The connector supports reading Google BigQuery tables into Spark's DataFrames, and writing DataFrames back into BigQuery. This is done by using the Spark SQL Data Source API to communicate with BigQuery.
The Storage API streams data in parallel directly from BigQuery via gRPC without using Google Cloud Storage as an intermediary.
It has a number of advantages over using the previous export-based read flow that should generally lead to better read performance:
It does not leave any temporary files in Google Cloud Storage. Rows are read directly from BigQuery servers using the Arrow or Avro wire formats.
The new API allows column and predicate filtering to only read the data you are interested in.
Since BigQuery is backed by a columnar datastore, it can efficiently stream data without reading all columns.
The Storage API supports arbitrary pushdown of predicate filters. Connector version 0.8.0-beta and above support pushdown of arbitrary filters to Bigquery.
There is a known issue in Spark that does not allow pushdown of filters on nested fields. For example - filters like address.city = "Sunnyvale"
will not get pushdown to Bigquery.
The API rebalances records between readers until they all complete. This means that all Map phases will finish nearly concurrently. See this blog article on how dynamic sharding is similarly used in Google Cloud Dataflow.
See Configuring Partitioning for more details.
Follow these instructions.
If you do not have an Apache Spark environment you can create a Cloud Dataproc cluster with pre-configured auth. The following examples assume you are using Cloud Dataproc, but you can use spark-submit
on any cluster.
Any Dataproc cluster using the API needs the 'bigquery' or 'cloud-platform' scopes. Dataproc clusters have the 'bigquery' scope by default, so most clusters in enabled projects should work by default e.g.
MY_CLUSTER=...
gcloud dataproc clusters create "$MY_CLUSTER"
The latest version of the connector is publicly available in the following links:
version | Link |
---|---|
Spark 3.4 | gs://spark-lib/bigquery/spark-3.4-bigquery-0.34.0.jar (HTTP link) |
Spark 3.3 | gs://spark-lib/bigquery/spark-3.3-bigquery-0.34.0.jar (HTTP link) |
Spark 3.2 | gs://spark-lib/bigquery/spark-3.2-bigquery-0.34.0.jar (HTTP link) |
Spark 3.1 | gs://spark-lib/bigquery/spark-3.1-bigquery-0.34.0.jar (HTTP link) |
Spark 2.4 | gs://spark-lib/bigquery/spark-2.4-bigquery-0.34.0.jar (HTTP link) |
Scala 2.13 | gs://spark-lib/bigquery/spark-bigquery-with-dependencies_2.13-0.34.0.jar (HTTP link) |
Scala 2.12 | gs://spark-lib/bigquery/spark-bigquery-with-dependencies_2.12-0.34.0.jar (HTTP link) |
Scala 2.11 | gs://spark-lib/bigquery/spark-bigquery-with-dependencies_2.11-0.29.0.jar (HTTP link) |
The first four versions are Java based connectors targeting Spark 2.4/3.1/3.2/3.3 of all Scala versions built on the new Data Source APIs (Data Source API v2) of Spark.
The final two connectors are Scala based connectors, please use the jar relevant to your Spark installation as outlined below.
Connector \ Spark | 2.3 | 2.4 | 3.0 | 3.1 | 3.2 | 3.3 | 3.4 |
---|---|---|---|---|---|---|---|
spark-3.4-bigquery | âś“ | ||||||
spark-3.3-bigquery | âś“ | âś“ | |||||
spark-3.2-bigquery | âś“ | âś“ | âś“ | ||||
spark-3.1-bigquery | âś“ | âś“ | âś“ | âś“ | |||
spark-2.4-bigquery | âś“ | ||||||
spark-bigquery-with-dependencies_2.13 | âś“ | âś“ | âś“ | ||||
spark-bigquery-with-dependencies_2.12 | âś“ | âś“ | âś“ | âś“ | âś“ | âś“ | |
spark-bigquery-with-dependencies_2.11 | âś“ | âś“ |
Connector \ Dataproc Image | 1.3 | 1.4 | 1.5 | 2.0 | 2.1 | Serverless Image 1.0 |
Serverless Image 2.0 |
Serverless Image 2.1 |
---|---|---|---|---|---|---|---|---|
spark-3.4-bigquery | âś“ | |||||||
spark-3.3-bigquery | âś“ | âś“ | âś“ | âś“ | ||||
spark-3.2-bigquery | âś“ | âś“ | âś“ | âś“ | ||||
spark-3.1-bigquery | âś“ | âś“ | âś“ | âś“ | âś“ | |||
spark-2.4-bigquery | âś“ | âś“ | ||||||
spark-bigquery-with-dependencies_2.13 | âś“ | âś“ | ||||||
spark-bigquery-with-dependencies_2.12 | âś“ | âś“ | âś“ | âś“ | ||||
spark-bigquery-with-dependencies_2.11 | âś“ | âś“ |
The connector is also available from the
Maven Central
repository. It can be used using the --packages
option or the
spark.jars.packages
configuration property. Use the following value
version | Connector Artifact |
---|---|
Spark 3.4 | com.google.cloud.spark:spark-3.4-bigquery:0.34.0 |
Spark 3.3 | com.google.cloud.spark:spark-3.3-bigquery:0.34.0 |
Spark 3.2 | com.google.cloud.spark:spark-3.2-bigquery:0.34.0 |
Spark 3.1 | com.google.cloud.spark:spark-3.1-bigquery:0.34.0 |
Spark 2.4 | com.google.cloud.spark:spark-2.4-bigquery:0.34.0 |
Scala 2.13 | com.google.cloud.spark:spark-bigquery-with-dependencies_2.13:0.34.0 |
Scala 2.12 | com.google.cloud.spark:spark-bigquery-with-dependencies_2.12:0.34.0 |
Scala 2.11 | com.google.cloud.spark:spark-bigquery-with-dependencies_2.11:0.29.0 |
Dataproc clusters created using image 2.1 and above, or batches using the Dataproc serverless service come with built-in Spark BigQuery connector.
