Complete AI Learning Hub · 2026

Your complete guide to
AI — 360°

Structured learning for every role — from first prompt to enterprise architect.

From your first AI prompt to enterprise-scale autonomous agent systems — explore every major AI tool, compare platforms, follow structured learning paths, and earn certifications on multiple platforms. AWS & GCP tracks coming next.
🗺️
Choose your platform
Multiple AI platforms covered
Microsoft AI
Copilot Studio · Azure AI Foundry · OpenAI · Semantic Kernel
Live ✓
AWS AI
Bedrock · SageMaker · Amazon Q · Agents
Live ✓
Google Cloud AI
Vertex AI · Gemini · Agent Builder
Coming
Your progress 0%
Start marking modules complete to track your journey
AI Tools Landscape · 2026

The major AI tools — and when to use each

Before choosing a platform, understand what's available today. An honest side-by-side of the six leading AI tools, their strengths, and the right use case for each.

🤖
ChatGPT
OpenAI · GPT-4o / o3

The most widely used AI assistant globally. Best all-round capability — writing, coding, reasoning, image generation, voice, data analysis. Largest ecosystem of custom GPTs and integrations.

🎯 Best for
All-roundCreative writingImage gen
Free / $20 mo (Plus)Try it →
Claude
Anthropic · Opus 4 / Sonnet 4

Leading model for nuanced writing, long-document analysis, and coding benchmarks. 200K context window. Claude Code excels at agentic terminal-based development.

🎯 Best for
Long docsPrecise writingAgentic coding
Free / $20 mo (Pro)Try it →
💎
Google Gemini
Google · Gemini 2.5 Pro / Flash

Deeply integrated with Google Workspace — Docs, Gmail, Sheets, Meet. 1M token context window. Best for multilingual tasks and teams already running on Google infrastructure.

🎯 Best for
Google WorkspaceMultilingual1M context
Free / $20 mo (Advanced)Try it →
🪟
Microsoft Copilot
Microsoft · GPT-4o + M365 native

AI embedded in Word, Excel, PowerPoint, Outlook, and Teams. Only tool with direct access to your actual files, emails, and calendar. Copilot Studio extends it with custom agents.

🎯 Best for
Microsoft 365EnterpriseCustom agents
Free (basic) / $30/user/moTry it →
🔍
Perplexity
Perplexity AI · Real-time web

A research engine, not a chatbot. Every answer comes with cited sources from live web data. Best when you need verifiable, up-to-date information fast. Not designed for writing or coding.

🎯 Best for
ResearchFact-checkingCited answers
Free / $20 mo (Pro)Try it →
💻
GitHub Copilot
GitHub / Microsoft · Developer AI

The developer's AI companion inside VS Code, JetBrains, and the terminal. Writes, explains, and debugs code inline. Copilot Workspace enables full agentic feature development from issue to PR.

🎯 Best for
Code completionCode reviewAgentic dev
Free tier / $10 moTry it →

When to use which AI tool

✍️
Writing & long documents

Nuanced prose, editing, or analysis of large documents?

→ Use Claude
💻
Coding & development

Code completion, reviews, or agentic feature building?

→ GitHub Copilot + Claude Code
🔍
Research & fact-checking

Need current, cited, verifiable answers?

→ Use Perplexity
📊
Microsoft 365 productivity

Working in Word, Excel, Outlook, Teams daily?

→ Use Microsoft Copilot
🏢
Building enterprise agents (MS)

Custom no-code agent on Microsoft infrastructure?

→ Copilot Studio (see MS track)
🟠
Building AI apps on AWS

Foundation models, RAG, agents on AWS infrastructure?

→ Amazon Bedrock (see AWS track)
🎨
All-round daily tasks

General productivity, image generation, voice, custom GPTs?

→ Use ChatGPT Plus
⚙️
Enterprise AI engineering

Production AI with fine-tuned models and vector search?

→ Azure AI Foundry or AWS Bedrock
Start here

What best describes you?

Jump straight to the content that's most relevant for your role and goal.

💼
Business User
I use M365 daily and want AI to help me work smarter
Go to M365 Copilot →
🏗️
Low-code Maker
I want to build custom agents and chatbots without coding
Go to Copilot Studio →
💻
Developer
I want to build AI apps on Azure or AWS using code and APIs
Go to AI Foundry / Bedrock →
🎯
Leader / Architect
I need to understand AI strategy, governance, and enterprise deployment
Go to governance & certs →
🪟
Microsoft AI Platform
Copilot · Copilot Studio · Azure AI Foundry · Semantic Kernel · Certifications
Platform → Learning paths →
Microsoft AI Ecosystem

The Microsoft AI platform — what does what

Microsoft offers multiple AI products. Understanding how they fit together is the first step to building on the right foundation.

🤖
Microsoft Copilot
AI assistant · Built-in to M365

AI embedded in Word, Excel, PowerPoint, Outlook, Teams, and Edge. Reactive — you ask, it helps. GPT-4o powered. Best starting point for business users.

M365 integratedNo-codeBusiness users
Learn more
🏗️
Copilot Studio
Agent builder · Low-code platform

Build custom AI agents without code. Design, configure, connect to SharePoint or APIs, and deploy to Teams, websites, or M365 Copilot.

Low-codeAgent builderPower Platform
Learn more
Azure OpenAI Service
Foundation models · Enterprise API

Enterprise access to GPT-4o, o3, DALL·E, Whisper, and Embeddings via Azure. Private, compliant, and integrated with Azure security and governance.

GPT-4o / o3Enterprise SLADeveloper
Learn more
🔬
Azure AI Foundry
Enterprise AI platform · Full lifecycle

200+ model catalog, prompt flow, RAG pipelines, evaluation, fine-tuning, and hosted agent runtime in one place. Massively updated at Build 2026.

200+ modelsRAG / Fine-tuningEnterprise
Learn more
🔎
Azure AI Search
Vector search · RAG infrastructure

Vector indexing, semantic ranking, and hybrid retrieval. The primary grounding engine for RAG implementations in Copilot Studio and AI Foundry applications.

Vector searchSemantic rankingRAG backbone
Learn more
🧠
Semantic Kernel
AI orchestration SDK · .NET / Python

Microsoft's open-source AI orchestration framework. Plug in any LLM, build agents, chain prompts. The developer-first framework in the Microsoft ecosystem.

Open-sourceAgent frameworkDeveloper
Learn more

Which Microsoft AI tool should I use?

