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Test integral variant for Regge/HHJ #6039

Test integral variant for Regge/HHJ

Test integral variant for Regge/HHJ #6039

Triggered via pull request October 24, 2024 14:12
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12 errors
test_interpolation_from_parent.test_tensor_function_interpolation[shiftedmesh-mesh-100-coords-FunctionSpace(Regge2)]: tests/vertexonly/test_interpolation_from_parent.py#L282
AssertionError: assert False + where False = <function allclose at 0x7f9dd61272b0>(array([[[ 1.43674311e-01-5.75803892e-18j,\n 1.24372901e-01-3.09334946e-18j],\n [ 1.24372901e-01-3.09334946e-18j,\n 1.06107460e-01+1.42886668e-19j]],\n\n [[ 1.00013901e-02+8.09161872e-20j,\n 1.49278171e-02-2.75899387e-18j],\n [ 1.49278171e-02-2.75899387e-18j,\n 1.51586555e-01-5.27523919e-18j]],\n\n [[ 3.31461468e-02+1.28190266e-19j,\n 5.06537791e-02+4.50552716e-19j],\n [ 5.06537791e-02+4.50552716e-19j,\n 7.79804048e-02-3.61111865e-33j]],\n\n [[ 6.27816587e-03+3.62577855e-20j,\n 1.76284326e-02+3.39829104e-19j],\n [ 1.76284326e-02+3.39829104e-19j,\n 5.86353656e-02-6.01853108e-34j]],\n\n [[ 2.13087119e-01+1.91452984e-19j,\n -4.93939794e-02+8.52344267e-18j],\n [-4.93939794e-02+8.52344267e-18j,\n 1.06398469e-02-6.01853108e-34j]],\n\n [[ 6.76448476e-03+1.22215946e-19j,\n 1.43758718e-02+4.29554664e-19j],\n [ 1.43758718e-02+4.29554664e-19j,\n 3.14640065e-02-2.40741243e-33j]],\n\n [[ 2.27120711e-01+1.30772302e-19j,\n -1.27013888e-01+8.12009194e-18j],\n [-1.27013888e-01+8.12009194e-18j,\n 4.83806987e-02+0.00000000e+00... [[ 9.80934964e-03-7.93934480e-19j,\n -2.61702863e-02-5.44361726e-19j],\n [-2.61702863e-02-5.44361726e-19j,\n 5.63826646e-02+9.82629904e-20j]],\n\n [[ 7.16363728e-02-2.00107500e-18j,\n -3.19287889e-02-1.21589899e-18j],\n [-3.19287889e-02-1.21589899e-18j,\n 6.45009799e-03+1.43574330e-19j]],\n\n [[ 1.71234764e-02+1.07516490e-19j,\n 2.85390569e-02+6.29817015e-20j],\n [ 2.85390569e-02+6.29817015e-20j,\n 5.17205577e-02+1.20370622e-33j]],\n\n [[ 1.76037448e-01-6.54663493e-18j,\n -1.03851951e-02-3.46211306e-18j],\n [-1.03851951e-02-3.46211306e-18j,\n 1.24296098e-04+1.25863732e-19j]],\n\n [[ 1.84868507e-02+1.04269169e-19j,\n 4.11319594e-02+3.66476789e-19j],\n [ 4.11319594e-02+3.66476789e-19j,\n 1.07929325e-01-4.81482486e-33j]],\n\n [[ 4.79679212e-02+1.37299416e-20j,\n 8.39663046e-02+8.04281359e-21j],\n [ 8.39663046e-02+8.04281359e-21j,\n 1.39923807e-01+3.00926554e-34j]],\n\n [[ 3.13298757e-01-7.72759155e-19j,\n 1.87898647e-01-4.08664847e-19j],\n [ 1.87898647e-01-4.08664847e-19j,\n 1.08454218e-01+1.48568466e-20j]]]), array([[[ 1.28112370e-01-0.j, 1.16591930e-01-0.j],\n [ 1.16591930e-01-0.j, 1.06107460e-01-0.j]],\n\n [[ 1.00013901e-02-0.j, 4.62988588e-02-0.j],\n [ 4.62988588e-02-0.j, 2.14328639e-01-0.j]],\n\n [[ 3.31461468e-02-0.j, 5.08404361e-02-0.j],\n [ 5.08404361e-02-0.j, 7.79804048e-02-0.j]],\n\n [[ 6.27816587e-03-0.j, 1.91865200e-02-0.j],\n [ 1.91865200e-02-0.j, 5.86353656e-02-0.j]],\n\n [[ 2.13087119e-01-0.j, -4.76152739e-02+0.j],\n [-4.76152739e-02+0.j, 1.06398469e-02+0.j]],\n\n [[ 6.76448476e-03-0.j, 1.45889613e-02-0.j],\n [ 1.45889613e-02-0.j, 3.14640065e-02-0.j]],\n\n [[ 2.27120711e-01-0.j, -1.04824895e-01+0.j],\n [-1.04824895e-01+0.j, 4.83806987e-02+0.j]],\n\n [[ 4.30518717e-03+0.j, -1.70338262e-02+0.j],\n [-1.70338262e-02+0.j, 6.73957309e-02-0.j]],\n\n [[ 8.51567131e-03+0.j, -2.42277159e-02+0.j],\n [-2.42277159e-02+0.j, 6.89296471e-02-0.j]],\n\n [[ 5.24647599e-02-0.j, -2.21183142e-02+0.j],\n [-2.21183142e-02+0.j, 9.32473200e-03+0.j]],\n\n [[ 6.21136065e-03+0.j, -1.05306696e-02+0.j],\n [-1.05306696e-02+0.j, 1.78535764e-02-0.j]],\n\n [[ 9.88263557e-02+0.j, -1...e-01+0.j, 1.30802302e-01-0.j]],\n\n [[ 2.04039612e-03-0.j, -3.93571046e-04+0.j],\n [-3.93571046e-04+0.j, 7.59157337e-05+0.j]],\n\n [[ 1.47411213e-01-0.j, -1.41610458e-01+0.j],\n [-1.41610458e-01+0.j, 1.36037967e-01+0.j]],\n\n [[ 2.98657995e-01+0.j, -1.70571807e-01+0.j],\n [-1.70571807e-01+0.j, 9.74182567e-02-0.j]],\n\n [[ 2.93843368e-01+0.j, -2.12126270e-01+0.j],\n [-2.12126270e-01+0.j, 1.53134491e-01-0.j]],\n\n [[ 1.14137763e-02-0.j, -2.53680729e-02+0.j],\n [-2.53680729e-02+0.j, 5.63826646e-02+0.j]],\n\n [[ 8.78779331e-02+0.j, -2.38080087e-02+0.j],\n [-2.38080087e-02+0.j, 6.45009799e-03-0.j]],\n\n [[ 1.71234764e-02+0.j, 2.97596329e-02+0.j],\n [ 2.97596329e-02+0.j, 5.17205577e-02+0.j]],\n\n [[ 1.87161402e-01+0.j, -4.82321801e-03+0.j],\n [-4.82321801e-03+0.j, 1.24296098e-04-0.j]],\n\n [[ 1.84868507e-02+0.j, 4.46684825e-02+0.j],\n [ 4.46684825e-02+0.j, 1.07929325e-01+0.j]],\n\n [[ 4.79679212e-02+0.j, 8.19259064e-02+0.j],\n [ 8.19259064e-02+0.j, 1.39923807e-01+0.j]],\n\n [[ 2.95606040e-01+0.j, 1.79052288e-01+0.j],\n [ 1.79052288e-01+0.j, 1.08454218e-01+0.j]]])) + where <function allclose at 0x7f9dd61272b0> = np.allclose + and array([[[ 1.43674311e-01-5.75803892e-18j,\n 1.24372901e-01-3.09334946e-18j],\n [ 1.24372901e-01-3.09334946e-18j,\n 1.06107460e-01+1.42886668e-19j]],\n\n [[ 1.00013901e-02+8.09161872e-20j,\n 1.49278171e-02-2.75899387e-18j],\n [ 1.49278171e-02-2.75899387e-18j,\n 1.51586555e-01-5.27523919e-18j]],\n\n [[ 3.31461468e-02+1.28190266e-19j,\n 5.06537791e-02+4.50552716e-19j],\n [ 5.06537791e-02+4.50552716e-19j,\n 7.79804048e-02-3.61111865e-33j]],\n\n [[ 6.27816587e-03+3.62577855e-20j,\n 1.76284326e-02+3.39829104e-19j],\n [ 1.76284326e-02+3.39829104e-19j,\n 5.86353656e-02-6.01853108e-34j]],\n\n [[ 2.13087119e-01+1.91452984e-19j,\n -4.93939794e-02+8.52344267e-18j],\n [-4.93939794e-02+8.52344267e-18j,\n 1.06398469e-02-6.01853108e-34j]],\n\n [[ 6.76448476e-03+1.22215946e-19j,\n 1.43758718e-02+4.29554664e-19j],\n [ 1.43758718e-02+4.29554664e-19j,\n 3.14640065e-02-2.40741243e-33j]],\n\n [[ 2.27120711e-01+1.30772302e-19j,\n -1.27013888e-01+8.12009194e-18j],\n [-1.27013888e-01+8.12009194e-18j,\n 4.83806987e-02+0.00000000e+00... [[ 9.80934964e-03-7.93934480e-19j,\n -2.61702863e-02-5.44361726e-19j],\n [-2.61702863e-02-5.44361726e-19j,\n 5.63826646e-02+9.82629904e-20j]],\n\n [[ 7.16363728e-02-2.00107500e-18j,\n -3.19287889e-02-1.21589899e-18j],\n [-3.19287889e-02-1.21589899e-18j,\n 6.45009799e-03+1.43574330e-19j]],\n\n [[ 1.71234764e-02+1.07516490e-19j,\n 2.85390569e-02+6.29817015e-20j],\n [ 2.85390569e-02+6.29817015e-20j,\n 5.17205577e-02+1.20370622e-33j]],\n\n [[ 1.76037448e-01-6.54663493e-18j,\n -1.03851951e-02-3.46211306e-18j],\n [-1.03851951e-02-3.46211306e-18j,\n 1.24296098e-04+1.25863732e-19j]],\n\n [[ 1.84868507e-02+1.04269169e-19j,\n 4.11319594e-02+3.66476789e-19j],\n [ 4.11319594e-02+3.66476789e-19j,\n 1.07929325e-01-4.81482486e-33j]],\n\n [[ 4.79679212e-02+1.37299416e-20j,\n 8.39663046e-02+8.04281359e-21j],\n [ 8.39663046e-02+8.04281359e-21j,\n 1.39923807e-01+3.00926554e-34j]],\n\n [[ 3.13298757e-01-7.72759155e-19j,\n 1.87898647e-01-4.08664847e-19j],\n [ 1.87898647e-01-4.08664847e-19j,\n 1.08454218e-01+1.48568466e-20j]]]) = <built-in method reshape of numpy.ndarray object at 0x7f9d968ad0b0>((23, 2, 2)) + where <built-in method reshape of numpy.ndarray object at 0x7f9d968ad0b0> = array([[[ 1.43674311e-01-5.75803892e-18j,\n 1.24372901e-01-3.09334946e-18j],\n [ 1.24372901e-01-3.09334946e-18j,\n 1.06107460e-01+1.42886668e-19j]],\n\n [[ 1.00013901e-02+8.09161872e-20j,\n 1.49278171e-02-2.75899387e-18j],\n [ 1.49278171e-02-2.75899387e-18j,\n 1.51586555e-01-5.27523919e-18j]],\n\n [[ 3.31461468e-02+1.28190266e-19j,\n 5.06537791e-02+4.50552716e-19j],\n [ 5.06537791e-02+4.50552716e-19j,\n 7.79804048e-02-3.61111865e-33j]],\n\n [[ 6.27816587e-03+3.62577855e-20j,\n 1.76284326e-02+3.39829104e-19j],\n [ 1.76284326e-02+3.39829104e-19j,\n 5.86353656e-02-6.01853108e-34j]],\n\n [[ 2.13087119e-01+1.91452984e-19j,\n -4.93939794e-02+8.52344267e-18j],\n [-4.93939794e-02+8.52344267e-18j,\n 1.06398469e-02-6.01853108e-34j]],\n\n [[ 6.76448476e-03+1.22215946e-19j,\n 1.43758718e-02+4.29554664e-19j],\n [ 1.43758718e-02+4.29554664e-19j,\n 3.14640065e-02-2.40741243e-33j]],\n\n [[ 2.27120711e-01+1.30772302e-19j,\n -1.27013888e-01+8.12009194e-18j],\n [-1.27013888e-01+8.12009194e-18j,\n 4.83806987e-02+0.00000000e+00... [[ 9.80934964e-03-7.93934480e-19j,\n -2.61702863e-02-5.44361726e-19j],\n [-2.61702863e-02-5.44361726e-19j,\n 5.63826646e-02+9.82629904e-20j]],\n\n [[ 7.16363728e-02-2.00107500e-18j,\n -3.19287889e-02-1.21589899e-18j],\n [-3.19287889e-02-1.21589899e-18j,\n 6.45009799e-03+1.43574330e-19j]],\n\n [[ 1.71234764e-02+1.07516490e-19j,\n 2.85390569e-02+6.29817015e-20j],\n [ 2.85390569e-02+6.29817015e-20j,\n 5.17205577e-02+1.20370622e-33j]],\n\n [[ 1.76037448e-01-6.54663493e-18j,\n -1.03851951e-02-3.46211306e-18j],\n [-1.03851951e-02-3.46211306e-18j,\n 1.24296098e-04+1.25863732e-19j]],\n\n [[ 1.84868507e-02+1.04269169e-19j,\n 4.11319594e-02+3.66476789e-19j],\n [ 4.11319594e-02+3.66476789e-19j,\n 1.07929325e-01-4.81482486e-33j]],\n\n [[ 4.79679212e-02+1.37299416e-20j,\n 8.39663046e-02+8.04281359e-21j],\n [ 8.39663046e-02+8.04281359e-21j,\n 1.39923807e-01+3.00926554e-34j]],\n\n [[ 3.13298757e-01-7.72759155e-19j,\n 1.87898647e-01-4.08664847e-19j],\n [ 1.87898647e-01-4.08664847e-19j,\n 1.08454218e-01+1.48568466e-20j]]]).reshape + where array([[[ 1.43674311e-01-5.75803892e-18j,\n 1.24372901e-01-3.09334946e-18j],\n [ 1.24372901e-01-3.09334946e-18j,\n 1.06107460e-01+1.42886668e-19j]],\n\n [[ 1.00013901e-02+8.09161872e-20j,\n 1.49278171e-02-2.75899387e-18j],\n [ 1.49278171e-02-2.75899387e-18j,\n 1.51586555e-01-5.27523919e-18j]],\n\n [[ 3.31461468e-02+1.28190266e-19j,\n 5.06537791e-02+4.50552716e-19j],\n [ 5.06537791e-02+4.50552716e-19j,\n 7.79804048e-02-3.61111865e-33j]],\n\n [[ 6.27816587e-03+3.62577855e-20j,\n 1.76284326e-02+3.39829104e-19j],\n [ 1.76284326e-02+3.39829104e-19j,\n 5.86353656e-02-6.01853108e-34j]],\n\n [[ 2.13087119e-01+1.91452984e-19j,\n -4.93939794e-02+8.52344267e-18j],\n [-4.93939794e-02+8.52344267e-18j,\n 1.06398469e-02-6.01853108e-34j]],\n\n [[ 6.76448476e-03+1.22215946e-19j,\n 1.43758718e-02+4.29554664e-19j],\n [ 1.43758718e-02+4.29554664e-19j,\n 3.14640065e-02-2.40741243e-33j]],\n\n [[ 2.27120711e-01+1.30772302e-19j,\n -1.27013888e-01+8.12009194e-18j],\n [-1.27013888e-01+8.12009194e-18j,\n 4.83806987e-02+0.00000000e+00... [[ 9.80934964e-03-7.93934480e-19j,\n -2.61702863e-02-5.44361726e-19j],\n [-2.61702863e-02-5.44361726e-19j,\n 5.63826646e-02+9.82629904e-20j]],\n\n [[ 7.16363728e-02-2.00107500e-18j,\n -3.19287889e-02-1.21589899e-18j],\n [-3.19287889e-02-1.21589899e-18j,\n 6.45009799e-03+1.43574330e-19j]],\n\n [[ 1.71234764e-02+1.07516490e-19j,\n 2.85390569e-02+6.29817015e-20j],\n [ 2.85390569e-02+6.29817015e-20j,\n 5.17205577e-02+1.20370622e-33j]],\n\n [[ 1.76037448e-01-6.54663493e-18j,\n -1.03851951e-02-3.46211306e-18j],\n [-1.03851951e-02-3.46211306e-18j,\n 1.24296098e-04+1.25863732e-19j]],\n\n [[ 1.84868507e-02+1.04269169e-19j,\n 4.11319594e-02+3.66476789e-19j],\n [ 4.11319594e-02+3.66476789e-19j,\n 1.07929325e-01-4.81482486e-33j]],\n\n [[ 4.79679212e-02+1.37299416e-20j,\n 8.39663046e-02+8.04281359e-21j],\n [ 8.39663046e-02+8.04281359e-21j,\n 1.39923807e-01+3.00926554e-34j]],\n\n [[ 3.13298757e-01-7.72759155e-19j,\n 1.87898647e-01-4.08664847e-19j],\n [ 1.87898647e-01-4.08664847e-19j,\n 1.08454218e-01+1.48568466e-20j]]]) = Dat(DataSet(Set((np.int64(23), np.int64(23), np.int64(23)), 'set_#x7f9d96beaa20'), (2, 2), 'None_nodes_dset'), None, dtype('complex128'), 'function_3268').data_ro + where Dat(DataSet(Set((np.int64(23), np.int64(23), np.int64(23)), 'set_#x7f9d96beaa20'), (2, 2), 'None_nodes_dset'), None, dtype('complex128'), 'function_3268') = Coefficient(WithGeometry(FunctionSpace(<firedrake.mesh.VertexOnlyMeshTopology object at 0x7f9d96a52ab0>, TensorElement(FiniteElement('Discontinuous Lagrange', vertex, 0), shape=(2, 2), symmetry={}), name=None), Mesh(VectorElement(FiniteElement('Discontinuous Lagrange', Cell(vertex, 2), 0), dim=2), 3262)), 5884).dat + and (23, 2, 2) = array([[[ 1.28112370e-01-0.j, 1.16591930e-01-0.j],\n [ 1.16591930e-01-0.j, 1.06107460e-01-0.j]],\n\n [[ 1.00013901e-02-0.j, 4.62988588e-02-0.j],\n [ 4.62988588e-02-0.j, 2.14328639e-01-0.j]],\n\n [[ 3.31461468e-02-0.j, 5.08404361e-02-0.j],\n [ 5.08404361e-02-0.j, 7.79804048e-02-0.j]],\n\n [[ 6.27816587e-03-0.j, 1.91865200e-02-0.j],\n [ 1.91865200e-02-0.j, 5.86353656e-02-0.j]],\n\n [[ 2.13087119e-01-0.j, -4.76152739e-02+0.j],\n [-4.76152739e-02+0.j, 1.06398469e-02+0.j]],\n\n [[ 6.76448476e-03-0.j, 1.45889613e-02-0.j],\n [ 1.45889613e-02-0.j, 3.14640065e-02-0.j]],\n\n [[ 2.27120711e-01-0.j, -1.04824895e-01+0.j],\n [-1.04824895e-01+0.j, 4.83806987e-02+0.j]],\n\n [[ 4.30518717e-03+0.j, -1.70338262e-02+0.j],\n [-1.70338262e-02+0.j, 6.73957309e-02-0.j]],\n\n [[ 8.51567131e-03+0.j, -2.42277159e-02+0.j],\n [-2.42277159e-02+0.j, 6.89296471e-02-0.j]],\n\n [[ 5.24647599e-02-0.j, -2.21183142e-02+0.j],\n [-2.21183142e-02+0.j, 9.32473200e-03+0.j]],\n\n [[ 6.21136065e-03+0.j, -1.05306696e-02+0.j],\n [-1.05306696e-02+0.j, 1.78535764e-02-0.j]],\n\n [[ 9.88263557e-02+0.j, -1...e-01+0.j, 1.30802302e-01-0.j]],\n\n [[ 2.04039612e-03-0.j, -3.93571046e-04+0.j],\n [-3.93571046e-04+0.j, 7.59157337e-05+0.j]],\n\n [[ 1.47411213e-01-0.j, -1.41610458e-01+0.j],\n [-1.41610458e-01+0.j, 1.36037967e-01+0.j]],\n\n [[ 2.98657995e-01+0.j, -1.70571807e-01+0.j],\n [-1.70571807e-01+0.j, 9.74182567e-02-0.j]],\n\n [[ 2.93843368e-01+0.j, -2.12126270e-01+0.j],\n [-2.12126270e-01+0.j, 1.53134491e-01-0.j]],\n\n [[ 1.14137763e-02-0.j, -2.53680729e-02+0.j],\n [-2.53680729e-02+0.j, 5.63826646e-02+0.j]],\n\n [[ 8.78779331e-02+0.j, -2.38080087e-02+0.j],\n [-2.38080087e-02+0.j, 6.45009799e-03-0.j]],\n\n [[ 1.71234764e-02+0.j, 2.97596329e-02+0.j],\n [ 2.97596329e-02+0.j, 5.17205577e-02+0.j]],\n\n [[ 1.87161402e-01+0.j, -4.82321801e-03+0.j],\n [-4.82321801e-03+0.j, 1.24296098e-04-0.j]],\n\n [[ 1.84868507e-02+0.j, 4.46684825e-02+0.j],\n [ 4.46684825e-02+0.j, 1.07929325e-01+0.j]],\n\n [[ 4.79679212e-02+0.j, 8.19259064e-02+0.j],\n [ 8.19259064e-02+0.j, 1.39923807e-01+0.j]],\n\n [[ 2.95606040e-01+0.j, 1.79052288e-01+0.j],\n [ 1.79052288e-01+0.j, 1.08454218e-01+0.j]]]).shape
test_interpolate_cross_mesh.test_interpolate_cross_mesh[unitsquare_Regge_source]: tests/regression/test_interpolate_cross_mesh.py#L534
assert False + where False = <function allclose at 0x7fbc77d13370>([array([[0.32470945+6.96018591e-17j, 0.34433209+7.30015848e-17j],\n [0.34433209+7.30015848e-17j, 0.36 +8.93945504e-17j]]), array([[0.01 +4.84718323e-18j, 0.09404452+2.17009235e-17j],\n [0.09404452+2.17009235e-17j, 0.81 +1.99337700e-16j]]), array([[0.81 +2.00516594e-16j, 0.14692594+3.48837227e-17j],\n [0.14692594+3.48837227e-17j, 0.01 +3.46218195e-18j]]), array([[0.81+1.99668455e-16j, 0.81+1.97542332e-16j],\n [0.81+1.97542332e-16j, 0.81+1.98959748e-16j]]), array([[0.49240298+1.17834142e-16j, 0.44222054+1.05613601e-16j],\n [0.44222054+1.05613601e-16j, 0.43349056+1.06721321e-16j]]), array([[-9.41425959e-49+6.16297582e-33j, 4.13576073e-02+1.10845403e-17j],\n [ 4.13576073e-02+1.10845403e-17j, 4.68375339e-17+2.26786444e-18j]]), ...], array([[[0.3136 +0.j, 0.336 +0.j],\n [0.336 +0.j, 0.36 +0.j]],\n\n [[0.01 +0.j, 0.09 +0.j],\n [0.09 +0.j, 0.81 +0.j]],\n\n [[0.81 +0.j, 0.09 +0.j],\n [0.09 +0.j, 0.01 +0.j]],\n\n [[0.81 +0.j, 0.81 +0.j],\n [0.81 +0.j, 0.81 +0.j]],\n\n [[0.527076 +0.j, 0.4779984 +0.j],\n [0.4779984 +0.j, 0.43349056+0.j]],\n\n [[0. +0.j, 0. +0.j],\n [0. +0.j, 0. +0.j]],\n\n [[0. +0.j, 0. +0.j],\n [0. +0.j, 0.11111111+0.j]],\n\n [[0.25 +0.j, 0. +0.j],\n [0. +0.j, 0. +0.j]],\n\n [[0.25 +0.j, 0.16666667+0.j],\n [0.16666667+0.j, 0.11111111+0.j]],\n\n [[1. +0.j, 0. +0.j],\n [0. +0.j, 0. +0.j]],\n\n [[0. +0.j, 0. +0.j],\n [0. +0.j, 0.44444444+0.j]],\n\n [[1. +0.j, 0.33333333+0.j],\n [0.33333333+0.j, 0.11111111+0.j]],\n\n [[0.25 +0.j, 0.33333333+0.j],\n [0.33333333+0.j, 0.44444444+0.j]],\n\n [[0. +0.j, 0. +0.j],\n [0. +0.j, 1. +0.... [[0.44444444+0.j, 0.26666667+0.j],\n [0.26666667+0.j, 0.16 +0.j]],\n\n [[0. +0.j, 0. +0.j],\n [0. +0.j, 0.36 +0.j]],\n\n [[0.11111111+0.j, 0.2 +0.j],\n [0.2 +0.j, 0.36 +0.j]],\n\n [[1. +0.j, 0.4 +0.j],\n [0.4 +0.j, 0.16 +0.j]],\n\n [[0.44444444+0.j, 0.4 +0.j],\n [0.4 +0.j, 0.36 +0.j]],\n\n [[0. +0.j, 0. +0.j],\n [0. +0.j, 0.64 +0.j]],\n\n [[0.11111111+0.j, 0.26666667+0.j],\n [0.26666667+0.j, 0.64 +0.j]],\n\n [[1. +0.j, 0.6 +0.j],\n [0.6 +0.j, 0.36 +0.j]],\n\n [[0.44444444+0.j, 0.53333333+0.j],\n [0.53333333+0.j, 0.64 +0.j]],\n\n [[0. +0.j, 0. +0.j],\n [0. +0.j, 1. +0.j]],\n\n [[0.11111111+0.j, 0.33333333+0.j],\n [0.33333333+0.j, 1. +0.j]],\n\n [[1. +0.j, 0.8 +0.j],\n [0.8 +0.j, 0.64 +0.j]],\n\n [[0.44444444+0.j, 0.66666667+0.j],\n [0.66666667+0.j, 1. +0.j]],\n\n [[1. +0.j, 1. +0.j],\n [1. +0.j, 1. +0.j]]]), atol=1e-08) + where <function allclose at 0x7fbc77d13370> = np.allclose
test_interpolation_from_parent.test_tensor_function_interpolation_parallel[shiftedmesh-mesh-100-coords-FunctionSpace(Regge2)]: tests/vertexonly/test_interpolation_from_parent.py#L1
subprocess.CalledProcessError: Command '['mpiexec', '-n', '1', '-genv', '_PYTEST_MPI_CHILD_PROCESS', '1', '/__w/firedrake/firedrake_venv/bin/python', '-m', 'pytest', '--runxfail', '-s', '-q', '/__w/firedrake/firedrake/tests/vertexonly/test_interpolation_from_parent.py::test_tensor_function_interpolation_parallel[shiftedmesh-mesh-100-coords-FunctionSpace(Regge2)]', ':', '-n', '2', '/__w/firedrake/firedrake_venv/bin/python', '-m', 'pytest', '--runxfail', '-s', '-q', '/__w/firedrake/firedrake/tests/vertexonly/test_interpolation_from_parent.py::test_tensor_function_interpolation_parallel[shiftedmesh-mesh-100-coords-FunctionSpace(Regge2)]', '--tb=no', '--no-summary', '--no-header', '--disable-warnings', '--show-capture=no']' returned non-zero exit status 1.
