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Learning to Configure Agentic AI Systems

Learning per-query agent configurations through reinforcement learning improves task accuracy while reducing computational costs compared to fixed templates and hand-tuned heuristics.

Year
2026
Venue
arXiv 2026
Authors
3
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Abstract onlyARXIV-DEFAULT

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arxiv.org/abs/2602.11574ARXIV-DEFAULT
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Abstract

Configuring LLM-based agent systems involves choosing workflows, tools, token budgets, and prompts from a large combinatorial design space, and is typically handled today by fixed large templates or hand-tuned heuristics. This leads to brittle behavior and unnecessary compute, since the same cumbersome configuration is often applied to both easy and hard input queries. We formulate agent configuration as a query-wise decision problem and introduce ARC (Agentic Resource & Configuration learner), which learns a light-weight hierarchical policy using reinforcement learning to dynamically tailor these configurations. Across multiple benchmarks spanning reasoning and tool-augmented question answering, the learned policy consistently outperforms strong hand-designed and other baselines, achieving up to 25% higher task accuracy while also reducing token and runtime costs. These results demonstrate that learning per-query agent configurations is a powerful alternative to "one size fits all" designs.

Authors

3