Cccccz's picture
Add files using upload-large-folder tool
0f00646 verified
Raw
History Blame Contribute Delete
6.86 kB
# Copyright (c) 2025 SandAI. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import torch
import time
from typing import List, Optional, Dict, Any
import logging
class MemoryMonitor:
"""
Enhanced memory monitor for tracking tensor memory usage
"""
def __init__(self, log_file: Optional[str] = None, enable_logging: bool = True):
self.log_file = log_file
self.enable_logging = enable_logging
self.peak_memory_usage = 0.0
self.memory_history = []
# Setup logging
if self.enable_logging:
logging.basicConfig(
level=logging.INFO,
format='%(asctime)s - %(levelname)s - %(message)s',
handlers=[
logging.FileHandler(log_file) if log_file else logging.StreamHandler(),
logging.StreamHandler()
]
)
self.logger = logging.getLogger(__name__)
def get_tensor_memory_info(self, tensor_list: List[Any], unit: str = 'MB') -> Dict[str, Any]:
"""
Get detailed memory information for a list of tensors
"""
total_bytes = 0
non_null_tensors = 0
tensor_shapes = []
tensor_devices = []
for i, t in enumerate(tensor_list):
if isinstance(t, torch.Tensor):
non_null_tensors += 1
tensor_shapes.append(t.shape)
tensor_devices.append(str(t.device))
if t.is_cuda:
total_bytes += t.element_size() * t.numel()
else:
tensor_shapes.append(None)
tensor_devices.append(None)
# Convert to requested unit
unit = unit.upper()
scale_dict = {
'B': 1,
'KB': 1024,
'MB': 1024 ** 2,
'GB': 1024 ** 3,
}
scale = scale_dict[unit]
return {
'total_memory_mb': total_bytes / scale,
'total_memory_gb': total_bytes / (scale_dict['GB']),
'total_elements': sum(t.numel() for t in tensor_list if isinstance(t, torch.Tensor) and t.is_cuda),
'non_null_count': non_null_tensors,
'total_count': len(tensor_list),
'tensor_shapes': tensor_shapes,
'tensor_devices': tensor_devices,
'utilization_rate': non_null_tensors / len(tensor_list) if tensor_list else 0
}
def monitor_residual_memory(self, previous_residual: List[Any],
step: int, chunk_info: Optional[Dict] = None,
log_immediately: bool = True) -> Dict[str, Any]:
"""
Monitor memory usage of previous_residual specifically
"""
memory_info = self.get_tensor_memory_info(previous_residual, unit='MB')
memory_info['step'] = step
memory_info['timestamp'] = time.time()
if chunk_info:
memory_info.update(chunk_info)
# Track peak memory
if memory_info['total_memory_mb'] > self.peak_memory_usage:
self.peak_memory_usage = memory_info['total_memory_mb']
memory_info['is_peak'] = True
else:
memory_info['is_peak'] = False
# Store history
self.memory_history.append(memory_info)
# Log if requested
if log_immediately and self.enable_logging:
self._log_memory_info(memory_info)
return memory_info
def _log_memory_info(self, memory_info: Dict[str, Any]):
"""
Log memory information in a formatted way
"""
msg = (
f"Step {memory_info['step']:3d} | "
f"Residual Memory: {memory_info['total_memory_mb']:6.2f} MB | "
f"Tensors: {memory_info['non_null_count']:2d}/{memory_info['total_count']:2d} | "
f"Utilization: {memory_info['utilization_rate']*100:5.1f}%"
)
if memory_info['is_peak']:
msg += " | [NEW PEAK]"
self.logger.info(msg)
# Log detailed tensor shapes for debugging
if memory_info['non_null_count'] > 0:
shapes_str = ", ".join([str(s) for s in memory_info['tensor_shapes'] if s is not None])
self.logger.debug(f" Tensor shapes: {shapes_str}")
def get_memory_summary(self) -> Dict[str, Any]:
"""
Get summary of memory usage over time
"""
if not self.memory_history:
return {'error': 'No memory history available'}
memory_values = [h['total_memory_mb'] for h in self.memory_history]
return {
'peak_memory_mb': max(memory_values),
'average_memory_mb': sum(memory_values) / len(memory_values),
'min_memory_mb': min(memory_values),
'total_steps': len(self.memory_history),
'peak_step': max(self.memory_history, key=lambda x: x['total_memory_mb'])['step'],
'final_memory_mb': memory_values[-1] if memory_values else 0,
'memory_growth': memory_values[-1] - memory_values[0] if len(memory_values) > 1 else 0
}
def save_memory_report(self, filename: str):
"""
Save detailed memory report to file
"""
import json
summary = self.get_memory_summary()
report = {
'summary': summary,
'detailed_history': self.memory_history,
'peak_memory_gb': self.peak_memory_usage / 1024
}
with open(filename, 'w') as f:
json.dump(report, f, indent=2, default=str)
print(f"Memory report saved to: {filename}")
def reset(self):
"""
Reset monitor state
"""
self.peak_memory_usage = 0.0
self.memory_history = []
# Global monitor instance
_global_monitor = None
def get_memory_monitor() -> MemoryMonitor:
"""Get or create global memory monitor"""
global _global_monitor
if _global_monitor is None:
_global_monitor = MemoryMonitor()
return _global_monitor
def monitor_residual_memory_step(previous_residual: List[Any], step: int,
chunk_info: Optional[Dict] = None) -> Dict[str, Any]:
"""
Convenience function to monitor a single step
"""
monitor = get_memory_monitor()
return monitor.monitor_residual_memory(previous_residual, step, chunk_info)