Are you deploying ML models that need to respond in milliseconds, not seconds? In production environments, even the most accurate model becomes worthless if it can't meet real-time performance demands.

Optimize and Manage Your ML Codebase
本课程是 ML Production Systems 专项课程 的一部分

位教师:Hurix Digital
访问权限由 Coursera Learning Team 提供
您将学到什么
Performance optimization needs systematic profiling and targeted fixes across pipeline stages, from data prep to model execution.
Effective ML workflows depend on branching strategies and CI/CD practices aligned with team size, release pace, and deployment needs.
Production ML systems balance model accuracy with inference speed through techniques like quantization and pruning.
Sustainable ML codebases integrate version control with automated testing and deployment pipelines for quality and velocity.
您将获得的技能
- Release Management
- Performance Improvement
- Continuous Deployment
- Continuous Integration
- PyTorch (Machine Learning Library)
- Software Testing
- Version Control
- Software Development Methodologies
- CI/CD
- Software Versioning
- Model Deployment
- MLOps (Machine Learning Operations)
- Performance Tuning
- Continuous Delivery
- Git (Version Control System)
- 技能部分已折叠。显示 7 项技能,共 15 项。
要了解的详细信息

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3 项作业
February 2026
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该课程共有2个模块
Learners will systematically profile ML inference pipelines, identify performance bottlenecks, and apply optimization techniques like quantization and pruning to achieve real-time performance requirements.
涵盖的内容
2个视频2篇阅读材料1个作业
Learners will compare Git branching strategies (GitFlow vs Trunk-Based Development), design CI/CD pipelines with automated testing and deployment, and implement version control workflows optimized for ML development teams.
涵盖的内容
1个视频3篇阅读材料2个作业
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