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Pentaho Data Integration 4 Cookbook
Pentaho Data Integration 4 Cookbook

Pentaho Data Integration 4 Cookbook: Over 70 recipes to solve ETL problems using Pentaho Kettle

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Pentaho Data Integration 4 Cookbook

Chapter 1. Working with Databases

In this chapter, we will cover:

  • Connecting to a database

  • Getting data from a database

  • Getting data from a database by providing parameters

  • Getting data from a database by running a query built at runtime

  • Inserting or updating rows in a table

  • Inserting new rows when a simple primary key has to be generated

  • Inserting new rows when the primary key has to be generated based on stored values

  • Deleting data from a table

  • Creating or altering a table from PDI (design time)

  • Creating or altering a table from PDI (runtime)

  • Inserting, deleting, or updating a table depending on a field

  • Changing the database connection at runtime

  • Loading a parent-child table

Introduction


Databases are broadly used by organizations to store and administer transactional data such as customer service history, bank transactions, purchases and sales, and so on. They also constitute the storage method for data warehouses, the repositories used in Business Intelligence solutions.

In this chapter, you will learn to deal with databases in Kettle. The first recipe tells you how to connect to a database, which is a prerequisite for all the other recipes. The rest of the chapter teaches you how to perform different operations and can be read in any order according to your needs.

Note

The focus of this chapter is on relational databases (RDBMS). Thus the term database is used as a synonym for relational databases through the recipes.

Sample databases

Through the chapter you will use a couple of sample databases. Those databases can be created and loaded by running the scripts available at the book's website. The scripts are ready to run under MySQL.

Note

If you work with a different DBMS you may have to modify the scripts slightly.

For more information about the structure of the sample databases and the meaning of the tables and fields, please refer to Appendix, Data Structures. Feel free to adapt the recipes to different databases. You could try some well known databases; for example Foodmart (available as part of the Mondrian distribution at http://sourceforge.net/projects/mondrian/) or the MySQL sample databases (available at http://dev.mysql.com/doc/index-other.html).

Pentaho BI platform databases

As part of the sample databases used in this chapter you will use the Pentaho BI platform Demo databases. The Pentaho BI Platform Demo is a pre-configured installation that lets you explore the capabilities of the Pentaho platform. It relies on the following databases:

Database name

Description

hibernate

Administrative information including user authentication and authorization data.

quartz

Repository for Quartz, the scheduler used by Pentaho.

sampledata

Data for Steel Wheels, a fictional company that sells all kind of scale replicas of vehicles.

By default, all those databases are stored in Hypersonic (HSQLDB). The script for creating the databases in HSQLDB can be found at http://sourceforge.net/projects/pentaho/files. Under Business Intelligence Server | 1.7.1-stable look for pentaho_sample_data-1.7.1.zip.

It can also be found at svn://ci.pentaho.com/view/Platform/job/bi-platform-sample-data/.

These databases can be stored in other DBMS as well. Scripts for creating and loading these databases in other popular DBMS as for example MySQL or Oracle can be found in Prashant Raju's blog, at http://www.prashantraju.com/projects/pentaho/.

Beside the scripts, you will find instructions for creating and loading the databases.

Tip

Prashant Raju, an expert Pentaho developer, provides several excellent tutorials related to the Pentaho platform. If you are interested in knowing more about Pentaho, it's worth taking a look at his blog.

Connecting to a database


If you intend to work with a database, either reading, writing, looking up data, and so on, the first thing you will have to do is to create a connection to that database. This recipe will teach you how to do this.

Getting ready

In order to create the connection, you will need to know the connection settings. At least you will need:

  • Host Name: Domain name or IP address of the database server.

  • Port Number

  • User Name

  • Password

It's recommended that you also have access to the database at the moment of creating the connection.

How to do it...

  1. Open Spoon and create a new transformation.

  2. Select the View option that appears in the upper-left corner of the screen, right-click the Database connections option, and select New. The Database Connection dialog window appears.

  3. Under Connection Type, select the database engine that matches your DBMS.

  4. Fill the Settings options and give the connection a name by typing it in the Connection Name: textbox. Your window should look like this:

  5. Press the Test button. A message should appear informing you that the connection to your database is OK.

Note

If you get an error message instead, you should recheck the data entered, as well as the availability of the database server. The server might be down, or it might not be reachable from your machine.

How it works...

A database connection is the definition that allows you to access a database from Kettle. With the data you provide, Kettle can instantiate real database connections and perform the different operations related with databases. Once you define a database connection, you will be able to access that database and execute arbitrary SQL statements: create schema objects like tables, execute SELECT statements, modify rows, and so on.

In this recipe you created the connection from the Database connections tree. You may also create a connection by pressing the New... button in the configuration window of any database-related step in a transformation or job entry in a job. Alternatively, there is also a wizard accessible from the Tools menu or by pressing F3.

Whichever the method you choose, a setting window like the one you saw in the recipe shows up allowing you to define the connection. This task includes:

  • Selecting a database engine (Connection type:)

  • Selecting the access method (Access:)

    Note

    Native (JDBC) is recommended but you can also use a predefined ODBC data source, a JNDI data source, or an Oracle OCI connection.

  • Providing the Host Name or IP

  • Entering the User Name and Password for accessing the database.

A database connection can only be created with a transformation or a job opened. Therefore, in the recipe you were asked to create a transformation. The same could have been achieved by creating a job instead.

There's more...

The recipe showed the simplest way to create a database connection. However, there is more to know about creating database connections.

Avoiding creating the same database connection over and over again

If you intend to use the same database in more than one transformation and/or job, it's recommended that you share the connection. You do this by right-clicking the database connection under the Database connections tree, and clicking on Share. This way the database connection will be available to be used in all transformations and jobs. Shared database connections are recognized because they are bold. As an example take a look at the following sample screenshot:

The databases books and sampledata are shared; the others are not.

The information about shared connections is saved in a file named shared.xml located in the Kettle home directory.

No matter the Kettle storage method (repository or files) you can share connections. If you are working with the file method, namely ktr and kjb files, the information about shared connections are not only saved in the shared.xml file, but also saved as part of the transformation or job files even if they don't use the connections.

Note

You can avoid saving all the connection data as part of your transformations and jobs by selecting the option Only save used connections to XML? in the Kettle options window.

Avoiding modifying jobs and transformations every time a connection changes

Instead of typing fixed values in the database connection definition, it's worth using variables. For example, instead of typing localhost as the hostname, you can define a variable named HOST_NAME and as host name type its variable notation as ${HOST_NAME} or %%HOST_NAME%%. If you decide to move the database from the local machine to a server, you just have to change the value of the variable and don't need to modify the transformations or jobs that use the connection.

This is especially useful when it's time to move your jobs and transformations between different environments: development, test, and so on.

Specifying advanced connection properties

The recipe showed you how to provide the general properties needed to create a connection. You may need to specify additional options—for example a preferred schema name, or supply some parameters to be used when the connection is initialized. In order to do that, look for those options in the extra tab windows under the General tab of the Database Connection window.

Connecting to a database not supported by Kettle

Kettle offers built-in support for a vast set of database engines. The list includes both commercial databases (such as Oracle) and open source (such as PostgreSQL), traditional row-oriented databases (such as MS SQL Server) and modern column-oriented databases (such as Infobright), disk-storage based databases (such as Informix) and in-memory databases (such as HSQLDB). However, it can happen that you want to connect to a database that is not in that list. In that case, you might still create a connection to that database. First of all, you have to get a JDBC driver for that DBMS. Copy the jar file containing the driver to the libext/JDBC directory inside the Kettle installation directory. Then, create the connection. In this case, as connection type choose Generic database. In the Settings frame specify the connection string (which should be explained along with JDBC), the driver class name, and the username and password. In order to find the values for these settings, you will have to refer to the driver documentation.

Checking the database connection at run-time

If you are not sure that the database connection will be accessible when a job or transformation runs from outside Spoon, you might precede all database-related operations with a Check Db connection job entry. The entry will return true or false depending on the result of checking one or more connections.

Getting data from a database


If you're used to working with databases, one of your main objectives while working with PDI must be getting data from your databases for transforming, loading in other databases, generating reports, and so on. Whatever operation you intend to achieve, the first thing you have to do after connecting to the database, is to get that data and create a PDI dataset. In this recipe you will learn the simplest way to do that.

Getting ready

To follow these instructions you need to have access to any DBMS.

How to do it...

  1. Create a transformation and drop into the canvas a Table Input step. You will find it in the Input category of steps.

  2. From the Connection drop-down list select the connection to the database where your data resides, or create it if it doesn't exist.

