Session

From DevOps to MLOps: Bridging the Gap Between Software Engineering and Machine Learning

Both DevOps and MLOps aim to streamline the development and deployment lifecycle through automation, CI/CD, and close collaboration between teams. But there are key differences in the purposes and applications of DevOps and MLOps. This talk demonstrates how your existing DevOps expertise creates a strong foundation for understanding and implementing MLOps practices. We'll explore how familiar concepts like CI/CD, monitoring, and automated testing map to ML workflows, while highlighting the key differences that make MLOps unique.
Through practical examples, we'll show how software engineers can apply their current skills to ML systems by extending DevOps practices to handle model artifacts, training pipelines, and feature engineering. You'll learn where your existing tools and practices fit in, what new tools you'll need, and how to identify when MLOps practices are necessary for your projects.

Attendees should have experience with DevOps practices and general software engineering principles. No ML or data science experience is required - we'll focus on how your existing knowledge applies to ML systems.

Prerequisites: Familiarity with CI/CD, infrastructure as code, monitoring, and automated testing. Experience with containerization (e.g., Docker) and cloud platforms is helpful but not required.

Nnenna Ndukwe

Developer Relations at Unleash

Boston, Massachusetts, United States

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