Tigris Data
AI-native object storage with built-in vector search and S3 compatibility
Tigris Data
AI-native object storage with built-in vector search and S3 compatibility
Tigris is a globally distributed object storage service that is S3-compatible but adds vector similarity search natively — allowing AI applications to store files and query them by semantic similarity without a separate vector database. This eliminates the operational overhead of maintaining separate systems for file storage and vector retrieval in RAG pipelines and AI applications. Tigris's architecture stores data close to where it is accessed globally without requiring region selection, automatically optimizing for latency through transparent data placement.
Key Features
- ✓S3-compatible storage
- ✓Native vector search
- ✓Global distribution
- ✓Auto data placement
- ✓RAG-friendly
- ✓No region selection
Quick Info
- Category
- AI Infrastructure & MLOps
- Pricing
- Paid
More AI Infrastructure & MLOps Tools
Dstack
AI Infrastructure & MLOpsOpen-source cloud-agnostic platform for AI/ML workload orchestration
Superlinked
AI Infrastructure & MLOpsVector compute framework that helps ML engineers build retrieval systems by combining multiple data types a…
Qdrant Cloud
AI Infrastructure & MLOpsManaged vector database cloud service offering high-performance similarity search with filtering, payload i…
Weaviate Embedded
AI Infrastructure & MLOpsEmbedded mode of the Weaviate vector database that can be instantiated directly within a Python application…