Match your role and goal to the right starting point

📝 Business user

AI in Word, Excel, Outlook, Teams?

→ Microsoft Copilot
🏗️ Low-code maker

Build a team chatbot using your data, no code?

→ Copilot Studio
⚙️ Developer

Build AI applications or APIs on Azure?

→ Azure AI Foundry + Azure OpenAI
🏛️ Architect

Multi-agent, RAG, governance-grade AI at scale?

→ AI Foundry + Semantic Kernel + AI Search
Microsoft · Learning Paths

Three Microsoft AI learning tracks

Each track builds directly on the previous. Start at Foundations even if you have some experience — it establishes the Copilot Studio mental model.

🌱Beginner
AI Foundations
No prior AI or coding experience needed
  • 🧠
    AI concepts & ecosystemML, GenAI, Agentic AI explained
  • 💬
    Microsoft Copilot for daily workM365, Teams, Word, Excel
  • 🤖
    Your first Copilot Studio agentCreate, test, publish in 30 min
  • 📖
    Knowledge sources & groundingSharePoint, websites, documents
  • 📡
    Publishing & channelsTeams, web, M365 Copilot
7 modules · 8–10 hrs
Begin track →
Intermediate
AI Builder
You've built an agent. Now make it powerful.
  • ✏️
    Prompt engineering & system promptsPersona, instructions, LLM config
  • Actions: Power Automate & APIsFlows, REST, dynamic outputs
  • 🧠
    RAG & grounding patternsRetrieval-augmented generation
  • 🔐
    Auth & Entra ID SSOSecure, personalised agents
  • 📊
    Analytics & optimisationTelemetry, CSAT, iteration
7 modules · 10–14 hrs
Continue →
🚀Advanced
AI Architect
Design enterprise-grade autonomous systems
  • 🌐
    Autonomous agent designProactive triggers, multi-step reasoning
  • 🤝
    Multi-agent orchestrationAgent networks, delegation, context
  • 🏗️
    Azure AI Foundry integrationCustom models, vector search, RAG
  • 🛡️
    Governance & Responsible AIDLP, audit trails, compliance
  • 🔄
    ALM & CI/CD for agentsDevOps, versioning, promotion
8 modules · 16–20 hrs
Advance →
Microsoft · Full Curriculum

All Microsoft modules — filter by level

Every module combines theory, a practical walkthrough, and a hands-on lab exercise.

🧠
AI Concepts: ML, GenAI & Agents
BeginnerTheory

What is AI, machine learning, generative AI, and agentic AI? Understand the full landscape before touching any tool.

💬
Microsoft Copilot for Everyday Work
BeginnerPractical

Use Copilot in Teams, Outlook, Word, Excel, PowerPoint — summarise, draft, analyse, automate without writing a line of code.

🏠
Introduction to Copilot Studio
BeginnerTheory

What Copilot Studio is, how it fits within Power Platform, and the difference between Copilot, agents, topics, and knowledge sources.

⚙️
Creating Your First Agent
BeginnerPractical

Create an agent with natural language, configure identity, add a knowledge source, test, and publish to Teams in one session.

🗂️
Topics, Triggers & Conversation Flow
BeginnerTheoryPractical

Build trigger phrases, conditional branches, and use entities to extract key information from user messages.

📖
Knowledge Sources & Grounding
BeginnerPracticalLab

Connect SharePoint, public websites, uploaded documents. Understand how generative answers retrieve and cite from your knowledge base.

⏱ 60 minOpen →
📡
Publishing & Deployment Channels
BeginnerPracticalLab

Publish to Teams, embed in a website, surface via M365 Copilot. Understand channel settings, authentication, and testing.

⏱ 50 minOpen →
✏️
Prompt Engineering & System Prompts
IntermediateTheoryPractical

Master system prompt design, configure AI topic generation, tune response style and length, understand LLM orchestration inside Copilot Studio.

Actions: Power Automate & REST APIs
IntermediatePracticalLab

Trigger Power Automate flows from conversations, call REST APIs directly, handle dynamic outputs, build connector-based actions end to end.

⏱ 100 minOpen →
🧠
Retrieval-Augmented Generation (RAG)
IntermediateTheoryLab

Implement RAG patterns — combine generative AI with grounded knowledge. Configure search indexes, chunking strategies, citation formatting.

⏱ 90 minOpen →
🔐
Authentication, SSO & Entra ID
IntermediateTheoryPractical

Configure SSO with Entra ID, scope knowledge access by user context, enable secure personalised data operations in your agents.

⏱ 80 minOpen →
📊
Analytics, CSAT & Optimisation
IntermediatePractical

Built-in dashboards, session transcripts, satisfaction scores. Use conversation telemetry to improve topics and reduce escalation rates.

⏱ 70 minOpen →
🔌
Custom Connectors & Plugins
IntermediateLab

Build custom connectors and extend agents with OpenAPI definitions to integrate third-party services and internal APIs.

⏱ 90 minOpen →
🌐
Autonomous Agent Architecture
AdvancedTheory

Design agents that proactively trigger on events, reason across multiple steps, and take autonomous actions without user prompts.

⏱ 90 minOpen →
🤝
Multi-Agent Orchestration
AdvancedTheoryLab

Build agent networks where a master orchestrator delegates to specialist agents. Implement handoff protocols and context passing.

⏱ 120 minOpen →
🏗️
Azure AI Foundry Integration
AdvancedPracticalLab

Connect Copilot Studio to Azure AI Foundry for custom models, fine-tuned embeddings, and enterprise-scale vector search with Azure AI Search.

⏱ 110 minOpen →
🛡️
Governance & Responsible AI
AdvancedTheory

Implement content moderation, DLP policies, audit logging, and responsible AI frameworks for enterprise Copilot Studio deployments at scale.

⏱ 80 minOpen →
🔄
ALM, DevOps & CI/CD for Agents
AdvancedPracticalLab

Manage agent lifecycle with Power Platform ALM: export solutions, configure environments, build Azure DevOps pipelines, promote to production.

⏱ 100 minOpen →
Microsoft · Hands-on Labs

Build something real and deployable

Each lab is a complete, real-world project. Follow the guided steps or use them as a blueprint for your own variation.

