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HeadlessTutorial

RoiArthurB edited this page Feb 22, 2024 · 1 revision

Calling gama from another program

This tutorial presents an example for using Headless. The tutorial shows how to use Headless Legacy mode, Headless batch and Headless server. All the files related to this tutorial (images and models) are available in the Headless folder (headless/samples/predatorPrey).

1. Example using python with Headless legacy

import os

# GAMA Folder is the full path to you GAMA headless folder. 
GAMA_folder_with_SDK = r"D:\software\GAMA_1.9.2_Windows_with_JDK\headless"

# The example model can be found in the sample folder.
Model_file = GAMA_folder_with_SDK + r"\samples\predatorPrey\predatorPrey.gaml"

# The experiment should be a GUI experiment.
ExperimentName = "prey_predator"
XML_file = GAMA_folder_with_SDK + r"\samples\predatorPrey.xml"
Output_folder = GAMA_folder_with_SDK + r"\samples\predatorPrey"

# We need to go to the folder of GAMA headless
os.chdir(GAMA_folder_with_SDK)
os.system("gama-headless.bat -xml " + ExperimentName + " " + Model_file + " " + XML_file)
os.system("gama-headless.bat " + XML_file + " "+ Output_folder)
print("Results of the model is in the folder:" + Output_folder)
print("Snapshot is store in the folder:" + Output_folder + r"\snapshot")

The results of the experiment is stored in the set folder. In which the snapshot for every step is also saved in the snapshot folder. Snapshot folder of Headless legacy

2. Example on using python with Headless batch

# This is an example using python to call GAMA headless batch.
import os
# GAMA Folder is the full path to you GAMA headless folder. 
GAMA_folder_with_SDK = r"D:\software\GAMA_1.9.2_Windows_with_JDK\headless"

# The example model can be found in the sample folder.
Model_file = GAMA_folder_with_SDK + r"\samples\predatorPrey\predatorPrey.gaml"

# The experiment should be the GUI experiment. Optimization is an experiment batch of the model. 
ExperimentName = "Optimization"

os.chdir(GAMA_folder_with_SDK)
os.system("gama-headless.bat -batch " + ExperimentName + " " + Model_file)

# The results of optimization is stored in a csv file as defined in the experiment. 
print("The result is store in the file:" + GAMA_folder_with_SDK + r"\samples\predatorPrey\results.csv")

3. Example on using python with Headless server

The legacy version allows you to access the headless feature of GAMA by controling the model parameters and experiment plan from oustide GAMA model file . The headless batch, allows you to access the headless feature of GAMA with the model parameters and experiment plans defined inside the GAMA model file. The headless server, allows you to not only to access the headless feature but also to interact with the currently running GAMA experiment. You can load, play, pause, reload, stop and exit an experiment with very specific commands as described here.

The general sequence of operations is:

  • Start the server from a command line gama-headless.sh -socket 6868 , this opens the communication via port 6868 using websockets.
  • Connect to the server from another application/script that supports interacting with websockets. e.g., python. See below to use a python wrapper.
  • Start with the load command to load an experiment and then use one of the specific commands as described here to construct a sequence of operations as required by your workflow.

Start the GAMA server

On your command line, execute the following commmand, you will find the gama-headless.sh in the headless folder inside your GAMA installation.

gama-headless.sh -socket 6868

Use the Python wrapper instead

The GAMA developers have made available an elegant python wrapper that simplifies using GAMA server with python scripts and is available here. However if you are not a serious programmer and just want to use this tool, the following bare minimum code shall get you started and you can slowly add one command after another to build your sequence of operations to interact with the GAMA server. Before you can start, you have to install the wrapper. In your python environment, install the gama-client package with the command:

pip install gama-client

You can check that everything went well by opening a python console and try the following line:

from gama_client.base_client import GamaBaseClient

If you don't see any error messages, then the python wrapper has been installed correctly.

Bare minimum code

The whole interaction with the GAMA server is facilitated using the asyncio library in Python and our wrapper that we installed in the previous step. The discussion on use of asyncio is beyond the scope of this tutorial, so just take it as granted. This whole interaction can be considered a dialouge (two way communication) between the client (you/ your script) and the server (GAMA server). You send a command to the server, and the server sends back a message. You parse this message and its contents and construct the next command to interact with the server. This back and forth continues untill you use the exit command or if an error occurs on the server.

Among all the messages sent by the server, as a beginner you should know about these four main messages: ConnectionSuccessful (you connected to the server), CommandExecutedSuccessfully (your command was well received and executed), UnableToExecuteRequest (something is wrong with your model), MalformedRequest (something is wrong with your command format)

Just run the following python script and if all goes well, you are ready to use the GAMA server via python.

import asyncio
from gama_client.base_client import GamaBaseClient

async def message_handler(message):
    print("received message:", message)


async def main():
    client = GamaBaseClient("localhost", 6868, message_handler)
    await client.connect(False)

    while True:
        await asyncio.sleep(1)

if __name__ == "__main__":
    asyncio.run(main())

It gets even better !

