Staff Data Engineer AWS

Client Server
Greater London
4 days ago
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Staff Data Engineer (AWS Python) London / WFH to £125k

Do you have expertise with modern Data Engineering?

You could be progressing your career, in a senior, hands-on Staff Data Engineer role at a technology driven market research company that is scaling rapidly, having raised Series B funding of $60m, whilst enjoying hybrid working and a huge range of perks and benefits.

What's in it for you:

  • Salary to £125k
  • Ability to work from anywhere for up to 80 days per year
  • 25 days holiday plus extra time over the festive period
  • Enhanced parental leave, up to 12 weeks paid leave for premature births and neonatal care, paid leave for IVF and fertility treatment and pregnancy loss
  • £40 per month wellbeing budget
  • £20 per month learning and development budget, plus access to larger budgets for qualifications
  • Private medical care, access to free therapy
  • X2 days per year for volunteering
  • Excellent career development opportunities

Your role:

As a Staff Data Engineer you'll set the direction for Data Engineeri...

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