Data Analytics & C#.net engineer-financial services

JAC Recruitment
London
3 weeks ago
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Position
Data Analytics & C#.NET Engineer – Financial Services
Location
London (Hybrid / Onsite as required)
Employment Type
Full-time, 1 year Fixed term contract

6‑month probation (no change in salary)

Permanent conversion based on performance
Salary
£40,000 – £60,000
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Role Overview
We are seeking a highly skilled engineer to support data analysis and system development within a financial institution.

The role covers financial data analytics, data processing, and C#.NET-based system development, from requirement analysis through implementation and operations.
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Key Responsibilities
■ Financial Data Analytics
Analyse and evaluate financial datasets for business use
Extract relevant data from distributed and multiple data sources
Leverage static, dynamic, and big data
Improve processing performance and data quality
■ C#.NET System Development
End-to-end development: requirements, design, coding, testing, and deployment
Implement functions across front-to-back systems (reports, data processing)
Enhance existing systems and create new features
■ Project & Team Collaboration
Work as part of a development team
Follow project schedules and deliver tasks on time
Collaborate with stakeholders and cross-functional teams
■ Development Process Management
Schedule and quality management
Code reviews and unit/integration testing
Ensure alignment with internal quality standards
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Essential Requirements
7+ years of financial data analytics experience
3+ years of C#.NET development experience
3+ years in financial system development (requirements / design / development)
Strong skills in big data processing, database operations, and performance tuning
Excellent stakeholder communication skills
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Preferred Skills
Knowledge of financial domain / market data
Experience with modern databases or distributed processing
Business-level English

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