Data Engineer

INQDATA
Belfast
1 month ago
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INQDATA Belfast, Northern Ireland, United Kingdom


Location & Work Mode

Location: Belfast (Hybrid - 2 days in office per week)


Type:Full-Time


Role Overview

At INQDATA, we areseeking a Data Engineer with 3+ years of professional experience to join our team. The ideal candidate will have a strong foundation in data engineering principles, experience building ETL data pipelines, proficiency in analytical scripting languages (Python/R/MATLAB), and familiarity with cloud environments.


Key Responsibilities

  • Write and optimize code for data processing and ETL pipelines.
  • Support and maintain efficient data infrastructure and pipeline operations.
  • Monitor and troubleshoot data pipeline issues to ensure reliability and performance.
  • Participate in code reviews and contribute to knowledge sharing across the team.
  • Document data flows and technical implementations for maintainability.
  • Participate in on-call rotations to support production systems.

Qualifications

  • 3+ years of professional experience in a data engineering or related role, with coding/scripting in Python/MATLAB/R etc.
  • Bachelor's degree in a STEM subject or related field (or equivalent practical experience).
  • Working knowledge of SQL (any variant: PostgreSQL, MySQL, SQL Server, etc.).
  • Strong troubleshooting and problem-solving skills with attention to detail.
  • Experience with cloud technologies (cloud vendor certifications are a plus).
  • Understanding of networking and security principles.
  • Knowledge of high-level programming languages (C++, Rust, Java, Go).

What We Offer

  • Competitive salary and performance-based incentives.
  • The opportunity to work on cutting-edge market data technology.
  • A fast-growing, collaborative environment where you can make a real impact.
  • Exposure to leading hedge funds, banks, trading firms, and other financial institutions across capital markets.

Seniority level

Mid-Senior level


Employment type

Full-time


Job function

Information Technology


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