Scala Data Engineer for ML-Driven Backends & Cloud

Sky
City of London
6 days ago
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A leading telecommunications and media company in the City of London seeks a Software Engineer to design and implement scalable APIs in Scala. The role emphasizes collaboration across teams, working closely with data scientists, and optimizing applications for cloud environments. Ideal candidates will have strong software engineering skills and an interest in machine learning and cloud technology. This position offers the opportunity to work in a dynamic environment, develop cutting-edge technology, and benefit from a variety of perks, including public transport accessibility and hybrid working arrangements.
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