Data Engineer

Advanced Resource Managers Ltd
Edinburgh
3 weeks ago
Applications closed

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Overview

Data Engineer


Edinburgh


6-Month contract


Paying up to £55p/h (Inside IR35)


Please note - due to the nature of the work, you will need to hold or be eligible to obtain a high level of UK Security clearance - please only apply if suitable


Responsibilities

  • Orchestration ingestion and storage of raw data into structured or unstructured solutions.
  • Design, Develop, Deploy and Support data infrastructure, pipelines and architecture.
  • Implement reliable, scalable, and tested solutions to automate data ingestion.
  • Development of systems to manage batch processing and real-time streaming of data.
  • Evaluate business needs and objectives.
  • Support the implementation of data governance requirements.
  • Facilitate pipelines, which prepare data for prescriptive and predictive modelling.
  • Working with domain teams to scale the processing of data.
  • Identify opportunities for data acquisition
  • Combine raw information from different sources.
  • Manage and maintain automated tools for data quality and reliability.
  • Explore ways to enhance data quality and reliability.
  • Collaborate with data scientists, IT and architects on several projects

Qualifications

  • Technical expertise in designing, building, and maintaining data pipelines, data warehouses, and leveraging data services.
  • Proficient in DataOps methodologies and tools, including experience with CI/CD pipelines, containerisation, and workflow orchestration.
  • Familiar with ETL/ELT frameworks, and experienced with Big Data Processing Tools (e.g. Spark, Airflow, Hive, etc.)
  • Knowledge of programming languages (e.g. Java, Python, SQL)
  • Hands-on experience with SQL/NoSQL database design
  • Degree in STEM, or similar field; a master's is a plus
  • Data engineering certification (e.g IBM Certified Data Engineer) is a plus

Disclaimer

This vacancy is being advertised by either Advanced Resource Managers Limited, Advanced Resource Managers IT Limited or Advanced Resource Managers Engineering Limited ("ARM"). ARM is a specialist talent acquisition and management consultancy. We provide technical contingency recruitment and a portfolio of more complex resource solutions. Our specialist recruitment divisions cover the entire technical arena, including some of the most economically and strategically important industries in the UK and the world today. We will never send your CV without your permission. Where the role is marked as Outside IR35 in the advertisement this is subject to receipt of a final Status Determination Statement from the end Client and may be subject to change.


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