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There are 3 modules in this course
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.
You'll architect modular workflows using builder patterns that integrate with Java ML frameworks like Weka and DL4J. Interactive coach dialogs simulate real production scenarios including debugging pipeline failures and resolving model performance issues under enterprise constraints.
This course is ideal for aspiring data scientists, machine learning engineers, and data analysts who want to strengthen their understanding of data preprocessing. It’s also valuable for software developers working on ML projects or anyone seeking to improve data quality for analytics and modeling.
Learners should have intermediate Java programming skills with a solid grasp of object-oriented concepts, basic knowledge of data structures and file I/O, and a foundational understanding of machine learning principles such as features and training/testing datasets. Familiarity with build tools like Maven or Gradle will also be helpful for managing and running projects efficiently.
By course completion, you'll confidently build preprocessing pipelines that maintain data integrity from development through production, implement validation techniques that catch data drift, and create monitoring systems for consistent performance at scale. This course provides practical expertise to eliminate data quality issues that plague most ML projects.
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.
What's included
4 videos3 readings
Show info about module content
4 videos•Total 29 minutes
Welcome to Parsing and Normalization of Data for ML Pipelines•4 minutes
Introduction & Dataset Setup•8 minutes
Parsing Basics•8 minutes
Mapping Records to Java Objects•9 minutes
3 readings•Total 35 minutes
Welcome to the Course: Course Overview•5 minutes
Concurrent CSV Processing: Thread Safety Issues That Corrupt Shared Data Structures•5 minutes
Hands On Learning (HOL): Hospital Patient Data Parser•25 minutes
Data Normalization Techniques
Module 2•1 hour to complete
Module details
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.
What's included
3 videos2 readings
Show info about module content
3 videos•Total 24 minutes
Why Normalize Data•7 minutes
Implementing a Normalization Utility•8 minutes
Handling Real-World Data Issues•9 minutes
2 readings•Total 30 minutes
HOL: Housing Price Prediction Data Chaos •25 minutes
Statistical Scaling Gone Wrong: When Normalization Destroys Model Performance•5 minutes
Building a Preprocessing Pipeline
Module 3•2 hours to complete
Module details
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.
What's included
4 videos3 readings1 assignment
Show info about module content
4 videos•Total 31 minutes
Designing a Data Pipeline in Java•8 minutes
Pipeline Implementation & Integration•9 minutes
Performance Optimization & ML Integration•11 minutes
Course Wrap-Up•2 minutes
3 readings•Total 90 minutes
HOL: Design a Secure AI Development Framework for TechNova Inc •25 minutes
Enterprise Data Pipeline Architecture: Lessons from Netflix and Uber•5 minutes
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What will I get if I subscribe to this Specialization?
When you enroll in the course, you get access to all of the courses in the Specialization, and you earn a certificate when you complete the work. Your electronic Certificate will be added to your Accomplishments page - from there, you can print your Certificate or add it to your LinkedIn profile.
Is financial aid available?
Yes. In select learning programs, you can apply for financial aid or a scholarship if you can’t afford the enrollment fee. If fin aid or scholarship is available for your learning program selection, you’ll find a link to apply on the description page.