Impact Environmental Group (IEG) has added Ty Rhoad as its new chief revenue officer (CRO).
As a key member of the executive team, Rhoad will oversee sales leadership and revenue strategy for IEG’s North American divisions, which include solid waste, environmental waste, service and waste infrastructure (chutes) sectors.
“I am beyond excited to join the IEG team and be part of such a well-respected market leader in the industry,” Rhoad says. “I am truly grateful for this opportunity and look forward to contributing to the company’s ongoing success. Joining this talented team is an opportunity I can't wait to embrace and make a meaningful impact.”
With a wealth of experience in the waste industry, Rhoad most recently served as vice president, Americas for TOMRA Recycling, the premier manufacturer of advanced waste and metal sorting equipment. Rhoad began his career in waste with Rehrig Pacific where, in 9 years, he progressed from regional sales representative to director of sales for Rehrig’s environmental division. Rhoad has an impressive track record of building high performing sales teams and driving organic growth.
“I am thrilled to welcome Ty to the IEG team,” IEG CEO Brian Beth says. “Ty is highly respected in the waste industry as he continually provides his customers with high-value product and service solutions. Ty’s process driven, winning approach will help us accelerate our growth and strengthen our leadership position in the market.”
The addition of Rhoad is a key component for IEG to achieve its strategic growth objectives, reinforcing its commitment to a customer-focused culture across all IEG divisions.
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