Data driven Robot Framework
DataDriver for Robot Framework®DataDriver is a Data-Driven extension for Robot Framework®. This document explains how to use the DataDriver library listener. For information about installation, support, and more, please visit the project page Show
For more information about Robot Framework®, see http://robotframework.org. DataDriver is used/imported as Library but does not provide keywords which can be used in a test. DataDriver uses the Listener Interface Version 3 to manipulate the test cases and creates new test cases based on a Data-File that contains the data for Data-Driven Testing. These data file may be .csv , .xls or .xlsx files. Data Driver is also able to cooperate with Microsoft PICT. An Open Source Windows tool for data combination testing. Pict is able to generate data combinations based on textual model definitions. https://github.com/Microsoft/pict It is also possible to implement own DataReaders in Python to read your test data from some other sources, like databases or json files. InstallationIf you already have Python >= 3.6 with pip installed, you can simply run: pip install --upgrade robotframework-datadriver Excel SupportFor file support of xls or xlsx file you need to install the extra XLS or the dependencies. It contains the dependencies of pandas, numpy and xlrd. Just add [XLS] to your installation. New since version 3.6. pip install --upgrade robotframework-datadriver[XLS] Python 2or if you have Python 2 and 3 installed in parallel you may use pip3 install --upgrade robotframework-datadriver DataDriver is compatible with Python 2.7 only in Version 0.2.7. pip install --upgrade robotframework-datadriver==0.2.7 Because Python 2.7 is deprecated, there are no new feature to python 2.7 compatible version. Table of contents
What DataDriver DoesDataDriver is an alternative approach to create Data-Driven Tests with Robot Framework®. DataDriver creates multiple test cases based on a test template and data content of a csv or Excel file. All created tests share the same test sequence (keywords) and differ in the test data. Because these tests are created on runtime only the template has to be specified within the robot test specification and the used data are specified in an external data file. RoboCon 2020 TalkBrief overview what DataDriver is and how it works at the RoboCon 2020 in Helsiki. Alternative approachDataDriver gives an alternative to the build in data driven approach like: *** Settings ***
Resource login_resources.robot
Suite Setup Open my Browser
Suite Teardown Close Browsers
Test Setup Open Login Page
Test Template Invalid login
*** Test Cases *** User Passwort
Right user empty pass demo ${EMPTY}
Right user wrong pass demo FooBar
Empty user right pass ${EMPTY} mode
Empty user empty pass ${EMPTY} ${EMPTY}
Empty user wrong pass ${EMPTY} FooBar
Wrong user right pass FooBar mode
Wrong user empty pass FooBar ${EMPTY}
Wrong user wrong pass FooBar FooBar
*** Keywords ***
Invalid login
[Arguments] ${username} ${password}
Input username ${username}
Input pwd ${password}
click login button
Error page should be visible
This inbuilt approach is fine for a hand full of data and a hand full of test cases. If you have generated or calculated data and specially if you have a variable amount of test case / combinations these robot files become quite a pain. With DataDriver you may write the same test case syntax but only once and deliver the data from en external data file. One of the rare reasons when Microsoft® Excel or LibreOffice Calc may be used in testing ;-) See example test suite See example csv table How DataDriver WorksWhen the DataDriver is used in a test suite it will be activated before the test suite starts. It uses the Listener Interface Version 3 of Robot Framework® to read and modify the test specification objects. After activation it searches for the Test Template -Keyword to analyze the [Arguments] it has. As a second step, it loads the data from the specified data source. Based on the Test Template -Keyword, DataDriver creates as much test cases as data sets are in the data source. In the case that data source is csv (Default) As values for the arguments of the Test Template -Keyword, DataDriver reads values from the column of the CSV file with the matching name of the [Arguments]. For each line of the CSV data table, one test case will be created. It is also possible to specify test case names, tags and documentation for each test case in the specific test suite related CSV file. UsageData Driver is a "Library Listener" but does not provide keywords. Because Data Driver is a listener and a library at the same time it sets itself as a listener when this library is imported into a test suite. To use it, just use it as Library in your suite. You may use the first argument (option) which may set the file name or path to the data file. Without any options set, it loads a .csv file which has the same name and path like the test suite .robot . Example: *** Settings ***
Library DataDriver
Test Template Invalid Logins
*** Keywords ***
Invalid Logins
...
