Chapter 6. Configuring persistent storage
Data Grid uses cache stores and loaders to interact with persistent storage.
- Durability
- Adding cache stores allows you to persist data to non-volatile storage so it survives restarts.
- Write-through caching
- Configuring Data Grid as a caching layer in front of persistent storage simplifies data access for applications because Data Grid handles all interactions with the external storage.
- Data overflow
- Using eviction and passivation techniques ensures that Data Grid keeps only frequently used data in-memory and writes older entries to persistent storage.
6.1. Passivation
Passivation configures Data Grid to write entries to cache stores when it evicts those entries from memory. In this way, passivation ensures that only a single copy of an entry is maintained, either in-memory or in a cache store, which prevents unnecessary and potentially expensive writes to persistent storage.
Activation is the process of restoring entries to memory from the cache store when there is an attempt to access passivated entries. For this reason, when you enable passivation, you must configure cache stores that implement both CacheWriter
and CacheLoader
interfaces so they can write and load entries from persistent storage.
When Data Grid evicts an entry from the cache, it notifies cache listeners that the entry is passivated then stores the entry in the cache store. When Data Grid gets an access request for an evicted entry, it lazily loads the entry from the cache store into memory and then notifies cache listeners that the entry is activated.
- Passivation uses the first cache loader in the Data Grid configuration and ignores all others.
Passivation is not supported with:
- Transactional stores. Passivation writes and removes entries from the store outside the scope of the actual Data Grid commit boundaries.
- Shared stores. Shared cache stores require entries to always exist in the store for other owners. For this reason, passivation is not supported because entries cannot be removed.
If you enable passivation with transactional stores or shared stores, Data Grid throws an exception.
6.1.1. How passivation works
Passivation disabled
Writes to data in memory result in writes to persistent storage.
If Data Grid evicts data from memory, then data in persistent storage includes entries that are evicted from memory. In this way persistent storage is a superset of the in-memory cache.
If you do not configure eviction, then data in persistent storage provides a copy of data in memory.
Passivation enabled
Data Grid adds data to persistent storage only when it evicts data from memory.
When Data Grid activates entries, it restores data in memory and deletes data from persistent storage. In this way, data in memory and data in persistent storage form separate subsets of the entire data set, with no intersection between the two.
Entries in persistent storage can become stale when using shared cache stores. This occurs because Data Grid does not delete passivated entries from shared cache stores when they are activated.
Values are updated in memory but previously passivated entries remain in persistent storage with out of date values.
The following table shows data in memory and in persistent storage after a series of operations:
Operation | Passivation disabled | Passivation enabled | Passivation enabled with shared cache store |
---|---|---|---|
Insert k1. |
Memory: k1 |
Memory: k1 |
Memory: k1 |
Insert k2. |
Memory: k1, k2 |
Memory: k1, k2 |
Memory: k1, k2 |
Eviction thread runs and evicts k1. |
Memory: k2 |
Memory: k2 |
Memory: k2 |
Read k1. |
Memory: k1, k2 |
Memory: k1, k2 |
Memory: k1, k2 |
Eviction thread runs and evicts k2. |
Memory: k1 |
Memory: k1 |
Memory: k1 |
Remove k2. |
Memory: k1 |
Memory: k1 |
Memory: k1 |
6.2. Write-through cache stores
Write-through is a cache writing mode where writes to memory and writes to cache stores are synchronous. When a client application updates a cache entry, in most cases by invoking Cache.put()
, Data Grid does not return the call until it updates the cache store. This cache writing mode results in updates to the cache store concluding within the boundaries of the client thread.
The primary advantage of write-through mode is that the cache and cache store are updated simultaneously, which ensures that the cache store is always consistent with the cache.
However, write-through mode can potentially decrease performance because the need to access and update cache stores directly adds latency to cache operations.
Write-through configuration
Data Grid uses write-through mode unless you explicitly add write-behind configuration to your caches. There is no separate element or method for configuring write-through mode.
For example, the following configuration adds a file-based store to the cache that implicitly uses write-through mode:
<distributed-cache> <persistence passivation="false"> <file-store fetch-state="true"> <index path="path/to/index" /> <data path="path/to/data" /> </file-store> </persistence> </distributed-cache>
6.3. Write-behind cache stores
Write-behind is a cache writing mode where writes to memory are synchronous and writes to cache stores are asynchronous.
When clients send write requests, Data Grid adds those operations to a modification queue. Data Grid processes operations as they join the queue so that the calling thread is not blocked and the operation completes immediately.
If the number of write operations in the modification queue increases beyond the size of the queue, Data Grid adds those additional operations to the queue. However, those operations do not complete until Data Grid processes operations that are already in the queue.
For example, calling Cache.putAsync
returns immediately and the Stage also completes immediately if the modification queue is not full. If the modification queue is full, or if Data Grid is currently processing a batch of write operations, then Cache.putAsync
returns immediately and the Stage completes later.
Write-behind mode provides a performance advantage over write-through mode because cache operations do not need to wait for updates to the underlying cache store to complete. However, data in the cache store remains inconsistent with data in the cache until the modification queue is processed. For this reason, write-behind mode is suitable for cache stores with low latency, such as unshared and local file-based cache stores, where the time between the write to the cache and the write to the cache store is as small as possible.
Write-behind configuration
XML
<distributed-cache> <persistence> <table-jdbc-store xmlns="urn:infinispan:config:store:sql:13.0" dialect="H2" shared="true" table-name="books"> <connection-pool connection-url="jdbc:h2:mem:infinispan" username="sa" password="changeme" driver="org.h2.Driver"/> <write-behind modification-queue-size="2048" fail-silently="true"/> </table-jdbc-store> </persistence> </distributed-cache>
JSON
{ "distributed-cache": { "persistence" : { "table-jdbc-store": { "dialect": "H2", "shared": "true", "table-name": "books", "connection-pool": { "connection-url": "jdbc:h2:mem:infinispan", "driver": "org.h2.Driver", "username": "sa", "password": "changeme" }, "write-behind" : { "modification-queue-size" : "2048", "fail-silently" : true } } } } }
YAML
distributedCache: persistence: tableJdbcStore: dialect: "H2" shared: "true" tableName: "books" connectionPool: connectionUrl: "jdbc:h2:mem:infinispan" driver: "org.h2.Driver" username: "sa" password: "changeme" writeBehind: modificationQueueSize: "2048" failSilently: "true"
ConfigurationBuilder
ConfigurationBuilder builder = new ConfigurationBuilder(); builder.persistence() .async() .modificationQueueSize(2048) .failSilently(true);
Failing silently
Write-behind configuration includes a fail-silently
parameter that controls what happens when either the cache store is unavailable or the modification queue is full.
-
If
fail-silently="true"
then Data Grid logs WARN messages and rejects write operations. If
fail-silently="false"
then Data Grid throws exceptions if it detects the cache store is unavailable during a write operation. Likewise if the modification queue becomes full, Data Grid throws an exception.In some cases, data loss can occur if Data Grid restarts and write operations exist in the modification queue. For example the cache store goes offline but, during the time it takes to detect that the cache store is unavailable, write operations are added to the modification queue because it is not full. If Data Grid restarts or otherwise becomes unavailable before the cache store comes back online, then the write operations in the modification queue are lost because they were not persisted.
6.4. Segmented cache stores
Cache stores can organize data into hash space segments to which keys map.
Segmented stores increase read performance for bulk operations; for example, streaming over data (Cache.size
, Cache.entrySet.stream
), pre-loading the cache, and doing state transfer operations.
However, segmented stores can also result in loss of performance for write operations. This performance loss applies particularly to batch write operations that can take place with transactions or write-behind stores. For this reason, you should evaluate the overhead for write operations before you enable segmented stores. The performance gain for bulk read operations might not be acceptable if there is a significant performance loss for write operations.
The number of segments you configure for cache stores must match the number of segments you define in the Data Grid configuration with the clustering.hash.numSegments
parameter.
If you change the numSegments
parameter in the configuration after you add a segmented cache store, Data Grid cannot read data from that cache store.
6.6. Transactions with persistent cache stores
Data Grid supports transactional operations with JDBC-based cache stores only. To configure caches as transactional, you set transactional=true
to keep data in persistent storage synchronized with data in memory.
For all other cache stores, Data Grid does not enlist cache loaders in transactional operations. This can result in data inconsistency if transactions succeed in modifying data in memory but do not completely apply changes to data in the cache store. In these cases manual recovery is not possible with cache stores.
6.7. Global persistent location
Data Grid preserves global state so that it can restore cluster topology and cached data after restart.
Remote caches
Data Grid Server saves cluster state to the $RHDG_HOME/server/data
directory.
