Mingshen Sun
TikTok's Privacy Innovation
#1about 2 minutes
Understanding the challenges of secure data collaboration
Data collaboration platforms must balance data provider control with consumer access while protecting the confidentiality and integrity of data.
#2about 1 minute
Establishing goals for a modern data collaboration framework
A successful framework must prioritize usability, security, privacy enforcement, data accuracy, and ease of cloud deployment.
#3about 3 minutes
Limitations of existing data privacy solutions
Existing solutions like SQL-based clean rooms, differential privacy, and TEEs each fail to meet all requirements for usability, accuracy, and privacy.
#4about 3 minutes
Introducing a two-stage data clean room solution
A novel two-stage approach separates interactive programming on privacy-enhanced data from execution on full data within a secure environment.
#5about 2 minutes
How trusted execution environments enable secure collaboration
TEEs provide hardware-based isolation and attestation reports, guaranteeing code and data integrity for all parties in a collaboration.
#6about 2 minutes
Applying the platform to research and machine learning
The platform serves as a trusted research environment (TRE) and supports use cases in advertising analytics and privacy-preserving machine learning.
#7about 4 minutes
Demonstrating the platform's workflow and attestation
A live demo shows how a researcher uses a Jupyter Notebook to train a model and verifies its execution in a TEE via a downloadable attestation report.
#8about 2 minutes
Learnings and future roadmap for the platform
Key takeaways include using TEEs for privacy, and the future roadmap involves multi-way collaboration, multi-cloud support, and GPU integration.
#9about 1 minute
Announcing the open source release on GitHub
The data collaboration platform is now open source, allowing developers to experiment with it and contribute to the project.
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