Staff Data Scientist

Xcede
London
3 months ago
Applications closed

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Staff Data Scientist
London - 2 days a week in the office
Up to £150k

Xcede have just started working with one of the Uks leading Insurtech firms. They have over a million insurance policies that are active right now and their employee satisfaction rating is through the roof! Wanting to bring together their technical vision, they are looking for a Staff Data Scientist with extensive experience and technical ability.
This highly autonomous role will involve working with cross-functional development teams, shaping End to end delivery and implementation of ML and AI models and also defining the best frameworks for a team of expert-level Data Scientists.

Requirements:
- 7+ years of experience in data science or ML engineering
- Strong product mindset
- Strong production and software engineering background
- Proven track record deploying real-time production models
- Help them build the next generation of ML/AI
If you are interested in this or other Data Scientist positions, please contact Gilad Sabari @ |

AMRT1_UKTJ

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