Customizing script tool behavior

Validation is everything that happens before a tool's OK button is clicked. When creating your own custom tools, validation allows you to customize how parameters respond and interact to values and each other. Validation is performed with a block of Python code that is used to control tool behavior.

To learn more about validation, see Understanding validation in script tools

You can provide custom behavior for your script tool dialog box, such as enabling and disabling parameters, providing default values, and updating string keywords. To add custom behavior for your script tool, right-click the script tool, click Properties, then click the Validation tab. On the Validation panel, you can provide Python code that implements a Python class named ToolValidator.

Even though the ToolValidator class is implemented using Python code, you can still use any scripting language to do the actual work of the tool.

ToolValidator is a Python class that contains three methods: initializeParameters(self), updateParameters(self), and updateMessages(self). It also contains the standard Python class initialization method, __init__(self). To view and edit the ToolValidator class, right-click your script tool, click Properties, then click the Validation tab. The illustration below shows the Validation tab with the default ToolValidator class code. Click the Edit button to edit the code and, after editing, click OK or Apply to apply your edits.

Validation panel

Method

Description

__init__

Initializes the ToolValidator class. Import any libraries you need and initialize the object (self).

initializeParameters

Called once when the tool dialog box first opens or when the tool is first used in the command line.

updateParameters

Called each time the user changes a parameter on the tool dialog box. After returning from updateParameters, geoprocessing calls its internal validation routine.

updateMessages

Called after returning from the internal validation routine. You can examine the messages created from internal validation and change them if desired.

ToolValidator methods overview
NoteNote:

Do not call other geoprocessing tools or open datasets in ToolValidator because the ToolValidator class is executed each time a user changes something on the tool dialog box. Use geoprocessing tools in your script—not in ToolValidator.

NoteNote:

You must implement the three methods, initializeParameters(self), updateParameters(self), and updateMessages(self). They don't have to do anything except return, but they must be provided for ToolValidator to be a valid Python class.

Following are some examples of ToolValidator code. For a complete description of all the methods and more examples, see Programming a ToolValidator class.

To enable or disable a parameter

This example is from the Hot Spot Analysis tool:

def updateParameters(self):

  # If the option to use a weights file is selected (the user chose
  #  "Get Spatial Weights From File"), enable the parameter for specifying 
  #  the file, otherwise disable it
  #
  if self.params[3].value == "Get Spatial Weights From File":
    self.params[8].enabled = 1
  else:
    self.params[8].enabled = 0

Coding note: When setting Boolean variables, such as Enabled, you can use these syntaxes:

self.params[8].enabled = 1
self.params[8].enabled = bool(1)
self.params[8].enabled = True  # Note upper case: "True", not "true"

Any nonzero number or value is considered true.

To set a default value

This example is also from the Hot Spot Analysis tool:

def updateParameters(self):
  # Set the default distance threshold to 1/100 of the larger of the width
  #  or height of the extent of the input features.  Do not set if there is no 
  #  input dataset yet, or the user has set a specific distance (Altered is true).
  # 
  if self.params[0].value:
    if not self.params[6].altered:
      extent = arcpy.Describe(self.params[0].value).extent
      if extent.width > extent.height:
        self.params[6].value = extent.width / 100
      else:
        self.params[6].value = extent.height / 100

  return

To update a filter

Following is an example of dynamically updating a Value List Filter containing a choice list of keywords. If the user enters "OLD_FORMAT" in the second parameter, the third parameter contains "POINT", "LINE", and "POLYGON". If "NEW_FORMAT" is entered, the third parameter contains three additional choices.

class ToolValidator:
  def __init__(self): 
    import arcpy 
    self.params = arcpy.GetParameterInfo()

  def initializeParameters(self):
    return

  def updateParameters(self):
    # Provide default values for "file format type" and 
    #  "feature type in file"
    #
    if not self.params[1].altered:
      self.params[1].value = "OLD_FORMAT"
    if not self.params[2].altered:
      self.params[2].value = "POINT"