  3. In the SQL text area, type the SQL statement that returns the data you need. So far you should have something like this:

  4. Click on Preview. This will bring a sample list of rows so you can confirm that the data is as expected.

  5. Press OK to close the Table Input configuration window, and you'll be ready to use the data for further manipulation.

How it works...

The Table Input step you used in the recipe is the main PDI step to get data from a database. When you run or preview the transformation, Kettle executes the SQL and pushes the rows of data coming from the database into the output stream of the step. Each column of the SQL statement leads to a PDI field and each row generated by the execution of the statement becomes a row in the PDI dataset.

Once you get the data from the database, it will be available for any kind of manipulation inside the transformation.

There's more...

In order to save time, or in case you are not sure of the name of the tables or columns in the database, instead of typing the SQL statement press the Get SQL select statement... button. This will bring the Database Explorer window. This window allows you to explore the selected database. By expanding the database tree and selecting the table that interests you, you will be able to explore that table through the different options available under the Actions menu as shown below:

Double-clicking the name of the table will generate a SELECT statement to query that table. You will have the chance to include all the field names in the statement, or simply generate a SELECT * statement. After bringing the SQL to the Table Input configuration window, you will be able to modify it according to your needs.

Note

By generating this statement you will loose any statement already in the SQL text area.

See also

  • Connecting to a database. In order to get data from a database, you need to have a connection to it. This recipe explains how to do this.

  • Getting data from a database by providing parameters. This recipe explains a more flexible way to run database queries.

  • Getting data from a database by running a query built at runtime. This recipe explains an even more flexible method.

Getting data from a database by providing parameters


If you need to create a dataset with data coming from a database you can do it just by using a Table Input step. If the SELECT statement that retrieves the data doesn't need parameters, you simply write it in the Table Input setting window and proceed. However, most of the times you need flexible queries; queries that receive parameters. This recipe will show you how to pass parameters to a SELECT statement in PDI.

Assume that you need to list all products in Steel Wheels for a given product line and scale.

Getting ready

Make sure you have access to the sampledata database.

How to do it...

  1. Create a transformation.

  2. Before getting the data from the database, you have to create the stream that will provide the parameters for the statement.

  3. Create a stream that builds a dataset with a single row and two columns: the product line parameter and the scale parameter. For this exercise, you can do it just by adding a Data Grid step or a Generate Rows step. Doing a preview on the last step of your stream you should see something like this:

  4. Now drag to the canvas a Table Input step, and create a hop from the last step of the stream created above, towards this step.

  5. Now you can configure the Table Input step. Double-click it, select the connection to the database, and type the following statement:

    SELECT productline 
         , productscale
         , productcode
         , productname
    FROM   products p
    WHERE productline  = ?
    AND   productscale = ?

    Tip

    Downloading the example code

    You can download the example code fles for all Packt books you have purchased from your account at http://www.PacktPub.com. If you purchased this book elsewhere, you can visit http://www.PacktPub.com/support and register to have the fles e-mailed directly to you.

  6. In the Insert data from step list, select the name of the step that is linked to the Table Input step. Close the window.

  7. Select the Table Input step and do a preview of the transformation. You will see a list of all products that match the product line and scale provided in the incoming stream:

How it works...

When you need to execute a SELECT statement with parameters, the first thing you have to do is to build a stream that provides the parameter values needed by the statement. The stream can be made of just one step; for example a Data grid with fixed values, or a stream made up of several steps. The important thing is that the last step delivers the proper values to the Table Input step.

Then, you have to link the last step in the stream to the Table Input step where you will type the statement. What differentiates this statement from a regular statement is that you have to provide question marks. When you preview or run the transformation, the statement is prepared and the values coming to the Table Input step are bound to the placeholders; that is, the place where you typed the question marks.

Note that in the recipe the output of the stream was a single row with two fields, which is exactly the same number of question marks in the statement.

Note

The number of fields coming to a Table Input must be exactly the same as the number of question marks found in the query.

Also note that in the stream the product line was in the first place and the scale in the second place. If you look at the highlighted lines in the recipe, you will see that the statement expected the parameter values exactly in that order.

Note

The replacement of the markers respects the order of the incoming fields.

Finally, it's important to note that question marks can only be used to parameterize value expressions just as you did in the recipe.

Keywords or identifiers (for example; table names) cannot be parameterized with the question marks method.

If you need to parameterize something different from a value expression you should take another approach as explained in the next recipe.

There's more...

There are a couple of situations worth discussing.

Parameters coming in more than one row

In the recipe you received the list of parameter values in a single row with as many columns as expected parameter values. It's also possible to receive the parameter values in several rows. If instead of a row you had one parameter by row, as shown here:

The behavior of the transformation wouldn't have changed. The statement would have pulled the values for the two parameters from the incoming stream in the same order as the data appeared. It would have bound the first question mark with the value in the first row, and the second question mark with the value coming in the second row.

Note that this approach is less flexible than the previous one. For example, if you have to provide values for parameters with different data types you will not be able to put them in the same column and different rows.

Executing the SELECT statement several times, each for a different set of parameters

Suppose that you not only want to list the Classic Cars in 1:10 scale, but also the Motorcycles in 1:10 and 1:12 scale. You don't have to run the transformation three times in order to do this. You can have a dataset with three rows, one for each set of parameters, as shown below:

Then, in the Table Input setting window you have to check the Execute for each row? option. This way, the statement will be prepared and the values coming to the Table Input step will be bound to the placeholders once for each row in the dataset coming to the step. For this example, the result would look like this:

See also

  • Getting data from a database by running a query built at runtime. This recipe gives you an alternative way for using parameters in a SELECT statement.

Getting data from a database by running a query built at runtime


When you work with databases, most of the times you start by writing an SQL statement that gets the data you need. However, there are situations in which you don't know that statement exactly. Maybe the name of the columns to query are in a file, or the name of the columns by which you will sort will come as a parameter from outside the transformation, or the name of the main table to query changes depending on the data stored in it (for example sales2010). PDI allows you to have any part of the SQL statement as a variable so you don't need to know the literal SQL statement text at design time.

Assume the following situation: You have a database with data about books and their authors, and you want to generate a file with a list of titles. Whether to retrieve the data ordered by title or by genre is a choice that you want to postpone until the moment you execute the transformation.

Getting ready

You will need a book database with the structure explained in Appendix, Data Structures.

How to do it...

  1. Create a transformation.

  2. The column that will define the order of the rows will be a named parameter. So, define a named parameter named ORDER_COLUMN, and put title as its default value.

    Note

    Remember that Named Parameters are defined in the Transformation setting window and their role is the same as the role of any Kettle variable. If you prefer, you can skip this step and define a standard variable for this purpose.

  3. Now drag a Table Input step to the canvas. Then create and select the connection to the book's database.

  4. In the SQL frame type the following statement:

    SELECT * FROM books ORDER BY ${ORDER_COLUMN}
  5. Check the option Replace variables in script? and close the window.

  6. Use an Output step like for example a Text file output step, to send the results to a file, save the transformation, and run it.

  7. Open the generated file and you will see the books ordered by title.

  8. Now try again. Press F9 to run the transformation one more time.

  9. This time, change the value of the ORDER_COLUMN parameter typing genre as the new value.

  10. Press the Launch button.

  11. Open the generated file. This time you will see the titles ordered by genre.

How it works...

You can use Kettle variables in any part of the SELECT statement inside a Table Input step. When the transformation is initialized, PDI replaces the variables by their values provided that the Replace variables in script? option is checked.

In the recipe, the first time you ran the transformation, Kettle replaced the variable ORDER_COLUMN with the word title and the statement executed was:

SELECT * FROM books ORDER BY title

The second time, the variable was replaced by genre and the executed statement was:

SELECT * FROM books ORDER BY genre

Note

As mentioned in the recipe, any predefined Kettle variable can be used instead of a named parameter.

There's more...

You may use variables not only for the ORDER BY clause, but in any part of the statement: table names, columns, and so on. You could even hold the full statement in a variable. Note however that you need to be cautious when implementing this.

Note

A wrong assumption about the metadata generated by those predefined statements can make your transformation crash.

You can also use the same variable more than once in the same statement. This is an advantage of using variables as an alternative to question marks when you need to execute parameterized SELECT statements.

See also

  • Getting data from a database by providing parameters. This recipe shows you an alternative way to parameterize a query.

Inserting or updating rows in a table


Two of the most common operations on databases besides retrieving data are inserting and updating rows in a table.

