Pony version HERE.
This lora is trained on images produced from 2 different datasets, the first one combines images of 'Nicki Valentina Rose' and various bimbo images on the web. While the second is a merge of a 90s brunette pornstars with models from the black tape project.
Version 1 was trained using civit ai lora trainer
Version 2 was trained using google colab
the two versions trained on the same datasets, the intention was to make version 1 easier on weak rigs, while let version 2 be as normal as other loras for flux.
Trigger word: Apricota (using 'photo of apricota' helps).
additional triggers: bimbo, massive breasts.
Best between 0.7 ~ 1
Training Config: for version 1
unetLR = 0.0005
clipSkip = 1
networkDim = 2
numRepeats = 20
resolution = 1024
lrScheduler = cosine
minSnrGamma = 5
noiseOffset = 0.1
targetSteps = 4800
enableBucket = true
networkAlpha = 16
optimizerType = Prodigy
textEncoderLR = 0
maxTrainEpochs = 8
shuffleCaption = false
trainBatchSize = 1
lrSchedulerNumCycles = 3Training Config: for version 2
precision to save = float16
Training steps = 4000
Epochs = 16
caption dropout rate = 0.05
optimizer = adamw8bit
Learning rate = 4e-4
Batch size = 1
use ema = True
ema decay = 0.99
linear = 16
linear alpha = 16one of the example images is not using the natural language prompting, and it seems to work.
I tested this lora with flux1DevV1V2Flux1_flux1DevBNBNF4V2 and flux1DevV1V2Flux1_flux1SchnellBNBNF4
I used Forge Ui while testing and it worked fine with both.
--if you are having issues making loras works locally in forge ui (with flux nf4)
check this >link<
>BUZZ for cool images<
Have fun with Apricota
Description
Version 2 Trained on Colab. same datasets as Version 1.
Bigger in size and produce slightly better resaults.
FAQ
Details
Available On (1 platform)
Same model published on other platforms. May have additional downloads or version variants.




