Пример #1
0
    def test_opts_add(self):
        stanc_opts = {'warn-uninitialized': True}
        cpp_opts = {'STAN_OPENCL': 'TRUE', 'OPENCL_DEVICE_ID': 1}
        opts = CompilerOptions(stanc_options=stanc_opts, cpp_options=cpp_opts)
        opts.validate()
        opts_list = opts.compose()
        self.assertTrue('STAN_OPENCL=TRUE' in opts_list)
        self.assertTrue('OPENCL_DEVICE_ID=1' in opts_list)
        new_opts = CompilerOptions(cpp_options={
            'STAN_OPENCL': 'FALSE',
            'OPENCL_DEVICE_ID': 2
        })
        opts.add(new_opts)
        opts_list = opts.compose()
        self.assertTrue('STAN_OPENCL=FALSE' in opts_list)
        self.assertTrue('OPENCL_DEVICE_ID=2' in opts_list)

        expect = 'STANCFLAGS+=--include_paths=' + DATAFILES_PATH.replace(
            '\\', '/')
        stanc_opts2 = {'include_paths': DATAFILES_PATH}
        new_opts2 = CompilerOptions(stanc_options=stanc_opts2)
        opts.add(new_opts2)
        opts_list = opts.compose()
        self.assertTrue(expect in opts_list)

        path2 = os.path.join(HERE, 'data', 'optimize')
        expect = 'STANCFLAGS+=--include_paths=' + ','.join(
            [DATAFILES_PATH, path2]).replace('\\', '/')
        stanc_opts3 = {'include_paths': path2}
        new_opts3 = CompilerOptions(stanc_options=stanc_opts3)
        opts.add(new_opts3)
        opts_list = opts.compose()
        self.assertTrue(expect in opts_list)
Пример #2
0
class CmdStanModel:
    """
    A CmdStanModel object encapsulates the Stan program and provides
    methods for compilation and doing inference on the model given data
    using Stan's algorithms.  It manages program compilation and corresponding
    Stan and C++ compiler options.

    The constructor method allows model instantiation given either or
    both the Stan program source file and the compiled executable, and
    provides accessor functions for the file locations.   By default, the
    constructor will compile the Stan program on instantiation unless the
    argument ``compile=False`` is specified.
    """
    def __init__(
        self,
        model_name: str = None,
        stan_file: str = None,
        exe_file: str = None,
        compile: bool = True,
        stanc_options: Dict = None,
        cpp_options: Dict = None,
        logger: logging.Logger = None,
    ) -> None:
        """
        Initialize object given constructor args.

        :param model_name: Model name, used for output file names.
        :param stan_file: Path to Stan program file.
        :param exe_file: Path to compiled executable file.
        :param compile: Whether or not to compile the model.
        :param stanc_options: Options for stanc compiler.
        :param cpp_options: Options for C++ compiler.
        :param logger: Python logger object.
        """
        self._name = None
        self._stan_file = None
        self._exe_file = None
        self._compiler_options = CompilerOptions(stanc_options=stanc_options,
                                                 cpp_options=cpp_options)
        self._logger = logger or get_logger()

        if model_name is not None:
            if not model_name.strip():
                raise ValueError(
                    'Invalid value for argument model name, found "{}"'.format(
                        model_name))
            self._name = model_name.strip()

        if stan_file is None:
            if exe_file is None:
                raise ValueError(
                    'Missing model file arguments, you must specify '
                    'either Stan source or executable program file or both.')
        else:
            self._stan_file = os.path.realpath(os.path.expanduser(stan_file))
            if not os.path.exists(self._stan_file):
                raise ValueError('no such file {}'.format(self._stan_file))
            _, filename = os.path.split(stan_file)
            if len(filename) < 6 or not filename.endswith('.stan'):
                raise ValueError('invalid stan filename {}'.format(
                    self._stan_file))
            if self._name is None:
                self._name, _ = os.path.splitext(filename)
            # if program has include directives, record path
            with open(self._stan_file, 'r') as fd:
                program = fd.read()
            if '#include' in program:
                path, _ = os.path.split(self._stan_file)
                if self._compiler_options is None:
                    self._compiler_options = CompilerOptions(
                        stanc_options={'include_paths': [path]})
                elif self._compiler_options._stanc_options is None:
                    self._compiler_options._stanc_options = {
                        'include_paths': [path]
                    }
                else:
                    self._compiler_options.add_include_path(path)

        if exe_file is not None:
            self._exe_file = os.path.realpath(os.path.expanduser(exe_file))
            if not os.path.exists(self._exe_file):
                raise ValueError('no such file {}'.format(self._exe_file))
            _, exename = os.path.split(self._exe_file)
            if self._name is None:
                self._name, _ = os.path.splitext(exename)
            else:
                if self._name != os.path.splitext(exename)[0]:
                    raise ValueError(
                        'Name mismatch between Stan file and compiled'
                        ' executable, expecting basename: {}'
                        ' found: {}.'.format(self._name, exename))

