Data Engineer

LendInvest
Glasgow
1 month ago
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About the role


Were hiring a Data Engineer to join our Team in Glasgow. This is a fantastic opportunity for a Computer Science graduate or someone with 1-2 years experience in SQL/Data Engineering to gain hands-on experience with modern data tools and work on impactful projects in a fast-paced environment.

The role will be part of a collaborative team and primarily focus on using SQL to manipulate our data pipelines in DBT, with opportunities to gain experience in Dagster, Synq, AWS, and Python.

Key responsibilities

Develop and maintain SQL-based data solutions (PostgreSQL / MySQL).

Work with DBT for data transformation and modeling.

Support the scheduling and execution of data pipelines using Dagster.

Assist in managing and optimizing AWS-lambda based data infrastructure.

Collaborate with the team to identify opportunities to improve the overall data architecture and data pipelines within the Data Platform.

Write and maintain Python scripts for data processing (bonus)

Build visualizations of data in Tableau and / or reporting within Metabase (bonus)

What are we looking for?

Degree in Computer Science, Data Science, or related field (or equivalent experience).

1-2 years experience as a SQL Engineer, Data Engineer, or similar role.

Proficiency in SQL (PostgreSQL / MySQL).

Experience with DBT for data transformation.

Understanding of Dagster or similar workflow orchestration tools.

Familiarity with AWS, Lambda, Python, Tableau, Metabase (nice to have, but not essential).

Understanding of key concepts within data architecture

Strong analytical mindset and problem-solving skills.

If youre eager to kickstart or grow your career in data engineering, wed love to hear from you!

Benefits

We believe in rewarding hard work and fostering a supportive environment. Heres a glimpse of what we offer:

Competitive salary + company bonus scheme Hybrid & flexible working policy ️ 25 days holiday (increasing with the length of service) Private healthcare Enhanced parental leave Matched pension contributions up to 4% Critical illness cover Employee Assistance Programme & Mental Health support Life assurance Regular performance reviews to promote a culture of growth and development Leadership training for managers Give as you earn scheme for charitable donations Support for attending conferences and professional learning & development Discounts via Perkbox Cycle to work scheme Season ticket loan Electric car loan scheme Monthly socials & annual offsite

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