Access courses

Predictive Analytics Analyst Course

What will I learn?

Unlock the power of predictive analytics with our in-depth training programme designed for Business Intelligence professionals. Explore data, learn how to clean data properly, and master feature engineering to make your models more accurate. Gain expertise in choosing and training predictive models, including linear regression, decision trees, and advanced techniques like random forests. Develop skills in understanding the results and creating clear reports to provide business insights that can be acted upon. Boost your career with practical, high-quality learning.

Apoia's Unique Offerings

Online courses with lifetime access
Certificate aligned with educational standards
Printable PDF summaries
24/7 online support
Select and organise the chapters you wish to study
Set your own course workload
Instant feedback on practical activities
Study at your convenience, no internet required

Develop your skills

Enhance your practical skills listed below

Master data cleaning: Learn to deal with missing data and fix inconsistencies effectively.

Develop feature engineering: Create new features and include economic indicators.

Select predictive models: Choose and use linear regression and decision trees.

Train and evaluate models: Use data splitting techniques to get the best performance.

Interpret model results: Provide business insights that can be acted upon and analyse the key factors driving those results.

Suggested summary

Workload: between 4 and 360 hours

Before starting, you can change the chapters and workload.

  • Choose which chapter to start with
  • Add or remove chapters
  • Increase or decrease the course workload

Examples of chapters you can add

You will be able to generate more chapters similar to the examples below

This is a free course aimed at personal and professional development. It is not equivalent to a technical, undergraduate, or postgraduate course, but provides practical and relevant knowledge for your professional journey.