Digital Data Analyst

iO Associates
Bath
1 year ago
Applications closed

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Our client, based in Bath, is seeking a talented Digital Analyst with Data Analyst experience to join their team on a permanent basis. This role is pivotal in providing analysis, statistical, and insight solutions across a range of clients. You will play a key role in developing the client portfolio, identifying client needs, and recommending the right solutions. If you enjoy contributing to the overall success of a company, and want the opportunity to grow, this could be the right fit for you.

Key Responsibilities:

Deliver data-driven reporting and insights, especially in digital marketing and multi-touch attribution. Troubleshoot web analytics issues and manage analytics platforms. Improve data capture mechanisms and marketing analytics infrastructure. Leverage SQL for in-depth analysis and optimise data structures. Offer consultancy on measurement and attribution strategies. Produce analysis addressing client briefs and track customer journeys. Research analytical opportunities and innovate new methodologies.

Essential Requirements:

Experience with SQL and web analytics data. Proficiency in Excel and Office tools. Experience with GA4, Adobe Analytics, and tag management systems. Dashboard management using Looker Studio, PowerBI, and Tableau. Knowledge of R, Python, JavaScript, HTML, and CSS. Strong attention to detail and communication skills. 2-3 years of experience in an analytical field.

If you feel like you'd be a good fit, and are looking for your next step, please do get in touch! My client offers a collaborative and supportive environment alongside a generous salary of up to £60K dependant on experience.

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