Kaya Ventures

Total investments

4

Average round size

16M

Portfolio companies

4

Areas of investment
E-CommerceSoftwareConsumer GoodsConsumerFood and BeverageFood ProcessingHealth CareHealth DiagnosticsMarketplaceCannabis

Summary

The common things for fund are deals in the range of 10 - 50 millions dollars. The high activity for fund was in 2017. The fund is generally included in less than 2 deals every year.

Among the most popular fund investment industries, there are Health Care, E-Commerce. Among the most popular portfolio startups of the fund, we may highlight Eaze. Besides, a startup needs to be aged 2-3 years to get the investment from the fund.

The usual cause for the fund is to invest in rounds with 6 partakers. Despite the Kaya Ventures, startups are often financed by Winklevoss capital, Rose Capital, Great Oaks Venture Capital. The meaningful sponsors for the fund in investment in the same round are RBO Ventures, Great Oaks Venture Capital, FJ Labs.

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Investments analytics

Analytics

Total investments
4
Lead investments
0
Investments by industry
  • Health Care (3)
  • Food and Beverage (2)
  • Cannabis (1)
  • Marketplace (1)
  • E-Commerce (1)
  • Show 7 more
Investments by region
  • United States (3)
Peak activity year
2022

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Quantitative data

Avg. startup age at the time of investment
6
Group Appearance index
1.00

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Latest deals

Company name Deal date Industry Deal stage Deal size Location
Partake Foods 04 Oct 2022 Food and Beverage, Health Care, Wellness, Lifestyle Early Stage Venture 20M United States, New Jersey, Jersey City
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