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Data Engineer

Quickline Communications
Hull
4 days ago
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Overview
  • Location: Willerby, East Riding of Yorkshire, United Kingdom
  • Earnings: Depending on Experience

Data Engineer

We're Quickline, and we believe everyone deserves great internet. Whoever you are, wherever you are and whatever you do online - our customers are at the heart of everything we do. So we're on a mission to provide lightning fast, reliable broadband that reaches the places other providers leave behind. Our mission relies on a team full of inspiring, customer obsessed people, and we're looking for a Data Engineer to build, optimise, and maintain the data architecture that powers our analytics.

If you thrive in a fast-paced environment, enjoy building systems from the ground up, and take pride in creating clean, well-structured data, we'd love to hear from you.

Responsibilities
  • Design and develop scalable data pipelines and ETL processes that power analytics and insight across the business.
  • Build and optimise data models using data lakes and a data warehouse, shaping the backbone of our data ecosystem.
  • Collaborate with GTM and product analysts, plus other key stakeholders, to translate business needs into well-structured data solutions.
  • Automate data ingestion from a variety of internal and external sources, making data more accessible and efficient.
  • Safeguard and enhance data quality, security, and compliance while implementing tools for orchestration, workflow management, and performance monitoring.
Requirements
  • You'll have previous experience in data engineering or backend development.
  • Strong understanding of data modelling, schema design, and normalisation.
  • Proficiency in Python and SQL to build robust, reliable solutions.
  • Familiarity with modern data warehousing (e.g., Databricks) and orchestration tools (e.g., Airbyte); Azure experience is a plus.
  • Exploration of machine learning methods and tools (Keras, TensorFlow, Scikit-learn) is an added strength.
Benefits
  • Pension - 5% employer / 5% employee contribution.
  • WPA Health Scheme with various healthcare benefits.
  • 25 days annual leave + bank holidays, plus birthday, house move, and wedding day off.
  • Option to buy up to 3 additional days annual leave.
  • Discounts through High Street Shopping Scheme on holidays, food and drink, insurance, sport, tech, and more.
  • Free on-site parking.
  • Regular Lunch & Learns and company-wide Elevenses meetings to discuss company direction.
  • Social events, including Summer and End of Year parties.
  • Thank Q Awards with monthly and yearly prize opportunities.
  • More benefits to come.

Note: Quickline have an internal recruitment team. We will not accept unsolicited CVs from any source other than directly from a candidate via our Applicant Tracking System (ATS). For further information refer to our careers page.

Please note: You must have the right to work in the UK in order to be successfully appointed to this role.

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