OpenFL: An open-source framework for Federated Learning
Federated learning (FL) is a computational paradigm that enables organizations to collaborate on machine learning (ML) projects without sharing sensitive data, such as, patient records, financial data, or classified secrets. Open Federated Learning (OpenFL https://github.com/intel/openfl) is an open...
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creator | Reina, G Anthony Gruzdev, Alexey Foley, Patrick Perepelkina, Olga Sharma, Mansi Davidyuk, Igor Trushkin, Ilya Radionov, Maksim Mokrov, Aleksandr Agapov, Dmitry Martin, Jason Edwards, Brandon Sheller, Micah J Pati, Sarthak Moorthy, Prakash Narayana Shih-han, Wang Shah, Prashant Bakas, Spyridon |
description | Federated learning (FL) is a computational paradigm that enables organizations to collaborate on machine learning (ML) projects without sharing sensitive data, such as, patient records, financial data, or classified secrets. Open Federated Learning (OpenFL https://github.com/intel/openfl) is an open-source framework for training ML algorithms using the data-private collaborative learning paradigm of FL. OpenFL works with training pipelines built with both TensorFlow and PyTorch, and can be easily extended to other ML and deep learning frameworks. Here, we summarize the motivation and development characteristics of OpenFL, with the intention of facilitating its application to existing ML model training in a production environment. Finally, we describe the first use of the OpenFL framework to train consensus ML models in a consortium of international healthcare organizations, as well as how it facilitates the first computational competition on FL. |
doi_str_mv | 10.48550/arxiv.2105.06413 |
format | Article |
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subjects | Algorithms Collaboration Computer Science - Distributed, Parallel, and Cluster Computing Computer Science - Learning Consortia Federated learning Machine learning Organizations |
title | OpenFL: An open-source framework for Federated Learning |
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