Google BigQuery has no primary key or unique constraints.

We cannot use traditional SQL options such as insert ignore or insert on duplicate key update so how do you prevent duplicate records being inserted into Google BigQuery?

If I have to call delete first (based on unique key in my own system) and then insert to prevent duplicate records being inserted into bigquery, wouldn't that that be too inefficient? I would assume that insert is the cheapest operation, no query, just append data. For each insert if I have to call delete, it will be too inefficient and cost us extra money.

What is your advice and suggestions based on your experience?

It would be nice that bigquery has primary key, but it might be conflict with the algorithms/data structure that bigquery is based on?

  • are you streaming? streaming prevents duplicate records within a timeframe based on ids provided by you – Felipe Hoffa Mar 23 '17 at 23:25
  • I am not familiar with streaming on bigquery. We setup transfers in bigquery to pull data from Youtube Reports. Sometimes the transfer did not get the report data we want (maybe the data was not ready yet). We have to rerun the transfers to pull the missing report. Google told us even we rerun the transfers, there will not be duplicated records. Is that bigquery transfer using the streaming? The duplicated comes from local database. I need to load data from my local mysql database to bigquery too. I have to prevent it on the application level. I will check out the streaming solution. – searain Mar 23 '17 at 23:39

So let's clear some facts up in the first place.

Bigquery is a managed data warehouse suitable for large datasets, and it's complementary to a traditional database, rather than a replacement.

You can only do a maximum of 96 DML (update,delete) operations on a table per day. This is by design. This limit is low because it forces you to think of BQ as a data lake. So, on BigQuery, you actually let all data in, and everything is append-only by design. That means that by design you have a database that holds a new row for every update. Hence if you want to use the latest data, you need to pick the last row and use that.

We actually leverage insights from every new update we add to the same row. For example, we can detect how long it took for the end-user to choose his/her country at signup flow. Because we have a dropdown of countries, it took some time until he/she scrolled to the right country, and metrics show this, because we ended up in BQ with two rows, one prior country selected, and one after country selected and based on time selection we were able to optimize the process. Now on our country drop-down we have first 5 most recent/frequent countries listed, so those users no longer need to scroll and pick a country; it's faster.

  • We run bigquery only on daily loaded data and generated daily reports. We will keep export these daily reports in storage and dump to elasticsearch which will be our output api, So keep our bigquery data clean. I could control in application layer that no duplicated data load will be allowed. Also to add error proof check on BigQuery layer, I can do one DML operation before bulk load, delete all the data of the date before I load the data for that date. Would that be good practice? – searain Mar 22 '17 at 18:24
  • What volume are we talking about? Isn't easier if you keep in BQ everything and adjust the queries to read last row? – Pentium10 Mar 22 '17 at 21:05
  • Right now, the volume is about millions. It could become bigger later on. There are some join queries and aggregations on big query (sum/average on group by etc.) to get our final results. For output api, elasticsearch will be more efficient. And we keep copies in storage purely just as backup just in case. – searain Mar 22 '17 at 21:14
  • makes sense to adjust query to read most recent version of each row, however you need a timestamp column for that. Does it have to be explicitly defined or does it exist by default? Given that GBQ is a Data Lake, I would expect it to exist by default. – Giacomo Mar 1 '19 at 14:10

"Bulk Delete and Insert" is the approach I am using to avoid the duplicated records. And Google's own "Youtube BigQuery Transfer Services" is using "Bulk Delete and Insert" too.

"Youtube BigQuery Transfer Services" push daily reports to the same set of report tables every day. Each record has a column "date".

When we run Youtube Bigquery Transfer backfill (ask youtube bigquery transfer to push the reports for certain dates again.) Youtube BigQury Transfer services will first, delete the full dataset for that date in the report tables and then insert the full dataset of that date back to the report tables again.

Another approach is drop the results table (if it already exists) first, and then re-create the results table and re-input the results into the tables again. I used this approach a lot. Everyday, I have my process data results saved in some results tables in the daily dataset. If I rerun the process for that day, my script will check if the results tables for that day exist or not. If table exists for that day, delete it and then re-create a fresh new table, and then reinput the process results to the new created table.

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