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Data Scientist, Pricing

Job in San Francisco, San Francisco County, California, 94199, USA
Listing for: GoFundMe
Full Time position
Listed on 2026-02-23
Job specializations:
  • IT/Tech
    Data Scientist, Machine Learning/ ML Engineer, Data Analyst, Data Science Manager
Salary/Wage Range or Industry Benchmark: 179500 - 269500 USD Yearly USD 179500.00 269500.00 YEAR
Job Description & How to Apply Below
Position: Staff Data Scientist, Pricing

Overview

Go Fund Me  is the world’s most powerful community for good, dedicated to helping people help each other. By uniting individuals and nonprofits in one place, Go Fund Me  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 Staff Data Scientist, Pricing to drive the science, strategy, experimentation and AI deployment behind pricing and yield optimization s role sits at the intersection of economics, behavioral science, experimentation, and machine learning, with direct responsibility for optimizing donation conversion, donation amounts, and donor experience across the product.

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.

Responsibilities
  • Own donation pricing and amount optimization end-to-end: Define the analytical strategy, modeling frameworks, and success metrics for pricing recommendations across product surfaces, balancing conversion, donation amounts, and long-term donor trust.
  • Model human behavior using economics and AI: Apply economic theory, behavioral science, and machine learning to understand donor decision-making, estimate elasticity, and predict responses to changes in product design and choice architecture.
  • Leverage non-transactional behavioral signals: Model sparse and indirect signals (e.g., navigation, hesitation, context, device, timing) to detect shifts in intent and interaction patterns beyond observed transactions.
  • Build adaptive and reinforcement-aware systems: Design models that learn over time using experimentation signals, feedback loops, and reinforcement concepts (e.g., contextual bandits or sequential decision-making) where appropriate.
  • Lead experimentation and causal learning: Partner with Product and Engineering to design robust experimentation and measurement frameworks, ensuring pricing and donation models are causal-aware, interpretable, and safe to deploy at scale.
  • Incorporate external data and context: Augment behavioral models with external datasets (macroeconomic indicators, seasonality, regional or temporal signals) to better understand and anticipate donor behavior.
  • Translate insights into action: Convert complex economic and behavioral analyses into deployable models, clear product recommendations, and measurable business impact.
  • Influence through storytelling and leadership: Communicate insights effectively to senior leaders, humanize donor behavior through narrative, and serve as a trusted thought partner on pricing and donation strategy.
  • Raise the technical bar: Set best practices for modeling rigor, validation, monitoring, and iteration; mentor other data scientists and elevate pricing science across the organization.
You Experience & Education
  • Either a Ph.D. in Economics, Applied Economics, or a closely related quantitative field, demonstrating the ability to push the boundaries of applied research and translate theory into practical modeling approaches OR 8+ years of industry experience in data science, applied economics, pricing, marketplace optimization, or monetization at a high-tech digital company, with a proven track record of owning and scaling pricing or decisioning systems.
  • Deep experience applying economic reasoning, causal inference, and behavioral modeling to real-world decision-making problems.
  • Demonstrated ability to own ambiguous, high-impact problems and deliver measurable business outcomes.
Core Skills
  • Strong foundation in econometrics, causal inference, and behavioral modeling.
  • Deep understanding of price elasticity, choice modeling, and decision science.
  • Experience modeling noisy, sparse, or non-transactional behavioral data.
  • Hands-on experience designing and interpreting experiments and causal signals.
  • Familiarity with reinforcement learning, bandits, or adaptive optimization concepts (applied or research-driven).
Technical Skills
  • Advanced proficiency in Python (pandas, Num Py, scikit-learn, PyMC/Stan or equivalent) and SQL, with the ability to build, validate, and iterate on complex analytical and modeling…
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