license: mit
library_name: transformers
tags:
- code
JonBERTa-attn-ft-coco-03L
Model for the paper "A Transformer-Based Approach for Smart Invocation of Automatic Code Completion".
Description
This model is fine-tuned on a code-completion dataset collected from the open-source 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 @ SERG, Delft University of Technology
- Model type: JonBERTa
- Language: Code
- Finetuned from model:
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 of2e-05
.
- e.g.
JonBERTa-head
→JonBERTa-head-ft-[dense,proj,reinit]
- e.g.
JonBERTa-head-ft-dense-proj
, where all have2e-05
learning rate, but may differ in the head layer in which the telemetry features are introduced (eitherhead
orproj
, with optionalreinit
ialisation of all its weights).
- e.g.
JonBERTa-attn
→JonBERTa-attn-ft-[0,1,2,3,4,5]L
- e.g.
JonBERTa-attn-ft-012L
, where all have2e-05
learning rate, but may differ in the attention layer(s) in which the telemetry features are introduced (either0
,1
,2
,3
,4
, or5L
).
- e.g.
Other hyperparameters may be found in the paper or the replication package (see below).
Sources
- Replication Repository:
Ar4l/curating-code-completions
- Paper: "A Transformer-Based Approach for Smart Invocation of Automatic Code Completion"
- Contact: https://huggingface.co/Ar4l
To cite, please use
@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.
num_train_epochs : int = 3
learning_rate : float = 2e-5
batch_size : int = 16
Model Configuration
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)],
[]
))