Memory Formats#
In oneDNN memory format is how a multidimensional tensor is stored in 1-dimensional linear memory address space. oneDNN specifies two kinds of memory formats: plain which correspond to traditional multidimensional arrays, and optimized which are completely opaque.
Plain Memory Formats#
Plain memory formats describe how multidimensional tensors are laid out in memory using an array of \(\operatorname{dimensions}\) and an array of \(\operatorname{strides}\) both of which have length equal to the rank of the tensor. In oneDNN the order of dimensions is fixed and different dimensions can have certain canonical interpretation depending on the primitive. For example, for CNN primitives the order for activation tensors is \(\{N, C, ..., D, H, W\}\), where \(N\) stands for minibatch (or batch size), \(C\) stands for channels, and \(D\), \(H\), and \(W\) stand for image spatial dimensions: depth, height and width respectively. Spatial dimensions may be omitted in the order from outermost to innermost; for example, it is not possible to omit \(H\) when \(D\) is present and it is never possible to omit \(W\). Canonical interpretation is documented for each primitive. However, this means that the \(\operatorname{strides}\) array plays an important role defining the order in which different dimension are laid out in memory. Moreover, the \(\operatorname{strides}\) need to agree with \(\operatorname{dimensions}\).
More precisely, let \(T\) be a tensor of rank \(n\) and let \(\sigma\) be the permutation of the \(\operatorname{strides}\) array that sorts it, i.e. \(\operatorname{strides}[i] \geq \operatorname{strides}[j]\) if \(\sigma(i) < \sigma(j)\) for all \(0 \leq i, j < n\). Then the following must hold:
For an element with coordinates \((i_0, \ldots, i_{n-1})\) such that \(0 \leq i_j < \operatorname{dimensions}[j]\) for \(0 \leq j < n\), its offset in memory is computed as:
Here \(\operatorname{offset_0}\) is the offset from the parent memory and is non-zero only for
submemory memory descriptors created using dnnl::memory::desc::submemory_desc()
.
Submemory memory descriptors inherit strides from the parent memory descriptor.
Their main purpose is to express in-place concat operations.
As an example, consider an \(M \times N\) matrix \(A\) (\(M\) rows times \(N\) columns). Regardless of whether \(A\) is stored transposed or not, \(\operatorname{dimensions}_A = \{M, N\}\). However, \(\operatorname{strides}_A = \{LDA, 1\}\) if it is not transposed and \(\operatorname{strides}_A = \{1, LDA\}\) if it is, where \(LDA\) is such that \(LDA \geq N\) if \(A\) is not transposed, and \(LDA \geq M\) if it is. This also shows that \(A\) does not have to be stored densly in memory.
Note
The example above shows that oneDNN assumes data to be stored in row-major order.
Code example:
int M, N;
dnnl::memory::dims dims {M, N}; // Dimensions always stay the same
// Non-transposed matrix
dnnl::memory::dims strides_non_transposed {N, 1};
dnnl::memory::desc A_non_transposed {dims, dnnl::memory::data_type::f32,
strides_non_transposed};
// Transposed matrix
dnnl::memory::dims strides_transposed {1, M};
dnnl::memory::desc A_transposed {dims, dnnl::memory::data_type::f32,
strides_transposed};
Format Tags#
In addition to strides, oneDNN provides named format tags via the
dnnl::memory::format_tag
enum type. The enumerators of this type can be used instead
of strides for dense plain layouts.
The format tag names for \(N\)-dimensional memory formats use first \(N\) letters of the English alphabet which can be arbitrarily permuted. This permutation is used to compute strides for tensors with up to 6 dimensions. The resulting strides specify dense storage, in other words, using the nomenclature from the previous section, the following equality holds:
In the matrix example, we could have used dnnl::memory::format_tag::ab
for the
non-transposed matrix above, and dnnl::memory::format_tag::ba
for the transposed:
int M, N;
dnnl::memory::dims dims {M, N}; // Dimensions always stay the same
// Non-transposed matrix
dnnl::memory::desc A_non_transposed {dims, dnnl::memory::data_type::f32,
dnnl::memory::format_tag::ab};
// Transposed matrix
dnnl::memory::desc A_transposed {dims, dnnl::memory::data_type::f32,
dnnl::memory::format_tag::ba};
Note
In what follows in this section we abbreviate memory format tag names for
readability. For example, dnnl::memory::format_tag::abcd
is abbreviated to abcd
.
