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258 lines
9.0 KiB
258 lines
9.0 KiB
#!/usr/bin/env python
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# -*- encoding: utf-8 -*-
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import inspect
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from collections.abc import Iterable
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from colossalai.registry import *
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def build_from_config(module, config: dict):
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"""Returns an object of :class:`module` constructed from `config`.
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Args:
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module: A python or user-defined class
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config: A python dict containing information used in the construction of the return object
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Returns: An ``object`` of interest
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Raises:
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AssertionError: Raises an AssertionError if `module` is not a class
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"""
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assert inspect.isclass(module), 'module must be a class'
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return module(**config)
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def build_from_registry(config, registry: Registry):
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r"""Returns an object constructed from `config`, the type of the object
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is specified by `registry`.
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Note:
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the `config` is used to construct the return object such as `LAYERS`,
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`OPTIMIZERS` and other support types in `registry`. The `config` should contain
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all required parameters of corresponding object. The details of support
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types in `registry` and the `mod_type` in `config` could be found in
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`registry <https://github.com/hpcaitech/ColossalAI/blob/main/colossalai/registry/__init__.py>`_.
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Args:
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config (dict or :class:`colossalai.context.colossalai.context.Config`): information
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used in the construction of the return object.
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registry (:class:`Registry`): A registry specifying the type of the return object
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Returns: A Python object specified by `registry`
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Raises:
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Exception: Raises an Exception if an error occurred when building from registry
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"""
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config_ = config.copy() # keep the original config untouched
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assert isinstance(
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registry, Registry), f'Expected type Registry but got {type(registry)}'
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mod_type = config_.pop('type')
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assert registry.has(
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mod_type), f'{mod_type} is not found in registry {registry.name}'
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try:
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obj = registry.get_module(mod_type)(**config_)
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except Exception as e:
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print(
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f'An error occurred when building {mod_type} from registry {registry.name}',
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flush=True)
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raise e
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return obj
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def build_layer(config):
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"""Returns a layer object of :class:`nn.Module` constructed from `config`.
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Args:
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config (dict or :class:`colossalai.context.Config`): A python dict or
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a :class:`colossalai.context.Config` object containing information
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used in the construction of the ``LAYERS``.
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Returns:
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An object of :class:`torch.nn.Module`
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"""
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return build_from_registry(config, LAYERS)
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def build_loss(config):
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"""Returns a loss function object of :class:`torch.autograd.Function` constructed
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from `config`.
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Args:
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config (dict or :class:`colossalai.context.Config`): A python dict or
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a :class:`colossalai.context.Config` object containing information
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used in the construction of the ``LOSSES``.
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Returns:
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An object of :class:`torch.nn.modules.loss._Loss`
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"""
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return build_from_registry(config, LOSSES)
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def build_model(config):
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"""Returns a model object of :class:`nn.Module` constructed from `config`.
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Args:
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config (dict or :class:`colossalai.context.Config`): A python dict or
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a :class:`colossalai.context.Config` object containing information
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used in the construction of the ``MODELS``.
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Returns:
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An object of :class:`torch.nn.Module`
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"""
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return build_from_registry(config, MODELS)
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def build_dataset(config):
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"""Returns a dataset object of :class:`torch.utils.data.Dataset` constructed
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from `config`.
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Args:
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config (dict or :class:`colossalai.context.Config`): A python dict or
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a :class:`colossalai.context.Config` object containing information
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used in the construction of the ``DATASETS``.
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Returns:
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An object of :class:`torch.utils.data.Dataset`
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"""
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return build_from_registry(config, DATASETS)
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def build_optimizer(config, model):
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"""Returns an optimizer object of :class:`torch.optim.Optimizer` constructed from `config`,
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'model' and 'params'.
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Args:
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config (dict or :class:`colossalai.context.Config`): A python dict or
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a :class:`colossalai.context.Config` object containing information
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used in the construction of the ``OPTIMIZERS``.
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model (:class:`nn.Module`): A model containing parameters for the optimizer
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Returns:
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An object of :class:`torch.optim.Optimizer`
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"""
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config_ = config.copy()
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config_['params'] = model.parameters()
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return build_from_registry(config_, OPTIMIZERS)
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def build_gradient_handler(config, model, optimizer):
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"""Returns a gradient handler object of :class:`BaseGradientHandler` constructed from `config`,
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`model` and `optimizer`.
