Salary of Data Engineer Jobs in the United Kingdom
Data engineer salaries in the United Kingdom vary based on factors such as experience, location, and company size. On average, salaries range as follows:
- Entry-level: £30,000 – £45,000 per year
- Mid-level: £45,000 – £65,000 per year
- Senior-level: £65,000 – £100,000+ per year
Experience-Wise Salary Trend for Data Engineer Jobs in the UK:
- Entry-level (0-2 years): £30,000 – £45,000 per year
- Mid-level (3-5 years): £45,000 – £65,000 per year
- Senior-level (6+ years): £65,000 – £100,000+ per year
Data Engineer Jobs in the United Kingdom
In today’s data-driven world, the role of data engineers is becoming increasingly vital. Data engineers are responsible for designing, constructing, and maintaining the systems that allow for the processing and analysis of large volumes of data. With the growing demand for data-driven insights, data engineer positions are in high demand across various industries in the United Kingdom. This article aims to provide valuable insights for individuals aspiring to pursue a career in data engineering in the UK, including information on companies hiring, job portals, salary trends, and FAQs.
Key Responsibilities of Data Engineer Jobs in the United Kingdom:
Data Pipeline Development:
- Create, shape out, and keep the data pipeline sound, to retrieve, process, and transform huge amounts of data from different sources through data ingestion, transformation, and so forth.
- Develop ETL (Extract, Transform, Load) processes whereby raw data which is in a disorganized format can be cleaned for analysis.
- Scalable, reliable, and efficient data pipelines should be built to handle bigger volumes of data and meet business needs efficiently.
Data Modeling and Architecture:
- Design data models and schema templates for efficient data storage and retrieval for analytical usage.
- Engage data architects to create scalable data architectures and factors such as privacy, security, and compliance with governance and data privacy regulations (e.g. GDPR) will be considered.
Database Management:
- Provide administration and optimization of databases (e.g., SQL, NoSQL) to enable them to store as well as query data effectively.
- Monitor, tweak, and maintain database configurations and procedures to ensure data integrity and availability.
Data Integration and Connectivity:
- Reconcile information derived from a multitude of sources like databases, APIs, files, and streaming platforms together, enabling the data to smoothly transfer between systems.
- Establish connectors and APIs for data delivery and intake by analytics tools and apps.
Data Quality and Governance:
- Design quality control measures or validation procedures to confirm the correctness, neutrality, and consistency of data.
- Create data governance policies and standards to preserve data consistency, confidentiality, and adherence to the applicable laws and regulations.
Infrastructure Management:
- Manage cloud-based infrastructure (hybrid cloud environment using services like AWS, Azure, and GCP) for data storage, processing and analytics, using platforms like Redshift, BigQuery, etc.
- Distribute and manage the containers with applications via tools like Docker and orchestrators like Kubernetes.
Monitoring and Optimization:
- Track system operation, assets use, as well as the processing of data, in order to discover bottlenecks and optimize data procedures.
- Apply automated tasks and scripts to perform repetitive tasks e.g.bbackup, system maintenance and deployment.
Contact Us