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Stable Diffusion Webui
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novelai-storage
Stable Diffusion Webui
Commits
6021f7a7
Commit
6021f7a7
authored
Oct 19, 2022
by
discus0434
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add options to custom hypernetwork layer structure
parent
c1093b80
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4 changed files
with
75 additions
and
24 deletions
+75
-24
.gitignore
.gitignore
+1
-0
modules/hypernetworks/hypernetwork.py
modules/hypernetworks/hypernetwork.py
+67
-21
modules/shared.py
modules/shared.py
+3
-1
webui.py
webui.py
+4
-2
No files found.
.gitignore
View file @
6021f7a7
...
@@ -27,3 +27,4 @@ __pycache__
...
@@ -27,3 +27,4 @@ __pycache__
notification.mp3
notification.mp3
/SwinIR
/SwinIR
/textual_inversion
/textual_inversion
/hypernetwork
modules/hypernetworks/hypernetwork.py
View file @
6021f7a7
import
csv
import
datetime
import
datetime
import
glob
import
glob
import
html
import
html
import
os
import
os
import
sys
import
sys
import
traceback
import
traceback
import
tqdm
import
csv
import
modules.textual_inversion.dataset
import
torch
import
torch
import
tqdm
from
ldm.util
import
default
from
modules
import
devices
,
shared
,
processing
,
sd_models
import
torch
from
torch
import
einsum
from
einops
import
rearrange
,
repeat
from
einops
import
rearrange
,
repeat
import
modules.textual_inversion.dataset
from
ldm.util
import
default
from
modules
import
devices
,
processing
,
sd_models
,
shared
from
modules.textual_inversion
import
textual_inversion
from
modules.textual_inversion
import
textual_inversion
from
modules.textual_inversion.learn_schedule
import
LearnRateScheduler
from
modules.textual_inversion.learn_schedule
import
LearnRateScheduler
from
torch
import
einsum
def
parse_layer_structure
(
dim
,
state_dict
):
i
=
0
res
=
[
1
]
while
(
key
:
=
"linear.{}.weight"
.
format
(
i
))
in
state_dict
:
weight
=
state_dict
[
key
]
res
.
append
(
len
(
weight
)
//
dim
)
i
+=
1
return
res
class
HypernetworkModule
(
torch
.
nn
.
Module
):
class
HypernetworkModule
(
torch
.
nn
.
Module
):
multiplier
=
1.0
multiplier
=
1.0
layer_structure
=
None
add_layer_norm
=
False
def
__init__
(
self
,
dim
,
state_dict
=
None
):
def
__init__
(
self
,
dim
,
state_dict
=
None
):
super
()
.
__init__
()
super
()
.
__init__
()
if
(
state_dict
is
None
or
'linear.0.weight'
not
in
state_dict
)
and
self
.
layer_structure
is
None
:
layer_structure
=
(
1
,
2
,
1
)
else
:
if
self
.
layer_structure
is
not
None
:
assert
self
.
layer_structure
[
0
]
==
1
,
"Multiplier Sequence should start with size 1!"
assert
self
.
layer_structure
[
-
1
]
==
1
,
"Multiplier Sequence should end with size 1!"
layer_structure
=
self
.
layer_structure
else
:
layer_structure
=
parse_layer_structure
(
dim
,
state_dict
)
linears
=
[]
for
i
in
range
(
len
(
layer_structure
)
-
1
):
linears
.
append
(
torch
.
nn
.
Linear
(
int
(
dim
*
layer_structure
[
i
]),
int
(
dim
*
layer_structure
[
i
+
1
])))
if
self
.
add_layer_norm
:
linears
.
append
(
torch
.
nn
.
LayerNorm
(
int
(
dim
*
layer_structure
[
i
+
1
])))
self
.
linear1
=
torch
.
nn
.
Linear
(
dim
,
dim
*
2
)
self
.
linear
=
torch
.
nn
.
Sequential
(
*
linears
)
self
.
linear2
=
torch
.
nn
.
Linear
(
dim
*
2
,
dim
)
if
state_dict
is
not
None
:
if
state_dict
is
not
None
:
self
.
load_state_dict
(
state_dict
,
strict
=
True
)
try
:
self
.
load_state_dict
(
state_dict
)
except
RuntimeError
:
self
.
try_load_previous
(
state_dict
)
else
:
else
:
for
layer
in
self
.
linear
:
self
.
linear1
.
weight
.
data
.
normal_
(
mean
=
0.0
,
std
=
0.01
)
layer
.
weight
.
data
.
normal_
(
mean
=
0.0
,
std
=
0.01
)
self
.
linear1
.
bias
.
data
.
zero_
()
layer
.
bias
.
data
.
zero_
()
self
.
linear2
.
weight
.
data
.
