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== 1. Motivation and Scope ==
Large Language Models (LLMs) have evolved from powerful text generators to autonomous agents capable of decision-making, tool use, and complex task execution. The emergence of LLM-driven agents represents a paradigm shift in AI—where foundation models serve not just as passive engines but as interactive, goal-directed systems.
Despite exciting progress, fundamental theoretical challenges remain: What are the formal models of LLM-driven agency? How can we ensure safety, alignment, planning consistency, and memory grounding? Moreover, the transition from lab settings to real-world applications in domains like software engineering, healthcare, education, and robotics raises additional questions about robustness, deployment, evaluation, and cost-efficiency.

This workshop aims to bridge the gap between theory and practice by uniting researchers and practitioners working on various aspects of LLM-driven agents.

== 2. Topics of Interest (including but not limited to) ==
 * Formal models of agentic behavior in LLMs
 * Planning, reasoning, and memory in agent systems
 * Safety, alignment, and interpretability of LLM agents
 * Evaluation benchmarks and metrics for agentic performance
 * Resource efficiency and deployment challenges
 * Multi-agent collaboration and communication
 * Human-AI collaboration
 * Multi-modal and embodied LLM agents
 * Tool-augmented and API-enabled agents
 * Agentic applications

The 1st International Workshop on LLM-Driven Agents

- Unleashing the Power of LLM-Driven Agents: From Theory to Real-World Applications

1. Motivation and Scope

Large Language Models (LLMs) have evolved from powerful text generators to autonomous agents capable of decision-making, tool use, and complex task execution. The emergence of LLM-driven agents represents a paradigm shift in AI—where foundation models serve not just as passive engines but as interactive, goal-directed systems. Despite exciting progress, fundamental theoretical challenges remain: What are the formal models of LLM-driven agency? How can we ensure safety, alignment, planning consistency, and memory grounding? Moreover, the transition from lab settings to real-world applications in domains like software engineering, healthcare, education, and robotics raises additional questions about robustness, deployment, evaluation, and cost-efficiency.

This workshop aims to bridge the gap between theory and practice by uniting researchers and practitioners working on various aspects of LLM-driven agents.

2. Topics of Interest (including but not limited to)

  • Formal models of agentic behavior in LLMs
  • Planning, reasoning, and memory in agent systems
  • Safety, alignment, and interpretability of LLM agents
  • Evaluation benchmarks and metrics for agentic performance
  • Resource efficiency and deployment challenges
  • Multi-agent collaboration and communication
  • Human-AI collaboration
  • Multi-modal and embodied LLM agents
  • Tool-augmented and API-enabled agents
  • Agentic applications

wise2025 (last edited 2025-07-05 14:33:10 by ZhangYong)