INCREMENTAL
LOAD/CREATION OF DIMENSION TABLE LOGIC AT SAP DATA SERVICES END CLIENT
In this particular document we shall be looking at the incremental load
logic at SAP Data Services end client. This document is being prepared because
of the following purposes.
·
Data Integrator does not have a
dimension creation wizard. Thus using the transforms within the Data Integrator
we need to make the required type-1 and type-2 dimensions.
·
This document will serve as a
template for all new developers to populate the data warehouse and the data
mart as part of the PAMDSS project at SAP Data Services end client.
·
The document is attached with the
required templates which shall further help in understanding of the processes.
With this document we seek to systematize the development of history, base and
the dimension tables within the project.
·
Prevent some basic mistakes that
developers can make while populating the history and the dimension tables.
Note: Along with this document we shall be attaching/referring to the
required atl data flows. As part of
the understanding we shall be attaching the screen shots of the required atl and sending the required atl.
Methodology for populating the
Data Warehouse
Scenario for loading the data warehouse: depending upon the project
requirements a client within the Data warehouse can have the following tables:
·
Base tables
·
History tables.
In this document we shall be looking at populating the History tables.
The methodology for populating the base tables is simpler and does not require
special treatment.
We have history making events and non-History making events. We shall
have to track inserts, updates and deletes for both the events. The scenario
can be expressed by the use of the following matrix.
Insert
|
Update
|
Delete
|
|
History making
|
1
|
2
|
3
|
attributes
|
|||
Non-history
|
4
|
5
|
6
|
making
|
|||
attributes
|
|||
Also many times we have last update time stamps in
the source. We shall be looking at a specific case where we have the time stamp
in the source and have to populate the target in such a scenario.
Methodology for handling Inserts: That is in this case we shall be
looking at scenarios 1 and 4.
There
shall be two kinds of inserts within this scenario.
·
Those records whose business key in not present in
the data warehouse.
·
Those history making records that
have been updated. We shall generate an insert row for each one of them.
Methodology for handling those
records whose business key is not present in the Data ware house
For this purpose we propose that you follow activities within Flow 1. In
the following diagram Flow1 includes Query_ID, Validation, Query_Insert, Merge
and Surrogate key generation.
Steps in
the process are as following:
1. Lookup
for the business key in the data warehouse table.
2.
Validate whether the Business key
is Null or not. Within the Validation transform put the “Business key is NULL”
as the custom condition.
3. In case
Business Key is NULL then it is straight a case of an insert.
4. Set the
Insert Time Stamp, Update Time Stamp, Effective From (History Start)
Time
Stamp as today’s date [Query_Insert].
5. Set the
Effective through(History End time stamp) as the end of time.
Note: This shall handle Insert operation for all
non-history making events also.
Handling Inserts from History Making Records: for the records that are to
be updated we shall be handling separately within the updates section. However
for the new row to be inserted after the history preserving transform, we
perform the following operations.
·
Map the Insert row as normal
(discard all the other row types) through the use of Map Transform
·
Merge the output with the Inserts from Flow1.
·
Generate a surrogate key after union operation.
Handling Updates for History Making attributes (scenario 3): In this
particular case we have the following scenario:
·
The Lookup value of the business key(from Query_ID)
is not NULL.
·
We have History Start and History End Time stamps
in the target table.
·
We know the attributes on which
we propose to preserve history. Then the combination of activities used shall
be as following:
·
Table Comparison: this shall help
determine all the required updates within the target table. All the output rows
from this transform shall be marked as ‘U’. The following care should be taken
when we use this transform:
o
The Compare column should not have the Target table
Load Time Stamps and any of the primary key
columns.
o The compare column should have only the history tracking attributes from
the target table.
·
History Preserving transform: The
History preserve transform shall have input rows marked as ‘Update’. Within the
History preserve transform we need to take the following care:
o The
history preserve columns are the same as in Table Comparison.
o If there is a row status in the target table then its Reset Status should be changed.
·
Map the update rows: this is done
using the MAP transform and only marking the Update rows output as Normal. The
other row types should be discarded.
Handling Deletes: within Data Integrator we have an option for marking
Deletes as Update rows within the History Preserve transform. Our experience
with the same has not been very convincing. The alternate methodology is as
following:
·
In the Table Comparison, use the option Preserve
deleted rows.
·
Map the deleted rows using MAP
transform(discard all input types except the deletes).