test_interpolate_cross_mesh.test_interpolate_cross_mesh_parallel[unitsquare_Regge_source]: tests/regression/test_interpolate_cross_mesh.py#L1
subprocess.CalledProcessError: Command '['mpiexec', '-n', '1', '-genv', '_PYTEST_MPI_CHILD_PROCESS', '1', '/__w/firedrake/firedrake_venv/bin/python', '-m', 'pytest', '--runxfail', '-s', '-q', '/__w/firedrake/firedrake/tests/regression/test_interpolate_cross_mesh.py::test_interpolate_cross_mesh_parallel[unitsquare_Regge_source]', ':', '-n', '2', '/__w/firedrake/firedrake_venv/bin/python', '-m', 'pytest', '--runxfail', '-s', '-q', '/__w/firedrake/firedrake/tests/regression/test_interpolate_cross_mesh.py::test_interpolate_cross_mesh_parallel[unitsquare_Regge_source]', '--tb=no', '--no-summary', '--no-header', '--disable-warnings', '--show-capture=no']' returned non-zero exit status 1.
test_interpolate_vs_project.test_interpolate_vs_project[square-FunctionSpace(Regge1)]: tests/regression/test_interpolate_vs_project.py#L58
AssertionError: assert False + where False = <function allclose at 0x7fbc77d13370>(array([0.16666667+0.j, 0.16666667+0.j, 0. +0.j, 0.35355339+0.j,\n 0.20412415+0.j, 0. +0.j, 0. +0.j, 0.35355339+0.j,\n 0.20412415+0.j, 0. +0.j, 0.33333333+0.j, 0.33333333+0.j,\n 0.35355339+0.j, 0.20412415+0.j, 0.35355339+0.j, 0.20412415+0.j,\n 0.16666667+0.j, 0.66666667+0.j, 0. +0.j, 0. +0.j,\n 0. +0.j, 1.06066017+0.j, 0.20412415+0.j, 0.16666667+0.j,\n 0.66666667+0.j, 0. +0.j, 1.06066017+0.j, 0.20412415+0.j,\n 0. +0.j, 0. +0.j, 0. +0.j, 0.83333333+0.j,\n 0.33333333+0.j, 1.06066017+0.j, 0.20412415+0.j, 0.5 +0.j,\n 0.28867513+0.j, 0. +0.j, 0.83333333+0.j, 0.33333333+0.j,\n 0.5 +0.j, 0.28867513+0.j, 1.06066017+0.j, 0.20412415+0.j,\n 0.66666667+0.j, 0.66666667+0.j, 0. +0.j, 0. +0.j,\n 0. +0.j, 0. +0.j, 0.83333333+0.j, 0.83333333+0.j,\n 1.5 +0.j, 0.28867513+0.j, 1.06066017+0.j, 0.20412415+0.j]), array([ 1.67752016e-01+0.j, 1.67752017e-01+0.j, 4.34139936e-03+0.j,\n 3.55764540e-01+0.j, 2.08059306e-01+0.j, 2.60483878e-02+0.j,\n -1.44431658e-02+0.j, 3.51342246e-01+0.j, 2.05506089e-01+0.j,\n -2.01663799e-02+0.j, 3.32743962e-01+0.j, 3.15291240e-01+0.j,\n 3.52745428e-01+0.j, 2.05433671e-01+0.j, 3.98563338e-01+0.j,\n 2.28335034e-01+0.j, 1.77772838e-01+0.j, 6.65557825e-01+0.j,\n 7.77964870e-03+0.j, 1.11847071e-02+0.j, -1.96274994e-02+0.j,\n 1.06747413e+00+0.j, 2.05342092e-01+0.j, 1.66434174e-01+0.j,\n 6.66612260e-01+0.j, -3.95712710e-04+0.j, 1.06071258e+00+0.j,\n 2.04021134e-01+0.j, 4.98351674e-04+0.j, -8.23692783e-05+0.j,\n 2.56390623e-03+0.j, 8.33545034e-01+0.j, 3.34117401e-01+0.j,\n 1.06305001e+00+0.j, 2.01871348e-01+0.j, 4.93186044e-01+0.j,\n 2.89893082e-01+0.j, 1.54057892e-04+0.j, 8.33371977e-01+0.j,\n 3.33371805e-01+0.j, 4.99947592e-01+0.j, 2.88572124e-01+0.j,\n 1.06069796e+00+0.j, 2.04186949e-01+0.j, 6.67328444e-01+0.j,\n 6.66755900e-01+0.j, 9.29823912e-04+0.j, -1.07287349e-03+0.j,\n -1.25808343e-04+0.j, -2.52878707e-04+0.j, 8.33270113e-01+0.j,\n 8.33270113e-01+0.j, 1.49996148e+00+0.j, 2.88916374e-01+0.j,\n 1.06068741e+00+0.j, 2.04263275e-01+0.j]), atol=1e-06) + where <function allclose at 0x7fbc77d13370> = np.allclose + and array([0.16666667+0.j, 0.16666667+0.j, 0. +0.j, 0.35355339+0.j,\n 0.20412415+0.j, 0. +0.j, 0. +0.j, 0.35355339+0.j,\n 0.20412415+0.j, 0. +0.j, 0.33333333+0.j, 0.33333333+0.j,\n 0.35355339+0.j, 0.20412415+0.j, 0.35355339+0.j, 0.20412415+0.j,\n 0.16666667+0.j, 0.66666667+0.j, 0. +0.j, 0. +0.j,\n 0. +0.j, 1.06066017+0.j, 0.20412415+0.j, 0.16666667+0.j,\n 0.66666667+0.j, 0. +0.j, 1.06066017+0.j, 0.20412415+0.j,\n 0. +0.j, 0. +0.j, 0. +0.j, 0.83333333+0.j,\n 0.33333333+0.j, 1.06066017+0.j, 0.20412415+0.j, 0.5 +0.j,\n 0.28867513+0.j, 0. +0.j, 0.83333333+0.j, 0.33333333+0.j,\n 0.5 +0.j, 0.28867513+0.j, 1.06066017+0.j, 0.20412415+0.j,\n 0.66666667+0.j, 0.66666667+0.j, 0. +0.j, 0. +0.j,\n 0. +0.j, 0. +0.j, 0.83333333+0.j, 0.83333333+0.j,\n 1.5 +0.j, 0.28867513+0.j, 1.06066017+0.j, 0.20412415+0.j]) = Dat(DataSet(Set((np.int64(56), np.int64(56), np.int64(56)), 'set_#x7fbc2464e7e0'), (1,), 'None_nodes_dset'), None, dtype('complex128'), 'function_8336').data + where Dat(DataSet(Set((np.int64(56), np.int64(56), np.int64(56)), 'set_#x7fbc2464e7e0'), (1,), 'None_nodes_dset'), None, dtype('complex128'), 'function_8336') = Coefficient(WithGeometry(FunctionSpace(<firedrake.mesh.MeshTopology object at 0x7fbc2453f3b0>, FiniteElement('Regge', triangle, 1), name=None), Mesh(VectorElement(FiniteElement('Lagrange', triangle, 1), dim=2), 8293)), 14029).dat + and array([ 1.67752016e-01+0.j, 1.67752017e-01+0.j, 4.34139936e-03+0.j,\n 3.55764540e-01+0.j, 2.08059306e-01+0.j, 2.60483878e-02+0.j,\n -1.44431658e-02+0.j, 3.51342246e-01+0.j, 2.05506089e-01+0.j,\n -2.01663799e-02+0.j, 3.32743962e-01+0.j, 3.15291240e-01+0.j,\n 3.52745428e-01+0.j, 2.05433671e-01+0.j, 3.98563338e-01+0.j,\n 2.28335034e-01+0.j, 1.77772838e-01+0.j, 6.65557825e-01+0.j,\n 7.77964870e-03+0.j, 1.11847071e-02+0.j, -1.96274994e-02+0.j,\n 1.06747413e+00+0.j, 2.05342092e-01+0.j, 1.66434174e-01+0.j,\n 6.66612260e-01+0.j, -3.95712710e-04+0.j, 1.06071258e+00+0.j,\n 2.04021134e-01+0.j, 4.98351674e-04+0.j, -8.23692783e-05+0.j,\n 2.56390623e-03+0.j, 8.33545034e-01+0.j, 3.34117401e-01+0.j,\n 1.06305001e+00+0.j, 2.01871348e-01+0.j, 4.93186044e-01+0.j,\n 2.89893082e-01+0.j, 1.54057892e-04+0.j, 8.33371977e-01+0.j,\n 3.33371805e-01+0.j, 4.99947592e-01+0.j, 2.88572124e-01+0.j,\n 1.06069796e+00+0.j, 2.04186949e-01+0.j, 6.67328444e-01+0.j,\n 6.66755900e-01+0.j, 9.29823912e-04+0.j, -1.07287349e-03+0.j,\n -1.25808343e-04+0.j, -2.52878707e-04+0.j, 8.33270113e-01+0.j,\n 8.33270113e-01+0.j, 1.49996148e+00+0.j, 2.88916374e-01+0.j,\n 1.06068741e+00+0.j, 2.04263275e-01+0.j]) = Dat(DataSet(Set((np.int64(56), np.int64(56), np.int64(56)), 'set_#x7fbc2464e7e0'), (1,), 'None_nodes_dset'), None, dtype('complex128'), 'function_8337').data + where Dat(DataSet(Set((np.int64(56), np.int64(56), np.int64(56)), 'set_#x7fbc2464e7e0'), (1,), 'None_nodes_dset'), None, dtype('complex128'), 'function_8337') = Coefficient(WithGeometry(FunctionSpace(<firedrake.mesh.MeshTopology object at 0x7fbc2453f3b0>, FiniteElement('Regge', triangle, 1), name=None), Mesh(VectorElement(FiniteElement('Lagrange', triangle, 1), dim=2), 8293)), 14031).dat
test_interpolate_vs_project.test_interpolate_vs_project[cube-FunctionSpace(Regge1)]: tests/regression/test_interpolate_vs_project.py#L58
AssertionError: assert False + where False = <function allclose at 0x7fbc77d13370>(array([ 3. +0.j, 0.83333333+0.j, 0.66666667+0.j, 3.33333333+0.j,\n 5.5 +0.j, 0.16666667+0.j, 0.83333333+0.j, 5. +0.j,\n 1.66666667+0.j, 1.44337567+0.j, 0.28867513+0.j, 3.46410162+0.j,\n 4.24264069+0.j, 0.81649658+0.j, 1.5 +0.j, -0.28867513+0.j,\n 1.06066017+0.j, 0.20412415+0.j, 7.4246212 +0.j, 1.83711731+0.j,\n 0.5 +0.j, 0.28867513+0.j, 4. +0.j, 1.15470054+0.j,\n 3. +0.j, 0.83333333+0.j, 0.66666667+0.j, 5. +0.j,\n 0.83333333+0.j, 1.66666667+0.j, 0.28867513+0.j, 1.44337567+0.j,\n 3.46410162+0.j, 1.06066017+0.j, 0.20412415+0.j, 1.5 +0.j,\n -0.28867513+0.j, 4. +0.j, -1.15470054+0.j, 5.5 +0.j,\n 2.33333333+0.j, 0.66666667+0.j, 0.83333333+0.j, 2. +0.j,\n 0.16666667+0.j, 3.46410162+0.j, 0.57735027+0.j, 1.15470054+0.j,\n 2.82842712+0.j, 0.81649658+0.j, 1.06066017+0.j, -0.20412415+0.j,\n 0.5 +0.j, 0.28867513+0.j, 2. +0.j, 0.16666667+0.j,\n 0.83333333+0.j, 0.28867513+0.j, 4.04145188+0.j, 6.92820323+0.j,\n 3.5 +0.j, 0.66666667+0.j, 0.83333333+0.j, 0.16666667+0.j... 4. +0.j, 1.66666667+0.j, 0.33333333+0.j, 3.5 +0.j,\n 5.30330086+0.j, -1.83711731+0.j, 2. +0.j, 0.83333333+0.j,\n 0.16666667+0.j, 1.15470054+0.j, 3.46410162+0.j, 0.57735027+0.j,\n 0.35355339+0.j, -0.20412415+0.j, 1.66666667+0.j, 0.33333333+0.j,\n 3.5 +0.j, 2. +0.j, 0.83333333+0.j, 0.16666667+0.j,\n 1.15470054+0.j, 