The MarTech Data Science team drives performance marketing efficiency through advanced measurement, optimization, and scalable modeling.
We operate in a highly complex and ambiguous environment where:
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Ground truth is often unobservable (incrementality vs attribution)
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Clean experimentation is not always feasible
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Decisions must be made under uncertainty with imperfect data
We build solutions for budget allocation, incrementality measurement, and bidding, enabling the business to invest each euro where it generates the highest impact.
YOUR MISSION
We are looking for a Data Scientist to own models and features end-to-end within larger MarTech initiatives, and contribute to the team's measurement and optimization solutions. Operating at a global level, you will design solutions that serve the entire Delivery Hero portfolio, including brands like Glovo, Talabat, and PedidosYa. You will work autonomously on well-defined problems and collaborate closely with senior team members on more ambiguous ones.
This role requires solid foundations in causal inference and modeling, combined with the ability to communicate clearly with technical and non-technical stakeholders and translate marketing problems into reliable, production-grade solutions.
THE JOURNEY
Own features and components end-to-end within MarTech measurement & optimization
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Take ownership of models and features inside larger initiatives, from data exploration to production deployment
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Contribute to defining success metrics and modeling approaches, with senior guidance on more ambiguous problem framings
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Balance methodological rigor with business constraints and timelines
Contribute to decision frameworks under ambiguity
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Help translate marketing questions into structured, model-driven analyses
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Operate in environments where experimentation is limited or infeasible, applying established methods across MMM, experiments, and observational analysis
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Make and document assumptions explicitly, and flag their impact on decisions
Support decision-making under uncertainty
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Provide clear analyses despite imperfect measurement, articulating trade-offs and limitations
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Identify conflicting signals (e.g., attribution vs incrementality vs MMM) and discuss them with senior team members
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Ensure outputs are actionable and aligned with real business constraints (budget caps, pacing, channel dependencies)
Apply methodological rigor and contribute to validation
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Contribute to and apply frameworks across MMM, incrementality testing (geo experiments, synthetic control), bidding, and/or LTV
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Apply validation strategies in the absence of ground truth (cross-method validation, backtesting, sensitivity analysis)
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Follow team standards for statistical rigor, interpretability, and reproducibility
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Participate in knowledge sharing within the chapter and team
Communicate effectively with stakeholders
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Translate modeling outputs into clear narratives for non-technical stakeholders
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Communicate with squad-level stakeholders, adapting abstraction level appropriately
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Address questions on model outputs with appropriate context and honesty about limitations
Build production-grade systems
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Develop reliable, maintainable solutions with good standards in testing, monitoring, documentation, and reproducibility
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Work closely with Engineering and Product to deploy and improve systems
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Ensure long-term usability of models as decision products, not just analyses