You should never delete or modify the server/data
directory or its content. Data Grid restores cluster state from this directory when you restart your server instances.
Changing the default configuration or directly modifying the server/data
directory can cause unexpected behavior and lead to data loss.
Embedded caches
Data Grid defaults to the user.dir
system property as the global persistent location. In most cases this is the directory where your application starts.
For clustered embedded caches, such as replicated or distributed, you should always enable and configure a global persistent location to restore cluster topology.
You should never configure an absolute path for a file-based cache store that is outside the global persistent location. If you do, Data Grid writes the following exception to logs:
ISPN000558: "The store location 'foo' is not a child of the global persistent location 'bar'"
6.7.1. Configuring the global persistent location
Enable and configure the location where Data Grid stores global state for clustered embedded caches.
Data Grid Server enables global persistence and configures a default location. You should not disable global persistence or change the default configuration for remote caches.
Prerequisites
- Add Data Grid to your project.
Procedure
Enable global state in one of the following ways:
-
Add the
global-state
element to your Data Grid configuration. -
Call the
globalState().enable()
methods in theGlobalConfigurationBuilder
API.
-
Add the
Define whether the global persistent location is unique to each node or shared between the cluster.
Location type Configuration Unique to each node
persistent-location
element orpersistentLocation()
methodShared between the cluster
shared-persistent-location
element orsharedPersistentLocation(String)
methodSet the path where Data Grid stores cluster state.
For example, file-based cache stores the path is a directory on the host filesystem.
Values can be:
- Absolute and contain the full location including the root.
- Relative to a root location.
If you specify a relative value for the path, you must also specify a system property that resolves to a root location.
For example, on a Linux host system you set
global/state
as the path. You also set themy.data
property that resolves to the/opt/data
root location. In this case Data Grid uses/opt/data/global/state
as the global persistent location.
Global persistent location configuration
XML
<infinispan> <cache-container> <global-state> <persistent-location path="global/state" relative-to="my.data"/> </global-state> </cache-container> </infinispan>
JSON
{ "infinispan" : { "cache-container" : { "global-state": { "persistent-location" : { "path" : "global/state", "relative-to" : "my.data" } } } } }
YAML
cacheContainer: globalState: persistentLocation: path: "global/state" relativeTo : "my.data"
GlobalConfigurationBuilder
new GlobalConfigurationBuilder().globalState() .enable() .persistentLocation("global/state", "my.data");
6.8. File-based cache stores
File-based cache stores provide persistent storage on the local host filesystem where Data Grid is running. For clustered caches, file-based cache stores are unique to each Data Grid node.
Never use filesystem-based cache stores on shared file systems, such as an NFS or Samba share, because they do not provide file locking capabilities and data corruption can occur.
Additionally if you attempt to use transactional caches with shared file systems, unrecoverable failures can happen when writing to files during the commit phase.
Soft-Index File Stores
SoftIndexFileStore
is the default implementation for file-based cache stores and stores data in a set of append-only files.
When append-only files:
- Reach their maximum size, Data Grid creates a new file and starts writing to it.
- Reach the compaction threshold of less than 50% usage, Data Grid overwrites the entries to a new file and then deletes the old file.
B+ trees
To improve performance, append-only files in a SoftIndexFileStore
are indexed using a B+ Tree that can be stored both on disk and in memory. The in-memory index uses Java soft references to ensure it can be rebuilt if removed by Garbage Collection (GC) then requested again.
Because SoftIndexFileStore
uses Java soft references to keep indexes in memory, it helps prevent out-of-memory exceptions. GC removes indexes before they consume too much memory while still falling back to disk.
You can configure any number of B+ trees with the segments
attribute on the index
element declaratively or with the indexSegments()
method programmatically. By default Data Grid creates up to 16 B+ trees, which means there can be up to 16 indexes. Having multiple indexes prevents bottlenecks from concurrent writes to an index and reduces the number of entries that Data Grid needs to keep in memory. As it iterates over a soft-index file store, Data Grid reads all entries in an index at the same time.
Each entry in the B+ tree is a node. By default, the size of each node is limited to 4096 bytes. SoftIndexFileStore
throws an exception if keys are longer after serialization occurs.
Segmentation
Soft-index file stores are always segmented.
The AdvancedStore.purgeExpired()
method is not implemented in SoftIndexFileStore
.
Single File Cache Stores
Single file cache stores are now deprecated and planned for removal.
Single File cache stores, SingleFileStore
, persist data to file. Data Grid also maintains an in-memory index of keys while keys and values are stored in the file.
Because SingleFileStore
keeps an in-memory index of keys and the location of values, it requires additional memory, depending on the key size and the number of keys. For this reason, SingleFileStore
is not recommended for use cases where the keys are larger or there can be a larger number of them.
In some cases, SingleFileStore
can also become fragmented. If the size of values continually increases, available space in the single file is not used but the entry is appended to the end of the file. Available space in the file is used only if an entry can fit within it. Likewise, if you remove all entries from memory, the single file store does not decrease in size or become defragmented.
Segmentation
Single file cache stores are segmented by default with a separate instance per segment, which results in multiple directories. Each directory is a number that represents the segment to which the data maps.
6.8.1. Configuring file-based cache stores
Add file-based cache stores to Data Grid to persist data on the host filesystem.
Prerequisites
- Enable global state and configure a global persistent location if you are configuring embedded caches.
Procedure
-
Add the
persistence
element to your cache configuration. -
Optionally specify
true
as the value for thepassivation
attribute to write to the file-based cache store only when data is evicted from memory. -
Include the
file-store
element and configure attributes as appropriate. Specify
false
as the value for theshared
attribute.File-based cache stores should always be unique to each Data Grid instance. If you want to use the same persistent across a cluster, configure shared storage such as a JDBC string-based cache store .
-
Configure the
index
anddata
elements to specify the location where Data Grid creates indexes and stores data. -
Include the
write-behind
element if you want to configure the cache store with write-behind mode.
File-based cache store configuration
XML
<distributed-cache> <persistence passivation="true"> <file-store shared="false"> <data path="data"/> <index path="index"/> <write-behind modification-queue-size="2048" /> </file-store> </persistence> </distributed-cache>
JSON
{ "distributed-cache": { "persistence": { "passivation": true, "file-store" : { "shared": false, "data": { "path": "data" }, "index": { "path": "index" }, "write-behind": { "modification-queue-size": "2048" } } } } }
YAML
distributedCache: persistence: passivation: "true" fileStore: shared: "false" data: path: "data" index: path: "index" writeBehind: modificationQueueSize: "2048"
ConfigurationBuilder
ConfigurationBuilder builder = new ConfigurationBuilder(); builder.persistence().passivation(true) .addSoftIndexFileStore() .shared(false) .dataLocation("data") .indexLocation("index") .modificationQueueSize(2048);
6.8.2. Configuring single file cache stores
If required, you can configure Data Grid to create single file stores.
Single file stores are deprecated. You should use soft-index file stores for better performance and data consistency in comparison with single file stores.
Prerequisites
- Enable global state and configure a global persistent location if you are configuring embedded caches.
Procedure
-
Add the
persistence
element to your cache configuration. -
Optionally specify
true
as the value for thepassivation
attribute to write to the file-based cache store only when data is evicted from memory. -
Include the
single-file-store
element. -
Specify
false
as the value for theshared
attribute. - Configure any other attributes as appropriate.
-
Include the
write-behind
element to configure the cache store as write behind instead of as write through.
Single file cache store configuration
XML
<distributed-cache> <persistence passivation="true"> <single-file-store shared="false" preload="true" fetch-state="true"/> </persistence> </distributed-cache>
JSON
{ "distributed-cache": { "persistence" : { "passivation" : true, "single-file-store" : { "shared" : false, "preload" : true, "fetch-state" : true } } } }
YAML
distributedCache: persistence: passivation: "true" singleFileStore: shared: "false" preload: "true" fetchState: "true"
ConfigurationBuilder
ConfigurationBuilder builder = new ConfigurationBuilder(); builder.persistence().passivation(true) .addStore(SingleFileStoreConfigurationBuilder.class) .shared(false) .preload(true) .fetchPersistentState(true);
6.9. JDBC connection factories
Data Grid provides different ConnectionFactory
implementations that allow you to connect to databases. You use JDBC connections with SQL cache stores and JDBC string-based caches stores.
Connection pools
Connection pools are suitable for standalone Data Grid deployments and are based on Agroal.
