Categories: Image

Thank you SD sub

Edit: Included more details in my workflow I was working on in the Context section.


I just really wanted to say thank you to all of you folks in here who have been so helpful and patient and amazing regardless of anyone’s knowledge level.

This sub is VERY different from “big reddit” in that most everyone here is civil and does not gate-keep knowledge. In this day and age, that is rare.

Context: I was in the middle of creating a workflow to help test a prompt with all of the different sampler and scheduler possibilities. I was thinking through how to connect and I remade the workflow a few times until I figured out how to do it while reusing as few nodes as possibles, then using less visible wires, etc etc.

[To help myself understand Samplers & Schedulers I built a workflow to test all combinations, all ran at once. 1024×1024 image res, 1 model but 378 images & kSamplers, 2hrs 53min 44 sec, RTX 5090 & 64GB]

Anyway, I paused and I realized I just hit my 2 month mark of using ComfyUI and AI in general, outside of ChatGPT. When I first started ComfyUI seemed incredibly complex and I thought, “there’s no way I’m going to be able to make my own workflows, I’ll just spend time searching for other people’s workflows that match what I want instead”. But now it’s no problem and far better because I understand the workflow I’m creating.

I just wanted to thank you all for helping me get here so fast.

Thanks fam.

submitted by /u/BenefitOfTheDoubt_01
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