Lab 01 · Beginner
Customer FAQ Agent
First agent connected to live knowledge
  1. 1Create a new agent in Copilot Studio
  2. 2Add a public website as knowledge source
  3. 3Configure generative answers & citations
  4. 4Test with 10 realistic user questions
  5. 5Publish to Microsoft Teams
Beginner · 45 min
Start →
Lab 02 · Beginner
Project Status Assistant
SharePoint-connected project tracker bot
  1. 1Connect SharePoint list as knowledge
  2. 2Create topics for status queries
  3. 3Extract project name as entity
  4. 4Format responses as adaptive cards
  5. 5Deploy and test in Teams
Beginner · 60 min
Start →
Lab 03 · Intermediate
HR Leave Request Agent
End-to-end automation with Power Automate
  1. 1Build leave request conversation flow
  2. 2Create Power Automate approval flow
  3. 3Integrate Outlook calendar API
  4. 4Add manager approval adaptive card
  5. 5Send confirmation with calendar invite
Intermediate · 90 min
Start →
Lab 04 · Intermediate
RAG Policy Agent
Answers grounded in company policy documents
  1. 1Upload PDF policy documents
  2. 2Configure Azure AI Search index
  3. 3Tune chunk size and overlap
  4. 4Enable citations in agent responses
  5. 5Evaluate accuracy with a test set
Intermediate · 90 min
Start →
Lab 05 · Intermediate
Authenticated Sales Agent
Personalised using Entra ID identity
  1. 1Register an app in Microsoft Entra ID
  2. 2Configure SSO in Copilot Studio
  3. 3Use user context in the system prompt
  4. 4Filter Dataverse data by user claims
  5. 5Test with multiple user personas
Intermediate · 100 min
Start →
Lab 06 · Advanced
Multi-Agent Orchestration System
Orchestrator + 3 specialist agents
  1. 1Design orchestrator with routing logic
  2. 2Build HR, IT & Finance specialist agents
  3. 3Configure agent-to-agent handoffs
  4. 4Pass context across agent boundaries
  5. 5Aggregate and return unified responses
Advanced · 150 min
Start →
📝 Microsoft AI — Knowledge check
3 quick questions to check your understanding. No pass/fail — just reflection.
1. Which Microsoft tool lets you build a custom AI agent using no code, connected to your own SharePoint data?
Azure OpenAI Service
Microsoft Copilot Studio
Microsoft Copilot for M365
Semantic Kernel
2. What does RAG stand for, and what problem does it solve?
Rapid Agent Generation — speeds up agent creation
Retrieval-Augmented Generation — grounds LLM answers in your own documents
Recursive AI Grounding — prevents hallucinations entirely
Role-based Access Gateway — secures agent responses
3. Which Microsoft certification should you pursue FIRST if you're completely new to the Power Platform?
PL-600 (Solution Architect Expert)
AI-102 (Azure AI Engineer Associate)
PL-900 (Power Platform Fundamentals)
AB-410 (Intelligent Applications Builder)
Microsoft · Resources

Official Microsoft learning resources

📺
Mastering Copilot Studio (Video Series)

Official MS Learn video series — from conversational to fully autonomous agents.

Watch on Microsoft Learn
📚
Copilot Studio Docs

Complete official docs — concepts, how-tos, API reference, troubleshooting.

Browse docs
🎓
MS Learn: AI Fundamentals Path

Official self-paced path covering AI and ML fundamentals on Azure. Aligned to AI-900/AI-901.

Start path
💬
Power Platform Community

Ask questions and connect with thousands of Copilot Studio builders in Microsoft's official forum.

Join community
🔧
GitHub: Copilot Studio Samples

Official sample solutions, starter templates, and reusable patterns from Microsoft's GitHub repo.

View samples
🌐
Azure AI Foundry Portal

Enterprise AI platform for model deployment, prompt flow, and RAG — integrates with Copilot Studio.

Explore Foundry
🟠
AWS AI Platform
Amazon Bedrock · SageMaker · Amazon Q · Agents for Bedrock · AgentCore · Certifications
Platform → Learning paths →
AWS AI Ecosystem

The AWS AI platform — what does what

AWS offers a comprehensive suite of AI services from foundation models to production-grade agent infrastructure. Here's how the key services fit together.

🪨
Amazon Bedrock
Foundation model API · Serverless

AWS's managed service for accessing 40+ foundation models via a single serverless API — Claude, Llama, Titan, Mistral, Stable Diffusion, and more. No infrastructure to manage. The equivalent of Azure OpenAI on AWS.

40+ FMsServerlessClaude on AWS
Learn more
🤖
Agents for Amazon Bedrock
Agentic AI · Orchestration service

Build fully managed AI agents that break down tasks, call APIs (Action Groups), query knowledge bases (RAG), and take multi-step actions. The AWS equivalent of Copilot Studio's agentic capabilities.

Action GroupsKnowledge BasesMulti-step
Learn more
🚀
Bedrock AgentCore
Agent runtime · New 2026

AWS's new production agent runtime (2026). Manages agent state, memory, tool execution, observability, and security. Equivalent of Microsoft Agent Framework on AWS. Included in the Generative AI Developer Professional exam.

State managementMemoryNew 2026
Learn more
🗄️
Bedrock Knowledge Bases
RAG infrastructure · Vector store

Fully managed RAG — connect S3 documents, sync to an OpenSearch or Amazon Aurora vector store, and ground agent responses in your enterprise data. The AWS equivalent of Copilot Studio's knowledge sources + Azure AI Search.

Managed RAGS3 + OpenSearchAuto-sync
Learn more
🧑‍🔬
Amazon SageMaker AI
ML platform · Model training & serving

AWS's end-to-end ML platform. Build, train, fine-tune, and deploy custom models. SageMaker JumpStart provides a foundation model catalog. SageMaker Studio is the IDE for ML engineers and data scientists on AWS.

Model trainingFine-tuningML engineers
Learn more
💬
Amazon Q Business
Enterprise AI assistant · AWS native

AWS's enterprise AI assistant — the M365 Copilot equivalent on AWS. Connects to 40+ enterprise data sources (Salesforce, Jira, SharePoint) and lets employees ask questions in natural language. Q Developer assists developers in the IDE.

40+ connectorsEnterprise searchQ Developer
Learn more
🛡️
Bedrock Guardrails
Safety & compliance layer

Apply content filters, topic restrictions, PII redaction, and grounding checks across all Bedrock models and agents. The responsible AI governance layer — equivalent to Microsoft's DLP and content moderation for Copilot Studio.

Content filtersPII redactionResponsible AI
Learn more
🔄
Bedrock Flows
Visual workflow builder · Low-code AI

Visually chain prompts, agents, knowledge bases, and Lambda functions into end-to-end AI workflows — no code required. Think Power Automate for AI pipelines on AWS.

