Skip to content
GitLab
Menu
Projects
Groups
Snippets
Loading...
Help
Help
Support
Community forum
Keyboard shortcuts
?
Submit feedback
Contribute to GitLab
Sign in
Toggle navigation
Menu
Open sidebar
OpenDAS
diffusers
Commits
37fe8e00
Commit
37fe8e00
authored
Jul 19, 2022
by
Patrick von Platen
Browse files
upload
parent
3f0b44b3
Changes
4
Expand all
Show whitespace changes
Inline
Side-by-side
Showing
4 changed files
with
137 additions
and
526 deletions
+137
-526
conversion.py
conversion.py
+0
-138
scripts/convert_ldm_original_checkpoint_to_diffusers.py
scripts/convert_ldm_original_checkpoint_to_diffusers.py
+16
-1
scripts/convert_ncsnpp_original_checkpoint_to_diffusers.py
scripts/convert_ncsnpp_original_checkpoint_to_diffusers.py
+58
-39
tests/test_modeling_utils.py
tests/test_modeling_utils.py
+63
-348
No files found.
conversion.py
deleted
100755 → 0
View file @
3f0b44b3
# coding=utf-8
# Copyright 2022 HuggingFace Inc.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import
inspect
import
tempfile
import
unittest
import
numpy
as
np
import
torch
from
diffusers
import
(
AutoencoderKL
,
DDIMPipeline
,
DDIMScheduler
,
DDPMPipeline
,
DDPMScheduler
,
GlidePipeline
,
GlideSuperResUNetModel
,
GlideTextToImageUNetModel
,
LatentDiffusionPipeline
,
LatentDiffusionUncondPipeline
,
NCSNpp
,
PNDMPipeline
,
PNDMScheduler
,
ScoreSdeVePipeline
,
ScoreSdeVeScheduler
,
ScoreSdeVpPipeline
,
ScoreSdeVpScheduler
,
UNetLDMModel
,
UNetModel
,
UNetUnconditionalModel
,
VQModel
,
)
from
diffusers.configuration_utils
import
ConfigMixin
from
diffusers.pipeline_utils
import
DiffusionPipeline
from
diffusers.testing_utils
import
floats_tensor
,
slow
,
torch_device
from
diffusers.training_utils
import
EMAModel
# 1. LDM
def
test_output_pretrained_ldm_dummy
():
model
=
UNetUnconditionalModel
.
from_pretrained
(
"fusing/unet-ldm-dummy"
,
ldm
=
True
)
model
.
eval
()
torch
.
manual_seed
(
0
)
if
torch
.
cuda
.
is_available
():
torch
.
cuda
.
manual_seed_all
(
0
)
noise
=
torch
.
randn
(
1
,
model
.
config
.
in_channels
,
model
.
config
.
image_size
,
model
.
config
.
image_size
)
time_step
=
torch
.
tensor
([
10
]
*
noise
.
shape
[
0
])
with
torch
.
no_grad
():
output
=
model
(
noise
,
time_step
)
print
(
model
)
import
ipdb
;
ipdb
.
set_trace
()
def
test_output_pretrained_ldm
():
model
=
UNetUnconditionalModel
.
from_pretrained
(
"fusing/latent-diffusion-celeba-256"
,
subfolder
=
"unet"
,
ldm
=
True
)
model
.
eval
()
torch
.
manual_seed
(
0
)
if
torch
.
cuda
.
is_available
():
torch
.
cuda
.
manual_seed_all
(
0
)
noise
=
torch
.
randn
(
1
,
model
.
config
.
in_channels
,
model
.
config
.
image_size
,
model
.
config
.
image_size
)
time_step
=
torch
.
tensor
([
10
]
*
noise
.
shape
[
0
])
with
torch
.
no_grad
():
output
=
model
(
noise
,
time_step
)
print
(
model
)
import
ipdb
;
ipdb
.
