Image

Designing and Implementing a Microsoft Azure AI Solution Training (AI-102)

Designing and Implementing a Microsoft Azure AI Solution (AI-102) Certification
The AI-102 Designing and Implementing an Azure AI Solution is designed for software developers aiming to create applications enriched with AI capabilities utilizing Azure Cognitive Services, Azure Cognitive Search, and Microsoft Bot Framework. This Microsoft Azure AI Solution Training course will utilize either C# or Python as the programming language.

Designing and Implementing a Data Science Solution on Azure DP-100 Objectives

  • In this course you will learn how to:
  • Design machine learning solutions.
  • Create and manage assets and resources in the Azure Machine Learning workspace using the portal the studio. the Azure CLIand especially the Python SDK (v2).
  • Build and run pipelines with the no-code designer in the Azure Machine Learning studio.
  • Use Automated Machine Learning to explore featurisation and algorithms.
  • Train and track machine learning models in Azure Machine Learning notebooks using MLflow.
  • Train and track machine learning models using scripts as Azure Machine Learning jobs using MLflow.
  • Create run and schedule Azure Machine Learning pipelines.
  • Deploy models to real-time and batch endpoints.
  • Apply Responsible AI principles to data models and model training.
  • Design a MLOps solution and design for monitoring and retraining.

Need Assistance Finding the Right Training Solution

Our Consultants are here to assist you

Key Point of Training Programs

We have different work process to go step by step for complete our working process in effective way.
  • Designing and Implementing a Microsoft Azure AI Solution Training (AI-102) Outline

    Module 1: Prepare to develop AI solutions on Azure

    As an aspiring Azure AI Engineer, you should understand core concepts and principles of AI development, and the capabilities of Azure services used in AI solutions.

    Lessons

    - Define artificial intelligence
    - Understand AI-related terms
    - Understand considerations for AI Engineers
    - Understand considerations for responsible AI
    - Understand capabilities of Azure Machine Learning
    - Understand capabilities of Azure Cognitive Services
    - Understand capabilities of the Azure Bot Service
    - Understand capabilities of Azure Cognitive Search

    Module 2: Create and consume Cognitive Services

    Azure Cognitive Services enable developers to easily add AI capabilities into their applications. Learn how to create and consume these services.

    Lessons

    - Provision Cognitive Services resources in an Azure subscription.
    - Identify endpoints, keys, and locations required to consume a Cognitive Services resource.
    - Use a REST API to consume a cognitive service.
    - Use an SDK to consume a cognitive service.

    Module 3: Secure Cognitive Services

    Securing Cognitive Services can help prevent data loss and privacy violations for user data that may be a part of the solution.

    Lessons

    - Consider authentication for Cognitive Services
    - Manage network security for Cognitive Services

    Module 4: Monitor Cognitive Services

    Azure Cognitive Services enable you to integrate artificial intelligence into your applications and services. It's important to be able to monitor Cognitive Services in order to track utilization, determine trends, and detect and troubleshoot issues.

    Lessons

    - Monitor Cognitive Services costs
    - Create alerts
    - View metrics
    - Manage diagnostic logging

    Module 5: Deploy cognitive services in containers

    Learn about Container support in Cognitive Services allowing the use of APIs available in Azure and enable flexibility in where to deploy and host the services with Docker containers.

    Lessons

    - Create Containers for Reuse
    - Deploy to a Container
    - Secure a Container
    - Consume Cognitive Services from a Container

    Module 6: Extract insights from text with the Language service

    The Language service enables you to create intelligent apps and services that extract semantic information from text.

    Lessons

    - Detect language
    - Extract key phrases
    - Analyze sentiment
    - Extract entities
    - Extract linked entities

    Module 7: Translate text with the Translator service

    The Translator service enables you to create intelligent apps and services that can translate text between languages.

    Lessons

    - Provision a Translator resource
    - Understand language detection, translation, and transliteration
    - Specify translation options
    - Define custom translations

    Module 8: Create speech-enabled apps with the Speech service

    The Speech service enables you to build speech-enabled applications. This module focuses on using the speech-to-text and text-to-speech APIs, which enable you to create apps that are capable of speech recognition and speech synthesis.

    Lessons

    - Provision an Azure resource for the Speech service
    - Use the Speech to text API to implement speech recognition
    - Use the Text to speech API to implement speech synthesis
    - Configure audio format and voices
    - Use Speech Synthesis Markup Language (SSML)

    Module 9: Translate speech with the speech service

    Translation of speech builds on speech recognition by recognizing and transcribing spoken input in a specified language, and returning translations of the transcription in one or more other languages.

    Lessons

    - Provision Azure resources for speech translation.
    - Generate text translation from speech.
    - Synthesize spoken translations.

    Module 10: Build a Language Understanding model

    The Language Understanding service enables you to train a language model that apps can use to extract meaning from natural language.

    Lessons

    - Provision Azure resources for Language Understanding
    - Define intents, utterances, and entities
    - Use patterns to differentiate similar utterances
    - Use pre-built entity components
    - Train, test, publish, and review a Language Understanding model

    Module 11: Publish and use a Language Understanding app

    After creating a Language Understanding app, you can publish it and consume it from client applications.