Structure of Test SuiteRequirementsIn the Moment there are some requirements how a test suite must be structured so that the DataDriver can get all the information it needs.
Example Test Suite***Settings***
Library DataDriver
Resource login_resources.robot
Suite Setup Open my Browser
Suite Teardown Close Browsers
Test Setup Open Login Page
Test Template Invalid Login
*** Test Case ***
Login with user ${username} and password ${password} Default UserData
***** *Keywords* *****
Invalid login
[Arguments] ${username} ${password}
Input username ${username}
Input pwd ${password}
click login button
Error page should be visible
In this example, the DataDriver is activated by using it as a Library. It is used with default settings. As Test Template the keyword Invalid Login is used. This keyword has two arguments. Argument names are ${username} and ${password}. These names have to be in the CSV file as column header. The test case has two variable names included in its name, which does not have any functionality in Robot Framework®. However, the Data Driver will use the test case name as a template name and replaces the variables with the specific value of the single generated test case. This template test will only be used as a template. The specified data Default and UserData would only be used if no CSV file has been found. Structure of data filemin. required columns
optional columns
Example Data file*** Test Cases *** ${username} ${password} [Tags] [Documentation] Right user empty pass demo ${EMPTY} 1 This is a test case documentation of the first one. Right user wrong pass demo FooBar 2,3,foo This test case has the Tags 2,3 and foo assigned. ${EMPTY} mode 1,2,3,4 This test case has a generated name based on template name. ${EMPTY} ${EMPTY} ${EMPTY} FooBar FooBar mode FooBar ${EMPTY} FooBar FooBarIn this data file, eight test cases are defined. Each line specifies one test case. The first two test cases have specific names. The other six test cases will generate names based on template test cases name with the replacement of variables in this name. The order of columns is irrelevant except the first column, *** Test Cases *** Supported Data TypesIn general DataDriver supports any Object that is handed over from the DataReader. However the text based readers for csv, excel and so do support different types as well. DataDriver supports Robot Framework® Scalar variables as well as Dictionaries and Lists. It also support python literal evaluations. Scalar VariablesThe Prefix $ defines that the value in the cell is taken as in Robot Framework® Syntax. String is str, ${1} is int and ${None} is NoneType. The Prefix only defines the value typ. It can also be used to assign a scalar to a dictionary key. See example table: ${user}[id] Dictionary VariablesDictionaries can be created in different ways. One option is, to use the prefix &. If a variable is defined that was (i.e. &{dict}) the cell value is interpreted the same way, the BuiltIn keyword Create Dictionary would do. The arguments here are comma (,) separated. See example table: &{dict} The other option is to define scalar variables in dictionary syntax like ${user}[name] or ${user.name} That can be also nested dictionaries. DataDriver will create Robot Framework® (DotDict) Dictionaries, that can be accessed with ${user.name.first} See example table: ${user}[name][first] List VariablesLists can be created with the prefix @ as comma (,) separated list. See example table: @{list} Be aware that a list with an empty string has to be the cell content ${Empty}. Python LiteralsDataDriver can evaluate Literals. It uses the