set_trace
()
# To see the how the final model should look like
# => this is the architecture in which the model should be saved in the new format
# -> verify new repo with the following tests (in `test_modeling_utils.py`)
# - test_ldm_uncond (in PipelineTesterMixin)
# - test_output_pretrained ( in UNetLDMModelTests)
#test_output_pretrained_ldm_dummy()
#test_output_pretrained_ldm()
# 2. DDPM
def
get_model
(
model_id
):
model
=
UNetUnconditionalModel
.
from_pretrained
(
model_id
,
ldm
=
True
)
noise
=
torch
.
randn
(
1
,
model
.
config
.
in_channels
,
model
.
config
.
image_size
,
model
.
config
.
image_size
)
time_step
=
torch
.
tensor
([
10
]
*
noise
.
shape
[
0
])
with
torch
.
no_grad
():
output
=
model
(
noise
,
time_step
)
print
(
model
)
# Repos to convert and port to google (part of https://github.com/hojonathanho/diffusion)
# - fusing/ddpm_dummy
# - fusing/ddpm-cifar10
# - https://huggingface.co/fusing/ddpm-lsun-church-ema
# - https://huggingface.co/fusing/ddpm-lsun-bedroom-ema
# - https://huggingface.co/fusing/ddpm-celeba-hq
# tests to make sure to pass
# - test_ddim_cifar10, test_ddim_lsun, test_ddpm_cifar10, test_ddim_cifar10 (in PipelineTesterMixin)
# - test_output_pretrained ( in UNetModelTests)
# e.g.
get_model
(
"fusing/ddpm-cifar10"
)
# 3. NCSNpp
# Repos to convert and port to google (part of https://github.com/yang-song/score_sde)
# - https://huggingface.co/fusing/ffhq_ncsnpp
# - https://huggingface.co/fusing/church_256-ncsnpp-ve
# - https://huggingface.co/fusing/celebahq_256-ncsnpp-ve
# - https://huggingface.co/fusing/bedroom_256-ncsnpp-ve
# - https://huggingface.co/fusing/ffhq_256-ncsnpp-ve
# tests to make sure to pass
# - test_score_sde_ve_pipeline (in PipelineTesterMixin)
# - test_output_pretrained_ve_mid, test_output_pretrained_ve_large (in NCSNppModelTests)
scripts/convert_ldm_original_checkpoint_to_diffusers.py
View file @
37fe8e00
...
@@ -17,6 +17,7 @@
...
@@ -17,6 +17,7 @@
import
argparse
import
argparse
import
json
import
json
import
torch
import
torch
from
diffusers
import
VQModel
,
DDPMScheduler
,
UNetUnconditionalModel
,
LatentDiffusionUncondPipeline
def
shave_segments
(
path
,
n_shave_prefix_segments
=
1
):
def
shave_segments
(
path
,
n_shave_prefix_segments
=
1
):
...
@@ -314,4 +315,18 @@ if __name__ == "__main__":
...
@@ -314,4 +315,18 @@ if __name__ == "__main__":
config
=
json
.
loads
(
f
.
read
())
config
=
json
.
loads
(
f
.
read
())
converted_checkpoint
=
convert_ldm_checkpoint
(
checkpoint
,
config
)
converted_checkpoint
=
convert_ldm_checkpoint
(
checkpoint
,
config
)
torch
.
save
(
checkpoint
,
args
.
dump_path
)
if
"ldm"
in
config
:
del
config
[
"ldm"
]
model
=
UNetUnconditionalModel
(
**
config
)
model
.
load_state_dict
(
converted_checkpoint
)
try
:
scheduler
=
DDPMScheduler
.
from_config
(
"/"
.
join
(
args
.
checkpoint_path
.
split
(
"/"
)[:
-
1
]))
vqvae
=
VQModel
.
from_pretrained
(
"/"
.
join
(
args
.
checkpoint_path
.
split
(
"/"
)[:
-
1
]))
pipe
=
LatentDiffusionUncondPipeline
(
unet
=
model
,
scheduler
=
scheduler
,
vae
=
vqvae
)
pipe
.
save_pretrained
(
args
.
dump_path
)
except
:
model
.
save_pretrained
(
args
.
dump_path
)
scripts/convert_ncsnpp_original_checkpoint_to_diffusers.py
View file @
37fe8e00
...
