Community Manager

griffinfire
London
2 months ago
Applications closed

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As a Community Manager, you’ll be the voice and heartbeat of our brand across platforms like Twitter/X, Discord, and LinkedIn. You'll engage, grow, and nurture our community while attracting new users through engaging content. You are creative, culturally attuned, and fluent in English, with Spanish, French, and German as a plus.

Your ability to create captivating content, spark discussions, and keep the community thriving will make you a key player in our growth team. We aim to redefine the FinTech and crypto space with vibrant, engaged communities. We need the best minds to do it.

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What we are looking for

  • Proven experience managing communities across platforms like Twitter/X, Discord, and LinkedIn
  • Exceptional content creation skills - memes, threads, polls, and quick-witted replies
  • Ability to foster positive, and engaging community spaces
  • Strong project management and communication skills
  • A team player: Credit the team & Blame no-one

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What will make you stand out

  • Experience in FinTech, or Web3 communities
  • 3+ years of experience in community management
  • Ability to react quickly to trends and engage in real-time conversations
  • Fluent in French , Spanish , Dutsch or German
  • Understanding of Fintech, crypto, DeFi, Web3, and blockchain technologies

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What you’ll be working on

  • Build, manage, and grow our communities across Twitter/X, Discord, Instagram, Tiktok and LinkedIn
  • Create and curate engaging content to spark discussions and drive brand loyalty
  • Monitor trends and conversations, ensuring we’re always part of the dialogue
  • Collaborate with marketing and product teams to align messaging and campaigns
  • Organize AMAs, Twitter Spaces, and community events
  • Handle community feedback and provide insights to the product team

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What you’ll get

  • Competitive salary
  • Deblock shares
  • A unique Bursted Bubble NFT
  • 30 days of paid holidays (excluding bank holidays)
  • Flexibility to work remotely or join us in the office
  • Opportunities to work abroad for up to 4 months a year

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