Lead AWS Data Engineer/Architect ETL tools, Python

Athsai
Nottingham
11 months ago
Applications closed

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Lead Data Engineer -Job Location -London Remote

Is this the next step in your career Find out if you are the right candidate by reading through the complete overview below.Contract GBP Outside IR35or Permanent option is available tooAW S expertLead Data Engineer/ArchitectWe are looking for a dedicated professional with substantial experience in big data technologies to join our team.Your collaborative skills will be key as you work alongside stakeholders, data architects, and data scientists to enhance data quality across our projects.We value your expertise in ETL tools, including Apache Kafka, Spark, and Airflow, and your strong programming skills in Python, Scala, and SQL will further enrich our capabilities. Additionally, your experience in implementing data pipelines utilizing cloud-native services on AWS will be invaluable.Your comprehensive knowledge of AWS services such as API Gateway, Lambda, Redshift, Glue, and CloudWatch will enable us to optimize our data processes.We look forward to your contributions in making meaningful advancements in our Customers data initiativesAre you currently holding SC clearance or can you become eligible to obtain it? Your clearance is essential for the roleIf you are a qualified Lead AWS DATA Engineer/Architect, please contact me athttps://www.linkedin.com/in/upma-ghai-certrp-b8966441/

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