Senior Data Engineer – SC Cleared

Farringdon, Greater London
4 months ago
Applications closed

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Senior Data Engineer – SC Cleared
We are seeking a hands-on Senior Data Engineer with deep expertise in building and managing streaming and batch data pipelines. The ideal candidate will have strong experience working with large-scale data systems operating on cloud-based platforms such as AWS, Databricks or Snowflake. This role also involves close collaboration with hyperscalers and data platform vendors to evaluate and document Proofs of Concept (PoCs) for modern data platforms, while effectively engaging with senior stakeholders across the organisation.
Key Responsibilities:

Design, develop, and maintain streaming and batch data pipelines using modern data engineering tools and frameworks.
Work with large volumes of structured and unstructured data, ensuring high performance and scalability.
Collaborate with cloud providers and data platform vendors (e.g., AWS, Microsoft Azure, Databricks, IBM, Snowflake) to conduct PoCs for data platform solutions.
Evaluate PoC outcomes and provide comprehensive documentation including architecture, performance benchmarks, and recommendations.
Engage with key stakeholders including Heads of Architecture, Enterprise Architects, Product Owners, and Security teams to align data platform initiatives with business and technical strategies.Required Experience & Skills:

Proven experience as a Data Engineer with a strong focus on streaming and batch processing.
Hands-on experience with cloud-based data plaforms such as AWS/ Databricks/ IBM/ Snowflake.
Strong programming skills in Python, Scala, or Java.
Experience with data modeling, ETL/ELT processes, and data warehousing.
Experience conducting and documenting PoCs with hyperscalers or data platform vendors.Preferred Qualifications:

Certifications in AWS, Azure, or Databricks.
Experience with Snowflake, IBM DataStage, or other enterprise data tools.
Knowledge of CI/CD pipelines and infrastructure as code (e.g., Terraform, CloudFormation).
Familiarity with data governance frameworks and compliance standards

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