Safe and Scalable Web Agent Learning via Recreated Websites
arXiv cs.CL / 3/12/2026
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Key Points
- VeriEnv proposes cloning real-world websites into fully executable synthetic environments to train web agents, addressing safety and verifiability issues of exploring live sites.
- The framework uses language models as environment creators and exposes a Python SDK to provide deterministic, programmatically verifiable rewards, reducing reliance on heuristic or LLM-based judges.
- It decouples agent learning from unsafe real-world interaction and enables scalable self-evolution by expanding the number of training environments.
- Experiments on web agent benchmarks show agents trained with VeriEnv generalize to unseen websites and achieve site-specific mastery through self-evolving training, with benefits from scaling training environments.
- Code and resources will be released on GitHub upon acceptance, signaling higher potential for reproducibility and adoption.
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