Senior Data Engineer - Analytics (Contract)

Opus Recruitment Solutions Ltd
Reading
23 hours ago
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Job Description

Senior Data Engineer – Analytics (Contract)Hybrid – London/Reading A data engineer is required to deliver insight-ready datasets and support advanced analytics across a cloud-based environment. The role focuses on building scalable pipelines, refining complex data sources, and enabling analysts and data scientists with high-quality, well-structured data.Key Responsibilities

  • Develop and optimise data pipelines for analytics and modelling.
  • Cleanse, transform, and analyse large datasets using Python/R.
  • Maintain SQL-driven processing workflows in the cloud.
  • Perform EDA to identify trends, anomalies, and data issues.
  • Collaborate with BI teams to deliver reliable analytical datasets.

Skills & Experience

  • Strong SQL and data wrangling.
  • Proficient in Python or R.
  • Experience with large, complex datasets and Power BI.
  • AWS experience preferred: Glue, S3, Athena, Lambda, Redshift, Step Functions.
  • Advantageous: statistics/ML exposure and telecom-style data environments.

Contract: 6-month rolling, hybrid onsite - £500 - £550 p/d (Outside IR35)

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