Real-Time Data Engineer — Kafka, AWS & Python Expert

Humara by 15gifts
Brighton
2 days ago
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A leading tech company in Brighton is looking for a mid-Level Data Engineer to develop reliable data pipelines for innovative genAI products. The role requires strong skills in Python and real-time data engineering, alongside experience with tools like Kafka and Snowflake. Responsibilities include managing Kafka, collaborating with teams to enhance solutions, and guiding junior members. A competitive salary, extensive benefits, and an inclusive workplace culture are offered.
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