@@ -20,22 +20,21 @@ import torch
...
@@ -20,22 +20,21 @@ import torch
from
diffusers
import
UNetUnconditionalModel
from
diffusers
import
UNetUnconditionalModel
def
convert_ncsnpp_checkpoint
(
checkpoint
,
config
):
def
convert_ncsnpp_checkpoint
(
checkpoint
,
config
):
"""
"""
Takes a state dict and the path to
Takes a state dict and the path to
"""
"""
new_model_architecture
=
UNetUnconditionalModel
(
**
config
)
new_model_architecture
=
UNetUnconditionalModel
(
**
config
)
new_model_architecture
.
time_steps
.
W
.
data
=
checkpoint
[
'
all_modules.0.W
'
].
data
new_model_architecture
.
time_steps
.
W
.
data
=
checkpoint
[
"
all_modules.0.W
"
].
data
new_model_architecture
.
time_steps
.
weight
.
data
=
checkpoint
[
'
all_modules.0.W
'
].
data
new_model_architecture
.
time_steps
.
weight
.
data
=
checkpoint
[
"
all_modules.0.W
"
].
data
new_model_architecture
.
time_embedding
.
linear_1
.
weight
.
data
=
checkpoint
[
'
all_modules.1.weight
'
].
data
new_model_architecture
.
time_embedding
.
linear_1
.
weight
.
data
=
checkpoint
[
"
all_modules.1.weight
"
].
data
new_model_architecture
.
time_embedding
.
linear_1
.
bias
.
data
=
checkpoint
[
'
all_modules.1.bias
'
].
data
new_model_architecture
.
time_embedding
.
linear_1
.
bias
.
data
=
checkpoint
[
"
all_modules.1.bias
"
].
data
new_model_architecture
.
time_embedding
.
linear_2
.
weight
.
data
=
checkpoint
[
'
all_modules.2.weight
'
].
data
new_model_architecture
.
time_embedding
.
linear_2
.
weight
.
data
=
checkpoint
[
"
all_modules.2.weight
"
].
data
new_model_architecture
.
time_embedding
.
linear_2
.
bias
.
data
=
checkpoint
[
'
all_modules.2.bias
'
].
data
new_model_architecture
.
time_embedding
.
linear_2
.
bias
.
data
=
checkpoint
[
"
all_modules.2.bias
"
].
data
new_model_architecture
.
conv_in
.
weight
.
data
=
checkpoint
[
'
all_modules.3.weight
'
].
data
new_model_architecture
.
conv_in
.
weight
.
data
=
checkpoint
[
"
all_modules.3.weight
"
].
data
new_model_architecture
.
conv_in
.
bias
.
data
=
checkpoint
[
'
all_modules.3.bias
'
].
data
new_model_architecture
.
conv_in
.
bias
.
data
=
checkpoint
[
"
all_modules.3.bias
"
].
data
new_model_architecture
.
conv_norm_out
.
weight
.
data
=
checkpoint
[
list
(
checkpoint
.
keys
())[
-
4
]].
data
new_model_architecture
.
conv_norm_out
.
weight
.
data
=
checkpoint
[
list
(
checkpoint
.
keys
())[
-
4
]].
data
new_model_architecture
.
conv_norm_out
.
bias
.
data
=
checkpoint
[
list
(
checkpoint
.
keys
())[
-
3
]].
data
new_model_architecture
.
conv_norm_out
.
bias
.
data
=
checkpoint
[
list
(
checkpoint
.
keys
())[
-
3
]].
data
...
@@ -44,8 +43,7 @@ def convert_ncsnpp_checkpoint(checkpoint, config):
...
@@ -44,8 +43,7 @@ def convert_ncsnpp_checkpoint(checkpoint, config):
module_index
=
4
module_index
=
4
def
set_attention_weights
(
new_layer
,
old_checkpoint
,
index
):
def
set_attention_weights
(
new_layer
,
old_checkpoint
,
index
):
new_layer
.
query
.
weight
.
data
=
old_checkpoint
[
f
"all_modules.
{
index
}
.NIN_0.W"
].
data
.
