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EWOR

For those who think in decades and build in days.

AI Infrastructure Co-Founder / Head of Sales

LLM EngineerMachine Learning EngineerFull TimeRemoteLeadTeam 201-500Since 2020H1B No SponsorCompany SiteLinkedIn

Location

Europe

Posted

8 days ago

Salary

0

Seniority

Lead

Bachelor DegreeEnglish

Job Description

AI Infrastructure Co-Founder / Head of Sales

EWOR

• You will own, build, and run your startup in fields such as AI Infrastructure. • You will embark on an extensive personal development journey crafted by unicorn founders and follow a fully customised programme enhancing your goal, time, and energy management. • You will receive support in hiring through our network to over 50,000 professionals and advice as well as best practices from serial entrepreneurs. • You will receive intensive coaching to make your startup ready to raise millions in funding. • You will iterate your product with us until having reached product-market-fit and receive support in building up a sales force or creating a marketing engine respectively.

Job Requirements

  • You are based in Europe or the Americas or open to relocate.
  • You are willing to take full responsibility for your own startup and scale it to €100M+ in revenues.
  • You have excellent communication skills in the English language.

Benefits

  • A salary while you build your startup as you will directly be employed by us.
  • Option for up to €500k in funding.
  • 1:1 sparring with unicorn founders on a weekly basis.
  • Access to the top 0.1% of founders, peers and investors.
  • Hiring top notch talent supported through our network (over 50,000 professionals).
  • Support in reaching product-market-fit and building up a sales force / marketing machine.
  • Funding support for securing a multi-million euro funding round within 12 months (on average, EWOR Fellows raise > €2M after our Grand Pitch).

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