
WebSphere Commerce search performance tuning
There are several search performance tuning hints and tips to consider when administering WebSphere Commerce search.
Indexing server
Consider the following factors when tuning the indexing server:
Search caching for the indexing server
You should typically disable all Solr caches on the indexing server.
When to perform full search index builds
The WebSphere Commerce search index is automatically built when certain business tasks are performed, as outlined in ../refs/rsdsearchindexhints.html. In several cases, common business tasks result in delta index builds that do not pose a significant risk to production system performance. However, performing several delta index builds without occasional full index builds might result in the search index gradually degrading over time due to fragmentation. To avoid this issue, performing full search index builds when possible ensures that the search index performs well over time.
When Lucene receives a delete request, it does not delete entries from the index, but instead marks them for deletion and adds updated records to the end of the index. This results in the catalog unevenly spreading out across different segment data files in the search index, and might result in increased search response times. If you have a dedicated indexing server, consider scheduling a full search index build that runs in the background approximately once per month, so that the deleted entries are flushed out, and to optimize the data.
Tuning index buffer size and commit actions during dataimport (buildindex)
- Allocate more memory for index buffering by changing the value
for the ramBufferSizeMB parameter. 2048 MB is
the maximum memory that you can allocate:
<ramBufferSizeMB>2048</ramBufferSizeMB>
- Disable the document-based count buffer setting to reduce the
occurrence of commit actions by commenting out the maxBufferedDocs parameter:
<!-- <maxBufferedDocs>1000</maxBufferedDocs> -->
- Disable the server side automatic commit trigger to also reduce
occurrence of commit actions by commenting out the autoCommit trigger:
<!-- <autoCommit> <maxDocs>10000</maxDocs> <maxTime>1000</maxTime> </autoCommit> -->
Paging and database heap size configuration
- Increase the default paging size for your operating system. For
example,
3 GB
. In cases where the operating system requires a higher paging size, adding more memory to the system also helps to resolve issues. - Increase the default database heapsize to a larger value. For
example, increase the DB2 heap size to
8192
. Increase the file descriptor limit to a higher value. For example: ulimit -n 8192.
Heap size configuration
1280
.- Using large heap sizes in WebSphere Commerce search, for example,
those more than 4 GB in size, require a 64-bit installation of Apache
Solr. That is, for example, if you intend to increase the heap size
to values greater than
1280
, ensure that you install the 64-bit version of Apache Solr. - Do not exceed 28 GB of heap size per JVM, even when using a 64-bit environment. In a 64-bit JVM, there is an address compressed reference optimization feature that might be disabled if the heap space exceeds 28 GB, which results in up to a 30% overall throughput degradation.

Shared pool size configuration
Ensure that the SHARED_POOL_SIZE is configured according to your environment. Increasing the shared pool size might improve the performance of the di-preprocess utility.
ALTER SYSTEM SET SHARED_POOL_SIZE='668M' SCOPE=BOTH

Multithreaded running of SQL query expressions
Consider using multithreading in DB2 to allow for increased performance when preprocessing the search index.
To do so, update the datasource property of com.ibm.db2.jcc.DB2BaseDataSource to ANY. For more information, see Common IBM Data Server Driver for JDBC and SQLJ properties for DB2 servers.
Search runtime server
Consider the following factors when tuning the search runtime server:
Caching considerations
Search caching for the runtime production subordinate servers
The starter configuration included in the CatalogEntry solrconfig.xml file is only designed for a small scale development environment, such as WebSphere Commerce Developer.
- queryResultWindowSize
- queryResultMaxDocsCached
- queryResultCache
- filterCache (Required on the product index when an extension index such as Inventory exists)
- documentCache (Required on the product index when an extension index such as Inventory exists)
The following example demonstrates how to define cache sizes for the Catalog Entry index and its corresponding memory heap space required in the JVM:
- Catalog size
- 1.8 million entries
- Total attributes
- 2000
- Total categories
- 10000
- Each product contains
- 20 attributes
- Average size of each Catalog Entry
- 10 KB
- queryResultWindowSize
- The size of each search result page in the storefront, such as 12 items per page. This includes 2 prefetch pages.
- queryResultMaxDocsCached
- For optimal performance, set this value to be the same value as queryResultWindowSize.
- queryResultCache
- The size of each queryResultCache is 4 bytes per docId (int) reference x queryResultWindowSize, for a value of 144 bytes.
- filterCache
- Assume an average search result size to be 5% of the entire catalog size of 1.8 M, or 90,000.
- documentCache
- Assume an average size of each Catalog Entry document to be 10 KB.
As a result, the estimated JVM heap size required for each Catalog Entry core is 4.3 GB (1.44 GB + 1.8 GB + 1.0 GB).

Managing cache sizes to conform to JVM memory
Ensure that you configure the fieldValueCache of the catalog entry index core in the solrconfig.xml file. This configuration can prevent out-of-memory issues by limiting its size to conform to JVM memory.
The cache set size depends on the facets field quantity and catalog size. The cache entry size can roughly be computed by the quantity of catalog entries in the index core, which is then multiplied by 4 bytes. That is, the potential quantity of cache entries equals the quantity of potential facets.
<fieldValueCache class="solr.FastLRUCache"
size="300"
autowarmCount="128"
showItems="32" />
solr.FastLRUCache
caching implementation does not have a hard
limit to its size. It is useful for caches that have high hit ratios, but may significantly exceed
the size value that you set. If you are using solr.FastLRUCache
, monitor your heap
utilization during peak periods. If the cache is significantly exceeding its limit, consider
changing the fieldValueCache class to solr.LRUCache
in order
to avoid performance issues or an out-of-memory condition. For more information, see Solr Caching.

