FATE (Federated AI Technology Enabler) is the world's first industrial grade federated learning open source framework to enable enterprises and institutions to collaborate on data while protecting data security and privacy. It implements secure computation protocols based on homomorphic encryption and multi-party computation (MPC). Supporting various federated learning scenarios, FATE now provides a host of federated learning algorithms, including logistic regression, tree-based algorithms, deep learning and transfer learning.
FATE is an open source project hosted by Linux Foundation. The Technical Charter sets forth the responsibilities and procedures for technical contribution to, and oversight of, the FATE (“Federated AI Technology Enabler”) Project.
https://fate.readthedocs.io/en/latest
Getting Started
FATE can be deployed on a single host or on multiple nodes. Choose the deployment approach which matches your environment. Release version can be downloaded here.
Standalone deployment
- Deploying FATE on a single node via pre-built docker images, installers or source code. It is for simple testing purposes. Refer to this guide.
Cluster deployment
Deploying FATE to multiple nodes to achieve scalability, reliability and manageability.
- Cloud native deployment by KubeFATE: Deploying and managing a FATE cluster by either Docker Compose or Kubernetes.
- Cluster deployment by CLI: Using CLI to deploy a FATE cluster.
- Deployment by Ansible: Automating the deployment of a FATE cluster by Ansible.
Quick Start
- Train & Predict Hetero SecureBoost with FATE-Pipeline
- Build & Customize NN models with FATE-Pipeline
- Run Job with DSL json conf
- More Tutorials...
Related Repositories (Projects)
- KubeFATE: An operational tool for the FATE platform using cloud native technologies such as containers and Kubernetes.
- FATE-Flow: A multi-party secure task scheduling platform for federated learning pipeline.
- FATE-Board: A suite of visualization tools to explore and understand federated models easily and effectively.
- FATE-Serving: A high-performance and production-ready serving system for federated learning models.
- FATE-Cloud: An infrastructure for building and managing industrial-grade federated learning cloud services.
- EggRoll: A simple high-performance computing framework for (federated) machine learning.
- AnsibleFATE: A tool to optimize and automate the configuration and deployment operations via Ansible.
- FATE-Builder: A tool to build package and docker image for FATE and KubeFATE.
- FATE-LLM : A framework to support federated learning for large language models(LLMs).
Documentation
FATE Design
Developer Resources
- Developer Guide for FATE
- FATE API references
- Flow SDK
- Flow Client
- FATE Pipeline
- FATE Test
- DSL Conf Setting Guide
- Online courses on Bilibili @FATEFedAI
Governance
FATE-Community contains all the documents about how the community members coopearte with each other.
- GOVERNANCE.md documents the governance model of the project.
- Minutes of working meetings
- Development Process Guidelines
- Security Release Process
Getting Involved
Contributing
FATE is an inclusive and open community. We welcome developers who are interested in making FATE better! Contributions of all kinds are welcome. Please refer to the general contributing guideline of all FATE projects and the contributing guideline of each repository.
Mailing list
Join the FATE user mailing list, and stay connected with the community and learn about the latest news and information of the FATE project. Discussion and feedback of FATE project are welcome.
Bugs or feature requests
File bugs and features requests via the GitHub issues. If you need help, ask your questions via the mailing list.
Contact emails
Maintainers: FedAI-maintainers @ groups.io
Security Response Committee: FATE-security @ groups.io
Follow us on twitter @FATEFedAI
FAQ
https://github.com/FederatedAI/FATE/wiki