| import torch |
| from torch.func import functional_call |
| import queue |
| import threading |
| from typing import Dict, List, Any |
| import omegaconf |
| from pydantic import BaseModel, validator |
| from typing import Optional |
| from functools import wraps |
|
|
| def _callable_once(func): |
| @wraps(func) |
| def wrapper(self, *args, **kwargs): |
| method_called_flag = f"_called_once_{func.__name__}" |
| if getattr(self, method_called_flag, False): |
| raise RuntimeError(f"{func.__name__} can only be called once.") |
| setattr(self, method_called_flag, True) |
| return func(self, *args, **kwargs) |
| return wrapper |
|
|
| class OffloadCleanCacheWrapperParam(BaseModel): |
| module: Any |
| method_name: str |
| diff_mem_gb_thre: float |
|
|
| class OffloadParam(BaseModel): |
| offload_module: Any |
| cpu_mem_gb: float |
| pre_copy_step: Optional[int] = None |
| clean_cache_after_forward: Optional[bool] = None |
| dtype: Optional[str] = None |
| offload_layer_dict: Dict[str, int] = {} |
| ignore_layer_list: List[str] = [] |
| clean_cache_wrapper: Optional[OffloadCleanCacheWrapperParam] = None |
| debug: Optional[bool] = None |
|
|
| @validator('dtype') |
| def parse_dtype(cls, value): |
| if value is None: |
| return None |
| dtype_map = { |
| 'torch.float16': torch.float16, |
| 'torch.float32': torch.float32, |
| 'torch.float64': torch.float64, |
| 'torch.int64': torch.int64, |
| } |
| if value not in dtype_map: |
| raise ValueError(f"Unsupported dtype: {value}") |
| return dtype_map[value] |
| |
| def init_param_dict(self): |
| param_dict = {} |
| param_dict['cpu_mem_gb'] = self.cpu_mem_gb |
| if self.pre_copy_step is not None: |
| param_dict['pre_copy_step'] = self.pre_copy_step |
| if self.clean_cache_after_forward is not None: |
| param_dict['clean_cache_after_forward'] = self.clean_cache_after_forward |
| if self.debug is not None: |
| param_dict['debug'] = self.debug |
| |
| return param_dict |
| |
| def offload_layer_param_dict(self): |
| param_dict = {} |
| param_dict['module'] = self.offload_module |
| param_dict['offload_layer_dict'] = self.offload_layer_dict |
| param_dict['ignore_layer_list'] = self.ignore_layer_list |
| param_dict['dtype'] = self.dtype |
|
|
| return param_dict |
| |
| def clean_cache_param_dict(self): |
| param_dict = {} |
| if self.clean_cache_wrapper is not None: |
| param_dict['module'] = self.clean_cache_wrapper.module |
| param_dict['method_name'] = self.clean_cache_wrapper.method_name |
| param_dict['diff_mem_gb_thre'] = self.clean_cache_wrapper.diff_mem_gb_thre |
|
|
| return param_dict |
| |
| @staticmethod |
| def recursive_print(model, indent=0): |
| for field_name, field_info in model.__fields__.items(): |
| field_value = getattr(model, field_name) |
| print(" " * indent + f"{field_name}:") |
|
|
| if issubclass(type(field_value), BaseModel): |
| print(" " * (indent + 2) + f"--- Nested model: {field_value.__class__.__name__}") |
| OffloadParam.recursive_print(field_value, indent + 4) |
| else: |
| print(" " * (indent + 2) + f"class: {field_value.__class__.__name__}") |
| if isinstance(field_value, torch.nn.Module): |
| pass |
| else: |
| print(" " * (indent + 2) + f"value: {field_value}") |
|
|
| def show(self): |
| print("-"*20 + "[OffloadParam]" + "-"*20) |
| OffloadParam.recursive_print(self) |
| print("-"*40) |
|
|
|
|
| class OffloadParamParse: |
| def __init__(self): |
| pass |
|
|
| @staticmethod |
| def _get_model(root_model: torch.nn.Module, model_dir: str): |
| assert(model_dir.startswith("self")), f"model_dir {model_dir} must startswith `self`" |