Visual builderPrompt chainingLow-code
Learn more

Which AWS AI service should I use?

Match your goal to the right AWS starting point

🚀 Access foundation models

Use multiple FMs via a single API without managing infrastructure?

→ Amazon Bedrock
🤖 Build a conversational agent

Agent that queries documents, calls APIs, takes multi-step actions?

→ Agents for Bedrock
📚 Ground answers in your docs

RAG over S3 documents with automatic indexing and retrieval?

→ Bedrock Knowledge Bases
🧑‍🔬 Train or fine-tune models

Custom ML models, fine-tuning on your data, model hosting?

→ Amazon SageMaker
💼 Enterprise AI assistant

Employees ask questions across Jira, Salesforce, SharePoint?

→ Amazon Q Business
🛡️ Safety & compliance

Content moderation, PII protection across all AI interactions?

→ Bedrock Guardrails
AWS · Learning Paths

Three AWS AI learning tracks

From first API call to production-grade agentic systems. The AWS path is more developer-oriented than Microsoft's low-code approach — some coding experience is helpful from Intermediate onwards.

🌱Practitioner
AWS AI Foundations
No prior AWS or AI experience needed
  • 🧠
    AI & ML concepts on AWSLLMs, generative AI, responsible AI
  • 🪨
    Introduction to Amazon BedrockConsole walkthrough, model catalog
  • ✏️
    Prompt engineering on BedrockZero-shot, few-shot, chain-of-thought
  • 💬
    Amazon Q Business fundamentalsEnterprise assistant, data connectors
  • 🛡️
    Responsible AI & GuardrailsContent safety, PII, compliance
5 modules · 6–8 hrs
Begin track →
Associate
AWS AI Builder
Build production AI apps on Bedrock
  • 🗄️
    RAG with Bedrock Knowledge BasesS3, OpenSearch, chunking, retrieval
  • 🤖
    Agents for Amazon BedrockAction groups, Lambda tools
  • 🔄
    Bedrock Flows & Prompt ChainingVisual workflow design
  • 🧑‍🔬
    SageMaker JumpStart & Fine-tuningFoundation models, custom datasets
  • 📊
    Evaluating & monitoring AI appsBedrock Evaluations, CloudWatch
7 modules · 12–16 hrs
Continue →
🚀Professional
AWS AI Architect
Production multi-agent systems on AWS
  • 🚀
    Bedrock AgentCore & agent runtimeState, memory, observability
  • 🤝
    Multi-agent patterns on AWSSupervisor agents, sub-agents, Strands
  • Serverless AI with Lambda & Step FunctionsEvent-driven agentic workflows
  • 🛡️
    Advanced security & governanceIAM, VPC, audit, cost governance
  • 🔬
    Advanced RAG & vector optimisationS3 Vectors, embeddings, hybrid search
8 modules · 16–22 hrs
Advance →
AWS · Full Curriculum

All AWS modules — filter by level

Every module includes concept explanation, AWS console walkthrough, and a hands-on lab using real AWS services.

🧠
AI & ML Concepts on AWS
PractitionerTheory

LLMs, foundation models, generative AI, the AWS AI/ML stack, and responsible AI principles including fairness, explainability, and safety.

🪨
Introduction to Amazon Bedrock
PractitionerPractical

Navigate the Bedrock console, explore the model catalog (Claude, Llama, Titan, Mistral), run your first inference, understand pricing and inference parameters.

✏️
Prompt Engineering on Bedrock
PractitionerTheoryPractical

Zero-shot and few-shot prompting, chain-of-thought, system prompts, and inference configuration. Practical exercises using the Bedrock Playground.

⏱ 70 minOpen →
💬
Amazon Q Business Fundamentals
PractitionerPractical

Set up an Amazon Q Business application, connect enterprise data sources (S3, Confluence, Salesforce), configure permissions, and test natural language queries.

⏱ 60 minOpen →
🛡️
Responsible AI & Bedrock Guardrails
PractitionerTheoryLab

Configure content filters, topic restrictions, PII redaction, and grounding checks. Apply Guardrails across models and agents. AWS responsible AI principles.

⏱ 60 minOpen →
🗄️
RAG with Bedrock Knowledge Bases
AssociateTheoryLab

Connect S3 documents to a managed vector store (OpenSearch or Aurora). Configure chunking, embedding models, metadata filtering, and retrieval tuning.

⏱ 90 minOpen →
🤖
Agents for Amazon Bedrock
AssociatePracticalLab

Build agents with Action Groups (Lambda functions) and Knowledge Bases. Configure agent instructions, test traces, deploy via alias. End-to-end agent project.

🔄
Bedrock Flows & Prompt Chaining
AssociatePractical

Build visual AI pipelines by chaining prompts, agents, knowledge bases, and Lambda nodes in the Flows designer. Low-code AI workflow automation on AWS.

⏱ 80 minOpen →
🧑‍🔬
SageMaker JumpStart & Fine-tuning
AssociatePracticalLab

Explore the SageMaker JumpStart model catalog, fine-tune a Hugging Face model on a custom dataset, deploy as a real-time endpoint, evaluate performance.

⏱ 110 minOpen →
📊
Evaluating & Monitoring AI Apps
AssociatePractical

Use Bedrock Evaluations for automated and human-based quality scoring. CloudWatch metrics for agent performance. Cost governance and quota management.

⏱ 70 minOpen →
🔌
Integrating Bedrock with LangChain
AssociateLab

Use LangChain's Bedrock integrations to build chains, agents, and RAG pipelines in Python. Connect to OpenSearch, DynamoDB, and external APIs as tools.

⏱ 90 minOpen →
🚀
Bedrock AgentCore & Agent Runtime
ProfessionalTheory

Production agent runtime (2026). Manage agent state, persistent memory, tool execution, observability, and fine-grained security for enterprise multi-step agents.

⏱ 90 minOpen →
🤝
Multi-Agent Patterns on AWS
ProfessionalTheoryLab

Supervisor agent + sub-agent patterns. Agent Squad and Strands frameworks. Context passing, inter-agent communication, result aggregation in multi-agent systems.

⏱ 120 minOpen →
Serverless AI: Lambda & Step Functions
ProfessionalPracticalLab

Build event-driven agentic workflows using Lambda for tool execution and Step Functions for orchestrating multi-step AI pipelines. Production patterns.

⏱ 100 minOpen →
🛡️
Advanced Security & Governance
ProfessionalTheory

IAM policies for Bedrock, VPC endpoints, PrivateLink, CloudTrail audit logging, cost governance, and data residency for enterprise AI deployments on AWS.

