Papers
arxiv:2602.11574

Learning to Configure Agentic AI Systems

Published on Feb 12
· Submitted by
Aditya Taparia
on Feb 17
Authors:

Abstract

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

AI-generated summary

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.

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Paper author Paper submitter

Building agentic systems is hard, but configuring them is even harder.

We all know the struggle: Which LLM should handle the planning? Which tool does it need? How much context is too much? What is the most effective workflow?

In our new paper, Learning to Configure Agentic AI Systems, we propose a framework (called ARC) that automates these decisions. Instead of manual trial-and-error, we use a Hierarchical Reinforcement Learning (HRL) algorithm to dynamically find the best configuration for a given input.

#AgenticAI #LLMs #ReinforcementLearning

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