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novelai-storage
Stable Diffusion Webui
Commits
902afa6b
Commit
902afa6b
authored
Oct 14, 2023
by
AUTOMATIC1111
Committed by
GitHub
Oct 14, 2023
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Merge pull request #13364 from superhero-7/master
Add altdiffusion-m18 support
parents
7d60076b
2d947175
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4
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4 changed files
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243 additions
and
3 deletions
+243
-3
configs/alt-diffusion-m18-inference.yaml
configs/alt-diffusion-m18-inference.yaml
+73
-0
modules/sd_hijack.py
modules/sd_hijack.py
+2
-2
modules/sd_models_config.py
modules/sd_models_config.py
+4
-1
modules/xlmr_m18.py
modules/xlmr_m18.py
+164
-0
No files found.
configs/alt-diffusion-m18-inference.yaml
0 → 100644
View file @
902afa6b
model
:
base_learning_rate
:
1.0e-04
target
:
ldm.models.diffusion.ddpm.LatentDiffusion
params
:
linear_start
:
0.00085
linear_end
:
0.0120
num_timesteps_cond
:
1
log_every_t
:
200
timesteps
:
1000
first_stage_key
:
"
jpg"
cond_stage_key
:
"
txt"
image_size
:
64
channels
:
4
cond_stage_trainable
:
false
# Note: different from the one we trained before
conditioning_key
:
crossattn
monitor
:
val/loss_simple_ema
scale_factor
:
0.18215
use_ema
:
False
scheduler_config
:
# 10000 warmup steps
target
:
ldm.lr_scheduler.LambdaLinearScheduler
params
:
warm_up_steps
:
[
10000
]
cycle_lengths
:
[
10000000000000
]
# incredibly large number to prevent corner cases
f_start
:
[
1.e-6
]
f_max
:
[
1.
]
f_min
:
[
1.
]
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_head_channels
:
64
use_spatial_transformer
:
True
use_linear_in_transformer
:
True
transformer_depth
:
1
context_dim
:
1024
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
:
256
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
:
modules.xlmr_m18.BertSeriesModelWithTransformation
params
:
name
:
"
XLMR-Large"
modules/sd_hijack.py
View file @
902afa6b
...
@@ -5,7 +5,7 @@ from types import MethodType
...
@@ -5,7 +5,7 @@ from types import MethodType
from
modules
import
devices
,
sd_hijack_optimizations
,
shared
,
script_callbacks
,
errors
,
sd_unet
,
patches
from
modules
import
devices
,
sd_hijack_optimizations
,
shared
,
script_callbacks
,
errors
,
sd_unet
,
patches
from
modules.hypernetworks
import
hypernetwork
from
modules.hypernetworks
import
hypernetwork
from
modules.shared
import
cmd_opts
from
modules.shared
import
cmd_opts
from
modules
import
sd_hijack_clip
,
sd_hijack_open_clip
,
sd_hijack_unet
,
sd_hijack_xlmr
,
xlmr
from
modules
import
sd_hijack_clip
,
sd_hijack_open_clip
,
sd_hijack_unet
,
sd_hijack_xlmr
,
xlmr
,
xlmr_m18
import
ldm.modules.attention
import
ldm.modules.attention
import
ldm.modules.diffusionmodules.model
import
ldm.modules.diffusionmodules.model
...
@@ -211,7 +211,7 @@ class StableDiffusionModelHijack:
...
@@ -211,7 +211,7 @@ class StableDiffusionModelHijack:
else
:
else
:
m
.
cond_stage_model
=
conditioner
m
.
cond_stage_model
=
conditioner
if
type
(
m
.
cond_stage_model
)
==
xlmr
.
BertSeriesModelWithTransformation
:
if
type
(
m
.
cond_stage_model
)
==
xlmr
.
BertSeriesModelWithTransformation
or
type
(
m
.
cond_stage_model
)
==
xlmr_m18
.
