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model :
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base_learning_rate : 1.0e-6
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target : ldm.models.diffusion.ddpm.LatentDiffusion
params :
linear_start : 0.00085
linear_end : 0.0120
num_timesteps_cond : 1
log_every_t : 300
timesteps : 1000
first_stage_key : image
cond_stage_key : caption
image_size : 64
channels : 4
cond_stage_trainable : true
conditioning_key : crossattn
monitor : val/loss_simple_ema
scale_factor : 0.18215
use_ema : False
unfreeze_model : True
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model_lr : 1.0e-6
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unet_config :
target : ldm.modules.diffusionmodules.openaimodel.UNetModel
params :
image_size : 32 # unused
in_channels : 4
out_channels : 4
model_channels : 320
attention_resolutions : [ 4 , 2 , 1 ]
num_res_blocks : 2
channel_mult : [ 1 , 2 , 4 , 4 ]
num_heads : 8
use_spatial_transformer : True
transformer_depth : 1
context_dim : 768
use_checkpoint : True
legacy : False
first_stage_config :
target : ldm.models.autoencoder.AutoencoderKL
params :
embed_dim : 4
monitor : val/rec_loss
ddconfig :
double_z : true
z_channels : 4
resolution : 512
in_channels : 3
out_ch : 3
ch : 128
ch_mult :
- 1
- 2
- 4
- 4
num_res_blocks : 2
attn_resolutions : [ ]
dropout : 0.0
lossconfig :
target : torch.nn.Identity
cond_stage_config :
target : ldm.modules.encoders.modules.FrozenCLIPEmbedder
data :
target : main.DataModuleFromConfig
params :
batch_size : 6 # prefer highest possible without getting CUDA Out of Memory error, A100 40GB =~20 80GB= ~48
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num_workers : 8
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wrap : falsegit
train :
target : ldm.data.every_dream.EveryDreamBatch
params :
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repeats : 1 # suggest 1 for 10k+ images
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debug_level : 1 # 1 to print if images are dropped due to multiple-aspect ratio image batching
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conditional_dropout : 0.04 # experimental, likelihood to drop the caption, may help with poorly captioned images
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resolution : 512 # use 512 for 24GB, can use 576, 640, 704, 768, on higher VRAM cards only..
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seed : -1 # use -1 for random seed, affects ordering of images and shuffling
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validation :
target : ldm.data.ed_validate.EDValidateBatch
params :
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repeats : 0.2 # suggest low fractions for 10k+ images
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test :
target : ldm.data.ed_validate.EDValidateBatch
params :
repeats : 0.2
lightning :
modelcheckpoint :
params :
every_n_epochs : 1 # produce a ckpt every epoch, leave 1!
#every_n_train_steps: 1400 # can only use epoch or train step checkpoints
save_top_k : 6 # save the best N ckpts according to loss, can reduce to save disk space but suggest at LEAST 2, more if you have max_epochs below higher!
save_last : True
filename : "{epoch:02d}-{step:05d}"
callbacks :
image_logger :
target : main.ImageLogger
params :
batch_frequency : 500
max_images : 16
increase_log_steps : False
trainer :
benchmark : True
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max_epochs : 7 # better to run several epochs and test your checkpoints! Try 4-5, you get a checkpoint every epoch to test!
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max_steps : 99000 # better to end on epochs not steps, especially with >500 images to ensure even distribution, but you can set this if you really want...
check_val_every_n_epoch : 1
gpus : 0 ,