Welcome to FalkorDB – The Future of Graph Databases

The Future of Graph Databases
The Future of Graph Databases
Picture of Guy Korland
Guy Korland
CEO & Co-Founder

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At FalkorDB, we are redefining the boundaries of what’s possible with graph databases. Our advanced, ultra-low latency solution is designed to empower your data-driven applications with unparalleled performance, scalability, and ease of use. Whether you’re managing complex relationships, conducting deep analytics, or building the next generation of AI-driven applications, FalkorDB is the database you’ve been waiting for.

Why Choose FalkorDB?

1. Ultra Low Latency

Experience performance like never before. FalkorDB is up to 200x faster than other graph databases, ensuring that your queries return results in the blink of an eye. Whether you’re dealing with millions of nodes or billions, FalkorDB’s optimized engine ensures ultra-low latency at every scale.

2. Multi-Graph Support

FalkorDB is the only graph database that fully supports multiple graphs within a single instance:

  • Multi-Tenancy Ready: Run multiple isolated graphs on the same platform with full isolation, ensuring security and performance across tenants.
  • Linear Scalability: Easily scale your database across clusters, distributing multiple graphs seamlessly and maintaining consistent performance as your data grows.

Go beyond simple graph queries. With integrated vector indexing and full-text search, FalkorDB allows you to perform complex searches and similarity matching with ease, all within the same database environment.

4. Full Property Graph with Cypher Support

Leverage the power of property graphs and write expressive queries with full Cypher support. FalkorDB provides a rich set of features for defining, querying, and analyzing graph data, making it easier than ever to uncover insights hidden in your data.

5. High Availability with Live Replication

Never worry about downtime. FalkorDB’s high-availability architecture ensures your data is always accessible, with live replication across multiple nodes to prevent any single point of failure.

6. Fully Managed Cloud Support

Deploy your graph database in the cloud with ease. FalkorDB offers fully managed cloud services, taking the hassle out of infrastructure management so you can focus on building great applications.

7. FalkorDB Browser – Graph Visualization Made Easy

Visualize your data with the FalkorDB Browser, a powerful tool that provides an intuitive interface for exploring and interacting with your graphs. Understand complex relationships and uncover patterns with just a few clicks.

8. Language Support for Every Developer

No matter what language you code in, FalkorDB has you covered. We offer comprehensive support for Java, Python, JavaScript, Rust, Go, and more, ensuring seamless integration with your existing tech stack.

Ready to experience the power of FalkorDB?

Explore our platform today and see how we’re pushing the limits of what’s possible with graph databases. Whether you’re a developer, data scientist, or enterprise architect, FalkorDB has the tools and performance you need to succeed.

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