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commit f4b36d08fbf9d3d437a83757ba29fb6915b49678 Author: Jia Yu <[email protected]> AuthorDate: Mon May 13 14:49:59 2024 -0700 Revert "[DOCS] Update 1.6.0 release notes with Java 11 tutorial (#1403)" This reverts commit d8a896e86140ec1b9075e43accaf9bf2840e0bc8. --- docs/setup/databricks.md | 33 --------------------------------- docs/setup/emr.md | 37 ------------------------------------- docs/setup/fabric.md | 4 ---- docs/setup/release-notes.md | 2 +- docs/setup/wherobots.md | 6 +++--- 5 files changed, 4 insertions(+), 78 deletions(-) diff --git a/docs/setup/databricks.md b/docs/setup/databricks.md index 1c43ab643..011c0392e 100644 --- a/docs/setup/databricks.md +++ b/docs/setup/databricks.md @@ -1,36 +1,3 @@ - -## JDK 11+ requirement - -Sedona 1.6.0+ requires JDK 11+ to run. Databricks Runtime by default uses JDK 8. You can set up JDK 17 by following the instructions in the [Databricks documentation](https://docs.databricks.com/en/dev-tools/sdk-java.html#create-a-cluster-that-uses-jdk-17). - -### on Databricks Runtime versions 13.1 and above - -When you create a cluster, specify that the cluster uses JDK 17 for both the driver and executor by adding the following environment variable to `Advanced Options > Spark > Environment Variables`: - -``` -JNAME=zulu17-ca-amd64 -``` - -If you are using ARM-based clusters (for example, AWS Graviton instances), use the following environment variable instead. - -``` -JNAME=zulu17-ca-arm64 -``` - -### on Databricks Runtime versions 11.2 - 13.0 - -When you create a cluster, you can specify that the cluster uses JDK 11 (for both the driver and executor). To do this, add the following environment variable to `Advanced Options > Spark > Environment Variables`: - -``` -JNAME=zulu11-ca-amd64 -``` - -If you are using ARM-based clusters (for example, AWS Graviton instances), use the following environment variable instead. - -``` -JNAME=zulu11-ca-arm64 -``` - ## Community edition (free-tier) You just need to install the Sedona jars and Sedona Python on Databricks using Databricks default web UI. Then everything will work. diff --git a/docs/setup/emr.md b/docs/setup/emr.md index 9f73b62ba..6d687f35e 100644 --- a/docs/setup/emr.md +++ b/docs/setup/emr.md @@ -5,43 +5,6 @@ This tutorial is tested on EMR on EC2 with EMR Studio (notebooks). EMR on EC2 us !!!note If you are using Spark 3.4+ and Scala 2.12, please use `sedona-spark-shaded-3.4_2.12`. Please pay attention to the Spark version postfix and Scala version postfix. -## JDK 11+ requirement - -Sedona 1.6.0+ requires JDK 11+ to run. For Amazon EMR 7.x, the default JVM is Java 17. For Amazon EMR 5.x and 6.x, the default JVM is Java 8 but you can configure the cluster to use Java 11 or Java 17. For more information, see [EMR JVM versions](https://docs.aws.amazon.com/emr/latest/ReleaseGuide/configuring-java8.html#configuring-java8-override-spark). - -When you use Spark with Amazon EMR releases 6.12 and higher, if you write a driver for submission in cluster mode, the driver uses Java 8, but you can set the environment so that the executors use Java 11 or 17. To override the JVM for Spark, AWS EMR recommends that you set both the Hadoop and Spark classifications. - -However, it is unclear that if the following will work on EMR below 6.12. - -``` -{ -"Classification": "hadoop-env", - "Configurations": [ - { -"Classification": "export", - "Configurations": [], - "Properties": { -"JAVA_HOME": "/usr/lib/jvm/java-1.11.0" - } - } - ], - "Properties": {} - }, - { -"Classification": "spark-env", - "Configurations": [ - { -"Classification": "export", - "Configurations": [], - "Properties": { -"JAVA_HOME": "/usr/lib/jvm/java-1.11.0" - } - } - ], - "Properties": {} - } -``` - ## Prepare initialization script In your S3 bucket, add a script that has the following content: diff --git a/docs/setup/fabric.md b/docs/setup/fabric.md index ff3a10e36..aa5ca6ee6 100644 --- a/docs/setup/fabric.md +++ b/docs/setup/fabric.md @@ -1,9 +1,5 @@ This tutorial will guide you through the process of installing Sedona on Microsoft Fabric Synapse Data Engineering's Spark environment. -## JDK 11+ requirement - -Sedona 1.6.0+ requires JDK 11+ to run. Microsoft Fabric Synapse Data Engineering 1.2+ uses JDK 11 by default so we recommend using Microsoft Fabric Synapse Data Engineering 1.2+. For more information, see [Apache Spark Runtimes in Fabric](https://learn.microsoft.com/en-us/fabric/data-engineering/runtime). - ## Step 1: Open Microsoft Fabric Synapse Data Engineering Go to the [Microsoft Fabric portal](https://app.fabric.microsoft.com/) and choose the `Data Engineering` option. diff --git a/docs/setup/release-notes.md b/docs/setup/release-notes.md index c44dcc6b3..16df19b0b 100644 --- a/docs/setup/release-notes.md +++ b/docs/setup/release-notes.md @@ -4,7 +4,7 @@ If you use Sedona < 1.6.0, please use GeoPandas <= `0.11.1` since GeoPandas > 0.11.1 will automatically install Shapely 2.0. If you use Shapely, please use <= `1.8.5`. !!! warning - Sedona 1.6.0+ requires Java 11+ to compile and run. If you are using Java 8, please use Sedona < 1.6.0. To learn how to set up Java 11+ on different platforms, please refer to the Java 11+ requirement in the corresponding platform setup guide. + Sedona 1.6.0+ requires Java 11+ to compile and run. If you are using Java 8, please use Sedona <= 1.5.2. ## Sedona 1.6.0 diff --git a/docs/setup/wherobots.md b/docs/setup/wherobots.md index e19555f44..1bff8d322 100644 --- a/docs/setup/wherobots.md +++ b/docs/setup/wherobots.md @@ -1,7 +1,7 @@ ## WherobotsDB -Wherobots Cloud offers fully-managed and fully provisioned cloud services for WherobotsDB, a comprehensive spatial analytics database system. You can play with it using in a cloud-hosted Jupyter notebook with Python, Java or Scala kernels; no installation is needed. +Wherobots Cloud offers fully-managed and fully provisioned cloud services for WherobotsDB, a comprehensive spatial analytics database system. You can play with it using Wherobots Jupyter Scala and Python kernel. No installation is needed. -WherobotsDB is 100% compatible with Apache Sedona in terms of public APIs but provides more functionality and better performance. +WherobotsDB is 100% compatible with Apache Sedona in terms of public APIs but provides more functionalities and better performance. -It is easy to migrate your existing Sedona workflow to [Wherobots Cloud](https://www.wherobots.com). Please sign up [here](https://cloud.wherobots.com/) to create your account. +It is easy to migrate your existing Sedona workflow to Wherobots Cloud. Please sign up at [Wherobots Cloud](https://www.wherobots.services/).
