Keywords AI

LanceDB vs TigerGraph

Compare LanceDB and TigerGraph side by side. Both are tools in the Vector Databases category.

Quick Comparison

LanceDB
LanceDB
TigerGraph
TigerGraph
CategoryVector DatabasesVector Databases
Websitelancedb.comtigergraph.com

How to Choose a Vector Databases Tool

Key criteria to evaluate when comparing Vector Databases solutions:

Query performanceSearch latency and throughput at your expected data scale and query volume.
ScalabilityHow well the database handles growing from thousands to billions of vectors.
Hosting modelFully managed cloud, self-hosted, or embedded options depending on your infrastructure needs.
Filtering supportAbility to combine vector similarity search with metadata filters efficiently.
Integration ecosystemNative integrations with popular frameworks like LangChain, LlamaIndex, and Haystack.

About LanceDB

LanceDB is an embedded, serverless vector database that runs inside your application process with zero infrastructure. Built on the Lance columnar format, it supports multimodal data (text, images, video), automatic versioning, and scales from local development to cloud deployments.

About TigerGraph

TigerGraph is a scalable graph database platform for advanced analytics and AI.

What is Vector Databases?

Purpose-built databases for storing, indexing, and querying high-dimensional vector embeddings used in semantic search, RAG, and recommendation systems.

Browse all Vector Databases tools →

Frequently Asked Questions

What is a vector database?

A vector database stores high-dimensional numerical representations (embeddings) of data like text, images, or audio, and enables fast similarity search across millions or billions of vectors using approximate nearest neighbor algorithms.

Do I need a dedicated vector database or can I use pgvector?

For small to medium datasets (under 10 million vectors), pgvector in PostgreSQL works well and avoids adding another service. For larger datasets or when you need advanced features like hybrid search and real-time indexing, a dedicated vector database is recommended.

How do I choose the right embedding model for my vector database?

Match the embedding model to your use case. For general text search, models like OpenAI text-embedding-3 or Cohere embed-v3 work well. For domain-specific applications, consider fine-tuned models. Always benchmark with your actual data.

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