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change BGPLVM to use sparsegp_mpi
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ac4dbb851d
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1 changed files with 5 additions and 60 deletions
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@ -3,7 +3,7 @@
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import numpy as np
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from .. import kern
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from ..core import SparseGP
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from ..core.sparse_gp_mpi import SparseGP_MPI
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from ..likelihoods import Gaussian
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from ..inference.optimization import SCG
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from ..util import linalg
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@ -12,7 +12,7 @@ from ..inference.latent_function_inference.var_dtc_parallel import update_gradie
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from ..inference.latent_function_inference.var_dtc_gpu import VarDTC_GPU
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import logging
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class BayesianGPLVM(SparseGP):
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class BayesianGPLVM(SparseGP_MPI):
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"""
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Bayesian Gaussian Process Latent Variable Model
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@ -76,18 +76,7 @@ class BayesianGPLVM(SparseGP):
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if kernel.useGPU and isinstance(inference_method, VarDTC_GPU):
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kernel.psicomp.GPU_direct = True
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SparseGP.__init__(self, X, Y, Z, kernel, likelihood, inference_method, name, normalizer=normalizer)
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self.logger.info("Adding X as parameter")
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self.link_parameter(self.X, index=0)
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if mpi_comm != None:
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from ..util.mpi import divide_data
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N_start, N_end, N_list = divide_data(Y.shape[0], mpi_comm)
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self.N_range = (N_start, N_end)
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self.N_list = np.array(N_list)
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self.Y_local = self.Y[N_start:N_end]
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print 'MPI RANK: '+str(self.mpi_comm.rank)+' with datasize: '+str(self.N_range)
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mpi_comm.Bcast(self.param_array, root=0)
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super(BayesianGPLVM,self).__init__(X, Y, Z, kernel, likelihood=likelihood, name=name, inference_method=inference_method, normalizer=normalizer, mpi_comm=mpi_comm, variational_prior=self.variational_prior)
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def set_X_gradients(self, X, X_grad):
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"""Set the gradients of the posterior distribution of X in its specific form."""
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@ -98,8 +87,8 @@ class BayesianGPLVM(SparseGP):
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return X.mean.gradient, X.variance.gradient
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def parameters_changed(self):
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if isinstance(self.inference_method, VarDTC_GPU) or isinstance(self.inference_method, VarDTC_minibatch):
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update_gradients(self, mpi_comm=self.mpi_comm)
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super(BayesianGPLVM,self).parameters_changed()
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if isinstance(self.inference_method, VarDTC_minibatch):
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return
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super(BayesianGPLVM, self).parameters_changed()
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@ -211,50 +200,6 @@ class BayesianGPLVM(SparseGP):
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from ..plotting.matplot_dep import dim_reduction_plots
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return dim_reduction_plots.plot_steepest_gradient_map(self,*args,**kwargs)
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def __getstate__(self):
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dc = super(BayesianGPLVM, self).__getstate__()
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dc['mpi_comm'] = None
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if self.mpi_comm != None:
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del dc['N_range']
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del dc['N_list']
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del dc['Y_local']
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return dc
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def __setstate__(self, state):
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return super(BayesianGPLVM, self).__setstate__(state)
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#=====================================================
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# The MPI parallelization
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# - can move to model at some point
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#=====================================================
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def _set_params_transformed(self, p):
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if self.mpi_comm != None:
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if self.__IN_OPTIMIZATION__ and self.mpi_comm.rank==0:
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self.mpi_comm.Bcast(np.int32(1),root=0)
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self.mpi_comm.Bcast(p, root=0)
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super(BayesianGPLVM, self)._set_params_transformed(p)
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def optimize(self, optimizer=None, start=None, **kwargs):
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self.__IN_OPTIMIZATION__ = True
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if self.mpi_comm==None:
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super(BayesianGPLVM, self).optimize(optimizer,start,**kwargs)
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elif self.mpi_comm.rank==0:
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super(BayesianGPLVM, self).optimize(optimizer,start,**kwargs)
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self.mpi_comm.Bcast(np.int32(-1),root=0)
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elif self.mpi_comm.rank>0:
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x = self._get_params_transformed().copy()
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flag = np.empty(1,dtype=np.int32)
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while True:
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self.mpi_comm.Bcast(flag,root=0)
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if flag==1:
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self._set_params_transformed(x)
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elif flag==-1:
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break
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else:
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self.__IN_OPTIMIZATION__ = False
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raise Exception("Unrecognizable flag for synchronization!")
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self.__IN_OPTIMIZATION__ = False
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def latent_cost_and_grad(mu_S, input_dim, kern, Z, dL_dpsi0, dL_dpsi1, dL_dpsi2):
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