    # Update the value list filter of the "feature type in file" parameter 
    #   depending on the type of file (old vs. new format) input
    #
    if self.params[1].value == "OLD_FORMAT":
      self.params[2].filter.list = ["POINT", "LINE", "POLYGON"]
    elif self.params[1].value == "NEW_FORMAT":
      self.params[2].filter.list = ["POINT", "LINE", "POLYGON",
                                    "POINT_WITH_ANNO",
                                    "LINE_WITH_ANNO",
                                    "POLYGON_WITH_ANNO"]

    return

  def updateMessages(self):
    return

Here is another example where the Value List Filter in the second parameter changes based on the shape type found in the first parameter, a feature class:

def updateParameters(self):
    # Update the value list filter in the second parameter based on the 
    #   shape type in the first parameter
    #
    stringFilter = self.params[1].filter
    fc = self.params[0].value
    if fc:
        shapetype = arcpy.Describe(fc).shapeType.lower()
        if shapetype == "point" or shapetype == "multipoint":
            stringFilter.list = ["RED", "GREEN", "BLUE"]
        elif shapetype == "polygon":
            stringFilter.list = ["WHITE", "GRAY", "BLACK"]
        else:
            stringFilter.list = ["ORANGE", "INDIGO", "VIOLET"]
    else:
        stringFilter.list = ["RED", "GREEN", "BLUE"]

    # If the user hasn't changed the keyword value, set it to the default value
    #  (first value in the value list filter).
    #
    if not self.params[1].altered:
        self.params[1].value = stringFilter.list[0]
        
    return

To customize a message

def updateMessages(self):
  self.params[6].clearMessage()

  # Check to see if the threshold distance contains a value of zero and the user has
  #  specified a fixed distance band.
  #
  if self.params[6].value <= 0:
    if self.params[3].value == "Fixed Distance Band":
      self.params[6].setErrorMessage("Zero or a negative distance is invalid \
                                      when using a fixed distance band. Please \
                                      use a positive value greater than zero." )
    elif self.params[6].value < 0:
      self.params[6].setErrorMessage("A positive distance value is required \
                                      when using a fixed distance band. \
                                      Please specify a distance.")

  return

Updating the description of output data using the Schema object

In addition to customizing the behavior of the tool dialog box, you can use ToolValidator to update descriptions of output data variables for ModelBuilder. You can think of data variables in ModelBuilder as nothing more than brief descriptions of datasets, as illustrated below. Data variables contain every property you access using the Describe function in Python.

Basic data description

All tools should update the description of their output data for use in ModelBuilder. By updating the description, subsequent processes in ModelBuilder can see pending changes to data before any process is run. The two examples below show how subsequent processes see pending changes.

The first example, illustrated below, shows a model containing the Add Field and Calculate Field tools. In Add Field, the output data variable, Parks (2), is updated to contain the new field, TrackingID. Because the output is updated, the Calculate Field dialog box shows TrackingID in the list of field names.

Model with Clip tool

The second example (not illustrated) is a model where the output of the Clip tool is used as input to the Polygon To Raster tool. Since the Clip tool uses a cookie-cutter approach to creating the input features, the output feature class has all the same properties as the input feature class, with one notable exception: its geographic extent. The geographic extent of the output feature class is the geometric intersection of the input and clip features extents. The Polygon To Raster tool uses the new geographic extent to determine a default cell size.

Within the ToolValidator class, you can use a Schema object to set rules for building the description of the output. For example, you can set rules such as the following:

Output parameters have a Schema

The Schema object is created for you by geoprocessing. Every output parameter of type feature class, table, raster, or workspace has a Schema object. Only feature class, table, raster, and workspace output data types have a schema—other data types do not. You access this schema through the Parameter object and set the rules for describing the output. On return from updateParameters, the internal validation routine examines the rules you set and updates the description of the output.

