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network_visualize.py 11 kB

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  1. #! /usr/bin/env python3
  2. # MegEngine is Licensed under the Apache License, Version 2.0 (the "License")
  3. #
  4. # Copyright (c) 2014-2021 Megvii Inc. All rights reserved.
  5. #
  6. # Unless required by applicable law or agreed to in writing,
  7. # software distributed under the License is distributed on an
  8. # "AS IS" BASIS, WITHOUT ARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
  9. import argparse
  10. import logging
  11. import re
  12. from collections import namedtuple
  13. import numpy as np
  14. from tqdm import tqdm
  15. from megengine.core.tensor.dtype import is_quantize
  16. from megengine.logger import _imperative_rt_logger, get_logger, set_mgb_log_level
  17. from megengine.utils.module_stats import (
  18. enable_receptive_field,
  19. get_activation_stats,
  20. get_op_stats,
  21. get_param_stats,
  22. print_activations_stats,
  23. print_op_stats,
  24. print_param_stats,
  25. print_summary,
  26. sizeof_fmt,
  27. sum_activations_stats,
  28. sum_op_stats,
  29. sum_param_stats,
  30. )
  31. from megengine.utils.network import Network
  32. logger = get_logger(__name__)
  33. def visualize(
  34. model_path: str,
  35. log_path: str,
  36. input: np.ndarray = None,
  37. inp_dict: dict = None,
  38. cal_params: bool = True,
  39. cal_flops: bool = True,
  40. cal_activations: bool = True,
  41. logging_to_stdout: bool = True,
  42. bar_length_max: int = 20,
  43. ):
  44. r"""
  45. Load megengine dumped model and visualize graph structure with tensorboard log files.
  46. Can also record and print model's statistics like :func:`~.module_stats`
  47. :param model_path: dir path for megengine dumped model.
  48. :param log_path: dir path for tensorboard graph log.
  49. :param input: user defined input data for running model and calculating stats, alternative with inp_dict, used when the model has only one input.
  50. :param inp_dict: input dict for running model and calculating stats, alternative with input, used when the model has more than one input. When both input and inp_dict are None, a random input will be used.
  51. :param cal_params: whether calculate and record params size.
  52. :param cal_flops: whether calculate and record op flops.
  53. :param cal_activations: whether calculate and record op activations.
  54. :param logging_to_stdout: whether print all calculated statistic details.
  55. :param bar_length_max: size of bar indicating max flops or parameter size in net stats.
  56. """
  57. if log_path:
  58. try:
  59. from tensorboard.compat.proto.attr_value_pb2 import AttrValue
  60. from tensorboard.compat.proto.config_pb2 import RunMetadata
  61. from tensorboard.compat.proto.graph_pb2 import GraphDef
  62. from tensorboard.compat.proto.node_def_pb2 import NodeDef
  63. from tensorboard.compat.proto.step_stats_pb2 import (
  64. AllocatorMemoryUsed,
  65. DeviceStepStats,
  66. NodeExecStats,
  67. StepStats,
  68. )
  69. from tensorboard.compat.proto.tensor_shape_pb2 import TensorShapeProto
  70. from tensorboard.compat.proto.versions_pb2 import VersionDef
  71. from tensorboardX import SummaryWriter
  72. except ImportError:
  73. logger.error(
  74. "TensorBoard and TensorboardX are required for visualize.",
  75. exc_info=True,
  76. )
  77. return
  78. enable_receptive_field()
  79. graph = Network.load(model_path)
  80. graph.reset_batch_size(1)
  81. has_input = False
  82. if input is not None or inp_dict is not None:
  83. has_input = True
  84. repl_dict = {}
  85. inp_vars = graph.input_vars
  86. if inp_dict is not None:
  87. assert len(inp_dict) == len(
  88. inp_vars
  89. ), "Inputs are not sufficient for calculation."
  90. for v in inp_vars:
  91. new_input = graph.make_const(inp_dict[v.name], name=v.name)
  92. repl_dict[v] = new_input
  93. else:
  94. assert len(inp_vars) == 1, "The graph needs more than one input."
