Product Manager

MarkJames Search
Luton
1 year ago
Applications closed

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Job description

Our client, a global consumer business, are currently hiring for a Product Manager you will be responsible for driving initiatives that cover both technology and data solutions, across the full product lifecycle, from idea to delivery. You will need to work closely with key stakeholders to understand the industry and market pressures to help create, priorities, and deliver a backlog of initiatives that will drive the business forwards.



Responsibilities

Product Manager and Product Owner responsibility for Revenue Management initiatives. Developing a roadmap for Technology, Data Science, Analytics and Engineering solutions in Revenue Management. Acquires knowledge of Revenue Management, understanding how the teams operate, what their objectives are, and building strong relationships with stakeholders. Works proactively with key stakeholders within the business to identify opportunities for Technology, Data Science and Analytics solutions to deliver significant benefits. Provides a bridge between the Technology and Data teams, and the business, effectively understanding and communicating their capability and value.


Requirements

Leadership and stakeholder management- Experience in leading and delivering business product launches. You believe in collaboration and have excellent stakeholder and relation management skills to achieve joined goals.Product Management- Strong product knowledge and a toolkit that can be applied pragmatically as the situation requires.Commercially literate- Entrepreneurial mindset, backed up by strong business acumen and highly results focused. You understand the business and external environment, the longer-term perspective, and implications of decisions.Product mindset- Must have experience of Agile (or similar Lean methodologies) and of actively contributing throughout the launch process.Passionate about data & analytics- Strong analytical skills with a good understanding of the data ecosystem. It excites you what opportunities data products and solutions can bring to a business.A strong delivery focus- You are an experienced go-getter who isn't afraid to get their hands dirty and dives into a project to achieve success by problem-solving. Self-motivated and results-driven with a "take charge" attitude to manage the full development cycle of a product.



This is a full time, permanent position working on a hybrid basis, with the requirement to be in the office, in Luton, 3 days per week.

Our client offers excellent remuneration and benefits package.

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