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tensor.py 15.7 KB
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from textwrap import indent

import torch
import scipy.sparse

from torch_sparse.storage import SparseStorage
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from torch_sparse.transpose import t
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from torch_sparse.narrow import narrow
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class SparseTensor(object):
    def __init__(self, index, value=None, sparse_size=None, is_sorted=False):
        self._storage = SparseStorage(
            index, value, sparse_size, is_sorted=is_sorted)

    @classmethod
    def from_storage(self, storage):
        self = SparseTensor.__new__(SparseTensor)
        self._storage = storage
        return self

    @classmethod
    def from_dense(self, mat):
        if mat.dim() > 2:
            index = mat.abs().sum([i for i in range(2, mat.dim())]).nonzero()
        else:
            index = mat.nonzero()

        index = index.t().contiguous()
        value = mat[index[0], index[1]]
        return self.__class__(index, value, mat.size()[:2], is_sorted=True)

    def __copy__(self):
        return self.__class__.from_storage(self._storage)

    def clone(self):
        return self.__class__.from_storage(self._storage.clone())

    def __deepcopy__(self, memo):
        new_sparse_tensor = self.clone()
        memo[id(self)] = new_sparse_tensor
        return new_sparse_tensor

    # Formats #################################################################

    def coo(self):
        return self._storage.index, self._storage.value

    def csr(self):
        return self._storage.rowptr, self._storage.col, self._storage.value

    def csc(self):
        perm = self._storage.csr_to_csc
        return (self._storage.colptr, self._storage.row[perm],
                self._storage.value[perm] if self.has_value() else None)

    # Storage inheritance #####################################################

    def has_value(self):
        return self._storage.has_value()

    def set_value_(self, value, layout=None):
        self._storage.set_value_(value, layout)
        return self

    def set_value(self, value, layout=None):
        storage = self._storage.set_value(value, layout)
        return self.__class__.from_storage(storage)

    def sparse_size(self, dim=None):
        return self._storage.sparse_size(dim)

    def sparse_resize_(self, *sizes):
        self._storage.sparse_resize_(*sizes)
        return self

    def is_coalesced(self):
        return self._storage.is_coalesced()

    def coalesce(self):
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        return self.__class__.from_storage(self._storage.coalesce())

    def cached_keys(self):
        return self._storage.cached_keys()
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    def fill_cache_(self, *args):
        self._storage.fill_cache_(*args)
        return self

    def clear_cache_(self, *args):
        self._storage.clear_cache_(*args)
        return self

    # Utility functions #######################################################

    def size(self, dim=None):
        size = self.sparse_size()
        size += self._storage.value.size()[1:] if self.has_value() else ()
        return size if dim is None else size[dim]

    def dim(self):
        return len(self.size())

    @property
    def shape(self):
        return self.size()

    def nnz(self):
        return self._storage.index.size(1)

    def density(self):
        return self.nnz() / (self.sparse_size(0) * self.sparse_size(1))

    def sparsity(self):
        return 1 - self.density()

    def avg_row_length(self):
        return self.nnz() / self.sparse_size(0)

    def avg_col_length(self):
        return self.nnz() / self.sparse_size(1)

    def numel(self):
        return self.value.numel() if self.has_value() else self.nnz()

    def is_quadratic(self):
        return self.sparse_size(0) == self.sparse_size(1)

    def is_symmetric(self):
        if not self.is_quadratic:
            return False

        rowptr, col, val1 = self.csr()
        colptr, row, val2 = self.csc()
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        index_sym = (rowptr == colptr).all() and (col == row).all()
        value_sym = (val1 == val2).all().item() if self.has_value() else True
        return index_sym.item() and value_sym
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    def detach_(self):
        self._storage.apply_(lambda x: x.detach_())
        return self

    def detach(self):
        storage = self._storage.apply(lambda x: x.detach())
        return self.__class__.from_storage(storage)

    def pin_memory(self):
        storage = self._storage.apply(lambda x: x.pin_memory())
        return self.__class__.from_storage(storage)

    def is_pinned(self):
        return all(self._storage.map(lambda x: x.is_pinned()))

    def share_memory_(self):
        self._storage.apply_(lambda x: x.share_memory_())
        return self

    def is_shared(self):
        return all(self._storage.map(lambda x: x.is_shared()))

    @property
    def device(self):
        return self._storage.index.device

    def cpu(self):
        storage = self._storage.apply(lambda x: x.cpu())
        return self.__class__.from_storage(storage)

    def cuda(self, device=None, non_blocking=False, **kwargs):
        storage = self._storage.apply(lambda x: x.cuda(device, non_blocking, **
                                                       kwargs))
        return self.__class__.from_storage(storage)