·
Set the last update time stamp and the History end
date as today’s date.
·
Set the row status as ‘delete’.
·
Merge it with the update rows.
Explanation for the transform
Map_Operation_Update: It is important to consider why we need to add one last Map
transform before we load the data into the target table. For case of Normal(we converted the update rows into
Normal rows) rows mark the respective row as Update(as given in the following diagram). The reason for doing the
given step is that in case the rows are marked as normal then they shall be
inserted as a separate row in the target table. In case we have primary key
constraints in the target it shall then result in an error.
Handling Updates for the Non-history making attributes (Scenario 5):
Unfortunately we cannot handle this case within the same data flow. For this we
designed another data flow whose implementation shall follow the execution of
the previous data flow. In this case we simply track the rows flagged as Updates from the Table Comparison
Transform in the following manner:
In the Query_2 step we shall set the Last Update Time Stamp to today’s
date. (Note we should take the following care while implementing the above
steps)
·
In the Compare column category of
Table Comparison include only the non-History making attributes from the target
table. Do not include the target table load Time Stamps and the primary key
columns in the Compare column category.
·
In the last Map operation
Map_Operation_Update set the Input Normal
rows as output type update.
Input Tables have a Last Update
Time stamp: In case the input tables have a
last update time stamp then we can
limit the number of rows to be scanned. This is done with the help of the
following steps:
·
Generate a script before the
dataflow in which you capture the Maximum value of the Last Update Time stamp from the target table(see the marked rows in
red in the attachment below). This
can be done by writing a simple script as
following:
$FULLUPLOAD=’NO’;
IF ($FULLUPLOAD='YES')
begin
print( 'The process of full upload is set to
begin');
sql( 'SQL_SERVER_SANDBOX', 'TRUNCATE TABLE
DSSTB_DW_CAL_CODE_TS');
sql( 'SQL_SERVER_SANDBOX','INSERT
INTO DSSTB_DW_CAL_CODE_TS(CCD_DW_ID,CCD_DW_ROW_STATUS,CCD_DW_INSERT_TS,
CCD_DW_LAST_UPD_TS,CCD_ID,CCD_CODE,CCD_DESC,CCD_SITE_CODE,CCD_STAF
F_ID,CCD_IDX_PRVDR_CODE,CCD_DFLT_REG_SECT,CCD_ACTIVE_DATE,CCD_DISAB
LED_DATE,CCD_INSERT_TS,CCD_LAST_UPD_TS,CCD_CCAT_CODE,CCD_EXTENSION_
WKS) VALUES(0,\'\',\'1900-01-01 00:00:00.000\',\'1900-01-01
00:00:00.000\',0,\'N\A\',\'\',\'\',0,\'\',\'\',\'1900-01-01 00:00:00.000\',\'1900-01-01
00:00:00.000\',\'1900-01-01
00:00:00.000\',\'1900-01-01 00:00:00.000\',\'\',0)'); $Last_Timestamp_var='1900-01-01
00:00:00.000';
end
else
begin
$Last_Timestamp_var=SQL('SQL_SERVER_SANDBOX','SELECT
MAX(CCD_LAST_UPD_TS) FROM DSSTB_DW_CAL_CODE_TS');
print('the process of incremental
load has started');
end
Thereafter
we do the following steps:
·
Declare the variable as a parameter.
·
Pass the parameter into the dataflow.
·
In the ‘where’ clause (as given
in the attachment below) select the time stamps from the source table with values greater than the parameter value.
Dimension Tables: In this case we shall look at both Type-1 and Type-2
dimension tables.
How to work with Type-1 Dimension tables: In this case we wish to carry
out the following steps:
·
In case of an update keep the latest record. Do not
increment the dimension key.
·
However in case of an insert we wish to increment
the dimension key.
We carry
the above using the following steps:
From the source tables we shall get records marked as Insert(new
records) and updates(old records changed). In case the record is an update then
load it directly onto the target table. This is done by passing it through a
map transform(the output type for the
Update being ‘Update’ with other rows
types being ‘discarded’) .However in case it is an insert, then we generate the surrogate key.
Methodology for populating type-2 Dimension Tables: The methodology for
populating the type-2 dimension tables is the same as populating the history
tables with history making attributes. The sequence of operation and the logic
are as following:
Blog link: https://mndatasolutionsindia.blogspot.com/2018/10/initial-and-incremental-data-load.html
Website: www.mnnbi.com
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