Advanced data comparison¶
utPLSQL expectations incorporates advanced data comparison options when comparing compound data-types:
- refcursor
- object type
- nested table and varray
- json data-types
Advanced data-comparison options are available for the equal
and contain
matcher.
Syntax
ut.expect( a_actual {data-type} ).to_( equal( a_expected {data-type})[.extendend_option()[.extendend_option()[...]]]);
ut.expect( a_actual {data-type} ).not_to( equal( a_expected {data-type})[.extendend_option()[.extendend_option()[...]]]) );
ut.expect( a_actual {data-type} ).to_equal( a_expected {data-type})[.extendend_option()[.extendend_option()[...]]]);
ut.expect( a_actual {data-type} ).not_to_equal( a_expected {data-type})[.extendend_option()[.extendend_option()[...]]] );
ut.expect( a_actual {data-type} ).to_( contain( a_expected {data-type})[.extendend_option()[.extendend_option()[...]]]);
ut.expect( a_actual {data-type} ).not_to( contain( a_expected {data-type})[.extendend_option()[.extendend_option()[...]]]) );
ut.expect( a_actual {data-type} ).to_contain( a_expected {data-type})[.extendend_option()[.extendend_option()[...]]]);
ut.expect( a_actual {data-type} ).not_to_contain( a_expected {data-type})[.extendend_option()[.extendend_option()[...]]]);
extended_option
can be one of:
include(a_items varchar2)
- item or comma separated list of items to includeexclude(a_items varchar2)
- item or comma separated list of items to excludeinclude(a_items ut_varchar2_list)
- table of items to includeexclude(a_items ut_varchar2_list)
- table of items to excludeunordered
- ignore order of data sets when comparing data. Default when comparing data-sets withto_contain
join_by(a_columns varchar2)
- column or comma separated list of columns to join two cursors byjoin_by(a_columns ut_varchar2_list)
- table of columns to join two cursors byunordered_columns
/uc
- ignore the ordering of columns / attributes in compared data-sets. Column/attribute names will be used to identify data to be compared and the position will be ignored.
Each item in the comma separated list can be:
- a column name of cursor to be compared
- an attribute name of object type to be compared
- an attribute name of object type within a table of objects to be compared
- Include and exclude option will not support implicit colum names that starts with single quota, or in fact any other special characters e.g. <, >, &
Each element in ut_varchar2_list
nested table can be an item or a comma separated list of items.
When specifying column/attribute names, keep in mind that the names are case sensitive.
Excluding elements from data comparison¶
Consider the following examples
SUCCESS
Actual: refcursor [ count = 23 ] was expected to equal: refcursor [ count = 23 ]
SUCCESS
Actual: refcursor [ count = 23 ] was expected to contain: refcursor [ count = 1 ]
Columns 'ignore_me' and "ADate" will get excluded from data comparison. The actual data is equal/contains expected, when those columns are excluded.
Note
This option is useful in scenarios, when you need to exclude incomparable/unpredictable column data like CREATE_DATE of a record that is maintained by default value on a table column.
Selecting columns for data comparison¶
Consider the following example
SUCCESS
Actual: refcursor [ count = 3 ] was expected to equal: refcursor [ count = 3 ]
SUCCESS
Actual: refcursor [ count = 5 ] was expected to contain: refcursor [ count = 3 ]
Only columns RN
,A_Column
and SOME_COL
will be included in data comparison.
The actual data is equal/contains expected, when only those columns are included.
Note
This option can be useful in scenarios where you need to narrow-down the scope of test so that the test is only focused on very specific data.
Combining include/exclude options¶
You can chain the advanced options in an expectation and mix the varchar2
with ut_varchar2_list
arguments.
When doing so, the final list of items to include/exclude will be a concatenation of all items.
Results:
SUCCESS
Actual: refcursor [ count = 3 ] was expected to equal: refcursor [ count = 3 ]
SUCCESS
Actual: refcursor [ count = 5 ] was expected to contain: refcursor [ count = 3 ]
Example of include / exclude
for anydata.convertCollection
Results:
SUCCESS
Actual: ut3.people [ count = 1 ] was expected to equal: ut3.people [ count = 1 ]
SUCCESS
Actual: ut3.people [ count = 1 ] was expected to equal: ut3.people [ count = 1 ]
FAILURE
Actual: ut3.people [ count = 1 ] was expected to equal: ut3.people [ count = 1 ]
Diff:
Rows: [ 1 differences ]
Row No. 1 - Actual: <AGE>45</AGE>
Row No. 1 - Expected: <AGE>47</AGE>
at "anonymous block", line 5
Unordered¶
Unordered option allows for quick comparison of two compound data types without need of ordering them in any way.
Result of such comparison will be limited to only information about row existing or not existing in given set without actual information about exact differences.
Above test will result in two differences of one row extra and one row missing.
