Update relevant entries in 'var' and 'accum' according to the momentum scheme.
tf.raw_ops.SparseApplyMomentum(
var,
accum,
lr,
grad,
indices,
momentum,
use_locking=False,
use_nesterov=False,
name=None
)
Set use_nesterov = True if you want to use Nesterov momentum.
That is for rows we have grad for, we update var and accum as follows:
\[accum = accum * momentum + grad\]
\[var -= lr * accum\]
Args |
var
|
A mutable Tensor. Must be one of the following types: float32, float64, int32, uint8, int16, int8, complex64, int64, qint8, quint8, qint32, bfloat16, qint16, quint16, uint16, complex128, half, uint32, uint64.
Should be from a Variable().
|
accum
|
A mutable Tensor. Must have the same type as var.
Should be from a Variable().
|
lr
|
A Tensor. Must have the same type as var.
Learning rate. Must be a scalar.
|
grad
|
A Tensor. Must have the same type as var. The gradient.
|
indices
|
A Tensor. Must be one of the following types: int32, int64.
A vector of indices into the first dimension of var and accum.
|
momentum
|
A Tensor. Must have the same type as var.
Momentum. Must be a scalar.
|
use_locking
|
An optional bool. Defaults to False.
If True, updating of the var and accum tensors will be protected
by a lock; otherwise the behavior is undefined, but may exhibit less
contention.
|
use_nesterov
|
An optional bool. Defaults to False.
If True, the tensor passed to compute grad will be
var - lr * momentum * accum, so in the end, the var you get is actually
var - lr * momentum * accum.
|
name
|
A name for the operation (optional).
|
Returns |
A mutable Tensor. Has the same type as var.
|