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Data Engineer

NLB Services
Glasgow
1 week ago
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Data Engineer

Location - Glasgow (hybrid) 3 days in a week

Contract role (6 to 12 Months)


Skills / Qualifications:

· 4+ years of experience developing data pipelines and data warehousing solutions using Python and libraries such as Pandas, NumPy, PySpark, etc.

· 3+ years hands-on experience with cloud services, especially Databricks, for building and managing scalable data pipelines

· 3+ years of proficiency in working with Snowflake or similar cloud-based data warehousing solutions

· 3+ years of experience in data development and solutions in highly complex data environments with large data volumes.


Experience with code versioning tools (e.g., Git)

· Knowledge of Linux operating systems

· Familiarity with REST APIs and integration techniques

· Familiarity with data visualization tools and libraries (e.g., Power BI)

· Background in database administration or performance tuning

· Familiarity with data orchestration tools, such as Apache Airflow

· Previous exposure to big data technologies (e.g., Hadoop, Spark) for large data processing

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