CLAIMay 12, 2025

LongCodeBench: Evaluating Coding LLMs at 1M Context Windows

arXiv:2505.07897v328 citationsh-index: 7Has Code
Originality Incremental advance
AI Analysis

This addresses the problem of realistic long-context evaluation for LLM developers and researchers, though it is incremental as it builds on existing benchmarking efforts.

The authors tackled the challenge of evaluating large language models (LLMs) with million-token context windows by introducing LongCodeBench, a benchmark for coding tasks, and found that long-context performance is a weakness for all tested models, with drops such as from 29% to 3% for Claude 3.5 Sonnet.

Context lengths for models have grown rapidly, from thousands to millions of tokens in just a few years. The extreme context sizes of modern long-context models have made it difficult to construct realistic long-context benchmarks -- not only due to the cost of collecting million-context tasks but also in identifying realistic scenarios that require significant contexts. We identify code comprehension and repair as a natural testbed and challenge task for long-context models and introduce LongCodeBench (LCB), a benchmark to test LLM coding abilities in long-context scenarios. Our benchmark tests both the comprehension and repair capabilities of LCLMs in realistic and important settings by drawing from real-world GitHub issues and constructing QA (LongCodeQA) and bug fixing (LongSWE-Bench) tasks. We carefully stratify the complexity of our benchmark, enabling us to evaluate models across different scales -- ranging from Qwen2.5 14B Instruct to Google's flagship Gemini model. We find that long-context remains a weakness for all models, with performance drops such as from 29% to 3% for Claude 3.5 Sonnet, or from 70.2% to 40% for Qwen2.5. The LCB dataset is available publicly at https://huggingface.co/datasets/Steefano/LCB and the codebase to replicate the work on this paper at https://github.com/Zteefano/long-code-bench.

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