Pat House
1
11M
1
1
- Areas of investment
Summary
The usual cause for the fund is to invest in rounds with 6 partakers. Despite the Pat House, startups are often financed by Thomas Siebel, TPG Growth, Sutter Hill Ventures. The meaningful sponsors for the fund in investment in the same round are Wildcat Venture Partners, Thomas Siebel, TPG Growth. In the next rounds fund is usually obtained by The Rise Fund, TPG Growth, Sutter Hill Ventures.
Among the most successful fund investment fields, there are Enterprise Software, Predictive Analytics. Moreover, a startup needs to be at the age of 6-10 years to get the investment from the fund. Among the various public portfolio startups of the fund, we may underline C3 IoT
The usual things for fund are deals in the range of 10 - 50 millions dollars. The average startup value when the investment from Pat House is more than 1 billion dollars. The fund is generally included in less than 2 deals every year. The high activity for fund was in 2017.
Investments analytics
Analytics
- Total investments
- 1
- Lead investments
- 0
- Exits
- 1
- Investments by industry
- Machine Learning (1)
- Software (1)
- Artificial Intelligence (1)
- Enterprise Software (1)
- SaaS (1)
- Investments by region
-
- United States (1)
- Peak activity year
- 2017
- Number of Unicorns
- 1
- Number of Decacorns
- 1
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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
- 14
- Avg. valuation at time of investment
- 1B
- Group Appearance index
- 1.00
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Latest deals
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