CONTENTS

NAME

SQL::Translator::Manual - sqlfairy user manual

SYNOPSIS

SQL::Translator (AKA "SQLFairy") is a collection of modules for transforming (mainly) SQL DDL files into a variety of other formats, including other SQL dialects, documentation, images, and code. In this manual, we will attempt to address how to use SQLFairy for common tasks. For a lower-level discussion of how the code works, please read the documentation for SQL::Translator.

It may prove helpful to have a general understanding of the SQLFairy code before continuing. The code can be broken into three conceptual groupings:

It's not necessary to understand how to write or manipulate any of these for most common tasks, but you should aware of the concepts as they will be referenced later in this document.

SQLFAIRY SCRIPTS

Most common tasks can be accomplished through the use of the script interfaces to the SQL::Translator code. All SQLFairy scripts begin with "sqlt." Here are the scripts and a description of what they each do:

To read the full documentation for each script, use "perldoc" (or execute any of the command-line scripts with the "--help" flag).

CONVERTING SQL DIALECTS

Probably the most common task SQLFairy is used for is to convert one dialect of SQL to another. If you have a text description of an SQL database (AKA a "DDL" -- "Data Definition Language"), then you should use the "sqlt" script with switches to indicate the parser and producer and the name of the text file as the final argument. For example, to convert the "foo.sql" MySQL schema to a version suitable for PostgreSQL, you would do the following:

$ sqlt -f MySQL -t PostgreSQL foo.sql > foo-pg.sql

The "from" and "to" options are case-sensitive and must match exactly the names of the Parser and Producer classes in SQL::Translator. For a complete listing of your options, execute "sqlt" with the "--list" flag.

EXTRACT SQL SCHEMAS DIRECTLY FROM DATABASE

It is possible to extract some schemas directly from the database without parsing a text file (the "foo.sql" in the above example). This can prove significantly faster than parsing a text file. To do this, use the "DBI" parser and provide the necessary arguments to connect to the database and indicate the producer class, like so:

$ sqlt -f DBI --dsn dbi:mysql:FOO --db-user guest \
  --db-password p4ssw0rd -t PostgreSQL > foo

The "--list" option to "sqlt" will show the databases supported by DBI parsers.

HANDLING NON-SQL DATA

Certain structured document formats can be easily thought of as tables. SQLFairy can parse Microsoft Excel spreadsheets and arbitrarily delimited text files just as if they were schemas which contained only one table definition. The column names are normalized to something sane for most databases (whitespace is converted to underscores and non-word characters are removed), and the data in each field is scanned to determine the appropriate data type (character, integer, or float) and size. For instance, to convert a comma-separated file to an SQLite database, do the following:

$ sqlt -f xSV --fs ',' -t SQLite foo.csv > foo-sqlite.sql

Additionally, there is a non-SQL representation of relational schemas namely XML. Additionally, the only XML supported is our own version; however, it would be fairly easy to add an XML parser for something like the TorqueDB (http://db.apache.org/torque/) project. The actual parsing of XML should be trivial given the number of XML parsers available, so all that would be left would be to map the specific concepts in the source file to the Schema objects in SQLFairy.

To convert a schema in SQLFairy's XML dialect to Oracle, do the following:

$ sqlt -f XML-SQLFairy -t Oracle foo.xml > foo-oracle.sql

SERIALIZING SCHEMAS

Parsing a schema is generally the most computationally expensive operation performed by SQLFairy, so it may behoove you to serialize a parsed schema if you need to perform repeated conversions. For example, as part of a build process the author converts a MySQL schema first to YAML, then to PostgreSQL, Oracle, SQLite and Sybase. Additionally, a variety of documentation in HTML and images is produced. This can be accomplished like so:

$ sqlt -f MySQL -t YAML schema-mysql.sql > schema.yaml
$ sqlt -f YAML -t Oracle schema.yaml > schema-oracle.sql
$ sqlt -f YAML -t PostgreSQL schema.yaml > schema-postgresql.sql
$ ...

SQLFairy has three serialization producers, none of which is superior to the other in their description of a schema.

VISUALIZING SQL SCHEMAS

The visualization tools in SQLFairy can graphically represent the tables, fields, datatypes and sizes, constraints, and foreign key relationships in a very compact and intuitive format. This can be very beneficial in understanding and document large or small schemas. Two producers in SQLFairy will create pseudo-E/R (entity-relationship) diagrams:

AUTOMATED CODE-GENERATION

Given that so many applications interact with SQL databases, it's no wonder that people have automated code to deal with this interaction. Class::DBI from CPAN is one such module that allows a developer to describe the relationships between tables and fields in class declarations and then generates all the SQL to interact (SELECT, UPDATE, DELETE, INSERT statements) at runtime. Obviously, the schema already describes itself, so it only makes sense that you should be able to generate this kind of code directly from the schema. The "ClassDBI" producer in SQLFairy does just this, creating a Perl module that inherits from Class::DBI and sets up most of the code needed to interact with the database. Here is an example of how to do this:

$ sqlt -f MySQL -t ClassDBI foo.sql > Foo.pm

Then simply edit Foo.pm as needed and include it in your code.

