KiwiTech

Type

Venture Capital, Accelerator/Incubator

Status

Active

Location

New York, United States

Total investments

19

Average round size

847K

Portfolio companies

18

Rounds per year

1.46

Lead investments

4

Follow on index

0.05

Exits

1

Areas of investment
E-CommerceSoftwareB2BHealth CareSaaSAppsMobile AppsMarketplaceBlockchainMedia and Entertainment

Summary

KiwiTech is the famous Corporate Investor, which was founded in 2009. The main office of represented Corporate Investor is situated in the Washington. The fund was located in North America if to be more exact in United States.

The fund has no exact preference in a number of founders of portfolio startups. For fund there is a match between the country of its foundation and the country of its the most frequent investments - United States. Among the most successful fund investment fields, there are Software, EdTech. Moreover, a startup needs to be at the age of 2-3 years to get the investment from the fund. Among the various public portfolio startups of the fund, we may underline PuzzleSocial, SAFE

The fund was created by Gurvinder Batra, Neal Gupta.

The usual cause for the fund is to invest in rounds with 1-2 partakers. Despite the KiwiTech, startups are often financed by Visionnaire Ventures, Upstage Ventures, Ronnie Lott. The meaningful sponsors for the fund in investment in the same round are Steve Kuhn, Rivet Ventures, Mark Wachen. In the next rounds fund is usually obtained by StartUp Health, Feenix Venture Partners, LLC.

The top amount of exits for fund were in 2016. The real fund results show that this Corporate Investor is 2 percentage points more often commits exit comparing to other companies. When the investment is from KiwiTech the average startup value is 1-5 millions dollars. The fund is constantly included in less than 2 deals per year. The usual things for fund are deals in the range of 100 thousands - 1 million dollars. The top activity for fund was in 2017. Despite it in 2019 the fund had an activity. Opposing the other organizations, this KiwiTech works on 18 percentage points less the average amount of lead investments.

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Investor highlights

Industry generalist
Yes
Industry focus
GeneralistHealthcareFintechEdtechSportstech Show 2 more
Stage focus
SeedPre-Seed
Geo focus
Generalist

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Investments analytics

Analytics

Total investments
19
Lead investments
4
Exits
1
Rounds per year
1.46
Follow on index
0.05
Investments by industry
  • Marketplace (4)
  • Media and Entertainment (4)
  • Apps (3)
  • Software (3)
  • Health Care (3)
  • Show 61 more
Investments by region
  • United States (18)
  • United Kingdom (1)
Peak activity year
2020

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Quantitative data

Avg. startup age at the time of investment
4
Avg. valuation at time of investment
5M
Group Appearance index
0.32
Avg. company exit year
6

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Latest deals

Company name Deal date Industry Deal stage Deal size Location
01 Feb 2020 Consumer, Mobile Apps, Social Network, Lifestyle, Dating Seed 160K United States, Tennessee, Chattanooga
eyar 01 Sep 2014 Information Services, Health Care, Medical Early Stage Venture 428K Zhejiang, Shangcheng District, China
Land Intelligence 14 Sep 2022 Software, PaaS, Real Estate Investment, Commercial Real Estate, IaaS, Property Development Seed 3M United States, South Carolina, Columbia
Lendtable 01 Oct 2020 Financial Services, FinTech, Finance, Personal Finance, Wealth Management, Credit Cards Seed 4M United States, California, San Francisco
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