Eileses Capital

Type

Venture Capital

Status

Active

Location

San Francisco, United States

Total investments

23

Average round size

17M

Portfolio companies

14

Rounds per year

2.88

Lead investments

9

Follow on index

0.39

Exits

3

Stages of investment
Private EquityEarly Stage VentureLate Stage Venture
Areas of investment
TransportationSoftwareInformation TechnologyHuman ResourcesArtificial IntelligenceMachine LearningSaaSEnterprise SoftwareNetwork SecurityComputer

Summary

In 2016 was created Eileses Capital, which is appeared as VC. The venture was found in North America in United States. The main department of described VC is located in the San Francisco.

The fund is constantly included in 2-6 deals per year. The high activity for fund was in 2017. The common things for fund are deals in the range of 10 - 50 millions dollars. The increased amount of exits for fund were in 2019. Opposing the other organizations, this Eileses Capital works on 22 percentage points less the average amount of lead investments. Speaking about the real fund results, this VC is 40 percentage points more often commits exit comparing to other organizations.

The typical case for the fund is to invest in rounds with 2-3 participants. Despite the Eileses Capital, startups are often financed by NewView Capital, Acadia Woods Partners, World Innovation Lab (WiL). The meaningful sponsors for the fund in investment in the same round are World Innovation Lab (WiL), Storm Ventures, NewView Capital. In the next rounds fund is usually obtained by GV, World Innovation Lab (WiL), Storm Ventures.

This organization was formed by Charles Marston, Kishore Bopardikar.

Among the most popular portfolio startups of the fund, we may highlight ClearMotion, Hyphen, Taro. For fund there is a 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 4-5 years to get the investment from the fund. The fund has no specific favorite in a number of founders of portfolio startups. When startup sums 5+ of the founder, the probability for it to get the investment is little. Among the most successful fund investment fields, there are Recruiting, Enterprise Software.

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Investor highlights

Industry generalist
Yes
Industry focus
GeneralistFuture of WorkEdtechFintechCybersecurity Show 5 more
Geo focus
United States

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Investments analytics

Analytics

Total investments
23
Lead investments
9
Exits
3
Rounds per year
2.88
Follow on index
0.39
Investments by industry
  • Software (12)
  • Machine Learning (9)
  • Transportation (6)
  • Enterprise Software (5)
  • Artificial Intelligence (5)
  • Show 35 more
Investments by region
  • United States (23)
Peak activity year
2017

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Quantitative data

Avg. startup age at the time of investment
8
Group Appearance index
0.61
Avg. company exit year
5

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Latest deals

Company name Deal date Industry Deal stage Deal size Location
Asimily 02 Nov 2021 Software, Hospital, Cyber Security, Data Visualization Early Stage Venture 10M United States, California, Sunnyvale
Hyphen 23 Aug 2018 Mobile, Human Resources, Artificial Intelligence, Machine Learning, SaaS, Enterprise Software, Market Research Early Stage Venture 2M United States, California, San Francisco
VST Technologies 30 Apr 1996 Manufacturing, Consumer Electronics Early Stage Venture 3M United States, Massachusetts

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