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ITRS has been creating software that transforms the mass of raw data generated by organisations into meaningful information, enabling clients to understand the performance of their critical systems and to influence their businesses intelligently. With over 18 years’ experience in financial markets, ITRS delivers out-of-the-box solutions that can be customised, ensuring prompt time-to-market and return on investment. ITRS is proud to provide solutions that over 170 leading global clients, including investment banks, exchanges and trading venues, hedge funds, brokers and vendors, use every second of every day, giving them the essential capability they need to take intelligent action.

Valo - Big Data Analytics

Valo provides you with big data storage and real-time analytics so you can get answers to your queries in real-time.

Streams: Valo takes streams of data from any source to run your queries with immediate results.

New data sources: Results of your queries can become new streams of data.

Data integrity: Data is treated as an immutable sequence of events, so you can be sure of the integrity of your data, regardless of whether it’s streaming log files, Twitter posts or any other data stream.

Real-time vs historical: It’s not just about real-time data. Historical data can be compared against your real-time data to show patterns.

Valo is a stream analytics product that analyses changes at the speed of your streams, making it a fast and powerful tool.

Online algorithms: Use any data source to produce results at lightning speed e.g. for your online histogram or anomaly detection.

SQL-like: Easy to work with while offering powerful analytical capabilities.

Resilient and scalable: Able to support huge data volumes.

Clustered architecture: Ensures that data will be auto distributed if a node fails, providing continuous uptime.

Big data storage: Semi-structured and Time Series Repositories that you can query against as one.