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from functools import wraps from sympy import Matrix, eye, Integer, expand, Indexed, Sum from sympy.combinatorics import Permutation from sympy.core import S, Rational, Symbol, Basic, Add from sympy.core.containers import Tuple from sympy.core.symbol import symbols from sympy.functions.elementary.miscellaneous import sqrt from sympy.tensor.array import Array from sympy.tensor.tensor import TensorIndexType, tensor_indices, TensorSymmetry, \ get_symmetric_group_sgs, TensorIndex, tensor_mul, TensAdd, \ riemann_cyclic_replace, riemann_cyclic, TensMul, tensor_heads, \ TensorManager, TensExpr, TensorHead, canon_bp, \ tensorhead, tensorsymmetry, TensorType, substitute_indices from sympy.testing.pytest import raises, XFAIL, warns_deprecated_sympy, ignore_warnings from sympy.utilities.exceptions import SymPyDeprecationWarning from sympy.matrices import diag def filter_warnings_decorator(f): @wraps(f) def wrapper(): with ignore_warnings(SymPyDeprecationWarning): f() return wrapper def _is_equal(arg1, arg2): if isinstance(arg1, TensExpr): return arg1.equals(arg2) elif isinstance(arg2, TensExpr): return arg2.equals(arg1) return arg1 == arg2 #################### Tests from tensor_can.py ####################### def test_canonicalize_no_slot_sym(): # A_d0 * B^d0; T_c = A^d0*B_d0 Lorentz = TensorIndexType('Lorentz', dummy_name='L') a, b, d0, d1 = tensor_indices('a,b,d0,d1', Lorentz) A, B = tensor_heads('A,B', [Lorentz], TensorSymmetry.no_symmetry(1)) t = A(-d0)*B(d0) tc = t.canon_bp() assert str(tc) == 'A(L_0)*B(-L_0)' # A^a * B^b; T_c = T t = A(a)*B(b) tc = t.canon_bp() assert tc == t # B^b * A^a t1 = B(b)*A(a) tc = t1.canon_bp() assert str(tc) == 'A(a)*B(b)' # A symmetric # A^{b}_{d0}*A^{d0, a}; T_c = A^{a d0}*A{b}_{d0} A = TensorHead('A', [Lorentz]*2, TensorSymmetry.fully_symmetric(2)) t = A(b, -d0)*A(d0, a) tc = t.canon_bp() assert str(tc) == 'A(a, L_0)*A(b, -L_0)' # A^{d1}_{d0}*B^d0*C_d1 # T_c = A^{d0 d1}*B_d0*C_d1 B, C = tensor_heads('B,C', [Lorentz], TensorSymmetry.no_symmetry(1)) t = A(d1, -d0)*B(d0)*C(-d1) tc = t.canon_bp() assert str(tc) == 'A(L_0, L_1)*B(-L_0)*C(-L_1)' # A without symmetry # A^{d1}_{d0}*B^d0*C_d1 ord=[d0,-d0,d1,-d1]; g = [2,1,0,3,4,5] # T_c = A^{d0 d1}*B_d1*C_d0; can = [0,2,3,1,4,5] A = TensorHead('A', [Lorentz]*2, TensorSymmetry.no_symmetry(2)) t = A(d1, -d0)*B(d0)*C(-d1) tc = t.canon_bp() assert str(tc) == 'A(L_0, L_1)*B(-L_1)*C(-L_0)' # A, B without symmetry # A^{d1}_{d0}*B_{d1}^{d0} # T_c = A^{d0 d1}*B_{d0 d1} B = TensorHead('B', [Lorentz]*2, TensorSymmetry.no_symmetry(2)) t = A(d1, -d0)*B(-d1, d0) tc = t.canon_bp() assert str(tc) == 'A(L_0, L_1)*B(-L_0, -L_1)' # A_{d0}^{d1}*B_{d1}^{d0} # T_c = A^{d0 d1}*B_{d1 d0} t = A(-d0, d1)*B(-d1, d0) tc = t.canon_bp() assert str(tc) == 'A(L_0, L_1)*B(-L_1, -L_0)' # A, B, C without symmetry # A^{d1 d0}*B_{a d0}*C_{d1 b} # T_c=A^{d0 d1}*B_{a d1}*C_{d0 b} C = TensorHead('C', [Lorentz]*2, TensorSymmetry.no_symmetry(2)) t = A(d1, d0)*B(-a, -d0)*C(-d1, -b) tc = t.canon_bp() assert str(tc) == 'A(L_0, L_1)*B(-a, -L_1)*C(-L_0, -b)' # A symmetric, B and C without symmetry # A^{d1 d0}*B_{a d0}*C_{d1 b} # T_c = A^{d0 d1}*B_{a d0}*C_{d1 b} A = TensorHead('A', [Lorentz]*2, TensorSymmetry.fully_symmetric(2)) t = A(d1, d0)*B(-a, -d0)*C(-d1, -b) tc = t.canon_bp() assert str(tc) == 'A(L_0, L_1)*B(-a, -L_0)*C(-L_1, -b)' # A and C symmetric, B without symmetry # A^{d1 d0}*B_{a d0}*C_{d1 b} ord=[a,b,d0,-d0,d1,-d1] # T_c = A^{d0 d1}*B_{a d0}*C_{b d1} C = TensorHead('C', [Lorentz]*2, TensorSymmetry.fully_symmetric(2)) t = A(d1, d0)*B(-a, -d0)*C(-d1, -b) tc = t.canon_bp() assert str(tc) == 'A(L_0, L_1)*B(-a, -L_0)*C(-b, -L_1)' def test_canonicalize_no_dummies(): Lorentz = TensorIndexType('Lorentz', dummy_name='L') a, b, c, d = tensor_indices('a, b, c, d', Lorentz) # A commuting # A^c A^b A^a # T_c = A^a A^b A^c A = TensorHead('A', [Lorentz], TensorSymmetry.no_symmetry(1)) t = A(c)*A(b)*A(a) tc = t.canon_bp() assert str(tc) == 'A(a)*A(b)*A(c)' # A anticommuting # A^c A^b A^a # T_c = -A^a A^b A^c A = TensorHead('A', [Lorentz], TensorSymmetry.no_symmetry(1), 1) t = A(c)*A(b)*A(a) tc = t.canon_bp() assert str(tc) == '-A(a)*A(b)*A(c)' # A commuting and symmetric # A^{b,d}*A^{c,a} # T_c = A^{a c}*A^{b d} A = TensorHead('A', [Lorentz]*2, TensorSymmetry.fully_symmetric(2)) t = A(b, d)*A(c, a) tc = t.canon_bp() assert str(tc) == 'A(a, c)*A(b, d)' # A anticommuting and symmetric # A^{b,d}*A^{c,a} # T_c = -A^{a c}*A^{b d} A = TensorHead('A', [Lorentz]*2, TensorSymmetry.fully_symmetric(2), 1) t = A(b, d)*A(c, a) tc = t.canon_bp() assert str(tc) == '-A(a, c)*A(b, d)' # A^{c,a}*A^{b,d} # T_c = A^{a c}*A^{b d} t = A(c, a)*A(b, d) tc = t.canon_bp() assert str(tc) == 'A(a, c)*A(b, d)' def test_tensorhead_construction_without_symmetry(): L = TensorIndexType('Lorentz') A1 = TensorHead('A', [L, L]) A2 = TensorHead('A', [L, L], TensorSymmetry.no_symmetry(2)) assert A1 == A2 A3 = TensorHead('A', [L, L], TensorSymmetry.fully_symmetric(2)) # Symmetric assert A1 != A3 def test_no_metric_symmetry(): # no metric symmetry; A no symmetry # A^d1_d0 * A^d0_d1 # T_c = A^d0_d1 * A^d1_d0 Lorentz = TensorIndexType('Lorentz', dummy_name='L', metric_symmetry=0) d0, d1, d2, d3 = tensor_indices('d:4', Lorentz) A = TensorHead('A', [Lorentz]*2, TensorSymmetry.no_symmetry(2)) t = A(d1, -d0)*A(d0, -d1) tc = t.canon_bp() assert str(tc) == 'A(L_0, -L_1)*A(L_1, -L_0)' # A^d1_d2 * A^d0_d3 * A^d2_d1 * A^d3_d0 # T_c = A^d0_d1 * A^d1_d0 * A^d2_d3 * A^d3_d2 t = A(d1, -d2)*A(d0, -d3)*A(d2, -d1)*A(d3, -d0) tc = t.canon_bp() assert str(tc) == 'A(L_0, -L_1)*A(L_1, -L_0)*A(L_2, -L_3)*A(L_3, -L_2)' # A^d0_d2 * A^d1_d3 * A^d3_d0 * A^d2_d1 # T_c = A^d0_d1 * A^d1_d2 * A^d2_d3 * A^d3_d0 t = A(d0, -d1)*A(d1, -d2)*A(d2, -d3)*A(d3, -d0) tc = t.canon_bp() assert str(tc) == 'A(L_0, -L_1)*A(L_1, -L_2)*A(L_2, -L_3)*A(L_3, -L_0)' def test_canonicalize1(): Lorentz = TensorIndexType('Lorentz', dummy_name='L') a, a0, a1, a2, a3, b, d0, d1, d2, d3 = \ tensor_indices('a,a0,a1,a2,a3,b,d0,d1,d2,d3', Lorentz) # A_d0*A^d0; ord = [d0,-d0] # T_c = A^d0*A_d0 A = TensorHead('A', [Lorentz], TensorSymmetry.no_symmetry(1)) t = A(-d0)*A(d0) tc = t.canon_bp() assert str(tc) == 'A(L_0)*A(-L_0)' # A commuting # A_d0*A_d1*A_d2*A^d2*A^d1*A^d0 # T_c = A^d0*A_d0*A^d1*A_d1*A^d2*A_d2 t = A(-d0)*A(-d1)*A(-d2)*A(d2)*A(d1)*A(d0) tc = t.canon_bp() assert str(tc) == 'A(L_0)*A(-L_0)*A(L_1)*A(-L_1)*A(L_2)*A(-L_2)' # A anticommuting # A_d0*A_d1*A_d2*A^d2*A^d1*A^d0 # T_c 0 A = TensorHead('A', [Lorentz], TensorSymmetry.no_symmetry(1), 1) t = A(-d0)*A(-d1)*A(-d2)*A(d2)*A(d1)*A(d0) tc = t.canon_bp() assert tc == 0 # A commuting symmetric # A^{d0 b}*A^a_d1*A^d1_d0 # T_c = A^{a d0}*A^{b d1}*A_{d0 d1} A = TensorHead('A', [Lorentz]*2, TensorSymmetry.fully_symmetric(2)) t = A(d0, b)*A(a, -d1)*A(d1, -d0) tc = t.canon_bp() assert str(tc) == 'A(a, L_0)*A(b, L_1)*A(-L_0, -L_1)' # A, B commuting symmetric # A^{d0 b}*A^d1_d0*B^a_d1 # T_c = A^{b d0}*A_d0^d1*B^a_d1 B = TensorHead('B', [Lorentz]*2, TensorSymmetry.fully_symmetric(2)) t = A(d0, b)*A(d1, -d0)*B(a, -d1) tc = t.canon_bp() assert str(tc) == 'A(b, L_0)*A(-L_0, L_1)*B(a, -L_1)' # A commuting symmetric # A^{d1 d0 b}*A^{a}_{d1 d0}; ord=[a,b, d0,-d0,d1,-d1] # T_c = A^{a d0 d1}*A^{b}_{d0 d1} A = TensorHead('A', [Lorentz]*3, TensorSymmetry.fully_symmetric(3)) t = A(d1, d0, b)*A(a, -d1, -d0) tc = t.canon_bp() assert str(tc) == 'A(a, L_0, L_1)*A(b, -L_0, -L_1)' # A^{d3 d0 d2}*A^a0_{d1 d2}*A^d1_d3^a1*A^{a2 a3}_d0 # T_c = A^{a0 d0 d1}*A^a1_d0^d2*A^{a2 a3 d3}*A_{d1 d2 d3} t = A(d3, d0, d2)*A(a0, -d1, -d2)*A(d1, -d3, a1)*A(a2, a3, -d0) tc = t.canon_bp() assert str(tc) == 'A(a0, L_0, L_1)*A(a1, -L_0, L_2)*A(a2, a3, L_3)*A(-L_1, -L_2, -L_3)' # A commuting symmetric, B antisymmetric # A^{d0 d1 d2} * A_{d2 d3 d1} * B_d0^d3 # in this esxample and in the next three, # renaming dummy indices and using symmetry of A, # T = A^{d0 d1 d2} * A_{d0 d1 d3} * B_d2^d3 # can = 0 A = TensorHead('A', [Lorentz]*3, TensorSymmetry.fully_symmetric(3)) B = TensorHead('B', [Lorentz]*2, TensorSymmetry.fully_symmetric(-2)) t = A(d0, d1, d2)*A(-d2, -d3, -d1)*B(-d0, d3) tc = t.canon_bp() assert tc == 0 # A anticommuting symmetric, B antisymmetric # A^{d0 d1 d2} * A_{d2 d3 d1} * B_d0^d3 # T_c = A^{d0 d1 d2} * A_{d0 d1}^d3 * B_{d2 d3} A = TensorHead('A', [Lorentz]*3, TensorSymmetry.fully_symmetric(3), 1) B = TensorHead('B', [Lorentz]*2, TensorSymmetry.fully_symmetric(-2)) t = A(d0, d1, d2)*A(-d2, -d3, -d1)*B(-d0, d3) tc = t.canon_bp() assert str(tc) == 'A(L_0, L_1, L_2)*A(-L_0, -L_1, L_3)*B(-L_2, -L_3)' # A anticommuting symmetric, B antisymmetric commuting, antisymmetric metric # A^{d0 d1 d2} * A_{d2 d3 d1} * B_d0^d3 # T_c = -A^{d0 d1 d2} * A_{d0 d1}^d3 * B_{d2 d3} Spinor = TensorIndexType('Spinor', dummy_name='S', metric_symmetry=-1) a, a0, a1, a2, a3, b, d0, d1, d2, d3 = \ tensor_indices('a,a0,a1,a2,a3,b,d0,d1,d2,d3', Spinor) A = TensorHead('A', [Spinor]*3, TensorSymmetry.fully_symmetric(3), 1) B = TensorHead('B', [Spinor]*2, TensorSymmetry.fully_symmetric(-2)) t = A(d0, d1, d2)*A(-d2, -d3, -d1)*B(-d0, d3) tc = t.canon_bp() assert str(tc) == '-A(S_0, S_1, S_2)*A(-S_0, -S_1, S_3)*B(-S_2, -S_3)' # A anticommuting symmetric, B antisymmetric anticommuting, # no metric symmetry # A^{d0 d1 d2} * A_{d2 d3 d1} * B_d0^d3 # T_c = A^{d0 d1 d2} * A_{d0 d1 d3} * B_d2^d3 Mat = TensorIndexType('Mat', metric_symmetry=0, dummy_name='M') a, a0, a1, a2, a3, b, d0, d1, d2, d3 = \ tensor_indices('a,a0,a1,a2,a3,b,d0,d1,d2,d3', Mat) A = TensorHead('A', [Mat]*3, TensorSymmetry.fully_symmetric(3), 1) B = TensorHead('B', [Mat]*2, TensorSymmetry.fully_symmetric(-2)) t = A(d0, d1, d2)*A(-d2, -d3, -d1)*B(-d0, d3) tc = t.canon_bp() assert str(tc) == 'A(M_0, M_1, M_2)*A(-M_0, -M_1, -M_3)*B(-M_2, M_3)' # Gamma anticommuting # Gamma_{mu nu} * gamma^rho * Gamma^{nu mu alpha} # T_c = -Gamma^{mu nu} * gamma^rho * Gamma_{alpha mu nu} alpha, beta, gamma, mu, nu, rho = \ tensor_indices('alpha,beta,gamma,mu,nu,rho', Lorentz) Gamma = TensorHead('Gamma', [Lorentz], TensorSymmetry.fully_symmetric(1), 2) Gamma2 = TensorHead('Gamma', [Lorentz]*2, TensorSymmetry.fully_symmetric(-2), 2) Gamma3 = TensorHead('Gamma', [Lorentz]*3, TensorSymmetry.fully_symmetric(-3), 2) t = Gamma2(-mu, -nu)*Gamma(rho)*Gamma3(nu, mu, alpha) tc = t.canon_bp() assert str(tc) == '-Gamma(L_0, L_1)*Gamma(rho)*Gamma(alpha, -L_0, -L_1)' # Gamma_{mu nu} * Gamma^{gamma beta} * gamma_rho * Gamma^{nu mu alpha} # T_c = Gamma^{mu nu} * Gamma^{beta gamma} * gamma_rho * Gamma^alpha_{mu nu} t = Gamma2(mu, nu)*Gamma2(beta, gamma)*Gamma(-rho)*Gamma3(alpha, -mu, -nu) tc = t.canon_bp() assert str(tc) == 'Gamma(L_0, L_1)*Gamma(beta, gamma)*Gamma(-rho)*Gamma(alpha, -L_0, -L_1)' # f^a_{b,c} antisymmetric in b,c; A_mu^a no symmetry # f^c_{d a} * f_{c e b} * A_mu^d * A_nu^a * A^{nu e} * A^{mu b} # g = [8,11,5, 9,13,7, 1,10, 3,4, 2,12, 0,6, 14,15] # T_c = -f^{a b c} * f_a^{d e} * A^mu_b * A_{mu d} * A^nu_c * A_{nu e} Flavor = TensorIndexType('Flavor', dummy_name='F') a, b, c, d, e, ff = tensor_indices('a,b,c,d,e,f', Flavor) mu, nu = tensor_indices('mu,nu', Lorentz) f = TensorHead('f', [Flavor]*3, TensorSymmetry.direct_product(1, -2)) A = TensorHead('A', [Lorentz, Flavor], TensorSymmetry.no_symmetry(2)) t = f(c, -d, -a)*f(-c, -e, -b)*A(-mu, d)*A(-nu, a)*A(nu, e)*A(mu, b) tc = t.canon_bp() assert str(tc) == '-f(F_0, F_1, F_2)*f(-F_0, F_3, F_4)*A(L_0, -F_1)*A(-L_0, -F_3)*A(L_1, -F_2)*A(-L_1, -F_4)' def test_bug_correction_tensor_indices(): # to make sure that tensor_indices does not return a list if creating # only one index: A = TensorIndexType("A") i = tensor_indices('i', A) assert not isinstance(i, (tuple, list)) assert isinstance(i, TensorIndex) def test_riemann_invariants(): Lorentz = TensorIndexType('Lorentz', dummy_name='L') d0, d1, d2, d3, d4, d5, d6, d7, d8, d9, d10, d11 = \ tensor_indices('d0:12', Lorentz) # R^{d0 d1}_{d1 d0}; ord = [d0,-d0,d1,-d1] # T_c = -R^{d0 d1}_{d0 d1} R = TensorHead('R', [Lorentz]*4, TensorSymmetry.riemann()) t = R(d0, d1, -d1, -d0) tc = t.canon_bp() assert str(tc) == '-R(L_0, L_1, -L_0, -L_1)' # R_d11^d1_d0^d5 * R^{d6 d4 d0}_d5 * R_{d7 d2 d8 d9} * # R_{d10 d3 d6 d4} * R^{d2 d7 d11}_d1 * R^{d8 d9 d3 d10} # can = [0,2,4,6, 1,3,8,10, 5,7,12,14, 9,11,16,18, 13,15,20,22, # 17,19,21<F10,23, 24,25] # T_c = R^{d0 d1 d2 d3} * R_{d0 d1}^{d4 d5} * R_{d2 d3}^{d6 d7} * # R_{d4 d5}^{d8 d9} * R_{d6 d7}^{d10 d11} * R_{d8 d9 d10 d11} t = R(-d11,d1,-d0,d5)*R(d6,d4,d0,-d5)*R(-d7,-d2,-d8,-d9)* \ R(-d10,-d3,-d6,-d4)*R(d2,d7,d11,-d1)*R(d8,d9,d3,d10) tc = t.canon_bp() assert str(tc) == 'R(L_0, L_1, L_2, L_3)*R(-L_0, -L_1, L_4, L_5)*R(-L_2, -L_3, L_6, L_7)*R(-L_4, -L_5, L_8, L_9)*R(-L_6, -L_7, L_10, L_11)*R(-L_8, -L_9, -L_10, -L_11)' def test_riemann_products(): Lorentz = TensorIndexType('Lorentz', dummy_name='L') d0, d1, d2, d3, d4, d5, d6 = tensor_indices('d0:7', Lorentz) a0, a1, a2, a3, a4, a5 = tensor_indices('a0:6', Lorentz) a, b = tensor_indices('a,b', Lorentz) R = TensorHead('R', [Lorentz]*4, TensorSymmetry.riemann()) # R^{a b d0}_d0 = 0 t = R(a, b, d0, -d0) tc = t.canon_bp() assert tc == 0 # R^{d0 b a}_d0 # T_c = -R^{a d0 b}_d0 t = R(d0, b, a, -d0) tc = t.canon_bp() assert str(tc) == '-R(a, L_0, b, -L_0)' # R^d1_d2^b_d0 * R^{d0 a}_d1^d2; ord=[a,b,d0,-d0,d1,-d1,d2,-d2] # T_c = -R^{a d0 d1 d2}* R^b_{d0 d1 d2} t = R(d1, -d2, b, -d0)*R(d0, a, -d1, d2) tc = t.canon_bp() assert str(tc) == '-R(a, L_0, L_1, L_2)*R(b, -L_0, -L_1, -L_2)' # A symmetric commuting # R^{d6 d5}_d2^d1 * R^{d4 d0 d2 d3} * A_{d6 d0} A_{d3 d1} * A_{d4 d5} # g = [12,10,5,2, 8,0,4,6, 13,1, 7,3, 9,11,14,15] # T_c = -R^{d0 d1 d2 d3} * R_d0^{d4 d5 d6} * A_{d1 d4}*A_{d2 d5}*A_{d3 d6} V = TensorHead('V', [Lorentz]*2, TensorSymmetry.fully_symmetric(2)) t = R(d6, d5, -d2, d1)*R(d4, d0, d2, d3)*V(-d6, -d0)*V(-d3, -d1)*V(-d4, -d5) tc = t.canon_bp() assert str(tc) == '-R(L_0, L_1, L_2, L_3)*R(-L_0, L_4, L_5, L_6)*V(-L_1, -L_4)*V(-L_2, -L_5)*V(-L_3, -L_6)' # R^{d2 a0 a2 d0} * R^d1_d2^{a1 a3} * R^{a4 a5}_{d0 d1} # T_c = R^{a0 d0 a2 d1}*R^{a1 a3}_d0^d2*R^{a4 a5}_{d1 d2} t = R(d2, a0, a2, d0)*R(d1, -d2, a1, a3)*R(a4, a5, -d0, -d1) tc = t.canon_bp() assert str(tc) == 'R(a0, L_0, a2, L_1)*R(a1, a3, -L_0, L_2)*R(a4, a5, -L_1, -L_2)' ###################################################################### def test_canonicalize2(): D = Symbol('D') Eucl = TensorIndexType('Eucl', metric_symmetry=1, dim=D, dummy_name='E') i0,i1,i2,i3,i4,i5,i6,i7,i8,i9,i10,i11,i12,i13,i14 = \ tensor_indices('i0:15', Eucl) A = TensorHead('A', [Eucl]*3, TensorSymmetry.fully_symmetric(-3)) # two examples from Cvitanovic, Group Theory page 59 # of identities for antisymmetric tensors of rank 3 # contracted according to the Kuratowski graph eq.(6.59) t = A(i0,i1,i2)*A(-i1,i3,i4)*A(-i3,i7,i5)*A(-i2,-i5,i6)*A(-i4,-i6,i8) t1 = t.canon_bp() assert t1 == 0 # eq.