Exemplo n.º 1
0
def test_nominal():
    s = PickleSerializer()
    expected = [{
        'a': np.asarray([1, 2], dtype=np.uint64),
        'b': Decimal(1.2),
        'c': _foo
    }]
    actual = s.deserialize(s.serialize(expected))
    np.testing.assert_array_equal(actual[0]['a'], expected[0]['a'])
Exemplo n.º 2
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    def __init__(self, workers_count, serializer=None, zmq_copy_buffers=True):
        """Initializes a ProcessPool.

        This pool is different from standard Python pool implementations by the fact that the workers are spawned
        without using fork. Some issues with using jvm based HDFS driver were observed when the process was forked
        (could not access HDFS from the forked worker if the driver was already used in the parent process).

        :param workers_count: Number of processes to be spawned
        :param serializer: An object that would be used for data payload serialization when sending data from a worker
          process to the main process. ``PickleSerializer`` is used by default. May use
          :class:`petastorm.reader_impl.PyarrowSerializer` or
          :class:`petastorm.reader_impl.ArrowTableSerializer` (should be used together with
          :class:`petastorm.reader.ArrowReader`)
        :param zmq_copy_buffers: When set to False, we will use a zero-memory-copy feature of recv_multipart.
          A downside of using this zero memory copy feature is that it does not play nice with Python GC and cases
          were observed when it resulted in wild memory footprint swings. Having the buffers copied is typically a
          safer alternative.
        """
        self._workers = []
        self._ventilator_send = None
        self._control_sender = None
        self.workers_count = workers_count
        self._results_receiver_poller = None
        self._results_receiver = None

        self._ventilated_items = 0
        self._ventilated_items_processed = 0
        self._ventilator = None
        self._serializer = serializer or PickleSerializer()
        self._zmq_copy_buffers = zmq_copy_buffers
Exemplo n.º 3
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    def __init__(self, workers_count, serializer=None):
        """Initializes a ProcessPool.

        This pool is different from standard Python pool implementations by the fact that the workers are spawned
        without using fork. Some issues with using jvm based HDFS driver were observed when the process was forked
        (could not access HDFS from the forked worker if the driver was already used in the parent process).

        :param workers_count: Number of processes to be spawned
        :param serializer: An object that would be used for data payload serialization when sending data from a worker
          process to the main process. ``PickleSerializer`` is used by default. May use
          :class:`petastorm.reader_impl.PyarrowSerializer` or
          :class:`petastorm.reader_impl.ArrowTableSerializer` (should be used together with
          :class:`petastorm.reader.ArrowReader`)
        """
        self._workers = []
        self._ventilator_send = None
        self._control_sender = None
        self.workers_count = workers_count
        self._results_receiver_poller = None
        self._results_receiver = None

        self._ventilated_items = 0
        self._ventilated_items_processed = 0
        self._ventilator = None
        self._serializer = serializer or PickleSerializer()
Exemplo n.º 4
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def _create_worker_pool(pool_type, workers_count, profiling_enabled):
    """Different worker pool implementation (in process none or thread-pool, out of process pool)"""
    if pool_type == WorkerPoolType.THREAD:
        worker_pool = ThreadPool(workers_count,
                                 profiling_enabled=profiling_enabled)
    elif pool_type == WorkerPoolType.PROCESS:
        worker_pool = ProcessPool(workers_count, serializer=PickleSerializer())
    elif pool_type == WorkerPoolType.NONE:
        worker_pool = DummyPool()
    else:
        raise ValueError(
            'Supported pool types are thread, process or dummy. Got {}.'.
            format(pool_type))
    return worker_pool
Exemplo n.º 5
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    def __init__(self, workers_count, pyarrow_serialize=False):
        """Initializes a ProcessPool.

        This pool is different from standard Python pool implementations by the fact that the workers are spawned
        without using fork. Some issues with using jvm based HDFS driver were observed when the process was forked
        (could not access HDFS from the forked worker if the driver was already used in the parent process).

