CostFed
Query optimizer
An index-assisted federation engine for optimizing queries across multiple SPARQL endpoints
Cost-Based Query Optimization for SPARQL Endpoint Federation
18 stars
6 watching
12 forks
Language: Java
last commit: about 2 years ago
Linked from 1 awesome list
Related projects:
| Repository | Description | Stars |
|---|---|---|
| | A benchmark for testing the scalability of SPARQL federation engines in e-commerce scenarios | 8 |
| | An adaptive query processing engine designed to optimize performance for SPARQL endpoints | 18 |
| | An algorithm that optimizes collaboration in federated learning by clustering clients into non-overlapping coalitions based on data quantity and pairwise distribution distances. | 16 |
| | Federates multiple SPARQL endpoints into a single query interface while optimizing performance and query complexity | 4 |
| | Improving generalization in federated learning by seeking flat minima through optimization techniques | 82 |
| | Tool for expanding SPARQL queries to perform inference on multiple endpoints and relational databases | 8 |
| | A tool for training federated learning models with adaptive gradient balancing to handle class imbalance in multi-client scenarios. | 14 |
| | An optimization framework designed to address heterogeneity in federated learning across distributed networks | 655 |
| | An optimized Firestore cost management solution using batching and caching | 23 |
| | An implementation of Federated Multi-Armed Bandits with Personalization using Python and Jupyter Notebook. | 6 |
| | This project presents optimization techniques for federated learning and minimax games in the context of machine learning | 1 |
| | A framework for distributed optimization with communication compression and optimal oracle complexity. | 0 |
| | A decentralized database that improves web performance by killing slow JavaScript on separate worker threads. | 78 |
| | Federation infrastructure for distributed RDF data sources using SPARQL queries and statistical analysis of VoiD descriptions. | 5 |
| | An implementation of a federated averaging algorithm with an extrapolation approach to speed up distributed machine learning training on client-held data. | 9 |