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Description

The deployment of machine learning models for real-world use involves a sequence of cloud services and architectural choices, where machine learning expertise must be complemented by DevOps and architecture skills, often requiring collaboration with professionals. Key concepts discussed include infrastructure as code, cloud container orchestration, and the distinction between DevOps and architecture, as well as practical advice for machine learning engineers wanting to deploy products securely and efficiently.

Links

;## Translating Machine Learning Models to Production

Infrastructure as Code and Automation Tools

Containers, Orchestration, and Cloud Choices

DevOps and Architecture: Roles and Collaboration

Security, Scale, and When to Seek Help

Cloud Providers and Service Considerations

Recommended Learning Paths and Community Resources

Reference Links

Expert coworkers at Dept

DevOps Tools

Visual Guides and Comparisons

Learning Resources