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Data Science Lead

Aspire
Leeds
1 week ago
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Are you looking to join an award-winning and independent agency, who have an excellent culture? Then you could be the perfect fit for this agency in this flexible role!

JOB TITLE: Data Science Lead
SALARY: Up to £60k
LOCATION: Leeds (2/3 days in the office)

THE COMPANY

We're excited to represent an award-winning agency that has consistently been recognised for both its outstanding work and vibrant company culture. This is a unique opportunity to collaborate with some of the UK's most renowned brands while being part of a team dedicated to providing top-tier strategic insights that help clients overcome their biggest challenges and make informed decisions.

With cutting-edge research techniques and innovative, in-house approaches, this agency delivers impactful solutions on fast-paced, high-profile projects across various sectors. Their adaptability and client-focused mindset allow them to meet a wide variety of needs.

If you're looking to make your mark at a forward-thinking agency, this is your chance.

.KEY DUTIES

Lead advanced analytics on projects and advise clients on data science methods and infrastructure improvements. Expand data capabilities through AI, synthetic data, and strategic innovations to future-proof service offerings. Upskill team via training sessions, improving data literacy and best practices in analytics techniques

SKILLS & EXPERIENCE

Extensive data science experience in research settings, using advanced analytics like max-diff, KDA, conjoint, regression and segmentation techniques. Proficient in tools such as Python, SQL, SPSS, R, Q; skilled with survey, behavioural, and first-party data for insights. Strong communicator with analytical mindset; independently manages multiple projects and embraces innovation and new technologies.

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

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We Are Aspire Ltd are a Disability Confident Commited employer

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