PDI has several steps that allow you to perform these operations. In this recipe you will learn to use the Insert/Update step. Before inserting or updating rows in a table by using this step, it is critical that you know which field or fields in the table uniquely identify a row in the table.

Note

If you don't have a way to uniquely identify the records, you should consider other steps, as explained in the There's more... section.

Assume this situation: You have a file with new employees of Steel Wheels. You have to insert those employees in the database. The file also contains old employees that have changed either the office where they work, or the extension number, or other basic information. You will take the opportunity to update that information as well.

Getting ready

Download the material for the recipe from the book's site. Take a look at the file you will use:

NUMBER, LASTNAME, FIRSTNAME, EXT, OFFICE, REPORTS, TITLE
1188, Firrelli, Julianne,x2174,2,1143, Sales Manager
1619, King, Tom,x103,6,1088,Sales Rep
1810, Lundberg, Anna,x910,2,1143,Sales Rep
1811, Schulz, Chris,x951,2,1143,Sales Rep

Explore the Steel Wheels database, in particular the employees table, so you know what you have before running the transformation. In particular execute these statements:

SELECT EMPLOYEENUMBER ENUM
    , concat(FIRSTNAME,' ',LASTNAME) NAME
    , EXTENSION EXT
    , OFFICECODE OFF
    , REPORTSTO REPTO
    , JOBTITLE
    FROM employees
    WHERE EMPLOYEENUMBER IN (1188, 1619, 1810, 1811);
+------+----------------+-------+-----+-------+-----------+
| ENUM | NAME           | EXT   | OFF | REPTO | JOBTITLE  |
+------+----------------+-------+-----+-------+-----------+
| 1188 | Julie Firrelli | x2173 | 2   |  1143 | Sales Rep |
| 1619 | Tom King       | x103  | 6   |  1088 | Sales Rep |
+------+----------------+-------+-----+-------+-----------+
2 rows in set (0.00 sec)

How to do it...

  1. Create a transformation and use a Text File input step to read the file employees.txt. Provide the name and location of the file, specify comma as the separator, and fill in the Fields grid.

    Tip

    Remember that you can quickly fill the grid by pressing the Get Fields button.

  2. Now, you will do the inserts and updates with an Insert/Update step. So, expand the Output category of steps, look for the Insert/Update step, drag it to the canvas, and create a hop from the Text File input step toward this one.

  3. Double-click the Insert/Update step and select the connection to the Steel Wheels database, or create it if it doesn't exist. As target table type employees.

  4. Fill the grids as shown:

  5. Save and run the transformation.

  6. Explore the employees table. You will see that one employee was updated, two were inserted, and one remained untouched because the file had the same data as the database for that employee:

    +------+---------------+-------+-----+-------+--------------+
    | ENUM | NAME          | EXT   | OFF | REPTO | JOBTITLE     |
    +------+---------------+-------+-----+-------+--------------+
    | 1188 | Julie Firrelli| x2174 | 2   |  1143 |Sales Manager |
    | 1619 | Tom King      | x103  | 6   |  1088 |Sales Rep     |
    | 1810 | Anna Lundberg | x910  | 2   |  1143 |Sales Rep     |
    | 1811 | Chris Schulz  | x951  | 2   |  1143 |Sales Rep     |
    +------+---------------+-------+-----+-------+--------------+
    4 rows in set (0.00 sec)

How it works...

The Insert/Update step, as its name implies, serves for both inserting or updating rows. For each row in your stream, Kettle looks for a row in the table that matches the condition you put in the upper grid, the grid labeled The key(s) to look up the value(s):. Take for example the last row in your input file:

1811, Schulz, Chris,x951,2,1143,Sales Rep

When this row comes to the Insert/Update step, Kettle looks for a row where EMPLOYEENUMBER equals 1811. It doesn't find one. Consequently, it inserts a row following the directions you put in the lower grid. For this sample row, the equivalent INSERT statement would be:

INSERT INTO employees (EMPLOYEENUMBER, LASTNAME, FIRSTNAME,
            EXTENSION, OFFICECODE, REPORTSTO, JOBTITLE)
       VALUES (1811, 'Schulz', 'Chris',
              'x951', 2, 1143, 'Sales Rep')

Now look at the first row:

1188, Firrelli, Julianne,x2174,2,1143, Sales Manager

When Kettle looks for a row with EMPLOYEENUMBER equal to 1188, it finds it. Then, it updates that row according to what you put in the lower grid. It only updates the columns where you put Y under the Update column. For this sample row, the equivalent UPDATE statement would be:

UPDATE employees SET EXTENSION = 'x2174'
                   , OFFICECODE = 2
                   , REPORTSTO = 1143
                   , JOBTITLE = 'Sales Manager'
WHERE EMPLOYEENUMBER = 1188

Note that the name of this employee in the file (Julianne) is different from the name in the table (Julie), but, as you put N under the column Update for the field FIRSTNAME, this column was not updated.

Note

If you run the transformation with log level Detailed, you will be able to see in the log the real prepared statements that Kettle performs when inserting or updating rows in a table.

There's more...

Here there are two alternative solutions to this use case.

Alternative solution if you just want to insert records

If you just want to insert records, you shouldn't use the Insert/Update step but the Table Output step. This would be faster because you would be avoiding unnecessary lookup operations. The Table Output step is really simply to configure: Just select the database connection and the table where you want to insert the records. If the names of the fields coming to the Table Output step have the same name as the columns in the table, you are done. If not, you should check the Specify database fields option, and fill the Database fields tab exactly as you filled the lower grid in the Insert/Update step, except that here there is no Update column.

Alternative solution if you just want to update rows

If you just want to update rows, instead of using the Insert/Update step, you should use the Update step. You configure the Update step just as you configure the Insert/Update step, except that here there is no Update column.

Alternative way for inserting and updating

The following is an alternative way for inserting and updating rows in a table.

Note

This alternative only works if the columns in the Key field's grid of the Insert/Update step are a unique key in the database.

You may replace the Insert/Update step by a Table Output step and, as the error handling stream coming out of the Table Output step, put an Update step.

Tip

In order to handle the error when creating the hop from the Table Output step towards the Update step, select the Error handling of step option.

Alternatively right-click the Table Output step, select Define error handling..., and configure the Step error handling settings window that shows up. Your transformation would look like this:

In the Table Output select the table employees, check the Specify database fields option, and fill the Database fields tab just as you filled the lower grid in the Insert/Update step, excepting that here there is no Update column.

In the Update step, select the same table and fill the upper grid—let's call it the Key fields grid—just as you filled the key fields grid in the Insert/Update step. Finally, fill the lower grid with those fields that you want to update, that is, those rows that had Y under the Update column.

In this case, Kettle tries to insert all records coming to the Table Output step. The rows for which the insert fails go to the Update step, and the rows are updated.

If the columns in the Key field's grid of the Insert/Update step are not a unique key in the database, this alternative approach doesn't work. The Table Output would insert all the rows. Those that already existed would be duplicated instead of updated.

This strategy for performing inserts and updates has been proven to be much faster than the use of the Insert/Update step whenever the ratio of updates to inserts is low. In general, for best practices reasons, this is not an advisable solution.

See also

  • Inserting new rows when a simple primary key has to be generated. If the table where you have to insert data defines a primary key, you should generate it. This recipe explains how to do it when the primary key is a simple sequence.

  • Inserting new rows when the primary key has to be generated based on stored values. Same as the previous bullet, but in this case the primary key is based on stored values.

Inserting new rows where a simple primary key has to be generated


It's very common to have tables in a database where the values for the primary key column can be generated by using a database sequence (in those DBMS that have that feature; for example, Oracle) or simply by adding 1 to the maximum value in the table. Loading data into these tables is very simple. This recipe teaches you how to do this through the following exercise.

There are new offices at Steel Wheels. You have the data of the offices in a file that looks like this:

CITY;PHONE;ADDRESS;COUNTRY;POSTALCODE
Sao Paulo;11 3289-3703;Avenida Paulista 1330;Brazil;01310-200
Sao Paulo;11 3104-1116;Rua Boa Vista, 51;Brazil;01014-001
Buenos Aires;11 4582-6700;Cabildo 2127;Argentina;C1428AAT

You have to insert that data into the Steel Wheels database.

Getting ready

For this recipe you will use the Pentaho sample database. If you don't have that database, you'll have to follow the instructions in the introduction of this chapter.

