4 or 9 steps, Sampler chains & noise types chains - Flux, Mochi, PDXL, MoGe, LTXV, Others版本?? (ID: 1040016)

4 or 9 steps, Sampler chains & noise types chains - Flux, Mochi, PDXL, MoGe, LTXV, Others版本?? (ID: 1040016)

Work in progress

The models with ? mean that are archived and i have yet to update

Check the About this Version of the chose workflow for proper introduction

question, how do i embed the nodes into the images or videos?

if there is a way to load OmniGen/CogVideoX/LLM/t2a/AnimateDiff(gpu) thru a CustomSamplerAdvanced let me know please

描述:

Experimental Mochi

Mochi is native on the latests ComfyUI versions, git pull or update.

Sampler:

I recommend chaining samplers of different lines to get the best of each per step, the order is important, i tend to start by 1 step of dpm_adaptative for the success rate, 1 step of sonardpmpp (student-t) for creativity and finish with 3 steps of ipndm & 4 of ddim.

In my examples the Sampler chain is 1 step of dpm_adaptive > 1 step sonar_dpmpp_sde (student-t) > 1 step lcm > 2 steps SamplerDynamicCFGpp > 4 steps heun

The sampler chain for the 5gen/3d style vid is 2 steps SamplerHeunCFGPP > 3 steps idpm > 4 steps ddim

dpm_adaptive|fe_heun3|ae_dopri5(+Guide)

sonar_dpmpp_sde (student/pink|power/uniform)|dpmpp_dual_sde_momentumized| dpm_2_ancestral(+Color)

SamplerDPMCFGpp|heun_cfg_pp|distance_s4e1_cfg_pp|

SamplerCCCFGpp/SamplerDynamicCFGpp|SamplerHeunCFGPP|uni_pc

lcm

dpmpp_2m_sde/*_3m_*|*_gpu

tcd_w

ipndm/majority|heun

SamplerX0CFGpp

to speed up, I normaly generate at 5 steps, and when I find something good I generate it again with at least 9 steps

Noise-types:

3D noises (pyramids,perlin,fractal,voronoi,etc) or laplacian dont work

Work: uniform,power,pink,studentt

Bad: green_test, gaussian

VAE:

You may get an Out of Memory, Until a tiny auto-encoder launch for genmo mochi, Prevent with the argument "--cpu-vae" but takes 6x longer, or use the "latent upscale by" for a fast output (expect blur), or Save latent and decode later.

CFG:

For a successful generation i suggest a cfg greater than 1,

You can get a good image with cfg 1 with a good sampler chain

Scheduler:

Use a primitive for randomizing the alpha and beta parameters for the "BetaSamplingScheduler" until you find your favorite.

Specs:

I have a NVIDIA GeForce GTX 1660 SUP, 6GB vram (like 10 times slower than a 30**/40** series), if i can use this you can as well, probably if you have a good graphics and vram, you may use the correct resolution, correct length and VAEDecode, i didn't try it so it requires experimenting, if you have 4GB vram you can try reducing the length and resolution, but i didn't get good results when testing.

训练词语:

名称: 4Or9StepsSamplerChainsNoiseTypes_.zip

大小 (KB): 6

类型: Archive

Pickle 扫描结果: Success

Pickle 扫描信息: No Pickle imports

病毒扫描结果: Success

4 or 9 steps, Sampler chains & noise types chains - Flux, Mochi, PDXL, MoGe, LTXV, Others

4 or 9 steps, Sampler chains & noise types chains - Flux, Mochi, PDXL, MoGe, LTXV, Others

4 or 9 steps, Sampler chains & noise types chains - Flux, Mochi, PDXL, MoGe, LTXV, Others

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