3.46410162+0.j, 0.57735027+0.j, 0.35355339+0.j,\n -0.20412415+0.j, 4. +0.j, 0.16666667+0.j, 2.33333333+0.j,\n 0.33333333+0.j, 0.66666667+0.j, 2. +0.j, 4. +0.j,\n 1.15470054+0.j, 0.33333333+0.j, 0.66666667+0.j, 2. +0.j,\n 4. +0.j, 0.16666667+0.j, 2.33333333+0.j, 4. +0.j,\n 1.15470054+0.j, 3.5 +0.j, 0.66666667+0.j, 0.83333333+0.j,\n 3.46410162+0.j, 1.44337567+0.j, 0.28867513+0.j, 0.16666667+0.j,\n 1. +0.j, 0.33333333+0.j, 1.5 +0.j, 0.28867513+0.j,\n 1.41421356+0.j, -0.81649658+0.j, 0.5 +0.j, -0.28867513+0.j,\n 3.46410162+0.j, 1.44337567+0.j, 0.28867513+0.j, 0.16666667+0.j,\n 1. +0.j, 0.33333333+0.j, 0.5 +0.j, -0.28867513+0.j]), array([ 3.05085842+0.j, 0.86107353+0.j, 0.68690482+0.j, 3.46782652+0.j,\n 5.77440476+0.j, 0.18713935+0.j, 0.88680504+0.j, 5.31936332+0.j,\n 1.85744485+0.j, 1.41416709+0.j, 0.25946654+0.j, 3.34726724+0.j,\n 4.48869293+0.j, 0.50453799+0.j, 1.43858189+0.j, -0.24152551+0.j,\n 1.17622132+0.j, 0.11587108+0.j, 8.34545762+0.j, 1.4162593 +0.j,\n 0.43928549+0.j, 0.336231 +0.j, 4.08380429+0.j, 1.15632545+0.j,\n 3.05085842+0.j, 0.86107353+0.j, 0.68690482+0.j, 5.31936333+0.j,\n 0.88680504+0.j, 1.85744486+0.j, 0.25946653+0.j, 1.41416709+0.j,\n 3.34726724+0.j, 1.17622132+0.j, 0.11587107+0.j, 1.43858189+0.j,\n -0.24152552+0.j, 4.08380429+0.j, -1.15632546+0.j, 5.31938635+0.j,\n 2.43400809+0.j, 0.68042695+0.j, 0.79155607+0.j, 1.89142585+0.j,\n 0.15524404+0.j, 2.96243402+0.j, 0.46879328+0.j, 1.03466801+0.j,\n 3.09662316+0.j, 0.4958687 +0.j, 1.35357074+0.j, -0.31535984+0.j,\n 0.36310608+0.j, 0.22059957+0.j, 1.79674107+0.j, 0.12474411+0.j,\n 0.88337549+0.j, 0.15895804+0.j, 2.56929955+0.j, 4.49344088+0.j,\n 3.86866315+0.j, 0.67548334+0.j, 0.91686289+0.j, 0.17577899+0.j... 3.99331102+0.j, 1.64832237+0.j, 0.28062424+0.j, 3.70645802+0.j,\n 5.16352959+0.j, -2.41179053+0.j, 1.80330713+0.j, 0.75497906+0.j,\n 0.13183775+0.j, 0.98857867+0.j, 3.67454032+0.j, 0.61483971+0.j,\n 0.41669874+0.j, -0.26501953+0.j, 1.64832236+0.j, 0.28062423+0.j,\n 3.706458 +0.j, 1.80330714+0.j, 0.75497905+0.j, 0.13183776+0.j,\n 0.98857867+0.j, 3.6745403 +0.j, 0.61483971+0.j, 0.41669876+0.j,\n -0.26501952+0.j, 4.17288651+0.j, 0.19991104+0.j, 2.34125801+0.j,\n 0.31652345+0.j, 0.62058386+0.j, 2.16684412+0.j, 2.72026236+0.j,\n 1.09980084+0.j, 0.31652346+0.j, 0.62058387+0.j, 2.16684415+0.j,\n 4.17288656+0.j, 0.19991104+0.j, 2.34125804+0.j, 2.72026246+0.j,\n 1.09980085+0.j, 3.34766794+0.j, 0.54552516+0.j, 0.89160837+0.j,\n 2.71838179+0.j, 1.25694571+0.j, 0.10224517+0.j, 0.17981149+0.j,\n 1.13321999+0.j, 0.38368428+0.j, 1.34894718+0.j, 0.37245404+0.j,\n 1.33261983+0.j, -0.89319085+0.j, 0.3251749 +0.j, -0.19117131+0.j,\n 2.71838184+0.j, 1.25694572+0.j, 0.10224519+0.j, 0.1798115 +0.j,\n 1.13322002+0.j, 0.38368428+0.j, 0.32517492+0.j, -0.19117132+0.j]), atol=1e-06) + where <function allclose at 0x7fbc77d13370> = np.allclose + and array([ 3. +0.j, 0.83333333+0.j, 0.66666667+0.j, 3.33333333+0.j,\n 5.5 +0.j, 0.16666667+0.j, 0.83333333+0.j, 5. +0.j,\n 1.66666667+0.j, 1.44337567+0.j, 0.28867513+0.j, 3.46410162+0.j,\n 4.24264069+0.j, 0.81649658+0.j, 1.5 +0.j, -0.28867513+0.j,\n 1.06066017+0.j, 0.20412415+0.j, 7.4246212 +0.j, 1.83711731+0.j,\n 0.5 +0.j, 0.28867513+0.j, 4. +0.j, 1.15470054+0.j,\n 3. +0.j, 0.83333333+0.j, 0.66666667+0.j, 5. +0.j,\n 0.83333333+0.j, 1.66666667+0.j, 0.28867513+0.j, 1.44337567+0.j,\n 3.46410162+0.j, 1.06066017+0.j, 0.20412415+0.j, 1.5 +0.j,\n -0.28867513+0.j, 4. +0.j, -1.15470054+0.j, 5.5 +0.j,\n 2.33333333+0.j, 0.66666667+0.j, 0.83333333+0.j, 2. +0.j,\n 0.16666667+0.j, 3.46410162+0.j, 0.57735027+0.j, 1.15470054+0.j,\n 2.82842712+0.j, 0.81649658+0.j, 1.06066017+0.j, -0.20412415+0.j,\n 0.5 +0.j, 0.28867513+0.j, 2. +0.j, 0.16666667+0.j,\n 0.83333333+0.j, 0.28867513+0.j, 4.04145188+0.j, 6.92820323+0.j,\n 3.5 +0.j, 0.66666667+0.j, 0.83333333+0.j, 0.16666667+0.j... 4. +0.j, 1.66666667+0.j, 0.33333333+0.j, 3.5 +0.j,\n 5.30330086+0.j, -1.83711731+0.j, 2. +0.j, 0.83333333+0.j,\n 0.16666667+0.j, 1.15470054+0.j, 3.46410162+0.j, 0.57735027+0.j,\n 0.35355339+0.j, -0.20412415+0.j, 1.66666667+0.j, 0.33333333+0.j,\n 3.5 +0.j, 2. +0.j, 0.83333333+0.j, 0.16666667+0.j,\n 1.15470054+0.j, 3.46410162+0.j, 0.57735027+0.j, 0.35355339+0.j,\n -0.20412415+0.j, 4. +0.j, 0.16666667+0.j, 2.33333333+0.j,\n 0.33333333+0.j, 0.66666667+0.j, 2. +0.j, 4. +0.j,\n 1.15470054+0.j, 0.33333333+0.j, 0.66666667+0.j, 2. +0.j,\n 4. +0.j, 0.16666667+0.j, 2.33333333+0.j, 4. +0.j,\n 1.15470054+0.j, 3.5 +0.j, 0.66666667+0.j, 0.83333333+0.j,\n 3.46410162+0.j, 1.44337567+0.j, 0.28867513+0.j, 0.16666667+0.j,\n 1. +0.j, 0.33333333+0.j, 1.5 +0.j, 0.28867513+0.j,\n 1.41421356+0.j, -0.81649658+0.j, 0.5 +0.j, -0.28867513+0.j,\n 3.46410162+0.j, 1.44337567+0.j, 0.28867513+0.j, 0.16666667+0.j,\n 1. +0.j, 0.33333333+0.j, 0.5 +0.j, -0.28867513+0.j]) = Dat(DataSet(Set((np.int64(556), np.int64(556), np.int64(556)), 'set_#x7fbc23714290'), (1,), 'None_nodes_dset'), None, dtype('complex128'), 'function_8382').data + where Dat(DataSet(Set((np.int64(556), np.int64(556), np.int64(556)), 'set_#x7fbc23714290'), (1,), 'None_nodes_dset'), None, dtype('complex128'), 'function_8382') = Coefficient(WithGeometry(FunctionSpace(<firedrake.mesh.MeshTopology object at 0x7fbc241e26c0>, FiniteElement('Regge', tetrahedron, 1), name=None), Mesh(VectorElement(FiniteElement('Lagrange', tetrahedron, 1), dim=3), 8339)), 14160).dat + and array([ 3.05085842+0.j, 0.86107353+0.j, 0.68690482+0.j, 3.46782652+0.j,\n 5.77440476+0.j, 0.18713935+0.j, 0.88680504+0.j, 5.31936332+0.j,\n 1.85744485+0.j, 1.41416709+0.j, 0.25946654+0.j, 3.34726724+0.j,\n 4.48869293+0.j, 0.50453799+0.j, 1.43858189+0.j, -0.24152551+0.j,\n 1.17622132+0.j, 0.11587108+0.j, 8.34545762+0.j, 1.4162593 +0.j,\n 0.43928549+0.j, 0.336231 +0.j, 4.08380429+0.j, 1.15632545+0.j,\n 3.05085842+0.j, 0.86107353+0.j, 0.68690482+0.j, 5.31936333+0.j,\n 0.88680504+0.j, 1.85744486+0.j, 0.25946653+0.j, 1.41416709+0.j,\n 3.34726724+0.j, 1.17622132+0.j, 0.11587107+0.j, 1.43858189+0.j,\n -0.24152552+0.j, 4.08380429+0.j, -1.15632546+0.j, 5.31938635+0.j,\n 2.43400809+0.j, 0.68042695+0.j, 0.79155607+0.j, 1.89142585+0.j,\n 0.15524404+0.j, 2.96243402+0.j, 0.46879328+0.j, 1.03466801+0.j,\n 3.09662316+0.j, 0.4958687 +0.j, 1.35357074+0.j, -0.31535984+0.j,\n 0.36310608+0.j, 0.22059957+0.j, 1.79674107+0.j, 0.12474411+0.j,\n 0.88337549+0.j, 0.15895804+0.j, 2.56929955+0.j, 4.49344088+0.j,\n 3.86866315+0.j, 0.67548334+0.j, 0.91686289+0.j, 0.17577899+0.j... 3.99331102+0.j, 1.64832237+0.j, 0.28062424+0.j, 3.70645802+0.j,\n 5.16352959+0.j, -2.41179053+0.j, 1.80330713+0.j, 0.75497906+0.j,\n 0.13183775+0.j, 0.98857867+0.j, 3.67454032+0.j, 0.61483971+0.j,\n 0.41669874+0.j, -0.26501953+0.j, 1.64832236+0.j, 0.28062423+0.j,\n 3.706458 +0.j, 1.80330714+0.j, 0.75497905+0.j, 0.13183776+0.j,\n 0.98857867+0.j, 3.6745403 +0.j, 0.61483971+0.j, 0.41669876+0.j,\n -0.26501952+0.j, 4.17288651+0.j, 0.19991104+0.j, 2.34125801+0.j,\n 0.31652345+0.j, 0.62058386+0.j, 2.16684412+0.j, 2.72026236+0.j,\n 1.09980084+0.j, 0.31652346+0.j, 0.62058387+0.j, 2.16684415+0.j,\n 4.17288656+0.j, 0.19991104+0.j, 2.34125804+0.j, 2.72026246+0.j,\n 1.09980085+0.j, 3.34766794+0.j, 0.54552516+0.j, 0.89160837+0.j,\n 2.71838179+0.j, 1.25694571+0.j, 0.10224517+0.j, 0.17981149+0.j,\n 1.13321999+0.j, 0.38368428+0.j, 1.34894718+0.j, 0.37245404+0.j,\n 1.33261983+0.j, -0.89319085+0.j, 0.3251749 +0.j, -0.19117131+0.j,\n 2.71838184+0.j, 1.25694572+0.j, 0.10224519+0.j, 0.1798115 +0.j,\n 1.13322002+0.j, 0.38368428+0.j, 0.32517492+0.j, -0.19117132+0.j]) = Dat(DataSet(Set((np.int64(556), np.int64(556), np.int64(556)), 'set_#x7fbc23714290'), (1,), 'None_nodes_dset'), None, dtype('complex128'), 'function_8383').data + where Dat(DataSet(Set((np.int64(556), np.int64(556), np.int64(556)), 'set_#x7fbc23714290'), (1,), 'None_nodes_dset'), None, dtype('complex128'), 'function_8383') = Coefficient(WithGeometry(FunctionSpace(<firedrake.mesh.MeshTopology object at 0x7fbc241e26c0>, FiniteElement('Regge', tetrahedron, 1), name=None), Mesh(VectorElement(FiniteElement('Lagrange', tetrahedron, 1), dim=3), 8339)), 14162).dat