⏱ 80 minOpen →
🔬
Advanced RAG & Vector Optimisation
ProfessionalPracticalLab

S3 Vectors, OpenSearch Serverless, hybrid search, reranking, metadata filters, query expansion, and GraphRAG patterns for enterprise knowledge retrieval.

⏱ 100 minOpen →
AWS · Hands-on Labs

Build real AI apps on AWS

Each lab builds a complete, deployable application using real AWS services. AWS free tier or a sandbox account covers most labs.

Lab 01 · Practitioner
First Chatbot with Amazon Bedrock
Call Claude on Bedrock via console and API
  1. 1Set up Bedrock model access in the console
  2. 2Run prompts in the Bedrock Playground
  3. 3Call Bedrock API with Python (boto3)
  4. 4Build a simple conversational loop
  5. 5Add Guardrails for content filtering
Practitioner · 45 min
Start →
Lab 02 · Practitioner
Amazon Q Business Application
Enterprise AI assistant over your documents
  1. 1Create an Amazon Q Business application
  2. 2Connect an S3 bucket as data source
  3. 3Configure user access with IAM Identity Center
  4. 4Test natural language queries
  5. 5Embed as a web widget
Practitioner · 60 min
Start →
Lab 03 · Associate
RAG App with Bedrock Knowledge Bases
Ground LLM answers in your S3 documents
  1. 1Upload PDFs to S3, create Knowledge Base
  2. 2Configure OpenSearch Serverless vector store
  3. 3Sync and verify the embedding pipeline
  4. 4Query with Retrieve & Generate API
  5. 5Display citations in a Streamlit app
Associate · 90 min
Start →
Lab 04 · Associate
Retail Banking Agent
Bedrock Agent + Lambda + DynamoDB + OpenAPI
  1. 1Create Bedrock Agent with instructions
  2. 2Build Lambda Action Group functions
  3. 3Define OpenAPI schema for actions
  4. 4Connect Knowledge Base for FAQs
  5. 5Test traces, deploy via alias
Associate · 120 min
Start →
Lab 05 · Associate
Fine-tune a Model on SageMaker
Custom dataset, training job, deployment
  1. 1Prepare training dataset in JSONL format
  2. 2Upload to S3, configure SageMaker training job
  3. 3Fine-tune Llama via SageMaker JumpStart
  4. 4Deploy as real-time inference endpoint
  5. 5Evaluate and compare vs base model
Associate · 100 min
Start →
Lab 06 · Professional
Multi-Agent HR + IT + Finance System
Supervisor agent orchestrating 3 specialist agents
  1. 1Create HR, IT, Finance sub-agents with action groups
  2. 2Build supervisor agent with routing instructions
  3. 3Enable multi-agent collaboration in Bedrock
  4. 4Pass context across agent boundaries
  5. 5Test, trace, deploy with AgentCore runtime
Professional · 150 min
Start →
📝 AWS AI — Knowledge check
3 quick questions to check your understanding. No pass/fail — just reflection.
1. What is Amazon Bedrock's primary purpose?
A database service for storing AI training data
A managed service providing API access to 40+ foundation models without managing infrastructure
A tool for training and fine-tuning custom ML models from scratch
An enterprise chatbot builder similar to Copilot Studio
2. When building a Bedrock Agent that needs to fetch live data from an external API, what AWS service handles the actual API call?
Amazon SageMaker
Amazon Q Business
AWS Lambda (via an Action Group)
Amazon DynamoDB
3. Which AWS certification is the recommended entry point for someone completely new to AI on AWS?
MLS-C01 (Machine Learning Specialty)
AIF-C01 (AWS Certified AI Practitioner)
MLA-C01 (ML Engineer Associate)
Generative AI Developer Professional
AWS · Resources

Official AWS learning resources

🎓
AWS Skill Builder

Official AWS training platform — free and paid courses, labs, practice exams, and the AI Practitioner learning path.

Access Skill Builder
📚
Amazon Bedrock Documentation

Complete official docs — user guide, API reference, SDK examples, and best practice guides for Bedrock and agents.

Browse Bedrock docs
🔧
AWS Bedrock Samples (GitHub)

Official AWS samples for Bedrock, agents, knowledge bases, and RAG patterns — ready-to-run notebooks and applications.

View on GitHub
🏖️
AWS Workshop Studio

Free hands-on workshops in sandbox AWS environments — Bedrock, agents, RAG, and SageMaker labs with step-by-step guidance.

Browse workshops
💬
AWS re:Post Community

AWS's official Q&A community. Ask questions about Bedrock, SageMaker, and Amazon Q — answered by AWS experts and community members.

Visit re:Post
📝
AWS Machine Learning Blog

Latest announcements, architecture patterns, and tutorials from the AWS AI/ML team covering Bedrock, SageMaker, and Amazon Q.

Read the blog
Certification Roadmap

multiple platforms AI certifications

All current AI certifications mapped across both platforms — with retirement warnings and replacement exam IDs where applicable.

🏆 2026 AI Certification Landscape

Microsoft: AI-900 and AI-102 retire June 30, 2026 → replaced by AI-901 and AI-103. New AB series targets business professionals. PL-600 also retires June 30.  |  AWS: AIF-C01 (AI Practitioner) is generally available. MLA-C01 (ML Engineer Associate) is live. Generative AI Developer Professional exam is the new flagship. Sit before retirement dates — credentials earned count permanently.

Fundamentals
Azure AI Fundamentals
AI-900⚠ Retires Jun 30 → AI-901

The AI entry point. Covers ML concepts, computer vision, NLP, generative AI, and Azure AI services. Lifetime validity. Sit before June 30 or wait for AI-901 (same scope).

  • AI workloads & responsible AI
  • ML principles on Azure
  • Computer vision, NLP, GenAI
Fundamentals
Copilot & Agent Administration Fundamentals
AB-900 · New 2026

For M365 Copilot admins. Covers Copilot licensing, governance, administration, security, and deployment. Generally available now.

  • M365 Copilot administration
  • Agent creation basics
  • Governance & compliance
Fundamentals
Power Platform Fundamentals
PL-900

Validates Power Platform knowledge including Copilot Studio basics. First cert for the Maker path. Covers Power Apps, Power Automate, Power BI, and Copilot Studio.

