mirror of https://github.com/hpcaitech/ColossalAI
[NFC] polish colossalai/utils/tensor_detector/tensor_detector.py code style (#1566)
parent
0c4c9aa6e0
commit
c7d4932956
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@ -5,18 +5,17 @@ import torch.nn as nn
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from typing import Optional
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from collections import defaultdict
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LINE_WIDTH = 108
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LINE = '-' * LINE_WIDTH + '\n'
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class TensorDetector():
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def __init__(self,
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show_info: bool = True,
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log: str = None,
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include_cpu: bool = False,
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module: Optional[nn.Module] = None
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):
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module: Optional[nn.Module] = None):
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"""This class is a detector to detect tensor on different devices.
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Args:
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@ -28,7 +27,7 @@ class TensorDetector():
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"""
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self.show_info = show_info
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self.log = log
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self.include_cpu = include_cpu
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self.include_cpu = include_cpu
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self.tensor_info = defaultdict(list)
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self.saved_tensor_info = defaultdict(list)
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self.order = []
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@ -57,13 +56,13 @@ class TensorDetector():
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def mem_format(self, real_memory_size):
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# format the tensor memory into a reasonal magnitude
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if real_memory_size >= 2 ** 30:
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return str(real_memory_size / (2 ** 30)) + ' GB'
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if real_memory_size >= 2 ** 20:
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return str(real_memory_size / (2 ** 20)) + ' MB'
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if real_memory_size >= 2 ** 10:
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return str(real_memory_size / (2 ** 10)) + ' KB'
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return str(real_memory_size) + ' B'
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if real_memory_size >= 2**30:
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return str(real_memory_size / (2**30)) + ' GB'
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if real_memory_size >= 2**20:
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return str(real_memory_size / (2**20)) + ' MB'
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if real_memory_size >= 2**10:
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return str(real_memory_size / (2**10)) + ' KB'
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return str(real_memory_size) + ' B'
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def collect_tensors_state(self):
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for obj in gc.get_objects():
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@ -74,11 +73,11 @@ class TensorDetector():
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self.detected.append(id(obj))
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# skip paramters we had added in __init__ when module is an instance of nn.Module for the first epoch
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if id(obj) not in self.tensor_info:
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name = type(obj).__name__
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# after backward, we want to update the records, to show you the change
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if isinstance(self.module, nn.Module) and name == 'Parameter':
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if obj.grad is not None:
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if obj.grad is not None:
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# with grad attached
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for par_name, param in self.module.named_parameters():
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if param.requires_grad and param.grad.equal(obj.grad):
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@ -88,7 +87,7 @@ class TensorDetector():
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# there will be no new paramters created during running
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# so it must be in saved_tensor_info
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continue
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# we can also marked common tensors as tensor(with grad)
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# we can also marked common tensors as tensor(with grad)
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if name == 'Tensor' and (obj.is_leaf or obj.retains_grad):
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if obj.grad is not None:
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name = name + ' (with grad)'
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@ -104,7 +103,7 @@ class TensorDetector():
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self.tensor_info[id(obj)].append(obj.dtype)
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self.tensor_info[id(obj)].append(self.get_tensor_mem(obj))
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# recorded the order we got the tensor
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# by this we can guess the tensor easily
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# by this we can guess the tensor easily
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# it will record every tensor updated this turn
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self.order.append(id(obj))
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# recorded all different devices
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@ -114,7 +113,7 @@ class TensorDetector():
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def print_tensors_state(self):
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template_format = '{:3s}{:<30s}{:>10s}{:>20s}{:>10s}{:>20s}{:>15s}'
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self.info += LINE
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self.info += template_format.format(' ', 'Tensor', 'device', 'shape', 'grad', 'dtype', 'Mem')
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self.info += template_format.format(' ', 'Tensor', 'device', 'shape', 'grad', 'dtype', 'Mem')
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self.info += '\n'
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self.info += LINE
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@ -122,36 +121,33 @@ class TensorDetector():
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# it should be updated in the saved_tensor_info as well
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outdated = [x for x in self.saved_tensor_info.keys() if x in self.order]
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minus = [x for x in self.saved_tensor_info.keys() if x not in self.detected]
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minus = outdated + minus
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minus = outdated + minus
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if len(self.order) > 0:
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for tensor_id in self.order:
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self.info += template_format.format('+',
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str(self.tensor_info[tensor_id][0]),
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str(self.tensor_info[tensor_id][1]),
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str(tuple(self.tensor_info[tensor_id][2])),
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str(self.tensor_info[tensor_id][3]),
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str(self.tensor_info[tensor_id][4]),
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str(self.tensor_info[tensor_id][5]))
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self.info += template_format.format('+', str(self.tensor_info[tensor_id][0]),
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str(self.tensor_info[tensor_id][1]),
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str(tuple(self.tensor_info[tensor_id][2])),
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str(self.tensor_info[tensor_id][3]),
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str(self.tensor_info[tensor_id][4]),
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str(self.tensor_info[tensor_id][5]))
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self.info += '\n'
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if len(self.order) > 0 and len(minus) > 0:
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self.info += '\n'
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if len(minus) > 0:
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for tensor_id in minus:
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self.info += template_format.format('-',
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str(self.saved_tensor_info[tensor_id][0]),
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str(self.saved_tensor_info[tensor_id][1]),
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str(tuple(self.saved_tensor_info[tensor_id][2])),
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str(self.saved_tensor_info[tensor_id][3]),
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str(self.saved_tensor_info[tensor_id][4]),
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str(self.saved_tensor_info[tensor_id][5]))
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self.info += template_format.format('-', str(self.saved_tensor_info[tensor_id][0]),
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str(self.saved_tensor_info[tensor_id][1]),
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str(tuple(self.saved_tensor_info[tensor_id][2])),
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str(self.saved_tensor_info[tensor_id][3]),
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str(self.saved_tensor_info[tensor_id][4]),
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str(self.saved_tensor_info[tensor_id][5]))
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self.info += '\n'
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# deleted the updated tensor
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self.saved_tensor_info.pop(tensor_id)
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# trace where is the detect()
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locate_info = inspect.stack()[2]
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locate_msg = '"' + locate_info.filename + '" line ' + str(locate_info.lineno)
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locate_msg = '"' + locate_info.filename + '" line ' + str(locate_info.lineno)
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self.info += LINE
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self.info += f"Detect Location: {locate_msg}\n"
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@ -167,8 +163,8 @@ class TensorDetector():
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if self.log is not None:
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with open(self.log + '.log', 'a') as f:
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f.write(self.info)
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def detect(self, include_cpu = False):
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def detect(self, include_cpu=False):
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self.include_cpu = include_cpu
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self.collect_tensors_state()
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self.print_tensors_state()
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@ -180,4 +176,4 @@ class TensorDetector():
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def close(self):
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self.saved_tensor_info.clear()
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self.module = None
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self.module = None
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