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renzhc
diffusers_dcu
Commits
95a45f5b
Commit
95a45f5b
authored
Jun 20, 2022
by
patil-suraj
Browse files
add UNetLDMModelTests
parent
646e16fe
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tests/test_modeling_utils.py
tests/test_modeling_utils.py
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tests/test_modeling_utils.py
View file @
95a45f5b
...
...
@@ -34,6 +34,7 @@ from diffusers import (
LatentDiffusion
,
PNDMScheduler
,
UNetModel
,
UNetLDMModel
,
)
from
diffusers.configuration_utils
import
ConfigMixin
from
diffusers.pipeline_utils
import
DiffusionPipeline
...
...
@@ -341,6 +342,74 @@ class GLIDESuperResUNetTests(ModelTesterMixin, unittest.TestCase):
# fmt: on
self
.
assertTrue
(
torch
.
allclose
(
output_slice
,
expected_output_slice
,
atol
=
1e-3
))
class
UNetLDMModelTests
(
ModelTesterMixin
,
unittest
.
TestCase
):
model_class
=
UNetLDMModel
@
property
def
dummy_input
(
self
):
batch_size
=
4
num_channels
=
4
sizes
=
(
32
,
32
)
noise
=
floats_tensor
((
batch_size
,
num_channels
)
+
sizes
).
to
(
torch_device
)
time_step
=
torch
.
tensor
([
10
]).
to
(
torch_device
)
return
{
"x"
:
noise
,
"timesteps"
:
time_step
}
@
property
def
get_input_shape
(
self
):
return
(
4
,
32
,
32
)
@
property
def
get_output_shape
(
self
):
return
(
4
,
32
,
32
)
def
prepare_init_args_and_inputs_for_common
(
self
):
init_dict
=
{
"image_size"
:
32
,
"in_channels"
:
4
,
"out_channels"
:
4
,
"model_channels"
:
32
,
"num_res_blocks"
:
2
,
"attention_resolutions"
:
(
16
,),
"channel_mult"
:
(
1
,
2
),
"num_heads"
:
2
,
"conv_resample"
:
True
,
}
inputs_dict
=
self
.
dummy_input
return
init_dict
,
inputs_dict
def
test_from_pretrained_hub
(
self
):
model
,
loading_info
=
UNetLDMModel
.
from_pretrained
(
"fusing/unet-ldm-dummy"
,
output_loading_info
=
True
)
self
.
assertIsNotNone
(
model
)
self
.
assertEqual
(
len
(
loading_info
[
"missing_keys"
]),
0
)
model
.
to
(
torch_device
)
image
=
model
(
**
self
.
dummy_input
)
assert
image
is
not
None
,
"Make sure output is not None"
def
test_output_pretrained
(
self
):
model
=
UNetLDMModel
.
from_pretrained
(
"fusing/unet-ldm-dummy"
)
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
)
output_slice
=
output
[
0
,
-
1
,
-
3
:,
-
3
:].
flatten
()
# fmt: off
expected_output_slice
=
torch
.
tensor
([
-
13.3258
,
-
20.1100
,
-
15.9873
,
-
17.6617
,
-
23.0596
,
-
17.9419
,
-
13.3675
,
-
16.1889
,
-
12.3800
])
# fmt: on
self
.
assertTrue
(
torch
.
allclose
(
output_slice
,
expected_output_slice
,
atol
=
1e-3
))
class
PipelineTesterMixin
(
unittest
.
TestCase
):
def
test_from_pretrained_save_pretrained
(
self
):
...
...
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