Sector
Fintech & InsurtechFinancial Operations SoftwareMoney Transfer & ManagementBusiness SoftwareOperations Solutions
Target Customer
Enterprise & Professional Services
Core Technology
Platforms & InterfacesMobileSoftware
Tags (9)
paymentsfintechinvoicesaccountingsaasfinanceenterprisesenterprise-solutionscustomer-engagement
Geographic Markets
JapanGlobal
Gaviti Financials
Undisclosed
Capital raised
Cumulative Funding Raised Over Time ($)
—Dec 2018
$2.0MDec 2020
$3.0MJan 2021
$12.0MMar 2022
$12.0MMay 2021
Private Equity Funding
Flashpoint Venture Capital (Lead)
,
Moneta VC, LETA Capital, TAU Ventures, North First Ventures
TAU Ventures, Moneta VC, North First Ventures
Gaviti Lifecycle
Cumulative Funding Raised Over Time
—Dec 2018
$2.0MDec 2020
$3.0MJan 2021
$12.0MMar 2022
$12.0MMay 2021
All Events
Flashpoint Venture Capital (Lead)
,
Moneta VC, LETA Capital, TAU Ventures, North First Ventures
TAU Ventures, Moneta VC, North First Ventures
Gaviti News
1 article
Gaviti raises $9M for SaaS collections automation
Gaviti, a SaaS platform for managing and collecting invoices, has raised $9 million in series A funding. The funding will support the companys growth, improve existing tools, and expand financial management services. Gavitis platform automates tasks related to identifying late payments and collecting invoices. The company aims to streamline collection processes and provide an easy-to-use solution for finance teams. Gaviti has raised a total of $11.5 million and plans to use the new funds for aggressive growth, expansion in North America and Europe, and introducing additional FinTech solutions. The investors in the series A funding round include Flashpoint, Moneta VC, North First Ventures, TAU Ventures, and LETA Capital.
InvestmentExpand
Gaviti Team
Yan Lazarev
Co-founder & CEO
Founder
Alex Komarovsky
Co-founder & CTO
Founder
Employee Info
| Employees (range) | 11-50 |
| Exact count | 40 |
| Team members | 2 |
Similar Companies
Similar companies data is computed dynamically and not stored in the entity profile. This section requires implementing a similarity query (e.g. by classification overlap, sector, district).
This entity has 11 classification IDs that could be used for matching.