Dual-Cycle Reasoner
Empowers autonomous agents with self-awareness and reliability through intelligent loop detection and experience acquisition.
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The Dual-Cycle Reasoner is a Model Context Protocol (MCP) server that implements the Dual-Cycle Metacognitive Reasoning Framework for autonomous agents. It empowers agents with greater self-awareness and reliability by providing advanced capabilities for intelligent loop detection and continuous experience acquisition, allowing them to monitor their own cognitive processes, detect issues, and learn from past interactions to improve future performance.
Características Principales
- Multi-Strategy Loop Detection: Combines statistical, pattern-based, and hybrid methods to identify agent loops.
- Advanced Statistical Analysis: Entropy-based anomaly detection and time series analysis for cognitive traces.
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- Intelligent Case Management: Features quality scoring, deduplication, and usage-based optimization for learned experiences.
- Enhanced Case-Based Reasoning: Semantic similarity matching with NLI-based text analysis for experience retrieval.
- Configurable Metacognitive Monitoring: Allows domain-specific thresholds and progress indicators for tailored detection.
Casos de Uso
- Developing metacognitive AI systems that possess self-monitoring and self-regulation capabilities.
- Enhancing autonomous agent performance by intelligently learning from past experiences and adapting problem-solving strategies.
- Building robust autonomous agents capable of preventing and recovering from failure states.