ALOIS Solutions | Data Modeler

ALOIS Solutions
East London
1 year ago
Applications closed

Job Title: Senior Data ModellerLocation: London EC3M 7AT, UKPresence: HybridType: ContractDuration: 6 MonthsJob Description:Required Skills:An experienced, driven expert in a broad set of data capabilities such as:Data design patterns and optimisation across disparate mediums within a Cloud-based environment (preferably AWS) such as large object file systems (AWS S3), RDBMS and columnar databases.A strategic thinker who can define modelling patterns for various layers of a data environment balancing storage vs. compute costs, optimised for as broad a set of use cases as possibleExtensive data modelling experience, from conceptual to physicalExpertise in different modelling methodologies such as 3NF, Dimensional, Data VaultExpertise in building cloud data warehouses using Kimball, preferably using AWS RedshiftKnowledge/experience of building queries and MI outcomes utilising data visualisation technologies (e.g., Tableau)Qualifications:RDMBS design and/or administration and in AWS architecture (at least one of these)Awareness of data governance and data ethics in the production of automated modellingProven track record of delivery of modelling designs/approaches in large scale data environmentsEvidence of broad stakeholder management from senior business level down to analystExperience in, or extensive exposure to MI/BI use cases, data exploration and analysis.Experience within predictive modelling/Data Science would be an advantageExperience in defining and delivering data monitoring across a large platform as well as establishing governance forums, processes and guardrails to ensure compliance with standards

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