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
chenpangpang
diffusers
Commits
c3a15437
Commit
c3a15437
authored
Jul 19, 2022
by
Patrick von Platen
Browse files
automatic logits verification >> visual logits verification
parent
8c31925b
Changes
1
Hide whitespace changes
Inline
Side-by-side
Showing
1 changed file
with
39 additions
and
35 deletions
+39
-35
scripts/generate_logits.py
scripts/generate_logits.py
+39
-35
No files found.
scripts/generate_logits.py
View file @
c3a15437
from
huggingface_hub
import
HfApi
from
transformers.file_utils
import
has_file
from
huggingface_hub
import
HfApi
from
transformers.file_utils
import
has_file
from
diffusers
import
UNetUnconditionalModel
import
random
import
torch
api
=
HfApi
()
models
=
api
.
list_models
(
filter
=
"diffusers"
)
for
mod
in
models
:
if
"google"
in
mod
.
author
or
mod
.
modelId
==
"CompVis/ldm-celebahq-256"
:
if
mod
.
modelId
==
"CompVis/ldm-celebahq-256"
or
not
has_file
(
mod
.
modelId
,
"config.json"
):
model
=
UNetUnconditionalModel
.
from_pretrained
(
mod
.
modelId
,
subfolder
=
"unet"
)
else
:
model
=
UNetUnconditionalModel
.
from_pretrained
(
mod
.
modelId
)
torch
.
manual_seed
(
0
)
random
.
seed
(
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
():
logits
=
model
(
noise
,
time_step
)[
'sample'
]
print
(
f
"
{
mod
.
modelId
.
replace
(
'-'
,
'_'
).
replace
(
'/'
,
'_'
)
}
= torch.
{
logits
[
0
,
0
,
0
,:
30
]
}
"
)
google_ddpm_cifar10_32
=
torch
.
tensor
([
-
0.7515
,
-
1.6883
,
0.2420
,
0.0300
,
0.6347
,
1.3433
,
-
1.1743
,
-
3.7467
,
results
=
{}
results
[
"google_ddpm_cifar10_32"
]
=
torch
.
tensor
([
-
0.7515
,
-
1.6883
,
0.2420
,
0.0300
,
0.6347
,
1.3433
,
-
1.1743
,
-
3.7467
,
1.2342
,
-
2.2485
,
0.4636
,
0.8076
,
-
0.7991
,
0.3969
,
0.8498
,
0.9189
,
-
1.8887
,
-
3.3522
,
0.7639
,
0.2040
,
0.6271
,
-
2.7148
,
-
1.6316
,
3.0839
,
0.3186
,
0.2721
,
-
0.9759
,
-
1.2461
,
2.6257
,
1.3557
])
google_ddpm_ema_bedroom_256
=
torch
.
tensor
([
-
2.3639
,
-
2.5344
,
0.0054
,
-
0.6674
,
1.5990
,
1.0158
,
0.3124
,
-
2.1436
,
results
[
"
google_ddpm_ema_bedroom_256
"
]
=
torch
.
tensor
([
-
2.3639
,
-
2.5344
,
0.0054
,
-
0.6674
,
1.5990
,
1.0158
,
0.3124
,
-
2.1436
,
1.8795
,
-
2.5429
,
-
0.1566
,
-
0.3973
,
1.2490
,
2.6447
,
1.2283
,
-
0.5208
,
-
2.8154
,
-
3.5119
,
2.3838
,
1.2033
,
1.7201
,
-
2.1256
,
-
1.4576
,
2.7948
,
2.4204
,
-
0.9752
,
-
1.2546
,
0.8027
,
3.2758
,
3.1365
])
CompVis_ldm_celebahq_256
=
torch
.
tensor
([
-
0.6531
,
-
0.6891
,
-
0.3172
,
-
0.5375
,
-
0.9140
,
-
0.5367
,
-
0.1175
,
-
0.7869
,
results
[
"
CompVis_ldm_celebahq_256
"
]
=
torch
.
