def test_batch_matmul(self):
            if not torch.cuda.is_available():
                return

            x1 = torch.randn(3, 2, 100, 3).cuda()
            kern1 = RBFKernel().cuda()
            kern2 = GRBFKernel().cuda()

            rhs = torch.randn(3, 2, 100, 1).cuda()
            res1 = kern1(x1, x1).matmul(rhs)
            res2 = kern2(x1, x1).matmul(rhs)

            self.assertLess(torch.norm(res1 - res2), 1e-4)
        def test_forward_x1_eq_x2(self):
            if not torch.cuda.is_available():
                return

            x1 = torch.randn(100, 3).cuda()

            kern1 = RBFKernel().cuda()
            kern2 = GRBFKernel().cuda()

            k1 = kern1(x1, x1).evaluate()
            k2 = kern2(x1, x1).evaluate()

            self.assertLess(torch.norm(k1 - k2), 1e-4)
 def create_kernel_ard(self, num_dims, **kwargs):
     return RBFKernel(ard_num_dims=num_dims, **kwargs)
 def create_kernel_no_ard(self, **kwargs):
     return RBFKernel(**kwargs)