Google Cloud BigQuery
Google BigQuery enables super-fast, SQL-like queries against massive datasets, using the processing power of Google's infrastructure. To learn more, read What is BigQuery?.
The goal of google-cloud is to provide an API that is comfortable to Rubyists. Your authentication credentials are detected automatically in Google Cloud Platform (GCP), including Google Compute Engine (GCE), Google Kubernetes Engine (GKE), Google App Engine (GAE), Google Cloud Functions (GCF) and Cloud Run. In other environments you can configure authentication easily, either directly in your code or via environment variables. Read more about the options for connecting in the Authentication Guide.
To help you get started quickly, the first few examples below use a public dataset provided by Google. As soon as you have signed up to use BigQuery, and provided that you stay in the free tier for queries, you should be able to run these first examples without the need to set up billing or to load data (although we'll show you how to do that too.)
Listing Datasets and Tables
A BigQuery project contains datasets, which in turn contain tables. Assuming
that you have not yet created datasets or tables in your own project, let's
connect to Google's bigquery-public-data
project, and see what we find.
require "google/cloud/bigquery" bigquery = Google::Cloud::Bigquery.new project: "bigquery-public-data" bigquery.datasets.count #=> 1 bigquery.datasets.first.dataset_id #=> "samples" dataset = bigquery.datasets.first tables = dataset.tables tables.count #=> 7 tables.map &:table_id #=> [..., "shakespeare", "trigrams", "wikipedia"]
In addition to listing all datasets and tables in the project, you can also
retrieve individual datasets and tables by ID. Let's look at the structure of
the shakespeare
table, which contains an entry for every word in every play
written by Shakespeare.
require "google/cloud/bigquery" bigquery = Google::Cloud::Bigquery.new project: "bigquery-public-data" dataset = bigquery.dataset "samples" table = dataset.table "shakespeare" table.headers #=> [:word, :word_count, :corpus, :corpus_date] table.rows_count #=> 164656
Now that you know the column names for the Shakespeare table, let's write and run a few queries against it.
Running queries
BigQuery supports two SQL dialects: standard SQL and the older legacy SQl (BigQuery SQL), as discussed in the guide Migrating from legacy SQL.
Standard SQL
Standard SQL is the preferred SQL dialect for querying data stored in BigQuery. It is compliant with the SQL 2011 standard, and has extensions that support querying nested and repeated data. This is the default syntax. It has several advantages over legacy SQL, including:
- Composability using
WITH
clauses and SQL functions - Subqueries in the
SELECT
list andWHERE
clause - Correlated subqueries
ARRAY
andSTRUCT
data types- Inserts, updates, and deletes
COUNT(DISTINCT <expr>)
is exact and scalable, providing the accuracy ofEXACT_COUNT_DISTINCT
without its limitations- Automatic predicate push-down through
JOIN
s - Complex
JOIN
predicates, including arbitrary expressions
For examples that demonstrate some of these features, see Standard SQL ghlights.
As shown in this example, standard SQL is the library default:
require "google/cloud/bigquery" bigquery = Google::Cloud::Bigquery.new sql = "SELECT word, SUM(word_count) AS word_count " \ "FROM `bigquery-public-data.samples.shakespeare`" \ "WHERE word IN ('me', 'I', 'you') GROUP BY word" data = bigquery.query sql
Notice that in standard SQL, a fully-qualified table name uses the following
format:
.my-dashed-project.dataset1.tableName
Legacy SQL (formerly BigQuery SQL)
Before version 2.0, BigQuery executed queries using a non-standard SQL dialect
known as BigQuery SQL. This variant is optional, and can be enabled by passing
the flag legacy_sql: true
with your query. (If you get an SQL syntax error
with a query that may be written in legacy SQL, be sure that you are passing
this option.)
To use legacy SQL, pass the option legacy_sql: true
with your query:
require "google/cloud/bigquery" bigquery = Google::Cloud::Bigquery.new sql = "SELECT TOP(word, 50) as word, COUNT(*) as count " \ "FROM [bigquery-public-data:samples.shakespeare]" data = bigquery.query sql, legacy_sql: true
Notice that in legacy SQL, a fully-qualified table name uses brackets instead of
back-ticks, and a colon instead of a dot to separate the project and the
dataset: [my-dashed-project:dataset1.tableName]
.
