Training does not require a dataset, only words.
Trained in 2400 steps (about 7 hrs on 2 a6000s) using only text with:
https://github.com/ntc-ai/conceptmod
Training prompt for the first 2000 steps:
"=trending on artstation, 8k, ultra hd|boring=exciting|drab=captivating|1woman%generic woman wearing generic clothes:0.003|1woman%woman wearing many unique tasteful accessories and a cute outfit:-0.003|@monochrome--|@black and white--|@text--|@written words--"
Pulls the unconditional towards "trending on artstation, 8k, ultra hd"
Replaces Pulls "boring" to "exciting" and "drab" to "captivating".
Update: this doesn't replace. It pulls towards. Replace needs an additional % term, see the readme.md
Reduces the occurrence of "monochrome", "black and white", "text", and "written words".
Slightly blends 1woman away from "generic woman wearing generic clothes"
Slightly blends 1woman towards "woman wearing many unique tasteful accessories and a cute outfit"
Update: I think these terms might be backwards. LOL
Training prompt for the next 400 steps:
"@#|1woman=ugly manly sad wretched:-0.1|1woman=woman wearing many unique tasteful accessories and a cute outfit|nipples--:0.1|cleavage--:0.01"
Freezes the unconditional concept using the "@#" operator.
Reduces the occurrence of "nipples" by 0.1 and "cleavage" by 0.01.
Technique based on https://github.com/rohitgandikota/erasing
Model based on https://civitai.com/models/13565/criarcys-fantasy-to-experience