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  1. Framework
  2. Operators
  3. Tensor

tensor.asin

#tensor.asin

    fn asin(self: @Tensor<T>) -> Tensor<T>;

Computes the arcsine (inverse of sine) of all elements of the input tensor.

Args

  • self(@Tensor<T>) - The input tensor.

Returns

A new Tensor<T> of the same shape as the input tensor with the arcsine value of all elements in the input tensor.

Type Constraints

Constrain input and output types to fixed point tensors.

Example

use core::array::{ArrayTrait, SpanTrait};

use orion::operators::tensor::{TensorTrait, Tensor, FP8x23Tensor};
use orion::numbers::{FixedTrait, FP8x23};

fn asin_example() -> Tensor<FP8x23> {
    let tensor = TensorTrait::<FP8x23>::new(
        shape: array![2].span(),
        data: array![FixedTrait::new_unscaled(0, false), FixedTrait::new_unscaled(1, false),]
            .span(),
    );

    return tensor.asin();
}
>>> [0, 13176794]
// The fixed point representation of
// [0, 1.5707...]
Previoustensor.cosNexttensor.flatten

Last updated 1 year ago

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