Using the standard --jars
or --packages
(or alternatively, the spark.jars
/spark.jars.packages
configuration) won't help in this case as the built-in connector takes precedence.
To use another version than the built-in one, please do one of the following:
- For Dataproc clusters, using image 2.1 and above, add the following flag on cluster creation to upgrade the version
--metadata SPARK_BQ_CONNECTOR_VERSION=0.34.0
, or--metadata SPARK_BQ_CONNECTOR_URL=gs://spark-lib/bigquery/spark-3.3-bigquery-0.34.0.jar
to create the cluster with a different jar. The URL can point to any valid connector JAR for the cluster's Spark version. - For Dataproc serverless batches, add the following property on batch creation to upgrade the version:
--properties dataproc.sparkBqConnector.version=0.34.0
, or--properties dataproc.sparkBqConnector.uri=gs://spark-lib/bigquery/spark-3.3-bigquery-0.34.0.jar
to create the batch with a different jar. The URL can point to any valid connector JAR for the runtime's Spark version.
You can run a simple PySpark wordcount against the API without compilation by running
Dataproc image 1.5 and above
gcloud dataproc jobs submit pyspark --cluster "$MY_CLUSTER" \
--jars gs://spark-lib/bigquery/spark-bigquery-with-dependencies_2.12-0.34.0.jar \
examples/python/shakespeare.py
Dataproc image 1.4 and below
gcloud dataproc jobs submit pyspark --cluster "$MY_CLUSTER" \
--jars gs://spark-lib/bigquery/spark-bigquery-with-dependencies_2.11-0.29.0.jar \
examples/python/shakespeare.py
https://codelabs.developers.google.com/codelabs/pyspark-bigquery
The connector uses the cross language Spark SQL Data Source API:
df = spark.read \
.format("bigquery") \
.load("bigquery-public-data.samples.shakespeare")
or the Scala only implicit API:
import com.google.cloud.spark.bigquery._
val df = spark.read.bigquery("bigquery-public-data.samples.shakespeare")
For more information, see additional code samples in Python, Scala and Java.
The connector allows you to run any Standard SQL SELECT query on BigQuery and fetch its results directly to a Spark Dataframe. This is easily done as described in the following code sample:
spark.conf.set("viewsEnabled","true")
spark.conf.set("materializationDataset","<dataset>")
sql = """
SELECT tag, COUNT(*) c
FROM (
SELECT SPLIT(tags, '|') tags
FROM `bigquery-public-data.stackoverflow.posts_questions` a
WHERE EXTRACT(YEAR FROM creation_date)>=2014
), UNNEST(tags) tag
GROUP BY 1
ORDER BY 2 DESC
LIMIT 10
"""
df = spark.read.format("bigquery").load(sql)
df.show()
Which yields the result
+----------+-------+
| tag| c|
+----------+-------+
|javascript|1643617|
| python|1352904|
| java|1218220|
| android| 913638|
| php| 911806|
| c#| 905331|
| html| 769499|
| jquery| 608071|
| css| 510343|
| c++| 458938|
+----------+-------+
A second option is to use the query
option like this:
df = spark.read.format("bigquery").option("query", sql).load()
Notice that the execution should be faster as only the result is transmitted over the wire. In a similar fashion the queries can include JOINs more efficiently then running joins on Spark or use other BigQuery features such as subqueries, BigQuery user defined functions, wildcard tables, BigQuery ML and more.
In order to use this feature the following configurations MUST be set:
viewsEnabled
must be set totrue
.materializationDataset
must be set to a dataset where the GCP user has table creation permission.materializationProject
is optional.
Note: As mentioned in the BigQuery documentation,
the queried tables must be in the same location as the materializationDataset
.
Also, if the tables in the SQL statement
are from projects other than the
parentProject
then use the fully qualified table name i.e.
[project].[dataset].[table]
.
Important: This feature is implemented by running the query on BigQuery and saving the result into a temporary table, of which Spark will read the results from. This may add additional costs on your BigQuery account.
