mindspore.ops.Gamma
- class mindspore.ops.Gamma(seed=0, seed2=0)[source]
Produces random positive floating-point values x, distributed according to probability density function:
\[\text{P}(x|α,β) = \frac{\exp(-x/β)}{{β^α}\cdot{\Gamma(α)}}\cdot{x^{α-1}}\]Note
Random seed: A set of regular random numbers can be obtained through some complex mathematical algorithms, and the random seed is the initial value of this random number. If the random seed is the same, the random number obtained will not change.
Global random seed and operator-level random seed are not set: Use the default value as the random seed.
Global random seed is set, but operator-level random seed is not set: A global random seed will splice with a randomly generated seed.
Global random seed is not set, operator-level random seed is set: The default global random seed is used, and splices with the operator-level random seed.
Both Global random and operator-level random seed are set: The global random seed will splice with the operator-level random seed.
- Parameters
- Inputs:
shape (tuple) - The shape of random tensor to be generated. Only constant value is allowed.
alpha (Tensor) - α is the shape parameter of Gamma distribution, which mainly determines the shape of the curve. It must be greater than 0. The data type is float32.
beta (Tensor) - β is the inverse scale parameter of the Gamma distribution, which mainly determines how steep the curve is. It must be greater than 0. The data type is float32.
- Outputs:
Tensor. The shape must be the broadcasted shape of Input “shape” and shapes of alpha and beta. The dtype is float32.
- Raises
TypeError – If data type of seed or seed2 is not int.
TypeError – If alpha or beta is not a Tensor.
TypeError – If data type of alpha or beta is not float32.
ValueError – If shape is not a constant value.
- Supported Platforms:
Ascend
Examples
>>> shape = (3, 1, 2) >>> alpha = Tensor(np.array([[3, 4], [5, 6]]), mstype.float32) >>> beta = Tensor(np.array([1.0]), mstype.float32) >>> gamma = ops.Gamma(seed=3) >>> output = gamma(shape, alpha, beta) >>> result = output.shape >>> print(result) (3, 2, 2)