FedShop
Federated Query Benchmark
A benchmark for testing the scalability of SPARQL federation engines in e-commerce scenarios
Code for FedShop: The Federated Shop Benchmark
8 stars
4 watching
2 forks
Language: Jupyter Notebook
last commit: 3 months ago
Linked from 1 awesome list
Related projects:
Repository | Description | Stars |
---|---|---|
dice-group/costfed | An index-assisted federation engine for optimizing queries across multiple SPARQL endpoints | 18 |
jinheonbaek/fed-pub | Personalized Subgraph Federated Learning framework for distributed machine learning | 44 |
talwalkarlab/leaf | A benchmarking framework for federated machine learning tasks across various domains and datasets | 851 |
gaoliang13/feddc | Federated learning algorithm that adapts to non-IID data by decoupling and correcting for local drift | 79 |
bordoley/reactfsharp | A proof-of-concept demo that implements a React-like declarative UI API for F# | 0 |
federatedai/fate-test | A collection of tools and tests for evaluating the performance of federated machine learning systems | 1 |
goerlitz/rdffederator | Federation infrastructure for distributed RDF data sources using SPARQL queries and statistical analysis of VoiD descriptions. | 5 |
google-research/federated | A collection of research projects exploring decentralized machine learning and analytics techniques | 690 |
illidanlab/foster | This project develops an approach to improve out-of-distribution detection in federated learning by leveraging data heterogeneity | 18 |
jiayunz/fedalign | Develops an alignment framework for federated learning with non-identical client class sets | 4 |
yuetan031/fedproto | An implementation of federated learning with prototype-based methods across heterogeneous clients | 133 |
haozzh/fedcr | Evaluates various methods for federated learning on different models and tasks. | 17 |
unc-optimization/feddr | An implementation of algorithms for decentralized machine learning in nonconvex optimization problems | 8 |
omarfoq/fedem | Develops and evaluates federated learning algorithms for personalizing machine learning models across heterogeneous client data distributions. | 154 |
bodigrim/tasty-bench | A lightweight benchmarking framework with a simple statistical model | 80 |