T
new_layer
.
query
.
weight
.
data
=
old_checkpoint
[
f
"all_modules.
{
index
}
.NIN_0.W"
].
data
.
T
new_layer
.
key
.
weight
.
data
=
old_checkpoint
[
f
"all_modules.
{
index
}
.NIN_1.W"
].
data
.
T
new_layer
.
key
.
weight
.
data
=
old_checkpoint
[
f
"all_modules.
{
index
}
.NIN_1.W"
].
data
.
T
new_layer
.
value
.
weight
.
data
=
old_checkpoint
[
f
"all_modules.
{
index
}
.NIN_2.W"
].
data
.
T
new_layer
.
value
.
weight
.
data
=
old_checkpoint
[
f
"all_modules.
{
index
}
.NIN_2.W"
].
data
.
T
...
@@ -60,7 +58,7 @@ def convert_ncsnpp_checkpoint(checkpoint, config):
...
@@ -60,7 +58,7 @@ def convert_ncsnpp_checkpoint(checkpoint, config):
new_layer
.
group_norm
.
weight
.
data
=
old_checkpoint
[
f
"all_modules.
{
index
}
.GroupNorm_0.weight"
].
data
new_layer
.
group_norm
.
weight
.
data
=
old_checkpoint
[
f
"all_modules.
{
index
}
.GroupNorm_0.weight"
].
data
new_layer
.
group_norm
.
bias
.
data
=
old_checkpoint
[
f
"all_modules.
{
index
}
.GroupNorm_0.bias"
].
data
new_layer
.
group_norm
.
bias
.
data
=
old_checkpoint
[
f
"all_modules.
{
index
}
.GroupNorm_0.bias"
].
data
def
set_resnet_weights
(
new_layer
,
old_checkpoint
,
index
):
def
set_resnet_weights
(
new_layer
,
old_checkpoint
,
index
):
new_layer
.
conv1
.
weight
.
data
=
old_checkpoint
[
f
"all_modules.
{
index
}
.Conv_0.weight"
].
data
new_layer
.
conv1
.
weight
.
data
=
old_checkpoint
[
f
"all_modules.
{
index
}
.Conv_0.weight"
].
data
new_layer
.
conv1
.
bias
.
data
=
old_checkpoint
[
f
"all_modules.
{
index
}
.Conv_0.bias"
].
data
new_layer
.
conv1
.
bias
.
data
=
old_checkpoint
[
f
"all_modules.
{
index
}
.Conv_0.bias"
].
data
new_layer
.
norm1
.
weight
.
data
=
old_checkpoint
[
f
"all_modules.
{
index
}
.GroupNorm_0.weight"
].
data
new_layer
.
norm1
.
weight
.
data
=
old_checkpoint
[
f
"all_modules.
{
index
}
.GroupNorm_0.weight"
].
data
...
@@ -81,35 +79,35 @@ def convert_ncsnpp_checkpoint(checkpoint, config):
...
@@ -81,35 +79,35 @@ def convert_ncsnpp_checkpoint(checkpoint, config):
for
i
,
block
in
enumerate
(
new_model_architecture
.
downsample_blocks
):
for
i
,
block
in
enumerate
(
new_model_architecture
.
downsample_blocks
):
has_attentions
=
hasattr
(
block
,
"attentions"
)
has_attentions
=
hasattr
(
block
,
"attentions"
)
for
j
in
range
(
len
(
block
.
resnets
)):
for
j
in
range
(
len
(
block
.
resnets
)):
set_resnet_weights
(
block
.
resnets
[
j
],
checkpoint
,
module_index
)
set_resnet_weights
(
block
.
resnets
[
j
],
checkpoint
,
module_index
)
module_index
+=
1
module_index
+=
1
if
has_attentions
:
if
has_attentions
:
set_attention_weights
(
block
.
attentions
[
j
],
checkpoint
,
module_index
)
set_attention_weights
(
block
.
attentions
[
j
],
checkpoint
,
module_index
)
module_index
+=
1
module_index
+=
1
if
hasattr
(
block
,
"downsamplers"
)
and
block
.
downsamplers
is
not
None
:
if
hasattr
(
block
,
"downsamplers"
)
and
block
.
downsamplers
is
not
None
:
set_resnet_weights
(
block
.
resnet_down
,
checkpoint
,
module_index
)
set_resnet_weights
(
block
.
resnet_down
,
checkpoint
,
module_index
)
module_index
+=
1
module_index
+=
1
block
.
skip_conv
.
weight
.
data
=
checkpoint
[
f
"all_modules.
