mirror of
https://github.com/modelscope/DiffSynth-Studio.git
synced 2026-03-19 06:48:12 +00:00
214 lines
9.5 KiB
Python
214 lines
9.5 KiB
Python
import torch, copy
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from ..models.utils import init_weights_on_device
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def cast_to(weight, dtype, device):
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r = torch.empty_like(weight, dtype=dtype, device=device)
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r.copy_(weight)
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return r
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class AutoTorchModule(torch.nn.Module):
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def __init__(self):
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super().__init__()
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def check_free_vram(self):
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gpu_mem_state = torch.cuda.mem_get_info(self.computation_device)
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used_memory = (gpu_mem_state[1] - gpu_mem_state[0]) / (1024 ** 3)
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return used_memory < self.vram_limit
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def offload(self):
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if self.state != 0:
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self.to(dtype=self.offload_dtype, device=self.offload_device)
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self.state = 0
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def onload(self):
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if self.state != 1:
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self.to(dtype=self.onload_dtype, device=self.onload_device)
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self.state = 1
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def keep(self):
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if self.state != 2:
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self.to(dtype=self.computation_dtype, device=self.computation_device)
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self.state = 2
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class AutoWrappedModule(AutoTorchModule):
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def __init__(self, module: torch.nn.Module, offload_dtype, offload_device, onload_dtype, onload_device, computation_dtype, computation_device, vram_limit, **kwargs):
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super().__init__()
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self.module = module.to(dtype=offload_dtype, device=offload_device)
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self.offload_dtype = offload_dtype
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self.offload_device = offload_device
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self.onload_dtype = onload_dtype
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self.onload_device = onload_device
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self.computation_dtype = computation_dtype
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self.computation_device = computation_device
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self.vram_limit = vram_limit
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self.state = 0
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def forward(self, *args, **kwargs):
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if self.state == 2:
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module = self.module
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else:
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if self.onload_dtype == self.computation_dtype and self.onload_device == self.computation_device:
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module = self.module
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elif self.vram_limit is not None and self.check_free_vram():
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self.keep()
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module = self.module
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else:
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module = copy.deepcopy(self.module).to(dtype=self.computation_dtype, device=self.computation_device)
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return module(*args, **kwargs)
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class WanAutoCastLayerNorm(torch.nn.LayerNorm, AutoTorchModule):
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def __init__(self, module: torch.nn.LayerNorm, offload_dtype, offload_device, onload_dtype, onload_device, computation_dtype, computation_device, vram_limit, **kwargs):
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with init_weights_on_device(device=torch.device("meta")):
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super().__init__(module.normalized_shape, eps=module.eps, elementwise_affine=module.elementwise_affine, bias=module.bias is not None, dtype=offload_dtype, device=offload_device)
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self.weight = module.weight
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self.bias = module.bias
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self.offload_dtype = offload_dtype
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self.offload_device = offload_device
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self.onload_dtype = onload_dtype
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self.onload_device = onload_device
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self.computation_dtype = computation_dtype
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self.computation_device = computation_device
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self.vram_limit = vram_limit
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self.state = 0
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def forward(self, x, *args, **kwargs):
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if self.state == 2:
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weight, bias = self.weight, self.bias
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else:
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if self.onload_dtype == self.computation_dtype and self.onload_device == self.computation_device:
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weight, bias = self.weight, self.bias
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elif self.vram_limit is not None and self.check_free_vram():
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self.keep()
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weight, bias = self.weight, self.bias
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else:
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weight = None if self.weight is None else cast_to(self.weight, self.computation_dtype, self.computation_device)
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bias = None if self.bias is None else cast_to(self.bias, self.computation_dtype, self.computation_device)
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with torch.amp.autocast(device_type=x.device.type):
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x = torch.nn.functional.layer_norm(x.float(), self.normalized_shape, weight, bias, self.eps).type_as(x)
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return x
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class AutoWrappedLinear(torch.nn.Linear, AutoTorchModule):
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def __init__(self, module: torch.nn.Linear, offload_dtype, offload_device, onload_dtype, onload_device, computation_dtype, computation_device, vram_limit, name="", **kwargs):
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with init_weights_on_device(device=torch.device("meta")):
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super().__init__(in_features=module.in_features, out_features=module.out_features, bias=module.bias is not None, dtype=offload_dtype, device=offload_device)
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self.weight = module.weight
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self.bias = module.bias
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self.offload_dtype = offload_dtype
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self.offload_device = offload_device
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self.onload_dtype = onload_dtype
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self.onload_device = onload_device
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self.computation_dtype = computation_dtype
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self.computation_device = computation_device
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self.vram_limit = vram_limit
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self.state = 0
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self.name = name
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self.lora_A_weights = []
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self.lora_B_weights = []
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self.lora_merger = None
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self.enable_fp8 = computation_dtype in [torch.float8_e4m3fn, torch.float8_e4m3fnuz]
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def fp8_linear(
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self,
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input: torch.Tensor,
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weight: torch.Tensor,
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bias: torch.Tensor = None,
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) -> torch.Tensor:
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device = input.device
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origin_dtype = input.dtype
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origin_shape = input.shape
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input = input.reshape(-1, origin_shape[-1])
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x_max = torch.max(torch.abs(input), dim=-1, keepdim=True).values
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fp8_max = 448.0
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# For float8_e4m3fnuz, the maximum representable value is half of that of e4m3fn.
