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.. _sphx_glr_auto_examples_demo_OT_2D_sampleslarge.py:
Demo for 2D Optimal transport between empirical distributions
@author: rflamary
.. code-block:: python
import numpy as np
import matplotlib.pylab as pl
import ot
#%% parameters and data generation
n=5000 # nb samples
mu_s=np.array([0,0])
cov_s=np.array([[1,0],[0,1]])
mu_t=np.array([4,4])
cov_t=np.array([[1,-.8],[-.8,1]])
xs=ot.datasets.get_2D_samples_gauss(n,mu_s,cov_s)
xt=ot.datasets.get_2D_samples_gauss(n,mu_t,cov_t)
a,b = ot.unif(n),ot.unif(n) # uniform distribution on samples
# loss matrix
M=ot.dist(xs,xt)
M/=M.max()
#%% plot samples
#pl.figure(1)
#pl.plot(xs[:,0],xs[:,1],'+b',label='Source samples')
#pl.plot(xt[:,0],xt[:,1],'xr',label='Target samples')
#pl.legend(loc=0)
#pl.title('Source and traget distributions')
#
#pl.figure(2)
#pl.imshow(M,interpolation='nearest')
#pl.title('Cost matrix M')
#
#%% EMD
G0=ot.emd(a,b,M)
#pl.figure(3)
#pl.imshow(G0,interpolation='nearest')
#pl.title('OT matrix G0')
#
#pl.figure(4)
#ot.plot.plot2D_samples_mat(xs,xt,G0,c=[.5,.5,1])
#pl.plot(xs[:,0],xs[:,1],'+b',label='Source samples')
#pl.plot(xt[:,0],xt[:,1],'xr',label='Target samples')
#pl.legend(loc=0)
#pl.title('OT matrix with samples')
#%% sinkhorn
# reg term
lambd=5e-3
Gs=ot.sinkhorn(a,b,M,lambd)
#pl.figure(5)
#pl.imshow(Gs,interpolation='nearest')
#pl.title('OT matrix sinkhorn')
#
#pl.figure(6)
#ot.plot.plot2D_samples_mat(xs,xt,Gs,color=[.5,.5,1])
#pl.plot(xs[:,0],xs[:,1],'+b',label='Source samples')
#pl.plot(xt[:,0],xt[:,1],'xr',label='Target samples')
#pl.legend(loc=0)
#pl.title('OT matrix Sinkhorn with samples')
#
**Total running time of the script:** ( 0 minutes 0.000 seconds)
.. container:: sphx-glr-footer
.. container:: sphx-glr-download
:download:`Download Python source code: demo_OT_2D_sampleslarge.py <demo_OT_2D_sampleslarge.py>`
.. container:: sphx-glr-download
:download:`Download Jupyter notebook: demo_OT_2D_sampleslarge.ipynb <demo_OT_2D_sampleslarge.ipynb>`
.. rst-class:: sphx-glr-signature
`Generated by Sphinx-Gallery <http://sphinx-gallery.readthedocs.io>`_
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