A FLUX.2-dev model quantized to INT8 with ConvRot using a conservative quantization policy.

On my potato machine, in T2I without using distilled LoRA, int8-convrot-aggressive is 20 seconds faster than int8-convrot. Neither model produced images that deviated from bf16.

T2I Example: Image Edit Example:

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