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LinkedIn Learning

Machine Learning with Python: Foundations

via LinkedIn Learning

Overview

Learn the basics of machine learning and how you can create a machine learning model with Python.

Syllabus

Introduction
  • Machine learning in our world
  • What you should know
  • The tools you need
  • Using the exercise files
1. Machine Learning
  • What is machine learning?
  • What is not machine learning?
  • What is unsupervised learning?
  • What is supervised learning?
  • What is reinforcement learning?
  • What are the steps to machine learning?
2. Collecting Data for Machine Learning
  • Things to consider when collecting data
  • How to import data in Python
3. Understanding Data for Machine Learning
  • Describe your data
  • How to summarize data in Python
  • Visualize your data
  • How to visualize data in Python
4. Preparing Data for Machine Learning
  • Common data quality issues
  • How to resolve missing data in Python
  • Normalizing your data
  • How to normalize data in Python
  • Sampling your data
  • How to sample data in Python
  • Reducing the dimensionality of your data
5. Types of Machine Learning Models
  • Classification vs. regression problems
  • How to build a machine learning model in Python
  • Common machine learning algorithms
Conclusion
  • Next steps with applied machine learning

Taught by

Frederick Nwanganga

Reviews

4.7 rating at LinkedIn Learning based on 4877 ratings

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