Tuning the search relevancy data cache
Ensure that you tune the search relevancy data cache for your catalog size.
- service/cache/WCSearchNavigationDistributedMapCache
Each entry ranges between 8 - 10 KB, containing 10 - 20 relevancy fields. The cache instance also contains other types of cache entries. The database is used for every page hit when the cache instance is full, reducing performance.

Tuning the search data cache for faceted navigation
The WebSphere Commerce search server code uses the WebSphere Dynamic Cache facility to perform caching of database query results. Similar to the data cache used by the main WebSphere Commerce server, this caching code is referred to as the WebSphere Commerce search server data cache
For more information, see WebSphere Commerce search data cache.

Facet performance considerations
- Tune the size of the services/cache/WCSearchNavigationDistributedMapCache cache instance according to the number of categories.
- Tune the size of the services/cache/WCSearchAttributeDistributedMapCache cache instance according to the number of attribute dictionary facetable attributes.
- Avoid enabling many attribute dictionary faceted navigation attributes in the storefront (Show facets in search results). Avoiding many of these attributes can help avoid Solr out-of-memory issues.
Extension index considerations
- The filterCache and documentCache are required on the product index when an extension index such as Inventory exists in WebSphere Commerce search, so that the query component functions correctly.
- You should typically disable all other internal Solr caches for the extension index in the search runtime.
Configuration options
Search configuration
Ensure that you are
familiar with the various Solr configuration parameters, Solr Wiki: solrconfig.xml. The documentation contains
information for typical configuration customizations that can potentially
increase your search server performance. For example, if your store
contains a high number of categories or contracts, or if your search
server is receiving Too many boolean clauses
errors,
increase the default value for maxBooleanClauses.
Indexing changes and other considerations
Garbage collection
The default garbage collector policy for the WebSphere Commerce JVM is the Generational Concurrent Garbage Collector. Typically, you do not need to change this garbage collector policy.
For more information, see Generational Concurrent Garbage Collector.
Spell checking
There might be a performance impact when you enable spell checking for WebSphere Commerce search terms.
You might see performance gains in transaction throughput if either spell checking is skipped where necessary, or when users search for products with catalog overrides.
For example, a search term that is submitted in a different language than the storefront requires resources for spell checking. However, product names with catalog overrides are already known and do not require any resources for spell checking.
The spell check index is used for spell checking.
The spell checker component,
DirectSolrSpellChecker
, uses data directly from the CatalogEntry index, instead of relying on a separate stand-alone index.





Tuning the spell check index
The spell check index ensures that automatically suggested search terms accurately reflect the terms in the search index.
It is built automatically during commits (build index and replication), including subordinate search nodes in a clustered environment.
<lst name="spellchecker">
<str name="name">default</str>
<str name="field">spellCheck</str>
<str name="spellcheckIndexDir">spellchecker</str>
<str name="classname">solr.IndexBasedSpellChecker</str>
<str name="field">spellCheck</str>
<str name="buildOnCommit">true</str>
<str name="buildOnOptimize">true</str>
<str name="spellcheckIndexDir">./spellchecker</str>
http://host_name:search_port/solr/MC_masterCatalogId_CatalogEntry_locale/select?q=query&spellcheck=true&spellcheck.collate=true&spellcheck.build=true
Improving Store Preview performance for search changes
To improve performance when previewing search changes, you can skip indexing unstructured content when business users launch Store Preview:
In
the wc-component.xml file, set the IndexUnstructured
property
to false
.
For more information, see Changing properties in the component configuration file (wc-component.xml) (Search EAR).
Performance monitoring
- Solr administrative interface
- The Solr native administrative interface can be used to gather runtime statistics for each Solr core that is running on the search server. It can also be used to perform simple search queries. For more information, see Enabling the Solr administrative interface.
- Lucene Index Toolbox (Luke)
- Luke is a development and diagnostic tool for search indexes. It enables you to display and modify search index content. For more information, see Luke - Lucene Index Toolbox.
- WebSphere Application Server JMX clients
- JMX clients can read runtime statistics from Solr.

Advanced configuration of the WebSphere Commerce search configuration file (wc-search.xml) (WC EAR)
Ensure that your advanced configuration is tuned to meet your performance needs.
<_config:server name="AdvancedConfiguration_1">
<_config:common-http
URL="http://host_name:3737/solr/"
allowCompression="true" connectionTimeout="15000"
defaultMaxConnectionsPerHost="100" followRedirects="false"
maxRetries="1" maxTotalConnections="100"
retryTimeInterval="1000" soTimeout="5000"/>
</_config:server>
To tuned values:
<_config:server name="AdvancedConfiguration_1">
<_config:common-http
URL="http://host_name:3737/solr/"
allowCompression="true" connectionTimeout="1200000"
defaultMaxConnectionsPerHost="600" followRedirects="false"
maxRetries="1" maxTotalConnections="600"
retryTimeInterval="6" soTimeout="1200000"/>
</_config:server>
For more information about this parameter and other wc-search.xml configurations, see WebSphere Commerce search configuration file (wc-search.xml) (WC EAR).