Data Engineer

END
Washington
1 week ago
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Recognised as one of the fastest growing Companies in the UK, it's a really exciting time to be joining END. If you're positive, passionate and dedicated and want to be part of our future success this could be the role for you.

LEAD DATA ENGINEER – WASHINGTON TYNE & WEAR

Over the last 20 years, END. has evolved into a technology led retailer that provides luxury and contemporary apparel and exclusive sneaker drops to a global audience. One of the most influential, forward-thinking and inspirational fashion companies in the world, we have fresh products hitting our website daily and our service never stops.

END. prides itself on delivering a first-class customer experience, which has underpinned our success. With over 2 million customers we deliver to over 80 countries around the world and our online business is complimented by our industry leading retail stores in Newcastle, Glasgow, London & Milan.

The Data Engineer is responsible for the development, integration, and maintenance of data solutions that align with the company's business objectives. This role requires a proactive approach to designing and implementing software within the company's Data Warehouse platform, ensuring that all technical solutions are efficient, secure, and effectively meet stakeholder requirements. 

What you'll be doing:

Key responsibilities

  • Proficiency in data operation languages such as SQL, Python, Scala and R.
  • Big Data Technologies: Experience like Microsoft Fabric, Microsoft Synapse, Spark, Kafka and Familiarity with database management systems (eg: SQL, Postgre SQ)
  • Data Integration tools: Knowledge of data integration and ETL tools, such as Talend, Informatica, or Apache NiFi2.
  • Analytical skills: Strong problem- solving and analytical skills to manage and interpret large datasets.
  • Experience working with data-operations teams.

What you'll be able to demonstrate:

Skills and experience

  • D365 F&O Experience.
  • Demonstrable experience in an e-commerce retailer or supply chain environment.
  • Educational background: A bachelor's degree in Data Science, Business Intelligence, Science or related field.

What we can offer you:

  • 30 days holiday (including bank holidays)
  • Birthday day off
  • Company pension scheme
  • Generous staff discount
  • Access to Employee Assistance Programme
  • Registered access to Healthcare Benefits provider
  • Opportunities for professional development and career progression

Our core values underpin everything we do as a business. We always put our customers first, are passionate and dedicated and strive for excellence. To achieve this, we are positive and collaborative and keep it simple.

If you have what it takes to be part of our future success, we want to hear from you.

Please note - for the successful candidate, any employment is conditional on you having the right to work in the UK in the role in which you are employed.

Type of employment: Permanent, full-time

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