No items found.

Data Scientist

We are seeking a Data Scientist who will play a major role at driving decision making in all parts of the business by building analytical tools and optimisation models.

Key resposibilities

  • Build analytical tools and optimisation models that inform decision-making across all parts of the business, including Operations, Growth, Product and Finance
  • Apply fundamental data science methods and machine learning to inform improvements to our business
  • Build actionable KPIs, production-quality dashboards, informative deep dives, and scalable data products
  • Influence everyone in the company to drive more data-informed decisions

Must have requirements

  • 2+ years of relevant working experience in an analytical role involving data extraction, analysis, statistical modeling, and communicating insights into clear recommendations and actions
  • Experience in designing data schemas and developing procedures, functions and complex queries including multiple CTEs and aggregations in SQL (ideally PostgreSQL)
  • Experience applying quantitative methods to real-world problems
  • Experience using large datasets to build predictive models
  • Commercially minded, with the exceptional ability to put numbers into business perspective
  • Good vibes: Fostering team spirit; someone everyone enjoys and aspires to work with. A positive outlook, boundless energy and thrive on collaboration in startup environments

Nice to have:

  • Bachelor’s or Master’s degree in Computer Science, Operations Research, Mathematics or equivalent
  • Experience with R or Python, and developing interactive Jupyter notebooks for end users
  • Experience in e-commerce and logistics
We offer a remote-first culture, unlimited holidays and a competitive compensation package which includes an attractive base salary and stock options, depending on experience. This is a super exciting role and a critical hire for our team, as you will join our startup as one of the very first employees.


We received your submission, thank you!