        :param workers_count: Number of processes to be spawned
        :param pyarrow_serialize: Use ``pyarrow.serialize`` serialization if True. ``pyarrow.serialize`` is much faster
          than pickling. Integer types (int8, uint8 etc...) is not done yet in pyarrow, so all integer types are
          currently converted to 'int'
        """
        self._workers = []
        self._ventilator_send = None
        self._control_sender = None
        self.workers_count = workers_count
        self._results_receiver_poller = None

        self._ventilated_items = 0
        self._ventilated_items_processed = 0
        self._ventilator = None
        self._serializer = PyArrowSerializer() if pyarrow_serialize else PickleSerializer()
Exemplo n.º 6
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def make_reader(dataset_url,
                schema_fields=None,
                reader_pool_type='thread',
                workers_count=10,
                pyarrow_serialize=False,
                results_queue_size=50,
                shuffle_row_groups=True,
                shuffle_row_drop_partitions=1,
                predicate=None,
                rowgroup_selector=None,
                num_epochs=1,
                cur_shard=None,
                shard_count=None,
                cache_type='null',
                cache_location=None,
                cache_size_limit=None,
                cache_row_size_estimate=None,
                cache_extra_settings=None,
                hdfs_driver='libhdfs3',
                reader_engine='reader_v1',
                reader_engine_params=None):
    """
    Creates an instance of Reader for reading Petastorm datasets. A Petastorm dataset is a dataset generated using
    :func:`~petastorm.etl.dataset_metadata.materialize_dataset` context manager as explained
    `here <https://petastorm.readthedocs.io/en/latest/readme_include.html#generating-a-dataset>`_.

    See :func:`~petastorm.make_batch_reader` to read from a Parquet store that was not generated using
    :func:`~petastorm.etl.dataset_metadata.materialize_dataset`.

    :param dataset_url: an filepath or a url to a parquet directory,
        e.g. ``'hdfs://some_hdfs_cluster/user/yevgeni/parquet8'``, or ``'file:///tmp/mydataset'``
        or ``'s3://bucket/mydataset'``.
    :param schema_fields: Can be: a list of unischema fields and/or regex pattern strings; ``None`` to read all fields;
            an NGram object, then it will return an NGram of the specified fields.
    :param reader_pool_type: A string denoting the reader pool type. Should be one of ['thread', 'process', 'dummy']
        denoting a thread pool, process pool, or running everything in the master thread. Defaults to 'thread'
    :param workers_count: An int for the number of workers to use in the reader pool. This only is used for the
        thread or process pool. Defaults to 10
    :param pyarrow_serialize: Whether to use pyarrow for serialization. Currently only applicable to process pool.
        Defaults to False.
    :param results_queue_size: Size of the results queue to store prefetched rows. Currently only applicable to
        thread reader pool type.
    :param shuffle_row_groups: Whether to shuffle row groups (the order in which full row groups are read)
    :param shuffle_row_drop_partitions: This is is a positive integer which determines how many partitions to
        break up a row group into for increased shuffling in exchange for worse performance (extra reads).
        For example if you specify 2 each row group read will drop half of the rows within every row group and
        read the remaining rows in separate reads. It is recommended to keep this number below the regular row
        group size in order to not waste reads which drop all rows.
    :param predicate: instance of :class:`.PredicateBase` object to filter rows to be returned by reader. The predicate
        will be passed a single row and must return a boolean value indicating whether to include it in the results.
    :param rowgroup_selector: instance of row group selector object to select row groups to be read
    :param num_epochs: An epoch is a single pass over all rows in the dataset. Setting ``num_epochs`` to
        ``None`` will result in an infinite number of epochs.
    :param cur_shard: An int denoting the current shard number. Each node reading a shard should
        pass in a unique shard number in the range [0, shard_count). shard_count must be supplied as well.
        Defaults to None
    :param shard_count: An int denoting the number of shards to break this dataset into. Defaults to None
    :param cache_type: A string denoting the cache type, if desired. Options are [None, 'null', 'local-disk'] to
        either have a null/noop cache or a cache implemented using diskcache. Caching is useful when communication
        to the main data store is either slow or expensive and the local machine has large enough storage
        to store entire dataset (or a partition of a dataset if shard_count is used). By default will be a null cache.
    :param cache_location: A string denoting the location or path of the cache.
    :param cache_size_limit: An int specifying the size limit of the cache in bytes
    :param cache_row_size_estimate: An int specifying the estimated size of a row in the dataset
    :param cache_extra_settings: A dictionary of extra settings to pass to the cache implementation,
    :param hdfs_driver: A string denoting the hdfs driver to use (if using a dataset on hdfs). Current choices are
        libhdfs (java through JNI) or libhdfs3 (C++)
    :param reader_engine: Multiple engine implementations exist ('reader_v1' and 'experimental_reader_v2'). 'reader_v1'
        (the default value) selects a stable reader implementation.
    :param reader_engine_params: For advanced usage: a dictionary with arguments passed directly to a reader
        implementation constructor chosen by ``reader_engine`` argument.  You should not use this parameter, unless you
        fine-tuning of a reader.
    :return: A :class:`Reader` object
    """

