The EvoAgentX way to build agents that read, retrieve, and reason.
What if building a Retrieval-Augmented Generation (RAG) system was as easy as describing your goal in plain language?
With EvoAgentX — it is.
We've just launched a powerful, fully integrated RAG engine in our open-source framework. Whether you're building intelligent Q&A systems, internal knowledge agents, or domain-specific copilots, you can now do it faster and smarter with:
🧠 Auto-generated RAG workflows
📄 Load any dataset (TXT, JSON, PDF…)
🧩 Chunk, embed (OpenAI), vectorize (FAISS)
🔍 Retrieve with built-in querying
💾 Save & reload your index on demand
And yes — all of this is directly plug-and-play with EvoAgentX's multi-agent system. The same framework that supports:
⚙️ One-click agent deployment
📈 Self-evolving workflows
🛠️ Human-in-the-loop control
📚 Long-term memory with vector + graph backends
The RAGEngine is designed for builders, researchers, and startups that want real capabilities without re-inventing infrastructure.
🔗 Explore the full tutorial here:
https://github.com/EvoAgentX/EvoAgentX/blob/main/examples/rag_tutorial.py
⭐️ GitHub Stars: 1000+ and counting
If you're looking to build something that thinks, remembers, and retrieves, EvoAgentX is your launchpad.
Let’s redefine what agents can do. Together.
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