Mistakes to Avoid in Machine Learning

Go to class
Write Review

Free Online Course: Mistakes to Avoid in Machine Learning provided by LinkedIn Learning is a comprehensive online course, which lasts for Less than 1 hour of material. The course is taught in English and is free of charge. Upon completion of the course, you can receive an e-certificate from LinkedIn Learning. Mistakes to Avoid in Machine Learning is taught by Brett Vanderblock and Madecraft.

Overview
  • Learn about the common mistakes you should avoid when building your machine learning models.

Syllabus
  • Introduction

    • Avoiding machine learning mistakes
    • Using the exercise files
    1. Mistakes to Avoid
    • Assuming data is good to go
    • Neglecting to consult subject matter experts
    • Overfitting your models
    • Not standardizing your data
    • Focusing on the wrong factors
    • Data leakage
    • Forgetting traditional statistics tools
    • Assuming deployment is a breeze
    • Assuming machine learning is the answer
    • Developing in a silo
    • Not treating for imbalanced sampling
    • Interpreting your coefficients without properly treating for multicollinearity
    • Evaluating by accuracy alone
    • Giving overly technical presentations
    Conclusion
    • Take your machine learning skills to the next level