BatchNormForwardTraining#
BatchNormForwardTraining operation performs batch normalization at training mode.
Mean and variance are computed at runtime, the following formulas are used:
\(\mu(c) = \frac{1}{NHW} \sum\limits_{nhw} \src(n, c, h, w)_{}\),
\(\sigma^2(c) = \frac{1}{NHW} \sum\limits_{nhw} {}_{} (\src(n, c, h, w) - \mu(c))^2\).
Operation Attributes#
|
Description |
Value Type |
|
|
---|---|---|---|---|
A number to be added to the variance to avoid division by zero |
f32 |
A positive f32 value |
Required |
|
A number to be used to calculate running mean and running variance |
f32 |
A positive f32 value |
Optional |
|
Controls
how to
interpret
the shape
of |
string |
|
Optional |
Execution Arguments#
The inputs and outputs must be provided according to the below index order when constructing an operation.
Inputs#
Index |
Argument Name |
Required or Optional |
---|---|---|
0 |
|
Required |
1 |
|
Required |
2 |
|
Required |
3 |
|
Optional |
4 |
|
Optional |
@note gamma
and beta
should be either both provided or neither
provided.
Outputs#
Index |
Argument Name |
Required or Optional |
---|---|---|
0 |
|
Required |
1 |
|
Required |
2 |
|
Required |
3 |
|
Required |
4 |
|
Required |
Supported Data Types#
BatchNormInference operation supports the following data type combinations.
Src / Dst |
Gamma / Beta / Mean / Variance / Batch_mean / Batch_variance / Running_mean / Running_variance |
---|---|
f32 |
f32 |
bf16 |
f32, bf16 |
f16 |
f32 |