A connector tool to extract data from SQL databases and import into GCS using Apache Beam.
This tool is runnable locally, or on any other backend supported by Apache Beam, e.g. Cloud Dataflow.
DEVELOPMENT STATUS: Mature, maintained and used in production since August 2017. No major features or development planned.
DBeam is tool based that reads all the data from single SQL database table, converts the data into Avro and stores it into appointed location, usually in GCS. It runs as a single threaded Apache Beam pipeline.
DBeam requires the database credentials, the database table name to read, and the output location to store the extracted data into. DBeam first makes a single select into the target table with limit one to infer the table schema. After the schema is created the job will be launched which simply streams the table contents via JDBC into target location as Avro.
Generated Avro Schema Type Conversion Details
- Supports both PostgreSQL and MySQL JDBC connectors
- Supports Google CloudSQL managed databases
- Currently output only to Avro format
- Reads database from an external password file (
--passwordFile
) or an external KMS encrypted password file (--passwordFileKmsEncrypted
) - Can filter only records of the current day with the
--partitionColumn
parameter - Check and fail on too old partition dates. Snapshot dumps are not filtered by a given date/partition, when running for a too old partition, the job fails to avoid new data in old partitions. (can be disabled with
--skipPartitionCheck
) - Implemented as Apache Beam SDK pipeline, supporting any of its runners (tested with
DirectRunner
andDataflowRunner
)
com.spotify.dbeam.options.DBeamPipelineOptions:
--connectionUrl=<String>
The JDBC connection url to perform the export.
--password=<String>
Plaintext password used by JDBC connection.
--passwordFile=<String>
A path to a file containing the database password.
--passwordFileKmsEncrypted=<String>
A path to a file containing the database password, KMS encrypted and base64
encoded.
--sqlFile=<String>
A path to a file containing a SQL query (used instead of --table parameter).
--table=<String>
The database table to query and perform the export.
--username=<String>
Default: dbeam-extractor
The database user name used by JDBC to authenticate.
com.spotify.dbeam.options.OutputOptions:
--output=<String>
The path for storing the output.
--dataOnly=<Boolean>
Default: false
Store only the data files in output folder, skip queries, metrics and
metadata files.
com.spotify.dbeam.options.JdbcExportPipelineOptions:
Configures the DBeam SQL export
--avroCodec=<String>
Default: deflate6
Avro codec (e.g. deflate6, deflate9, snappy).
--avroDoc=<String>
The top-level record doc string of the generated avro schema.
--avroSchemaFilePath=<String>
Path to file with a target AVRO schema.
--avroSchemaName=<String>
The name of the generated avro schema, the table name by default.
--avroSchemaNamespace=<String>
Default: dbeam_generated
The namespace of the generated avro schema.
--exportTimeout=<String>
Default: P7D
Export timeout, after this duration the job is cancelled and the export
terminated.
--fetchSize=<Integer>
Default: 10000
Configures JDBC Statement fetch size.
--limit=<Long>
Limit the output number of rows, indefinite by default.
--minPartitionPeriod=<String>
The minimum partition required for the job not to fail (when partition
column is not specified),by default `now() - 2*partitionPeriod`.
--minRows=<Long>
Default: -1
Check that the output has at least this minimum number of rows. Otherwise
fail the job.
--partition=<String>
The date/timestamp of the current partition.
--partitionColumn=<String>
The name of a date/timestamp column to filter data based on current
partition.
--partitionPeriod=<String>
The period frequency which the export runs, used to filter based on current
partition and also to check if exports are running for too old partitions.
--preCommand=<List>
SQL commands to be executed before query.
--queryParallelism=<Integer>
Max number of queries to run in parallel for exports. Single query used if
nothing specified. Should be used with splitColumn.
--skipPartitionCheck=<Boolean>
Default: false
When partition column is not specified, fails if partition is too old; set
this flag to ignore this check.
--splitColumn=<String>
A long/integer column used to create splits for parallel queries. Should be
used with queryParallelism.
--useAvroLogicalTypes=<Boolean>
Default: false
Controls whether generated Avro schema will contain logicalTypes or not.
If provided an input Avro schema file, dbeam will read input schema file and use some of the properties when an output Avro schema is created.
record.doc
record.namespace
record.field.doc
This is a pre-alpha feature currently under development and experimentation.
Read queries used by dbeam to extract data generally don't place any locks, and hence multiple read queries
can run in parallel. When running in parallel mode with --queryParallelism
specified, dbeam looks for
--splitColumn
argument to find the max and min values in that column. The max and min are then used
as range bounds for generating queryParallelism
number of queries which are then run in parallel to read data.
Since the splitColumn is used to calculate the query bounds, and dbeam needs to calculate intermediate
bounds for each query, the type of the column must be long / int. It is assumed that the distribution of values on the splitColumn
is sufficiently random and sequential. Example if the min and max of the split column is divided equally into query parallelism parts, each part would contain approximately equal number of records. Having skews in this data would result in straggling queries, and hence wont provide much improvement. Having the records sequential would help in having the queries run faster and it would reduce random disk seeks.
