Business Intelligence Associate Director

Publicis Imagine
London
1 year ago
Applications closed

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Job Description

Publicis Media is now looking for a new Senior Data Analyst to work on one of our latest and most exciting clients, Disney. This is an opportunity to work on a global disruptive brand, a real “people business” and be part of a team leading the change and driving businesses into the future.

Publicis Imagine's objective is to support Disney in managing, operating, and scaling Disney’s owned centralised reporting solution (Datorama) in the following key areas:

Leverage Azure, Databricks and Datorama to deliver across reporting automation processes. Build and maintain back-end reporting architecture and processes and provide Publicis Imagine teams with self-serve data solutions to eliminate the need for any manual Excel reporting freeing up their time to focus on higher-value tasks Training and documentation so all end users are comfortable using the platform and are kept up-to-date on any new features

You will need to primarily manage the Publicis Imagine Reporting Team and other stakeholders:

Day-to-day support for members of the Publicis Imagine Reporting team who are based in both the UK and India Manage conversations with Disney and Publicis Imagine regional and local teams on existing and new requirements Work closely with Publicis Imagine Activation and Data Governance teams to develop and optimise processes to ensure that accurate data flows into Datorama Integrate multiple data components into a fully functional dashboard environment within Datorama for end users

Qualifications

To be successful in this role you will need:

Experience of using Datorama to build dashboards and a clear understanding of the development project life cycle, from gathering requirements to the roll out to end users Strong experience in paid digital reporting within a media agency or client-side Possesses a charismatic, engaging personality and can successfully interact with senior/executive level client contacts. Be comfortable delivering work to a senior audience and be a self-motivated operator. Experience with delivering complex technical content to large groups, in a coherent, accessible and inspiring way. Real team-player, with strong collaboration and ability to manage upwards and downwards, both internally and with clients.

CRITICAL SKILLS

Solution Architecture Data Modelling and Design Data Management Consulting & Client management

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