Detect anomalies in network traffic data using Federated Machine Learning technique.
-
Updated
Jul 25, 2024 - Jupyter Notebook
Detect anomalies in network traffic data using Federated Machine Learning technique.
SOON TO BE DEPRECATED - The TensorFlow bindings for PySyft
Federated learning with homomorphic encryption enables multiple parties to securely co-train artificial intelligence models in pathology and radiology, reaching state-of-the-art performance with privacy guarantees.
Credit Approval Classification Deep Learning Model using Differential Drivacy, Secure Multi-Party Computation, and Federated Learning
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
Healthcare-Researcher-Connector Package: Federated Learning tool for bridging the gap between Healthcare providers and researchers
An implementation of Federated Learning using Pytorch and PySyft
A simple federated learning implementation on MNIST dataset using PySyft. Main goal of the project was to get used to the PySyft federated learning functionality instead of using traditional PyTorch features.
Demonstration of application of Distributed Computing in Federated Learning for our Semester-8 Course on Distributed and Cloud Computing
Project entry for the Secure and Private AI Challenge, hosted by Udacity and sponsored by Facebook (May - August, 2019)
The project showcasing federated learning of model and testing on encrypted data and model
Securing Collaborative Medical AI by Using Differential Privacy
Repo for project : smog detection project at Udacity Project Showcase
The implementation of the "Robust Federated Learning by Mixture of Experts" study.
Implementations notebooks and scripts of secured and private ai scholarship challenge from facebook.
Repo including all the daily updates of #60daysofudacity Udacity Challenge
All Things Deep Learning Projects
Add a description, image, and links to the pysyft topic page so that developers can more easily learn about it.
To associate your repository with the pysyft topic, visit your repo's landing page and select "manage topics."