(6.60) #t = A(i0,i1,i2)*A(-i1,i3,i4)*A(-i2,i5,i6)*A(-i3,i7,i8)*A(-i6,-i7,i9)* # A(-i8,i10,i13)*A(-i5,-i10,i11)*A(-i4,-i11,i12)*A(-i3,-i12,i14) t = A(i0,i1,i2)*A(-i1,i3,i4)*A(-i2,i5,i6)*A(-i3,i7,i8)*A(-i6,-i7,i9)*\ A(-i8,i10,i13)*A(-i5,-i10,i11)*A(-i4,-i11,i12)*A(-i9,-i12,i14) t1 = t.canon_bp() assert t1 == 0 def test_canonicalize3(): D = Symbol('D') Spinor = TensorIndexType('Spinor', dim=D, metric_symmetry=-1, dummy_name='S') a0,a1,a2,a3,a4 = tensor_indices('a0:5', Spinor) chi, psi = tensor_heads('chi,psi', [Spinor], TensorSymmetry.no_symmetry(1), 1) t = chi(a1)*psi(a0) t1 = t.canon_bp() assert t1 == t t = psi(a1)*chi(a0) t1 = t.canon_bp() assert t1 == -chi(a0)*psi(a1) def test_TensorIndexType(): D = Symbol('D') Lorentz = TensorIndexType('Lorentz', metric_name='g', metric_symmetry=1, dim=D, dummy_name='L') m0, m1, m2, m3, m4 = tensor_indices('m0:5', Lorentz) sym2 = TensorSymmetry.fully_symmetric(2) sym2n = TensorSymmetry(*get_symmetric_group_sgs(2)) assert sym2 == sym2n g = Lorentz.metric assert str(g) == 'g(Lorentz,Lorentz)' assert Lorentz.eps_dim == Lorentz.dim TSpace = TensorIndexType('TSpace', dummy_name = 'TSpace') i0, i1 = tensor_indices('i0 i1', TSpace) g = TSpace.metric A = TensorHead('A', [TSpace]*2, sym2) assert str(A(i0,-i0).canon_bp()) == 'A(TSpace_0, -TSpace_0)' def test_indices(): Lorentz = TensorIndexType('Lorentz', dummy_name='L') a, b, c, d = tensor_indices('a,b,c,d', Lorentz) assert a.tensor_index_type == Lorentz assert a != -a A, B = tensor_heads('A B', [Lorentz]*2, TensorSymmetry.fully_symmetric(2)) t = A(a,b)*B(-b,c) indices = t.get_indices() L_0 = TensorIndex('L_0', Lorentz) assert indices == [a, L_0, -L_0, c] raises(ValueError, lambda: tensor_indices(3, Lorentz)) raises(ValueError, lambda: A(a,b,c)) A = TensorHead('A', [Lorentz, Lorentz]) assert A('a', 'b') == A(TensorIndex('a', Lorentz), TensorIndex('b', Lorentz)) assert A('a', '-b') == A(TensorIndex('a', Lorentz), TensorIndex('b', Lorentz, is_up=False)) assert A('a', TensorIndex('b', Lorentz)) == A(TensorIndex('a', Lorentz), TensorIndex('b', Lorentz)) def test_TensorSymmetry(): assert TensorSymmetry.fully_symmetric(2) == \ TensorSymmetry(get_symmetric_group_sgs(2)) assert TensorSymmetry.fully_symmetric(-3) == \ TensorSymmetry(get_symmetric_group_sgs(3, True)) assert TensorSymmetry.direct_product(-4) == \ TensorSymmetry.fully_symmetric(-4) assert TensorSymmetry.fully_symmetric(-1) == \ TensorSymmetry.fully_symmetric(1) assert TensorSymmetry.direct_product(1, -1, 1) == \ TensorSymmetry.no_symmetry(3) assert TensorSymmetry(get_symmetric_group_sgs(2)) == \ TensorSymmetry(*get_symmetric_group_sgs(2)) # TODO: add check for *get_symmetric_group_sgs(0) sym = TensorSymmetry.fully_symmetric(-3) assert sym.rank == 3 assert sym.base == Tuple(0, 1) assert sym.generators == Tuple(Permutation(0, 1)(3, 4), Permutation(1, 2)(3, 4)) def test_TensExpr(): Lorentz = TensorIndexType('Lorentz', dummy_name='L') a, b, c, d = tensor_indices('a,b,c,d', Lorentz) g = Lorentz.metric A, B = tensor_heads('A B', [Lorentz]*2, TensorSymmetry.fully_symmetric(2)) raises(ValueError, lambda: g(c, d)/g(a, b)) raises(ValueError, lambda: S.One/g(a, b)) raises(ValueError, lambda: (A(c, d) + g(c, d))/g(a, b)) raises(ValueError, lambda: S.One/(A(c, d) + g(c, d))) raises(ValueError, lambda: A(a, b) + A(a, c)) A(a, b) + B(a, b) # assigned to t for below #raises(NotImplementedError, lambda: TensExpr.__mul__(t, 'a')) #raises(NotImplementedError, lambda: TensExpr.__add__(t, 'a')) #raises(NotImplementedError, lambda: TensExpr.__radd__(t, 'a')) #raises(NotImplementedError, lambda: TensExpr.__sub__(t, 'a')) #raises(NotImplementedError, lambda: TensExpr.__rsub__(t, 'a')) #raises(NotImplementedError, lambda: TensExpr.__truediv__(t, 'a')) #raises(NotImplementedError, lambda: TensExpr.__rtruediv__(t, 'a')) with ignore_warnings(SymPyDeprecationWarning): # DO NOT REMOVE THIS AFTER DEPRECATION REMOVED: raises(ValueError, lambda: A(a, b)**2) raises(NotImplementedError, lambda: 2**A(a, b)) raises(NotImplementedError, lambda: abs(A(a, b))) def test_TensorHead(): # simple example of algebraic expression Lorentz = TensorIndexType('Lorentz', dummy_name='L') A = TensorHead('A', [Lorentz]*2) assert A.name == 'A' assert A.index_types == [Lorentz, Lorentz] assert A.rank == 2 assert A.symmetry == TensorSymmetry.no_symmetry(2) assert A.comm == 0 def test_add1(): assert TensAdd().args == () assert TensAdd().doit() == 0 # simple example of algebraic expression Lorentz = TensorIndexType('Lorentz', dummy_name='L') a,b,d0,d1,i,j,k = tensor_indices('a,b,d0,d1,i,j,k', Lorentz) # A, B symmetric A, B = tensor_heads('A,B', [Lorentz]*2, TensorSymmetry.fully_symmetric(2)) t1 = A(b, -d0)*B(d0, a) assert TensAdd(t1).equals(t1) t2a = B(d0, a) + A(d0, a) t2 = A(b, -d0)*t2a assert str(t2) == 'A(b, -L_0)*(A(L_0, a) + B(L_0, a))' t2 = t2.expand() assert str(t2) == 'A(b, -L_0)*A(L_0, a) + A(b, -L_0)*B(L_0, a)' t2 = t2.canon_bp() assert str(t2) == 'A(a, L_0)*A(b, -L_0) + A(b, L_0)*B(a, -L_0)' t2b = t2 + t1 assert str(t2b) == 'A(a, L_0)*A(b, -L_0) + A(b, -L_0)*B(L_0, a) + A(b, L_0)*B(a, -L_0)' t2b = t2b.canon_bp() assert str(t2b) == 'A(a, L_0)*A(b, -L_0) + 2*A(b, L_0)*B(a, -L_0)' p, q, r = tensor_heads('p,q,r', [Lorentz]) t = q(d0)*2 assert str(t) == '2*q(d0)' t = 2*q(d0) assert str(t) == '2*q(d0)' t1 = p(d0) + 2*q(d0) assert str(t1) == '2*q(d0) + p(d0)' t2 = p(-d0) + 2*q(-d0) assert str(t2) == '2*q(-d0) + p(-d0)' t1 = p(d0) t3 = t1*t2 assert str(t3) == 'p(L_0)*(2*q(-L_0) + p(-L_0))' t3 = t3.expand() assert str(t3) == 'p(L_0)*p(-L_0) + 2*p(L_0)*q(-L_0)' t3 = t2*t1 t3 = t3.expand() assert str(t3) == 'p(-L_0)*p(L_0) + 2*q(-L_0)*p(L_0)' t3 = t3.canon_bp() assert str(t3) == 'p(L_0)*p(-L_0) + 2*p(L_0)*q(-L_0)' t1 = p(d0) + 2*q(d0) t3 = t1*t2 t3 = t3.canon_bp() assert str(t3) == 'p(L_0)*p(-L_0) + 4*p(L_0)*q(-L_0) + 4*q(L_0)*q(-L_0)' t1 = p(d0) - 2*q(d0) assert str(t1) == '-2*q(d0) + p(d0)' t2 = p(-d0) + 2*q(-d0) t3 = t1*t2 t3 = t3.canon_bp() assert t3 == p(d0)*p(-d0) - 4*q(d0)*q(-d0) t = p(i)*p(j)*(p(k) + q(k)) + p(i)*(p(j) + q(j))*(p(k) - 3*q(k)) t = t.canon_bp() assert t == 2*p(i)*p(j)*p(k) - 2*p(i)*p(j)*q(k) + p(i)*p(k)*q(j) - 3*p(i)*q(j)*q(k) t1 = (p(i) + q(i) + 2*r(i))*(p(j) - q(j)) t2 = (p(j) + q(j) + 2*r(j))*(p(i) - q(i)) t = t1 + t2 t = t.canon_bp() assert t == 2*p(i)*p(j) + 2*p(i)*r(j) + 2*p(j)*r(i) - 2*q(i)*q(j) - 2*q(i)*r(j) - 2*q(j)*r(i) t = p(i)*q(j)/2 assert 2*t == p(i)*q(j) t = (p(i) + q(i))/2 assert 2*t == p(i) + q(i) t = S.One - p(i)*p(-i) t = t.canon_bp() tz1 = t + p(-j)*p(j) assert tz1 != 1 tz1 = tz1.canon_bp() assert tz1.equals(1) t = S.One + p(i)*p(-i) assert (t - p(-j)*p(j)).canon_bp().equals(1) t = A(a, b) + B(a, b) assert t.rank == 2 t1 = t - A(a, b) - B(a, b) assert t1 == 0 t = 1 - (A(a, -a) + B(a, -a)) t1 = 1 + (A(a, -a) + B(a, -a)) assert (t + t1).expand().equals(2) t2 = 1 + A(a, -a) assert t1 != t2 assert t2 != TensMul.from_data(0, [], [], []) def test_special_eq_ne(): # test special equality cases: Lorentz = TensorIndexType('Lorentz', dummy_name='L') a, b, d0, d1, i, j, k = tensor_indices('a,b,d0,d1,i,j,k', Lorentz) # A, B symmetric A, B = tensor_heads('A,B', [Lorentz]*2, TensorSymmetry.fully_symmetric(2)) p, q, r = tensor_heads('p,q,r', [Lorentz]) t = 0*A(a, b) assert _is_equal(t, 0) assert _is_equal(t, S.Zero) assert p(i) != A(a, b) assert A(a, -a) != A(a, b) assert 0*(A(a, b) + B(a, b)) == 0 assert 0*(A(a, b) + B(a, b)) is S.Zero assert 3*(A(a, b) - A(a, b)) is S.Zero assert p(i) + q(i) != A(a, b) assert p(i) + q(i) != A(a, b) + B(a, b) assert p(i) - p(i) == 0 assert p(i) - p(i) is S.Zero assert _is_equal(A(a, b), A(b, a)) def test_add2(): Lorentz = TensorIndexType('Lorentz', dummy_name='L') m, n, p, q = tensor_indices('m,n,p,q', Lorentz) R = TensorHead('R', [Lorentz]*4, TensorSymmetry.riemann()) A = TensorHead('A', [Lorentz]*3, TensorSymmetry.fully_symmetric(-3)) t1 = 2*R(m, n, p, q) - R(m, q, n, p) + R(m, p, n, q) t2 = t1*A(-n, -p, -q) t2 = t2.canon_bp() assert t2 == 0 t1 = Rational(2, 3)*R(m,n,p,q) - Rational(1, 3)*R(m,q,n,p) + Rational(1, 3)*R(m,p,n,q) t2 = t1*A(-n, -p, -q) t2 = t2.canon_bp() assert t2 == 0 t = A(m, -m, n) + A(n, p, -p) t = t.canon_bp() assert t == 0 def test_add3(): Lorentz = TensorIndexType('Lorentz', dummy_name='L') i0, i1 = tensor_indices('i0:2', Lorentz) E, px, py, pz = symbols('E px py pz') A = TensorHead('A', [Lorentz]) B = TensorHead('B', [Lorentz]) expr1 = A(i0)*A(-i0) - (E**2 - px**2 - py**2 - pz**2) assert expr1.args == (-E**2, px**2, py**2, pz**2, A(i0)*A(-i0)) expr2 = E**2 - px**2 - py**2 - pz**2 - A(i0)*A(-i0) assert expr2.args == (E**2, -px**2, -py**2, -pz**2, -A(i0)*A(-i0)) expr3 = A(i0)*A(-i0) - E**2 + px**2 + py**2 + pz**2 assert expr3.args == (-E**2, px**2, py**2, pz**2, A(i0)*A(-i0)) expr4 = B(i1)*B(-i1) + 2*E**2 - 2*px**2 - 2*py**2 - 2*pz**2 - A(i0)*A(-i0) assert expr4.args == (2*E**2, -2*px**2, -2*py**2, -2*pz**2, B(i1)*B(-i1), -A(i0)*A(-i0)) def test_mul(): from sympy.abc import x Lorentz = TensorIndexType('Lorentz', dummy_name='L') a, b, c, d = tensor_indices('a,b,c,d', Lorentz) t = TensMul.from_data(S.One, [], [], []) assert str(t) == '1' A, B = tensor_heads('A B', [Lorentz]*2, TensorSymmetry.fully_symmetric(2)) t = (1 + x)*A(a, b) assert str(t) == '(x + 1)*A(a, b)' assert t.index_types == [Lorentz, Lorentz] assert t.rank == 2 assert t.dum == [] assert t.coeff == 1 + x assert sorted(t.free) == [(a, 0), (b, 1)] assert t.components == [A] ts = A(a, b) assert str(ts) == 'A(a, b)' assert ts.index_types == [Lorentz, Lorentz] assert ts.rank == 2 assert ts.dum == [] assert ts.coeff == 1 assert sorted(ts.free) == [(a, 0), (b, 1)] assert ts.components == [A] t = A(-b, a)*B(-a, c)*A(-c, d) t1 = tensor_mul(*t.split()) assert t == t1 assert tensor_mul(*[]) == TensMul.from_data(S.One, [], [], []) t = TensMul.from_data(1, [], [], []) C = TensorHead('C', []) assert str(C()) == 'C' assert str(t) == '1' assert t == 1 raises(ValueError, lambda: A(a, b)*A(a, c)) def test_substitute_indices(): Lorentz = TensorIndexType('Lorentz', dummy_name='L') i, j, k, l, m, n, p, q = tensor_indices('i,j,k,l,m,n,p,q', Lorentz) A, B = tensor_heads('A,B', [Lorentz]*2, TensorSymmetry.fully_symmetric(2)) p = TensorHead('p', [Lorentz]) t = p(i) t1 = t.substitute_indices((j, k)) assert t1 == t t1 = t.substitute_indices((i, j)) assert t1 == p(j) t1 = t.substitute_indices((i, -j)) assert t1 == p(-j) t1 = t.substitute_indices((-i, j)) assert t1 == p(-j) t1 = t.substitute_indices((-i, -j)) assert t1 == p(j) t = A(m, n) t1 = t.substitute_indices((m, i), (n, -i)) assert t1 == A(n, -n) t1 = substitute_indices(t, (m, i), (n, -i)) assert t1 == A(n, -n) t = A(i, k)*B(-k, -j) t1 = t.substitute_indices((i, j), (j, k)) t1a = A(j, l)*B(-l, -k) assert t1 == t1a t1 = substitute_indices(t, (i, j), (j, k)) assert t1 == t1a t = A(i, j) + B(i, j) t1 = t.substitute_indices((j, -i)) t1a = A(i, -i) + B(i, -i) assert t1 == t1a t1 = substitute_indices(t, (j, -i)) assert t1 == t1a def test_riemann_cyclic_replace(): Lorentz = TensorIndexType('Lorentz', dummy_name='L') m0, m1, m2, m3 = tensor_indices('m:4', Lorentz) R = TensorHead('R', [Lorentz]*4, TensorSymmetry.riemann()) t = R(m0, m2, m1, m3) t1 = riemann_cyclic_replace(t) t1a = Rational(-1, 3)*R(m0, m3, m2, m1) + Rational(1, 3)*R(m0, m1, m2, m3) + Rational(2, 3)*R(m0, m2, m1, m3) assert t1 == t1a def test_riemann_cyclic(): Lorentz = TensorIndexType('Lorentz', dummy_name='L') i, j, k, l, m, n, p, q = tensor_indices('i,j,k,l,m,n,p,q', Lorentz) R = TensorHead('R', [Lorentz]*4, TensorSymmetry.riemann()) t = R(i,j,k,l) + R(i,l,j,k) + R(i,k,l,j) - \ R(i,j,l,k) - R(i,l,k,j) - R(i,k,j,l) t2 = t*R(-i,-j,-k,-l) t3 = riemann_cyclic(t2) assert t3 == 0 t = R(i,j,k,l)*(R(-i,-j,-k,-l) - 2*R(-i,-k,-j,-l)) t1 = riemann_cyclic(t) assert t1 == 0 t = R(i,j,k,l) t1 = riemann_cyclic(t) assert t1 == Rational(-1, 3)*R(i, l, j, k) + Rational(1, 3)*R(i, k, j, l) + Rational(2, 3)*R(i, j, k, l) t = R(i,j,k,l)*R(-k,-l,m,n)*(R(-m,-n,-i,-j) + 2*R(-m,-j,-n,-i)) t1 = riemann_cyclic(t) assert t1 == 0 @XFAIL def test_div(): Lorentz = TensorIndexType('Lorentz', dummy_name='L') m0, m1, m2, m3 = tensor_indices('m0:4', Lorentz) R = TensorHead('R', [Lorentz]*4, TensorSymmetry.riemann()) t = R(m0,m1,-m1,m3) t1 = t/S(4) assert str(t1) == '(1/4)*R(m0, L_0, -L_0, m3)' t = t.canon_bp() assert not t1._is_canon_bp t1 = t*4 assert t1._is_canon_bp t1 = t1/4 assert t1._is_canon_bp def test_contract_metric1(): D = Symbol('D') Lorentz = TensorIndexType('Lorentz', dim=D, dummy_name='L') a, b, c, d, e = tensor_indices('a,b,c,d,e', Lorentz) g = Lorentz.metric p = TensorHead('p', [Lorentz]) t = g(a, b)*p(-b) t1 = t.contract_metric(g) assert t1 == p(a) A, B = tensor_heads('A,B', [Lorentz]*2, TensorSymmetry.fully_symmetric(2)) # case with g with all free indices t1 = A(a,b)*B(-b,c)*g(d, e) t2 = t1.contract_metric(g) assert t1 == t2 # case of g(d, -d) t1 = A(a,b)*B(-b,c)*g(-d, d) t2 = t1.contract_metric(g) assert t2 == D*A(a, d)*B(-d, c) # g with one free index t1 = A(a,b)*B(-b,-c)*g(c, d) t2 = t1.contract_metric(g) assert t2 == A(a, c)*B(-c, d) # g with both indices contracted with another tensor t1 = A(a,b)*B(-b,-c)*g(c, -a) t2 = t1.contract_metric(g) assert _is_equal(t2, A(a, b)*B(-b, -a)) t1 = A(a,b)*B(-b,-c)*g(c, d)*g(-a, -d) t2 = t1.contract_metric(g) assert _is_equal(t2, A(a,b)*B(-b,-a)) t1 = A(a,b)*g(-a,-b) t2 = t1.contract_metric(g) assert _is_equal(t2, A(a, -a)) assert not t2.free Lorentz = TensorIndexType('Lorentz', dummy_name='L') a, b = tensor_indices('a,b', Lorentz) g = Lorentz.metric assert _is_equal(g(a, -a).contract_metric(g), Lorentz.dim) # no dim def test_contract_metric2(): D = Symbol('D') Lorentz = TensorIndexType('Lorentz', dim=D, dummy_name='L') a, b, c, d, e, L_0 = tensor_indices('a,b,c,d,e,L_0', Lorentz) g = Lorentz.metric p, q = tensor_heads('p,q', [Lorentz]) t1 = g(a,b)*p(c)*p(-c) t2 = 3*g(-a,-b)*q(c)*q(-c) t = t1*t2 t = t.contract_metric(g) assert t == 3*D*p(a)*p(-a)*q(b)*q(-b) t1 = g(a,b)*p(c)*p(-c) t2 = 3*q(-a)*q(-b) t = t1*t2 t = t.contract_metric(g) t = t.canon_bp() assert t == 3*p(a)*p(-a)*q(b)*q(-b) t1 = 2*g(a,b)*p(c)*p(-c) t2 = - 3*g(-a,-b)*q(c)*q(-c) t = t1*t2 t = t.contract_metric(g) t = 6*g(a,b)*g(-a,-b)*p(c)*p(-c)*q(d)*q(-d) t = t.contract_metric(g) t1 = 2*g(a,b)*p(c)*p(-c) t2 = q(-a)*q(-b) + 3*g(-a,-b)*q(c)*q(-c) t = t1*t2 t = t.contract_metric(g) assert t == (2 + 6*D)*p(a)*p(-a)*q(b)*q(-b) t1 = p(a)*p(b) + p(a)*q(b) + 2*g(a,b)*p(c)*p(-c) t2 = q(-a)*q(-b) - g(-a,-b)*q(c)*q(-c) t = t1*t2 t = t.contract_metric(g) t1 = (1 - 2*D)*p(a)*p(-a)*q(b)*q(-b) + p(a)*q(-a)*p(b)*q(-b) assert canon_bp(t - t1) == 0 t = g(a,b)*g(c,d)*g(-b,-c) t1 = t.contract_metric(g) assert t1 == g(a, d) t1 = g(a,b)*g(c,d) + g(a,c)*g(b,d) + g(a,d)*g(b,c) t2 = t1.substitute_indices((a,-a),(b,-b),(c,-c),(d,-d)) t = t1*t2 t = t.contract_metric(g) assert t.equals(3*D**2 + 6*D) t = 2*p(a)*g(b,-b) t1 = t.contract_metric(g) assert t1.equals(2*D*p(a)) t = 2*p(a)*g(b,-a) t1 = t.contract_metric(g) assert t1 == 2*p(b) M = Symbol('M') t = (p(a)*p(b) + g(a, b)*M**2)*g(-a, -b) - D*M**2 t1 = t.contract_metric(g) assert t1 == p(a)*p(-a) A = TensorHead('A', [Lorentz]*2, TensorSymmetry.fully_symmetric(2)) t = A(a, b)*p(L_0)*g(-a, -b) t1 = t.contract_metric(g) assert str(t1) == 'A(L_1, -L_1)*p(L_0)' or str(t1) == 'A(-L_1, L_1)*p(L_0)' def test_metric_contract3(): D = Symbol('D') Spinor = TensorIndexType('Spinor', dim=D, metric_symmetry=-1, dummy_name='S') a0, a1, a2, a3, a4 = tensor_indices('a0:5', Spinor) C = Spinor.metric chi, psi = tensor_heads('chi,psi', [Spinor], TensorSymmetry.no_symmetry(1), 1) B = TensorHead('B', [Spinor]*2, TensorSymmetry.no_symmetry(2)) t = C(a0,-a0) t1 = t.contract_metric(C) assert t1.equals(-D) t = C(-a0,a0) t1 = t.contract_metric(C) assert t1.equals(D) t = C(a0,a1)*C(-a0,-a1) t1 = t.contract_metric(C) assert t1.equals(D) t = C(a1,a0)*C(-a0,-a1) t1 = t.contract_metric(C) assert t1.equals(-D) t = C(-a0,a1)*C(a0,-a1) t1 = t.contract_metric(C) assert t1.equals(-D) t = C(a1,-a0)*C(a0,-a1) t1 = t.contract_metric(C) assert t1.equals(D) t = C(a0,a1)*B(-a1,-a0) t1 = t.contract_metric(C) t1 = t1.canon_bp() assert _is_equal(t1, B(a0,-a0)) t = C(a1,a0)*B(-a1,-a0) t1 = t.contract_metric(C) assert _is_equal(t1, -B(a0,-a0)) t = C(a0,-a1)*B(a1,-a0) t1 = t.contract_metric(C) assert _is_equal(t1, -B(a0,-a0)) t = C(-a0,a1)*B(-a1,a0) t1 = t.contract_metric(C) assert _is_equal(t1, -B(a0,-a0)) t = C(-a0,-a1)*B(a1,a0) t1 = t.contract_metric(C) assert _is_equal(t1, B(a0,-a0)) t = C(-a1, a0)*B(a1,-a0) t1 = t.contract_metric(C) assert _is_equal(t1, B(a0,-a0)) t = C(a0,a1)*psi(-a1) t1 = t.contract_metric(C) assert _is_equal(t1, psi(a0)) t = C(a1,a0)*psi(-a1) t1 = t.contract_metric(C) assert _is_equal(t1, -psi(a0)) t = C(a0,a1)*chi(-a0)*psi(-a1) t1 = t.contract_metric(C) assert _is_equal(t1, -chi(a1)*psi(-a1)) t = C(a1,a0)*chi(-a0)*psi(-a1) t1 = t.contract_metric(C) assert _is_equal(t1, chi(a1)*psi(-a1)) t = C(-a1,a0)*chi(-a0)*psi(a1) t1 = t.contract_metric(C) assert _is_equal(t1, chi(-a1)*psi(a1)) t = C(a0,-a1)*chi(-a0)*psi(a1) t1 = t.contract_metric(C) assert _is_equal(t1, -chi(-a1)*psi(a1)) t = C(-a0,-a1)*chi(a0)*psi(a1) t1 = t.contract_metric(C) assert _is_equal(t1, chi(-a1)*psi(a1)) t = C(-a1,-a0)*chi(a0)*psi(a1) t1 = t.contract_metric(C) assert _is_equal(t1, -chi(-a1)*psi(a1)) t = C(-a1,-a0)*B(a0,a2)*psi(a1) t1 = t.contract_metric(C) assert _is_equal(t1, -B(-a1,a2)*psi(a1)) t = C(a1,a0)*B(-a2,-a0)*psi(-a1) t1 = t.contract_metric(C) assert _is_equal(t1, B(-a2,a1)*psi(-a1)) def test_epsilon(): Lorentz = TensorIndexType('Lorentz', dim=4, dummy_name='L') a, b, c, d, e = tensor_indices('a,b,c,d,e', Lorentz) epsilon = Lorentz.epsilon p, q, r, s = tensor_heads('p,q,r,s', [Lorentz]) t = epsilon(b,a,c,d) t1 = t.canon_bp() assert t1 == -epsilon(a,b,c,d) t = epsilon(c,b,d,a) t1 = t.canon_bp() assert t1 == epsilon(a,b,c,d) t = epsilon(c,a,d,b) t1 = t.canon_bp() assert t1 == -epsilon(a,b,c,d) t = epsilon(a,b,c,d)*p(-a)*q(-b) t1 = t.canon_bp() assert t1 == epsilon(c,d,a,b)*p(-a)*q(-b) t = epsilon(c,b,d,a)*p(-a)*q(-b) t1 = t.canon_bp() assert t1 == epsilon(c,d,a,b)*p(-a)*q(-b) t = epsilon(c,a,d,b)*p(-a)*q(-b) t1 = t.canon_bp() assert t1 == -epsilon(c,d,a,b)*p(-a)*q(-b) t = epsilon(c,a,d,b)*p(-a)*p(-b) t1 = t.canon_bp() assert t1 == 0 t = epsilon(c,a,d,b)*p(-a)*q(-b) + epsilon(a,b,c,d)*p(-b)*q(-a) t1 = t.canon_bp() assert t1 == -2*epsilon(c,d,a,b)*p(-a)*q(-b) # Test that epsilon can be create with a SymPy integer: Lorentz = TensorIndexType('Lorentz', dim=Integer(4), dummy_name='L') epsilon = Lorentz.epsilon assert isinstance(epsilon, TensorHead) def test_contract_delta1(): # see Group Theory by Cvitanovic page 9 n = Symbol('n') Color = TensorIndexType('Color', dim=n, dummy_name='C') a, b, c, d, e, f = tensor_indices('a,b,c,d,e,f', Color) delta = Color.delta def idn(a, b, d, c): assert a.is_up and d.is_up assert not (b.is_up or c.is_up) return delta(a,c)*delta(d,b) def T(a, b, d, c): assert a.is_up and d.is_up assert not (b.is_up or c.is_up) return delta(a,b)*delta(d,c) def P1(a, b, c, d): return idn(a,b,c,d) - 1/n*T(a,b,c,d) def P2(a, b, c, d): return 1/n*T(a,b,c,d) t = P1(a, -b, e, -f)*P1(f, -e, d, -c) t1 = t.contract_delta(delta) assert canon_bp(t1 - P1(a, -b, d, -c)) == 0 t = P2(a, -b, e, -f)*P2(f, -e, d, -c) t1 = t.contract_delta(delta) assert t1 == P2(a, -b, d, -c) t = P1(a, -b, e, -f)*P2(f, -e, d, -c) t1 = t.contract_delta(delta) assert t1 == 0 t = P1(a, -b, b, -a) t1 = t.contract_delta(delta) assert t1.equals(n**2 - 1) @filter_warnings_decorator def test_fun(): D = Symbol('D') Lorentz = TensorIndexType('Lorentz', dim=D, dummy_name='L') a, b, c, d, e = tensor_indices('a,b,c,d,e', Lorentz) g = Lorentz.metric p, q = tensor_heads('p q', [Lorentz]) t = q(c)*p(a)*q(b) + g(a,b)*g(c,d)*q(-d) assert t(a,b,c) == t assert canon_bp(t - t(b,a,c) - q(c)*p(a)*q(b) + q(c)*p(b)*q(a)) == 0 assert t(b,c,d) == q(d)*p(b)*q(c) + g(b,c)*g(d,e)*q(-e) t1 = t.substitute_indices((a,b),(b,a)) assert canon_bp(t1 - q(c)*p(b)*q(a) - g(a,b)*g(c,d)*q(-d)) == 0 # check that g_{a b; c} = 0 # example taken from L. Brewin # "A brief introduction to Cadabra" arxiv:0903.2085 # dg_{a b c} = \partial_{a} g_{b c} is symmetric in b, c dg = TensorHead('dg', [Lorentz]*3, TensorSymmetry.direct_product(1, 2)) # gamma^a_{b c} is the Christoffel symbol gamma = S.Half*g(a,d)*(dg(-b,-d,-c) + dg(-c,-b,-d) - dg(-d,-b,-c)) # t = g_{a b; c} t = dg(-c,-a,-b) - g(-a,-d)*gamma(d,-b,-c) - g(-b,-d)*gamma(d,-a,-c) t = t.contract_metric(g) assert t == 0 t = q(c)*p(a)*q(b) assert t(b,c,d) == q(d)*p(b)*q(c) def test_TensorManager(): Lorentz = TensorIndexType('Lorentz', dummy_name='L') LorentzH = TensorIndexType('LorentzH', dummy_name='LH') i, j = tensor_indices('i,j', Lorentz) ih, jh = tensor_indices('ih,jh', LorentzH) p, q = tensor_heads('p q', [Lorentz]) ph, qh = tensor_heads('ph qh', [LorentzH]) Gsymbol = Symbol('Gsymbol') GHsymbol = Symbol('GHsymbol') TensorManager.set_comm(Gsymbol, GHsymbol, 0) G = TensorHead('G', [Lorentz], TensorSymmetry.no_symmetry(1), Gsymbol) assert TensorManager._comm_i2symbol[G.comm] == Gsymbol GH = TensorHead('GH', [LorentzH], TensorSymmetry.no_symmetry(1), GHsymbol) ps = G(i)*p(-i) psh = GH(ih)*ph(-ih) t = ps + psh t1 = t*t assert canon_bp(t1 - ps*ps - 2*ps*psh - psh*psh) == 0 qs = G(i)*q(-i) qsh = GH(ih)*qh(-ih) assert _is_equal(ps*qsh, qsh*ps) assert not _is_equal(ps*qs, qs*ps) n = TensorManager.comm_symbols2i(Gsymbol) assert TensorManager.comm_i2symbol(n) == Gsymbol assert GHsymbol in TensorManager._comm_symbols2i raises(ValueError, lambda: TensorManager.set_comm(GHsymbol, 1, 2)) TensorManager.set_comms((Gsymbol,GHsymbol,0),(Gsymbol,1,1)) assert TensorManager.get_comm(n, 1) == TensorManager.get_comm(1, n) == 1 TensorManager.clear() assert TensorManager.comm == [{0:0, 1:0, 2:0}, {0:0, 1:1, 2:None}, {0:0, 1:None}] assert GHsymbol not in TensorManager._comm_symbols2i nh = TensorManager.comm_symbols2i(GHsymbol) assert TensorManager.comm_i2symbol(nh) == GHsymbol assert GHsymbol in TensorManager._comm_symbols2i def test_hash(): D = Symbol('D') Lorentz = TensorIndexType('Lorentz', dim=D, dummy_name='L') a, b, c, d, e = tensor_indices('a,b,c,d,e', Lorentz) g = Lorentz.metric p, q = tensor_heads('p q', [Lorentz]) p_type = p.args[1] t1 = p(a)*q(b) t2 = p(a)*p(b) assert hash(t1) != hash(t2) t3 = p(a)*p(b) + g(a,b) t4 = p(a)*p(b) - g(a,b) assert hash(t3) != hash(t4) assert a.func(*a.args) == a assert Lorentz.func(*Lorentz.args) == Lorentz assert g.func(*g.args) == g assert p.func(*p.args) == p assert p_type.func(*p_type.args) == p_type assert p(a).func(*(p(a)).args) == p(a) assert t1.func(*t1.args) == t1 assert t2.func(*t2.args) == t2 assert t3.func(*t3.args) == t3 assert t4.func(*t4.args) == t4 assert hash(a.func(*a.args)) == hash(a) assert hash(Lorentz.func(*Lorentz.args)) == hash(Lorentz) assert hash(g.func(*g.args)) == hash(g) assert hash(p.func(*p.args)) == hash(p) assert hash(p_type.func(*p_type.args)) == hash(p_type) assert hash(p(a).func(*(p(a)).args)) == hash(p(a)) assert hash(t1.func(*t1.args)) == hash(t1) assert hash(t2.func(*t2.args)) == hash(t2) assert hash(t3.func(*t3.args)) == hash(t3) assert hash(t4.func(*t4.args)) == hash(t4) def check_all(obj): return all([isinstance(_, Basic) for _ in obj.args]) assert check_all(a) assert check_all(Lorentz) assert check_all(g) assert check_all(p) assert check_all(p_type) assert check_all(p(a)) assert check_all(t1) assert check_all(t2) assert check_all(t3) assert check_all(t4) tsymmetry = TensorSymmetry.direct_product(-2, 1, 3) assert tsymmetry.func(*tsymmetry.args) == tsymmetry assert hash(tsymmetry.func(*tsymmetry.args)) == hash(tsymmetry) assert check_all(tsymmetry) ### TEST VALUED TENSORS ### def _get_valued_base_test_variables(): minkowski = Matrix(( (1, 0, 0, 0), (0, -1, 0, 0), (0, 0, -1, 0), (0, 0, 0, -1), )) Lorentz = TensorIndexType('Lorentz', dim=4) Lorentz.data = minkowski i0, i1, i2, i3, i4 = tensor_indices('i0:5', Lorentz) E, px, py, pz = symbols('E px py pz') A = TensorHead('A', [Lorentz]) A.data = [E, px, py, pz] B = TensorHead('B', [Lorentz], TensorSymmetry.no_symmetry(1), 'Gcomm') B.data = range(4) AB = TensorHead("AB", [Lorentz]*2) AB.data = minkowski ba_matrix = Matrix(( (1, 2, 3, 4), (5, 6, 7, 8), (9, 0, -1, -2), (-3, -4, -5, -6), )) BA = TensorHead("BA", [Lorentz]*2) BA.data = ba_matrix # Let's test the diagonal metric, with inverted Minkowski metric: LorentzD = TensorIndexType('LorentzD') LorentzD.data = [-1, 1, 1, 1] mu0, mu1, mu2 = tensor_indices('mu0:3', LorentzD) C = TensorHead('C', [LorentzD]) C.data = [E, px, py, pz] ### non-diagonal metric ### ndm_matrix = ( (1, 1, 0,), (1, 0, 1), (0, 1, 0,), ) ndm = TensorIndexType("ndm") ndm.data = ndm_matrix n0, n1, n2 = tensor_indices('n0:3', ndm) NA = TensorHead('NA', [ndm]) NA.data = range(10, 13) NB = TensorHead('NB', [ndm]*2) NB.data = [[i+j for j in range(10, 13)] for i in range(10, 13)] NC = TensorHead('NC', [ndm]*3) NC.data = [[[i+j+k for k in range(4, 7)] for j in range(1, 4)] for i in range(2, 5)] return (A, B, AB, BA, C, Lorentz, E, px, py, pz, LorentzD, mu0, mu1, mu2, ndm, n0, n1, n2, NA, NB, NC, minkowski, ba_matrix, ndm_matrix, i0, i1, i2, i3, i4) @filter_warnings_decorator