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Data Engineer - Pharma

London
3 weeks ago
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Data Engineer - AI/ML | Leading Pharma | London (Hybrid)

My client a leading pharmaceutical company is looking for a Data Engineer who thrives on solving complex challenges and building scalable data solutions that power scientific innovation.

Key Responsibilities

Build and maintain data pipelines using Python, Spark, SQL, BigQuery, and Google Cloud
Collaborate with scientists to meet research data needs
Ensure high-quality, well-documented, and tested code
Improve performance metrics and integrate data across teams

Requirements

Essential:

Experience in data engineering
Strong Python & SQL skills
Experience with Google Cloud or similar
Familiarity with unit testing, Git, and Agile

Desirable:

Experience with bioinformatics or scientific datasets
Knowledge of Nextflow, Airflow, NLP, and Docker
Exposure to AI/ML applications

If the role aligns with your skills and experience, please apply with your updated CV

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