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Machine Learning Ops

插件 已验证 活跃

ML model training pipelines, hyperparameter tuning, model deployment automation, experiment tracking, and MLOps workflows

1 个 Skill 0 个 MCP
目的

To provide a production-ready framework for building, deploying, and managing machine learning models and pipelines, enabling teams to automate complex MLOps workflows.

功能

  • End-to-end MLOps pipeline orchestration
  • Multi-agent coordination for specialized tasks
  • Support for modern ML frameworks and tools
  • Automated model deployment and monitoring
  • Scalable and production-ready infrastructure design

使用场景

  • Building and automating complex ML training pipelines
  • Implementing continuous integration and deployment for ML models
  • Designing and deploying scalable ML inference services
  • Establishing comprehensive monitoring and experiment tracking for ML projects

非目标

  • Acting as a direct model training or deployment environment
  • Replacing individual ML framework libraries or cloud services
  • Providing a user interface for model experimentation

工作流

  1. Analyze data and requirements
  2. Design feature engineering and model requirements
  3. Implement training pipeline and experiment tracking
  4. Optimize and productionize ML code
  5. Design production deployment infrastructure
  6. Implement monitoring and continuous improvement

实践

  • MLOps best practices
  • Production ML system design
  • Automated workflows
  • Infrastructure as code

安装

请先添加 Marketplace

/plugin marketplace add wshobson/agents
/plugin install machine-learning-ops@claude-code-workflows

质量评分

已验证
98 /100
about 13 hours ago 分析

信任信号

最近提交2 days ago
星标35.3k
许可证MIT
状态
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