AI-200 Develop AI cloud solutions on Azure

Course: 3112

Develop AI Cloud Solutions on Azure prepares developers to build the secure, scalable, AI-enabled back-end services that modern enterprises need for copilots, intelligent applications, agentic workflows, and business automation. Dynamics Edge enhances the Microsoft Learn foundation with practical enterprise examples, hands-on labs, and business-focused architecture discussions that connect Azure AI cloud development to real organizational transformation.

Download PDF
  • Duration:
  • Price: $1,995.00
Get This Course $1,995.00
June 3 - 5, 2026

9:00 AM – 4:00 PM CST

July 8 - 10, 2026

9:00 AM – 4:00 PM CST

August 5 - 7, 2026

9:00 AM – 4:00 PM CST

October 7 - 9, 2026

9:00 AM – 4:00 PM CST

November 4 - 6, 2026

9:00 AM – 4:00 PM CST

December 9 - 11, 2026

9:00 AM – 4:00 PM CST

Scroll to view additional course dates

Reserve Your Seat

  • Virtual instructor Led Training
  • Complete Hands-on Labs
  • Softcopy of Courseware
  • Learning Labs
  • Virtual instructor Led Training
  • Complete Hands-on Labs
  • Softcopy of Courseware
  • Learning Labs
  • You can use your Purchase Card and checkout
  • The GSA Contract Number: 47QTCA20D000D
  • Call 800-453-5961 for details
  • Customize your class
  • Delivery Onsite or Online for your organization
  • Choice of Dates when and where you want
  • Guidance in choosing and customizing your class

Question About this Course?

 

AI-200 Develop AI Cloud Solutions on Azure

This course is for:

  • Azure developers building AI-enabled applications
  • Back-end developers modernizing applications for Azure
  • AI application developers working with cloud APIs and data services
  • Power Platform, Dynamics 365, or enterprise developers integrating Azure AI services
  • Solution architects who need deeper implementation knowledge
  • Technical leads supporting AI application modernization

Prerequisites

Working knowledge of:

  • Azure fundamentals
  • Python, C#, or another modern development language
  • REST APIs and SDK-based development
  • Basic container concepts
  • Basic database concepts
  • Application monitoring and troubleshooting conce

 Course Outline:

Module 1: Introduction to Azure AI Cloud Development

Topics

  • Understand the AI cloud developer role on Azure
  • Review the Azure AI application development lifecycle
  • Identify common AI application architecture patterns
  • Compare serverless, containerized, and event-driven designs
  • Map AI-200 skills to enterprise AI solution delivery

Supporting Statements

  • Students learn how Azure supports complete AI application development from design through deployment, monitoring, and troubleshooting.
  • The module explains how developers contribute to secure, scalable, back-end AI services that support intelligent applications and workflows.
  • This module establishes the foundation for building production-ready AI cloud solutions rather than isolated AI experiments.

Lab

Lab 1: Review an Azure AI Cloud Architecture
Students analyze a reference architecture for an AI-enabled application using Azure compute, messaging, data storage, security, and monitoring services.


Module 2: Develop Containerized AI Solutions on Azure

Topics

  • Understand containerization patterns for AI applications
  • Build and package application components into containers
  • Deploy containerized workloads to Azure
  • Configure container app environments
  • Evaluate container hosting options for AI workloads

Supporting Statements

  • Microsoft Learn states that AI-200T00 covers Azure compute and containerization patterns used to host AI applications.
  • Students learn how containers improve portability, scalability, and consistency for AI-enabled services.
  • The module connects container strategy to real business scenarios such as AI APIs, background processing, workflow automation, and model-serving integration.

Lab

Lab 2: Containerize and Deploy an AI-Enabled Web API
Students package a sample AI-enabled API into a container and deploy it to Azure.


Module 3: Implement Azure Container Apps for AI Workloads

Topics

  • Deploy applications with Azure Container Apps
  • Configure revisions and traffic management
  • Implement scaling rules for AI workloads
  • Use environment variables and secrets
  • Monitor container app behavior and performance

Supporting Statements

  • Azure Container Apps is positioned by Microsoft as a fully managed serverless container platform for building and deploying apps and agents at scale.
  • Students learn how serverless containers reduce infrastructure management while supporting scalable AI application patterns.
  • The module emphasizes real-world AI cloud workloads such as API endpoints, background workers, event-driven processing, and microservices.

