Eze Software Opens Canadian Office
Eze Software – BOSTON, MA – Eze Software Group, a premier provider of global investment management technology, has opened a new office in Toronto. The Toronto location marks a new chapter in Eze Software’s growth in North America, enabling the team to provide faster on-the-ground support for implementations and client operations in Canada.
“As long-time technology partners to Canada’s investment management community, we’ve seen the market become more sophisticated and complex over the last few years,” said Pete Sinisgalli, CEO. “Having an office in Canada will allow us to be closer to our clients and facilitate faster and better service, in line with our strategy of high-touch client support around the world.” Eze Software Group has 15 offices worldwide in North America, Latin America, Europe and Asia Pacific.
Eze Software Group serves asset managers on the buy- and sell-side in Canada, including a mix of hedge fund, long-only, multi-manager and asset owner clients. They use a range of applications within Investment Suite, including order management, execution management and portfolio accounting, to manage front-to-back-office workflows.
The Toronto office will be led by Steven McGill, Director, Client Success, who returns to Eze after 10 years with Citco Fund Services, where he held the position of director and was responsible for a number of key administration relationships, client onboarding, and was involved in strategic technology projects and development of Citco services in Toronto and the Netherlands.
Eze Software Group signed 246 new clients worldwide in 2016. More clients have been taking advantage of Eze Software Group’s continuing integration efforts, with more than 300 using more than one component of the award-winning Eze Software Investment Suite in an integrated manner.
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