tensor
([
-
0.6531
,
-
0.6891
,
-
0.3172
,
-
0.5375
,
-
0.9140
,
-
0.5367
,
-
0.1175
,
-
0.7869
,
-
0.3808
,
-
0.4513
,
-
0.2098
,
-
0.0083
,
0.3183
,
0.5140
,
0.2247
,
-
0.1304
,
-
0.1302
,
-
0.2802
,
-
0.2084
,
-
0.2025
,
-
0.4967
,
-
0.4873
,
-
0.0861
,
0.6925
,
0.0250
,
0.1290
,
-
0.1543
,
0.6316
,
1.0460
,
1.4943
])
google_ncsnpp_ffhq_1024
=
torch
.
tensor
([
0.0911
,
0.1107
,
0.0182
,
0.0435
,
-
0.0805
,
-
0.0608
,
0.0381
,
0.2172
,
results
[
"
google_ncsnpp_ffhq_1024
"
]
=
torch
.
tensor
([
0.0911
,
0.1107
,
0.0182
,
0.0435
,
-
0.0805
,
-
0.0608
,
0.0381
,
0.2172
,
-
0.0280
,
0.1327
,
-
0.0299
,
-
0.0255
,
-
0.0050
,
-
0.1170
,
-
0.1046
,
0.0309
,
0.1367
,
0.1728
,
-
0.0533
,
-
0.0748
,
-
0.0534
,
0.1624
,
0.0384
,
-
0.1805
,
-
0.0707
,
0.0642
,
0.0220
,
-
0.0134
,
-
0.1333
,
-
0.1505
])
google_ncsnpp_bedroom_256
=
torch
.
tensor
([
0.1321
,
0.1337
,
0.0440
,
0.0622
,
-
0.0591
,
-
0.0370
,
0.0503
,
0.2133
,
results
[
"
google_ncsnpp_bedroom_256
"
]
=
torch
.
tensor
([
0.1321
,
0.1337
,
0.0440
,
0.0622
,
-
0.0591
,
-
0.0370
,
0.0503
,
0.2133
,
-
0.0177
,
0.1415
,
-
0.0116
,
-
0.0112
,
0.0044
,
-
0.0980
,
-
0.0789
,
0.0395
,
0.1502
,
0.1785
,
-
0.0488
,
-
0.0514
,
-
0.0404
,
0.1539
,
0.0454
,
-
0.1559
,
-
0.0665
,
0.0659
,
0.0383
,
-
0.0005
,
-
0.1266
,
-
0.1386
])
google_ncsnpp_celebahq_256
=
torch
.
tensor
([
0.1154
,
0.1218
,
0.0307
,
0.0526
,
-
0.0711
,
-
0.0541
,
0.0366
,
0.2078
,
results
[
"
google_ncsnpp_celebahq_256
"
]
=
torch
.
tensor
([
0.1154
,
0.1218
,
0.0307
,
0.0526
,
-
0.0711
,
-
0.0541
,
0.0366
,
0.2078
,
-
0.0267
,
0.1317
,
-
0.0226
,
-
0.0193
,
-
0.0014
,
-
0.1055
,
-
0.0902
,
0.0330
,
0.1391
,
0.1709
,
-
0.0562
,
-
0.0693
,
-
0.0560
,
0.1482
,
0.0381
,
-
0.1683
,
-
0.0681
,
0.0661
,
0.0331
,
-
0.0046
,
-
0.1268
,
-
0.1431
])
google_ncsnpp_church_256
=
torch
.
tensor
([
0.1192
,
0.1240
,
0.0414
,
0.0606
,
-
0.0557
,
-
0.0412
,
0.0430
,
0.2042
,
results
[
"
google_ncsnpp_church_256
"
]
=
torch
.
tensor
([
0.1192
,
0.1240
,
0.0414
,
0.0606
,
-
0.0557
,
-
0.0412
,
0.0430
,
0.2042
,
-
0.0200
,
0.1385
,
-
0.0115
,
-
0.0132
,
0.0017
,
-
0.0965
,
-
0.0802
,
0.0398
,
0.1433
,
0.1747
,
-
0.0458
,
-
0.0533
,
-
0.0407
,
0.1545
,
0.0419
,
-
0.1574
,
-
0.0645
,
0.0626
,
0.0341
,
-
0.0010
,
-
0.1199
,
-
0.1390
])
google_ncsnpp_ffhq_256
=
torch
.