  • Power Platform overview
  • Copilot Studio basics
  • Dataverse & connectors
Associate
Azure AI Engineer Associate
AI-102⚠ Retires Jun 30 → AI-103

For engineers building AI solutions on Azure. Retiring June 2026 — replaced by AI-103 (Azure AI App & Agent Developer) with expanded agentic AI scope.

  • Azure AI Foundry & Azure OpenAI
  • RAG with Azure AI Search
  • Responsible AI on Azure
Associate
Power Platform Functional Consultant
PL-200

Validates Copilot Studio configuration, Power Automate design, and Dataverse modelling. Required for the Expert path (PL-600).

  • Copilot Studio configuration
  • Power Automate solution design
  • Dataverse data modelling
Associate
Intelligent Applications Builder
AB-410 · New 2026

New 2026 certification for Power Platform professionals building AI-first solutions. Apps, agents, automation, and AI models together. Beta from April 2026.

  • AI agent design & embedding
  • Copilot-driven solution design
  • Responsible AI governance
Fundamentals
AWS Certified AI Practitioner
AIF-C01

AWS's entry-level AI certification. Covers AI/ML concepts, generative AI fundamentals, Amazon Bedrock, Amazon Q, SageMaker, and responsible AI. No coding required. Equivalent to Microsoft's AI-901.

  • AI & ML concepts on AWS
  • Generative AI & foundation models
  • Amazon Bedrock overview
  • Responsible AI principles
Associate
AWS Certified Machine Learning Engineer – Associate
MLA-C01

For ML engineers deploying and maintaining AI/ML solutions on AWS. Covers SageMaker, model training and deployment, MLOps, Bedrock integration, and production pipelines.

  • Amazon SageMaker AI end-to-end
  • Model training, tuning, deployment
  • MLOps and CI/CD for ML
  • Bedrock model integration
Associate
AWS Certified Machine Learning – Specialty
MLS-C01

Deep specialisation in ML on AWS for data scientists and ML engineers. Covers feature engineering, model selection, training, tuning, and production deployment. The established ML certification path.

  • Data engineering for ML
  • Exploratory data analysis
  • ML model training & tuning
  • ML implementation & operations
Professional
AWS Certified Generative AI Developer – Professional
DEA-C02 (2026 refresh)

AWS's flagship AI certification. Validates ability to build production GenAI apps using Bedrock, Knowledge Bases, Agents, AgentCore, RAG pipelines, and multi-agent systems. Most challenging AWS AI exam.

  • Bedrock, Knowledge Bases & Agents
  • RAG optimisation & vector search
  • Multi-agent with AgentCore
  • Security, governance & cost
Use Case Library

AI use cases for your role

Real, specific use cases mapped to your role — not generic art of the possible. Each card shows the task, expected output, and the exact AI tool to use. Filter by your role or browse all.

Filter by role:
Showing 32 use cases
🧮
Pricing model builder
💼 Sales

Paste a client requirements doc — Copilot extracts scope, recommends rate card, flags risk items, and drafts a pricing summary ready for review.

Expected outputStructured pricing table with scope assumptions, rate card mapping, risk flags, and exec summary — ready to paste into a proposal.
🪟 M365 Copilot in Excel + Word High impact
📋
RFP response accelerator
💼 Sales

Upload the RFP. A Copilot Studio agent maps each question to existing proposal content, drafts answers, and highlights gaps needing human input.

Expected outputDraft RFP response with answers pre-filled from your proposal library, gaps clearly marked, and a completion checklist.
🤖 Copilot Studio + SharePoint knowledge High impact
🔍
Competitive intelligence brief
💼 Sales

Ask Copilot to summarise latest competitor moves, pricing changes, and win/loss patterns from news, earnings calls, and Battlecard documents.

Expected outputOne-page competitive brief with recent moves, pricing signals, differentiators, and suggested counter-positioning talking points.
🪟 M365 Copilot + Bing integration Medium
🖥️
Client proposal deck
💼 Sales

Describe the deal in plain language — Copilot drafts a tailored PowerPoint with exec summary, value proposition, pricing table, and next steps.

Expected output10-slide proposal deck with client-specific talking points, pricing, and a clear call to action — ready for final review.
🪟 M365 Copilot in PowerPoint High impact
📧
Deal follow-up email drafter
💼 Sales

After a client call, Copilot reads the Teams transcript and drafts a personalised follow-up email with action items and pricing recap — sent in minutes, not hours.

Expected outputProfessional follow-up email with meeting recap, agreed actions, owner names, due dates, and next steps — ready to send or lightly edit.
🪟 M365 Copilot in Outlook + Teams Medium
📊
Discount scenario modelling
💼 Sales

Prompt Copilot with margin thresholds — it generates a scenario table showing impact of 5%, 10%, 15% discount options on gross profit and revenue.

Expected outputExcel scenario table with three discount levels, GP impact, revenue delta, and a recommended position based on your floor margin.
🪟 M365 Copilot in Excel Medium
⚠️
Contract risk scanner
📄 Contracting

Upload a contract PDF. The agent highlights non-standard clauses, unusual liability caps, missing SLA definitions, and jurisdiction risks against your standard template.

Expected outputRisk report with clause-by-clause comparison, RAG ratings, deviation from standard, and recommended redlines — ready for legal review.
🤖 Copilot Studio + Azure AI Search (RAG) High impact
✏️
Clause drafting assistant
📄 Contracting

Describe what a clause needs to achieve — the agent drafts standard-aligned language, explains trade-offs, and suggests alternatives at different risk levels.

Expected outputThree clause variants (conservative, balanced, client-friendly) with a plain-English explanation of what each one trades off.
🪟 M365 Copilot in Word High impact
🔄
Contract version comparison
📄 Contracting

Upload v1 and v2 of a contract. Copilot produces a plain-English summary of every change, flagging which changes are material and which are cosmetic.

Expected outputChange log table with section reference, original text, new text, materiality rating, and recommended action (accept / query / reject).
🪟 M365 Copilot in Word High impact
Compliance checklist generator
📄 Contracting

Paste a regulatory framework (GDPR, DPDP, SOC2). The agent produces a contract review checklist specific to that regulation and jurisdiction.

Expected outputChecklist of 15-25 specific items to verify in the contract, with clause references, pass/fail criteria, and remediation notes for each.
🤖 Copilot Studio + regulation knowledge base Medium
📝
Negotiation briefing note
📄 Contracting

Before a negotiation call, Copilot summarises open points, walk-away positions, and the other party's likely priorities based on prior correspondence.

