Data Analyst (Excel specialist)

Space Executive
London
1 week ago
Applications closed

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Data Analyst

My client, a leading cloud-native global payments processor, with a multi-cloud platform offering is seeking aData Analystto join their team.


This is acontractposition. It will be an initial3 monthsand will beInside IR35. It will be a hybrid position offering flexible working (2/3 days per week in their central London office).


Role overview: We are seeking someone who understands complex data and can break down data from pricing structures, in different countries, and onboarded at different times (Some are mature and some are early stage). You will be presenting the Data to senior stakeholders whilst also answering questions backed by the data (Break down the data simply for easy explanations).


Key Responsibilities

  • Analyse large datasets to identify trends, patterns, and opportunities for business improvement.
  • Develop and maintain Excel-based dashboards, reports, and data models for key stakeholders.
  • Utilize Power Query and VBA to automate data processing and reporting workflows.
  • Collaborate with cross-functional teams to provide data-driven insights.
  • Validate and clean data to ensure accuracy and reliability.
  • Support ad hoc reporting and analysis requests from internal teams.
  • Optimize Excel spreadsheets for better performance and efficiency.
  • Assist in integrating Excel-based reports with other analytical tools or databases.


Requirements

  • Proven experience as a Data Analyst, preferably in the payments or fintech industry.
  • Expert-level proficiency in Microsoft Excel, including pivot tables, Power Query, VBA, and advanced formulas.
  • Strong analytical and problem-solving skills with a keen eye for detail.
  • Experience with data visualisation techniques in Excel and other BI tools (e.g., Power BI, Tableau) is a plus.
  • Familiarity with SQL and database structures is an advantage.

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