Head of Data Science (hands on) – FinTech

Wyatt Partners
London
2 months ago
Applications closed

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Head of Data Science (hands on) – FinTech

Head of Data Science role with a fast growth B2B FinTech company, backed by multiple Billionaires and major global investment firm.

You’ll join an existing team of 2 Data Scientists in a wider business of 35 staff currently, and report into the Chief Product Officer. The CEO is a former Data Scientist so you’ll be able to exchange notes!

The Head of Data Science will work on:

  1. Credit risk models: working with the Chief Risk Officer to create advanced machine learning models.
  2. Affordability models: using both bureau and open banking data, create transaction classification models and derive the amounts that are safe for each individual business to borrow.
  3. Product improvements: use predictive models to understand the key drivers behind the conversion funnel and work hand in hand with the CPO to tailor the customer experiences accordingly.
  4. Sales and distribution: use predictive models to understand which businesses in the UK are most likely to be interested by the company’s product and services.
  5. Data analytics tech: work with the CTO and software developers to create the best environment for data and analytics whether that’s to create rapid models that can be deployed in production or create a data lake using AWS Lake formation.

Apply now for this Head of Data Science role with rapid growth FinTech.

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