AI-100: Designing and Implementing an Azure AI Solutions

Clear and Concise

4.39 (437 reviews)
Udemy
platform
English
language
IT Certification
category
AI-100: Designing and Implementing an Azure AI Solutions
6,164
students
5 hours
content
Apr 2021
last update
$54.99
regular price

What you will learn

Ingest, transform, and prepare data for AI solutions

Design and implement end-to-end AI solutions on Microsoft Azure

Monitor and optimize AI solutions deployed on Microsoft Azure

Secure AI solutions on Microsoft Azure

You will be able to integrate and get best results for any computer vision or Natural Language processing tasks.

Ability to show and include Machine Learning applications in your app

Learn Microsoft Azure - Cloud platform cognitive services like Face, Vision, Text API

Why take this course?

UPDATE : Please note that this course will be upgraded to AI 102 with the new curriculum.

This means that even if you are preparing for AI 100, you can continue to use this course for AI 102 preparation.

---------------------------------------------------------------------------------------------------------------------------------------------------------

Microsoft Azure offers a spread of services designed to work together to enable rapid development of high-performance AI solutions. This skill teaches how these Azure services work together to enable you to design, implement, operationalize, monitor, optimize, and secure your AI solutions on Microsoft Azure. This path is designed to address the Microsoft AI-100 certification exam.

This course covers Azure Cognitive APIs for Visual Features including Face Detection, Tagging the content of an image, OCR as well as Text Analytics for Language Detection, Sentiment Analysis and Key Phrase extraction. The course is very hands on and covers the implementation of these APIs using Python as well as Javascript.

With cognitive services you will be able to build all such or even more types of applications.

Here is the course content covered in this course :


Analyze solution requirements (25-30%)

Recommend Azure Cognitive Services APIs to meet business requirements

· select the processing architecture for a solution

· select the appropriate data processing technologies

· select the appropriate AI models and services

· identify components and technologies required to connect service endpoints

· identify automation requirements Map security requirements to tools, technologies, and processes · identify processes and regulations needed to conform with data privacy, protection, and regulatory requirements

· identify which users and groups have access to information and interfaces

· identify appropriate tools for a solution

· identify auditing requirements Select the software, services, and storage required to support a solution

· identify appropriate services and tools for a solution

· identify integration points with other Microsoft services

· identify storage required to store logging, bot state data, and Azure Cognitive Services output

Design AI solutions (40-45%)

Design solutions that include one or more pipelines

· define an AI application workflow process

· design a strategy for ingest and egress data

· design the integration point between multiple workflows and pipelines

· design pipelines that use AI apps

· design pipelines that call Azure Machine Learning models

· select an AI solution that meet cost constraints Design solutions that uses Cognitive Services

· design solutions that use vision, speech, language, knowledge, search, and anomaly detection APIs Design solutions that implement the Microsoft Bot Framework

· integrate bots and AI solutions

· design bot services that use Language Understanding (LUIS)

· design bots that integrate with channels

· integrate bots with Azure app services and Azure Application Insights Design the compute infrastructure to support a solution

· identify whether to create a GPU, FPGA, or CPU-based solution

· identify whether to use a cloud-based, on-premises, or hybrid compute infrastructure

· select a compute solution that meets cost constraints Design for data governance, compliance, integrity, and security

· define how users and applications will authenticate to AI services

· design a content moderation strategy for data usage within an AI solution

· ensure that data adheres to compliance requirements defined by your organization

· ensure appropriate governance of data

· design strategies to ensure that the solution meets data privacy regulations and industry standards

Implement and monitor AI solutions (25-30%)

Implement an AI workflow

· develop AI pipelines

· manage the flow of data through the solution components

· implement data logging processes

· define and construct interfaces for custom AI services

· create solution endpoints

· develop streaming solutions Integrate AI services and solution components

· configure prerequisite components and input datasets to allow the consumption of Azure Cognitive Services APIs

· configure integration with Azure Cognitive Services

· configure prerequisite components to allow connectivity to the Microsoft Bot Framework

· implement Azure Cognitive Search in a solution Monitor and evaluate the AI environment

· identify the differences between KPIs, reported metrics, and root causes of the differences

· identify the differences between expected and actual workflow throughput

· maintain an AI solution for continuous improvement

· monitor AI components for availability

· recommend changes to an AI solution based on performance data


Hope this course would be informative to you. Please reach out to me if you have any questions.

Content

Introduction

Introduction

Overview of Azure Services

What Can you Expect in this Section
Overview of Azure Services
Using Azure Portal - I
Using Azure Portal - II
Using Azure CLI
Service Categories
Designing a Solution - An Overview
How do you Manage these Services?