  95. inp_var = inp_vars[0]
  96. repl_dict[inp_var] = graph.make_const(input, name=inp_var.name)
  97. graph.replace_vars(repl_dict=repl_dict)
  98. graph._compile()
  99. def process_name(name):
  100. # nodes that start with point or contain float const will lead to display bug
  101. if not re.match(r"^[+-]?\d*\.\d*", name):
  102. name = name.replace(".", "/")
  103. return name.encode(encoding="utf-8")
  104. summary = [["item", "value"]]
  105. node_list = []
  106. flops_list = []
  107. params_list = []
  108. activations_list = []
  109. total_stats = namedtuple("total_stats", ["param_size", "flops", "act_size"])
  110. stats_details = namedtuple("module_stats", ["params", "flops", "activations"])
  111. for node in tqdm(graph.all_oprs):
  112. if hasattr(node, "output_idx"):
  113. node_oup = node.outputs[node.output_idx]
  114. else:
  115. if len(node.outputs) != 1:
  116. logger.warning(
  117. "OpNode {} has more than one output and not has 'output_idx' attr.".format(
  118. node
  119. )
  120. )
  121. node_oup = node.outputs[0]
  122. inp_list = [process_name(var.owner.name) for var in node.inputs]
  123. if log_path:
  124. # detail format see tensorboard/compat/proto/attr_value.proto
  125. attr = {
  126. "_output_shapes": AttrValue(
  127. list=AttrValue.ListValue(
  128. shape=[
  129. TensorShapeProto(
  130. dim=[
  131. TensorShapeProto.Dim(size=d) for d in node_oup.shape
  132. ]
  133. )
  134. ]
  135. )
  136. ),
  137. "params": AttrValue(s=str(node.params).encode(encoding="utf-8")),
  138. "dtype": AttrValue(s=str(node_oup.dtype).encode(encoding="utf-8")),
  139. }
  140. if cal_flops:
  141. flops_stats = get_op_stats(node, node.inputs, node.outputs)
  142. if flops_stats is not None:
  143. # add op flops attr
  144. if log_path and hasattr(flops_stats, "flops_num"):
  145. attr["flops"] = AttrValue(
  146. s=sizeof_fmt(flops_stats["flops"]).encode(encoding="utf-8")
  147. )
  148. flops_stats["name"] = node.name
  149. flops_stats["class_name"] = node.type
  150. flops_list.append(flops_stats)
  151. if cal_activations:
  152. acts = get_activation_stats(node_oup.numpy(), has_input=has_input)
  153. acts["name"] = node.name
  154. acts["class_name"] = node.type
  155. activations_list.append(acts)
  156. if cal_params:
  157. if node.type == "ImmutableTensor":
  158. param_stats = get_param_stats(node.numpy())
  159. # add tensor size attr
  160. if log_path:
  161. attr["size"] = AttrValue(
  162. s=sizeof_fmt(param_stats["size"]).encode(encoding="utf-8")
  163. )
  164. param_stats["name"] = node.name
  165. params_list.append(param_stats)
  166. if log_path:
  167. node_list.append(
  168. NodeDef(
  169. name=process_name(node.name),
  170. op=node.type,
  171. input=inp_list,
  172. attr=attr,
  173. )
  174. )
  175. # summary
  176. extra_info = {
  177. "#ops": len(graph.all_oprs),
  178. "#params": len(params_list),
  179. }
  180. (
  181. total_flops,
  182. total_param_dims,
  183. total_param_size,
  184. total_act_dims,
  185. total_act_size,
  186. ) = (0, 0, 0, 0, 0)
  187. if cal_params:
  188. total_param_dims, total_param_size, params_list = sum_param_stats(
  189. params_list, bar_length_max
  190. )
  191. extra_info["total_param_dims"] = sizeof_fmt(total_param_dims, suffix="")
  192. extra_info["total_param_size"] = sizeof_fmt(total_param_size)
  193. if logging_to_stdout:
  194. print_param_stats(params_list)
  195. if cal_flops:
  196. total_flops, flops_list = sum_op_stats(flops_list, bar_length_max)
  197. extra_info["total_flops"] = sizeof_fmt(total_flops, suffix="OPs")
  198. if logging_to_stdout:
  199. print_op_stats(flops_list)
  200. if cal_activations:
  201. total_act_dims, total_act_size, activations_list = sum_activations_stats(
  202. activations_list, bar_length_max
  203. )
  204. extra_info["total_act_dims"] = sizeof_fmt(total_act_dims, suffix="")
  205. extra_info["total_act_size"] = sizeof_fmt(total_act_size)
  206. if logging_to_stdout:
  207. print_activations_stats(activations_list, has_input=has_input)
  208. if cal_flops and cal_params:
  209. extra_info["flops/param_size"] = "{:3.3f}".format(
  210. total_flops / total_param_size
  211. )
  212. if log_path:
  213. graph_def = GraphDef(node=node_list, versions=VersionDef(producer=22))
  214. device = "/device:CPU:0"
  215. stepstats = RunMetadata(
  216. step_stats=StepStats(dev_stats=[DeviceStepStats(device=device)])
  217. )
  218. writer = SummaryWriter(log_path)
  219. writer._get_file_writer().add_graph((graph_def, stepstats))
  220. print_summary(**extra_info)
  221. return (
  222. total_stats(
  223. param_size=total_param_size, flops=total_flops, act_size=total_act_size,
  224. ),
  225. stats_details(
  226. params=params_list, flops=flops_list, activations=activations_list
  227. ),
  228. )
  229. def main():
  230. parser = argparse.ArgumentParser(
  231. description="load a megengine dumped model and export log file for tensorboard visualization.",
  232. formatter_class=argparse.ArgumentDefaultsHelpFormatter,
  233. )
  234. parser.add_argument("model_path", help="dumped model path.")
  235. parser.add_argument("--log_path", help="tensorboard log path.")
  236. parser.add_argument(
  237. "--bar_length_max",
  238. type=int,
  239. default=20,
  240. help="size of bar indicating max flops or parameter size in net stats.",
  241. )
  242. parser.add_argument(
  243. "--cal_params",
  244. action="store_true",
  245. help="whether calculate and record params size.",
  246. )
  247. parser.add_argument(
  248. "--cal_flops",
  249. action="store_true",
  250. help="whether calculate and record op flops.",
  251. )
  252. parser.add_argument(
  253. "--cal_activations",
  254. action="store_true",
  255. help="whether calculate and record op activations.",
  256. )
  257. parser.add_argument(
  258. "--logging_to_stdout",
  259. action="store_true",
  260. help="whether print all calculated statistic details.",
  261. )
  262. parser.add_argument(
  263. "--all",
  264. action="store_true",
  265. help="whether print all stats. Tensorboard logs will be placed in './log' if not specified.",
  266. )
  267. args = parser.parse_args()
  268. if args.all:
  269. args.cal_params = True
  270. args.cal_flops = True
  271. args.cal_activations = True
  272. args.logging_to_stdout = True
  273. if not args.log_path:
  274. args.log_path = "./log"
  275. kwargs = vars(args)
  276. kwargs.pop("all")
  277. visualize(**kwargs)
  278. if __name__ == "__main__":
  279. main()

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