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SliceX AI™ ELM (Efficient Language Models)

ELM (which stands for Efficient Language Models) is the first version in the series of cutting-edge language models from SliceX AI that is designed to achieve the best in class performance in terms of quality, throughput & memory.

ELM is designed to be a modular and customizable family of neural networks that are highly efficient and performant. Today we are sharing the first version in this series: ELM-v0.1 models (named Rambutan).

Model: ELM introduces a new type of (de)-composable LLM model architecture along with the algorithmic optimizations required to learn (training) and run (inference) these models. At a high level, we train a single ELM model in a self-supervised manner (during pre-training phase) but once trained the ELM model can be sliced in many ways to fit different user/task needs. The optimizations can be applied to the model either during the pre-training and/or fine-tuning stage.

Fast Inference with Customization: Once trained, the ELM model architecture permits flexible inference strategies at runtime depending on the deployment needs. For instance, the ELM model can be decomposed into smaller slices, i.e., smaller (or larger) models can be extracted from the original model to create multiple inference endpoints. Alternatively, the original (single) ELM model can be loaded as is for inference and different slices within the model can be queried directly to power faster inference. This provides an additional level of flexibility for users to make compute/memory tradeoffs depending on their application and runtime needs.

ELM-v0.1 Model Release

This repository contains code to run our ELM models. The current ELM model elm-v0.1 (named Rambutan) was pre-trained (an intermediate checkpoint was used) and then instruction fine-tuned for downstream tasks.

ELM models (in the models folder) in this repository come in three sizes (elm-1.0, elm-0.75 and elm-0.25). All these different slices are extracted from the same ELM finetuned checkpoint for inference and supports the following use-case.

  • news_classification
  • toxicity_detection
  • news_content_generation
  • news_summarization

NOTE: ELM-v0.1 release is an early version finetuned from an intermediate pretrained checkpoint & without any KV caching, decoding optimizations, or quantization applied.

Setup ELM

Download ELM repo

GIT_LFS_SKIP_SMUDGE=1 git clone https://huggingface.co/slicexai/elm-v0.1

Installation

cd elm-v0.1
pip install -r requirements.txt

Download ELM task-specific model checkpoints

Install git-lfs

sudo apt-get install git-lfs
git lfs install

For Macbook, replace sudo apt-get install git-lfs with brew install git-lfs

(Optional) Installing git-lfs without sudo,

wget https://github.com/git-lfs/git-lfs/releases/download/v3.2.0/git-lfs-linux-amd64-v3.2.0.tar.gz
tar -xzf git-lfs-linux-amd64-v3.2.0.tar.gz
PATH=$PATH:/<absolute-path>/git-lfs-3.2.0/
git lfs install

Download ELM checkpoints

To download all checkpoints

git lfs pull
NOTE: Please allow a few minutes for the full download of all model checkpoints.

To download elm-1.0 model checkpoints individually

git lfs pull -I elm-1.0_news_classification/ckpt.pt
git lfs pull -I elm-1.0_toxicity_detection/ckpt.pt
git lfs pull -I elm-1.0_news_content_generation/ckpt.pt
git lfs pull -I elm-1.0_news_summarization/ckpt.pt

To download elm-0.75 model checkpoints individually

git lfs pull -I elm-0.75_news_classification/ckpt.pt
git lfs pull -I elm-0.75_toxicity_detection/ckpt.pt
git lfs pull -I elm-0.75_news_content_generation/ckpt.pt
git lfs pull -I elm-0.75_news_summarization/ckpt.pt

To download elm-0.25 model checkpoints individually

git lfs pull -I elm-0.25_news_classification/ckpt.pt
git lfs pull -I elm-0.25_toxicity_detection/ckpt.pt
git lfs pull -I elm-0.25_news_content_generation/ckpt.pt

How to use: Run ELM on a sample task (e.g., news classification)

python run.py <elm-model-directory>
E.g. python run.py elm-0.75_news_classification

Prompts for the specific tasks can be found in the corresponding checkpoint directory. See an example below from models/elm-0.75_news_classification/example_prompts.json.

{
    "inputs": ["GM May Close Plant in Europe  DETROIT (Reuters) - General Motors Corp. &lt;A HREF=\"http://www.investor.reuters.com/FullQuote.aspx?ticker=GM.N target=/stocks/quickinfo/fullquote\"&gt;GM.N&lt;/A&gt; will likely  cut some jobs in Europe and may close a plant there as part of  a restructuring plan under development to try to return the  region to profitability, the U.S. automaker said on Wednesday."],
    "template": "[INST]Below is a news article. Please classify it under one of the following classes (World, Business, Sports, Sci/Tech). Please format your response as a JSON payload.\n\n### Article: {input}\n\n### JSON Response:[/INST]"
}

Running the above command returns the following response

{
    "prompt": "[INST]Below is a news article. Please classify it under one of the following classes (World, Business, Sports, Sci/Tech). Please format your response as a JSON payload.\n\n### Article: GM May Close Plant in Europe  DETROIT (Reuters) - General Motors Corp. &lt;A HREF=\"http://www.investor.reuters.com/FullQuote.aspx?ticker=GM.N target=/stocks/quickinfo/fullquote\"&gt;GM.N&lt;/A&gt; will likely  cut some jobs in Europe and may close a plant there as part of  a restructuring plan under development to try to return the  region to profitability, the U.S. automaker said on Wednesday.\n\n### JSON Response:[/INST]",
    "response": "{'text_label': 'Business'}"
}
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