ALGORITHMIC TRADING PLATFORM
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The Systemathics Algorithmic Trading Platform is designed with a user approach in order to allow for data and order flows standardization, the capture of trading signals, the execution of strategies through backtesting, paper trading and production.
The Trading Platform is composed of multiple code invariant modules that can be run independently or altogether reducing drastically the elapsed time for implementation project as well as the associated operational risk.
All modules have been developed using standard development languages, widespread in the financial industry (.Net, C#, WPF) and the platform displays a Software Development Kit (SDK) enabling the integration with all standard statistical tools and mathematical libraries as well as a large range of market connectors.
Backtest algorithmic trading models; from low to high frequency strategies. Optimize and calibrate models using the same data flow used in production and paper-trading. Export comprehensive post trade data sets for easy analysis.
Trade Equities, Forex, Options and Futures using a centralized system. Take advantage of multiple aggregated liquidity providers to maximize your trade efficiency. Minimise execution risk, Maximize the trading effeciency process using the smart order library.
Fully interactive, customizable, auditable and back testable. Combines trading tactics and statistical signals to achieve high execution quality. Enables you to minimise execution risk and maximize the trading effeciency process.
Normalize and consolidate historical data for Equities, Forex, Derivatives, Commodities, Fixed Income and more. Combine native exchange data and third-party historical data in a single database.
Create customizable fact sheets for Excel, pdf and so on. Provides the necessary analytics to assess the efficiency of strategies : Complete set of exposure and performance measures and technical indicators.
Multi-Assets / Multi-Venues : store the fundamental data and the order book for all asset classes. Keep your existing symbol naming conventions. Low latency data capture with an open data models and APIs.