Register Your Interest - Project Manager

RAPP
London
1 year ago
Applications closed

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About the job

About Rapp

Rapp, part of Omnicom, exists to help clients invent a new future for their marketing through technology and data. Helping clients to build new capabilities to meet the challenges of an ever-changing marketing landscape, we do this by delivering customer centric, data driven, profitable experiences. Working at the intersection of marketing technology, data and user experience, our clients can use such services as: Transformation Consultancy, Marketing Science, Data Engineering, Customer Experience and Marketing technologies.

Our key clients include Jaguar Land Rover, Samsung, Christie’s, Mercedes Benz, Mont Blanc and Cartier. Rapp has a global presence with 300+ employees spanning ten cities, located in the UK, Europe, North America, and Australia.

To learn more visit www.Rappworldwide.com

At Rapp we believe everyone deserves a career journey that’s tailored to suit their own personal needs. We are committed to ensuring all our colleagues have access to an environment that fosters a growth mind-set. Looking to use the most advanced marketing technology and data models we can be radical in our approach. We are a strong and diverse team of consultants, technologists, data scientists and customer success practitioners. What unites us is our shared purpose and desire to transform marketing.

Culturally, Rapp is an innovative, fast moving, exciting and occasionally a demanding place to work.

Role And Responsibilities

The purpose of the Project Manager is to work in partnership with the Client Partnership Team and closely with Planning, Data and UX as well as the Creatives on the team, this role in central to this new piece of business. You’ll be responsible for delivery across all aspects of the account from project initiation through to final production, and everything in-between.

Whilst not exhaustive, below is a selection of some role specific responsibilities:

The role provides the opportunity to work across multi-channel campaigns (Email, Print, Display, Social, Owned Media) and will give you exposure to the cutting-edge technology in the worlds of CGI, AI and automation You will be working with some of the smartest minds in the industry, at an award-winning agency on a forward thinking client No day will be the same – you will be constantly challenged to understand new technologies and find ways to harness them for the client

SPEAKING UP ON RACISM AND DIVERSITY

At Rapp we take a strong stand against racism and any type of discrimination. Our mission has always drawn strength from diversity and welcomed people from every walk of life around the

world. We are committed to creating an equitable work environment and leading progress forward on inclusion and diversity. We hope that you have the same position and will also attempt to bring positive change in this endeavour and to transform marketing.

LASTLY, BUT IMPORTANTLY…

What we need from you: jump in, find problems. Fix them and build relationships. Imagine new solutions, invent them and manage them. Do whatever it takes to go above and beyond. And stand up for individuality.

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