In addition to abstract format tag names, oneDNN also provides convenience aliases. Some examples for CNNs and RNNs:
Optimized Format ‘any’#
Another kind of format that oneDNN supports is an opaque optimized
memory format that cannot be created directly from \(\operatorname{strides}\) and
\(\operatorname{dimensions}\) arrays. A memory descriptor for an optimized memory
format can only be created by passing any
when creating certain
primitive descriptor. That primitive descriptor can then querying them
for memory descriptors. Data in plain memory format should then be
reordered into the data in optimized data format before
computations. Since reorders are expensive, the optimized memory
format needs to be propagated through computations graph.
Optimized formats can employ padding, blocking and other data transformations to
keep data in layout optimal for a certain architecture. This means that it in
general operations like dnnl::memory::desc::permute_axes()
or
dnnl::memory::desc::submemory_desc()
may fail. It is in general incorrect to use
product of dimension sizes to calculate amount of memory required to store data:
dnnl::memory::desc::get_size()
must be used instead.
Memory Format Propagation#
Memory format propagation is one of the central notions that needs to be well-understood to use oneDNN correctly.
Convolution, matmul, RNN and inner product primitives choose the
memory format when you create them with the placeholder memory format
any
for input or output. The memory format chosen is based on
different circumstances such as hardware and convolution
parameters. Using the placeholder any
memory format is the
recommended practice for convolutions, since they are the most
compute-intensive operations in most topologies where they are
present.
Other primitives, such as Elementwise, LRN, batch normalization and other, on
forward propagation should use the same memory format as the preceding layer
thus propagating the memory format through multiple oneDNN primitives. This
avoids unnecessary reorders which may be expensive and should be avoided unless
a compute-intensive primitive requires a different format. For performance
reasons, backward computations of such primitives requires consistent memory
format with the corresponding forward computations. Hence, when initializing
there primitives for backward computations you should use dnnl::memory::format_tag::any
memory format
tag as well.
Below is the short summary when to use and not to use memory format any
during
primitive descriptor construction:
Primitive Kinds |
Forward Propagation |
Backward Propagation |
No Propagation |
---|---|---|---|
Compute intensive: (De-)convolution, Matmul, Inner product, RNN |
Use |
Use |
N/A |
Memory-bandwidth limited: Pooling, Layer and Batch Normalization, Local Response Normalization, Elementwise, Shuffle, Softmax |
Use memory format from preceding layer for source tensors, and |
Use |
N/A |
Memory-bandwidth limited: Reorder, Concat, Sum, Binary |
N/A |
N/A |
Use memory format from preceding layer for source tensors, and |
Additional format synchronization is required between forward and backward
propagation when running training workloads. This is achieved via the
hint_pd
arguments of primitive descriptor constructors for primitives that
implement backward propagation.
API#
-
enum class dnnl::memory::format_tag#
Memory format tag specification.
