Lead Data Engineer

Movement8
3 weeks ago
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Lead Data Engineer - AWS, Python, SQL, Kafka - Fully Remote


We are looking for aLead Data Engineerwith expertise inAWS, Python, SQL, andKafkafor acloud-based data, software development company based in London. Their products allow data transformation into ultra-secure cloud based environments mainly used by large enterprises and government sectors.


Please note: A UK Government Security Check (SC) clearance is required for this role.


Key Responsibilities:

  • Develop, test, and document new or updated data pipelines to meet both functional and non-functional business requirements.
  • Expand and enhance the data platform’s capabilities to tackle emerging data and analytics challenges.
  • Conduct data analysis to propose feasible solutions and improvements for data processing problems.
  • Ensure consistency between data models and the broader data architecture, including entity names, relationships, and definitions.


Required Skills & Experience:

  • Extensive experience with public cloud platforms, particularlyAWS, with hands-on expertise in core services such asEC2,RDS,Lambda, andAthena.
  • Proficient inPythonand comfortable working with Python-based data engineering tasks.
  • Experience configuring and optimisingRelationalandNoSQL databases.
  • Solid understanding of various data structures and their use cases, including their advantages and limitations.


If you're passionate about cloud data engineering and meet the above qualifications, we want to hear from you!Get in touch ASAPfor more details.

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