{
"$type": "site.standard.document",
"bskyPostRef": {
"cid": "bafyreiedjpw7pucxnxr3d5jqxlywvvpl2ntwcqfanyixh23te36sjtttdi",
"uri": "at://did:plc:hktb7775qjyt6dh4h5dilmcp/app.bsky.feed.post/3milbblsy24z2"
},
"coverImage": {
"$type": "blob",
"ref": {
"$link": "bafkreieweyh5toe7nbu2czpkoc3zk6dcyswzunh6olj3vcnc7xfnlwj36m"
},
"mimeType": "image/jpeg",
"size": 145137
},
"path": "/blog/rtx-ai-garage-open-models-google-gemma-4/",
"publishedAt": "2026-04-02T16:15:58.000Z",
"site": "https://blogs.nvidia.com",
"tags": [
"AI",
"Agentic AI",
"Artificial Intelligence",
"Conversational AI",
"GeForce",
"NVIDIA RTX",
"Open Source",
"RTX AI Garage"
],
"textContent": "Open models are driving a new wave of on-device AI, extending innovation beyond the cloud to everyday devices. As these models advance, their value increasingly depends on access to local, real-time context that can turn meaningful insights into action. Designed for this shift, Google’s latest additions to the Gemma 4 family introduce a class of small, fast and omni-capable models built for efficient local execution across a wide range […]",
"title": "From RTX to Spark: NVIDIA Accelerates Gemma 4 for Local Agentic AI"
}