normal_
(
mean
=
0.0
,
std
=
0.01
)
self
.
linear2
.
bias
.
data
.
zero_
()
self
.
to
(
devices
.
device
)
self
.
to
(
devices
.
device
)
def
try_load_previous
(
self
,
state_dict
):
states
=
self
.
state_dict
()
states
[
'linear.0.bias'
]
.
copy_
(
state_dict
[
'linear1.bias'
])
states
[
'linear.0.weight'
]
.
copy_
(
state_dict
[
'linear1.weight'
])
states
[
'linear.1.bias'
]
.
copy_
(
state_dict
[
'linear2.bias'
])
states
[
'linear.1.weight'
]
.
copy_
(
state_dict
[
'linear2.weight'
])
def
forward
(
self
,
x
):
def
forward
(
self
,
x
):
return
x
+
(
self
.
linear2
(
self
.
linear1
(
x
)))
*
self
.
multiplier
return
x
+
self
.
linear
(
x
)
*
self
.
multiplier
def
trainables
(
self
):
res
=
[]
for
layer
in
self
.
linear
:
res
+=
[
layer
.
weight
,
layer
.
bias
]
return
res
def
apply_strength
(
value
=
None
):
def
apply_strength
(
value
=
None
):
HypernetworkModule
.
multiplier
=
value
if
value
is
not
None
else
shared
.
opts
.
sd_hypernetwork_strength
HypernetworkModule
.
multiplier
=
value
if
value
is
not
None
else
shared
.
opts
.
sd_hypernetwork_strength
def
apply_layer_structure
(
value
=
None
):
HypernetworkModule
.
layer_structure
=
value
if
value
is
not
None
else
shared
.
opts
.
sd_hypernetwork_layer_structure
def
apply_layer_norm
(
value
=
None
):
HypernetworkModule
.
add_layer_norm
=
value
if
value
is
not
None
else
shared
.
opts
.
sd_hypernetwork_add_layer_norm
class
Hypernetwork
:
class
Hypernetwork
:
filename
=
None
filename
=
None
name
=
None
name
=
None
...
@@ -68,7 +114,7 @@ class Hypernetwork:
...
@@ -68,7 +114,7 @@ class Hypernetwork:
for
k
,
layers
in
self
.
layers
.
items
():
for
k
,
layers
in
self
.
layers
.
items
():
for
layer
in
layers
:
for
layer
in
layers
:
layer
.
train
()
layer
.
train
()
res
+=
[
layer
.
linear1
.
weight
,
layer
.
linear1
.
bias
,
layer
.
linear2
.
weight
,
layer
.
linear2
.
bias
]
res
+=
layer
.
trainables
()
return
res
return
res
...
@@ -226,7 +272,7 @@ def train_hypernetwork(hypernetwork_name, learn_rate, batch_size, data_root, log
...
@@ -226,7 +272,7 @@ def train_hypernetwork(hypernetwork_name, learn_rate, batch_size, data_root, log
shared
.
state
.
textinfo
=
f
"Preparing dataset from {html.escape(data_root)}..."
shared
.
state
.
textinfo
=
f
"Preparing dataset from {html.escape(data_root)}..."
with
torch
.
autocast
(
"cuda"
):
with
torch
.
autocast
(
"cuda"
):
ds
=
modules
.
textual_inversion
.
dataset
.
PersonalizedBase
(
data_root
=
data_root
,
width
=
512
,
height
=
512
,
repeats
=
shared
.
opts
.
training_image_repeats_per_epoch
,
placeholder_token
=
hypernetwork_name
,
model
=
shared
.
sd_model
,
device
=
devices
.
device
,
template_file
=
template_file
,
include_cond
=
True
,
batch_size
=
batch_size
)
ds
=
modules
.
textual_inversion
.
dataset
.
PersonalizedBase
(
data_root
=
data_root
,
width
=
512
,
height
=
512
,
repeats
=
shared
.
opts
.
training_image_repeats_per_epoch
,
placeholder_token
=
hypernetwork_name
,
model
=
shared
.
sd_model
,
device
=
devices
.
device
,
template_file
=
template_file
,
include_cond
=
True
,
batch_size
=
batch_size
)
assert
ds
.
length
>
1
,
"Dataset should contain more than 1 images"
if
unload
:
if
unload
:
shared
.
sd_model
.
cond_stage_model
.
to
(
devices
.
cpu
)
shared
.
sd_model
.
cond_stage_model
.
to
(
devices
.
cpu
)
shared
.
sd_model
.
first_stage_model
.
to
(
devices
.
cpu
)
shared
.
sd_model
.
first_stage_model
.
to
(
devices
.
cpu
)
...
@@ -261,7 +307,7 @@ def train_hypernetwork(hypernetwork_name, learn_rate, batch_size, data_root, log
...
