Poor data preprocessing causes 80% of ML production failures, making data quality more critical than algorithm choice. This comprehensive course equips Java developers with essential skills to build enterprise-grade preprocessing pipelines that transform messy real-world data into ML-ready features. Through hands-on labs using OpenCSV and Apache Commons CSV, you'll master parsing techniques for large datasets while implementing normalization strategies including Min-Max scaling and Z-score standardization.

Parse & Normalize Data for ML Pipelines

Parse & Normalize Data for ML Pipelines
This course is part of Level Up: Java-Powered Machine Learning Specialization


Instructors: Aseem Singhal
Access provided by FGSES: Université Mohammed VI Polytechnique
Recommended experience
What you'll learn
Create efficient CSV parsers using Java libraries with object mapping, error handling, and streaming for 100K+ records.
Build data cleaning pipelines with multiple scaling algorithms, outlier handling, and serializable parameters for train-inference consistency.
Architect modular pipelines using builder patterns that chain operations with monitoring and ML framework integration for large-scale data.
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December 2025
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