Agentic Plan Caching: Test-Time Memory for Fast and Cost-Efficient LLM Agents

Neural Information Processing Systems 

LLM-based agent applications have shown increasingly remarkable capabilities in complex workflows but incur substantial costs and latency due to extensive planning and reasoning requirements. Existing LLM caching techniques (like context caching and semantic caching), primarily designed for serving chatbots, are insufficient for agent applications where outputs depend on external data and environmental contexts.