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Multi-source AI news clustered, deduplicated, and scored 0–100 across authority, cluster strength, headline signal, and time decay.

  1. TimeClaw: A Time-Series AI Agent with Exploratory Execution Learning

    Researchers have introduced TimeClaw, a novel AI agent designed for time-series analysis that goes beyond simple execution by learning from exploratory processes. This framework employs a four-stage loop—Explore, Compare, Distill, and Reinject—to transform exploratory executions into reusable hierarchical experience. By keeping the base model frozen and avoiding online adaptation, TimeClaw demonstrated consistent performance gains across 17 finance and weather prediction tasks in an MTBench-aligned evaluation, highlighting the importance of experience reuse in AI systems. AI

    TimeClaw: A Time-Series AI Agent with Exploratory Execution Learning

    IMPACT Introduces a new method for AI agents to learn from exploratory execution, potentially improving performance in complex time-series tasks.