Senior Product Manager (Payments)

Fresha
London
1 month ago
Applications closed

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The following information provides an overview of the skills, qualities, and qualifications needed for this role.About FreshaFresha is the leading marketplace platform for beauty & wellness, trusted by millions of consumers and businesses worldwide.Fresha is used by 110,000+ businesses and 450,000+ stylists and professionals worldwide, processing over 1 billion appointments to date.The company is headquartered in London, United Kingdom, with 12 global offices located across North America, EMEA and APAC.Fresha allows consumers to discover, book and pay for beauty and wellness appointments with local businesses via its marketplace, while beauty and wellness businesses and professionals use an all-in-one platform to manage their entire operations with an intuitive subscription-free business software and financial technology solutions.Fresha's ecosystem gives merchants everything they need to run their business seamlessly by facilitating appointment bookings, point-of-sale, customer records management, marketing automation, loyalty, beauty products inventory and team management.The consumer marketplace unlocks revenue potential for partner businesses by leveraging the power of online bookings and automated marketing through mobile apps and advanced integrations with major tech brands including Instagram, Facebook and Google.Role overviewGiven our exciting and progressive growth plans, we are looking for an exceptional

Senior Product Manager

to come and join our global business.Reporting directly into the

Head of Product , and working collaboratively with

engineers ,

designers ,

data analysts , and

marketeers

in an

innovative environment , you will be

accountable for leading two squads helping our partners manage their money and responsible for payments, money transfers, banking, and embedded finance.This is a great opportunity for someone looking to work in a

fast-paced

and

changing environment , who likes to work autonomously, enjoys a challenge and wants to make an impact.What you will be doingInsightfulness

- Conducting market and user research to become the in-house expert on industry trends and best practices.Strategic Innovation

- Developing a comprehensive, innovative product strategy for your workstream, aligned with business objectives and market trends.Data-Driven

- Driving the product roadmap, prioritising features and making data-driven decisions based on user feedback and market insights.End-to-End Leadership

- Leading end-to-end product development, from ideation to launch and beyond, ensuring timely delivery and high-quality execution.Cross-functional collaboration

- Working closely with cross-functional teams, including engineering, design, marketing, and operations, to define product requirements and specifications.Stakeholder Alignment

- Collaborating with internal stakeholders, including executives, marketing teams, and operations, to align product strategy with business objectives.Transparency

- Communicating product vision, progress, and results to stakeholders, ensuring transparency and building strong working relationships.This list is not exhaustive and there may be other activities you are required to deliver.To foster a collaborative environment that thrives on face-to-face interactions and teamwork, all Fresha employees work from the office four days per week, with the flexibility to work remotely one day each week.What we are looking forExperience

- 5+ years of product management experience, preferably in a scale-up B2B SaaS company within banking, fintech, or related industries.Product Leader

- Proven track record of successfully leading and delivering complex software products and features, ideally in the areas of payments, KYC, open banking, or embedded finance.Strategic

- Strong analytical skills, with the ability to translate data and insights into actionable product strategies and roadmap plans.Agile

- Experience working in an agile development environment, employing iterative and data-driven methodologies.Influential Communicator

- Exceptional communication and leadership skills, with the ability to influence and collaborate effectively across cross-functional teams and stakeholders.Customer-centric Mindset

- With a passion for understanding customer needs and delivering exceptional user experiences.Resourcefulness

- Entrepreneurial spirit, with the ability to thrive in a fast-paced, dynamic scaleup environment.Relationship

- Ability to interact with people from across the business and build strong relationships, including the ability to effectively influence upwards.Team Player

- Happy to roll sleeves up and assist the team when required.Adaptability

- Comfortable working in a fast-paced and changing environment.At Fresha, we value passion and potential as much as specific skills. If you're enthusiastic and eager to learn, we encourage you to apply, even if you don't meet every listed requirement. We believe in fostering growth and providing the support needed for you to excel in your role.Interview ProcessScreen call

- Video-call with a member from the Talent Team - 30mins1st Stage

- Video-call with Hiring Manager - 45-60mins2nd Stage

- In-person presentation with Hiring Team - 90minsWe aim to finalise the entire interview process and deliver feedback within

2 weeks.Every job application received is reviewed manually by our talent team. While we strive to assess applications within 7 days, the sheer volume of talented individuals expressing interest may occasionally extend this timeframe.Inclusive workforceAt Fresha, we are creating a culture where individuals of all backgrounds feel comfortable. We want all Fresha people to feel included and truly empowered to contribute fully to our vision and goals. Everyone who applies will receive fair consideration for employment.We do not discriminate based on race, colour, religion, sex, sexual orientation, age, marital status, gender identity, national origin, disability, or any other applicable legally protected characteristics in the location in which the candidate is applying.If you have any accessibility requirements that would make you more comfortable during the interview process and/or once you join, please let us know so that we can support you.

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