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The CLIPTextEncodeHiDream node processes four separate text inputs using different language models (CLIP-L, CLIP-G, T5-XXL, and LLaMA) and combines them into a single conditioning output. It tokenizes each text input with its corresponding model and encodes them together using a scheduled encoding approach, enabling more sophisticated text conditioning by leveraging multiple language models simultaneously.

Inputs

Note: All four text inputs (clip_l, clip_g, t5xxl, and llama) are required for proper functioning, as each contributes to the final conditioning output through the scheduled encoding process.

Outputs

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