Lab

Lab 3: Deploy and Scale an Azure Container App
Students deploy a containerized AI service, configure scaling, and review runtime behavior.


Module 4: Build Serverless AI APIs with Azure Functions

Topics

  • Create serverless APIs for AI applications
  • Compare Azure Functions hosting options
  • Configure triggers and bindings
  • Connect functions to data and messaging services
  • Secure and monitor function-based workloads

Supporting Statements

  • Microsoft Learn identifies Azure Functions as part of the AI-200T00 course focus for building serverless APIs.
  • Students learn when serverless development is appropriate for lightweight AI APIs, workflow steps, automation tasks, and event-triggered processing.
  • The module helps developers design AI components that scale on demand while reducing operational overhead.

Lab

Lab 4: Build a Serverless AI Processing API
Students create an Azure Function that receives input, processes a request, and integrates with another Azure service.


Module 5: Connect and Consume Azure Services

Topics

  • Use Azure SDKs and REST APIs
  • Authenticate applications to Azure services
  • Configure managed identities
  • Secure application configuration
  • Connect compute, data, and AI services

Supporting Statements

  • The related Azure AI Cloud Developer Associate certification expects proficiency with Azure SDKs and third-party SDKs used in Azure.
  • Students learn how to connect application components securely without relying on hard-coded credentials.
  • The module supports enterprise AI integration scenarios where applications must call Azure AI, data, identity, and messaging services securely.

Lab

Lab 5: Connect an AI Application to Azure Services Securely
Students configure service access using managed identity and application settings.


Module 6: Integrate AI Workflows with Azure Service Bus

Topics

  • Understand message-based AI architecture
  • Create queues and topics
  • Send and receive messages
  • Build resilient background processing workflows
  • Handle retries, dead-lettering, and processing failures

Supporting Statements

  • Microsoft Learn states the course covers message-based architectures such as Azure Service Bus.
  • Students learn how messaging supports reliable AI workflows where requests may be long-running, asynchronous, or dependent on external systems.
  • The module focuses on practical enterprise patterns such as document processing, order analysis, customer service routing, and AI enrichment pipelines.

Lab

Lab 6: Build a Message-Based AI Processing Pipeline
Students create a Service Bus queue and process AI workload messages using an Azure-hosted application component.


Module 7: Build Event-Driven AI Solutions with Azure Event Grid

Topics

  • Understand event-driven cloud architecture
  • Publish and subscribe to events
  • Connect Azure services with Event Grid
  • Trigger serverless and containerized workloads
  • Design event-driven AI automation patterns

Supporting Statements

  • Microsoft Learn identifies Azure Event Grid as a key integration service in the AI-200T00 course.
  • Students learn how event-driven design supports real-time AI automation across cloud services.
  • The module shows how AI applications can respond to file uploads, database changes, business events, or operational signals.

Lab

Lab 7: Trigger an AI Workflow from an Event
Students configure an event-driven workflow that starts AI processing when a cloud event occurs.


Module 8: Design AI Data Solutions with Azure Cosmos DB for NoSQL

Topics

  • Identify Cosmos DB use cases for AI applications
  • Design containers and partitioning strategies
  • Query data using NoSQL patterns
  • Optimize performance and scalability
  • Connect Cosmos DB to AI-enabled application components

Supporting Statements

  • Microsoft Learn states the course covers Azure data services that support AI workloads, including designing and querying solutions with Cosmos DB for NoSQL.
  • Students learn how to design scalable operational data stores for AI-enabled applications.
  • The module connects database design to performance, cost, and application responsiveness.

Lab

Lab 8: Store and Query AI Application Data in Cosmos DB
Students create a Cosmos DB for NoSQL database, load sample application data, and run queries from an application.


Module 9: Use PostgreSQL with pgvector for AI Applications

Topics

  • Understand vector data concepts
  • Use Azure Database for PostgreSQL with pgvector
  • Store embeddings for AI search and retrieval
  • Query vector data
  • Support retrieval-augmented generation patterns

Supporting Statements

  • Microsoft Learn lists Azure Database for PostgreSQL with pgvector as part of the AI-200T00 coverage for AI-supporting data services.
  • Students learn how vector-enabled databases support semantic search, similarity matching, and AI-enriched application experiences.
  • The module is especially relevant for organizations building custom copilots, knowledge search, AI assistants, and agentic workflows.

