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Browse files- furry/RSN/RSN2_loha/RSN2loha-000001.safetensors +3 -0
- furry/RSN/RSN2_loha/RSN2loha-000002.safetensors +3 -0
- furry/RSN/RSN2_loha/RSN2loha-000003.safetensors +3 -0
- furry/RSN/RSN2_loha/RSN2loha-000004.safetensors +3 -0
- furry/RSN/RSN2_loha/RSN2loha-000005.safetensors +3 -0
- furry/RSN/RSN2_loha/RSN2loha-000006.safetensors +3 -0
- furry/RSN/RSN2_loha/RSN2loha-000007.safetensors +3 -0
- furry/RSN/RSN2_loha/RSN2loha-000008.safetensors +3 -0
- furry/RSN/RSN2_loha/logs/RSN2loha20230606150034/network_train/events.out.tfevents.1686063748.5c62208ca5d1.25764.0 +3 -0
- furry/RSN/RSN2_loha/train.sh +153 -0
furry/RSN/RSN2_loha/RSN2loha-000001.safetensors
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furry/RSN/RSN2_loha/logs/RSN2loha20230606150034/network_train/events.out.tfevents.1686063748.5c62208ca5d1.25764.0
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furry/RSN/RSN2_loha/train.sh
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#!/bin/bash
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# LoRA train script by @Akegarasu
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# Train data path | 设置训练用模型、图片
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pretrained_model="/content/lora-scripts/sd-models/Animefull-final-pruned.ckpt" # base model path | 底模路径
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is_v2_model=0 # SD2.0 model | SD2.0模型 2.0模型下 clip_skip 默认无效
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parameterization=0 # parameterization | 参数化 本参数需要和 V2 参数同步使用 实验性功能
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train_data_dir="/content/lora-scripts/train/aki/" # train dataset path | 训练数据集路径
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reg_data_dir="" # directory for regularization images | 正则化数据集路径,默认不使用正则化图像。
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# Network settings | 网络设置
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network_module="lycoris.kohya" # 在这里将会设置训练的网络种类,默认为 networks.lora 也就是 LoRA 训练。如果你想训练 LyCORIS(LoCon、LoHa) 等,则修改这个值为 lycoris.kohya
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network_weights="" # pretrained weights for LoRA network | 若需要从已有的 LoRA 模型上继续训练,请填写 LoRA 模型路径。
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network_dim=32 # network dim | 常用 4~128,不是越大越好
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network_alpha=16 # network alpha | 常用与 network_dim 相同的值或者采用较小的值,如 network_dim的一半 防止下溢。默认值为 1,使用较小的 alpha 需要提升学习率。
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# Train related params | 训练相关参数
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resolution="768,1024" # image resolution w,h. 图片分辨率,宽,高。支持非正方形,但必须是 64 倍数。
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batch_size=1 # batch size
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max_train_epoches=15 # max train epoches | 最大训练 epoch
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save_every_n_epochs=1 # save every n epochs | 每 N 个 epoch 保存一次
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train_unet_only=0 # train U-Net only | 仅训练 U-Net,开启这个会牺牲效果大幅减少显存使用。6G显存可以开启
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train_text_encoder_only=0 # train Text Encoder only | 仅训练 文本编码器
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stop_text_encoder_training=0 # stop text encoder training | 在第N步时停止训练文本编码器
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noise_offset="0.1" # noise offset | 在训练中添加噪声偏移来改良生成非常暗或者非常亮的图像,如果启用,推荐参数为0.1
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keep_tokens=1 # keep heading N tokens when shuffling caption tokens | 在随机打乱 tokens 时,保留前 N 个不变。
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min_snr_gamma=0 # minimum signal-to-noise ratio (SNR) value for gamma-ray | 伽马射线事件的最小信噪比(SNR)值 默认为 0
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30 |
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31 |
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# Learning rate | 学习率
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lr="1.5e-4"
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unet_lr="1.5e-4"
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text_encoder_lr="1e-5"
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lr_scheduler="cosine_with_restarts" # "linear", "cosine", "cosine_with_restarts", "polynomial", "constant", "constant_with_warmup", "adafactor"
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lr_warmup_steps=0 # warmup steps | 学习率预热步数,lr_scheduler 为 constant 或 adafactor 时该值需要设为0。
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lr_restart_cycles=1 # cosine_with_restarts restart cycles | 余弦退火重启次数,仅在 lr_scheduler 为 cosine_with_restarts 时起效。
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38 |
+
|
39 |
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# Output settings | 输出设置
|
40 |
+
output_name="RSN2loha" # output model name | 模型保存名称
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41 |
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save_model_as="safetensors" # model save ext | 模型保存格式 ckpt, pt, safetensors
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42 |
+
|
43 |
+
# Resume training state | 恢复训练设置
|
44 |
