Star 历史趋势
数据来源: GitHub API · 生成自 Stargazers.cn
README.md

AWS SDK for pandas (awswrangler)

Pandas on AWS

Easy integration with Athena, Glue, Redshift, Timestream, OpenSearch, Neptune, QuickSight, Chime, CloudWatchLogs, DynamoDB, EMR, SecretManager, PostgreSQL, MySQL, SQLServer and S3 (Parquet, CSV, JSON and EXCEL).

AWS SDK for pandas tracker

An AWS Professional Service open source initiative | aws-proserve-opensource@amazon.com

PyPi Conda Python Version Code style: ruff License

Checked with mypy Static Checking Documentation Status

SourceDownloadsInstallation Command
PyPiPyPI Downloadspip install awswrangler
CondaConda Downloadsconda install -c conda-forge awswrangler

⚠️ Starting version 3.0, optional modules must be installed explicitly:
➡️pip install 'awswrangler[redshift]'

Table of contents

Quick Start

Installation command: pip install awswrangler

⚠️ Starting version 3.0, optional modules must be installed explicitly:
➡️pip install 'awswrangler[redshift]'

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 """)

At scale

AWS SDK for pandas can also run your workflows at scale by leveraging Modin and Ray. Both projects aim to speed up data workloads by distributing processing over a cluster of workers.

Read our docs or head to our latest tutorials to learn more.

Read The Docs

Getting Help

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:

Logging

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)

关于 About

pandas on AWS - Easy integration with Athena, Glue, Redshift, Timestream, Neptune, OpenSearch, QuickSight, Chime, CloudWatchLogs, DynamoDB, EMR, SecretManager, PostgreSQL, MySQL, SQLServer and S3 (Parquet, CSV, JSON and EXCEL).
amazon-athenaamazon-sagemaker-notebookapache-arrowapache-parquetathenaawsaws-glueaws-lambdadata-engineeringdata-scienceemretlglue-cataloglambdamodinmysqlpandaspythonrayredshift

语言 Languages

Python77.8%
Jupyter Notebook21.8%
Shell0.3%
Dockerfile0.1%
Batchfile0.0%

提交活跃度 Commit Activity

代码提交热力图
过去 52 周的开发活跃度
96
Total Commits
峰值: 11次/周
Less
More

核心贡献者 Contributors