AI researcher · Community builder – reaching 500 000+ developers every month
Turning cutting‑edge AI research into reliable, production‑ready systems
I publish vendor‑neutral Jupyter tutorials on prompt engineering, Retrieval‑Augmented Generation, LangChain and LangGraph agents, vector search, and guardrails.
- Reach - 500 000+ developer views per month
- Format - clear, reproducible notebooks with no paywalls or ads
- Goal - give developers runnable examples while partners gain authentic adoption
Interested? Contact me on
LinkedIn or at Diamant‑AI.com.
Repository | What you learn | Live Stars |
---|---|---|
Agents Towards Production | Step‑by‑step notebook tutorials that cover ingestion, retrieval, memory, tool routing, guardrails, evaluation, observability, CI/CD, cost tracking, security, and cloud deployment for production‑ready AI agents. | |
Prompt Engineering | A 20‑chapter notebook series that moves from prompt basics to advanced techniques with hands‑on code examples and exercises drawn from the 170‑page Prompt Engineering handbook. | |
RAG Techniques | More than 30 tutorials demonstrating Retrieval‑Augmented Generation methods, evaluation metrics, and best practices to build accurate and efficient RAG pipelines. | |
GenAI Agents | Guides and reference implementations for building chatbots, autonomous agents, and multi‑agent workflows with memory and tool integrations. |
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Subscribe - 🧑💻 r/EducationalAI – discuss prompts, RAG pipelines, and agent designs
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Join the server - 🔗 LinkedIn – follow for fresh tutorials, project updates, and new Gen AI tech highlights
Connect
- ⭐ Star the repositories you use – it boosts visibility
- ☕ Sponsor via GitHub Sponsors or Buy Me a Coffee
- 📢 Share tutorials with colleagues and on social media
Thank you for helping keep Generative AI education free for everyone 🙏