Senior Data Scientist
Fliff
Austin, TX
Salary:
π₯ sports
Data Engineer
Fliff unpacks sports gaming into social, free-to-play games for all types of sports fans. We've built a social sports gaming experience that allows users to compete for leaderboard positioning, to achieve badges and build their status within the game.
We are pioneering play-for-fun sports gaming, with our flagship social sportsbook experience that includes sweepstakes promotions and loyalty rewards. We provide sports fans with fun, engaging, and free-to-play alternatives to real money gaming.
Fliff is redefining the sports gaming experience by blending the fun of social play with the thrill of real-money competition. What began as a pioneering social sportsbook has evolved into a multi-vertical platform that is the fastest-growing brand in sports gaming. As we continue to expand, weβre building a world-class ecosystem of sports gaming experiences that span social, sweepstakes, and real-money formats, giving every type of fan a way to play, compete, and connect.
Β
The Role:
We're hiring a Senior Data Scientist to embed within the marketing and growth function. You'll be the analytical backbone of how we acquire, retain, and grow our user base β building the models, dashboards, and analyses that drive smarter spend, sharper targeting, and a deeper understanding of our players. A core part of this role will be measuring the true impact of our marketing and promotional investments: not just short-term lifts, but the long-term effect on player behavior, retention, and lifetime value.
This role sits at the intersection of data engineering, modeling, and storytelling. You'll work directly with marketing, product, and finance leaders to turn raw behavioral and campaign data into decisions that move the business β and you'll own a problem end-to-end, from pulling and cleaning the data, to building the model, to presenting the insight to stakeholders.
Key Responsibilities:
Build and maintain predictive models that drive marketing strategy, including player LTV, churn risk, CAC payback, and propensity-to-convert models
Own marketing attribution and incrementality analysis across paid channels (Meta, Google, TikTok, affiliates, influencers, etc.), helping the team understand what's actually driving growth
Quantify the causal impact and long-term business value of promotions, bonuses, and lifecycle campaigns, moving beyond surface-level engagement metrics to measure true incremental retention, monetization, and LTV impact
Apply causal inference techniques (geo experiments, synthetic control, diff-in-diff, CausalImpact, uplift modeling) to evaluate marketing investments where clean A/B tests aren't possible
Partner with growth marketers to design, run, and read out experiments: A/B tests, geo-tests, holdout studies, and creative tests
Develop and maintain dashboards and self-serve reporting that give marketing leaders real-time visibility into channel performance, cohort behavior, promo ROI, and funnel health
Clean, structure, and validate data across our marketing stack (ad platforms, MMP, internal event data, CRM) and partner with data engineering to improve our data models where needed
Translate complex analyses into clear, actionable recommendations for non-technical stakeholders
Continuously look for opportunities to automate, improve, and scale how the marketing team uses data
What We're Looking For:
5+ years of experience as a data scientist, marketing analyst, or growth analyst, ideally in a consumer app, gaming, fintech, or subscription business
Strong SQL skills and comfort working with large, messy behavioral datasets
Hands-on experience building predictive models in Python (LTV, churn, propensity, segmentation, etc.) using libraries like scikit-learn, XGBoost, or similar
Experience evaluating the long-term and incremental impact of marketing and promotional spend: you understand the difference between who responded and who was actually influenced
Working knowledge of causal inference methods (diff-in-diff, synthetic control, CausalImpact, uplift modeling, propensity scoring) and when to apply each
Solid grounding in marketing measurement concepts: attribution (MTA, MMM basics), incrementality, holdouts, cohort analysis, and unit economics (CAC, LTV, payback)
Experience with experimentation: designing tests, sizing them, and reading them out with statistical rigor
Proficiency with at least one BI/visualization tool (Looker, Tableau, Mode, Sigma, etc.)
Strong communication skills: you can explain a model to a marketer and a campaign result to a CFO with equal clarity
A bias toward action: you'd rather ship a useful 80% answer this week than a perfect one next quarter
Nice to Have:
Experience with mobile measurement partners (AppsFlyer, Adjust, Singular) and/or paid media APIs
Familiarity with cloud data warehouses (Snowflake, BigQuery, Redshift) and dbt
Background in gaming, sports betting, fantasy sports, or another high-velocity consumer category
Experience modeling promo and bonus economics in a gaming, fintech, or e-commerce context
Benefits:
Competitive compensation package, including base salary, benefits, and equity.
Unlimited/Flexible paid time off.
Health benefits, including medical, dental, and vision coverage, as well as generous parental leave.
Employee-sponsored 401(k).
Extras:
$500 work-from-home stipend + Equipment & Accessories.
Work Remotely.
Opportunity for professional development in a dynamic, global setting.
A supportive, collaborative, and knowledge-driven workplace. An engaging and challenging role with the freedom to innovate and develop effective solutions.
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