MLOps on Highly Sensitive Data - Enhancing Security and Compliance
Offered By: MLOps World: Machine Learning in Production via YouTube
Course Description
Overview
Explore how MLOps can be effectively implemented in organizations dealing with highly sensitive datasets through this 18-minute conference talk. Discover how pharmaceutical companies, healthcare institutions, and regulated industries like telecom and finance can leverage cloud-native workloads to enhance data protection and security. Learn about advanced features such as Kubernetes strict confinement, blockchain-based tokenization, and privacy-enhancing technologies like confidential computing. Gain insights from a real-world case study of a life sciences company that developed customized treatments using these technological building blocks. By the end of the talk, acquire the knowledge to apply these techniques in cloud environments using Kubeflow for MLOps, addressing concerns about software vulnerabilities and data leaks while improving compliance and security measures.
Syllabus
MLOPs On Highly Sensitive Data
Taught by
MLOps World: Machine Learning in Production
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