Lab

Lab 9: Build a Vector Search Prototype with PostgreSQL and pgvector
Students create a simple vector-enabled data store and perform similarity search against sample content.


Module 10: Implement Azure Managed Redis for Caching, Streaming, and Vector Search

Topics

  • Understand caching patterns for AI applications
  • Use Redis to improve application responsiveness
  • Apply Redis for streaming scenarios
  • Explore Redis vector search capabilities
  • Design high-performance AI application data access patterns

Supporting Statements

  • Microsoft Learn states that Azure Managed Redis is included for caching, streaming, and vector search in AI-200T00.
  • Students learn how caching and fast data access improve the user experience of AI-enabled applications.
  • The module explains how Redis can support low-latency workloads, session state, repeated prompts, embeddings, and fast retrieval scenarios.

Lab

Lab 10: Improve AI Application Performance with Redis
Students configure Redis caching for a sample AI application and compare response behavior before and after caching.


Module 11: Secure AI Cloud Solutions on Azure

Topics

  • Secure application identities
  • Protect secrets and configuration
  • Apply least-privilege access
  • Secure service-to-service communication
  • Review secure deployment patterns for AI workloads

Supporting Statements

  • The Azure AI Cloud Developer Associate role includes security across the development lifecycle, including design, development, deployment, and monitoring.
  • Students learn how to reduce credential exposure and secure AI application components across compute, data, and integration services.
  • The module reinforces enterprise security requirements for AI applications that access sensitive organizational data.

Lab

Lab 11: Secure an AI Cloud Application
Students configure identity-based access, secure settings, and validate service permissions.


Module 12: Monitor and Troubleshoot AI Solutions on Azure

Topics

  • Configure monitoring for AI applications
  • Use Azure Monitor and Application Insights concepts
  • Review logs, traces, and metrics
  • Troubleshoot failures across distributed services
  • Improve reliability and observability

Supporting Statements

  • Microsoft Learn states that the course teaches developers how to create, monitor, and troubleshoot AI solutions on Microsoft Azure.
  • Students learn how observability helps identify failures across serverless APIs, containers, databases, and messaging workflows.
  • The module prepares developers to operate AI solutions in production rather than only deploy them.

Lab

Lab 12: Monitor and Troubleshoot a Distributed AI Application
Students inspect logs, review application telemetry, identify a failure condition, and recommend corrective action.


Module 13: Orchestrate End-to-End AI Workflows on Azure

Topics

  • Combine compute, data, messaging, and events
  • Build multi-step AI workflows
  • Design reliable processing pipelines
  • Handle failures and retries
  • Align technical workflow design to business processes

Supporting Statements

  • Microsoft Learn states that by the end of the course, developers should be able to connect services, orchestrate AI workflows, and build secure, scalable, observable AI-driven applications on Azure.
  • Students learn how individual Azure services work together as part of a complete AI application architecture.
  • This module connects technical implementation to business scenarios such as customer service automation, intelligent document processing, workflow routing, and operational insights.

Lab

Lab 13: Build an End-to-End AI Cloud Workflow
Students assemble a solution using Azure Functions, Container Apps, Service Bus or Event Grid, and an Azure data service.


Module 14: Capstone Project — Build a Secure Azure AI Cloud Solution

Topics

  • Design a complete AI cloud application architecture
  • Select Azure compute and data services
  • Implement integration and workflow patterns
  • Apply security, monitoring, and troubleshooting
  • Present a production-readiness review

Supporting Statements

  • The capstone reinforces AI-200T00’s core objective: developing secure, scalable, and observable AI-driven applications on Azure.
  • Students practice making real implementation decisions across compute, serverless, container, data, messaging, and monitoring services.
  • The capstone gives learners a practical portfolio-style project that mirrors enterprise AI modernization work.

Capstone Lab

Capstone: Develop an AI Cloud Solution on Azure
Students design and build a working AI-enabled cloud solution using multiple Azure services, then present the architecture, security model, monitoring approach, and improvement recommendations.

Question About this Course?

Need help picking the right course?

Contact Us

Call Now

Call Now800-453-5961