        if self._compiler_options is not None:
            self._compiler_options.validate()

        if platform.system() == 'Windows':
            # Add tbb to the $PATH on Windows
            libtbb = os.environ.get('STAN_TBB')
            if libtbb is None:
                libtbb = os.path.join(cmdstan_path(), 'stan', 'lib',
                                      'stan_math', 'lib', 'tbb')
            os.environ['PATH'] = ';'.join(
                list(
                    OrderedDict.fromkeys(
                        [libtbb] + os.environ.get('PATH', '').split(';'))))

        if compile and self._exe_file is None:
            self.compile()
            if self._exe_file is None:
                raise ValueError(
                    'Unable to compile Stan model file: {}.'.format(
                        self._stan_file))

    def __repr__(self) -> str:
        repr = 'CmdStanModel: name={}'.format(self._name)
        repr = '{}\n\t stan_file={}'.format(repr, self._stan_file)
        repr = '{}\n\t exe_file={}'.format(repr, self._exe_file)
        repr = '{}\n\t compiler_options={}'.format(repr,
                                                   self._compiler_options)
        return repr

    @property
    def name(self) -> str:
        """
        Model name used in output filename templates. Default is basename
        of Stan program or exe file, unless specified in call to constructor
        via argument ``model_name``.
        """
        return self._name

    @property
    def stan_file(self) -> str:
        """Full path to Stan program file."""
        return self._stan_file

    @property
    def exe_file(self) -> str:
        """Full path to Stan exe file."""
        return self._exe_file

    @property
    def stanc_options(self) -> Dict:
        """Options to stanc compilers."""
        return self._compiler_options._stanc_options

    @property
    def cpp_options(self) -> Dict:
        """Options to C++ compilers."""
        return self._compiler_options._cpp_options

    def code(self) -> str:
        """Return Stan program as a string."""
        if not self._stan_file:
            raise RuntimeError('Please specify source file')

        code = None
        try:
            with open(self._stan_file, 'r') as fd:
                code = fd.read()
        except IOError:
            self._logger.error('Cannot read file Stan file: %s',
                               self._stan_file)
        return code

    def compile(
        self,
        force: bool = False,
        stanc_options: Dict = None,
        cpp_options: Dict = None,
        override_options: bool = False,
    ) -> None:
        """
        Compile the given Stan program file.  Translates the Stan code to
        C++, then calls the C++ compiler.

        By default, this function compares the timestamps on the source and
        executable files; if the executable is newer than the source file, it
        will not recompile the file, unless argument ``force`` is ``True``.

        :param force: When ``True``, always compile, even if the executable file
            is newer than the source file.  Used for Stan models which have
            ``#include`` directives in order to force recompilation when changes
            are made to the included files.

        :param stanc_options: Options for stanc compiler.
        :param cpp_options: Options for C++ compiler.

        :param override_options: When ``True``, override existing option.
            When ``False``, add/replace existing options.  Default is ``False``.
        """
        if not self._stan_file:
            raise RuntimeError('Please specify source file')

        compiler_options = None
        if not (stanc_options is None and cpp_options is None):
            compiler_options = CompilerOptions(stanc_options=stanc_options,
                                               cpp_options=cpp_options)
            compiler_options.validate()
            if self._compiler_options is None:
                self._compiler_options = compiler_options
            elif override_options:
                self._compiler_options = compiler_options
            else:
                self._compiler_options.add(compiler_options)

        compilation_failed = False
        with TemporaryCopiedFile(self._stan_file) as (stan_file, is_copied):
            exe_file, _ = os.path.splitext(os.path.abspath(stan_file))
            exe_file = Path(exe_file).as_posix() + EXTENSION
            do_compile = True
            if os.path.exists(exe_file):
                src_time = os.path.getmtime(self._stan_file)
                exe_time = os.path.getmtime(exe_file)
                if exe_time > src_time and not force:
                    do_compile = False
                    self._logger.info('found newer exe file, not recompiling')

            if do_compile:
                self._logger.info('compiling stan program, exe file: %s',
                                  exe_file)
                if self._compiler_options is not None:
                    self._compiler_options.validate()
                    self._logger.info('compiler options: %s',
                                      self._compiler_options)
                make = os.getenv(
                    'MAKE',
                    'make'
                    if platform.system() != 'Windows' else 'mingw32-make',
                )
                cmd = [make]
                if self._compiler_options is not None:
                    cmd.extend(self._compiler_options.compose())
                cmd.append(Path(exe_file).as_posix())
                try:
                    do_command(cmd, cmdstan_path(), logger=self._logger)
                except RuntimeError as e:
                    self._logger.error('file %s, exception %s', stan_file,
                                       str(e))
                    compilation_failed = True