Setting dependencies

Whenever you create a rule such as "copy the fields of the dataset in parameter 3, then add a field," you must tell the Schema object what parameter you want to copy from (parameter 3). This is done by adding dependencies to the Parameter object. You can add more than one dependency.

def initializeParameters(self):
  # Set the dependencies for the output and its schema properties
  #
  self.params[2].parameterDependencies = [0, 1]

parameterDependencies takes a Python list.

The examples that follow show setting and using dependencies.

Setting dependencies examples: Clip and Add Field

Recall that Clip makes a copy of the input features definition, then sets the extent to the intersection of the input features and the clip features. Following is an example of how this rule is implemented in ToolValidator. (Because Clip is a built-in tool and not a script, it doesn't use a Python ToolValidator class. Built-in tools do their validation using internal routines that are essentially the same as ToolValidator. But if it did use a Python ToolValidator class, this is what it would look like.)

def initializeParameters(self):
  # Set the dependencies for the output and its schema properties
  #
  self.params[2].parameterDependencies = [0, 1]

  # Feature type, geometry type, and fields all come from the first 
  #  dependent (parameter 0), the input features
  #
  self.params[2].schema.featureTypeRule = "FirstDependency"
  self.params[2].schema.geometryTypeRule = "FirstDependency"
  self.params[2].schema.fieldsRule = "FirstDependency"

  # The extent of the output is the intersection of the input features and 
  #  the clip features (parameter 1)
  #
  self.params[2].schema.extentRule = "Intersection"

  return

def updateParameters(self):
  return

Add Field copies the definition of an input parameter and adds the user-specified field. The link below shows how Add Field would be implemented in ToolValidator.

View example of using AdditionalFields

Setting schema in initializeParameters versus updateParameters

Note that the Clip example above modifies the Schema object in initializeParameters and that updateParameters does nothing but return. Add Field, on the other hand, has to modify the Schema object in updateParameters because it doesn't have the definition of the field to add until the user provides the information (and updateParameters is called).

You can think of these two cases as static versus dynamic. Clip doesn't rely on anything but the datasets found in the dependent parameters (static case), whereas Add Field needs to examine other parameters (such as field name and field type) that are not dependent parameters (dynamic case).

This static and dynamic behavior is evident in the way a ToolValidator class is called, as follows:

  1. When the tool dialog box is first opened, initializeParameters is called. You set up the static rules for describing the output. No output description is created at this time, since the user hasn't specified values for any of the parameters.
  2. Once the user interacts with the tool dialog box in any way, updateParameters is called.
  3. updateParameters can modify the schema to account for dynamic behavior that can't be determined from the parameter dependencies, such as adding a new field like Add Field.
  4. After returning from updateParameters, the internal validation routines are called, and the rules found in the Schema object are applied to update the description of the output data.
  5. updateMessages is then called. You can examine the warning and error messages that internal validation may have created and modify them or add warnings and errors.

Output dataset name: Cloning derived output versus required output

When you set the Schema.Clone property to true, you are instructing geoprocessing to make an exact copy (clone) of the description in the first dependent parameter in the parameter dependency list. Typically, you set Clone to true in initializeParameters rather than updateParameters since it only needs to be set once.

If ParameterType of the output parameter is set to Derived, an exact copy is made. This is the behavior of the Add Field tool.

If ParameterType is set to Required, an exact copy is also made, but the catalog path to the dataset is changed. Since most tools create new data, this is the most common behavior.

Learning more

Programming a ToolValidator class provides details on the Parameter, Schema, and Filter objects and gives code examples.

All script-based system tools, such as Multiple Ring Buffer, have ToolValidator code that you can examine and learn from. Many of the tools in the Spatial Statistics toolbox are script tools and have ToolValidator implementation you can examine.

Alas, you'll make mistakes in your ToolValidator implementation—either syntax, run time, or logic errors. Debugging a ToolValidator class shows you how geoprocessing traps and reports errors and gives you some strategies for debugging.

Related Topics

3/3/2014