{
module_index
}
.Conv_0.weight"
].
data
block
.
skip_conv
.
weight
.
data
=
checkpoint
[
f
"all_modules.
{
module_index
}
.Conv_0.weight"
].
data
block
.
skip_conv
.
bias
.
data
=
checkpoint
[
f
"all_modules.
{
module_index
}
.Conv_0.bias"
].
data
block
.
skip_conv
.
bias
.
data
=
checkpoint
[
f
"all_modules.
{
module_index
}
.Conv_0.bias"
].
data
module_index
+=
1
module_index
+=
1
set_resnet_weights
(
new_model_architecture
.
mid
.
resnets
[
0
],
checkpoint
,
module_index
)
set_resnet_weights
(
new_model_architecture
.
mid
.
resnets
[
0
],
checkpoint
,
module_index
)
module_index
+=
1
module_index
+=
1
set_attention_weights
(
new_model_architecture
.
mid
.
attentions
[
0
],
checkpoint
,
module_index
)
set_attention_weights
(
new_model_architecture
.
mid
.
attentions
[
0
],
checkpoint
,
module_index
)
module_index
+=
1
module_index
+=
1
set_resnet_weights
(
new_model_architecture
.
mid
.
resnets
[
1
],
checkpoint
,
module_index
)
set_resnet_weights
(
new_model_architecture
.
mid
.
resnets
[
1
],
checkpoint
,
module_index
)
module_index
+=
1
module_index
+=
1
for
i
,
block
in
enumerate
(
new_model_architecture
.
upsample_blocks
):
for
i
,
block
in
enumerate
(
new_model_architecture
.
upsample_blocks
):
has_attentions
=
hasattr
(
block
,
"attentions"
)
has_attentions
=
hasattr
(
block
,
"attentions"
)
for
j
in
range
(
len
(
block
.
resnets
)):
for
j
in
range
(
len
(
block
.
resnets
)):
set_resnet_weights
(
block
.
resnets
[
j
],
checkpoint
,
module_index
)
set_resnet_weights
(
block
.
resnets
[
j
],
checkpoint
,
module_index
)
module_index
+=
1
module_index
+=
1
if
has_attentions
:
if
has_attentions
:
set_attention_weights
(
block
.
attentions
[
0
],
checkpoint
,
module_index
)
# why can there only be a single attention layer for up?
set_attention_weights
(
block
.
attentions
[
0
],
checkpoint
,
module_index
)
# why can there only be a single attention layer for up?
module_index
+=
1
module_index
+=
1
if
hasattr
(
block
,
"resnet_up"
)
and
block
.
resnet_up
is
not
None
:
if
hasattr
(
block
,
"resnet_up"
)
and
block
.
resnet_up
is
not
None
:
...
@@ -119,7 +117,7 @@ def convert_ncsnpp_checkpoint(checkpoint, config):
...
@@ -119,7 +117,7 @@ def convert_ncsnpp_checkpoint(checkpoint, config):
block
.
skip_conv
.
weight
.
data
=
checkpoint
[
f
"all_modules.
{
module_index
}
.weight"
].
data
block
.
skip_conv
.
weight
.
data
=
checkpoint
[
f
"all_modules.
{
module_index
}
.weight"
].
data
block
.
skip_conv
.
bias
.
data
=
checkpoint
[
f
"all_modules.
{
module_index
}
.bias"
].
data
block
.
skip_conv
.
bias
.
data
=
checkpoint
[
f
"all_modules.
