Junior Data Scientist Data & ML Engineering Focus Remote UK Only

Salad
London
2 months ago
Applications closed

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About Us
SALAD is a social enterprise using Open Banking data to deliver fairer lending. We focus on smart data, not credit scores.
Role Summary
Hands-on Junior Data Scientist role working with SQL, Python, data pipelines, and early ML. Great for someone with a STEM background looking to grow fast.
What Youll Do
Build data pipelines (SQL/Python)
Support model development + deployment
Create datasets + dashboards
Improve data quality + documentation
Work with engineers on APIs and data products
What You Need
STEM degree or equivalent
Strong SQL, solid Python
Interest in ETL/ELT, Git, APIs
Clear communicator
Power BI/cloud experience = bonus
Curious + analytical mindset
What We Offer
Competitive salary + 10% bonus
Pension contribution
Private health insurance
Fully remote with occasional team days
Other Info
Must have right to work in the UK
We welcome all applicants and provide reasonable adjustments
Data handled under UK GDPR
Full JD in the application link. No agencies.

TPBN1_UKTJ

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