dgl.ops.u_sub_e_sumο
- dgl.ops.u_sub_e_sum(g, x, y)ο
- Generalized SpMM function. It fuses two steps into one kernel. - Computes messages by sub source node and edge features. 
- Aggregate the messages by sum as the features on destination nodes. 
 - Parameters:
- g (DGLGraph) β The input graph 
- x (tensor) β The source node features. 
- y (tensor) β The edge features. 
 
- Returns:
- The result tensor. 
- Return type:
- tensor 
 - Notes - This function supports autograd (computing input gradients given the output gradient). If the feature shape of two input operands do not match, we first broadcasts the features to a unified shape (note that the memory usage will not increase accordingly) and then performs the operation. - Broadcasting follows NumPy semantics. Please see https://docs.scipy.org/doc/numpy/user/basics.broadcasting.html for more details about the NumPy broadcasting semantics. - The sum function will return zero for nodes with no incoming messages.