CREATING A DATA DUMPER SCRIPT

The Dumper producer creates a Perl script that can select the fields in each table and then create "INSERT" statements for each record in the database similar to the output generated by MySQL's "mysqldump" program:

$ sqlt -f YAML -t Dumper --dumper-db-user guest \
> --dumper-db-pass p4ssw0rd --dumper-dsn dbi:mysql:FOO \
> foo.yaml > foo-dumper.pl

And then execute the resulting script to dump the data:

$ chmod +x foo-dumper.pl
$ ./foo-dumper.pl > foo-data.sql

The dumper script also has a number of options available. Execute the script with the "--help" flag to read about them.

DOCUMENTING WITH SQL::TRANSLATOR

SQLFairy offers two producers to help document schemas:

TEMPLATE-BASED MANIPULATION OF SCHEMA OBJECTS

All of the producers which create text output could have been coded using a templating system to mix in the dynamic output with static text. CPAN offers several diverse templating systems, but few are as powerful as Template Toolkit (http://www.template-toolkit.org/). You can easily create your own producer without writing any Perl code at all simply by writing a template using Template Toolkit's syntax. The template will be passed a reference to the Schema object briefly described at the beginning of this document and mentioned many times throughout. For example, you could create a template that simply prints the name of each table and field that looks like this:

# file: schema.tt
[% FOREACH table IN schema.get_tables %]
Table: [% table.name %]
Fields:
[% FOREACH field IN table.get_fields -%]
  [% field.name %]
[% END -%]
[% END %]

And then process it like so:

$ sqlt -f YAML -t TTSchema --template schema.tt foo.yaml

To create output like this:

Table: foo
Fields:
  foo_id
  foo_name

For more information on Template Toolkit, please install the "Template" module and read the POD.

FINDING THE DIFFERENCES BETWEEN TWO SCHEMAS

As mentioned above, the "sqlt-diff" schema examines two schemas and creates SQL schema modification statements that can be used to transform the first schema into the second. The flag syntax is somewhat quirky:

$ sqlt-diff foo-v1.sql=MySQL foo-v2.sql=Oracle > diff.sql

As demonstrated, the schemas need not even be from the same vendor, though this is likely to produce some spurious results as datatypes are not currently viewed equivalent unless they match exactly, even if they would be converted to the same. For example, MySQL's "integer" data type would be converted to Oracle's "number," but the differ isn't quite smart enough yet to figure this out. Also, as the SQL to ALTER a field definition varies from database vendor to vendor, these statements are made using just the keyword "CHANGE" and will likely need to be corrected for the target database.

A UNIFIED GRAPHICAL INTERFACE

Seeing all the above options and scripts, you may be pining for a single, graphical interface to handle all these transformations and choices. This is exactly what the "sqlt.cgi" script provides. Simply drop this script into your web server's CGI directory and enable the execute bit and you can point your web browser to an HTML form which provides a simple interface to all the SQLFairy parsers and producers.

PLUGIN YOUR OWN PARSERS AND PRODUCERS

Now that you have seen how the parsers and producers interact via the Schema objects, you may wish to create your own versions to plugin.

Producers are probably the easier concept to grok, so let's cover that first. By far the easiest way to create custom output is to use the TTSchema producer in conjunction with a Template Toolkit template as described earlier. However, you can also easily pass a reference to a subroutine that SQL::Translator can call for the production of the output. This subroutine will be passed a single argument of the SQL::Translator object which you can use to access the Schema objects. Please read the POD for SQL::Translator and SQL::Translator::Schema to learn the methods you can call. Here is a very simple example:

#!/usr/bin/perl

use strict;
use SQL::Translator;

my $input = q[
    create table foo (
        foo_id int not null default '0' primary key,
        foo_name varchar(30) not null default ''
    );

    create table bar (
        bar_id int not null default '0' primary key,
        bar_value varchar(100) not null default ''
    );
];

my $t = SQL::Translator->new;
$t->parser('MySQL') or die $t->error;
$t->producer( \&produce ) or die $t->error;
my $output = $t->translate( \$input ) or die $t->error;
print $output;

sub produce {
    my $tr     = shift;
    my $schema = $tr->schema;
    my $output = '';
    for my $t ( $schema->get_tables ) {
        $output .= join('', "Table = ", $t->name, "\n");
    }
    return $output;
}

