bestcourses is supported by learners. When you buy through links on our website, we may earn an affiliate commission. Learn more

AI-100: Designing and Implementing an Azure AI Solutions

Clear and Concise

4.68 / 5.0
5167 students5 hours

Created by Anand Rao Nednur, offered on Udemy

bestcourses score™

Student feedback

7.8/10

To make sure that we score courses properly, we pay a lot of attention to the reviews students leave on courses and how many students are taking a course in the first place. This course has a total of 5167 students which left 327 reviews at an average rating of 4.68. Impressive!

Course length

9/10

We analyze course length to see if courses cover all important aspects of a topic, taking into account how long the course is compared to the category average. This course has a length of 5 hours , which is pretty short. This might not be a bad thing, but we've found that longer courses are often more detailed & comprehensive. The average course length for this entire category is 4 hours 29 minutes.

Overall score

7.8/10

This course currently has a bestcourses score of 7.8/10, which makes it a great course to learn from. On our entire platform, only 15% of courses achieve this rating!

Description

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.

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

Requirements

  • This path is intended for learners who are familiar with common AI workflows and concepts, but who do not have experience applying these concepts using Microsoft Azure services.
  • Basic Python or Javascript
  • Basic idea about HTTP, REST
  • Usage of Visual Studio
Udemy logo
Available on

Udemy

With almost 200,000 courses and close to 50 million students, Udemy is one of the most visited online learning platforms. Popular topics include software development, the digital economy, but also more traditional topics like cooking and music.

Frequently asked questions

  • Price: $74.99
  • Platform: Udemy
  • Language: English
  • 5 hours
AI-100: Designing and Implementing an Azure AI Solutions thumbnail

bestcourses score: 7.8/10

This course is better than many others in its category.