Data Engineer

Riviera Travel
Burton-on-Trent
1 day ago
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Reports to: Senior Data Engineer

Location: Remote

Job Type: Full Time

This is a remote working position with only occasional visits to the Burton-on-Trent, Staffordshire office

Riviera Travel has been a leading name in the tourism and travel industry for over 40 years, dedicated to creating authentic holiday experiences around the world. Our family-like culture emphasizes care, loyalty, and respect, fostering a lively and collaborative atmosphere at our head office in Stoke-on-Trent. We pride ourselves on delivering outstanding personal service and memorable journeys for our customers.

Role Overview

We are seeking a skilled Data Engineer to support the design, development, and maintenance of data solutions across our Azure-based data platform. Working closely with the Principal Architect, Senior Data Engineer, Cloud Team and cross-functional teams, you will help build robust data pipelines, contribute to data modelling activities, and ensure the delivery of reliable, high-quality data that supports business insight and operational decision-making. This role is ideal for someone looking to deepen their Azure and Databricks expertise while contributing to the evolution of our data landscape.

Key Responsibilities
  • Develop, maintain, and enhance end-to-end data pipelines in Microsoft Azure.
  • Support ingestion processes across structured and unstructured data sources.
  • Work with Azure Data Factory (ADF) and Databricks to build and manage ETL/ELT workflows.
Data Modelling & Warehousing
  • Assist in designing and implementing enterprise data models.
  • Help maintain and optimise data warehouse structures
  • Contribute to performance tuning and scalability improvements.
  • Work with Azure Data Lake, Azure Databricks, and Azure SQL Database to support data transformation and storage needs.
  • Collaborate with the Senior Data Engineer on platform enhancements and best-practice implementation.
Data Governance & Quality
  • Support data quality checks, validation workflows, and documentation processes.
  • Ensure adherence to data governance standards and security controls, including role-based access and encryption.
Monitoring & Maintenance
  • Monitor data pipelines and Azure services to ensure reliability, availability, and performance.
  • Troubleshoot issues, implement fixes, and contribute to continuous improvement efforts.
  • Assist with cost-optimisation across the Azure environment.
Skills, Experience & Competencies

Required Skills

  • Hands-on experience with Microsoft Azure data services, such as Azure Data Factory, Azure Data Lake, Azure SQL, and (ideally) Azure Databricks or Synapse Analytics.
  • Solid understanding of ETL/ELT concepts and experience building data pipelines.
  • Proficiency in SQL and exposure at least one programming language (Python preferred).
  • Understanding of data modelling principles and data warehousing concepts.
  • Awareness of data governance, security, and compliance practices.
Preferred Skills
  • Exposure to Spark, Databricks, or other big data processing frameworks.
  • Experience with Microsoft DevOps and CI/CD pipelines or Infrastructure as Code (IaC).
  • Knowledge of version control tools such as Microsoft DevOps.
  • Familiarity with machine learning or advanced analytics workflows.
Education & Experience
  • 2–4 years of experience in data engineering or a related field.
  • Experience working with Azure-based data solutions is highly desirable.
  • Certifications such as Microsoft Certified: Azure Data Engineer Associate are a plus.


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