    @property
    def is_cuda(self):
        return self._storage.index.is_cuda

    @property
    def dtype(self):
        return self._storage.value.dtype if self.has_value() else None

    def is_floating_point(self):
        value = self._storage.value
        return self.has_value() and torch.is_floating_point(value)

    def type(self, dtype=None, non_blocking=False, **kwargs):
        if dtype is None:
            return self.dtype

        if dtype == self.dtype:
            return self

        storage = self._storage.apply_value(lambda x: x.type(
            dtype, non_blocking, **kwargs))
        return self.__class__.from_storage(storage)

    def to(self, *args, **kwargs):
        storage = None

        if 'device' in kwargs:
            device = kwargs['device']
            del kwargs['device']
            storage = self._storage.apply(lambda x: x.to(
                device, non_blocking=getattr(kwargs, 'non_blocking', False)))

        for arg in args[:]:
            if isinstance(arg, str) or isinstance(arg, torch.device):
                storage = self._storage.apply(lambda x: x.to(
                    arg, non_blocking=getattr(kwargs, 'non_blocking', False)))
                args.remove(arg)

        if storage is not None:
            self = self.__class__.from_storage(storage)

        if len(args) > 0 or len(kwargs) > 0:
            self = self.type(*args, **kwargs)

        return self

    def bfloat16(self):
        return self.type(torch.bfloat16)

    def bool(self):
        return self.type(torch.bool)

    def byte(self):
        return self.type(torch.byte)

    def char(self):
        return self.type(torch.char)

    def half(self):
        return self.type(torch.half)

    def float(self):
        return self.type(torch.float)

    def double(self):
        return self.type(torch.double)

    def short(self):
        return self.type(torch.short)

    def int(self):
        return self.type(torch.int)

    def long(self):
        return self.type(torch.long)

    # Conversions #############################################################

    def to_dense(self, dtype=None):
        dtype = dtype or self.dtype
        (row, col), value = self.coo()
        mat = torch.zeros(self.size(), dtype=dtype, device=self.device)
        mat[row, col] = value if self.has_value() else 1
        return mat

    def to_torch_sparse_coo_tensor(self, dtype=None, requires_grad=False):
        index, value = self.coo()
        return torch.sparse_coo_tensor(
            index,
            value if self.has_value() else torch.ones(
                self.nnz(), dtype=dtype, device=self.device),
            self.size(),
            device=self.device,
            requires_grad=requires_grad)

    def to_scipy(self, dtype=None, layout='coo'):
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        assert self.dim() == 2
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        assert layout in self._storage.layouts

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        if not self.has_value():
            ones = torch.ones(self.nnz(), dtype=dtype).numpy()
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        if layout == 'coo':
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            (row, col), value = self.coo()
            row = row.detach().cpu().numpy()
            col = col.detach().cpu().numpy()
            value = value.detach().cpu().numpy() if self.has_value() else ones
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            return scipy.sparse.coo_matrix((value, (row, col)), self.size())
        elif layout == 'csr':
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            rowptr, col, value = self.csr()
            rowptr = rowptr.detach().cpu().numpy()
            col = col.detach().cpu().numpy()
            value = value.detach().cpu().numpy() if self.has_value() else ones
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            return scipy.sparse.csr_matrix((value, col, rowptr), self.size())
        elif layout == 'csc':
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            colptr, row, value = self.csc()
            colptr = colptr.detach().cpu().numpy()
            row = row.detach().cpu().numpy()
            value = value.detach().cpu().numpy() if self.has_value() else ones
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            return scipy.sparse.csc_matrix((value, row, colptr), self.size())

    # String Reputation #######################################################

    def __repr__(self):
        i = ' ' * 6
        index, value = self.coo()
        infos = [f'index={indent(index.__repr__(), i)[len(i):]}']

        if self.has_value():
            infos += [f'value={indent(value.__repr__(), i)[len(i):]}']

        infos += [
            f'size={tuple(self.size())}, '
            f'nnz={self.nnz()}, '
            f'density={100 * self.density():.02f}%'
        ]
        infos = ',\n'.join(infos)

        i = ' ' * (len(self.__class__.__name__) + 1)
        return f'{self.__class__.__name__}({indent(infos, i)[len(i):]})'


# Bindings ####################################################################
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SparseTensor.t = t
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SparseTensor.narrow = narrow
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#     def set_diag(self, value):
#         raise NotImplementedError

#     def masked_select(self, mask):
#         raise NotImplementedError

#     def index_select(self, index):
#         raise NotImplementedError

#     def select(self, dim, index):
#         raise NotImplementedError

#     def filter(self, index):
#         assert self.is_symmetric
#         assert index.dtype == torch.long or index.dtype == torch.bool
#         raise NotImplementedError

#     def permute(self, index):
#         assert index.dtype == torch.long
#         return self.filter(index)

#     def __getitem__(self, idx):
#         # Convert int and slice to index tensor
#         # Filter list into edge and sparse slice
#         raise NotImplementedError

#     def __reduce(self, dim, reduce, only_nnz):
#         raise NotImplementedError

#     def sum(self, dim):
#         return self.__reduce(dim, reduce='add', only_nnz=True)

#     def prod(self, dim):
#         return self.__reduce(dim, reduce='mul', only_nnz=True)

#     def min(self, dim, only_nnz=False):
#         return self.__reduce(dim, reduce='min', only_nnz=only_nnz)

#     def max(self, dim, only_nnz=False):
#         return self.__reduce(dim, reduce='min', only_nnz=only_nnz)

#     def mean(self, dim, only_nnz=False):
#         return self.__reduce(dim, reduce='mean', only_nnz=only_nnz)

#     def matmul(self, mat, reduce='add'):
#         assert self.numel() == self.nnz()  # Disallow multi-dimensional value
#         if torch.is_tensor(mat):
#             raise NotImplementedError
#         elif isinstance(mat, self.__class__):
#             assert reduce == 'add'
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#           assert mat.numel() == mat.nnz()  # Disallow multi-dimensional value
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#             raise NotImplementedError
#         raise ValueError('Argument needs to be of type `torch.tensor` or '
#                          'type `torch_sparse.SparseTensor`.')

