Course Outline

Introduction

  • Building effective algorithms in pattern recognition, classification and regression.

Setting up the Development Environment

  • Python libraries
  • Online vs offline editors

Overview of Feature Engineering

  • Input and output variables (features)
  • Pros and cons of feature engineering

Types of Problems Encountered in Raw Data

  • Unclean data, missing data, etc.

Pre-Processing Variables

  • Dealing with missing data

Handling Missing Values in the Data

Working with Categorical Variables

Converting Labels into Numbers

Handling Labels in Categorical Variables

Transforming Variables to Improve Predictive Power

  • Numerical, categorical, date, etc.

Cleaning a Data Set

Machine Learning Modelling

Handling Outliers in Data

  • Numerical variables, categorical variables, etc.

Summary and Conclusion

Requirements

  • Python programming experience.
  • Experience with Numpy, Pandas and scikit-learn.
  • Familiarity with Machine Learning algorithms.

Audience

  • Developers
  • Data scientists
  • Data analysts
 14 Hours

Custom Corporate Training

Training solutions designed exclusively for businesses.

  • Customized Content: We adapt the syllabus and practical exercises to the real goals and needs of your project.
  • Flexible Schedule: Dates and times adapted to your team's agenda.
  • Format: Online (live), In-company (at your offices), or Hybrid.
Investment

Price per private group, online live training, starting from 3200 € + VAT*

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