@@ -261,7 +307,7 @@ def train_hypernetwork(hypernetwork_name, learn_rate, batch_size, data_root, log
with
torch
.
autocast
(
"cuda"
):
with
torch
.
autocast
(
"cuda"
):
c
=
stack_conds
([
entry
.
cond
for
entry
in
entries
])
.
to
(
devices
.
device
)
c
=
stack_conds
([
entry
.
cond
for
entry
in
entries
])
.
to
(
devices
.
device
)
#
c = torch.vstack([entry.cond for entry in entries]).to(devices.device)
c
=
torch
.
vstack
([
entry
.
cond
for
entry
in
entries
])
.
to
(
devices
.
device
)
x
=
torch
.
stack
([
entry
.
latent
for
entry
in
entries
])
.
to
(
devices
.
device
)
x
=
torch
.
stack
([
entry
.
latent
for
entry
in
entries
])
.
to
(
devices
.
device
)
loss
=
shared
.
sd_model
(
x
,
c
)[
0
]
loss
=
shared
.
sd_model
(
x
,
c
)[
0
]
del
x
del
x
...
@@ -283,7 +329,7 @@ def train_hypernetwork(hypernetwork_name, learn_rate, batch_size, data_root, log
...
@@ -283,7 +329,7 @@ def train_hypernetwork(hypernetwork_name, learn_rate, batch_size, data_root, log
textual_inversion
.
write_loss
(
log_directory
,
"hypernetwork_loss.csv"
,
hypernetwork
.
step
,
len
(
ds
),
{
textual_inversion
.
write_loss
(
log_directory
,
"hypernetwork_loss.csv"
,
hypernetwork
.
step
,
len
(
ds
),
{
"loss"
:
f
"{mean_loss:.7f}"
,
"loss"
:
f
"{mean_loss:.7f}"
,
"learn_rate"
:
scheduler
.
learn_rate
"learn_rate"
:
f
"{scheduler.learn_rate:.7f}"
})
})
if
hypernetwork
.
step
>
0
and
images_dir
is
not
None
and
hypernetwork
.
step
%
create_image_every
==
0
:
if
hypernetwork
.
step
>
0
and
images_dir
is
not
None
and
hypernetwork
.
step
%
create_image_every
==
0
:
...
...
modules/shared.py
View file @
6021f7a7
...
@@ -13,7 +13,7 @@ import modules.memmon
...
@@ -13,7 +13,7 @@ import modules.memmon
import
modules.sd_models
import
modules.sd_models
import
modules.styles
import
modules.styles
import
modules.devices
as
devices
import
modules.devices
as
devices
from
modules
import
sd_
samplers
,
sd_model
s
,
localization
from
modules
import
sd_
models
,
sd_sampler
s
,
localization
from
modules.hypernetworks
import
hypernetwork
from
modules.hypernetworks
import
hypernetwork
from
modules.paths
import
models_path
,
script_path
,
sd_path
from
modules.paths
import
models_path
,
script_path
,
sd_path
...
@@ -258,6 +258,8 @@ options_templates.update(options_section(('sd', "Stable Diffusion"), {
...
@@ -258,6 +258,8 @@ options_templates.update(options_section(('sd', "Stable Diffusion"), {
"sd_model_checkpoint"
:
OptionInfo
(
None
,
"Stable Diffusion checkpoint"
,
gr
.
Dropdown
,
lambda
:
{
"choices"
:
modules
.
sd_models
.
checkpoint_tiles
()},
refresh
=
sd_models
.
list_models
),
"sd_model_checkpoint"
:
OptionInfo
(
None
,
"Stable Diffusion checkpoint"
,
gr
.
Dropdown
,
lambda
:
{
"choices"
:
modules
.
sd_models
.
checkpoint_tiles
()},
refresh
=
sd_models
.
list_models
),
"sd_checkpoint_cache"
:
OptionInfo
(
0
,
"Checkpoints to cache in RAM"
,
gr
.
Slider
,
{
"minimum"
:
0
,
"maximum"
:
10
,
"step"
:
1
}),
"sd_checkpoint_cache"
:
OptionInfo
(
0
,
"Checkpoints to cache in RAM"
,
gr
.
Slider
,
{
"minimum"
:
0
,
"maximum"
:
10
,
"step"
:
1
}),
"sd_hypernetwork"
:
OptionInfo
(
"None"
,
"Hypernetwork"
,
gr
.
Dropdown
,
lambda
:
{
"choices"
:
[
"None"
]
+
[
x
for
x
in
hypernetworks
.
keys
()]},
refresh
=
reload_hypernetworks
),
"sd_hypernetwork"
:
OptionInfo
(
"None"
,
"Hypernetwork"
,
gr
.
