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SWE-CI: Evaluating Agent Capabilities in Maintaining Codebases via Continuous Integration

SWE-CI presents a repository-level benchmark for evaluating code generation agents' ability to maintain code quality through long-term software evolution cycles.

Year
2026
Venue
arXiv 2026
Authors
5
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Abstract onlyARXIV-DEFAULT

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arxiv.org/abs/2603.03823ARXIV-DEFAULT
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Abstract

Large language model (LLM)-powered agents have demonstrated strong capabilities in automating software engineering tasks such as static bug fixing, as evidenced by benchmarks like SWE-bench. However, in the real world, the development of mature software is typically predicated on complex requirement changes and long-term feature iterations -- a process that static, one-shot repair paradigms fail to capture. To bridge this gap, we propose SWE-CI, the first repository-level benchmark built upon the Continuous Integration loop, aiming to shift the evaluation paradigm for code generation from static, short-term functional correctness toward dynamic, long-term maintainability. The benchmark comprises 100 tasks, each corresponding on average to an evolution history spanning 233 days and 71 consecutive commits in a real-world code repository. SWE-CI requires agents to systematically resolve these tasks through dozens of rounds of analysis and coding iterations. SWE-CI provides valuable insights into how well agents can sustain code quality throughout long-term evolution.

Authors

5