The binary primitive computes the result of a binary elementwise operation between tensors source 0 and source 1 (the variable names follow the standard Naming Conventions):
\[ \dst(\overline{x}) = \src_0(\overline{x}) \mathbin{op} \src_1(\overline{x}), \]
where \(op\) is addition, multiplication, division, get maximum value or get minimum value.
The binary primitive does not have a notion of forward or backward propagations.
When executed, the inputs and outputs should be mapped to an execution argument index as specified by the following table.
| Primitive input/output | Execution argument index |
|---|---|
| \(\src_0\) | DNNL_ARG_SRC_0 |
| \(\src_1\) | DNNL_ARG_SRC_1 |
| \(\dst\) | DNNL_ARG_DST |
| \(binary post-op\) | DNNL_ARG_ATTR_MULTIPLE_POST_OP(binary_post_op_position) | DNNL_ARG_SRC_1 |
int8 data types.The following attributes are supported:
| Type | Operation | Description | Restrictions |
|---|---|---|---|
| Attribute | Scales | Scales the corresponding input tensor by the given scale factor(s). | The corresponding tensor has integer data type. Only one scale per tensor is supported. Input tensors only. |
| Post-op | Sum | Adds the operation result to the destination tensor instead of overwriting it. | |
| Post-op | Eltwise | Applies an Eltwise operation to the result. | |
| Post-op | Binary | Applies a Binary operation to the result | General binary post-op restrictions |
The source and destination tensors may have f32, bf16, or int8 data types. See Data Types page for more details.
The binary primitive works with arbitrary data tensors. There is no special meaning associated with any of tensors dimensions.
| Engine | Name | Comments |
|---|---|---|
| CPU/GPU | binary_example_cpp |