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save_state=0 # save state | 保存训练状态 名称类似于 <output_name>-??????-state ?????? 表示 epoch 数
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resume="" # resume from state | 从某个状态文件夹中恢复训练 需配合上方参数同时使用 由于规范文件限制 epoch 数和全局步数不会保存 即使恢复时它们也从 1 开始 与 network_weights 的具体实现操作并不一致
|
46 |
+
|
47 |
+
# 其他设置
|
48 |
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min_bucket_reso=256 # arb min resolution | arb 最小分辨率
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49 |
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max_bucket_reso=1024 # arb max resolution | arb 最大分辨率
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50 |
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persistent_data_loader_workers=0 # persistent dataloader workers | 容易爆内存,保留加载训练集的worker,减少每个 epoch 之间的停顿
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51 |
+
clip_skip=2 # clip skip | 玄学 一般用 2
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52 |
+
|
53 |
+
# 优化器设置
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54 |
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optimizer_type="AdamW8bit" # Optimizer type | 优化器类型 默认为 AdamW8bit,可选:AdamW AdamW8bit Lion SGDNesterov SGDNesterov8bit DAdaptation AdaFactor
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55 |
+
|
56 |
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# LyCORIS 训练设置
|
57 |
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algo="loha" # LyCORIS network algo | LyCORIS 网络算法 可选 lora、loha、lokr、ia3、dylora。lora即为locon
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conv_dim=8 # conv dim | 类似于 network_dim,推荐为 4
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conv_alpha=4 # conv alpha | 类似于 network_alpha,可以采用与 conv_dim 一致或者更小的值
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dropout="0" # dropout | dropout 概率, 0 为不使用 dropout, 越大则 dropout 越多,推荐 0~0.5, LoHa/LoKr/(IA)^3暂时不支持
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61 |
+
|
62 |
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# 远程记录设置
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63 |
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use_wandb=0 # use_wandb | 启用wandb远程记录功能
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64 |
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wandb_api_key="" # wandb_api_key | API,通过https://wandb.ai/authorize获取
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65 |
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log_tracker_name="" # log_tracker_name | wandb项目名称,留空则为"network_train"
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66 |
+
|
67 |
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# ============= DO NOT MODIFY CONTENTS BELOW | 请勿修改下方内容 =====================
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68 |
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export HF_HOME="huggingface"
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export TF_CPP_MIN_LOG_LEVEL=3
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70 |
+
|
71 |
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extArgs=()
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launchArgs=()
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73 |
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if [[ $multi_gpu == 1 ]]; then launchArgs+=("--multi_gpu"); fi
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74 |
+
|
75 |
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if [[ $is_v2_model == 1 ]]; then
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extArgs+=("--v2");
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else
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78 |
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extArgs+=("--clip_skip $clip_skip");
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fi
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80 |
+
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if [[ $parameterization == 1 ]]; then extArgs+=("--v_parameterization"); fi
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82 |
+
|
83 |
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if [[ $train_unet_only == 1 ]]; then extArgs+=("--network_train_unet_only"); fi
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84 |
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|
85 |
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if [[ $train_text_encoder_only == 1 ]]; then extArgs+=("--network_train_text_encoder_only"); fi
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|
87 |
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if [[ $network_weights ]]; then extArgs+=("--network_weights $network_weights"); fi
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88 |
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if [[ $reg_data_dir ]]; then extArgs+=("--reg_data_dir $reg_data_dir"); fi
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90 |
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|
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if [[ $optimizer_type ]]; then extArgs+=("--optimizer_type $optimizer_type"); fi
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92 |
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|
93 |
