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Syft: Sensitive Data Collaboration Made Secure

Table of Contents

Syft: Sensitive Data Collaboration Made Secure

Data owners often hesitate to share sensitive data due to risks like privacy breaches, IP theft, and blackmail, hindering important work that could benefit society.

Syft enables Data Scientists to ask questions and receive answers without accessing the actual dataset. Data Owners can establish robust privacy controls, enabling collaboration while protecting sensitive information.

Link to Syft.

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    Work with Khuyen Tran

    Work with Khuyen Tran