Data Scientist

Spectrum It Recruitment Limited
Maidenhead
1 week ago
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Data ScientistMaidenhead - 3 Days On SiteUp to £64,000 + Bonus & BenefitsOur client is a global leader in enterprise management software solutions, specialising in helping businesses across the retail and consumer services sectors to optimise operations, manage data, and drive customer loyalty.They are seeking a talented Data Scientist to analyse complex data sets, develop predictive models, and deliver actionable insights that support their cutting-edge solutions.This is an exciting opportunity to work with a forward-thinking organisation that values collaboration, innovation, and the impact of data-driven decision-making on a global scale.Key Responsibilities:Analyse large data sets to identify trends and generate actionable insights.Develop and optimise machine learning models to address business challenges.Collaborate with data engineering teams to ensure data quality and efficiency.Present findings to both technical and non-technical audiences.Mentor junior team members and contribute to the growth of the data science team.Qualifications:Bachelor's degree in Data Science, Statistics, Mathematics, or a related field.2+ years of experience in a data science or analytics role.Proficiency in Python or R, SQL, and data visualisation tools.Experience with machine learning models and statistical analysis.Preferred Skills:Familiarity with AWS and experiment design.Strong problem-solving and communication skills.What's on Offer:Join a global leader driving innovation and efficiency in a dynamic industry. This role offers the chance to make a meaningful impact on leading brands and millions of customers worldwide, while advancing your career in a collaborative and innovative environment.How to Apply:If you're ready to take your data science career to the next level and thrive in a global organisation, apply today!Spectrum IT Recruitment (South) Limited is acting as an Employment Agency in relation to this vacancy.TPBN1_UKTJ

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