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if [[ $optimizer_type == "DAdaptation" ]]; then extArgs+=("--optimizer_args decouple=True"); fi
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94 |
+
|
95 |
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if [[ $save_state == 1 ]]; then extArgs+=("--save_state"); fi
|
96 |
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|
97 |
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if [[ $resume ]]; then extArgs+=("--resume $resume"); fi
|
98 |
+
|
99 |
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if [[ $persistent_data_loader_workers == 1 ]]; then extArgs+=("--persistent_data_loader_workers"); fi
|
100 |
+
|
101 |
+
if [[ $network_module == "lycoris.kohya" ]]; then
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extArgs+=("--network_args conv_dim=$conv_dim conv_alpha=$conv_alpha algo=$algo dropout=$dropout")
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fi
|
104 |
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|
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if [[ $stop_text_encoder_training -ne 0 ]]; then extArgs+=("--stop_text_encoder_training $stop_text_encoder_training"); fi
|
106 |
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|
107 |
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if [[ $noise_offset != "0" ]]; then extArgs+=("--noise_offset $noise_offset"); fi
|
108 |
+
|
109 |
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if [[ $min_snr_gamma -ne 0 ]]; then extArgs+=("--min_snr_gamma $min_snr_gamma"); fi
|
110 |
+
|
111 |
+
if [[ $use_wandb == 1 ]]; then
|
112 |
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extArgs+=("--log_with=all")
|
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else
|
114 |
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extArgs+=("--log_with=tensorboard")
|
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fi
|
116 |
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|
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if [[ $wandb_api_key ]]; then extArgs+=("--wandb_api_key $wandb_api_key"); fi
|
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if [[ $log_tracker_name ]]; then extArgs+=("--log_tracker_name $log_tracker_name"); fi
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|
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accelerate launch ${launchArgs[@]} --num_cpu_threads_per_process=8 "./sd-scripts/train_network.py" \
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--enable_bucket \
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--pretrained_model_name_or_path=$pretrained_model \
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--train_data_dir=$train_data_dir \
|
125 |
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--output_dir="/content/drive/MyDrive/Lora/output/RSN2loha" \
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--logging_dir="/content/drive/MyDrive/Lora/output/RSN2loha/logs" \
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--log_prefix=$output_name \
|
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--resolution=$resolution \
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--network_module=$network_module \
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--max_train_epochs=$max_train_epoches \
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--learning_rate=$lr \
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--unet_lr=$unet_lr \
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--text_encoder_lr=$text_encoder_lr \
|
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--lr_scheduler=$lr_scheduler \
|
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--lr_warmup_steps=$lr_warmup_steps \
|
136 |
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--lr_scheduler_num_cycles=$lr_restart_cycles \
|
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--network_dim=$network_dim \
|
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--network_alpha=$network_alpha \
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--output_name=$output_name \
|
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--train_batch_size=$batch_size \
|
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--save_every_n_epochs=$save_every_n_epochs \
|
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--mixed_precision="fp16" \
|
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--save_precision="fp16" \
|
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--seed="1337" \
|
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--cache_latents \
|
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--prior_loss_weight=0.3 \
|
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--max_token_length=225 \
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--caption_extension=".txt" \
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--save_model_as=$save_model_as \
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--min_bucket_reso=$min_bucket_reso \
|
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--max_bucket_reso=$max_bucket_reso \
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--keep_tokens=$keep_tokens \
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--xformers --shuffle_caption ${extArgs[@]}
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