prefix e for that. (i.e. e{list_eval}) For that it uses BuiltIn Evaluate See example table: e{user.chk} *** Test Cases *** ${scalar} @{list} e{list_eval} &{dict} e{dict_eval} e{eval} ${exp_eval} ${user}[id] ${user}[name][first] ${user.name.last} e{user.chk} One Sum List 1,2,3,4 ["1","2","3","4"] key=value {'key': 'value'} [1,2,3,4] 10 1 Pekka Klärck {'id': '1', 'name': {'first': 'Pekka', 'last': 'Klärck'}} Two Should be Equal a,b,c,d ["a","b","c","d"] key,value {'key': 'value'} True ${true} 2 Ed Manlove {'id': '2', 'name': {'first': 'Ed', 'last': 'Manlove'}} Three Whos your Daddy !,",',$ ["!",'"',"'","$"] z,value,a,value2 {'a': 'value2', 'z': 'value'} {'Daddy' : 'René'} René 3 Tatu Aalto {'id': '3', 'name': {'first': 'Tatu', 'last': 'Aalto'}} 4 Should be Equal 1 ["1"] key=value {'key': 'value'} 1 ${1} 4 Jani Mikkonen {'id': '4', 'name': {'first': 'Jani', 'last': 'Mikkonen'}} 5 Should be Equal [] a=${2} {'a':2} "string" string 5 Mikko Korpela {'id': '5', 'name': {'first': 'Mikko', 'last': 'Korpela'}} 6 Should be Equal [1,2] ["[1","2]"] key=value,key2=value2 {'key': 'value', 'key2': 'value2'} None ${none} 6 Ismo Aro {'id': '6', 'name': {'first': 'Ismo', 'last': 'Aro'}}Accessing Test Data From Robot VariablesIf neccesary it is possible to access the fetched data tables directly from a Robot Framework® variable. This could be helpfull in Test Setup or in Suite Setup. There are three variables available within the Data-Driven Suite: @{DataDriver_DATA_LIST}A list as suite variable containing a robot dictionary for each test case that is selected for execution. [
{
"test_case_name": "Right user empty pass",
"arguments": {
"${username}": "demo",
"${password}": "${EMPTY}"
},
"tags": [
"1"
],
"documentation": "This is a test case documentation of the first one."
},
{
"test_case_name": "Right user wrong pass",
"arguments": {
"${username}": "demo",
"${password}": "FooBar"
},
"tags": [
"2",
"3",
"foo"
],
"documentation": "This test case has the Tags 2,3 and foo"
},
{
"test_case_name": "Login with user '${EMPTY}' and password 'mode'",
"arguments": {
"${username}": "${EMPTY}",
"${password}": "mode"
},
"tags": [
"1",
"2",
"3",
"4"
],
"documentation": "This test case has a generated name based on template name."
},
{
"test_case_name": "Login with user '${EMPTY}' and password '${EMPTY}'",
"arguments": {
"${username}": "${EMPTY}",
"${password}": "${EMPTY}"
},
"tags": [
""
],
"documentation": ""
},
{
"test_case_name": "Login with user '${EMPTY}' and password 'FooBar'",
"arguments": {
"${username}": "${EMPTY}",
"${password}": "FooBar"
},
"tags": [
""
],
"documentation": ""
},
{
"test_case_name": "Login with user 'FooBar' and password 'mode'",
"arguments": {
"${username}": "FooBar",
"${password}": "mode"
},
"tags": [
"foo",
"1"
],
"documentation": ""
},
{
"test_case_name": "Login with user 'FooBar' and password '${EMPTY}'",
"arguments": {
"${username}": "FooBar",
"${password}": "${EMPTY}"
},
"tags": [
"foo"
],
"documentation": ""
},
{
"test_case_name": "Login with user 'FooBar' and password 'FooBar'",
"arguments": {
"${username}": "FooBar",
"${password}": "FooBar"
},
"tags": [
"foo",
"2"
],
"documentation": ""
}
]
This can be accessed as usual in Robot Framework®. ${DataDriver_DATA_LIST}[2][arguments][\\${password}] would result in mode . &{DataDriver_DATA_DICT}A dictionary as suite variable that contains the same data as the list, with the test names as keys. {
"Right user empty pass": {
"test_case_name": "Right user empty pass",
"arguments": {
"${username}": "demo",
"${password}": "${EMPTY}"
},
"tags": [
"1"
],
"documentation": "This is a test case documentation of the first one."
