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27

A recent release of Google App Engine SDK added support for the AppAssertionCredentials method on the development server. To use this method locally, add the following arguments to dev_appserver.py: $ dev_appserver.py --help ... Application Identity: --appidentity_email_address APPIDENTITY_EMAIL_ADDRESS email address associated ...


20

Dremel and MapReduce are not directly comparable, but rather they are complementary technologies. MapReduce is not specifically designed for analyzing data - rather it's a software framework that allows a collection of nodes to tackle distributed computational problems for large datasets. Dremel is a data analysis tool designed to quickly run queries on ...


15

UPDATE: I just added a complete codelab demonstrating using DataStore together with BigQuery here: https://developers.google.com/bigquery/articles/datastoretobigquery You can't run a BigQuery directly on DataStore entities, but you can write a Mapper Pipeline that reads entities out of DataStore, writes them to CSV in Google Cloud Storage, and then ingests ...


15

The TABLE_QUERY() function allows you to write a SQL WHERE clause that is evaluated to find which tables to run the query over. For instance, you can run the following query to count the rows in all tables in the publicdata:samples dataset that are older than 7 days: SELECT count(*) FROM TABLE_QUERY(publicdata:samples, "MSEC_TO_TIMESTAMP(creation_time) ...


11

There are no indexes... every query is a table scan. The query architecture is described here. Your data is stored in a proprietary columnar format called ColumnIO on Colossus (a successor to GFS). Colossus replicates the data within a datacenter and your data is also replicated to other geographic regions to make sure it stays available even if a Google ...


11

The previous answer lists the basic datatypes: STRING INTEGER FLOAT BOOLEAN BigQuery also supports: RECORD (JSON objects, see nested records) TIMESTAMP More on: Nested records: https://developers.google.com/bigquery/docs/data#nested Using timestamp: https://developers.google.com/bigquery/docs/timestamp Docs: ...


10

Google Cloud Storage just released a new version (3.26) of gsutil that supports service accounts (as well as a number of other features and bug fixes). If you already have gsutil installed you can get this version by running: gsutil update In brief, you can configure a service account by running: gsutil config -e See "gsutil help config" for more details ...


10

If you want UNION so that you can combine query results, you can use subselects in BigQuery: SELECT foo, bar FROM (SELECT integer(id) AS foo, string(title) AS bar FROM publicdata:samples.wikipedia limit 10), (SELECT integer(year) AS foo, string(state) AS bar FROM publicdata:samples.natality limit 10); This is almost exactly equivalent to the ...


10

Check this article out. Dremel is the what the future of hive should (and will) be. The major issue of MapReduce and solutions on top of it, like Pig, Hive etc, is that they have an inherent latency between running the job and getting the answer. Dremel uses a totally novel approach (came out in 2010 in that paper by google) which... ...uses a novel ...


10

Looks like my guess in the comment above was correct. I got your code working by changing: "urn%3Aietf%3Aparams%3Aoauth%3Agrant-type%3Ajwt-bearer" to: "urn:ietf:params:oauth:grant-type:jwt-bearer" Looks like you were accidentally double-encoding it. I now get a response which looks something like: { "access_token" : ...


10

Cleaned up version of this answer at: http://googlecloudplatform.blogspot.com/2014/03/geoip-geolocation-with-google-bigquery.html Let me tidy the original query: SELECT id, client_ip, client_ip_code, B.Country_Name AS Country_Name FROM ( SELECT id, contributor_ip AS client_ip, INTEGER(PARSE_IP(contributor_ip)) AS client_ip_code, ...


9

Set allowLargeResults to true in your job configuration. You must also specify a destination table with the allowLargeResults flag. If querying via API, "configuration": { "query": { "allowLargeResults": true, "query": "select uid from [project:dataset.table]" "destinationTable": [project:dataset.table] } } If using ...


9

Try this: bq --format=prettyjson show yourdataset.yourtable > table.json Edit table.json and remove everything except the inside of "fields" (e.g. keep the [ { "name": "x" ... }, ... ]). Then add your new field to the schema. Then run: bq update yourdataset.yourtable table.json You can add --apilog=apilog.txt to the beginning of the command line ...


9

You will actually need to add the following to your redirect URIs: http://localhost:8080/oauth2callback Also, you may need to append a trailing / if the above doesn't match: http://localhost:8080/oauth2callback/


9

If 'Z' is your big dictionary, on 'response' you will get the structure you need. import json response = [] for row in z['rows']: for key, dict_list in row.iteritems(): count = dict_list[1] year = dict_list[2] response.append({'count': count['v'], 'year' : year['v']}) print json.dumps(response) On response you will get the ...


