示例#1
0
    def sample(self, bqm, num_reads=10):
        """Gives random samples.

        Args:
            todo

        Returns:
            :obj:`.Response`: The vartype will match the given binary quadratic model.

        Notes:
            For each variable in each sample, the value is chosen by a coin flip.

        """
        values = np.asarray(list(bqm.vartype.value), dtype='int8')
        samples = np.random.choice(values, (num_reads, len(bqm)))
        df_samples = pd.DataFrame(samples, columns=bqm.linear)

        energies = [
            bqm.energy(sample) for idx, sample in df_samples.iterrows()
        ]

        response = Response(bqm.vartype)
        response.add_samples_from(df_samples, energies)

        return response
示例#2
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    def sample(self,
               bqm,
               num_spin_reversal_transforms=2,
               spin_reversal_variables=None,
               **kwargs):

        # make a main response
        response = Response(bqm.vartype)

        for __ in range(num_spin_reversal_transforms):
            if spin_reversal_variables is None:
                # apply spin transform to each variable with 50% chance
                transform = list(v for v in bqm.linear if random() > .5)
            else:
                transform = list(spin_reversal_variables)

            flipped_bqm = bqm.copy()

            for v in transform:
                flipped_bqm.flip_variable(v)

            flipped_response = self.child.sample(bqm, **kwargs)

            data_kwargs = flipped_response.df_data.to_dict('list')
            if 'spin_reversal_variables' in data_kwargs:
                data_kwargs['spin_reversal_variables_{}'.format(
                    time.time())] = [transform] * len(flipped_response)
            else:
                data_kwargs['spin_reversal_variables'] = [
                    transform
                ] * len(flipped_response)

            if bqm.vartype is Vartype.SPIN:
                flipped_response.df_samples[
                    transform] = -1 * flipped_response.df_samples[transform]
            else:
                flipped_response.df_samples[
                    transform] = 1 - flipped_response.df_samples[transform]

            response.add_samples_from(flipped_response.df_samples,
                                      **data_kwargs)

        return response
示例#3
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    def sample(self, bqm):
        M = to_numpy_matrix(bqm.binary)

        sample = np.zeros((len(bqm), ), dtype=bool)

        response = Response(Vartype.BINARY)

        # now we iterate, flipping one bit at a time until we have
        # traversed all samples. This is a Gray code.
        # https://en.wikipedia.org/wiki/Gray_code
        def iter_samples():
            sample = np.zeros((len(bqm)), dtype=bool)
            energy = 0.0

            yield sample.copy(), energy

            for i in range(1, 1 << len(bqm)):
                v = _ffs(i)

                # flip the bit in the sample
                sample[v] = not sample[v]

                # for now just calculate the energy, but there is a more clever way by calculating
                # the energy delta for the single bit flip, don't have time, pull requests
                # appreciated!
                energy = sample.dot(M).dot(sample.transpose())

                yield sample.copy(), float(energy) + bqm.offset

        samples, energies = zip_(*iter_samples())

        response.add_samples_from(np.asarray(samples), energies)

        # finally make sure the response matches the given vartype, in-place.
        response.change_vartype(bqm.vartype)

        return response