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https://github.com/fedml-ai/fedml-doc
https://github.com/fedml-ai/fedml-doc
Last synced: 4 days ago
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- Host: GitHub
- URL: https://github.com/fedml-ai/fedml-doc
- Owner: FedML-AI
- Created: 2023-06-19T10:49:30.000Z (over 1 year ago)
- Default Branch: main
- Last Pushed: 2023-06-21T06:22:04.000Z (over 1 year ago)
- Last Synced: 2024-05-23T08:23:38.205Z (6 months ago)
- Language: JavaScript
- Size: 25.4 MB
- Stars: 0
- Watchers: 4
- Forks: 0
- Open Issues: 0
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Metadata Files:
- Readme: README.md
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README
# Welcome to FedML
Thank you for visiting our site. This documentation provides you with everything you need to know about using the FedML platform.
![](docs/.vuepress/public/image/mission.png)
## Why FedML?
FedML, Inc. (https://fedml.ai) enables people and/or organizations to have AI capability from data anywhere at any scale. FedML stands for **“Fundamental Ecosystem Development/Design for Machine Learning”** in a broad scope, and “Federated Machine Learning” in a specific scope. At its current stage, FedML is developing and maintaining a machine learning platform that enables **zero-code, lightweight, cross-platform, and provably secure federated learning and analytics**. It enables machine learning from decentralized data at various **users/silos/edge** nodes without requiring data centralization to the cloud, thus providing maximum privacy and efficiency. It consists of a lightweight and cross-platform Edge AI SDK that is deployable over edge GPUs, smartphones, and IoT devices. Furthermore, it also provides a user-friendly MLOps platform to simplify decentralized machine learning and real-world deployment. FedML supports vertical solutions across a broad range of industries (healthcare, finance, insurance, smart cities, IoT, etc.) and applications (computer vision, natural language processing, data mining, and time-series forecasting). Its core technology is backed by over 3 years of cutting-edge research by its co-founders.
## Outline
This documentation is organized in the following sections:
- **Overview**
- [Getting Started](docs/starter/getting_started.md)
- [Installation](docs/starter/installation.md)
- [Mission](docs/starter/mission.md)
- [Overview](docs/starter/overview.md)
- [Ecosystem](docs/starter/ecosystem.md)
- [Oss Code Architecture](docs/starter/oss_code_architecture.md)
- [Mlops Video](docs/starter/mlops_video.md)
- [FAQ](docs/starter/faq.md)
- **FedML MLOps** - Landing FedML into Reality
- [Mlops Video](docs/starter/mlops_video.md)
- [User Guide](docs/mlops/user_guide.md)
- [Examples](docs/mlops/examples.md)
- [FAQ](docs/mlops/faq.md)
- [API](docs/mlops/api.md)
- **FedML Parrot** - Simulating the Real World
- [User Guide](docs/simulation/user_guide.md)
- [Examples](docs/simulation/examples.md)
- [FAQ](docs/simulation/faq.md)
- [API](docs/simulation/api.md)
- **FedML Octopus** - Simple Connector for Data Silos
- [User Guide](docs/cross-silo/user_guide.md)
- [Examples](docs/cross-silo/examples.md)
- [FAQ](docs/cross-silo/faq.md)
- [API](docs/cross-silo/api.md)
- **FedML BeeHive** - Collaborative Learning on Smartphones/IoTs
- [User Guide](docs/cross-device/user_guide.md)
- [Examples](docs/cross-device/examples.md)
- [FAQ](docs/cross-device/faq.md)
- [API](docs/cross-device/api.md)
- **FedML Cheetah** - Speedy Training of Large Models
- [User Guide](docs/distributed/user_guide.md)
- **FedML Benchmarks** Benchmarks for FedNLP, FedCV, FedGraphNN and FedIoT
- [Benchmark FedGrapHNN](docs/benchmark/fedgraphnn.md)
- **Resources**
- [Papers](docs/resources/papers.md)
- [Video](docs/resources/video.md)
- [Community](docs/resources/community.md)- - -
## Careers
FedML is hiring researchers, engineers, product managers, and related interns.
If you are interested, Please apply at [https://fedml.ai/careers](https://fedml.ai/careers)