8.5773 12.1622 8.30085 12.1625 8.01252V6.92502H15.425C15.7133 6.92473 15.9898 6.81006 16.1937 6.60618C16.3976 6.4023 16.5122 6.12585 16.5125 5.83752V2.57502C16.5122 2.28668 16.3976 2.01024 16.1937 1.80636C15.9898 1.60247 15.7133 1.48781 15.425 1.48752ZM9.98751 8.01252V6.92502H11.075V8.01252H9.98751ZM12.1625 5.83752V2.57502H15.425V5.83752H12.1625Z"></path><path d="M4.55001 5.83752H2.37501C2.08667 5.83723 1.81023 5.72256 1.60635 5.51868C1.40246 5.3148 1.28779 5.03835 1.28751 4.75002V2.57502C1.28779 2.28668 1.40246 2.01024 1.60635 1.80636C1.81023 1.60247 2.08667 1.48781 2.37501 1.48752H4.55001C4.83834 1.48781 5.11478 1.60247 5.31867 1.80636C5.52255 2.01024 5.63722 2.28668 5.63751 2.57502V4.75002C5.63722 5.03835 5.52255 5.3148 5.31867 5.51868C5.11478 5.72256 4.83834 5.83723 4.55001 5.83752V5.83752ZM2.37501 2.57502V4.75002H4.55001V2.57502H2.37501Z"></path></svg> <span>Token Classification</span></div> <div class="ml-auto"></div></div> <form><div class="flex h-10"><input class="form-input-alt flex-1 rounded-r-none " placeholder="Your sentence here..." required="" type="text"> <button class="btn-widget w-24 h-10 px-5 rounded-l-none border-l-0 " type="submit">Compute</button></div></form> <div class="mt-1.5"><div class="text-gray-400 text-xs">This model is currently loaded and running on the Inference API.</div> </div> <div class="mt-auto pt-4 flex items-center text-xs text-gray-500"><button class="flex items-center cursor-not-allowed text-gray-300" disabled=""><svg class="mr-1" xmlns="http://www.w3.org/2000/svg" xmlns:xlink="http://www.w3.org/1999/xlink" aria-hidden="true" focusable="false" role="img" width="1em" height="1em" preserveAspectRatio="xMidYMid meet" viewBox="0 0 32 32" style="transform: rotate(360deg);"><path d="M31 16l-7 7l-1.41-1.41L28.17 16l-5.58-5.59L24 9l7 7z" fill="currentColor"></path><path d="M1 16l7-7l1.41 1.41L3.83 16l5.58 5.59L8 23l-7-7z" fill="currentColor"></path><path d="M12.419 25.484L17.639 6l1.932.518L14.35 26z" fill="currentColor"></path></svg>
JSON Output</button> <button class="flex items-center ml-auto"><svg class="mr-1" xmlns="http://www.w3.org/2000/svg" xmlns:xlink="http://www.w3.org/1999/xlink" aria-hidden="true" focusable="false" role="img" width="1em" height="1em" preserveAspectRatio="xMidYMid meet" viewBox="0 0 32 32"><path d="M22 16h2V8h-8v2h6v6z" fill="currentColor"></path><path d="M8 24h8v-2h-6v-6H8v8z" fill="currentColor"></path><path d="M26 28H6a2.002 2.002 0 0 1-2-2V6a2.002 2.002 0 0 1 2-2h20a2.002 2.002 0 0 1 2 2v20a2.002 2.002 0 0 1-2 2zM6 6v20h20.001L26 6z" fill="currentColor"></path></svg>
Maximize</button></div> </div></div></div>
### Using existing models
All models from the Hub can be directly installed using `pip install`.
```bash
pip install https://huggingface.co/spacy/en_core_web_sm/resolve/main/en_core_web_sm-any-py3-none-any.whl
```
```python
# Using spacy.load().
import spacy
nlp = spacy.load("en_core_web_sm")
# Importing as module.
import en_core_web_sm
nlp = en_core_web_sm.load()
```
When you open a repository, you can click `Use in spaCy` and you will be given a working snippet that you can use to install and load the model!
![snippet](assets/23_spacy/snippet.png)
![snippet](assets/23_spacy/snippet2.png)
You can even make HTTP requests to call the models from the Inference API, which is useful in production settings. Here is an example of a simple request:
```bash
curl -X POST --data '{"inputs": "Hello, this is Omar"}' https://api-inference.huggingface.co/models/spacy/en_core_web_sm
>>> [{"entity_group":"PERSON","word":"Omar","start":15,"end":19,"score":1.0}]
```
And for larger-scale use cases, you can click "Deploy > Accelerated Inference" and see how to do this with Python.
### Sharing your models
But probably the coolest feature is that now you can very easily share your models with the `spacy-huggingface-hub` [library](https://github.com/explosion/spacy-huggingface-hub), which extends the `spaCy` CLI with a new command, `huggingface-hub push`.
```bash
huggingface-cli login
python -m spacy package ./en_ner_fashion ./output --build wheel
cd ./output/en_ner_fashion-0.0.0/dist
python -m spacy huggingface-hub push en_ner_fashion-0.0.0-py3-none-any.whl
```
In just a minute, you can get your packaged model in the Hub, try it out directly in the browser, and share it with the rest of the community. All the required metadata will be uploaded for you and you even get a cool model card.
Try it out and share your models with the community!
## Would you like to integrate your library to the Hub?
This integration is possible thanks to the [`huggingface_hub`](https://github.com/huggingface/huggingface_hub) library which has all our widgets and the API for all our supported libraries. If you would like to integrate your library to the Hub, we have a [guide](https://huggingface.co/docs/hub/models-adding-libraries) for you!
| huggingface/blog/blob/main/spacy.md |
--
title: "Nyströmformer: Approximating self-attention in linear time and memory via the Nyström method"
thumbnail: /blog/assets/86_nystromformer/thumbnail.png
authors:
- user: asi
guest: true
---
# Nyströmformer: Approximating self-attention in linear time and memory via the Nyström method
<script async defer src="https://unpkg.com/medium-zoom-element@0/dist/medium-zoom-element.min.js"></script>
## Introduction
Transformers have exhibited remarkable performance on various Natural Language Processing and Computer Vision tasks. Their success can be attributed to the self-attention mechanism, which captures the pairwise interactions between all the tokens in an input. However, the standard self-attention mechanism has a time and memory complexity of \\(O(n^2)\\) (where \\(n\\) is the length of the input sequence), making it expensive to train on long input sequences.
The [Nyströmformer](https://arxiv.org/abs/2102.03902) is one of many efficient Transformer models that approximates standard self-attention with \\(O(n)\\) complexity. Nyströmformer exhibits competitive performance on various downstream NLP and CV tasks while improving upon the efficiency of standard self-attention. The aim of this blog post is to give readers an overview of the Nyström method and how it can be adapted to approximate self-attention.
## Nyström method for matrix approximation
At the heart of Nyströmformer is the Nyström method for matrix approximation. It allows us to approximate a matrix by sampling some of its rows and columns. Let's consider a matrix \\(P^{n \times n}\\), which is expensive to compute in its entirety. So, instead, we approximate it using the Nyström method. We start by sampling \\(m\\) rows and columns from \\(P\\). We can then arrange the sampled rows and columns as follows:
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="Representing P as a block matrix" src="assets/86_nystromformer/p_block.png"></medium-zoom>
<figcaption>Representing P as a block matrix</figcaption>
</figure>
We now have four submatrices: \\(A_P, B_P, F_P,\\) and \\(C_P\\), with sizes \\(m \times m, m \times (n - m), (n - m) \times m\\) and
\\((n - m) \times (n - m)\\) respectively. The \\(m\\) sampled columns are contained in \\(A_P\\) and \\(F_P\\), whereas the \\(m\\) sampled rows are contained in \\(A_P\\) and \\(B_P\\). So, the entries of \\(A_P, B_P,\\) and \\(F_P\\) are known to us, and we will estimate \\(C_P\\). According to the Nyström method, \\(C_P\\) is given by:
$$C_P = F_P A_P^+ B_P$$
Here, \\(+\\) denotes the Moore-Penrose inverse (or pseudoinverse).
Thus, the Nyström approximation of \\(P, \hat{P}\\) can be written as:
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="Nyström approximation of P" src="assets/86_nystromformer/p_hat.png"></medium-zoom>
<figcaption>Nyström approximation of P</figcaption>
</figure>
As shown in the second line, \\(\hat{P}\\) can be expressed as a product of three matrices. The reason for doing so will become clear later.
## Can we approximate self-attention with the Nyström method?
Our goal is to ultimately approximate the softmax matrix in standard self attention: S = softmax \\( \frac{QK^T}{\sqrt{d}} \\)
Here, \\(Q\\) and \\(K\\) denote the queries and keys respectively. Following the procedure discussed above, we would sample \\(m\\) rows and columns from \\(S\\), form four submatrices, and obtain \\(\hat{S}\\):
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="Nyström approximation of S" src="assets/86_nystromformer/s_hat.png"></medium-zoom>
<figcaption>Nyström approximation of S</figcaption>
</figure>
But, what does it mean to sample a column from \\(S\\)? It means we select one element from each row. Recall how S is calculated: the final operation is a row-wise softmax. To find a single entry in a row, we must access all other entries (for the denominator in softmax). So, sampling one column requires us to know all other columns in the matrix. Therefore, we cannot directly apply the Nyström method to approximate the softmax matrix.
## How can we adapt the Nyström method to approximate self-attention?
Instead of sampling from \\(S\\), the authors propose to sample landmarks (or Nyström points) from queries and keys. We denote the query landmarks and key landmarks as \\(\tilde{Q}\\) and \\(\tilde{K}\\) respectively. \\(\tilde{Q}\\) and \\(\tilde{K}\\) can be used to construct three matrices corresponding to those in the Nyström approximation of \\(S\\). We define the following matrices:
$$\tilde{F} = softmax(\frac{Q\tilde{K}^T}{\sqrt{d}}) \hspace{40pt} \tilde{A} = softmax(\frac{\tilde{Q}\tilde{K}^T}{\sqrt{d}})^+ \hspace{40pt} \tilde{B} = softmax(\frac{\tilde{Q}K^T}{\sqrt{d}})$$
The sizes of \\(\tilde{F}\\), \\(\tilde{A}\\), and \\(\tilde{B}) are \\(n \times m, m \times m,\\) and \\(m \times n\\) respectively.