            if not compilation_failed:
                if is_copied:
                    original_target_dir = os.path.dirname(
                        os.path.abspath(self._stan_file))
                    new_exec_name = (os.path.basename(
                        os.path.splitext(self._stan_file)[0]) + EXTENSION)
                    self._exe_file = os.path.join(original_target_dir,
                                                  new_exec_name)
                    shutil.copy(exe_file, self._exe_file)
                else:
                    self._exe_file = exe_file
                self._logger.info('compiled model file: %s', self._exe_file)
            else:
                self._logger.error('model compilation failed')

    def optimize(
        self,
        data: Union[Dict, str] = None,
        seed: int = None,
        inits: Union[Dict, float, str] = None,
        output_dir: str = None,
        algorithm: str = None,
        init_alpha: float = None,
        iter: int = None,
    ) -> CmdStanMLE:
        """
        Run the specified CmdStan optimize algorithm to produce a
        penalized maximum likelihood estimate of the model parameters.

        This function validates the specified configuration, composes a call to
        the CmdStan ``optimize`` method and spawns one subprocess to run the
        optimizer and waits for it to run to completion.
        Unspecified arguments are not included in the call to CmdStan, i.e.,
        those arguments will have CmdStan default values.

        The ``CmdStanMLE`` object records the command, the return code,
        and the paths to the optimize method output csv and console files.
        The output files are written either to a specified output directory
        or to a temporary directory which is deleted upon session exit.

        Output files are either written to a temporary directory or to the
        specified output directory.  Ouput filenames correspond to the template
        '<model_name>-<YYYYMMDDHHMM>-<chain_id>' plus the file suffix which is
        either '.csv' for the CmdStan output or '.txt' for
        the console messages, e.g. 'bernoulli-201912081451-1.csv'.
        Output files written to the temporary directory contain an additional
        8-character random string, e.g. 'bernoulli-201912081451-1-5nm6as7u.csv'.

        :param data: Values for all data variables in the model, specified
            either as a dictionary with entries matching the data variables,
            or as the path of a data file in JSON or Rdump format.

        :param seed: The seed for random number generator. Must be an integer
            between 0 and 2^32 - 1. If unspecified,
            ``numpy.random.RandomState()`` is used to generate a seed.

        :param inits:  Specifies how the sampler initializes parameter values.
            Initialization is either uniform random on a range centered on 0,
            exactly 0, or a dictionary or file of initial values for some or
            all parameters in the model.  The default initialization behavior
            will initialize all parameter values on range [-2, 2] on the
            *unconstrained* support.  If the expected parameter values are
            too far from this range, this option may improve estimation.
            The following value types are allowed:

            * Single number, n > 0 - initialization range is [-n, n].
            * 0 - all parameters are initialized to 0.
            * dictionary - pairs parameter name : initial value.
            * string - pathname to a JSON or Rdump data file.

        :param output_dir: Name of the directory to which CmdStan output
            files are written. If unspecified, output files will be written
            to a temporary directory which is deleted upon session exit.

        :param algorithm: Algorithm to use. One of: 'BFGS', 'LBFGS', 'Newton'

        :param init_alpha: Line search step size for first iteration

        :param iter: Total number of iterations

        :return: CmdStanMLE object
        """
        optimize_args = OptimizeArgs(algorithm=algorithm,
                                     init_alpha=init_alpha,
                                     iter=iter)

        with MaybeDictToFilePath(data, inits) as (_data, _inits):
            args = CmdStanArgs(
                self._name,
                self._exe_file,
                chain_ids=None,
                data=_data,
                seed=seed,
                inits=_inits,
                output_dir=output_dir,
                save_diagnostics=False,
                method_args=optimize_args,
            )

            dummy_chain_id = 0
            runset = RunSet(args=args, chains=1)
            self._run_cmdstan(runset, dummy_chain_id)

        if not runset._check_retcodes():
            msg = 'Error during optimization.\n{}'.format(
                runset.get_err_msgs())
            raise RuntimeError(msg)
        mle = CmdStanMLE(runset)
        return mle

    def sample(
        self,
        data: Union[Dict, str] = None,
        chains: Union[int, None] = None,
        parallel_chains: Union[int, None] = None,
        threads_per_chain: Union[int, None] = None,
        seed: Union[int, List[int]] = None,
        chain_ids: Union[int, List[int]] = None,
        inits: Union[Dict, float, str, List[str]] = None,
        iter_warmup: int = None,
        iter_sampling: int = None,
        save_warmup: bool = False,
        thin: int = None,
        max_treedepth: float = None,
        metric: Union[str, List[str]] = None,
        step_size: Union[float, List[float]] = None,
        adapt_engaged: bool = True,
        adapt_delta: float = None,
        adapt_init_phase: int = None,
        adapt_metric_window: int = None,
        adapt_step_size: int = None,
        fixed_param: bool = False,
        output_dir: str = None,
        save_diagnostics: bool = False,
        show_progress: Union[bool, str] = False,
        validate_csv: bool = True,
    ) -> CmdStanMCMC:
        """
        Run or more chains of the NUTS sampler to produce a set of draws
        from the posterior distribution of a model conditioned on some data.