{
module_index
}
.bias"
].
data
module_index
+=
1
module_index
+=
1
set_resnet_weights
(
block
.
resnet_up
,
checkpoint
,
module_index
)
set_resnet_weights
(
block
.
resnet_up
,
checkpoint
,
module_index
)
module_index
+=
1
module_index
+=
1
new_model_architecture
.
conv_norm_out
.
weight
.
data
=
checkpoint
[
f
"all_modules.
{
module_index
}
.weight"
].
data
new_model_architecture
.
conv_norm_out
.
weight
.
data
=
checkpoint
[
f
"all_modules.
{
module_index
}
.weight"
].
data
...
@@ -130,11 +128,16 @@ def convert_ncsnpp_checkpoint(checkpoint, config):
...
@@ -130,11 +128,16 @@ def convert_ncsnpp_checkpoint(checkpoint, config):
return
new_model_architecture
.
state_dict
()
return
new_model_architecture
.
state_dict
()
if
__name__
==
"__main__"
:
if
__name__
==
"__main__"
:
parser
=
argparse
.
ArgumentParser
()
parser
=
argparse
.
ArgumentParser
()
parser
.
add_argument
(
parser
.
add_argument
(
"--checkpoint_path"
,
default
=
"/Users/arthurzucker/Work/diffusers/ArthurZ/diffusion_model.pt"
,
type
=
str
,
required
=
False
,
help
=
"Path to the checkpoint to convert."
"--checkpoint_path"
,
default
=
"/Users/arthurzucker/Work/diffusers/ArthurZ/diffusion_model.pt"
,
type
=
str
,
required
=
False
,
help
=
"Path to the checkpoint to convert."
,
)
)
parser
.
add_argument
(
parser
.
add_argument
(
...
@@ -146,19 +149,35 @@ if __name__ == "__main__":
...
@@ -146,19 +149,35 @@ if __name__ == "__main__":
)
)
parser
.
add_argument
(
parser
.
add_argument
(
"--dump_path"
,
default
=
"/Users/arthurzucker/Work/diffusers/ArthurZ/diffusion_model_new.pt"
,
type
=
str
,
required
=
False
,
help
=
"Path to the output model."
"--dump_path"
,
default
=
"/Users/arthurzucker/Work/diffusers/ArthurZ/diffusion_model_new.pt"
,
type
=
str
,
required
=
False
,
help
=
"Path to the output model."
,
)
)
args
=
parser
.
parse_args
()
args
=
parser
.
parse_args
()
checkpoint
=
torch
.
load
(
args
.
checkpoint_path
,
map_location
=
"cpu"
)
checkpoint
=
torch
.
load
(
args
.
checkpoint_path
,
map_location
=
"cpu"
)
with
open
(
args
.
config_file
)
as
f
:
with
open
(
args
.
config_file
)
as
f
:
config
=
json
.
loads
(
f
.
read
())
config
=
json
.
loads
(
f
.
read
())
converted_checkpoint
=
convert_ncsnpp_checkpoint
(
checkpoint
,
config
,
)
if
"sde"
in
config
:
del
config
[
"sde"
]
model
=
UNetUnconditionalModel
(
**
config
)
model
.
load_state_dict
(
converted_checkpoint
)
try
:
scheduler
=
ScoreSdeVeScheduler
.
from_config
(
"/"
.
join
(
args
.
checkpoint_path
.
split
(
"/"
)[:
-
1
]))
converted_checkpoint
=
convert_ncsnpp_checkpoint
(
checkpoint
,
config
,)
pipe
=
ScoreSdeVePipeline
(
unet
=
model
,
scheduler
=
scheduler
)
torch
.
save
(
converted_checkpoint
,
args
.
dump_path
)
pipe
.
save_pretrained
(
args
.
dump_path
)
except
:
model
.
save_pretrained
(
args
.
dump_path
)
tests/test_modeling_utils.py
View file @
37fe8e00
This diff is collapsed.
Click to expand it.
Write
Preview
Markdown
is supported
0%
Try again
or
attach a new file
.
Attach a file
Cancel
You are about to add
0
people
to the discussion. Proceed with caution.
Finish editing this message first!
Cancel
Please
register
or
sign in
to comment