Develop and implement innovative machine learning and deep learning techniques to enhance trading strategies and contribute to significant financial market research.
Who are we: Graviton is a privately funded quantitative trading firm striving for excellence in financial markets research. We trade across a multitude of asset classes and trading venues using a gamut of concepts and techniques ranging from time series analysis, filtering, classification, stochastic models, pattern recognition, to statistical inference analyzing terabytes of data to come up with ideas to identify pricing anomalies in financial markets.
As part of this team you will be tasked to apply machine learning and specifically deep learning techniques to trading problems while staying connected to broader research community. The researcher will put theory into practice and can immediately impact the global trading landscape with the expanding presence of Graviton in various markets.
Our open and collaborative work culture gives you the freedom to innovate and experiment. Our cubicle free offices, non-hierarchical work culture and insistence to hire the very best creates a melting pot for great ideas and technological innovations. Everyone on the team is approachable, there is nothing better than working with friends!
Our perks have you covered.
Free Meals & Snacks
Delightful catered breakfasts and lunches
Health Insurance
Best-in-class health insurance
After work parties
4 weeks annual leave
4 week annual leaves along with market holidays
Graviton Research Capital is a high-frequency trading firm that utilizes advanced technology and quantitative research to exploit market inefficiencies across global asset classes. Focused on leveraging proprietary execution strategies, we operate at the cutting edge of financial markets, analyzing vast amounts of data to inform our trading decisions.
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