XML
<distributed-cache> <persistence> <connection-pool connection-url="jdbc:h2:mem:infinispan;DB_CLOSE_DELAY=-1" username="sa" password="changeme" driver="org.h2.Driver"/> </persistence> </distributed-cache>
JSON
{ "distributed-cache": { "persistence": { "connection-pool": { "connection-url": "jdbc:h2:mem:infinispan_string_based", "driver": "org.h2.Driver", "username": "sa", "password": "changeme" } } } }
YAML
distributedCache: persistence: connectionPool: connectionUrl: "jdbc:h2:mem:infinispan_string_based;DB_CLOSE_DELAY=-1" driver: org.h2.Driver username: sa password: changeme
ConfigurationBuilder
ConfigurationBuilder builder = new ConfigurationBuilder(); builder.persistence() .connectionPool() .connectionUrl("jdbc:h2:mem:infinispan_string_based;DB_CLOSE_DELAY=-1") .username("sa") .driverClass("org.h2.Driver");
Managed datasources
Datasource connections are suitable for managed environments such as application servers.
XML
<distributed-cache> <persistence> <data-source jndi-url="java:/StringStoreWithManagedConnectionTest/DS" /> </persistence> </distributed-cache>
JSON
{ "distributed-cache": { "persistence": { "data-source": { "jndi-url": "java:/StringStoreWithManagedConnectionTest/DS" } } } }
YAML
distributedCache: persistence: dataSource: jndiUrl: "java:/StringStoreWithManagedConnectionTest/DS"
ConfigurationBuilder
ConfigurationBuilder builder = new ConfigurationBuilder(); builder.persistence() .dataSource() .jndiUrl("java:/StringStoreWithManagedConnectionTest/DS");
Simple connections
Simple connection factories create database connections on a per invocation basis and are intended for use with test or development environments only.
XML
<distributed-cache> <persistence> <simple-connection connection-url="jdbc:h2://localhost" username="sa" password="changeme" driver="org.h2.Driver"/> </persistence> </distributed-cache>
JSON
{ "distributed-cache": { "persistence": { "simple-connection": { "connection-url": "jdbc:h2://localhost", "driver": "org.h2.Driver", "username": "sa", "password": "changeme" } } } }
YAML
distributedCache: persistence: simpleConnection: connectionUrl: "jdbc:h2://localhost" driver: org.h2.Driver username: sa password: changeme
ConfigurationBuilder
ConfigurationBuilder builder = new ConfigurationBuilder(); builder.persistence() .simpleConnection() .connectionUrl("jdbc:h2://localhost") .driverClass("org.h2.Driver") .username("admin") .password("changeme");
Additional resources
6.9.1. Configuring managed datasources
Create managed datasources as part of your Data Grid Server configuration to optimize connection pooling and performance for JDBC database connections. You can then specify the JDNI name of the managed datasources in your caches, which centralizes JDBC connection configuration for your deployment.
Prerequisites
-
Copy database drivers to the
server/lib
directory in your Data Grid Server installation.
Procedure
- Open your Data Grid Server configuration for editing.
-
Add a new
data-source
to thedata-sources
section. -
Uniquely identify the datasource with the
name
attribute or field. Specify a JNDI name for the datasource with the
jndi-name
attribute or field.TipYou use the JNDI name to specify the datasource in your JDBC cache store configuration.
-
Set
true
as the value of thestatistics
attribute or field to enable statistics for the datasource through the/metrics
endpoint. Provide JDBC driver details that define how to connect to the datasource in the
connection-factory
section.-
Specify the name of the database driver with the
driver
attribute or field. -
Specify the JDBC connection url with the
url
attribute or field. -
Specify credentials with the
username
andpassword
attributes or fields. - Provide any other configuration as appropriate.
-
Specify the name of the database driver with the
-
Define how Data Grid Server nodes pool and reuse connections with connection pool tuning properties in the
connection-pool
section. - Save the changes to your configuration.
Verification
Use the Data Grid Command Line Interface (CLI) to test the datasource connection, as follows:
Start a CLI session.
bin/cli.sh
List all datasources and confirm the one you created is available.
server datasource ls
Test a datasource connection.
server datasource test my-datasource
Managed datasource configuration
XML
<server xmlns="urn:infinispan:server:13.0"> <data-sources> <!-- Defines a unique name for the datasource and JNDI name that you reference in JDBC cache store configuration. Enables statistics for the datasource, if required. --> <data-source name="ds" jndi-name="jdbc/postgres" statistics="true"> <!-- Specifies the JDBC driver that creates connections. --> <connection-factory driver="org.postgresql.Driver" url="jdbc:postgresql://localhost:5432/postgres" username="postgres" password="changeme"> <!-- Sets optional JDBC driver-specific connection properties. --> <connection-property name="name">value</connection-property> </connection-factory> <!-- Defines connection pool tuning properties. --> <connection-pool initial-size="1" max-size="10" min-size="3" background-validation="1000" idle-removal="1" blocking-timeout="1000" leak-detection="10000"/> </data-source> </data-sources> </server>
JSON
{ "server": { "data-sources": [{ "name": "ds", "jndi-name": "jdbc/postgres", "statistics": true, "connection-factory": { "driver": "org.postgresql.Driver", "url": "jdbc:postgresql://localhost:5432/postgres", "username": "postgres", "password": "changeme", "connection-properties": { "name": "value" } }, "connection-pool": { "initial-size": 1, "max-size": 10, "min-size": 3, "background-validation": 1000, "idle-removal": 1, "blocking-timeout": 1000, "leak-detection": 10000 } }] } }
YAML
server: dataSources: - name: ds jndiName: 'jdbc/postgres' statistics: true connectionFactory: driver: "org.postgresql.Driver" url: "jdbc:postgresql://localhost:5432/postgres" username: "postgres" password: "changeme" connectionProperties: name: value connectionPool: initialSize: 1 maxSize: 10 minSize: 3 backgroundValidation: 1000 idleRemoval: 1 blockingTimeout: 1000 leakDetection: 10000
6.9.1.1. Configuring caches with JNDI names
When you add a managed datasource to Data Grid Server you can add the JNDI name to a JDBC-based cache store configuration.
Prerequisites
- Configure Data Grid Server with a managed datasource.
Procedure
- Open your cache configuration for editing.
-
Add the
data-source
element or field to the JDBC-based cache store configuration. -
Specify the JNDI name of the managed datasource as the value of the
jndi-url
attribute. - Configure the JDBC-based cache stores as appropriate.
- Save the changes to your configuration.
JNDI name in cache configuration
XML
<distributed-cache> <persistence> <jdbc:string-keyed-jdbc-store> <!-- Specifies the JNDI name of a managed datasource on Data Grid Server. --> <jdbc:data-source jndi-url="jdbc/postgres"/> <jdbc:string-keyed-table drop-on-exit="true" create-on-start="true" prefix="TBL"> <jdbc:id-column name="ID" type="VARCHAR(255)"/> <jdbc:data-column name="DATA" type="BYTEA"/> <jdbc:timestamp-column name="TS" type="BIGINT"/> <jdbc:segment-column name="S" type="INT"/> </jdbc:string-keyed-table> </jdbc:string-keyed-jdbc-store> </persistence> </distributed-cache>
JSON
{ "distributed-cache": { "persistence": { "string-keyed-jdbc-store": { "data-source": { "jndi-url": "jdbc/postgres" }, "string-keyed-table": { "prefix": "TBL", "drop-on-exit": true, "create-on-start": true, "id-column": { "name": "ID", "type": "VARCHAR(255)" }, "data-column": { "name": "DATA", "type": "BYTEA" }, "timestamp-column": { "name": "TS", "type": "BIGINT" }, "segment-column": { "name": "S", "type": "INT" } } } } } }
YAML
distributedCache: persistence: stringKeyedJdbcStore: dataSource: jndi-url: "jdbc/postgres" stringKeyedTable: prefix: "TBL" dropOnExit: true createOnStart: true idColumn: name: "ID" type: "VARCHAR(255)" dataColumn: name: "DATA" type: "BYTEA" timestampColumn: name: "TS" type: "BIGINT" segmentColumn: name: "S" type: "INT"
6.9.1.2. Connection pool tuning properties
You can tune JDBC connection pools for managed datasources in your Data Grid Server configuration.
Property | Description |
---|---|
| Initial number of connections the pool should hold. |
| Maximum number of connections in the pool. |
| Minimum number of connections the pool should hold. |
|
Maximum time in milliseconds to block while waiting for a connection before throwing an exception. This will never throw an exception if creating a new connection takes an inordinately long period of time. Default is |
|
Time in milliseconds between background validation runs. A duration of |
|
Connections idle for longer than this time, specified in milliseconds, are validated before being acquired (foreground validation). A duration of |
| Time in minutes a connection has to be idle before it can be removed. |
| Time in milliseconds a connection has to be held before a leak warning. |
6.9.2. Configuring JDBC connection pools with Agroal properties
You can use a properties file to configure pooled connection factories for JDBC string-based cache stores.
