End-to-end timeseries and vector analytics in the factory,
on the track and on the road.
01
Improved R&D processes and testing with streaming analytics
02
Improved customer experience, safety, and reliability with real-time monitoring of vehicles and components
03
Faster time to market and lower cost to get to market.
04
Faster and more efficient aerodynamics analysis, real-time race monitoring, analysis and learning
05
Improved production yield and lower costs with fault detection and prediction
01
Improved R&D processes and testing with streaming analytics
02
Improved customer experience, safety, and reliability with real-time monitoring of vehicles and components
03
Faster time to market and lower cost to get to market.
04
Faster and more efficient aerodynamics analysis, real-time race monitoring, analysis and learning
05
Improved production yield and lower costs with fault detection and prediction
“KX delivers true end-to-end real-time analytics with unrivalled speed of data ingestion and capture, advanced modelling and predictive analysis “
Ingest, process, analyze data from connected vehicles in real-time and analyze history to predict and prevent failures with KX. Our platform can also be used to deploy advanced analytics and machine learning in vehicles.
KX, with its single integrated platform including its superior columnar-structured time-series database, enables you to scale from thousands up to hundreds of millions of sensors at any measurement frequency whilst maintaining extremely high levels of performance.
KX can capture, analyze and store high-frequency time-series data from thousands of sensors to compare with historical data in areas like fault detection and anomaly analysis. It includes a comprehensive suite of graphical tools with powerful OLAP drill-down capabilities to aid decision making based on historical and real-time data from multiple data streams.
Our technology platform can be used to analyze data from wind tunnels, trackside, roadside and satellite to assess performance, identify faults, predict potential failures, plan maintenance to improve design, optimize performance and reduce cost.
A connector framework simplifies integration and coexistence with incumbent systems.
APIs for .NET, Java, C, C++, Python, R, ODBC, Matlab and Excel.
Machine Learning capabilities using embedPy which loads Python into kdb+, allowing access to a rich ecosystem of libraries such as scikit-learn, tensorflow and pytorch.