def test_valued_tensor_iter(): (A, B, AB, BA, C, Lorentz, E, px, py, pz, LorentzD, mu0, mu1, mu2, ndm, n0, n1, n2, NA, NB, NC, minkowski, ba_matrix, ndm_matrix, i0, i1, i2, i3, i4) = _get_valued_base_test_variables() list_BA = [Array([1, 2, 3, 4]), Array([5, 6, 7, 8]), Array([9, 0, -1, -2]), Array([-3, -4, -5, -6])] # iteration on VTensorHead assert list(A) == [E, px, py, pz] assert list(ba_matrix) == [1, 2, 3, 4, 5, 6, 7, 8, 9, 0, -1, -2, -3, -4, -5, -6] assert list(BA) == list_BA # iteration on VTensMul assert list(A(i1)) == [E, px, py, pz] assert list(BA(i1, i2)) == list_BA assert list(3 * BA(i1, i2)) == [3 * i for i in list_BA] assert list(-5 * BA(i1, i2)) == [-5 * i for i in list_BA] # iteration on VTensAdd # A(i1) + A(i1) assert list(A(i1) + A(i1)) == [2*E, 2*px, 2*py, 2*pz] assert BA(i1, i2) - BA(i1, i2) == 0 assert list(BA(i1, i2) - 2 * BA(i1, i2)) == [-i for i in list_BA] @filter_warnings_decorator def test_valued_tensor_covariant_contravariant_elements(): (A, B, AB, BA, C, Lorentz, E, px, py, pz, LorentzD, mu0, mu1, mu2, ndm, n0, n1, n2, NA, NB, NC, minkowski, ba_matrix, ndm_matrix, i0, i1, i2, i3, i4) = _get_valued_base_test_variables() assert A(-i0)[0] == A(i0)[0] assert A(-i0)[1] == -A(i0)[1] assert AB(i0, i1)[1, 1] == -1 assert AB(i0, -i1)[1, 1] == 1 assert AB(-i0, -i1)[1, 1] == -1 assert AB(-i0, i1)[1, 1] == 1 @filter_warnings_decorator def test_valued_tensor_get_matrix(): (A, B, AB, BA, C, Lorentz, E, px, py, pz, LorentzD, mu0, mu1, mu2, ndm, n0, n1, n2, NA, NB, NC, minkowski, ba_matrix, ndm_matrix, i0, i1, i2, i3, i4) = _get_valued_base_test_variables() matab = AB(i0, i1).get_matrix() assert matab == Matrix([ [1, 0, 0, 0], [0, -1, 0, 0], [0, 0, -1, 0], [0, 0, 0, -1], ]) # when alternating contravariant/covariant with [1, -1, -1, -1] metric # it becomes the identity matrix: assert AB(i0, -i1).get_matrix() == eye(4) # covariant and contravariant forms: assert A(i0).get_matrix() == Matrix([E, px, py, pz]) assert A(-i0).get_matrix() == Matrix([E, -px, -py, -pz]) @filter_warnings_decorator def test_valued_tensor_contraction(): (A, B, AB, BA, C, Lorentz, E, px, py, pz, LorentzD, mu0, mu1, mu2, ndm, n0, n1, n2, NA, NB, NC, minkowski, ba_matrix, ndm_matrix, i0, i1, i2, i3, i4) = _get_valued_base_test_variables() assert (A(i0) * A(-i0)).data == E ** 2 - px ** 2 - py ** 2 - pz ** 2 assert (A(i0) * A(-i0)).data == A ** 2 assert (A(i0) * A(-i0)).data == A(i0) ** 2 assert (A(i0) * B(-i0)).data == -px - 2 * py - 3 * pz for i in range(4): for j in range(4): assert (A(i0) * B(-i1))[i, j] == [E, px, py, pz][i] * [0, -1, -2, -3][j] # test contraction on the alternative Minkowski metric: [-1, 1, 1, 1] assert (C(mu0) * C(-mu0)).data == -E ** 2 + px ** 2 + py ** 2 + pz ** 2 contrexp = A(i0) * AB(i1, -i0) assert A(i0).rank == 1 assert AB(i1, -i0).rank == 2 assert contrexp.rank == 1 for i in range(4): assert contrexp[i] == [E, px, py, pz][i] @filter_warnings_decorator def test_valued_tensor_self_contraction(): (A, B, AB, BA, C, Lorentz, E, px, py, pz, LorentzD, mu0, mu1, mu2, ndm, n0, n1, n2, NA, NB, NC, minkowski, ba_matrix, ndm_matrix, i0, i1, i2, i3, i4) = _get_valued_base_test_variables() assert AB(i0, -i0).data == 4 assert BA(i0, -i0).data == 2 @filter_warnings_decorator def test_valued_tensor_pow(): (A, B, AB, BA, C, Lorentz, E, px, py, pz, LorentzD, mu0, mu1, mu2, ndm, n0, n1, n2, NA, NB, NC, minkowski, ba_matrix, ndm_matrix, i0, i1, i2, i3, i4) = _get_valued_base_test_variables() assert C**2 == -E**2 + px**2 + py**2 + pz**2 assert C**1 == sqrt(-E**2 + px**2 + py**2 + pz**2) assert C(mu0)**2 == C**2 assert C(mu0)**1 == C**1 @filter_warnings_decorator def test_valued_tensor_expressions(): (A, B, AB, BA, C, Lorentz, E, px, py, pz, LorentzD, mu0, mu1, mu2, ndm, n0, n1, n2, NA, NB, NC, minkowski, ba_matrix, ndm_matrix, i0, i1, i2, i3, i4) = _get_valued_base_test_variables() x1, x2, x3 = symbols('x1:4') # test coefficient in contraction: rank2coeff = x1 * A(i3) * B(i2) assert rank2coeff[1, 1] == x1 * px assert rank2coeff[3, 3] == 3 * pz * x1 coeff_expr = ((x1 * A(i4)) * (B(-i4) / x2)).data assert coeff_expr.expand() == -px*x1/x2 - 2*py*x1/x2 - 3*pz*x1/x2 add_expr = A(i0) + B(i0) assert add_expr[0] == E assert add_expr[1] == px + 1 assert add_expr[2] == py + 2 assert add_expr[3] == pz + 3 sub_expr = A(i0) - B(i0) assert sub_expr[0] == E assert sub_expr[1] == px - 1 assert sub_expr[2] == py - 2 assert sub_expr[3] == pz - 3 assert (add_expr * B(-i0)).data == -px - 2*py - 3*pz - 14 expr1 = x1*A(i0) + x2*B(i0) expr2 = expr1 * B(i1) * (-4) expr3 = expr2 + 3*x3*AB(i0, i1) expr4 = expr3 / 2 assert expr4 * 2 == expr3 expr5 = (expr4 * BA(-i1, -i0)) assert expr5.data.expand() == 28*E*x1 + 12*px*x1 + 20*py*x1 + 28*pz*x1 + 136*x2 + 3*x3 @filter_warnings_decorator def test_valued_tensor_add_scalar(): (A, B, AB, BA, C, Lorentz, E, px, py, pz, LorentzD, mu0, mu1, mu2, ndm, n0, n1, n2, NA, NB, NC, minkowski, ba_matrix, ndm_matrix, i0, i1, i2, i3, i4) = _get_valued_base_test_variables() # one scalar summand after the contracted tensor expr1 = A(i0)*A(-i0) - (E**2 - px**2 - py**2 - pz**2) assert expr1.data == 0 # multiple scalar summands in front of the contracted tensor expr2 = E**2 - px**2 - py**2 - pz**2 - A(i0)*A(-i0) assert expr2.data == 0 # multiple scalar summands after the contracted tensor expr3 = A(i0)*A(-i0) - E**2 + px**2 + py**2 + pz**2 assert expr3.data == 0 # multiple scalar summands and multiple tensors expr4 = C(mu0)*C(-mu0) + 2*E**2 - 2*px**2 - 2*py**2 - 2*pz**2 - A(i0)*A(-i0) assert expr4.data == 0 @filter_warnings_decorator def test_noncommuting_components(): (A, B, AB, BA, C, Lorentz, E, px, py, pz, LorentzD, mu0, mu1, mu2, ndm, n0, n1, n2, NA, NB, NC, minkowski, ba_matrix, ndm_matrix, i0, i1, i2, i3, i4) = _get_valued_base_test_variables() euclid = TensorIndexType('Euclidean') euclid.data = [1, 1] i1, i2, i3 = tensor_indices('i1:4', euclid) a, b, c, d = symbols('a b c d', commutative=False) V1 = TensorHead('V1', [euclid]*2) V1.data = [[a, b], (c, d)] V2 = TensorHead('V2', [euclid]*2) V2.data = [[a, c], [b, d]] vtp = V1(i1, i2) * V2(-i2, -i1) assert vtp.data == a**2 + b**2 + c**2 + d**2 assert vtp.data != a**2 + 2*b*c + d**2 vtp2 = V1(i1, i2)*V1(-i2, -i1) assert vtp2.data == a**2 + b*c + c*b + d**2 assert vtp2.data != a**2 + 2*b*c + d**2 Vc = (b * V1(i1, -i1)).data assert Vc.expand() == b * a + b * d @filter_warnings_decorator def test_valued_non_diagonal_metric(): (A, B, AB, BA, C, Lorentz, E, px, py, pz, LorentzD, mu0, mu1, mu2, ndm, n0, n1, n2, NA, NB, NC, minkowski, ba_matrix, ndm_matrix, i0, i1, i2, i3, i4) = _get_valued_base_test_variables() mmatrix = Matrix(ndm_matrix) assert (NA(n0)*NA(-n0)).data == (NA(n0).get_matrix().T * mmatrix * NA(n0).get_matrix())[0, 0] @filter_warnings_decorator def test_valued_assign_numpy_ndarray(): (A, B, AB, BA, C, Lorentz, E, px, py, pz, LorentzD, mu0, mu1, mu2, ndm, n0, n1, n2, NA, NB, NC, minkowski, ba_matrix, ndm_matrix, i0, i1, i2, i3, i4) = _get_valued_base_test_variables() # this is needed to make sure that a numpy.ndarray can be assigned to a # tensor. arr = [E+1, px-1, py, pz] A.data = Array(arr) for i in range(4): assert A(i0).data[i] == arr[i] qx, qy, qz = symbols('qx qy qz') A(-i0).data = Array([E, qx, qy, qz]) for i in range(4): assert A(i0).data[i] == [E, -qx, -qy, -qz][i] assert A.data[i] == [E, -qx, -qy, -qz][i] # test on multi-indexed tensors. random_4x4_data = [[(i**3-3*i**2)%(j+7) for i in range(4)] for j in range(4)] AB(-i0, -i1).data = random_4x4_data for i in range(4): for j in range(4): assert AB(i0, i1).data[i, j] == random_4x4_data[i][j]*(-1 if i else 1)*(-1 if j else 1) assert AB(-i0, i1).data[i, j] == random_4x4_data[i][j]*(-1 if j else 1) assert AB(i0, -i1).data[i, j] == random_4x4_data[i][j]*(-1 if i else 1) assert AB(-i0, -i1).data[i, j] == random_4x4_data[i][j] AB(-i0, i1).data = random_4x4_data for i in range(4): for j in range(4): assert AB(i0, i1).data[i, j] == random_4x4_data[i][j]*(-1 