        This function validates the specified configuration, composes a call to
        the CmdStan ``sample`` method and spawns one subprocess per chain to run
        the sampler and waits for all chains to run to completion.
        Unspecified arguments are not included in the call to CmdStan, i.e.,
        those arguments will have CmdStan default values.

        For each chain, the ``CmdStanMCMC`` object records the command,
        the return code, the sampler output file paths, and the corresponding
        console outputs, if any. The output files are written either to a
        specified output directory or to a temporary directory which is deleted
        upon session exit.

        Output files are either written to a temporary directory or to the
        specified output directory.  Ouput filenames correspond to the template
        '<model_name>-<YYYYMMDDHHMM>-<chain_id>' plus the file suffix which is
        either '.csv' for the CmdStan output or '.txt' for
        the console messages, e.g. 'bernoulli-201912081451-1.csv'.
        Output files written to the temporary directory contain an additional
        8-character random string, e.g. 'bernoulli-201912081451-1-5nm6as7u.csv'.

        :param data: Values for all data variables in the model, specified
            either as a dictionary with entries matching the data variables,
            or as the path of a data file in JSON or Rdump format.

        :param chains: Number of sampler chains, must be a positive integer.

        :param parallel_chains: Number of processes to run in parallel. Must be
            a positive integer.  Defaults to ``multiprocessing.cpu_count()``.

        :param threads_per_chain: The number of threads to use in parallelized
            sections within an MCMC chain (e.g., when using the Stan functions
            ``reduce_sum()``  or ``map_rect()``).  This will only have an effect
            if the model was compiled with threading support. The total number
            of threads used will be ``parallel_chains * threads_per_chain``.

        :param seed: The seed for random number generator. Must be an integer
            between 0 and 2^32 - 1. If unspecified,
            ``numpy.random.RandomState()``
            is used to generate a seed which will be used for all chains.
            When the same seed is used across all chains,
            the chain-id is used to advance the RNG to avoid dependent samples.

        :param chain_ids: The offset for the random number generator, either
            an integer or a list of unique per-chain offsets.  If unspecified,
            chain ids are numbered sequentially starting from 1.

        :param inits: Specifies how the sampler initializes parameter values.
            Initialization is either uniform random on a range centered on 0,
            exactly 0, or a dictionary or file of initial values for some or all
            parameters in the model.  The default initialization behavior will
            initialize all parameter values on range [-2, 2] on the
            *unconstrained* support.  If the expected parameter values are
            too far from this range, this option may improve adaptation.
            The following value types are allowed:

            * Single number n > 0 - initialization range is [-n, n].
            * 0 - all parameters are initialized to 0.
            * dictionary - pairs parameter name : initial value.
            * string - pathname to a JSON or Rdump data file.
            * list of strings - per-chain pathname to data file.

        :param iter_warmup: Number of warmup iterations for each chain.

        :param iter_sampling: Number of draws from the posterior for each
            chain.

        :param save_warmup: When ``True``, sampler saves warmup draws as part of
            the Stan csv output file.

        :param thin: Period between saved samples.

        :param max_treedepth: Maximum depth of trees evaluated by NUTS sampler
            per iteration.

        :param metric: Specification of the mass matrix, either as a
            vector consisting of the diagonal elements of the covariance
            matrix ('diag' or 'diag_e') or the full covariance matrix
            ('dense' or 'dense_e').

            If the value of the metric argument is a string other than
            'diag', 'diag_e', 'dense', or 'dense_e', it must be
            a valid filepath to a JSON or Rdump file which contains an entry
            'inv_metric' whose value is either the diagonal vector or
            the full covariance matrix.

            If the value of the metric argument is a list of paths, its
            length must match the number of chains and all paths must be
            unique.

        :param step_size: Initial stepsize for HMC sampler.  The value is either
            a single number or a list of numbers which will be used as the
            global or per-chain initial step size, respectively.
            The length of the list of step sizes must match the number of
            chains.

        :param adapt_engaged: When True, adapt stepsize and metric.

        :param adapt_delta: Adaptation target Metropolis acceptance rate.
            The default value is 0.8.  Increasing this value, which must be
            strictly less than 1, causes adaptation to use smaller step sizes
            which improves the effective sample size, but may increase the time
            per iteration.

        :param adapt_init_phase: Iterations for initial phase of adaptation
            during which step size is adjusted so that the chain converges
            towards the typical set.

        :param adapt_metric_window: The second phase of adaptation tunes
            the metric and stepsize in a series of intervals.  This parameter
            specifies the number of iterations used for the first tuning
            interval; window size increases for each subsequent interval.

        :param adapt_step_size: Number of iterations given over to adjusting
            the step size given the tuned metric during the final phase of
            adaptation.