Procedure
Specify JDBC connection pool configuration with
org.infinispan.agroal.*
properties, as in the following example:org.infinispan.agroal.metricsEnabled=false org.infinispan.agroal.minSize=10 org.infinispan.agroal.maxSize=100 org.infinispan.agroal.initialSize=20 org.infinispan.agroal.acquisitionTimeout_s=1 org.infinispan.agroal.validationTimeout_m=1 org.infinispan.agroal.leakTimeout_s=10 org.infinispan.agroal.reapTimeout_m=10 org.infinispan.agroal.metricsEnabled=false org.infinispan.agroal.autoCommit=true org.infinispan.agroal.jdbcTransactionIsolation=READ_COMMITTED org.infinispan.agroal.jdbcUrl=jdbc:h2:mem:PooledConnectionFactoryTest;DB_CLOSE_DELAY=-1 org.infinispan.agroal.driverClassName=org.h2.Driver.class org.infinispan.agroal.principal=sa org.infinispan.agroal.credential=sa
Configure Data Grid to use your properties file with the
properties-file
attribute or thePooledConnectionFactoryConfiguration.propertyFile()
method.XML
<connection-pool properties-file="path/to/agroal.properties"/>
JSON
"persistence": { "connection-pool": { "properties-file": "path/to/agroal.properties" } }
YAML
persistence: connectionPool: propertiesFile: path/to/agroal.properties
ConfigurationBuilder
.connectionPool().propertyFile("path/to/agroal.properties")
Additional resources
6.10. SQL cache stores
SQL cache stores let you load Data Grid caches from existing database tables. Data Grid offers two types of SQL cache store:
- Table
- Data Grid loads entries from a single database table.
- Query
- Data Grid uses SQL queries to load entries from single or multiple database tables, including from sub-columns within those tables, and perform insert, update, and delete operations.
Visit the code tutorials to try a SQL cache store in action. See the Persistence code tutorial with remote caches.
Both SQL table and query stores:
- Allow read and write operations to persistent storage.
- Can be read-only and act as a cache loader.
Support keys and values that correspond to a single database column or a composite of multiple database columns.
For composite keys and values, you must provide Data Grid with Protobuf schema (
.proto
files) that describe the keys and values. With Data Grid Server you can add schema through the Data Grid Console or Command Line Interface (CLI) with theschema
command.
SQL cache stores do not support expiration or segmentation.
Additional resources
6.10.1. Data types for keys and values
Data Grid loads keys and values from columns in database tables via SQL cache stores, automatically using the appropriate data types. The following CREATE
statement adds a table named "books" that has two columns, isbn
and title
:
Database table with two columns
CREATE TABLE books ( isbn NUMBER(13), title varchar(120) PRIMARY KEY(isbn) );
When you use this table with a SQL cache store, Data Grid adds an entry to the cache using the isbn
column as the key and the title
column as the value.
Additional resources
6.10.1.1. Composite keys and values
You can use SQL stores with database tables that contain composite primary keys or composite values.
To use composite keys or values, you must provide Data Grid with Protobuf schema that describe the data types. You must also add schema
configuration to your SQL store and specify the message names for keys and values.
Data Grid recommends generating Protobuf schema with the ProtoStream processor. You can then upload your Protobuf schema for remote caches through the Data Grid Console, CLI, or REST API.
Composite values
The following database table holds a composite value of the title
and author
columns:
CREATE TABLE books ( isbn NUMBER(13), title varchar(120), author varchar(80) PRIMARY KEY(isbn) );
Data Grid adds an entry to the cache using the isbn
column as the key. For the value, Data Grid requires a Protobuf schema that maps the title
column and the author
columns:
package library; message books_value { optional string title = 1; optional string author = 2; }
Composite keys and values
The following database table holds a composite primary key and a composite value, with two columns each:
CREATE TABLE books ( isbn NUMBER(13), reprint INT, title varchar(120), author varchar(80) PRIMARY KEY(isbn, reprint) );
For both the key and the value, Data Grid requires a Protobuf schema that maps the columns to keys and values:
package library; message books_key { required string isbn = 1; required int32 reprint = 2; } message books_value { optional string title = 1; optional string author = 2; }
6.10.1.2. Embedded keys
Protobuf schema can include keys within values, as in the following example:
Protobuf schema with an embedded key
package library; message books_key { required string isbn = 1; required int32 reprint = 2; } message books_value { required string isbn = 1; required string reprint = 2; optional string title = 3; optional string author = 4; }
To use embedded keys, you must include the embedded-key="true"
attribute or embeddedKey(true)
method in your SQL store configuration.
6.10.1.3. SQL types to Protobuf types
The following table contains default mappings of SQL data types to Protobuf data types:
SQL type | Protobuf type |
---|---|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
Additional resources
6.10.2. Loading Data Grid caches from database tables
Add a SQL table cache store to your configuration if you want Data Grid to load data from a database table. When it connects to the database, Data Grid uses metadata from the table to detect column names and data types. Data Grid also automatically determines which columns in the database are part of the primary key.
Prerequisites
-
Have JDBC connection details.
You can add JDBC connection factories directly to your cache configuration.
For remote caches in production environments, you should add managed datasources to Data Grid Server configuration and specify the JNDI name in the cache configuration. Generate Protobuf schema for any composite keys or composite values and register your schemas with Data Grid.
TipData Grid recommends generating Protobuf schema with the ProtoStream processor. For remote caches, you can register your schemas by adding them through the Data Grid Console, CLI, or REST API.
Procedure
Add database drivers to your Data Grid deployment.
-
Remote caches: Copy database drivers to the
server/lib
directory in your Data Grid Server installation. Embedded caches: Add the
infinispan-cachestore-sql
dependency to yourpom
file.<dependency> <groupId>org.infinispan</groupId> <artifactId>infinispan-cachestore-sql</artifactId> </dependency>
-
Remote caches: Copy database drivers to the
- Open your Data Grid configuration for editing.
Add a SQL table cache store.
Declarative
table-jdbc-store xmlns="urn:infinispan:config:store:sql:13.0"
Programmatic
persistence().addStore(TableJdbcStoreConfigurationBuilder.class)
-
Specify the database dialect with either
dialect=""
ordialect()
, for exampledialect="H2"
ordialect="postgres"
. Configure the SQL cache store with the properties you require, for example:
-
To use the same cache store across your cluster, set
shared="true"
orshared(true)
. -
To create a read only cache store, set
read-only="true"
or.ignoreModifications(true)
.
-
To use the same cache store across your cluster, set
-
Name the database table that loads the cache with
table-name="<database_table_name>"
ortable.name("<database_table_name>")
. Add the
schema
element or the.schemaJdbcConfigurationBuilder()
method and add Protobuf schema configuration for composite keys or values.-
Specify the package name with the
package
attribute orpackage()
method. -
Specify composite values with the
message-name
attribute ormessageName()
method. -
Specify composite keys with the
key-message-name
attribute orkeyMessageName()
method. -
Set a value of
true
for theembedded-key
attribute orembeddedKey()
method if your schema includes keys within values.
-
Specify the package name with the
- Save the changes to your configuration.
SQL table store configuration
The following example loads a distributed cache from a database table named "books" using composite values defined in a Protobuf schema:
XML
<distributed-cache> <persistence> <table-jdbc-store xmlns="urn:infinispan:config:store:sql:13.0" dialect="H2" shared="true" table-name="books"> <schema message-name="books_value" package="library"/> </table-jdbc-store> </persistence> </distributed-cache>
JSON
{ "distributed-cache": { "persistence": { "table-jdbc-store": { "dialect": "H2", "shared": "true", "table-name": "books", "schema": { "message-name": "books_value", "package": "library" } } } } }
YAML
distributedCache: persistence: tableJdbcStore: dialect: "H2" shared: "true" tableName: "books" schema: messageName: "books_value" package: "library"
ConfigurationBuilder
ConfigurationBuilder builder = new ConfigurationBuilder(); builder.persistence().addStore(TableJdbcStoreConfigurationBuilder.class) .dialect(DatabaseType.H2) .shared("true") .tableName("books") .schemaJdbcConfigurationBuilder() .messageName("books_value") .packageName("library");
6.10.3. Using SQL queries to load data and perform operations
SQL query cache stores let you load caches from multiple database tables, including from sub-columns in database tables, and perform insert, update, and delete operations.
Prerequisites
-
Have JDBC connection details.
You can add JDBC connection factories directly to your cache configuration.
For remote caches in production environments, you should add managed datasources to Data Grid Server configuration and specify the JNDI name in the cache configuration. Generate Protobuf schema for any composite keys or composite values and register your schemas with Data Grid.
