Lead Product Manager

In Product
London
1 year ago
Applications closed

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Product Leader - Up to £140,0000 plus equity - 4 days a week in office Central London


In Product is partnered with one of the fastest growing software development Startups in London. We are looking to strengthen their Product Management team with the addition of a Product Leader. If you are driven to join an experienced C-Suite and pave your own career path to have a seat at the decision making table, this is an optimal time to join this business.


You will be joining a successful business that has exceeded their targets for the last three years, this business is financially stable reaching profitability in their infancy, and continuing to grow every year. They are also backed by some of the top investors, you will work with experienced founders, who don't rely on investment but appreciate the importance of investing in people and technology to continue to grow.


The Product you will be working on, creates connections between people. leveraging the latest machine learning to enable beautifully designed Products informed by data across the world. This product is accessible in over 10 languages, and culturally tailored to multiple countries.


As a Product Leader, you will be joining at a time where there is still opportunity to carve out the future, including your role in a growing and ambitious business. We would love to hear from you if


✅ You want to be the 'CEO' of Product Management, you will work with a high degree of autonomy setting the strategic objectives for their D2C Products, proactively setting the Product roadmap and identifying complex Product challenges the team are likely to foresee.


✅You have a high growth mindset and ambition to work as part of the C-suite. You will be able to evidence self driven career developments, leading to promotions and steep learning through your career within businesses that have worked as a lean team and gone on the scale.


✅You value design, and want to work with highly talented Product Designers, and Engineers who have created beautifully crafted Digital Products that delight their users and create emotional connections between people.


✅You have worked with mobile applications, in a B2C/ D2C, high growth environment. You will also have some knowledge of working with AI and Machine Learning.


✅You value working in person, the C-suite of this business is in four days a week and work more effectively in person, you will however be encouraged to use the flexibility around their core hours of 10am-2pm to balance your work and personal life.


If you can showcase your experience and motivation to work in the business we have described above, then please apply.

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