Config:Plan

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Generated for SUMO toolbox version 6. We are well aware that the list below is incomplete and possibly even out of date in some cases. We try to document everything as best we can but much is limited by available time and manpower. The most up to date documentation can always be found (if not here) in the default.xml configuration file and, of course, in the source files.

Plan

LevelPlot

Only change if you need to generate level plots

<!--Only change if you need to generate level plots-->
<[[Config:LevelPlot|LevelPlot]]>default</[[Config:LevelPlot|LevelPlot]]>

ContextConfig

ContextConfig should (normally) always be set to 'default'

<!--ContextConfig should (normally) always be set to 'default'-->
<[[Config:ContextConfig|ContextConfig]]>default</[[Config:ContextConfig|ContextConfig]]>

SUMO

SUMO should (normally) always be set to 'default'

<!--SUMO should (normally) always be set to 'default'-->
<[[Config:SUMO|SUMO]]>default</[[Config:SUMO|SUMO]]>

AdaptiveModelBuilder

The AdaptiveModelBuilder specifies the model type and the hyperparameter optimization algorithm (= the algorithm to choose the model parameters, also referred to as the modeling algorithm) to use The default value 'rational' refers to rational functions. 'rational' is an id that refers to an AdaptiveModelBuilder tag that is defined below.

<!--The AdaptiveModelBuilder specifies the model type and the hyperparameter optimization algorithm (= the algorithm to choose the model parameters, also referred to as the modeling algorithm) to use The default value 'rational' refers to rational functions. 'rational' is an id that refers to an AdaptiveModelBuilder tag that is defined below.-->
<[[Config:AdaptiveModelBuilder|AdaptiveModelBuilder]]>rational</[[Config:AdaptiveModelBuilder|AdaptiveModelBuilder]]>

InitialDesign

The AdaptiveModelBuilder specifies the model type and the hyperparameter optimization algorithm (= the algorithm to choose the model parameters, also referred to as the modeling algorithm) to use The default value 'rational' refers to rational functions. 'rational' is an id that refers to an AdaptiveModelBuilder tag that is defined below.

<!--The AdaptiveModelBuilder specifies the model type and the hyperparameter optimization algorithm (= the algorithm to choose the model parameters, also referred to as the modeling algorithm) to use The default value 'rational' refers to rational functions. 'rational' is an id that refers to an AdaptiveModelBuilder tag that is defined below.-->
<[[Config:InitialDesign|InitialDesign]]>lhdWithCornerPoints</[[Config:InitialDesign|InitialDesign]]>

SampleSelector

The method to use for selecting new samples. Again 'gradient' is an id that refers to a SampleSelector tag defined below

<!--The method to use for selecting new samples. Again 'gradient' is an id that refers to a SampleSelector tag defined below-->
<[[Config:SampleSelector|SampleSelector]]>gradient</[[Config:SampleSelector|SampleSelector]]>

Run

Runs can given a custom name by using the name attribute, a repeat attribute is also possible to repeat a run multiple times

<!--Runs can given a custom name by using the name attribute, a repeat attribute is also possible to repeat a run multiple times-->
<[[Config:Run|Run]] name="" repeat="1">
   <!-- Configuration components, refer to id's defined below
        (with the exception of the Simulator tag)
        Enties listed here override those defined on plan level -->
   
   <!-- This is the problem we are going to model, it refers to the name of a project
        directory in the examples/ folder.  It is also possible to specify an absolute
        path or to specify a particular xml file within a project directory -->
   <[[Config:Simulator|Simulator]]>Academic2DTwice</[[Config:Simulator|Simulator]]>
   
   <!--
   How is the simulator implemented (ie, where your data comes from): 
     - Matlab script (matlab)
     - scattered dataset (scatteredDataset), 
     - local executable (local)
     - etc
     
     Make sure this entry matches what is declared in the simulator xml file
     in the project directory.  It makes no sense to put matlab here if you only
     have a scattered dataset to work with.
   -->
   <[[Config:SampleEvaluator|SampleEvaluator]]>matlab</[[Config:SampleEvaluator|SampleEvaluator]]>
   
   <!--
   The default behavior is to model all outputs with separate models and score models using 
   crossvalidation.  See below how to override this. Note that crossvalidation is a very
   expensive measure and can significantly   slow things down when using computationally
   expensive model types (e.g., neural networks)
   -->

   <!-- Model selection measure to use for this run (how models are scored)
        If you put a measure to off its value is printed but not used for modeling. 
        If multiple measures are on, the weighted average value is optimized
        (unless a pareto enabled modelbuilder is used (available from 6.1) -->
   <[[Config:Measure|Measure]] type="[[Measure#CrossValidation|CrossValidation]]" target=".01" use="on">
      <Option key="folds" value="5"/>
   </[[Config:Measure|Measure]]>   
   
