Inner Product#
The inner product primitive (sometimes called fully connected layer) treats each activation in the minibatch as a vector and computes its product with a weights 2D tensor producing a 2D tensor as an output.
Forward#
Let \(\src\), \(\weights\), \(\bias\) and \(\dst\) be \(N \times IC\), \(OC \times IC\), \(OC\), and \(N \times OC\) tensors, respectively. Variable names follow the standard Conventions. Then:
In cases where the \(\src\) and \(\weights\) tensors have spatial dimensions, they are flattened to 2D. For example, if they are 4D \(N \times IC' \times IH \times IW\) and \(OC \times IC' \times KH \times KW\) tensors, then the formula above is applied with \(IC = IC' \cdot IH \cdot IW\). In such cases, the \(\src\) and \(\weights\) tensors must have equal spatial dimensions (e.g. \(KH = IH\) and \(KW = IW\) for 4D tensors).
Difference Between Forward Training and Forward Inference#
There is no difference between the forward_training
and forward_inference
propagation kinds.
Backward#
The backward propagation computes \(\diffsrc\) based on \(\diffdst\) and \(\weights\).
The weights update computes \(\diffweights\) and \(\diffbias\) based on \(\diffdst\) and \(\src\).
Note
The optimized memory formats \(\src\) and \(\weights\) might be different on forward propagation, backward propagation, and weights update.
Execution Arguments#
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 |
---|---|
\(\src\) |
|
\(\weights\) |
|
\(\bias\) |
|
\(\dst\) |
|
\(\diffsrc\) |
|
\(\diffweights\) |
|
\(\diffbias\) |
|
\(\diffdst\) |
Operation Details#
N/A
Data Types Support#
Inner product primitive supports the following combination of data types for source, destination, weights, and bias.
Note
Here we abbreviate data types names for readability. For example, dnnl::memory::data_type::f32
is
abbreviated to f32
.
Propagation |
Source |
Weights |
Destination |
Bias |
---|---|---|---|---|
forward / backward |
||||
forward |
||||
forward |
||||
forward |
||||
backward |
||||
weights update |
Data Representation#
Like other CNN primitives, the inner product primitive expects the following tensors:
Spatial |
Source |
Destination |
Weights |
---|---|---|---|
1D |
\(N \times C \times W\) |
\(N \times C\) |
\(OC \times IC \times KW\) |
2D |
\(N \times C \times H \times W\) |
\(N \times C\) |
\(OC \times IC \times KH \times KW\) |
3D |
\(N \times C \times D \times H \times W\) |
\(N \times C\) |
\(OC \times IC \times KD \times KH \times KW\) |
Memory format of data and weights memory objects is critical for inner product
primitive performance. In the oneDNN programming model, inner product
primitive is one of the few primitives that support the placeholder format
any
and can define data and weight memory objects formats based on the
primitive parameters. When using any
it is necessary to first create an
inner product primitive descriptor and then query it for the actual data and
weight memory objects formats.
The table below shows the combinations for which plain memory formats the
inner product primitive is optimized for. For the destination tensor (which is
always \(N \times C\)) the memory format is always nc
(ab
).
Spatial |
Source / Weights logical tensor |
Implementation optimized for memory formats |
---|---|---|
0D |
NC / OI |
|
0D |
NC / OI |
|
1D |
NCW / OIW |
|
1D |
NCW / OIW |
|
2D |
NCHW / OIHW |
|
2D |
NCHW / OIHW |
|
3D |
NCDHW / OIDHW |
|
3D |
NCDHW / OIDHW |
Post-ops and Attributes#
The following post-ops should be supported by inner product primitives:
Type |
Operation |
Description |
Restrictions |
---|---|---|---|
Attribute |
Sets scale(s) for the corresponding tensor(s) |
Int8 computations only |
|
Attribute |
Sets zero point(s) for the corresponding tensors |
Int8 computations only |
|
Post-op |
Applies an elementwise operation to the result |
||
Post-op |
Applies a binary operation to the result |
||
Post-op |
Adds the operation result to the destination tensor instead of overwriting it |
API#
-
struct dnnl::inner_product_forward : public dnnl::primitive#
Inner product forward propagation primitive.
Public Functions
-
inner_product_forward()#
Default constructor. Produces an empty object.
-
inner_product_forward(const primitive_desc &pd)#
Constructs an inner product forward propagation primitive.
- Parameters
pd – Primitive descriptor for an inner product forward propagation primitive.
-
struct primitive_desc : public dnnl::primitive_desc#
Primitive descriptor for an inner product forward propagation primitive.
Public Functions
-
primitive_desc() = default#
Default constructor. Produces an empty object.
