Trainee Data Analyst

Alfred Rennox
London Borough of Bexley
1 year ago
Applications closed

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Our client, a top player in the IT and tech industry, is looking for a highly detail-oriented and motivated Trainee Data Analyst. This is an incredible opportunity to start your data analytics career with hands-on experience and mentorship, working closely with industry experts in a dynamic environment.Key Responsibilities * Assist in data collection, analysis, and interpretation to support key business decisions. * Collaborate with senior data analysts to create insightful reports, dashboards, and visualizations. * Ensure data quality by identifying inconsistencies and resolving data issues. * Participate in cross-functional discussions to turn business needs into data-driven solutions. * Support automation initiatives to streamline data processes and enhance reporting.Ideal Candidate * Recent graduate with a degree in Mathematics, Computer Science, Statistics, Data Science, or similar fields. * Analytical mindset and eagerness to dive deep into data to uncover trends and insights. * Knowledge of tools like SQL and Excel (experience with data visualization tools such as Tableau is a plus). * Strong communication skills for presenting data insights to non-technical stakeholders. * Eagerness to learn in a fast-paced, collaborative environment.What We Offer * A tailored training program focused on developing your data analytics expertise. * Access to mentorship from seasoned professionals in the field. * Opportunities to work on a variety of projects using cutting-edge technologies. * A diverse, inclusive work environment that fosters learning and career progression. * Competitive salary with benefits.Ready to step into a career in data analytics? Apply now and work with industry leaders dedicated to fostering growth and development

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