Senior Data Engineer

Leeds
11 months ago
Applications closed

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Data Engineer

Hybrid (Leeds, West Yorkshire/Remote)

Salary to £60,000 + benefits

Full-time / Permanent

About the Role:
Bridge Technology Partners are working exclusively with a global energy business who are seeking an experienced Data Engineer to design, build, and maintain cloud-based data systems and pipelines. You’ll handle large datasets, ensure data quality, and collaborate closely with data scientists and analysts to support data-driven decision-making.

Key Responsibilities:

Develop scalable and secure data architectures.
Lead cloud data platform development, modeling, and planning.
Mentor data engineers and support their growth.
Implement best practices for data security and compliance.
Collaborate with stakeholders and external partners.
Skills & Experience:

Strong experience with AWS data technologies (e.g., S3, Redshift, Lambda).
Proficient in Python, Apache Spark, and SQL.
Experience in data warehouse design and data migration projects.
Knowledge of Agile and Waterfall methodologies.
Excellent communication and problem-solving skills.
What’s on Offer:

Be part of a friendly, supportive data team.
Hybrid working model with a minimum of 2 days per week in our Leeds office.
Opportunities for professional growth and development.
Apply Now!
If you’re a motivated data engineer looking to make an impact, we’d love to hear from you

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