Junior Data Analyst

City of London
1 day ago
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I'm looking for a hands-on Data Analyst to join a leading banking client on an initial 6‑month contract. Ideal for a recent grad or early‑career analyst with strong technical ability.

Key Skills

Advanced Excel
Advanced SQL
Power BI (DAX, modelling)
Python (bonus)
Automation Anywhere experience is a big plus

Experience

Must have Financial Services experience (banking preferred)
Strong exposure to Data Quality (measurement, reporting, dashboards, analysis)
Able to work across large datasets and pick things up quickly

About You

Technical, analytical, proactive
Fast learner, comfortable with new tools/systems
1-3 years' experience or a grad with strong project work/internships

Please click to find out more about our Key Information Documents. Please note that the documents provided contain generic information. If we are successful in finding you an assignment, you will receive a Key Information Document which will be specific to the vendor set-up you have chosen and your placement.

To find out more about Huxley, please visit

Huxley, a trading division of SThree Partnership LLP is acting as an Employment Business in relation to this vacancy | Registered office | 8 Bishopsgate, London, EC2N 4BQ, United Kingdom | Partnership Number | OC(phone number removed) England and Wales

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