New Course: Build Production-Ready Agentic-RAG Applications From Scratch

New Course: Build Production-Ready Agentic-RAG Applications From Scratch

On Saturday, September 27th, I am launching a new course: Build Production-Ready Agentic-RAG Applications From Scratch! This is a fully hands-on course where we are going to deploy a production-ready Agentic-RAG application with LangGraph, FastAPI, and React! The first 30 people to sign up will get a 20% discount by applying the promo code FIRST20! So make sure to sign up early:

Sign up: Build Production-Ready Agentic-RAG Applications From Scratch

From Prototype to Production: Ship Reliable and Scalable RAG Pipelines

The Real-World AI Engineering Roadblocks You Face Today

👋 Prototype → Production Gap — Moving from a notebook demo to a secure, observable, multi-tenant service requires orchestration, evals, guardrails, and ops most teams lack.

👋 “Easy RAG” vs “Reliable RAG” — Anyone can retrieve-then-generate; making answers faithful, fresh, fast, and cost-controlled under real traffic is the hard part.

👋 Framework Overload — The ecosystem is noisy; you need clear criteria (maturity, extensibility, latency, cost) and reference patterns to choose confidently.

👋 It’s Software Engineering First — Success hinges on clean interfaces, tests, typed configs, tracing, CI/CD, and change management—not just prompts and models.

👋 From Laptop to 1M Users — Scaling demands streaming, batching, caching, autoscaling, and SLOs, or your p95 explodes and costs spiral.

How this course will help you

Ship a real Agentic RAG app, not a demo — Stand up an end-to-end stack—LangGraph → FastAPI → React, that runs locally today and deploys via a clean, fork-and-ship monorepo.

Make retrieval dependable, not lucky — Adopt schema-aware chunking, strong dense embeddings with sensible metadata filters, and context packing with citations so answers stay faithful, fresh, and concise.

Harden agentic workflows — Design a typed LangGraph state and build nodes for rewrite → retrieve → rerank → synthesize → cite → safety-check, with retries and timeouts so plans don’t loop or stall.

Scale the experience, not the headaches — Enable server-streaming in FastAPI, cap top-k, trim context budgets, and add early-exit rules; deploy with autoscaling so you can serve real traffic without infra fuss.

See enough to fix things fast — Bake in structured logs (no vendor tracing), per-step timing counters, and UI breadcrumbs/citations to follow query → context → answer and spot common failure patterns quickly.

Choose frameworks with confidence — Follow an opinionated reference architecture plus a simple choice rubric (maturity, extensibility, latency, cost, swap effort) so you know when to stick—and how to swap components without rewrites.

Write maintainable RAG codeUse clean module boundaries (ingest / retrieve / rerank / synthesize), typed configs (Pydantic Settings), and sensible secrets/env management so your team can extend it safely.

You’ll walk away with

✨ A running Agentic RAG app (LangGraph + FastAPI + React) in a fork-and-ship monorepo.

✨ An ingestion/indexing pipeline with metadata, hybrid retrieval, and optional re-ranking.

✨ A chat UI with citations, source previews, and conversation memory that behaves.

Deploy scripts and env templates to go live right after class.

✨ A framework choice memo + adapters to swap models/vector stores without starting over.

Bottom line: this isn’t a vitamin, it’s a blueprint you can put in production.

What you’ll get out of this course

  • Orchestrate complex RAG pipelines with LangGraph and OpenAI API: Build a typed LangGraph that routes rewrite → retrieve → rerank → synthesize → cite → self-check with retries, timeouts, early-exit rules, and real tool calls, exposed as a clean HTTP API.

  • Build scalable asynchronous applications with FastAPI: Ship async FastAPI endpoints, well-typed request/response models, input validation, and sensible timeouts, ready to run locally and deploy to production.

  • Implement chatbot interfaces with React: Create a chat UI that shows citations and source previews, lets users scope queries, preserves safe chat history, and handles transient API errors gracefully.

  • Mitigate hallucinations with LLM judges, structured output, and context engineering: Cut errors via schema-aware chunking, dedupe and budgeted context packing, plus lightweight LLM checks and schema-constrained outputs to verify claims and enforce citations before responding.

  • Design effective LLM prompts for high-level control on generation output: Write prompts that steer behavior: system prompts, task decomposition, Pydantic/JSON-schema constraints, and clear rules for tone, citations, and safe refusals.

  • Develop end-to-end RAG applications using the software engineering best practices: Produce a maintainable codebase: clean module boundaries (ingest/retrieve/rerank/synthesize), typed configs, secrets/env management, reproducible local dev, and deploy that mirrors local.

Sign up: Build Production-Ready Agentic-RAG Applications From Scratch

Vincent Valentine 🔥

CEO UnOpen.Ai | exCEO Cognitive.Ai | Building Next-Generation AI Services | Available for Podcast Interviews | Partnering with Top-Tier Brands to Shape the Future

2d

What an exciting initiative. Hands-on courses truly bridge the gap between theory and practice, fostering real growth. How might this training pave the way for innovative applications? #LearningByDoing

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Valencia Walker

ML Software Engineer AI Intern & Technology Marketing Director @ OpenQQuantify | @CTU BSC Computer Science Student| Full-Stack IBM Developer

2d

Thanks for sharing, At OpenQQuantify and Tomorrows AI, we’re helping students, startups, and tech teams grow through personalized tutoring, mentorship, and hands-on support in AI, web development, and machine learning. We also work across custom hardware, robotics, LLMs, quantum-electronics simulations, and 3D digital twins. Whether you’re building your skills or launching something new, we’re here to help turn ideas into execution—and we’re open to new partnerships. 📅 Book a Free Consulting & Strategy Session (limited time only): https://calendly.com/openqquantifyexecutivemeeting/businessdevelopment 🎯 1:1 Tutoring (AI, Web Dev, ML & more): https://www.openqquantify.com/online-tutoring

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