We replace the three matrices in the Nyström approximation of \\(S\\) with the new matrices we have defined to obtain an alternative Nyström approximation:
$$\begin{aligned}\hat{S} &= \tilde{F} \tilde{A} \tilde{B} \\ &= softmax(\frac{Q\tilde{K}^T}{\sqrt{d}}) softmax(\frac{\tilde{Q}\tilde{K}^T}{\sqrt{d}})^+ softmax(\frac{\tilde{Q}K^T}{\sqrt{d}}) \end{aligned}$$
This is the Nyström approximation of the softmax matrix in the self-attention mechanism. We multiply this matrix with the values ( \\(V\\)) to obtain a linear approximation of self-attention. Note that we never calculated the product \\(QK^T\\), avoiding the \\(O(n^2)\\) complexity.
## How do we select landmarks?
Instead of sampling \\(m\\) rows from \\(Q\\) and \\(K\\), the authors propose to construct \\(\tilde{Q}\\) and \\(\tilde{K}\\)
using segment means. In this procedure, \\(n\\) tokens are grouped into \\(m\\) segments, and the mean of each segment is computed. Ideally, \\(m\\) is much smaller than \\(n\\). According to experiments from the paper, selecting just \\(32\\) or \\(64\\) landmarks produces competetive performance compared to standard self-attention and other efficient attention mechanisms, even for long sequences lengths ( \\(n=4096\\) or \\(8192\\)).
The overall algorithm is summarised by the following figure from the paper:
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="Efficient self-attention with the Nyström method" src="assets/86_nystromformer/paper_figure.png"></medium-zoom>
<figcaption>Efficient self-attention with the Nyström method</figcaption>
</figure>
The three orange matrices above correspond to the three matrices we constructed using the key and query landmarks. Also, notice that there is a DConv box. This corresponds to a skip connection added to the values using a 1D depthwise convolution.
## How is Nyströmformer implemented?
The original implementation of Nyströmformer can be found [here](https://github.com/mlpen/Nystromformer) and the HuggingFace implementation can be found [here](https://github.com/huggingface/transformers/blob/main/src/transformers/models/nystromformer/modeling_nystromformer.py). Let's take a look at a few lines of code (with some comments added) from the HuggingFace implementation. Note that some details such as normalization, attention masking, and depthwise convolution are avoided for simplicity.
```python
key_layer = self.transpose_for_scores(self.key(hidden_states)) # K
value_layer = self.transpose_for_scores(self.value(hidden_states)) # V
query_layer = self.transpose_for_scores(mixed_query_layer) # Q
q_landmarks = query_layer.reshape(
-1,
self.num_attention_heads,
self.num_landmarks,
self.seq_len // self.num_landmarks,
self.attention_head_size,
).mean(dim=-2) # \tilde{Q}
k_landmarks = key_layer.reshape(
-1,
self.num_attention_heads,
self.num_landmarks,
self.seq_len // self.num_landmarks,
self.attention_head_size,
).mean(dim=-2) # \tilde{K}
kernel_1 = torch.nn.functional.softmax(torch.matmul(query_layer, k_landmarks.transpose(-1, -2)), dim=-1) # \tilde{F}
kernel_2 = torch.nn.functional.softmax(torch.matmul(q_landmarks, k_landmarks.transpose(-1, -2)), dim=-1) # \tilde{A} before pseudo-inverse
attention_scores = torch.matmul(q_landmarks, key_layer.transpose(-1, -2)) # \tilde{B} before softmax
kernel_3 = nn.functional.softmax(attention_scores, dim=-1) # \tilde{B}
attention_probs = torch.matmul(kernel_1, self.iterative_inv(kernel_2)) # \tilde{F} * \tilde{A}
new_value_layer = torch.matmul(kernel_3, value_layer) # \tilde{B} * V
context_layer = torch.matmul(attention_probs, new_value_layer) # \tilde{F} * \tilde{A} * \tilde{B} * V
```
## Using Nyströmformer with HuggingFace
Nyströmformer for Masked Language Modeling (MLM) is available on HuggingFace. Currently, there are 4 checkpoints, corresponding to various sequence lengths: [`nystromformer-512`](https://huggingface.co/uw-madison/nystromformer-512), [`nystromformer-1024`](https://huggingface.co/uw-madison/nystromformer-1024), [`nystromformer-2048`](https://huggingface.co/uw-madison/nystromformer-2048), and [`nystromformer-4096`](https://huggingface.co/uw-madison/nystromformer-4096). The number of landmarks, \\(m\\), can be controlled using the `num_landmarks` parameter in the [`NystromformerConfig`](https://huggingface.co/docs/transformers/v4.18.0/en/model_doc/nystromformer#transformers.NystromformerConfig). Let's take a look at a minimal example of Nyströmformer for MLM:
```python
from transformers import AutoTokenizer, NystromformerForMaskedLM
import torch
tokenizer = AutoTokenizer.from_pretrained("uw-madison/nystromformer-512")
model = NystromformerForMaskedLM.from_pretrained("uw-madison/nystromformer-512")
inputs = tokenizer("Paris is the [MASK] of France.", return_tensors="pt")
with torch.no_grad():
logits = model(**inputs).logits
# retrieve index of [MASK]
mask_token_index = (inputs.input_ids == tokenizer.mask_token_id)[0].nonzero(as_tuple=True)[0]
predicted_token_id = logits[0, mask_token_index].argmax(axis=-1)
tokenizer.decode(predicted_token_id)
```
<div class="output stream stdout">
Output:
----------------------------------------------------------------------------------------------------
capital
</div>
Alternatively, we can use the [pipeline API](https://huggingface.co/docs/transformers/main_classes/pipelines) (which handles all the complexity for us):
```python
from transformers import pipeline
unmasker = pipeline('fill-mask', model='uw-madison/nystromformer-512')
unmasker("Paris is the [MASK] of France.")
```
<div class="output stream stdout">
Output:
----------------------------------------------------------------------------------------------------
[{'score': 0.829957902431488,
'token': 1030,
'token_str': 'capital',
'sequence': 'paris is the capital of france.'},
{'score': 0.022157637402415276,
'token': 16081,
'token_str': 'birthplace',
'sequence': 'paris is the birthplace of france.'},
{'score': 0.01904447190463543,
'token': 197,
'token_str': 'name',
'sequence': 'paris is the name of france.'},
{'score': 0.017583081498742104,
'token': 1107,
'token_str': 'kingdom',
'sequence': 'paris is the kingdom of france.'},
{'score': 0.005948934704065323,
'token': 148,
'token_str': 'city',
'sequence': 'paris is the city of france.'}]
</div>
## Conclusion
Nyströmformer offers an efficient approximation to the standard self-attention mechanism, while outperforming other linear self-attention schemes. In this blog post, we went over a high-level overview of the Nyström method and how it can be leveraged for self-attention. Readers interested in deploying or fine-tuning Nyströmformer for downstream tasks can find the HuggingFace documentation [here](https://huggingface.co/docs/transformers/model_doc/nystromformer).
| huggingface/blog/blob/main/nystromformer.md |
ote: the following transcripts are associated with Merve Noyan's videos in the Hugging Face Tasks playlist: https://www.youtube.com/playlist?list=PLo2EIpI_JMQtyEr-sLJSy5_SnLCb4vtQf
Token Classification video
Welcome to the Hugging Face tasks series! In this video we’ll take a look at the token classification task.
Token classification is the task of assigning a label to each token in a sentence. There are various token classification tasks and the most common are Named Entity Recognition and Part-of-Speech Tagging.
Let’s take a quick look at the Named Entity Recognition task. The goal of this task is to find the entities in a piece of text, such as person, location, or organization. This task is formulated as labelling each token with one class for each entity, and another class for tokens that have no entity.
Another token classification task is part-of-speech tagging. The goal of this task is to label the words for a particular part of a speech, such as noun, pronoun, adjective, verb and so on. This task is formulated as labelling each token with parts of speech.
Token classification models are evaluated on Accuracy, Recall, Precision and F1-Score. The metrics are calculated for each of the classes. We calculate true positive, true negative and false positives to calculate precision and recall, and take their harmonic mean to get F1-Score. Then we calculate it for every class and take the overall average to evaluate our model.
An example dataset used for this task is ConLL2003. Here, each token belongs to a certain named entity class, denoted as the indices of the list containing the labels.
You can extract important information from invoices using named entity recognition models, such as date, organization name or address.
For more information about the Token classification task, check out the Hugging Face course.
Question Answering video
Welcome to the Hugging Face tasks series. In this video, we will take a look at the Question Answering task.
Question answering is the task of extracting an answer in a given document.
Question answering models take a context, which is the document you want to search in, and a question and return an answer. Note that the answer is not generated, but extracted from the context. This type of question answering is called extractive.
The task is evaluated on two metrics, exact match and F1-Score.
As the name implies, exact match looks for an exact match between the predicted answer and the correct answer.
A common metric used is the F1-Score, which is calculated over tokens that are predicted correctly and incorrectly. It is calculated over the average of two metrics called precision and recall which are metrics that are used widely in classification problems.
An example dataset used for this task is called SQuAD. This dataset contains contexts, questions and the answers that are obtained from English Wikipedia articles.
You can use question answering models to automatically answer the questions asked by your customers. You simply need a document containing information about your business and query through that document with the questions asked by your customers.
For more information about the Question Answering task, check out the Hugging Face course.
Causal Language Modeling video
Welcome to the Hugging Face tasks series! In this video we’ll take a look at Causal Language Modeling.
Causal language modeling is the task of predicting the next
word in a sentence, given all the previous words. This task is very similar to the autocorrect function that you might have on your phone.
These models take a sequence to be completed and outputs the complete sequence.
Classification metrics can’t be used as there’s no single correct answer for completion. Instead, we evaluate the distribution of the text completed by the model.
A common metric to do so is the cross-entropy loss. Perplexity is also a widely used metric and it is calculated as the exponential of the cross-entropy loss.
You can use any dataset with plain text and tokenize the text to prepare the data.
Causal language models can be used to generate code.
For more information about the Causal Language Modeling task, check out the Hugging Face course.
Masked Language Modeling video
Welcome to the Hugging Face tasks series! In this video we’ll take a look at Masked Language Modeling.
Masked language modeling is the task of predicting which words should fill in the blanks of a sentence.
These models take a masked text as the input and output the possible values for that mask.
Masked language modeling is handy before fine-tuning your model for your task. For example, if you need to use a model in a specific domain, say, biomedical documents, models like BERT will treat your domain-specific words as rare tokens. If you train a masked language model using your biomedical corpus and then fine tune your model on a downstream task, you will have a better performance.
