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QSG Quantitative Research and Development Associate

Role Description

HAP Capital is seeking a junior quant to join the Quantitative Strategies Group. QSG seeks to identify pricing and volume dynamics in electronic markets. Insights gleaned about liquidity and market micro-behavior are used to model the price discovery process. As a Quantitative Research and Development Associate you will:
• Build research tools and applications for processing and examining market data
• Perform alpha research geared towards high-volume and scalable strategies
• Implement strategy code to monetize findings on both sides of the order book
• Design and implement R&D solutions for wide-ranging initiatives the team undertakes
• Develop and test data-centric theories aimed at understanding intraday liquidity patterns
• Debug, modify, and enhance in-house technologies, systems, and processes

Requirements

• Undergraduate degree (or higher) in Computer Science/Engineering, Statistics/ML, or similar
• Proficiency in C++ including modern OOP for building scalable production applications
• Proficiency in suitable data research & modeling language: Python, R, and possibly Matlab
• Firm grasp of data structures and algorithms and knowledge of their computational tradeoffs
• Knowledge and experience with developing robust statistical/ML models on numerical data
• Knowledge and understanding of software & data engineering principles and practice
• Experience working with Linux and Windows in a production environment

Additional skills/experience that will reflect favorably

• Automated trading experience
• A graduate degree in a relevant technical field
• Knowledge of financial markets and trading
• Latency-sensitive programming and optimization
• Large-scale data processing and familiarity with distributed computing
• Demonstrable experience working on large production C++ systems (10k+ lines of code)
• Demonstrable experience developing statistical learning algorithms in production use