Fidelity Investments Logo

Fidelity Investments

Director, Data Science

Reposted 7 Days Ago
Be an Early Applicant
In-Office
Boston, MA, USA
126K-255K Annually
Senior level
In-Office
Boston, MA, USA
126K-255K Annually
Senior level
The Director of Data Science will lead AI/ML projects, ensuring their scalability and production readiness while collaborating across functions to drive business growth.
The summary above was generated by AI
Job Description:

Principal Data Scientist – Quantitative Decision Science & Advanced Analytics 

Are you interested in operating as a senior scientific leader—owning truth, rigor, and decision quality for complex business problems? Fidelity Institutional’s AI Center of Excellence (AI CoE) is seeking a Principal Data Scientist to serve as a highly tenured individual contributor and domain authority in data science, quantitative modeling, and advanced analytics. 

This role is intentionally Data Science–first, with emphasis on hypothesis‑driven analysis, statistical rigor, causal reasoning, and decision science. The Principal Data Scientist is accountable for what the model means, whether it is correct, and whether it should be trusted—not for building or operating production systems. 

 

The Team 

The Data Science function within the Fidelity Institutional AI CoE operates as the authority on measurement, experimentation, and quantitative decision‑making. The team comprises senior data scientists, statisticians, and quantitative researchers who partner closely with platform, product, BI, and business teams, while maintaining clear ownership of scientific rigor, evaluation frameworks, and analytical truth. 

As a Principal Data Scientist, you will operate as a scientific owner and mentor, influencing methodology, standards, and strategic direction across multiple initiatives. 

 

Key Responsibilities 

Advanced Data Science & Quantitative Modeling 

  • Lead hypothesis‑driven analyses to answer high‑impact strategic and business questions 

  • Design, develop, and evaluate statistical, econometric, and machine learning models where appropriate 

  • Ensure models are theoretically sound, empirically validated, interpretable, and fit‑for‑purpose 

  • Review and challenge modeling approaches for bias, stability, assumptions, and misuse 

Measurement, Evaluation & Decision Science 

  • Define how success should be measured for complex analytics and AI‑enabled initiatives 

  • Design robust evaluation frameworks including offline validation, back‑testing, and live measurement 

  • Ensure stakeholders can distinguish correlation from causation in analytical results 

  • Elevate analytics from prediction accuracy to decision quality and business impact 

Experimentation & Causal Inference 

  • Design and review experiments including A/B tests, quasi‑experiments, and observational studies 

  • Apply causal inference techniques (e.g., uplift modeling, DiD, matched controls) to assess incrementality 

  • Guide best practices for power analysis, inference, and result interpretation 

  • Serve as a subject‑matter expert on “What worked, why, and by how much?” 

Advanced Analytics Domains 

  • Segmentation & Clustering: Design statistically grounded, interpretable segmentations with clear hypotheses and stability checks 

  • Propensity, Likelihood & Uplift Modeling: Develop probabilistic and causal models to inform prioritization and intervention strategies 

  • Recommendation & Prioritization Analytics: Guide recommendation logic rooted in statistics, behavioral science, and optimization—not black‑box ML 

  • Behavioral & Journey Analytics: Analyze longitudinal behavior patterns to identify drivers, frictions, and causal levers 

  • Forecasting & Planning Analytics: Apply time‑series and probabilistic forecasting with uncertainty and scenario analysis 

  • Large Language Models & Generative AI: Design, evaluate, and implement LLM-based solutions — including RAG pipelines, classification, and extraction tasks — with rigorous benchmarking, calibration analysis, hallucination measurement, and bias auditing to ensure outputs are explainable. 

Scientific Leadership & Governance (Non‑Managerial) 

  • Act as a senior reviewer and methodological authority across data science initiatives 

  • Set informal standards for rigor, documentation, and reproducibility 

  • Mentor senior and mid‑level data scientists through technical guidance and peer review 

Business Partnership & Influence 

  • Translate complex quantitative results into clear, decision‑oriented narratives for senior stakeholders 

  • Challenge assumptions and narratives not supported by evidence 

  • Influence strategy by grounding discussions in data, causality, and expected impact 

 

Expertise and Skills You Bring 

Education & Experience 

  • Master’s or PhD in Statistics, Economics, Mathematics, Operations Research, Computer Science, or related quantitative discipline 

  • 10–14+ years of experience in data science, quantitative research, or advanced analytics 

  • Proven track record of owning complex analytical problems end‑to‑end (from question formulation to decision impact) 

Core Data Science & Scientific Expertise 

  • Deep expertise in statistics, probability, and experimental design 

  • Strong command of causal inference and incrementality measurement 

  • Solid grounding in forecasting, optimization, and decision science 

  • Demonstrated ability to assess modeling correctness, assumptions, and limitations 

Technical Foundation  

  • Advanced proficiency in Python for analysis and modeling (NumPy, Pandas, SciPy, Statsmodels, Scikit‑learn) 

  • Strong SQL skills and experience working with large analytical datasets (e.g., Snowflake) 

  • Handson proficiency with large language models and generative AI, including prompt design, retrievalaugmented generation, structured outputs, and agentic workflows, with demonstrated rigor in designing evaluations, defining taskspecific metrics, and applying statistical testing to assess reliability, calibration, hallucination risk, and incremental value over nongenerative approaches. Equally proficient in handson code development as well as the effective use of AIpowered coding assistants, applying both to accelerate analysis while maintaining correctness, reproducibility, and scientific rigor. 

