示例#1
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 def test_dtram(self):
     therm_energies, conf_energies, log_lagrangian_mult, increments, loglikelihoods = \
         dtram.estimate(
             self.count_matrices, self.bias_energies, maxiter=10000, maxerr=1.0E-15)
     transition_matrices = dtram.estimate_transition_matrices(
         log_lagrangian_mult, self.bias_energies, conf_energies, self.count_matrices,
         np.zeros(shape=conf_energies.shape, dtype=np.float64))
     maxerr = 1.0E-1
     assert_allclose(therm_energies, self.therm_energies, atol=maxerr)
     assert_allclose(conf_energies, self.conf_energies, atol=maxerr)
     assert_allclose(transition_matrices, self.transition_matrices, atol=maxerr)
示例#2
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 def test_dtram(self):
     therm_energies, conf_energies, log_lagrangian_mult, increments, loglikelihoods = \
         dtram.estimate(
             self.count_matrices, self.bias_energies, maxiter=10000, maxerr=1.0E-15)
     transition_matrices = dtram.estimate_transition_matrices(
         log_lagrangian_mult, self.bias_energies, conf_energies, self.count_matrices,
         np.zeros(shape=conf_energies.shape, dtype=np.float64))
     maxerr = 1.0E-1
     assert_allclose(therm_energies, self.therm_energies, atol=maxerr)
     assert_allclose(conf_energies, self.conf_energies, atol=maxerr)
     assert_allclose(transition_matrices, self.transition_matrices, atol=maxerr)
示例#3
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def test_dtram_stop():
    T = 5
    M = 10
    therm_energies, conf_energies, log_lagrangian_mult, increments, loglikelihoods = dtram.estimate(
        np.ones(shape=(T, M, M), dtype=np.intc),
        np.zeros(shape=(T, M), dtype=np.float64),
        maxiter=10, maxerr=-1.0, save_convergence_info=1,
        callback=generic_callback_stop)
    assert_allclose(therm_energies, 0.0, atol=1.0E-15)
    assert_allclose(conf_energies, np.log(M), atol=1.0E-15)
    assert_allclose(log_lagrangian_mult, np.log(M + dtram.get_prior()), atol=1.0E-15)
    assert_true(increments.shape[0] == 1)
    assert_true(loglikelihoods.shape[0] == 1)
示例#4
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def test_dtram_stop():
    T = 5
    M = 10
    therm_energies, conf_energies, log_lagrangian_mult, increments, loglikelihoods = dtram.estimate(
        np.ones(shape=(T, M, M), dtype=np.intc),
        np.zeros(shape=(T, M), dtype=np.float64),
        maxiter=10,
        maxerr=-1.0,
        save_convergence_info=1,
        callback=generic_callback_stop)
    assert_allclose(therm_energies, 0.0, atol=1.0E-15)
    assert_allclose(conf_energies, np.log(M), atol=1.0E-15)
    assert_allclose(log_lagrangian_mult,
                    np.log(M + dtram.get_prior()),
                    atol=1.0E-15)
    assert_true(increments.shape[0] == 1)
    assert_true(loglikelihoods.shape[0] == 1)
示例#5
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    def _estimate(self, trajs):
        # check input
        assert isinstance(trajs, (tuple, list))
        assert len(trajs) == 2
        ttrajs = trajs[0]
        dtrajs = trajs[1]
        # validate input
        for ttraj, dtraj in zip(ttrajs, dtrajs):
            _types.assert_array(ttraj, ndim=1, kind='numeric')
            _types.assert_array(dtraj, ndim=1, kind='numeric')
            assert _np.shape(ttraj)[0] == _np.shape(dtraj)[0]

        # harvest transition counts
        self.count_matrices_full = _util.count_matrices(
            ttrajs,
            dtrajs,
            self.lag,
            sliding=self.count_mode,
            sparse_return=False,
            nstates=self.nstates_full)
        # harvest state counts (for WHAM)
        self.state_counts_full = _util.state_counts(ttrajs,
                                                    dtrajs,
                                                    nthermo=self.nthermo,
                                                    nstates=self.nstates_full)

        # restrict to connected set
        C_sum = self.count_matrices_full.sum(axis=0)
        # TODO: use improved cset
        cset = _largest_connected_set(C_sum, directed=True)
        self.active_set = cset
        # correct counts
        self.count_matrices = self.count_matrices_full[:, cset[:, _np.newaxis],
                                                       cset]
        self.count_matrices = _np.require(self.count_matrices,
                                          dtype=_np.intc,
                                          requirements=['C', 'A'])
        # correct bias matrix
        self.bias_energies = self.bias_energies_full[:, cset]
        self.bias_energies = _np.require(self.bias_energies,
                                         dtype=_np.float64,
                                         requirements=['C', 'A'])
        # correct state counts
        self.state_counts = self.state_counts_full[:, cset]
        self.state_counts = _np.require(self.state_counts,
                                        dtype=_np.intc,
                                        requirements=['C', 'A'])

        # run initialisation
        if self.init is not None:
            if self.init == 'wham':
                self.therm_energies, self.conf_energies, _increments, _loglikelihoods = \
                    _wham.estimate(
                        self.state_counts, self.bias_energies,
                        maxiter=self.init_maxiter, maxerr=self.init_maxerr, save_convergence_info=0,
                        therm_energies=self.therm_energies, conf_energies=self.conf_energies,
                        callback=_ConvergenceProgressIndicatorCallBack(
                            self, 'WHAM init.', self.init_maxiter, self.init_maxerr))
                self._progress_force_finish(stage='WHAM init.',
                                            description='WHAM init.')

