kedro.extras.datasets.pandas.ParquetDataSet¶
-
class
kedro.extras.datasets.pandas.ParquetDataSet(filepath, load_args=None, save_args=None, version=None, credentials=None, fs_args=None)[source]¶ Bases:
kedro.io.core.AbstractVersionedDataSetParquetDataSetloads/saves data from/to a Parquet file using an underlying filesystem (e.g.: local, S3, GCS). It uses pandas to handle the Parquet file.Example:
from kedro.extras.datasets.pandas import ParquetDataSet import pandas as pd data = pd.DataFrame({'col1': [1, 2], 'col2': [4, 5], 'col3': [5, 6]}) # data_set = ParquetDataSet(filepath="gcs://bucket/test.parquet") data_set = ParquetDataSet(filepath="test.parquet") data_set.save(data) reloaded = data_set.load() assert data.equals(reloaded)
Attributes
ParquetDataSet.DEFAULT_LOAD_ARGSParquetDataSet.DEFAULT_SAVE_ARGSMethods
ParquetDataSet.__init__(filepath[, …])Creates a new instance of ParquetDataSetpointing to a concrete Parquet file on a specific filesystem.ParquetDataSet.exists()Checks whether a data set’s output already exists by calling the provided _exists() method. ParquetDataSet.from_config(name, config[, …])Create a data set instance using the configuration provided. ParquetDataSet.load()Loads data by delegation to the provided load method. ParquetDataSet.release()Release any cached data. ParquetDataSet.resolve_load_version()Compute the version the dataset should be loaded with. ParquetDataSet.resolve_save_version()Compute the version the dataset should be saved with. ParquetDataSet.save(data)Saves data by delegation to the provided save method. -
DEFAULT_LOAD_ARGS= {}¶
-
DEFAULT_SAVE_ARGS= {}¶
-
__init__(filepath, load_args=None, save_args=None, version=None, credentials=None, fs_args=None)[source]¶ Creates a new instance of
ParquetDataSetpointing to a concrete Parquet file on a specific filesystem.Parameters: - filepath (
str) – Filepath in POSIX format to a Parquet file prefixed with a protocol like s3://. If prefix is not provided, file protocol (local filesystem) will be used. The prefix should be any protocol supported byfsspec. It can also be a path to a directory. If the directory is provided then it can be used for reading partitioned parquet files. Note: http(s) doesn’t support versioning. - load_args (
Optional[Dict[str,Any]]) – Additional options for loading Parquet file(s). Here you can find all available arguments when reading single file: https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.read_parquet.html Here you can find all available arguments when reading partitioned datasets: https://arrow.apache.org/docs/python/generated/pyarrow.parquet.ParquetDataset.html#pyarrow.parquet.ParquetDataset.read All defaults are preserved. - save_args (
Optional[Dict[str,Any]]) – Additional saving options for pyarrow.parquet.write_table and pyarrow.Table.from_pandas. Here you can find all available arguments for write_table(): https://arrow.apache.org/docs/python/generated/pyarrow.parquet.write_table.html?highlight=write_table#pyarrow.parquet.write_table The arguments for from_pandas() should be passed through a nested key: from_pandas. E.g.: save_args = {“from_pandas”: {“preserve_index”: False}} Here you can find all available arguments for from_pandas(): https://arrow.apache.org/docs/python/generated/pyarrow.Table.html#pyarrow.Table.from_pandas - version (
Optional[Version]) – If specified, should be an instance ofkedro.io.core.Version. If itsloadattribute is None, the latest version will be loaded. If itssaveattribute is None, save version will be autogenerated. - credentials (
Optional[Dict[str,Any]]) – Credentials required to get access to the underlying filesystem. E.g. forGCSFileSystemit should look like {“token”: None}. - fs_args (
Optional[Dict[str,Any]]) – Extra arguments to pass into underlying filesystem class constructor (e.g. {“project”: “my-project”} forGCSFileSystem), as well as to pass to the filesystem’s open method through nested keys open_args_load and open_args_save. Here you can find all available arguments for open: https://filesystem-spec.readthedocs.io/en/latest/api.html#fsspec.spec.AbstractFileSystem.open All defaults are preserved.
Return type: None- filepath (
-
exists()¶ Checks whether a data set’s output already exists by calling the provided _exists() method.
Return type: boolReturns: Flag indicating whether the output already exists. Raises: DataSetError– when underlying exists method raises error.
-
classmethod
from_config(name, config, load_version=None, save_version=None)¶ Create a data set instance using the configuration provided.
Parameters: - name (
str) – Data set name. - config (
Dict[str,Any]) – Data set config dictionary. - load_version (
Optional[str]) – Version string to be used forloadoperation if the data set is versioned. Has no effect on the data set if versioning was not enabled. - save_version (
Optional[str]) – Version string to be used forsaveoperation if the data set is versioned. Has no effect on the data set if versioning was not enabled.
Return type: AbstractDataSetReturns: An instance of an
AbstractDataSetsubclass.Raises: DataSetError– When the function fails to create the data set from its config.- name (
-
load()¶ Loads data by delegation to the provided load method.
Return type: AnyReturns: Data returned by the provided load method. Raises: DataSetError– When underlying load method raises error.
-
release()¶ Release any cached data.
Raises: DataSetError– when underlying release method raises error.Return type: None
-
resolve_load_version()¶ Compute the version the dataset should be loaded with.
Return type: Optional[str]
-
resolve_save_version()¶ Compute the version the dataset should be saved with.
Return type: Optional[str]
-
save(data)¶ Saves data by delegation to the provided save method.
Parameters: data ( Any) – the value to be saved by provided save method.Raises: DataSetError– when underlying save method raises error.Return type: None
-