Senior Data Engineer, SQL, RDBMS, Python, Celery, RabbitMQ, Pt Remote

Carrington Recruitment Solutions
London
1 month ago
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Senior Data Engineer, SQL, RDBMS, Python, Celery, RabbitMQ, AWS, Part Central London, Mainly Remote

Senior Data Engineer (SQL, RDBMS, Python, AWS) required to work for a fast growing and exciting business based in Central London. However, this role is mainly remote.

We need an experienced Data Developer who is a good people person, working with client facing teams outside of Technology, and also mentoring more junior members of the team across Europe. As the company is fast growing, there will be an opportunity to move upwards at certain points throughout your journey. Read on for more details


Responsibilities

  • Collaborate with product managers and business stakeholders to understand complex business requirements to translate business needs into well-designed and maintainable solutions
  • Ensure data quality and reliability by implementing robust data quality checks, monitoring, and alerting to ensure the accuracy and timeliness of all data pipelines
  • Create data governance policies and develop data models and schemas optimized for analytical workloads
  • Influence the direction for key infrastructure and framework choices for data pipelining and data management...

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