Skip to content

Do More, Faster.

Kinetica excels at letting you query any or all of your data, in complex ways, on the fly. No other engine gives you rich processing capability across OLAP, time-series, knowledge graph, vector, and spatial domains. Take a look at our TCP-DS numbers, but know you can do so much more.

vs

Kinetica is 8x faster than BigQuery

Comparisons are made to Kinetica from a geomean of the queries the database was able to run.

tpc-ds

Kinetica excels on TPC-DS

Radiant Advisors performed TPC-DS benchmarks on several high performance analytics databases in late 2022. TPC-DS is a sophisticated and comprehensive benchmark for SQL analytics databases, and an industry standard benchmark for general purpose decision support systems.

Many of the queries are long with complex joins, aggregations and group-bys. The full suite of TPC-DS SQL queries can be found on Github.

Report on Spatial and Time-Series Databases

An independently designed and performed Spatial and Time Series Benchmark to help organizations evaluate database technologies suitable for IoT and sensor data workloads. This report evaluates the performance and functionality of leading cloud databases with built in geospatial, temporal, and graph capabilities

Download Here ยป

Benchmark-Cover-Curl
Tests were run with 1TB (SF1000) of sample data. The tables store web, catalog and store sales from an imaginary retailer. Benchmarking was done using a consistent distributed hardware configuration of four Azure virtual machines: E48s v4 (48 vCPU, 384 GB RAM) with 2TB premium SSD, or equivalent setup.

Overall Query Results

Kinetica's vectorized join algorithms surpass other high-performance databases on most queries

View the Individual TPC-DS Queries Here

Book a Demo!

The best way to appreciate the possibilities that Kinetica brings to high-performance real-time analytics is to see it in action.

Contact us, and we'll give you a tour of Kinetica. We can also help you get started using it with your own data, your own schemas and your own queries.