TipData Grid recommends generating Protobuf schema with the ProtoStream processor. For remote caches, you can register your schemas by adding them through the Data Grid Console, CLI, or REST API.
Procedure
Add database drivers to your Data Grid deployment.
-
Remote caches: Copy database drivers to the
server/lib
directory in your Data Grid Server installation. Embedded caches: Add the
infinispan-cachestore-sql
dependency to yourpom
file and make sure database drivers are on your application classpath.<dependency> <groupId>org.infinispan</groupId> <artifactId>infinispan-cachestore-sql</artifactId> </dependency>
-
Remote caches: Copy database drivers to the
- Open your Data Grid configuration for editing.
Add a SQL query cache store.
Declarative
query-jdbc-store xmlns="urn:infinispan:config:store:jdbc:13.0"
Programmatic
persistence().addStore(QueriesJdbcStoreConfigurationBuilder.class)
-
Specify the database dialect with either
dialect=""
ordialect()
, for exampledialect="H2"
ordialect="postgres"
. Configure the SQL cache store with the properties you require, for example:
-
To use the same cache store across your cluster, set
shared="true"
orshared(true)
. -
To create a read only cache store, set
read-only="true"
or.ignoreModifications(true)
.
-
To use the same cache store across your cluster, set
Define SQL query statements that load caches with data and modify database tables with the
queries
element or thequeries()
method.Query statement Description SELECT
Loads a single entry into caches. You can use wildcards but must specify parameters for keys. You can use labelled expressions.
SELECT ALL
Loads multiple entries into caches. You can use the
*
wildcard if the number of columns returned match the key and value columns. You can use labelled expressions.SIZE
Counts the number of entries in the cache.
DELETE
Deletes a single entry from the cache.
DELETE ALL
Deletes all entries from the cache.
UPSERT
Modifies entries in the cache.
NoteDELETE
,DELETE ALL
, andUPSERT
statements do not apply to read only cache stores but are required if cache stores allow modifications.Parameters in
DELETE
statements must match parameters inSELECT
statements exactly.Variables in
UPSERT
statements must have the same number of uniquely named variables thatSELECT
andSELECT ALL
statements return. For example, ifSELECT
returnsfoo
andbar
this statement must take only:foo
and:bar
as variables. However you can apply the same named variable more than once in a statement.SQL queries can include
JOIN
,ON
, and any other clauses that the database supports.Add the
schema
element or the.schemaJdbcConfigurationBuilder()
method and add Protobuf schema configuration for composite keys or values.-
Specify the package name with the
package
attribute orpackage()
method. -
Specify composite values with the
message-name
attribute ormessageName()
method. -
Specify composite keys with the
key-message-name
attribute orkeyMessageName()
method. -
Set a value of
true
for theembedded-key
attribute orembeddedKey()
method if your schema includes keys within values.
-
Specify the package name with the
- Save the changes to your configuration.
Additional resources
6.10.3.1. SQL query store configuration
This section provides an example configuration for a SQL query cache store that loads a distributed cache with data from two database tables: "person" and "address".
SQL statements
SQL data definition language (DDL) statements for the "person" and "address" tables are as follows:
SQL statement for the "person" table
CREATE TABLE Person ( name VARCHAR(255) NOT NULL, picture VARBINARY(255), sex VARCHAR(255), birthdate TIMESTAMP, accepted_tos BOOLEAN, notused VARCHAR(255), PRIMARY KEY (name) );
SQL statement for the "address" table
CREATE TABLE Address ( name VARCHAR(255) NOT NULL, street VARCHAR(255), city VARCHAR(255), zip INT, PRIMARY KEY (name) );
Protobuf schemas
Protobuf schema for the "person" and "address" tables are as follows:
Protobuf schema for the "person" table
package com.example enum Sex { FEMALE = 1; MALE = 2; } message Person { optional string name = 1; optional Address address = 2; optional bytes picture = 3; optional Sex sex = 4; optional fixed64 birthDate = 5 [default = 0]; optional bool accepted_tos = 6 [default = false]; }
Protobuf schema for the "address" table
package com.example message Address { optional string street = 1; optional string city = 2 [default = "San Jose"]; optional int32 zip = 3 [default = 0]; }
Cache configuration
The following example loads a distributed cache from the "person" and "address" tables using a SQL query that includes a JOIN
clause:
XML
<distributed-cache> <persistence> <query-jdbc-store xmlns="urn:infinispan:config:store:jdbc:13.0" dialect="POSTGRES" shared="true"> <queries key-columns="name"> <select-single>SELECT t1.name, t1.picture, t1.sex, t1.birthdate, t1.accepted_tos, t2.street, t2.city, t2.zip FROM Person t1 JOIN Address t2 ON t1.name = t2.name WHERE t1.name = :name</select-single> <select-all>SELECT t1.name, t1.picture, t1.sex, t1.birthdate, t1.accepted_tos, t2.street, t2.city, t2.zip FROM Person t1 JOIN Address t2 ON t1.name = t2.name</select-all> <delete-single>DELETE FROM Person t1 WHERE t1.name = :name; DELETE FROM Address t2 where t2.name = :name</delete-single> <delete-all>DELETE FROM Person; DELETE FROM Address</delete-all> <upsert>INSERT INTO Person (name, picture, sex, birthdate, accepted_tos) VALUES (:name, :picture, :sex, :birthdate, :accepted_tos); INSERT INTO Address(name, street, city, zip) VALUES (:name, :street, :city, :zip)</upsert> <size>SELECT COUNT(*) FROM Person</size> </queries> <schema message-name="Person" package="com.example" embedded-key="true"/> </query-jdbc-store> </persistence> <distributed-cache>
JSON
{ "distributed-cache": { "persistence": { "query-jdbc-store": { "dialect": "POSTGRES", "shared": "true", "key-columns": "name", "queries": { "select-single": "SELECT t1.name, t1.picture, t1.sex, t1.birthdate, t1.accepted_tos, t2.street, t2.city, t2.zip FROM Person t1 JOIN Address t2 ON t1.name = t2.name WHERE t1.name = :name", "select-all": "SELECT t1.name, t1.picture, t1.sex, t1.birthdate, t1.accepted_tos, t2.street, t2.city, t2.zip FROM Person t1 JOIN Address t2 ON t1.name = t2.name", "delete-single": "DELETE FROM Person t1 WHERE t1.name = :name; DELETE FROM Address t2 where t2.name = :name", "delete-all": "DELETE FROM Person; DELETE FROM Address", "upsert": "INSERT INTO Person (name, picture, sex, birthdate, accepted_tos) VALUES (:name, :picture, :sex, :birthdate, :accepted_tos); INSERT INTO Address(name, street, city, zip) VALUES (:name, :street, :city, :zip)", "size": "SELECT COUNT(*) FROM Person" }, "schema": { "message-name": "Person", "package": "com.example", "embedded-key": "true" } } } } }
YAML
distributedCache: persistence: queryJdbcStore: dialect: "POSTGRES" shared: "true" keyColumns: "name" queries: selectSingle: "SELECT t1.name, t1.picture, t1.sex, t1.birthdate, t1.accepted_tos, t2.street, t2.city, t2.zip FROM Person t1 JOIN Address t2 ON t1.name = t2.name WHERE t1.name = :name" selectAll: "SELECT t1.name, t1.picture, t1.sex, t1.birthdate, t1.accepted_tos, t2.street, t2.city, t2.zip FROM Person t1 JOIN Address t2 ON t1.name = t2.name" deleteSingle: "DELETE FROM Person t1 WHERE t1.name = :name; DELETE FROM Address t2 where t2.name = :name" deleteAll: "DELETE FROM Person; DELETE FROM Address" upsert: "INSERT INTO Person (name, picture, sex, birthdate, accepted_tos) VALUES (:name, :picture, :sex, :birthdate, :accepted_tos); INSERT INTO Address(name, street, city, zip) VALUES (:name, :street, :city, :zip)" size: "SELECT COUNT(*) FROM Person" schema: messageName: "Person" package: "com.example" embeddedKey: "true"
ConfigurationBuilder
ConfigurationBuilder builder = new ConfigurationBuilder(); builder.persistence().addStore(QueriesJdbcStoreConfigurationBuilder.class) .dialect(DatabaseType.POSTGRES) .shared("true") .keyColumns("name") .queriesJdbcConfigurationBuilder() .select("SELECT t1.name, t1.picture, t1.sex, t1.birthdate, t1.accepted_tos, t2.street, t2.city, t2.zip FROM Person t1 JOIN Address t2 ON t1.name = t2.name WHERE t1.name = :name") .selectAll("SELECT t1.name, t1.picture, t1.sex, t1.birthdate, t1.accepted_tos, t2.street, t2.city, t2.zip FROM Person t1 JOIN Address t2 ON t1.name = t2.name") .delete("DELETE FROM Person t1 WHERE t1.name = :name; DELETE FROM Address t2 where t2.name = :name") .deleteAll("DELETE FROM Person; DELETE FROM Address") .upsert("INSERT INTO Person (name, picture, sex, birthdate, accepted_tos) VALUES (:name, :picture, :sex, :birthdate, :accepted_tos); INSERT INTO Address(name, street, city, zip) VALUES (:name, :street, :city, :zip)") .size("SELECT COUNT(*) FROM Person") .schemaJdbcConfigurationBuilder() .messageName("Person") .packageName("com.example") .embeddedKey(true);
Additional resources
6.10.4. SQL cache store troubleshooting
Find out about common issues and errors with SQL cache stores and how to troubleshoot them.