As you will insert records into the office table, it would be good if you explore that table before doing any insert operations. Here you have a sample query:

SELECT OFFICECODE, ADDRESSLINE1, CITY
FROM   OFFICES
ORDER BY OFFICECODE;
+------------+--------------------------+---------------+
| OFFICECODE | ADDRESSLINE1             | CITY          |
+------------+--------------------------+---------------+
| 1          | 100 Market Street        | San Francisco |
| 2          | 1550 Court Place         | Boston        |
| 3          | 523 East 53rd Street     | NYC           |
| 4          | 43 Rue Jouffroy D'abbans | Paris         |
| 5          | 4-1 Kioicho              | Tokyo         |
| 6          | 5-11 Wentworth Avenue    | Sydney        |
| 7          | 25 Old Broad Street      | London        |
+------------+--------------------------+---------------+
7 rows in set (0.00 sec)

How to do it...

  1. Create a transformation and create a connection to the sampledata database.

  2. Use a Text file input step to read the offices.txt file with data about the new offices.

  3. From the Data Warehouse category drag and drop a Combination lookup/update step, and create a hop from the previous step towards this one.

  4. Double-click the step, select the connection to the sampledata database, and type offices as the Target table.

  5. Fill the Key fields grid as shown:

  6. In the Technical key field type OFFICECODE. For the Creation of technical key fields leave the default values. Close the window.

  7. From the Output category of steps, add an Update step.

  8. Double-click the step, select the connection to the sampledata database, and type offices as the Target table.

  9. In the first grid add rows with the text OFFICECODE both under Table field and under Stream field1. As Comparator choose =. This way, you will update the rows where OFFICECODE is equal to the office code in your stream.

  10. In the lower grid add a row and type PHONE both under Table field and Stream field. Add a second row and type POSTALCODE in both columns.

  11. Close the window.

  12. It's time to save the transformation and run it to see what happens.

  13. As you might guess, three new offices have been added, with primary keys 8, 9, and 10. Look at the results:

    SELECT OFFICECODE, ADDRESSLINE1, CITY
    FROM   offices
    ORDER BY cast(officecode as unsigned);
    +------------+--------------------------+---------------+
    | OFFICECODE | ADDRESSLINE1             | CITY          |
    +------------+--------------------------+---------------+
    | 1          | 100 Market Street        | San Francisco |
    | 2          | 1550 Court Place         | Boston        |
    | 3          | 523 East 53rd Street     | NYC           |
    | 4          | 43 Rue Jouffroy D'abbans | Paris         |
    | 5          | 4-1 Kioicho              | Tokyo         |
    | 6          | 5-11 Wentworth Avenue    | Sydney        |
    | 7          | 25 Old Broad Street      | London        |
    | 8          | Avenida Paulista 1330    | Sao Paulo     |
    | 9          | Rua Boa Vista, 51        | Sao Paulo     |
    | 10         | Cabildo 2127             | Buenos Aires  |
    +------------+--------------------------+---------------+
    10 rows in set (0.00 sec)

How it works...

In many situations, before inserting data into a table you have to generate the primary key. If the primary key is a simple sequence or the maximum primary key plus one, you can generate it by using a Combination lookup/update step.

In the recipe, for each row in your file, with the Combination lookup/update step, you look for a record in the offices table with the same values for address, city, and country.

Because the offices are new, (there aren't offices in the table with the same combination of address, city, and country values) the lookup fails. As a consequence, the step generates a key value as the maximum OFFICECODE in the table, plus 1. Then, it inserts a row with the generated primary key and the fields you typed in the grid.

Finally, the step adds to the stream the generated primary key value.

As a last task, we used that key to update the other fields coming into the file: POSTALCODE and PHONE.

There's more...

The Combination lookup/update step is within the Data Warehouse category, because is mainly used for loading junk dimension tables. But as you could see, it can also be used in the particular situation where you have to generate a primary key.

In the recipe you generated the PK as the maximum plus one, but as you can see in the setting window, a database sequence can also be used instead.

Note

When you use the Combination lookup/update step for inserting, make sure that the columns that are not part of the list of key fields are nullable or have default values.

Using the Combination lookup/update for looking up

In the recipe the Combination lookup/update step just inserted new rows. Now suppose that you have a row that existed in the table. In that case the lookup would have succeeded and the step wouldn't have inserted a new row. Instead, it would just have returned the found OFFICECODE. That field would have been added to the stream, ready to be used further in the transformation, for example for updating other fields as you did in the recipe, or for being used for inserting data in a related table.

Note

Note that this is a potentially slow step, as it uses all the values for the comparison.

See also

  • Inserting new rows when the primary key has to be generated based on stored values. This recipe explains the case where the primary key to be generated is not as simple as adding one to the last primary key in the table.

Inserting new rows where the primary key has to be generated based on stored values


There are tables where the primary key is not a database sequence, nor a consecutive integer, but a column which is built based on a rule or pattern that depends on the keys already inserted. For example imagine a table where the values for primary key are A00001, A00002, and A00003. In this case, you can guess the rule: putting an A followed by a sequence. The next in the sequence would be A00004. This seems too simple, but doing it in PDI is not trivial. This recipe will teach you how to load a table where a primary key has to be generated based on existing rows as in that example.

Suppose that you have to load author data into the book's database. You have the main data for the authors, and you have to generate the primary key as in the example above.

Getting ready

Run the script that creates and loads data into the book's database. You'll find it at http://packtpub.com/support.

Before proceeding, verify the current values for the primary keys in the table where you will insert data:

SELECT MAX(id_author) FROM authors;
+----------------+
| MAX(id_author) |
+----------------+
| A00009         |
+----------------+
1 row in set (0.00 sec)

How to do it...

  1. Create a transformation and create a connection to the book's database.

  2. Use a Text file input step to read the authors.txt file.

    Note

    For simplicity, the authors.txt file only has new authors, that is, authors who are not in the table.

  3. To generate the next primary key, you need to know the current maximum. So use a Table Input step to get it. In this case the following statement will give you that number:

    SELECT
    cast(max(right(id_author,5)) as unsigned) max_id
    FROM authors

    Note

    Alternatively you can simply get the id_author field and transform the field with Kettle steps until you get the current maximum. You will have a simple clear transformation, but it will take several Kettle steps to do it.

  4. By using a Join Rows (cartesian product) step, join both streams. Your transformation should look like this:

  5. Add an Add sequence step. Replace the default value valuename with delta_value. For the rest of the fields in the setting window leave the default values.

  6. Add a Calculator step to build the keys. You do it by filling the setting window as shown:

  7. In order to insert the rows, add a Table output step, double-click it, and select the connection to the book's database.

  8. As Target table type authors.

  9. Check the option Specify database fields.

  10. Select the Database fields tab and fill the grid as follows:

  11. Save and run the transformation.

  12. Explore the authors table. You should see the new authors:

    SELECT * FROM authors ORDER BY id_author;
    +----------+-----------+-------------+-----------+----------+
    | lastname | firstname | nationality | birthyear | id_author|
    +----------+-----------+-------------+-----------+----------+
    | Larsson  | Stieg     | Swedish     |      1954 | A00001   |
    | King     | Stephen   | American    |      1947 | A00002   |
    | Hiaasen  | Carl      | American    |      1953 | A00003   |
    | Handler  | Chelsea   | American    |      1975 | A00004   |
    | Ingraham | Laura     | American    |      1964 | A00005   |
    | Ramsey   | Dave      | American    |      1960 | A00006   |
    | Kiyosaki | Robert    | American    |      1947 | A00007   |
    | Rowling  | Joanne    | English     |      1965 | A00008   |
    | Riordan  | Rick      | American    |      1964 | A00009   |
    | Gilbert  | Elizabeth | unknown     |      1900 | A00010   |
    | Franzen  | Jonathan  | unknown     |      1900 | A00011   |
    | Collins  | Suzanne   | unknown     |      1900 | A00012   |
    | Blair    | Tony      | unknown     |      1900 | A00013   |
    +----------+-----------+-------------+-----------+----------+
    13 rows in set (0.00 sec)

How it works...

When you have to generate a primary key based on the existing primary keys, unless the new primary key is simple to generate by adding one to the maximum, there is no direct way to do it in Kettle. One possible solution is the one shown in the recipe: Getting the last primary key in the table, combining it with your main stream, and using those two sources for generating the new primary keys. This is how it worked in this example.

First, by using a Table Input step, you found out the last primary key in the table. In fact, you got only the numeric part needed to build the new key. In this exercise, the value was 9. With the Join Rows (cartesian product) step, you added that value as a new column in your main stream.

Taking that number as a starting point, you needed to build the new primary keys as A00010, A00011, and so on. You did this by generating a sequence (1, 2, 3, and so on), adding this sequence to the max_id (that led to values 10, 11, 12, and so on), and finally formatting the key with the use of the calculator.