},
"Right user wrong pass": {
"test_case_name": "Right user wrong pass",
"arguments": {
"${username}": "demo",
"${password}": "FooBar"
},
"tags": [
"2",
"3",
"foo"
],
"documentation": "This test case has the Tags 2,3 and foo"
},
"Login with user '${EMPTY}' and password 'mode'": {
"test_case_name": "Login with user '${EMPTY}' and password 'mode'",
"arguments": {
"${username}": "${EMPTY}",
"${password}": "mode"
},
"tags": [
"1",
"2",
"3",
"4"
],
"documentation": "This test case has a generated name based on template name."
},
"Login with user '${EMPTY}' and password '${EMPTY}'": {
"test_case_name": "Login with user '${EMPTY}' and password '${EMPTY}'",
"arguments": {
"${username}": "${EMPTY}",
"${password}": "${EMPTY}"
},
"tags": [
""
],
"documentation": ""
},
"Login with user '${EMPTY}' and password 'FooBar'": {
"test_case_name": "Login with user '${EMPTY}' and password 'FooBar'",
"arguments": {
"${username}": "${EMPTY}",
"${password}": "FooBar"
},
"tags": [
""
],
"documentation": ""
},
"Login with user 'FooBar' and password 'mode'": {
"test_case_name": "Login with user 'FooBar' and password 'mode'",
"arguments": {
"${username}": "FooBar",
"${password}": "mode"
},
"tags": [
"foo",
"1"
],
"documentation": ""
},
"Login with user 'FooBar' and password '${EMPTY}'": {
"test_case_name": "Login with user 'FooBar' and password '${EMPTY}'",
"arguments": {
"${username}": "FooBar",
"${password}": "${EMPTY}"
},
"tags": [
"foo"
],
"documentation": ""
},
"Login with user 'FooBar' and password 'FooBar'": {
"test_case_name": "Login with user 'FooBar' and password 'FooBar'",
"arguments": {
"${username}": "FooBar",
"${password}": "FooBar"
},
"tags": [
"foo",
"2"
],
"documentation": ""
}
}
&{DataDriver_TEST_DATA}A dictionary as test variable that contains the test data of the current test case. This dictionary does also contain arguments that are not used in the Test Template keyword. This can be used in Test Setup and within a test case. {
"test_case_name": "Right user wrong pass",
"arguments": {
"${username}": "demo",
"${password}": "FooBar"
},
"tags": [
"2",
"3",
"foo"
],
"documentation": "This test case has the Tags 2,3 and foo"
}
Data SourcesCSV / TSV (Character-separated values)By default DataDriver reads csv files. With the Encoding and CSV Dialect settings you may configure which structure your data source has. XLS / XLSX FilesTo use Excel file types, you have to install DataDriver with the Extra XLS. If you want to use Excel based data sources, you may just set the file to the extention or you may point to the correct file. If the extention is ".xls" or ".xlsx" DataDriver will interpret it as Excel file. You may select the sheet which will be read by the option sheet_name. By default it is set to 0 which will be the first table sheet. You may use sheet index (0 is first sheet) or sheet name(case sensitive). XLS interpreter will ignore all other options like encoding, delimiters etc. *** Settings ***
Library DataDriver .xlsx
or: *** Settings ***
Library DataDriver file=my_data_source.xlsx sheet_name=2nd Sheet
MS Excel and typed cellsMicrosoft Excel xls or xlsx file have the possibility to type thair data cells. Numbers are typically of the type float. If these data are not explicitly defined as text in Excel, pandas will read it as the type that is has in excel. Because we have to work with strings in Robot Framework® these data are converted to string. This leads to the situation that a European time value like "04.02.2019" (4th January 2019) is handed over to Robot Framework® in Iso time "2019-01-04 00:00:00". This may cause unwanted behavior. To mitigate this risk you should define Excel based files explicitly as text within Excel. Alternatively you may deactivate that string conversion. To do so, you have to add the option preserve_xls_types to True. In that case, you will get str, float, boolean, int, datetime.time, datetime.datetime and some others. *** Settings ***
