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The LoraLoaderBypass node applies a LoRA (Low-Rank Adaptation) to a diffusion model and a CLIP model in a special “bypass” mode. Unlike a standard LoRA loader, this method does not permanently modify the base model’s weights. Instead, it computes the output by adding the LoRA’s effect to the model’s normal forward pass, which is useful for training or when working with models that have their weights offloaded.

Inputs

Note: If both strength_model and strength_clip are set to 0, the node will return the original, unmodified model and clip inputs without processing.

Outputs

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