BI Developer

Propel London
London
2 years ago
Applications closed

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Job Description

Job Purpose – The BI Developer is responsible for building dashboards using business data available on AWS that help business teams gain insights into results


Responsibilities
-Works with Product owners and Business owners to design and develop dashboards
-Works with Data Engineers on helping define ETL data/process that is required for dashboards
-Ability to work in an Agile/Scrum team
-Ability to problem solve and propose solutions
-Use established Analytics standards/processes in dashboard development
-Ability to communicate with technical and business teams
-Collaborate with technical team to improve performance on dashboards
-Collaborate with other BI/Dashboard developers to define best practices

Required Qualifications
-Bachelor’s Degree in Computer Science or related field
-Some experience in the Music Business Industry
-At least 3 years of experience working with Tableau.
-Knowledge of Data Modeling and proficient in writing SQL queries in MySQL, Postgres, MS SQL Server and Redshift
-Working knowledge of ETL, RDS, Redshift on AWS
-Experience working in Agile/Scrum teams

** Business Intelligence Developer needed - 6-12 month contract - Start ASAP - OUTSIDE IR35 - REMOTE **

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