Data Strategy Consultant

Consortia
Greater London
2 years ago
Applications closed

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I am managing an exciting Data Consultant contract position for a Real Estate/Proptech organisation starting up a Data function to help drive their marketing and sales divisions.

You would be the first hire into this new team so would be responsible for helping to hire further staff and setting the foundations/road map for them to follow.


Ideally, you will have experience with a previous property company either in Real Estate or Proptech.


What you will be doing:

Define what our data team should look like


Scope what value we could potentially gain from our data
Setting us up for success from a technical perspective. Creating a data warehouse etc...

Data Stratagey Consultant - 3months - Outside IR35 - £700 per day - Hybrid London


If this sounds of interest please apply and send your up-to-date CV to .

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