Data Engineer Python SQL AWS

Jobbydoo
London
3 days ago
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Data Engineer (Python SQL AWS) Remote UK to £50k

Would you like to work on complex and interesting AI based systems with a team of tech entrepreneurs?

You could be joining a growing start-up that is utilising Machine Learning and AI technology to revolutionise fish farming, improving fish health and growth; their carbon neutral technology is already making a difference in Scotland, Chile, Canada, Australia, Spain and Norway and the company has ambitious growth plans.

As a Data Engineer you will design, build and implement robust data pipelines that transform raw IoT sensor data into actionable insights for fish farmers worldwide. You'll work on scalable data infrastructure, from ingesting real-time sensor streams to building analytics ready datasets, enabling data driven decision making and improving operational efficiency across the global farm network. This role offers exciting challenges involving high-volume data processing, data quality management and supporting AI/ML workflows.

There are excellent career progression opportunities as the company continues to scale; you'll be an integral part of a small, distributed team.

Location / WFH:

You can work from home remotely from anywhere in the UK, there is also flexibility to work abroad for periods throughout the year and flexible start and finish times. There are two company "kick-off" meetings per year at great destinations for a week at a time.

About you:

  • You have experience of building and maintaining data pipelines in production environments
  • You have Python and SQL skills coding skills including PostgreSQL, MySQL and NoSQL databases
  • Ideally you will have experience with some of the following technology that is also in the tech stack: data pipeline orchestration tools (e.g. Airflow, Prefect, Dagster), cloud data platforms (e.g. AWS, S3, Glue, Athena, Redshift, Kinesis), data warehouse concepts and dimensional modelling, data streaming tools (e.g. Kafka, Kinesis)
  • You're collaborative with great communication skills

    What's in it for you:

  • Salary to £50k
  • Remote working (including abroad)
  • Paid for training and certifications
  • Home office budget
  • Bi-annual company kick-offs
  • Pension

    Apply now to find out more about this Data Engineer (Python SQL AWS) remote 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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