        # run estimator
        self.therm_energies, self.conf_energies, self.log_lagrangian_mult, \
        self.increments, self.loglikelihoods = _dtram.estimate(
            self.count_matrices, self.bias_energies,
            maxiter=self.maxiter, maxerr=self.maxerr,
            log_lagrangian_mult=self.log_lagrangian_mult,
            conf_energies=self.conf_energies,
            save_convergence_info=self.save_convergence_info,
            callback=_ConvergenceProgressIndicatorCallBack(
                self, 'DTRAM', self.maxiter, self.maxerr))
        self._progress_force_finish(stage='DTRAM', description='DTRAM')

        # compute models
        fmsms = [
            _dtram.estimate_transition_matrix(
                self.log_lagrangian_mult, self.bias_energies,
                self.conf_energies, self.count_matrices,
                _np.zeros(shape=self.conf_energies.shape,
                          dtype=_np.float64), K) for K in range(self.nthermo)
        ]

        active_sets = [
            _largest_connected_set(msm, directed=False) for msm in fmsms
        ]
        fmsms = [
            _np.ascontiguousarray((msm[lcc, :])[:, lcc])
            for msm, lcc in zip(fmsms, active_sets)
        ]

        models = []
        for msm, acs in zip(fmsms, active_sets):
            models.append(
                _ThermoMSM(msm,
                           self.active_set[acs],
                           self.nstates_full,
                           dt_model=self.timestep_traj.get_scaled(self.lag)))

        # set model parameters to self
        self.set_model_params(models=models,
                              f_therm=self.therm_energies,
                              f=self.conf_energies)

        # done
        return self
示例#6
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    def _estimate(self, trajs):
        """
        Parameters
        ----------
        trajs : ndarray(T, 2) or list of ndarray(T_i, 2)
            Thermodynamic trajectories. Each trajectory is a (T_i, 2)-array
            with T_i time steps. The first column is the thermodynamic state
            index, the second column is the configuration state index.

        """
        # format input if needed
        if isinstance(trajs, _np.ndarray):
            trajs = [trajs]
        # validate input
        assert _types.is_list(trajs)
        for ttraj in trajs:
            _types.assert_array(ttraj, ndim=2, kind='numeric')
            assert _np.shape(ttraj)[1] >= 2

        # harvest transition counts
        self.count_matrices_full = _util.count_matrices(
            [_np.ascontiguousarray(t[:, :2]).astype(_np.intc) for t in trajs],
            self.lag,
            sliding=self.count_mode,
            sparse_return=False,
            nstates=self.nstates_full)
        # harvest state counts (for WHAM)
        self.state_counts_full = _util.state_counts(trajs,
                                                    nthermo=self.nthermo,
                                                    nstates=self.nstates_full)

        # restrict to connected set
        C_sum = self.count_matrices_full.sum(axis=0)
        # TODO: use improved cset
        cset = _largest_connected_set(C_sum, directed=True)
        self.active_set = cset
        # correct counts
        self.count_matrices = self.count_matrices_full[:, cset[:, _np.newaxis],
                                                       cset]
        self.count_matrices = _np.require(self.count_matrices,
                                          dtype=_np.intc,
                                          requirements=['C', 'A'])
        # correct bias matrix
        self.bias_energies = self.bias_energies_full[:, cset]
        self.bias_energies = _np.require(self.bias_energies,
                                         dtype=_np.float64,
                                         requirements=['C', 'A'])
        # correct state counts
        self.state_counts = self.state_counts_full[:, cset]
        self.state_counts = _np.require(self.state_counts,
                                        dtype=_np.intc,
                                        requirements=['C', 'A'])

        # run initialisation
        if self.init is not None:
            if self.init == 'wham':
                self.therm_energies, self.conf_energies, _increments, _loglikelihoods = \
                    _wham.estimate(
                        self.state_counts, self.bias_energies,
                        maxiter=5000, maxerr=1.0E-8, save_convergence_info=0,
                        therm_energies=self.therm_energies, conf_energies=self.conf_energies)

        # run estimator
        self.therm_energies, self.conf_energies, self.log_lagrangian_mult, \
            self.increments, self.loglikelihoods = _dtram.estimate(
                self.count_matrices, self.bias_energies,
                maxiter=self.maxiter, maxerr=self.maxerr,
                log_lagrangian_mult=self.log_lagrangian_mult,
                conf_energies=self.conf_energies,
                save_convergence_info=self.save_convergence_info)