Classification metrics can’t be used as there’s no single correct answer to mask values. Instead, we evaluate the distribution of the mask values.
A common metric to do so is the cross-entropy loss. Perplexity is also a widely used metric and it is calculated as the exponential of the cross-entropy loss.
You can use any dataset with plain text and tokenize the text to mask the data.
For more information about the Masked Language Modeling, check out the Hugging Face course.
Summarization video
Welcome to the Hugging Face tasks series. In this video, we will take a look at the Text Summarization task.
Summarization is a task of producing a shorter version of a document while preserving the relevant and important information in the document.
Summarization models take a document to be summarized and output the summarized text.
This task is evaluated on the ROUGE score. It’s based on the overlap between the produced sequence and the correct sequence.
You might see this as ROUGE-1, which is the overlap of single tokens and ROUGE-2, the overlap of subsequent token pairs. ROUGE-N refers to the overlap of n subsequent tokens. Here we see an example of how overlaps take place.
An example dataset used for this task is called Extreme Summarization, XSUM. This dataset contains texts and their summarized versions.
You can use summarization models to summarize research papers which would enable researchers to easily pick papers for their reading list.
For more information about the Summarization task, check out the Hugging Face course.
Translation video
Welcome to the Hugging Face tasks series. In this video, we will take a look at the Translation task.
Translation is the task of translating text from one language to another.
These models take a text in the source language and output the translation of that text in the target language.
The task is evaluated on the BLEU score.
The score ranges from 0 to 1, in which 1 means the translation perfectly matched and 0 did not match at all.
BLEU is calculated over subsequent tokens called n-grams. Unigram refers to a single token while bi-gram refers to token pairs and n-grams refer to n subsequent tokens.
Machine translation datasets contain pairs of text in a language and translation of the text in another language.
These models can help you build conversational agents across different languages.
One option is to translate the training data used for the chatbot and train a separate chatbot.
You can put one translation model from your user’s language to the language your chatbot is trained on, translate the user inputs and do intent classification, take the output of the chatbot and translate it from the language your chatbot was trained on to the user’s language.
For more information about the Translation task, check out the Hugging Face course.
| huggingface/course/blob/main/subtitles/en/raw/tasks.md |
--
title: Zero-shot image segmentation with CLIPSeg
thumbnail: /blog/assets/123_clipseg-zero-shot/thumb.png
authors:
- user: segments-tobias
guest: true
- user: nielsr
---
# Zero-shot image segmentation with CLIPSeg
<script async defer src="https://unpkg.com/medium-zoom-element@0/dist/medium-zoom-element.min.js"></script>
<a target="_blank" href="https://colab.research.google.com/github/huggingface/blog/blob/main/notebooks/123_clipseg-zero-shot.ipynb">
<img src="https://colab.research.google.com/assets/colab-badge.svg" alt="Open In Colab"/>
</a>
**This guide shows how you can use [CLIPSeg](https://huggingface.co/docs/transformers/main/en/model_doc/clipseg), a zero-shot image segmentation model, using [`🤗 transformers`](https://huggingface.co/transformers). CLIPSeg creates rough segmentation masks that can be used for robot perception, image inpainting, and many other tasks. If you need more precise segmentation masks, we’ll show how you can refine the results of CLIPSeg on [Segments.ai](https://segments.ai/?utm_source=hf&utm_medium=blog&utm_campaign=clipseg).**
Image segmentation is a well-known task within the field of computer vision. It allows a computer to not only know what is in an image (classification), where objects are in the image (detection), but also what the outlines of those objects are. Knowing the outlines of objects is essential in fields such as robotics and autonomous driving. For example, a robot has to know the shape of an object to grab it correctly. Segmentation can also be combined with [image inpainting](https://t.co/5q8YHSOfx7) to allow users to describe which part of the image they want to replace.
One limitation of most image segmentation models is that they only work with a fixed list of categories. For example, you cannot simply use a segmentation model trained on oranges to segment apples. To teach the segmentation model an additional category, you have to label data of the new category and train a new model, which can be costly and time-consuming. But what if there was a model that can already segment almost any kind of object, without any further training? That’s exactly what [CLIPSeg](https://arxiv.org/abs/2112.10003), a zero-shot segmentation model, achieves.
Currently, CLIPSeg still has its limitations. For example, the model uses images of 352 x 352 pixels, so the output is quite low-resolution. This means we cannot expect pixel-perfect results when we work with images from modern cameras. If we want more precise segmentations, we can fine-tune a state-of-the-art segmentation model, as shown in [our previous blog post](https://huggingface.co/blog/fine-tune-segformer). In that case, we can still use CLIPSeg to generate some rough labels, and then refine them in a labeling tool such as [Segments.ai](https://segments.ai/?utm_source=hf&utm_medium=blog&utm_campaign=clipseg). Before we describe how to do that, let’s first take a look at how CLIPSeg works.
## CLIP: the magic model behind CLIPSeg
[CLIP](https://huggingface.co/docs/transformers/main/en/model_doc/clip), which stands for **C**ontrastive **L**anguage–**I**mage **P**re-training, is a model developed by OpenAI in 2021. You can give CLIP an image or a piece of text, and CLIP will output an abstract *representation* of your input. This abstract representation, also called an *embedding*, is really just a vector (a list of numbers). You can think of this vector as a point in high-dimensional space. CLIP is trained so that the representations of similar pictures and texts are similar as well. This means that if we input an image and a text description that fits that image, the representations of the image and the text will be similar (i.e., the high-dimensional points will be close together).
At first, this might not seem very useful, but it is actually very powerful. As an example, let’s take a quick look at how CLIP can be used to classify images without ever having been trained on that task. To classify an image, we input the image and the different categories we want to choose from to CLIP (e.g. we input an image and the words “apple”, “orange”, …). CLIP then gives us back an embedding of the image and of each category. Now, we simply have to check which category embedding is closest to the embedding of the image, et voilà! Feels like magic, doesn’t it?
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="Overview of the CLIPSeg model" src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/blog/123_clipseg-zero-shot/clip-tv-example.png"></medium-zoom>
<figcaption>Example of image classification using CLIP (<a href="https://openai.com/blog/clip/">source</a>).</figcaption>
</figure>
What’s more, CLIP is not only useful for classification, but it can also be used for [image search](https://huggingface.co/spaces/DrishtiSharma/Text-to-Image-search-using-CLIP) (can you see how this is similar to classification?), [text-to-image models](https://huggingface.co/spaces/kamiyamai/stable-diffusion-webui) ([DALL-E 2](https://openai.com/dall-e-2/) is powered by CLIP), [object detection](https://segments.ai/zeroshot?utm_source=hf&utm_medium=blog&utm_campaign=clipseg) ([OWL-ViT](https://arxiv.org/abs/2205.06230)), and most importantly for us: image segmentation. Now you see why CLIP was truly a breakthrough in machine learning.
The reason why CLIP works so well is that the model was trained on a huge dataset of images with text captions. The dataset contained a whopping 400 million image-text pairs taken from the internet. These images contain a wide variety of objects and concepts, and CLIP is great at creating a representation for each of them.
## CLIPSeg: image segmentation with CLIP
[CLIPSeg](https://arxiv.org/abs/2112.10003) is a model that uses CLIP representations to create image segmentation masks. It was published by Timo Lüddecke and Alexander Ecker. They achieved zero-shot image segmentation by training a Transformer-based decoder on top of the CLIP model, which is kept frozen. The decoder takes in the CLIP representation of an image, and the CLIP representation of the thing you want to segment. Using these two inputs, the CLIPSeg decoder creates a binary segmentation mask. To be more precise, the decoder doesn’t only use the final CLIP representation of the image we want to segment, but it also uses the outputs of some of the layers of CLIP.
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="Overview of the CLIPSeg model" src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/blog/123_clipseg-zero-shot/clipseg-overview.png"></medium-zoom>
<figcaption><a href="https://arxiv.org/abs/2112.10003">Source</a></figcaption>
</figure>
The decoder is trained on the [PhraseCut dataset](https://arxiv.org/abs/2008.01187), which contains over 340,000 phrases with corresponding image segmentation masks. The authors also experimented with various augmentations to expand the size of the dataset. The goal here is not only to be able to segment the categories that are present in the dataset, but also to segment unseen categories. Experiments indeed show that the decoder can generalize to unseen categories.
One interesting feature of CLIPSeg is that both the query (the image we want to segment) and the prompt (the thing we want to segment in the image) are input as CLIP embeddings. The CLIP embedding for the prompt can either come from a piece of text (the category name), **or from another image**. This means you can segment oranges in a photo by giving CLIPSeg an example image of an orange.
This technique, which is called "visual prompting", is really helpful when the thing you want to segment is hard to describe. For example, if you want to segment a logo in a picture of a t-shirt, it's not easy to describe the shape of the logo, but CLIPSeg allows you to simply use the image of the logo as the prompt.
The CLIPSeg paper contains some tips on improving the effectiveness of visual prompting. They find that cropping the query image (so that it only contains the object you want to segment) helps a lot. Blurring and darkening the background of the query image also helps a little bit. In the next section, we'll show how you can try out visual prompting yourself using [`🤗 transformers`](https://huggingface.co/transformers).
## Using CLIPSeg with Hugging Face Transformers
Using Hugging Face Transformers, you can easily download and run a
pre-trained CLIPSeg model on your images. Let's start by installing
transformers.
```python
!pip install -q transformers
```
To download the model, simply instantiate it.
```python
from transformers import CLIPSegProcessor, CLIPSegForImageSegmentation
processor = CLIPSegProcessor.from_pretrained("CIDAS/clipseg-rd64-refined")
model = CLIPSegForImageSegmentation.from_pretrained("CIDAS/clipseg-rd64-refined")
```
Now we can load an image to try out the segmentation. We\'ll choose a
picture of a delicious breakfast taken by [Calum
Lewis](https://unsplash.com/@calumlewis).
```python
from PIL import Image
import requests
url = "https://unsplash.com/photos/8Nc_oQsc2qQ/download?ixid=MnwxMjA3fDB8MXxhbGx8fHx8fHx8fHwxNjcxMjAwNzI0&force=true&w=640"
image = Image.open(requests.get(url, stream=True).raw)
image
```
<figure class="image table text-center m-0 w-6/12">
<medium-zoom background="rgba(0,0,0,.7)" alt="A picture of a pancake breakfast." src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/blog/123_clipseg-zero-shot/73d97c93dc0f5545378e433e956509b8acafb8d9.png"></medium-zoom>
</figure>
### Text prompting
Let's start by defining some text categories we want to segment.
