AWS Data Engineer (Junior/Mid-Level)

83zero Limited
London
1 year ago
Applications closed

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AWS Data Engineer

AWS Data Engineer

AWS Data Engineer

AWS Data Engineer

AWS Data Engineer

AWS Data Engineer

AWS Data Engineer (Junior/Mid-Level)

Package:£50,000 - £58,000 per annum + 6% contributory pension, UNLIMITED external certification training budget, health insurance, life assurance, and more!

Location:UK-Wide offices | Hybrid (Onsite/Remote flexibility)

We're seeking talented AWS Data Engineers to join our team! If you're passionate about harnessing the power of Cloud technologyto design, develop, and optimize data pipelines, this is your opportunity to thrive in a role where innovation meets impact.

Your Role

As an AWS Data Engineer, you'll play a key part in transforming data into actionable insights:

  • Design & Build Data Pipelines: Craft resilient pipelines to ingest, process, and transform data for analytics and reporting.
  • Implement ETL/ELT Workflows: Seamlessly migrate data to Data Warehouses, Data Lakes, and Lake Houses using cutting-edge AWS and open-source tools.
  • Adopt DevOps Excellence: Leverage CI/CD, Infrastructure as Code (IaC), and automation to streamline and elevate our data engineering practices.

What You'll Bring to the Table

We're looking for AWS Data Engineers with hands-on experience and a knack for solving complex data challenges.

  • AWS Expertise: Proven experience with services like AWS Glue, AWS Lambda, Amazon Kinesis, Amazon EMR, Amazon Athena, and AWS Step Functions.
  • Programming Proficiency: Strong skills inPython,Java, orScala.
  • Data Storage Know-How: Experience with AWS Redshift, RDS, Hadoop, and Data Lake architectures.
  • DevOps Mindset: Familiarity with CI/CD, IaC, and other DevOps tools and methodologies.

Click"Apply"now to begin your journey. For more details or a friendly chat, contact

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