Memory format tags can be further divided into two categories:
Domain-agnostic names, i.e. names that do not depend on the tensor usage in the specific primitive. These names use letters from
a
tof
to denote logical dimensions and form the order in which the dimensions are laid in memory. For example, dnnl::memory::format_tag::ab is used to denote a 2D tensor where the second logical dimension (denoted asb
) is the innermost, i.e. has stride = 1, and the first logical dimension (a
) is laid out in memory with stride equal to the size of the second dimension. On the other hand, dnnl::memory::format_tag::ba is the transposed version of the same tensor: the outermost dimension (a
) becomes the innermost one.Domain-specific names, i.e. names that make sense only in the context of a certain domain, such as CNN. These names are aliases to the corresponding domain-agnostic tags and used mostly for convenience. For example, dnnl::memory::format_tag::nc is used to denote 2D CNN activations tensor memory format, where the channels dimension is the innermost one and the batch dimension is the outermost one. Moreover, dnnl::memory::format_tag::nc is an alias for dnnl::memory::format_tag::ab, because for CNN primitives the logical dimensions of activations tensors come in order: batch, channels, spatial. In other words, batch corresponds to the first logical dimension (
a
), and channels correspond to the second one (b
).
The following domain-specific notation applies to memory format tags:
'n'
denotes the mini-batch dimension'c'
denotes a channels dimensionWhen there are multiple channel dimensions (for example, in convolution weights tensor),
'i'
and'o'
denote dimensions of input and output channels'g'
denotes a groups dimension for convolution weights'd'
,'h'
, and'w'
denote spatial depth, height, and width respectively
Values:
-
enumerator undef#
Undefined memory format tag.
-
enumerator any#
Placeholder memory format tag. Used to instruct the primitive to select a format automatically.
-
enumerator a#
plain 1D tensor
-
enumerator ab#
plain 2D tensor
-
enumerator ba#
permuted 2D tensor
-
enumerator abc#
plain 3D tensor
-
enumerator acb#
permuted 3D tensor
-
enumerator bac#
permuted 3D tensor
-
enumerator bca#
permuted 3D tensor
-
enumerator cba#
permuted 3D tensor
-
enumerator abcd#
plain 4D tensor
-
enumerator abdc#
permuted 4D tensor
-
enumerator acdb#
permuted 4D tensor
-
enumerator bacd#
permuted 4D tensor
-
enumerator bcda#
permuted 4D tensor
-
enumerator cdba#
permuted 4D tensor
-
enumerator dcab#
permuted 4D tensor
-
enumerator abcde#
plain 5D tensor
-
enumerator abdec#
permuted 5D tensor
-
enumerator acbde#
permuted 5D tensor
-
enumerator acdeb#
permuted 5D tensor
-
enumerator bacde#
permuted 5D tensor
-
enumerator bcdea#
permuted 5D tensor
-
enumerator cdeba#
permuted 5D tensor
-
enumerator decab#
permuted 5D tensor
-
enumerator abcdef#
plain 6D tensor
-
enumerator acbdef#
plain 6D tensor
-
enumerator defcab#
plain 6D tensor
-
enumerator x#
1D tensor; an alias for dnnl::memory::format_tag::a
-
enumerator nc#
2D CNN activations tensor; an alias for dnnl::memory::format_tag::ab
-
enumerator cn#
2D CNN activations tensor; an alias for dnnl::memory::format_tag::ba
-
enumerator tn#
2D RNN statistics tensor; an alias for dnnl::memory::format_tag::ab
-
enumerator nt#
2D RNN statistics tensor; an alias for dnnl::memory::format_tag::ba
-
enumerator ncw#
3D CNN activations tensor; an alias for dnnl::memory::format_tag::abc
-
enumerator nwc#
3D CNN activations tensor; an alias for dnnl::memory::format_tag::acb
-
enumerator nchw#
4D CNN activations tensor; an alias for dnnl::memory::format_tag::abcd
-
enumerator nhwc#
4D CNN activations tensor; an alias for dnnl::memory::format_tag::acdb
-
enumerator chwn#