```python
prompts = ["cutlery", "pancakes", "blueberries", "orange juice"]
```
Now that we have our inputs, we can process them and input them to the
model.
```python
import torch
inputs = processor(text=prompts, images=[image] * len(prompts), padding="max_length", return_tensors="pt")
# predict
with torch.no_grad():
outputs = model(**inputs)
preds = outputs.logits.unsqueeze(1)
```
Finally, let's visualize the output.
```python
import matplotlib.pyplot as plt
_, ax = plt.subplots(1, len(prompts) + 1, figsize=(3*(len(prompts) + 1), 4))
[a.axis('off') for a in ax.flatten()]
ax[0].imshow(image)
[ax[i+1].imshow(torch.sigmoid(preds[i][0])) for i in range(len(prompts))];
[ax[i+1].text(0, -15, prompt) for i, prompt in enumerate(prompts)];
```
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="The masks of the different categories in the breakfast image." src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/blog/123_clipseg-zero-shot/14c048ea92645544c1bbbc9e55f3c620eaab8886.png"></medium-zoom>
</figure>
### Visual prompting
As mentioned before, we can also use images as the input prompts (i.e.
in place of the category names). This can be especially useful if it\'s
not easy to describe the thing you want to segment. For this example,
we\'ll use a picture of a coffee cup taken by [Daniel
Hooper](https://unsplash.com/@dan_fromyesmorecontent).
```python
url = "https://unsplash.com/photos/Ki7sAc8gOGE/download?ixid=MnwxMjA3fDB8MXxzZWFyY2h8MTJ8fGNvZmZlJTIwdG8lMjBnb3xlbnwwfHx8fDE2NzExOTgzNDQ&force=true&w=640"
prompt = Image.open(requests.get(url, stream=True).raw)
prompt
```
<figure class="image table text-center m-0 w-6/12">
<medium-zoom background="rgba(0,0,0,.7)" alt="A picture of a paper coffee cup." src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/blog/123_clipseg-zero-shot/7931f9db82ab07af7d161f0cfbfc347645da6646.png"></medium-zoom>
</figure>
We can now process the input image and prompt image and input them to
the model.
```python
encoded_image = processor(images=[image], return_tensors="pt")
encoded_prompt = processor(images=[prompt], return_tensors="pt")
# predict
with torch.no_grad():
outputs = model(**encoded_image, conditional_pixel_values=encoded_prompt.pixel_values)
preds = outputs.logits.unsqueeze(1)
preds = torch.transpose(preds, 0, 1)
```
Then, we can visualize the results as before.
```python
_, ax = plt.subplots(1, 2, figsize=(6, 4))
[a.axis('off') for a in ax.flatten()]
ax[0].imshow(image)
ax[1].imshow(torch.sigmoid(preds[0]))
```
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="The mask of the coffee cup in the breakfast image." src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/blog/123_clipseg-zero-shot/fbde45fc65907d17de38b0db3eb262bdec1f1784.png"></medium-zoom>
</figure>
Let's try one last time by using the visual prompting tips described in
the paper, i.e. cropping the image and darkening the background.
```python
url = "https://i.imgur.com/mRSORqz.jpg"
alternative_prompt = Image.open(requests.get(url, stream=True).raw)
alternative_prompt
```
<figure class="image table text-center m-0 w-6/12">
<medium-zoom background="rgba(0,0,0,.7)" alt="A cropped version of the image of the coffee cup with a darker background." src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/blog/123_clipseg-zero-shot/915a97da22131e0ab6ff4daa78ffe3f1889e3386.png"></medium-zoom>
</figure>
```python
encoded_alternative_prompt = processor(images=[alternative_prompt], return_tensors="pt")
# predict
with torch.no_grad():
outputs = model(**encoded_image, conditional_pixel_values=encoded_alternative_prompt.pixel_values)
preds = outputs.logits.unsqueeze(1)
preds = torch.transpose(preds, 0, 1)
```
```python
_, ax = plt.subplots(1, 2, figsize=(6, 4))
[a.axis('off') for a in ax.flatten()]
ax[0].imshow(image)
ax[1].imshow(torch.sigmoid(preds[0]))
```
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="The mask of the coffee cup in the breakfast image." src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/blog/123_clipseg-zero-shot/7f75badfc245fc3a75e0e05058b8c4b6a3a991fa.png"></medium-zoom>
</figure>
In this case, the result is pretty much the same. This is probably
because the coffee cup was already separated well from the background in
the original image.
## Using CLIPSeg to pre-label images on Segments.ai
As you can see, the results from CLIPSeg are a little fuzzy and very
low-res. If we want to obtain better results, you can fine-tune a
state-of-the-art segmentation model, as explained in [our previous
blogpost](https://huggingface.co/blog/fine-tune-segformer). To finetune
the model, we\'ll need labeled data. In this section, we\'ll show you
how you can use CLIPSeg to create some rough segmentation masks and then
refine them on
[Segments.ai](https://segments.ai/?utm_source=hf&utm_medium=blog&utm_campaign=clipseg),
a labeling platform with smart labeling tools for image segmentation.
First, create an account at
[https://segments.ai/join](https://segments.ai/join?utm_source=hf&utm_medium=blog&utm_campaign=clipseg)
and install the Segments Python SDK. Then you can initialize the
Segments.ai Python client using an API key. This key can be found on
[the account page](https://segments.ai/account?utm_source=hf&utm_medium=blog&utm_campaign=clipseg).
```python
!pip install -q segments-ai
```
```python
from segments import SegmentsClient
from getpass import getpass
api_key = getpass('Enter your API key: ')
segments_client = SegmentsClient(api_key)
```
Next, let\'s load an image from a dataset using the Segments client.
We\'ll use the [a2d2 self-driving
dataset](https://www.a2d2.audi/a2d2/en.html). You can also create your
own dataset by following [these
instructions](https://docs.segments.ai/tutorials/getting-started?utm_source=hf&utm_medium=blog&utm_campaign=clipseg).
```python
samples = segments_client.get_samples("admin-tobias/clipseg")
# Use the last image as an example
sample = samples[1]
image = Image.open(requests.get(sample.attributes.image.url, stream=True).raw)
image
```
<figure class="image table text-center m-0 w-9/12">
<medium-zoom background="rgba(0,0,0,.7)" alt="A picture of a street with cars from the a2d2 dataset." src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/blog/123_clipseg-zero-shot/a0ca3accab5a40547f16b2abc05edd4558818bdf.png"></medium-zoom>
</figure>
We also need to get the category names from the dataset attributes.
```python
dataset = segments_client.get_dataset("admin-tobias/clipseg")
category_names = [category.name for category in dataset.task_attributes.categories]
```
Now we can use CLIPSeg on the image as before. This time, we\'ll also
scale up the outputs so that they match the input image\'s size.
```python
from torch import nn
inputs = processor(text=category_names, images=[image] * len(category_names), padding="max_length", return_tensors="pt")
# predict
with torch.no_grad():
outputs = model(**inputs)
# resize the outputs
preds = nn.functional.interpolate(
outputs.logits.unsqueeze(1),
size=(image.size[1], image.size[0]),
mode="bilinear"
)
```
And we can visualize the results again.
```python
len_cats = len(category_names)
_, ax = plt.subplots(1, len_cats + 1, figsize=(3*(len_cats + 1), 4))
[a.axis('off') for a in ax.flatten()]
ax[0].imshow(image)
[ax[i+1].imshow(torch.sigmoid(preds[i][0])) for i in range(len_cats)];
[ax[i+1].text(0, -15, category_name) for i, category_name in enumerate(category_names)];
```
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="The masks of the different categories in the street image." src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/blog/123_clipseg-zero-shot/7782da300097ce4dcb3891257db7cc97ccf1deb3.png"></medium-zoom>
</figure>
Now we have to combine the predictions to a single segmented image.
We\'ll simply do this by taking the category with the greatest sigmoid
value for each patch. We\'ll also make sure that all the values under a
certain threshold do not count.
```python
threshold = 0.1
flat_preds = torch.sigmoid(preds.squeeze()).reshape((preds.shape[0], -1))
# Initialize a dummy "unlabeled" mask with the threshold
flat_preds_with_treshold = torch.full((preds.shape[0] + 1, flat_preds.shape[-1]), threshold)
flat_preds_with_treshold[1:preds.shape[0]+1,:] = flat_preds
# Get the top mask index for each pixel
inds = torch.topk(flat_preds_with_treshold, 1, dim=0).indices.reshape((preds.shape[-2], preds.shape[-1]))
```
Let\'s quickly visualize the result.
```python
plt.imshow(inds)
```
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="A combined segmentation label of the street image." src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/blog/123_clipseg-zero-shot/b92dc12452108a0b2769ddfc1d7f79909e65144b.png"></medium-zoom>
</figure>
Lastly, we can upload the prediction to Segments.ai. To do that, we\'ll
first convert the bitmap to a png file, then we\'ll upload this file to
the Segments, and finally we\'ll add the label to the sample.
```python
from segments.utils import bitmap2file
import numpy as np
inds_np = inds.numpy().astype(np.uint32)
unique_inds = np.unique(inds_np).tolist()
f = bitmap2file(inds_np, is_segmentation_bitmap=True)
asset = segments_client.upload_asset(f, "clipseg_prediction.png")
attributes = {
'format_version': '0.1',
'annotations': [{"id": i, "category_id": i} for i in unique_inds if i != 0],
'segmentation_bitmap': { 'url': asset.url },
}
segments_client.add_label(sample.uuid, 'ground-truth', attributes)
```
If you take a look at the [uploaded prediction on
Segments.ai](https://segments.ai/admin-tobias/clipseg/samples/71a80d39-8cf3-4768-a097-e81e0b677517/ground-truth),
you can see that it\'s not perfect. However, you can manually correct
the biggest mistakes, and then you can use the corrected dataset to
train a better model than CLIPSeg.
<figure class="image table text-center m-0 w-9/12">
<medium-zoom background="rgba(0,0,0,.7)" alt="Thumbnails of the final segmentation labels on Segments.ai." src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/blog/123_clipseg-zero-shot/segments-thumbs.png"></medium-zoom>
</figure>
## Conclusion
CLIPSeg is a zero-shot segmentation model that works with both text and image prompts. The model adds a decoder to CLIP and can segment almost anything. However, the output segmentation masks are still very low-res for now, so you’ll probably still want to fine-tune a different segmentation model if accuracy is important.
