Data Quality Implementation using Pentaho Data Integration (PDI)

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Data Quality Implementation using Pentaho Data Integration (PDI)

Data quality implementation is important in the context of Data Warehouse and Business Intelligence. This blog focuses on why this is important and how it can be implemented using Pentaho Data Integration (PDI).

Importance of integrating quality data to Enterprise Data Warehouse

A Data Warehouse is an integral part of those enterprises which want to have a clear business insights from customer and operational data.It has been observed that fundamental problems arise in populating a warehouse with quality data from various multiple sources systems. Let us see in greater detail.

1. Impact of Erroneous data being integrated to DW

Many organizations grapple with poor data quality which ultimately results in poor decision-making. After all, decisions are no better than the data on which they are based. Reliable, relevant, and complete data supports organizational efficiency and is a cornerstone of sound decision-making
Poor quality data could be an obvious reason for the malfunctioning and operational inefficiency of an organization. The negative implications of poor data can be felt in terms of decreased customer satisfaction and trust, high running costs, poor business decision and performance

2. Cost of Integrating poor quality Data to DW

Any kind of anomalies and impurities in data such as data incompleteness, incorrectness, Integrity violation etc. could avert its effective utilization, disabling high performance, hamper accurate processing of the results etc. Conclusions gained by data analysis could lead to faulty decisions once the data warehouse is polluted with bad data.
Let us see few facts given below

  • 75% of all the data integration projects has been reported to have either over-run their budgets or have met a complete failure
  • 70% organizations have identified costs stemming from dirty data
  • 33% of organizations have delayed or canceled new IT systems because of poor data
  • Business intelligence (BI) projects often fail due to dirty data, so it is imperative that BI-based business decisions are based on clean data

What is Data Quality?

The basic definition of data quality encompasses some quality attributes or rules which can act as key measures to decide whether data is complete, understandable, relevant, consistent, valid, and accurate. Below are the key attributes:

Completeness: It refers to the expected availability of the data. It is possible that data is not available, but it may be still considered to be complete, as it meets the expectations of the user. Every data requirement has ‘mandatory’ and ‘optional’ aspects.
For example, if the customer’s city is not a mandatory column in the operational system and if we bring this data to DW, business analysis based on customer’s city won’t be accurate.

Consistency: Consistency of Data means that data across the enterprise should be in sync with each other and should not provide conflicting information. For examples a credit card is canceled, and inactive, but the card billing status shows ‘due’. Such kind of inconsistent data across data sets should not prevail.

Validity: Data Validity means the correctness and reasonableness of data. For example, a bank account number should fall within a specific range, numeric data should be all digits, dates should have a valid month, day and year and the spelling of names should be proper

Integrity: Data integrity verifies that data has remained unaltered in transit from creation to reception. Appropriate relationship linkages among records are very important else it might introduce unnecessary duplication throughout the system.

Conformity: This dimension verifies whether data is expected to adhere to certain standards and also how well it’s represented in an expected format. For example, date may be represented either as ‘dd/mm/yyyy’ format or as ‘mm/dd/yyyy’ format. So, conformance to specific data format is essential.

Accuracy: Checks for the accurate representation of the real world values. For example, the bank balance in the customer’s account is the real value that the customer deserves from the Bank. Any inaccuracy in the existing data can have a worse impact on the operational and analytical applications.

Is your Enterprise Data Quality up to the mark?

DWBI Architecture without Data quality implemented

Data from source is extracted as it is and loaded into stage tables (Landing layer) without any transformation using ETL. Post which data from Stage tables will be extracted and loaded to Data Store layer (Persistent layer). As a final process, data from DS layer will be extracted, transformed and loaded into Data Marts/DW.

The problem with this approach is, there are no Data quality checks implemented in the source data and because of which Data Warehouse might get populated with poor quality data which could lead into wrong analysis and faulty decisions.

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DWBI Architecture with Data quality implemented

Once the data is loaded into stage tables, ETL will trigger Data quality check process on the stage table data. For each stage table, ETL picks up the DQ Rules (Query) defined in the DQ meta data table and executes to identify which all are the records violating the rules. Accordingly, this process will mark/update those bad quality records with the respective DQ rule IDs. Single record can be failed due to multiple rules and those DQ rule IDs will be updated against those records.

Once the DQ process is completed, there is another ETL/Process that picks up all the bad quality records from Stage table and moves to Reject tables. These records can be identified by applying a filter “.DQ_Rule_ID is NOT NULL”. Same way another ETL/process that picks up good quality data from Stage to Data Quality stage and from there to Data Store and DW/Data Marts.

As an illustration of implementation, following section details how this can be achieved using Pentaho Data Integration (PDI).

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Technical Implementation of Data Quality using Pentaho Data Integration (PDI)

For this implementation using Pentaho Data Integration, we need to have some user defined meta data tables as below:

  • ETL_RT_DAILY_JOBS – This table will have the information such as ETL Job name, Module Name (Same as module name) and some other audit information that gets populated when the ETL job is triggered
  • ETL_DQ_MASTER – This table will have all the Data Quality rules for each Stage table. DQ rules are maintained in the form of Database query as shown below. We can add ‘n’ number of DQ rules for each source entity (Table)
  • Note
    • Stage table is a temporary table that gets loaded as it is from Source. Hence it will hold the same data as source with no change
    • Refer Fig-3 for the ETL_DQ_MASTER table structure and data. We can have any kind of rule such as query for De dupe check (Query to identify Duplicate records), PK column null check, Foreign Key constraint violation, date formats etc.
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1. De-Dupe Check

Let us create an ETL job as below. Also it is very important that you need to define the De-Dupe check query in the ETL_DQ_MASTER table for the respective stage table. Also, we will have to add a column IS_DUPLICATE to the stage table which will have values 0 or 1. 1 indicates Duplicate records.

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“GENERIC SQL QUERY” job is the step that will call a job as below which is used to identify the duplicate records in the stage tables based on the rule defined in the DQ rule Meta data tables and RULE Type such as “De_Dupe_Check”, “Row_Level_DQ_Reject” etc.

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Below are the steps used in “Apply De Dupe Rule” transformation.

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Get variables step is being used to get the variable values for ETL Job Name, App Group Name (Same as module name) etc.

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Then we will do a look up to ETL_RT_DAILY_JOBS to get the stage table name

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Then the stage table name, DQ rule type is being passed to ETL_DQ_MASTER to get the DQ Rule ID, Rule for each stage table

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Once the stage table name, DQ Rule ID, DQ rule is obtained, a transformation is being call with below values are parameters.

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In this transformation, we will get all the variables using “Get Variables” and an “Execute SQL Script” step that executes the DQ rule (Query defined in ETL_DQ_MASTER) as shown below. The highlighted is the way of passing variable and the parameter is the DQ_RULE field which is the query defined in ETL_DQ_MASTER.

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big data analytics companies

Once this Job “GENERIC SQL QUERY” is completed, all the duplicate records in the respective stage table will be marked as IS_DUPLICATE – 1. The records with value IS_DUPLICATE -0 will be good quality records for further processing

2. Row Level DQ quality check implementation

Once the De-Dupe job is completed, another job “Apply Data Rejection Rules” being called with steps as given below.

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big data analytics companies
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Here for this Rule type, unlike De-Dup DQ rule column value fro ETL_DQ_MASTER for each stage table will be appended with the Update statement of below “Execute SQL Script”.

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Once the Job is completed, all the stage table records which are violating the rules will be marked with respective DQ rules (Append the DQ rule IDs if single record is breaking multiple rules)

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2019-05-01T17:56:13+00:00