-
primitive_desc(const engine &aengine, prop_kind aprop_kind, const memory::desc &src_desc, const memory::desc &weights_desc, const memory::desc &bias_desc, const memory::desc &dst_desc, const primitive_attr &attr = default_attr(), bool allow_empty = false)#
Constructs a primitive descriptor for an inner product forward propagation primitive with bias.
Note
All the memory descriptors may be initialized with the dnnl::memory::format_tag::any value of
format_tag
.- Parameters
aengine – Engine to use.
aprop_kind – Propagation kind. Possible values are dnnl::prop_kind::forward_training, and dnnl::prop_kind::forward_inference.
src_desc – Memory descriptor for src.
weights_desc – Memory descriptor for weights.
bias_desc – Memory descriptor for bias.
dst_desc – Memory descriptor for dst.
attr – Primitive attributes to use. Attributes are optional and default to empty attributes.
allow_empty – A flag signifying whether construction is allowed to fail without throwing an exception. In this case an empty object will be produced. This flag is optional and defaults to false.
-
primitive_desc(const engine &aengine, prop_kind aprop_kind, const memory::desc &src_desc, const memory::desc &weights_desc, const memory::desc &dst_desc, const primitive_attr &attr = default_attr(), bool allow_empty = false)#
Constructs a primitive descriptor for an inner product forward propagation primitive.
Note
All the memory descriptors may be initialized with the dnnl::memory::format_tag::any value of
format_tag
.- Parameters
aengine – Engine to use.
aprop_kind – Propagation kind. Possible values are dnnl::prop_kind::forward_training, and dnnl::prop_kind::forward_inference.
src_desc – Memory descriptor for src.
weights_desc – Memory descriptor for weights.
dst_desc – Memory descriptor for dst.
attr – Primitive attributes to use. Attributes are optional and default to empty attributes.
allow_empty – A flag signifying whether construction is allowed to fail without throwing an exception. In this case an empty object will be produced. This flag is optional and defaults to false.
-
memory::desc src_desc() const#
Returns a source memory descriptor.
- Returns
Source memory descriptor.
- Returns
A zero memory descriptor if the primitive does not have a source parameter.
-
memory::desc weights_desc() const#
Returns a weights memory descriptor.
- Returns
Weights memory descriptor.
- Returns
A zero memory descriptor if the primitive does not have a weights parameter.
-
memory::desc dst_desc() const#
Returns a destination memory descriptor.
- Returns
Destination memory descriptor.
- Returns
A zero memory descriptor if the primitive does not have a destination parameter.
-
memory::desc bias_desc() const#
Returns the bias memory descriptor.
- Returns
The bias memory descriptor.
- Returns
A zero memory descriptor of the primitive does not have a bias parameter.
-
prop_kind get_prop_kind() const#
Returns a propagation kind.
- Returns
A propagation kind.
- Returns
dnnl::prop_kind::undef if the primitive does not have a propagation parameter.
-
primitive_desc() = default#
-
inner_product_forward()#
-
struct dnnl::inner_product_backward_data : public dnnl::primitive#
Inner product backward propagation primitive.
Public Functions
-
inner_product_backward_data()#
Default constructor. Produces an empty object.
-
inner_product_backward_data(const primitive_desc &pd)#
Constructs an inner product backward propagation primitive.
- Parameters
pd – Primitive descriptor for an inner product backward propagation primitive.
-
struct primitive_desc : public dnnl::primitive_desc#
Primitive descriptor for an inner product backward propagation primitive.
Public Functions
-
primitive_desc() = default#
Default constructor. Produces an empty object.
-
primitive_desc(const engine &aengine, const memory::desc &diff_src_desc, const memory::desc &weights_desc, const memory::desc &diff_dst_desc, const inner_product_forward::primitive_desc &hint_fwd_pd, const primitive_attr &attr = default_attr(), bool allow_empty = false)#
Constructs a primitive descriptor for an inner product backward propagation primitive.
Note
All the memory descriptors may be initialized with the dnnl::memory::format_tag::any value of
format_tag
.- Parameters
aengine – Engine to use.
diff_src_desc – Memory descriptor for diff src.
weights_desc – Memory descriptor for weights.
diff_dst_desc – Memory descriptor for diff dst.
hint_fwd_pd – Primitive descriptor for an inner product forward propagation primitive. It is used as a hint for deciding which memory format to use.
attr – Primitive attributes to use. Attributes are optional and default to empty attributes.
allow_empty – A flag signifying whether construction is allowed to fail without throwing an exception. In this case an empty object will be produced. This flag is optional and defaults to false.
