Senior Data Engineer DataMesh Python Spark

Client Server Ltd.
London
1 year ago
Applications closed

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Senior Data Engineer (DataMesh Python Spark) Remote UK to £80k Are you a tech savvy Data Engineer looking for an opportunity to take ownership, working on complex and interesting systems? You could be joining a scale-up tech company within the Geospatial space. The company has around eighteen satellites and radars that record images and data of the Earth, they collect vast amounts of data, as a Data Engineer you will help the company to productionise that data and provide actionable insights. They are currently developing systems that will help to provide alerts on floods, wildfires and wind / hurricane events - this can be used by insurance companies and for government organisations. The possibilities of the technology are vast. As a Senior Data Engineer you will collaborate with the Technical Lead to design and build highly scalable and resilient solutions and provide easy to use workflow and orchestration capabilities for analytics users. You'll be building scalable services and tools to help partners implement, deploy and analyse large data sets with a high level of autonomy, ensuring that Machine Learning powered products are scalable and robustly executed within a cloud (AWS) based environment. Location / WFH: You can work remotely from anywhere in the UK on a fulltime basis. About you: You are an experienced Data Engineer with a strong knowledge of modern data engineering tools and best practices You have a strong knowledge of Data Warehousing and ETL You have indepth experience with DataMesh including putting it into production You have strong Python coding skills You have experience with Spark and Data Bricks, AWS preferred will also consider other cloud platforms You have experience with Kafka or other similar Data Streaming technology You're collaborative and have great communication skills What's in it for you: As a Senior Data Engineer you will earn a competitive package: Salary to £80k Pension Healthcare Time for self development projects including training, conferences and certifications Remote working plus paid for trips to Helsinki Impactful role in a growing company with excellent career growth opportunities Apply now to find out more about this Senior Data Engineer (DataMesh Python Spark) opportunity. At Client Server we believe in a diverse workplace that allows people to play to their strengths and continually learn. We're an equal opportunities employer whose people come from all walks of life and will never discriminate based on race, colour, religion, sex, gender identity or expression, sexual orientation, national origin, genetics, disability, age, or veteran status. The clients we work with share our values.

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