Query parameters
With standard SQL, you can use positional or named query parameters. This example shows the use of named parameters:
require "google/cloud/bigquery" bigquery = Google::Cloud::Bigquery.new sql = "SELECT word, SUM(word_count) AS word_count " \ "FROM `bigquery-public-data.samples.shakespeare`" \ "WHERE word IN UNNEST(@words) GROUP BY word" data = bigquery.query sql, params: { words: ['me', 'I', 'you'] }
As demonstrated above, passing the params
option will automatically set
standard_sql
to true
.
Data types
BigQuery standard SQL supports simple data types such as integers, as well as
more complex types such as ARRAY
and STRUCT
.
The BigQuery data types are converted to and from Ruby types as follows:
BigQuery | Ruby | Notes |
---|---|---|
BOOL | true /false | |
INT64 | Integer | |
FLOAT64 | Float | |
NUMERIC | BigDecimal | BigDecimal values will be rounded to scale 9. |
BIGNUMERIC | converted to BigDecimal | Pass data as String and map query param values in types . |
STRING | String | |
DATETIME | DateTime | DATETIME does not support time zone. |
DATE | Date | |
TIMESTAMP | Time | |
TIME | Google::Cloud::BigQuery::Time | |
BYTES | File , IO , StringIO , or similar | |
ARRAY | Array | Nested arrays, nil values are not supported. |
STRUCT | Hash | Hash keys may be strings or symbols. |
See Data Types for an overview of each BigQuery data type, including allowed values.
Running Queries
Let's start with the simplest way to run a query. Notice that this time you are connecting using your own default project. It is necessary to have write access to the project for running a query, since queries need to create tables to hold results.
require "google/cloud/bigquery" bigquery = Google::Cloud::Bigquery.new sql = "SELECT APPROX_TOP_COUNT(corpus, 10) as title, " \ "COUNT(*) as unique_words " \ "FROM `bigquery-public-data.samples.shakespeare`" data = bigquery.query sql data.next? #=> false data.first #=> {:title=>[{:value=>"hamlet", :count=>5318}, ...}
The APPROX_TOP_COUNT
function shown above is just one of a variety of
functions offered by BigQuery. See the Query Reference (standard
SQL)
for a full listing.
Query Jobs
It is usually best not to block for most BigQuery operations, including querying as well as importing, exporting, and copying data. Therefore, the BigQuery API provides facilities for managing longer-running jobs. With this approach, an instance of Google::Cloud::Bigquery::QueryJob is returned, rather than an instance of Google::Cloud::Bigquery::Data.
require "google/cloud/bigquery" bigquery = Google::Cloud::Bigquery.new sql = "SELECT APPROX_TOP_COUNT(corpus, 10) as title, " \ "COUNT(*) as unique_words " \ "FROM `bigquery-public-data.samples.shakespeare`" job = bigquery.query_job sql job.wait_until_done! if !job.failed? job.data.first #=> {:title=>[{:value=>"hamlet", :count=>5318}, ...} end
Once you have determined that the job is done and has not failed, you can obtain
an instance of Google::Cloud::Bigquery::Data by calling data
on the job
instance. The query results for both of the above examples are stored in
temporary tables with a lifetime of about 24 hours. See the final example below
for a demonstration of how to store query results in a permanent table.
Creating Datasets and Tables
The first thing you need to do in a new BigQuery project is to create a Google::Cloud::Bigquery::Dataset. Datasets hold tables and control access to them.
require "google/cloud/bigquery" bigquery = Google::Cloud::Bigquery.new dataset = bigquery.create_dataset "my_dataset"
Now that you have a dataset, you can use it to create a table. Every table is
defined by a schema that may contain nested and repeated fields. The example
below shows a schema with a repeated record field named cities_lived
. (For
more information about nested and repeated fields, see Preparing Data for
Loading.)
require "google/cloud/bigquery" bigquery = Google::Cloud::Bigquery.new dataset = bigquery.dataset "my_dataset" table = dataset.create_table "people" do |schema| schema.string "first_name", mode: :required schema.record "cities_lived", mode: :repeated do |nested_schema| nested_schema.string "place", mode: :required nested_schema.integer "number_of_years", mode: :required end end
Because of the repeated field in this schema, we cannot use the CSV format to load data into the table.
Loading records
To follow along with these examples, you will need to set up billing on the Google Developers Console.
