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Fed-BioMed Documentation
Docs
Getting Started
Getting Started
What's Fed-BioMed
Fedbiomed Architecture
Fedbiomed Workflow
Installation
Basic Example
Configuration
Tutorials
Tutorials
PyTorch
PyTorch
PyTorch MNIST Basic Example
How to Create Your Custom PyTorch Training Plan
PyTorch Used Cars Dataset Example
Transfer-learning in Fed-BioMed tutorial
PyTorch aggregation methods in Fed-BioMed
MONAI
MONAI
Federated 2d image classification with MONAI
Federated 2d XRay registration with MONAI
Scikit-Learn
Scikit-Learn
MNIST classification with Scikit-Learn Classifier (Perceptron)
Fed-BioMed to train a federated SGD regressor model
Implementing other Scikit Learn models for Federated Learning
Optimizers
Optimizers
Advanced optimizers in Fed-BioMed
Analytics
Analytics
FA Tutorial 1 — Tabular Dataset
FLamby
FLamby
Introduction
FLamby in Fed-BioMed
Advanced
Advanced
In Depth Experiment Configuration
PyTorch model training using a GPU
Breakpoints
Security
Security
Using Differential Privacy with OPACUS on Fed-BioMed
Local and Central DP with Fed-BioMed: MONAI 2d image registration
Training Process with Training Plan Management
Training with Secure Aggregation
End-to-end Privacy Preserving Training and Inference on Medical Data
Biomedical data
Biomedical data
Brain Segmentation
Multi-Channel Variational Autoencoder
User Guide
User Guide
Glossary
Datasets
Datasets
Introduction
Default Datasets
Image Datasets
Tabular Datasets
Medical Datasets
Adding your Custom Dataset
Adding a Native Dataset
Applying Transformations
Federated Analytics
Deployment
Deployment
Introduction
VPN Deployment
Network matrix
Security model
Node
Node
Configuring Nodes
Deploying Datasets
Federated Analytics
Training Plan Management
Using GPU
Node GUI
Researcher
Researcher
Training Plan
Training Data
Experiment
Aggregation
Listing Datasets and Selecting Nodes
Federated Analytics
Model Validation on the Node Side
Tensorboard
Optimization
Secure Aggregation
Secure Aggregation
Introduction
Configuration
Managing Secure Aggregation in Researcher
Developer
Developer
API Reference
API Reference
Common
Common
Analytics
Certificate Manager
CLI
Config
Constants
DataLoader
DataLoadingPlan
DataManager
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DB
Exceptions
IPython
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Secagg
Secagg Manager
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TasksQueue
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NodeStateManager
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Round
Secagg
Secagg Manager
TrainingPlanSecurityManager
Researcher
Researcher
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Filetools
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Usage and Tools
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RPC Protocol and Messages
Federated Analytics
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Table of contents
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Developer documentation
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Developer guidelines
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