Jian Yuan
2025
The Art of Tool Interface Design
Yunnan Wu
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Qile P. Chen
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Deshank Baranwal
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Jinlong Zhou
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Jian Yuan
Proceedings of the 1st Workshop for Research on Agent Language Models (REALM 2025)
We present an agentic framework, Thinker, which achieves state of art performance in challenging reasoning tasks for realistic customer service scenarios that involve complex business logic and human interactions via long horizons. On the 𝜏-bench retail dataset, Thinker achieves 82.6% success rate with GPT-4o (version 2024-06-01) (baseline: 68.3%), and 81.9% success rate with Llama-3.1 405B (baseline: 49.6%), without any fine-tuning. Thinker effectively closes the gap in reasoning capabilities between the base models by introducing proper structure.The key features of the Thinker framework are: (1) State-Machine Augmented Generation (SMAG), which represents business logic as state machines and the LLM uses state machines as tools. (2) Delegation of tasks from the main reasoning loop to LLM-powered tools.(3) Adaptive context management.Our prompting-only solution achieves signficant gains, while still maintaining a simple and standard agentic architecture with a ReAct style reasoning loop. The key is to innovate on the tool interface design, as exemplified by SMAG and the LLM-powered tools.
2021
Leveraging Argumentation Knowledge Graph for Interactive Argument Pair Identification
Jian Yuan
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Zhongyu Wei
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Donghua Zhao
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Qi Zhang
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Changjian Jiang
Findings of the Association for Computational Linguistics: ACL-IJCNLP 2021
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- Deshank Baranwal 1
- Qile P. Chen 1
- Changjian Jiang 1
- Zhongyu Wei (魏忠钰) 1
- Yunnan Wu 1
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