Data Modeler (Insurance)

Arthur
London
1 week ago
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Data Modeler A SME Insurer are looking for a DataModeler to build out data models to facilitate reporting,generating insights and data science applications. The role wouldbe working close with Bas and Data Engineers and translate businessrequirements into effective data models and mapping documents.Essential skills for the Data Modeler: 1. Strong experience as aData Modeler / Architect 2. London Market Insurance industryexperience 3. Using Data Modelling such as Erwin 4. Experience withmodelling methodologies including Kimball etc 5. Usage of Data Lakeformats such as Parquet and Delta Lake 6. Strong SQL skills Rate:£600 - £700 P/D Outside IR35 Contract Duration: 6 months Location:London/WFH hybrid Start Date: ASAP, 1 month notice periodsconsidered If this position sounds of interest, please don’thesitate to apply. William will be in touch in due course todiscuss your application in greater detail.#J-18808-Ljbffr

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