Head of Product

London
3 weeks ago
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Head of Product - West London - up to £120k

Do enjoy a start up environments?

Do you like delivering and executing product plans?

Do you want your next role to give you autonomy to deliver a product in the best way you see fit?

If the answer is yes, then this role will be for you.

This company uses machine learning models to predict consumer behavior and sells that data to

Financial Services, Insurance, Retail, Property, Real Estate, Media and Agency.

Unlike many data businesses they don't use 3rd party data meaning this data is only available through them.

So how would proposition this product? How is this best delivered? What would your focus be on?

If you can answer similar questions around product delivery and you have experience in Proptech or Property and Real Estate, apply now!

Head of Product - West London - up to £120k

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