ISPN008064: No primary keys found for table <table_name>, check case sensitivity
Data Grid logs this message in the following cases:
- The database table does not exist.
- The database table name is case sensitive and needs to be either all lower case or all upper case, depending on the database provider.
- The database table does not have any primary keys defined.
To resolve this issue you should:
- Check your SQL cache store configuration and ensure that you specify the name of an existing table.
- Ensure that the database table name conforms to an case sensitivity requirements.
- Ensure that your database tables have primary keys that uniquely identify the appropriate rows.
6.11. JDBC string-based cache stores
JDBC String-Based cache stores, JdbcStringBasedStore
, use JDBC drivers to load and store values in the underlying database.
JDBC String-Based cache stores:
- Store each entry in its own row in the table to increase throughput for concurrent loads.
-
Use a simple one-to-one mapping that maps each key to a
String
object using thekey-to-string-mapper
interface.
Data Grid provides a default implementation,DefaultTwoWayKey2StringMapper
, that handles primitive types.
In addition to the data table used to store cache entries, the store also creates a _META
table for storing metadata. This table is used to ensure that any existing database content is compatible with the current Data Grid version and configuration.
By default Data Grid shares are not stored, which means that all nodes in the cluster write to the underlying store on each update. If you want operations to write to the underlying database once only, you must configure JDBC store as shared.
Segmentation
JdbcStringBasedStore
uses segmentation by default and requires a column in the database table to represent the segments to which entries belong.
Additional resources
6.11.1. Configuring JDBC string-based cache stores
Configure Data Grid caches with JDBC string-based cache stores that can connect to databases.
Prerequisites
-
Remote caches: Copy database drivers to the
server/lib
directory in your Data Grid Server installation. Embedded caches: Add the
infinispan-cachestore-jdbc
dependency to yourpom
file.<dependency> <groupId>org.infinispan</groupId> <artifactId>infinispan-cachestore-jdbc</artifactId> </dependency>
Procedure
Create a JDBC string-based cache store configuration in one of the following ways:
Declaratively, add the
persistence
element or field then addstring-keyed-jdbc-store
with the following schema namespace:xmlns="urn:infinispan:config:store:jdbc:13.0"
Programmatically, add the following methods to your
ConfigurationBuilder
:persistence().addStore(JdbcStringBasedStoreConfigurationBuilder.class)
-
Specify the dialect of the database with either the
dialect
attribute or thedialect()
method. Configure any properties for the JDBC string-based cache store as appropriate.
For example, specify if the cache store is shared with multiple cache instances with either the
shared
attribute or theshared()
method.- Add a JDBC connection factory so that Data Grid can connect to the database.
- Add a database table that stores cache entries.
JDBC string-based cache store configuration
XML
<distributed-cache> <persistence> <string-keyed-jdbc-store xmlns="urn:infinispan:config:store:jdbc:13.0" dialect="H2"> <connection-pool connection-url="jdbc:h2:mem:infinispan" username="sa" password="changeme" driver="org.h2.Driver"/> <string-keyed-table create-on-start="true" prefix="ISPN_STRING_TABLE"> <id-column name="ID_COLUMN" type="VARCHAR(255)" /> <data-column name="DATA_COLUMN" type="BINARY" /> <timestamp-column name="TIMESTAMP_COLUMN" type="BIGINT" /> <segment-column name="SEGMENT_COLUMN" type="INT"/> </string-keyed-table> </string-keyed-jdbc-store> </persistence> </distributed-cache>
JSON
{ "distributed-cache": { "persistence": { "string-keyed-jdbc-store": { "dialect": "H2", "string-keyed-table": { "prefix": "ISPN_STRING_TABLE", "create-on-start": true, "id-column": { "name": "ID_COLUMN", "type": "VARCHAR(255)" }, "data-column": { "name": "DATA_COLUMN", "type": "BINARY" }, "timestamp-column": { "name": "TIMESTAMP_COLUMN", "type": "BIGINT" }, "segment-column": { "name": "SEGMENT_COLUMN", "type": "INT" } }, "connection-pool": { "connection-url": "jdbc:h2:mem:infinispan", "driver": "org.h2.Driver", "username": "sa", "password": "changeme" } } } } }
YAML
distributedCache: persistence: stringKeyedJdbcStore: dialect: "H2" stringKeyedTable: prefix: "ISPN_STRING_TABLE" createOnStart: true idColumn: name: "ID_COLUMN" type: "VARCHAR(255)" dataColumn: name: "DATA_COLUMN" type: "BINARY" timestampColumn: name: "TIMESTAMP_COLUMN" type: "BIGINT" segmentColumn: name: "SEGMENT_COLUMN" type: "INT" connectionPool: connectionUrl: "jdbc:h2:mem:infinispan" driver: "org.h2.Driver" username: "sa" password: "changeme"
ConfigurationBuilder
ConfigurationBuilder builder = new ConfigurationBuilder(); builder.persistence().addStore(JdbcStringBasedStoreConfigurationBuilder.class) .dialect(DatabaseType.H2) .table() .dropOnExit(true) .createOnStart(true) .tableNamePrefix("ISPN_STRING_TABLE") .idColumnName("ID_COLUMN").idColumnType("VARCHAR(255)") .dataColumnName("DATA_COLUMN").dataColumnType("BINARY") .timestampColumnName("TIMESTAMP_COLUMN").timestampColumnType("BIGINT") .segmentColumnName("SEGMENT_COLUMN").segmentColumnType("INT") .connectionPool() .connectionUrl("jdbc:h2:mem:infinispan") .username("sa") .password("changeme") .driverClass("org.h2.Driver");
Additional resources
6.12. RocksDB cache stores
RocksDB provides key-value filesystem-based storage with high performance and reliability for highly concurrent environments.
RocksDB cache stores, RocksDBStore
, use two databases. One database provides a primary cache store for data in memory; the other database holds entries that Data Grid expires from memory.
Parameter | Description |
---|---|
| Specifies the path to the RocksDB database that provides the primary cache store. If you do not set the location, it is automatically created. Note that the path must be relative to the global persistent location. |
| Specifies the path to the RocksDB database that provides the cache store for expired data. If you do not set the location, it is automatically created. Note that the path must be relative to the global persistent location. |
| Sets the size of the in-memory queue for expiring entries. When the queue reaches the size, Data Grid flushes the expired into the RocksDB cache store. |
| Sets the maximum number of entries before deleting and re-initializing (re-init) the RocksDB database. For smaller size cache stores, iterating through all entries and removing each one individually can provide a faster method. |
Tuning parameters
You can also specify the following RocksDB tuning parameters:
-
compressionType
-
blockSize
-
cacheSize
Configuration properties
Optionally set properties in the configuration as follows:
-
Prefix properties with
database
to adjust and tune RocksDB databases. -
Prefix properties with
data
to configure the column families in which RocksDB stores your data.
<property name="database.max_background_compactions">2</property> <property name="data.write_buffer_size">64MB</property> <property name="data.compression_per_level">kNoCompression:kNoCompression:kNoCompression:kSnappyCompression:kZSTD:kZSTD</property>
Segmentation
RocksDBStore
supports segmentation and creates a separate column family per segment. Segmented RocksDB cache stores improve lookup performance and iteration but slightly lower performance of write operations.
You should not configure more than a few hundred segments. RocksDB is not designed to have an unlimited number of column families. Too many segments also significantly increases cache store start time.
