Core Concepts
Proposing the CACA Agent system for collaborative AI capabilities.
Abstract
Abstract:
Introducing CACA Agent as a collaborative AI system.
Addressing challenges in deploying and expanding AI agents.
Introduction:
Highlighting the significance of Large Language Models (LLMs) in AI Agents.
Discussing the importance of planning abilities and tool interactions.
Related Works:
Exploring planning capabilities and methodology enhancements.
Discussing tool utilization by AI Agents through APIs.
System Architecture:
Detailing the overall design with collaborative capabilities.
Describing key workflows involving Planning, Memory, and Tools functions.
Demo:
Presenting use cases illustrating workflow and extensibility scenarios.
Conclusion:
Summarizing the benefits of CACA Agent for enhancing AI agent functionalities.
Stats
"As AI Agents based on Large Language Models (LLMs) have shown potential in practical applications across various fields."
"Previous studies mainly focused on implementing all the reasoning capabilities of AI agents within a single LLM."
"Utilizing the proposed system, we present a demo to illustrate the operation and the application scenario extension of CACA Agent."