Dropdown
,
lambda
:
{
"choices"
:
[
"None"
]
+
[
x
for
x
in
hypernetworks
.
keys
()]},
refresh
=
reload_hypernetworks
),
"sd_hypernetwork_layer_structure"
:
OptionInfo
(
None
,
"Hypernetwork layer structure Default: (1,2,1)."
,
gr
.
Dropdown
,
lambda
:
{
"choices"
:
[(
1
,
2
,
1
),
(
1
,
2
,
2
,
1
),
(
1
,
2
,
4
,
2
,
1
)]}),
"sd_hypernetwork_add_layer_norm"
:
OptionInfo
(
False
,
"Add layer normalization to hypernetwork architecture."
),
"sd_hypernetwork_strength"
:
OptionInfo
(
1.0
,
"Hypernetwork strength"
,
gr
.
Slider
,
{
"minimum"
:
0.0
,
"maximum"
:
1.0
,
"step"
:
0.001
}),
"sd_hypernetwork_strength"
:
OptionInfo
(
1.0
,
"Hypernetwork strength"
,
gr
.
Slider
,
{
"minimum"
:
0.0
,
"maximum"
:
1.0
,
"step"
:
0.001
}),
"img2img_color_correction"
:
OptionInfo
(
False
,
"Apply color correction to img2img results to match original colors."
),
"img2img_color_correction"
:
OptionInfo
(
False
,
"Apply color correction to img2img results to match original colors."
),
"save_images_before_color_correction"
:
OptionInfo
(
False
,
"Save a copy of image before applying color correction to img2img results"
),
"save_images_before_color_correction"
:
OptionInfo
(
False
,
"Save a copy of image before applying color correction to img2img results"
),
...
...
webui.py
View file @
6021f7a7
...
@@ -86,11 +86,13 @@ def initialize():
...
@@ -86,11 +86,13 @@ def initialize():
shared
.
opts
.
onchange
(
"sd_model_checkpoint"
,
wrap_queued_call
(
lambda
:
modules
.
sd_models
.
reload_model_weights
(
shared
.
sd_model
)))
shared
.
opts
.
onchange
(
"sd_model_checkpoint"
,
wrap_queued_call
(
lambda
:
modules
.
sd_models
.
reload_model_weights
(
shared
.
sd_model
)))
shared
.
opts
.
onchange
(
"sd_hypernetwork"
,
wrap_queued_call
(
lambda
:
modules
.
hypernetworks
.
hypernetwork
.
load_hypernetwork
(
shared
.
opts
.
sd_hypernetwork
)))
shared
.
opts
.
onchange
(
"sd_hypernetwork"
,
wrap_queued_call
(
lambda
:
modules
.
hypernetworks
.
hypernetwork
.
load_hypernetwork
(
shared
.
opts
.
sd_hypernetwork
)))
shared
.
opts
.
onchange
(
"sd_hypernetwork_strength"
,
modules
.
hypernetworks
.
hypernetwork
.
apply_strength
)
shared
.
opts
.
onchange
(
"sd_hypernetwork_strength"
,
modules
.
hypernetworks
.
hypernetwork
.
apply_strength
)
shared
.
opts
.
onchange
(
"sd_hypernetwork_layer_structure"
,
modules
.
hypernetworks
.
hypernetwork
.
apply_layer_structure
)
shared
.
opts
.
onchange
(
"sd_hypernetwork_add_layer_norm"
,
modules
.
hypernetworks
.
hypernetwork
.
apply_layer_norm
)
def
webui
():
def
webui
():
initialize
()
initialize
()
# make the program just exit at ctrl+c without waiting for anything
# make the program just exit at ctrl+c without waiting for anything
def
sigint_handler
(
sig
,
frame
):
def
sigint_handler
(
sig
,
frame
):
print
(
f
'Interrupted with signal {sig} in {frame}'
)
print
(
f
'Interrupted with signal {sig} in {frame}'
)
...
@@ -101,7 +103,7 @@ def webui():
...
@@ -101,7 +103,7 @@ def webui():
while
1
:
while
1
:
demo
=
modules
.
ui
.
create_ui
(
wrap_gradio_gpu_call
=
wrap_gradio_gpu_call
)
demo
=
modules
.
ui
.
create_ui
(
wrap_gradio_gpu_call
=
wrap_gradio_gpu_call
)
app
,
local_url
,
share_url
=
demo
.
launch
(
app
,
local_url
,
share_url
=
demo
.
launch
(
share
=
cmd_opts
.
share
,
share
=
cmd_opts
.
share
,
server_name
=
"0.0.0.0"
if
cmd_opts
.
listen
else
None
,
server_name
=
"0.0.0.0"
if
cmd_opts
.
listen
else
None
,
...
...
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