if i else 1) assert AB(-i0, i1).data[i, j] == random_4x4_data[i][j] assert AB(i0, -i1).data[i, j] == random_4x4_data[i][j]*(-1 if i else 1)*(-1 if j else 1) assert AB(-i0, -i1).data[i, j] == random_4x4_data[i][j]*(-1 if j else 1) @filter_warnings_decorator def test_valued_metric_inverse(): (A, B, AB, BA, C, Lorentz, E, px, py, pz, LorentzD, mu0, mu1, mu2, ndm, n0, n1, n2, NA, NB, NC, minkowski, ba_matrix, ndm_matrix, i0, i1, i2, i3, i4) = _get_valued_base_test_variables() # let's assign some fancy matrix, just to verify it: # (this has no physical sense, it's just testing sympy); # it is symmetrical: md = [[2, 2, 2, 1], [2, 3, 1, 0], [2, 1, 2, 3], [1, 0, 3, 2]] Lorentz.data = md m = Matrix(md) metric = Lorentz.metric minv = m.inv() meye = eye(4) # the Kronecker Delta: KD = Lorentz.get_kronecker_delta() for i in range(4): for j in range(4): assert metric(i0, i1).data[i, j] == m[i, j] assert metric(-i0, -i1).data[i, j] == minv[i, j] assert metric(i0, -i1).data[i, j] == meye[i, j] assert metric(-i0, i1).data[i, j] == meye[i, j] assert metric(i0, i1)[i, j] == m[i, j] assert metric(-i0, -i1)[i, j] == minv[i, j] assert metric(i0, -i1)[i, j] == meye[i, j] assert metric(-i0, i1)[i, j] == meye[i, j] assert KD(i0, -i1)[i, j] == meye[i, j] @filter_warnings_decorator def test_valued_canon_bp_swapaxes(): (A, B, AB, BA, C, Lorentz, E, px, py, pz, LorentzD, mu0, mu1, mu2, ndm, n0, n1, n2, NA, NB, NC, minkowski, ba_matrix, ndm_matrix, i0, i1, i2, i3, i4) = _get_valued_base_test_variables() e1 = A(i1)*A(i0) e2 = e1.canon_bp() assert e2 == A(i0)*A(i1) for i in range(4): for j in range(4): assert e1[i, j] == e2[j, i] o1 = B(i2)*A(i1)*B(i0) o2 = o1.canon_bp() for i in range(4): for j in range(4): for k in range(4): assert o1[i, j, k] == o2[j, i, k] @filter_warnings_decorator def test_valued_components_with_wrong_symmetry(): IT = TensorIndexType('IT', dim=3) i0, i1, i2, i3 = tensor_indices('i0:4', IT) IT.data = [1, 1, 1] A_nosym = TensorHead('A', [IT]*2) A_sym = TensorHead('A', [IT]*2, TensorSymmetry.fully_symmetric(2)) A_antisym = TensorHead('A', [IT]*2, TensorSymmetry.fully_symmetric(-2)) mat_nosym = Matrix([[1,2,3],[4,5,6],[7,8,9]]) mat_sym = mat_nosym + mat_nosym.T mat_antisym = mat_nosym - mat_nosym.T A_nosym.data = mat_nosym A_nosym.data = mat_sym A_nosym.data = mat_antisym def assign(A, dat): A.data = dat A_sym.data = mat_sym raises(ValueError, lambda: assign(A_sym, mat_nosym)) raises(ValueError, lambda: assign(A_sym, mat_antisym)) A_antisym.data = mat_antisym raises(ValueError, lambda: assign(A_antisym, mat_sym)) raises(ValueError, lambda: assign(A_antisym, mat_nosym)) A_sym.data = [[0, 0, 0], [0, 0, 0], [0, 0, 0]] A_antisym.data = [[0, 0, 0], [0, 0, 0], [0, 0, 0]] @filter_warnings_decorator def test_issue_10972_TensMul_data(): Lorentz = TensorIndexType('Lorentz', metric_symmetry=1, dummy_name='i', dim=2) Lorentz.data = [-1, 1] mu, nu, alpha, beta = tensor_indices('\\mu, \\nu, \\alpha, \\beta', Lorentz) u = TensorHead('u', [Lorentz]) u.data = [1, 0] F = TensorHead('F', [Lorentz]*2, TensorSymmetry.fully_symmetric(-2)) F.data = [[0, 1], [-1, 0]] mul_1 = F(mu, alpha) * u(-alpha) * F(nu, beta) * u(-beta) assert (mul_1.data == Array([[0, 0], [0, 1]])) mul_2 = F(mu, alpha) * F(nu, beta) * u(-alpha) * u(-beta) assert (mul_2.data == mul_1.data) assert ((mul_1 + mul_1).data == 2 * mul_1.data) @filter_warnings_decorator def test_TensMul_data(): Lorentz = TensorIndexType('Lorentz', metric_symmetry=1, dummy_name='L', dim=4) Lorentz.data = [-1, 1, 1, 1] mu, nu, alpha, beta = tensor_indices('\\mu, \\nu, \\alpha, \\beta', Lorentz) u = TensorHead('u', [Lorentz]) u.data = [1, 0, 0, 0] F = TensorHead('F', [Lorentz]*2, TensorSymmetry.fully_symmetric(-2)) Ex, Ey, Ez, Bx, By, Bz = symbols('E_x E_y E_z B_x B_y B_z') F.data = [ [0, Ex, Ey, Ez], [-Ex, 0, Bz, -By], [-Ey, -Bz, 0, Bx], [-Ez, By, -Bx, 0]] E = F(mu, nu) * u(-nu) assert ((E(mu) * E(nu)).data == Array([[0, 0, 0, 0], [0, Ex ** 2, Ex * Ey, Ex * Ez], [0, Ex * Ey, Ey ** 2, Ey * Ez], [0, Ex * Ez, Ey * Ez, Ez ** 2]]) ) assert ((E(mu) * E(nu)).canon_bp().data == (E(mu) * E(nu)).data) assert ((F(mu, alpha) * F(beta, nu) * u(-alpha) * u(-beta)).data == - (E(mu) * E(nu)).data ) assert ((F(alpha, mu) * F(beta, nu) * u(-alpha) * u(-beta)).data == (E(mu) * E(nu)).data ) g = TensorHead('g', [Lorentz]*2, TensorSymmetry.fully_symmetric(2)) g.data = Lorentz.data # tensor 'perp' is orthogonal to vector 'u' perp = u(mu) * u(nu) + g(mu, nu) mul_1 = u(-mu) * perp(mu, nu) assert (mul_1.data == Array([0, 0, 0, 0])) mul_2 = u(-mu) * perp(mu, alpha) * perp(nu, beta) assert (mul_2.data == Array.zeros(4, 4, 4)) Fperp = perp(mu, alpha) * perp(nu, beta) * F(-alpha, -beta) assert (Fperp.data[0, :] == Array([0, 0, 0, 0])) assert (Fperp.data[:, 0] == Array([0, 0, 0, 0])) mul_3 = u(-mu) * Fperp(mu, nu) assert (mul_3.data == Array([0, 0, 0, 0])) @filter_warnings_decorator def test_issue_11020_TensAdd_data(): Lorentz = TensorIndexType('Lorentz', metric_symmetry=1, dummy_name='i', dim=2) Lorentz.data = [-1, 1] a, b, c, d = tensor_indices('a, b, c, d', Lorentz) i0, i1 = tensor_indices('i_0:2', Lorentz) # metric tensor g = TensorHead('g', [Lorentz]*2, TensorSymmetry.fully_symmetric(2)) g.data = Lorentz.data u = TensorHead('u', [Lorentz]) u.data = [1, 0] add_1 = g(b, c) * g(d, i0) * u(-i0) - g(b, c) * u(d) assert (add_1.data == Array.zeros(2, 2, 2)) # Now let us replace index `d` with `a`: add_2 = g(b, c) * g(a, i0) * u(-i0) - g(b, c) * u(a) assert (add_2.data == Array.zeros(2, 2, 2)) # some more tests # perp is tensor orthogonal to u^\mu perp = u(a) * u(b) + g(a, b) mul_1 = u(-a) * perp(a, b) assert (mul_1.data == Array([0, 0])) mul_2 = u(-c) * perp(c, a) * perp(d, b) assert (mul_2.data == Array.zeros(2, 2, 2)) def test_index_iteration(): L = TensorIndexType("Lorentz", dummy_name="L") i0, i1, i2, i3, i4 = tensor_indices('i0:5', L) L0 = tensor_indices('L_0', L) L1 = tensor_indices('L_1', L) A = TensorHead("A", [L, L]) B = TensorHead("B", [L, L], TensorSymmetry.fully_symmetric(2)) e1 = A(i0,i2) e2 = A(i0,-i0) e3 = A(i0,i1)*B(i2,i3) e4 = A(i0,i1)*B(i2,-i1) e5 = A(i0,i1)*B(-i0,-i1) e6 = e1 + e4 assert list(e1._iterate_free_indices) == [(i0, (1, 0)), (i2, (1, 1))] assert list(e1._iterate_dummy_indices) == [] assert list(e1._iterate_indices) == [(i0, (1, 0)), (i2, (1, 1))] assert list(e2._iterate_free_indices) == [] assert list(e2._iterate_dummy_indices) == [(L0, (1, 0)), (-L0, (1, 1))] assert list(e2._iterate_indices) == [(L0, (1, 0)), (-L0, (1, 1))] assert list(e3._iterate_free_indices) == [(i0, (0, 1, 0)), (i1, (0, 1, 1)), (i2, (1, 1, 0)), (i3, (1, 1, 1))] assert list(e3._iterate_dummy_indices) == [] assert list(e3._iterate_indices) == [(i0, (0, 1, 0)), (i1, (0, 1, 1)), (i2, (1, 1, 0)), (i3, (1, 1, 1))] assert list(e4._iterate_free_indices) == [(i0, (0, 1, 0)), (i2, (1, 1, 0))] assert list(e4._iterate_dummy_indices) == [(L0, (0, 1, 1)), (-L0, (1, 1, 1))] assert list(e4._iterate_indices) == [(i0, (0, 1, 0)), (L0, (0, 1, 1)), (i2, (1, 1, 0)), (-L0, (1, 1, 1))] assert list(e5._iterate_free_indices) == [] assert list(e5._iterate_dummy_indices) == [(L0, (0, 1, 0)), (L1, (0, 1, 1)), (-L0, (1, 1, 0)), (-L1, (1, 1, 1))] assert list(e5._iterate_indices) == [(L0, (0, 1, 0)), (L1, (0, 1, 1)), (-L0, (1, 1, 0)), (-L1, (1, 1, 1))] assert list(e6._iterate_free_indices) == [(i0, (0, 0, 1, 0)), (i2, (0, 1, 1, 0)), (i0, (1, 1, 0)), (i2, (1, 1, 1))] assert list(e6._iterate_dummy_indices) == [(L0, (0, 0, 1, 1)), (-L0, (0, 1, 1, 1))] assert list(e6._iterate_indices) == [(i0, (0, 0, 1, 0)), (L0, (0, 0, 1, 1)), (i2, (0, 1, 1, 0)), (-L0, (0, 1, 1, 1)), (i0, (1, 1, 0)), (i2, (1, 1, 1))] assert e1.get_indices() == [i0, i2] assert e1.get_free_indices() == [i0, i2] assert e2.get_indices() == [L0, -L0] assert e2.get_free_indices() == [] assert e3.get_indices() == [i0, i1, i2, i3] assert e3.get_free_indices() == [i0, i1, i2, i3] assert e4.get_indices() == [i0, L0, i2, -L0] assert e4.get_free_indices() == [i0, i2] assert