Esempio n. 1
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    def __random__(self, index, which=0):
        if which > 1:
            sys.exit(
                'SparseTensor.__eye__(self,index={0},which={1}): which has be to be 0 or 1.'
                .format(index, which))
        Ds = [copy.deepcopy(self._Ds[index]), copy.deepcopy(self._Ds[index])]
        if which == 0:
            qflow = tuple(
                [utils.flipsigns(self._qflow[index]), self._qflow[index]])
        elif which == 1:
            qflow = tuple(
                [self._qflow[index],
                 utils.flipsigns(self._qflow[index])])

        mergelevel = tuple([self._mergelevel[index], self._mergelevel[index]])
        keytoq = tuple([self._ktoq[index], self._ktoq[index]])
        iden = SparseTensor(keys=[],
                            values=[],
                            Ds=Ds,
                            qflow=qflow,
                            keytoq=keytoq,
                            mergelevel=mergelevel,
                            dtype=self._dtype)
        for k in self._Ds[index].keys():
            key = tuple([k, k])
            temp = self._Ds[index][k]
            shape = tuple([temp, temp])
            size = utils.prod(utils.flatten(temp))
            iden.__insertmergedblock__(
                key, shape,
                np.random.rand(size, size).astype(self._dtype))

        return iden
Esempio n. 2
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 def __conj__(self, *args, **kwargs):
     res = self.__unary_operations__(np.conj, *args, **kwargs)
     res._qflow = utils.flipsigns(res._qflow)
     return res
Esempio n. 3
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 def __flippedflow__(self):
     return utils.flipsigns(self._qflow)
Esempio n. 4
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 def __flipflow__(self):
     self._qflow = utils.flipsigns(self._qflow)
     return self