Cloud Data Warehouse Developer (GCP) – AI-Driven, Hybrid Role

hackajob
Manchester
2 days ago
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A leading online gaming company in Manchester is seeking a Data Warehouse Developer to enhance the data warehouse and catalogue products. This role requires experience with Google Cloud Platform, particularly BigQuery, and the ability to adapt in a dynamic environment. The ideal candidate will contribute to significant and minor projects while maintaining high-quality standards. This position offers a hybrid working model that promotes a balance between office and remote work.
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