The connector has a preliminary support for reading from BigQuery views. Please note there are a few caveats:
- BigQuery views are not materialized by default, which means that the connector
needs to materialize them before it can read them. This process affects the
read performance, even before running any
collect()
orcount()
action. - The materialization process can also incur additional costs to your BigQuery bill.
- By default, the materialized views are created in the same project and
dataset. Those can be configured by the optional
materializationProject
andmaterializationDataset
options, respectively. These options can also be globally set by callingspark.conf.set(...)
before reading the views. - Reading from views is disabled by default. In order to enable it,
either set the viewsEnabled option when reading the specific view
(
.option("viewsEnabled", "true")
) or set it globally by callingspark.conf.set("viewsEnabled", "true")
. - As mentioned in the BigQuery documentation,
the
materializationDataset
should be in same location as the view.
Writing DataFrames to BigQuery can be done using two methods: Direct and Indirect.
In this method the data is written directly to BigQuery using the
BigQuery Storage Write API. In order to enable this option, please
set the writeMethod
option to direct
, as shown below:
df.write \
.format("bigquery") \
.option("writeMethod", "direct") \
.save("dataset.table")
Writing to existing partitioned tables (date partitioned, ingestion time partitioned and range
partitioned) in APPEND save mode and OVERWRITE mode (only date and range partitioned) is fully supported by the connector and the BigQuery Storage Write
API. The use of datePartition
, partitionField
, partitionType
, partitionRangeStart
, partitionRangeEnd
, partitionRangeInterval
described below is not supported at this moment by the direct write method.
Important: Please refer to the data ingestion pricing page regarding the BigQuery Storage Write API pricing.
Important: Please use version 0.24.2 and above for direct writes, as previous versions have a bug that may cause a table deletion in certain cases.
In this method the data is written first to GCS, and then it is loaded it to BigQuery. A GCS bucket must be configured to indicate the temporary data location.
df.write \
.format("bigquery") \
.option("temporaryGcsBucket","some-bucket") \
.save("dataset.table")
The data is temporarily stored using the Apache Parquet, Apache ORC or Apache Avro formats.
The GCS bucket and the format can also be set globally using Spark's RuntimeConfig like this:
spark.conf.set("temporaryGcsBucket","some-bucket")
df.write \
.format("bigquery") \
.save("dataset.table")
When streaming a DataFrame to BigQuery, each batch is written in the same manner as a non-streaming DataFrame.
Note that a HDFS compatible
checkpoint location
(eg: path/to/HDFS/dir
or gs://checkpoint-bucket/checkpointDir
) must be specified.
df.writeStream \
.format("bigquery") \
.option("temporaryGcsBucket","some-bucket") \
.option("checkpointLocation", "some-location") \
.option("table", "dataset.table")
Important: The connector does not configure the GCS connector, in order to avoid conflict with another GCS connector, if exists. In order to use the write capabilities of the connector, please configure the GCS connector on your cluster as explained here.
The API Supports a number of options to configure the read
<style> table#propertytable td, table th { word-break:break-word } </style>Property | Meaning | Usage |
---|---|---|
table
|
The BigQuery table in the format [[project:]dataset.]table .
It is recommended to use the path parameter of
load() /save() instead. This option has been
deprecated and will be removed in a future version.
(Deprecated) |
Read/Write |
dataset
|
The dataset containing the table. This option should be used with
standard table and views, but not when loading query results.
(Optional unless omitted in table )
|
Read/Write |
project
|
The Google Cloud Project ID of the table. This option should be used with
standard table and views, but not when loading query results.
(Optional. Defaults to the project of the Service Account being used) |
Read/Write |
parentProject
|
The Google Cloud Project ID of the table to bill for the export.
(Optional. Defaults to the project of the Service Account being used) |
Read/Write |
maxParallelism
|
The maximal number of partitions to split the data into. Actual number
may be less if BigQuery deems the data small enough. If there are not
enough executors to schedule a reader per partition, some partitions may
be empty.
Important: The old parameter ( parallelism ) is
still supported but in deprecated mode. It will ve removed in
version 1.0 of the connector.
(Optional. Defaults to the larger of the preferredMinParallelism and 20,000).) |
Read |
preferredMinParallelism
|
The preferred minimal number of partitions to split the data into. Actual number
may be less if BigQuery deems the data small enough. If there are not
enough executors to schedule a reader per partition, some partitions may
be empty.
(Optional. Defaults to the smallest of 3 times the application's default parallelism and maxParallelism.) |
Read |
viewsEnabled
|
Enables the connector to read from views and not only tables. Please read
the relevant section before activating
this option.
(Optional. Defaults to false )
|
Read |
materializationProject
|
The project id where the materialized view is going to be created
(Optional. Defaults to view's project id) |
Read |
materializationDataset
|
The dataset where the materialized view is going to be created. This
dataset should be in same location as the view or the queried tables.
(Optional. Defaults to view's dataset) |
Read |
materializationExpirationTimeInMinutes
|
The expiration time of the temporary table holding the materialized data
of a view or a query, in minutes. Notice that the connector may re-use
the temporary table due to the use of local cache and in order to reduce
BigQuery computation, so very low values may cause errors. The value must
be a positive integer.