| model = root_model |
| for layer in model_dir.split('.'): |
| if layer == "self": |
| continue |
| assert(hasattr(model, layer)), f"model not has layer [{layer}]!" |
| model = getattr(model, layer) |
| return model |
|
|
| @staticmethod |
| def parse_config(root_model: torch.nn.Module, cfg: omegaconf.DictConfig)->OffloadParam: |
| assert(hasattr(cfg, "offload_module") and hasattr(cfg, "cpu_mem_gb") and hasattr(cfg, "dtype")) |
| |
| offload_module = OffloadParamParse._get_model(root_model, cfg.offload_module) |
| cpu_mem_gb = cfg.cpu_mem_gb |
| dtype = cfg.dtype |
|
|
| pre_copy_step = cfg.pre_copy_step \ |
| if hasattr(cfg, "pre_copy_step") else None |
|
|
| clean_cache_after_forward = cfg.clean_cache_after_forward \ |
| if hasattr(cfg, "clean_cache_after_forward") else None |
| |
| offload_layer_dict = {k: v for k, v in cfg.offload_layer_dict.items()} \ |
| if hasattr(cfg, "offload_layer_dict") else {} |
|
|
| ignore_layer_list = cfg.ignore_layer_list \ |
| if hasattr(cfg, "ignore_layer_list") else [] |
| |
| debug = cfg.debug if hasattr(cfg, "debug") else None |
| |
| clean_cache_wrapper = None |
| if hasattr(cfg, "clean_cache_wrapper"): |
| clean_cache_cfg = cfg.clean_cache_wrapper |
| cc_module = OffloadParamParse._get_model(root_model, clean_cache_cfg.module) |
| cc_method_name = clean_cache_cfg.method_name |
| diff_mem_gb_thre = clean_cache_cfg.diff_mem_gb_thre |
| clean_cache_wrapper = OffloadCleanCacheWrapperParam( |
| module=cc_module, |
| method_name=cc_method_name, |
| diff_mem_gb_thre=diff_mem_gb_thre) |
| |
| return OffloadParam( |
| offload_module=offload_module, |
| cpu_mem_gb=cpu_mem_gb, |
| pre_copy_step=pre_copy_step, |
| clean_cache_after_forward=clean_cache_after_forward, |
| dtype=dtype, |
| offload_layer_dict=offload_layer_dict, |
| ignore_layer_list=ignore_layer_list, |
| clean_cache_wrapper=clean_cache_wrapper, |
| debug=debug |
| ) |
|
|
|
|
| class LayerParamStruct: |
| def __init__(self): |
| self.count = 0 |
| self.device_state = None |
|
|
|
|
| class OffloadProfiler: |
| def __init__(self, device_index=0, cpu_mem_gb=-1, pre_copy_step=1, clean_cache_after_forward=False, debug=False): |
| self.clean_cache_after_forward = clean_cache_after_forward |
| self.cpu_mem_gb = cpu_mem_gb |
| self.cpu_mem_b_count = 0 |
| self.device_index = device_index |
| self.execution_order = [] |
| self.execution_order_idx = {} |
| self.pin_memory = False |
| test_data = torch.rand(1,1, device='cpu') |
| pin_data = test_data.pin_memory() |
| self.pin_memory = pin_data.is_pinned() |
| print(f"pin:{self.pin_memory}") |
| self.copy_stream = torch.cuda.Stream() |
| self.copy_queue = queue.Queue() |
| self.layer_param:Dict[str, LayerParamStruct] = {} |
| self.model_map = {} |
| self.stop_flag = False |
| self.copy_condition = threading.Condition() |
| self.queue_condition = threading.Condition() |
| self.mem_line_b = 0 |
|
|
| self.copy_thread = threading.Thread(target=self._copy_thread_fun) |
| self.copy_thread.daemon = True |
| self.copy_thread.start() |
|
|
| self.cur_copy_idx = 0 |
| self.execute_over = False |
| self.pre_copy_step = pre_copy_step |
|
|
| self.tmp_state_list = [] |
| self.tmp_state_idx = 0 |
| for i in range(pre_copy_step + 2): |
| self.tmp_state_list.append(None) |
|
|
| self.debug = debug |
|
|
| def stop(self): |
| self.stop_flag = True |
| with self.queue_condition: |
| self.queue_condition.notify() |
| self.copy_thread.join() |
|
|
| del self.layer_param |
| del self.model_map |
| del self.copy_stream |
|
|
