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"publishedAt": "2026-04-08T03:45:00.000Z",
"site": "https://www.cool3c.com",
"tags": [
"產業消息",
"nvidia",
"邊際運算",
"AI模型",
"效能最佳化",
"Gemma 4"
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"textContent": "隨著Google釋出再次顛覆AI模型性能的開源AI模型Gemma 4,也吸引許多開發者、AI嘗鮮者前仆後繼於邊際裝置安裝體驗,NVIDIA亦宣布攜手Google將Gemma 4針對NVIDIA GPU最佳化,使Gemma可於搭載NVIDIA RTX GPU的PC、工作站、DGX Spark迷你超級電腦、NVIDIA Jetson Orin Nano邊際AI模組等將效能最大化。Gemma 4提供E2B、E4B、26B MoE與31B等版本,因應邊際運算至高效能GPU等不同層級具備合適且強大的性能;Gemma 4可支援多種任務,包括推論、程式開發、代理、視覺、影片與音訊能力、交錯式多模態輸入以及支",
"title": "NVIDIA加速Gemma 4於RTX PC、DGX Spark與Jetson邊際AI模組部署,加速推進代理AI應用"
}