MLOps: Why DevOps Solutions Fall Short in the Machine Learning World
Offered By: Linux Foundation via YouTube
Course Description
Overview
Explore the evolving field of MLOps in this 41-minute conference talk by Eduardo Bonet from GitLab. Delve into the reasons why traditional DevOps solutions are insufficient for machine learning projects and understand the unique challenges of developing software with ML components. Learn about the key differences between classic software development and ML-driven projects, and discover strategies to improve iteration time in MLOps. Gain insights into GitLab's innovative approach to bridging the gap between DevOps and MLOps. Additionally, examine the emerging concept of LLMOps and understand why current MLOps solutions may not adequately address the needs of large language models.
Syllabus
Sponsored Session: MLOps: Why DevOps Solutions Fall Short in the Machine Learning... - Eduardo Bonet
Taught by
Linux Foundation
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