4D CNN activations tensor; an alias for dnnl::memory::format_tag::bcda
-
enumerator ncdhw#
5D CNN activations tensor; an alias for dnnl::memory::format_tag::abcde
-
enumerator ndhwc#
5D CNN activations tensor; an alias for dnnl::memory::format_tag::acdeb
-
enumerator oi#
2D CNN weights tensor; an alias for dnnl::memory::format_tag::ab
-
enumerator io#
2D CNN weights tensor; an alias for dnnl::memory::format_tag::ba
-
enumerator oiw#
3D CNN weights tensor; an alias for dnnl::memory::format_tag::abc
-
enumerator owi#
3D CNN weights tensor; an alias for dnnl::memory::format_tag::acb
-
enumerator wio#
3D CNN weights tensor; an alias for dnnl::memory::format_tag::cba
-
enumerator iwo#
3D CNN weights tensor; an alias for dnnl::memory::format_tag::bca
-
enumerator oihw#
4D CNN weights tensor; an alias for dnnl::memory::format_tag::abcd
-
enumerator hwio#
4D CNN weights tensor; an alias for dnnl::memory::format_tag::cdba
-
enumerator ohwi#
4D CNN weights tensor; an alias for dnnl::memory::format_tag::acdb
-
enumerator ihwo#
4D CNN weights tensor; an alias for dnnl::memory::format_tag::bcda
-
enumerator iohw#
4D CNN weights tensor; an alias for dnnl::memory::format_tag::bacd
-
enumerator oidhw#
5D CNN weights tensor; an alias for dnnl::memory::format_tag::abcde
-
enumerator dhwio#
5D CNN weights tensor; an alias for dnnl::memory::format_tag::cdeba
-
enumerator odhwi#
5D CNN weights tensor; an alias for dnnl::memory::format_tag::acdeb
-
enumerator iodhw#
5D CNN weights tensor; an alias for dnnl::memory::format_tag::bacde
-
enumerator idhwo#
5D CNN weights tensor; an alias for dnnl::memory::format_tag::bcdea
-
enumerator goiw#
4D CNN weights tensor with groups; an alias for dnnl::memory::format_tag::abcd
-
enumerator wigo#
4D CNN weights tensor with groups; an alias for dnnl::memory::format_tag::dcab
-
enumerator goihw#
5D CNN weights tensor with groups; an alias for dnnl::memory::format_tag::abcde
-
enumerator hwigo#
5D CNN weights tensor with groups; an alias for dnnl::memory::format_tag::decab
-
enumerator giohw#
5D CNN weights tensor with groups; an alias for dnnl::memory::format_tag::acbde
-
enumerator goidhw#
6D CNN weights tensor with groups; an alias for dnnl::memory::format_tag::abcdef
-
enumerator giodhw#
6D CNN weights tensor with groups; an alias for dnnl::memory::format_tag::abcdef
-
enumerator dhwigo#
6D CNN weights tensor with groups; an alias for dnnl::memory::format_tag::defcab
-
enumerator tnc#
3D RNN data tensor in the format (seq_length, batch, input channels).
-
enumerator ntc#
3D RNN data tensor in the format (batch, seq_length, input channels).
-
enumerator ldnc#
4D RNN states tensor in the format (num_layers, num_directions, batch, state channels).
-
enumerator ldigo#
5D RNN weights tensor in the format (num_layers, num_directions, input_channels, num_gates, output_channels).
For LSTM cells, the gates order is input, forget, candidate and output gate.
For GRU cells, the gates order is update, reset and output gate.
-
enumerator ldgoi#
5D RNN weights tensor in the format (num_layers, num_directions, num_gates, output_channels, input_channels).
For LSTM cells, the gates order is input, forget, candidate and output gate.
For GRU cells, the gates order is update, reset and output gate.
-
enumerator ldio#
4D LSTM projection tensor in the format (num_layers, num_directions, num_channels_in_hidden_state, num_channels_in_recurrent_projection).
-
enumerator ldoi#
4D LSTM projection tensor in the format (num_layers, num_directions, num_channels_in_recurrent_projection, num_channels_in_hidden_state).
-
enumerator ldgo#
4D RNN bias tensor in the format (num_layers, num_directions, num_gates, output_channels).
For LSTM cells, the gates order is input, forget, candidate and output gate.
For GRU cells, the gates order is update, reset and output gate.