Senior Data Scientist - Up to £150k

Oliver Bernard
City of London
8 months ago
Applications closed

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Job Description

Data Scientist - Series A Funded Start-Up

Pays £100k-£150k

3-days a week in London offices


Data Scientist - Python, SQL, AWS, BI & Data Pipelines


OB are partnered with a Series A funded, E-Commerce Start-Up looking for a highly talented Data Scientist to join their expanding Data function, where Data is at the heart of everything they do.


In this role, you'll build upon their existing Data Infrastructure, build Data Pipelines, whilst improving Data quality, warehouse efficiency whilst working with a variety of stakeholders across the business.


Data Scientist - Python, SQL, AWS, BI & Data Pipelines


Required skills and experience:


Prior experience working in high-growth environments, ideally start-ups or scale-ups

3+ years of commercial experience in a Data Science role

Strong skills with Python & SQL

DBT, Snowflake & AWS

Data Pipelines and BI expertise


Experience working in high-growth, start-up & scale-up evironments is highly preferred.


Pays £100k-£150k + meaningful equity and a great package

3-days a week Required in London based offices

To be considered, you must be UK based and Visa Sponsorship is not provided...

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