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Data Engineer

JLA Resourcing Ltd
Aldershot
4 days ago
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Role - Data Engineer
Location - Hybrid, 2 times a month onsite in Farnborough
Salary - £55,000 to £60,000
Start - ASAP

Security Clearance: This role requires DV clearance. Applicants must have lived in the UK for the past 10 years.

The Opportunity
This is an excellent opportunity for a skilled Data Engineer to play a pivotal role in shaping data-driven solutions that support critical UK sectors. You'll be joining a collaborative, forward-thinking team that thrives on innovation and creative problem-solving. With a strong focus on scalability and sustainability, you will have the chance to apply your expertise to meaningful projects while developing your skills alongside talented colleagues.

The Role
As a Data Engineer, you'll work within a highly skilled team of Data Engineers and Architects, contributing to the design, build, and operation of modern cloud-based data environments. Your responsibilities will include:
Designing, building, and maintaining data platforms in the cloud
Debugging and resolving complex data processing and analytics issues
Contributing to the continuous improvement of tools, technologies, and processes
Supporting the development of data integration and transformation pipelines
Collaborating with engineering, testing, and DevOps teams in an Agile environment
Providing Tier 3 support for operational systems
Assisting in project planning, risk identification, and mitigation strategies
Supporting data migration, including sensitive and production environments
The Person
We are looking for an experienced Data Engineer who is confident working in complex environments and has a strong background in database technologies and cloud solutions. You should bring:
Essential skills & experience:
PostgreSQL administration and strong SQL programming expertise
Proven ability to resolve SQL performance issues
Experience with AWS database offerings (e.g. RDS, Aurora)
Leadership experience within Agile/Scrum teams
Strong communication skills and the ability to estimate and plan effectively
Desirable skills:
Experience with AWS Aurora or other RDS-managed databases
Large-scale data migration experience
Familiarity with DB2 or Oracle
Proficiency in scripting languages such as Python
Knowledge of AWS Data Migration Services (DMS)
If you would like to learn more, please apply through the advert and we will be in touch to discuss in more detail.
TPBN1_UKTJ

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