At C&IB Global Markets, our Advanced Analytics & Algorithmic Trading team is at the forefront of transforming our business into a more scientific and data-driven enterprise. We are seeking a highly skilled Algo Trading Quant to join our efforts in building a cutting-edge suite of trading algorithms for our Credit Flow Desks in New York.
Key Responsibilities
As part of our team, you will have the opportunity to work on impactful initiatives that blend quantitative finance with advanced technology, including:
- Development of Advanced Analytics Models: Design and implement models to estimate fair value, market liquidity, optimal bid-ask spreads, hedging strategies, and other pricing insights for credit instruments.
- Algorithmic Trading Solutions: Build and refine market-making and execution algorithms using scientific methodologies such as stochastic optimal control, machine learning, and reinforcement learning.
- Signal Generation: Develop predictive indicators and alpha signals based on market trends, volatility, volume, inflation metrics, and other relevant features.
- Performance Analysis: Create robust frameworks for ex-ante (backtesting) and ex-post (P&L attribution) evaluation of models and algorithmic strategies.
- Trader Collaboration: Work closely with credit trading desks in London and New York to understand their business goals, translate those into quantitative models, and iteratively refine your solutions based on trader feedback.
Ideal Candidate Profile
We are looking for a candidate with strong quantitative acumen and a passion for applying data science to financial markets. You should possess:
- Education: A Master's degree in Physics, Mathematics, Statistics, Engineering, or Computer Science.
- Experience: 3–5 years in a quantitative research, algorithmic trading, or data science role within the financial industry or a similarly rigorous environment.
- Market Knowledge: Solid understanding of financial markets. Familiarity in credit trading instruments and strategies is a plus
- Mathematical Fluency: Ability to conceptualize and communicate complex ideas in mathematical terms. Proficiency in stochastic calculus, Bayesian methods, and optimal control theory is a strong plus.
- Programming Skills:
- Proficient in Python and object-oriented languages such as Java.
- Knowledge of KDB+/Q is highly valuable.
- Data & ML Tools: Experience with common machine learning libraries and big data technologies such as Hadoop and Spark.
- Soft Skills:
- Entrepreneurial mindset with the initiative to identify and pursue opportunities.
- Ability to work under pressure and deliver results in fast-paced environments.
- Strong communication skills in English; Spanish is a plus but not required.