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Data Analyst - Alexander Mann Solutions (Contingent)

Alexander Mann Solutions (Contingent)
London
1 week ago
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Our Contingent Workforce Solutions (CWS) is one of our service offerings. Acting as an extension of their recruitment teams, we connect them with skilled interim and temporary professionals, fostering workplaces where everyone can contribute and succeed.

Our client, a major UK retail bank, provides every day banking services to over 17 million retail customers. The banks expertise and services span across Business Services, Corporate banking, Wealth Management, Group Functions, Retail and Investment Banking.

On behalf of this organisation, AMS are looking for a Data Analyst for a contract until the end of the year based remotely.

The role will focus on improving the sourcing, consolidation, and automation of performance management data and metrics across the bank. The successful candidate will work closely with data providers and stakeholders across the organisation to capture requirements, design and implement processes, and deliver a structured data pipeline to support a Web Reporting Application tool.

Key Responsibilities

  • Engage with multiple stakeholders across the bank to understand, document, and refine data requirements.
  • Recommend and implement standardised, automated processes for data capture and consolidation.
  • Design and establish SLA-driven, month-on-month reporting processes.
  • Collaborate with technical and business teams to ensure smooth data flow into the reporting application.
  • Develop and maintain clear process documentation.
  • Act as a subject matter expert in data literacy and process design, supporting continuous improvement of data management practices.

Key Skills & Competencies

  • Strong customer engagement and communication skills, with the ability to manage multiple stakeholders effectively.
  • Highly proactive, self-motivated, and solutions-oriented.
  • Demonstrated experience in process design, implementation, and optimisation.
  • Strong skills in requirement gathering, analysis, and documentation.
  • High level of data literacy, with the ability to translate data into insights and actionable processes.
  • Strong process documentation skills.
  • Technical skills:

    • Excel (Intermediate+ level required)
    • Web Forms (nice to have)

Next steps

This client will only accept workers operating via an Umbrella or PAYE engagement model.

If you are interested in applying for this position and meet the criteria outlined above, please click the link to apply and we will contact you with an update in due course.

AMS, a Recruitment Process Outsourcing Company, may in the delivery of some of its services be deemed to operate as an Employment Agency or an Employment Business

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