A Python-based Agentic RAG system that uses local LLMs (Ollama) for intelligent documentation crawling, summarization, and vector embeddings (Supabase). Features a self-correcting agentic loop that dynamically refines answers through tool usage and validation, providing a robust, local solution for accurate information retrieval and generation.
Cross-referenced across 55 tracked directories
#650
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Emerging
Adoption Stage
6/13/2025
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Score: 100/100
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sgx-labs
Your AI forgets everything between sessions. SAME fixes that. Local-first, no API keys, single binary.
EcuaByte-lat
Cortex System: The Operating System for AI Engineering. Cure Technical Amnesia.
aayoawoyemi
Local-first persistent memory for AI agents. Knowledge graph + ACT-R decay + three-signal retrieval. Agents wake up as themselves. MCP server (14 tools) for Claude, Cursor, Windsurf, Cline.
...moreSufficientDaikon
[PAUSED] Autonomous Agent Orchestration Framework — multi-agent LLM coordination with 28 subsystems, built on Bun
1/8/2026
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Recently added to the ecosystem