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# To avoid overflow and ensure numerical compatibility during FP8 computation,
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# we scale down the input by 2.0 in advance.
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# This scaling will be compensated later during the final result scaling.
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if self.computation_dtype == torch.float8_e4m3fnuz:
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fp8_max = fp8_max / 2.0
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scale_a = torch.clamp(x_max / fp8_max, min=1.0).float().to(device=device)
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scale_b = torch.ones((weight.shape[0], 1)).to(device=device)
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input = input / (scale_a + 1e-8)
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input = input.to(self.computation_dtype)
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weight = weight.to(self.computation_dtype)
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bias = bias.to(torch.bfloat16)
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result = torch._scaled_mm(
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input,
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weight.T,
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scale_a=scale_a,
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scale_b=scale_b.T,
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bias=bias,
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out_dtype=origin_dtype,
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)
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new_shape = origin_shape[:-1] + result.shape[-1:]
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result = result.reshape(new_shape)
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return result
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def forward(self, x, *args, **kwargs):
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# VRAM management
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if self.state == 2:
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weight, bias = self.weight, self.bias
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else:
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if self.onload_dtype == self.computation_dtype and self.onload_device == self.computation_device:
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weight, bias = self.weight, self.bias
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elif self.vram_limit is not None and self.check_free_vram():
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self.keep()
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weight, bias = self.weight, self.bias
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else:
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weight = cast_to(self.weight, self.computation_dtype, self.computation_device)
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bias = None if self.bias is None else cast_to(self.bias, self.computation_dtype, self.computation_device)
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# Linear forward
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if self.enable_fp8:
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out = self.fp8_linear(x, weight, bias)
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else:
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out = torch.nn.functional.linear(x, weight, bias)
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# LoRA
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if len(self.lora_A_weights) == 0:
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# No LoRA
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return out
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elif self.lora_merger is None:
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# Native LoRA inference
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for lora_A, lora_B in zip(self.lora_A_weights, self.lora_B_weights):
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out = out + x @ lora_A.T @ lora_B.T
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else:
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# LoRA fusion
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lora_output = []
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for lora_A, lora_B in zip(self.lora_A_weights, self.lora_B_weights):
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lora_output.append(x @ lora_A.T @ lora_B.T)
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lora_output = torch.stack(lora_output)
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out = self.lora_merger(out, lora_output)
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return out
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def enable_vram_management_recursively(model: torch.nn.Module, module_map: dict, module_config: dict, max_num_param=None, overflow_module_config: dict = None, total_num_param=0, vram_limit=None, name_prefix=""):
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for name, module in model.named_children():
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layer_name = name if name_prefix == "" else name_prefix + "." + name
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for source_module, target_module in module_map.items():
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if isinstance(module, source_module):
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num_param = sum(p.numel() for p in module.parameters())
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if max_num_param is not None and total_num_param + num_param > max_num_param:
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module_config_ = overflow_module_config
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else:
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module_config_ = module_config
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module_ = target_module(module, **module_config_, vram_limit=vram_limit, name=layer_name)
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setattr(model, name, module_)
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total_num_param += num_param
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break
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else:
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total_num_param = enable_vram_management_recursively(module, module_map, module_config, max_num_param, overflow_module_config, total_num_param, vram_limit=vram_limit, name_prefix=layer_name)
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return total_num_param
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def enable_vram_management(model: torch.nn.Module, module_map: dict, module_config: dict, max_num_param=None, overflow_module_config: dict = None, vram_limit=None):
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enable_vram_management_recursively(model, module_map, module_config, max_num_param, overflow_module_config, total_num_param=0, vram_limit=vram_limit)
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model.vram_management_enabled = True
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