Data Engineer - London - GCP - £60,000 + Benefits

City of London
1 year ago
Applications closed

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Data Engineer - London - GCP - Up to £60,000 + Benefits

Do you want to work with cutting edge technology? Grow or develop your skills in AI? - A space that could soon dominate the industry. All while working for a company who value your well-being as well as your personal and professional development? Apply now!

My client is an exciting, forward-thinking agency who consistently top industry and employee care lists, year after year! As a digitally focused company working here you would not only be joining industry leaders, but leaders who care about the development of their tech AND their people.

As a Data Engineer you'll be constantly challenged to demonstrate your technical prowess. You will be working under Senior Data Engineers for direction and then leading your own projects and implementations while collaborating with and offering guidance to more junior engineers. My client also insists on staying ahead of the game, and leading their industry when it comes to technology - as a Data Engineer you will be consulted for direction and input regarding the companies strategy on emerging technologies.

Requirements:

Cloud expertise - particularly Google Cloud Platform (GCP)
Strong experience developing and maintaining pipelines
Advanced Python and SQL experience
Direct and coherent technical communication Nice to have:

Generative Artificial Intelligence experience
ML experience
Experience or understanding of visualisation tools

Interviews underway with limited slots remaining, don't hesitate and miss out on a role that could change your career!

Get in touch ASAP - contact me @ (url removed) or on (phone number removed).

Data Engineer, Senior Data Engineer, GCP, Google Cloud Platform, Python, AI, Artificial Intelligence, ML, Machine Learning, SQL

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