zilliztech/VectorDBBench
Benchmark for vector databases.
Comparing vector databases for your AI application can be tricky. This tool helps you evaluate different vector databases and cloud services to see which one performs best and is most cost-effective for your specific needs. It takes your performance requirements and typical usage patterns to show you a side-by-side comparison of how various databases handle tasks like inserting data and searching for similar items. Anyone building or managing AI-powered features, such as recommendation engines, search, or chatbots, can use this to make informed decisions.
1,038 stars. Actively maintained with 18 commits in the last 30 days.
Use this if you need to choose the optimal vector database or cloud service for your AI application based on real-world performance and cost-effectiveness.
Not ideal if you are looking for an in-depth code-level profiling tool for a single vector database.
Stars
1,038
Forks
348
Language
Python
License
MIT
Category
Last pushed
Mar 09, 2026
Commits (30d)
18
Get this data via API
curl "https://pt-edge.onrender.com/api/v1/quality/vector-db/zilliztech/VectorDBBench"
Open to everyone — 100 requests/day, no key needed. Get a free key for 1,000/day.
Compare
Related tools
lancedb/lancedb
Developer-friendly OSS embedded retrieval library for multimodal AI. Search More; Manage Less.
qdrant/vector-db-benchmark
Framework for benchmarking vector search engines
prrao87/lancedb-study
Comparing LanceDB and Elasticsearch for full-text search and vector search performance
vector-index-bench/vibe
Vector Index Benchmark for Embeddings (VIBE) is an extensible benchmark for approximate nearest...
myscale/vector-db-benchmark
Framework for benchmarking fully-managed vector databases