--- license: mit library_name: transformers tags: - code --- ## JonBERTa-attn-ft-coco-234L Model for the paper [**"A Transformer-Based Approach for Smart Invocation of Automatic Code Completion"**](https://arxiv.org/abs/2405.14753). #### Description This model is fine-tuned on a code-completion dataset collected from the open-source [Code4Me](https://github.com/code4me-me/code4me) plugin. The training objective is to have a small, lightweight transformer model to filter out unnecessary and unhelpful code completions. To this end, we leverage the in-IDE telemetry data, and integrate it with the textual code data in the transformer's attention module. - **Developed by:** [AISE Lab](https://www.linkedin.com/company/aise-tudelft/) @ [SERG](https://se.ewi.tudelft.nl/), Delft University of Technology - **Model type:** [JonBERTa](https://github.com/Ar4l/curating-code-completions/blob/main/modeling_jonberta.py) - **Language:** Code - **Finetuned from model:** [`CodeBERTa-small-v1`](https://huggingface.co/huggingface/CodeBERTa-small-v1). Models are named as follows: - `CodeBERTa` → `CodeBERTa-ft-coco-[1,2,5]e-05lr` - e.g. `CodeBERTa-ft-coco-2e-05lr`, which was trained with learning rate of `2e-05`. - `JonBERTa-head` → `JonBERTa-head-ft-[dense,proj,reinit]` - e.g. `JonBERTa-head-ft-dense-proj`, where all have `2e-05` learning rate, but may differ in the head layer in which the telemetry features are introduced (either `head` or `proj`, with optional `reinit`ialisation of all its weights). - `JonBERTa-attn` → `JonBERTa-attn-ft-[0,1,2,3,4,5]L` - e.g. `JonBERTa-attn-ft-012L` , where all have `2e-05` learning rate, but may differ in the attention layer(s) in which the telemetry features are introduced (either `0`, `1`, `2`, `3`, `4`, or `5L`). Other hyperparameters may be found in the paper or the replication package (see below). #### Sources - **Replication Repository:** [`Ar4l/curating-code-completions`](https://github.com/Ar4l/curating-code-completions/tree/main) - **Paper:** [**"A Transformer-Based Approach for Smart Invocation of Automatic Code Completion"**](https://arxiv.org/abs/2405.14753) - **Contact:** https://huggingface.co/Ar4l To cite, please use ```bibtex @misc{de_moor_smart_invocation_2024, title = {A {Transformer}-{Based} {Approach} for {Smart} {Invocation} of {Automatic} {Code} {Completion}}, url = {http://arxiv.org/abs/2405.14753}, doi = {10.1145/3664646.3664760}, author = {de Moor, Aral and van Deursen, Arie and Izadi, Maliheh}, month = may, year = {2024}, } ``` #### Training Details This model was trained with the following hyperparameters, everything else being `TrainingArguments`' default. The dataset was prepared identically across all models as detailed in the paper. ```python num_train_epochs : int = 3 learning_rate : float = 2e-5 batch_size : int = 16 ``` #### Model Configuration ```python num_telemetry_features :int = 26 add_feature_embeddings :bool = True feature_hidden_size :int = num_telemetry_features * 4 feature_dropout_prob :float = 0.1 add_feature_bias :bool = True add_self_attn :bool = True self_attn_layers :list[int] = search(sum( [[i,j,k] for i in range(6) for j in range(6) for k in range(6) if i < j < k], [[i,j] for j in range(6) for i in range(6) if i < j], [[i] for i in range(6)], [] )) ```