BertSeriesModelWithTransformation
:
model_embeddings
=
m
.
cond_stage_model
.
roberta
.
embeddings
model_embeddings
=
m
.
cond_stage_model
.
roberta
.
embeddings
model_embeddings
.
token_embedding
=
EmbeddingsWithFixes
(
model_embeddings
.
word_embeddings
,
self
)
model_embeddings
.
token_embedding
=
EmbeddingsWithFixes
(
model_embeddings
.
word_embeddings
,
self
)
m
.
cond_stage_model
=
sd_hijack_xlmr
.
FrozenXLMREmbedderWithCustomWords
(
m
.
cond_stage_model
,
self
)
m
.
cond_stage_model
=
sd_hijack_xlmr
.
FrozenXLMREmbedderWithCustomWords
(
m
.
cond_stage_model
,
self
)
...
...
modules/sd_models_config.py
View file @
902afa6b
...
@@ -21,7 +21,7 @@ config_unopenclip = os.path.join(sd_repo_configs_path, "v2-1-stable-unclip-h-inf
...
@@ -21,7 +21,7 @@ config_unopenclip = os.path.join(sd_repo_configs_path, "v2-1-stable-unclip-h-inf
config_inpainting
=
os
.
path
.
join
(
sd_configs_path
,
"v1-inpainting-inference.yaml"
)
config_inpainting
=
os
.
path
.
join
(
sd_configs_path
,
"v1-inpainting-inference.yaml"
)
config_instruct_pix2pix
=
os
.
path
.
join
(
sd_configs_path
,
"instruct-pix2pix.yaml"
)
config_instruct_pix2pix
=
os
.
path
.
join
(
sd_configs_path
,
"instruct-pix2pix.yaml"
)
config_alt_diffusion
=
os
.
path
.
join
(
sd_configs_path
,
"alt-diffusion-inference.yaml"
)
config_alt_diffusion
=
os
.
path
.
join
(
sd_configs_path
,
"alt-diffusion-inference.yaml"
)
config_alt_diffusion_m18
=
os
.
path
.
join
(
sd_configs_path
,
"alt-diffusion-m18-inference.yaml"
)
def
is_using_v_parameterization_for_sd2
(
state_dict
):
def
is_using_v_parameterization_for_sd2
(
state_dict
):
"""
"""
...
@@ -95,7 +95,10 @@ def guess_model_config_from_state_dict(sd, filename):
...
@@ -95,7 +95,10 @@ def guess_model_config_from_state_dict(sd, filename):
if
diffusion_model_input
.
shape
[
1
]
==
8
:
if
diffusion_model_input
.
shape
[
1
]
==
8
:
return
config_instruct_pix2pix
return
config_instruct_pix2pix
if
sd
.
get
(
'cond_stage_model.roberta.embeddings.word_embeddings.weight'
,
None
)
is
not
None
:
if
sd
.
get
(
'cond_stage_model.roberta.embeddings.word_embeddings.weight'
,
None
)
is
not
None
:
if
sd
.
get
(
'cond_stage_model.transformation.weight'
)
.
size
()[
0
]
==
1024
:
return
config_alt_diffusion_m18
return
config_alt_diffusion
return
config_alt_diffusion
return
config_default
return
config_default
...
...
modules/xlmr_m18.py
0 → 100644
View file @
902afa6b
from
transformers
import
BertPreTrainedModel
,
BertConfig
import
torch.nn
as
nn
import
torch
from
transformers.models.xlm_roberta.configuration_xlm_roberta
import
XLMRobertaConfig
from
transformers
import
XLMRobertaModel
,
XLMRobertaTokenizer
from
typing
import
Optional
class
BertSeriesConfig
(
BertConfig
):
def
__init__
(
self
,
vocab_size
=
30522
,
hidden_size
=
768
,
num_hidden_layers
=
12
,
num_attention_heads
=
12
,
intermediate_size
=
3072
,
hidden_act
=
"gelu"
,
hidden_dropout_prob
=
0.1
,
attention_probs_dropout_prob
=
0.1
,
max_position_embeddings
=
512
,
type_vocab_size
=
2
,
initializer_range
=
0.02
,
layer_norm_eps
=
1e-12
,
pad_token_id
=
0
,
position_embedding_type
=
"absolute"
,
use_cache
=
True
,
classifier_dropout
=
None
,
project_dim
=
512
,
pooler_fn
=
"average"
,
learn_encoder
=
False
,
model_type
=
'bert'
,
**
kwargs
):
super
()
.
