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from_arrayd

Function from_arrayd 

Source
pub fn from_arrayd(array: ArrayD<f64>) -> Result<Tensor, MattenNdarrayError>
Expand description

Converts an ndarray::ArrayD<f64> into a Tensor.

Conversion preserves logical element order: an ArrayD may be in non-standard (transposed / sliced / non-standard-stride) layout, so the raw backing buffer is not read directly — that would silently transpose the data. A shape with any zero-length axis is rejected, because core matten does not support zero-sized dimensions.

use matten_ndarray::from_arrayd;
use ndarray::{ArrayD, IxDyn};

// A transposed (non-standard-layout) array still converts by logical order.
let a = ArrayD::from_shape_vec(IxDyn(&[2, 3]), vec![1., 2., 3., 4., 5., 6.]).unwrap();
let t = from_arrayd(a.t().to_owned()).unwrap(); // logical shape [3, 2]
assert_eq!(t.shape(), &[3, 2]);
assert_eq!(t.as_slice(), &[1.0, 4.0, 2.0, 5.0, 3.0, 6.0]);
Examples found in repository?
examples/from_arrayd.rs (line 13)
10fn main() {
11    let arr = ArrayD::from_shape_vec(IxDyn(&[2, 3]), vec![1., 2., 3., 4., 5., 6.]).unwrap();
12
13    let t = from_arrayd(arr.clone()).expect("contiguous converts");
14    println!(
15        "from contiguous: shape {:?} data {:?}",
16        t.shape(),
17        t.as_slice()
18    );
19
20    // Transposed input is non-standard layout; conversion preserves logical order.
21    let tt = from_arrayd(arr.t().to_owned()).expect("transposed converts");
22    println!(
23        "from transposed: shape {:?} data {:?}",
24        tt.shape(),
25        tt.as_slice()
26    );
27    assert_eq!(tt.shape(), &[3, 2]);
28    assert_eq!(tt.as_slice(), &[1.0, 4.0, 2.0, 5.0, 3.0, 6.0]);
29    println!("ok");
30}