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Nvidia’s Blackwell gaming GPUs go through blower-style transformation to fuel AI data centers — RTX 5080, RTX 5070 Ti, RTX 5060 Ti blower GPUs up for purchase in China

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Tom's Hardware

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Nvidia has transformed its Blackwell gaming GPUs into blower-style designs for AI data centers, with RTX 5080, RTX 5070 Ti, and RTX 5060 Ti models available in China. These GPUs are aftermarket solutions, not official partner cards, and are tailored for AI workloads. The blower-style GPUs are priced at a premium, with the RTX 5090 32 GB costing $4,156 USD and the RTX 5080 priced at $1,288. Blower designs are favored for AI farms due to their efficient cooling in clustered GPU setups, making them ideal for data centers.

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