High performance components for building Trading Platform such as ultra fast matching engine, order book processor
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Updated
Jul 15, 2025 - C++
High performance components for building Trading Platform such as ultra fast matching engine, order book processor
A C++ and Python implementation of the limit order book.
Low latency Limit Order Book and Matching Engine created in C++, able to handle over 1.4 million transactions per second.
DistributedATS is a FIX Protocol based multi matching engine exchange(CLOB) that integrates QuickFIX and LiquiBook over DDS
A low-latency, high-throughput order matching system implementation.
A mini matching engine in progress
C++ tools and utilities for algorithmic trading.
Liquibook Implementation of Order Book with the CMake build system
Diploma Thesis - High performance components for building a Trading Platform such as an ultra fast Matching Engine and Order Book Processor
High-Frequency Trading (HFT) order matching engine optimized for low latency. Features NUMA-aware memory allocation, thread pinning, RDTSC timestamps, lock-free SPSC queues, async logging, and UDP busy polling. Built with C++20 for Linux production environments.
Limit Orderbook & Matching Engine + market simulation & visualsation.
Exchange Server
High-performance C++ Trading Engine
Order matching engine
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Simple limit order matching system written in C++.
This C++ matching engine boasts a user friendly, efficient, yet highly customizable interface making it ideal for simulation and research purposes.
Low latency Limit Order Book and Matching Engine written in C++
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