__init__
(
vocab_size
,
hidden_size
,
num_hidden_layers
,
num_attention_heads
,
intermediate_size
,
hidden_act
,
hidden_dropout_prob
,
attention_probs_dropout_prob
,
max_position_embeddings
,
type_vocab_size
,
initializer_range
,
layer_norm_eps
,
pad_token_id
,
position_embedding_type
,
use_cache
,
classifier_dropout
,
**
kwargs
)
self
.
project_dim
=
project_dim
self
.
pooler_fn
=
pooler_fn
self
.
learn_encoder
=
learn_encoder
class
RobertaSeriesConfig
(
XLMRobertaConfig
):
def
__init__
(
self
,
pad_token_id
=
1
,
bos_token_id
=
0
,
eos_token_id
=
2
,
project_dim
=
512
,
pooler_fn
=
'cls'
,
learn_encoder
=
False
,
**
kwargs
):
super
()
.
__init__
(
pad_token_id
=
pad_token_id
,
bos_token_id
=
bos_token_id
,
eos_token_id
=
eos_token_id
,
**
kwargs
)
self
.
project_dim
=
project_dim
self
.
pooler_fn
=
pooler_fn
self
.
learn_encoder
=
learn_encoder
class
BertSeriesModelWithTransformation
(
BertPreTrainedModel
):
_keys_to_ignore_on_load_unexpected
=
[
r"pooler"
]
_keys_to_ignore_on_load_missing
=
[
r"position_ids"
,
r"predictions.decoder.bias"
]
config_class
=
BertSeriesConfig
def
__init__
(
self
,
config
=
None
,
**
kargs
):
# modify initialization for autoloading
if
config
is
None
:
config
=
XLMRobertaConfig
()
config
.
attention_probs_dropout_prob
=
0.1
config
.
bos_token_id
=
0
config
.
eos_token_id
=
2
config
.
hidden_act
=
'gelu'
config
.
hidden_dropout_prob
=
0.1
config
.
hidden_size
=
1024
config
.
initializer_range
=
0.02
config
.
intermediate_size
=
4096
config
.
layer_norm_eps
=
1e-05
config
.
max_position_embeddings
=
514
config
.
num_attention_heads
=
16
config
.
num_hidden_layers
=
24
config
.
output_past
=
True
config
.
pad_token_id
=
1
config
.
position_embedding_type
=
"absolute"
config
.
type_vocab_size
=
1
config
.
use_cache
=
True
config
.
vocab_size
=
250002
config
.
project_dim
=
1024
config
.
learn_encoder
=
False
super
()
.
__init__
(
config
)
self
.
roberta
=
XLMRobertaModel
(
config
)
self
.
transformation
=
nn
.
Linear
(
config
.
hidden_size
,
config
.
project_dim
)
# self.pre_LN=nn.LayerNorm(config.hidden_size, eps=config.layer_norm_eps)
self
.
tokenizer
=
XLMRobertaTokenizer
.
from_pretrained
(
'xlm-roberta-large'
)
# self.pooler = lambda x: x[:,0]
# self.post_init()
self
.
has_pre_transformation
=
True
if
self
.
has_pre_transformation
:
self
.
transformation_pre
=
nn
.
Linear
(
config
.
hidden_size
,
config
.
project_dim
)
self
.
pre_LN
=
nn
.
