JOB SUMMARY We are seeking a highly experienced software engineer to lead the design and development of next-generation trading systems. This is a hands-on technical leadership role focused on building scalable, resilient, and high-performance trading infrastructure. You’ll collaborate across teams, mentor engineers, and drive innovation in a mission-critical environment.
Key Responsibilities • Design, develop, and optimize KDB+ databases and q analytics for high-volume trading and market data. • Develop Python-based AI and quantitative models for research, prediction, classification, and signal generation. • Apply machine learning techniques to time-series data (feature engineering, model training, evaluation). • Build research and backtesting frameworks integrating AI models with historical data. • Translate quantitative and ML research into robust, production-ready systems. • Integrate AI models into real-time and batch pipelines. • Optimize analytics and model evaluation for performance, stability, and scalability. • Collaborate with quants, product owners, and engineering teams on model deployment and monitoring. • Support production systems and participate in on-call rotations, including occasional weekend support.
Required Qualifications • Bachelor’s degree in Mathematics, Computer Science, Engineering, Information Technology, or equivalent. • 10+ years professional experience in quantitative finance or trading systems. • Advanced proficiency in KDB+/q, including time-series data modeling, high-performance querying and joins, and real-time and historical analytics. • Strong Python skills for quantitative analysis, AI / ML model development, and integration with KDB+ and downstream systems. • Experience working with large-scale, high-frequency, or noisy datasets. • Solid software engineering practices (Git, testing, modular design). • Hands-on experience in AWS or other cloud platforms. • Experience in Linux, shell scripting, and production support.
Preferred Qualifications • Worked with AI developer assist tools (e.g. GitHub Copilot). • Experience with CI/CD tools such as GitHub, Maven, Jenkins, Artifactory, and uDeploy. • Familiarity with object-oriented programming languages such as Java. • A strong quantitative mindset with practical AI application skills. • Ability to bridge research, machine learning, and production systems. • Comfort working on front-office or research-critical infrastructure. • Clear communicator with quants, traders, and engineers.
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