Senior Data Analyst

London
1 year ago
Applications closed

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Senior Data Analyst

6 Month Contract

£550 - £600 per day Inside IR35

London - Hybrid (3 days a week)

Our client is a global ecommerce retailer who are looking for a Senior Data Analyst. In this role you'll be creating data-driven insights and solutions to enhance the online shopping experience. You'll collaborate with the global data science team and other business functions to deliver actionable insights and improve customer engagement.

You will possess experience in analytics, data science, or software engineering, with a deep understanding of descriptive statistical analysis and data transformation. You'll be proficient in SQL and Python, along with hands-on experience with analytics tools such as Looker and PowerBI. You'll be comfortable working with large-scale cloud databases like BigQuery.

We're looking for candidates who possess the following:

Data Visualization Expertise
Technical Skills
Analytics Tool Proficiency
Data-Driven Decision-Making
Database and Cloud Experience

If this sounds like you, please apply below for more information

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