This advanced course guides learners through testing and debugging Java-based ML pipelines using professional-grade tools and CI/CD workflows. You’ll write robust unit and integration tests for core ML components like EntropyCalculator and Normalizer, apply Mockito to mock file I/O, and increase test coverage from 62% to 85%. Learners will trace intermittent pipeline failures, diagnose random seed issues, and implement reproducibility (new Random(42)) to ensure stability across multiple runs. The course concludes with CI-based automation using JUnit, Tribuo, and GitHub Actions, preparing participants for real-world ML testing and DevOps environments.

您将学到什么
Apply JUnit and Mockito to create and run unit and integration tests that ensure reliability in Java ML components.
Analyze CI/CD logs to detect, interpret, and resolve flaky or inconsistent ML test behaviors in automated pipelines.
Debug intermittent ML pipeline issues by applying reproducibility controls, fixed random seeds, and stable test setups.
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要了解的详细信息

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1 项作业
December 2025
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该课程共有3个模块
Learn how to configure and apply a Java testing environment for machine learning pipelines using IntelliJ IDEA, JUnit 5, and Mockito. Set up project structures, dependencies, and reproducible configurations, and apply these tools to create and execute unit tests for ML components.
涵盖的内容
4个视频2篇阅读材料1次同伴评审
This module teaches learners how to identify and fix flaky or unstable machine-learning tests that behave unpredictably across runs. Learners will examine the root causes of nondeterministic behavior—such as random initialization, concurrency, and dependency issues—using CI logs and structured debugging techniques. Through interactive case discussions, practical videos, and a guided hands-on lab, learners apply reproducibility controls like fixed seeds and controlled data ordering to ensure stable, deterministic results across multiple test executions.
涵盖的内容
3个视频1篇阅读材料1次同伴评审
This module focuses on integrating automated testing into continuous-integration workflows for production-grade ML systems. Learners discover how to execute end-to-end pipeline tests, track coverage metrics, and configure CI/CD tools such as GitHub Actions and Jenkins. By the end, they’ll know how to build fully automated, reproducible, and continuously validated ML pipelines ready for enterprise deployment.
涵盖的内容
4个视频1篇阅读材料1个作业2次同伴评审
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