Library DataDriver file=my_data_source.xlsx preserve_xls_types=True
PICT (Pairwise Independent Combinatorial Testing)Pict is able to generate data files based on a model file. https://github.com/Microsoft/pict Documentation: https://github.com/Microsoft/pict/blob/master/doc/pict.md Requirements
How it worksIf the file option is set to a file with the extention pict, DataDriver will hand over this file to pict.exe and let it automatically generates a file with the extention ".pictout". This file will the be used as data source for the test generation. (It is tab seperated and UTF-8 encoded) Except the file option all other options of the library will be ignored. *** Settings ***
Library DataDriver my_model_file.pict
Glob File PatternThis module implements a reader class that creates a test case for each file or folder that matches the given glob pattern. With an optional argument "arg_name" you can modify the argument that will be set. See folder example. Example with json files: *** Settings ***
Library DataDriver file=${CURDIR}/DataFiles/*_File.json reader_class=glob_reader
Library OperatingSystem
Test Template Test all Files
*** Test Cases ***
Glob_Reader_Test Wrong_File.NoJson
*** Keywords ***
Test all Files
[Arguments] ${file_name}
${file_content}= Get File ${file_name}
${content}= Evaluate json.loads($file_content)["test_case"]
Should Be Equal ${TEST_NAME} ${content}
Example with folders: *** Settings ***
Library DataDriver file=${CURDIR}/FoldersToFind/*/ reader_class=glob_reader arg_name=\\${folder_name}
Library OperatingSystem
Test Template Test all Files
*** Test Cases ***
Glob_Reader_Test Wrong_File.NoJson
*** Keywords ***
Test all Files
[Arguments] ${folder_name}
${content}= Get File ${folder_name}/verify.txt
Should Be Equal ${TEST_NAME} ${content}
File Encoding and CSV DialectCSV is far away from well designed and has absolutely no "common" format. Therefore it is possible to define your own dialect or use predefined. The default is Excel-EU which is a semicolon separated file. These Settings are changeable as options of the Data Driver Library. file=*** Settings ***
Library DataDriver file=../data/my_data_source.csv
encoding=encoding= must be set if it shall not be cp1252. Examples: cp1252, ascii, iso-8859-1, latin-1, utf_8, utf_16, utf_16_be, utf_16_le cp1252 is:
Most characters are same between ISO-8859-1 (Latin-1) except for the code points 128-159 (0x80-0x9F). These Characters are available in cp1252 which are not present in Latin-1. ƒ ˆ Š Œ Ž ˜ š œ ž Ÿ See Python Standard Encoding for more encodings dialect=You may change the CSV Dialect here. The dialect option can be one of the following: - Excel-EU - excel - excel-tab - unix - UserDefined supported Dialects are: "Excel-EU"
delimiter=';',
quotechar='"',
escapechar='\\',
doublequote=True,
skipinitialspace=False,
lineterminator="\\r\\n",
quoting=csv.QUOTE_ALL
"excel"
delimiter = ','
quotechar = '"'
doublequote = True
skipinitialspace = False
lineterminator = '\\r\\n'
quoting = QUOTE_MINIMAL
"excel-tab"
delimiter = '\\t'
quotechar = '"'
doublequote = True
skipinitialspace = False
lineterminator = '\\r\\n'
quoting = QUOTE_MINIMAL
"unix"
delimiter = ','
quotechar = '"'
doublequote = True
skipinitialspace = False
lineterminator = '\\n'
quoting = QUOTE_ALL
Usage in Robot Framework® *** Settings ***
Library DataDriver my_data_file.csv dialect=excel
*** Settings ***
Library DataDriver my_data_file.csv dialect=excel_tab
*** Settings ***
Library DataDriver my_data_file.csv dialect=unix_dialect
Example User DefinedUser may define the format completely free. If an option is not set, the default values are used. To register a userdefined format user have to set the option dialect to UserDefined Usage in Robot Framework® *** Settings ***
Library DataDriver my_data_file.csv
... dialect=UserDefined
... delimiter=.
