Azure AI Engineer Associate - Course: AI-100Posted by MichealH Alexander on June 1st, 2021 Azure AI Engineers use Cognitive Services, Machine Learning, and Knowledge Mining to architect and implement Microsoft AI solutions involving natural language processing, speech, computer vision, bots, and agents. Exam AI-100: Designing and Implementing an Azure AI Solution This exam measures your ability to accomplish the following technical tasks: analyze solution requirements; design solutions; integrate AI models into solutions; and deploy and manage solutions. Designing and Implementing an Azure AI Solution course AI-100 Course AI-100: Designing and Implementing an Azure AI Solution An Azure AI engineer works with Data Engineers and Data Scientists to analyze requirements for AI cloud-based and hybrid AI solutions and implements solutions. They are aware of the various components that make up the Microsoft Azure AI portfolio and related open source frameworks and technologies. The engineer leverages their knowledge to recommend appropriate tools and technologies for a given solution. The engineer is aware of the available data storage options and uses their understanding of cost models, capacity, and best practices to architect and implement AI solutions. This course teaches the concepts of Azure AI engineering by presenting, and developing, a scenario that creates a customer support Bot that utilizes various tools and services in the Azure AI landscape like language understanding, QnA Maker, and various Azure Cognitive Services to implement language detection, text analytics, and computer vision. WS-013T00-A: Azure Stack HCI Course Outline Module 1: Introducing Azure Cognitive Services The student will learn about the available Cognitive Services on Microsoft Azure and their role in architecting AI solutions. Lessons Overview of Azure Cognitive Services Creating a Cognitive Service on the Azure Portal Access and Test a Cognitive Service Module 2: Creating Bots The student will learn about the Microsoft Bot Framework and Bot Services. Lessons Introducing the Bot Service Creating a Basic Chat Bot Testing with the Bot Emulator Module 3: Enhancing Bots with QnA Maker The student will learn about the QnA Maker and how to integrate Bots and QnA Maker to build up a useful knowledge base for user interactions. Lessons Introducing QnA Maker Implement a Knowledge Base with QnA Maker Integrate QnA with a Bot Module 4: Learn How to Create Language Understanding Functionality with LUIS The student will learn about LUIS and how to create intents and utterances to support a natural language processing solution. Lessons Introducing Language Understanding Create a new LUIS Service Build Language Understanding with Intents and Utterances Module 5: Enhancing Your Bots with LUIS The student will learn about integrating LUIS with a Bot to better understand the users’ intentions when interacting with the Bot. Lessons Overview of language understanding for AI applications Integrate LUIS and Bot to create an AI-based solution Module 6: Integrate Cognitive Services with Bots and Agents The student will learn about integrating Bots and Agents with Azure Cognitive Services for advanced features such as sentiment analysis, image and text analysis, and OCR and object detection. Lessons Understand Cognitive Services for Bot Interactions Perform Sentiment Analysis for your Bot with Text Analytics Detect Language in a Bot with the Language Cognitive Services Integrate Computer Vision with Bots Like it? Share it!More by this author |