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CRM & Data Analyst

Venterra Group
London
4 weeks ago
Applications closed

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Job Description

Company Introduction:


Venterra is a global wind energy services company, engineering, building and supporting major wind and renewables projects around the world. Our clear purpose: accelerate the global energy transition by becoming the go-to services provider and strategic partner for the rapidly expanding wind industry.


Our diverse team of experts is dedicated to making net zero a reality. We offer specialised services across the entire project lifecycle, including:


  • Geoscience consultancy
  • Environmental expertise
  • Design services
  • Project advisory
  • Survey capabilities
  • Construction support & back-deck mission equipment


By acquiring and bringing together leading offshore engineering and marine science companies like Gavin & Doherty Geosolutions, CAPE Holland, INSPIRE Environmental, Oceanscan, Balltec, Osbit, Partrac and Ordtek, we provide the most comprehensive services and expertise in the market. And we’re not done growing yet, which means there are plenty of exciting career opportunities on offer for our team.


At Venterra, sustainability, safety, and quality are prioritised in everything we do, reducing project risk, time, and cost for our clients.


Why join Venterra?


  1. Shape...

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