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DefiningMonitorsAndInspectors

Arthur Brugiere edited this page Mar 7, 2019 · 14 revisions

Defining monitors and inspectors

Other outputs can be very useful to study better the behavior of your agents.

Index

Define a monitor

A monitor allows to follow the value of an arbitrary expression in GAML. It will appear, in the User Interface, in a small window on its own and be recomputed every time step (or according to its refresh facet).

Definition of a monitor:

monitor monitor_name value: an_expression refresh:boolean_statement;

with:

  • value: mandatory, the expression whose value will be displayed by the monitor.
  • refresh: bool statement, optional : the new value is computed if the bool statement returns true.

Example:

experiment my_experiment type: gui {
	output {
		monitor monitor_name value: cycle refresh:every(1);
	}
}

NB : you can also declare monitors during the simulation, by clicking on the button "Add new monitor", and specifying the name of the variable you want to follow.

Define an inspector

During the simulation, the user interface of GAMA provides the user the possibility to inspect an agent, or a group of agents. But you can also define the inspector you want directly from your model, as an output of the experiment.

Use the statement inspect to define your inspector, in the output scope of your gui experiment. The inspector has to be named (using the facet name), a value has to be specified (with the value facet).

inspect name:"inspector_name" value:the_value_you_want_to_display;

Note that you can inspect any type of species (regular species, grid species, even the world...).

The optional facet type is used to specify the type of your inspector. 2 values are possible :

  • agent (default value) if you want to display the information as a regular agent inspector. Note that if you want to inspect a large number of agents, this can take a lot of time. In this case, prefer the other type table
  • table if you want to display the information as an agent browser

The optional facet attribute is used to filter the attributes you want to be displayed in your inspector.

Beware : only one agent inspector (type:agent) can be used for an experiment. Beside, you can add as many agent browser (type:table) as you want for your experiment.

Example of implementation :

model new

global {
	init {
		create my_species number:3;
	}
}

species my_species {
	int int_attr <- 6;
	string str_attr <- "my_value";
	string str_attr_not_important <- "blabla";
}

grid my_grid_species width: 10 height: 10 {
	int rnd_value <- rnd(5);
}

experiment my_experiment type:gui {
	output {
		inspect name:"my_species_inspector" value:my_species attributes:["int_attr","str_attr"];
		inspect name:"my_species_browser" value:my_species type:table;
		inspect name:"my_grid_species_browser" value:5 among my_grid_species type:table;
	}
}

Another statement, browse, is doing a similar thing, but preferring the table type (if you want to browse an agent species, the default type will be the table type).

  1. What's new (Changelog)
  1. Installation and Launching
    1. Installation
    2. Launching GAMA
    3. Updating GAMA
    4. Installing Plugins
  2. Workspace, Projects and Models
    1. Navigating in the Workspace
    2. Changing Workspace
    3. Importing Models
  3. Editing Models
    1. GAML Editor (Generalities)
    2. GAML Editor Tools
    3. Validation of Models
  4. Running Experiments
    1. Launching Experiments
    2. Experiments User interface
    3. Controls of experiments
    4. Parameters view
    5. Inspectors and monitors
    6. Displays
    7. Batch Specific UI
    8. Errors View
  5. Running Headless
    1. Headless Batch
    2. Headless Server
    3. Headless Legacy
  6. Preferences
  7. Troubleshooting
  1. Introduction
    1. Start with GAML
    2. Organization of a Model
    3. Basic programming concepts in GAML
  2. Manipulate basic Species
  3. Global Species
    1. Regular Species
    2. Defining Actions and Behaviors
    3. Interaction between Agents
    4. Attaching Skills
    5. Inheritance
  4. Defining Advanced Species
    1. Grid Species
    2. Graph Species
    3. Mirror Species
    4. Multi-Level Architecture
  5. Defining GUI Experiment
    1. Defining Parameters
    2. Defining Displays Generalities
    3. Defining 3D Displays
    4. Defining Charts
    5. Defining Monitors and Inspectors
    6. Defining Export files
    7. Defining User Interaction
  6. Exploring Models
    1. Run Several Simulations
    2. Batch Experiments
    3. Exploration Methods
  7. Optimizing Model Section
    1. Runtime Concepts
    2. Optimizing Models
  8. Multi-Paradigm Modeling
    1. Control Architecture
    2. Defining Differential Equations
  1. Manipulate OSM Data
  2. Diffusion
  3. Using Database
  4. Using FIPA ACL
  5. Using BDI with BEN
  6. Using Driving Skill
  7. Manipulate dates
  8. Manipulate lights
  9. Using comodel
  10. Save and restore Simulations
  11. Using network
  12. Headless mode
  13. Using Headless
  14. Writing Unit Tests
  15. Ensure model's reproducibility
  16. Going further with extensions
    1. Calling R
    2. Using Graphical Editor
    3. Using Git from GAMA
  1. Built-in Species
  2. Built-in Skills
  3. Built-in Architecture
  4. Statements
  5. Data Type
  6. File Type
  7. Expressions
    1. Literals
    2. Units and Constants
    3. Pseudo Variables
    4. Variables And Attributes
    5. Operators [A-A]
    6. Operators [B-C]
    7. Operators [D-H]
    8. Operators [I-M]
    9. Operators [N-R]
    10. Operators [S-Z]
  8. Exhaustive list of GAMA Keywords
  1. Installing the GIT version
  2. Developing Extensions
    1. Developing Plugins
    2. Developing Skills
    3. Developing Statements
    4. Developing Operators
    5. Developing Types
    6. Developing Species
    7. Developing Control Architectures
    8. Index of annotations
  3. Introduction to GAMA Java API
    1. Architecture of GAMA
    2. IScope
  4. Using GAMA flags
  5. Creating a release of GAMA
  6. Documentation generation

  1. Predator Prey
  2. Road Traffic
  3. 3D Tutorial
  4. Incremental Model
  5. Luneray's flu
  6. BDI Agents

  1. Team
  2. Projects using GAMA
  3. Scientific References
  4. Training Sessions

Resources

  1. Videos
  2. Conferences
  3. Code Examples
  4. Pedagogical materials
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