LayerNorm
(
config
.
hidden_size
,
eps
=
config
.
layer_norm_eps
)
self
.
post_init
()
def
encode
(
self
,
c
):
device
=
next
(
self
.
parameters
())
.
device
text
=
self
.
tokenizer
(
c
,
truncation
=
True
,
max_length
=
77
,
return_length
=
False
,
return_overflowing_tokens
=
False
,
padding
=
"max_length"
,
return_tensors
=
"pt"
)
text
[
"input_ids"
]
=
torch
.
tensor
(
text
[
"input_ids"
])
.
to
(
device
)
text
[
"attention_mask"
]
=
torch
.
tensor
(
text
[
'attention_mask'
])
.
to
(
device
)
features
=
self
(
**
text
)
return
features
[
'projection_state'
]
def
forward
(
self
,
input_ids
:
Optional
[
torch
.
Tensor
]
=
None
,
attention_mask
:
Optional
[
torch
.
Tensor
]
=
None
,
token_type_ids
:
Optional
[
torch
.
Tensor
]
=
None
,
position_ids
:
Optional
[
torch
.
Tensor
]
=
None
,
head_mask
:
Optional
[
torch
.
Tensor
]
=
None
,
inputs_embeds
:
Optional
[
torch
.
Tensor
]
=
None
,
encoder_hidden_states
:
Optional
[
torch
.
Tensor
]
=
None
,
encoder_attention_mask
:
Optional
[
torch
.
Tensor
]
=
None
,
output_attentions
:
Optional
[
bool
]
=
None
,
return_dict
:
Optional
[
bool
]
=
None
,
output_hidden_states
:
Optional
[
bool
]
=
None
,
)
:
r"""
"""
return_dict
=
return_dict
if
return_dict
is
not
None
else
self
.
config
.
use_return_dict
outputs
=
self
.
roberta
(
input_ids
=
input_ids
,
attention_mask
=
attention_mask
,
token_type_ids
=
token_type_ids
,
position_ids
=
position_ids
,
head_mask
=
head_mask
,
inputs_embeds
=
inputs_embeds
,
encoder_hidden_states
=
encoder_hidden_states
,
encoder_attention_mask
=
encoder_attention_mask
,
output_attentions
=
output_attentions
,
output_hidden_states
=
True
,
return_dict
=
return_dict
,
)
# # last module outputs
# sequence_output = outputs[0]
# # project every module
# sequence_output_ln = self.pre_LN(sequence_output)
# # pooler
# pooler_output = self.pooler(sequence_output_ln)
# pooler_output = self.transformation(pooler_output)
# projection_state = self.transformation(outputs.last_hidden_state)
if
self
.
has_pre_transformation
:
sequence_output2
=
outputs
[
"hidden_states"
][
-
2
]
sequence_output2
=
self
.
pre_LN
(
sequence_output2
)
projection_state2
=
self
.
transformation_pre
(
sequence_output2
)
return
{
"projection_state"
:
projection_state2
,
"last_hidden_state"
:
outputs
.
last_hidden_state
,
"hidden_states"
:
outputs
.
hidden_states
,
"attentions"
:
outputs
.
attentions
,
}
else
:
projection_state
=
self
.
transformation
(
outputs
.
last_hidden_state
)
return
{
"projection_state"
:
projection_state
,
"last_hidden_state"
:
outputs
.
last_hidden_state
,
"hidden_states"
:
outputs
.
hidden_states
,
"attentions"
:
outputs
.
attentions
,
}
# return {
# 'pooler_output':pooler_output,
# 'last_hidden_state':outputs.last_hidden_state,
# 'hidden_states':outputs.hidden_states,
# 'attentions':outputs.attentions,
# 'projection_state':projection_state,
# 'sequence_out': sequence_output
# }
class
RobertaSeriesModelWithTransformation
(
BertSeriesModelWithTransformation
):
base_model_prefix
=
'roberta'
config_class
=
RobertaSeriesConfig
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