Expected outputOne-page negotiation brief: open items, our position, their likely position, concessions we can offer, and our walk-away threshold.
🪟 M365 Copilot in Teams + Outlook Medium
💬
Contract Q&A chatbot
📄 Contracting

A Copilot Studio agent trained on your signed contract library. Team members ask "what is the SLA for client X?" and get an instant, cited answer from the contract.

Expected outputInstant natural-language answer with the source contract clause quoted, available 24/7 in Teams without searching through PDFs.
🤖 Copilot Studio + SharePoint knowledge High impact
👤
Onboarding request agent
👥 PMO

A Teams chatbot collects joiner details, triggers the AD ID creation flow, sends the welcome email, and tracks task completion — all without manual PMO intervention.

Expected outputFully automated onboarding with AD ID created, welcome pack sent, access provisioned, and completion status visible in one dashboard.
🤖 Copilot Studio + Power Automate + Entra ID High impact
🚪
Offboarding checklist agent
👥 PMO

Triggered by a leaver request, the agent generates a role-specific checklist, assigns tasks to IT and HR, tracks completion, and confirms account deactivation.

Expected outputRole-specific offboarding checklist auto-assigned to owners, with completion tracking and audit trail — zero manual coordination.
🤖 Copilot Studio + Power Automate High impact
🔑
AD ID extension self-service
👥 PMO

Resource submits an extension request via Teams. Agent validates, routes to manager for approval, and on approval extends the account automatically — no email chain.

Expected outputAD ID extended, approval recorded, requester and manager notified, all within the Teams interface — no PMO manual action required.
🤖 Copilot Studio + Entra ID + Approval flow High impact
📈
Resource status dashboard bot
👥 PMO

Ask "how many resources are due for offboarding this month?" or "which AD IDs expire in 30 days?" — instant answers from live SharePoint data, no report needed.

Expected outputNatural language answers with counts, names, and dates — pulled live from SharePoint lists without generating a manual report.
🤖 Copilot Studio + SharePoint Medium
SLA breach auto-chaser
👥 PMO

Pending requests older than the SLA threshold automatically trigger a Teams nudge to the approver. No manual chasing from the PMO team — ever.

Expected outputAutomatic Teams message to the approver with request details and a one-click approve button — triggered at SLA breach with no human involvement.
🪟 Power Automate + Teams + Copilot Studio Medium
PMO policy FAQ bot
👥 PMO

"What is the notice period for offboarding a contractor?" A Copilot Studio agent answers PMO process questions from the policy docs, available 24/7 in Teams.

Expected outputInstant cited answer from the policy document, with the relevant section quoted — no need to search policy docs or ask a colleague.
🤖 Copilot Studio + SharePoint knowledge Medium
💻
Code review & explanation
💻 Delivery — Technical

Paste a code block — GitHub Copilot explains what it does, flags security issues, suggests performance improvements, and adds inline documentation.

Expected outputAnnotated code with plain-English explanation, security flags, performance suggestions, and doc comments added — ready for team review.
💻 GitHub Copilot in VS Code High impact
🐛
Debugging accelerator
💻 Delivery — Technical

Paste error logs and stack traces. The AI identifies the root cause, explains it in plain English, and suggests a fix with code. Cuts debug time by 60-70% on complex issues.

Expected outputRoot cause identified, plain-English explanation, corrected code snippet, and a note on how to prevent the same error in future.
💻 GitHub Copilot + Claude Code High impact
🧪
Unit test generation
💻 Delivery — Technical

Select a function — Copilot generates a full unit test suite covering happy path, edge cases, and error conditions. Reduces test-writing time by up to 80%.

Expected outputComplete test file with happy path, edge cases, boundary conditions, and error scenarios — matching your team's testing framework.
💻 GitHub Copilot in VS Code / JetBrains High impact
🏗️
Architecture decision record (ADR)
💻 Delivery — Technical

Describe a design decision in plain English — Azure AI Foundry generates a structured ADR with context, options, trade-offs, and decision rationale in your template.

Expected outputStructured ADR doc with context, decision drivers, options considered, pros/cons, and the decision — ready for team review and sign-off.
🔬 Azure AI Foundry + Claude / GPT-4o Medium
📋
Requirements extraction
⚙️ Delivery — Functional

Upload a BRD or workshop transcript. Copilot extracts user stories in structured format with acceptance criteria, gaps flagged, and ambiguities highlighted.

Expected outputUser story list in "As a / I want / so that" format with acceptance criteria, dependencies, and a gap list — ready for backlog import.
🪟 M365 Copilot in Word High impact
🧪
Test case generator
⚙️ Delivery — Functional

Paste a user story — the agent generates a test plan with positive, negative, and edge-case scenarios in your format, ready for import into Azure DevOps or Jira.

Expected outputFull test case table with test ID, description, steps, expected result, and pass/fail criteria — importable into your test management tool.
🤖 Copilot Studio or M365 Copilot High impact
📖
Process documentation writer
⚙️ Delivery — Functional

Walk through a process in a Teams meeting. Copilot produces a structured process document with roles, steps, decision points, and exceptions from the transcript.

Expected outputProcess doc with RACI, step-by-step flow, decision points, exception handling, and a process map summary — from a 30-min meeting transcript.
🪟 M365 Copilot in Teams Medium
✉️
Client status update drafter
⚙️ Delivery — Functional

Paste the sprint log or project tracker update — Copilot rewrites it as a client-friendly status update: clear language, no jargon, RAG status, and next steps.

Expected outputClient-ready status email with RAG rating, accomplishments this period, risks, and next steps — professional tone with no internal jargon.
🪟 M365 Copilot in Outlook Medium
🎯
Executive briefing builder
🏢 Account Leadership

Before a C-suite client meeting, Copilot summarises all recent project updates, open risks, commercial positions, and action items into a one-page executive brief.

Expected outputOne-page brief with project health, open risks, commercial status, and key talking points — pulled from Teams, email, and SharePoint in under 2 minutes.
🪟 M365 Copilot across Teams, Email + SharePoint High impact
📰
Client intelligence digest
🏢 Account Leadership

A morning summary of the client's latest news, earnings signals, industry moves, and regulatory changes — every client conversation informed by current context.

Expected outputDaily digest with top 5 client/industry news items, relevance to your account, and suggested conversation starters — delivered to Teams each morning.
🔍 Perplexity + M365 Copilot with Bing High impact
🛡️
Risk & escalation radar
🏢 Account Leadership

A Copilot Studio agent monitors project status reports across all workstreams, surfaces RAG-red items or trends towards risk, and sends a weekly leadership summary.