| def _copy_thread_fun(self): |
| while self.stop_flag == False: |
| layer_name = "--" |
| with self.queue_condition: |
| while self.copy_queue.qsize() == 0 and self.stop_flag == False: |
| self.queue_condition.wait() |
| if self.stop_flag == True: |
| break |
| layer_name = self.copy_queue.get() |
| with torch.cuda.stream(self.copy_stream): |
| if layer_name in self.model_map: |
| model = self.model_map[layer_name] |
| self.tmp_state_list[self.tmp_state_idx] = { |
| k: v.to(torch.device(f"cuda:{self.device_index}"), non_blocking=False) |
| for k, v in model.state_dict().items() |
| } |
| self.copy_stream.synchronize() |
|
|
| device_state = self.tmp_state_list[self.tmp_state_idx] |
| self.tmp_state_idx = (self.tmp_state_idx + 1) % len(self.tmp_state_list) |
|
|
| with self.copy_condition: |
| if layer_name in self.layer_param: |
| self.layer_param[layer_name].count += 1 |
| else: |
| self.layer_param[layer_name] = LayerParamStruct() |
| self.layer_param[layer_name].count = 1 |
| self.layer_param[layer_name].device_state = device_state |
| self.copy_condition.notify() |
| else: |
| print(f"get model error! {layer_name}") |
| print("copy thread stop..") |
|
|
| def _get_new_step_copy_begin_end(self, tag_name): |
| |
| pre_copy_step = self.pre_copy_step |
| pre_copy_step = min(pre_copy_step, len(self.execution_order) // 2) |
| |
| cur_exe_idx = self.execution_order_idx[tag_name] |
| copy_begin = self.cur_copy_idx |
| copy_end = cur_exe_idx + pre_copy_step + 1 |
| if copy_end - copy_begin > len(self.execution_order): |
| copy_end %= len(self.execution_order) |
| if copy_end - copy_begin > pre_copy_step + 1 or copy_end - copy_begin < 0: |
| |
| self.cur_copy_idx = cur_exe_idx |
| copy_begin, copy_end = self._get_new_step_copy_begin_end(tag_name=tag_name) |
| return copy_begin, copy_end |
| |
| def make_forward_wrapper(self, module, tag_name, ignore_layer_list=[]): |
| original_forward = module.forward |
| layer_param_size = 0 |
| for name, param in module.named_parameters(): |
| layer_param_size += param.data.numel() * param.data.element_size() / 1024 / 1024 |
| |
| taget_cpu_mem_b = self.cpu_mem_gb * 1024 * 1024 * 1024 |
| offload = False |
| for name, param in module.named_parameters(): |
| p_name = f"{tag_name}.{name}" if tag_name else name |
| for i_layer in ignore_layer_list: |
| if p_name.startswith(i_layer): |
| if self.debug: |
| print(f"ignore layer param: {p_name}") |
| continue |
|
|
| if taget_cpu_mem_b >= 0 and self.cpu_mem_b_count >= taget_cpu_mem_b: |
| break |
| cpu_data = torch.empty_strided(size=param.data.size(), |
| stride=param.data.stride(), |
| dtype=param.data.dtype, |
| layout=param.data.layout, |
| device='cpu', |
| pin_memory=self.pin_memory) |
| cpu_data.copy_(param.data) |
| param.data = cpu_data |
|
|
| param_size = param.data.numel() * param.data.element_size() |
| self.cpu_mem_b_count += param_size |
| offload = True |
| if self.debug: |
| print(f"layer: {tag_name}, type: {module.__class__.__name__}, size(MB): {layer_param_size}, offload: {offload}, sum_offload_size(MB): {self.cpu_mem_b_count/1024/1024}") |
| |
| if offload: |
| copy_condition = self.copy_condition |
| queue_condition = self.queue_condition |
| copy_queue = self.copy_queue |
| layer_param = self.layer_param |
| def forward_wrapper(*args, **kwargs): |
| module.forward = original_forward |
|
|
| execute_over = False if tag_name not in self.execution_order_idx else True |
| if execute_over == False: |
| self.model_map[tag_name] = module |
| self.execution_order.append(tag_name) |
