VirtuousAI, an ethical AI platform, leverages FalkorDB to create a centralized data store for public and private data, enabling high-performance querying and analysis of complex data relationships. This solution feeds foundational model algorithms via PyTorch and TensorFlow dataloaders, ensuring low latency and high accuracy.
VirtuousAI leveraged FalkorDB to create a high-performance, multi-modal data store for ethical AI development, enabling efficient data management, model training, and embedding updates.
FalkorDB needs the contact information you provide to us to contact you about our products and services. You may unsubscribe from these communications at any time. For information on how to unsubscribe, as well as our privacy practices and commitment to protecting your privacy, please review our Privacy Policy.
VirtuousAI needed a scalable and efficient data management solution to handle diverse data modalities (text, image, HTML, video, and tabular) with various link types. The company required a database that could provide high-performance querying and analysis of complex data relationships to feed its foundational model algorithms.
VirtuousAI chose FalkorDB, a fast and low-latency Graph Database that utilizes sparse matrices and linear algebra to query and analyze complex data relationships. FalkorDB’s architecture enables high-performance and scalability, making it an ideal solution for VirtuousAI’s requirements. The database will store public data (Common Crawl and other miscellaneous data sources) and private data (client data), providing a centralized data store for VirtuousAI’s AI platform.
“Virtuous AI uses FalkorDB to create a large, centralized data store for public data (common crawl and other miscellaneous data sources) and private data (client data) that contains different modalities (text, image, HTML, video, and tabular) with different link types between this data.”
With FalkorDB, VirtuousAI expects to achieve: