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.

您将学到什么
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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1 项作业
December 2025
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该课程共有3个模块
This module establishes the foundation for robust data ingestion by teaching learners to efficiently parse large-scale delimited files using industry-standard Java libraries. Students will master the critical skills of transforming raw CSV/TSV data into strongly-typed Java objects while handling real-world challenges like character encoding issues, missing values, and memory optimization for datasets exceeding 100K records.
涵盖的内容
4个视频3篇阅读材料
This module focuses on implementing comprehensive data cleaning and transformation pipelines that prepare raw features for optimal ML model performance. Learners will build statistical normalization utilities using multiple scaling algorithms, develop robust strategies for handling outliers and missing values, and create serializable transformation parameters that ensure consistent data preprocessing between training and production environments.
涵盖的内容
3个视频2篇阅读材料
This module integrates parsing and normalization capabilities into enterprise-grade, modular preprocessing workflows using advanced Java design patterns. Students will architect production-ready pipelines with functional programming principles, implement comprehensive monitoring and error handling systems, and seamlessly integrate their data processing solutions with popular Java ML frameworks while maintaining performance efficiency for large-scale deployments.
涵盖的内容
4个视频3篇阅读材料1个作业
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