
The Quantitative Developer role sits at the intersection of software development, quantitative financial modeling, economics research, and portfolio analytics. This role offers the opportunity to design and implement reusable, high-quality analytical software that supports the firm’s senior investment professionals and decision-makers globally.
This position sits within the Global Technology and Services organization, reporting to the Head of Global Enterprise Solutions. The Quantitative Developer will be functionally embedded with researchers and analysts within Global Research and Investment Strategy (GRIS). As a critical part of Global Research’s long-run strategy, they will develop software to maximize the reuse and deployment breadth of current and future research.
The primary mission of the Quantitative Developer is to work with researchers, analysts, and technology stakeholders to build long-term scalable tools that empower the decision making of investment professionals, risk managers, and executives.
In-Office Requirement: 4 days per week
Collaborate with researchers and serve as the engineering voice in an iterative process as research progresses from concept to POC to production and support.
Engage in two-way dialogue and feedback with researchers when creating production software, conveying opportunities for enhancements as well as considerations around deployment, reuse, and scalability.
Work closely with researchers and analysts to acquire a conceptual understanding of the underlying research for the purposes of applying and extending models across multiple use cases.
Use research prototypes and models as the basis for well-tested and documented libraries and services. Design and document APIs for shared models to power dashboards, automated reporting, and other tools.
Produce clear technical documentation on models, including taking point on overall documentation structure, working with researchers to produce documentation on math and calculation methodology, and authoring technical documentation on the implementation.
Design, produce, and document automated tests that verify numerical equivalence (within tolerance thresholds) between developed production code with research outputs. Work closely with researchers to review and trace variations and participate in research model review and sign-off.
Fit internal and external team software within the firm’s broader enterprise data architecture. Work with technology leaders on data governance for centralized stores of financial data, interfacing between technology and research to develop schemas and document calculation methodologies.
Support researchers and analysts in data and reporting inquiries, identifying and collaborating on automation initiatives.
Engineer packages and service endpoints to maximize reuse and robustness of current and future research artifacts and internal team tools.
Adhere to Carlyle’s coding best practices and cybersecurity standards. Participate in Caryle’s AI Engineering Community of Practice.
Education & Certificates
Professional Experience
Competencies & Attributes
Benefits/Compensation
The compensation range for this role is specific to Washington, DC and New York, NY and takes into account a wide range of factors including but not limited to the skill sets required/preferred; prior experience and training; licenses and/or certifications.
The anticipated base salary range for this role is $180,000 to $210,000.
In addition to the base salary, the hired professional will enjoy a comprehensive benefits package spanning retirement benefits, health insurance, life insurance and disability, paid time off, paid holidays, family planning benefits and various wellness programs. Additionally, the hired professional may also be eligible to participate in an annual discretionary incentive program, the award of which will be dependent on various factors, including, without limitation, individual and organizational performance.
Due to the high volume of candidates, please be advised that only candidates selected to interview will be contacted by Carlyle.