Dig Ventures

Type

Venture Capital

Status

Active

Location

London, United Kingdom

Total investments

28

Average round size

12M

Portfolio companies

19

Rounds per year

4.00

Lead investments

3

Follow on index

0.32

Exits

1

Stages of investment
SeedEarly Stage Venture
Areas of investment
AutomotiveInternetSoftwareFinTechArtificial IntelligenceMachine LearningSaaSEnterprise SoftwareAutonomous VehiclesFleet Management

Investor highlights

Industry focus
B2B/EnterpriseFintech
Stage focus
SeedPre-Seed
Geo focus
AlbaniaAustriaBelgiumBosnia and HerzegovinaBulgaria Show 38 more

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Investments analytics

Last fund

Fund size
USD 100000000
Fund raised date
2022-10-03

Analytics

Total investments
28
Lead investments
3
Exits
1
Rounds per year
4.00
Follow on index
0.32
Investments by industry
  • Software (18)
  • SaaS (9)
  • Machine Learning (8)
  • FinTech (6)
  • Artificial Intelligence (5)
  • Show 29 more
Investments by region
  • United Kingdom (7)
  • United States (10)
  • France (1)
  • Israel (2)
  • Germany (3)
  • Show 2 more
Peak activity year
2020

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Quantitative data

Avg. startup age at the time of investment
3
Avg. valuation at time of investment
3M
Group Appearance index
0.68
Avg. company exit year
2

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Latest deals

Company name Deal date Industry Deal stage Deal size Location
dltHub 20 Jul 2023 Software, SaaS, Enterprise Software Seed 1M United States, Delaware, Wilmington
Garnet 29 Nov 2021 Seed 7M

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