Senior Data Scientist

Wyatt Partners
London
6 months ago
Applications closed

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Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

A Senior Data Scientist is required for an established online fashion brand, which has experienced strong growth in revenues and new markets over the last 2 years.

What’s great about this Senior Data Scientist role?

  • Opportunity to join an established data science team developing some of the most advanced products in the industry.
  • The company has rich, untapped customer data, offering significant opportunities to create value.
  • Collaborate closely with world-class engineers to develop a new data warehouse.
  • Budget and bandwidth available to develop new products and services, utilizing the best commercial software.
  • Work directly with the CMO, Chief Data Scientist, and the founder of the business (an MIT graduate).
  • Require top-class statistical skills.
  • Proficiency in Python, SQL, R.
  • Typically, candidates will have a very numerate degree or master's, possibly even a Quantitative PhD.
  • Experience working with large customer databases and datasets, with examples of business value created.
  • Experience in a Pricing capability would be advantageous.

This role offers the right candidate the chance to develop their career and be recognized as a top performer and international expert in their field.

The Senior Data Scientist will join a rapidly growing, established brand.

Click on the link to apply now for this exciting opportunity.


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