Practical AI and Machine Learning with Model Builder AutoML

Course Provided by:Irlon Terblanche
Course Taken on: Udemy
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Description

In this course, you will get to understand the foundational concepts that underlie the supervised machine-learning process. You will get to understand complex topics such as:

  • Exploratory Data Analysis,

  • Data Transformation and Feature Scaling,

  • Evaluation Metrics, Algorithms, trainers, and models,

  • Underfitting and Overfitting,

  • Cross-validation, Regularization, and much more

You will see these concepts come alive by doing a practical machine-learning exercise, rather than by looking at presentations. We will be using a non-cloud-based machine-learning tool called Model Builder, inside of Visual Studio. There will be zero coding involved (except for the very last lesson). But even though there is little coding involved, you will still get a very detailed understanding of complex machine-learning concepts.


This course requires you to have at least some theoretical exposure to the concepts of supervised and unsupervised machine learning. This course is designed to build on a basic, theoretical understanding of machine learning by doing a practical machine-learning exercise. The concepts taught in this course are foundational and will be relevant in the future, regardless of what machine learning platform or programming language you use.


In the process, you will also get some exposure to Visual Studio, code projects, solutions, and the Microsoft Machine Learning ecosystem. But that is just a side benefit. This course focuses on machine learning itself, not the tools that are used.


If you've already done any kind of machine learning or trained a model, this course might be too basic for you. This course may contain foundational knowledge that you may not have been taught before, but please be aware that this course is geared toward beginner and intermediate-level AI enthusiasts.

Requrirements

A basic understanding of supervised machine learning is required. The student would at the very least need to understand what regression is, what features are, and what it means for a model to be trained to fit a function to input features in order to predict labels.,The student needs to have a Windows machine with a few GB of free disk space to install Visual Studio, in order to replicate the machine learning process I will demonstrate. However, this is not essential.,A Windows machine is ideal, but a student with a Mac will still be able to follow along. The course content is visual enough to demonstrate the concepts, without the student having to physically do the machine learning exercise.

Course Includes

  • 2.5 hours on-demand video
  • 1 article
  • 1 downloadable resource
  • Access on mobile and TV
  • Full lifetime access
  • Certificate of completion

Course Reviews

  1. Well explained, easy to follow!
  2. A competently structured course that builds on the foundations established in previous lessons.
  3. I recently completed a course that struck an excellent balance between being concise and highly informative. The content was of high quality, providing a decent understanding without unnecessary complexity. Overall, a great learning experience.
  4. Very Helpful and extremely informative