Data Engineer

Searches @ Wenham Carter
London
1 week ago
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We are currently recruiting a Data Engineer for one of our clients. The role is outside IR35 and is paying £400-500 per day, it will initially be for 6 months. It is also fully remote.


Key Responsibilities

• Design, develop, and maintain batch and streaming data pipelines using Databricks (Apache Spark)

• Build and optimize ETL/ELT workflows for large-scale structured and unstructured data

• Implement Delta Lake architectures (Bronze/Silver/Gold layers)

• Integrate data from multiple sources (databases, APIs, event streams, files)

• Optimize Spark jobs for performance, scalability, and cost

• Manage data quality, validation, and monitoring

• Collaborate with analytics and ML teams to support reporting and model development

• Implement CI/CD, version control, and automated testing for data pipelines


Required Qualifications

• 3+ years of experience as a Data Engineer

• Strong experience with Databricks and Apache Spark

• Proficiency in Python (required); SQL (advanced)

• Hands-on experience with AWS or Azure cloud services:

o AWS: S3, EMR, Glue, Redshift, Lambda, IAM

o Azure: ADLS Gen2, Azure Databricks, Synapse, Data Factory, Key Vault

• Experience with Delta Lake, Parquet, and data modeling

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