Note that there's more research on zero-shot segmentation currently being conducted, so you can expect more models to be added in the near future. One example is [GroupViT](https://huggingface.co/docs/transformers/model_doc/groupvit), which is already available in 🤗 Transformers. To stay up to date with the latest news in segmentation research, you can follow us on Twitter: [@TobiasCornille](https://twitter.com/tobiascornille), [@NielsRogge](https://twitter.com/nielsrogge), and [@huggingface](https://twitter.com/huggingface).
If you’re interested in learning how to fine-tune a state-of-the-art segmentation model, check out our previous blog post: [https://huggingface.co/blog/fine-tune-segformer](https://huggingface.co/blog/fine-tune-segformer).
| huggingface/blog/blob/main/clipseg-zero-shot.md |
--
title: Image Classification with AutoTrain
thumbnail: /blog/assets/105_autotrain-image-classification/thumbnail.png
authors:
- user: nimaboscarino
---
# Image Classification with AutoTrain
<script async defer src="https://unpkg.com/medium-zoom-element@0/dist/medium-zoom-element.min.js"></script>
So you’ve heard all about the cool things that are happening in the machine learning world, and you want to join in. There’s just one problem – you don’t know how to code! 😱 Or maybe you’re a seasoned software engineer who wants to add some ML to your side-project, but you don’t have the time to pick up a whole new tech stack! For many people, the technical barriers to picking up machine learning feel insurmountable. That’s why Hugging Face created [AutoTrain](https://huggingface.co/autotrain), and with the latest feature we’ve just added, we’re making “no-code” machine learning better than ever. Best of all, you can create your first project for ✨ free! ✨
[Hugging Face AutoTrain](https://huggingface.co/autotrain) lets you train models with **zero** configuration needed. Just choose your task (translation? how about question answering?), upload your data, and let Hugging Face do the rest of the work! By letting AutoTrain experiment with number of different models, there's even a good chance that you'll end up with a model that performs better than a model that's been hand-trained by an engineer 🤯 We’ve been expanding the number of tasks that we support, and we’re proud to announce that **you can now use AutoTrain for Computer Vision**! Image Classification is the latest task we’ve added, with more on the way. But what does this mean for you?
[Image Classification](https://huggingface.co/tasks/image-classification) models learn to *categorize* images, meaning that you can train one of these models to label any image. Do you want a model that can recognize signatures? Distinguish bird species? Identify plant diseases? As long as you can find an appropriate dataset, an image classification model has you covered.
## How can you train your own image classifier?
If you haven’t [created a Hugging Face account](https://huggingface.co/join) yet, now’s the time! Following that, make your way over to the [AutoTrain homepage](https://huggingface.co/autotrain) and click on “Create new project” to get started. You’ll be asked to fill in some basic info about your project. In the screenshot below you’ll see that I created a project named `butterflies-classification`, and I chose the “Image Classification” task. I’ve also chosen the “Automatic” model option, since I want to let AutoTrain do the work of finding the best model architectures for my project.
<div class="flex justify-center">
<figure class="image table text-center m-0 w-1/2">
<medium-zoom background="rgba(0,0,0,.7)" alt="The 'New Project' form for AutoTrain, filled out for a new Image Classification project named 'butterflies-classification'." src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/blog/autotrain-image-classification/new-project.png"></medium-zoom>
</figure>
</div>
Once AutoTrain creates your project, you just need to connect your data. If you have the data locally, you can drag and drop the folder into the window. Since we can also use [any of the image classification datasets on the Hugging Face Hub](https://huggingface.co/datasets?task_categories=task_categories:image-classification), in this example I’ve decided to use the [NimaBoscarino/butterflies](https://huggingface.co/datasets/NimaBoscarino/butterflies) dataset. You can select separate training and validation datasets if available, or you can ask AutoTrain to split the data for you.
<div class="grid grid-cols-2 gap-4">
<figure class="image table text-center m-0 w-full">
</figure>
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="A form showing configurations to select for the imported dataset, including split types and data columns." src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/blog/autotrain-image-classification/add-dataset.png"></medium-zoom>
</figure>
</div>
Once the data has been added, simply choose the number of model candidates that you’d like AutoModel to try out, review the expected training cost (training with 5 candidate models and less than 500 images is free 🤩), and start training!
<div class="grid grid-cols-2 gap-4">
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="Screenshot showing the model-selection options. Users can choose various numbers of candidate models, and the final training budget is displayed." src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/blog/autotrain-image-classification/select-models.png"></medium-zoom>
</figure>
<div>
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="Five candidate models are being trained, one of which has already completed training." src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/blog/autotrain-image-classification/training-in-progress.png"></medium-zoom>
</figure>
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="All the candidate models have finished training, with one in the 'stopped' state." src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/blog/autotrain-image-classification/training-complete.png"></medium-zoom>
</figure>
</div>
</div>
In the screenshots above you can see that my project started 5 different models, which each reached different accuracy scores. One of them wasn’t performing very well at all, so AutoTrain went ahead and stopped it so that it wouldn’t waste resources. The very best model hit 84% accuracy, with effectively zero effort on my end 😍 To wrap it all up, you can visit your freshly trained models on the Hub and play around with them through the integrated [inference widget](https://huggingface.co/docs/hub/models-widgets). For example, check out my butterfly classifier model over at [NimaBoscarino/butterflies](https://huggingface.co/NimaBoscarino/butterflies) 🦋
<figure class="image table text-center m-0 w-full">
<medium-zoom background="rgba(0,0,0,.7)" alt="An automatically generated model card for the butterflies-classification model, showing validation metrics and an embedded inference widget for image classification. The widget is displaying a picture of a butterfly, which has been identified as a Malachite butterfly." src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/blog/autotrain-image-classification/model-card.png"></medium-zoom>
</figure>
We’re so excited to see what you build with AutoTrain! Don’t forget to join the community over at [hf.co/join/discord](https://huggingface.co/join/discord), and reach out to us if you need any help 🤗
| huggingface/blog/blob/main/autotrain-image-classification.md |
!--⚠️ Note that this file is in Markdown but contain specific syntax for our doc-builder (similar to MDX) that may not be
rendered properly in your Markdown viewer.
-->
# Create and manage a repository
The Hugging Face Hub is a collection of git repositories. [Git](https://git-scm.com/) is a widely used tool in software
development to easily version projects when working collaboratively. This guide will show you how to interact with the
repositories on the Hub, especially:
- Create and delete a repository.
- Manage branches and tags.
- Rename your repository.
- Update your repository visibility.
- Manage a local copy of your repository.
<Tip warning={true}>
If you are used to working with platforms such as GitLab/GitHub/Bitbucket, your first instinct
might be to use `git` CLI to clone your repo (`git clone`), commit changes (`git add, git commit`) and push them
(`git push`). This is valid when using the Hugging Face Hub. However, software engineering and machine learning do
not share the same requirements and workflows. Model repositories might maintain large model weight files for different
frameworks and tools, so cloning the repository can lead to you maintaining large local folders with massive sizes. As
a result, it may be more efficient to use our custom HTTP methods. You can read our [Git vs HTTP paradigm](../concepts/git_vs_http)
explanation page for more details.
</Tip>
If you want to create and manage a repository on the Hub, your machine must be logged in. If you are not, please refer to
[this section](../quick-start#authentication). In the rest of this guide, we will assume that your machine is logged in.
## Repo creation and deletion
The first step is to know how to create and delete repositories. You can only manage repositories that you own (under
your username namespace) or from organizations in which you have write permissions.
### Create a repository
Create an empty repository with [`create_repo`] and give it a name with the `repo_id` parameter. The `repo_id` is your namespace followed by the repository name: `username_or_org/repo_name`.
```py
>>> from huggingface_hub import create_repo
>>> create_repo("lysandre/test-model")
'https://huggingface.co/lysandre/test-model'
```
By default, [`create_repo`] creates a model repository. But you can use the `repo_type` parameter to specify another repository type. For example, if you want to create a dataset repository:
```py
>>> from huggingface_hub import create_repo
>>> create_repo("lysandre/test-dataset", repo_type="dataset")
'https://huggingface.co/datasets/lysandre/test-dataset'
```
When you create a repository, you can set your repository visibility with the `private` parameter.
```py
>>> from huggingface_hub import create_repo
>>> create_repo("lysandre/test-private", private=True)
```
If you want to change the repository visibility at a later time, you can use the [`update_repo_visibility`] function.
### Delete a repository
Delete a repository with [`delete_repo`]. Make sure you want to delete a repository because this is an irreversible process!
Specify the `repo_id` of the repository you want to delete:
```py
>>> delete_repo(repo_id="lysandre/my-corrupted-dataset", repo_type="dataset")
```
### Duplicate a repository (only for Spaces)
In some cases, you want to copy someone else's repo to adapt it to your use case.
This is possible for Spaces using the [`duplicate_space`] method. It will duplicate the whole repository.
You will still need to configure your own settings (hardware, sleep-time, storage, variables and secrets). Check out our [Manage your Space](./manage-spaces) guide for more details.
```py
>>> from huggingface_hub import duplicate_space
>>> duplicate_space("multimodalart/dreambooth-training", private=False)
RepoUrl('https://huggingface.co/spaces/nateraw/dreambooth-training',...)
```
## Upload and download files
Now that you have created your repository, you are interested in pushing changes to it and downloading files from it.
These 2 topics deserve their own guides. Please refer to the [upload](./upload) and the [download](./download) guides
to learn how to use your repository.
## Branches and tags
Git repositories often make use of branches to store different versions of a same repository.
Tags can also be used to flag a specific state of your repository, for example, when releasing a version.
More generally, branches and tags are referred as [git references](https://git-scm.com/book/en/v2/Git-Internals-Git-References).
### Create branches and tags
You can create new branch and tags using [`create_branch`] and [`create_tag`]:
```py
>>> from huggingface_hub import create_branch, create_tag
# Create a branch on a Space repo from `main` branch
>>> create_branch("Matthijs/speecht5-tts-demo", repo_type="space", branch="handle-dog-speaker")
# Create a tag on a Dataset repo from `v0.1-release` branch
>>> create_branch("bigcode/the-stack", repo_type="dataset", revision="v0.1-release", tag="v0.1.1", tag_message="Bump release version.")
```
You can use the [`delete_branch`] and [`delete_tag`] functions in the same way to delete a branch or a tag.
