Develop generative AI apps in Azure - Applied Skills Workshop Training in Ireland

  • Learn via: Classroom
  • Duration: 1 Day
  • Level: Intermediate
  • Price: From €817+VAT

This course provides a comprehensive guide to building generative AI applications using Azure's suite of tools and services. Participants will explore the Azure AI Foundry portal, learn to select and deploy models from the model catalogue, and develop AI applications utilizing the Azure AI Foundry SDK. The curriculum emphasizes practical skills in prompt engineering, Retrieval-Augmented Generation (RAG), and responsible AI implementation, ensuring learners can create effective and ethical AI solutions.

We can organize this training at your preferred date and location. Contact Us!

Prerequisites

Participants should have:

  • A foundational understanding of Azure services and cloud computing concepts
  • Experience with REST APIs and JSON
  • Familiarity with large language models (LLMs) and natural language processing (NLP) concepts
  • Basic proficiency in programming (Python or C# preferred)

Target audience

This course is suitable for:

  • AI engineers, solution architects, and software developers
  • Technical professionals interested in generative AI applications
  • Organisations aiming to improve service automation and internal productivity with custom AI solutions

Training Outline

Introduction to Azure AI Foundry

  • Overview of Azure AI Foundry and its capabilities
  • Understanding the AI development lifecycle in Azure
  • Setting up the development environment

Model selection and deployment

  • Exploring the Azure AI Foundry model catalogue
  • Criteria for selecting appropriate models
  • Deploying models using the Azure AI Foundry portal

Developing AI applications with Azure AI Foundry SDK

  • Introduction to the Azure AI Foundry SDK
  • Building AI applications using the SDK
  • Integrating AI capabilities into existing applications

Implementing Retrieval-Augmented Generation (RAG)

  • Understanding RAG and its benefits
  • Connecting to custom data sources
  • Creating indexes and integrating them with generative AI models

Fine-tuning language models

  • Overview of model fine-tuning processes
  • Training models for specific tasks
  • Evaluating fine-tuned model performance

Evaluating and optimizing AI applications

  • Monitoring application performance
  • Using Azure tools for evaluation
  • Implementing improvements based on evaluation results

Responsible AI practices

  • Understanding ethical considerations in AI development
  • Implementing measures to mitigate risks
  • Ensuring compliance with data privacy regulations

Exams and assessments

There are no formal exams included in this course. Learners will complete interactive labs, guided exercises, and scenario-based tasks to reinforce understanding and assess their progress.

Hands-on learning

This course includes:

  • Guided labs on model deployment, application development, and RAG implementation
  • Practical exercises for fine-tuning models and evaluating performance
  • Simulated real-world scenarios for applying responsible AI practices
  • Instructor feedback and collaborative learning activities



Contact us for more detail about our trainings and for all other enquiries!
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