The ML Practitioner Learning Kit is a hands-on technical training package designed to help learners design, optimize and deploy real-world machine learning models. It is ideal for data scientists, machine learning engineers and analytics practitioners who want to move beyond foundational ML knowledge and build production-grade skills.
Rather than focusing mainly on theory or high-level strategy, this Learning Kit emphasizes the practical disciplines that determine whether a model succeeds in production. You will work with data preparation, feature engineering, anomaly detection, hyperparameter tuning, MLOps, deployment and reinforcement learning.
Across five practical sections, you will progress from raw data to clean, model-ready datasets, then move into advanced training, tuning, deployment, monitoring and emerging paradigms such as reinforcement learning.
This Learning Kit is suitable for:
This LearningKit with more than 21 hours of learning is divided into three tracks:
This section lays the foundation for high-performing machine learning models by focusing on data preparation and feature engineering. You will learn how to handle missing values and outliers, encode categorical variables and scale numeric features so that data is model-ready.
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This section focuses on hyperparameter tuning, one of the most important drivers of model performance. You will learn the difference between model parameters and hyperparameters and explore techniques such as grid search, random search and cross-validation.
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This section equips you with practical techniques to identify outliers, errors, fraud patterns and rare events that can affect data quality and model performance.
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This section bridges the gap between model development and production. You will learn how MLOps extends DevOps practices to address machine learning-specific challenges such as data drift, model retraining, reproducibility, lifecycle management, CI/CD, infrastructure as code, containerization and automated testing.
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This section introduces reinforcement learning, a machine learning paradigm in which agents learn optimal behavior through trial, feedback and reward instead of labeled data.
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