AllegisCyber

Type

Venture Capital

Status

Active

Location

Palo Alto, United States

Total investments

128

Average round size

20M

Portfolio companies

61

Rounds per year

4.57

Lead investments

17

Follow on index

0.52

Exits

25

Stages of investment
SeedPrivate EquityEarly Stage VentureLate Stage Venture
Areas of investment
SoftwareAnalyticsInformation TechnologyMobileEnterprise SoftwareCyber SecurityNetwork SecuritySecurityTelecommunicationsWireless

Summary

In 1996 was created AllegisCyber, which is appeared as VC. The leading representative office of defined VC is situated in the San Francisco. The fund was located in North America if to be more exact in United States.

The top amount of exits for fund were in 2018. The usual things for fund are deals in the range of 10 - 50 millions dollars. The fund is generally included in 2-6 deals every year. Speaking about the real fund results, this VC is 3 percentage points more often commits exit comparing to other organizations. When the investment is from AllegisCyber the average startup value is 100-500 millions dollars. The top activity for fund was in 2015. Despite it in 2019 the fund had an activity. Comparing to the other companies, this AllegisCyber performs on 6 percentage points less the average number of lead investments.

The usual cause for the fund is to invest in rounds with 4-5 partakers. Despite the AllegisCyber, startups are often financed by Menlo Ventures, Kleiner Perkins, GV. The meaningful sponsors for the fund in investment in the same round are Kleiner Perkins, GV, Norwest Venture Partners. In the next rounds fund is usually obtained by Kleiner Perkins, Menlo Ventures, Norwest Venture Partners.

We can highlight the next thriving fund investment areas, such as Cyber Security, Mobile. The fund has no exact preference in a number of founders of portfolio startups. If startup sums 4 or 5+ of the founder, the chance for it to be financed is low. For fund there is a match between the location of its establishment and the land of its numerous investments - United States. Among the various public portfolio startups of the fund, we may underline Shopzilla, Shape Security, Dragos Besides, a startup requires to be at the age of 4-5 years to receive the investment from the fund.

The fund was created by Barry Weinman, Bob Ackerman, Robert Ackerman. The overall number of key employees were 5.

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Investor highlights

Industry focus
Cybersecurity
Geo focus
Generalist

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Investments analytics

Analytics

Total investments
128
Lead investments
17
Exits
25
Rounds per year
4.57
Follow on index
0.52
Investments by industry
  • Software (45)
  • Security (40)
  • Cyber Security (38)
  • Network Security (33)
  • Enterprise Software (27)
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Investments by region
  • United States (118)
  • Israel (5)
  • United Kingdom (2)
  • Canada (2)
  • Switzerland (1)
Peak activity year
2015
Number of Unicorns
3
Number of Decacorns
3

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Quantitative data

Avg. startup age at the time of investment
16
Avg. valuation at time of investment
113M
Group Appearance index
0.98
Avg. company exit year
9
Avg. multiplicator
1.57
Strategy success index
0.70

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Latest deals

Company name Deal date Industry Deal stage Deal size Location
Elisity 29 Apr 2024 Software, Information Technology, Cyber Security, Network Security Early Stage Venture 45M United States, California, Milpitas
Synack 01 Aug 2013 Cyber Security, Network Security, Security Seed 1M United States, California, Redwood City

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Later, our team of analysts takes it further with manual verification, using proprietary tools for data cleaning and validation to ensure accuracy and reliability. We cross-check and enhance our findings through press and media monitoring, integrating information from trusted news outlets and venture capital aggregators. Finally, we stay ahead of the curve by monitoring social networks like LinkedIn and X.com.