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TREX: Automating LLM Fine-tuning via Agent-Driven Tree-based Exploration

Zerun Ma, Guoqiang Wang, Xinchen Xie, Yicheng Chen, He Du, Bowen Li, Yanan Sun, Wenran Liu, Kai Chen, Yining Li

36

Recommendation Score

breakthrough🔴 AdvancedNLPLLM ReasoningAI AgentsBenchmarkUseful for both

Research context

Primary field

NLP

Language understanding, generation, extraction, and evaluation.

Topics

LLM Reasoning, AI Agents

Paper type

Benchmark

Best for

Useful for both

arXiv categories

cs.AIcs.CLcs.AI

Why It Matters

TREX automates end-to-end LLM fine-tuning using multi-agent collaboration, eliminating manual hyperparameter tuning and workflow design—critical for teams scaling LLM deployment without expert ML engineers.

Abstract

While Large Language Models (LLMs) have empowered AI research agents to perform isolated scientific tasks, automating complex, real-world workflows, such as LLM training, remains a significant challenge. In this paper, we introduce TREX, a multi-agent system that automates the entire LLM training life-cycle. By orchestrating collaboration between two core modules-the Researcher and the Executor-the system seamlessly performs requirement analysis, open-domain literature and data research, formulation of training strategies, preparation of data recipes, and model training and evaluation. The multi-round experimental process is modeled as a search tree, enabling the system to efficiently plan exploration paths, reuse historical results, and distill high-level insights from iterative trials. To evaluate the capability of automated LLM training, we construct FT-Bench, a benchmark comprising 10 tasks derived from real-world scenarios, ranging from optimizing fundamental model capabilities to enhancing performance on domain-specific tasks. Experimental results demonstrate that the TREX agent consistently optimizes model performance on target tasks.

Published April 15, 2026
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