Pricing & Inventory Data Engineer

Cycle Exchange Limited
Kingston upon Thames
4 days ago
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A leading ecommerce company for bicycles located in Kingston upon Thames is seeking a Junior–Mid Level Data Engineer to enhance internal data systems and support commercial decision-making. If you have 1–3 years of experience in data engineering or analytics, and are comfortable with SQL and data analysis, this role involves data preparation, pricing model support, and ensuring accurate insights. Join a fast-growing team and contribute to valuable real-world projects.
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