Scientists used "knowledge distillation" to condense Stable Diffusion XL into a much leaner, more efficient AI image generation model that can run on low-cost hardware.
No, lol. Well, at least I’m not 100% familiar with Pis new offerings, but idk about their PCI-E capabilities. Direct quote:
The tool can run on low-cost graphics processing units (GPUs) and needs roughly 8GB of RAM to process requests — versus larger models, which need high-end industrial GPUs.
Makes your question seem silly trying to imagine hooking up my GPU which is probably bigger than a Pi to a Pi.
Have been running all the image generation models on a 2060 super (8GB VRAM) up to this point including SD-XL, the model they “distilled” theirs from… Not really sure what exactly they think they are differentiating themselves from, reading the article…
Is that feasible on a Raspberry pi?
No, lol. Well, at least I’m not 100% familiar with Pis new offerings, but idk about their PCI-E capabilities. Direct quote:
Makes your question seem silly trying to imagine hooking up my GPU which is probably bigger than a Pi to a Pi.
Have been running all the image generation models on a 2060 super (8GB VRAM) up to this point including SD-XL, the model they “distilled” theirs from… Not really sure what exactly they think they are differentiating themselves from, reading the article…
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There are three models and the smallest one is 700M parameters.
Probably. FastSD CPU already runs on a Raspberry PI 4.
Lol read the article, it cites “8gb vram” and if i had to guess it will only support nvidia out of the gate