Junior Data Scientist (DisplayR Experience Required)

Aspire
London
3 days ago
Create job alert

Are you a junior data candidate looking to pursue a career in data science? Then you could be the perfect fit for this agency in this Junior Data Scientist role!

Having a working knowledge of DisplayR is essential for this role.

JOB TITLE: Junior Data Scientist
SALARY: Up to £35k
LOCATION: London (Hybrid)


THE COMPANY

We are representing a consultancy that combines data analysis with creative insight to make complex information clear and actionable. They provide deeper consumer understanding, helping clients interpret audiences, refine strategies, and identify growth opportunities worldwide.

They are now looking to hire a Junior Data Scientist into their team to work with their clients with their research:

KEY DUTIES

Deliver accurate tables and reports, champion best practice, and identify improvements across all projects. Maximise DisplayR benefits, collaborate with development, and automate processes wherever possible for efficiency. Resolve "why are we doing this?" moments, spot patterns, and drive continuous quality assurance.

SKILLS & EXPERIENCE

Fluent with Displayr and Q, knowledge of SPSS, R, Python, Javascript, and data workflows. Curious problem solver spotting patterns, fixing issues, sharing knowledge, and improving processes consistently. Organised communicator and collaborator, managing shifting demands, translating jargon clearly, and working effectively in teams.

Interested in this Junior Data Scientist role? Apply now and let's have a chat!

We Are Aspire Ltd are a Disability Confident Committed employer

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