SBI FinTech Fund

Total investments

3

Average round size

2M

Portfolio companies

2

Lead investments

1

Follow on index

0.33

Exits

1

Areas of investment
SoftwareFinancial ServicesMobileWeb DesignCrowdfundingLendingWeb Development

Summary

The fund is constantly included in less than 2 deals per year. The usual things for fund are deals in the range of 1 - 5 millions dollars. The top activity for fund was in 2017.

The usual cause for the fund is to invest in rounds with 5 partakers. Despite the SBI FinTech Fund, startups are often financed by Global Brain Corporation. The meaningful sponsors for the fund in investment in the same round are Mitsubishi UFJ Financial Group, Mitsubishi UFJ Capital, Kabu.com Securities. In the next rounds fund is usually obtained by Mitsubishi UFJ Capital, Kabu.com Securities, Bank Of Tokyo - Mitsubishi UFJ.

Besides, a startup requires to be at the age of 2-3 years to receive the investment from the fund. Among the various public portfolio startups of the fund, we may underline Crowd Realty We can highlight the next thriving fund investment areas, such as Financial Services, Lending.

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Investments analytics

Analytics

Total investments
3
Lead investments
1
Exits
1
Follow on index
0.33
Investments by industry
  • Crowdfunding (2)
  • Financial Services (2)
  • Lending (2)
  • Mobile (1)
  • Web Development (1)
  • Show 2 more
Investments by region
  • Japan (3)
Peak activity year
2017

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Quantitative data

Avg. startup age at the time of investment
10
Group Appearance index
0.67

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Latest deals

Company name Deal date Industry Deal stage Deal size Location
Goodpatch 27 Apr 2017 Software, Mobile, Web Design, Web Development Late Stage Venture 3M Chiyoda, Japan
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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.