This intermediate-level course empowers learners to apply, analyze, and evaluate machine learning models using Apache PySpark’s distributed computing framework. Designed for data professionals familiar with Python and basic ML concepts, the course explores real-world implementation of both regression and classification techniques, along with unsupervised clustering.

PySpark: Apply & Evaluate Predictive ML Models

PySpark: Apply & Evaluate Predictive ML Models
This course is part of Spark and Python for Big Data with PySpark Specialization

Instructor: EDUCBA
Access provided by stc Bahrain
11 reviews
What you'll learn
Build and evaluate regression models in PySpark using linear, GLM, and ensemble methods.
Apply logistic regression, decision trees, and Random Forests for classification.
Implement K-Means clustering and assess scalable ML workflows with PySpark.
Skills you'll gain
Tools you'll learn
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Reviewed on Apr 6, 2026
The practical exercises on building and evaluating ML pipelines in PySpark gave me the confidence to apply these skills directly to my job.
Reviewed on Mar 31, 2026
Finally, a course that treats model evaluation as seriously as model building. My models are now more robust and business-ready.
Reviewed on Apr 8, 2026
This course expertly teaches how to deploy and evaluate predictive models using PySpark, bridging the gap between data engineering and advanced machine learning.





