As a Quantitative Researcher, your focus is on identifying trading  opportunities, but you can add even more value with strong quantitative  skills and some coding proficiency to accelerate the innovation process  and help others leverage your work. 
By working on a variety of  projects with different collaborators over the start of your career,  you’ll gain new knowledge and insight into the fundamentals of market  dynamics, trading strategies, and our proprietary research platform. We  believe in learning through impactful work, so while you learn the  intricacies of our industry, you’ll have plenty of opportunities to  contribute and directly affect our bottom line within your first few  weeks on the team.  
While interest in trading is key, a background in finance is definitely not. Our team is built mostly from academia — not from other trading firms. We seek mental diversity and add a select group of academics each year from a wide range of disciplines. 
COMPENSATION  – Competitive salary, plus quarterly bonus based on individual  performance and contribution towards success of others and the firm.
Qualifications
We’re  looking for highly analytical people (math, physics, computer science,  statistics, electrical engineering, etc.) who want to help build the  research-driven trading firm of the future. To do that, you’ll need the  following qualities:
- Persistent Drive to Improve - Do you have an innate desire to rise to the next level, even after great accomplishment?
- Creative Problem Solving and Probabilistic Thinking - You must enjoy  learning and implementing new concepts quickly, combining knowledge  from different domains to create new ideas, and take a data-driven and  probabilistic approach to testing and implementing new ideas.
- Team Mindset - We want people who understand 1+1 > 2 and are as  committed to making the team better through sharing ideas as they are  driven to improve their individual performance.
- Mental Flexibility & Self Awareness - You’ll have to frequently  adapt based on new data, results, and feedback on your trading ideas and  your performance.
- Orientation for Making Money - Although we value academic training,  our work is not an academic exercise. We take a hacker’s approach to  testing ideas, dropping projects that consume time without high upside,  and focusing our next efforts on what will create the most value for the  firm.
Research / Quant trading strategy skills to have or develop
- Strong intuition and deep thinking with data sets - Designs new  alphas, understands complex systems; knows where to start, or ask others  where to start
- Demonstrates strong “hacking” ability to quickly get into data to look for empirical relationships and decipher noise or signal
- Familiarity with classical statistical methods and knows when and  how to apply them in a rigorous fashion; Easily learns how to apply new  statistical methods; will seek out and learn new methods to better solve  problem  
- Experience with modern AI techniques and methods or desire to work on Applied Machine Learning Problems a plus
 
- Constantly questions finance/trading data and stays motivated to  seek answers despite most often proving that there is no correlation or  signal
- Experience in setup of research framework and execution of projects
- Understanding of financial products, market dynamics, and microstructure
- Experience programming in Low-level computer languages (like C++);  awareness of strength in particular language and ability to solve more  complex problems due to understanding nuances of the language