... lineterminator=\\n
Defaults:file=None,
encoding='cp1252',
dialect='Excel-EU',
delimiter=';',
quotechar='"',
escapechar='\\\\',
doublequote=True,
skipinitialspace=False,
lineterminator='\\r\\n',
sheet_name=0
Custom DataReader ClassesIt is possible to write your own DataReader Class as a plugin for DataDriver. DataReader Classes are called from DataDriver to return a list of TestCaseData. Using Custom DataReaderDataReader classes are loaded dynamically into DataDriver while runtime. DataDriver identifies the DataReader to load by the file extantion of the data file or by the option reader_class. Select Reader by File Extension:*** Settings ***
Library DataDriver file=mydata.csv
This will load the class csv_reader from csv_reader.py from the same folder. Select Reader by Option:*** Settings ***
Library DataDriver file=mydata.csv reader_class=generic_csv_reader dialect=userdefined delimiter=\\t encoding=UTF-8
This will load the class generic_csv_reader from generic_csv_reader.py from same folder. Create Custom ReaderRecommendation: Have a look to the Source Code of existing DataReader like csv_reader.py or generic_csv_reader.py . To write your own reader, create a class inherited from AbstractReaderClass. Your class will get all available configs from DataDriver as an object of ReaderConfig on __init__. DataDriver will call the method get_data_from_source This method should then load your data from your custom source and stores them into list of object of TestCaseData. This List of TestCaseData will be returned to DataDriver. AbstractReaderClass has also some optional helper methods that may be useful. You can either place the custom reader with the others in DataDriver folder or anywhere on the disk. In the first case or if your custom reader is in python path just use it like the others by name: *** Settings ***
Library DataDriver reader_class=my_reader
In case it is somewhere on the disk, it is possible to use an absolute or relative path to a custom Reader. Imports of custom readers follow the same rules like importing Robot Framework® libraries. Path can be relative to ${EXECDIR} or to DataDriver/__init__.py: *** Settings ***
Library DataDriver reader_class=C:/data/my_reader.py # set custom reader
... file_search_strategy=None # set DataDriver to not check file
... min=0 # kwargs arguments for custom reader
... max=62
This my_reader.py should implement a class inherited from AbstractReaderClass that is named my_reader. from DataDriver.AbstractReaderClass import AbstractReaderClass # inherit class from AbstractReaderClass
from DataDriver.ReaderConfig import TestCaseData # return list of TestCaseData to DataDriver
class my_reader(AbstractReaderClass):
def get_data_from_source(self): # This method will be called from DataDriver to get the TestCaseData list.
test_data = []
for i in range(int(self.kwargs['min']), int(self.kwargs['max'])): # Dummy code to just generate some data
args = {'${var_1}': str(i), '${var_2}': str(i)} # args is a dictionary. Variable name is the key, value is value.
test_data.append(TestCaseData(f'test {i}', args, ['tag'])) # add a TestCaseData object to the list of tests.
return test_data # return the list of TestCaseData to DataDriver
See other readers as example. Selection of Test Cases to ExecuteBecause test cases that are created by DataDriver after parsing while execution, it is not possible to use some Robot Framework® methods to select test cases. Examples for options that have to be used differently: robot option Description --test Selects the test cases by name. --task Alias for --test that can be used when executing tasks. --rerunfailed Selects failed tests from an earlier output file to be re-executed. --include Selects the test cases by tag. --exclude Selects the test cases by tag.Selection of test cases by nameSelect a single test case:To execute just a single test case by its exact name it is possible to execute the test suite and set the global variable ${DYNAMICTEST} with the name of the test case to execute as value. Pattern must be suitename.testcasename. Example: robot --variable "DYNAMICTEST:my suite name.test case to be executed" my_suite_name.robotPabot uses this feature to execute a single test case when using --testlevelsplit Select a list of test cases:It is possible to set a list of test case names by using the variable ${DYNAMICTESTS} (plural). This variable must be a string and the list of names must be pipe-seperated (|). Example: robot --variable DYNAMICTESTS:firstsuitename.testcase1|firstsuitename.testcase3|anothersuitename.othertestcase foldernameIt is also possible to set the variable @{DYNAMICTESTS} as a list variable from i.e. python code. Re-run failed test cases:Because it is not possible to use the command line argument --rerunfailed from robot directly, DataDriver brings a Pre-Run-Modifier that handles this issue. Normally reexecution of failed testcases has three steps.
