2025-10-18-old-man-fit-daddy
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モデル説明
🤖 AI Model Training Summary
This document details the configuration and results of your completed Low-Rank Adaptation (LoRA) training job, which customized the Stable Diffusion XL (SDXL) model.
1. Job Status and Timeline
Training Start: $\text{October 18, 2025 at 06:39:35 PM}$
Completion Time (Ready): $\text{October 19, 2025 at 04:17:36 AM}$
Total Duration: Approximately 9 hours and 38 minutes.
Job ID: $\text{563759-20251018103932646}$
Base Model Used: SDXL (Stable Diffusion XL)
History Milestones:
Submitted: $\text{10/18/2025 06:39:33 PM}$
Processing: $\text{10/18/2025 06:39:35 PM}$
Ready (Complete): $\text{10/19/2025 04:17:36 AM}$
2. Dataset and Configuration
Dataset Size: $\text{27}$ image files.
Label Count: $\text{27}$ corresponding descriptions (one for each file).
Label Type: Tags (using short keywords for description).
Training Engine: Kohya (a popular training utility).
LoRA Type: lora (standard Low-Rank Adaptation).
Privacy: $\text{Own Rights}$ (You hold the rights to the training data).
3. Key Training Parameters (The Recipe)
These settings determined how the model learned from your $\text{27}$ images.
Learning Control
Maximum Epochs: $\text{20}$ (The dataset was shown to the model 20 times).
Target Steps: $\text{9,990}$ (The total number of learning batches aimed for).
Num Repeats: $\text{74}$ (This increases the total steps to ensure the model focuses heavily on your small dataset).
Train Batch Size: $\text{4}$ (The model processed 4 images at a time during each step).
Shuffle Caption: $\text{true}$ (The order of tags was randomized to improve learning).
Learning Rates (Speed of Learning)
U-Net Learning Rate (unetLR): $\text{0.0005}$ (Rate for the image generation part).
Text Encoder Learning Rate (textEncoderLR): $\text{0.00005}$ (Rate for the text understanding part—slower is typical).
Optimizer Type: Adafactor.
LR Scheduler: cosine_with_restarts (Determines how the learning rate changes over time).
Model Size and Image Processing
Resolution: $\text{1024}$ (Training size in pixels, standard for SDXL).
Network Dimension (networkDim): $\text{32}$ (A measure of the LoRA's capacity or strength).
Network Alpha (networkAlpha): $\text{16}$ (Used with networkDim for LoRA stability).
Enable Bucket: $\text{true}$ (Helps handle images of slightly different aspect ratios efficiently).











