LOGIGEN: Logic-Driven Generation of Verifiable Agentic Tasks
Yucheng Zeng, Weipeng Lu, Linyun Liu, Shupeng Li, Zitian Qu, Chenghao Zhu, Shaofei Li, Zhengdong Tan, Mengyue Liu, Haotian Zhao, Zhe Zhou, Jianmin Wu

TL;DR
LOGIGEN introduces a logic-driven framework for generating verifiable, complex training data for autonomous agents, significantly improving success rates by combining policy grounding, environment synthesis, and state verification.
Contribution
The paper presents LOGIGEN, a novel framework that synthesizes verifiable training data using logic-driven methods, enabling more reliable and complex agent training.
Findings
LOGIGEN-32B(RL) achieves 79.5% success rate on τ²-Bench.
The framework generates 20,000 complex, verifiable tasks across 8 domains.
Verification guarantees strict state equivalence and policy compliance.
Abstract
The evolution of Large Language Models (LLMs) from static instruction-followers to autonomous agents necessitates operating within complex, stateful environments to achieve precise state-transition objectives. However, this paradigm is bottlenecked by data scarcity, as existing tool-centric reverse-synthesis pipelines fail to capture the rigorous logic of real-world applications. We introduce \textbf{LOGIGEN}, a logic-driven framework that synthesizes verifiable training data based on three core pillars: \textbf{Hard-Compiled Policy Grounding}, \textbf{Logic-Driven Forward Synthesis}, and \textbf{Deterministic State Verification}. Specifically, a Triple-Agent Orchestration is employed: the \textbf{Architect} compiles natural-language policy into database constraints to enforce hard rules; the \textbf{Set Designer} initializes boundary-adjacent states to trigger critical policy…
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Taxonomy
TopicsTopic Modeling · Multimodal Machine Learning Applications · Reinforcement Learning in Robotics
