Junior Data Analyst

London
4 days ago
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Junior Data Analyst
Hybrid - London - 3 days a week
£35,000 - £40,000 + Bonus & Benefits

Our client is a FTSE 100 organisation that invests in and scales businesses across a diverse range of industries. They're looking for a Junior Data Analyst to join their Digital Solutions team. Reporting into the AI/Data Science Specialist, this will be a hands-on, learning-focused role where you'll be supporting across a portfolio of digital projects spanning AI, IoT, analytics and operational improvement.

You'll need to be a recent graduate with a degree in a related field like Data Science, Computer Science, Mathematics, Statistics etc. You'll also need to be skilled in data preparation, exploratory analysis and visualisation. Having experience with Machine Learning is beneficial as you'll contribute towards experimentation, validation and structured analytical work. You must be an excellent communicator as you'll work with technical and nontechnical stakeholders across the organisation.

We're looking to speak with candidates who:

A recent graduate (or 1-2 years' experience) in Data Science, Computer Science, Mathematics, Statistics or a related field
Have hands-on experience with Python or similar data tools
Understand core machine learning concepts
Have experience with data visualisation tools
Are highly organised, detail-oriented and capable of maintaining structured documentation

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