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Bibliographic Details
Main Authors: Chen, Guhong, Sun, Chenghao, Fu, Cheng, Wang, Qiyao, Huang, Zhihong, Wei, Chaopeng, Chen, Guangxu, Fang, Feiteng, Argha, Ahmadreza, Zhao, Bing, Xu, Xander, Han, Qi, Alinejad-Rokny, Hamid, Qu, Qiang, Li, Binhua, Ni, Shiwen, Yang, Min, Wei, Hu, Li, Yongbin
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.03219
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Table of Contents:
  • As code large language models (LLMs) evolve into tool-interactive agents via the Model Context Protocol (MCP), their generalization is increasingly limited by low-quality synthetic data and the diminishing returns of quantity scaling. Moreover, quantity-centric scaling exhibits an early bottleneck that underutilizes trajectory data. We propose TDScaling, a Trajectory Diversity Scaling-based data synthesis framework for code agents that scales performance through diversity rather than raw volume. Under a fixed training budget, increasing trajectory diversity yields larger gains than adding more trajectories, improving the performance-cost trade-off for agent training. TDScaling integrates four innovations: (1) a Business Cluster mechanism that captures real-service logical dependencies; (2) a blueprint-driven multi-agent paradigm that enforces trajectory coherence; (3) an adaptive evolution mechanism that steers synthesis toward long-tail scenarios using Domain Entropy, Reasoning Mode Entropy, and Cumulative Action Complexity to prevent mode collapse; and (4) a sandboxed code tool that mitigates catastrophic forgetting of intrinsic coding capabilities. Experiments on general tool-use benchmarks (BFCL, tau^2-Bench) and code agent tasks (RebenchT, CodeCI, BIRD) demonstrate a win-win outcome: TDScaling improves both tool-use generalization and inherent coding proficiency. We plan to release the full codebase and the synthesized dataset (including 30,000+ tool clusters) upon publication.