Silknet
1
4M
1
0.04
1
- Areas of investment
Summary
In 1996 was created Silknet, which is appeared as Corporate Investor. The company was established in North America in United States. The main department of described Corporate Investor is located in the Manchester.
The common things for fund are deals in the range of 1 - 5 millions dollars.
The typical case for the fund is to invest in rounds with 2 participants. Despite the Silknet, startups are often financed by OVP Venture Partners. The meaningful sponsors for the fund in investment in the same round are OVP Venture Partners. In the next rounds fund is usually obtained by Wheatley Partners, OVP Venture Partners, Covestco-Seteura.
The fund was created by James Wood.
Among the most successful fund investment fields, there are Apps, Service Industry. Besides, a startup requires to be at the age of 1 and less years to receive the investment from the fund. Among the various public portfolio startups of the fund, we may underline Safeharbor Knowledge Solutions For fund there is a match between the country of its foundation and the country of its the most frequent investments - United States.
Investments analytics
Analytics
- Total investments
- 1
- Lead investments
- 1
- Rounds per year
- 0.04
- Investments by industry
- Apps (1)
- Service Industry (1)
- Software (1)
- Investments by region
-
- United States (1)
- Peak activity year
- 1999
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Leverage validated data, identify key contacts and secure funding opportunities for your business.Quantitative data
- Avg. startup age at the time of investment
- 23
- Group Appearance index
- 1.00
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Latest deals
Company name | Deal date | Industry | Deal stage | Deal size | Location |
---|---|---|---|---|---|
Safeharbor Knowledge Solutions | 22 Nov 1999 | Software, Apps, Service Industry | Early Stage Venture | 4M | United States, Washington |
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