Expected outputWeekly risk summary with RAG status per workstream, trending risks, and suggested leadership actions — delivered every Monday morning.
🤖 Copilot Studio + SharePoint + Power Automate High impact
📈
Account growth opportunity mapper
🏢 Account Leadership

Upload the account plan and recent client conversations — Copilot identifies whitespace, matches to service offerings, and drafts talking points for the growth conversation.

Expected outputGrowth opportunity map with 3-5 whitespace areas, matched service capabilities, business case bullets, and ready-to-use talking points.
🪟 M365 Copilot in Word + PowerPoint Medium
Meeting action item tracker
🏢 Account Leadership

After every client meeting, Copilot extracts action items from the Teams transcript, assigns owners, sets due dates, and posts to the shared project tracker automatically.

Expected outputAction log posted to the shared tracker with owner, due date, and status — within 5 minutes of the meeting ending, no manual note-taking.
🪟 M365 Copilot in Teams Medium
CSAT & sentiment analyser
🏢 Account Leadership

Paste client emails, survey responses, and meeting notes. Copilot extracts sentiment trends, recurring themes, and relationship health signals for QBR preparation.

Expected outputSentiment dashboard with trend over time, recurring themes (positive and negative), relationship health score, and recommended focus areas for the QBR.
🪟 M365 Copilot + Azure AI Foundry Medium
Your Learning Roadmap

6-month path to AI mastery

A structured progression covering both multiple platforms, with certification milestones at each stage. Pick one platform to go deep, or follow both in parallel.

Month 1 — AI Foundations (Both platforms)

Explore the AI tools landscape. Sign up for free tiers: Copilot Studio trial + AWS Bedrock free tier. Complete beginner modules on both platforms. Build your first agent (Copilot Studio) and first chatbot (Bedrock Playground).

MS Labs 01 & 02 + AWS Labs 01 & 02 · ~12 hrs · No cost required

Month 2 — First Certifications: AI-900 + AIF-C01

Study and sit Azure AI Fundamentals (AI-900, or wait for AI-901) and AWS AI Practitioner (AIF-C01). Both are entry-level, free to study on Microsoft Learn and AWS Skill Builder. Lifetime validity — no renewal needed.

Exams: AI-900 + AIF-C01 · ~30 hrs study · Free practice assessments available

Months 3–4 — Builder / Associate Track

Dive into intermediate content on your chosen primary platform. Build a RAG policy agent (MS) or a Bedrock Knowledge Base app (AWS). Complete authentication, analytics, and connector labs. SageMaker fine-tuning if AWS-focused.

MS Labs 03–05 or AWS Labs 03–05 · ~14–16 hrs · Azure/AWS subscription needed

Month 4 — Associate Certifications: PL-200 or MLA-C01

Microsoft path: sit PL-200 (Power Platform Functional Consultant). AWS path: sit MLA-C01 (Machine Learning Engineer Associate). These open the advanced/professional tracks and significantly increase employability.

PL-200 or MLA-C01 · ~40 hrs study · ESI/training vouchers may apply

Months 5–6 — Architect / Professional Track

Complete advanced modules. Design multi-agent systems (both platforms), integrate Azure AI Foundry or Bedrock AgentCore, implement governance, build CI/CD pipelines for AI. Build the most complex labs.

MS Lab 06 + AWS Lab 06 · ~20 hrs · Both Azure & AWS subscriptions

Month 6+ — Expert & Professional Certifications

Microsoft: AB-410 (Intelligent Applications Builder) + AI-103 (replaces AI-102 Jul 2026). AWS: Generative AI Developer Professional. These are the top-tier AI credentials on each platform — significant study investment but maximum career value.

AB-410 + AI-103 (MS) | Gen AI Developer Pro (AWS) · ~60 hrs each · Pre-reqs required
FAQ

Common questions

Should I learn Microsoft AI or AWS first?

If your organisation uses Microsoft 365, start with Microsoft — Copilot Studio is immediately applicable to your daily work with zero infrastructure costs. If you're a developer on AWS, start with Bedrock. Both paths lead to the same agentic AI capabilities, different tools.

Do I need to code for Copilot Studio?

No. Copilot Studio is genuinely low-code/no-code — you can build and deploy agents using only the graphical interface. Advanced features (custom connectors, Azure AI Foundry) benefit from coding but aren't required for most scenarios.

Do I need to code for Amazon Bedrock?

Basic Bedrock usage (Playground, Q Business) requires no coding. Building production agents with Action Groups, Lambda integrations, and RAG pipelines requires Python. The Associate track onwards assumes basic Python familiarity.

AI-900 is retiring — should I still take it?

Yes, if you can sit it before June 30, 2026. It has lifetime validity and the replacement AI-901 has the same scope. If you're reading this after June 2026, target AI-901 directly — the same Microsoft Learn study materials apply.

What's Bedrock vs SageMaker — which one?

Bedrock = access pre-built foundation models via API, no infrastructure. SageMaker = build, train, fine-tune, and host your own custom ML models. Most organisations start with Bedrock for generative AI and use SageMaker when they need custom model training.

When is GCP content being added?

Google Cloud Vertex AI content is in the roadmap for the next major release — covering Gemini on Vertex, Agent Builder, Model Garden, and the relevant GCP AI certifications. The portal is structured to accommodate a third platform seamlessly.

Coming Next

More platforms coming

AI 360 covers multiple platforms today. Google Cloud Vertex AI is in development — Gemini on Vertex, Agent Builder, Model Garden, and RAG Engine.

🪟
Microsoft Azure AI
Copilot Studio, AI Foundry, Azure OpenAI, Semantic Kernel
Live now
🟠
AWS AI Platform
Bedrock, AgentCore, SageMaker, Amazon Q, Flows
Live now
🔵
Google Cloud Vertex AI
Gemini on Vertex, Agent Builder, Model Garden, RAG Engine
Coming soon
Azure Static Web Apps

Host AI Learning Hub on Azure

Deploy this portal to Azure Static Web Apps in minutes — global CDN, automatic SSL, and a free tier. Share a live URL with every training participant instantly.

az staticwebapp create \ --name ai360-hub \ --resource-group rg-ai360 \ --source https://github.com/YOUR-ORG/ai360-hub \ --location "eastus2" \ --branch main \ --app-location "/" \ --sku Free
1
Push code to GitHub repository
2
Run az staticwebapp create
3
GitHub Actions CI/CD auto-configured
4
Add custom domain (optional)
5
Share URL with participants ✓