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Senior Data Engineer (Cloud)

TEKsystems
Manchester
10 months ago
Applications closed

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Description

As a Senior Data Engineer, you'd be working on innovative projects with cutting-edge technology, primarily using Google Cloud Platform (GCP).

Responsibilities:

Develop and maintain automated data processing pipelines using GCP. Design, build, and maintain data pipelines for data ingestion, ETL, and storage. Implement and maintain databases and data storage solutions. Collaborate with data scientists and analysts to design and optimize data models for analytics and reporting. Ensure data quality, accuracy, and completeness.

Requirements:

Experience with cloud platforms like AWS, Azure, or GCP. Strong proficiency in SQL and experience with relational databases. Experience with big data technologies such as Hadoop, Spark, or Hive. Proficiency in Python and at least one other programming language like Java or Scala. Strong analytical and problem-solving skills.

Skills

Cloud Google Cloud Aws Azure Sql mysql oracle sql hadoop spark hive Python Java scala

Job Title:Senior Data Engineer (Cloud)

Location:Manchester, UK

Rate/Salary:- GBP Yearly

Job Type:Permanent

Trading as TEKsystems. Allegis Group Limited, Maxis 2, Western Road, Bracknell, RG12 1RT, United Kingdom. No. 2876353. Allegis Group Limited operates as an Employment Business and Employment Agency as set out in the Conduct of Employment Agencies and Employment Businesses Regulations 2003. TEKsystems is a company within the Allegis Group network of companies (collectively referred to as "Allegis Group"). Aerotek, Aston Carter, EASi, Talentis Solutions, TEKsystems, Stamford Consultants and The Stamford Group are Allegis Group brands.

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