Skip to main content

A python Package to run Spark code in different AWS Compute

Project description

SageMakerStudioDataEngineeringSessions

SageMaker Unified Studio Data Engineering Sessions

This pacakge depends on SageMaker Unified Studio environment, if you are using SageMaker Unified Studio, see AWS Doc for guidance.

This package contains functionality to support SageMaker Unified Studio connecting to various AWS Compute including EMR/EMR Serverless/Glue/Redshift etc.

It is utilizing ipython magics and AWS DataZone Connections to achieve the following features.

Features

  • Connect to remote compute
  • Execute Spark code in remote compute in Python/Scala
  • Execute SQL queries in remote compute
  • Send local variables to remote compute

How to setup

If you are using SageMaker Unifed Studio, you can skip this part, SageMaker Unifed Studio already set up the package.

This package contains various Jupyter Magics to achieve its functionality.

To load these magics, make sure you have iPython config file generated. If not, you could run ipython profile create, then a file with path ~/.ipython/profile_default/ipython_config.py should be generated

Then you will need to add the following line in the end of that config file

c.InteractiveShellApp.extensions.extend(['sagemaker_studio_dataengineering_sessions.sagemaker_connection_magic'])

Once that is finished, you could restart the ipython kernel and run %help to see a list of supported magics

Interactive vs background session

This packages uses SM_INPUT_NOTEBOOK_NAME environment variable to determine if the execution is through interactive or background session. See sagemaker_studio_dataengineering_sessions/sagemaker_database_session_manager/redshift/redshift_session.py file for usage.

Examples

To connect to remote compute, a DataZone Connection is required, you could create it via CreateConnection API, Let's say there's an existing connection called project.spark.

Supported Connection Type:

  • IAM
  • SPARK
  • REDSHIFT
  • ATHENA

Connect to remote compute and Execute Spark Code in Python

The following example will connect to AWS Glue Interactive session and run the spark code in Glue.

%%pyspark project.spark

import sys
import boto3
from awsglue.utils import getResolvedOptions
from pyspark.context import SparkContext
from pyspark.sql import SparkSession
from pyspark.sql.functions import col

args = getResolvedOptions(sys.argv, ["redshift_url", "redshift_iam_role", "redshift_tempdir","redshift_jdbc_iam_url"])
print(f"{args}")

sc = SparkContext.getOrCreate()
spark = SparkSession(sc)

df = spark.read.csv(f"s3://sagemaker-example-files-prod-{boto3.session.Session().region_name}/datasets/tabular/dirty-titanic/", header=True)
df.show(5, truncate=False)
df.printSchema()

df.createOrReplaceTempView("df_sql_tempview")

Execute Spark Code in Scala

The following example will connect to AWS Glue Interactive session and run the spark code in Scala.

%%scalaspark project.spark
val dfScala = spark.sql("SELECT count(0) FROM df_sql_tempview")
dfScala.show()

Execute SQL query in remote compute

The following example will connect to AWS Glue Interactive session and run the spark code in Scala.

%%sql project.redshift
select current_user()

Some other helpful magics

%help - list available magics and related information

%send_to_remote - send local variable to remote compute

%%configure - configure spark application config in remote compute

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

Built Distribution

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

File details

Details for the file sagemaker_studio_dataengineering_sessions-1.3.19.tar.gz.

File metadata

File hashes

Hashes for sagemaker_studio_dataengineering_sessions-1.3.19.tar.gz
Algorithm Hash digest
SHA256 281ba9e0d9c23e6d2d8699e1bc31872e81fc91638003601f065e550759d85791
MD5 34baf1f4b93d293eff02738c6844e047
BLAKE2b-256 54293a6c97bf84f0ef1ad0ea413f1d1c52946a1ab123aec463db35f0307c0a6f

See more details on using hashes here.

File details

Details for the file sagemaker_studio_dataengineering_sessions-1.3.19-py3-none-any.whl.

File metadata

File hashes

Hashes for sagemaker_studio_dataengineering_sessions-1.3.19-py3-none-any.whl
Algorithm Hash digest
SHA256 d77e45e24c51958dd125b923fe850aba31c8e6f0d795f8ec6a5c49fca7e90848
MD5 b6eb44ffde0d474519143373507ad64b
BLAKE2b-256 ad80e4497e99785ca219b68c3c213f297f5e24def98e3b5e6829f718f6031cbc

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