RocksDB cache store configuration
XML
<local-cache> <persistence> <rocksdb-store xmlns="urn:infinispan:config:store:rocksdb:13.0" path="rocksdb/data"> <expiration path="rocksdb/expired"/> </rocksdb-store> </persistence> </local-cache>
JSON
{ "local-cache": { "persistence": { "rocksdb-store": { "path": "rocksdb/data", "expiration": { "path": "rocksdb/expired" } } } } }
YAML
localCache: persistence: rocksdbStore: path: "rocksdb/data" expiration: path: "rocksdb/expired"
ConfigurationBuilder
Configuration cacheConfig = new ConfigurationBuilder().persistence() .addStore(RocksDBStoreConfigurationBuilder.class) .build(); EmbeddedCacheManager cacheManager = new DefaultCacheManager(cacheConfig); Cache<String, User> usersCache = cacheManager.getCache("usersCache"); usersCache.put("raytsang", new User(...));
ConfigurationBuilder with properties
Properties props = new Properties(); props.put("database.max_background_compactions", "2"); props.put("data.write_buffer_size", "512MB"); Configuration cacheConfig = new ConfigurationBuilder().persistence() .addStore(RocksDBStoreConfigurationBuilder.class) .location("rocksdb/data") .expiredLocation("rocksdb/expired") .properties(props) .build();
6.13. Remote cache stores
Remote cache stores, RemoteStore
, use the Hot Rod protocol to store data on Data Grid clusters.
If you configure remote cache stores as shared you cannot preload data. In other words if shared="true"
in your configuration then you must set preload="false"
.
Segmentation
RemoteStore
supports segmentation and can publish keys and entries by segment, which makes bulk operations more efficient. However, segmentation is available only with Data Grid Hot Rod protocol version 2.3 or later.
When you enable segmentation for RemoteStore
, it uses the number of segments that you define in your Data Grid server configuration.
If the source cache is segmented and uses a different number of segments than RemoteStore
, then incorrect values are returned for bulk operations. In this case, you should disable segmentation for RemoteStore
.
Remote cache store configuration
XML
<distributed-cache> <persistence> <remote-store xmlns="urn:infinispan:config:store:remote:13.0" cache="mycache" raw-values="true"> <remote-server host="one" port="12111" /> <remote-server host="two" /> <connection-pool max-active="10" exhausted-action="CREATE_NEW" /> </remote-store> </persistence> </distributed-cache>
JSON
{ "distributed-cache": { "remote-store": { "cache": "mycache", "raw-values": "true", "remote-server": [ { "host": "one", "port": "12111" }, { "host": "two" } ], "connection-pool": { "max-active": "10", "exhausted-action": "CREATE_NEW" } } } }
YAML
distributedCache: remoteStore: cache: "mycache" rawValues: "true" remoteServer: - host: "one" port: "12111" - host: "two" connectionPool: maxActive: "10" exhaustedAction: "CREATE_NEW"
ConfigurationBuilder
ConfigurationBuilder b = new ConfigurationBuilder(); b.persistence().addStore(RemoteStoreConfigurationBuilder.class) .fetchPersistentState(false) .ignoreModifications(false) .purgeOnStartup(false) .remoteCacheName("mycache") .rawValues(true) .addServer() .host("one").port(12111) .addServer() .host("two") .connectionPool() .maxActive(10) .exhaustedAction(ExhaustedAction.CREATE_NEW) .async().enable();
6.14. JPA cache stores
JPA (Java Persistence API) cache stores, JpaStore
, use formal schema to persist data.
Other applications can then read from persistent storage to load data from Data Grid. However, other applications should not use persistent storage concurrently with Data Grid.
When using JPA cache stores, you should take the following into consideration:
- Keys should be the ID of the entity. Values should be the entity object.
-
Only a single
@Id
or@EmbeddedId
annotation is allowed. -
Auto-generated IDs with the
@GeneratedValue
annotation are not supported. - All entries are stored as immortal.
- JPA cache stores do not support segmentation.
You should use JPA cache stores with embedded Data Grid caches only.
JPA cache store configuration
XML
<local-cache name="vehicleCache"> <persistence passivation="false"> <jpa-store xmlns="urn:infinispan:config:store:jpa:13.0" persistence-unit="org.infinispan.persistence.jpa.configurationTest" entity-class="org.infinispan.persistence.jpa.entity.Vehicle"> /> </persistence> </local-cache>
ConfigurationBuilder
Configuration cacheConfig = new ConfigurationBuilder().persistence() .addStore(JpaStoreConfigurationBuilder.class) .persistenceUnitName("org.infinispan.loaders.jpa.configurationTest") .entityClass(User.class) .build();
Configuration parameters
Declarative | Programmatic | Description |
---|---|---|
|
|
Specifies the JPA persistence unit name in the JPA configuration file, |
|
| Specifies the fully qualified JPA entity class name that is expected to be stored in this cache. Only one class is allowed. |
Additional resources
6.14.1. JPA cache store example
This section provides an example for using JPA cache stores.
Prerequistes
- Configure Data Grid to marshall your JPA entities.
Procedure
Define a persistence unit "myPersistenceUnit" in
persistence.xml
.<persistence-unit name="myPersistenceUnit"> <!-- Persistence configuration goes here. --> </persistence-unit>
Create a user entity class.
@Entity public class User implements Serializable { @Id private String username; private String firstName; private String lastName; ... }
Configure a cache named "usersCache" with a JPA cache store.
Then you can configure a cache "usersCache" to use JPA Cache Store, so that when you put data into the cache, the data would be persisted into the database based on JPA configuration.
EmbeddedCacheManager cacheManager = ...; Configuration cacheConfig = new ConfigurationBuilder().persistence() .addStore(JpaStoreConfigurationBuilder.class) .persistenceUnitName("org.infinispan.loaders.jpa.configurationTest") .entityClass(User.class) .build(); cacheManager.defineCache("usersCache", cacheConfig); Cache<String, User> usersCache = cacheManager.getCache("usersCache"); usersCache.put("raytsang", new User(...));
Caches that use a JPA cache store can store one type of data only, as in the following example:
Cache<String, User> usersCache = cacheManager.getCache("myJPACache"); // Cache is configured for the User entity class usersCache.put("username", new User()); // Cannot configure caches to use another entity class with JPA cache stores Cache<Integer, Teacher> teachersCache = cacheManager.getCache("myJPACache"); teachersCache.put(1, new Teacher()); // The put request does not work for the Teacher entity class
The
@EmbeddedId
annotation allows you to use composite keys, as in the following example:@Entity public class Vehicle implements Serializable { @EmbeddedId private VehicleId id; private String color; ... } @Embeddable public class VehicleId implements Serializable { private String state; private String licensePlate; ... }
Additional resources
6.15. Cluster cache loaders
ClusterCacheLoader
retrieves data from other Data Grid cluster members but does not persist data. In other words, ClusterCacheLoader
is not a cache store.
ClusterLoader
is deprecated and planned for removal in a future version.
ClusterCacheLoader
provides a non-blocking partial alternative to state transfer. ClusterCacheLoader
fetches keys from other nodes on demand if those keys are not available on the local node, which is similar to lazily loading cache content.
The following points also apply to ClusterCacheLoader
:
-
Preloading does not take effect (
preload=true
). -
Fetching persistent state is not supported (
fetch-state=true
). - Segmentation is not supported.
Cluster cache loader configuration
XML
<distributed-cache> <persistence> <cluster-loader preload="true" remote-timeout="500"/> </persistence> </distributed-cache>
JSON
{ "distributed-cache": { "persistence" : { "cluster-loader" : { "preload" : true, "remote-timeout" : "500" } } } }
YAML
distributedCache: persistence: clusterLoader: preload: "true" remoteTimeout: "500"
ConfigurationBuilder
ConfigurationBuilder b = new ConfigurationBuilder(); b.persistence() .addClusterLoader() .remoteCallTimeout(500);
Additional resources
6.16. Creating custom cache store implementations
You can create custom cache stores through the Data Grid persistent SPI.
6.16.1. Data Grid Persistence SPI
The Data Grid Service Provider Interface (SPI) enables read and write operations to external storage through the NonBlockingStore
interface and has the following features:
- Portability across JCache-compliant vendors
-
Data Grid maintains compatibility between the
NonBlockingStore
interface and theJSR-107
JCache specification by using an adapter that handles blocking code. - Simplified transaction integration
- Data Grid automatically handles locking so your implementations do not need to coordinate concurrent access to persistent stores. Depending on the locking mode you use, concurrent writes to the same key generally do not occur. However, you should expect operations on the persistent storage to originate from multiple threads and create implementations to tolerate this behavior.
- Parallel iteration
- Data Grid lets you iterate over entries in persistent stores with multiple threads in parallel.
- Reduced serialization resulting in less CPU usage
- Data Grid exposes stored entries in a serialized format that can be transmitted remotely. For this reason, Data Grid does not need to deserialize entries that it retrieves from persistent storage and then serialize again when writing to the wire.
Additional resources
6.16.2. Creating cache stores
Create custom cache stores with implementations of the NonBlockingStore
API.