### List all branches and tags
You can also list the existing git refs from a repository using [`list_repo_refs`]:
```py
>>> from huggingface_hub import list_repo_refs
>>> list_repo_refs("bigcode/the-stack", repo_type="dataset")
GitRefs(
branches=[
GitRefInfo(name='main', ref='refs/heads/main', target_commit='18edc1591d9ce72aa82f56c4431b3c969b210ae3'),
GitRefInfo(name='v1.1.a1', ref='refs/heads/v1.1.a1', target_commit='f9826b862d1567f3822d3d25649b0d6d22ace714')
],
converts=[],
tags=[
GitRefInfo(name='v1.0', ref='refs/tags/v1.0', target_commit='c37a8cd1e382064d8aced5e05543c5f7753834da')
]
)
```
## Change repository settings
Repositories come with some settings that you can configure. Most of the time, you will want to do that manually in the
repo settings page in your browser. You must have write access to a repo to configure it (either own it or being part of
an organization). In this section, we will see the settings that you can also configure programmatically using `huggingface_hub`.
Some settings are specific to Spaces (hardware, environment variables,...). To configure those, please refer to our [Manage your Spaces](../guides/manage-spaces) guide.
### Update visibility
A repository can be public or private. A private repository is only visible to you or members of the organization in which the repository is located. Change a repository to private as shown in the following:
```py
>>> from huggingface_hub import update_repo_visibility
>>> update_repo_visibility(repo_id=repo_id, private=True)
```
### Rename your repository
You can rename your repository on the Hub using [`move_repo`]. Using this method, you can also move the repo from a user to
an organization. When doing so, there are a [few limitations](https://hf.co/docs/hub/repositories-settings#renaming-or-transferring-a-repo)
that you should be aware of. For example, you can't transfer your repo to another user.
```py
>>> from huggingface_hub import move_repo
>>> move_repo(from_id="Wauplin/cool-model", to_id="huggingface/cool-model")
```
## Manage a local copy of your repository
All the actions described above can be done using HTTP requests. However, in some cases you might be interested in having
a local copy of your repository and interact with it using the Git commands you are familiar with.
The [`Repository`] class allows you to interact with files and repositories on the Hub with functions similar to Git commands. It is a wrapper over Git and Git-LFS methods to use the Git commands you already know and love. Before starting, please make sure you have Git-LFS installed (see [here](https://git-lfs.github.com/) for installation instructions).
<Tip warning={true}>
[`Repository`] is deprecated in favor of the http-based alternatives implemented in [`HfApi`]. Given its large adoption in legacy code, the complete removal of [`Repository`] will only happen in release `v1.0`. For more details, please read [this explanation page](./concepts/git_vs_http).
</Tip>
### Use a local repository
Instantiate a [`Repository`] object with a path to a local repository:
```py
>>> from huggingface_hub import Repository
>>> repo = Repository(local_dir="<path>/<to>/<folder>")
```
### Clone
The `clone_from` parameter clones a repository from a Hugging Face repository ID to a local directory specified by the `local_dir` argument:
```py
>>> from huggingface_hub import Repository
>>> repo = Repository(local_dir="w2v2", clone_from="facebook/wav2vec2-large-960h-lv60")
```
`clone_from` can also clone a repository using a URL:
```py
>>> repo = Repository(local_dir="huggingface-hub", clone_from="https://huggingface.co/facebook/wav2vec2-large-960h-lv60")
```
You can combine the `clone_from` parameter with [`create_repo`] to create and clone a repository:
```py
>>> repo_url = create_repo(repo_id="repo_name")
>>> repo = Repository(local_dir="repo_local_path", clone_from=repo_url)
```
You can also configure a Git username and email to a cloned repository by specifying the `git_user` and `git_email` parameters when you clone a repository. When users commit to that repository, Git will be aware of the commit author.
```py
>>> repo = Repository(
... "my-dataset",
... clone_from="<user>/<dataset_id>",
... token=True,
... repo_type="dataset",
... git_user="MyName",
... git_email="[email protected]"
... )
```
### Branch
Branches are important for collaboration and experimentation without impacting your current files and code. Switch between branches with [`~Repository.git_checkout`]. For example, if you want to switch from `branch1` to `branch2`:
```py
>>> from huggingface_hub import Repository
>>> repo = Repository(local_dir="huggingface-hub", clone_from="<user>/<dataset_id>", revision='branch1')
>>> repo.git_checkout("branch2")
```
### Pull
[`~Repository.git_pull`] allows you to update a current local branch with changes from a remote repository:
```py
>>> from huggingface_hub import Repository
>>> repo.git_pull()
```
Set `rebase=True` if you want your local commits to occur after your branch is updated with the new commits from the remote:
```py
>>> repo.git_pull(rebase=True)
```
| huggingface/huggingface_hub/blob/main/docs/source/en/guides/repository.md |
!--⚠️ Note that this file is in Markdown but contain specific syntax for our doc-builder (similar to MDX) that may not be
rendered properly in your Markdown viewer.
-->
# Fully Sharded Data Parallel
[Fully sharded data parallel](https://pytorch.org/docs/stable/fsdp.html) (FSDP) is developed for distributed training of large pretrained models up to 1T parameters. FSDP achieves this by sharding the model parameters, gradients, and optimizer states across data parallel processes and it can also offload sharded model parameters to a CPU. The memory efficiency afforded by FSDP allows you to scale training to larger batch or model sizes.
<Tip warning={true}>
Currently, FSDP does not confer any reduction in GPU memory usage and FSDP with CPU offload actually consumes 1.65x more GPU memory during training. You can track this PyTorch [issue](https://github.com/pytorch/pytorch/issues/91165) for any updates.
</Tip>
FSDP is supported in 🤗 Accelerate, and you can use it with 🤗 PEFT. This guide will help you learn how to use our FSDP [training script](https://github.com/huggingface/peft/blob/main/examples/conditional_generation/peft_lora_seq2seq_accelerate_fsdp.py). You'll configure the script to train a large model for conditional generation.
## Configuration
Begin by running the following command to [create a FSDP configuration file](https://huggingface.co/docs/accelerate/main/en/usage_guides/fsdp) with 🤗 Accelerate. Use the `--config_file` flag to save the configuration file to a specific location, otherwise it is saved as a `default_config.yaml` file in the 🤗 Accelerate cache.
The configuration file is used to set the default options when you launch the training script.
```bash
accelerate config --config_file fsdp_config.yaml
```
You'll be asked a few questions about your setup, and configure the following arguments. For this example, make sure you fully shard the model parameters, gradients, optimizer states, leverage the CPU for offloading, and wrap model layers based on the Transformer layer class name.
```bash
`Sharding Strategy`: [1] FULL_SHARD (shards optimizer states, gradients and parameters), [2] SHARD_GRAD_OP (shards optimizer states and gradients), [3] NO_SHARD
`Offload Params`: Decides Whether to offload parameters and gradients to CPU
`Auto Wrap Policy`: [1] TRANSFORMER_BASED_WRAP, [2] SIZE_BASED_WRAP, [3] NO_WRAP
`Transformer Layer Class to Wrap`: When using `TRANSFORMER_BASED_WRAP`, user specifies comma-separated string of transformer layer class names (case-sensitive) to wrap ,e.g,
`BertLayer`, `GPTJBlock`, `T5Block`, `BertLayer,BertEmbeddings,BertSelfOutput`...
`Min Num Params`: minimum number of parameters when using `SIZE_BASED_WRAP`
`Backward Prefetch`: [1] BACKWARD_PRE, [2] BACKWARD_POST, [3] NO_PREFETCH
`State Dict Type`: [1] FULL_STATE_DICT, [2] LOCAL_STATE_DICT, [3] SHARDED_STATE_DICT
```
For example, your FSDP configuration file may look like the following:
```yaml
command_file: null
commands: null
compute_environment: LOCAL_MACHINE
deepspeed_config: {}
distributed_type: FSDP
downcast_bf16: 'no'
dynamo_backend: 'NO'
fsdp_config:
fsdp_auto_wrap_policy: TRANSFORMER_BASED_WRAP
fsdp_backward_prefetch_policy: BACKWARD_PRE
fsdp_offload_params: true
fsdp_sharding_strategy: 1
fsdp_state_dict_type: FULL_STATE_DICT
fsdp_transformer_layer_cls_to_wrap: T5Block
gpu_ids: null
machine_rank: 0
main_process_ip: null
main_process_port: null
main_training_function: main
megatron_lm_config: {}
mixed_precision: 'no'
num_machines: 1
num_processes: 2
rdzv_backend: static
same_network: true
tpu_name: null
tpu_zone: null
use_cpu: false
```
## The important parts
Let's dig a bit deeper into the training script to understand how it works.
The [`main()`](https://github.com/huggingface/peft/blob/2822398fbe896f25d4dac5e468624dc5fd65a51b/examples/conditional_generation/peft_lora_seq2seq_accelerate_fsdp.py#L14) function begins with initializing an [`~accelerate.Accelerator`] class which handles everything for distributed training, such as automatically detecting your training environment.
<Tip>
💡 Feel free to change the model and dataset inside the `main` function. If your dataset format is different from the one in the script, you may also need to write your own preprocessing function.
</Tip>
The script also creates a configuration corresponding to the 🤗 PEFT method you're using. For LoRA, you'll use [`LoraConfig`] to specify the task type, and several other important parameters such as the dimension of the low-rank matrices, the matrices scaling factor, and the dropout probability of the LoRA layers. If you want to use a different 🤗 PEFT method, replace `LoraConfig` with the appropriate [class](../package_reference/tuners).
Next, the script wraps the base model and `peft_config` with the [`get_peft_model`] function to create a [`PeftModel`].
```diff
def main():
+ accelerator = Accelerator()
model_name_or_path = "t5-base"
base_path = "temp/data/FinancialPhraseBank-v1.0"
+ peft_config = LoraConfig(
task_type=TaskType.SEQ_2_SEQ_LM, inference_mode=False, r=8, lora_alpha=32, lora_dropout=0.1
)
model = AutoModelForSeq2SeqLM.from_pretrained(model_name_or_path)
+ model = get_peft_model(model, peft_config)
```
Throughout the script, you'll see the [`~accelerate.Accelerator.main_process_first`] and [`~accelerate.Accelerator.wait_for_everyone`] functions which help control and synchronize when processes are executed.
