30 void Compute(tensorflow::OpKernelContext* context)
override {
31 using namespace tensorflow;
33 static_assert(
sizeof(int64) ==
sizeof(int64_t),
34 "int64 type is not compatible");
35 const Tensor& filters = context->input(0);
36 const Tensor& out_importance = context->input(1);
37 const Tensor& inp_features = context->input(2);
38 const Tensor& inp_neighbors_index = context->input(3);
39 const Tensor& inp_neighbors_importance_sum = context->input(4);
40 const Tensor& inp_neighbors_row_splits = context->input(5);
41 const Tensor& neighbors_index = context->input(6);
42 const Tensor& neighbors_kernel_index = context->input(7);
43 const Tensor& neighbors_importance = context->input(8);
44 const Tensor& neighbors_row_splits = context->input(9);
46 Dim num_out(
"num_out");
47 Dim num_inp(
"num_inp");
48 Dim num_kernel_elements(
"num_kernel_elements");
49 Dim in_channels(
"in_channels");
50 Dim out_channels(
"out_channels");
51 Dim num_neighbors(
"num_neighbors");
54 in_channels, out_channels);
55 CHECK_SHAPE(context, neighbors_row_splits, num_out + 1);
57 CHECK_SHAPE(context, inp_features, num_inp, in_channels);
58 CHECK_SHAPE(context, inp_neighbors_index, num_neighbors);
59 CHECK_SHAPE(context, inp_neighbors_importance_sum, 0 || num_inp);
60 CHECK_SHAPE(context, inp_neighbors_row_splits, num_inp + 1);
61 CHECK_SHAPE(context, neighbors_index, num_neighbors);
62 CHECK_SHAPE(context, neighbors_kernel_index, num_neighbors);
63 CHECK_SHAPE(context, neighbors_importance, 0 || num_neighbors);
65 TensorShape out_features_shape({num_out.
value(), out_channels.
value()});
66 Tensor* out_features =
nullptr;
67 OP_REQUIRES_OK(context, context->allocate_output(0, out_features_shape,
70 std::vector<int> filter_dims;
71 for (
int i = 0; i < filters.dims(); ++i) {
72 filter_dims.push_back(filters.dim_size(i));
75 bool point_importances = out_importance.shape().dim_size(0) != 0;
77 bool has_neighbors_importances =
78 neighbors_importance.shape().dim_size(0) != 0;
80 Kernel(context, filters, out_importance, inp_features,
81 inp_neighbors_importance_sum, inp_neighbors_row_splits,
82 neighbors_index, neighbors_kernel_index, neighbors_importance,
83 neighbors_row_splits, filter_dims, point_importances,
84 has_neighbors_importances, *out_features);