Head of Product Management

Brighton
8 months ago
Applications closed

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Head of Product Management

Brighton

Salary: £75,000 - £78,500 + Fully Hybrid Role + Excellent Benefits + Pension + Holidays

Excellent opportunity for an experienced Head of Product to join a leading organisation in the healthcare industry, offering an autonomous role in an empowered environment where you can truly make your mark in a Tech-for-Good company.

This impressive, leading healthcare organisation is going through an exciting growth phase. They have invested heavily in their tech to ensure they provide the highest quality of patient care. Their innovative projects focus on Tech-for-Good and genuinely making a difference to people's lives.

The Head of Product Management is a newly created leadership role in a growing healthcare organisation, responsible for shaping digital strategy and leading a team of six Product Owners.

You will apply your expertise to develop impactful, user-focused digital solutions that improve care for over 110,000 clients annually. This role combines strategic thinking, product leadership, and agile delivery to drive operational efficiency.

You'll ensure digital, data, and technology solutions are aligned with business goals and client needs. It's a unique opportunity to lead transformative healthcare innovation at scale.

The ideal candidate will have a proven track record as a Head of Product, with a full understanding of the Software Development Life Cycle (SDLC). You'll also have demonstrable experience leading a team strategically, as well as involvement in strategic planning, including ROI analysis.

This is a brilliant role for a leader and strategic thinker to join a company where you can truly make a difference to people's lives.

The Role
*Define and communicate a product vision that aligns with strategic healthcare objectives.
*Lead the development, launch, and continuous improvement of digital solutions.
*Build partnerships, negotiate terms, and ensure vendors meet expectations and legal standards.
*Partner with internal and external teams to ensure alignment and adoption of digital products.
*Develop, motivate, and mentor a cross-functional team of Product Owners.
*Lead user research and leverage health industry trends and emerging technologies.
*Use data analytics to monitor performance and derive actionable insights.
*Provide clear reporting on product progress and outcomes to key stakeholders.
*Work with stakeholders to understand strategies and lead the development of digital roadmaps.
*Stay updated with health industry and technology innovations.

The Person
*Proven track record as a Head of Product.
*Full understanding of the Software Development Life Cycle (SDLC).
*Proven experience in leading and developing a team.
*Strong strategic thinking, including ROI planning and delivery

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