    if dataset_url is None or not isinstance(dataset_url, six.string_types):
        raise ValueError("""dataset_url must be a string""")

    dataset_url = dataset_url[:-1] if dataset_url[-1] == '/' else dataset_url
    logger.debug('dataset_url: %s', dataset_url)

    resolver = FilesystemResolver(dataset_url, hdfs_driver=hdfs_driver)
    filesystem = resolver.filesystem()
    dataset_path = resolver.get_dataset_path()

    if cache_type is None or cache_type == 'null':
        cache = NullCache()
    elif cache_type == 'local-disk':
        cache = LocalDiskCache(cache_location, cache_size_limit,
                               cache_row_size_estimate, **cache_extra_settings
                               or {})
    else:
        raise ValueError('Unknown cache_type: {}'.format(cache_type))

    # Fail if this is a non-petastorm dataset. Typically, a Parquet store will have hundred thousands rows in a single
    # rowgroup. Using PyDictReaderWorker or ReaderV2 implementation is very inefficient as it processes data on a
    # row by row basis. ArrowReaderWorker (used by make_batch_reader) is much more efficient in these cases.
    try:
        dataset_metadata.get_schema_from_dataset_url(dataset_url)
    except PetastormMetadataError:
        raise RuntimeError(
            'Currently make_reader supports reading only Petastorm datasets. '
            'To read from a non-Petastorm Parquet store use make_batch_reader')

    if reader_engine == 'reader_v1':
        if reader_pool_type == 'thread':
            reader_pool = ThreadPool(workers_count, results_queue_size)
        elif reader_pool_type == 'process':
            if pyarrow_serialize:
                serializer = PyArrowSerializer()
            else:
                serializer = PickleSerializer()
            reader_pool = ProcessPool(workers_count, serializer)
        elif reader_pool_type == 'dummy':
            reader_pool = DummyPool()
        else:
            raise ValueError(
                'Unknown reader_pool_type: {}'.format(reader_pool_type))

