Pandas on AWS
Easy integration with Athena, Glue, Redshift, Timestream, QuickSight, Chime, CloudWatchLogs, DynamoDB, EMR, SecretManager, PostgreSQL, MySQL, SQLServer and S3 (Parquet, CSV, JSON and EXCEL).
An AWS Professional Service open source initiative | aws-proserve-opensource@amazon.com
Source | Downloads | Installation Command |
---|---|---|
PyPi | pip install awswrangler |
|
Conda | conda install -c conda-forge awswrangler |
⚠️ For platforms without PyArrow 3 support (e.g. EMR, Glue PySpark Job, MWAA):
➡️pip install pyarrow==2 awswrangler
- Quick Start
- Read The Docs
- Getting Help
- Community Resources
- Logging
- Who uses AWS Data Wrangler?
- What is Amazon Sagemaker Data Wrangler?
Installation command: pip install awswrangler
⚠️ For platforms without PyArrow 3 support (e.g. EMR, Glue PySpark Job, MWAA):
➡️pip install pyarrow==2 awswrangler
import awswrangler as wr
import pandas as pd
from datetime import datetime
df = pd.DataFrame({"id": [1, 2], "value": ["foo", "boo"]})
# Storing data on Data Lake
wr.s3.to_parquet(
df=df,
path="s3://bucket/dataset/",
dataset=True,
database="my_db",
table="my_table"
)
# Retrieving the data directly from Amazon S3
df = wr.s3.read_parquet("s3://bucket/dataset/", dataset=True)
# Retrieving the data from Amazon Athena
df = wr.athena.read_sql_query("SELECT * FROM my_table", database="my_db")
# Get a Redshift connection from Glue Catalog and retrieving data from Redshift Spectrum
con = wr.redshift.connect("my-glue-connection")
df = wr.redshift.read_sql_query("SELECT * FROM external_schema.my_table", con=con)
con.close()
# Amazon Timestream Write
df = pd.DataFrame({
"time": [datetime.now(), datetime.now()],
"my_dimension": ["foo", "boo"],
"measure": [1.0, 1.1],
})
rejected_records = wr.timestream.write(df,
database="sampleDB",
table="sampleTable",
time_col="time",
measure_col="measure",
dimensions_cols=["my_dimension"],
)
# Amazon Timestream Query
wr.timestream.query("""
SELECT time, measure_value::double, my_dimension
FROM "sampleDB"."sampleTable" ORDER BY time DESC LIMIT 3
""")
- What is AWS Data Wrangler?
- Install
- Tutorials
- 001 - Introduction
- 002 - Sessions
- 003 - Amazon S3
- 004 - Parquet Datasets
- 005 - Glue Catalog
- 006 - Amazon Athena
- 007 - Databases (Redshift, MySQL, PostgreSQL and SQL Server)
- 008 - Redshift - Copy & Unload.ipynb
- 009 - Redshift - Append, Overwrite and Upsert
- 010 - Parquet Crawler
- 011 - CSV Datasets
- 012 - CSV Crawler
- 013 - Merging Datasets on S3
- 014 - Schema Evolution
- 015 - EMR
- 016 - EMR & Docker
- 017 - Partition Projection
- 018 - QuickSight
- 019 - Athena Cache
- 020 - Spark Table Interoperability
- 021 - Global Configurations
- 022 - Writing Partitions Concurrently
- 023 - Flexible Partitions Filter
- 024 - Athena Query Metadata
- 025 - Redshift - Loading Parquet files with Spectrum
- 026 - Amazon Timestream
- 027 - Amazon Timestream 2
- 028 - Amazon DynamoDB
- 029 - S3 Select
- 030 - Data Api
- 031 - OpenSearch
- 032 - Lake Formation Governed Tables
- API Reference
- License
- Contributing
- Legacy Docs (pre-1.0.0)
The best way to interact with our team is through GitHub. You can open an issue and choose from one of our templates for bug reports, feature requests... You may also find help on these community resources:
- The #aws-data-wrangler Slack channel
- Ask a question on Stack Overflow
and tag it with
awswrangler
Please send a Pull Request with your resource reference and @githubhandle.
- Optimize Python ETL by extending Pandas with AWS Data Wrangler [@igorborgest]
- Reading Parquet Files With AWS Lambda [@anand086]
- Transform AWS CloudTrail data using AWS Data Wrangler [@anand086]
- Rename Glue Tables using AWS Data Wrangler [@anand086]
- Getting started on AWS Data Wrangler and Athena [@dheerajsharma21]
- Simplifying Pandas integration with AWS data related services [@bvsubhash]
- Build an ETL pipeline using AWS S3, Glue and Athena [@taupirho]
Enabling internal logging examples:
import logging
logging.basicConfig(level=logging.INFO, format="[%(name)s][%(funcName)s] %(message)s")
logging.getLogger("awswrangler").setLevel(logging.DEBUG)
logging.getLogger("botocore.credentials").setLevel(logging.CRITICAL)
Into AWS lambda:
import logging
logging.getLogger("awswrangler").setLevel(logging.DEBUG)
Knowing which companies are using this library is important to help prioritize the project internally. If you would like us to include your company’s name and/or logo in the README file to indicate that your company is using the AWS Data Wrangler, please raise a "Support Data Wrangler" issue. If you would like us to display your company’s logo, please raise a linked pull request to provide an image file for the logo. Note that by raising a Support Data Wrangler issue (and related pull request), you are granting AWS permission to use your company’s name (and logo) for the limited purpose described here and you are confirming that you have authority to grant such permission.
- Amazon
- AWS
- Cepsa [@alvaropc]
- Cognitivo [@msantino]
- Digio [@afonsomy]
- DNX [@DNXLabs]
- Funcional Health Tech [@webysther]
- Informa Markets [@mateusmorato]
- LINE TV [@bryanyang0528]
- Magnataur [@brianmingus2]
- M4U [@Thiago-Dantas]
- NBCUniversal [@vibe]
- nrd.io [@mrtns]
- OKRA Technologies [@JPFrancoia, @schot]
- Pier [@flaviomax]
- Pismo [@msantino]
- ringDNA [@msropp]
- Serasa Experian [@andre-marcos-perez]
- Shipwell [@zacharycarter]
- strongDM [@mrtns]
- Thinkbumblebee [@dheerajsharma21]
- Zillow [@nicholas-miles]
Amazon SageMaker Data Wrangler is a new SageMaker Studio feature that has a similar name but has a different purpose than the AWS Data Wrangler open source project.
-
AWS Data Wrangler is open source, runs anywhere, and is focused on code.
-
Amazon SageMaker Data Wrangler is specific for the SageMaker Studio environment and is focused on a visual interface.