Machine Learning Engineer New London, England, United Kingdom; New York, New York, United State[...]

Grahamcapital
London, GB
On-site

Why this role

Pace
Steady
Collaboration
High
Autonomy
Medium
Decision Impact
Team
Role Level
Individual Contributor

Derived from job-description analysis by Serendipath's career intelligence engine.

What success looks like

  • development of cutting-edge machine learning solutions
  • support of quant strategies
Typical background
undergraduate or higher degree in Computer Science or Engineering

Transferable backgrounds

  • Coming from data science
  • Coming from quantitative research

Skills & requirements

Required

Machine LearningData EngineeringTime Series AnalysisForecasting Models

Preferred

Quantitative ResearchPortfolio Management

Stack & domain

Machine LearningAITime SeriesForecasting ModelsQuant StrategiesState-of-the-art Machine LearningAdvanced Statistical MethodsInnovationProblem-solvingFinanceInvestment Management

About the role

Original posting from Grahamcapital

London, England, United Kingdom; New York, New York, United States; Norwalk, Connecticut, United States

Graham Capital Management, L.P. (\"Graham\") is an alternative investment manager founded in 1994 by Kenneth G. Tropin. Specializing in discretionary and quantitative macro strategies, Graham is dedicated to delivering strong, uncorrelated returns across a wide range of market environments. As one of the industry’s longest‑standing global macro and trend‑following managers, Graham remains committed to innovation, evolving its strategies through a robust investment, technology, and operational infrastructure. Graham harnesses the synergies between its discretionary and quantitative trading businesses to offer a broad suite of complementary alpha strategies, each built on the principles of thoughtful portfolio construction, active risk management, and diversification by design. Graham invests significant proprietary capital alongside its clients – including global institutions, endowments, foundations, family offices, sovereign wealth funds, investment management advisors, and qualified individual investors – reinforcing alignment of interests across all strategies.

The foundation of Graham’s sustainability and success is the experience and contributions of its people. The firm seeks to cultivate talent, encourage the diversity of ideas, and respect the contributions of all. In turn, each employee shares in the responsibility of strengthening those around them.

Description

Graham Capital Management, L.P. is seeking a ML Engineer to join our Data Science team, a future‑looking technical arm of Graham Capital. We envision, design, prototype and implement the processes that feed Quantitative Research and Discretionary Trading teams as well as the broader firm. We are passionate about what we do and welcome every opportunity to prove it.

The Data Science department straddles traditional Data Science and Engineering roles as well as the application of Machine Learning & AI. We work closely with Quant Researchers, Portfolio Managers, Operations and Execution to continuously improve upon our offering. Every day we work to transform our business through data, technology, and insights we provide our stakeholders.

At Graham Capital, our systems feed live models around the clock, span billions of market data ticks, an ever‑increasing corpus of news and other texts as well as a broad spectrum of financial and alternative data. Our objective is to support the research process by providing our stakeholders with all the right pieces to succeed in their jobs.

Responsibilities

You will be part of a growing team within Data Science. You will work alongside world‑class talent to find innovative solutions to some of the most interesting problems in the buy‑side. You will work closely with other areas such as Technology, Quantitative Research and Portfolio Manager groups as well as Risk and Operations to learn about problems they face with respect to data and ultimately develop cutting‑edge solutions. Your focus will be to dive deep into multiple data sets to understand relationships, develop time series, forecasting models, and support quant strategies, and provide new insights and leverage state‑of‑the‑art machine learning and advanced statistical methods to produce the best data sources for the fund.

This role requires commuting into the office Mondays through Fridays.

Requirements

  • Undergraduate or higher degree in Computer Science, Engineering, Operations Research, or other quantitative discipline
  • 3+ years of hands‑on experience with Machine Learning and Statistics on large, unstructured, data sets
  • Experience writing production code for multi‑client systems serving model results is a great plus
  • Ability to clearly communicate research findings to technical and nontechnical stakeholders
  • Full‑stack experience with Python (preferred) or C++, Spark/Scala, SQL or other distributed data processing technologies as well as experience working comfortably building and deploying services and models in containerized environments
  • Experience with scientific computing, statistics, optimization, time series, panel data, etc.
  • Comfortable handling multiple projects to solve varied problems working with multiple teams
  • Detail‑oriented mindset
  • Sense of ownership of his/her work, working well both independently as well as collaboratively

Base Salary Range

The anticipated base salary range for this position is $175,000 to $250,000. The anticipated range is based on information as of the time this post was generated. The applicable annual base salary or hourly rate paid to a successful applicant will be determined based on multiple factors, including without limitation the nature and extent of prior experience, skills, and qualifications.

Base salary or rate does not include other forms of compensation or benefits offered in connection with the advertised role.

Equal Employment Opportunity

GCM is committed to p

Source: Grahamcapital careers

Similar roles