Data Analyst – Payments Consulting

CPJ
London
1 month ago
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Data Analyst – Payments Consulting

Location: Central London office 4 days/week, 1 day/week from home

Salary: depending on experience

Industry: Payments / Fintech / ecommerce / Consulting

Do you have

• Proven financial modelling and data-presentation skills? (at least 2-3 years experience)

• Strong Excel ability?

• A willingness to learn about the payments industry?

If so, this could be the role for you.

The Company

Our client is a leading specialist consultancy in the payments industry, recognised for delivering high-quality insight and strategic advisory work. They partner with some of the most innovative global retailers, banks, acquirers and payment providers.

The Role

You will be joining as a Data Analyst, supporting client engagements, research projects, and strategic initiatives. You’ll work closely with senior team members and leading industry partners, gaining hands-on experience across the payments ecosystem.

Key Responsibilities

• Build and maintain financial models and perform data analysis.

• Research and synthesise market and competitive intelligence.

• Develop and deliver client presentations and project reports.

• Coordinate projects across internal and client teams.

• Maintain shared data and analytical resources.

• Contribute to thought leadership and internal research initiatives.

About You

You're a bright, proactive Analyst with strong analytical capability and interest in payments and financial services.

Requirements

• Graduate from a Russell Group university.

2-3 years experience in financial modelling and data-presentation

• Highly analytical with advanced Excel and PowerPoint skills.

• Strong attention to detail and structured approach to work.

• Able to communicate complex findings visually and clearly.

• Motivated by producing high-quality insight for clients.

• Well-organised with excellent time and workload management

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