C++ Quantitative Developer - C+/20 | Linux | Low-Latency | Equities | Python - Permanent

Scope AT Limited
London
1 month ago
Applications closed

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C++ Quantitative Developer - C+/20 | Linux | Low-Latency | Equities | Python - Permanent
Central London | Onsite 5 Days

We're seeking experienced C++ Quantitative Developers (Senior & Lead) to design and implement ultra-low-latency trading systems within a fast-paced equities technology environment.

Key Skills & Experience:

  • Strong C++ (11/17/20+) with Multithreading & asynchronous programming.

  • Deep knowledge of Linux internals & networking.

  • Experience with low-latency, Real Time trading systems.

  • Background in equities trading/execution algorithms.

  • Familiarity with Python for quantitative research (desirable).

  • Strong computer science fundamentals (data structures, algorithms, OOP).

Role Highlights:

  • Develop execution algorithms, order management, connectivity & messaging systems.

  • Collaborate directly with trading teams to optimise execution performance.

  • Build robust, resilient, and high-performance trading infrastructure.

  • Contribute to automated testing, performance benchmarking, and tooling.

Permanent Role - Central London (Onsite 5 Days)

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