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Search results for privacy federated learning
federated-learning
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privacy
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49 search results found
Pysyft
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8,812
data science on data without acquiring a copy
Fedml
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2,917
FedML - The federated learning and analytics library enabling secure and collaborative machine learning on decentralized data anywhere at any scale. Supporting large-scale cross-silo federated learning, cross-device federated learning on smartphones/IoTs, and research simulation. MLOps and App Marketplace are also enabled (https://open.fedml.ai).
Awesome Federated Learning
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1,481
FedML - The Research and Production Integrated Federated Learning Library: https://fedml.ai
Awesome Fl
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675
Comprehensive and timely academic information on federated learning (papers, frameworks, datasets, tutorials, workshops)
Pfl Non Iid
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555
Personalized federated learning simulation platform with non-IID and unbalanced dataset
Awesome Federated Learning
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492
resources about federated learning and privacy in machine learning
Awesome Federated Learning
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482
All materials you need for Federated Learning: blogs, videos, papers, and softwares, etc.
Rosetta
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451
A Privacy-Preserving Framework Based on TensorFlow
Aijack
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212
Security and Privacy Risk Simulator for Machine Learning
Syfertext
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176
A privacy preserving NLP framework
Differential Privacy Based Federated Learning
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145
Everything you want about DP-Based Federated Learning, including Papers and Code. (Mechanism: Laplace or Gaussian, Dataset: femnist, shakespeare, mnist, cifar-10 and fashion-mnist. )
Awesome Trustworthy Deep Learning
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144
A curated list of trustworthy deep learning papers. Daily updating...
Photolabeller
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101
Federated Learning: Client application doing classification of images and local training. Works better with the Parameter Server at https://github.com/mccorby/PhotoLabellerServer
Ambianic Edge
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98
The core runtime engine for Ambianic Edge devices.
Privpkt
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81
Privacy Preserving Collaborative Encrypted Network Traffic Classification (Differential Privacy, Federated Learning, Membership Inference Attack, Encrypted Traffic Classification)
Awesome Differential Privacy And Meachine Learning
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77
机器学习和差分隐私的论文笔记和代码仓
Pyvertical
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52
Privacy Preserving Vertical Federated Learning
Decentralized Ml
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42
Full stack service enabling decentralized machine learning on private data
Privacyfl
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39
A Simulator for Privacy Preserving Federated Learning
Soteria
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38
Official implementation of "Provable Defense against Privacy Leakage in Federated Learning from Representation Perspective"
Vantage6
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26
Docker CLI package for the vantage6 infrastructure
Federated Ml
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26
Detect anomalies in network traffic data using Federated Machine Learning technique.
Collaborativefairfederatedlearning
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25
Official implementation of our work "Collaborative Fairness in Federated Learning."
Asynchronous Federated Learning
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19
Study of data imbalance and asynchronous aggregation algorithm on Federated Learning system (using PySyft)
Private Ml For Health
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18
Dopamine: Differentially Private Federated Learning on Medical Data (AAAI - PPAI)
Openprivacytech.org
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14
Welcome to our official website
Privacy Preserving Bandits
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14
Privacy-Preserving Bandits (MLSys'20)
Apprenticeship
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13
A notebook of awesome privacy protection,federated learning, fairness and blockchain research materials.
Federated Learning Poc
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13
Proof of Concept of a Federated Learning framework that maintains the privacy of the participants involved.
Pets Bootcamp
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11
A collection of demos and utilities prepared ahead of the Vector Institute Privacy Enhancing Techniques (PETs) Bootcamp.
Recsys2021 Pursuing Privacy
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8
Material supporting the tutorial "Pursuing Privacy in Recommender Systems: The View of Users and Researchers from Regulations to Applications" held at the 15th ACM Conference on Recommender Systems in Amsterdam, Netherlands
Encrypted_ai_finance
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8
Credit Approval Classification Deep Learning Model using Differential Drivacy, Secure Multi-Party Computation, and Federated Learning
Privacyattack_at_fl
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7
A privacy attack that exploits Adversarial Training models to compromise the privacy of Federated Learning systems.
Federated_kmeans
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7
Federated k-means clustering algorithm implementation and proof of concept.
Secureaggregation
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6
An implementation of Secure Aggregation algorithm based on "Practical Secure Aggregation for Privacy-Preserving Machine Learning (Bonawitz et. al)" in Python.
Fedsim
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5
A generic Federated Learning simulator!
Federated Learning
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5
An implementation of Federated Learning using Pytorch and PySyft
Jopeq
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5
PyTorch implementation of Joint Privacy Enhancement and Quantization in Federated Learning (IEEE ISIT 2022)
Secure Federated Learning
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5
Secure Federated Learning Framework with Encryption Aggregation and Integer Encoding Method.
60days Of Udacity
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3
Repo including all the daily updates of #60daysofudacity Udacity Challenge
Trainer
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3
Openmined-based realistic FL framework for wearables
Fl Iot
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3
This is a platform containing the datasets and federated learning algorithms in IoT environments.
60daysofudacity
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2
The premise of this challenge is to build a habit of practicing new skills by making a public commitment of practicing the topics of Secure and Private AI program every day for 60 days.
Awesome S P In Machine Learning
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2
The awesome worldview of Privacy and Security issues in machine learning.
Privacygans
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2
Can we Generalize and Distribute Private Representation Learning?
Leap
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2
LEAP project
Documentation
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1
Documentation for FELT Labs
Secured And Private Ai
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1
Implementations notebooks and scripts of secured and private ai scholarship challenge from facebook.
Ppml Tsa
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1
Evaluating Privacy-Preserving Machine Learning in Critical Infrastructures: A Case Study on Time-Series Classification
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