As a Quantitative Engineer, you will develop and implement quantitative models to drive investment strategies across financial markets, utilizing data-driven techniques for portfolio management and risk assessment, while collaborating with analysts and strategists to enhance trading strategies.
Summary
We are looking for a Quantitative Engineer to develop and implement advanced quantitative models that drive investment and trading strategies across multi-asset financial markets. This role focuses on applying data-driven methodologies, including machine learning, statistical modeling, and algorithmic trading, to optimize portfolio management, risk assessment, and market forecasting. The ideal candidate possesses strong programming skills, a deep understanding of financial markets, and expertise in quantitative research, enabling them to design innovative solutions for complex investment challenges.
Job Responsibilities
- Develop quantitative algorithms for portfolio optimization, risk mitigation, and financial modeling.
- Utilize computing techniques such as machine learning and Monte Carlo simulations to enhance market forecasting and trading strategies.
- Research and design algorithms to improve asset allocation, liquidity management, and financial risk strategies.
- Collaborate with investment analysts, data scientists, and financial strategists to integrate solutions into investment platforms while ensuring regulatory compliance.
- Apply quantitative methodologies to enhance risk management strategies for equities, commodities, and cryptocurrency markets.
- Hold a Bachelor’s or Master’s degree in Financial Engineering, Computer Science, or Mathematics.
- Possess strong knowledge of financial markets, investment strategies, and risk management.
- Have experience in data acquisition, quantitative modeling, and application development in a research or financial environment.
- Be well-versed in at least one asset class, such as equity, fixed income, or high-yield bonds, with a track record in financial research and software development.
- Have familiarity with quantitative analytics, including fund performance measurement, predictive risk modeling, and alpha research.
- Possess strong analytical skills to process large datasets, detect anomalies, and develop innovative financial solutions.
- Have expertise in logical data modeling and relational database design for financial applications.
- Supportive teammates
- Health insurance benefits
- Self development activities that support careers
- Hybrid working arrangement
Top Skills
Machine Learning
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