Covid-19: We are fully operational and continue to follow health advice, ensuring customers and colleagues stay safe by operating remotely.

Stay Connected: All of our events are being broadcast remotely and can be viewed online. Find out more.

👏 How Exciting!

permanent Location icon London

Data Engineer - Python, SQL, Spark


Data Engineer - Python, SQL, Spark

Location: London, N1C 4AX (Remote currently)

Salary: £60,000 - £70,000

Industry: E-commerce

Tech Stack: Python, SQL, Pandas, Spark, AWS

Great opportunity for a talented Data Engineer (Python, SQL, Pandas, AWS) who also has strong experience of developing applications using Python to join a business that is entrusted by the majority of the top 100 UK retailers to provide solutions to their e-commerce problems.

The Company -

Widely used e-commerce platform that integrates the biggest players in the retail world with over 450 delivery partners around the world. They are wholly owned by a hugely successful Fortune 100 company.

The Role -

They are seeking a Data Engineer (Python, SQL, Pandas, AWS) to contribute to the design, development and management of their data lake and solutions platform.

You will be expected to contribute to the development of key frameworks (Python, SQL, Pandas, AWS) as well as working on data pipelines and automation tooling.

The ideal candidate (Python, SQL, Pandas, AWS) will work in autonomous, cross functional teams entrusted with business-critical platforms.

Desired Skills -

  • Python
  • SQL
  • Pandas, Spark, Airflow, Oozie, Talend, Luigi
  • AWS (Lambda, S3, Kinesis, Dataproc, Dataflow, Athena, EMR, Big Query, Glue)
  • Jenkins, Terraform

Benefits -

  • Mix of on-site and remote working (once the virus passes)
  • Opportunity to work in diverse and skilled cross-functional team
  • Bonus of up to 10% paid quarterly
  • Discounted gym membership

If you are a skilled Data Engineer (Python, SQL, Pandas, AWS) who is interested in this role then please apply below and I will be in touch with more details.

Apply for this position

${ }
${ }
${ | replace('Cv', 'CV') }