Update (11/02/23) : adding WEEK 3 FFUsion (ALL IN) LoRA of Hot, Rising, and New
π Current Week's Exploration (10.31.23): This week LoRAs are fine-tuned for the
π'Style Capture & Fusion Showdown' (rejected entry)
Week 3 Styles of Hot, Rising, and New MJ categories: 10.31.23
π₯ Previous Weekβs LoRAs (10.23.23):
last week styles from the 'Hot', 'Rising', and 'New' category
A recent experiment conducted using the last 500 images from the 'MidJourney' categories: Hot, Rising, and New.
Data Acquisition and Integrity:
All images were sourced responsibly, with no use of unofficial tools for acquisition.
The images were obtained using the sanctioned Corporate/Enterprise account.
Technical Overview:
The images were processed using the ViT-L-14/openai
model (quick sloppy run). For testing, the prodigy
tool was employed.
It's important to note that the current quality of results does not align with our typical production standards. However, for those interested in further details, a training set from the official Civitai trainer is available.
The experiment utilized the capabilities of the Civitai trainer(default out of the box configuration)
09/26/2023 03:48:12 AM
SUBMITTED
09/26/2023 03:48:40 AM
PROCESSING
09/26/2023 05:21:46 AM
READY
Lora FA text encoder, and the Kohya tools, all operating on the H100 80GB.
We appreciate your continued interest and support. Further updates will be provided as the experiment progresses.
Each one took 20-30min
π MidJ_Last_500_-_Experiment.safetensors
π
Date: 2023-09-26T02:20:38
π·οΈ Title: MidJ_Last_500_-_Experiment
πΌοΈ Resolution: 1024x1024
π§ͺ Architecture: stable-diffusion-xl-v1-base/lora
π Network Dimensions:
Dim/Rank: 32.0
Alpha: 16.0
π Module: networks.lora
π§ Configurations:
Learning Rate: 0.0005
UNet LR: 0.0005
TE LR: 5e-05
Optimizer: bitsandbytes.optim.adamw.AdamW8bit(weight_decay=0.1)
Scheduler: cosine_with_restarts
Warmup Steps: 0
Epochs: 10
Batches per Epoch: 128
Gradient Accumulation Steps: 1
Train Images: 500
Regularization Images: 0
Multires Noise Iterations: 6.0
Multires Noise Discount: 0.3
Min SNR Gamma: 5.0
Zero Terminal SNR: True
Max Gradient Norm: 1.0
Clip Skip: 1
Dataset Directories: 1
Image Count: 500 images
π Stats:
UNet Weight (Avg. Magnitude): 3.0170
UNet Weight (Avg. Strength): 0.0111
Text Encoder (1) - Weight (Avg. Magnitude): 1.7304
Text Encoder (1) - Weight (Avg. Strength): 0.0087
Text Encoder (2) - Weight (Avg. Magnitude): 1.7614
Text Encoder (2) - Weight (Avg. Strength): 0.0068
π FF-Midj-Last-v0563.safetensors
π
Date: 2023-09-26T01:16:09
π·οΈ Title: FF-Midj-Last-v0563
πΌοΈ Resolution: 1024x1024
π§ͺ Architecture: stable-diffusion-xl-v1-base/lora
π Network Dimensions:
Dim/Rank: 64.0
Alpha: 32.0
π Module: networks.lora
π Stats:
UNet Weight (Avg. Magnitude): 2.6731
UNet Weight (Avg. Strength): 0.0076
Text Encoder (1) - Weight (Avg. Magnitude): 2.5809
Text Encoder (1) - Weight (Avg. Strength): 0.0091
Text Encoder (2) - Weight (Avg. Magnitude): 2.6613
Text Encoder (2) - Weight (Avg. Strength): 0.0072
π FF-Midj-Rise-v0564.safetensors
π
Date: 2023-09-26T02:01:20
π·οΈ Title: FF-Midj-Rise-v0564
πΌοΈ Resolution: 1024x1024
π§ͺ Architecture: stable-diffusion-xl-v1-base/lora
π Network Dimensions:
Dim/Rank: 64.0
Alpha: 32.0
π Module: networks.lora
π Stats:
UNet Weight (Avg. Magnitude): 2.6016
UNet Weight (Avg. Strength): 0.0074
Text Encoder (1) - Weight (Avg. Magnitude): 2.5694
Text Encoder (1) - Weight (Avg. Strength): 0.0091
Text Encoder (2) - Weight (Avg. Magnitude): 2.6260
Text Encoder (2) - Weight (Avg. Strength): 0.0071
π FF-Midj-Top-v0564-FA-TX.safetensors
π
Date: 2023-09-26T03:21:49
π·οΈ Title: FF-Midj-Top-v0564-FA-TX
πΌοΈ Resolution: 1024x1024
π§ͺ Architecture: stable-diffusion-xl-v1-base/lora
π Network Dimensions:
Dim/Rank: 64.0
Alpha: 64.0
π Module: networks.lora_fa
π Stats:
Text Encoder (1) - Weight (Avg. Magnitude): 5.8341
Text Encoder (1) - Weight (Avg. Strength): 0.0191
Text Encoder (2) - Weight (Avg. Magnitude): 6.0269
Text Encoder (2) - Weight (Avg. Strength): 0.0153
β οΈ Note: No UNet found in this LoRA.
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