test_interpolation_from_parent.test_tensor_function_interpolation[shiftedmesh-mesh-100-coords-FunctionSpace(Regge2)]: tests/vertexonly/test_interpolation_from_parent.py#L282
AssertionError: assert False + where False = <function allclose at 0x7f5cb55237f0>(array([[[ 1.43674311e-01, 1.24372901e-01],\n [ 1.24372901e-01, 1.06107460e-01]],\n\n [[ 1.00013901e-02, 1.49278171e-02],\n [ 1.49278171e-02, 1.51586555e-01]],\n\n [[ 3.31461468e-02, 5.06537791e-02],\n [ 5.06537791e-02, 7.79804048e-02]],\n\n [[ 6.27816587e-03, 1.76284326e-02],\n [ 1.76284326e-02, 5.86353656e-02]],\n\n [[ 2.13087119e-01, -4.93939794e-02],\n [-4.93939794e-02, 1.06398469e-02]],\n\n [[ 6.76448476e-03, 1.43758718e-02],\n [ 1.43758718e-02, 3.14640065e-02]],\n\n [[ 2.27120711e-01, -1.27013888e-01],\n [-1.27013888e-01, 4.83806987e-02]],\n\n [[ 3.67346949e-03, -1.73496851e-02],\n [-1.73496851e-02, 6.73957309e-02]],\n\n [[ 9.28985153e-03, -2.38406258e-02],\n [-2.38406258e-02, 6.89296471e-02]],\n\n [[ 4.12457457e-02, -2.77278213e-02],\n [-2.77278213e-02, 9.32473200e-03]],\n\n [[ 7.06210354e-03, -1.01052981e-02],\n [-1.01052981e-02, 1.78535764e-02]],\n\n [[ 9.88263557e-02, -1.46538578e-01],\n [-1.46538578e-01, 1.30802302e-01]],\n\n [[ 2.04039612e-03, -3.14803716e-04],\n [-3.14803716e-04, 7.59157337e-05]],\n\n [[ 1.47411213e-01, -1.37492638e-01],\n [-1.37492638e-01, 1.36037967e-01]],\n\n [[ 2.15699806e-01, -2.51198051e-01],\n [-2.51198051e-01, 1.53134491e-01]],\n\n [[ 9.80934964e-03, -2.61702863e-02],\n [-2.61702863e-02, 5.63826646e-02]],\n\n [[ 2.98657995e-01, 2.76967696e-01],\n [ 2.76967696e-01, 9.74182567e-02]],\n\n [[ 7.16363728e-02, -3.19287889e-02],\n [-3.19287889e-02, 6.45009799e-03]],\n\n [[ 1.71234764e-02, 2.85390569e-02],\n [ 2.85390569e-02, 5.17205577e-02]],\n\n [[ 1.76037448e-01, -1.03851951e-02],\n [-1.03851951e-02, 1.24296098e-04]],\n\n [[ 1.84868507e-02, 4.11319594e-02],\n [ 4.11319594e-02, 1.07929325e-01]],\n\n [[ 4.79679212e-02, 8.39663046e-02],\n [ 8.39663046e-02, 1.39923807e-01]],\n\n [[ 3.13298757e-01, 1.87898647e-01],\n [ 1.87898647e-01, 1.08454218e-01]]]), array([[[ 1.28112370e-01, 1.16591930e-01],\n [ 1.16591930e-01, 1.06107460e-01]],\n\n [[ 1.00013901e-02, 4.62988588e-02],\n [ 4.62988588e-02, 2.14328639e-01]],\n\n [[ 3.31461468e-02, 5.08404361e-02],\n [ 5.08404361e-02, 7.79804048e-02]],\n\n [[ 6.27816587e-03, 1.91865200e-02],\n [ 1.91865200e-02, 5.86353656e-02]],\n\n [[ 2.13087119e-01, -4.76152739e-02],\n [-4.76152739e-02, 1.06398469e-02]],\n\n [[ 6.76448476e-03, 1.45889613e-02],\n [ 1.45889613e-02, 3.14640065e-02]],\n\n [[ 2.27120711e-01, -1.04824895e-01],\n [-1.04824895e-01, 4.83806987e-02]],\n\n [[ 4.30518717e-03, -1.70338262e-02],\n [-1.70338262e-02, 6.73957309e-02]],\n\n [[ 8.51567131e-03, -2.42277159e-02],\n [-2.42277159e-02, 6.89296471e-02]],\n\n [[ 5.24647599e-02, -2.21183142e-02],\n [-2.21183142e-02, 9.32473200e-03]],\n\n [[ 6.21136065e-03, -1.05306696e-02],\n [-1.05306696e-02, 1.78535764e-02]],\n\n [[ 9.88263557e-02, -1.13695712e-01],\n [-1.13695712e-01, 1.30802302e-01]],\n\n [[ 2.04039612e-03, -3.93571046e-04],\n [-3.93571046e-04, 7.59157337e-05]],\n\n [[ 1.47411213e-01, -1.41610458e-01],\n [-1.41610458e-01, 1.36037967e-01]],\n\n [[ 2.93843368e-01, -2.12126270e-01],\n [-2.12126270e-01, 1.53134491e-01]],\n\n [[ 1.14137763e-02, -2.53680729e-02],\n [-2.53680729e-02, 5.63826646e-02]],\n\n [[ 2.98657995e-01, -1.70571807e-01],\n [-1.70571807e-01, 9.74182567e-02]],\n\n [[ 8.78779331e-02, -2.38080087e-02],\n [-2.38080087e-02, 6.45009799e-03]],\n\n [[ 1.71234764e-02, 2.97596329e-02],\n [ 2.97596329e-02, 5.17205577e-02]],\n\n [[ 1.87161402e-01, -4.82321801e-03],\n [-4.82321801e-03, 1.24296098e-04]],\n\n [[ 1.84868507e-02, 4.46684825e-02],\n [ 4.46684825e-02, 1.07929325e-01]],\n\n [[ 4.79679212e-02, 8.19259064e-02],\n [ 8.19259064e-02, 1.39923807e-01]],\n\n [[ 2.95606040e-01, 1.79052288e-01],\n [ 1.79052288e-01, 1.08454218e-01]]])) + where <function allclose at 0x7f5cb55237f0> = np.allclose + and array([[[ 1.43674311e-01, 1.24372901e-01],\n [ 1.24372901e-01, 1.06107460e-01]],\n\n [[ 1.00013901e-02, 1.49278171e-02],\n [ 1.49278171e-02, 1.51586555e-01]],\n\n [[ 3.31461468e-02, 5.06537791e-02],\n [ 5.06537791e-02, 7.79804048e-02]],\n\n [[ 6.27816587e-03, 1.76284326e-02],\n [ 1.76284326e-02, 5.86353656e-02]],\n\n [[ 2.13087119e-01, -4.93939794e-02],\n [-4.93939794e-02, 1.06398469e-02]],\n\n [[ 6.76448476e-03, 1.43758718e-02],\n [ 1.43758718e-02, 3.14640065e-02]],\n\n [[ 2.27120711e-01, -1.27013888e-01],\n [-1.27013888e-01, 4.83806987e-02]],\n\n [[ 3.67346949e-03, -1.73496851e-02],\n [-1.73496851e-02, 6.73957309e-02]],\n\n [[ 9.28985153e-03, -2.38406258e-02],\n [-2.38406258e-02, 6.89296471e-02]],\n\n [[ 4.12457457e-02, -2.77278213e-02],\n [-2.77278213e-02, 9.32473200e-03]],\n\n [[ 7.06210354e-03, -1.01052981e-02],\n [-1.01052981e-02, 1.78535764e-02]],\n\n [[ 9.88263557e-02, -1.46538578e-01],\n [-1.46538578e-01, 1.30802302e-01]],\n\n [[ 2.04039612e-03, -3.14803716e-04],\n [-3.14803716e-04, 7.59157337e-05]],\n\n [[ 1.47411213e-01, -1.37492638e-01],\n [-1.37492638e-01, 1.36037967e-01]],\n\n [[ 2.15699806e-01, -2.51198051e-01],\n [-2.51198051e-01, 1.53134491e-01]],\n\n [[ 9.80934964e-03, -2.61702863e-02],\n [-2.61702863e-02, 5.63826646e-02]],\n\n [[ 2.98657995e-01, 2.76967696e-01],\n [ 2.76967696e-01, 9.74182567e-02]],\n\n [[ 7.16363728e-02, -3.19287889e-02],\n [-3.19287889e-02, 6.45009799e-03]],\n\n [[ 1.71234764e-02, 2.85390569e-02],\n [ 2.85390569e-02, 5.17205577e-02]],\n\n [[ 1.76037448e-01, -1.03851951e-02],\n [-1.03851951e-02, 1.24296098e-04]],\n\n [[ 1.84868507e-02, 4.11319594e-02],\n [ 4.11319594e-02, 1.07929325e-01]],\n\n [[ 4.79679212e-02, 8.39663046e-02],\n [ 8.39663046e-02, 1.39923807e-01]],\n\n [[ 3.13298757e-01, 1.87898647e-01],\n [ 1.87898647e-01, 1.08454218e-01]]]) = <built-in method reshape of numpy.ndarray object at 0x7f5c7ce7d410>((23, 2, 2)) + where <built-in method reshape of numpy.ndarray object at 0x7f5c7ce7d410> = array([[[ 1.43674311e-01, 1.24372901e-01],\n [ 1.24372901e-01, 1.06107460e-01]],\n\n [[ 1.00013901e-02, 1.49278171e-02],\n [ 1.49278171e-02, 1.51586555e-01]],\n\n [[ 3.31461468e-02, 5.06537791e-02],\n [ 5.06537791e-02, 7.79804048e-02]],\n\n [[ 6.27816587e-03, 1.76284326e-02],\n [ 1.76284326e-02, 5.86353656e-02]],\n\n [[ 2.13087119e-01, -4.93939794e-02],\n [-4.93939794e-02, 1.06398469e-02]],\n\n [[ 6.76448476e-03, 1.43758718e-02],\n [ 1.43758718e-02, 3.14640065e-02]],\n\n [[ 2.27120711e-01, -1.27013888e-01],\n [-1.27013888e-01, 4.83806987e-02]],\n\n [[ 3.67346949e-03, -1.73496851e-02],\n [-1.73496851e-02, 6.73957309e-02]],\n\n [[ 9.28985153e-03, -2.38406258e-02],\n [-2.38406258e-02, 6.89296471e-02]],\n\n [[ 4.12457457e-02, -2.77278213e-02],\n [-2.77278213e-02, 9.32473200e-03]],\n\n [[ 7.06210354e-03, -1.01052981e-02],\n [-1.01052981e-02, 1.78535764e-02]],\n\n [[ 9.88263557e-02, -1.46538578e-01],\n [-1.46538578e-01, 1.30802302e-01]],\n\n [[ 2.04039612e-03, -3.14803716e-04],\n [-3.14803716e-04, 7.59157337e-05]],\n\n [[ 1.47411213e-01, -1.37492638e-01],\n [-1.37492638e-01, 1.36037967e-01]],\n\n [[ 2.15699806e-01, -2.51198051e-01],\n [-2.51198051e-01, 1.53134491e-01]],\n\n [[ 9.80934964e-03, -2.61702863e-02],\n [-2.61702863e-02, 5.63826646e-02]],\n\n [[ 2.98657995e-01, 2.76967696e-01],\n [ 2.76967696e-01, 9.74182567e-02]],\n\n [[ 7.16363728e-02, -3.19287889e-02],\n [-3.19287889e-02, 6.45009799e-03]],\n\n [[ 1.71234764e-02, 