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POLCA: Stochastic Generative Optimization with LLM

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Optimizing complex systems, ranging from LLM prompts to multi-turn agents, traditionally requires labor-intensive manual iteration. We formalize this challenge as a stochastic generative optimization problem where a generative language model acts as the optimizer, guided by numerical rewards and text feedback to discover the best system. We introduce Prioritized Optimization with Local Contextual Aggregation (POLCA), a scalable framework designed to handle stochasticity in optimization -- such as noisy feedback, sampling minibatches, and stochastic system behaviors -- while effectively managing the unconstrained expansion of solution space. POLCA maintains a priority queue to manage the exploration-exploitation tradeoff, systematically tracking candidate solutions and their evaluation histories. To enhance efficiency, we integrate an $\varepsilon$-Net mechanism to maintain parameter diversity and an LLM Summarizer to perform meta-learning across historical trials. We theoretically prove that POLCA converges to near-optimal candidate solutions under stochasticity. We evaluate our framework on diverse benchmarks, including $\tau$-bench, HotpotQA (agent optimization), VeriBench (code translation) and KernelBench (CUDA kernel generation). Experimental results demonstrate that POLCA achieves robust, sample and time-efficient performance, consistently outperforming state-of-the-art algorithms in both deterministic and stochastic problems. The codebase for this work is publicly available at https://github.com/rlx-lab/POLCA.

Xuanfei Ren, Allen Nie, Tengyang Xie, Ching-An Cheng• 2026

Related benchmarks

TaskDatasetResultRank
Formal VerificationVeriBench
Pass Rate95.2
4
Tool-Use Agent Evaluationτ-bench retail domain (First 10 tasks)
Pass@1 Success Rate57.5
4
Tool-Use Agent Evaluationτ-bench retail domain (Last 105 tasks)
Pass@142.5
4
Tool-Use Agent Evaluationτ-bench retail domain (All 115 tasks)
Pass@143.9
4
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