After your dataset is prepared, and all the necessary training components are loaded, the script checks if you're using the `fsdp_plugin`. PyTorch offers two ways for wrapping model layers in FSDP, automatically or manually. The simplest method is to allow FSDP to automatically recursively wrap model layers without changing any other code. You can choose to wrap the model layers based on the layer name or on the size (number of parameters). In the FSDP configuration file, it uses the `TRANSFORMER_BASED_WRAP` option to wrap the [`T5Block`] layer.
```py
if getattr(accelerator.state, "fsdp_plugin", None) is not None:
accelerator.state.fsdp_plugin.auto_wrap_policy = fsdp_auto_wrap_policy(model)
```
Next, use 🤗 Accelerate's [`~accelerate.Accelerator.prepare`] function to prepare the model, datasets, optimizer, and scheduler for training.
```py
model, train_dataloader, eval_dataloader, optimizer, lr_scheduler = accelerator.prepare(
model, train_dataloader, eval_dataloader, optimizer, lr_scheduler
)
```
From here, the remainder of the script handles the training loop, evaluation, and sharing your model to the Hub.
## Train
Run the following command to launch the training script. Earlier, you saved the configuration file to `fsdp_config.yaml`, so you'll need to pass the path to the launcher with the `--config_file` argument like this:
```bash
accelerate launch --config_file fsdp_config.yaml examples/peft_lora_seq2seq_accelerate_fsdp.py
```
Once training is complete, the script returns the accuracy and compares the predictions to the labels. | huggingface/peft/blob/main/docs/source/accelerate/fsdp.md |
Convert weights to safetensors
PyTorch model weights are commonly saved and stored as `.bin` files with Python's [`pickle`](https://docs.python.org/3/library/pickle.html) utility. To save and store your model weights in the more secure `safetensor` format, we recommend converting your weights to `.safetensors`.
The easiest way to convert your model weights is to use the [Convert Space](https://huggingface.co/spaces/diffusers/convert), given your model weights are already stored on the Hub. The Convert Space downloads the pickled weights, converts them, and opens a Pull Request to upload the newly converted `.safetensors` file to your repository.
<Tip warning={true}>
For larger models, the Space may be a bit slower because its resources are tied up in converting other models. You can also try running the [convert.py](https://github.com/huggingface/safetensors/blob/main/bindings/python/convert.py) script (this is what the Space is running) locally to convert your weights.
Feel free to ping [@Narsil](https://huggingface.co/Narsil) for any issues with the Space.
</Tip>
| huggingface/safetensors/blob/main/docs/source/convert-weights.md |
Security
The Hugging Face Hub offers several security features to ensure that your code and data are secure. Beyond offering [private repositories](./repositories-settings#private-repositories) for models, datasets, and Spaces, the Hub supports access tokens, commit signatures, and malware scanning.
Hugging Face is GDPR compliant. If a contract or specific data storage is something you'll need, we recommend taking a look at our [Expert Acceleration Program](https://huggingface.co/support). Hugging Face can also offer Business Associate Addendums or GDPR data processing agreements through an [Enterprise Plan](https://huggingface.co/pricing).
Hugging Face is also [SOC2 Type 2 certified](https://us.aicpa.org/interestareas/frc/assuranceadvisoryservices/aicpasoc2report.html), meaning we provide security certification to our customers and actively monitor and patch any security weaknesses.
<img width="150" src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/hub/security-soc-1.jpg">
For any other security questions, please feel free to send us an email at [email protected].
## Contents
- [User Access Tokens](./security-tokens)
- [Git over SSH](./security-git-ssh)
- [Signing commits with GPG](./security-gpg)
- [Single Sign-On (SSO)](./security-sso)
- [Malware Scanning](./security-malware)
- [Pickle Scanning](./security-pickle)
- [Secrets Scanning](./security-secrets)
| huggingface/hub-docs/blob/main/docs/hub/security.md |
!--Copyright 2020 The HuggingFace Team. All rights reserved.
Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with
the License. You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on
an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the
specific language governing permissions and limitations under the License.
⚠️ Note that this file is in Markdown but contain specific syntax for our doc-builder (similar to MDX) that may not be
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# RAG
<div class="flex flex-wrap space-x-1">
<a href="https://huggingface.co/models?filter=rag">
<img alt="Models" src="https://img.shields.io/badge/All_model_pages-rag-blueviolet">
</a>
</div>
## Overview
Retrieval-augmented generation ("RAG") models combine the powers of pretrained dense retrieval (DPR) and
sequence-to-sequence models. RAG models retrieve documents, pass them to a seq2seq model, then marginalize to generate
outputs. The retriever and seq2seq modules are initialized from pretrained models, and fine-tuned jointly, allowing
both retrieval and generation to adapt to downstream tasks.
It is based on the paper [Retrieval-Augmented Generation for Knowledge-Intensive NLP Tasks](https://arxiv.org/abs/2005.11401) by Patrick Lewis, Ethan Perez, Aleksandara Piktus, Fabio Petroni, Vladimir
Karpukhin, Naman Goyal, Heinrich Küttler, Mike Lewis, Wen-tau Yih, Tim Rocktäschel, Sebastian Riedel, Douwe Kiela.
The abstract from the paper is the following:
*Large pre-trained language models have been shown to store factual knowledge in their parameters, and achieve
state-of-the-art results when fine-tuned on downstream NLP tasks. However, their ability to access and precisely
manipulate knowledge is still limited, and hence on knowledge-intensive tasks, their performance lags behind
task-specific architectures. Additionally, providing provenance for their decisions and updating their world knowledge
remain open research problems. Pre-trained models with a differentiable access mechanism to explicit nonparametric
memory can overcome this issue, but have so far been only investigated for extractive downstream tasks. We explore a
general-purpose fine-tuning recipe for retrieval-augmented generation (RAG) — models which combine pre-trained
parametric and non-parametric memory for language generation. We introduce RAG models where the parametric memory is a
pre-trained seq2seq model and the non-parametric memory is a dense vector index of Wikipedia, accessed with a
pre-trained neural retriever. We compare two RAG formulations, one which conditions on the same retrieved passages
across the whole generated sequence, the other can use different passages per token. We fine-tune and evaluate our
models on a wide range of knowledge-intensive NLP tasks and set the state-of-the-art on three open domain QA tasks,
outperforming parametric seq2seq models and task-specific retrieve-and-extract architectures. For language generation
tasks, we find that RAG models generate more specific, diverse and factual language than a state-of-the-art
parametric-only seq2seq baseline.*
This model was contributed by [ola13](https://huggingface.co/ola13).
## Usage tips
Retrieval-augmented generation ("RAG") models combine the powers of pretrained dense retrieval (DPR) and Seq2Seq models.
RAG models retrieve docs, pass them to a seq2seq model, then marginalize to generate outputs. The retriever and seq2seq
modules are initialized from pretrained models, and fine-tuned jointly, allowing both retrieval and generation to adapt
to downstream tasks.
## RagConfig
[[autodoc]] RagConfig
## RagTokenizer
[[autodoc]] RagTokenizer
## Rag specific outputs
[[autodoc]] models.rag.modeling_rag.RetrievAugLMMarginOutput
[[autodoc]] models.rag.modeling_rag.RetrievAugLMOutput
## RagRetriever
[[autodoc]] RagRetriever
<frameworkcontent>
<pt>
## RagModel
[[autodoc]] RagModel
- forward
## RagSequenceForGeneration
[[autodoc]] RagSequenceForGeneration
- forward
- generate
## RagTokenForGeneration
[[autodoc]] RagTokenForGeneration
- forward
- generate
</pt>
<tf>
## TFRagModel
[[autodoc]] TFRagModel
- call
## TFRagSequenceForGeneration
[[autodoc]] TFRagSequenceForGeneration
- call
- generate
## TFRagTokenForGeneration
[[autodoc]] TFRagTokenForGeneration
- call
- generate
</tf>
</frameworkcontent>
| huggingface/transformers/blob/main/docs/source/en/model_doc/rag.md |
!--Copyright 2022 The HuggingFace Team. All rights reserved.
Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with
the License. You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on
an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the
specific language governing permissions and limitations under the License.
⚠️ Note that this file is in Markdown but contain specific syntax for our doc-builder (similar to MDX) that may not be
rendered properly in your Markdown viewer.
-->
# MarkupLM
## Overview
The MarkupLM model was proposed in [MarkupLM: Pre-training of Text and Markup Language for Visually-rich Document
Understanding](https://arxiv.org/abs/2110.08518) by Junlong Li, Yiheng Xu, Lei Cui, Furu Wei. MarkupLM is BERT, but
applied to HTML pages instead of raw text documents. The model incorporates additional embedding layers to improve
performance, similar to [LayoutLM](layoutlm).
The model can be used for tasks like question answering on web pages or information extraction from web pages. It obtains
state-of-the-art results on 2 important benchmarks:
- [WebSRC](https://x-lance.github.io/WebSRC/), a dataset for Web-Based Structural Reading Comprehension (a bit like SQuAD but for web pages)
- [SWDE](https://www.researchgate.net/publication/221299838_From_one_tree_to_a_forest_a_unified_solution_for_structured_web_data_extraction), a dataset
for information extraction from web pages (basically named-entity recogntion on web pages)
The abstract from the paper is the following:
*Multimodal pre-training with text, layout, and image has made significant progress for Visually-rich Document
Understanding (VrDU), especially the fixed-layout documents such as scanned document images. While, there are still a
large number of digital documents where the layout information is not fixed and needs to be interactively and
dynamically rendered for visualization, making existing layout-based pre-training approaches not easy to apply. In this
paper, we propose MarkupLM for document understanding tasks with markup languages as the backbone such as
HTML/XML-based documents, where text and markup information is jointly pre-trained. Experiment results show that the
pre-trained MarkupLM significantly outperforms the existing strong baseline models on several document understanding
tasks. The pre-trained model and code will be publicly available.*
This model was contributed by [nielsr](https://huggingface.co/nielsr). The original code can be found [here](https://github.com/microsoft/unilm/tree/master/markuplm).
## Usage tips
- In addition to `input_ids`, [`~MarkupLMModel.forward`] expects 2 additional inputs, namely `xpath_tags_seq` and `xpath_subs_seq`.
These are the XPATH tags and subscripts respectively for each token in the input sequence.
- One can use [`MarkupLMProcessor`] to prepare all data for the model. Refer to the [usage guide](#usage-markuplmprocessor) for more info.