2.85390569e-02],\n [ 2.85390569e-02, 5.17205577e-02]],\n\n [[ 1.76037448e-01, -1.03851951e-02],\n [-1.03851951e-02, 1.24296098e-04]],\n\n [[ 1.84868507e-02, 4.11319594e-02],\n [ 4.11319594e-02, 1.07929325e-01]],\n\n [[ 4.79679212e-02, 8.39663046e-02],\n [ 8.39663046e-02, 1.39923807e-01]],\n\n [[ 3.13298757e-01, 1.87898647e-01],\n [ 1.87898647e-01, 1.08454218e-01]]]).reshape + where array([[[ 1.43674311e-01, 1.24372901e-01],\n [ 1.24372901e-01, 1.06107460e-01]],\n\n [[ 1.00013901e-02, 1.49278171e-02],\n [ 1.49278171e-02, 1.51586555e-01]],\n\n [[ 3.31461468e-02, 5.06537791e-02],\n [ 5.06537791e-02, 7.79804048e-02]],\n\n [[ 6.27816587e-03, 1.76284326e-02],\n [ 1.76284326e-02, 5.86353656e-02]],\n\n [[ 2.13087119e-01, -4.93939794e-02],\n [-4.93939794e-02, 1.06398469e-02]],\n\n [[ 6.76448476e-03, 1.43758718e-02],\n [ 1.43758718e-02, 3.14640065e-02]],\n\n [[ 2.27120711e-01, -1.27013888e-01],\n [-1.27013888e-01, 4.83806987e-02]],\n\n [[ 3.67346949e-03, -1.73496851e-02],\n [-1.73496851e-02, 6.73957309e-02]],\n\n [[ 9.28985153e-03, -2.38406258e-02],\n [-2.38406258e-02, 6.89296471e-02]],\n\n [[ 4.12457457e-02, -2.77278213e-02],\n [-2.77278213e-02, 9.32473200e-03]],\n\n [[ 7.06210354e-03, -1.01052981e-02],\n [-1.01052981e-02, 1.78535764e-02]],\n\n [[ 9.88263557e-02, -1.46538578e-01],\n [-1.46538578e-01, 1.30802302e-01]],\n\n [[ 2.04039612e-03, -3.14803716e-04],\n [-3.14803716e-04, 7.59157337e-05]],\n\n [[ 1.47411213e-01, -1.37492638e-01],\n [-1.37492638e-01, 1.36037967e-01]],\n\n [[ 2.15699806e-01, -2.51198051e-01],\n [-2.51198051e-01, 1.53134491e-01]],\n\n [[ 9.80934964e-03, -2.61702863e-02],\n [-2.61702863e-02, 5.63826646e-02]],\n\n [[ 2.98657995e-01, 2.76967696e-01],\n [ 2.76967696e-01, 9.74182567e-02]],\n\n [[ 7.16363728e-02, -3.19287889e-02],\n [-3.19287889e-02, 6.45009799e-03]],\n\n [[ 1.71234764e-02, 2.85390569e-02],\n [ 2.85390569e-02, 5.17205577e-02]],\n\n [[ 1.76037448e-01, -1.03851951e-02],\n [-1.03851951e-02, 1.24296098e-04]],\n\n [[ 1.84868507e-02, 4.11319594e-02],\n [ 4.11319594e-02, 1.07929325e-01]],\n\n [[ 4.79679212e-02, 8.39663046e-02],\n [ 8.39663046e-02, 1.39923807e-01]],\n\n [[ 3.13298757e-01, 1.87898647e-01],\n [ 1.87898647e-01, 1.08454218e-01]]]) = Dat(DataSet(Set((np.int64(23), np.int64(23), np.int64(23)), 'set_#x7f5c76babd10'), (2, 2), 'None_nodes_dset'), None, dtype('float64'), 'function_3124').data_ro + where Dat(DataSet(Set((np.int64(23), np.int64(23), np.int64(23)), 'set_#x7f5c76babd10'), (2, 2), 'None_nodes_dset'), None, dtype('float64'), 'function_3124') = Coefficient(WithGeometry(FunctionSpace(<firedrake.mesh.VertexOnlyMeshTopology object at 0x7f5c76816e10>, TensorElement(FiniteElement('Discontinuous Lagrange', vertex, 0), shape=(2, 2), symmetry={}), name=None), Mesh(VectorElement(FiniteElement('Discontinuous Lagrange', Cell(vertex, 2), 0), dim=2), 3118)), 5582).dat + and (23, 2, 2) = array([[[ 1.28112370e-01, 1.16591930e-01],\n [ 1.16591930e-01, 1.06107460e-01]],\n\n [[ 1.00013901e-02, 4.62988588e-02],\n [ 4.62988588e-02, 2.14328639e-01]],\n\n [[ 3.31461468e-02, 5.08404361e-02],\n [ 5.08404361e-02, 7.79804048e-02]],\n\n [[ 6.27816587e-03, 1.91865200e-02],\n [ 1.91865200e-02, 5.86353656e-02]],\n\n [[ 2.13087119e-01, -4.76152739e-02],\n [-4.76152739e-02, 1.06398469e-02]],\n\n [[ 6.76448476e-03, 1.45889613e-02],\n [ 1.45889613e-02, 3.14640065e-02]],\n\n [[ 2.27120711e-01, -1.04824895e-01],\n [-1.04824895e-01, 4.83806987e-02]],\n\n [[ 4.30518717e-03, -1.70338262e-02],\n [-1.70338262e-02, 6.73957309e-02]],\n\n [[ 8.51567131e-03, -2.42277159e-02],\n [-2.42277159e-02, 6.89296471e-02]],\n\n [[ 5.24647599e-02, -2.21183142e-02],\n [-2.21183142e-02, 9.32473200e-03]],\n\n [[ 6.21136065e-03, -1.05306696e-02],\n [-1.05306696e-02, 1.78535764e-02]],\n\n [[ 9.88263557e-02, -1.13695712e-01],\n [-1.13695712e-01, 1.30802302e-01]],\n\n [[ 2.04039612e-03, -3.93571046e-04],\n [-3.93571046e-04, 7.59157337e-05]],\n\n [[ 1.47411213e-01, -1.41610458e-01],\n [-1.41610458e-01, 1.36037967e-01]],\n\n [[ 2.93843368e-01, -2.12126270e-01],\n [-2.12126270e-01, 1.53134491e-01]],\n\n [[ 1.14137763e-02, -2.53680729e-02],\n [-2.53680729e-02, 5.63826646e-02]],\n\n [[ 2.98657995e-01, -1.70571807e-01],\n [-1.70571807e-01, 9.74182567e-02]],\n\n [[ 8.78779331e-02, -2.38080087e-02],\n [-2.38080087e-02, 6.45009799e-03]],\n\n [[ 1.71234764e-02, 2.97596329e-02],\n [ 2.97596329e-02, 5.17205577e-02]],\n\n [[ 1.87161402e-01, -4.82321801e-03],\n [-4.82321801e-03, 1.24296098e-04]],\n\n [[ 1.84868507e-02, 4.46684825e-02],\n [ 4.46684825e-02, 1.07929325e-01]],\n\n [[ 4.79679212e-02, 8.19259064e-02],\n [ 8.19259064e-02, 1.39923807e-01]],\n\n [[ 2.95606040e-01, 1.79052288e-01],\n [ 1.79052288e-01, 1.08454218e-01]]]).shape
test_interpolate_cross_mesh.test_interpolate_cross_mesh[unitsquare_Regge_source]: tests/regression/test_interpolate_cross_mesh.py#L534
assert False + where False = <function allclose at 0x7f09c590f930>([array([[0.32470945, 0.34433209],\n [0.34433209, 0.36 ]]), array([[0.01 , 0.09404452],\n [0.09404452, 0.81 ]]), array([[0.81 , 0.14692594],\n [0.14692594, 0.01 ]]), array([[0.81, 0.81],\n [0.81, 0.81]]), array([[0.49240298, 0.44222054],\n [0.44222054, 0.43349056]]), array([[2.77555756e-17, 4.13576073e-02],\n [4.13576073e-02, 4.68375339e-17]]), ...], array([[[0.3136 , 0.336 ],\n [0.336 , 0.36 ]],\n\n [[0.01 , 0.09 ],\n [0.09 , 0.81 ]],\n\n [[0.81 , 0.09 ],\n [0.09 , 0.01 ]],\n\n [[0.81 , 0.81 ],\n [0.81 , 0.81 ]],\n\n [[0.527076 , 0.4779984 ],\n [0.4779984 , 0.43349056]],\n\n [[0. , 0. ],\n [0. , 0. ]],\n\n [[0. , 0. ],\n [0. , 0.11111111]],\n\n [[0.25 , 0. ],\n [0. , 0. ]],\n\n [[0.25 , 0.16666667],\n [0.16666667, 0.11111111]],\n\n [[1. , 0. ],\n [0. , 0. ]],\n\n [[0. , 0. ],\n [0. , 0.44444444]],\n\n [[1. , 0.33333333],\n [0.33333333, 0.11111111]],\n\n [[0.25 , 0.33333333],\n [0.33333333, 0.44444444]],\n\n [[0. , 0. ],\n [0. , 1. ]],\n\n [[1. , 0.66666667],\n [0.66666667, 0.44444444]],\n\n [[0.25 , 0.5 ],\n [0.5 , 1. ]],\n\n [[1. , 1. ],\n [1. , 1. ]],\n\n [... ]],\n\n [[0.11111111, 0.13333333],\n [0.13333333, 0.16 ]],\n\n [[1. , 0.2 ],\n [0.2 , 0.04 ]],\n\n [[1. , 0. ],\n [0. , 0. ]],\n\n [[0.44444444, 0.26666667],\n [0.26666667, 0.16 ]],\n\n [[0. , 0. ],\n [0. , 0.36 ]],\n\n [[0.11111111, 0.2 ],\n [0.2 , 0.36 ]],\n\n [[1. , 0.4 ],\n [0.4 , 0.16 ]],\n\n [[0.44444444, 0.4 ],\n [0.4 , 0.36 ]],\n\n [[0. , 0. ],\n [0. , 0.64 ]],\n\n [[0.11111111, 0.26666667],\n [0.26666667, 0.64 ]],\n\n [[1. , 0.6 ],\n [0.6 , 0.36 ]],\n\n [[0.44444444, 0.53333333],\n [0.53333333, 0.64 ]],\n\n [[0. , 0. ],\n [0. , 1. ]],\n\n [[0.11111111, 0.33333333],\n [0.33333333, 1. ]],\n\n [[1. , 0.8 ],\n [0.8 , 0.64 ]],\n\n [[0.44444444, 0.66666667],\n [0.66666667, 1. ]],\n\n [[1. , 1. ],\n [1. , 1. ]]]), atol=1e-08) + where <function allclose at 0x7f09c590f930> = np.allclose
test_interpolation_from_parent.test_tensor_function_interpolation_parallel[shiftedmesh-mesh-100-coords-FunctionSpace(Regge2)]: tests/vertexonly/test_interpolation_from_parent.py#L1
subprocess.CalledProcessError: Command '['mpiexec', '-n', '1', '-genv', '_PYTEST_MPI_CHILD_PROCESS', '1', '/__w/firedrake/firedrake_venv/bin/python', '-m', 'pytest', '--runxfail', '-s', '-q', '/__w/firedrake/firedrake/tests/vertexonly/test_interpolation_from_parent.py::test_tensor_function_interpolation_parallel[shiftedmesh-mesh-100-coords-FunctionSpace(Regge2)]', ':', '-n', '2', '/__w/firedrake/firedrake_venv/bin/python', '-m', 'pytest', '--runxfail', '-s', '-q', '/__w/firedrake/firedrake/tests/vertexonly/test_interpolation_from_parent.py::test_tensor_function_interpolation_parallel[shiftedmesh-mesh-100-coords-FunctionSpace(Regge2)]', '--tb=no', '--no-summary', '--no-header', '--disable-warnings', '--show-capture=no']' returned non-zero exit status 1.
