Cloud Data Engineer- Senior

Gentrack
London
2 years ago
Applications closed

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The Company 

The global pace of change is accelerating, and utilities need to rebuild for a more sustainable future. Gentrack provides utilities across the world with market leading products and services to drive their transformation. Working with some of the world’s biggest energy and water companies, as well as innovative challenger brands, we’re helping companies reshape what it means to be a utilities business. We are driven by our passion to create positive impact. That is why utilities rely on us to manage complexity, deliver exceptional customer experiences, and secure profits. Together, we are renewing utilities.

Our Values and Culture

Colleagues at Gentrack are one close team of passionate people who want to drive change through technology and believe in making a difference. Our values drive decisions and how we interact and communicate with customers, partners and each other. Our core values are:

Respect for the planet  Respect for our customers Respect for each other 

Gentrackers are a group of smart thinkers and dedicated doers, outside of work we are musicians, travel fanatics, artists, sailors, family folk, environmentalists and sport lovers. We are a diverse team who love our work and the people we work with and who collaborate and inspire each other to deliver creative solutions that make our customers successful.

This is a truly exciting time to join Gentrack with a clear growth strategy and a world class leadership team working to fulfil Gentrack’s global aspirations by having the most talented people, an inspiring culture, and a people-centric business. 

We are looking for an enthusiastic Cloud Data Engineer to join our mission to make the World cleaner and greener and become an integral part of our top notch Data Engineering team

About you:

You are an expert data pipeline builder and data wrangler who enjoys optimizing data systems and building them from the ground up.

You have 5+ years commercial data engineering experience with track record of successful deliverables You are proficient at SQL language as well as ETL/ELT tools and frameworks You have experience working with Snowflake (ideally) or other cloud-based data warehousing platform (e.g. Amazon Redshift, Google BigQuery, etc) You have experience with public cloud infrastructure, ideally AWS Nice to have experience: Data visualisation through Tableau (ideally) / Power BI or another similar platformPython

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