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RocqSmith: Can Automatic Optimization Forge Better Proof Agents?

Andrei Kozyrev
Nikita Khramov
Denis Lochmelis
Valerio Morelli
Gleb Solovev
Anton Podkopaev
Main:4 Pages
Bibliography:2 Pages
1 Tables
Abstract

This work studies the applicability of automatic AI agent optimization methods to real-world agents in formal verification settings, focusing on automated theorem proving in Rocq as a representative and challenging domain. We evaluate how different automatic agent optimizers perform when applied to the task of optimizing a Rocq proof-generation agent, and assess whether parts of the fine-grained tuning of agentic systems, such as prompt design, contextual knowledge, and control strategies, can be automated. Our results show that while several optimizers yield measurable improvements, simple few-shot bootstrapping is the most consistently effective; however, none of the studied methods matches the performance of a carefully engineered state-of-the-art proof agent.

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