Azure AI Services For Developers
About the Seminar
This hands-on, dynamic seminar introduces participants to the world of Artificial Intelligence services in Microsoft Azure. Throughout the day, attendees will explore Azure’s intelligent services from Cognitive Services to OpenAI and Azure Machine Learning — and learn how to integrate capabilities such as sentiment analysis, natural language processing, GPT-4, and custom AI models into real-world business solutions.
Participants will gain practical experience in developing, securing, deploying, and connecting AI components to business applications and workflows using advanced tools such as:
- Azure Logic Apps
- Azure Functions
- GitHub Actions
Target Audience
Developers, Software Engineers, Data Scientists, DevOps Engineers, and Azure-based Software Developers.
Prerequisites
Basic familiarity with Microsoft Azure.
Topics Covered
Introduction to Azure AI Services
Overview of Microsoft Azure and its AI capabilities
Mapping AI Services in Azure
Azure Cognitive Services
Azure OpenAI Service
Azure Machine Learning
Choosing between managed services and custom models
Cognitive Services API – Ready-to-Use AI Insights
Computer Vision, Face API, and OCR
Speech to Text / Text to Speech
Text Analytics & Language Understanding (LUIS)
Hands-on demo: Build a sentiment detection service from text
Azure OpenAI Service – Integrating GPT into Business Solutions
Introduction to Azure OpenAI and differences from OpenAI public API
Resource provisioning, permissions, and security
Working with GPT, Codex, and Embeddings models
Live demo: Building a GPT-4-based chatbot
Developing Custom Models with Azure Machine Learning
Azure ML Workspaces, Datasets, and Pipelines
AutoML and Responsible AI principles
Demo: Training an image classification model using Azure ML
Connecting AI Components to Real Applications
Integrating Cognitive Services, OpenAI, and Azure Functions
Using Azure Logic Apps and Power Automate
Full example: A recommendation system using GPT and sentiment analysis
Deployment and Operations in Azure AI
Deployment options: Web Apps, Containers, API Management
Monitoring with Application Insights
Security with Azure Key Vault and network restrictions
CI/CD pipelines for AI projects using GitHub Actions or Azure DevOps
Best Practices and Real-World Case Studies
Responsible AI principles
When not to use AI
Case study: Integrating Azure AI in a healthcare organization
