Replies: 2 comments 1 reply
-
| I think the origin of the problem may be the mix use of tf.Tensor and np.array, you can try to refactor the code as the follows and see whether it works (always pay attention to the type (tensor/array) and dtype(real/complex) of each variable). @tc.backend.jit
def f(theta, h_t):
    lhs = lhs_matrix(theta,psi0)
    rhs = rhs_vector(theta,psi0, h_t)
    eps = 1e-4
    lhs += eps * tc.backend.eye(l * ltheta, dtype=lhs.dtype)
    return  tc.backend.solve(lhs, rhs, assume_a="sym")
def f_vqs(t, theta):
    h_t = 
    theta = tc.backend.convert_to_tensor(theta)
    r = f(theta, h_t)
    return tc.backend.numpy(r)
result_solve_ode= solve_ivp(f_vqs,t_span,theta0,method='RK45') | 
Beta Was this translation helpful? Give feedback.
                  
                    1 reply
                  
                
            -
| And for anyone who is interested, I have added a numpy interface, so the code for  def f(theta, h_t):
    pass
f_np = tc.interfaces.numpy_interface(f)
def f_vqs(t, theta):
    h_t = 
    return f_np(theta, h_t) | 
Beta Was this translation helpful? Give feedback.
                  
                    0 replies
                  
                
            
  
    Sign up for free
    to join this conversation on GitHub.
    Already have an account?
    Sign in to comment
  
        
    
Uh oh!
There was an error while loading. Please reload this page.
Uh oh!
There was an error while loading. Please reload this page.
-
Hi,
Naively, I replaced the propagator
updatefunction invariational_dynamics.ipynbdirectly withsolv_ivpinscipy, but I came to the problems:TypeError: Expected complex128, but got Tensor("h_t0:0", shape=(), dtype=int32) of type 'Tensor'.Could you suggest how to resolve it. Thanks.Beta Was this translation helpful? Give feedback.
All reactions