onnxruntime/tools/python/dump_ort_model.py

146 lines
5.7 KiB
Python
Raw Normal View History

# Copyright (c) Microsoft Corporation. All rights reserved.
# Licensed under the MIT License.
import argparse
import os
import sys
import typing
from util.ort_format_model.types import FbsTypeInfo
# the import of FbsTypeInfo sets up the path so we can import ort_flatbuffers_py
import ort_flatbuffers_py.fbs as fbs
class OrtFormatModelDumper:
'Class to dump an ORT format model.'
def __init__(self, model_path: str):
'''
Initialize ORT format model dumper
:param model_path: Path to model
'''
self._file = open(model_path, 'rb').read()
self._buffer = bytearray(self._file)
if not fbs.InferenceSession.InferenceSession.InferenceSessionBufferHasIdentifier(self._buffer, 0):
raise RuntimeError("File does not appear to be a valid ORT format model: '{}'".format(model_path))
self._model = fbs.InferenceSession.InferenceSession.GetRootAsInferenceSession(self._buffer, 0).Model()
def _dump_initializers(self, graph: fbs.Graph):
print('Initializers:')
for idx in range(0, graph.InitializersLength()):
tensor = graph.Initializers(idx)
dims = []
for dim in range(0, tensor.DimsLength()):
dims.append(tensor.Dims(dim))
print(f'{tensor.Name().decode()} data_type={tensor.DataType()} dims={dims}')
print('--------')
def _dump_nodeargs(self, graph: fbs.Graph):
print('NodeArgs:')
for idx in range(0, graph.NodeArgsLength()):
node_arg = graph.NodeArgs(idx)
type = node_arg.Type()
if not type:
# NodeArg for optional value that does not exist
continue
type_str = FbsTypeInfo.typeinfo_to_str(type)
value_type = type.ValueType()
value = type.Value()
dims = None
if value_type == fbs.TypeInfoValue.TypeInfoValue.tensor_type:
tensor_type_and_shape = fbs.TensorTypeAndShape.TensorTypeAndShape()
tensor_type_and_shape.Init(value.Bytes, value.Pos)
shape = tensor_type_and_shape.Shape()
if shape:
dims = []
for dim in range(0, shape.DimLength()):
d = shape.Dim(dim).Value()
if d.DimType() == fbs.DimensionValueType.DimensionValueType.VALUE:
dims.append(str(d.DimValue()))
elif d.DimType() == fbs.DimensionValueType.DimensionValueType.PARAM:
dims.append(d.DimParam().decode())
else:
dims.append('?')
else:
dims = None
print(f'{node_arg.Name().decode()} type={type_str} dims={dims}')
print('--------')
def _dump_node(self, node: fbs.Node):
optype = node.OpType().decode()
domain = node.Domain().decode() or 'ai.onnx' # empty domain defaults to ai.onnx
inputs = [node.Inputs(i).decode() for i in range(0, node.InputsLength())]
outputs = [node.Outputs(i).decode() for i in range(0, node.OutputsLength())]
print(f'{node.Index()}:{node.Name().decode()}({domain}:{optype}) '
f'inputs=[{",".join(inputs)} outputs=[{",".join(outputs)}]')
def _dump_graph(self, graph: fbs.Graph):
'''
Process one level of the Graph, descending into any subgraphs when they are found
'''
self._dump_initializers(graph)
self._dump_nodeargs(graph)
print('Nodes:')
for i in range(0, graph.NodesLength()):
node = graph.Nodes(i)
self._dump_node(node)
# Read all the attributes
for j in range(0, node.AttributesLength()):
attr = node.Attributes(j)
attr_type = attr.Type()
if attr_type == fbs.AttributeType.AttributeType.GRAPH:
print(f'## Subgraph for {node.OpType().decode()}.{attr.Name().decode()} ##')
self._dump_graph(attr.G())
print(f'## End {node.OpType().decode()}.{attr.Name().decode()} Subgraph ##')
elif attr_type == fbs.AttributeType.AttributeType.GRAPHS:
# the ONNX spec doesn't currently define any operators that have multiple graphs in an attribute
# so entering this 'elif' isn't currently possible
print(f'## Subgraphs for {node.OpType().decode()}.{attr.Name().decode()} ##')
for k in range(0, attr.GraphsLength()):
print(f'## Subgraph {k} ##')
self._dump_graph(attr.Graphs(k))
print(f'## End Subgraph {k} ##')
def dump(self, output: typing.IO):
graph = self._model.Graph()
original_stdout = sys.stdout
sys.stdout = output
self._dump_graph(graph)
sys.stdout = original_stdout
def parse_args():
parser = argparse.ArgumentParser(os.path.basename(__file__),
description='Dump an ORT format model. Output is to <model_path>.txt')
parser.add_argument('--stdout', action='store_true', help='Dump to stdout instead of writing to file.')
parser.add_argument('model_path', help='Path to ORT format model')
args = parser.parse_args()
if not os.path.isfile(args.model_path):
parser.error(f'{args.model_path} is not a file.')
return args
def main():
args = parse_args()
d = OrtFormatModelDumper(args.model_path)
if args.stdout:
d.dump(sys.stdout)
else:
output_filename = args.model_path + ".txt"
with open(output_filename, "w", encoding="utf-8") as ofile:
d.dump(ofile)
if __name__ == '__main__':
main()