Tutorials and paper lists for federated learning.
Wish this can help you dive into FL more easily.
关于联邦学习的教程和论文列表。希望能方便大家入门联邦学习。
[toc]
- [NeurIPS 2020] Federated Learning Tutorial [Web] [Slides] [Video]
- 联邦学习入门教程参考
- [ICLR-DPML 2021] FedGraphNN: A Federated Learning System and Benchmark for Graph Neural Networks [Paper] [Code]
- [arXiv 2021] Federated Graph Learning -- A Position Paper [Paper]
- [IEEE TKDE 2021] A Survey on Federated Learning Systems: Vision, Hype and Reality for Data Privacy and Protection [Paper]
- [arXiv 2021] A Survey of Fairness-Aware Federated Learning [Paper]
- [Foundations and Trends in Machine Learning 2021] Advances and Open Problems in Federated Learning [Paper] [Chinese Version] [FL FAQ]
- [arXiv 2020] Towards Utilizing Unlabeled Data in Federated Learning: A Survey and Prospective [Paper]
- [IEEE Signal Processing Magazine 2020] Federated Learning: Challenges, Methods, and Future Directions [Paper]
- [IEEE Communications Surveys & Tutorials 2020] Federated Learning in Mobile Edge Networks A Comprehensive Survey [Paper]
- [IEEE TIST 2019] Federated Machine Learning: Concept and Applications [Paper]
- FedLab: Code, FedLab-benchmarks, Doc (zh-CN-Doc), Paper
- Flower: Code, Homepage, Doc, Paper
- FedML: Code, Doc, Paper
- FedLearn: Code, Paper
- PySyft: Code, Doc, Paper
- TensorFlow Federated (TFF): Code, Doc
- FEDn: Code, Paper
- FATE: Code, Homepage, Doc, Paper
- PaddleFL: Code, Doc
- Fedlearner: Code
- OpenFL: Code, Doc, Paper
- FedScale: Code, Paper
- FLSim: Code
- EasyFL: Code, Doc, Paper
- FederatedScope: Code, Homepage
- FedLab-benchmarks: Code
- [ACM TIST 2022] The OARF Benchmark Suite: Characterization and Implications for Federated Learning Systems [Code] [Paper]
- [IEEE ICDE 2022] Federated Learning on Non-IID Data Silos: An Experimental Study [Paper] [Official Code] [FedLab Tutorial]
- [ICLR-DPML 2021] FedGraphNN: A Federated Learning System and Benchmark for Graph Neural Networks [Paper] [Code]
- [arXiv 2018] LEAF: A Benchmark for Federated Settings [Homepage] [Official tensorflow] [Unofficial PyTorch] [Paper]
- [ICLR 2021] Federated Semi-supervised Learning with Inter-Client Consistency & Disjoint Learning [Paper] [Code]
- [arXiv 2021] SemiFL: Communication Efficient Semi-Supervised Federated Learning with Unlabeled Clients [Paper]
- [IEEE BigData 2021] Improving Semi-supervised Federated Learning by Reducing the Gradient Diversity of Models [Paper]
- [arXiv 2020] Benchmarking Semi-supervised Federated Learning [Paper]] [Code]