Thanks for pointing me to the Spark ticket and its limitations. Will try these changes. Is there any workaround for this limitation of inaccurate count, maybe by adding some additional streaming operation in SS job without impacting perf too much ?
Regards, Rajat From: Jungtaek Lim <kabhwan.opensou...@gmail.com> Date: Friday, 21 August 2020 at 12:07 PM To: Yuanjian Li <xyliyuanj...@gmail.com> Cc: GOEL Rajat <rajat.g...@thalesgroup.com>, "user@spark.apache.org" <user@spark.apache.org> Subject: Re: Structured Streaming metric for count of delayed/late data One more thing to say, unfortunately, the number is not accurate compared to the input rows on streaming aggregation, because Spark does local-aggregate and counts dropped inputs based on "pre-locally-aggregated" rows. You may want to treat the number as whether dropping inputs is happening or not. On Fri, Aug 21, 2020 at 3:31 PM Yuanjian Li <xyliyuanj...@gmail.com<mailto:xyliyuanj...@gmail.com>> wrote: The metrics have been added in https://issues.apache.org/jira/browse/SPARK-24634, but the target version is 3.1. Maybe you can backport for testing since it's not a big change. Best, Yuanjian GOEL Rajat <rajat.g...@thalesgroup.com<mailto:rajat.g...@thalesgroup.com>> 于2020年8月20日周四 下午9:14写道: Hi All, I have a query if someone can please help. Is there any metric or mechanism of printing count of input records dropped due to watermarking (late data count) in a stream, during a window based aggregation, in Structured Streaming ? I am using Spark 3.0. Thanks & Regards, Rajat