CloverETL's Blog

October 8, 2009

Building DWH with CloverETL: Slowly Changing Dimension Type 1

Filed under: Using CloverETL — Tags: , , , , — Petr Uher @ 10:21 am

The very typical usage of ETL tools is loading the data warehouse (DWH). So I decided to write a tutorial that will describe typical data warehouse tasks (slowly changing dimensions, date dimension, filling fact tables) and propose solutions with using of CloverETL.

If you are a newbie in data warehousing I recommend you reading some of the books by Ralph Kimball or H. I. Imon.

Sample data warehouse collects the information about sales for a small store chain that offers electronics like iPod, MP3, laptops etc.

The DB schema of my data warehouse is very simple. It consists of four dimensions (Customer, Product, Store and Date), one degenerate dimension (invoice number) and one fact table (Sales). Fact table stores two additive facts: units and total price. you can see complete DB scheme on figure below.

DB schema of sample DWH

DB schema of sample DWH

Store dimension

One thing you will surely face when you build data warehouse is working with several types of slowly changing dimension (SCD). In this part of the tutorial I used the simplest SCD type.

The simplest and surely the most popular SCD type among ETL developers is slowly changing dimension type 1. It doesn’t store any history, so once the value in online transaction processing system (OLTP) has been changed, the value in DWH is immediately overwritten as well.

I decided to use SCD1 for store dimension which collects basic information about stores: address, store identifier, store manager etc. Each store is identified in OLTP by unique store number (natural key). But for DWH I have to generate an own surrogate identifier ID_D_STORE.

The basic idea of processing SCD1 is very simple: compare records in DWH and OLTP, insert missing records into DWH, update the DWH records according to OLTP. For all these tasks the attribute that helps us to find corresponding records is the natural key – STORE_NUMBER.

So let’s go to develop CloverETL graph. For better portability all inputs and output data are stored in csv files, thus you don’t have to configure any database. The store dimension of DWH is stored in D_STORE.tbl file, the actual data from OLTP are stored in Store_25092009.csv. In both of these files we have to read, sort on natural key STORE_NUMBER and find the records that aren’t in D_STORE (third output of DataIntersection). In this last step we will use DataIntersection component. Simultaneously (by second output of DataIntersection) we get the potential records that can be different in OLTP and DWH. These records are then filtered and only the records having any different value of any attribute are processed and new values are stored to D_STORE_update.tbl file. New records are written to D_STORE_insert.tbl file once ID_D_STORE attribute is added. ID_D_STORE attribute gains its value from sequence that we have already defined in CloverETL in advance. And that’s all. You can see the resulting graph below.

CloverETL graph D_STORE_SCD1

CloverETL graph D_STORE_SCD1

If you want to read/write data from/to database easily replace UniversalDataReaders with DBInputTables and UniversalDataWriters with DBOutputTable components.

You can download complete CloverETL project here.

To be continued. In the next part we will deal with slowly changing dimension type 2.

April 2, 2009

Partitioning output records into m excel files with n sheets

Filed under: Using CloverETL — Tags: , , , , — Vaclav Matous @ 12:14 pm

Customers often tend to have obscure requirements. In a recent project we faced an interesting issue. Output records had to be split into unknown number of excel files according to their category. In addition, records within each file should have been written in datasheets according to their subcategory. The number of subcategories varied from 1 to 1024, so the whole solution seemed to me quite impractical.

Fortunately, we could solve the customer’s requirement very easily using CloverETL. For example, there are (among others) two fields – category and subcategory – in your metadata coming into XLSWriter. Then, if you set File URL in the form of filename_#.xls, Data sheet set as $subcategory and Partition key as category, the writer will split records into files according to the categories and into datasheets according to the subcategories.

Finally, the customer came to a conclusion that one file with many records is better than dozens datasheets within dozens files with very few records.

Settings of XLS_WRITER

Settings of XLS_WRITER

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