klotz: retrieval-augmented generation* + agents*

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  1. FailSafe is an open-source, modular framework designed to automate the verification of textual claims. It employs a multi-stage pipeline that integrates Large Language Models (LLMs) with retrieval-augmented generation (RAG) techniques.
  2. A tutorial showing how to use the MCP framework with EyelevelAI's GroundX to build a Retrieval-Augmented Generation (RAG) system for complex documents, including setup of a local MCP server, creation of ingestion and search tools, and integration with the Cursor IDE.
  3. A curated repository of AI-powered applications and agentic systems showcasing practical use cases of Large Language Models (LLMs) from providers like Google, Anthropic, OpenAI, and self-hosted open-source models.
  4. Guides, papers, lessons, notebooks and resources for prompt engineering, context engineering, RAG, and AI Agents.
  5. A course teaching everything you need to know to start building AI Agents. Includes 12 lessons, code samples, and multi-language support.
  6. A curated collection of Awesome LLM apps built with RAG, AI Agents, Multi-agent Teams, MCP, Voice Agents, and more. This repository features LLM apps that use models from OpenAI, Anthropic, Google, xAI and open-source models like Qwen or Llama.
  7. The article explores whether combining a command-line agent (like Claude Code or Gemini CLI) with Unix-like file system tools and SemTools is sufficient for complex tasks, particularly document search. It details a benchmark testing the limits of coding agents with and without SemTools, focusing on search, cross-referencing, and temporal analysis. The conclusion is that CLI access is powerful and SemTools enhances agent capabilities for document search and RAG.
  8. This article discusses the importance of knowledge graphs in providing context for AI agents, highlighting their advantages over traditional retrieval systems in terms of precision, reasoning, and explainability.
  9. A 100-line minimalist LLM framework for Agents, Task Decomposition, RAG, etc. It models the LLM workflow as a Graph + Shared Store with nodes handling simple tasks, connected through actions for agents, and orchestrated by flows for task decomposition.
  10. Llama Stack v0.1.0 introduces a stable API release enabling developers to build RAG applications and agents, integrate with various tools, and use telemetry for monitoring and evaluation. This release provides a comprehensive interface, rich provider ecosystem, and multiple developer interfaces, along with sample applications for Python, iOS, and Android.
    2025-01-25 Tags: , , , , , by klotz

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