Product Owner

Leeds
1 week ago
Applications closed

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Nicholas Howard is delighted to be recruiting for a Product Owner for a highly successful FinTech business, specialising in micro-serviced, AI-based solutions - their software epitomises bleeding-edge innovation.
As a Product Owner, you will be instrumental in developing innovative mortgage-focused SaaS products. This role is ideal for an individual looking to expand their career in a vibrant fintech environment. You will be actively involved in the build phase of SaaS offerings, collaborating with cross-functional teams to ensure solutions are both technologically advanced and market-relevant.
Job Summary
This role facilitates the successful execution of Agile methodologies within an innovative product and project team, ensuring efficient workflow and communication. The Scrum Master / Project Analyst will work closely with various stakeholders to drive project deliverables, track progress, and identify and resolve impediments.
Key Responsibilities

  • Define and prioritise product requirements and roadmaps in alignment with our strategic vision and customer needs.
  • Translate complex business needs into actionable user stories and acceptance criteria for the development team
  • Collaborate with UX/UI teams to ensure product designs are user-centric and align with bsiness goals.
  • Manage the product backlog and coordinate sprint planning with the Scrum team.
  • Utilize data analytics to monitor product performance and identify optimization opportunities.
  • Facilitate effective communication across technical and non-technical teams.
  • Engage in all Agile ceremonies, including planning, reviews, and retrospectives.
    Required Skills and Qualifications
  • Background in technology and experience in a similar role.
  • Strong analytical, problem-solving, and project management skills.
  • Exceptional communication and team collaboration abilities, superb command of the written word.
  • Adaptability and enthusiasm for working in a fast-paced start-up environment.
  • Keen interest in fintech and mortgage industry innovations.
  • Proficiency in Agile methodologies and tools (e.g., Github, JIRA).
    Desirable Skills
  • Prior experience in a fintech start-up or related industry
  • Familiarity with mortgage or financial services
    This is a fantastic opportunity to join a successful company as it continues to grow its product offerings and presence in the market. Please register your interest by applying now

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