In addition to CSV, data can be imported from files that are formatted as Newline-delimited JSON, Avro, ORC, Parquet or from a Google Cloud Datastore backup. It can also be "streamed" into BigQuery.
Streaming records
For situations in which you want new data to be available for querying as soon as possible, inserting individual records directly from your Ruby application is a great approach.
require "google/cloud/bigquery" bigquery = Google::Cloud::Bigquery.new dataset = bigquery.dataset "my_dataset" table = dataset.table "people" rows = [ { "first_name" => "Anna", "cities_lived" => [ { "place" => "Stockholm", "number_of_years" => 2 } ] }, { "first_name" => "Bob", "cities_lived" => [ { "place" => "Seattle", "number_of_years" => 5 }, { "place" => "Austin", "number_of_years" => 6 } ] } ] table.insert rows
To avoid making RPCs (network requests) to retrieve the dataset and table
resources when streaming records, pass the skip_lookup
option. This creates
local objects without verifying that the resources exist on the BigQuery
service.
require "google/cloud/bigquery" bigquery = Google::Cloud::Bigquery.new dataset = bigquery.dataset "my_dataset", skip_lookup: true table = dataset.table "people", skip_lookup: true rows = [ { "first_name" => "Anna", "cities_lived" => [ { "place" => "Stockholm", "number_of_years" => 2 } ] }, { "first_name" => "Bob", "cities_lived" => [ { "place" => "Seattle", "number_of_years" => 5 }, { "place" => "Austin", "number_of_years" => 6 } ] } ] table.insert rows
There are some trade-offs involved with streaming, so be sure to read the discussion of data consistency in Streaming Data Into BigQuery.
Uploading a file
To follow along with this example, please download the names.zip archive from the U.S. Social Security Administration. Inside the archive you will find over 100 files containing baby name records since the year 1880.
require "google/cloud/bigquery" bigquery = Google::Cloud::Bigquery.new dataset = bigquery.dataset "my_dataset" table = dataset.create_table "baby_names" do |schema| schema.string "name", mode: :required schema.string "gender", mode: :required schema.integer "count", mode: :required end file = File.open "names/yob2014.txt" table.load file, format: "csv"
Because the names data, although formatted as CSV, is distributed in files with
a .txt
extension, this example explicitly passes the format
option in order
to demonstrate how to handle such situations. Because CSV is the default format
for load operations, the option is not actually necessary. For JSON saved with a
.txt
extension, however, it would be.
Exporting query results to Google Cloud Storage
The example below shows how to pass the table
option with a query in order to
store results in a permanent table. It also shows how to export the result data
to a Google Cloud Storage file. In order to follow along, you will need to
enable the Google Cloud Storage API in addition to setting up billing.
require "google/cloud/bigquery" bigquery = Google::Cloud::Bigquery.new dataset = bigquery.dataset "my_dataset" source_table = dataset.table "baby_names" result_table = dataset.create_table "baby_names_results" sql = "SELECT name, count " \ "FROM baby_names " \ "WHERE gender = 'M' " \ "ORDER BY count ASC LIMIT 5" query_job = dataset.query_job sql, table: result_table query_job.wait_until_done! if !query_job.failed? require "google/cloud/storage" storage = Google::Cloud::Storage.new bucket_id = "bigquery-exports-#{SecureRandom.uuid}" bucket = storage.create_bucket bucket_id extract_url = "gs://#{bucket.id}/baby-names.csv" result_table.extract extract_url # Download to local filesystem bucket.files.first.download "baby-names.csv" end
If a table you wish to export contains a large amount of data, you can pass a wildcard URI to export to multiple files (for sharding), or an array of URIs (for partitioning), or both. See Exporting Data for details.
Configuring retries and timeout
You can configure how many times API requests may be automatically retried. When
an API request fails, the response will be inspected to see if the request meets
criteria indicating that it may succeed on retry, such as 500
and 503
status
codes or a specific internal error code such as rateLimitExceeded
. If it meets
the criteria, the request will be retried after a delay. If another error
occurs, the delay will be increased before a subsequent attempt, until the
retries
limit is reached.
You can also set the request timeout
value in seconds.
require "google/cloud/bigquery" bigquery = Google::Cloud::Bigquery.new retries: 10, timeout: 120
See the BigQuery error table for a list of error conditions.
Additional information
Google BigQuery can be configured to use logging. To learn more, see the Logging guide.