-
Updated
Jul 5, 2021 - Java
spark-streaming
Here are 710 public repositories matching this topic...
-
Updated
May 26, 2019 - Scala
-
Updated
Apr 1, 2019 - Java
-
Updated
Jul 7, 2021 - Java
-
Updated
Feb 9, 2019 - Scala
-
Updated
Jan 29, 2021 - C#
-
Updated
Jul 5, 2021 - JavaScript
-
Updated
Mar 31, 2018
-
Updated
Jul 10, 2021 - Java
-
Updated
Sep 17, 2020 - Scala
Is your feature request related to a problem? Please describe.
Today the user needs to deploy udf jars and reference data csvs manually to the blob location
Describe the solution you'd like
Enable the user to choose a file on a local disk which the web portal will then upload to the right location
These files belong to the Gimel Discovery Service, which is still Work-In-Progress in PayPal & not yet open sourced. In addition, the logic in these files are outdated & hence it does not make sense to have these files in the repo.
https://github.com/paypal/gimel/search?l=Shell
Remove --> gimel-dataapi/gimel-core/src/main/scripts/tools/bin/hbase/hbase_ddl_creator.sh
-
Updated
Oct 12, 2016 - Scala
-
Updated
Jul 9, 2021 - Java
-
Updated
Apr 15, 2018 - Scala
-
Updated
Jun 18, 2021 - JavaScript
-
Updated
Feb 1, 2019 - TypeScript
-
Updated
Jun 29, 2021 - Scala
-
Updated
Jul 9, 2021 - Java
I am able to use consume the Kinesis stream using this jar as a normal consumer. When i updated the user account to Enhanced fan out consumer, i am unable to access the stream.
Do we have any way to access the stream as Enhanced fan out consumer?
-
Updated
Dec 21, 2017 - Scala
-
Updated
Apr 27, 2021 - Scala
-
Updated
Aug 12, 2020 - Java
-
Updated
Jul 10, 2021 - Shell
-
Updated
Aug 31, 2020 - Scala
-
Updated
May 23, 2019 - Java
Improve this page
Add a description, image, and links to the spark-streaming topic page so that developers can more easily learn about it.
Add this topic to your repo
To associate your repository with the spark-streaming topic, visit your repo's landing page and select "manage topics."
This is to track implementation of the ML-Features: https://spark.apache.org/docs/latest/ml-features
Bucketizer has been implemented in dotnet/spark#378 but there are more features that should be implemented.