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News/SetupX: Can LLM Agents Learn from Past Failures in Functionality-Correct Code Repository Setup?
arxiv
PublishedMay 27, 2026 at 4:00 AM

SetupX: Can LLM Agents Learn from Past Failures in Functionality-Correct Code Repository Setup?

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arXiv:2605.26186v1 Announce Type: cross Abstract: Functionality-correct repository setup aims to configure execution environments (e.g., dependencies, build scripts) to successfully execute a repository's documented features. It presents significant challenges due to diverse, repository-specific fai

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