<img src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/transformers/model_doc/markuplm_architecture.jpg"
alt="drawing" width="600"/>
<small> MarkupLM architecture. Taken from the <a href="https://arxiv.org/abs/2110.08518">original paper.</a> </small>
## Usage: MarkupLMProcessor
The easiest way to prepare data for the model is to use [`MarkupLMProcessor`], which internally combines a feature extractor
([`MarkupLMFeatureExtractor`]) and a tokenizer ([`MarkupLMTokenizer`] or [`MarkupLMTokenizerFast`]). The feature extractor is
used to extract all nodes and xpaths from the HTML strings, which are then provided to the tokenizer, which turns them into the
token-level inputs of the model (`input_ids` etc.). Note that you can still use the feature extractor and tokenizer separately,
if you only want to handle one of the two tasks.
```python
from transformers import MarkupLMFeatureExtractor, MarkupLMTokenizerFast, MarkupLMProcessor
feature_extractor = MarkupLMFeatureExtractor()
tokenizer = MarkupLMTokenizerFast.from_pretrained("microsoft/markuplm-base")
processor = MarkupLMProcessor(feature_extractor, tokenizer)
```
In short, one can provide HTML strings (and possibly additional data) to [`MarkupLMProcessor`],
and it will create the inputs expected by the model. Internally, the processor first uses
[`MarkupLMFeatureExtractor`] to get a list of nodes and corresponding xpaths. The nodes and
xpaths are then provided to [`MarkupLMTokenizer`] or [`MarkupLMTokenizerFast`], which converts them
to token-level `input_ids`, `attention_mask`, `token_type_ids`, `xpath_subs_seq`, `xpath_tags_seq`.
Optionally, one can provide node labels to the processor, which are turned into token-level `labels`.
[`MarkupLMFeatureExtractor`] uses [Beautiful Soup](https://www.crummy.com/software/BeautifulSoup/bs4/doc/), a Python library for
pulling data out of HTML and XML files, under the hood. Note that you can still use your own parsing solution of
choice, and provide the nodes and xpaths yourself to [`MarkupLMTokenizer`] or [`MarkupLMTokenizerFast`].
In total, there are 5 use cases that are supported by the processor. Below, we list them all. Note that each of these
use cases work for both batched and non-batched inputs (we illustrate them for non-batched inputs).
**Use case 1: web page classification (training, inference) + token classification (inference), parse_html = True**
This is the simplest case, in which the processor will use the feature extractor to get all nodes and xpaths from the HTML.
```python
>>> from transformers import MarkupLMProcessor
>>> processor = MarkupLMProcessor.from_pretrained("microsoft/markuplm-base")
>>> html_string = """
... <!DOCTYPE html>
... <html>
... <head>
... <title>Hello world</title>
... </head>
... <body>
... <h1>Welcome</h1>
... <p>Here is my website.</p>
... </body>
... </html>"""
>>> # note that you can also add provide all tokenizer parameters here such as padding, truncation
>>> encoding = processor(html_string, return_tensors="pt")
>>> print(encoding.keys())
dict_keys(['input_ids', 'token_type_ids', 'attention_mask', 'xpath_tags_seq', 'xpath_subs_seq'])
```
**Use case 2: web page classification (training, inference) + token classification (inference), parse_html=False**
In case one already has obtained all nodes and xpaths, one doesn't need the feature extractor. In that case, one should
provide the nodes and corresponding xpaths themselves to the processor, and make sure to set `parse_html` to `False`.
```python
>>> from transformers import MarkupLMProcessor
>>> processor = MarkupLMProcessor.from_pretrained("microsoft/markuplm-base")
>>> processor.parse_html = False
>>> nodes = ["hello", "world", "how", "are"]
>>> xpaths = ["/html/body/div/li[1]/div/span", "/html/body/div/li[1]/div/span", "html/body", "html/body/div"]
>>> encoding = processor(nodes=nodes, xpaths=xpaths, return_tensors="pt")
>>> print(encoding.keys())
dict_keys(['input_ids', 'token_type_ids', 'attention_mask', 'xpath_tags_seq', 'xpath_subs_seq'])
```
**Use case 3: token classification (training), parse_html=False**
For token classification tasks (such as [SWDE](https://paperswithcode.com/dataset/swde)), one can also provide the
corresponding node labels in order to train a model. The processor will then convert these into token-level `labels`.
By default, it will only label the first wordpiece of a word, and label the remaining wordpieces with -100, which is the
`ignore_index` of PyTorch's CrossEntropyLoss. In case you want all wordpieces of a word to be labeled, you can
initialize the tokenizer with `only_label_first_subword` set to `False`.
```python
>>> from transformers import MarkupLMProcessor
>>> processor = MarkupLMProcessor.from_pretrained("microsoft/markuplm-base")
>>> processor.parse_html = False
>>> nodes = ["hello", "world", "how", "are"]
>>> xpaths = ["/html/body/div/li[1]/div/span", "/html/body/div/li[1]/div/span", "html/body", "html/body/div"]
>>> node_labels = [1, 2, 2, 1]
>>> encoding = processor(nodes=nodes, xpaths=xpaths, node_labels=node_labels, return_tensors="pt")
>>> print(encoding.keys())
dict_keys(['input_ids', 'token_type_ids', 'attention_mask', 'xpath_tags_seq', 'xpath_subs_seq', 'labels'])
```
**Use case 4: web page question answering (inference), parse_html=True**
For question answering tasks on web pages, you can provide a question to the processor. By default, the
processor will use the feature extractor to get all nodes and xpaths, and create [CLS] question tokens [SEP] word tokens [SEP].
```python
>>> from transformers import MarkupLMProcessor
>>> processor = MarkupLMProcessor.from_pretrained("microsoft/markuplm-base")
>>> html_string = """
... <!DOCTYPE html>
... <html>
... <head>
... <title>Hello world</title>
... </head>
... <body>
... <h1>Welcome</h1>
... <p>My name is Niels.</p>
... </body>
... </html>"""
>>> question = "What's his name?"
>>> encoding = processor(html_string, questions=question, return_tensors="pt")
>>> print(encoding.keys())
dict_keys(['input_ids', 'token_type_ids', 'attention_mask', 'xpath_tags_seq', 'xpath_subs_seq'])
```
**Use case 5: web page question answering (inference), parse_html=False**
For question answering tasks (such as WebSRC), you can provide a question to the processor. If you have extracted
all nodes and xpaths yourself, you can provide them directly to the processor. Make sure to set `parse_html` to `False`.
```python
>>> from transformers import MarkupLMProcessor
>>> processor = MarkupLMProcessor.from_pretrained("microsoft/markuplm-base")
>>> processor.parse_html = False
>>> nodes = ["hello", "world", "how", "are"]
>>> xpaths = ["/html/body/div/li[1]/div/span", "/html/body/div/li[1]/div/span", "html/body", "html/body/div"]
>>> question = "What's his name?"
>>> encoding = processor(nodes=nodes, xpaths=xpaths, questions=question, return_tensors="pt")
>>> print(encoding.keys())
dict_keys(['input_ids', 'token_type_ids', 'attention_mask', 'xpath_tags_seq', 'xpath_subs_seq'])
```
## Resources
- [Demo notebooks](https://github.com/NielsRogge/Transformers-Tutorials/tree/master/MarkupLM)
- [Text classification task guide](../tasks/sequence_classification)
- [Token classification task guide](../tasks/token_classification)
- [Question answering task guide](../tasks/question_answering)
## MarkupLMConfig
[[autodoc]] MarkupLMConfig
- all
## MarkupLMFeatureExtractor
[[autodoc]] MarkupLMFeatureExtractor
- __call__
## MarkupLMTokenizer
[[autodoc]] MarkupLMTokenizer
- build_inputs_with_special_tokens
- get_special_tokens_mask
- create_token_type_ids_from_sequences
- save_vocabulary
## MarkupLMTokenizerFast
[[autodoc]] MarkupLMTokenizerFast
- all
## MarkupLMProcessor
[[autodoc]] MarkupLMProcessor
- __call__
## MarkupLMModel
[[autodoc]] MarkupLMModel
- forward
## MarkupLMForSequenceClassification
[[autodoc]] MarkupLMForSequenceClassification
- forward
## MarkupLMForTokenClassification
[[autodoc]] MarkupLMForTokenClassification
- forward
## MarkupLMForQuestionAnswering
[[autodoc]] MarkupLMForQuestionAnswering
- forward
| huggingface/transformers/blob/main/docs/source/en/model_doc/markuplm.md |
Managing Spaces with Github Actions
You can keep your app in sync with your GitHub repository with **Github Actions**. Remember that for files larger than 10MB, Spaces requires Git-LFS. If you don't want to use Git-LFS, you may need to review your files and check your history. Use a tool like [BFG Repo-Cleaner](https://rtyley.github.io/bfg-repo-cleaner/) to remove any large files from your history. BFG Repo-Cleaner will keep a local copy of your repository as a backup.
First, you should set up your GitHub repository and Spaces app together. Add your Spaces app as an additional remote to your existing Git repository.
```bash
git remote add space https://huggingface.co/spaces/HF_USERNAME/SPACE_NAME
```
Then force push to sync everything for the first time:
```bash
git push --force space main
```
Next, set up a GitHub Action to push your main branch to Spaces. In the example below:
* Replace `HF_USERNAME` with your username and `SPACE_NAME` with your Space name.
* Create a [Github secret](https://docs.github.com/en/actions/security-guides/encrypted-secrets#creating-encrypted-secrets-for-an-environment) with your `HF_TOKEN`. You can find your Hugging Face API token under **API Tokens** on your Hugging Face profile.
```yaml
name: Sync to Hugging Face hub
on:
push:
branches: [main]
# to run this workflow manually from the Actions tab
workflow_dispatch:
jobs:
sync-to-hub:
runs-on: ubuntu-latest
steps:
- uses: actions/checkout@v3
with:
fetch-depth: 0
lfs: true
- name: Push to hub
env:
HF_TOKEN: ${{ secrets.HF_TOKEN }}
run: git push https://HF_USERNAME:[email protected]/spaces/HF_USERNAME/SPACE_NAME main
```
Finally, create an Action that automatically checks the file size of any new pull request:
```yaml
name: Check file size
on: # or directly `on: [push]` to run the action on every push on any branch
pull_request:
branches: [main]
# to run this workflow manually from the Actions tab
workflow_dispatch:
jobs:
sync-to-hub:
runs-on: ubuntu-latest
steps:
- name: Check large files
uses: ActionsDesk/[email protected]
with:
filesizelimit: 10485760 # this is 10MB so we can sync to HF Spaces
```
| huggingface/hub-docs/blob/main/docs/hub/spaces-github-actions.md |
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