A research group focused on advancing the theory and practice of vector databases, providing resources, publications, and tools related to vector database technology.
Kinomoto.Mag AI is a blog focused on AI tools, news, and tutorials, including curated lists of vector databases for AI applications. It serves as a resource hub for those interested in the latest innovations in vector databases and AI technologies.
A curated collection of open-source vector database projects, providing a centralized list for exploring and comparing solutions designed for vector search and AI applications.
A web-based directory of vector database solutions, libraries, and resources for AI applications, serving as an accessible resource for exploring and comparing vector databases.
An overview of the architectural components common to Vector Database Management Systems (VDBMS), which are designed to efficiently store, index, and query high-dimensional vector embeddings. This provides foundational knowledge for anyone interested in the internal workings of vector databases.
A research paper that proposes the first structured roadmap for testing Vector Database Management Systems (VDBMS), analyzing bugs, vulnerabilities, and test challenges unique to vector databases. It provides insights and future directions for improving the reliability and robustness of vector databases.
A comprehensive research roadmap addressing the unique challenges of testing vector database management systems (VDBMS), including approaches for test input generation, oracle definition, and test evaluation tailored to vector databases. The work highlights the complexities of high-dimensional vector data, approximate search semantics, and integration with AI/LLM pipelines, making it a valuable resource for advancing reliability and trustworthiness in vector databases.
A research group at Nanyang Technological University focused on advancing the theory and practice of vector databases.
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research, vector-databases, resources, ai