e5.get_indices() == [L0, L1, -L0, -L1] assert e5.get_free_indices() == [] def test_tensor_expand(): L = TensorIndexType("L") i, j, k = tensor_indices("i j k", L) L_0 = TensorIndex("L_0", L) A, B, C, D = tensor_heads("A B C D", [L]) assert isinstance(Add(A(i), B(i)), TensAdd) assert isinstance(expand(A(i)+B(i)), TensAdd) expr = A(i)*(A(-i)+B(-i)) assert expr.args == (A(L_0), A(-L_0) + B(-L_0)) assert expr != A(i)*A(-i) + A(i)*B(-i) assert expr.expand() == A(i)*A(-i) + A(i)*B(-i) assert str(expr) == "A(L_0)*(A(-L_0) + B(-L_0))" expr = A(i)*A(j) + A(i)*B(j) assert str(expr) == "A(i)*A(j) + A(i)*B(j)" expr = A(-i)*(A(i)*A(j) + A(i)*B(j)*C(k)*C(-k)) assert expr != A(-i)*A(i)*A(j) + A(-i)*A(i)*B(j)*C(k)*C(-k) assert expr.expand() == A(-i)*A(i)*A(j) + A(-i)*A(i)*B(j)*C(k)*C(-k) assert str(expr) == "A(-L_0)*(A(L_0)*A(j) + A(L_0)*B(j)*C(L_1)*C(-L_1))" assert str(expr.canon_bp()) == 'A(j)*A(L_0)*A(-L_0) + A(L_0)*A(-L_0)*B(j)*C(L_1)*C(-L_1)' expr = A(-i)*(2*A(i)*A(j) + A(i)*B(j)) assert expr.expand() == 2*A(-i)*A(i)*A(j) + A(-i)*A(i)*B(j) expr = 2*A(i)*A(-i) assert expr.coeff == 2 expr = A(i)*(B(j)*C(k) + C(j)*(A(k) + D(k))) assert str(expr) == "A(i)*(B(j)*C(k) + C(j)*(A(k) + D(k)))" assert str(expr.expand()) == "A(i)*B(j)*C(k) + A(i)*C(j)*A(k) + A(i)*C(j)*D(k)" assert isinstance(TensMul(3), TensMul) tm = TensMul(3).doit() assert tm == 3 assert isinstance(tm, Integer) p1 = B(j)*B(-j) + B(j)*C(-j) p2 = C(-i)*p1 p3 = A(i)*p2 assert p3.expand() == A(i)*C(-i)*B(j)*B(-j) + A(i)*C(-i)*B(j)*C(-j) expr = A(i)*(B(-i) + C(-i)*(B(j)*B(-j) + B(j)*C(-j))) assert expr.expand() == A(i)*B(-i) + A(i)*C(-i)*B(j)*B(-j) + A(i)*C(-i)*B(j)*C(-j) expr = C(-i)*(B(j)*B(-j) + B(j)*C(-j)) assert expr.expand() == C(-i)*B(j)*B(-j) + C(-i)*B(j)*C(-j) def test_tensor_alternative_construction(): L = TensorIndexType("L") i0, i1, i2, i3 = tensor_indices('i0:4', L) A = TensorHead("A", [L]) x, y = symbols("x y") assert A(i0) == A(Symbol("i0")) assert A(-i0) == A(-Symbol("i0")) raises(TypeError, lambda: A(x+y)) raises(ValueError, lambda: A(2*x)) def test_tensor_replacement(): L = TensorIndexType("L") L2 = TensorIndexType("L2", dim=2) i, j, k, l = tensor_indices("i j k l", L) A, B, C, D = tensor_heads("A B C D", [L]) H = TensorHead("H", [L, L]) K = TensorHead("K", [L]*4) expr = H(i, j) repl = {H(i,-j): [[1,2],[3,4]], L: diag(1, -1)} assert expr._extract_data(repl) == ([i, j], Array([[1, -2], [3, -4]])) assert expr.replace_with_arrays(repl) == Array([[1, -2], [3, -4]]) assert expr.replace_with_arrays(repl, [i, j]) == Array([[1, -2], [3, -4]]) assert expr.replace_with_arrays(repl, [i, -j]) == Array([[1, 2], [3, 4]]) assert expr.replace_with_arrays(repl, [-i, j]) == Array([[1, -2], [-3, 4]]) assert expr.replace_with_arrays(repl, [-i, -j]) == Array([[1, 2], [-3, -4]]) assert expr.replace_with_arrays(repl, [j, i]) == Array([[1, 3], [-2, -4]]) assert expr.replace_with_arrays(repl, [j, -i]) == Array([[1, -3], [-2, 4]]) assert expr.replace_with_arrays(repl, [-j, i]) == Array([[1, 3], [2, 4]]) assert expr.replace_with_arrays(repl, [-j, -i]) == Array([[1, -3], [2, -4]]) # Test stability of optional parameter 'indices' assert expr.replace_with_arrays(repl) == Array([[1, -2], [3, -4]]) expr = H(i,j) repl = {H(i,j): [[1,2],[3,4]], L: diag(1, -1)} assert expr._extract_data(repl) == ([i, j], Array([[1, 2], [3, 4]])) assert expr.replace_with_arrays(repl) == Array([[1, 2], [3, 4]]) assert expr.replace_with_arrays(repl, [i, j]) == Array([[1, 2], [3, 4]]) assert expr.replace_with_arrays(repl, [i, -j]) == Array([[1, -2], [3, -4]]) assert expr.replace_with_arrays(repl, [-i, j]) == Array([[1, 2], [-3, -4]]) assert expr.replace_with_arrays(repl, [-i, -j]) == Array([[1, -2], [-3, 4]]) assert expr.replace_with_arrays(repl, [j, i]) == Array([[1, 3], [2, 4]]) assert expr.replace_with_arrays(repl, [j, -i]) == Array([[1, -3], [2, -4]]) assert expr.replace_with_arrays(repl, [-j, i]) == Array([[1, 3], [-2, -4]]) assert expr.replace_with_arrays(repl, [-j, -i]) == Array([[1, -3], [-2, 4]]) # Not the same indices: expr = H(i,k) repl = {H(i,j): [[1,2],[3,4]], L: diag(1, -1)} assert expr._extract_data(repl) == ([i, k], Array([[1, 2], [3, 4]])) expr = A(i)*A(-i) repl = {A(i): [1,2], L: diag(1, -1)} assert expr._extract_data(repl) == ([], -3) assert expr.replace_with_arrays(repl, []) == -3 expr = K(i, j, -j, k)*A(-i)*A(-k) repl = {A(i): [1, 2], K(i,j,k,l): Array([1]*2**4).reshape(2,2,2,2), L: diag(1, -1)} assert expr._extract_data(repl) expr = H(j, k) repl = {H(i,j): [[1,2],[3,4]], L: diag(1, -1)} raises(ValueError, lambda: expr._extract_data(repl)) expr = A(i) repl = {B(i): [1, 2]} raises(ValueError, lambda: expr._extract_data(repl)) expr = A(i) repl = {A(i): [[1, 2], [3, 4]]} raises(ValueError, lambda: expr._extract_data(repl)) # TensAdd: expr = A(k)*H(i, j) + B(k)*H(i, j) repl = {A(k): [1], B(k): [1], H(i, j): [[1, 2],[3,4]], L:diag(1,1)} assert expr._extract_data(repl) == ([k, i, j], Array([[[2, 4], [6, 8]]])) assert expr.replace_with_arrays(repl, [k, i, j]) == Array([[[2, 4], [6, 8]]]) assert expr.replace_with_arrays(repl, [k, j, i]) == Array([[[2, 6], [4, 8]]]) expr = A(k)*A(-k) + 100 repl = {A(k): [2, 3], L: diag(1, 1)} assert expr.replace_with_arrays(repl, []) == 113 ## Symmetrization: expr = H(i, j) + H(j, i) repl = {H(i, j): [[1, 2], [3, 4]]} assert expr._extract_data(repl) == ([i, j], Array([[2, 5], [5, 8]])) assert expr.replace_with_arrays(repl, [i, j]) == Array([[2, 5], [5, 8]]) assert expr.replace_with_arrays(repl, [j, i]) == Array([[2, 5], [5, 8]]) ## Anti-symmetrization: expr = H(i, j) - H(j, i) repl = {H(i, j): [[1, 2], [3, 4]]} assert expr.replace_with_arrays(repl, [i, j]) == Array([[0, -1], [1, 0]]) assert expr.replace_with_arrays(repl, [j, i]) == Array([[0, 1], [-1, 0]]) # Tensors with contractions in replacements: expr = K(i, j, k, -k) repl = {K(i, j, k, -k): [[1, 2], [3, 4]]} assert expr._extract_data(repl) == ([i, j], Array([[1, 2], [3, 4]])) expr = H(i, -i) repl = {H(i, -i): 42} assert expr._extract_data(repl) == ([], 42) expr = H(i, -i) repl = { H(-i, -j): Array([[1, 0, 0, 0], [0, -1, 0, 0], [0, 0, -1, 0], [0, 0, 0, -1]]), L: Array([[1, 0, 0, 0], [0, -1, 0, 0], [0, 0, -1, 0], [0, 0, 0, -1]]), } assert expr._extract_data(repl) == ([], 4) # Replace with array, raise exception if indices are not compatible: expr = A(i)*A(j) repl = {A(i): [1, 2]} raises(ValueError, lambda: expr.replace_with_arrays(repl, [j])) # Raise exception if array dimension is not compatible: expr = A(i) repl = {A(i): [[1, 2]]} raises(ValueError, lambda: expr.replace_with_arrays(repl, [i])) # TensorIndexType with dimension, wrong dimension in replacement array: u1, u2, u3 = tensor_indices("u1:4", L2) U = TensorHead("U", [L2]) expr = U(u1)*U(-u2) repl = {U(u1): [[1]]} raises(ValueError, lambda: expr.replace_with_arrays(repl, [u1, -u2])) def test_rewrite_tensor_to_Indexed(): L = TensorIndexType("L", dim=4) A = TensorHead("A", [L]*4) B = TensorHead("B", [L]) i0, i1, i2, i3 = symbols("i0:4") L_0, L_1 = symbols("L_0:2") a1 = A(i0, i1, i2, i3) assert a1.rewrite(Indexed) == Indexed(Symbol("A"), i0, i1, i2, i3) a2 = A(i0, -i0, i2, i3) assert a2.rewrite(Indexed) == Sum(Indexed(Symbol("A"), L_0, L_0, i2, i3), (L_0, 0, 3)) a3 = a2 + A(i2, i3, i0, -i0) assert a3.rewrite(Indexed) == \ Sum(Indexed(Symbol("A"), L_0, L_0, i2, i3), (L_0, 0, 3)) +\ Sum(Indexed(Symbol("A"), i2, i3, L_0, L_0), (L_0, 0, 3)) b1 = B(-i0)*a1 assert b1.rewrite(Indexed) == Sum(Indexed(Symbol("B"), L_0)*Indexed(Symbol("A"), L_0, i1, i2, i3), (L_0, 0, 3)) b2 = B(-i3)*a2 assert b2.rewrite(Indexed) == Sum(Indexed(Symbol("B"), L_1)*Indexed(Symbol("A"), L_0, L_0, i2, L_1), (L_0, 0, 3), (L_1, 0, 3)) def test_tensorsymmetry(): with warns_deprecated_sympy(): tensorsymmetry([1]*2) def test_tensorhead(): with warns_deprecated_sympy(): tensorhead('A', []) def test_TensorType(): with warns_deprecated_sympy(): sym2 = TensorSymmetry.fully_symmetric(2) Lorentz = TensorIndexType('Lorentz') S2 = TensorType([Lorentz]*2, sym2) assert isinstance(S2, TensorType)