| self.execution_order_idx[tag_name] = len(self.execution_order) - 1 |
| copy_queue.put(tag_name) |
| with queue_condition: |
| queue_condition.notify() |
| else: |
| |
| copy_begin, copy_end = self._get_new_step_copy_begin_end(tag_name=tag_name) |
| if copy_end > copy_begin: |
| for idx in range(copy_begin, copy_end): |
| idx = idx % len(self.execution_order) |
| copy_tag_name = self.execution_order[idx] |
| copy_queue.put(copy_tag_name) |
| with queue_condition: |
| queue_condition.notify() |
|
|
| self.cur_copy_idx = copy_end % len(self.execution_order) |
| |
| run_state = None |
| with self.copy_condition: |
| while tag_name not in self.layer_param: |
| copy_condition.wait() |
| run_state = self.layer_param[tag_name].device_state |
| self.layer_param[tag_name].count -= 1 |
| |
| module.eval() |
| with torch.no_grad(): |
| output = functional_call(module, run_state, args=args, kwargs=kwargs) |
| with self.copy_condition: |
| if self.layer_param[tag_name].count == 0: |
| del self.layer_param[tag_name] |
| diff_mem_b_thre = 1 * (1024 ** 3) |
| if self.clean_cache_after_forward: |
| reserved = torch.cuda.memory_reserved() |
| if reserved > self.mem_line_b: |
| torch.cuda.empty_cache() |
| cur_reserved = torch.cuda.memory_reserved() |
| diff_mem = reserved - cur_reserved |
| if diff_mem > diff_mem_b_thre: |
| self.mem_line_b = cur_reserved + (reserved - cur_reserved) / 2 + 10 |
| else: |
| self.mem_line_b = reserved + 10 |
| if self.debug: |
| print(f"child mem line update, clean cache:{reserved/1024/1024}, cur mem: {cur_reserved/1024/1024} new limit: {self.mem_line_b / 1024 / 1024}, child name: {tag_name}") |
| |
| module.forward = forward_wrapper |
| return output |
| module.forward = forward_wrapper |
| |
| torch.cuda.empty_cache() |
| return module |
| |
| def reset_empty_cache_mem_line(self): |
| self.mem_line_b = 0 |
| torch.cuda.empty_cache() |
| |
| def clean_cache_wrapper(self, module, method_name='', diff_mem_gb_thre=1): |
| if not hasattr(module, method_name) or not callable(getattr(module, method_name)): |
| print(f"no this method {method_name}") |
| return module |
| |
| original_fun = getattr(module, method_name) |
| diff_mem_b_thre = diff_mem_gb_thre * (1024 ** 3) |
| self.reset_empty_cache_mem_line() |
|
|
| def clean_wrapper(*args, **kwargs): |
| setattr(module, method_name, original_fun) |
| output = original_fun(*args, **kwargs) |
| reserved = torch.cuda.memory_reserved() |
| if reserved > self.mem_line_b: |
| torch.cuda.empty_cache() |
| cur_reserved = torch.cuda.memory_reserved() |
| diff_mem = reserved - cur_reserved |
| if diff_mem > diff_mem_b_thre: |
| self.mem_line_b = cur_reserved + (reserved - cur_reserved) / 2 + 10 |
| else: |
| self.mem_line_b = reserved + 10 |
|
|
| if self.debug: |
| print(f"mem line update, clean cache:{reserved/1024/1024}, cur mem: {cur_reserved/1024/1024} new limit: {self.mem_line_b / 1024 / 1024}") |
| setattr(module, method_name, clean_wrapper) |
| return output |
| |
| setattr(module, method_name, clean_wrapper) |
| return module |
| |
| @_callable_once |
| def offload_layer(self, module, offload_layer_dict={}, ignore_layer_list=[], dtype:torch.dtype = None): |
| return self._offload_layer( |
| module=module, |
| tag="", |
| offload_layer_dict=offload_layer_dict, |
| ignore_layer_list=ignore_layer_list, |
| dtype=dtype |
| ) |
| |
| def _offload_layer(self, module, tag="", offload_layer_dict={}, ignore_layer_list=[], dtype:torch.dtype = None): |
| """ |
| Offload specific layers of a PyTorch model to a specified depth. |
| A model can only be offloaded once. |