FAILURE
Actual: refcursor [ count = 29 ] was expected to equal: refcursor [ count = 29 ]
Diff:
Rows: [ 2 differences ]
Extra: <USERNAME>TEST</USERNAME><USER_ID>-610</USER_ID>
Missing: <USERNAME>TEST</USERNAME><USER_ID>-600</USER_ID>
at "anonymous block", line 15
Consider using
join_by( columns... )
overunordered()
with theequal
matcher. Thejoin_by
method is much faster at performing data comparison.The
contain
matcher is not considering the order of the compared data-sets. Usingunordered
makes no difference (it's default).
Join By option¶
The join_by
syntax enables comparison of unordered compound data types by joining data using specified columns.
You can join two compound data types by defining join column(s) that will be used to uniquely identify and compare data rows. With this option, framework is able to identify which rows are missing, which are extra and which are different without need to have both cursors uniformly ordered. When the specified join column(s) are not unique, join will partition set over rows with the same key and join on row number as well as given join key. The extra or missing rows will be presented to user as well as all non-matching rows.
Join by option can be used in conjunction with include or exclude options. However if any of the join keys is part of exclude set, comparison will fail and report to user that sets could not be joined on specific key, as the key was excluded.
Above test will result in a difference in row 'TEST' regardless of data order.
FAILURE
Actual: refcursor [ count = 29 ] was expected to equal: refcursor [ count = 29 ]
Diff:
Rows: [ 1 differences ]
PK <USERNAME>TEST</USERNAME> - Actual: <USER_ID>-610</USER_ID>
PK <USERNAME>TEST</USERNAME> - Expected: <USER_ID>-600</USER_ID>
PK <USERNAME>TEST</USERNAME> - Extra: <USERNAME>TEST</USERNAME><USER_ID>-610</USER_ID>
at "anonymous block", line 15
Note
When using
join_by
, the join column(s) are displayed first (as PK) to help you identify the mismatched rows/columns.
You can use join_by
syntax in combination with contain
matcher.
Above test will indicate that in actual data-set
Joining using multiple columns¶
You can specify multiple columns in join_by
Produces:
FAILURE
Actual: refcursor [ count = 29 ] was expected to equal: refcursor [ count = 28 ]
Diff:
Rows: [ 1 differences ]
PK <USERNAME>TEST</USERNAME><USER_ID>-610</USER_ID> - Extra: <USERNAME>TEST</USERNAME><USER_ID>-610</USER_ID><CREATED>2019-07-11</CREATED>
at "anonymous block", line 13
Joining using attributes of object in column list¶
join_by
allows for joining data by attributes of object from column list of the compared compound data types.
To reference attribute as PK, use slash symbol /
to separate nested elements.
In the below example, cursors are joined using the NAME
attribute of object in column SOMEONE
Produces:
FAILURE
Actual: refcursor [ count = 2 ] was expected to equal: refcursor [ count = 3 ]
Diff:
Rows: [ 2 differences ]
PK <NAME>Matt</NAME> - Actual: <SOMEONE><NAME>Matt</NAME><AGE>55</AGE></SOMEONE>
PK <NAME>Matt</NAME> - Actual: <AGE>55</AGE>
PK <NAME>Matt</NAME> - Expected: <SOMEONE><NAME>Matt</NAME><AGE>45</AGE></SOMEONE>
PK <NAME>Matt</NAME> - Expected: <AGE>45</AGE>
PK <NAME>Jack</NAME> - Missing: <SOMEONE><NAME>Jack</NAME><AGE>42</AGE></SOMEONE>
at "anonymous block", line 12
Note
join_by
does not support joining on individual elements of nested table. You can still use data of the nested table as a PK value. When collection is referenced injoin_by
, test will fail with appropriate message, as it cannot perform a join.
FAILURE
Actual: refcursor [ count = 1 ] was expected to equal: refcursor [ count = 1 ]
Diff:
Unable to join sets:
Join key PERSONS/PERSON/NAME does not exists in expected
Join key PERSONS/PERSON/NAME does not exists in actual
Please make sure that your join clause is not refferring to collection element
at "anonymous block", line 7
Note
join_by
option is slower to process as it needs to perform a cursor join. It is still faster than theunordered
.
Defining item lists in option¶
You may provide items for include
/exclude
/join_by
as a single varchar2 value containing comma-separated list of attributes.
You may provide items for include
/exclude
/join_by
as a a ut_varchar2_list of attributes.
Note
- object type attributes are nested under <OBJECTY_TYPE>
element
- nested table and varray items type attributes are nested under <ARRAY><OBJECTY_TYPE>
elements
Example of a valid parameter to include columns: RN
, A_Column
, SOME_COL
in data comparison.
SUCCESS
Actual: refcursor [ count = 3 ] was expected to equal: refcursor [ count = 3 ]
SUCCESS
Actual: refcursor [ count = 3 ] was expected to equal: refcursor [ count = 3 ]
Unordered columns / uc option¶
If you need to perform data comparison of compound data types without strictly depending on column order in the returned result-set, use the unordered_columns
option.
Shortcut name uc
is also available for that option.
Expectations that compare compound data type data with unordered_columns
option, will not fail when columns are ordered differently.
This option can be useful whn we have no control over the ordering of the column or the column order is not of importance from testing perspective.
Produces:
Created: February 3, 2018 12:09:15