Zend_Search_Lucene Introduction
The Zend_Search_Lucene component is intended to provide a
ready-for-use full-text search solution. It doesn't require any PHP
extensionsThough some UTF-8 processing functionality
requires the mbstring extension to be turned
on or additional software to be installed, and can be used
immediately after Zend Framework installation.
Zend_Search_Lucene is a pure PHP port of the
popular open source full-text search engine known as Apache Lucene. See http://lucene.apache.org/ for the details.
Information must be indexed to be available for searching.
Zend_Search_Lucene and Java Lucene use a document concept known as an
"atomic indexing item."
Each document is a set of fields: <name, value> pairs where name and value are
UTF-8 stringsBinary strings are also allowed to be used
as field values. Any subset of the document fields may be marked
as "indexed" to include field data in the text indexing process.
Field values may or may not be tokenized while indexing. If a field is not tokenized, then
the field value is stored as one term; otherwise, the current analyzer is used for
tokenization.
Several analyzers are provided within the Zend_Search_Lucene package.
The default analyzer works with ASCII text (since the
UTF-8 analyzer needs the mbstring extension to be
turned on). It is case insensitive, and it skips numbers. Use other analyzers or create your
own analyzer if you need to change this behavior.
Using analyzers during indexing and searching
Important note! Search queries are also tokenized using the "current analyzer", so the
same analyzer must be set as the default during both the indexing and searching process.
This will guarantee that source and searched text will be transformed into terms in the
same way.
Field values are optionally stored within an index. This allows the original field data to
be retrieved from the index while searching. This is the only way to associate search
results with the original data (internal document IDs may be changed after index
optimization or auto-optimization).
The thing that should be remembered is that a Lucene index is not a database. It doesn't
provide index backup mechanisms except backup of the file system directory. It doesn't
provide transactional mechanisms though concurrent index update as well as concurrent update
and read are supported. It doesn't compare with databases in data retrieving speed.
So it's good idea:
Not to use Lucene index as a storage since it may dramatically
decrease search hit retrieving performance. Store only unique document identifiers
(doc paths, URLs, database unique IDs) and associated data within
an index. E.g. title, annotation, category, language info, avatar. (Note: a field
may be included in indexing, but not stored, or stored, but not indexed).
To write functionality that can rebuild an index completely if it's corrupted for
any reason.
Individual documents in the index may have completely different sets of fields. The same
fields in different documents don't need to have the same attributes. E.g. a field may be
indexed for one document and skipped from indexing for another. The same applies for
storing, tokenizing, or treating field value as a binary string.