BOSGAME Showcases Scalable Private AI with 7-Node AI MAX+ 395 Cluster

The electronic product brand demonstrated distributed inference of the DeepSeek-V3.1 671B-parameter model using seven connected Mini PCs

Justin Tomlinson

Editor-in-Chief, Mora Discover

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BOSGAME Showcases Scalable Private AI with 7-Node AI MAX+ 395 Cluster

On July 16, 2026, electronic product brand BOSGAME demonstrated distributed inference of the DeepSeek-V3.1 671B-parameter model. The demonstration utilized the company's AI MAX+ 395 7-Node Cluster, which is constructed from seven BOSGAME M5 AI Mini PCs linked together via a USB4 Direct Connection.[1][2]

This system offers a scalable alternative for private AI deployment and local large language model inference. As AI models grow in complexity and parameter size, individual AI PCs often lack the necessary memory and computing power, while traditional AI servers remain limited by high deployment costs and infrastructure complexity.[1][2]

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