(Optional. Defaults to 1440, or 24 hours) |
Read |
readDataFormat
|
Data Format for reading from BigQuery. Options : ARROW , AVRO
Unsupported Arrow filters are not pushed down and results are filtered later by Spark.
(Currently Arrow does not suport disjunction across columns).
(Optional. Defaults to ARROW )
|
Read |
optimizedEmptyProjection
|
The connector uses an optimized empty projection (select without any
columns) logic, used for count() execution. This logic takes
the data directly from the table metadata or performs a much efficient
`SELECT COUNT(*) WHERE...` in case there is a filter. You can cancel the
use of this logic by setting this option to false .
(Optional, defaults to true )
|
Read |
pushAllFilters
|
If set to true , the connector pushes all the filters Spark can delegate
to BigQuery Storage API. This reduces amount of data that needs to be sent from
BigQuery Storage API servers to Spark clients.
(Optional, defaults to true )
|
Read |
bigQueryJobLabel
|
Can be used to add labels to the connector initiated query and load
BigQuery jobs. Multiple labels can be set.
(Optional) |
Read |
bigQueryTableLabel
|
Can be used to add labels to the table while writing to a table. Multiple
labels can be set.
(Optional) |
Write |
traceApplicationName
|
Application name used to trace BigQuery Storage read and write sessions.
Setting the application name is required to set the trace ID on the
sessions.
(Optional) |
Read |
traceJobId
|
Job ID used to trace BigQuery Storage read and write sessions.
(Optional, defaults to the Dataproc job ID is exists, otherwise uses the Spark application ID) |
Read |
createDisposition
|
Specifies whether the job is allowed to create new tables. The permitted
values are:
(Optional. Default to CREATE_IF_NEEDED). |
Write |
writeMethod
|
Controls the method
in which the data is written to BigQuery. Available values are direct
to use the BigQuery Storage Write API and indirect which writes the
data first to GCS and then triggers a BigQuery load operation. See more
here
(Optional, defaults to indirect )
|
Write |
writeAtLeastOnce
|
Guarantees that data is written to BigQuery at least once. This is a lesser
guarantee than exactly once. This is suitable for streaming scenarios
in which data is continuously being written in small batches.
(Optional. Defaults to false )
Supported only by the `DIRECT` write method and mode is NOT `Overwrite`. |
Write |
temporaryGcsBucket
|
The GCS bucket that temporarily holds the data before it is loaded to
BigQuery. Required unless set in the Spark configuration
(spark.conf.set(...) ).
Not supported by the `DIRECT` write method. |
Write |
persistentGcsBucket
|
The GCS bucket that holds the data before it is loaded to
BigQuery. If informed, the data won't be deleted after write data
into BigQuery.
Not supported by the `DIRECT` write method. |
Write |
persistentGcsPath
|
The GCS path that holds the data before it is loaded to
BigQuery. Used only with persistentGcsBucket .
Not supported by the `DIRECT` write method. |
Write |
intermediateFormat
|
The format of the data before it is loaded to BigQuery, values can be
either "parquet","orc" or "avro". In order to use the Avro format, the
spark-avro package must be added in runtime.
(Optional. Defaults to parquet ). On write only. Supported only for the `INDIRECT` write method.
|
Write |
useAvroLogicalTypes
|
When loading from Avro (`.option("intermediateFormat", "avro")`), BigQuery uses the underlying Avro types instead of the logical types [by default](https://cloud.google.com/bigquery/docs/loading-data-cloud-storage-avro#logical_types). Supplying this option converts Avro logical types to their corresponding BigQuery data types.
(Optional. Defaults to false ). On write only.
|
Write |
datePartition
|
The date partition the data is going to be written to. Should be a date string
given in the format YYYYMMDD . Can be used to overwrite the data of
a single partition, like this:
(Optional). On write only. Can also be used with different partition types like: HOUR: YYYYMMDDHH
MONTH: YYYYMM
YEAR: YYYY
Not supported by the `DIRECT` write method. |
Write |
partitionField
|
If this field is specified, the table is partitioned by this field.
For Time partitioning, specify together with the option `partitionType`. For Integer-range partitioning, specify together with the 3 options: `partitionRangeStart`, `partitionRangeEnd, `partitionRangeInterval`. The field must be a top-level TIMESTAMP or DATE field for Time partitioning, or INT64 for Integer-range partitioning. Its mode must be NULLABLE or REQUIRED. If the option is not set for a Time partitioned table, then the table will be partitioned by pseudo column, referenced via either '_PARTITIONTIME' as TIMESTAMP type, or
'_PARTITIONDATE' as DATE type.
(Optional). Not supported by the `DIRECT` write method. |
Write |
partitionExpirationMs
|
Number of milliseconds for which to keep the storage for partitions in the table.
The storage in a partition will have an expiration time of its partition time plus this value.
(Optional). Not supported by the `DIRECT` write method. |
Write |
partitionType
|
Used to specify Time partitioning.
Supported types are: HOUR, DAY, MONTH, YEAR
This option is mandatory for a target table to be Time partitioned. (Optional. Defaults to DAY if PartitionField is specified). Not supported by the `DIRECT` write method. |
Write |
partitionRangeStart ,
partitionRangeEnd ,
partitionRangeInterval
|
Used to specify Integer-range partitioning.
These options are mandatory for a target table to be Integer-range partitioned. All 3 options must be specified. Not supported by the `DIRECT` write method. |
Write |
clusteredFields
|
A string of non-repeated, top level columns seperated by comma.
(Optional). |
Write |
allowFieldAddition
|
Adds the ALLOW_FIELD_ADDITION
SchemaUpdateOption to the BigQuery LoadJob. Allowed values are true and false .
(Optional. Default to false ).
Supported only by the `INDIRECT` write method. |
Write |
allowFieldRelaxation
|
Adds the ALLOW_FIELD_RELAXATION
SchemaUpdateOption to the BigQuery LoadJob. Allowed values are true and false .
(Optional. Default to false ).
Supported only by the `INDIRECT` write method. |
Write |
proxyAddress
|
Address of the proxy server. The proxy must be a HTTP proxy and address should be in the `host:port` format.
Can be alternatively set in the Spark configuration (spark.conf.set(...) ) or in Hadoop
Configuration (fs.gs.proxy.address ).
(Optional. Required only if connecting to GCP via proxy.) |
Read/Write |
proxyUsername
|
The userName used to connect to the proxy. Can be alternatively set in the Spark configuration
(spark.conf.set(...) ) or in Hadoop Configuration (fs.gs.proxy.username ).
(Optional. Required only if connecting to GCP via proxy with authentication.) |
Read/Write |
proxyPassword
|
The password used to connect to the proxy. Can be alternatively set in the Spark configuration
(spark.conf.set(...) ) or in Hadoop Configuration (fs.gs.proxy.password ).
(Optional. Required only if connecting to GCP via proxy with authentication.) |
Read/Write |
httpMaxRetry
|
The maximum number of retries for the low-level HTTP requests to BigQuery. Can be alternatively set in the
Spark configuration (spark.conf.set("httpMaxRetry", ...) ) or in Hadoop Configuration
(fs.gs.http.max.retry ).
(Optional. Default is 10) |
Read/Write |
httpConnectTimeout
|
The timeout in milliseconds to establish a connection with BigQuery. Can be alternatively set in the
Spark configuration (spark.conf.set("httpConnectTimeout", ...) ) or in Hadoop Configuration
(fs.gs.http.connect-timeout ).
(Optional. Default is 60000 ms. 0 for an infinite timeout, a negative number for 20000) |
Read/Write |
httpReadTimeout
|
The timeout in milliseconds to read data from an established connection. Can be alternatively set in the
Spark configuration (spark.conf.set("httpReadTimeout", ...) ) or in Hadoop Configuration
(fs.gs.http.read-timeout ).
(Optional. Default is 60000 ms. 0 for an infinite timeout, a negative number for 20000) |
Read |
arrowCompressionCodec
|
Compression codec while reading from a BigQuery table when using Arrow format. Options :
ZSTD (Zstandard compression) ,
LZ4_FRAME (https://github.com/lz4/lz4/blob/dev/doc/lz4_Frame_format.md) ,
COMPRESSION_UNSPECIFIED . The recommended compression codec is ZSTD
while using Java.
(Optional. Defaults to COMPRESSION_UNSPECIFIED which means no compression will be used)
|
Read |
cacheExpirationTimeInMinutes
|
The expiration time of the in-memory cache storing query information.
To disable caching, set the value to 0. (Optional. Defaults to 15 minutes) |
Read |
enableModeCheckForSchemaFields
|
Checks the mode of every field in destination schema to be equal to the mode in corresponding source field schema, during DIRECT write.
Default value is true i.e., the check is done by default. If set to false the mode check is ignored. |
Write |
enableListInference
|
Indicates whether to use schema inference specifically when the mode is Parquet (https://cloud.google.com/bigquery/docs/reference/rest/v2/tables#parquetoptions).
Defaults to false. |
Write |
bqChannelPoolSize |
The (fixed) size of the gRPC channel pool created by the BigQueryReadClient.
For optimal performance, this should be set to at least the number of cores on the cluster executors. |
Read |
createReadSessionTimeoutInSeconds
|
The timeout in seconds to create a ReadSession when reading a table.
For Extremely large table this value should be increased. (Optional. Defaults to 600 seconds) |
Read |
datetimeZoneId
|
The time zone ID used to convert BigQuery's
DATETIME
into Spark's Timestamp, and vice versa.
The value should be a legal time zone name, that appears is accepted by Java's java.time.ZoneId . The full list can be
seen by running java.time.ZoneId.getAvailableZoneIds() in Java/Scala, or
sc._jvm.java.time.ZoneId.getAvailableZoneIds() in pyspark.
