DataSage: Multi-agent Collaboration for Insight Discovery with External Knowledge Retrieval, Multi-role Debating, and Multi-path Reasoning

arXiv — cs.CLTuesday, November 25, 2025 at 5:00:00 AM
  • DataSage has been introduced as a multi-agent framework designed to enhance insight discovery through external knowledge retrieval, multi-role debating, and multi-path reasoning. This innovative approach aims to overcome limitations in existing data insight agents, which often struggle with domain knowledge utilization and analytical depth.
  • The development of DataSage is significant as it represents a step forward in automating data analytics, enabling organizations to derive actionable insights more effectively. This could lead to improved decision-making processes across various sectors.
  • This advancement aligns with ongoing trends in artificial intelligence, particularly the integration of large language models and agent technologies. The focus on enhancing collaboration and reasoning capabilities reflects a broader movement towards more sophisticated AI systems that can adapt and learn from diverse data sources.
— via World Pulse Now AI Editorial System

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