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Data Engineer

Quickline Communications
Hull
3 days ago
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  • 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 optomise, 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.

Here's why you'll love this role...

- 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 our 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.

Here's why you'll be great in this role...

- You'll have previous experience in data engineering or backend development.

- Apply a strong understanding of data modelling, schema design, and normalisation.

- Leverage your proficiency in Python and SQL to build robust, reliable solutions.

- Use your familiarity with modern data warehousing (e.g., Databricks) and orchestration tools (e.g., Airbyte), with Azure experience as a plus.

- Explore machine learning methods and tools (Keras, TensorFlow, Scikit-learn) as an added strength.

The benefits...

- Pension - 5% employer / 5% employee contribution.

- WPA Health Scheme - Can claim back prescription, GP and optician charges, therapy allowance, private outpatient consultations, NHS parking claim back, EAP, 24/7 remote GP service, member discounts.

- 25 days annual leave + bank holidays, your birthday, house move and wedding day off.

- Option to buy up to 3 additional days annual leave

- High Street Shopping Discount Scheme - Holidays, food and drink, insurance, sport, tech, high street, Ikea, M&S, cinema etc.

- Free Parking on site.

- Regular 'Lunch & Learns' and company wide 'Elevenses' meets to discuss company direction.

- Social Events - Summer and End of Year parties etc.

- Thank Q Awards - Monthly £50 winner, yearly £500 winner.

... and more.

Please note: Unfortunately, we can't offer visa sponsorship.

Note to agencies -

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"). Any unsolicited CVs sent to Quickline, via the Quickline careers email address, directly to Quickline employees or managers, will be considered Quickline property and Quickline are free to contact those prospective candidates directly with zero financial repercussions. For further information refer to our careers page.

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