        :param fixed_param: When ``True``, call CmdStan with argument
            ``algorithm=fixed_param`` which runs the sampler without
            updating the Markov Chain, thus the values of all parameters and
            transformed parameters are constant across all draws and
            only those values in the generated quantities block that are
            produced by RNG functions may change.  This provides
            a way to use Stan programs to generate simulated data via the
            generated quantities block.  This option must be used when the
            parameters block is empty.  Default value is ``False``.

        :param output_dir: Name of the directory to which CmdStan output
            files are written. If unspecified, output files will be written
            to a temporary directory which is deleted upon session exit.

        :param save_diagnostics: Whether or not to save diagnostics. If True,
            csv output files are written to an output file with filename
            template '<model_name>-<YYYYMMDDHHMM>-diagnostic-<chain_id>',
            e.g. 'bernoulli-201912081451-diagnostic-1.csv'.

        :param show_progress: Use tqdm progress bar to show sampling progress.
            If show_progress=='notebook' use tqdm_notebook
            (needs nodejs for jupyter).

        :param validate_csv: If ``False``, skip scan of sample csv output file.
            When sample is large or disk i/o is slow, will speed up processing.
            Default is ``True`` - sample csv files are scanned for completeness
            and consistency.

        :return: CmdStanMCMC object
        """
        if chains is None:
            if fixed_param:
                chains = 1
            else:
                chains = 4
        if chains < 1:
            raise ValueError(
                'Chains must be a positive integer value, found {}.'.format(
                    chains))
        if chain_ids is None:
            chain_ids = [x + 1 for x in range(chains)]
        else:
            if isinstance(chain_ids, int):
                if chain_ids < 1:
                    raise ValueError(
                        'Chain_id must be a positive integer value,'
                        ' found {}.'.format(chain_ids))
                chain_ids = [chain_ids + i for i in range(chains)]
            else:
                if not len(chain_ids) == chains:
                    raise ValueError(
                        'Chain_ids must correspond to number of chains'
                        ' specified {} chains, found {} chain_ids.'.format(
                            chains, len(chain_ids)))
                for chain_id in chain_ids:
                    if chain_id < 0:
                        raise ValueError(
                            'Chain_id must be a non-negative integer value,'
                            ' found {}.'.format(chain_id))
        if parallel_chains is None:
            parallel_chains = max(min(cpu_count(), chains), 1)
        elif parallel_chains > chains:
            self._logger.info(
                'Requesting %u parallel_chains for %u chains,'
                ' running all chains in parallel.',
                parallel_chains,
                chains,
            )
            parallel_chains = chains
        elif parallel_chains < 1:
            raise ValueError(
                'Argument parallel_chains must be a positive integer value, '
                'found {}.'.format(parallel_chains))
        if threads_per_chain is None:
            threads_per_chain = 1
        if threads_per_chain < 1:
            raise ValueError(
                'Argument threads_per_chain must be a positive integer value, '
                'found {}.'.format(threads_per_chain))
        self._logger.debug('total threads: %u',
                           parallel_chains * threads_per_chain)
        os.environ['STAN_NUM_THREADS'] = str(threads_per_chain)

        refresh = None
        if show_progress:
            try:
                import tqdm

                self._logger.propagate = False
            except ImportError:
                self._logger.warning(
                    ('Package tqdm not installed, cannot show progress '
                     'information. Please install tqdm with '
                     "'pip install tqdm'"))
                show_progress = False

        # TODO:  issue 49: inits can be initialization function

        sampler_args = SamplerArgs(
            iter_warmup=iter_warmup,
            iter_sampling=iter_sampling,
            save_warmup=save_warmup,
            thin=thin,
            max_treedepth=max_treedepth,
            metric=metric,
            step_size=step_size,
            adapt_engaged=adapt_engaged,
            adapt_delta=adapt_delta,
            adapt_init_phase=adapt_init_phase,
            adapt_metric_window=adapt_metric_window,
            adapt_step_size=adapt_step_size,
            fixed_param=fixed_param,
        )
        with MaybeDictToFilePath(data, inits) as (_data, _inits):
            args = CmdStanArgs(
                self._name,
                self._exe_file,
                chain_ids=chain_ids,
                data=_data,
                seed=seed,
                inits=_inits,
                output_dir=output_dir,
                save_diagnostics=save_diagnostics,
                method_args=sampler_args,
                refresh=refresh,
                logger=self._logger,
            )
            runset = RunSet(args=args, chains=chains, chain_ids=chain_ids)
            pbar = None
            all_pbars = []

            with ThreadPoolExecutor(max_workers=parallel_chains) as executor:
                for i in range(chains):
                    if show_progress:
                        if (isinstance(show_progress, str)
                                and show_progress.lower() == 'notebook'):
                            try:
                                tqdm_pbar = tqdm.tqdm_notebook
                            except ImportError:
                                msg = (
                                    'Cannot import tqdm.tqdm_notebook.\n'
                                    'Functionality is only supported on the '
                                    'Jupyter Notebook and compatible platforms'
                                    '.\nPlease follow the instructions in '
                                    'https://github.com/tqdm/tqdm/issues/394#'
                                    'issuecomment-384743637 and remember to '
                                    'stop & start your jupyter server.')
                                self._logger.warning(msg)
                                tqdm_pbar = tqdm.tqdm
                        else:
                            tqdm_pbar = tqdm.tqdm
                        # enable dynamic_ncols for advanced users
                        # currently hidden feature
                        dynamic_ncols = os.environ.get('TQDM_DYNAMIC_NCOLS',
                                                       'False')
                        if dynamic_ncols.lower() in ['0', 'false']:
                            dynamic_ncols = False
                        else:
                            dynamic_ncols = True

