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Data Engineer

Talent Complete
Glasgow
1 week ago
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Join our hybrid Data Engineering team in Glasgow (B2B contract) and help us build modern, high-performance data pipelines with Python, Databricks, and Snowflake. You’ll collaborate across teams, drive technical excellence, and continuously enhance our data processes within an Agile setup.

Key Responsibilities:

  • Design, develop, and deploy ETL and data pipeline solutions using Python, Databricks, and Snowflake.
  • Collaborate across teams to define data requirements and ensure alignment with business goals.
  • Manage data quality, integrity, and performance optimization across large datasets.
  • Implement testing and automation frameworks, ensuring reliability and scalability.
  • Utilize REST APIs for data integrations and Airflow for orchestration.
  • Participate in Agile ceremonies, code reviews, and continuous improvement initiatives.
  • Document data flows, technical designs, and transformation logic.

Required Skills & Experience:

  • Bachelor’s degree in Computer Science, Engineering, or related field (or equivalent).
  • 4+ years developing data pipelines and data warehousing solutions using Python (Pandas, PySpark, NumPy).
  • 3+ years working with Databricks and Snowflake (or similar cloud data platforms).
  • Experience handling large, complex datasets and advanced ETL/data modeling.
  • Strong understanding of data integration, version control (Git), and Agile practices.
  • Familiarity with Linux, REST APIs, Power BI, and Airflow.
  • Experience with database performance tuning and big data frameworks (Hadoop, Spark).
  • Excellent communication, analytical, and problem-solving skills; able to collaborate effectively in cross-functional teams.
  • Self-driven, organized, and adaptable to changing priorities.

Nice to Have:

  • Background in financial services and understanding of regulatory frameworks.
Seniority level

Mid-Senior level

Employment type

Contract

Job function

Consulting


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