| |
| Args: |
| module (torch.nn.Module): |
| The PyTorch model containing the layers to offload. This is the model that will be modified in place. |
| |
| tag (str, optional): |
| A string identifier for the model. |
| Default is an empty string. |
| |
| offload_layer_dict (dict, optional): |
| A dictionary where keys are layer names and values represent the depth at which the offloading should occur. |
| For example, |
| ```offload_layer_dict = {'cfm_wrapper': 5, 'hubert': 4}``` means that the `cfm_wrapper` layer should |
| be offloaded at depth 5, and the `hubert` layer should be offloaded at depth 4. |
| Default is an empty dictionary. |
| |
| ignore_layer_list (list, optional): |
| A list of layer names or parameter identifiers to be ignored during the offloading process. |
| Layers in this list will not be offloaded, even if they are present in the `offload_layer_dict`. |
| For example, |
| ```ignore_layer_list = ['cfm_wrapper.estimator.h', 'cfm_wrapper.estimator.adaln_single']``` |
| means that layers starting with `cfm_wrapper.estimator.h` or 'cfm_wrapper.estimator.adaln_single' will not be offload. |
| Default is an empty list. |
| |
| dtype (torch.dtype, optional): |
| The data type (e.g., `torch.float16`, `torch.float32`) to which the offloaded layers should be converted. |
| If `None`, the data type of the layers will remain unchanged. Default is `None`. |
| |
| Returns: |
| None |
| """ |
| for p in module._parameters.values(): |
| if p is not None: |
| p.data = p.data.to(torch.device(f"cuda:{self.device_index}")) |
| if dtype is not None: |
| p.data = p.data.to(dtype) |
| for b in module._buffers.values(): |
| if b is not None: |
| b.data = b.data.to(torch.device(f"cuda:{self.device_index}")) |
| if dtype is not None: |
| b.data = b.data.to(dtype) |
| for attr_name, attr in module.__dict__.items(): |
| if isinstance(attr, torch.Tensor) and not attr_name.startswith('_'): |
| attr.data = attr.data.to(torch.device(f"cuda:{self.device_index}")) |
| if dtype is not None: |
| attr.data = attr.data.to(dtype) |
|
|
| for name, child in module.named_children(): |
| current_tag = f"{tag}.{name}" if tag else name |
| child = child.to(torch.device(f"cuda:{self.device_index}")) |
| if dtype is not None: |
| child = child.to(dtype) |
|
|
| torch.cuda.empty_cache() |
| setattr(module, name, child) |
| pre_name = current_tag.split('.')[0] |
| if pre_name not in offload_layer_dict: |
| param_size = 0 |
| for p in child.parameters(): |
| param_size += p.data.numel() * p.data.element_size() |
| param_size = param_size / 1024 / 1024 |
| if self.debug: |
| print(f"not offload layer {current_tag}, size: {param_size}MB") |
| continue |
| |
| has_children = any(child.named_children()) |
| layer_count = current_tag.count('.') + 1 |
| |
| layer_deep = offload_layer_dict[pre_name] |
| if layer_count >= layer_deep: |
| has_children = False |
| |
| if has_children: |
| self._offload_layer(module=child, |
| tag=current_tag, |
| offload_layer_dict=offload_layer_dict, |
| ignore_layer_list=ignore_layer_list, |
| dtype=dtype) |
| continue |
|
|
| ignore = False |
| for i_layer in ignore_layer_list: |
| if current_tag.startswith(i_layer): |
| ignore = True |
| if self.debug: |
| print(f"ignore layer offload: {current_tag}") |
| break |
| |
| if hasattr(child, "forward") and not ignore: |
| child = self.make_forward_wrapper( |
| child, current_tag, ignore_layer_list=ignore_layer_list |
| ) |
| return module |
| |
| def get_execution_order(self): |
| return self.execution_order |
|
|