The DataDriver.rerunfailed Pre-Run-Modifier removes all passed test cases based on a former output.xml. Example: robot --output original.xml tests # first execute all tests robot --prerunmodifier DataDriver.rerunfailed:original.xml --output rerun.xml tests # then re-execute failing rebot --merge original.xml rerun.xml # finally merge resultsBe aware, that in this case it is not allowed to use ":" as character in the original output file path. If you want to set a full path on windows like e:\\myrobottest\\output.xml you have to use ";" as argument seperator. Example: robot --prerunmodifier DataDriver.rerunfailed;e:\\myrobottest\\output.xml --output e:\\myrobottest\\rerun.xml testsFiltering with tags.New in 0.3.1 It is possible to use tags to filter the data source. To use this, tags must be assigned to the test cases in data source. Robot Framework® Command Line ArgumentsTo filter the source, the normal command line arguments of Robot Framework® can be used. See Robot Framework® Userguide for more information Be aware that the filtering of Robot Framework® itself is done before DataDriver is called. This means if the Template test is already filtered out by Robot Framework®, DataDriver can never be called. If you want to use --include the DataDriver TestSuite should have a DefaultTag or ForceTag that fulfills these requirements. Example: robot --include 1OR2 --exclude foo DataDriven.robot Filter based on Library OptionsIt is also possible to filter the data source by an init option of DataDriver. If these Options are set, Robot Framework® Filtering will be ignored. Example: *** Settings ***
Library DataDriver include=1OR2 exclude=foo
Configure DataDriver by Pre-Run KeywordWith config_keyword= it's possible to name a keyword that will be called from Data Driver before it starts the actual processing of the data file. One possible usage is if the data file itself shall be created by another keyword dynamically during the execution of the Data Driver test suite. The config_keyword= can be used to call that keyword and return the updated arguments (e.g. file) back to the Data Driver Library. The config keyword
Usage in Robot Framework® *** Settings ***
Library OperatingSystem
Library DataDriver dialect=excel encoding=utf_8 config_keyword=Config
Test Template The Keyword
*** Test Cases ***
Test aaa
*** Keywords ***
The Keyword
[Arguments] ${var}
Log To Console ${var}
Config
[Arguments] ${original_config}
Log To Console ${original_config.dialect} # just a log of the original
Create File ${CURDIR}/test321.csv
... *** Test Cases ***,\\${var},\\n123,111,\\n321,222, # generating file
${new_config}= Create Dictionary file=test321.csv # set file attribute in a dictionary
[Return] ${new_config} # returns {'file': 'test321.csv'}
Pabot and DataDriverYou should use Pabot version 1.10.0 or newer. DataDriver supports --testlevelsplit from pabot only if the PabotLib is in use. Use --pabotlib to enable that. When using pabot like this, DataDriver automatically splits the amount of test cases into nearly same sized groups. Is uses the processes count from pabot to calculate the groups. When using 8 processes with 100 test cases you will get 8 groups of tests with the size of 12 to 13 tests. These 8 groups are then executed as one block with 8 processes. This reduces a lot of overhead with Suite Setup and Teardown. You can switch between three modes:
This can be set by optimize_pabot in Library import. Example: *** Settings ***
Library DataDriver optimize_pabot=Binary
Binary creates with 40 test cases and 8 threads something like that: P01: 01,02,03,04,05 P02: 06,07,08,09,10 P03: 11,12,13,14,15 P04: 16,17,18,19,20 P05: 21,22,23 P06: 24,25,26 P07: 27,28,29 P08: 30,31,32 P09: 33 P10: 34 P11: 35 P12: 36 P13: 37 P14: 38 P15: 39 P16: 40 |