Skip to main content

A simple Parquet converter for JSON/python data

Project description

This library wraps pyarrow to provide some tools to easily convert JSON data into Parquet format. It is mostly in Python. It iterates over files. It copies the data several times in memory. It is not meant to be the fastest thing available. However, it is convenient for smaller data sets, or people who don’t have a huge issue with speed.

Installation

pip install json2parquet

Usage

Here’s how to load a random JSON dataset.

from json2parquet import convert_json

# Infer Schema (requires reading dataset for column names)
convert_json(input_filename, output_filename)

# Given columns
convert_json(input_filename, output_filename, ["my_column", "my_int"])

# Given PyArrow schema
import pyarrow as pa
schema = pa.schema([
    pa.field('my_column', pa.string),
    pa.field('my_int', pa.int64),
])
convert_json(input_filename, output_filename, schema)

You can also work with Python data structures directly

from json2parquet import load_json, ingest_data, write_parquet, write_parquet_dataset

# Loading JSON to a PyArrow RecordBatch (schema is optional as above)
load_json(input_filename, schema)

# Working with a list of dictionaries
ingest_data(input_data, schema)

# Writing Parquet Files from PyArrow Record Batches
write_parquet(data, destination)

# You can also pass any keyword arguments that PyArrow accepts
write_parquet(data, destination, compression='snappy')

# You can also write partitioned date
write_parquet_dataset(data, destination_dir, partition_cols=["foo", "bar", "baz"])

If you know your schema, you can specify custom datetime formats (only one for now). This formatting will be ignored if you don’t pass a PyArrow schema.

from json2parquet import convert_json

# Given PyArrow schema
import pyarrow as pa
schema = pa.schema([
    pa.field('my_column', pa.string),
    pa.field('my_int', pa.int64),
])
date_format = "%Y-%m-%dT%H:%M:%S.%fZ"
convert_json(input_filename, output_filename, schema, date_format=date_format)

Although json2parquet can infer schemas, it has helpers to pull in external ones as well

from json2parquet import load_json
from json2parquet.helpers import get_schema_from_redshift

# Fetch the schema from Redshift (requires psycopg2)
schema = get_schema_from_redshift(redshift_schema, redshift_table, redshift_uri)

# Load JSON with the Redshift schema
load_json(input_filename, schema)

Operational Notes

If you are using this library to convert JSON data to be read by Spark, Athena, Spectrum or Presto make sure you use use_deprecated_int96_timestamps when writing your Parquet files, otherwise you will see some really screwy dates.

Contributing

Code Changes

  • Clone a fork of the library

  • Run make setup

  • Run make test

  • Apply your changes (don’t bump version)

  • Add tests if needed

  • Run make test to ensure nothing broke

  • Submit PR

Documentation Changes

It is always a struggle to keep documentation correct and up to date. Any fixes are welcome. If you don’t want to clone the repo to work locally, please feel free to edit using Github and to submit Pull Requests via Github’s built in features.

Changelog

0.0.17

  • Bring write_parquet_dataset to a top level import

0.0.16

  • Properly convert Boolean fields passed as numbers to PyArrow booleans.

0.0.15

  • Add support for custom datetime formatting (thanks @Madhu1512)

  • Add support for writing partitioned datasets (thanks @mthota15)

0.0.14

  • Stop silencing Redshift errors.

0.0.13

  • Fix decimal type for newer pyarrow versions

0.0.12

  • Allow casting of int64 -> int32

0.0.11

  • Bump PyArrow and allow int32 data

0.0.10

  • Allow passing partition columns when getting a Redshift schema, so they can be skipped

0.0.9

  • Fix conversion of timestamp columns again

0.0.8

  • Fix conversion of timestamp columns

0.0.7

  • Force converted Timestamps to max out at pandas.Timestamp.max if they exceed the resolution of datetime[ns]

0.0.6

  • Add automatic downcasting for Python float to float32 via pandas when schema specifies pa.float32()

0.0.5

  • Fix conversion of float types to be size specific

0.0.4

  • Fix ingestion of timestamp data with ns resolution

0.0.3

  • Add pandas dependency

  • Add proper ingestion of timestamp data using Pandas to_datetime

0.0.2

  • Fix formatting of README so it displays on PyPI

0.0.1

  • Initial release

  • JSON/data writing support

  • Redshift Schema reading support

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

json2parquet-0.0.17.tar.gz (6.7 kB view details)

Uploaded Source

Built Distributions

If you're not sure about the file name format, learn more about wheel file names.

json2parquet-0.0.17-py3-none-any.whl (9.7 kB view details)

Uploaded Python 3

json2parquet-0.0.17-py2-none-any.whl (9.7 kB view details)

Uploaded Python 2

File details

Details for the file json2parquet-0.0.17.tar.gz.

File metadata

  • Download URL: json2parquet-0.0.17.tar.gz
  • Upload date:
  • Size: 6.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No

File hashes

Hashes for json2parquet-0.0.17.tar.gz
Algorithm Hash digest
SHA256 941134cabb3ab8cb8588c4c4d418454e2df177c6d1ad34d8d954510b6d7210fd
MD5 067399364c344c3b940cc7f82c9fc1f6
BLAKE2b-256 f3c95cd10646870b6b99ee42cd84fdefbb63d78d86ec66a2bd52fd16beecabde

See more details on using hashes here.

File details

Details for the file json2parquet-0.0.17-py3-none-any.whl.

File metadata

File hashes

Hashes for json2parquet-0.0.17-py3-none-any.whl
Algorithm Hash digest
SHA256 653de8194ff51e7ac0b27c685fd8fbe46e21a90fc53a3e8ce07771d5779dfbed
MD5 492fb7ff3e80ade5ea47f3452f986d52
BLAKE2b-256 1da7a6fed569090b7950bf2fa524196fafbab4da8d7bcf6524f13581193199f9

See more details on using hashes here.

File details

Details for the file json2parquet-0.0.17-py2-none-any.whl.

File metadata

File hashes

Hashes for json2parquet-0.0.17-py2-none-any.whl
Algorithm Hash digest
SHA256 39db5b4007b5e973e68371ed3fd349ebdad120661ce2e6a95c7275935bd929d6
MD5 8bc88283109c3042cba8b821e667cb15
BLAKE2b-256 49a3580b1ea2e1b0319b4b860d9552e908ccaff3e869d72051db5690f27de036

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page