Topic Compass: A Google TechTalk, 2025-07-09, presented by Zinan Lin Privacy in ML Seminar. Speaker: Shubhankar Mohapatra, University of Waterloo Date: July 26th, 2022 Part of the "Workshop on

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A Google TechTalk, 2025-07-09, presented by Zinan Lin Privacy in ML Seminar. Speaker: Shubhankar Mohapatra, University of Waterloo Date: July 26th, 2022 Part of the "Workshop on A Google TechTalk, presented by Sivakanth Gopi, 2023/06/01 A Google Algorithms Seminar.

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A Google TechTalk, presented by Sivakanth Gopi, 2023/06/01 A Google Algorithms Seminar. Date Presented: 10/23/2025 Speaker: Yizhe Zhu, USC Visit links below to subscribe and for details on upcoming seminars: ...

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  • A Google TechTalk, presented by Sivakanth Gopi, 2023/06/01 A Google Algorithms Seminar.
  • Date Presented: 10/23/2025 Speaker: Yizhe Zhu, USC Visit links below to subscribe and for details on upcoming seminars: ...
  • A Google TechTalk, 2025-07-09, presented by Zinan Lin Privacy in ML Seminar.
  • Speaker: Shubhankar Mohapatra, University of Waterloo Date: July 26th, 2022 Part of the "Workshop on

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Media Gallery

Differentially Private Synthetic Data Generation
10. Differentially Private Synthetic Data Generation
Joshua Falk: Generating realistic, differentially private data sets using GANs | PyData NYC 2019
Differentially Private Synthetic Data via Foundation Model APIs
[Differentially private synthetic microdata]. Introduction
What is Synthetic Data? No, It's Not "Fake" Data
[Differentially private synthetic tabular data] Introduction
Differentially Private Synthetic Data without Training
Differentially Private Data Generation with Missing Data
USENIX Security '21 - PrivSyn: Differentially Private Data Synthesis
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Differentially Private Synthetic Data Generation

Differentially Private Synthetic Data Generation

Date Presented: 10/23/2025 Speaker: Yizhe Zhu, USC Visit links below to subscribe and for details on upcoming seminars: ...

10. Differentially Private Synthetic Data Generation

10. Differentially Private Synthetic Data Generation

Read more details and related context about 10. Differentially Private Synthetic Data Generation.

Joshua Falk: Generating realistic, differentially private data sets using GANs | PyData NYC 2019

Joshua Falk: Generating realistic, differentially private data sets using GANs | PyData NYC 2019

Read more details and related context about Joshua Falk: Generating realistic, differentially private data sets using GANs | PyData NYC 2019.

Differentially Private Synthetic Data via Foundation Model APIs

Differentially Private Synthetic Data via Foundation Model APIs

A Google TechTalk, presented by Sivakanth Gopi, 2023/06/01 A Google Algorithms Seminar. ABSTRACT:

[Differentially private synthetic microdata]. Introduction

[Differentially private synthetic microdata]. Introduction

Read more details and related context about [Differentially private synthetic microdata]. Introduction.

What is Synthetic Data? No, It's Not "Fake" Data

What is Synthetic Data? No, It's Not "Fake" Data

Read more details and related context about What is Synthetic Data? No, It's Not "Fake" Data.

[Differentially private synthetic tabular data] Introduction

[Differentially private synthetic tabular data] Introduction

Read more details and related context about [Differentially private synthetic tabular data] Introduction.

Differentially Private Synthetic Data without Training

Differentially Private Synthetic Data without Training

A Google TechTalk, 2025-07-09, presented by Zinan Lin Privacy in ML Seminar. ABSTRACT:

Differentially Private Data Generation with Missing Data

Differentially Private Data Generation with Missing Data

Speaker: Shubhankar Mohapatra, University of Waterloo Date: July 26th, 2022 Part of the "Workshop on

USENIX Security '21 - PrivSyn: Differentially Private Data Synthesis

USENIX Security '21 - PrivSyn: Differentially Private Data Synthesis

Read more details and related context about USENIX Security '21 - PrivSyn: Differentially Private Data Synthesis.