        # Create a dictionary with all ReaderV2 parameters, so we can merge with reader_engine_params if specified
        kwargs = {
            'schema_fields': schema_fields,
            'reader_pool': reader_pool,
            'shuffle_row_groups': shuffle_row_groups,
            'shuffle_row_drop_partitions': shuffle_row_drop_partitions,
            'predicate': predicate,
            'rowgroup_selector': rowgroup_selector,
            'num_epochs': num_epochs,
            'cur_shard': cur_shard,
            'shard_count': shard_count,
            'cache': cache,
        }

        if reader_engine_params:
            kwargs.update(reader_engine_params)

        try:
            return Reader(filesystem,
                          dataset_path,
                          worker_class=PyDictReaderWorker,
                          **kwargs)
        except PetastormMetadataError as e:
            logger.error('Unexpected exception: %s', str(e))
            raise RuntimeError(
                'make_reader has failed. If you were trying to open a Parquet store that was not '
                'created using Petastorm materialize_dataset and it contains only scalar columns, '
                'you may use make_batch_reader to read it.\n'
                'Inner exception: %s', str(e))

    elif reader_engine == 'experimental_reader_v2':
        if reader_pool_type == 'thread':
            decoder_pool = ThreadPoolExecutor(workers_count)
        elif reader_pool_type == 'process':
            decoder_pool = ProcessPoolExecutor(workers_count)
        elif reader_pool_type == 'dummy':
            decoder_pool = SameThreadExecutor()
        else:
            raise ValueError(
                'Unknown reader_pool_type: {}'.format(reader_pool_type))

        # TODO(yevgeni): once ReaderV2 is ready to be out of experimental status, we should extend
        # the make_reader interfaces to take shuffling buffer parameters explicitly
        shuffling_queue = RandomShufflingBuffer(
            1000, 800) if shuffle_row_groups else NoopShufflingBuffer()

        # Create a dictionary with all ReaderV2 parameters, so we can merge with reader_engine_params if specified
        kwargs = {
            'schema_fields': schema_fields,
            'predicate': predicate,
            'rowgroup_selector': rowgroup_selector,
            'num_epochs': num_epochs,
            'cur_shard': cur_shard,
            'shard_count': shard_count,
            'cache': cache,
            'decoder_pool': decoder_pool,
            'shuffling_queue': shuffling_queue,
            'shuffle_row_groups': shuffle_row_groups,
            'shuffle_row_drop_partitions': shuffle_row_drop_partitions,
        }

        if reader_engine_params:
            kwargs.update(reader_engine_params)

        return ReaderV2(dataset_url, **kwargs)

    else:
        raise ValueError(
            'Unexpected value of reader_engine argument \'%s\'. '
            'Supported reader_engine values are \'reader_v1\' and \'experimental_reader_v2\'',
            reader_engine)
Exemplo n.º 7
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def make_reader(dataset_url,
                schema_fields=None,
                reader_pool_type='thread',
                workers_count=10,
                pyarrow_serialize=False,
                results_queue_size=50,
                shuffle_row_groups=True,
                shuffle_row_drop_partitions=1,
                predicate=None,
                rowgroup_selector=None,
                num_epochs=1,
                cur_shard=None,
                shard_count=None,
                shard_seed=None,
                cache_type=NULL_CACHE,
                cache_location=None,
                cache_size_limit=None,
                cache_row_size_estimate=None,
                cache_extra_settings=None,
                hdfs_driver='libhdfs3',
                transform_spec=None,
                filters=None,
                storage_options=None,
                zmq_copy_buffers=True,
                filesystem=None):
    """
    Creates an instance of Reader for reading Petastorm datasets. A Petastorm dataset is a dataset generated using
    :func:`~petastorm.etl.dataset_metadata.materialize_dataset` context manager as explained
    `here <https://petastorm.readthedocs.io/en/latest/readme_include.html#generating-a-dataset>`_.

    See :func:`~petastorm.make_batch_reader` to read from a Parquet store that was not generated using
    :func:`~petastorm.etl.dataset_metadata.materialize_dataset`.

