Transform your data science career by mastering production-ready machine learning workflows. This Short Course was created to help data analysis professionals accomplish reliable demand forecasting and model governance in business environments.

Build Predictive & Supervised Models

Build Predictive & Supervised Models
This course is part of Statistical Inference & Predictive Modeling Foundations Specialization

Instructor: Hurix Digital
Access provided by Korek Telecom
Recommended experience
What you'll learn
Successful ML focuses on reliable production systems that deliver sustained business value, not just high model accuracy.
Model performance can degrade quietly, making statistical drift monitoring essential for long-term ML reliability.
Strong feature engineering balances predictive power with interpretability so stakeholders can trust model decisions.
Cross-validation and algorithm comparison ensure models generalize well to new and changing data patterns.
Skills you'll gain
- Applied Machine Learning
- Data Preprocessing
- Supervised Learning
- Business Metrics
- Feature Engineering
- Algorithms
- Model Evaluation
- Continuous Monitoring
- Classification And Regression Tree (CART)
- Regression Analysis
- Statistical Hypothesis Testing
- Performance Metric
- MLOps (Machine Learning Operations)
- Statistical Methods
- Random Forest Algorithm
- Machine Learning Methods
- Predictive Modeling
Tools you'll learn
Details to know

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March 2026
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There are 4 modules in this course
Build cross-validated random forest models that achieve business-defined accuracy targets
What's included
2 videos1 reading1 assignment1 ungraded lab
Evaluate and monitor model drift using statistical metrics to ensure long-term reliability
What's included
2 videos2 readings
Implement standardized cross-validation pipelines for multiple supervised algorithms and compare performance metrics
What's included
2 videos1 reading2 assignments
Assess feature selection techniques to balance model accuracy with interpretability
What's included
3 videos1 reading3 assignments
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