Be an Early Applicant
Our ambition at Citadel is to be the most successful investment firm of all time.
The Role
Partner with quantitative researchers to design, build, optimize, and scale deep learning models and tooling for research and production. Work includes model architecture, distributed training, inference optimization, ML libraries, and high-performance computing to improve training speed, scalability, reliability, and cost-efficiency in systematic investing workflows.
Summary Generated by Built In
Job Description
About Global Quantitative Strategies (GQS)
Global Quantitative Strategies is the quantitative investment business of Citadel. Founded in 2012, GQS has rapidly grown into one of Citadel's core investment strategies and one of the top quantitative investment teams in the world. Collaborative teams of researchers, engineers, and traders work together to develop robust systems and advanced quantitative models that allow us to operate at scale and identify investment opportunities across global markets.
Machine Learning Engineers (MLEs) in GQS work at the intersection of deep learning, quantitative research, and high-performance computing. In this role, you will collaborate closely with Quantitative Researchers and Quantitative Research Engineers to design, build, optimize, and scale the models and modeling systems that power research and production workflows.
This is not a traditional infrastructure engineering role. MLEs are deeply embedded in the research process, partnering with researchers to understand modeling challenges, translate research ideas into scalable model architectures, and improve the performance, reliability, and efficiency of machine learning systems. You will work on model architecture, distributed training, inference optimization, research tooling, and internal ML libraries that enable the development and deployment of models across major asset products globally. The work directly supports the research and productionization of machine learning models used in systematic investing, including the development of new modeling approaches, the optimization of large-scale training workflows, and the creation of tools that help researchers experiment faster and more effectively.
Skills and Qualifications
We collect and use personal data in accordance with our Privacy Policy. We retain data on prospective candidates and may consider suitability for alternative opportunities at Citadel. For more information, see our Privacy Policy.
In accordance with applicable law, the base salary range for this role is $275,000 to $350,000.
In addition, the employee who fills this role will be eligible to participate in a discretionary incentive compensation program, as well as a wide array of benefit programs, such as medical and life insurance, retirement and tax-free savings plans, and access to other healthcare programs.
About Citadel
Citadel is one of the world's leading alternative investment managers. We manage capital on behalf of many of the world's preeminent private, public and nonprofit institutions. We seek the highest and best use of investor capital in order to deliver market leading results and contribute to broader economic growth. For over 30 years, Citadel has cultivated a culture of learning and collaboration among some of the most talented and accomplished investment professionals, researchers and engineers in the world. Our colleagues are empowered to test their ideas and develop commercial solutions that accelerate their growth and drive real impact.
About Global Quantitative Strategies (GQS)
Global Quantitative Strategies is the quantitative investment business of Citadel. Founded in 2012, GQS has rapidly grown into one of Citadel's core investment strategies and one of the top quantitative investment teams in the world. Collaborative teams of researchers, engineers, and traders work together to develop robust systems and advanced quantitative models that allow us to operate at scale and identify investment opportunities across global markets.
Machine Learning Engineers (MLEs) in GQS work at the intersection of deep learning, quantitative research, and high-performance computing. In this role, you will collaborate closely with Quantitative Researchers and Quantitative Research Engineers to design, build, optimize, and scale the models and modeling systems that power research and production workflows.
This is not a traditional infrastructure engineering role. MLEs are deeply embedded in the research process, partnering with researchers to understand modeling challenges, translate research ideas into scalable model architectures, and improve the performance, reliability, and efficiency of machine learning systems. You will work on model architecture, distributed training, inference optimization, research tooling, and internal ML libraries that enable the development and deployment of models across major asset products globally. The work directly supports the research and productionization of machine learning models used in systematic investing, including the development of new modeling approaches, the optimization of large-scale training workflows, and the creation of tools that help researchers experiment faster and more effectively.
Skills and Qualifications
- Bachelor's, Master's, or PhD degree in Computer Science, Engineering, Mathematics, Statistics, Machine Learning, or an equivalent technical field
- Strong programming skills in Python and experience with C++, CUDA, or other performance-oriented technologies
- Experience designing, implementing, training, or optimizing machine learning models, particularly deep learning models
- Strong understanding of model architecture, training dynamics, optimization techniques, and performance tradeoffs
- Experience working with PyTorch, TensorFlow, JAX, or similar machine learning frameworks
- Experience building or extending machine learning libraries, research tooling, model training systems, or distributed training workflows
- Ability to optimize ML workflows for training speed, inference performance, scalability, reliability, and cost efficiency
- Experience developing on a Linux stack and working in modern high-performance computing or distributed computing environments
- Ability to collaborate closely with researchers, understand open-ended research problems, and translate modeling needs into robust technical solutions
- Proven track record of solving complex technical problems with creativity, strong judgment, and attention to research impact
- Strong communication skills and the ability to work effectively across research, engineering, and infrastructure teams
- Interest in financial markets and applying machine learning to systematic investing
We collect and use personal data in accordance with our Privacy Policy. We retain data on prospective candidates and may consider suitability for alternative opportunities at Citadel. For more information, see our Privacy Policy.
In accordance with applicable law, the base salary range for this role is $275,000 to $350,000.
In addition, the employee who fills this role will be eligible to participate in a discretionary incentive compensation program, as well as a wide array of benefit programs, such as medical and life insurance, retirement and tax-free savings plans, and access to other healthcare programs.
About Citadel
Citadel is one of the world's leading alternative investment managers. We manage capital on behalf of many of the world's preeminent private, public and nonprofit institutions. We seek the highest and best use of investor capital in order to deliver market leading results and contribute to broader economic growth. For over 30 years, Citadel has cultivated a culture of learning and collaboration among some of the most talented and accomplished investment professionals, researchers and engineers in the world. Our colleagues are empowered to test their ideas and develop commercial solutions that accelerate their growth and drive real impact.
Skills Required
- Bachelor's, Master's, or PhD in Computer Science, Engineering, Mathematics, Statistics, Machine Learning, or equivalent
- Strong programming skills in Python
- Experience with C++, CUDA, or other performance-oriented technologies
- Experience designing, implementing, training, or optimizing machine learning models, particularly deep learning models
- Strong understanding of model architecture, training dynamics, optimization techniques, and performance tradeoffs
- Experience with PyTorch, TensorFlow, JAX, or similar ML frameworks
- Experience building or extending ML libraries, research tooling, model training systems, or distributed training workflows
- Ability to optimize ML workflows for training speed, inference performance, scalability, reliability, and cost efficiency
- Experience developing on a Linux stack and working in high-performance or distributed computing environments
- Ability to collaborate closely with researchers and translate open-ended research problems into technical solutions
- Proven track record of solving complex technical problems with creativity, strong judgment, and attention to research impact
- Strong communication skills and ability to work across research, engineering, and infrastructure teams
- Interest in financial markets and applying machine learning to systematic investing
Am I A Good Fit?
Get Personalized Job Insights.
Our AI-powered fit analysis compares your resume with a job listing so you know if your skills & experience align.
Success! Refresh the page to see how your skills align with this role.
The Company
What We Do
Together, we've turn ambition into action. For more than three decades, Citadel has captured undiscovered market opportunities in markets around the world by empowering extraordinary people to pursue their best and boldest ideas. We strive to identify the highest and best uses of capital to generate superior long-term returns for the world’s preeminent public and private institutions.
Why Work With Us
Brilliant and driven people flourish at our firm. They follow their passions and share their skills to help everyone learn and grow.
Gallery
Citadel Offices
OnSite Workspace
Typical time on-site:















