This range is provided by Fortis Recruitment. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.
Base pay range
The Firm
A leading quant hedge fund known for its cutting-edge technology, machine learning expertise, and data-driven investment strategies. They specialise in systematic trading across asset classes, leveraging AI, deep learning, and statistical arbitrage models to generate sustainable alpha.
The firm operates in a highly competitive, low-latency trading environment, requiring Portfolio Managers to deploy innovative, scalable, and robust systematic strategies with strict risk controls. It provides access to world-class infrastructure, proprietary datasets, and an advanced research environment, enabling its teams to develop and optimize high-frequency and intraday trading strategies.
The Opportunity
- Design, backtest and implement intraday systematic trading strategies using AI, machine learning, and deep learning models.
- Develop predictive models for price movements, order flow, volatility forecasting, and market microstructure signals.
- Ensure strategies remain orthogonal to existing investment portfolios within the firm.
- Incorporate alternative data sources and innovative techniques to enhance alpha generation.
- Implement robust execution algorithms to optimize market impact and slippage.
- Adapt to changing market conditions through dynamic model retraining and reinforcement learning techniques.
- Work within a state-of-the-art, cloud-based research and trading infrastructure.
- Leverage high-performance computing for large-scale simulations and model training.
- Utilize advanced Python, C++, and TensorFlow/PyTorch frameworks for AI-driven trading research.
Skills and Qualifications:
- PhD in Computer Science, Applied Mathematics, Machine Learning, or a related quantitative field from a top global university (e.g., MIT, Stanford, Oxford, Cambridge, ETH Zurich, ENS, Tsinghua, etc.).
- Annual PnL record of $20m over at least three years and Sharpe Ratio of 2.
- Deep expertise in AI-driven trading models, including deep learning, reinforcement learning, and non-linear statistical methods for financial markets.
- Experience trading European equity or futures markets, with a high Sharpe Ratio and strong alpha capture in short-term signals.
- Strong programming skills (Python, C++, TensorFlow, PyTorch, SQL) and ability to build scalable research and trading pipelines.
- Deep understanding of market microstructure, execution algorithms, and transaction cost analysis in electronic trading environments.
- Ability to deploy models in a high-performance, low-latency trading environment.
The Offer:
- Work with one of the most sophisticated data-driven trading environments, leveraging proprietary datasets and AI tools.
- The freedom to develop innovative strategies while leveraging cutting-edge infrastructure and risk management support.
- Industry-leading P&L-based compensation structure aligned with performance and risk-adjusted returns.
Seniority level
Mid-Senior level
Employment type
Full-time
Job function
Finance
Industries
Investment Management
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Contact Detail:
Fortis Recruitment Recruiting Team