Data Analyst

Mount Pleasant, Greater London
5 months ago
Applications closed

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Orion is partnered with a leading renewable energy business that is rolling out advanced data solutions across its operations. We are recruiting a forward-thinking and driven Data Analyst to join their Information Management team.

The successful candidate will turn complex data into actionable insights, build dashboards, and develop AI agents to improve productivity across the business.

Data Analyst Benefits:

Competitive Salary £50,000 – £60,000
26 days annual leave bank holidays
Hybrid working – 3–4 days in the office 

Data Analyst Duties:

Build and maintain Power BI dashboards and data models
Connect to and manage data sources within Microsoft Azure & data lakes
Use Python for complex queries to improve data accuracy and automation
Support engineers in adopting AI tools to create SOPs and solve operational issues
Ensure data quality and consistency across all platforms 

Data Analyst Required Experience:

Power BI, DAX, and data modelling experience
Microsoft Azure (data lakes, SQL)
Ability to manage multiple projects concurrently
Python for data queries and automation – advantageous
Interest in renewable energy is a bonus but not essential 

If you like the look of this Data & AI Analyst role, then click and apply, or, for further information, please contact Jamie Garcia-Courtice –

INDMAN

Due to the volume of applications we receive, unfortunately, we are not able to respond to every application personally, so if you have not heard back from us within 5 working days, please assume your application has been unsuccessful. To see our other available vacancies please visit our website

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