PLCLSEOct 31, 2022

When Language Model Meets Private Library

arXiv:2210.17236v1317 citationsh-index: 32
Originality Incremental advance
AI Analysis

This addresses a practical challenge for programmers who use private libraries, but it is incremental as it builds on existing pre-trained models and retrieval techniques.

The paper tackles the problem of enabling pre-trained language models to generate code for private libraries, which they have not seen during training, by proposing a framework with an APIRetriever and APICoder, achieving impressive performance on three crafted benchmarks.

With the rapid development of pre-training techniques, a number of language models have been pre-trained on large-scale code corpora and perform well in code generation. In this paper, we investigate how to equip pre-trained language models with the ability of code generation for private libraries. In practice, it is common for programmers to write code using private libraries. However, this is a challenge for language models since they have never seen private APIs during training. Motivated by the fact that private libraries usually come with elaborate API documentation, we propose a novel framework with two modules: the APIRetriever finds useful APIs, and then the APICoder generates code using these APIs. For APIRetriever, we present a dense retrieval system and also design a friendly interaction to involve uses. For APICoder, we can directly use off-the-shelf language models, or continually pre-train the base model on a code corpus containing API information. Both modules are trained with data from public libraries and can be generalized to private ones. Furthermore, we craft three benchmarks for private libraries, named TorchDataEval, MonkeyEval, and BeatNumEval. Experimental results demonstrate the impressive performance of our framework.

Code Implementations1 repo
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