                        pbar = tqdm_pbar(
                            desc='Chain {} - warmup'.format(i + 1),
                            position=i,
                            total=1,  # Will set total from Stan's output
                            dynamic_ncols=dynamic_ncols,
                        )
                        all_pbars.append(pbar)
                    executor.submit(self._run_cmdstan, runset, i, pbar)

            # Closing all progress bars
            for pbar in all_pbars:
                pbar.close()
            if show_progress:
                # re-enable logger for console
                self._logger.propagate = True

            if not runset._check_retcodes():
                msg = 'Error during sampling.\n{}'.format(
                    runset.get_err_msgs())
                raise RuntimeError(msg)

            mcmc = CmdStanMCMC(runset, validate_csv, logger=self._logger)
        return mcmc

    def generate_quantities(
        self,
        data: Union[Dict, str] = None,
        mcmc_sample: Union[CmdStanMCMC, List[str]] = None,
        seed: int = None,
        gq_output_dir: str = None,
    ) -> CmdStanGQ:
        """
        Run CmdStan's generate_quantities method which runs the generated
        quantities block of a model given an existing sample.

        This function takes a CmdStanMCMC object and the dataset used to
        generate that sample and calls to the CmdStan ``generate_quantities``
        method to generate additional quantities of interest.

        The ``CmdStanGQ`` object records the command, the return code,
        and the paths to the generate method output csv and console files.
        The output files are written either to a specified output directory
        or to a temporary directory which is deleted upon session exit.

        Output files are either written to a temporary directory or to the
        specified output directory.  Output filenames correspond to the template
        '<model_name>-<YYYYMMDDHHMM>-<chain_id>' plus the file suffix which is
        either '.csv' for the CmdStan output or '.txt' for
        the console messages, e.g. 'bernoulli-201912081451-1.csv'.
        Output files written to the temporary directory contain an additional
        8-character random string, e.g. 'bernoulli-201912081451-1-5nm6as7u.csv'.

        :param data: Values for all data variables in the model, specified
            either as a dictionary with entries matching the data variables,
            or as the path of a data file in JSON or Rdump format.

        :param mcmc_sample: Can be either a ``CmdStanMCMC`` object returned by
            the ``sample`` method or a list of stan-csv files generated
            by fitting the model to the data using any Stan interface.

        :param seed: The seed for random number generator. Must be an integer
            between 0 and 2^32 - 1. If unspecified,
            ``numpy.random.RandomState()``
            is used to generate a seed which will be used for all chains.
            *NOTE: Specifying the seed will guarantee the same result for
            multiple invocations of this method with the same inputs.  However
            this will not reproduce results from the sample method given
            the same inputs because the RNG will be in a different state.*

        :param gq_output_dir:  Name of the directory in which the CmdStan output
            files are saved.  If unspecified, files will be written to a
            temporary directory which is deleted upon session exit.

        :return: CmdStanGQ object
        """
        sample_csv_files = []
        sample_drawset = None
        chains = 0

        if isinstance(mcmc_sample, CmdStanMCMC):
            sample_csv_files = mcmc_sample.runset.csv_files
            sample_drawset = mcmc_sample.draws_pd()
            chains = mcmc_sample.chains
            chain_ids = mcmc_sample.chain_ids
        elif isinstance(mcmc_sample, list):
            if len(mcmc_sample) < 1:
                raise ValueError('MCMC sample cannot be empty list')
            sample_csv_files = mcmc_sample
            chains = len(sample_csv_files)
            chain_ids = [x + 1 for x in range(chains)]
        else:
            raise ValueError('MCMC sample must be either CmdStanMCMC object'
                             ' or list of paths to sample csv_files.')
        try:
            if sample_drawset is None:  # assemble sample from csv files
                config = {}
                # scan 1st csv file to get config
                try:
                    config = scan_sampler_csv(sample_csv_files[0])
                except ValueError:
                    config = scan_sampler_csv(sample_csv_files[0], True)
                conf_iter_sampling = None
                if 'num_samples' in config:
                    conf_iter_sampling = int(config['num_samples'])
                conf_iter_warmup = None
                if 'num_warmup' in config:
                    conf_iter_warmup = int(config['num_warmup'])
                conf_thin = None
                if 'thin' in config:
                    conf_thin = int(config['thin'])
                sampler_args = SamplerArgs(
                    iter_sampling=conf_iter_sampling,
                    iter_warmup=conf_iter_warmup,
                    thin=conf_thin,
                )
                args = CmdStanArgs(
                    self._name,
                    self._exe_file,
                    chain_ids=chain_ids,
                    method_args=sampler_args,
                )
                runset = RunSet(args=args, chains=chains, chain_ids=chain_ids)
                runset._csv_files = sample_csv_files
                sample_fit = CmdStanMCMC(runset)
                sample_drawset = sample_fit.draws_pd()
        except ValueError as exc:
            raise ValueError('Invalid mcmc_sample, error:\n\t{}\n\t'
                             ' while processing files\n\t{}'.format(
                                 repr(exc),
                                 '\n\t'.join(sample_csv_files))) from exc

