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MLOps and AI Deployment in Enterprise Systems

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About Course

This technical course focuses on operationalizing machine learning models and managing AI systems in production environments. Students learn CI/CD for ML, model versioning, automated testing, monitoring and observability, and scalable deployment architectures. The curriculum covers containerization, orchestration, model serving, performance optimization, and incident response. Participants gain hands-on experience implementing MLOps practices that ensure reliable model performance, enable rapid iteration, maintain model quality over time, and bridge the gap between data science experimentation and production-grade AI systems.

What Will You Learn?

  • Build CI/CD pipelines for machine learning models
  • Implement model versioning and experiment tracking
  • Deploy models using containers and orchestration
  • Create model serving infrastructure at scale
  • Monitor model performance and detect drift
  • Automate model testing and validation
  • Optimize inference performance and costs
  • Respond to production incidents effectively

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