Note that in the calculator the first A+B performs an arithmetic calculation. It adds the max_id with the delta_value sequence. Then it converts the result to a String giving it the format with the mask 0000. This led to the values 00010, 00011, and so on.

The second A+B is a string concatenation. It concatenates the literal A with the previously calculated ID.

Note that this approach works as long as you have a single user scenario. If you run multiple instances of the transformation they can select the same maximum value, and try to insert rows with the same PK leading to a primary key constraint violation.

There's more...

The key in this exercise is to get the last or maximum primary key in the table, join it to your main stream, and use that data to build the new key. After the join, the mechanism for building the final key would depend on your particular case.

See also

  • Inserting new rows when a simple primary key has to be generated. If the primary key to be generated is simply a sequence, it is recommended to examine this recipe.

Deleting data from a table


Sometimes you might have to delete data from a table. If the operation to do is simple, for example:

DELETE FROM LOG_TABLE WHERE VALID='N'

Or

DELETE FROM TMP_TABLE

You could simply execute it by using an SQL job entry or an Execute SQL script step. If you face the second of the above situations, you can even use a Truncate table job entry.

For more complex situations you should use the Delete step. Let's suppose the following situation: You have a database with outdoor products. Each product belongs to a category: tools, tents, sleeping bags, and so on. Now you want to delete all the products for a given list of categories, where the price is less than or equal to $50.

Getting ready

In order to follow the recipe, you should download the material for this chapter: a script for creating and loading the database, and an Excel file with the list of categories involved.

After creating the outdoor database and loading data by running the script provided, and before following the recipe you can explore the database. In particular execute the following statement:

SELECT   category, count(*) quantity
FROM     products p, categories c
WHERE    p.id_category=c.id_category
AND      price<=50
GROUP BY p.id_category;
+---------------+----------+
| category      | quantity |
+---------------+----------+
| kitchen       |       19 |
| lights        |       14 |
| sleeping bags |        5 |
| tents         |        4 |
| tools         |        8 |
+---------------+----------+
5 rows in set (0.00 sec)

SELECT   category, count(*) quantity
FROM     products p, categories c
WHERE    p.id_category=c.id_category
AND      price>50
GROUP BY p.id_category;	
+---------------+----------+
| category      | quantity |
+---------------+----------+
| kitchen       |        5 |
| lights        |        1 |
| sleeping bags |        1 |
| tents         |        8 |
| tools         |        2 |
+---------------+----------+
5 rows in set (0.00 sec)

The highlighted lines above belong to the products that you intend to delete.

How to do it...

  1. Create a transformation.

  2. The value to which you will compare the price before deleting will be stored as a named parameter. So create it, name it MAX_PRICE, and set 50 as the default value.

  3. Drag to the canvas an Excel Input step to read the Excel file with the list of categories.

  4. Drag to the canvas a Get Variables step, to get the named variable as a field named max_price with type Number.

  5. After that, add a Database lookup step. Configure it to get the id_category fields based on the category descriptions in the Excel file. So far, the transformation looks like this:

    Tip

    For higher volumes it's better to get the variable just once in a separate stream and join the two streams with a Join Rows (cartesian product) step.

  6. Select the Database lookup step and do a preview. You should see this:

  7. Finally, add a Delete step. You will find it under the Output category of steps.

  8. Double-click the Delete step, select the outdoor connection, and fill in the key grid as follows:

  9. Save and run the transformation.

  10. Explore the database. If you run the same statements that you ran before starting the recipe, you'll note that all products belonging to the categories in the Excel file, with price less than or equal to $50 have been deleted. This is what you will see:

    SELECT   category, count(*) quantity
    FROM     products p, categories c
    WHERE    p.id_category=c.id_category
    AND      price<=50
    GROUP BY p.id_category;	
    +---------------+----------+
    | category      | quantity |
    +---------------+----------+
    | kitchen       |       19 |
    | lights        |       14 |
    | sleeping bags |        5 |
    +---------------+----------+
    3 rows in set (0.00 sec)
    
    SELECT   category, count(*) quantity
    FROM     products p, categories c
    WHERE    p.id_category=c.id_category
    AND      price>50
    GROUP BY p.id_category;	
    +---------------+----------+
    | category      | quantity |
    +---------------+----------+
    | kitchen       |        5 |
    | lights        |        1 |
    | sleeping bags |        1 |
    | tents         |        8 |
    | tools         |        2 |
    +---------------+----------+
    5 rows in set (0.00 sec)

How it works...

The Delete step allows you to delete rows in a table in a database based on certain conditions. In this case, you intended to delete rows from the table products where the price was less than or equal to 50, and the category was in a list of categories, so the Delete step is the right choice. This is how it works.

PDI builds a prepared statement for the DELETE operation. Then, for each row in your stream, PDI binds the values of the row to the variables in the prepared statement.

Let's see it by example. In the transformation you built a stream where each row had a single category and the value for the price.

If you run the transformation with log level Detailed and look at the log, you will see the statement that is executed:

DELETE FROM products
WHERE price < ?
AND id_category = ? 

The WHERE clause is built based on the conditions you entered in the Delete configuration window. For every row, the values of the fields you typed in the grid—max_price and id_category—are bound to the question marks in the prepared statement.

Note that the conditions in the Delete step are based on fields in the same table. In this case, as you were provided with category descriptions and the products table does not have the descriptions but the ID for the categories, you had to use an extra step to get that ID: a Database lookup.

Suppose that the first row in the Excel file had the value tents. As the ID for the category tents is 4, the execution of the prepared statement with the values in this row has the same effect as the execution of the following SQL statement:

DELETE FROM products
WHERE price < 50
AND id_category = 4

See also

  • Looking for a value in a database table (Chapter 5, Looking for Data). Refer to this recipe if you need to understand how the Database lookup step works.

Creating or altering a database table from PDI (design time)


It's not uncommon that someone asks you to load a table that doesn't exist yet. These are some use cases:

  • You receive a flat file and have to load the full content in a temporary table

  • You have to create and load a dimension table with data coming from another database

You could write a CREATE TABLE statement from scratch and then create the transformation that loads the table, or you could do all that in an easier way from Spoon.

In this case, suppose that you received a file with data about countries and the languages spoken in those countries. You need to load the full content into a temporary table. The table doesn't exist and you have to create it based on the content of the file.

Getting ready

In order to follow the instructions, you will need the countries.xml file available for downloading from the book's site.

How to do it...

  1. Create a transformation and create a connection to the database where you will save the data.

  2. In order to read the countries.xml file, use a Get data from XML step. As Loop XPath type /world/country/language.

  3. Fill the Fields grid as follows:

    Note

    The @ symbol preceding the field isofficial is optional. By selecting Attribute as Element Kettle automatically understands that this is an attribute.

  4. From the Output category, drag and drop a Table Output step.

  5. Create a hop from the Get data from XML step to this new step.

  6. Double-click the Table Output step and select the connection you just created.

  7. In the Target table textbox type countries_stage.

  8. Click on the SQL button. A window will appear with the following script:

    CREATE TABLE countries_stage
    (
      country TINYTEXT
    , capital TINYTEXT
    , language TINYTEXT
    , isofficial TINYTEXT
    )
    ;

Note

The syntax may be different for different DBMS.

Because you know that isofficial is just a simple flag with values Y/N, replace isofficial TINYTEXT with isofficial CHAR(1).

After clicking on Execute, a window will show up telling that the statement has been executed, that is, the table has been created.

Save and run the transformation. All the information coming from the XML file is saved into the table just created.

How it works...

PDI allows you to create or alter tables in your databases depending on the tasks implemented in your transformations or jobs. To understand what this is about, let's explain the previous example.

A Table Output step causes Kettle to execute an INSERT statement against the database. The insert is made based on the data coming to the Table Output and the data you put in the Table Output configuration window, for example the name of the table or the mapping of the fields.

When you click on the SQL button in the Table Output setting window, this is what happens: Kettle builds the statements needed to execute that insert successfully. As in this example the table doesn't exist, and hence the statement generated by clicking on the button is a CREATE TABLE.

When the window with the generated statement appeared, you executed it. This causes the table to be created, so you could safely run the transformation and insert into the new table the data coming from the file to the step.

There's more...

The SQL button is present in several database-related steps. In all cases its purpose is the same: Determine the statements to be executed in order to run the transformation successfully. In the recipe the statement was a CREATE TABLE, but there are other situations. These are some examples:

  • If you use an Insert/Update step and fill the Update fields: grid with a field that doesn't exist, Kettle generates an ALTER TABLE statement in order to add that field as a new column in the table.

