Google BigQuery goes real-time with streaming inserts, time-based queries, and more

September 18, 2013


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Author PhotoBy Felipe Hoffa, Developer Programs Engineer

Cross-posted from the Google Cloud Platform Blog

Google BigQuery is designed to make it easy to analyze large amounts of data quickly. This year we've seen great updates: big scale JOINs and GROUP BYs, unlimited result sizes, smarter functions, bigger quotas, as well as multiple improvements to the web UI. Today we've gone even further, announcing several updates that give BigQuery the ability to work in real-time, query subsets of the latest data, more functions and browser tool improvements.

Real-time analytics
BigQuery is now able to load and analyze data in real time through a simple API call, the new tabledata().insertAll() endpoint. This enables you to store data as it comes in, rather than building and maintaining systems just to cache and upload in batches. The best part? The new data is available for querying instantaneously. This feature is great for time sensitive use cases like log analysis and alerts generation.

Using it is as easy as calling the new endpoint with your data in a JSON object (with a single row or multiple rows of data).

Here's a Python example:
body = {"rows":[
    {"json": {"column_name":7.7,}}
    ]}
response = bigquery.tabledata().insertAll(
    projectId=PROJECT_ID,
    datasetId=DATASET_ID,
    tableId=TABLE_ID,
    body=body).execute()

Streaming data into BigQuery is free for an introductory period until January 1st, 2014. After that it will be billed at a flat rate of 1 cent per 10,000 rows inserted. The traditional jobs().insert() method will continue to be free. When choosing which import method to use, check for the one that best matches your use case. Keep using the jobs().insert() endpoint for bulk and big data loading. Switch to the new tabledata().insertAll() endpoint if your use case calls for a constantly and instantly updating stream of data.

Table decorators for recent imported data
This release introduces a new syntax for "table decorators". Now you can define queries that only scan a range or spot in the previous 24 hours. Traditionally BigQuery has always done a "full column scan" when querying data, while the new syntax will allow you to focus only on a specific subset of the latest data. Querying a partial subset of data with these decorators will result in lower querying costs — proportional to the size of the subset of the queried data.

With the new capabilities you can query only the last hour of inserted data, or query only what was inserted before that hour, or get a snapshot of the table at a specific time. The table decorators also work in all table related operations (list, export, copy, and so on), giving you the ability to do operations like copying a table as it was before a bad import job.

New window and statistical functions
To the previously announced window functions, we've added SUM(), COUNT(), AVG(), MIN(), MAX(), FIRST_VALUE, and LAST_VALUE(). Refer to the previous release announcement for a run through of how window functions work.

We also recently introduced the new Pearson correlation function, and showed how to find interesting and anomalous patterns in ambient sensors, or how to predict tomorrow's flight delays using 70 million flights dataset. Today's release adds new statistical functions, for even richer capabilities: COVAR_POP(), COVAR_SAMP(), STDDEV_POP(), STDDEV_SAMP(), VAR_POP() and VAR_SAMP().

BigQuery browser tool: Improved history retrieval
You can now query your history faster in the browser tool using the Query History panel: More information about the queries is being surfaced and convenient buttons have been added for common tasks.

You can try out the new UI features, table decorators, and new functions at https://bigquery.cloud.google.com/. You can post questions and get quick answers about BigQuery usage and development on Stack Overflow. We love your feedback and comments. Join the discussion on +Google Cloud Platform using the hashtag #BigQuery.


Felipe Hoffa is part of the Cloud Platform team. He'd love to see the world's data accessible for everyone in BigQuery.

Posted by Scott Knaster, Editor