Module 1 : Analyze solution requirements (25-30%)

Select the processing Architecture for a solution
Select the appropriate data processing technologies
Select the appropriate AI models and services
Identify components and technologies required to connect service endpoints
Identify automation requirements
Introduction to Cognitive Services - Lab Activity
Identify Processes and Regulations Needed to Conform with Data Privacy
Identify which Users and Groups have Access to Information and Interfaces
Identify Appropriate Tools for a Solution
Identify Auditing Requirements
Identify appropriate services and tools for a solution
Identify integration points with other Microsoft services
Identify storage required to store logging, bot state data, and Azure Cognitive
face recognition lab - TO BE UPDATED

Module 2 : Design AI solutions (40-45%)

Define an AI application workflow process
Design a Strategy for Ingest and Egress Data
Design the integration point between multiple workflows and pipelines
Design Pipelines that use AI Apps
Select an AI Solution that Meets Cost Restraints
Design solutions that use vision, speech, language, knowledge, search etc
Integrate Bots and AI Solutions
Design Bot Services that use Language Understanding (LUIS)
Design Bots that Integrate with Channels
Integrate Bots with Azure App Services and Azure Application Insights
Identify Whether to Create a GPU, FPGA, or CPU-Based Solution
Identify Whether to Use a Cloud-Based, On-Premises, or Hybrid Compute Infra
Select a Compute Solution that Meets Cost Constraints
31 Define how users and applications autenticate to AI services
32 Design a Content Moderation Strategy for Data Usage within an AI Solution
33 Ensure that Data Adheres to Compliance Requirements Defined by an Organizatio
34 Ensure Appropriate Governance for Data
35 Design Strategies to Ensure the Solution Meets Data Privacy and Industry Stan

Module 3 : Implement and monitor AI solutions (25-30%)

36 Develop AI Pipelines
37 Manage the Flow of Data Through Solution Components
Implement Data Logging Processes
Define and Construct interfaces for Custom AI Services
Integrate AI Models with other Solutions Components
Create Solution Endpoints
Develop Streaming Solutions
Configure Prerequisite Component and Input Datasets to Allow Consumption of data
Configure Integration with Azure Services
Implement Azure Search in a Solution
Identify the Differences Between KPIs, Reported Metrics, and Root Causes
Identify the Differences Between Expected and Actual Workflow Throughput
Implement AI for Continuous Improvement
Monitor AI Components for Availability
Recommend Changes to an AI Solution Based on Performance Data
Course Conclusion - AI 100

Screenshots

AI-100: Designing and Implementing an Azure AI Solutions - Screenshot_01AI-100: Designing and Implementing an Azure AI Solutions - Screenshot_02AI-100: Designing and Implementing an Azure AI Solutions - Screenshot_03AI-100: Designing and Implementing an Azure AI Solutions - Screenshot_04

Reviews

Sifiso
December 9, 2021
The course was better than expected. I definitely recommend it for anyone seeking to write and pass the AI-102 exam.
Prakhar
November 27, 2021
It's nice but need a little bit more interactions, like to shoot some questions in between sessions or host a quiz.
Naga
July 11, 2021
When we first time hearing new terminology, concepts take time to digest. May be little slow pace and stress the important services.
Renan
June 28, 2021
The instructor really know about the topic but he could have use visual aids to help us to retain the content. I could have done more labs tackling each topic covered by the course.
Rajesh
June 17, 2021
Liked the lessons and topics to understand whole Azure AI and it's usage. This along with understanding of the Cognitive Services would definitely be a great combination for the exam.
Keemti
June 16, 2021
The contents covered aligns well with the certification outline. Speaker was very clear and elaborative while discussing the topics.
Tinashe
June 5, 2021
This course is good, gives an overview of the exam requirement. Need additional material to pass exam.
Lijun
June 1, 2021
It is a good course for work through the whole parts of AI-100, but for practice preparation, need the candidates do more self digging.
Bwando
May 10, 2021
very good and very concise, well discussed topics and points. But, i felt there should have been more labs. But then again, awesome content and updated content!
Ali
May 9, 2021
As a reference this is a good course. It identifies the concepts you need to learn, but the course is not good if you are expecting the trainer to explain some of these concepts in any detail.don’t get me wrong there are chapters and sections where the trainer explains the concept “almost” in detail but you will be basically ON YOUR own to learn and study everything. Finishing this course will not help you pass the AI-100 exam in my opinion but is just a good course if you want to learn the AI-900 fundamentals. It’s that level at best.
Swapnil
April 24, 2021
Touched all important areas for exam. Suggestion: I personally like more practical. If it could been more practical demonstration, would be better.
Dr.
April 23, 2021
You're asking the previous guy, how you cold improve that course and many previouse comments tell you to consult more the Azure platform and give more labs based on the Azure portal. It not so deeply explained. I have the impression that you just want to mention all points to complete your check-list from the Azure exam pdf. However, this shouldn't be your aim. Thats how it feels
Ujval
April 21, 2021
Decent material but no demos or labs. Needed to have some practical application videos to make it worthwhile
Anelia
April 12, 2021
It is a good match as I need to provide a solution or platform that needs to be accessible to users with a secure flow.
Nilanshu
March 28, 2021
Course is nice and crisp with precise explanations . It can be improved in providing more practice resources and mock tests.

Coupons

DateDiscountStatus
1/24/2021100% OFF
expired

Charts

Price

AI-100: Designing and Implementing an Azure AI Solutions - Price chart

Rating

AI-100: Designing and Implementing an Azure AI Solutions - Ratings chart

Enrollment distribution

AI-100: Designing and Implementing an Azure AI Solutions - Distribution chart
3315948
udemy ID
7/9/2020
course created date
1/22/2021
course indexed date
Bot
course submited by