Longcoder: A Long-range Pre-trained Language Model For Code Completion · The Large Language Model Bible Contribute to LLM-Bible

Longcoder: A Long-range Pre-trained Language Model For Code Completion

Guo Daya, Xu Canwen, Duan Nan, Yin Jian, Mcauley Julian. Arxiv 2023

[Paper] [Code]    
Attention Mechanism BERT Efficiency And Optimization Has Code Model Architecture Pretraining Methods Transformer

In this paper, we introduce a new task for code completion that focuses on handling long code input and propose a sparse Transformer model, called LongCoder, to address this task. LongCoder employs a sliding window mechanism for self-attention and introduces two types of globally accessible tokens - bridge tokens and memory tokens - to improve performance and efficiency. Bridge tokens are inserted throughout the input sequence to aggregate local information and facilitate global interaction, while memory tokens are included to highlight important statements that may be invoked later and need to be memorized, such as package imports and definitions of classes, functions, or structures. We conduct experiments on a newly constructed dataset that contains longer code context and the publicly available CodeXGLUE benchmark. Experimental results demonstrate that LongCoder achieves superior performance on code completion tasks compared to previous models while maintaining comparable efficiency in terms of computational resources during inference. All the codes and data are available at https://github.com/microsoft/CodeBERT.

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