    :param dataset_url: an filepath or a url to a parquet directory,
        e.g. ``'hdfs://some_hdfs_cluster/user/yevgeni/parquet8'``, or ``'file:///tmp/mydataset'``,
        or ``'s3://bucket/mydataset'``, or ``'gs://bucket/mydataset'``.
    :param schema_fields: Can be: a list of unischema fields and/or regex pattern strings; ``None`` to read all fields;
            an NGram object, then it will return an NGram of the specified fields.
    :param reader_pool_type: A string denoting the reader pool type. Should be one of ['thread', 'process', 'dummy']
        denoting a thread pool, process pool, or running everything in the master thread. Defaults to 'thread'
    :param workers_count: An int for the number of workers to use in the reader pool. This only is used for the
        thread or process pool. Defaults to 10
    :param pyarrow_serialize: THE ARGUMENT IS DEPRECATED AND WILL BE REMOVED IN FUTURE VERSIONS.
    :param results_queue_size: Size of the results queue to store prefetched row-groups. Currently only applicable to
        thread reader pool type.
    :param shuffle_row_groups: Whether to shuffle row groups (the order in which full row groups are read)
    :param shuffle_row_drop_partitions: This is is a positive integer which determines how many partitions to
        break up a row group into for increased shuffling in exchange for worse performance (extra reads).
        For example if you specify 2 each row group read will drop half of the rows within every row group and
        read the remaining rows in separate reads. It is recommended to keep this number below the regular row
        group size in order to not waste reads which drop all rows.
    :param predicate: instance of :class:`.PredicateBase` object to filter rows to be returned by reader. The predicate
        will be passed a single row and must return a boolean value indicating whether to include it in the results.
    :param rowgroup_selector: instance of row group selector object to select row groups to be read
    :param num_epochs: An epoch is a single pass over all rows in the dataset. Setting ``num_epochs`` to
        ``None`` will result in an infinite number of epochs.
    :param cur_shard: An int denoting the current shard number. Each node reading a shard should
        pass in a unique shard number in the range [0, shard_count). shard_count must be supplied as well.
        Defaults to None
    :param shard_count: An int denoting the number of shards to break this dataset into. Defaults to None
    :param shard_seed: Random seed to shuffle row groups for data sharding. Defaults to None
    :param cache_type: A string denoting the cache type, if desired. Options are [None, 'null', 'local-disk'] to
        either have a null/noop cache or a cache implemented using diskcache. Caching is useful when communication
        to the main data store is either slow or expensive and the local machine has large enough storage
        to store entire dataset (or a partition of a dataset if shard_count is used). By default will be a null cache.
    :param cache_location: A string denoting the location or path of the cache.
    :param cache_size_limit: An int specifying the size limit of the cache in bytes
    :param cache_row_size_estimate: An int specifying the estimated size of a row in the dataset
    :param cache_extra_settings: A dictionary of extra settings to pass to the cache implementation,
    :param hdfs_driver: A string denoting the hdfs driver to use (if using a dataset on hdfs). Current choices are
        libhdfs (java through JNI) or libhdfs3 (C++)
    :param transform_spec: An instance of :class:`~petastorm.transform.TransformSpec` object defining how a record
        is transformed after it is loaded and decoded. The transformation occurs on a worker thread/process (depends
        on the ``reader_pool_type`` value).
    :param filters: (List[Tuple] or List[List[Tuple]]): Standard PyArrow filters.
        These will be applied when loading the parquet file with PyArrow. More information
        here: https://arrow.apache.org/docs/python/generated/pyarrow.parquet.ParquetDataset.html
    :param storage_options: Dict of kwargs forwarded to ``fsspec`` to initialize the filesystem.
    :param zmq_copy_buffers: A bool indicating whether to use 0mq copy buffers with ProcessPool.
    :param filesystem: An instance of ``pyarrow.FileSystem`` to use. Will ignore storage_options and
        other filesystem configs if it's provided.
    :return: A :class:`Reader` object
    """
    dataset_url = normalize_dir_url(dataset_url)

    filesystem, dataset_path = get_filesystem_and_path_or_paths(
        dataset_url,
        hdfs_driver,
        storage_options=storage_options,
        filesystem=filesystem)