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Args:
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config (dict or :class:`colossalai.context.Config`): A python dict or
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a :class:`colossalai.context.Config` object containing information
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used in the construction of the ``GRADIENT_HANDLER``.
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model (:class:`nn.Module`): A model containing parameters for the gradient handler
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optimizer (:class:`torch.optim.Optimizer`): An optimizer object containing parameters for the gradient handler
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Returns:
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An object of :class:`colossalai.engine.BaseGradientHandler`
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"""
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config_ = config.copy()
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config_['model'] = model
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config_['optimizer'] = optimizer
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return build_from_registry(config_, GRADIENT_HANDLER)
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def build_hooks(config, trainer):
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"""Returns a hook object of :class:`BaseHook` constructed from `config` and `trainer`.
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Args:
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config (dict or :class:`colossalai.context.Config`): A python dict or
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a :class:`colossalai.context.Config` object containing information
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used in the construction of the ``HOOKS``.
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Returns:
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An object of :class:`colossalai.trainer.hooks.BaseHook`
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"""
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config_ = config.copy()
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config_['trainer'] = trainer
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return build_from_registry(config_, HOOKS)
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def build_ophooks(config):
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"""Returns a hook object of :class:`BaseOpHook` constructed from `config`.
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Args:
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config (dict or :class:`colossalai.context.Config`): A python dict or
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a :class:`colossalai.context.Config` object containing information
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used in the construction of the ``OPHOOKS``.
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Returns:
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An object of :class:`colossalai.trainer.hooks.BaseOpHook`
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"""
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config_ = config.copy()
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return build_from_registry(config_, OPHOOKS)
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def build_transform(config):
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"""Returns a transformation object of :class:`torchvision.transforms` constructed
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from `config`.
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Args:
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config (dict or :class:`colossalai.context.Config`): A python dict or
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a :class:`colossalai.context.Config` object containing information
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used in the construction of the ``TRANSFORMS``.
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Returns:
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An object of :class:`torchvision.transforms`
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"""
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return build_from_registry(config, TRANSFORMS)
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def build_data_sampler(config, dataset):
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"""Returns a data sampler object of :class:`colossalai.nn.data.sampler.BaseSampler`
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constructed from `config`.
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Args:
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config (dict or :class:`colossalai.context.Config`): A python dict or
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a :class:`colossalai.context.Config` object containing information
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used in the construction of the ``DATA_SAMPLERS``.
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dataset (:class:`torch.utils.data.Dataset`): An object of
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:class:`torch.utils.data.Dataset` containing information
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used in the construction of the return object
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Returns:
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An object of :class:`colossalai.utils.data_sampler.BaseSampler`
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"""
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config_ = config.copy()
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config_['dataset'] = dataset
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return build_from_registry(config_, DATA_SAMPLERS)
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def build_lr_scheduler(config, optimizer):
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"""Returns a learning rate scheduler object of :class:`torch.optim.lr_scheduler`
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constructed from `config`, `optimizer`, `total_steps` and `num_steps_per_epoch`.
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Args:
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config (dict or :class:`colossalai.context.Config`): A python dict or
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a :class:`colossalai.context.Config` object containing information
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used in the construction of the ``lr_schedule``.
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optimizer (:class:`torch.optim.Optimizer`): An optimizer object containing
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parameters for the learning rate scheduler.
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Returns:
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An object of :class:`torch.optim.lr_scheduler`
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"""
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config_ = config.copy()
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config_['optimizer'] = optimizer
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return build_from_registry(config_, LR_SCHEDULERS)
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def build_schedule(config):
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"""Returns a schedule of :class:`colossalai.engine.schedule.BaseSchedule`.
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Args:
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config (dict or :class:`colossalai.context.Config`): A python dict or
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a :class:`colossalai.context.Config` object containing information
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used in the construction of the ``Schedule``.
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Returns:
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An object of :class:`colossalai.engine.schedule.BaseSchedule`
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"""
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return build_from_registry(config, SCHEDULE)
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