   <!-- Define inputs that are to be modelled this run (optional). This setting 
        reduces the dimension of the problem by keeping inputs that were not
        selected at 0. If an <[[Config:Inputs|Inputs]]> tag is not specified, the default behavior is to
        model all inputs.
        In this example, both inputs x and y are selected
   -->
   <[[Config:Inputs|Inputs]]>
      <[[Config:Input|Input]] name="x"/>
      <[[Config:Input|Input]] name="y"/>
      <!-- Setting a simulator input to a constant -->
      <!-- <[[Config:Input|Input]] name="y  value="14.6"/> -->
   </[[Config:Inputs|Inputs]]>
   
   <!--          
   An example configuration for the Academic2DTwice example used here.
   Each output can be configured to use separate Modelbuilders, measures and sample selectors
   
   Again it is not necessary to specify an Outputs tag.  If you dont, all outputs are modeled
   in parallel.
   -->
   <[[Config:Outputs|Outputs]]>
      <[[Config:Output|Output]] name="out">
         <!--
             You can specify output specific configuration here
             
         <[[Config:SampleSelector|SampleSelector]]>gradient</[[Config:SampleSelector|SampleSelector]]>
         <[[Config:AdaptiveModelBuilder|AdaptiveModelBuilder]]>rational</[[Config:AdaptiveModelBuilder|AdaptiveModelBuilder]]>
         <[[Config:Measure|Measure]] type="[[Measure#CrossValidation|CrossValidation]]" target=".0001" use="on" />
         -->
      </[[Config:Output|Output]]>
      
      <[[Config:Output|Output]] name="outinverse">
         <!--
         <[[Config:SampleSelector|SampleSelector]]>grid</[[Config:SampleSelector|SampleSelector]]>
         <[[Config:AdaptiveModelBuilder|AdaptiveModelBuilder]]>krigingps</[[Config:AdaptiveModelBuilder|AdaptiveModelBuilder]]>
         <[[Config:Measure|Measure]] type="[[Measure#ValidationSet|ValidationSet]]" target=".05" use="on" />
         -->
      </[[Config:Output|Output]]>
   </[[Config:Outputs|Outputs]]>

   <!--   
      Complex example of a modeling run of the InductivePosts example with many different
      output configurations.
   -->
   <!--
   <[[Config:Outputs|Outputs]]>

      Model the modulus of complex output S22 using cross-validation and the default model
      builder   and sample selector.
      
      <[[Config:Output|Output]] name="S22" complexHandling="modulus">
         <[[Config:Measure|Measure]] type="[[Measure#CrossValidation|CrossValidation]]" target=".05" />
      </[[Config:Output|Output]]>
      
      
      Model the real part of complex output S22, but introduce some normally-distributed noise
      (variance .01 by default).
      
      <[[Config:Output|Output]] name="S22" complexHandling="real">
         <[[Config:Measure|Measure]] type="[[Measure#CrossValidation|CrossValidation]]" target=".05" />
         <[[Config:Modifier|Modifier]] type="[[Modifier#Noise|Noise]]" />
      </[[Config:Output|Output]]>
   -->

   <!--
   Measure examples:

   * 5-fold crossvalidation (warning expensive on some model types!)
   <[[Config:Measure|Measure]] type="[[Measure#CrossValidation|CrossValidation]]" target=".001" use="on">
      <Option key="folds" value="5"/>
   </[[Config:Measure|Measure]]>   

   * Using a validation set, the size taken as 20% of the available samples
   <[[Config:Measure|Measure]] type="[[Measure#ValidationSet|ValidationSet]]" target=".001">
      <Option key="percentUsed" value="20"/>
   </[[Config:Measure|Measure]]>

   * Using a validation set defined in an external file (scattered data)
          <[[Config:Measure|Measure]] type="[[Measure#ValidationSet|ValidationSet]]" target=".001">
         * the validation set come from a file
         <Option key="type" value="file"/>
         * the test data is scattered data so we need a scattered sample evaluator
         to load the data and evaluate the points. The filename is taken from the
         <[[Config:ScatteredDataFile|ScatteredDataFile]]> tag in the simulator xml file.
         Optionally you can specify an option with key "id" to specify a specifc
         dataset if there is more than one choice.
         <[[Config:SampleEvaluator|SampleEvaluator]]
         type="ibbt.sumo.SampleEvaluators.datasets.ScatteredDatasetSampleEvaluator"/>
                     </[[Config:Measure|Measure]]>

   * Used for testing optimization problems
      * Calculates the (relative) error between the current minimum and a known minimum.
        Often one uses this just as a stopping criterion for benchmarking problems.
      * trueValue: a known global minimum
   <[[Config:Measure|Measure]] type="[[Measure#TestMinimum|TestMinimum]]" errorFcn="relativeError" trueValue="-5.0" target="0.1" use="on" />   
   -->
</[[Config:Run|Run]]>