Data Engineer Consultant - Data & AI (DV Cleared / Eligible)

Anson McCade
Bristol
1 year ago
Applications closed

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: Bristol
: £65k - £75k

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Our client, a leading consultancy in the Defence & Security sector, is seeking a skilled Data Engineer to join their AI & Data Engineering team. This pivotal role offers the opportunity to be at the forefront of advanced technology projects aimed at enhancing national security. The position is perfect for individuals who are passionate about leveraging their technical expertise to contribute significantly to high-profile initiatives.

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Develop and maintain scalable data pipelines and architectures that meet client needs across diverse data environments. Implement integration frameworks and query engines to produce high-quality standardized data, enabling insightful AI applications and reporting. Collaborate with multidisciplinary teams to deliver custom solutions using agile methodologies, ensuring deliverables meet or exceed client expectations. Innovate and apply cutting-edge data engineering solutions to tackle complex problems, ensuring optimal performance and scalability of data systems. Contribute to the development of data governance strategies and maintain high standards for data security and quality across projects.

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Proven experience in data engineering, particularly with ETL processes, data pipeline construction, and workflow orchestration. Familiarity with distributed computing techniques, such as parallel processing and batch data management. Strong foundation in data system optimization, information security, and data governance. Ability to effectively communicate technical concepts to non-technical stakeholders. Candidates must be eligible and willing to obtain UK security clearance at the Developed Vetting level if not already cleared.

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Our client is a prominent consultancy known for its deep impact on Defence & Security sectors through innovative solutions and strong client relationships. They offer a dynamic work environment where creativity and effectiveness are at the core of delivering outstanding results.

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Engage in challenging and significant projects that directly contribute to national safety. Work within a supportive team that values innovation and practical solutions. Accelerate your career growth in a sector that values security and advanced data management skills.

If you're a Data Engineer eager to make a substantial impact in the Defence & Security fields, we would love to hear from you. This Data Engineer position is not just a job, it's a career in making a difference. Join us to connect your skills with meaningful projects!

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