scatter_gather.py 1.93 KB
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import torch
from ._functions import Scatter
from torch.nn.parallel._functions import Scatter as OrigScatter
from detkit.datasets.utils import DataContainer


def scatter(inputs, target_gpus, dim=0):
    """Scatter inputs to target gpus.

    The only difference from original :func:`scatter` is to add support for
    :type:`~mmdet.DataContainer`.
    """

    def scatter_map(obj):
        if isinstance(obj, torch.Tensor):
            return OrigScatter.apply(target_gpus, None, dim, obj)
        if isinstance(obj, DataContainer) and isinstance(obj.data, list):
            return Scatter.forward(target_gpus, obj.data)
        if isinstance(obj, tuple) and len(obj) > 0:
            return list(zip(*map(scatter_map, obj)))
        if isinstance(obj, list) and len(obj) > 0:
            return list(map(list, zip(*map(scatter_map, obj))))
        if isinstance(obj, dict) and len(obj) > 0:
            return list(map(type(obj), zip(*map(scatter_map, obj.items()))))
        return [obj for targets in target_gpus]

    # After scatter_map is called, a scatter_map cell will exist. This cell
    # has a reference to the actual function scatter_map, which has references
    # to a closure that has a reference to the scatter_map cell (because the
    # fn is recursive). To avoid this reference cycle, we set the function to
    # None, clearing the cell
    try:
        return scatter_map(inputs)
    finally:
        scatter_map = None


def scatter_kwargs(inputs, kwargs, target_gpus, dim=0):
    """Scatter with support for kwargs dictionary"""
    inputs = scatter(inputs, target_gpus, dim) if inputs else []
    kwargs = scatter(kwargs, target_gpus, dim) if kwargs else []
    if len(inputs) < len(kwargs):
        inputs.extend([() for _ in range(len(kwargs) - len(inputs))])
    elif len(kwargs) < len(inputs):
        kwargs.extend([{} for _ in range(len(inputs) - len(kwargs))])
    inputs = tuple(inputs)
    kwargs = tuple(kwargs)
    return inputs, kwargs