-
memory::desc diff_src_desc() const#
Returns a diff source memory descriptor.
- Returns
Diff source memory descriptor.
- Returns
A zero memory descriptor if the primitive does not have a diff source memory with.
-
memory::desc weights_desc() const#
Returns a weights memory descriptor.
- Returns
Weights memory descriptor.
- Returns
A zero memory descriptor if the primitive does not have a weights parameter.
-
memory::desc diff_dst_desc() const#
Returns a diff destination memory descriptor.
- Returns
Diff destination memory descriptor.
- Returns
A zero memory descriptor if the primitive does not have a diff destination parameter.
-
prop_kind get_prop_kind() const#
Returns a propagation kind.
- Returns
A propagation kind.
- Returns
dnnl::prop_kind::undef if the primitive does not have a propagation parameter.
-
primitive_desc() = default#
-
inner_product_backward_data()#
-
struct dnnl::inner_product_backward_weights : public dnnl::primitive#
Inner product weights gradient primitive.
Public Functions
-
inner_product_backward_weights()#
Default constructor. Produces an empty object.
-
inner_product_backward_weights(const primitive_desc &pd)#
Constructs an inner product weights gradient primitive.
- Parameters
pd – Primitive descriptor for an inner product weights gradient primitive.
-
struct primitive_desc : public dnnl::primitive_desc#
Primitive descriptor for an inner product weights gradient primitive.
Public Functions
-
primitive_desc() = default#
Default constructor. Produces an empty object.
-
primitive_desc(const engine &aengine, const memory::desc &src_desc, const memory::desc &diff_weights_desc, const memory::desc &diff_bias_desc, const memory::desc &diff_dst_desc, const inner_product_forward::primitive_desc &hint_fwd_pd, const primitive_attr &attr = default_attr(), bool allow_empty = false)#
Constructs a primitive descriptor for an inner product weights update primitive with bias.
Note
All the memory descriptors may be initialized with the dnnl::memory::format_tag::any value of
format_tag
.- Parameters
aengine – Engine to use.
src_desc – Memory descriptor for src.
diff_weights_desc – Memory descriptor for diff weights.
diff_bias_desc – Memory descriptor for diff bias.
diff_dst_desc – Memory descriptor for diff dst.
hint_fwd_pd – Primitive descriptor for an inner product forward propagation primitive. It is used as a hint for deciding which memory format to use.
attr – Primitive attributes to use. Attributes are optional and default to empty attributes.
allow_empty – A flag signifying whether construction is allowed to fail without throwing an exception. In this case an empty object will be produced. This flag is optional and defaults to false.
-
primitive_desc(const engine &aengine, const memory::desc &src_desc, const memory::desc &diff_weights_desc, const memory::desc &diff_dst_desc, const inner_product_forward::primitive_desc &hint_fwd_pd, const primitive_attr &attr = default_attr(), bool allow_empty = false)#
Constructs a primitive descriptor for an inner product weights update primitive.
Note
All the memory descriptors may be initialized with the dnnl::memory::format_tag::any value of
format_tag
.- Parameters
aengine – Engine to use.
src_desc – Memory descriptor for src.
diff_weights_desc – Memory descriptor for diff weights.
diff_dst_desc – Memory descriptor for diff dst.
attr – Primitive attributes to use. Attributes are optional and default to empty attributes.
hint_fwd_pd – Primitive descriptor for an inner product forward propagation primitive. It is used as a hint for deciding which memory format to use.
allow_empty – A flag signifying whether construction is allowed to fail without throwing an exception. In this case an empty object will be produced. This flag is optional and defaults to false.
-
memory::desc src_desc() const#
Returns a source memory descriptor.
- Returns
Source memory descriptor.
- Returns
A zero memory descriptor if the primitive does not have a source parameter.
-
memory::desc diff_weights_desc() const#
Returns a diff weights memory descriptor.
- Returns
Diff weights memory descriptor.
- Returns
A zero memory descriptor if the primitive does not have a diff weights parameter.
-
memory::desc diff_dst_desc() const#
Returns a diff destination memory descriptor.
- Returns
Diff destination memory descriptor.
- Returns
A zero memory descriptor if the primitive does not have a diff destination parameter.
-
memory::desc diff_bias_desc() const#
Returns the diff bias memory descriptor.
- Returns
The diff bias memory descriptor.
- Returns
A zero memory descriptor of the primitive does not have a diff bias parameter.
-
prop_kind get_prop_kind() const#
Returns a propagation kind.
- Returns
A propagation kind.
- Returns
dnnl::prop_kind::undef if the primitive does not have a propagation parameter.
-
primitive_desc() = default#
-
inner_product_backward_weights()#