Improving Language Agents through BREW
Shashank Kirtania, Param Biyani, Priyanshu Gupta, Yasharth Bajpai, Roshni Iyer, Sumit Gulwani, and Gustavo Soares

TL;DR
This paper introduces BREW, a framework that enhances language agents by building and refining structured memory, leading to improved task accuracy and efficiency while maintaining interpretability and computational efficiency.
Contribution
BREW offers a novel method for agent optimization through memory partitioning and knowledge base refinement, improving performance and interpretability over traditional training paradigms.
Findings
10-20% improvement in task precision
10-15% reduction in API/tool calls
Maintains computational efficiency
Abstract
Large Language Model (LLM)-based agents are increasingly applied to tasks requiring structured reasoning, tool use, and environmental adaptation, such as data manipulation, multistep planning, and computer-use automation. However, despite their versatility, current training paradigms for model weight optimization methods, like PPO and GRPO, remain relatively impractical with their high computational overhead for rollout convergence. In addition, the resulting agent policies are difficult to interpret, adapt, or incrementally improve. To address this, we investigate creating and refining structured memory of experiential learning of an agent from its environment as an alternative route to agent optimization. We introduce BREW (Bootstrapping expeRientially-learned Environmental knoWledge), a framework for agent optimization for downstream tasks via KB construction and refinement. In our…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Topic Modeling · Machine Learning and Data Classification
