10.16.2019

QuantHouse Adds Historical Data On-Demand

10.16.2019

QuantHouse, the global provider of end-to-end systematic trading solutions including innovative market data services, algo trading platform and infrastructure products and part of Iress (IRE.ASX), today announced the launch of Historical Data on-Demand designed to dramatically speed up the research, development and backtesting phase of any trading strategy.

The research, development and backtesting phase is a critical but historically lengthy and onerous process. Market participants must identify data sources, align formats and code to those data sources, allocate storage capacity to download the necessary files and ultimately incorporate into their trading models to assess the viability of their trading strategy. By this time the market has often moved on and the backtesting cycle needs to be repeated.

The new service from QuantHouse is the first of its kind to speed up this process. It delivers fast, reliable historical data – on-demand – for use in any client model and allows clients to implement new trading ideas within days rather than weeks or even months.

Stephane Leroy, Chief Revenue Officer and business co-Founder, QuantHouse, said, “The trading landscape has changed significantly in the past few years; it is no longer about how fast your trades are sent, but how quickly your trading strategy can be ready. In order to move away from speed trading to smart trading, you need access to trusted, reliable and consistent data on-demand, so that you can spot changes and emerging patterns in the market quickly and evaluate and adjust your trading strategy accordingly. Our new Historical Data on-Demand service gives clients a distinctive edge by moving to a much more real-time environment. This provides a real breakthrough for the algo trading industry.”

QuantHouse offers up to 10 years of historical data on-demand for the US, European and Asian-Pacific markets. Access to the data is available via a web portal, so clients simply search for the data they need and purchase it online using their web browser of choice. The historical datasets purchased are delivered through flat files and available for immediate integration into any system, without the need to integrate an API. Historical data can be replayed over prior time periods with the results then being refined and adjusted in order to optimise trading performance.

Denery Fenouil, Chief Technical Officer, QuantHouse, added, “The length of the research, development and backtesting cycle often pushes the actual execution of the trade beyond optimal timings. By giving your research and development teams the right tools like Historical Data on-Demand, they will be able to rapidly test new and current trading strategies in order to detect potential losses or degradation of the strategy within days, not weeks. This then enables clients to quickly adjust their trading strategies, in order to make the changes needed before it hits your P&L.”

Source: QuantHouse

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