← CarreiraAI
Greenhouse
Remoto

Senior Marketing Analytics Engineer

Gympass · Brazil (Remote)

Publicada em 01/07/2026

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p strong Your wellbeing, our mission. Join a company shaping a healthier world. /strong /p p strong GET TO KNOW US /strong /p p At Wellhub we're revolutionizing workplace wellness. Our platform connects employees worldwide to the best partners for fitness, mindfulness, therapy, nutrition, and sleep—all in one simple subscription. Headquartered in NYC with team members in Europe, North America and South America, we’re on a mission to make every company a wellness company. /p p We believe work should be fulfilling, inspiring, and balanced. Here, you’ll find a team that values wellbeing, collaboration, and different perspectives, where passion and creativity push boundaries to create real impact. Your contributions will help shape a healthier, more balanced world for you and millions of people globally. nbsp; /p p strong Join us in redefining the future of wellbeing! /strong /p p nbsp; /p p strong THE OPPORTUNITY /strong /p p We are hiring a strong Senior Marketing Analytics Engineer /strong to our Marketing team in Brazil! nbsp; /p p The Marketing Analytics Engineer (AI) is an embedded analyst position, a hybrid role combining data engineering, marketing data analysis, and applied AI skills. This individual supports the Marketing Analytics team by building and maintaining the data infrastructure that enables business teams to analyze campaigns and overall marketing performance, while also expanding that infrastructure to power AI-driven analytics tools. /p p Responsibilities span data modeling, pipeline management, data architecture, predictive analysis, and the design of machine-readable business context that makes AI agents accurate and trustworthy. This role collaborates closely with teams across the company (including Global Analytics, Product Development, Martech, and Sales Operations) to ensure data-driven insights effectively drive business growth and strategic initiatives. /p p nbsp; /p p strong YOUR IMPACT /strong /p ul li Data Engineering amp; Architecture — Own the foundational marketing data layer. You will design, build, and maintain the data pipelines that transform raw marketing sources into optimized dimensional models (utilizing Medallion architecture), delivering clean, report-ready tables for downstream business intelligence and analytics; /li li strong Predictive Analysis /strong — Develop and apply statistical and predictive models to forecast key marketing funnel metrics, identify areas for improvement, and inform strategic decision-making; /li li strong Marketing Attribution /strong — Support the design and implementation of marketing attribution models to accurately measure channel and campaign contribution; /li li strong Data Quality amp; Governance /strong — Ensure data reliability through monitoring, validation, cleansing, and adherence to data governance policies; /li li strong Documentation amp; Versioning /strong — Maintain thorough documentation of the marketing data ecosystem and version data projects in GitHub; /li li strong Semantic Layer for AI /strong — Maintain and extend BI data models (LookML and/or dbt preferred) enriched with metadata, business context, and structured definitions that make them consumable by AI agents and natural language analytics interfaces; /li li strong Reusable AI Skills amp; Workflows /strong — Build reusable AI skills, tools, and workflows that allow analysts and stakeholders to interact with governed data through natural language interfaces; /li li strong AI Quality Assurance /strong — Run structured test cycles to validate AI agent output accuracy, identify regressions, and maintain quality standards as models and data evolve; /li li strong Data Standards for Responsible AI /strong — Contribute to metadata standards and responsible AI guidelines that govern how marketing data is surfaced through automated and AI-assisted analytics. /li /ul p strong br WHO YOU ARE /strong /p ul li 3–5 years in analytics engineering, data engineering, business intelligence, or
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