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Udemy

AI Engineer Production Track: Deploy LLMs & Agents at Scale

via Udemy

Overview

Deploy AI to AWS, GCP, Azure, Vercel with MLOps, Bedrock, SageMaker, RAG, Agents, MCP: scalable, secure and observable.

What you'll learn:
  • Deploy SaaS LLM apps to production on Vercel, AWS, Azure, and GCP, using Clerk
  • Design cloud architectures with Lambda, S3, CloudFront, SQS, Route 53, App Runner and API Gateway
  • Integrate with Amazon Bedrock and SageMaker, and build with GPT-5, Claude 4, OSS, AWS Nova and HuggingFace
  • Rollout to Dev, Test and Prod automatically with Terraform and ship continuously via GitHub Actions
  • Deliver enterprise-grade AI solutions that are scalable, secure, monitored, explainable, observable, and controlled with guardrails.
  • Create Multi-Agent systems and Agentic Loops with Amazon Bedrock AgentCore and Stands Agents

This is the course that more of my students have asked for than any other course — put together.

One student called it:

“The missing course in AI.”

This course is for:


  • Entrepreneurs

  • Enterprise engineers

  • …and everyone in between.


It’s not just about RAG — although we’ll work with RAG.

It’s not just about Agents — but there will be many Agents.

It’s not just about MCP — but yes, there will be plenty of MCP too.


This course is about:

RAG, Agents, MCP, and so much more… deployed to production.

Live.

Enterprise-grade.

Scalable, resilient, secure, monitored — and explained.

You’ll ship real-world, production-grade AI with LLMs and agents across Vercel, AWS, GCP, and Azure, going deepest on AWS.


Across four weeks you’ll take four products to production:

Week 1

You’ll launch a Next.js SaaS product on Vercel and AWS,

with AWS App Runner and Clerk for user management and subscriptions.


Week 2

You’ll become an AI platform engineer on AWS,

deploying serverless infrastructure using:

  • Lambda, Bedrock, API Gateway, S3, CloudFront, Route 53

  • Write Infrastructure as Code with Terraform

  • Set up CI/CD pipelines with GitHub Actions

    — for hands-free deployments and one-click promotions.


Week 3

You’ll gain broad industry skills for GenAI in production:

  • Deploy a Cyber Security Analyst agent with MCP to Azure & GCP

  • Stand up SageMaker inference

  • Build data ingest to S3 vectors

  • Deploy a Researcher Agent using OpenAI OSS models on Bedrock + MCP


Week 4

You’ll go fully agentic in production:

  • Architect multi-agent systems with:

    • Aurora Serverless, Lambda, SQS

    • JWT-authenticated CloudFront frontends

    • LangFuse observability

    • Overview of AWS Agent Core


By the end, you’ll know how to:

  • Pick the right architecture

  • Lock down security

  • Monitor costs

  • Deliver continuous updates


Everything needed to run scalable, reliable AI apps in production.


Course sections (Weeks & Projects)

Week 1

SaaS App Live in Production with Vercel, AWS, Next.js, Clerk, App Runner

Project: SaaS Healthcare App


Week 2

AI Platform Engineering on AWS with Bedrock, Lambda, API Gateway, Terraform, CI/CD

Project: Digital Twin Mk II


Week 3

Gen AI in Production with Azure, GCP, AWS SageMaker, S3 Vectors, MCP

Project: Cybersecurity Analyst


Week 4

Agentic AI in Production: Build and deploy a Multi-Agent System on AWS (Aurora Serverless, Lambda, SQS),

with LangFuse and Bedrock AgentCore

Capstone Project: SaaS Financial Planner


Syllabus

  • Week 1
  • Week 2
  • Week 3
  • Week 4

Taught by

Ligency ​ and Ed Donner

Reviews

4.7 rating at Udemy based on 2260 ratings

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