Lead Data Engineer

Peaple Talent
London
1 month ago
Applications closed

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Lead Data Engineer | Fully Remote | £70,000-£80,000


Peaple Talent have partnered with a leading provider of land and property search information, who provide a range of services across digital mapping, environmental risk reports and sophisticated property management tools.


Due to exciting growth plans in the Data team we are now seeking a Lead Data Engineer.


As a 100% data-driven company, my client pride themselves on employing the best engineering practices across their products and solutions. This role offers a broad and varied experience within our Data Engineering function, empowering you to create data-as-product solutions that drive real change.


You'll be responsible for:

-Building advanced data solutions

-Assembling large, complex data sets

-Leveraging big data technologies

-Extending & Maintaining data warehousing


What we're looking for:

-Exceptional coding skills in Python

-Azure or AWS experience

-Further knowledge of Data Lakes, Data Bricks or Data Factory

-Big Data experience ideally using Spark or Hadoop


The Package:

Basic salary: £70,000-£80,000 per annum

25 days holiday + Bank holidays

Fully Remote working

Private Health Insurance: Provided by Vitality

Training and Development Opportunities (internal & external)

Pension matched up to 6% for the first 3 years, and up to 10% after

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