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GPU Hardware Configurations in Deep Learning
In deep learning environments, the hardware configuration of Graphics Processing Units (GPUs) varies depending on computational requirements and physical constraints. These accelerators are typically connected to the central system via a high-speed expansion bus, such as Peripheral Component Interconnect Express (PCIe). High-end servers designed for intensive model training often deploy up to GPUs connected in an advanced topology to maximize parallel processing capabilities. Conversely, standard desktop systems generally accommodate or GPUs, with the exact setup limited by the user's budget and the capacity of the system's power supply.
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