tensor
([
0.1075
,
0.1074
,
0.0205
,
0.0431
,
-
0.0774
,
-
0.0607
,
0.0298
,
0.2042
,
results
[
"
google_ncsnpp_ffhq_256
"
]
=
torch
.
tensor
([
0.1075
,
0.1074
,
0.0205
,
0.0431
,
-
0.0774
,
-
0.0607
,
0.0298
,
0.2042
,
-
0.0320
,
0.1267
,
-
0.0281
,
-
0.0250
,
-
0.0064
,
-
0.1091
,
-
0.0946
,
0.0290
,
0.1328
,
0.1650
,
-
0.0580
,
-
0.0738
,
-
0.0586
,
0.1440
,
0.0337
,
-
0.1746
,
-
0.0712
,
0.0605
,
0.0250
,
-
0.0099
,
-
0.1316
,
-
0.1473
])
google_ddpm_cat_256
=
torch
.
tensor
([
-
1.4572
,
-
2.0481
,
-
0.0414
,
-
0.6005
,
1.4136
,
0.5848
,
0.4028
,
-
2.7330
,
results
[
"
google_ddpm_cat_256
"
]
=
torch
.
tensor
([
-
1.4572
,
-
2.0481
,
-
0.0414
,
-
0.6005
,
1.4136
,
0.5848
,
0.4028
,
-
2.7330
,
1.2212
,
-
2.1228
,
0.2155
,
0.4039
,
0.7662
,
2.0535
,
0.7477
,
-
0.3243
,
-
2.1758
,
-
2.7648
,
1.6947
,
0.7026
,
1.2338
,
-
1.6078
,
-
0.8682
,
2.2810
,
1.8574
,
-
0.5718
,
-
0.5586
,
-
0.0186
,
2.3415
,
2.1251
])
google_ddpm_celebahq_256
=
torch
.
tensor
([
-
1.3690
,
-
1.9720
,
-
0.4090
,
-
0.6966
,
1.4660
,
0.9938
,
-
0.1385
,
-
2.7324
,
results
[
"
google_ddpm_celebahq_256
"
]
=
torch
.
tensor
([
-
1.3690
,
-
1.9720
,
-
0.4090
,
-
0.6966
,
1.4660
,
0.9938
,
-
0.1385
,
-
2.7324
,
0.7736
,
-
1.8917
,
0.2923
,
0.4293
,
0.1693
,
1.4112
,
1.1887
,
-
0.3181
,
-
2.2160
,
-
2.6381
,
1.3170
,
0.8163
,
0.9240
,
-
1.6544
,
-
0.6099
,
2.5259
,
1.6430
,
-
0.9090
,
-
0.9392
,
-
0.0126
,
2.4268
,
2.3266
])
google_ddpm_ema_celebahq_256
=
torch
.
tensor
([
-
1.3525
,
-
1.9628
,
-
0.3956
,
-
0.6860
,
1.4664
,
1.0014
,
-
0.1259
,
-
2.7212
,
results
[
"
google_ddpm_ema_celebahq_256
"
]
=
torch
.
tensor
([
-
1.3525
,
-
1.9628
,
-
0.3956
,
-
0.6860
,
1.4664
,
1.0014
,
-
0.1259
,
-
2.7212
,
0.7772
,
-
1.8811
,
0.2996
,
0.4388
,
0.1704
,
1.4029
,
1.1701
,
-
0.3027
,
-
2.2053
,
-
2.6287
,
1.3350
,
0.8131
,
0.9274
,
-
1.6292
,
-
0.6098
,
2.5131
,
1.6505
,
-
0.8958
,
-
0.9298
,
-
0.0151
,
2.4257
,
2.3355
])
google_ddpm_church_256
=
torch
.
tensor
([
-
2.0585
,
-
2.7897
,
-
0.2850
,
-
0.8940
,
1.9052
,
0.5702
,
0.6345
,
-
3.8959
,
results
[
"
google_ddpm_church_256
"
]
=
torch
.
tensor
([
-
2.0585
,
-
2.7897
,
-
0.2850
,
-
0.8940
,
1.9052
,
0.5702
,
0.6345
,
-
3.8959
,
1.5932
,
-
3.2319
,
0.1974
,
0.0287
,
1.7566
,
2.6543
,
0.8387
,
-
0.5351
,
-
3.2736
,
-
4.3375
,
2.9029
,
1.6390
,
1.4640
,
-
2.1701
,
-
1.9013
,
2.9341
,
3.4981
,
-
0.6255
,
-
1.1644
,
-
0.1591
,
3.7097
,
3.2066
])
google_ddpm_bedroom_256
=
torch
.
