2025-10-18-old-man-fit

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モデル説明

⚡ Flux Model Training Summary (LoRA)

This job customized the Flux base model, which is a different architecture from Stable Diffusion XL. This run featured several key changes in its configuration, resulting in a longer duration.

1. Job Status and Timeline

  • Base Model Used: Flux (A modern, likely newer or different image generation model).

  • Job ID: 563759-20251018091302678

  • Training Start: October 18, 2025 at 05:13:06 PM

  • Completion Time (Ready): October 19, 2025 at 12:03:14 PM

  • Total Duration: Approximately 18 hours and 50 minutes (significantly longer than the previous job).

  • Dataset Used: 27 Files / 27 Labels.

  • Label Type: Caption (using full descriptive sentences, rather than just short tags, which is ideal for a complex model like Flux).

2. Key Training Parameters (The Differences)

This configuration is notably different from the previous SDXL job, suggesting an attempt to train a very lightweight, highly specialized LoRA.

Model Intensity & Focus

  • Network Dimension (networkDim): 2 (This is extremely low compared to 32 in the last job. This makes the resulting LoRA file much smaller but potentially less capable of capturing complex details).

  • Network Alpha (networkAlpha): 16 (Used for LoRA stabilization).

  • LoRA Type: lora.

  • Engine: kohya.

Learning Process

  • Image Resolution: 512 (Lower resolution than the previous 1024).

  • Maximum Epochs: 35 (Higher than the previous 20, meaning the data was shown to the model more often to compensate for the small network size).

  • Text Encoder Learning Rate (textEncoderLR): 0 (This is crucial: The text understanding part of the model was frozen and did not learn. Only the image generation part (U-Net) was updated).

  • U-Net Learning Rate (unetLR): 0.0005.

  • Optimizer Type: AdamW8Bit (Different from Adafactor).

  • Shuffle Caption: false (Captions were fed in the same order each time).

  • Keep Tokens: 0 (No specific caption words were prioritized, unlike 3 previously).

このモデルで生成された画像