(Optional. Defaults to UTC )
|
Read/Write |
queryJobPriority
|
Priority levels set for the job while reading data from BigQuery query. The permitted values are:
(Optional. Defaults to INTERACTIVE )
|
Read/Write |
destinationTableKmsKeyName
|
Describes the Cloud KMS encryption key that will be used to protect destination BigQuery
table. The BigQuery Service Account associated with your project requires access to this
encryption key. for further Information about using CMEK with BigQuery see
[here](https://cloud.google.com/bigquery/docs/customer-managed-encryption#key_resource_id).
Notice: The table will be encrypted by the key only if it created by the connector. A pre-existing unencrypted table won't be encrypted just by setting this option. (Optional) |
Write |
allowMapTypeConversion
|
Boolean config to disable conversion from BigQuery records to Spark MapType
when the record has two subfields with field names as key and value .
Default value is true which allows the conversion.
(Optional) |
Read |
spark.sql.sources.partitionOverwriteMode
|
Config to specify the overwrite mode on write when the table is range/time partitioned.
Currently supportd two modes : STATIC and DYNAMIC . In STATIC mode,
the entire table is overwritten. In DYNAMIC mode, the data is overwritten by partitions of the existing table.
The default value is STATIC .
(Optional) |
Write |
enableReadSessionCaching
|
Boolean config to disable read session caching. Caches BigQuery read sessions to allow for faster Spark query planning.
Default value is true .
(Optional) |
Read |
Options can also be set outside of the code, using the --conf
parameter of spark-submit
or --properties
parameter
of the gcloud dataproc submit spark
. In order to use this, prepend the prefix spark.datasource.bigquery.
to any of
the options, for example spark.conf.set("temporaryGcsBucket", "some-bucket")
can also be set as
--conf spark.datasource.bigquery.temporaryGcsBucket=some-bucket
.
With the exception of DATETIME
and TIME
all BigQuery data types directed map into the corresponding Spark SQL data type. Here are all of the mappings:
BigQuery Standard SQL Data Type | Spark SQL
Data Type |
Notes |
BOOL
|
BooleanType
|
|
INT64
|
LongType
|
|
FLOAT64
|
DoubleType
|
|
NUMERIC
|
DecimalType
|
Please refer to Numeric and BigNumeric support |
BIGNUMERIC
|
DecimalType
|
Please refer to Numeric and BigNumeric support |
STRING
|
StringType
|
|
BYTES
|
BinaryType
|
|
STRUCT
|
StructType
|
|
ARRAY
|
ArrayType
|
|
TIMESTAMP
|
TimestampType
|
|
DATE
|
DateType
|
|
DATETIME
|
StringType
|
Spark has no DATETIME type. |
TIME
|
LongType , StringType *
|
Spark has no TIME type. The generated longs, which indicate microseconds since midnight can be safely cast to TimestampType, but this causes the date to be inferred as the current day. Thus times are left as longs and user can cast if they like.
When casting to Timestamp TIME have the same TimeZone issues as DATETIME * Spark string can be written to an existing BQ TIME column provided it is in the format for BQ TIME literals. |
JSON
|
StringType
|
Spark has no JSON type. The values are read as String. In order to write JSON back to BigQuery, the following conditions are REQUIRED:
|
ARRAY<STRUCT<key,value>>
|
MapType
|
BigQuery has no MAP type, therefore similar to other conversions like Apache Avro and BigQuery Load jobs, the connector converts a Spark Map to a REPEATED STRUCT<key,value>.
This means that while writing and reading of maps is available, running a SQL on BigQuery that uses map semantics is not supported.
To refer to the map's values using BigQuery SQL, please check the BigQuery documentation.
Due to these incompatibilities, a few restrictions apply:
|
The Spark ML Vector and Matrix are supported, including their dense and sparse versions. The data is saved as a BigQuery RECORD. Notice that a suffix is added to the field's description which includes the spark type of the field.
In order to write those types to BigQuery, use the ORC or Avro intermediate format, and have them as column of the Row (i.e. not a field in a struct).
BigQuery's BigNumeric has a precision of 76.76 (the 77th digit is partial) and scale of 38. Since this precision and scale is beyond spark's DecimalType (38 scale and 38 precision) support, it means that BigNumeric fields with precision larger than 38 cannot be used. Once this Spark limitation will be updated the connector will be updated accordingly.
The Spark Decimal/BigQuery Numeric conversion tries to preserve the parameterization of the type, i.e
NUMERIC(10,2)
will be converted to Decimal(10,2)
and vice versa. Notice however that there are
cases where the parameters are lost.
This means that the parameters will be reverted to the defaults - NUMERIC (38,9) and BIGNUMERIC(76,38).
This means that at the moment, BigNumeric read is supported only from a standard table, but not from
BigQuery view or when reading data from a BigQuery query.
The connector automatically computes column and pushdown filters the DataFrame's SELECT
statement e.g.
spark.read.bigquery("bigquery-public-data:samples.shakespeare")
.select("word")
.where("word = 'Hamlet' or word = 'Claudius'")
.collect()
filters to the column word
and pushed down the predicate filter word = 'hamlet' or word = 'Claudius'
.