    Lessons

    - Understand capabilities of a Language Understanding app
    - Process predictions from a Language Understanding app
    - Deploy a language-understanding app in a container

    Module 12: Build a question answering solution

    The question-answering capability of the Language service makes it easy to build applications in which users ask questions using natural language and receive appropriate answers.

    Lessons:

    - Understand question answering
    - Compare question answering to language understanding
    - Create a knowledge base
    - Implement multi-turn conversation
    - Test and publish a knowledge base
    - Consume a knowledge base
    - Implement active learning
    - Create a question-answering bot

    Module 13: Create a bot with the Bot Framework SDK

    Learn how to build a bot by using the Microsoft Bot Framework SDK.

    Lessons:

    - Understand principles of bot design
    - Use the Bot Framework SDK to build a bot
    - Deploy a bot to Azure

    Module 14: Create a Bot with the Bot Framework Composer

    User the Bot Framework Composer to quickly and easily build sophisticated conversational bots without writing code.

    Lessons

    - Understand dialogs
    - Plan conversational flow
    - Design the user experience
    - Create a bot with the Bot Framework Composer

    Module 15: Analyze images

    With the Computer Vision service, you can use pre-trained models to analyze images and extract insights and information from them.

    Lessons:

    - Provision a Computer Vision resource
    - Analyze an image
    - Generate a smart-cropped thumbnail

    Module 16: Analyze video

    Azure Video Analyzer for Media is a service to extract insights from video, including face identification, text recognition, object labels, scene segmentations, and more.

    Lessons

    - Describe Video Analyzer for Media capabilities
    - Extract custom insights
    - Use Video Analyzer for Media widgets and APIs

    Module 17: Classify images

    Image classification is used to determine the main subject of an image. You can use the Custom Vision services to train a model that classifies images based on your own categorizations.

    Lessons:

    - Provision Azure resources for Custom Vision
    - Understand image classification
    - Train an image classifier

    Module 18: Detect objects in images

    Object detection is used to locate and identify objects in images. You can use Custom Vision to train a model to detect specific classes of object in images.

    Lessons:

    - Provision Azure resources for Custom Vision
    - Understand object detection
    - Train an object detector
    - Consider options for labeling images

    Module 19: Detect, analyze, and recognize faces

    The ability for applications to detect human faces, analyze facial features and emotions, and identify individuals is a key artificial intelligence capability.

    Lessons:

    - Identify options for face detection, analysis, and identification
    - Understand considerations for face analysis
    - Detect faces with the Computer Vision service
    - Understand capabilities of the Face service
    - Compare and match detected faces
    - Implement facial recognition

    Module 20: Read Text in Images and Documents with the Computer Vision Service

    Azure's Computer Vision service uses algorithms to process images and return information. This module teaches you how to use the Read API for optical character recognition (OCR).

    Lessons:

    - Read text from images with the Read API
    - Use the Computer Vision service with SDKs and the REST API
    - Develop an application that can read printed and handwritten text

    Module 21: Extract data from forms with Form Recognizer

    Form Recognizer uses machine learning technology to identify and extract key-value pairs and table data from form documents with accuracy, at scale. This module teaches you how to use the Azure Form Recognizer cognitive service.

    Lessons:

    - Identify how Form Recognizer's layout service, prebuilt models, and custom service can automate processes
    - Use Form Recognizer's Optical Character Recognition (OCR) capabilities with SDKs, REST API, and Form Recognizer Studio
    - Develop and test custom models

    Module 22: Create an Azure Cognitive Search Solution

    Unlock the hidden insights in your data with Azure Cognitive Search.

    Lessons:

    - Create an Azure Cognitive Search solution
    - Develop a search application

    Module 23: Create a custom skill for Azure Cognitive Search

    Use the power of artificial intelligence to enrich your data and find new insights.

    Lessons:

    - Implement a custom skill for Azure Cognitive Search
    - Integrate a custom skill into an Azure Cognitive Search skillset

    Module 24: Create a knowledge store with Azure Cognitive Search

    Persist the output from an Azure Cognitive Search enrichment pipeline for independent analysis or downstream processing.

    Lessons:

    - Create a knowledge store from an Azure Cognitive Search pipeline
    - View data in projections in a knowledge store

  • Designing and Implementing a Microsoft Azure AI Solution Training (AI-102) Delivery Format

    In-Person

    Online

  • Designing and Implementing a Data Science Solution on Azure DP-100 Prerequisites

    If you are new to artificial intelligence and want an overview of AI capabilities on Azure consider completing Microsoft Azure AI Fundamentals Training (AI-900) before taking this one. You should already have:

    - Knowledge of Microsoft Azure and ability to navigate the Azure portal
    - Knowledge of either C# or Python
    - Familiarity with JSON and REST programming semantics

    Certification Information:

    This course can help you prepare for the following Microsoft role-based certification exam

    - Exam AI-102: Designing and Implementing a Microsoft Azure AI Solution.

    Have a Question About This Course?