We invite you to shape the future of IBM, including product roadmaps, by submitting ideas that matter to you the most. Here's how it works:
Post your ideas
Post ideas and requests to enhance a product or service. Take a look at ideas others have posted and upvote them if they matter to you,
Post an idea
Upvote ideas that matter most to you
Get feedback from the IBM team to refine your idea
Help IBM prioritize your ideas and requests
The IBM team may need your help to refine the ideas so they may ask for more information or feedback. The product management team will then decide if they can begin working on your idea. If they can start during the next development cycle, they will put the idea on the priority list. Each team at IBM works on a different schedule, where some ideas can be implemented right away, others may be placed on a different schedule.
Receive notification on the decision
Some ideas can be implemented at IBM, while others may not fit within the development plans for the product. In either case, the team will let you know as soon as possible. In some cases, we may be able to find alternatives for ideas which cannot be implemented in a reasonable time.
DataStage - Azure [Datalake] Storage Connector - Support parallelism parquet format
From PMR it has been confirmed that:Parallel Read/write - CSV and Delimited only support parallel write operations, rest of all file formats do not support parallel read/write. Parquet format doesn't support parallel read/writeIt is not documented...
We are using Information Server 11.7.1 and have multiple ETL jobs that use SAS connectors to execute SAS code from the ETL server ( SAS 9.4 M3 ). However the SAS version has now been upgraded to SAS 9.4 M6 and the connectivity via the provided con...
BQ connector read using Storage API - Long term solution
We are encountering poor performance while reading data from BQ table. Google engineering team had recommended to use Storage API instead of streamline API. IBM engineering team had identified a short term solution (still in RFE phase) .
We are encountering poor performance while reading from BQ table. Google engineering team had recommended to use Storage API instead of streamline API. IBM engineering team had identified a short term solution . While reading from BQ table , We w...
We at NYL planning to move from On Prem to Cloud environment. We did a multiple testings with the help of IBM Support team and noticed that the Redshift loads using Redshift connector/JDBC connector as dead slow.This will impact all of our Target ...
Do not place IBM confidential, company confidential, or personal information into any field.