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we just noticed around 09/27/2012 our data have been duplicated from doing csv files upload (using Java API). Logs indicated no error during upload but we have confirmed a majority of rows during that day have been duplicated (there is distinct timestamp in micro second per row) Is there any known glitches during that day? We're at a loss of how to prevent this from happening again.

Thanks for any feed back.

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Hi Hung Huynh, did my suggestion below help? –  Michael Manoochehri Oct 8 '12 at 6:07
    
I'm gathering the logs and checking the jobs' status and will post back. Our .csv.gz files are named with unique timestamps and the job ids are created from these filenames so if a file is uploaded twice it'll fail due to conflicting job ids. –  Hung Huynh Oct 9 '12 at 20:24
    
In 2014, I'm occasionally seeing something like this as well in recent uploads. –  Eric Walker Apr 8 at 20:14

3 Answers 3

up vote 1 down vote accepted

Thanks for looking into this for us. It is hard (almost impossible) to believe that data got duplicated on the bigquery side. That said nothing we can see seems to indicate otherwise. As mentioned we have a microsecond timestamp value on every row. For the two job IDs referenced I picked a row at random and made sure that within all of the data we've ever imported it was a unique value. When I run the same query I get two (identical) rows in our bigquery table.

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FYI the bug has been found and fixed. The issue was coalescing the table, rather than the import. We tried coalescing the same table twice, and both succeeded, causing many of the rows to be duplicated. Your table still has the extra rows. If you would like, I can remove the rows from the duplicated coalesce operation (this can be reversed if it causes problems). –  Jordan Tigani Oct 11 '12 at 1:36
    
Thanks Jordan. I'm pretty sure we'd like to go ahead and get the duplicate data removed. But I have a few questions first... –  Tim Eck Oct 11 '12 at 20:39
    
When was (or has even?) the bug fix been applied in production? –  Tim Eck Oct 11 '12 at 20:40
    
What details would you need to know in order to remove the duped rows? It would be quite a task on this end to determine precisely all the job IDs for which we can detect duplicated data –  Tim Eck Oct 11 '12 at 20:41
    
I've got all of the information I need to remove the duplicate rows ... they all have the same storage id. I can just mark that id as garbage (if it causes problems,the operation can be undone for 7 days). –  Jordan Tigani Oct 11 '12 at 20:42

First: make sure (by checking the load job history), that you didn't actually end up running a load job twice. If you are using the bq command line client:

# Show all jobs for your selected project
bq ls -j

# Will result in a list such as:
...
job_d8fc9d7eefb2e9243b1ffde484b3ab8a   load      FAILURE   29 Sep 00:35:26   0:00:00   
job_4704a91875d9e0c64f7aaa8de0458696   load      SUCCESS   29 Sep 00:28:45   0:00:05   
...

# Find the load jobs pertaining to the time of data loading. To show detailed information
# about which files you ingested in the load job, run a command on the individual jobs
# that might have been repeats:
bq --format prettyjson show -j job_d8fc9d7eefb2e9243b1ffde484b3ab8a
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We don't know of any reason why data would be duplicated during import. If you provide us with more information, such as your job id and project id that would be helpful in diagnosing the issue.

In general, as Michael mentioned in his answer, people who see duplicated data have generally run the same job twice. (note that if a job fails, the table should not be modified in any way).

A way to prevent these kinds of collisions is to name your job, since we enforce job name uniqueness on a per-project level. For example, if you do a load once a day, you might want to name your job id something like "job_2012_10_08_load1". That way if you tried to run the same job twice, the second one would fail on start.

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We do have a scheme similar as you proposed. Our scheme is using the filenames as part of the jobId and the filename itself has a unique timestamp generated every 5 minutes. The 2 job ids we confirmed that were producing duplicated rows are: apps_prod_orgsite_terracotta_lan_bigquery-data-2012-09-27_23-22-51-729_csv_gz and apps_prod_orgsite_terracotta_lan_bigquery-data-2012-09-27_01-47-43-901_csv_gz –  Hung Huynh Oct 10 '12 at 19:55

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