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REfficient: Preparing for Growth
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In early 2011, the founder of REfficient, an asset recovery service based in Hamilton, Ontario, was thinking about how she should manage the rapid growth that seemed just around the corner. Founded in 2010 to help cable firms generate value from their stock of surplus equipment, REfficient, with no direct competitors in the Ontario market, had grown rapidly and had a list of corporate customers, two warehouses and five employees. The company was positioned as the efficient way for customers to recover value from their surplus assets; it would collect and inventory them, provide an online list and track the environmental impact of selling or discarding them. The company was now looking to secure a pilot project with the Ontario provincial government. Innovative in the "green" sense because of its innovative reuse, recycle or resell model, as well as its integrated carbon footprint estimator, REfficient was a good match for the program. But how would it deal with an increasingly large variety of items, given its limited resources and space?