8

You can do this by specifying a destination table in the query. You would need to use the Jobs.insert api rather than the Jobs.query call, and you should specify writeDisposition=WRITE_APPEND and fill out the destination table. Here is what the configuration would look like, if you were using the raw api. If you're using Python, the python client should ...


8

There is a 3rd party JDBC driver, which can be obtained from: http://code.google.com/p/starschema-bigquery-jdbc/ It supports the same SQL SELECT syntax as the original Google BigQuery, and there is no insert or update support. Please let me know if you have any further questions or requests about the driver


8

Use the Google API Client for PHP. Here's a simple example of a script that does a single synchronous query job. This uses the class names found in the downloadable API client. Note: the source pulled from SVN features different class names. Note where you must add your own values for client secret, client id, redirect URI, and project id. <?php ...


8

UPDATE: We just added a new BigQuery + Apps Script Tutorial that should walk you through the answer to this question here: https://developers.google.com/apps-script/articles/bigquery_tutorial @GQuery: We've very recently updated AppsScript to have access to the latest BigQuery API version (v2). Here's a simple example to get started, will display results in ...


8

Try this to set your application name Drive service = new Drive.Builder(httpTransport, jsonFactory, null) .setHttpRequestInitializer(credential) .setApplicationName("Your app name") .build();


8

With the price change, there are two primary reasons to use batch priority: it lets you queue up your jobs. it lets you run low priority queries in a way that doesn't impact high priority ones. There are a number of rate limits that affect interactive (i.e. non-batch) queries -- you can have at most 20 running concurrently, there are concurrent byte ...


8

This is actually the result of a bugfix I submitted last week, and is preventing you from getting incorrect results. BigQuery by default flattens all query results before returning them, but we only want to flatten one independently repeated field to avoid a cross-product expansion of data. The bug was that our checks for multiple repeated fields failed to ...


7

Try using the range function. SELECT symbol, start_date, start_time, bid_price, count(market_center) over (partition by symbol order by start_time RANGE 1000 PRECEDING) cnt FROM [bigquery-samples:nasdaq_stock_quotes.quotes] where symbol = 'GOOG' order by 2, 3 I used market_center just as a counter, additional fields can be used as ...


7

Minimal working (as long as you fill in the right ids for your project) example: import httplib2 from apiclient import discovery from oauth2client import appengine _SCOPE = 'https://www.googleapis.com/auth/bigquery' PROJECT_ID = 'your_project' DATASET_ID = 'your_dataset' TABLE_ID = 'TestTable' body = {"rows":[ {"json": {"Col1":7,}} ]} credentials = ...


7

Simba, an expert in ODBC (they have ODBC drivers for nearly every data source you can think of), has built an ODBC connector for BigQuery. You can download it for free (for Windows) from the BigQuery third party tools page here (scroll down to the bottom of the page). If you would prefer to use Linux, you can download the ODBC driver from Simba directly from ...


7

Good job finding it :). I requested the function recently, but it hasn't made it to documentation yet. I would say the advantage of RAND() is that the results will vary, while HASH() will keep giving you the same results for the same values (not guaranteed over time, but you get the idea). In case you want the variability that RAND() brings while still ...


7

Thanks for describing your use case. BigQuery is append-only by design. We currently don't support deleting single rows or a batch of rows from an existing dataset. Currently, to implement a "rotating" log system you must either: 1. Create a new table each day (and delete older tables if that is necessary) 2. Append your data to a table and query by ...


7

That's correct. The project/crawler went live on March 11th of this year, hence the current archive starts on that day. There is a note about this on the githubarchive.org page, but I guess I should make it more visible and explicit. There is a thread with the GitHub team about making more of their history available, but I don't have an ETA for it yet. ...


7

The service account authorization method works just fine with BigQuery. You don't need to call credential.refreshToken(). Make sure that your private key file can be read from your application. Here is an example: import com.google.api.client.googleapis.auth.oauth2.GoogleCredential; import com.google.api.client.http.HttpTransport; import ...


7

Depending on your application, you might be able to solve this by passing a filter parameter which is "an optional list of filters to apply to the query. Each filter is a tuple: (<property_name_as_str>, <query_operation_as_str>, <value>." So, in your input reader parameters: "input_reader":{ "entity_kind": entity_type, ...



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