Did you know that over 50% of machine learning failures in production come from unmanaged data drift, unsafe rollouts, or unmonitored retraining pipelines? Automating your ML lifecycle is the key to keeping models both powerful and trustworthy.

Automate, Validate, and Promote ML Models Safely
本课程是多个项目的一部分。

位教师:Hurix Digital
访问权限由 New York State Department of Labor 提供
您将学到什么
Reliable MLOps depends on systematic diagnosis: performance issues are solved by log analysis and pipeline investigation, not guesswork.
Governance must be automated into deployment—responsible AI needs CI/CD checks for fairness, explainability, and safe rollbacks, not manual reviews.
Adaptive systems need intelligent automation—production models should monitor drift and trigger retraining automatically to stay accurate.
Operational excellence requires end-to-end visibility, strong monitoring, versioning and audit trails enable fast debugging and long-term reliability
您将获得的技能
要了解的详细信息
了解顶级公司的员工如何掌握热门技能

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该课程共有3个模块
Learners will master systematic diagnosis of ML pipeline performance issues through methodical log analysis and targeted investigation of pipeline stages.
涵盖的内容
3个视频1篇阅读材料2个作业
Learners will develop critical evaluation skills to audit CI/CD workflows against AI governance standards and ensure safe rollback mechanisms for production ML systems
涵盖的内容
3个视频2个作业
Learners will architect comprehensive automated systems that detect data drift, trigger intelligent retraining workflows, and safely promote validated models to production
涵盖的内容
3个视频1篇阅读材料3个作业
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