GPy/GPy/kern/_src/kernel_slice_operations.py
2014-05-06 16:30:17 +01:00

143 lines
4.8 KiB
Python

'''
Created on 11 Mar 2014
@author: maxz
'''
from ...core.parameterization.parameterized import ParametersChangedMeta
import numpy as np
from functools import wraps
def put_clean(dct, name, func):
if name in dct:
dct['_clean_{}'.format(name)] = dct[name]
dct[name] = func(dct[name])
class KernCallsViaSlicerMeta(ParametersChangedMeta):
def __new__(cls, name, bases, dct):
put_clean(dct, 'K', _slice_K)
put_clean(dct, 'Kdiag', _slice_Kdiag)
put_clean(dct, 'update_gradients_full', _slice_update_gradients_full)
put_clean(dct, 'update_gradients_diag', _slice_update_gradients_diag)
put_clean(dct, 'gradients_X', _slice_gradients_X)
put_clean(dct, 'gradients_X_diag', _slice_gradients_X_diag)
put_clean(dct, 'psi0', _slice_psi)
put_clean(dct, 'psi1', _slice_psi)
put_clean(dct, 'psi2', _slice_psi)
put_clean(dct, 'update_gradients_expectations', _slice_update_gradients_expectations)
put_clean(dct, 'gradients_Z_expectations', _slice_gradients_Z_expectations)
put_clean(dct, 'gradients_qX_expectations', _slice_gradients_qX_expectations)
return super(KernCallsViaSlicerMeta, cls).__new__(cls, name, bases, dct)
class _Slice_wrap(object):
def __init__(self, k, X, X2=None):
self.k = k
self.shape = X.shape
assert X.ndim == 2, "only matrices are allowed as inputs to kernels for now, given X.shape={!s}".format(X.shape)
if X2 is not None:
assert X2.ndim == 2, "only matrices are allowed as inputs to kernels for now, given X2.shape={!s}".format(X2.shape)
if (self.k.active_dims is not None) and (self.k._sliced_X == 0):
self.k._check_active_dims(X)
self.X = self.k._slice_X(X)
self.X2 = self.k._slice_X(X2) if X2 is not None else X2
self.ret = True
else:
self.k._check_input_dim(X)
self.X = X
self.X2 = X2
self.ret = False
def __enter__(self):
self.k._sliced_X += 1
return self
def __exit__(self, *a):
self.k._sliced_X -= 1
def handle_return_array(self, return_val):
if self.ret:
ret = np.zeros(self.shape)
ret[:, self.k.active_dims] = return_val
return ret
return return_val
def _slice_K(f):
@wraps(f)
def wrap(self, X, X2 = None, *a, **kw):
with _Slice_wrap(self, X, X2) as s:
ret = f(self, s.X, s.X2, *a, **kw)
return ret
return wrap
def _slice_Kdiag(f):
@wraps(f)
def wrap(self, X, *a, **kw):
with _Slice_wrap(self, X, None) as s:
ret = f(self, s.X, *a, **kw)
return ret
return wrap
def _slice_update_gradients_full(f):
@wraps(f)
def wrap(self, dL_dK, X, X2=None):
with _Slice_wrap(self, X, X2) as s:
ret = f(self, dL_dK, s.X, s.X2)
return ret
return wrap
def _slice_update_gradients_diag(f):
@wraps(f)
def wrap(self, dL_dKdiag, X):
with _Slice_wrap(self, X, None) as s:
ret = f(self, dL_dKdiag, s.X)
return ret
return wrap
def _slice_gradients_X(f):
@wraps(f)
def wrap(self, dL_dK, X, X2=None):
with _Slice_wrap(self, X, X2) as s:
ret = s.handle_return_array(f(self, dL_dK, s.X, s.X2))
return ret
return wrap
def _slice_gradients_X_diag(f):
@wraps(f)
def wrap(self, dL_dKdiag, X):
with _Slice_wrap(self, X, None) as s:
ret = s.handle_return_array(f(self, dL_dKdiag, s.X))
return ret
return wrap
def _slice_psi(f):
@wraps(f)
def wrap(self, Z, variational_posterior):
with _Slice_wrap(self, Z, variational_posterior) as s:
ret = f(self, s.X, s.X2)
return ret
return wrap
def _slice_update_gradients_expectations(f):
@wraps(f)
def wrap(self, dL_dpsi0, dL_dpsi1, dL_dpsi2, Z, variational_posterior):
with _Slice_wrap(self, Z, variational_posterior) as s:
ret = f(self, dL_dpsi0, dL_dpsi1, dL_dpsi2, s.X, s.X2)
return ret
return wrap
def _slice_gradients_Z_expectations(f):
@wraps(f)
def wrap(self, dL_dpsi0, dL_dpsi1, dL_dpsi2, Z, variational_posterior):
with _Slice_wrap(self, Z, variational_posterior) as s:
ret = s.handle_return_array(f(self, dL_dpsi0, dL_dpsi1, dL_dpsi2, s.X, s.X2))
return ret
return wrap
def _slice_gradients_qX_expectations(f):
@wraps(f)
def wrap(self, dL_dpsi0, dL_dpsi1, dL_dpsi2, Z, variational_posterior):
with _Slice_wrap(self, variational_posterior, Z) as s:
ret = list(f(self, dL_dpsi0, dL_dpsi1, dL_dpsi2, s.X2, s.X))
r2 = ret[:2]
ret[0] = s.handle_return_array(r2[0])
ret[1] = s.handle_return_array(r2[1])
del r2
return ret
return wrap