Investment Analyst (Liquid Token)

Re7 Capital
London
1 year ago
Applications closed

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About us

Re7 Capital is a London-based cryptoasset investment firm. Re7 utilizes our deep crypto network and proprietary data infrastructure to drive investment decisions for a number of fund strategies. Re7 team is a dynamic team with a strong background in investment management, data science and crypto.

Re7 is searching for an Investment Analyst - someone who will be working directly with the Opportunities Fund leadership team. This is an opportunity to work at web3’s innovation frontier and have a direct impact on portfolio decisions and design. This role offers a clear path for growth, with the opportunity to progress into a Junior Portfolio Manager role over time.

This role could have you scouting deals, diligencing opportunities and investments, developing investment ideas, building financial models, assessing market sizes, and creating products for strategic investment theses, among other efforts.

If you are insanely passionate about crypto; if you can’t imagine NOT playing with every new web3 app that pops up; if in the last year you spent more time in web3 than outside - then this opportunity is for you.

Responsibilities

  • Interacting with existing and new DeFi, DePIN, and Infrastructure platforms, scouting CT and Discord for new projects and investment opportunities to the portfolio managers
  • Researching the platforms, documenting product / investment findings, constructing financial models, and presenting capital allocation recommendations
  • Tracking market events, updates, or announcements to inform portfolio positioning and risk
  • Engaging with crypto communities on social media for due diligence and product / UX feedback 
  • Supporting PMs in developing portfolio strategies and rebalancing ideas

Requirements

  • Common sense
  • 3+ years of experience in either of: Crypto, CS, TradFi, FinTech
  • Be equally comfortable doing fundamental research and working with numerous, large datasets. Experience with SQL and Python (preferred)
  • Know your way around CT / Discord / Dune Analytics / contracts on Etherscan to enhance your insight funnel
  • Foundational knowledge of data science / math / computer science
  • Pragmatic and sober probabilistic approach to decision making
  • Strong communication skills and ability to build and maintain a network of long-term relationships

Attributes

  • You are quick on your feet, analytical, thoughtful, and a self starter within a fast-paced environment
  • Approaches all tasks with dedication, seeing no task as too big or too small
  • High-energy, high-integrity
  • Ownership mentality and entrepreneurial mindset
  • Genuine intellectual curiosity, desire to learn and obsession with crypto 
  • Sharp analytical mind with disciplined and organised approach and attention to detail
  • Effective and concise thinker, writer, and communicator. Ability to quickly synthesize complex, disparate sources of information and form a point of view

Benefits

  • A dynamic and collaborative work environment
  • Opportunities for professional growth and development in a rapidly evolving and dynamic industry
  • Remote-first set up with opportunities to meet with the team in person
  • Competitive package

Application Process

  • Your CV and cover letter
  • A 1-pager describing the most interesting sub $1B FDV liquid token investment thesis within the secondary market today
  • Two references

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