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nquesada authored Sep 23, 2024
2 parents bfc08e2 + 087743d commit 3018ab3
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4 changes: 4 additions & 0 deletions .github/CHANGELOG.md
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Expand Up @@ -17,6 +17,10 @@

### Bug fixes

* Add the calculation method of `takagi` when the matrix is diagonal. [(#394)](https://github.com/XanaduAI/thewalrus/pull/394)

* Add the lines for avoiding the comparison of np.ndarray and list. [(#395)](https://github.com/XanaduAI/thewalrus/pull/395)

### Documentation

### Contributors
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17 changes: 16 additions & 1 deletion thewalrus/decompositions.py
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Expand Up @@ -152,7 +152,8 @@ def blochmessiah(S):
return O, D, Q


def takagi(A, svd_order=True):
def takagi(A, svd_order=True, rtol=1e-16):
# pylint: disable=too-many-return-statements
r"""Autonne-Takagi decomposition of a complex symmetric (not Hermitian!) matrix.
Note that the input matrix is internally symmetrized by taking its upper triangular part.
If the input matrix is indeed symmetric this leaves it unchanged.
Expand All @@ -162,6 +163,7 @@ def takagi(A, svd_order=True):
Args:
A (array): square, symmetric matrix
svd_order (boolean): whether to return result by ordering the singular values of ``A`` in descending (``True``) or ascending (``False``) order.
rtol (float): the relative tolerance parameter used in ``np.allclose`` when judging if the matrix is diagonal or not. Default to 1e-16.
Returns:
tuple[array, array]: (r, U), where r are the singular values,
Expand Down Expand Up @@ -202,6 +204,19 @@ def takagi(A, svd_order=True):
vals, U = takagi(Amr, svd_order=svd_order)
return vals, U * np.exp(1j * phi / 2)

# If the matrix is diagonal, Takagi decomposition is easy
if np.allclose(A, np.diag(np.diag(A)), rtol=rtol):
d = np.diag(A)
l = np.abs(d)
idx = np.argsort(l)
d = d[idx]
l = l[idx]
U = np.diag(np.exp(1j * 0.5 * np.angle(d)))
U = U[::-1, :]
if svd_order:
return l[::-1], U[:, ::-1]
return l, U

u, d, v = np.linalg.svd(A)
U = u @ sqrtm((v @ np.conjugate(u)).T)
if svd_order is False:
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3 changes: 3 additions & 0 deletions thewalrus/symplectic.py
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Expand Up @@ -171,6 +171,9 @@ def reduced_state(mu, cov, modes):
"""
N = len(mu) // 2

if type(modes) == np.ndarray:
modes = modes.tolist()

if modes == list(range(N)):
# reduced state is full state
return mu, cov
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29 changes: 29 additions & 0 deletions thewalrus/tests/test_decompositions.py
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Expand Up @@ -324,6 +324,35 @@ def test_takagi_error():
takagi(A)


@pytest.mark.parametrize("svd_order", [True, False])
def test_takagi_diagonal_matrix(svd_order):
"""Test the takagi decomposition works well for a specific matrix that was not decomposed accurately in a previous implementation.
See more info in PR #393 (https://github.com/XanaduAI/thewalrus/pull/393)"""
A = np.array(
[
[
-8.4509484628125742e-01 + 1.0349426984742664e-16j,
6.3637197288239186e-17 - 7.4398922703555097e-33j,
2.6734481396039929e-32 + 1.7155650257063576e-35j,
],
[
6.3637197288239186e-17 - 7.4398922703555097e-33j,
-2.0594021562561332e-01 + 2.2863956908382538e-17j,
-5.8325863096557049e-17 + 1.6949718400585382e-18j,
],
[
2.6734481396039929e-32 + 1.7155650257063576e-35j,
-5.8325863096557049e-17 + 1.6949718400585382e-18j,
4.4171453199503476e-02 + 1.0022350742842835e-02j,
],
]
)
d, U = takagi(A, svd_order=svd_order)
assert np.allclose(A, U @ np.diag(d) @ U.T)
assert np.allclose(U @ np.conjugate(U).T, np.eye(len(U)))
assert np.all(d >= 0)


def test_real_degenerate():
"""Verify that the Takagi decomposition returns a matrix that is unitary and results in a
correct decomposition when input a real but highly degenerate matrix. This test uses the
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9 changes: 9 additions & 0 deletions thewalrus/tests/test_symplectic.py
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Expand Up @@ -367,6 +367,15 @@ def test_tms(self, hbar, tol):
assert np.allclose(res[0], expected[0], atol=tol, rtol=0)
assert np.allclose(res[1], expected[1], atol=tol, rtol=0)

def test_ndarray(self, hbar, tol):
"""Test numpy.ndarray in the third argument of `reduced_state` is converted to list correctly"""
mu, cov = symplectic.vacuum_state(4, hbar=hbar)
res = symplectic.reduced_state(mu, cov, np.array([0, 1, 2, 3]))
expected = np.zeros([8]), np.identity(8) * hbar / 2

assert np.allclose(res[0], expected[0], atol=tol, rtol=0)
assert np.allclose(res[1], expected[1], atol=tol, rtol=0)


class TestLossChannel:
"""Tests for the loss channel"""
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