        generate_quantities_args = GenerateQuantitiesArgs(
            csv_files=sample_csv_files)
        generate_quantities_args.validate(chains)
        with MaybeDictToFilePath(data, None) as (_data, _inits):
            args = CmdStanArgs(
                self._name,
                self._exe_file,
                chain_ids=chain_ids,
                data=_data,
                seed=seed,
                output_dir=gq_output_dir,
                method_args=generate_quantities_args,
            )
            runset = RunSet(args=args, chains=chains, chain_ids=chain_ids)

            parallel_chains_avail = cpu_count()
            parallel_chains = max(min(parallel_chains_avail - 2, chains), 1)
            with ThreadPoolExecutor(max_workers=parallel_chains) as executor:
                for i in range(chains):
                    executor.submit(self._run_cmdstan, runset, i)

            if not runset._check_retcodes():
                msg = 'Error during generate_quantities.\n{}'.format(
                    runset.get_err_msgs())
                raise RuntimeError(msg)
            quantities = CmdStanGQ(runset=runset, mcmc_sample=sample_drawset)
        return quantities

    def variational(
        self,
        data: Union[Dict, str] = None,
        seed: int = None,
        inits: float = None,
        output_dir: str = None,
        save_diagnostics: bool = False,
        algorithm: str = None,
        iter: int = None,
        grad_samples: int = None,
        elbo_samples: int = None,
        eta: Real = None,
        adapt_engaged: bool = True,
        adapt_iter: int = None,
        tol_rel_obj: Real = None,
        eval_elbo: int = None,
        output_samples: int = None,
        require_converged: bool = True,
    ) -> CmdStanVB:
        """
        Run CmdStan's variational inference algorithm to approximate
        the posterior distribution of the model conditioned on the data.

        This function validates the specified configuration, composes a call to
        the CmdStan ``variational`` method and spawns one subprocess to run the
        optimizer and waits for it to run to completion.
        Unspecified arguments are not included in the call to CmdStan, i.e.,
        those arguments will have CmdStan default values.

        The ``CmdStanVB`` object records the command, the return code,
        and the paths to the variational method output csv and console files.
        The output files are written either to a specified output directory
        or to a temporary directory which is deleted upon session exit.

        Output files are either written to a temporary directory or to the
        specified output directory.  Output filenames correspond to the template
        '<model_name>-<YYYYMMDDHHMM>-<chain_id>' plus the file suffix which is
        either '.csv' for the CmdStan output or '.txt' for
        the console messages, e.g. 'bernoulli-201912081451-1.csv'.
        Output files written to the temporary directory contain an additional
        8-character random string, e.g. 'bernoulli-201912081451-1-5nm6as7u.csv'.

        :param data: Values for all data variables in the model, specified
            either as a dictionary with entries matching the data variables,
            or as the path of a data file in JSON or Rdump format.

        :param seed: The seed for random number generator. Must be an integer
            between 0 and 2^32 - 1. If unspecified,
            ``numpy.random.RandomState()``
            is used to generate a seed which will be used for all chains.

        :param inits:  Specifies how the sampler initializes parameter values.
            Initialization is uniform random on a range centered on 0 with
            default range of 2. Specifying a single number n > 0 changes
            the initialization range to [-n, n].

        :param output_dir: Name of the directory to which CmdStan output
            files are written. If unspecified, output files will be written
            to a temporary directory which is deleted upon session exit.

        :param save_diagnostics: Whether or not to save diagnostics. If True,
            csv output files are written to an output file with filename
            template '<model_name>-<YYYYMMDDHHMM>-diagnostic-<chain_id>',
            e.g. 'bernoulli-201912081451-diagnostic-1.csv'.

        :param algorithm: Algorithm to use. One of: 'meanfield', 'fullrank'.

        :param iter: Maximum number of ADVI iterations.

        :param grad_samples: Number of MC draws for computing the gradient.

        :param elbo_samples: Number of MC draws for estimate of ELBO.

        :param eta: Stepsize scaling parameter.

        :param adapt_engaged: Whether eta adaptation is engaged.

        :param adapt_iter: Number of iterations for eta adaptation.