Recommended usage:
Beam would run each query generated by DBeam in 1 dedicated vCPU (when running with Dataflow Runner), thus for best performance it is recommended that the total number of vCPU available for a given job should be equal to the queryParallelism
specified. Hence if workerMachineType
for Dataflow is n1-standard-w
and numWorkers
is n
then queryParallelism
q
should be a multiple of n*w
and the job would be fastest if q = n * w
.
For an export of a table running from a dedicated PostgresQL replica, we have seen best performance over vCPU time and wall time when having a queryParallelism
of 16. Bumping queryParallelism
further increases the vCPU time without offering much gains on the wall time of the complete export. It is probably good to use queryParallelism
less than 16 for experimenting.
Building and testing can be achieved with mvn
:
mvn verify
In order to create a jar with all dependencies under ./dbeam-core/target/dbeam-core-shaded.jar
run the following:
mvn clean package -Ppack
Using Java from the command line:
java -cp ./dbeam-core/target/dbeam-core-shaded.jar \
com.spotify.dbeam.jobs.JdbcAvroJob \
--output=gs://my-testing-bucket-name/ \
--username=my_database_username \
--password=secret \
--connectionUrl=jdbc:postgresql://some.database.uri.example.org:5432/my_database \
--table=my_table
For CloudSQL:
java -cp ./dbeam-core/target/dbeam-core-shaded.jar \
com.spotify.dbeam.jobs.JdbcAvroJob \
--output=gs://my-testing-bucket-name/ \
--username=my_database_username \
--password=secret \
--connectionUrl=jdbc:postgresql://google/database?socketFactory=com.google.cloud.sql.postgres.SocketFactory&socketFactoryArg=project:region:cloudsql-instance \
--table=my_table
- When using MySQL:
--connectionUrl=jdbc:mysql://google/database?socketFactory=com.google.cloud.sql.mysql.SocketFactory&cloudSqlInstance=project:region:cloudsql-instance&useCursorFetch=true
- Note
?useCursorFetch=true
is important for MySQL, to avoid early fetching all rows, more details on MySQL docs. - More details can be found at CloudSQL JDBC SocketFactory
To run a cheap data extraction, as a way to validate, one can add --limit=10 --skipPartitionCheck
parameters. It will run the queries, generate the schemas and export only 10 records, which should be done in a few seconds.
Database password can be configured by simply passing --password=writepasswordhere
, --passwordFile=/path/to/file/containing/password
or --passwordFile=gs://gcs-bucket/path/to/file/containing/password
.
A more robust configuration is to point to a Google KMS encrypted file.
DBeam will try to decrypt using KMS if the file ends with .encrypted
(e.g. --passwordFileKmsEncrypted=gs://gcs-bucket/path/to/db-password.encrypted
).
The file should contain a base64 encoded encrypted content.
It can be generated using gcloud
like the following:
echo -n "super_secret_password" \
| gcloud kms encrypt \
--location "global" \
--keyring "dbeam" \
--key "default" \
--project "mygcpproject" \
--plaintext-file - \
--ciphertext-file - \
| base64 \
| gsutil cp - gs://gcs-bucket/path/to/db-password.encrypted
KMS location, keyring, and key can be configured via Java Properties, defaults are:
java \
-DKMS_KEYRING=dbeam \
-DKMS_KEY=default \
-DKMS_LOCATION=global \
-DKMS_PROJECT=default_gcp_project \
-cp ./dbeam-core/target/dbeam-core-shaded.jar \
com.spotify.dbeam.jobs.JdbcAvroJob \
...
To include DBeam library in a mvn project add the following dependency in pom.xml
:
<dependency>
<groupId>com.spotify</groupId>
<artifactId>dbeam-core</artifactId>
<version>${dbeam.version}</version>
</dependency>
To include DBeam library in a SBT project add the following dependency in build.sbt
:
libraryDependencies ++= Seq(
"com.spotify" % "dbeam-core" % dbeamVersion
)
Make sure you have mvn installed. For editor, IntelliJ IDEA is recommended.
To test and verify changes during development, run:
mvn verify
Or:
mvn verify -Pcoverage
This project adheres to the Open Code of Conduct. By participating, you are expected to honor this code.
Every push to master will deploy a snapshot version to Sonatype. You can check the deployment in the following links:
- https://github.com/spotify/dbeam/actions
- https://oss.sonatype.org/#nexus-search;quick~dbeam-core
DBeam is mature, maintained and used in production since August 2017. No major features or development planned. Like Redis/Redict, DBeam can be considered a finished product.
It can be maintained for decades to come with minimal effort. It can continue to provide a high amount of value for a low amount of labor.
Copyright 2016-2022 Spotify AB.
Licensed under the Apache License, Version 2.0: http://www.apache.org/licenses/LICENSE-2.0