A word of caution It is recommended that you slowly build on to the above script by adding commands step by step. You may use the script below as guidance to learn and to stay on course and not having to search a lot through the documentation. Blindly copy-pasting the code and changing the parameters without understanding is not advised.

The python wrapper makes it even easier for beginners. So easy that you just have to change values of the following 5 variables in the sample python script below to make use of GAMA server.

    MY_SERVER_URL = "localhost"
    MY_SERVER_PORT = 6868
    GAML_FILE_PATH_ON_SERVER = r"D:\Gama\headless\samples\predatorPrey\predatorPrey.gaml"  
    EXPERIMENT_NAME = "prey_predatorExp"
    MY_EXP_INIT_PARAMETERS = [{"type": "int", "name": "nb_preys_init", "value": 100}]

Sample python script

import asyncio
from asyncio import Future
from typing import Dict

from gama_client.base_client import GamaBaseClient
from gama_client.command_types import CommandTypes
from gama_client.message_types import MessageTypes

experiment_future: Future
play_future: Future
pause_future: Future
expression_future: Future
step_future: Future
stop_future: Future


async def message_handler(message: Dict):
    print("received", message)
    if "command" in message:
        if message["command"]["type"] == CommandTypes.Load.value:
            experiment_future.set_result(message)
        elif message["command"]["type"] == CommandTypes.Play.value:
            play_future.set_result(message)
        elif message["command"]["type"] == CommandTypes.Pause.value:
            pause_future.set_result(message)
        elif message["command"]["type"] == CommandTypes.Expression.value:
            expression_future.set_result(message)
        elif message["command"]["type"] == CommandTypes.Step.value:
            step_future.set_result(message)
        elif message["command"]["type"] == CommandTypes.Stop.value:
            stop_future.set_result(message)


async def main():

    global experiment_future
    global play_future
    global pause_future
    global expression_future
    global step_future
    global stop_future

    # Experiment and Gama-server constants
    MY_SERVER_URL = "localhost"
    MY_SERVER_PORT = 6868
    GAML_FILE_PATH_ON_SERVER = r"D:\Gama\headless\samples\predatorPrey\predatorPrey.gaml"
    EXPERIMENT_NAME = "prey_predatorExp"
    MY_EXP_INIT_PARAMETERS = [{"type": "int", "name": "nb_preys_init", "value": 100}]

    client = GamaBaseClient(MY_SERVER_URL, MY_SERVER_PORT, message_handler)

    print("connecting to Gama server")
    await client.connect()

    print("initialize a gaml model")
    experiment_future = asyncio.get_running_loop().create_future()
    await client.load(GAML_FILE_PATH_ON_SERVER, EXPERIMENT_NAME, True, True, True, MY_EXP_INIT_PARAMETERS)
    gama_response = await experiment_future

    try:
        experiment_id = gama_response["content"]
    except Exception as e:
        print("error while initializing", gama_response, e)
        return

    print("initialization successful, running the model")
    play_future = asyncio.get_running_loop().create_future()
    await client.play(experiment_id)
    gama_response = await play_future
    if gama_response["type"] != MessageTypes.CommandExecutedSuccessfully.value:
        print("error while trying to run the experiment", gama_response)
        return

    print("model running, waiting a bit")
    await asyncio.sleep(2)

    print("pausing the model")
    pause_future = asyncio.get_running_loop().create_future()
    await client.pause(experiment_id)
    gama_response = await pause_future
    if gama_response["type"] != MessageTypes.CommandExecutedSuccessfully.value:
        print("Unable to pause the experiment", gama_response)
        return

    expression_future = asyncio.get_running_loop().create_future()
    await client.expression(experiment_id, r"cycle")
    gama_response = await expression_future
    print("asking simulation the value of: cycle=", gama_response["content"])

    expression_future = asyncio.get_running_loop().create_future()
    await client.expression(experiment_id, r"nb_preys/nb_preys_init")
    gama_response = await expression_future
    print("asking simulation the value of: nb_preys/nb_preys_init=",  gama_response["content"])

    print("asking gama to run 10 more steps of the experiment")
    step_future = asyncio.get_running_loop().create_future()
    await client.step(experiment_id, 10, True)
    gama_response = await step_future
    if gama_response["type"] != MessageTypes.CommandExecutedSuccessfully.value:
        print("Unable to execute 10 new steps in the experiment", gama_response)
        return

    expression_future = asyncio.get_running_loop().create_future()
    await client.expression(experiment_id, r"cycle")
    gama_response = await expression_future
    print("asking simulation the value of: cycle=", gama_response["content"])

    print("killing the simulation")
    stop_future = asyncio.get_running_loop().create_future()
    await client.stop(experiment_id)
    gama_response = await stop_future
    if gama_response["type"] != MessageTypes.CommandExecutedSuccessfully.value:
        print("Unable to stop the experiment", gama_response)
        return


if __name__ == "__main__":
    asyncio.run(main())
  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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