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Federated Learning on AWS with FedML: Health analytics without sharing sensitive data – Part 1

AWS Machine Learning Blog

Analyzing real-world healthcare and life sciences (HCLS) data poses several practical challenges, such as distributed data silos, lack of sufficient data at any single site for rare events, regulatory guidelines that prohibit data sharing, infrastructure requirement, and cost incurred in creating a centralized data repository.

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Federated Learning on AWS with FedML: Health analytics without sharing sensitive data – Part 2

AWS Machine Learning Blog

Analyzing real-world healthcare and life sciences (HCLS) data poses several practical challenges, such as distributed data silos, lack of sufficient data at a single site for rare events, regulatory guidelines that prohibit data sharing, infrastructure requirement, and cost incurred in creating a centralized data repository.

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What are Snowflake Hybrid Tables, and What Workloads Do They Support?

phData

However, it is now available in public preview in specific AWS regions, excluding trial accounts. The real benefit of utilizing Hybrid tables is that they bring transactional and analytical data together in a single platform. Hybrid tables can streamline data pipelines, reduce costs, and unlock deeper insights from data.