    if cache_type is None or cache_type == NULL_CACHE:
        cache = NullCache()
    elif cache_type == LOCAL_DISK_CACHE:
        cache = LocalDiskCache(cache_location, cache_size_limit,
                               cache_row_size_estimate, **cache_extra_settings
                               or {})
    else:
        raise ValueError('Unknown cache_type: {}'.format(cache_type))

    try:
        dataset_metadata.get_schema_from_dataset_url(
            dataset_url,
            hdfs_driver=hdfs_driver,
            storage_options=storage_options,
            filesystem=filesystem)
    except PetastormMetadataError:
        warnings.warn(
            'Currently make_reader supports reading only Petastorm datasets. '
            'To read from a non-Petastorm Parquet store use make_batch_reader')

    if reader_pool_type == 'thread':
        reader_pool = ThreadPool(workers_count, results_queue_size)
    elif reader_pool_type == 'process':
        if pyarrow_serialize:
            warnings.warn(
                "pyarrow_serializer was deprecated and will be removed in future versions. "
                "The argument no longer has any effect.")
        serializer = PickleSerializer()
        reader_pool = ProcessPool(workers_count,
                                  serializer,
                                  zmq_copy_buffers=zmq_copy_buffers)
    elif reader_pool_type == 'dummy':
        reader_pool = DummyPool()
    else:
        raise ValueError(
            'Unknown reader_pool_type: {}'.format(reader_pool_type))

    kwargs = {
        'schema_fields': schema_fields,
        'reader_pool': reader_pool,
        'shuffle_row_groups': shuffle_row_groups,
        'shuffle_row_drop_partitions': shuffle_row_drop_partitions,
        'predicate': predicate,
        'rowgroup_selector': rowgroup_selector,
        'num_epochs': num_epochs,
        'cur_shard': cur_shard,
        'shard_count': shard_count,
        'shard_seed': shard_seed,
        'cache': cache,
        'transform_spec': transform_spec,
        'filters': filters
    }

    try:
        return Reader(filesystem,
                      dataset_path,
                      worker_class=PyDictReaderWorker,
                      is_batched_reader=False,
                      **kwargs)
    except PetastormMetadataError as e:
        logger.error('Unexpected exception: %s', str(e))
        raise RuntimeError(
            'make_reader has failed. If you were trying to open a Parquet store that was not '
            'created using Petastorm materialize_dataset and it contains only scalar columns, '
            'you may use make_batch_reader to read it.\n'
            'Inner exception: %s', str(e))
def make_carbon_reader(dataset_url,
                       key=None,
                       secret=None,
                       endpoint=None,
                       proxy=None,
                       proxy_port=None,
                       schema_fields=None,
                       reader_pool_type='thread', workers_count=10, pyarrow_serialize=False, results_queue_size=100,
                       shuffle_blocklets=True, shuffle_row_drop_partitions=1,
                       predicate=None,
                       blocklet_selector=None,
                       num_epochs=1,
                       cur_shard=None, shard_count=None,
                       cache_type='null', cache_location=None, cache_size_limit=None,
                       cache_row_size_estimate=None, cache_extra_settings=None,
                       hdfs_driver='libhdfs3',
                       reader_engine='reader_v1', reader_engine_params=None,
                       transform_spec=None):
  """
  Creates an instance of Reader for reading Pycarbon datasets. A Pycarbon dataset is a dataset generated using
  :func:`~pycarbon.etl.carbon_dataset_metadata.materialize_dataset_carbon` context manager as explained

  See :func:`~pycarbon.make_batch_carbon_reader` to read from a Carbon store that was not generated using
  :func:`~pycarbon.etl.carbon_dataset_metadata.materialize_dataset_carbon`.

