Data Science Engineer - £500 a day (Inside IR35) - London

Salt
London
22 hours ago
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Data Science Engineer - £500/day - Inside IR35 - London (Hybrid)
We are currently seeking a

Data Science Engineer

to join a global technology organisation on a

contract basis . This role will focus on building

data-driven models to identify growth opportunities and improve sales performance

across a large customer base.
Working closely with senior stakeholders, you will analyse complex datasets, build predictive models, and deliver insights that directly influence business strategy and sales campaigns.
Key skills required:
Strong

SQL experience (5+ years)

working with complex datasets

Experience building and deploying

data science / predictive models

Experience with

customer segmentation, forecasting, or propensity modelling

Strong stakeholder communication skills

Python and Databricks experience desirable

Contract Details:
£500 per day (Inside IR35)

London / Hybrid working

Initial

6-12 month contract

If interested, please apply with your latest C
*Rates depend on experience and client requirements

TPBN1_UKTJ

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