If you do not wish to make multiple read requests to BigQuery, you can cache the DataFrame before filtering e.g.:
val cachedDF = spark.read.bigquery("bigquery-public-data:samples.shakespeare").cache()
val rows = cachedDF.select("word")
.where("word = 'Hamlet'")
.collect()
// All of the table was cached and this doesn't require an API call
val otherRows = cachedDF.select("word_count")
.where("word = 'Romeo'")
.collect()
You can also manually specify the filter
option, which will override automatic pushdown and Spark will do the rest of the filtering in the client.
The pseudo columns _PARTITIONDATE and _PARTITIONTIME are not part of the table schema. Therefore in order to query by the partitions of partitioned tables do not use the where() method shown above. Instead, add a filter option in the following manner:
val df = spark.read.format("bigquery")
.option("filter", "_PARTITIONDATE > '2019-01-01'")
...
.load(TABLE)
By default the connector creates one partition per 400MB in the table being read (before filtering). This should roughly correspond to the maximum number of readers supported by the BigQuery Storage API.
This can be configured explicitly with the maxParallelism
property. BigQuery may limit the number of partitions based on server constraints.
In order to support tracking the usage of BigQuery resources the connectors offers the following options to tag BigQuery resources:
The connector can launch BigQuery load and query jobs. Adding labels to the jobs is done in the following manner:
spark.conf.set("bigQueryJobLabel.cost_center", "analytics")
spark.conf.set("bigQueryJobLabel.usage", "nightly_etl")
This will create labels cost_center
=analytics
and usage
=nightly_etl
.
Used to annotate the read and write sessions. The trace ID is of the format
Spark:ApplicationName:JobID
. This is an opt-in option, and to use it the user
need to set the traceApplicationName
property. JobID is auto generated by the
Dataproc job ID, with a fallback to the Spark application ID (such as
application_1648082975639_0001
). The Job ID can be overridden by setting the
traceJobId
option. Notice that the total length of the trace ID cannot be over
256 characters.
The connector can be used in Jupyter notebooks even if it is not installed on the Spark cluster. It can be added as an external jar in using the following code:
Python:
from pyspark.sql import SparkSession
spark = SparkSession.builder \
.config("spark.jars.packages", "com.google.cloud.spark:spark-bigquery-with-dependencies_2.12:0.34.0") \
.getOrCreate()
df = spark.read.format("bigquery") \
.load("dataset.table")
Scala:
val spark = SparkSession.builder
.config("spark.jars.packages", "com.google.cloud.spark:spark-bigquery-with-dependencies_2.12:0.34.0")
.getOrCreate()
val df = spark.read.format("bigquery")
.load("dataset.table")
In case Spark cluster is using Scala 2.12 (it's optional for Spark 2.4.x, mandatory in 3.0.x), then the relevant package is com.google.cloud.spark:spark-bigquery-with-dependencies_2.12:0.34.0. In order to know which Scala version is used, please run the following code:
Python:
spark.sparkContext._jvm.scala.util.Properties.versionString()
Scala:
scala.util.Properties.versionString
Unless you wish to use the implicit Scala API spark.read.bigquery("TABLE_ID")
, there is no need to compile against the connector.
To include the connector in your project:
<dependency>
<groupId>com.google.cloud.spark</groupId>
<artifactId>spark-bigquery-with-dependencies_${scala.version}</artifactId>
<version>0.34.0</version>
</dependency>
libraryDependencies += "com.google.cloud.spark" %% "spark-bigquery-with-dependencies" % "0.34.0"
Spark populates a lot of metrics which can be found by the end user in the spark history page. But all these metrics are spark related which are implicitly collected without any change from the connector. But there are few metrics which are populated from the BigQuery and currently are visible in the application logs which can be read in the driver/executor logs.
From Spark 3.2 onwards, spark has provided the API to expose custom metrics in the spark UI page https://spark.apache.org/docs/3.2.0/api/java/org/apache/spark/sql/connector/metric/CustomMetric.html
Currently, using this API, connector exposes the following bigquery metrics during read
<style> table#metricstable td, table th { word-break:break-word } </style>Metric Name | Description |
---|---|
bytes read |
number of BigQuery bytes read |
rows read |
number of BigQuery rows read |
scan time |
the amount of time spent between read rows response requested to obtained across all the executors, in milliseconds. |
parse time |
the amount of time spent for parsing the rows read across all the executors, in milliseconds. |
spark time |
the amount of time spent in spark to process the queries (i.e., apart from scanning and parsing), across all the executors, in milliseconds. |
Note: To use the metrics in the Spark UI page, you need to make sure the spark-bigquery-metrics-0.34.0.jar
is the class path before starting the history-server and the connector version is spark-3.2
or above.
See the BigQuery pricing documentation.
You can manually set the number of partitions with the maxParallelism
property. BigQuery may provide fewer partitions than you ask for. See Configuring Partitioning.
