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debug_embed_params.py
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debug_embed_params.py
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import sys
import torch
import torch.jit
from torch.autograd import Variable
import onnx
import caffe2.python.onnx.backend as c2
from test_pytorch_common import flatten
torch.set_default_tensor_type("torch.FloatTensor")
try:
import torch
except ImportError:
print("Cannot import torch, hence caffe2-torch test will not run.")
sys.exit(0)
def run_embed_params(proto, model, input, state_dict=None, use_gpu=True):
"""
This is only a helper debug function so we can test embed_params=False
case as well on pytorch front
This should likely be removed from the release version of the code
"""
device = "CPU"
if use_gpu:
device = "CUDA"
model_def = onnx.ModelProto.FromString(proto)
onnx.checker.check_model(model_def)
prepared = c2.prepare(model_def, device=device)
if state_dict:
parameters = []
# Passed in state_dict may have a different order. Make
# sure our order is consistent with the model's order.
# TODO: Even better: keyword arguments!
for k in model.state_dict():
if k in state_dict:
parameters.append(state_dict[k])
else:
parameters = list(model.state_dict().values())
W = {}
for k, v in zip(model_def.graph.input, flatten((input, parameters))):
if isinstance(v, Variable):
W[k.name] = v.data.cpu().numpy()
else:
W[k.name] = v.cpu().numpy()
caffe2_out = prepared.run(inputs=W)
return caffe2_out