tensor
([
-
2.3139
,
-
2.5594
,
-
0.0197
,
-
0.6785
,
1.7001
,
1.1606
,
0.3075
,
-
2.1740
,
results
[
"
google_ddpm_bedroom_256
"
]
=
torch
.
tensor
([
-
2.3139
,
-
2.5594
,
-
0.0197
,
-
0.6785
,
1.7001
,
1.1606
,
0.3075
,
-
2.1740
,
1.8071
,
-
2.5630
,
-
0.0926
,
-
0.3811
,
1.2116
,
2.6246
,
1.2731
,
-
0.5398
,
-
2.8153
,
-
3.6140
,
2.3893
,
1.3262
,
1.6258
,
-
2.1856
,
-
1.3267
,
2.8395
,
2.3779
,
-
1.0623
,
-
1.2468
,
0.8959
,
3.3367
,
3.2243
])
google_ddpm_ema_church_256
=
torch
.
tensor
([
-
2.0628
,
-
2.7667
,
-
0.2089
,
-
0.8263
,
2.0539
,
0.5992
,
0.6495
,
-
3.8336
,
results
[
"
google_ddpm_ema_church_256
"
]
=
torch
.
tensor
([
-
2.0628
,
-
2.7667
,
-
0.2089
,
-
0.8263
,
2.0539
,
0.5992
,
0.6495
,
-
3.8336
,
1.6025
,
-
3.2817
,
0.1721
,
-
0.0633
,
1.7516
,
2.7039
,
0.8100
,
-
0.5908
,
-
3.2113
,
-
4.4343
,
2.9257
,
1.3632
,
1.5562
,
-
2.1489
,
-
1.9894
,
3.0560
,
3.3396
,
-
0.7328
,
-
1.0417
,
0.0383
,
3.7093
,
3.2343
])
google_ddpm_ema_cat_256
=
torch
.
tensor
([
-
1.4574
,
-
2.0569
,
-
0.0473
,
-
0.6117
,
1.4018
,
0.5769
,
0.4129
,
-
2.7344
,
results
[
"
google_ddpm_ema_cat_256
"
]
=
torch
.
tensor
([
-
1.4574
,
-
2.0569
,
-
0.0473
,
-
0.6117
,
1.4018
,
0.5769
,
0.4129
,
-
2.7344
,
1.2241
,
-
2.1397
,
0.2000
,
0.3937
,
0.7616
,
2.0453
,
0.7324
,
-
0.3391
,
-
2.1746
,
-
2.7744
,
1.6963
,
0.6921
,
1.2187
,
-
1.6172
,
-
0.8877
,
2.2439
,
1.8471
,
-
0.5839
,
-
0.5605
,
-
0.0464
,
2.3250
,
2.1219
])
\ No newline at end of file
1.8471
,
-
0.5839
,
-
0.5605
,
-
0.0464
,
2.3250
,
2.1219
])
models
=
api
.
list_models
(
filter
=
"diffusers"
)
for
mod
in
models
:
if
"google"
in
mod
.
author
or
mod
.
modelId
==
"CompVis/ldm-celebahq-256"
:
if
mod
.
modelId
==
"CompVis/ldm-celebahq-256"
or
not
has_file
(
mod
.
modelId
,
"config.json"
):
model
=
UNetUnconditionalModel
.
from_pretrained
(
mod
.
modelId
,
subfolder
=
"unet"
)
else
:
model
=
UNetUnconditionalModel
.
from_pretrained
(
mod
.
modelId
)
torch
.
manual_seed
(
0
)
random
.
seed
(
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
():
logits
=
model
(
noise
,
time_step
)[
'sample'
]
torch
.
allclose
(
logits
[
0
,
0
,
0
,
:
30
],
results
[
"_"
.
join
(
"_"
.
join
(
mod
.
modelId
.
split
(
"/"
)).
split
(
"-"
))],
atol
=
1e-3
)
print
(
f
"
{
mod
.
modelId
}
has passed succesfully!!!"
)
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