  :param dataset_url: an filepath or a url to a carbon directory,
      e.g. ``'hdfs://some_hdfs_cluster/user/yevgeni/carbon8'``, or ``'file:///tmp/mydataset'``
      or ``'s3://bucket/mydataset'``.
  :param key: access key
  :param secret: secret key
  :param endpoint: endpoint_url
  :param proxy: proxy
  :param proxy_port:  proxy_port
  :param schema_fields: Can be: a list of unischema fields and/or regex pattern strings; ``None`` to read all fields;
          an NGram object, then it will return an NGram of the specified fields.
  :param reader_pool_type: A string denoting the reader pool type. Should be one of ['thread', 'process', 'dummy']
      denoting a thread pool, process pool, or running everything in the master thread. Defaults to 'thread'
    TODO: process support
  :param workers_count: An int for the number of workers to use in the reader pool. This only is used for the
      thread or process pool. Defaults to 10
  :param pyarrow_serialize: Whether to use pyarrow for serialization. Currently only applicable to process pool.
      Defaults to False.
  :param results_queue_size: Size of the results queue to store prefetched rows. Currently only applicable to
      thread reader pool type.
  :param shuffle_blocklets: Whether to shuffle blocklets (the order in which full blocklets are read)
  :param shuffle_row_drop_partitions: This is is a positive integer which determines how many partitions to
      break up a blocklet into for increased shuffling in exchange for worse performance (extra reads).
      For example if you specify 2 each blocklet read will drop half of the rows within every blocklet and
      read the remaining rows in separate reads. It is recommended to keep this number below the regular row
      group size in order to not waste reads which drop all rows.
  :param predicate: instance of :class:`.PredicateBase` object to filter rows to be returned by reader. The predicate
      will be passed a single row and must return a boolean value indicating whether to include it in the results.
  :param blocklet_selector: instance of blocklet selector object to select blocklet to be read
    TODO: blocklet_selector
  :param num_epochs: An epoch is a single pass over all rows in the dataset. Setting ``num_epochs`` to
      ``None`` will result in an infinite number of epochs.
  :param cur_shard: An int denoting the current shard number. Each node reading a shard should
      pass in a unique shard number in the range [0, shard_count). shard_count must be supplied as well.
      Defaults to None
  :param shard_count: An int denoting the number of shards to break this dataset into. Defaults to None
    TODO: cur_shard & shard_count
  :param cache_type: A string denoting the cache type, if desired. Options are [None, 'null', 'local-disk'] to
      either have a null/noop cache or a cache implemented using diskcache. Caching is useful when communication
      to the main data store is either slow or expensive and the local machine has large enough storage
      to store entire dataset (or a partition of a dataset if shard_count is used). By default will be a null cache.
  :param cache_location: A string denoting the location or path of the cache.
  :param cache_size_limit: An int specifying the size limit of the cache in bytes
  :param cache_row_size_estimate: An int specifying the estimated size of a row in the dataset
  :param cache_extra_settings: A dictionary of extra settings to pass to the cache implementation,
  :param hdfs_driver: A string denoting the hdfs driver to use (if using a dataset on hdfs). Current choices are
      libhdfs (java through JNI) or libhdfs3 (C++)
  :param reader_engine: Multiple engine implementations exist ('reader_v1' and 'experimental_reader_v2'). 'reader_v1'
      (the default value) selects a stable reader implementation.
    TODO: experimental_reader_v2 for carbon
  :param reader_engine_params: For advanced usage: a dictionary with arguments passed directly to a reader
      implementation constructor chosen by ``reader_engine`` argument.  You should not use this parameter, unless you
      fine-tuning of a reader.
  :param transform_spec: An instance of :class:`~petastorm.transform.TransformSpec` object defining how a record
      is transformed after it is loaded and decoded. The transformation occurs on a worker thread/process (depends
      on the ``reader_pool_type`` value).
  :return: A :class:`Reader` object
  """

  if dataset_url is None or not isinstance(dataset_url, six.string_types):
    raise ValueError("""dataset_url must be a string""")