You can also always repartition after reading in Spark.
If there are too many partitions the CreateWriteStream or Throughput quotas
may be exceeded. This occurs because while the data within each partition is processed serially, independent
partitions may be processed in parallel on different nodes within the spark cluster. Generally, to ensure maximum
sustained throughput you should file a quota increase request. However, you can also manually reduce the number of
partitions being written by calling coalesce
on the DataFrame to mitigate this problem.
desiredPartitionCount = 5
dfNew = df.coalesce(desiredPartitionCount)
dfNew.write
A rule of thumb is to have a single partition handle at least 1GB of data.
Also note that a job running with the writeAtLeastOnce
property turned on will not encounter CreateWriteStream
quota errors.
The connector needs an instance of a GoogleCredentials in order to connect to the BigQuery APIs. There are multiple options to provide it:
- The default is to load the JSON key from the
GOOGLE_APPLICATION_CREDENTIALS
environment variable, as described here. - In case the environment variable cannot be changed, the credentials file can be configured as as a spark option. The file should reside on the same path on all the nodes of the cluster.
// Globally
spark.conf.set("credentialsFile", "</path/to/key/file>")
// Per read/Write
spark.read.format("bigquery").option("credentialsFile", "</path/to/key/file>")
- Credentials can also be provided explicitly, either as a parameter or from Spark runtime configuration. They should be passed in as a base64-encoded string directly.
// Globally
spark.conf.set("credentials", "<SERVICE_ACCOUNT_JSON_IN_BASE64>")
// Per read/Write
spark.read.format("bigquery").option("credentials", "<SERVICE_ACCOUNT_JSON_IN_BASE64>")
- In cases where the user has an internal service providing the Google AccessToken, a custom implementation
can be done, creating only the AccessToken and providing its TTL. Token refresh will re-generate a new token. In order
to use this, implement the
com.google.cloud.bigquery.connector.common.AccessTokenProvider
interface. The fully qualified class name of the implementation should be provided in the
gcpAccessTokenProvider
option.AccessTokenProvider
must be implemented in Java or other JVM language such as Scala or Kotlin. It must either have a no-arg constructor or a constructor accepting a singlejava.util.String
argument. This configuration parameter can be supplied using thegcpAccessTokenProviderConfig
option. If this is not provided then the no-arg constructor wil be called. The jar containing the implementation should be on the cluster's classpath.
// Globally
spark.conf.set("gcpAccessTokenProvider", "com.example.ExampleAccessTokenProvider")
// Per read/Write
spark.read.format("bigquery").option("gcpAccessTokenProvider", "com.example.ExampleAccessTokenProvider")
-
Service account impersonation can be configured for a specific username and a group name, or for all users by default using below properties:
-
gcpImpersonationServiceAccountForUser_<USER_NAME>
(not set by default)The service account impersonation for a specific user.
-
gcpImpersonationServiceAccountForGroup_<GROUP_NAME>
(not set by default)The service account impersonation for a specific group.
-
gcpImpersonationServiceAccount
(not set by default)Default service account impersonation for all users.
If any of the above properties are set then the service account specified will be impersonated by generating a short-lived credentials when accessing BigQuery.
If more than one property is set then the service account associated with the username will take precedence over the service account associated with the group name for a matching user and group, which in turn will take precedence over default service account impersonation.
-
-
For a simpler application, where access token refresh is not required, another alternative is to pass the access token as the
gcpAccessToken
configuration option. You can get the access token by runninggcloud auth application-default print-access-token
.
// Globally
spark.conf.set("gcpAccessToken", "<access-token>")
// Per read/Write
spark.read.format("bigquery").option("gcpAccessToken", "<acccess-token>")
Important: The CredentialsProvider
and AccessTokenProvider
need to be implemented in Java or
other JVM language such as Scala or Kotlin. The jar containing the implementation should be on the cluster's classpath.
Notice: Only one of the above options should be provided.
To connect to a forward proxy and to authenticate the user credentials, configure the following options.
proxyAddress
: Address of the proxy server. The proxy must be an HTTP proxy and address should be in the host:port
format.
proxyUsername
: The userName used to connect to the proxy.
proxyPassword
: The password used to connect to the proxy.
val df = spark.read.format("bigquery")
.option("proxyAddress", "http://my-proxy:1234")
.option("proxyUsername", "my-username")
.option("proxyPassword", "my-password")
.load("some-table")
The same proxy parameters can also be set globally using Spark's RuntimeConfig like this:
spark.conf.set("proxyAddress", "http://my-proxy:1234")
spark.conf.set("proxyUsername", "my-username")
spark.conf.set("proxyPassword", "my-password")
val df = spark.read.format("bigquery")
.load("some-table")
You can set the following in the hadoop configuration as well.
fs.gs.proxy.address
(similar to "proxyAddress"), fs.gs.proxy.username
(similar to "proxyUsername") and
fs.gs.proxy.password
(similar to "proxyPassword").
If the same parameter is set at multiple places the order of priority is as follows:
option("key", "value") > spark.conf > hadoop configuration