.. _eval: Evaluate ======== **6. Show latent space** We plot the 2D latent space. .. code-block:: ipython import matplotlib.pyplot as plt plt.figure() plt.title("Latent space") plt.scatter(latent[:, 0], latent[:, 1], marker='.', s=0.1, color='C2') plt.show() .. image:: images/latent.png :width: 50% **7. Original versus decoded datset** We compair the origonal dataset with the decoded one. .. code-block:: ipython fig = plt.figure() ax = fig.add_subplot(projection='3d') ax.scatter(val[:, 0], val[:, 1], val[:, 2], marker='.', s=0.1) ax.scatter(predict[:, 0], predict[:, 1], predict[:, 2], marker='.', s=0.1, color='C1') plt.show() .. image:: images/reconstruction.png :width: 50%