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  1. Cynthia Dwork (born June 27, 1958 [citation needed]) is an American computer scientist best known for her contributions to cryptography, distributed computing, and algorithmic fairness. She is one of the inventors of differential privacy and proof-of-work.

  2. dwork.seas.harvard.eduCynthia Dwork

    Cynthia Dwork is Gordon McKay Professor of Computer Science at the Harvard University John A. Paulson School of Engineering and Applied Sciences and Affiliated Faculty at Harvard Law School. She uses theoretical computer science to place societal problems on a firm mathematical foundation.

  3. Cynthia Dwork. Theory of Cryptography: Third Theory of Cryptography Conference, TCC 2006 …. International conference on theory and applications of models of computation …. Proceedings of the 3rd innovations in theoretical computer science …. Advances in Cryptology-EUROCRYPT 2006: 24th Annual International Conference ….

  4. Cynthia Dwork. Gordon McKay Professor of Computer Science. Affiliated Faculty, Harvard Law School. Distinguished Scientist, Microsoft. Primary Teaching Area. Computer ...

  5. 24 de mar. de 2020 · Cynthia Dwork, Gordon McKay Professor of Computer Science at the Harvard Paulson School of Engineering, Radcliffe Alumnae Professor at the Radcliffe Institute for Advanced Study, and Affiliated Faculty at Harvard Law School, uses theoretical computer science to place societal problems on a firm mathematical foundation.

  6. Cynthia Dwork. Gordon McKay Professor of Computer Science. Affiliated Faculty at Harvard Law School and Department of Statistics. Distinguished Scientist, Microsoft Research. Cynthia Dwork uses theoretical computer science to place societal problems on a firm mathematical foundation.

  7. Cynthia Dwork, Gordon McKay Professor of Computer Science at the John A. Paulson School of Engineering and Applied Sciences at Harvard, and Affiliated Faculty at the Harvard Law School and the Department of Statistics, is renowned for placing privacy-preserving data analysis on a mathematically rigorous foundation.