  dataset_url = dataset_url[:-1] if dataset_url[-1] == '/' else dataset_url
  logger.debug('dataset_url: %s', dataset_url)

  resolver = CarbonFilesystemResolver(dataset_url,
                                      key=key,
                                      secret=secret,
                                      endpoint=endpoint,
                                      proxy=proxy,
                                      proxy_port=proxy_port,
                                      hdfs_driver=hdfs_driver)
  filesystem = resolver.filesystem()

  if cache_type is None or cache_type == 'null':
    cache = NullCache()
  elif cache_type == 'local-disk':
    cache = LocalDiskCache(cache_location, cache_size_limit, cache_row_size_estimate, **cache_extra_settings or {})
  elif cache_type == 'memory-cache':
    cache = LocalMemoryCache(cache_size_limit)
  else:
    raise ValueError('Unknown cache_type: {}'.format(cache_type))

  # Fail if this is a non-pycarbon dataset. Typically, a Carbon store will have hundred thousands rows in a single
  # blocklet. Using PyDictCarbonReaderWorker or ReaderV2 implementation is very inefficient as it processes data on a
  # row by row basis. ArrowCarbonReaderWorker (used by make_batch_carbon_reader) is much more efficient in these cases.
  try:
    infer_or_load_unischema_carbon(CarbonDataset(dataset_url,
                                                 key=key,
                                                 secret=secret,
                                                 endpoint=endpoint,
                                                 proxy=proxy,
                                                 proxy_port=proxy_port,
                                                 filesystem=filesystem))
  except PycarbonMetadataError:
    raise RuntimeError('Currently make_reader supports reading only Pycarbon datasets. '
                       'To read from a non-Pycarbon Carbon store use make_batch_reader')

  if reader_engine == 'reader_v1':
    if reader_pool_type == 'thread':
      reader_pool = ThreadPool(workers_count, results_queue_size)
    elif reader_pool_type == 'process':
      if pyarrow_serialize:
        serializer = PyArrowSerializer()
      else:
        serializer = PickleSerializer()
      reader_pool = ProcessPool(workers_count, serializer)
    elif reader_pool_type == 'dummy':
      reader_pool = DummyPool()
    else:
      raise ValueError('Unknown reader_pool_type: {}'.format(reader_pool_type))

    # Create a dictionary with all ReaderV2 parameters, so we can merge with reader_engine_params if specified
    kwargs = {
      'key': key,
      'secret': secret,
      'endpoint': endpoint,
      'proxy': proxy,
      'proxy_port': proxy_port,
      'schema_fields': schema_fields,
      'reader_pool': reader_pool,
      'shuffle_blocklets': shuffle_blocklets,
      'shuffle_row_drop_partitions': shuffle_row_drop_partitions,
      'predicate': predicate,
      'blocklet_selector': blocklet_selector,
      'num_epochs': num_epochs,
      'cur_shard': cur_shard,
      'shard_count': shard_count,
      'cache': cache,
      'transform_spec': transform_spec,
    }

    if reader_engine_params:
      kwargs.update(reader_engine_params)

    try:
      return CarbonDataReader(filesystem, dataset_url,
                              worker_class=PyDictCarbonReaderWorker,
                              **kwargs)
    except PycarbonMetadataError as e:
      logger.error('Unexpected exception: %s', str(e))
      raise RuntimeError('make_carbon_reader has failed. If you were trying to open a Carbon store that was not '
                         'created using Pycarbon materialize_dataset_carbon and it contains only scalar columns, '
                         'you may use make_batch_reader to read it.\n'
                         'Inner exception: %s', str(e))

  elif reader_engine == 'experimental_reader_v2':
    raise NotImplementedError('not support experimental_reader_v2 reader engine now.')
  else:
    raise ValueError('Unexpected value of reader_engine argument \'%s\'. '
                     'Supported reader_engine values are \'reader_v1\' and \'experimental_reader_v2\'',
                     reader_engine)