KShivendu/awesome-vector-search
A curated list of awesome projects and research related to vector search, including dedicated vector databases, vector search libraries, performance benchmarks, and cost analysis resources.
About this tool
KShivendu/awesome-vector-search
A curated list of projects and research related to vector search, including databases, libraries, benchmarks, and cost analysis.
Features
- Compilation of dedicated vector databases
- Collection of vector search libraries and extensions
- Performance benchmarks for vector search systems
- Resources for cost analysis of vector search solutions
- Ongoing updates with additional resources and research
Category
Curated Resource Lists
Tags
awesome-list, vector-search, resources, open-source
Source
Loading more......
Information
Categories
Similar Products
6 result(s)A curated list of vector database solutions, libraries, and resources tailored for AI applications. Categorizes items by license and type, providing a valuable directory for those seeking vector database technologies.
A data repository that powers the 'Awesome Vector Databases' curated list, collecting structured information about vector database solutions, libraries, and resources for AI applications. Directly supports the discovery and categorization of vector database tools.
VectorHub is a resource and learning platform for developers and ML architects interested in integrating vector retrieval and search capabilities into their machine learning stacks, directly supporting vector database adoption and usage.
A set of libraries and methods focused on hashing for similarity search in vector databases, directly impacting the performance of large-scale vector search systems.
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 collection of resources, libraries, and databases focused on handling and searching multidimensional vector data, directly relevant for storing and querying vector embeddings in AI-powered applications.