Data Modeling – Column Data Classification

Data Modeling, Column Data Classification, Field Data Classification
Data Modeling

Column Data Classification

When analyzing individual column data, at its most foundational level, column data can be classified by their fundamental use/characteristics.  Granted, when you start rolling up the structure into multiple columns, table structure and table relationship, then other classifications/behaviors, such as keys (primary and foreign), indexes, and distribution come into play.  However, many times when working with existing data sets it is essential to understand the nature the existing data to begin the modeling and information governance process.

Column Data Classification

Generally, individual columns can be classified into the classifications:

  • Identifier — A column/field which is unique to a row and/or can identify related data (e.g., Person ID, National identifier, ). Basically, think primary key and/or foreign key.
  • Indicator — A column/field, often called a Flag, that has a binary condition (e.g., True or False, Yes or No, Female or Male, Active or Inactive). Frequently used to identify compliance with complex with a specific business rule.
  • Code — A column/field that has a distinct and defined set of values, often abbreviated (e.g., State Code, Currency Code)
  • Temporal — A column/field that contains some type date, timestamp, time, interval, or numeric duration data
  • Quantity — A column/field that contains a numeric value (decimals, integers, etc.) and is not classified as an Identifier or Code (e.g., Price, Amount, Asset Value, Count)
  • Text — A column/field that contains alphanumeric values, possibly long text, and is not classified as an Identifier or Code (e.g., Name, Address, Long Description, Short Description)
  • Large Object (LOB)– A column/field that contains data traditional long text fields or binary data like graphics. The large objects can be broadly classified as Character Large Objects (CLOBs), Binary Large Objects (BLOBs), and Double-Byte Character Large Object (DBCLOB or NCLOB).

Related References

Infosphere DataStage – Boolean Handling for Netezza

Beware when you see this message when working with Boolean in DataStage, the message displays as informational (at list it did for me) not as a warning or an error.  Even though it seems innocuous, what it meant for my job, was the Boolean (‘true’ / ‘false’) was not being interpreted and everything posted to ‘false’.

In DataStage the Netezza ‘Boolean’ field/Data SQL type maps to the ‘Bit’ SQL type, which expects a numeric input of Zero (0) or one (1).  So, my solution (once I detected the problem during unit testing) was to put Transformer Stage logic in place to convert the Boolean input to the expected number value.

Netezza to Datastage Data Type Mapping

Netezza data types

InfoSphere DataStage

data types (SQL types)

Expected Input value

BOOLEANBit0 or 1 (1 = true, 0 = false)

Transformer Stage logic Boolean Handling Logic

A Netezza Boolean field can store: true values, false values, and null. So, some thought should be given to you desired data outcome for nulls

This first example sets a that the nulls are set to a specific value, which can support a specific business rule for null handling and, also, provide null handling for non-nullable fields.  Here we are setting nulls to the numeric value for ‘true’ and all other non-true inputs to ‘false’.

If isnull(Lnk_Src_In.USER_ACTIVE) then 1 Else if Lnk_Src_In.USER_ACTIVE = ‘true’ Then 1 Else 0

These second examples sets a that the nulls are set by the Else value, if your logic direction is correct value and still provides null handling for non-nullable fields.

  • If  Lnk_Src_In.USER_ACTIVE = ‘true’ Then 1 Else 0

  • If  Lnk_Src_In.USER_ACTIVE = ‘False’ Then 0 Else 1

Director Log Message

Message ID

  • IIS-DSEE-TBLD-00008

Message Text

  • <<Link Name Where Message Occurred>>: Numeric string expected. Use default value.

Or something like this:

  • <<Link Name Where Message Occurred>>: Numeric string expected for input column ‘<<Field Name Here>>‘. Use default value.

Related References

Boolean

PureData System for Analytics, PureData System for Analytics 7.2.1, IBM Netezza user-defined functions, UDX data types reference information, Supported data types, Boolean

https://www.ibm.com/support/knowledgecenter/en/SSULQD_7.2.1/com.ibm.nz.udf.doc/r_udf_boolean_datatype.html

Data types and aliases

PureData System for Analytics, PureData System for Analytics 7.2.1, IBM Netezza stored procedures, NZPLSQL statements and grammar, Variables and constants, Data types and aliases

https://www.ibm.com/support/knowledgecenter/en/SSULQD_7.2.1/com.ibm.nz.sproc.doc/c_sproc_data_types_aliases.html

Logical data types

PureData System for Analytics, PureData System for Analytics 7.2.1, IBM Netezza database user documentation, Netezza SQL basics, Data types, Logical data types

https://www.ibm.com/support/knowledgecenter/en/SSULQD_7.2.1/com.ibm.nz.dbu.doc/r_dbuser_data_types_logical.html

Data type conversions from Netezza to DataStage

InfoSphere Information Server, InfoSphere Information Server 11.5.0, Connecting to data sources, Databases, Netezza Performance Server, Netezza connector, Designing jobs by using the Netezza connector, Defining a Netezza connector job, Data type conversions, Data type conversions from Netezza to DataStage

https://www.ibm.com/support/knowledgecenter/en/SSZJPZ_11.5.0/com.ibm.swg.im.iis.conn.netezza.use.doc/topics/nzcc_mappingdatatypes.html