Web3 Product Manager - Creator Platform

Fynder Talent
Manchester
1 year ago
Applications closed

This is an exciting opportunity to work in the Web3 Creator economy space. You will be working closely with the CPO and experienced team from FAANG and that have built Unicorn companies to deliver on Product strategy that would require you to oversee the execution of the consumer

facing platform.



Requirements:

  • Tertiary education, with minimum 2+ years building Web 2 Consumer facing Products and 2+ years building Web3 Consumer Products.
  • Having worked in Social platform or Marketplace businesses is a plus.
  • If you've served as a Data Analytics Manager, Product Manager, UX Design Manager with good commercial mindset, feel free to apply for this role.
  • Experienced working with blockchain technologies, NFTs, or token-based platforms.
  • Strong Problem solving skills with a focus on delivering user-centered solutions.
  • Strong ability to make sense of/synthesise and action qualitative and quantitative data.
  • Good familiarity with Product operations (Jira, Trello etc), can manage ambiguity and be able to communicate with clarity.
  • Fluency in English.


This is a remote role andno Visaswill besponsored.


The right candidate for this role will have good domain knowledge or expertise in creator economy space.

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