Hybrid Data Engineer Consultant – UK & Europe

BAE Systems.
City of London
20 hours ago
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A global technology firm in London seeks a Data Consultant to design and build data solutions, leveraging software engineering best practices. You will partner with client stakeholders, actively contributing to data projects and engaging with both technical and non-technical audiences. Strong communication skills and experience in data technologies like Hadoop, Kafka, and Python are essential. The firm values diversity and encourages applications from various backgrounds.
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