Data Engineer

Burns Sheehan
London
1 month ago
Applications closed

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✨ Data Engineer | EdTech | 4-5 days per week for 6 months ✨


Role:Data Engineer

Day rate:£500 per day

Duration: 6 months

Location:London Bridge (1 day per week in the office)


We are working with a profitable EdTech who are looking to hire a Data Engineer. They have already established a strong market position with their subscription-based platform, serving approximately 40% of English schools.


They are a team of 50, and are dedicated to maintaining their core product while expanding their customer base.


The Role

As the sole Data Engineer, you will be instrumental in:

  • Maintain existing data movement from multiple sources into our BigQuery data warehouse and bring data in from other sources in due course
  • Establish reporting for new websites to be launched later this year
  • Create and maintain existing management reports in Tableau, working with various departments


The Ideal Candidate

We are looking for a Data Engineer who has experience managing BigQuery and can help in creating reports, as well as maintaining data pipelines. You should be comfortable working in a fast-paced environment.


This is a great opportunity for a Data Engineer to join a stable, but fast growing company. You’ll work alongside a talented team in a collaborative and supportive environment.


Please get in touch for more information on both the role and company!


✨ Data Engineer | EdTech | 4-5 days per week ✨

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