Senior Operational Analyst

Gregory Martin International
Winchester
1 year ago
Applications closed

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Senior Operational Analyst - Python, Modelling, Software Design, Advanced VBA & Excel, Power Apps, Power BI

Salary -£40K-£65K plus bonus and excellent benefits

Location- Winchester Hants, Hybrid role

Our client has an exciting opportunity to join our growing management consultancy, with an enviable reputation and senior level client base. They have a strong track record in UK MOD and government.

They value their people and believe in building everyone’s capabilities and strengths to help them reach their full potential.

The Opportunity - Operational Analyst/Consultant

Our client is looking for a positive, flexible self-starter to join their team as a Senior Analyst. This is an exciting opportunity to play a leading role in delivering operational analysis capability as an integral part of a small, agile, and growing business.

Their team of analysts, consultants and Defence SMEs work closely with their customers to deliver high-impact services and solutions. Data science and operational analysis are a key part of the Company’s capability. They are growing this capability and are looking for a highly motivated and capable Senior Analyst.

As Senior Operational Analyst your role will include:

  • Designing, developing, and running analysis models.
  • Using agile approaches to develop models and tools, including requir...

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