I do the following:
import dask.dataframe as dd
from dask.distributed import Client
client = Client()
raw_data_df = dd.read_csv('dataset/nyctaxi/nyctaxi/*.csv', assume_missing=True, parse_dates=['tpep_pickup_datetime', 'tpep_dropoff_datetime'])
The dataset is taken out of a presentation Mathew Rocklin has made and was used as a dask dataframe demo. Then I try to write it to parquet using pyarrow
raw_data_df.to_parquet(path='dataset/parquet/2015.parquet/') # only pyarrow is installed
Trying to read back:
raw_data_df = dd.read_parquet(path='dataset/parquet/2015.parquet/')
I get the following error:
ValueError: Schema in dataset/parquet/2015.parquet//part.192.parquet was different.
VendorID: double
tpep_pickup_datetime: timestamp[us]
tpep_dropoff_datetime: timestamp[us]
passenger_count: double
trip_distance: double
pickup_longitude: double
pickup_latitude: double
RateCodeID: int64
store_and_fwd_flag: binary
dropoff_longitude: double
dropoff_latitude: double
payment_type: double
fare_amount: double
extra: double
mta_tax: double
tip_amount: double
tolls_amount: double
improvement_surcharge: double
total_amount: double
metadata
--------
{'pandas': '{"pandas_version": "0.22.0", "index_columns": [], "columns": [{"metadata": null, "field_name": "VendorID", "name": "VendorID", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "tpep_pickup_datetime", "name": "tpep_pickup_datetime", "numpy_type": "datetime64[ns]", "pandas_type": "datetime"}, {"metadata": null, "field_name": "tpep_dropoff_datetime", "name": "tpep_dropoff_datetime", "numpy_type": "datetime64[ns]", "pandas_type": "datetime"}, {"metadata": null, "field_name": "passenger_count", "name": "passenger_count", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "trip_distance", "name": "trip_distance", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "pickup_longitude", "name": "pickup_longitude", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "pickup_latitude", "name": "pickup_latitude", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "RateCodeID", "name": "RateCodeID", "numpy_type": "int64", "pandas_type": "int64"}, {"metadata": null, "field_name": "store_and_fwd_flag", "name": "store_and_fwd_flag", "numpy_type": "object", "pandas_type": "bytes"}, {"metadata": null, "field_name": "dropoff_longitude", "name": "dropoff_longitude", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "dropoff_latitude", "name": "dropoff_latitude", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "payment_type", "name": "payment_type", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "fare_amount", "name": "fare_amount", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "extra", "name": "extra", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "mta_tax", "name": "mta_tax", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "tip_amount", "name": "tip_amount", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "tolls_amount", "name": "tolls_amount", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "improvement_surcharge", "name": "improvement_surcharge", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "total_amount", "name": "total_amount", "numpy_type": "float64", "pandas_type": "float64"}], "column_indexes": []}'}
vs
VendorID: double
tpep_pickup_datetime: timestamp[us]
tpep_dropoff_datetime: timestamp[us]
passenger_count: double
trip_distance: double
pickup_longitude: double
pickup_latitude: double
RateCodeID: double
store_and_fwd_flag: binary
dropoff_longitude: double
dropoff_latitude: double
payment_type: double
fare_amount: double
extra: double
mta_tax: double
tip_amount: double
tolls_amount: double
improvement_surcharge: double
total_amount: double
metadata
--------
{'pandas': '{"pandas_version": "0.22.0", "index_columns": [], "columns": [{"metadata": null, "field_name": "VendorID", "name": "VendorID", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "tpep_pickup_datetime", "name": "tpep_pickup_datetime", "numpy_type": "datetime64[ns]", "pandas_type": "datetime"}, {"metadata": null, "field_name": "tpep_dropoff_datetime", "name": "tpep_dropoff_datetime", "numpy_type": "datetime64[ns]", "pandas_type": "datetime"}, {"metadata": null, "field_name": "passenger_count", "name": "passenger_count", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "trip_distance", "name": "trip_distance", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "pickup_longitude", "name": "pickup_longitude", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "pickup_latitude", "name": "pickup_latitude", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "RateCodeID", "name": "RateCodeID", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "store_and_fwd_flag", "name": "store_and_fwd_flag", "numpy_type": "object", "pandas_type": "bytes"}, {"metadata": null, "field_name": "dropoff_longitude", "name": "dropoff_longitude", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "dropoff_latitude", "name": "dropoff_latitude", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "payment_type", "name": "payment_type", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "fare_amount", "name": "fare_amount", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "extra", "name": "extra", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "mta_tax", "name": "mta_tax", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "tip_amount", "name": "tip_amount", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "tolls_amount", "name": "tolls_amount", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "improvement_surcharge", "name": "improvement_surcharge", "numpy_type": "float64", "pandas_type": "float64"}, {"metadata": null, "field_name": "total_amount", "name": "total_amount", "numpy_type": "float64", "pandas_type": "float64"}], "column_indexes": []}'}
But looking them they look identical. Any help identifying the reason?
See Question&Answers more detail:
os