ML Concepts, Models & Workflow Essentials
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ML Concepts, Models & Workflow Essentials
This course is part of Level Up: Java-Powered Machine Learning Specialization
Instructors: Starweaver
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What you'll learn
Describe machine learning concepts, supervised and unsupervised learning types, and how Java's architecture supports scalable ML implementations.
Explore Java ML libraries, including Weka, Deeplearning4j, & smile, implementing classification, regression, and clustering models programmatically.
Master ML workflows including data preprocessing, model training, evaluation, deployment, and best practices for production systems.
Skills you'll gain
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Details to know
January 2026
1 assignment
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There are 3 modules in this course
Advance your Java expertise to build intelligent, production-grade systems for enterprise decision-making. This course deepens your machine learning skills within the Java ecosystem, covering supervised and unsupervised learning, classification, regression, clustering, and neural networks. Youβll use top Java ML libraries including Weka, Deeplearning4j, Apache Mahout, and Smile to implement robust algorithms at scale. Master advanced workflows such as data preprocessing, feature engineering, model training, evaluation, and production deployment with MLOps practices. Through hands-on labs and a capstone project, youβll develop production-ready ML solutions like customer segmentation and predictive churn models for enterprise applications. Become an advanced ML practitioner capable of architecting, implementing, and deploying scalable Java-based machine learning systems for complex business needs.
Experienced Java developers and software engineers looking to apply machine learning concepts in real-world enterprise systems. Proficiency in Java programming, object-oriented design, and foundational machine learning theory required. Prior ML project experience recommended. By the end of this course, you'll be able to build scalable machine learning solutions in Java for enterprise applications, using libraries like Weka, Deeplearning4j, and Smile. You'll gain hands-on experience with advanced techniques such as predictive modeling, customer segmentation, and MLOps practices to deploy production-ready models.
Explore fundamental machine learning concepts including supervised and unsupervised learning, classification versus regression, and understand how Java's robust architecture, platform independence, and performance make it ideal for ML applications.
What's included
4 videos2 readings1 peer review
4 videosβ’Total 24 minutes
- Welcome to ML with Javaβ’4 minutes
- Introduction to Machine Learning with Javaβ’6 minutes
- Supervised vs. Unsupervised Learningβ’6 minutes
- Deep Learning and Neural Networks Fundamentalsβ’8 minutes
2 readingsβ’Total 15 minutes
- Welcome to the Course: Course Overviewβ’5 minutes
- Foundational Machine Learning Concepts and Java's Roleβ’10 minutes
1 peer reviewβ’Total 20 minutes
- Hands-On-Learning: Exploring ML Concepts with Weka GUI β’20 minutes
Dive into Java's machine learning ecosystem by exploring powerful libraries including Weka, Deeplearning4j, and Smile. Learn to implement classification, regression, clustering, and neural networks programmatically using IntelliJ IDEA.
What's included
3 videos2 readings1 peer review
3 videosβ’Total 29 minutes
- Working with the Weka Libraryβ’7 minutes
- Deep Learning with Deeplearning4jβ’10 minutes
- Exploring Smileβ’12 minutes
2 readingsβ’Total 15 minutes
- Top 7 Java Machine Learning Libraries for Modelsβ’10 minutes
- Top 10 Java Machine Learning Librariesβ’5 minutes
1 peer reviewβ’Total 20 minutes
- Hands-On-Learning: Building Classification Models with Java Libraries β’20 minutes
Master complete machine learning workflows from data collection through deployment. Learn data preprocessing techniques, model training pipelines, evaluation strategies, cross-validation, and production deployment best practices for enterprise Java ML systems.
What's included
4 videos2 readings1 assignment2 peer reviews
4 videosβ’Total 33 minutes
- Data Preprocessing and Feature Engineeringβ’13 minutes
- Model Training, Evaluation, and Validationβ’9 minutes
- Deploying ML Models in Productionβ’8 minutes
- Course Wrap-Upβ’4 minutes
2 readingsβ’Total 20 minutes
- MLOps Pipelinesβ’10 minutes
- ML Workflow Managementβ’10 minutes
1 assignmentβ’Total 20 minutes
- ML Concepts, Models & Workflow Essentialsβ’20 minutes
2 peer reviewsβ’Total 80 minutes
- Hands-On-Learning: Building an End-to-End ML Pipelineβ’20 minutes
- Project: Enterprise Customer Segmentation System β’60 minutes
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