Compute the cumulative product of the tensor x
along axis
.
tf.raw_ops.CumulativeLogsumexp(
x, axis, exclusive=False, reverse=False, name=None
)
By default, this op performs an inclusive cumulative log-sum-exp, which means that the first element of the input is identical to the first element of the output:
tf.math.cumulative_logsumexp([a, b, c]) # => [a, log(exp(a) + exp(b)), log(exp(a) + exp(b) + exp(c))]
By setting the exclusive
kwarg to True
, an exclusive cumulative log-sum-exp is
performed instead:
tf.cumulative_logsumexp([a, b, c], exclusive=True) # => [-inf, a, log(exp(a) * exp(b))]
Note that the neutral element of the log-sum-exp operation is -inf
,
however, for performance reasons, the minimal value representable by the
floating point type is used instead.
By setting the reverse
kwarg to True
, the cumulative log-sum-exp is performed in the
opposite direction.
Returns | |
---|---|
A Tensor . Has the same type as x .
|