test_interpolate_cross_mesh.test_interpolate_cross_mesh_parallel[unitsquare_Regge_source]: tests/regression/test_interpolate_cross_mesh.py#L1
subprocess.CalledProcessError: Command '['mpiexec', '-n', '1', '-genv', '_PYTEST_MPI_CHILD_PROCESS', '1', '/__w/firedrake/firedrake_venv/bin/python', '-m', 'pytest', '--runxfail', '-s', '-q', '/__w/firedrake/firedrake/tests/regression/test_interpolate_cross_mesh.py::test_interpolate_cross_mesh_parallel[unitsquare_Regge_source]', ':', '-n', '2', '/__w/firedrake/firedrake_venv/bin/python', '-m', 'pytest', '--runxfail', '-s', '-q', '/__w/firedrake/firedrake/tests/regression/test_interpolate_cross_mesh.py::test_interpolate_cross_mesh_parallel[unitsquare_Regge_source]', '--tb=no', '--no-summary', '--no-header', '--disable-warnings', '--show-capture=no']' returned non-zero exit status 1.
test_interpolate_vs_project.test_interpolate_vs_project[square-FunctionSpace(Regge1)]: tests/regression/test_interpolate_vs_project.py#L58
AssertionError: assert False + where False = <function allclose at 0x7f09c590f930>(array([0.16666667, 0.16666667, 0. , 0.35355339, 0.20412415,\n 0. , 0. , 0.35355339, 0.20412415, 0. ,\n 0.33333333, 0.33333333, 0.35355339, 0.20412415, 0.35355339,\n 0.20412415, 0.16666667, 0.66666667, 0. , 0. ,\n 0. , 1.06066017, 0.20412415, 0.16666667, 0.66666667,\n 0. , 1.06066017, 0.20412415, 0. , 0. ,\n 0. , 0.83333333, 0.33333333, 1.06066017, 0.20412415,\n 0.5 , 0.28867513, 0. , 0.83333333, 0.33333333,\n 0.5 , 0.28867513, 1.06066017, 0.20412415, 0.66666667,\n 0.66666667, 0. , 0. , 0. , 0. ,\n 0.83333333, 0.83333333, 1.5 , 0.28867513, 1.06066017,\n 0.20412415]), array([ 1.67752016e-01, 1.67752017e-01, 4.34139936e-03, 3.55764540e-01,\n 2.08059306e-01, 2.60483878e-02, -1.44431658e-02, 3.51342246e-01,\n 2.05506089e-01, -2.01663799e-02, 3.32743962e-01, 3.15291240e-01,\n 3.52745428e-01, 2.05433671e-01, 3.98563338e-01, 2.28335034e-01,\n 1.77772838e-01, 6.65557825e-01, 7.77964870e-03, 1.11847071e-02,\n -1.96274994e-02, 1.06747413e+00, 2.05342092e-01, 1.66434174e-01,\n 6.66612260e-01, -3.95712710e-04, 1.06071258e+00, 2.04021134e-01,\n 4.98351674e-04, -8.23692783e-05, 2.56390623e-03, 8.33545034e-01,\n 3.34117401e-01, 1.06305001e+00, 2.01871348e-01, 4.93186044e-01,\n 2.89893082e-01, 1.54057892e-04, 8.33371977e-01, 3.33371805e-01,\n 4.99947592e-01, 2.88572124e-01, 1.06069796e+00, 2.04186949e-01,\n 6.67328444e-01, 6.66755900e-01, 9.29823912e-04, -1.07287349e-03,\n -1.25808343e-04, -2.52878707e-04, 8.33270113e-01, 8.33270113e-01,\n 1.49996148e+00, 2.88916374e-01, 1.06068741e+00, 2.04263275e-01]), atol=1e-06) + where <function allclose at 0x7f09c590f930> = np.allclose + and array([0.16666667, 0.16666667, 0. , 0.35355339, 0.20412415,\n 0. , 0. , 0.35355339, 0.20412415, 0. ,\n 0.33333333, 0.33333333, 0.35355339, 0.20412415, 0.35355339,\n 0.20412415, 0.16666667, 0.66666667, 0. , 0. ,\n 0. , 1.06066017, 0.20412415, 0.16666667, 0.66666667,\n 0. , 1.06066017, 0.20412415, 0. , 0. ,\n 0. , 0.83333333, 0.33333333, 1.06066017, 0.20412415,\n 0.5 , 0.28867513, 0. , 0.83333333, 0.33333333,\n 0.5 , 0.28867513, 1.06066017, 0.20412415, 0.66666667,\n 0.66666667, 0. , 0. , 0. , 0. ,\n 0.83333333, 0.83333333, 1.5 , 0.28867513, 1.06066017,\n 0.20412415]) = Dat(DataSet(Set((np.int64(56), np.int64(56), np.int64(56)), 'set_#x7f097296cb30'), (1,), 'None_nodes_dset'), None, dtype('float64'), 'function_8313').data + where Dat(DataSet(Set((np.int64(56), np.int64(56), np.int64(56)), 'set_#x7f097296cb30'), (1,), 'None_nodes_dset'), None, dtype('float64'), 'function_8313') = Coefficient(WithGeometry(FunctionSpace(<firedrake.mesh.MeshTopology object at 0x7f0973118bc0>, FiniteElement('Regge', triangle, 1), name=None), Mesh(VectorElement(FiniteElement('Lagrange', triangle, 1), dim=2), 8270)), 13974).dat + and array([ 1.67752016e-01, 1.67752017e-01, 4.34139936e-03, 3.55764540e-01,\n 2.08059306e-01, 2.60483878e-02, -1.44431658e-02, 3.51342246e-01,\n 2.05506089e-01, -2.01663799e-02, 3.32743962e-01, 3.15291240e-01,\n 3.52745428e-01, 2.05433671e-01, 3.98563338e-01, 2.28335034e-01,\n 1.77772838e-01, 6.65557825e-01, 7.77964870e-03, 1.11847071e-02,\n -1.96274994e-02, 1.06747413e+00, 2.05342092e-01, 1.66434174e-01,\n 6.66612260e-01, -3.95712710e-04, 1.06071258e+00, 2.04021134e-01,\n 4.98351674e-04, -8.23692783e-05, 2.56390623e-03, 8.33545034e-01,\n 3.34117401e-01, 1.06305001e+00, 2.01871348e-01, 4.93186044e-01,\n 2.89893082e-01, 1.54057892e-04, 8.33371977e-01, 3.33371805e-01,\n 4.99947592e-01, 2.88572124e-01, 1.06069796e+00, 2.04186949e-01,\n 6.67328444e-01, 6.66755900e-01, 9.29823912e-04, -1.07287349e-03,\n -1.25808343e-04, -2.52878707e-04, 8.33270113e-01, 8.33270113e-01,\n 1.49996148e+00, 2.88916374e-01, 1.06068741e+00, 2.04263275e-01]) = Dat(DataSet(Set((np.int64(56), np.int64(56), np.int64(56)), 'set_#x7f097296cb30'), (1,), 'None_nodes_dset'), None, dtype('float64'), 'function_8314').data + where Dat(DataSet(Set((np.int64(56), np.int64(56), np.int64(56)), 'set_#x7f097296cb30'), (1,), 'None_nodes_dset'), None, dtype('float64'), 'function_8314') = Coefficient(WithGeometry(FunctionSpace(<firedrake.mesh.MeshTopology object at 0x7f0973118bc0>, FiniteElement('Regge', triangle, 1), name=None), Mesh(VectorElement(FiniteElement('Lagrange', triangle, 1), dim=2), 8270)), 13976).dat
test_interpolate_vs_project.test_interpolate_vs_project[cube-FunctionSpace(Regge1)]: tests/regression/test_interpolate_vs_project.py#L58
AssertionError: assert False + where False = <function allclose at 0x7f09c590f930>(array([ 3. , 0.83333333, 0.66666667, 3.33333333, 5.5 ,\n 0.16666667, 0.83333333, 5. , 1.66666667, 1.44337567,\n 0.28867513, 3.46410162, 4.24264069, 0.81649658, 1.5 ,\n -0.28867513, 1.06066017, 0.20412415, 7.4246212 , 1.83711731,\n 0.5 , 0.28867513, 4. , 1.15470054, 3. ,\n 0.83333333, 0.66666667, 5. , 0.83333333, 1.66666667,\n 0.28867513, 1.44337567, 3.46410162, 1.06066017, 0.20412415,\n 1.5 , -0.28867513, 4. , -1.15470054, 5.5 ,\n 2.33333333, 0.66666667, 0.83333333, 2. , 0.16666667,\n 3.46410162, 0.57735027, 1.15470054, 2.82842712, 0.81649658,\n 1.06066017, -0.20412415, 0.5 , 0.28867513, 2. ,\n 0.16666667, 0.83333333, 0.28867513, 4.04145188, 6.92820323,\n 3.5 , 0.66666667, 0.83333333, 0.16666667, 0.33333333,\n 1. , 4. , -1.15470054, 0.35355339, -0.20412415,\n 1.5 , 0.28867513, 5.30330086, -1.83711731, 1.41421356,\n -0.81649658, 0.83333333, 2. , 0.16666667, 5.5 ,\n 2.33333333, 0.66666667, 3.46410162, ... 