Rust/ C++ Quantitative Developer (HFT)

Venture Search
City of London
6 days ago
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Venture Search has partnered with a leading global cutting-edge crypto trading firm, that are looking for a talented Quant Developer to join their newly formed quantitative trading team, playing a key role in building and scaling their next-generation high-frequency trading (HFT) platform, developed in Rust.


This is a rare opportunity to work alongside an industry-renowned HFT expert and contribute directly to the design and development of trading systems that will shape the future of our clients firm. You’ll collaborate on a wide range of initiatives spanning algorithm development, system optimization, and integration with decentralized finance (DeFi) protocols.


Key Responsibilities


  • Develop Trading Algorithms: Design and refine low-latency, high-frequency trading strategies.
  • Build Front-Office Trading Systems: Contribute to the development of core systems for data processing, risk management, live trading, and post-trade analysis.
  • Integrate with DeFi Protocols: Onboard and process real-time data feeds from decentralized platforms.
  • Backtest Strategies: Conduct historical analysis to evaluate and optimize trading models.
  • Implement Risk Controls: Develop robust risk management features, including capital limits and stop-loss mechanisms.
  • System Monitoring and Debugging: Maintain real-time trading systems and resolve operational issues efficiently.


Qualifications


  • Strong programming capabilities with a focus on low-level development and performance optimization
  • Minimum 2 years of experience developing HFT or trading systems
  • Deep understanding of trading infrastructure, including order books and order state machines
  • Proficiency in Rust, or significant experience in C/C++ with exposure to Rust (Note: all technical assessments and tasks will be conducted in Rust)
  • Knowledge of crypto markets is a plus


Preferred Skills & Attributes


  • Curious, self-directed, and proactive
  • Results-oriented with a strong sense of ownership
  • Excellent mathematical and analytical thinking
  • Able to manage multiple priorities in a dynamic, fast-paced environment
  • Fluent in English (professional working proficiency)

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