You can not select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.

136 lines
6.3 KiB

"""This module contains utility method for mobile model optimization and lint."""
import torch
from enum import Enum
from torch._C import _MobileOptimizerType as MobileOptimizerType
from typing import Optional, Set, List, AnyStr
class LintCode(Enum):
BUNDLED_INPUT = 1
REQUIRES_GRAD = 2
DROPOUT = 3
BATCHNORM = 4
def optimize_for_mobile(
script_module: torch.jit.ScriptModule,
optimization_blocklist: Optional[Set[MobileOptimizerType]] = None,
preserved_methods: Optional[List[AnyStr]] = None,
backend: str = 'CPU') -> torch.jit.RecursiveScriptModule:
"""
Optimize a torch script module for mobile deployment.
Args:
script_module: An instance of torch script module with type of ScriptModule.
optimization_blocklist: A set with type of MobileOptimizerType. When set is not passed,
optimization method will run all the optimizer pass; otherwise, optimizer
method will run the optimization pass that is not included inside optimization_blocklist.
preserved_methods: A list of methods that needed to be preserved when freeze_module pass is invoked
backend: Device type to use for running the result model ('CPU'(default), 'Vulkan' or 'Metal').
Returns:
A new optimized torch script module
"""
if not isinstance(script_module, torch.jit.ScriptModule):
raise TypeError(
f'Got {type(script_module)}, but ScriptModule is expected.')
if optimization_blocklist is None:
optimization_blocklist = set()
if preserved_methods is None:
preserved_methods = []
# Convert potential byte arrays into strings (if there is any) to pass type checking
# Here we use a new name as assigning it back to preserved_methods will invoke
# mypy errors (i.e. List[AnyStr] = List[str])
preserved_methods_str: List[str] = [str(method) for method in preserved_methods]
bundled_inputs_attributes = _get_bundled_inputs_preserved_attributes(script_module, preserved_methods_str)
if all(hasattr(script_module, method) for method in bundled_inputs_attributes):
preserved_methods_str = list(set(preserved_methods_str + bundled_inputs_attributes))
non_exist_methods = []
for method in preserved_methods_str:
if not hasattr(script_module, method):
non_exist_methods.append(method)
if non_exist_methods:
raise AttributeError(
f"The following methods to preserve do not exist in script_module: {', '.join(non_exist_methods)}")
backend = backend.lower()
if backend == 'cpu':
optimized_cpp_module = torch._C._jit_pass_optimize_for_mobile(
script_module._c,
optimization_blocklist,
preserved_methods_str)
elif backend == 'vulkan':
optimized_cpp_module = torch._C._jit_pass_vulkan_optimize_for_mobile(
script_module._c,
optimization_blocklist,
preserved_methods_str)
elif backend == 'metal':
optimized_cpp_module = torch._C._jit_pass_metal_optimize_for_mobile(script_module._c, preserved_methods_str)
else:
raise TypeError("Unknown backend, must be one of 'CPU', 'Vulkan' or 'Metal'")
return torch.jit._recursive.wrap_cpp_module(optimized_cpp_module)
def generate_mobile_module_lints(script_module: torch.jit.ScriptModule):
"""
Generate a list of lints for a given torch script module.
Args:
script_module: An instance of torch script module with type of ScriptModule.
Returns:
lint_map: A list of dictionary that contains modules lints
"""
if not isinstance(script_module, torch.jit.ScriptModule):
raise TypeError(
f'Got {type(script_module)}, but ScriptModule is expected.')
lint_list = []
if not hasattr(script_module, "_generate_bundled_inputs_for_forward"):
lint_list.append({"name": LintCode.BUNDLED_INPUT.name, "message": "No bundled input for forward, please add bundled inputs "
"before saving the module using torch.utils.bundled_inputs.augment_model_with_bundled_inputs."})
for name, param in script_module.named_parameters():
if param.requires_grad:
lint_list.append({"name": LintCode.REQUIRES_GRAD.name, "message": f"Param {name} requires grad, "
"please set torch.no_grad() to reduce memory usage and improve computation speed during "
"inference phase."})
op_names = torch.jit.export_opnames(script_module)
for op_name in op_names:
if "dropout" in op_name:
lint_list.append({"name": LintCode.DROPOUT.name, "message": "Operator {} exists, remember to call eval() before "
"saving the module.and call torch.utils.mobile_optimizer.optimize_for_mobile to drop dropout "
"operator.".format(op_name)})
if "batch_norm" in op_name:
lint_list.append({"name": LintCode.BATCHNORM.name, "message": "Operator {} exists, remember to call eval() before "
"saving the module and call torch.utils.mobile_optimizer.optimize_for_mobile to drop batch_norm "
"operator.".format(op_name)})
return lint_list
def _get_bundled_inputs_preserved_attributes(script_module: torch.jit.ScriptModule, preserved_methods: List[str]) -> List[str]:
bundled_inputs_attributes = []
# Has bundled inputs for forward
if hasattr(script_module, 'get_all_bundled_inputs'):
bundled_inputs_attributes.append('get_all_bundled_inputs')
bundled_inputs_attributes.append('get_num_bundled_inputs')
# Bundled inputs in module after the change that introduced bundled inputs for multiple functions
if hasattr(script_module, 'get_bundled_inputs_functions_and_info'):
bundled_inputs_attributes.append('get_bundled_inputs_functions_and_info')
all_info = script_module.get_bundled_inputs_functions_and_info()
for function_name in all_info:
if function_name not in preserved_methods:
bundled_inputs_attributes.append(function_name)
bundled_inputs_attributes.append("get_all_bundled_inputs_for_" + function_name)
bundled_inputs_attributes.append("_bundled_inputs_deflated_" + function_name)
return bundled_inputs_attributes