Flexible Senior Data Architect & Tech Lead

Bicycle Therapeutics
Cambridge
1 week ago
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A pioneering pharmaceutical company in Cambridge is seeking a Technical Architect to lead the design and management of a robust data ecosystem. This role involves building scalable data infrastructure and pipelines while ensuring data quality and collaboration across teams. Ideal candidates will have significant experience in data engineering, expertise in cloud environments like GCP or AWS, and strong skills in software development practices. Competitive rewards and a flexible working environment are offered.
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