Data Engineer Opportunity

Reggie & Co Recruitment company

Subscribe to our Telegram Channel

Data Engineer in UNITED KINGDOM

Remote 1 month ago

Role: Data Engineer

Skills Required: Python, Hadoop / Spark, SQL, MongoDB / Cassandra

Location: Fully Remote

Salary: £70,000 to £80,000 + the usual benefits you’d expect.


We’ve partnered with a scale-up that creates innovative solutions for a wide range of clients as they seek a talented Data Engineer to join their team.


While based in the UK they are happy to look at anyone across Europe.


As a Data Systems Engineer, you will take ownership of their data across their applications, effectively managing and understanding a wide range of data types and sources. You will design and maintain scalable ETL processes, build robust data pipelines, and ensure seamless integration between systems.


You will also implement thorough data quality checks, optimise storage and retrieval processes, and stay ahead of emerging trends in data engineering and analytics, driving excellence across every aspect of their data ecosystem.


Skills You'll Need:

  • Proficient in Python
  • Skilled in SQL and experienced with relational databases such as PostgreSQL or MySQL.
  • Hands-on experience with big data technologies like Hadoop or Spark.
  • Familiarity with NoSQL databases, including MongoDB or Cassandra.
  • Knowledge of data warehousing solutions and ETL processes.
  • Experience working with cloud platforms - AWS or GCP.
  • Machine learning exposure would be amazing


If you're a Data Engineer hit apply for immediate consideration, you won't be disappointed but please note, unfortunately, our client can't offer sponsorship at this time.


Lastly, they’re keen to hear from people from all backgrounds, regardless of age, disability, gender identity, marital status, race, religion, or sexual orientation. If there’s anything you need to make the application or interview process easier for you, please let us know.

Apply now

Subscribe our newsletter

New Things Will Always Update Regularly