  • If you use an Update step and in the The key(s) to look up the value(s): grid type names of columns that are not indexed, Kettle generates a CREATE INDEX statement.

    Note

    Note that in this case the execution of the statement is not mandatory but recommended.

  • If you use a Dimension Lookup /Update step in order to load a Slowly changing dimension, Kettle generates a CREATE TABLE statement including all the fields that are needed in order to keep that kind of dimension updated.

You can execute the SQL as it is generated, you can modify it before executing it (as you did in the recipe), or you can just ignore it. Sometimes the SQL generated includes dropping a column just because the column exists in the table but is not used in the transformation. In that case you shouldn't execute it.

Note

Read the generated statement carefully, before executing it.

Finally, you must know that if you run the statement from outside Spoon, in order to see the changes inside the tool you either have to clear the cache by right-clicking the database connection and selecting the Clear DB Cache option, or restart Spoon.

See also

  • Creating or altering a database table from PDI (runtime). Instead of doing these operations from Spoon during design time, you can do them at runtime. This recipe explains the details.

Creating or altering a database table from PDI (runtime)


When you are developing with PDI, you know (or have the means to find out) if the tables you need exist or not, and if they have all the columns you will read or update. If they don't exist or don't meet your requirements, you can create or modify them, and then proceed. Assume the following scenarios:

  • You need to load some data into a temporary table. The table exists but you need to add some new columns to it before proceeding.

  • You have to load a dimension table. This task is part of a new requirement, so this table doesn't exist.

While you are creating the transformations and jobs, you have the chance to create or modify those tables. But if these transformations and jobs are to be run in batch mode in a different environment, nobody will be there to do these verifications or create or modify the tables. You need to adapt your work so these things are done automatically.

Suppose that you need to do some calculations and store the results in a temporary table that will be used later in another process. As this is a new requirement, it is likely that the table doesn't exist in the target database. You can create a job that takes care of this.

How to do it...

  1. Create a job, and add a Start job entry.

  2. From the Conditions category, drag and drop a Table exists entry, an SQL entry from Scripting, and a Dummy entry from General.

  3. Link all the entries as shown:

  4. Double-click the Table exists entry, choose a database connection, and as Table name type my_tmp_table.

  5. Double-click the SQL entry, choose the same database connection as above, and in the SQL Script: type:

    CREATE TABLE my_tmp_table (
    CALC_1 NUMERIC(10,2),
    CALC_2 NUMERIC(10,2),
    CALC_3 NUMERIC(10,2)
    );

    Note

    The statement above is written with MySQL syntax. Please review and fix it if needed because you are using a different DBMS.

  6. Save the job and run it.

  7. The table my_tmp_table should have been created.

  8. Run the job again.

  9. Nothing should happen.

How it works...

The Table exists entry, as implied by its name, verifies if a table exists in your database. As with any job entry, this entry either succeeds or fails. If it fails, the job creates the table with an SQL entry. If it succeeds, the job does nothing.

There's more...

The SQL entry is very useful not only for creating tables as you did in the recipe, but also for executing very simple statements, as for example setting a flag before or after running a transformation. Its main use, however, is executing DDL statements.

On the other side, in order to decide if it was necessary to create the table or not, you used a Table exists entry. In addition to this entry and before verifying the existence of the table, you could have used the Check Db connections. This entry allows you to see if the database is available.

Now, let's suppose the table exists, but it is an old version that doesn't have all the columns you need. In this case you can use an extra useful entry: Columns exist in a table. If you can detect that a column is not present, you can alter the table by adding that column, also with an SQL job entry.

Note

Creating or altering tables is not a task that should be done as part of an ETL process. Kettle allows you to do it but you should be careful when using these features.

See also

  • Creating or altering a database table from PDI (design time). Instead of doing these operations at runtime, you can do it from Spoon while you are designing the jobs and transformations. This recipe explains how to do this.

Inserting, deleting, or updating a table depending on a field


PDI allows you to do the basic operations that modify the data in your tables, that is: insert, update, and delete records. For each of those operations you have at least one step that allows you to do the task. It may happen that you have to do one or another operation depending on the value of a field. That is possible with a rather unknown step named Synchronize after merge.

Suppose you have a database with books. You received a file with a list of books. In that list there are books you already have, and there are books you don't have.

For the books you already have, you intend to update the prices.

Among the other books, you will insert in your database only those which have been published recently. You will recognize them because they have the text NEW in the comment field.

Getting ready

For this recipe you will need the database which can be created and filled by running the script books_2.sql. You also will need the file books_news.txt that accompanies the material for this chapter.

As the recipe will modify the data in the database, before proceeding, explore the database to see what is inside. In particular run these statements and pay attention to the results:

SELECT count(*)
FROM   books;
+----------+
| count(*) |
+----------+
|       34 |
+----------+
1 row in set (0.00 sec)

SELECT id_title, title, price
FROM   books
WHERE  author_id='A00001';
+----------+----------------------------------------+-------+
| id_title | title                                  | price |
+----------+----------------------------------------+-------+
| 123-400  | The Girl with the Dragon Tattoo        |    37 |
| 123-401  | The Girl who Played with Fire          |  35.9 |
| 123-402  | The Girl who Kicked the Hornett's Nest |    39 |
+----------+----------------------------------------+-------+
3 rows in set (0.00 sec)

SELECT *
FROM   books
WHERE  title="Mockingjay";

Empty set (0.00 sec)

How to do it...

  1. Create a new transformation, and create a connection to the book's database.

  2. Drop to the canvas a Text file input step and use the step to read the books_news.txt file. As separator, type |. Read all fields as String except the price that has to be read as a Number with 0.00 as the Format.

  3. Do a preview to verify you have read the file properly. You should see this:

  4. Use a Split Fields step to split the name field into two: firstname and lastname.

  5. Use a Database lookup step to look up in the authors table for an author that matches the firstname and lastname fields. As Values to return from the lookup table: add the id_author.

  6. Check the option Do not pass the row if the lookup fails and close the window.

  7. From the Output category of steps drag and drop to the canvas a Synchronize after merge step, and create a hop from the last step toward this one. Your transformation looks like this:

  8. Double-click the step. As Connection, select the connection you just created. As Target table, type books.

  9. Fill the grids as shown:

    Tip

    Remember that you can avoid typing by clicking on the Get Fields and Get update fields buttons to the right.

  10. Select the Advanced tab.

  11. As Operation fieldname, select comment. As Insert when value equal, type NEW. As Update when value equal, type In Stock. Leave the other fields blank.

  12. Close the window and save the transformation.

  13. Run the transformation.

  14. Explore the database again. In particular, run for the second time the same statements you ran before doing the recipe. Now you will get this:

    SELECT count(*)
    FROM   books;
    +----------+
    | count(*) |
    +----------+
    |       38 |
    +----------+
    1 row in set (0.00 sec)
    
    SELECT id_title, title, price
    FROM   books
    WHERE  author_id='A00001';
    +----------+----------------------------------------+-------+
    | id_title | title                                  | price |
    +----------+----------------------------------------+-------+
    | 123-400  | The Girl with the Dragon Tattoo        | 34.98 |
    | 123-401  | The Girl who Played with Fire          | 35.99 |
    | 123-402  | The Girl who Kicked the Hornett's Nest | 37.99 |
    +----------+----------------------------------------+-------+
    3 rows in set (0.00 sec)
    
    SELECT *
    FROM   books
    WHERE  title="Mockingjay";
    +----------+------------+-----------+-------+-------+
    | id_title | title      | id_author | price | genre |
    +----------+------------+-----------+-------+-------+
    | 523-110  | Mockingjay | A00012    | 37.99 | Teens |
    +----------+------------+-----------+-------+-------+
    1 row in set (0.00 sec)

How it works...

The Synchronize after merge step allows you to insert, update, or delete rows in a table based on the value of a field in the stream. In the recipe, you used the Synchronize after merge step both for inserting the new books (for example, Mockingjay) and for updating the prices for the books you already had (for example, The Girl with the Dragon Tattoo).

In order to tell PDI whether to execute an insert or an update, you used the field comment. Under the Advanced tab, you told PDI that it should insert the records where the comment was equal to NEW, and update those where the comment was In Stock.

Note that, because you didn't intend to delete rows, you left the Delete when value equal option blank. However, you could also have configured this option in the same way you configured the others. An example of that could be deleting the books that will stop being published. If you recognize those books after the expression out of market, you could type that expression in the Delete when value equal option and those books would be deleted.

