Web3 Foundation
15
23K
13
2.50
3
0.13
- Areas of investment
Summary
The venture was found in Europe in Switzerland. The leading representative office of defined Corporate Investor is situated in the Zug.
Among the various public portfolio startups of the fund, we may underline Dock For fund there is no match between the country of its foundation and the country of its the most frequent investments - United States. Besides, a startup needs to be aged 2-3 years to get the investment from the fund. We can highlight the next thriving fund investment areas, such as Blockchain, Professional Networking.
This organization was formed by Gavin Wood, Peter Czaban.
The usual cause for the fund is to invest in rounds with 1 partaker. Despite the Web3 Foundation, startups are often financed by Liquid 2 Ventures, Connect Capital, BlockWater Management.
Deals in the range of 50-100 thousands dollars are the general things for fund. The top activity for fund was in 2019. The fund is generally included in 2-6 deals every year.
Investments analytics
Analytics
- Total investments
- 15
- Lead investments
- 3
- Rounds per year
- 2.50
- Follow on index
- 0.13
- Investments by industry
- Blockchain (8)
- Software (4)
- Internet (3)
- Information Technology (3)
- FinTech (3) Show 9 more
- Investments by region
-
- United States (4)
- Luxembourg (1)
- Switzerland (2)
- United Kingdom (2)
- Peak activity year
- 2020
Discover reliable insights
Leverage validated data, identify key contacts and secure funding opportunities for your business.Quantitative data
- Avg. startup age at the time of investment
- 2
- Avg. valuation at time of investment
- 153K
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Latest deals
Company name | Deal date | Industry | Deal stage | Deal size | Location |
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