        :param tol_rel_obj: Relative tolerance parameter for convergence.

        :param eval_elbo: Number of iterations between ELBO evaluations.

        :param output_samples: Number of approximate posterior output draws
            to save.

        :param require_converged: Whether or not to raise an error if stan
            reports that "The algorithm may not have converged".

        :return: CmdStanVB object
        """
        variational_args = VariationalArgs(
            algorithm=algorithm,
            iter=iter,
            grad_samples=grad_samples,
            elbo_samples=elbo_samples,
            eta=eta,
            adapt_engaged=adapt_engaged,
            adapt_iter=adapt_iter,
            tol_rel_obj=tol_rel_obj,
            eval_elbo=eval_elbo,
            output_samples=output_samples,
        )

        with MaybeDictToFilePath(data, inits) as (_data, _inits):
            args = CmdStanArgs(
                self._name,
                self._exe_file,
                chain_ids=None,
                data=_data,
                seed=seed,
                inits=_inits,
                output_dir=output_dir,
                save_diagnostics=save_diagnostics,
                method_args=variational_args,
            )

            dummy_chain_id = 0
            runset = RunSet(args=args, chains=1)
            self._run_cmdstan(runset, dummy_chain_id)

        # treat failure to converge as failure
        transcript_file = runset.stdout_files[dummy_chain_id]
        valid = True
        pat = re.compile(r'The algorithm may not have converged.', re.M)
        with open(transcript_file, 'r') as transcript:
            contents = transcript.read()
            errors = re.findall(pat, contents)
            if len(errors) > 0:
                valid = False
        if require_converged and not valid:
            raise RuntimeError('The algorithm may not have converged.')
        if not runset._check_retcodes():
            msg = 'Error during variational inference.\n{}'.format(
                runset.get_err_msgs())
            raise RuntimeError(msg)
        # pylint: disable=invalid-name
        vb = CmdStanVB(runset)
        return vb

    def _run_cmdstan(self,
                     runset: RunSet,
                     idx: int = 0,
                     pbar: Any = None) -> None:
        """
        Encapsulates call to CmdStan.
        Spawn process, capture console output to file, record returncode.
        """
        cmd = runset.cmds[idx]
        self._logger.info('start chain %u', idx + 1)
        self._logger.debug('threads: %s',
                           str(os.environ.get('STAN_NUM_THREADS')))
        self._logger.debug('sampling: %s', cmd)
        proc = subprocess.Popen(cmd,
                                stdout=subprocess.PIPE,
                                stderr=subprocess.PIPE,
                                env=os.environ)
        if pbar:
            stdout_pbar = self._read_progress(proc, pbar, idx)
        stdout, stderr = proc.communicate()
        if pbar:
            stdout = stdout_pbar + stdout
        self._logger.info('finish chain %u', idx + 1)
        if stdout:
            with open(runset.stdout_files[idx], 'w+') as fd:
                fd.write(stdout.decode('utf-8'))
        if stderr:
            with open(runset.stderr_files[idx], 'w+') as fd:
                fd.write(stderr.decode('utf-8'))
        runset._set_retcode(idx, proc.returncode)

    def _read_progress(self, proc: subprocess.Popen, pbar: Any,
                       idx: int) -> bytes:
        """
        Update tqdm progress bars according to CmdStan console progress msgs.
        Poll process to get CmdStan console outputs,
        check for output lines that start with 'Iteration: '.
        NOTE: if CmdStan output messages change, this will break.
        """
        pattern = (
            r'^Iteration\:\s*(\d+)\s*/\s*(\d+)\s*\[\s*\d+%\s*\]\s*\((\S*)\)$')
        pattern_compiled = re.compile(pattern, flags=re.IGNORECASE)
        previous_count = 0
        stdout = b''
        changed_description = False  # Changed from 'warmup' to 'sample'
        pbar.set_description(desc=f'Chain {idx + 1} - warmup', refresh=True)

        try:
            # iterate while process is sampling
            while proc.poll() is None:
                output = proc.stdout.readline()
                stdout += output
                output = output.decode('utf-8').strip()
                if output.startswith('Iteration'):
                    match = re.search(pattern_compiled, output)
                    if match:
                        current_count = int(match.group(1))
                        total_count = int(match.group(2))

                        if pbar.total != total_count:
                            pbar.reset(total=total_count)

                        if (match.group(3).lower() == 'sampling'
                                and not changed_description):
                            pbar.set_description(f'Chain {idx + 1} - sample')
                            changed_description = True

                        pbar.update(current_count - previous_count)
                        previous_count = current_count

            pbar.set_description(f'Chain {idx + 1} -   done', refresh=True)

            if 'notebook' in type(pbar).__name__:
                # In Jupyter make the bar green by closing it
                pbar.close()

        except Exception as e:  # pylint: disable=broad-except
            self._logger.warning(
                'Chain %s: Failed to read the progress on the fly. Error: %s',
                idx,
                repr(e),
            )

        return stdout