The inserts and updates were made based on the fields you entered in the grids under the General tab, which work exactly as the grids in an Insert/Update or an Update step.

There's more...

Let's see a little more about the step you used in this recipe.

Insert, update, and delete all-in-one

The Synchronize after merge step is like an all-in-one step. It allows you to insert, update, and delete rows from a table all in a single step, based on a field present in the dataset. For each row Kettle uses the value of that column to decide which of the three basic operations to execute. This happens as follows.

Suppose that the Operation fieldname is called op and the values that should cause an insert, update, or delete are NEW, In Stock, and Discontinued respectively.

Operation

How it works

Insert

The insert is made for all rows where the field op is equal to NEW. The insert is made based on the key fields just like in an Insert/Update step.

Update

The update is made for all rows where the field op is equal to the value In Stock. The update is made based on the key fields just like in an Insert/Update or an Update step.

Delete

The delete is made for all rows where the field op is equal to the value Discontinued. The delete is made based on the key fields just like in a Delete step. For Delete operations the content of the lower grid is ignored.

Synchronizing after merge

You may wonder what the name Synchronize after merge has to do with this, if you neither merged nor synchronized anything. The fact is that the step was named after the Merge Rows (diff) step, as those steps can perfectly be used together. The Merge Rows (diff) step has the ability to find differences between two streams, and those differences are used later to update a table by using a Synchronize after merge step.

See also

  • Deleting data from a table. For understanding how the delete operations work. Inserting or updating rows in a table and for understanding how the inserts and updates work.

  • Comparing two streams and generating differences (Chapter 6, Understanding Data Flows). For learning to use the Synchronize after merge step along with the Merge Rows (dif) step.

Changing the database connection at runtime


Sometimes you have several databases with exactly the same structure serving different purposes. These are some situations:

  • A database for the information that is being updated daily and one or more databases for historical data.

  • A different database for each branch of your business.

  • A database for your sandbox, a second database for the staging area, and a third database fulfilling the production server purpose.

In any of those situations, it's likely that you need access to one or the other depending on certain conditions, or you may even have to access all of them one after the other. Not only that, the number of databases may not be fixed; it may change over time (for example, when a new branch is opened).

Suppose you face the second scenario: Your company has several branches, and the sales for each branch are stored in a different database. The database structure is the same for all branches; the only difference is that each of them holds different data. Now you want to generate a file with the total sales for the current year in every branch.

Getting ready

Download the material for this recipe. You will find a sample file with database connections to three branches. It looks like this:

branch,host,database
0001 (headquarters),localhost,sales2010
0002,183.43.2.33,sales
0003,233.22.1.97,sales

If you intend to run the transformation, modify the file so it points to real databases.

How to do it...

  1. Create a transformation that reads the file with connection data and copy the rows to results.

  2. Create a second transformation, and define the following named parameters: BRANCH, HOST_NAME, and DATABASE_NAME.

  3. Create a database connection. Choose the proper Connection Type:, and fill the Settings data. Type a value for the Port Number:, the User Name:, and the Password. As Host Name: type ${HOST_NAME}, and as Database Name: type ${DATABASE_NAME}.

  4. Use a Table Input step for getting the total sales from the database. Use the connection just defined.

  5. Use a Text file output step for sending the sales summary to a text file. Don't forget to check the option Append under the Content tab of the setting window.

  6. Create a job with two Transformation job entries, linked one after the other.

  7. Use the first entry to call the first transformation you created, and the second entry to call the second transformation. The job looks like this:

  8. Double-click the second transformation entry, select the Advanced tab, and check the Copy previous results to parameters? and the Execute for every input row? checkboxes.

  9. Select the Parameters tab and fill it as shown:

  10. Save both transformations. Save the job, and run it.

  11. Open the text file generated. It should have one line with sales information for each database in the file with the list of databases.

How it works...

If you have to connect to several databases, and you don't know in advance which or how many databases you will have to connect to, you can't rely on a connection with fixed values, or variables defined in a single place as for example in the kettle.properties file. In those situations, the best you could do is to define a connection with variables, and set the values for the variables at runtime.

In the recipe, you created a text file with a summary sales line for each database in a list.

The transformation that wrote the sales line used a connection with variables defined as named parameters. This means that whoever calls the transformation has to provide the proper values.

The main job loops on the list of database connections. For each row in that list, it calls the transformation copying the values from the file to the parameters in the transformation. In other words, each time the transformation runs, the named parameters are instantiated with the values coming from the file.

There's more...

In the recipe, you changed the host and the name of the database. You could have parameterized any of the values that made up a database connection, for example the user and password.

See also

  • Connecting to a database. This recipe explains how to connect to a database by using variables.

  • Executing a transformation once for every row in a dataset in Chapter 7, Executing and Reusing Jobs and Transformations. With this recipe you will understand better the way the loop over the database connection works.

Loading a parent-child table


A parent-child table is a table in which there is a self-referencing relationship. In other words, there is a hierarchical relationship among its rows. A typical example of this is a table with employees, in which one of the columns contains references to the employee that is above each employee in the hierarchy.

In this recipe you will load the parent-child table of employees of Steel Wheels. The hierarchy of roles in Steel Wheels is as follows:

  • A sales representative reports to a sales manager

  • A sales manager reports to a vice-president

  • A vice-presidents reports to the president

  • The president is the highest level in the hierarchy. There is a single employee with this role.

You will load all employees from a file. These are sample rows in that file:

EMPLOYEENUMBER|LASTNAME|FIRSTNAME|EXTENSION|EMAIL|OFFICECODE|JOBTITLE|REP_TO

1002|Murphy|Diane|x5800|dmurphy@classicmodelcars.com |1|President|

1056|Patterson|Mary|x4611|mpatterso@classicmodelcars.com |1|VP Sales|dmurphy@classicmodelcars.com 

1076|Firrelli|Jeff|x9273|jfirrelli@classicmodelcars.com |1|VP Marketing|dmurphy@classicmodelcars.com 

1088|Patterson|William|x4871|wpatterson@classicmodelcars.com |6|Sales Manager (JAPAN, APAC)|mpatterso@classicmodelcars.com 

...

As you can see, among the fields you have the e-mail of the employee who is above in the hierarchy. For example, Gerar Bondur is a Sales Manager, and reports to the employee with e-mail , that is, Mary Patterson.

Getting ready

In order to run this recipe, either truncate the employees table in Steel Wheels, or create the table employees in a different database.

How to do it...

  1. Create a transformation that inserts the record for the president who is the first in the hierarchy, and doesn't report to anyone. The transformation should read the file, filter the record with JOBTITLE=President, and insert the data into the employees table.

  2. Create another transformation to load the rest of the employees. Define a named parameter named LEVEL that will represent the role of the employees being loaded.

  3. Use a Text file input step to read the file of employees.

  4. Use a Get Variables step to add the variable LEVEL as a new field named level.

  5. Add a Filter rows step to filter the employees to load based on their role. In order to do that, enter the following condition: JOBTITLE REGEXP level.

  6. Add a Database lookup to find out the employee number of the employee who is one above in the hierarchy: In the upper grid add a row with the condition EMAIL = REP_TO. Use the lower grid to get the field EMPLOYEENUMBER and rename it to REPORTSTO.

  7. Add a Table Output step, and use it to insert the records in the table employees. Your final transformation looks like this:

  8. Finally create a job to put all together. Drag to the work area a START entry, and four Transformation job entries. Link all of them in a row.

  9. Use the first Transformation entry to execute the transformation that loads the president.

  10. Double-click the second Transformation entry and configure it to run the transformation that loads the other employees. Under the Parameters tab, add a parameter named LEVEL with value VP.*.

  11. Repeat step 10 for the third Transformation entry, but this time type .*Manager.* as the value for the LEVEL parameter.

  12. Repeat step 10 for the fourth Transformation entry, but this time type Sales Rep.* as the value for the LEVEL parameter.

  13. Save and run the job. The table should have all employees loaded, as you can see below:

    SELECT
       EMPLOYEENUMBER N
     , LASTNAME
     , REPORTSTO
     , JOBTITLE
    FROM employees;
    +------+-----------+-----------+----------------------------+
    | N    | LASTNAME  | REPORTSTO | JOBTITLE                   |
    +------+-----------+-----------+----------------------------+
    | 1002 | Murphy    |      NULL | President                  |
    | 1056 | Patterson |      1002 | VP Sales                   |
    | 1076 | Firrelli  |      1002 | VP Marketing               |
    | 1088 | Patterson |      1056 | Sales Manager (JAPAN, APAC)|
    | 1102 | Bondur    |      1056 | Sale Manager (EMEA)        |
    | 1143 | Bow       |      1056 | Sales Manager (NA)         |
    | 1165 | Jennings  |      1143 | Sales Rep                  |
    | 1166 | Thompson  |      1143 | Sales Rep                  |
    | 1188 | Firrelli  |      1143 | Sales Rep                  | | ...  | ...       |      ...  | ...                        |
    +------+-----------+-----------+----------------------------+
    23 rows in set (0.00 sec)

How it works...

