Analyst Engineer

at Thanx
  • Remote - South America

Remote

Software Development

Mid-level

Job description

Remote - South America

Who Are We?

Thanx is a leading loyalty and guest engagement platform for restaurants. Thanx helps regional and national restaurant brands grow customer lifetime value with easy-to-use lifecycle marketing automations and innovative customer loyalty tools focused on access, status, and personalization over rote discounts. Thanx’s proprietary credit card tokenization technology dramatically increases the volume and accuracy of purchase data which sits at the core of our CRM suite of tools and our app and web-based ordering experiences deliver industry-leading conversion and repeat purchasing. We were named to Nation’s Restaurant News “2020 Power List” as one of the 50 most influential innovators in food-service.

Thanx has gained the investment of prominent venture and growth equity luminaries, having raised more than $30M from elite investors such as M33 Growth, Ribbit Capital, and Sequoia Capital. Core to our success is a culture that has attracted some of the best talent from across the country; we are proud of incredibly strong employee tenure, track record of internal promotions, and impressive alumni network. We credit our cultural “core behaviors” with these accomplishments: Think Boldly, Execute Reliably, Focus on What Matters, Say “Thanx” Genuinely, Welcome Diverse Perspectives, and Empathy Over Ego.

What You’ll Do:

  • Own data integration from both first-party and third-party sources using tools like Fivetran, ensuring clean, reliable data lands in our Snowflake data warehouse.
  • Build, maintain, and optimize dbt models that transform raw data into clean, documented, analytics-ready tables.
  • Define and manage LookML models to make transformed data accessible and intuitive for analysts in Looker.
  • Partner closely with data analysts to ensure the right data is available, performant, and structured for business-critical reporting and insights.
  • Validate and QA analytical outputs, supporting the integrity and accuracy of the dashboards and analyses delivered across the company.

Who You Are

  • You have 1–3 years of experience in data modeling, analytics engineering, or a similar role.
  • You’re fluent in SQL and comfortable navigating complex data relationships and transformations.
  • You’ve worked with modern data stacks — ideally including Fivetran, dbt, Snowflake, and Looker (or similar tools).
  • You enjoy building clean, well-documented datasets that help analysts move fast and stay confident in their results.
  • You collaborate well with others and understand how to translate analytical needs into technical implementation.
  • You’re detail-oriented, reliable, and care deeply about data quality and structure.

Bonus Points

  • Experience with LookML and designing scalable, intuitive data explores in Looker.
  • Familiarity with dbt best practices — modular models, testing, documentation, etc.
  • Exposure to data observability or testing frameworks to ensure model reliability and trust.
  • Hands-on experience with predictive modeling or machine learning to support use cases like customer segmentation or churn prediction.
  • Interest in the restaurant or hospitality space — experience working with restaurant data is a plus. More generally, experience working with consumer data and commerce of any type is a plus.

Ready to change your life? Apply now!

We are proud to be an Equal Employment Opportunity company. We do not discriminate based on race, religion, color, national origin, gender (including pregnancy, childbirth, or related medical conditions), sexual orientation, gender identity, gender expression, age, status as a protected veteran, status as an individual with a disability, or other applicable legally protected characteristics. Thanx will consider qualified applicants with arrest or conviction records for employment in a manner consistent with local requirements.

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