FATE-Board

Model debugger

A visualization tool for federated learning modeling to monitor and improve models

FATE's Visualization Toolkit

GitHub

100 stars
26 watching
61 forks
Language: Java
last commit: about 2 months ago
fatefederated-learningmachine-learningvisualization

Related projects:

Repository Description Stars
federatedai/fate-serving A high-performance serving system for federated learning models, providing support for online algorithms, real-time inference, and model management. 139
federatedai/fate-client Provides tools and APIs for designing, scheduling, and running federated machine learning jobs in a secure and efficient manner. 3
federatedai/fate-flow An end-to-end federated learning workflow platform for managing data and models across multiple parties 52
federatedai/fate-community Documentation repository for a community-driven project focused on federated AI technology development and governance. 25
federatedai/fate-test A collection of tools and tests for evaluating the performance of federated machine learning systems 1
federatedai/fate-cloud An infrastructure tool for managing and securing collaborative data networks across organizations 30
federatedai/fate-builder A tool designed to streamline the process of building and packaging FATE releases 8
federatedai/fate-llm A framework for collaborative training of large language models in a privacy-preserving manner 160
federatedai/fate An industrial-grade framework for collaborative machine learning on private data while maintaining security and privacy 5,723
federatedai/eggroll A framework for distributed machine learning 244
federatedai/ansiblefate A tool that automates the deployment of FATE clusters using Ansible 21
federatedai/fedvision A federated learning platform for computer vision tasks using PaddleFL and PaddleDetection 112
gaoliang13/feddc Federated learning algorithm that adapts to non-IID data by decoupling and correcting for local drift 79
zlz0414/feddar A framework for federated representation learning with domain awareness in multi-model scenarios. 2
mediabrain-sjtu/fedgela Federated learning algorithm designed to handle partially class-disjoint data by utilizing bilateral curation and Dirichlet partitioning. 10