Reputation
3,764
Top tag
Next privilege 5,000 Rep.
Approve tag wiki edits
Badges
17 48
Newest
 Tenacious
Impact
~345k people reached

2d
comment about key-grouping with GroupByKey.
If you just want one table for each day, then per-window tables are exactly what you need.
Jul
1
comment Google Cloud Dataflow User-Defined MySQL Source
Well, that's the problem - without the GroupByKey the subsequent ParDo's most likely wouldn't have parallelized the processing - they would probably be fused together with the "ReadQueryResults" ParDo, because the Dataflow optimizer assumes that normally ParDo's don't return that many results per element and it's most efficient to fuse adjacent ParDo's together. Inserting an artificial GroupByKey essentially prevents such fusion.
Jun
29
comment Read messages from SQS into Dataflow
Right now there is no way to use SQS as an input source, however we're about to publish an API that will allow you to do just that, similar to the custom source API for bounded sources which you have already looked at. Stay tuned!
Jun
25
comment Dataflow is failing java.io.IOException: INTERNAL : Finalize rejected (writer id not found) when talking to tcp://localhost:12345
I see you edited the question - however this is output of the workers from Cloud Logging (please keep it - it's also useful), while I meant the console output of the main program which submits the pipeline.
Jun
24
comment Dataflow is failing java.io.IOException: INTERNAL : Finalize rejected (writer id not found) when talking to tcp://localhost:12345
Yes, I mean the output that the main program prints to console, e.g. like here: stackoverflow.com/questions/28872174/…
Jun
23
comment Dataflow is failing java.io.IOException: INTERNAL : Finalize rejected (writer id not found) when talking to tcp://localhost:12345
Sorry about this issue. To help us investigate, can you edit the question to include the complete output of a failing pipeline, including the job ID?
Jun
23
comment How to stop a streaming pipeline in google cloud dataflow
Dataflow pipelines can be run with different runners, using Pipeline.setRunner - e.g. with DirectPipelineRunner, [Blocking]DataflowPipelineRunner, and there currently exist runners on Spark and on Flink. Different runners provide different capabilities. If you just want to run the pipeline, call pipeline.run(). If you want runner-specific capabilities (e.g. DataflowPipelineRunner can cancel pipelines), configure/call the runner directly as in this example.
Jun
22
comment Google cloud dataflow job hangs
No. Pricing is currently based on Compute Engine pricing (see cloud.google.com/dataflow/pricing), and all Compute Engine resources are already released by this job.
Jun
22
comment Google cloud dataflow job hangs
Note that this should be a very infrequent issue, it should not be related to using a service account, and it has already shut down the workers so it should not cause any billing implications. So I think you can submit other jobs in the meantime.
Jun
22
comment Google cloud dataflow job hangs
It seems that you have hit a bug in the Dataflow service. We're investigating and we'll update you with the results.
Jun
17
comment Dataflow job errors: "'The resource 'projects/<removed>/zones/us-central1-a/disks/<removed>-harness-0' is not ready'
The GCE team said it was a transient issue and they have a fix that should be rolled out soon. Sorry for the trouble again.
Jun
17
comment Dataflow job errors: "'The resource 'projects/<removed>/zones/us-central1-a/disks/<removed>-harness-0' is not ready'
Sorry about this. I have passed this for investigation to the GCE team.
Jun
17
comment Is there a limit on the number of side outputs in Google Cloud Dataflow?
Indeed I see nothing wrong with the code (unless there's something weird going on in subsequent DoFn's). I'm afraid I don't know how to help you, because debugging an OOM is next to impossible without a heap dump, and this doesn't match any known issue. We are considering enabling heap dumps on OOM so that at least you would be able to download and analyze them using a memory profiler. Can the pipeline run locally? It will of course be too slow to process all the data, but at least you will be able to watch memory usage and attach a memory profiler (e.g. YourKit or MemoryAnalyzer).
Jun
16
comment Is there a limit on the number of side outputs in Google Cloud Dataflow?
Darren, I looked at the failed job with 9 side outputs and I don't see anything obviously wrong with its configuration or with the amount of output it writes to BigQuery. It seems to differ from the succeeding one with 8 outputs only in the amount of data it reads. Could it be that you're caching a large amount of data in worker memory, e.g. in your DoFn's? Any chance you could contact dataflow-feedback@ and show us as much of the code of this pipeline as you're comfortable showing?
Jun
16
comment How to read the resource file? (google cloud dafaflow)
Also can you confirm whether your DatabaseReader class supports files located inside zip archives at all? That's independent on Dataflow - you can just try to create the DatabaseReader in your main program and point it at a local copy of the classes-WOdCPQCHjW-hRNtrfrnZMw.zip file, and check if it works.
Jun
16
comment Dataflow API retries several times after data format exception
This is correct - Dataflow retries failing data processing tasks on failure. This is done to mask transient failures, such as network connectivity errors or transient bugs in framework or user code. It is not possible to automatically classify errors into transient/permanent, so we retry all failures.
Jun
16
comment How to stop a streaming pipeline in google cloud dataflow
We're already considering adding a variation of pub/sub source for use in batch mode, similarly to what Bharathi is suggesting ("read for a certain time" or "read a certain amount of data") - it is a valid use case that fits well with Dataflow's idea of unifying streaming and batch.
Jun
10
comment Support for Cloud Bigtable as Sink in Cloud Dataflow
I have to be very vague because a production-ready bigtable connector depends on resolving several issues at the intersection of different teams, which is difficult to predict (you hit one of those issues), and on the prioritization of other tasks. It's definitely not days, but hopefully not months either. Sorry I couldn't be more helpful about this.
Jun
9
comment Support for Cloud Bigtable as Sink in Cloud Dataflow
We are currently working on providing support for Cloud Bigtable both as a source and a sink in Cloud Dataflow, but I do not yet have a concrete timeline to share with you.
Jun
2
comment Custom parameters from PipelineOptions
However, Samuel - please note that you should prefer to use the PipelineOptions only when constructing the pipeline, instead of extracting your source/sink parameters out of it at runtime. Your Source or Sink class should be a completely self-contained description of where to read from or where to write to - PipelineOptions should, at most, help with pipeline-global things like credentials. Otherwise, e.g. if you put a filename into PipelineOptions, and want to read two different files from your pipeline, you'd be out of luck.