Main

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review version

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html import

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Events

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2024-11-21 08:58:24

expired found date

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created at

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updated at

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87719371 (github.io)

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Server

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Open Graph

title

description

image

site name

author

Christopher A. Choquette-Choo

updated

2026-02-21 00:12:33

raw text

Christopher A. Choquette-Choo Christopher A. Choquette-Choo I am a Research Scientist in Google Deepmind, on the DeepMind Privacy and Security team working on fundamental and applied research. I lead privacy evals, among other contributions, for our frontier model efforts, including Gemini (+1.5 Pro/Flash), Gemma (+CodeGemma), PaLM 2, and GBoard. My work has ensured we meet compliance, enabling model releases. Previously, I was an AI Resident at Google and a researcher in the CleverHans Lab at the Vector Institute. I graduated from the University of Toronto, where I had a full scholarship . Email: choquette[dot]christopher[at]gmail[dot]com Research My focuses are privacy-preserving and adversarial machine learning. I mainly work on studying memorization and harms in language modelling as well as improving DP algorithms for machine learning; but, I've also worked on privacy auditing techniques, collaborative learning approaches, and methods for ownership-v...

Text analysis

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Sitemap

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