Manager, Data Science

GoFundMeSan Francisco, CA
6h$187,000 - $281,000Hybrid

About The Position

GoFundMe is the world’s most powerful community for good, dedicated to helping people help each other. By uniting individuals and nonprofits in one place, GoFundMe makes it easy and safe for people to ask for help and support causes—for themselves and each other. Together, our community has raised more than $40 billion since 2010. We’re looking for a Data Science Manager to architect and lead the next generation of marketing data science at GoFundMe. This role will build and scale the foundations of applied data science and AI that empower our Marketing, Growth, and Finance teams to make high-confidence, ROI-positive investment decisions. You’ll serve as a player-coach for a talented group of experienced data scientists, driving innovation while ensuring excellence in delivery. Candidates considered for this role will be located in the San Francisco, Bay Area. There will be an in-office requirement of 3x a week.

Requirements

  • 8+ years of experience in data science roles with direct impact on marketing, growth, or revenue optimization.
  • Master’s or Ph.D. in a quantitative field (Statistics, Mathematics, Economics, Computer Science, Physics, Operations Research or related), or equivalent applied experience.
  • Advanced proficiency in Python (NumPy, pandas, scikit-learn) and SQL (window functions, optimization).
  • Deep experience with experimentation frameworks: A/B testing, causal inference, uplift modeling, and attribution models.
  • Proven success in forecasting, optimization, and budget allocation models for marketing and growth functions.
  • Hands-on with data platforms (Snowflake, Databricks) and BI tools (Looker, Tableau, or equivalent).
  • Strong data storytelling and executive presentation abilities.
  • Exceptional communication skills with the ability to influence executive stakeholders and translate data into actionable business recommendations.
  • Experience developing senior data scientists and elevating team practices.
  • Demonstrated ability to define a strategic vision for applied data science in marketing, balancing rapid experimentation with long-term infrastructure investments.

Nice To Haves

  • Familiarity with experimentation and web/mobile analytics platforms (Optimizely, GrowthBook, Google Analytics, Amplitude).
  • Experience integrating with marketing APIs (Google, Meta, programmatic platforms) for campaign optimization.
  • Prior exposure to generative AI or LLMs in marketing use cases (e.g., personalization, targeting, creative analysis).
  • Knowledge of multi-arm and contextual bandit algorithms for adaptive experimentation and continuous marketing optimization.
  • Familiarity with ML ops practices: version control, model monitoring, scalable ETL frameworks.

Responsibilities

  • Build a strong AI and data science foundation: Develop scalable pipelines, reusable modeling frameworks, and robust experimentation platforms to support marketing and growth decision-making.
  • Lead end-to-end data science & AI projects: From requirements gathering through feature engineering, modeling, validation, deployment, and monitoring.
  • Establish best practices: Champion standards in model governance, reproducibility, data quality, and system reliability to ensure sustainable and trustworthy AI adoption.
  • Drive marketing science innovation: Apply advanced methods—causal inference, uplift modeling, multi-touch attribution, and media mix modeling—to unlock insights and optimize spend.
  • Advance forecasting & ROI modeling: Deliver budget allocation frameworks and predictive models that guide long-term roadmap planning and marketing efficiency.
  • Partner cross-functionally: Work closely with Marketing, Growth, Product, Engineering, and Finance leaders to align analytics initiatives with revenue impact.
  • Invest in people: Mentor, coach, and elevate a team of high-performing data scientists; foster a culture of technical rigor, curiosity, and applied innovation.
  • Push the frontier of applied AI in marketing: Evaluate emerging generative and predictive AI approaches for audience segmentation, creative optimization, personalization, and campaign efficiency.

Benefits

  • Competitive pay and comprehensive healthcare benefits.
  • Financial assistance for things like hybrid work, family planning, along with generous parental leave, flexible time-off policies, and mental health and wellness resources to support your overall well-being.
  • Participate in learning, development, and recognition programs to help you thrive and grow.
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