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Job Details

Jane Street logo
Proprietary Trading

Statistical Arbitrage Research Analyst

at Jane Street

ExperiencedNo visa sponsorship

Posted 17 days ago

No clicks

Join a quantitative research team to apply rigorous mathematics and statistical methods to diverse datasets and develop alpha-focused trading strategies across multiple liquid asset classes. The role emphasizes deep data work—assessing quality, handling outliers, feature engineering, aligning datasets—and building statistical and machine-learning models. You will write code to analyze large datasets, collaborate closely with colleagues across the firm, and help identify and correct errors while iterating on research ideas. Python knowledge is preferred and 2–6 years of experience in a data-rich quantitative research environment is ideal.

Compensation
Not specified

Currency: Not specified

City
Not specified
Country
Not specified

Full Job Description

About the Position

We are looking for a Statistical Arbitrage Research Analyst who is excited to apply rigorous math and statistical methods to analyze a variety of input datasets to create novel alpha-focused trading strategies for Jane Street. Your work has the potential to span across any and all liquid asset classes, including, but not limited to, U.S. and global equities, equity and fixed income futures, FX, and corporate bonds.

Ideally, you will have previous experience working in a buy-side or sell-side financial firm with some combination of asset price returns data, non-returns-based traditional data, and “alternative” data sets. However, if you are an economist or data scientist in a different field (such as tech) we’re open to teaching you what you need to know to thrive in this role.  

We are looking for someone who is eager to dig deep into the details of data sets to assess quality and consider outliers, dimensionality, feature engineering, causality, aligning dates across datasets, and more. 

You’ll help us stay vigilant in our efforts to find and correct errors or mistakes in code, which inevitably happen — though we expect this role to involve as much time delving into the lovely messiness and complexity of data as it will on advanced statistical modeling.

The problems we work on rarely have clean, definitive answers, and they often require insights from people across the firm with different areas of expertise. We find that we make the most progress when team members collaborate and communicate fluidly. Your success in this role will depend on your ability to balance expertise and intellectual rigor with an open mind to a variety of techniques and modes of thinking.

We don’t believe in “one-size-fits-all” solutions; we are open to and excited about applying all different types of mathematical and statistical techniques, depending on what best fits a given problem. Progress takes place at different tempos on our team depending on the project, so you’ll need to be comfortable embracing both large leaps and incremental steps forward.

About You

  • 2-6 years of professional experience working in a data-rich environment in quantitative research
  • Team player with a highly collaborative mindset; communicate clearly and often and enjoy discussing research ideas and results in depth
  • Open to a variety of techniques and modes of thinking
  • Humble about what you do and don’t know; willing to admit mistakes
  • Enjoy learning new skills and teaching others what you know
  • Able to write code and analyze large datasets
  • Experienced with statistical and ML modeling
  • Knowledge of Python preferred, but not required
  • Background knowledge of financial markets is a plus

 

If you're a recruiting agency and want to partner with us, please reach out to agency-partnerships@janestreet.com.

Job Details

Jane Street logo
Proprietary Trading

17 days ago

clicks

Statistical Arbitrage Research Analyst

at Jane Street

ExperiencedNo visa sponsorship

Not specified

Currency not set

City: Not specified

Country: Not specified

Join a quantitative research team to apply rigorous mathematics and statistical methods to diverse datasets and develop alpha-focused trading strategies across multiple liquid asset classes. The role emphasizes deep data work—assessing quality, handling outliers, feature engineering, aligning datasets—and building statistical and machine-learning models. You will write code to analyze large datasets, collaborate closely with colleagues across the firm, and help identify and correct errors while iterating on research ideas. Python knowledge is preferred and 2–6 years of experience in a data-rich quantitative research environment is ideal.

Full Job Description

About the Position

We are looking for a Statistical Arbitrage Research Analyst who is excited to apply rigorous math and statistical methods to analyze a variety of input datasets to create novel alpha-focused trading strategies for Jane Street. Your work has the potential to span across any and all liquid asset classes, including, but not limited to, U.S. and global equities, equity and fixed income futures, FX, and corporate bonds.

Ideally, you will have previous experience working in a buy-side or sell-side financial firm with some combination of asset price returns data, non-returns-based traditional data, and “alternative” data sets. However, if you are an economist or data scientist in a different field (such as tech) we’re open to teaching you what you need to know to thrive in this role.  

We are looking for someone who is eager to dig deep into the details of data sets to assess quality and consider outliers, dimensionality, feature engineering, causality, aligning dates across datasets, and more. 

You’ll help us stay vigilant in our efforts to find and correct errors or mistakes in code, which inevitably happen — though we expect this role to involve as much time delving into the lovely messiness and complexity of data as it will on advanced statistical modeling.

The problems we work on rarely have clean, definitive answers, and they often require insights from people across the firm with different areas of expertise. We find that we make the most progress when team members collaborate and communicate fluidly. Your success in this role will depend on your ability to balance expertise and intellectual rigor with an open mind to a variety of techniques and modes of thinking.

We don’t believe in “one-size-fits-all” solutions; we are open to and excited about applying all different types of mathematical and statistical techniques, depending on what best fits a given problem. Progress takes place at different tempos on our team depending on the project, so you’ll need to be comfortable embracing both large leaps and incremental steps forward.

About You

  • 2-6 years of professional experience working in a data-rich environment in quantitative research
  • Team player with a highly collaborative mindset; communicate clearly and often and enjoy discussing research ideas and results in depth
  • Open to a variety of techniques and modes of thinking
  • Humble about what you do and don’t know; willing to admit mistakes
  • Enjoy learning new skills and teaching others what you know
  • Able to write code and analyze large datasets
  • Experienced with statistical and ML modeling
  • Knowledge of Python preferred, but not required
  • Background knowledge of financial markets is a plus

 

If you're a recruiting agency and want to partner with us, please reach out to agency-partnerships@janestreet.com.