Entry-Level Data Analyst – Finance | City of London

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6 days ago
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Entry‑Level Data Analyst – Finance | City of London
Overview

Our client, a prestigious financial institution in the heart of London, is seeking an Entry‑Level Data Analyst to join their analytics team. This is an excellent opportunity for recent graduates or early‑career professionals to break into the financial sector, working with complex datasets and contributing to impactful insights that shape business decisions.


The role offers flexible working options, a structured career development program, and exposure to high‑profile projects in London’s financial district.


Key Details

  • Job Title: Entry‑Level Data Analyst – Finance
  • Location: City of London, UK (flexible working available)
  • Salary: £35,000 – £40,000 per annum (OTE, negotiable, inc. benefits)
  • Hours: Full‑Time
  • Contract Type: Permanent

Role Overview

The Entry‑Level Data Analyst will support financial decision‑making by analyzing datasets, building reports, and collaborating with finance teams. This role is designed to fast‑track your career in financial analytics, offering mentorship, training, and exposure to advanced tools and methodologies.


Key Responsibilities

  • Collect and process financial data from multiple sources with accuracy and reliability
  • Perform data analysis to identify trends, anomalies, and actionable insights
  • Develop and maintain reports and dashboards for non‑technical stakeholders
  • Collaborate with finance and business teams to meet data needs
  • Participate in special projects, applying analytical methods to solve financial challenges
  • Commit to continuous learning in analytics tools, financial principles, and best practices

Eligibility Requirements

  • Bachelor’s degree in Finance, Economics, Statistics, Mathematics, or related field
  • Strong foundation in data analysis with interest in finance sector
  • Proficiency in Excel (essential); familiarity with SQL, Python, or R highly desirable
  • Basic understanding of financial principles and metrics
  • Excellent problem‑solving skills and attention to detail
  • Strong communication skills for presenting data clearly to stakeholders

Benefits

  • Competitive entry‑level salary (£35,000 – £40,000 per annum)
  • Flexible working arrangements (partial remote options)
  • Dynamic work environment in London’s financial district
  • Comprehensive benefits package: health coverage, pension scheme, generous holiday allowance
  • Structured development program to accelerate career growth
  • Networking opportunities with senior finance professionals
  • Access to mentorship and training in advanced analytics tools

Why This Role Stands Out

  • Career Fast‑Track: Structured program designed to move you quickly into mid‑level analyst roles
  • Exposure to High‑Impact Projects: Work on real financial challenges that influence strategic decisions
  • Learning Culture: Continuous training in SQL, Python, R, and financial modeling
  • Prestigious Location: Based in London’s financial hub, offering unparalleled networking opportunities

How to Apply

Click here to Apply. Submit your CV and a short cover letter highlighting your interest in financial analytics and relevant skills.


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