
Ivanti announced the close of the strategic investment from Charlesbank Capital Partners, LLC (“Charlesbank”) to accelerate growth.
Charlesbank has joined existing investors Clearlake Capital Group, L.P. (together with its affiliates, “Clearlake”) and TA Associates (“TA”) as an institutional shareholder in Ivanti. Terms of the transaction were not disclosed.
Ivanti provides solutions that automate IT and security operations, enabling customers to discover, manage, secure and service their IT infrastructure from cloud environments to edge devices.
The additional capital from Charlesbank will enable Ivanti to extend its market position further through product innovation and acquisitions.
IIvanti will continue to be led by CEO and Chairman Jim Schaper and the current management team.
“Charlesbank shares the same values and commitment to serving customers as Ivanti,” said Jim Schaper, Ivanti Chairman and CEO. “Charlesbank was attracted to Ivanti because of the positive momentum we are achieving and, quite frankly, because they believe in our vision. With this investment, we will be able to accelerate our organic growth complemented with continued strategic acquisitions and expand our portfolio of solutions.”
Charlesbank, Clearlake and TA will have equal representation on the Ivanti Board of Directors. UBS Investment Bank and Citigroup acted as financial advisors for Ivanti. Citigroup and UBS Investment Bank also acted as capital markets advisors for Ivanti. Sidley Austin LLP provided legal counsel for Ivanti, with Ropes and Gray LLP representing Charlesbank.
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