#     def add(self, other, layout=None):
#         if __is_scalar__(other):
#             if self.has_value:
#                 return self.set_value(self._value + other, 'coo')
#             else:
#                 return self.set_value(torch.full((self.nnz(), ), other + 1),
#                                       'coo')
#         elif torch.is_tensor(other):
#             if layout is None:
#                 layout = 'coo'
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#               warnings.warn('`layout` argument unset, using default layout '
#                             '"coo". This may lead to unexpected behaviour.')
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#             assert layout in ['coo', 'csr', 'csc']
#             if layout == 'csc':
#                 other = other[self._arg_csc_to_csr]
#             if self.has_value:
#                 return self.set_value(self._value + other, 'coo')
#             else:
#                 return self.set_value(other + 1, 'coo')
#         elif isinstance(other, self.__class__):
#             raise NotImplementedError
#         raise ValueError('Argument needs to be of type `int`, `float`, '
#                          '`torch.tensor` or `torch_sparse.SparseTensor`.')

#     def add_(self, other, layout=None):
#         if isinstance(other, int) or isinstance(other, float):
#             raise NotImplementedError
#         elif torch.is_tensor(other):
#             raise NotImplementedError
#         raise ValueError('Argument needs to be a scalar or of type '
#                          '`torch.tensor`.')

#     def __add__(self, other):
#         return self.add(other)

#     def __radd__(self, other):
#         return self.add(other)

#     def sub(self, layout=None):
#         raise NotImplementedError

#     def sub_(self, layout=None):
#         raise NotImplementedError

#     def mul(self, layout=None):
#         raise NotImplementedError

#     def mul_(self, layout=None):
#         raise NotImplementedError

#     def div(self, layout=None):
#         raise NotImplementedError

#     def div_(self, layout=None):
#         raise NotImplementedError

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if __name__ == '__main__':
    from torch_geometric.datasets import Reddit, Planetoid  # noqa
    import time  # noqa
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    device = 'cuda' if torch.cuda.is_available() else 'cpu'
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    # dataset = Reddit('/tmp/Reddit')
    dataset = Planetoid('/tmp/Cora', 'Cora')
    data = dataset[0].to(device)
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    value = torch.randn((data.num_edges, ), device=device)
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    mat1 = SparseTensor(data.edge_index, value)
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    # print(mat1)

    # # print(mat1.to_dense().size())
    # print(mat1.to_torch_sparse_coo_tensor().to_dense().size())
    # print(mat1.to_scipy(layout='coo').todense().shape)
    # print(mat1.to_scipy(layout='csr').todense().shape)
    # print(mat1.to_scipy(layout='csc').todense().shape)

    # print(mat1.is_quadratic())
    # print(mat1.is_symmetric())

    # print(mat1.cached_keys())
    # mat1 = mat1.t()
    # print(mat1.cached_keys())
    # mat1 = mat1.t()
    # print(mat1.cached_keys())
    # print('-------- NARROW ----------')

    t = time.perf_counter()
    for _ in range(100):
        out = mat1.narrow(dim=0, start=10, length=10)
        # out._storage.colptr
    print(time.perf_counter() - t)
    print(out)
    print(out.cached_keys())

    t = time.perf_counter()
    for _ in range(100):
        out = mat1.narrow(dim=1, start=10, length=2000)
        # out._storage.colptr
    print(time.perf_counter() - t)
    print(out)
    print(out.cached_keys())

    # mat1 = mat1.narrow(0, start=10, length=10)
    # mat1._storage._value = torch.randn(mat1.nnz(), 20)
    # print(mat1.coo()[1].size())
    # mat1 = mat1.narrow(2, start=10, length=10)
    # print(mat1.coo()[1].size())
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#     mat1 = mat1.t()

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#   mat2 = torch.sparse_coo_tensor(data.edge_index, torch.ones(data.num_edges),
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#                                    device=device)
#     mat2 = mat2.coalesce()
#     mat2 = mat2.t().coalesce()

#     index1, value1 = mat1.coo()
#     index2, value2 = mat2._indices(), mat2._values()
#     assert torch.allclose(index1, index2)

#     out1 = mat1.to_dense()
#     out2 = mat2.to_dense()
#     assert torch.allclose(out1, out2)

#     out = 2 + mat1
#     print(out)

#     # mat1[1]
#     # mat1[1, 1]
#     # mat1[..., -1]
#     # mat1[:, -1]
#     # mat1[1:4, 1:4]
#     # mat1[torch.tensor([0, 1, 2])]