If you have to load a table with parent-child relationships, loading all at once is not always feasible. Look at the sampledata database. There is no physical foreign key from the REPORTSTO column to the EMPLOYEENUMBER column, but if the foreign key had existed, loading all records at once would fail because of the foreign key constraint. Not only that; in this case loading all at once would be impossible because in the file you missed the ID of the parent employee needed for the REPORTSTO column.

So, in this recipe there was one possible solution for loading the table. We loaded all employees, one role at a time, beginning by the president and followed by the roles below in the hierarchy. The transformation that loaded the other roles simply read the file, kept only the employees with the role being loaded, looked for the ID of the parent employee in the hierarchy, and inserted the records. For the roles you could have used fixed values but you used regular expressions instead. In doing so, you avoided calling the transformation once for each different role. For example, for loading the vice-presidents you called the transformation once with the regular expression VP.* which matched both VP Sales and VP Marketing.

See also

  • Inserting or updating rows in a table. If you are not confident with inserting data into a table see this recipe.

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Key benefits

  • Manipulate your data by exploring, transforming, validating, integrating, and more
  • Work with all kinds of data sources such as databases, plain files, and XML structures among others
  • Use Kettle in integration with other components of the Pentaho Business Intelligence Suite
  • Each recipe is a carefully organized sequence of instructions packed with screenshots, tables, and tips to complete the task as efficiently as possible

Description

Pentaho Data Integration (PDI, also called Kettle), one of the data integration tools leaders, is broadly used for all kind of data manipulation such as migrating data between applications or databases, exporting data from databases to flat files, data cleansing, and much more. Do you need quick solutions to the problems you face while using Kettle? Pentaho Data Integration 4 Cookbook explains Kettle features in detail through clear and practical recipes that you can quickly apply to your solutions. The recipes cover a broad range of topics including processing files, working with databases, understanding XML structures, integrating with Pentaho BI Suite, and more. Pentaho Data Integration 4 Cookbook shows you how to take advantage of all the aspects of Kettle through a set of practical recipes organized to find quick solutions to your needs. The initial chapters explain the details about working with databases, files, and XML structures. Then you will see different ways for searching data, executing and reusing jobs and transformations, and manipulating streams. Further, you will learn all the available options for integrating Kettle with other Pentaho tools. Pentaho Data Integration 4 Cookbook has plenty of recipes with easy step-by-step instructions to accomplish specific tasks. There are examples and code that are ready for adaptation to individual needs.

Who is this book for?

If you are a software developer or anyone involved or interested in developing ETL solutions, or in general, doing any kind of data manipulation, this book is for you. It does not cover PDI basics, SQL basics, or database concepts. You are expected to have a basic understanding of the PDI tool, SQL language, and databases.

What you will learn

  • Configure Kettle to connect to databases, explore them, and perform CRUD operations
  • Read, write, and parse simple and unstructured files
  • Solve common Excel needs such as reading from a particular cell or generating several sheets at a time
  • Read, validate, and generate simple and complex XML structures
  • Manipulate files by copying, deleting, compressing, or transferring to remote servers
  • Look up information from different sources such as databases, web services, or spreadsheets among others
  • Work with data flows performing operations such as joining, merging, or filtering rows
  • Customize the Kettle logs to your needs
  • Embed Java code in your transformations to gain performance and flexibility
  • Execute and reuse transformations and jobs in different ways
  • Integrate Kettle with Pentaho Reporting, Pentaho Dashboards, Community Data Access, and Pentaho BI Platform

Product Details

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Publication date : Jun 23, 2011
Length: 352 pages
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Language : English
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Publication date : Jun 23, 2011
Length: 352 pages
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Language : English
ISBN-13 : 9781849515252
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Table of Contents

9 Chapters
Working with Databases Chevron down icon Chevron up icon
Reading and Writing Files Chevron down icon Chevron up icon
Manipulating XML Structures Chevron down icon Chevron up icon
File Management Chevron down icon Chevron up icon
Looking for Data Chevron down icon Chevron up icon
Understanding Data Flows Chevron down icon Chevron up icon
Executing and Reusing Jobs and Transformations Chevron down icon Chevron up icon
Integrating Kettle and the Pentaho Suite Chevron down icon Chevron up icon
Getting the Most Out of Kettle Chevron down icon Chevron up icon

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Benaglia Nicola Jul 15, 2011
Full star icon Full star icon Full star icon Full star icon Full star icon 5
Pentaho Data Integration (PDI) has reached its 4th version with a lot of new interesting features and capabilities.This versatile tool is a must for all people working with data integration.Transformations and jobs are the target in PDI to realize a task including data reading, writing, manipulations and integrations, doing mathematical or logicaloperations, all this is tipical of a ETL tool (where ETL stands for Extract, Transform and Load).Do you need to move data from an excel file to a database, from a database to a text file?Do you need to extract data from a LDAP server, FTP, mail, log file, compressed file, web service or web site?All this must be done regularly, automatically?Would it be cool to be notified by email if the process failed?Sure you can do it in a lot of ways, but an ETL tool gives you the necessary help.In addition an open source ETL, like Pentaho Data Integration, has behind a strong and skilled community to help you.This book provides a lot of step-by-step examples (called "recipes") with a lot of practical, useful and very smart hints and strategies for developing transformations and jobs.New steps (a step a is basic task, for example reading from a file, sorting , grouping, calculating, ...) are very well described and explainedChapters of this book cover deeply all you need to know to understand the software and be ready to write your own transformations and be quickly productive.I found very useful the space dedicated to:- read and write file: unstructured and structured text files, excel and openoffice spreadsheets- XML files and validation with DTD and XSD Schemas- use fuzzy match step- reuse and flexibility of trasformations (name parameters, variable, mapping)- sending email with log log about the status of the execution- file management: retrieve file from server like FTP, copying, moving, deleting, comparing- integration of Kettle with Pentaho Suite (Pentaho Reporting Engine)The way all these subjects are explained is progressive and gradual. The use of targeted examples makes the reading very pleasant and easy.I suggest this book to you.
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donJaneiro Aug 10, 2011
Full star icon Full star icon Full star icon Full star icon Full star icon 5
This book is an excellent read (the product itself is not that bad either...). It would seem that you could use this book to supplement the one written by Matt Casters and co. If you are a newbie to ETL I suppose that this would be the preferred approach.The book is clearly categorized and the recipes are interrellated. Another refreshing aspect of the book is the fact that the authors are opinionated when necessary. This means that you can learn from their ideas on best practices regarding data-flows. If you have a background in eg. integration services and you know which data-flow pattern you want to implement, but perhaps don't know how to do it in PDI, then this book can be seen as a sort of conversion guide (and then some). The book is also peppered with links to great sites concerning the Pentaho toolset (especially PDI).
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Data Aggregator Jul 07, 2011
Full star icon Full star icon Full star icon Full star icon Full star icon 5
PDI4_Cookbook is worth owning even if you have the 'other' two Kettle books on hand given the depth of that open source product. Easy to follow, it could be used as a first book on PDI once you get through the basic install/sample documents from the Pentaho.com site. It is well organized, up to date with PDI4 features and the recipes are for the most part truly useful in the ETL domain. The authors spend a sizable amount of space on the more obscure but useful Kettle facilities (e.g., sub-transformations or generating sample data, etc.) so this book will pay off in web searches for solutions. Recommended for all PDI developers!
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Nelson Sousa Aug 02, 2011
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This book a very good guide for new users, not only to Pentaho Data Integration but to ETL in general. All recipes are based on real world examples that one finds quite often and the explanations on how things work are a valuable resource for those that are giving the first steps on data integration and like to learn by example.But also experienced users can benefit from the recipes, given their wide range and applicability. I've worked with Maria Roldan for the past year and despite being an experienced Pentaho Data Integration user, I keep a copy of the book in my desk and browse through it every now and again because I'm facing a problem I remember seeing solved quickly and elegantly there.
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Bill From Ann Arbor Nov 29, 2014
Full star icon Full star icon Full star icon Full star icon Full star icon 5
Incredibly informative and useful. This book probably saved me at least a 100 hours of ramp up time.
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