Procedure
- Implement the appropriate Data Grid persistent SPIs.
-
Annotate your store class with the
@ConfiguredBy
annotation if it has a custom configuration. Create a custom cache store configuration and builder if desired.
-
Extend
AbstractStoreConfiguration
andAbstractStoreConfigurationBuilder
. Optionally add the following annotations to your store Configuration class to ensure that your custom configuration builder parses your cache store configuration from XML:
-
@ConfigurationFor
@BuiltBy
If you do not add these annotations, then
CustomStoreConfigurationBuilder
parses the common store attributes defined inAbstractStoreConfiguration
and any additional elements are ignored.NoteIf a configuration does not declare the
@ConfigurationFor
annotation, a warning message is logged when Data Grid initializes the cache.
-
-
Extend
6.16.3. Examples of custom cache store configuration
The following are examples show how to configure Data Grid with custom cache store implementations:
XML
<distributed-cache> <persistence> <store class="org.infinispan.persistence.example.MyInMemoryStore" /> </persistence> </distributed-cache>
JSON
{ "distributed-cache": { "persistence" : { "store" : { "class" : "org.infinispan.persistence.example.MyInMemoryStore" } } } }
YAML
distributedCache: persistence: store: class: "org.infinispan.persistence.example.MyInMemoryStore"
ConfigurationBuilder
Configuration config = new ConfigurationBuilder() .persistence() .addStore(CustomStoreConfigurationBuilder.class) .build();
6.16.4. Deploying custom cache stores
To use your cache store implementation with Data Grid Server, you must provide it with a JAR file.
Prerequisites
Stop Data Grid Server if it is running.
Data Grid loads JAR files at startup only.
Procedure
- Package your custom cache store implementation in a JAR file.
-
Add your JAR file to the
server/lib
directory of your Data Grid Server installation.
6.17. Migrating data between cache stores
Data Grid provides a utility to migrate data from one cache store to another.
6.17.1. Cache store migrator
Data Grid provides the StoreMigrator.java
utility that recreates data for the latest Data Grid cache store implementations.
StoreMigrator
takes a cache store from a previous version of Data Grid as source and uses a cache store implementation as target.
When you run StoreMigrator
, it creates the target cache with the cache store type that you define using the EmbeddedCacheManager
interface. StoreMigrator
then loads entries from the source store into memory and then puts them into the target cache.
StoreMigrator
also lets you migrate data from one type of cache store to another. For example, you can migrate from a JDBC string-based cache store to a RocksDB cache store.
StoreMigrator
cannot migrate data from segmented cache stores to:
- Non-segmented cache store.
- Segmented cache stores that have a different number of segments.
6.17.2. Getting the cache store migrator
StoreMigrator
is available as part of the Data Grid tools library, infinispan-tools
, and is included in the Maven repository.
Procedure
Configure your
pom.xml
forStoreMigrator
as follows:<?xml version="1.0" encoding="UTF-8"?> <project xmlns="http://maven.apache.org/POM/4.0.0" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xsi:schemaLocation="http://maven.apache.org/POM/4.0.0 http://maven.apache.org/xsd/maven-4.0.0.xsd"> <modelVersion>4.0.0</modelVersion> <groupId>org.infinispan.example</groupId> <artifactId>jdbc-migrator-example</artifactId> <version>1.0-SNAPSHOT</version> <dependencies> <dependency> <groupId>org.infinispan</groupId> <artifactId>infinispan-tools</artifactId> </dependency> <!-- Additional dependencies --> </dependencies> <build> <plugins> <plugin> <groupId>org.codehaus.mojo</groupId> <artifactId>exec-maven-plugin</artifactId> <version>1.2.1</version> <executions> <execution> <goals> <goal>java</goal> </goals> </execution> </executions> <configuration> <mainClass>org.infinispan.tools.store.migrator.StoreMigrator</mainClass> <arguments> <argument>path/to/migrator.properties</argument> </arguments> </configuration> </plugin> </plugins> </build> </project>
6.17.3. Configuring the cache store migrator
Set properties for source and target cache stores in a migrator.properties
file.
Procedure
-
Create a
migrator.properties
file. Configure the source cache store in
migrator.properties
.Prepend all configuration properties with
source.
as in the following example:source.type=SOFT_INDEX_FILE_STORE source.cache_name=myCache source.location=/path/to/source/sifs source.version=<version>
Configure the target cache store in
migrator.properties
.Prepend all configuration properties with
target.
as in the following example:target.type=SINGLE_FILE_STORE target.cache_name=myCache target.location=/path/to/target/sfs.dat
6.17.3.1. Configuration properties for the cache store migrator
Configure source and target cache stores in a StoreMigrator
properties.
Property | Description | Required/Optional |
---|---|---|
| Specifies the type of cache store type for a source or target.
| Required |
Property | Description | Example Value | Required/Optional |
---|---|---|---|
| Names the cache that the store backs. |
| Required |
| Specifies the number of segments for target cache stores that can use segmentation.
The number of segments must match In other words, the number of segments for a cache store must match the number of segments for the corresponding cache. If the number of segments is not the same, Data Grid cannot read data from the cache store. |
| Optional |
Property | Description | Required/Optional |
---|---|---|
| Specifies the dialect of the underlying database. | Required |
|
Specifies the marshaller version for source cache stores.
*
*
*
*
*
* | Required for source stores only. |
| Specifies a custom marshaller class. | Required if using custom marshallers. |
|
Specifies a comma-separated list of custom | Optional |
| Specifies the JDBC connection URL. | Required |
| Specifies the class of the JDBC driver. | Required |
| Specifies a database username. | Required |
| Specifies a password for the database username. | Required |
| Sets the database major version. | Optional |
| Sets the database minor version. | Optional |
| Disables database upsert. | Optional |
| Specifies if table indexes are created. | Optional |
| Specifies additional prefixes for the table name. | Optional |
| Specifies the column name. | Required |
| Specifies the column type. | Required |
|
Specifies the | Optional |
To migrate from Binary cache stores in older Data Grid versions, change table.string.*
to table.binary.\*
in the following properties:
-
source.table.binary.table_name_prefix
-
source.table.binary.<id\|data\|timestamp>.name
-
source.table.binary.<id\|data\|timestamp>.type
# Example configuration for migrating to a JDBC String-Based cache store target.type=STRING target.cache_name=myCache target.dialect=POSTGRES target.marshaller.class=org.example.CustomMarshaller target.marshaller.externalizers=25:Externalizer1,org.example.Externalizer2 target.connection_pool.connection_url=jdbc:postgresql:postgres target.connection_pool.driver_class=org.postrgesql.Driver target.connection_pool.username=postgres target.connection_pool.password=redhat target.db.major_version=9 target.db.minor_version=5 target.db.disable_upsert=false target.db.disable_indexing=false target.table.string.table_name_prefix=tablePrefix target.table.string.id.name=id_column target.table.string.data.name=datum_column target.table.string.timestamp.name=timestamp_column target.table.string.id.type=VARCHAR target.table.string.data.type=bytea target.table.string.timestamp.type=BIGINT target.key_to_string_mapper=org.infinispan.persistence.keymappers. DefaultTwoWayKey2StringMapper
Property | Description | Required/Optional |
---|---|---|
| Sets the database directory. | Required |
| Specifies the compression type to use. | Optional |
# Example configuration for migrating from a RocksDB cache store. source.type=ROCKSDB source.cache_name=myCache source.location=/path/to/rocksdb/database source.compression=SNAPPY
Property | Description | Required/Optional |
---|---|---|
|
Sets the directory that contains the cache store | Required |
# Example configuration for migrating to a Single File cache store. target.type=SINGLE_FILE_STORE target.cache_name=myCache target.location=/path/to/sfs.dat
Property | Description | Value |
---|---|---|
Required/Optional |
| Sets the database directory. |
Required |
| Sets the database index directory. |
# Example configuration for migrating to a Soft-Index File cache store. target.type=SOFT_INDEX_FILE_STORE target.cache_name=myCache target.location=path/to/sifs/database target.location=path/to/sifs/index
6.17.4. Migrating Data Grid cache stores
Run StoreMigrator
to migrate data from one cache store to another.
Prerequisites
-
Get
infinispan-tools.jar
. -
Create a
migrator.properties
file that configures the source and target cache stores.
Procedure
If you build
infinispan-tools.jar
from source, do the following:-
Add
infinispan-tools.jar
and dependencies for your source and target databases, such as JDBC drivers, to your classpath. -
Specify
migrator.properties
file as an argument forStoreMigrator
.
-
Add
If you pull
infinispan-tools.jar
from the Maven repository, run the following command:mvn exec:java