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🧠 Building AI on the Cloud

Build production AI on AWS Bedrock, GCP Vertex AI, and Azure AI Foundry — managed models, RAG, agents, guardrails, and governance.

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Start: Managed LLM APIs →
📊 Assess your Building AI on the Cloud level to see exactly which modules to focus on.Assess →
1
Managed LLM APIs
Call frontier models through a single endpoint with zero GPUs to manage, keeping data inside your cloud's IAM, networking, and compliance boundary.
Free
2
AWS Bedrock
One AWS API unlocks many model providers, plus Knowledge Bases for managed RAG, Agents for tool-using workflows, and Guardrails for content and PII policy.
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Chapter review
Chapter 1 review — Managed models & Bedrock
Lab: Grounded on Bedrock · 10-question check
🔒 Standard
3
GCP Vertex AI
Google's Vertex AI pairs Gemini and a model garden with Vertex AI Search for grounded retrieval, Agent Builder for agents, and built-in embeddings and evaluation.
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4
Azure AI Foundry
Bring Azure OpenAI into the Microsoft stack with "on your data" RAG, Content Safety guardrails, prompt flow orchestration, and private endpoints for network isolation.
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Chapter review
Chapter 2 review — Vertex & Azure
Lab: Ground it on two clouds · 10-question check
🔒 Standard
5
RAG on the Cloud
Let managed knowledge bases and vector stores handle chunking, embedding, indexing, and retrieval, so you ship the app instead of maintaining a vector database.
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6
Production & Governance
Ship cloud AI that survives production by routing, caching, and capping tokens for cost, locking down least-privilege IAM and private networking, and monitoring to stay reliable.
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Chapter review
Chapter 3 review — RAG & production
Lab: Productionize managed RAG · 10-question check
🔒 Standard
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Final exam
Building AI on the Cloud — comprehensive capstone
Hands-on capstone + course-wide exam · scored to a role level
🔒 Professional