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Senior Engineer, Data Engineering

Experis UK
London
3 weeks ago
Applications closed

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Senior Data Engineer

Job Title: Data Engineer - Advanced Analytics Location: On-site in London, with Occasional Travel to Croydon
Clearance Required: BPSS + SC

Start Date: ASAP
Duration of contract: 2+ Years

The ideal candidate will have active SC Clearance or be eligible to undergo SC Clearance.

We are actively looking to secure Data Engineers to join Experis on behalf of our client.

Job Purpose/The Role:

We are seeking 3 experienced Data Engineers to support a high-profile Public Sector client. These roles will be part of a large project, contributing to the ongoing development and live support of critical systems within a secure, agile, and data-driven environment.

Your Key Responsibilities:

Work collaboratively in a multi-disciplinary Agile & DevOps team to deliver data solutions and maintain live systems.
Apply best practices for data integration, transformation, and delivery in a secure and scalable environment.
Support data pipelines and ETL processes across various technologies and cloud platforms
Maintain, monitor, and troubleshoot systems using a wide array of tools and platforms.
Contribute to automation and continuous integration/deployment (CI/CD) efforts.
Engage directly with clients and stakeholders, demonstrating excellent problem-solving and communication skills.

Your Skills:

Excellent attention to detail and ability to follow defined processes.
Strong commitment and ability to quickly learn new technical concepts.
Familiarity with Agile methodologies and DevOps practices.
Experience with UNIX environments and associated toolsets.
Solid understanding of CI/CD pipelines and tools.

Technical Expertise in not all, but the majority of the below:

Databases & SQL: SQL, Oracle DB, Postgres, SQL Server
Messaging & Monitoring: ActiveMQ, Zabbix, Grafana, Ambari
Cloud Platforms: AWS, Azure
Big Data & Processing: Hadoop
DevOps Tools: Jenkins, Puppet, BitBucket
BPM & SOA: Oracle SOA, Oracle BPM, ActiviBPM
Web & Application Servers: IIS
Collaboration & Tracking: Jira, Confluence
Other Technologies: CI tools and cloud-based technologies

Desirable Skills:

Broader exposure to enterprise integration platforms.
Prior experience in public sector or secure environments.
Hands-on knowledge of additional cloud services or containerization technologies.

Benefits Include:

~ Contributory pension scheme
~ Employee Assistance Program
~ Medical and Dental cover
~22 days holiday + bank holidays
~ Maternity Pay/Shared Parental leave and paternity leave
~ Sick pay


Suitable Candidates should submit CVs in the first instance.

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