Ontario Teachers' Pension Plan
Other
Active
Toronto, Canada
104
597M
85
0.97
20
0.18
36
- Stages of investment
- Areas of investment
Summary
In 1917 was created Ontario Teachers' Pension Plan, which is appeared as Corporate Investor. The venture was found in North America in Canada. The main office of represented Corporate Investor is situated in the Toronto.
We also calculated 3 valuable employees in our database.
Considering the real fund results, this Corporate Investor is 9 percentage points more often commits exit comparing to other organizations. Deals in the range of more than 100 millions dollars are the general things for fund. The average startup value when the investment from Ontario Teachers' Pension Plan is more than 1 billion dollars. The top activity for fund was in 2017. Despite it in 2019 the fund had an activity. The fund is generally included in 2-6 deals every year. The higher amount of exits for fund were in 2010. Comparing to the other companies, this Ontario Teachers' Pension Plan performs on 26 percentage points more the average number of lead investments.
For fund there is no match between the country of its foundation and the country of its the most frequent investments - United States. The fund has exact preference in a number of founders of portfolio startups. When startup sums 4 or 5+ of the founder, the probability for it to get the investment is little. Among the most popular portfolio startups of the fund, we may highlight JD.com, Lyft, Snapdeal. Besides, a startup requires to be at the age of 6-10 years to receive the investment from the fund. Among the most popular fund investment industries, there are Mobile, Optical Communication.
The standard case for the fund is to invest in rounds with 4-5 partakers. Despite the Ontario Teachers' Pension Plan, startups are often financed by Kleiner Perkins, Accel, Sequoia Capital. The meaningful sponsors for the fund in investment in the same round are Accel, Sutter Hill Ventures, Kleiner Perkins. In the next rounds fund is usually obtained by Kleiner Perkins, Sutter Hill Ventures, Mobius Venture Capital.
Investor highlights
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Investments analytics
Analytics
- Total investments
- 104
- Lead investments
- 20
- Exits
- 36
- Rounds per year
- 0.97
- Follow on index
- 0.18
- Investments by industry
- Software (24)
- Internet (14)
- Information Technology (14)
- E-Commerce (11)
- Health Care (10) Show 133 more
- Investments by region
-
- United Arab Emirates (3)
- United States (50)
- Singapore (4)
- India (7)
- Australia (3) Show 8 more
- Peak activity year
- 2020
- Number of Unicorns
- 22
- Number of Decacorns
- 30
- Number of Minotaurs
- 22
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- Avg. startup age at the time of investment
- 19
- Avg. valuation at time of investment
- 4B
- Group Appearance index
- 0.79
- Avg. company exit year
- 21
- Avg. multiplicator
- 0.32
- Strategy success index
- 1.00
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Latest deals
Company name | Deal date | Industry | Deal stage | Deal size | Location |
---|---|---|---|---|---|
FTX Exchange | 21 Oct 2021 | Cryptocurrency, Trading Platform | Early Stage Venture | 420M | United States, California, San Francisco |
FYLD | 31 Mar 2024 | Software, Real Time, Public Safety | Early Stage Venture | 16M | England, London, United Kingdom |
IMATAG | 08 Mar 2019 | Software, SaaS | Seed | 1M | Bretagne, Rennes, France |
Retrotope | 30 Nov 2018 | Biotechnology, Health Care, Medical | Late Stage Venture | 20M | United States, California |
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