lab-secureai/Privacy-Preserving-Deep-Learning-Research-List
This list provides up-to-date resources pertaining to the research and development of privacy-preserving deep learning, with many of them cited in the paper titled "A Comprehensive Survey and Taxonomy on Privacy-Preserving Deep Learning".
Staying current with the latest advancements in privacy-preserving deep learning (PPDL) is crucial for machine learning researchers and practitioners. This resource provides a curated, up-to-date collection of academic papers, surveys, and code related to PPDL techniques and privacy leakage attacks. It helps researchers quickly find relevant information, understand privacy vulnerabilities, and explore defensive strategies in deep learning.
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Use this if you are a researcher or practitioner in machine learning or AI security who needs to stay informed on the cutting edge of privacy-preserving deep learning.
Not ideal if you are looking for an introduction to deep learning or general machine learning resources.
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Feb 20, 2024
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