Brush Ceramic Products (BCP) has been part of the Tucson community since 1980, producing high performance engineered materials for the global electronics market. Brush Ceramic Products is a subsidiary of Brush Wellman Inc. of Cleveland, Ohio. The Tucson operation produces materials for computer and telecommunications equipment, automotive electronics, aerospace and defense, oil and gas, and industrial product applications. BCP operates on a nine-acre site at 6100 S. Tucson Blvd., using state-of-the-art equipment and the latest computerized process control methods. The plant, opened in 1980, occupies 50,000 square feet under roof and employs nearly 100 people.
BCP operations go far beyond simple machining or assembly. We have an extensive manufacturing process that begins with a detailed recipe for formulation and progresses through many types of forming, machining, firing, and metallizing operations. The facility recently achieved ISO certification, further validating the “world-class” quality of our operations.
We are proud of the work that is done in Tucson and the contributions our products make to society. Brush Ceramic Products, Improving the Way We Live.
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