Data Scientist

Euston
1 month ago
Applications closed

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London - Hybrid
Salary £70-75,000 +20% Bonus

We're hugely excited to be working exclusively alongside a global Food & Beverage organisation, partnering their search for two talented Data Scientists. You can expect ahuge amount of autonomy and general appetite for Data Science in the wider business, as this award-winning group look to upscale their Data Science & AI arm.

What you can expect:

A very greenfield landscape to work on; working closely with individual teams to understand, model, and ultimately apply the best use of Data Science. As such, you can expect a fair bit of internal stakeholder management as you understand team briefs.
A huge amount of support from the Head of AI and wider tech team. They've recently bolstered the team with some hugely influential AI leaning hires, meaning the general Data Science roadmap is filled with exciting projects and support from the wider business.
For your Data Science skills to grow exponentially. You'll no doubt be spinning a lot of plates, but you can expect to be working on a huge variety of technical projects, working in tandem with the wider AI team.

Desired background/ skillset:

You'll have a solid couple of years creating and delivering advanced analytical projects and advanced modelling techniques using Python & SQL. Bonus points for exposure to Databricks!
You'll likely be someone adept at spinning multiple plates at once and experienced in taking project briefs in some capacity.
A natural Data storyteller, someone who loves to use their technical toolkit to create compelling data driven stories.

This is one of the most varied and equally exciting Data Science roles we've worked in a while. If you feel this could be well suited, please apply with an up to date CV and we can take it from there

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