        # compute models
        models = [
            _dtram.estimate_transition_matrix(
                self.log_lagrangian_mult, self.bias_energies,
                self.conf_energies, self.count_matrices,
                _np.zeros(shape=self.conf_energies.shape,
                          dtype=_np.float64), K) for K in range(self.nthermo)
        ]
        self.model_active_set = [
            _largest_connected_set(msm, directed=False) for msm in models
        ]
        models = [
            _np.ascontiguousarray((msm[lcc, :])[:, lcc])
            for msm, lcc in zip(models, self.model_active_set)
        ]

        # set model parameters to self
        self.set_model_params(models=[
            _MSM(msm, dt_model=self.timestep_traj.get_scaled(self.lag))
            for msm in models
        ],
                              f_therm=self.therm_energies,
                              f=self.conf_energies)

        # done
        return self
示例#7
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    def _estimate(self, trajs):
        """
        Parameters
        ----------
        X : tuple of (ttrajs, dtrajs)
            Simulation trajectories. ttrajs contain the indices of the thermodynamic state and
            dtrajs contains the indices of the configurational states.
        ttrajs : list of numpy.ndarray(X_i, dtype=int)
            Every elements is a trajectory (time series). ttrajs[i][t] is the index of the
            thermodynamic state visited in trajectory i at time step t.
        dtrajs : list of numpy.ndarray(X_i, dtype=int)
            dtrajs[i][t] is the index of the configurational state (Markov state) visited in
            trajectory i at time step t.

        """
        # check input
        assert isinstance(trajs, (tuple, list))
        assert len(trajs) == 2
        ttrajs = trajs[0]
        dtrajs = trajs[1]
        # validate input
        for ttraj, dtraj in zip(ttrajs, dtrajs):
            _types.assert_array(ttraj, ndim=1, kind='numeric')
            _types.assert_array(dtraj, ndim=1, kind='numeric')
            assert _np.shape(ttraj)[0] == _np.shape(dtraj)[0]

        # harvest transition counts
        self.count_matrices_full = _util.count_matrices(
            ttrajs,
            dtrajs,
            self.lag,
            sliding=self.count_mode,
            sparse_return=False,
            nstates=self.nstates_full)
        # harvest state counts (for WHAM)
        self.state_counts_full = _util.state_counts(ttrajs,
                                                    dtrajs,
                                                    nthermo=self.nthermo,
                                                    nstates=self.nstates_full)

        # restrict to connected set
        C_sum = self.count_matrices_full.sum(axis=0)
        # TODO: use improved cset
        cset = _largest_connected_set(C_sum, directed=True)
        self.active_set = cset
        # correct counts
        self.count_matrices = self.count_matrices_full[:, cset[:, _np.newaxis],
                                                       cset]
        self.count_matrices = _np.require(self.count_matrices,
                                          dtype=_np.intc,
                                          requirements=['C', 'A'])
        # correct bias matrix
        self.bias_energies = self.bias_energies_full[:, cset]
        self.bias_energies = _np.require(self.bias_energies,
                                         dtype=_np.float64,
                                         requirements=['C', 'A'])
        # correct state counts
        self.state_counts = self.state_counts_full[:, cset]
        self.state_counts = _np.require(self.state_counts,
                                        dtype=_np.intc,
                                        requirements=['C', 'A'])

        # run initialisation
        if self.init is not None:
            if self.init == 'wham':
                self.therm_energies, self.conf_energies, _increments, _loglikelihoods = \
                    _wham.estimate(
                        self.state_counts, self.bias_energies,
                        maxiter=self.init_maxiter, maxerr=self.init_maxerr, save_convergence_info=0,
                        therm_energies=self.therm_energies, conf_energies=self.conf_energies,
                        callback=_ConvergenceProgressIndicatorCallBack(
                            self, 'WHAM init.', self.init_maxiter, self.init_maxerr))
                self._progress_force_finish(stage='WHAM init.')

        # run estimator
        self.therm_energies, self.conf_energies, self.log_lagrangian_mult, \
            self.increments, self.loglikelihoods = _dtram.estimate(
                self.count_matrices, self.bias_energies,
                maxiter=self.maxiter, maxerr=self.maxerr,
                log_lagrangian_mult=self.log_lagrangian_mult,
                conf_energies=self.conf_energies,
                save_convergence_info=self.save_convergence_info,
                callback=_ConvergenceProgressIndicatorCallBack(
                    self, 'DTRAM', self.maxiter, self.maxerr))
        self._progress_force_finish(stage='DTRAM')

        # compute models
        models = [
            _dtram.estimate_transition_matrix(
                self.log_lagrangian_mult, self.bias_energies,
                self.conf_energies, self.count_matrices,
                _np.zeros(shape=self.conf_energies.shape,
                          dtype=_np.float64), K) for K in range(self.nthermo)
        ]
        self.model_active_set = [
            _largest_connected_set(msm, directed=False) for msm in models
        ]
        models = [
            _np.ascontiguousarray((msm[lcc, :])[:, lcc])
            for msm, lcc in zip(models, self.model_active_set)
        ]

        # set model parameters to self
        self.set_model_params(models=[
            _MSM(msm, dt_model=self.timestep_traj.get_scaled(self.lag))
            for msm in models
        ],
                              f_therm=self.therm_energies,
                              f=self.conf_energies)

        # done
        return self