Ways of Working 

  • Thinks like a scientist: hypothesis‑first, evidence‑driven, and principled 

  • High bar for rigor, interpretability, and defensibility of results 

  • Comfortable challenging senior stakeholders using data and logic 

  • Values clarity, elegance, and correctness over technical novelty 

  • Operates as a trusted expert rather than a delivery engineer 

 

How This Role Is Distinct 

  • Senior Individual Contributor: Tenured individualcontributor role with broad organizational influence  

  • Data Science–First: Focused on analytics, statistics, causality, and decision science 

  • Strategic Impact: Owns critical analytical questions that shape business decisions and investments 

The base salary range for this position is $126,000-255,000 USD per year.  

Placement in the range will vary based on job responsibilities and scope, geographic location, candidate’s relevant experience, and other factors.

Base salary is only part of the total compensation package. Depending on the position and eligibility requirements, the offer package may also include bonus or other variable compensation.   

We offer a wide range of benefits to meet your evolving needs and help you live your best life at work and at home.  These benefits include comprehensive health care coverage and emotional well-being support, market-leading retirement, generous paid time off and parental leave, charitable giving employee match program, and educational assistance including student loan repayment, tuition reimbursement, and learning resources to develop your career.  Note, the application window closes when the position is filled or unposted.

Please be advised that Fidelity’s business is governed by the provisions of the Securities Exchange Act of 1934, the Investment Advisers Act of 1940, the Investment Company Act of 1940, ERISA, numerous state laws governing securities, investment and retirement-related financial activities and the rules and regulations of numerous self-regulatory organizations, including FINRA, among others. Those laws and regulations may restrict Fidelity from hiring and/or associating with individuals with certain Criminal Histories.

Certifications:

Category:Data Analytics and Insights
HQ

Fidelity Investments Boston, Massachusetts, USA Office

245 Summer St, Boston, MA, United States, 02210

Similar Jobs

4 Days Ago
In-Office
Cambridge, MA, USA
137K-236K Annually
Senior level
137K-236K Annually
Senior level
Healthtech • Biotech • Pharmaceutical • Manufacturing
The role involves leading R&D in Neuroscience Data and AI for ophthalmology by utilizing multimodal data, AI, and clinical evidence to enhance drug discovery and clinical trials.
Top Skills: AIComputer VisionFundus ImagingMlOptical Coherence TomographyPythonR
4 Days Ago
In-Office
Cambridge, MA, USA
164K-283K Annually
Senior level
164K-283K Annually
Senior level
Healthtech • Biotech • Pharmaceutical • Manufacturing
The Director will lead innovative strategies leveraging multimodal data and AI to enhance drug discovery and patient outcomes in ophthalmology, collaborating across teams and developing novel digital endpoints.
Top Skills: AIComputer VisionDigital Health TechnologiesMlPythonR
16 Days Ago
In-Office or Remote
Le Petit Cambridge, Boston, MA, USA
162K-270K Annually
Expert/Leader
162K-270K Annually
Expert/Leader
Fintech • Information Technology • Analytics
The Director, Data Science oversees data-driven solutions, manages the Data Science team, and collaborates with business units and product development to implement advanced techniques. Provides strategic leadership and mentorship to enhance team effectiveness.
Top Skills: Artificial IntelligenceData ScienceDatabasesGoogle SuitesMachine LearningMS OfficeSoftware EngineeringStatistical Analysis

What you need to know about the Boston Tech Scene

Boston is a powerhouse for technology innovation thanks to world-class research universities like MIT and Harvard and a robust pipeline of venture capital investment. Host to the first telephone call and one of the first general-purpose computers ever put into use, Boston is now a hub for biotechnology, robotics and artificial intelligence — though it’s also home to several B2B software giants. So it’s no surprise that the city consistently ranks among the greatest startup ecosystems in the world.

Key Facts About Boston Tech

  • Number of Tech Workers: 269,000; 9.4% of overall workforce (2024 CompTIA survey)
  • Major Tech Employers: Thermo Fisher Scientific, Toast, Klaviyo, HubSpot, DraftKings
  • Key Industries: Artificial intelligence, biotechnology, robotics, software, aerospace
  • Funding Landscape: $15.7 billion in venture capital funding in 2024 (Pitchbook)
  • Notable Investors: Summit Partners, Volition Capital, Bain Capital Ventures, MassVentures, Highland Capital Partners
  • Research Centers and Universities: MIT, Harvard University, Boston College, Tufts University, Boston University, Northeastern University, Smithsonian Astrophysical Observatory, National Bureau of Economic Research, Broad Institute, Lowell Center for Space Science & Technology, National Emerging Infectious Diseases Laboratories

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account