Python machine learning crash course for beginners /

Dive into the world of machine learning and create projects with real-world applications. About This Video: Build a face recognition application from scratch. Prepare and train your data for your projects. Learn real-world applications of your algorithms. In Detail: Machine learning is a field of co...

Full description

Bibliographic Details
Corporate Author: AI Sciences (Author)
Other Authors: Murtaza, Kashif (Speaker)
Format: Video
Language:English
Language Notes:In English.
Published: Birmingham, England : PACKT Publishing, 2021.
Series:Academic Video Online
Subjects:
Online Access:Connect to this streaming video (Alexander Street Press)
Description
Summary:Dive into the world of machine learning and create projects with real-world applications. About This Video: Build a face recognition application from scratch. Prepare and train your data for your projects. Learn real-world applications of your algorithms. In Detail: Machine learning is a field of computer science through which you can create complex models that perform multiple functions using mathematical input. Python is a popular choice to create machine learning models due to a plethora of libraries easily accessible. This course takes you through this impressive combination of Python and machine learning, teaching you the basics of machine learning to create your own projects. You'll begin learning about different types of machine learning models and how to choose the relevant ones for your project. You'll learn to optimize this model and apply performance metrics to track its performance. You'll also learn topics like regression, classification, and clustering to improve the performance of your model. You'll learn the basics of neural networks and use scikit-learn to perform calculations in your project. By the end of this course, you'll have created a face recognition application using everything you've learned in this course. The code bundle for this course is available at GitHub.
Item Description:Title from resource description page (viewed January 18, 2022).
Physical Description:1 online resource (566 minutes)
Playing Time:09:25:44