2.82842712, 0.81649658,\n 3. , 0.83333333, 0.66666667, 5. , 0.83333333,\n 1.66666667, 0.28867513, 3.46410162, 1.44337567, 1.06066017,\n 0.20412415, 1.5 , -0.28867513, 4. , -1.15470054,\n 0.66666667, 1.33333333, 4. , 1.66666667, 0.33333333,\n 3.5 , 5.30330086, -1.83711731, 2. , 0.83333333,\n 0.16666667, 1.15470054, 3.46410162, 0.57735027, 0.35355339,\n -0.20412415, 1.66666667, 0.33333333, 3.5 , 2. ,\n 0.83333333, 0.16666667, 1.15470054, 3.46410162, 0.57735027,\n 0.35355339, -0.20412415, 4. , 0.16666667, 2.33333333,\n 0.33333333, 0.66666667, 2. , 4. , 1.15470054,\n 0.33333333, 0.66666667, 2. , 4. , 0.16666667,\n 2.33333333, 4. , 1.15470054, 3.5 , 0.66666667,\n 0.83333333, 3.46410162, 1.44337567, 0.28867513, 0.16666667,\n 1. , 0.33333333, 1.5 , 0.28867513, 1.41421356,\n -0.81649658, 0.5 , -0.28867513, 3.46410162, 1.44337567,\n 0.28867513, 0.16666667, 1. , 0.33333333, 0.5 ,\n -0.28867513]), array([ 3.05085842, 0.86107353, 0.68690482, 3.46782652, 5.77440476,\n 0.18713935, 0.88680504, 5.31936332, 1.85744485, 1.41416709,\n 0.25946654, 3.34726724, 4.48869293, 0.50453799, 1.43858189,\n -0.24152551, 1.17622132, 0.11587108, 8.34545762, 1.4162593 ,\n 0.43928549, 0.336231 , 4.08380429, 1.15632545, 3.05085842,\n 0.86107353, 0.68690482, 5.31936333, 0.88680504, 1.85744486,\n 0.25946653, 1.41416709, 3.34726724, 1.17622132, 0.11587107,\n 1.43858189, -0.24152552, 4.08380429, -1.15632546, 5.31938635,\n 2.43400809, 0.68042695, 0.79155607, 1.89142585, 0.15524404,\n 2.96243402, 0.46879328, 1.03466801, 3.09662316, 0.4958687 ,\n 1.35357074, -0.31535984, 0.36310608, 0.22059957, 1.79674107,\n 0.12474411, 0.88337549, 0.15895804, 2.56929955, 4.49344088,\n 3.86866315, 0.67548334, 0.91686289, 0.17577899, 0.3712861 ,\n 1.13761467, 3.25491238, -1.19931831, 0.28659021, -0.22936352,\n 1.16097673, 0.22058257, 5.82865154, -2.22601608, 1.41067067,\n -0.99230848, 0.79155607, 1.89142587, 0.15524404, 5.31938637,\n 2.4340081 , 0.68042695, 2.96243402, ... 2.88245618, 0.85195414,\n 2.83284715, 0.81325083, 0.62795022, 4.69600433, 0.87761184,\n 1.55074172, 0.24006226, 3.64004362, 1.53530761, 1.00205949,\n 0.14826175, 1.41338403, -0.39455985, 3.72871958, -1.28615582,\n 0.56540966, 1.17752888, 3.99331102, 1.64832237, 0.28062424,\n 3.70645802, 5.16352959, -2.41179053, 1.80330713, 0.75497906,\n 0.13183775, 0.98857867, 3.67454032, 0.61483971, 0.41669874,\n -0.26501953, 1.64832236, 0.28062423, 3.706458 , 1.80330714,\n 0.75497905, 0.13183776, 0.98857867, 3.6745403 , 0.61483971,\n 0.41669876, -0.26501952, 4.17288651, 0.19991104, 2.34125801,\n 0.31652345, 0.62058386, 2.16684412, 2.72026236, 1.09980084,\n 0.31652346, 0.62058387, 2.16684415, 4.17288656, 0.19991104,\n 2.34125804, 2.72026246, 1.09980085, 3.34766794, 0.54552516,\n 0.89160837, 2.71838179, 1.25694571, 0.10224517, 0.17981149,\n 1.13321999, 0.38368428, 1.34894718, 0.37245404, 1.33261983,\n -0.89319085, 0.3251749 , -0.19117131, 2.71838184, 1.25694572,\n 0.10224519, 0.1798115 , 1.13322002, 0.38368428, 0.32517492,\n -0.19117132]), atol=1e-06) + where <function allclose at 0x7f09c590f930> = np.allclose + and array([ 3. , 0.83333333, 0.66666667, 3.33333333, 5.5 ,\n 0.16666667, 0.83333333, 5. , 1.66666667, 1.44337567,\n 0.28867513, 3.46410162, 4.24264069, 0.81649658, 1.5 ,\n -0.28867513, 1.06066017, 0.20412415, 7.4246212 , 1.83711731,\n 0.5 , 0.28867513, 4. , 1.15470054, 3. ,\n 0.83333333, 0.66666667, 5. , 0.83333333, 1.66666667,\n 0.28867513, 1.44337567, 3.46410162, 1.06066017, 0.20412415,\n 1.5 , -0.28867513, 4. , -1.15470054, 5.5 ,\n 2.33333333, 0.66666667, 0.83333333, 2. , 0.16666667,\n 3.46410162, 0.57735027, 1.15470054, 2.82842712, 0.81649658,\n 1.06066017, -0.20412415, 0.5 , 0.28867513, 2. ,\n 0.16666667, 0.83333333, 0.28867513, 4.04145188, 6.92820323,\n 3.5 , 0.66666667, 0.83333333, 0.16666667, 0.33333333,\n 1. , 4. , -1.15470054, 0.35355339, -0.20412415,\n 1.5 , 0.28867513, 5.30330086, -1.83711731, 1.41421356,\n -0.81649658, 0.83333333, 2. , 0.16666667, 5.5 ,\n 2.33333333, 0.66666667, 3.46410162, ... 2.82842712, 0.81649658,\n 3. , 0.83333333, 0.66666667, 5. , 0.83333333,\n 1.66666667, 0.28867513, 3.46410162, 1.44337567, 1.06066017,\n 0.20412415, 1.5 , -0.28867513, 4. , -1.15470054,\n 0.66666667, 1.33333333, 4. , 1.66666667, 0.33333333,\n 3.5 , 5.30330086, -1.83711731, 2. , 0.83333333,\n 0.16666667, 1.15470054, 3.46410162, 0.57735027, 0.35355339,\n -0.20412415, 1.66666667, 0.33333333, 3.5 , 2. ,\n 0.83333333, 0.16666667, 1.15470054, 3.46410162, 0.57735027,\n 0.35355339, -0.20412415, 4. , 0.16666667, 2.33333333,\n 0.33333333, 0.66666667, 2. , 4. , 1.15470054,\n 0.33333333, 0.66666667, 2. , 4. , 0.16666667,\n 2.33333333, 4. , 1.15470054, 3.5 , 0.66666667,\n 0.83333333, 3.46410162, 1.44337567, 0.28867513, 0.16666667,\n 1. , 0.33333333, 1.5 , 0.28867513, 1.41421356,\n -0.81649658, 0.5 , -0.28867513, 3.46410162, 1.44337567,\n 0.28867513, 0.16666667, 1. , 0.33333333, 0.5 ,\n -0.28867513]) = Dat(DataSet(Set((np.int64(556), np.int64(556), np.int64(556)), 'set_#x7f0972d98ec0'), (1,), 'None_nodes_dset'), None, dtype('float64'), 'function_8359').data + where Dat(DataSet(Set((np.int64(556), np.int64(556), np.int64(556)), 'set_#x7f0972d98ec0'), (1,), 'None_nodes_dset'), None, dtype('float64'), 'function_8359') = Coefficient(WithGeometry(FunctionSpace(<firedrake.mesh.MeshTopology object at 0x7f0995314560>, FiniteElement('Regge', tetrahedron, 1), name=None), Mesh(VectorElement(FiniteElement('Lagrange', tetrahedron, 1), dim=3), 8316)), 14107).dat + and array([ 3.05085842, 0.86107353, 0.68690482, 3.46782652, 5.77440476,\n 0.18713935, 0.88680504, 5.31936332, 1.85744485, 1.41416709,\n 0.25946654, 3.34726724, 4.48869293, 0.50453799, 1.43858189,\n -0.24152551, 1.17622132, 0.11587108, 8.34545762, 1.4162593 ,\n 0.43928549, 0.336231 , 4.08380429, 1.15632545, 3.05085842,\n 0.86107353, 0.68690482, 5.31936333, 0.88680504, 1.85744486,\n 0.25946653, 1.41416709, 3.34726724, 1.17622132, 0.11587107,\n 1.43858189, -0.24152552, 4.08380429, -1.15632546, 5.31938635,\n 2.43400809, 0.68042695, 0.79155607, 1.89142585, 0.15524404,\n 2.96243402, 0.46879328, 1.03466801, 3.09662316, 0.4958687 ,\n 1.35357074, -0.31535984, 0.36310608, 0.22059957, 1.79674107,\n 0.12474411, 0.88337549, 0.15895804, 2.56929955, 4.49344088,\n 3.86866315, 0.67548334, 0.91686289, 0.17577899, 0.3712861 ,\n 1.13761467, 3.25491238, -1.19931831, 0.28659021, -0.22936352,\n 1.16097673, 0.22058257, 5.82865154, -2.22601608, 1.41067067,\n -0.99230848, 0.79155607, 1.89142587, 0.15524404, 5.31938637,\n 2.4340081 , 0.68042695, 2.96243402, ... 2.88245618, 0.85195414,\n 2.83284715, 0.81325083, 0.62795022, 4.69600433, 0.87761184,\n 1.55074172, 0.24006226, 3.64004362, 1.53530761, 1.00205949,\n 0.14826175, 1.41338403, -0.39455985, 3.72871958, -1.28615582,\n 0.56540966, 1.17752888, 3.99331102, 1.64832237, 0.28062424,\n 3.70645802, 5.16352959, -2.41179053, 1.80330713, 0.75497906,\n 0.13183775, 0.98857867, 3.67454032, 0.61483971, 0.41669874,\n -0.26501953, 1.64832236, 0.28062423, 3.706458 , 1.80330714,\n 0.75497905, 0.13183776, 0.98857867, 3.6745403 , 0.61483971,\n 0.41669876, -0.26501952, 4.17288651, 0.19991104, 2.34125801,\n 0.31652345, 0.62058386, 2.16684412, 2.72026236, 1.09980084,\n 0.31652346, 0.62058387, 2.16684415, 4.17288656, 0.19991104,\n 2.34125804, 2.72026246, 1.09980085, 3.34766794, 0.54552516,\n 0.89160837, 2.71838179, 1.25694571, 0.10224517, 0.17981149,\n 1.13321999, 0.38368428, 1.34894718, 0.37245404, 1.33261983,\n -0.89319085, 0.3251749 , -0.19117131, 2.71838184, 1.25694572,\n 0.10224519, 0.1798115 , 1.13322002, 0.38368428, 0.32517492,\n -0.19117132]) = Dat(DataSet(Set((np.int64(556), np.int64(556), np.int64(556)), 'set_#x7f0972d98ec0'), (1,), 'None_nodes_dset'), None, dtype('float64'), 'function_8360').data + where Dat(DataSet(Set((np.int64(556), np.int64(556), np.int64(556)), 'set_#x7f0972d98ec0'), (1,), 'None_nodes_dset'), None, dtype('float64'), 'function_8360') = Coefficient(WithGeometry(FunctionSpace(<firedrake.mesh.MeshTopology object at 0x7f0995314560>, FiniteElement('Regge', tetrahedron, 1), name=None), Mesh(VectorElement(FiniteElement('Lagrange', tetrahedron, 1), dim=3), 8316)), 14109).dat

Artifacts

Produced during runtime
Name Size
github-pages Expired
77.4 MB