Executing this script produces the following:

$ ./my-producer.pl
Table = foo
Table = bar

A custom parser will be passed two arguments: the SQL::Translator object and the data to be parsed. In this example, the schema will be represented in a simple text format. Each line is a table definition where the fields are separated by colons. The first field is the table name and the following fields are column definitions where the column name, data type and size are separated by spaces. The specifics of the example are unimportant -- what is being demonstrated is that you have to decide how to parse the incoming data and then map the concepts in the data to the Schema object.

#!/usr/bin/perl

use strict;
use SQL::Translator;

my $input =
    "foo:foo_id int 11:foo_name varchar 30\n" .
    "bar:bar_id int 11:bar_value varchar 30"
;

my $t = SQL::Translator->new;
$t->parser( \&parser ) or die $t->error;
$t->producer('Oracle') or die $t->error;
my $output = $t->translate( \$input ) or die $t->error;
print $output;

sub parser {
    my ( $tr, $data ) = @_;
    my $schema = $tr->schema;

    for my $line ( split( /\n/, $data ) ) {
        my ( $table_name, @fields ) = split( /:/, $line );
        my $table = $schema->add_table( name => $table_name )
            or die $schema->error;
        for ( @fields ) {
            my ( $f_name, $type, $size ) = split;
            $table->add_field(
                name      => $f_name,
                data_type => $type,
                size      => $size,
            ) or die $table->error;
        }
    }

    return 1;
}

And here is the output produced by this script:

--
-- Created by SQL::Translator::Producer::Oracle
-- Created on Wed Mar 31 15:43:30 2004
--
--
-- Table: foo
--

CREATE TABLE foo (
  foo_id number(11),
  foo_name varchar2(30)
);

--
-- Table: bar
--

CREATE TABLE bar (
  bar_id number(11),
  bar_value varchar2(30)
);

If you create a useful parser or producer, you are encouraged to submit your work to the SQLFairy project!

PLUGIN TEMPLATE TOOLKIT PRODUCERS

You may find that the TTSchema producer doesn't give you enough control over templating and you want to play with the Template config or add you own variables. Or maybe you just have a really good template you want to submit to SQLFairy :) If so, the SQL::Translator::Producer::TT::Base producer may be just for you! Instead of working like a normal producer it provides a base class so you can cheaply build new producer modules based on templates.

It's simplest use is when we just want to put a single template in its own module. So to create a Foo producer we create a Custom/Foo.pm file as follows, putting our template in the __DATA__ section.

package Custom::Foo.pm;
use base qw/SQL::Translator::Producer::TT::Base/;
# Use our new class as the producer
sub produce { return __PACKAGE__->new( translator => shift )->run; };

__DATA__
[% FOREACH table IN schema.get_tables %]
Table: [% table.name %]
Fields:
[% FOREACH field IN table.get_fields -%]
  [% field.name %]
[% END -%]
[% END %]

For that we get a producer called Custom::Foo that we can now call like a normal producer (as long as the directory with Custom/Foo.pm is in our @INC path):

$ sqlt -f YAML -t Custom-Foo foo.yaml

The template gets variables of schema and translator to use in building its output. You also get a number of methods you can override to hook into the template generation.

tt_config Allows you to set the config options used by the Template object. The Template Toolkit provides a huge number of options which allow you to do all sorts of magic (See Template::Manual::Config for details). This method provides a hook into them by returning a hash of options for the Template. e.g. Say you want to use the INTERPOLATE option to save some typing in your template;

sub tt_config { ( INTERPOLATE => 1 ); }

Another common use for this is to add you own filters to the template:

sub tt_config {(
   INTERPOLATE => 1,
   FILTERS => { foo_filter => \&foo_filter, }
);}

Another common extension is adding your own template variables. This is done with tt_vars:

sub tt_vars { ( foo => "bar" ); }

What about using template files instead of DATA sections? You can already - if you give a template on the command line your new producer will use that instead of reading the DATA section:

$ sqlt -f YAML -t Custom-Foo --template foo.tt foo.yaml

This is useful as you can set up a producer that adds a set of filters and variables that you can then use in templates given on the command line. (There is also a tt_schema method to over ride if you need even finer control over the source of your template). Note that if you leave out the DATA section all together then your producer will require a template file name to be given.

See SQL::Translator::Producer::TT::Base for more details.

AUTHOR

Ken Y. Clark <kclark@cpan.org>.