gactar
is a tool for creating and running ACT-R models using a declarative file format called amod.
The initial writeup as a tech note: gactar: A Tool For Exploring ACT-R Modelling
- Overview
- Quickstart
- Installation
- Updating Your Environment
- Checking Your Environment For Errors
- Running gactar
- Build/Develop
- Test
- Web API
- gactar Models
- amod Processing
- Reference
- Contributing
gactar
takes an amod file and generates code to run it on three different ACT-R implementations:
- pyactr (Python)
- python_actr (Python) - a.k.a. ccm
- ACT-R (Lisp) - a.k.a. vanilla
gactar
will work with the tutorial models included in the examples directory. It doesn't handle a lot beyond what's in there - it only works with memory modules, not perceptual-motor ones, and does not yet work with environments - so it's limited at the moment.
Given that gactar is in its early stages, the amod syntax may change dramatically based on use and feedback.
Naming note: When gactar was written, the python_actr
implementation came from CCMSuite3 and was referred to throughout gactar as ccm
. Instead of changing everything to refer to python_actr
I've decided to leave it as ccm
. This helps avoid confusion between python_actr
and pyactr
.
Note about python_actr: The version of python_actr
used here is a fork of the original. The original wasn't being updated, so I created a new pip package called actr which still uses python_actr
as its Python package name.
- Provides a human-readable, easy-to-understand, standard format to define basic ACT-R models.
- Abstracts away the "programming" to focus on writing & understanding models.
- Restricts the model to a small language to prevent programming "outside the model" (no sneaking in extra calculations or control-flow!).
- Runs the same model on multiple ACT-R implementation frameworks so the output may be compared.
- Generates human-readable code with comments linking back to the amod file which is useful for learning the implementations and comparing them.
- Provides a very simple setup for teaching environments - gactar is self-contained in one executable and downloads the implementation frameworks itself.
- Allows the easy exchange of models with other researchers
- Opens up the possibility of a library of models which will run on multiple implementation frameworks.
- amod syntax & semantics should be designed for humans to read & understand (i.e. it should not require a programming background to grok).
- amod should only provide one way to perform each action - this helps when reading someone else's code and keeps the parser as simple as possible.
- amod should only include functionality which is available on all implementation frameworks.
- gactar should be as simple as possible to set up, use, and understand.
The big, obvious one is environments (and therefore the visual & motor modules). That's a big challenge and probably not worth tackling if there isn't sufficient interest in this initial implementation. Environments may even prove impossible given the way they are implemented in the three frameworks, but I haven't yet explored this too deeply.
If there is sufficient interest in this project, my strategy going forward would be to continue implementing examples included with the three implementations, adding capabilities as necessary and, when the implementations differ, raising issues for discussion. Once all the non-environment capabilities are implemented I would turn to the environment issue.
There are more details on each step below, but here's the short version:
-
Access to a command line interface (cli) to run gactar. Generally something bash-compatible will work best.
-
python 3 is required by two of the frameworks (ccm & pyactr). More about Python installation here.
-
Download the latest release for your platform & architecture and decompress the file.
- arm64 if you have an ARM processor (e.g. Apple's M1)
- amd64 otherwise
-
(optional) Rename the folder that was just created (e.g.
gactar-v0.x-macOS-amd64
) to something shorter (e.g.gactar
):mv gactar-v0.x-macOS-amd64 gactar
-
In your command line interface, change to the folder :
cd gactar-v0.x-macOS-amd64
OR
cd gactar
(if you did step 2) -
Run the set up tool:
./gactar env setup
For more details, see below.
-
Run gactar:
./gactar web
-
Open your browser to the URL it outputs (e.g. http://localhost:8181)
For more details and other options for running gactar, see below.
-
Access to a command line interface (cli) is required to run gactar. Generally something bash-compatible will work best.
-
python 3 is required by two of the frameworks (ccm & pyactr). More about Python installation here.
-
gactar
requires that one or more of the three implementations (ccm, pyactr, vanilla) is installed. ccm and pyactr are both Python-based and will be installed using pip (if Python is available). vanilla requires a Lisp compiler which will be installed by the setup command.
gactar
uses a virtual environment to keep all the required Python packages, Lisp files, and other implementation files in one place so it does not affect the rest of your system. For more information about the Python virtual environment see the python docs.
-
Download the latest release for your platform & architecture and decompress the file.
- arm64 if you have an ARM processor (e.g. Apple's M1)
- amd64 otherwise
-
You should end up with a folder named something like
gactar-v<version>-<platform>-<architecture>
(e.g.gactar-v0.8.0-macOS-amd64
) containing the following files & folders:CHANGELOG.md describes changes between versions CITATION.cff citation information in cff format CONTRIBUTING.md how to contribute to the project - financially & otherwise doc/ folder containing extra documentation gactar the executable examples/ folder containing the examples install/ folder containing Python package information used for setup LICENSE the license README.md this readme file
Setup is handled using the gactar env setup
command.
USAGE:
gactar env setup [command options] [arguments...]
OPTIONS:
--dev install any dev packages (default: false)
--path value, -p value directory for env files (it will be created if it does not exist) (default: "./env")
For basic setup, run ./gactar env setup
This will do several things to set up your environment:
- create a virtual environment for the project in a directory called
env
- install pyactr and python_actr using pip
- download the vanilla ACT-R Lisp code
- download the Clozure Common Lisp compiler (ccl) compiler
Use the --dev
flag to also install optional developer packages for linting & formatting Python code.
$ ./gactar env setup --dev
If you want to change the default environment (env
), the directory can be specified using the -path
option:
./gactar env setup -path foo
Note: If you change the default environment, you will need to specify --env foo
each time you run gactar.
To update the Python version in your environment to the current Python on your system:
./gactar env update --python
To update the Python pip packages (python-actr, pyactr, and support packages) to the versions in install/requirements.txt (add --dev
to include development packages):
./gactar env update --pip
To update both Python & its packages (add --dev
to include development packages):
./gactar env update --all
To run a health check on your virtual environment, run:
./gactar env doctor
To check a specific virtual environment, you can pass its path using the --env
option:
./gactar env doctor --env foo
This command will run several checks on your environment and report any warnings or errors.
The following assumes you have set up your virtual environment properly. See setup above.
There are four different ways to use gactar depending on your needs:
- In Visual Studio Code using the gactar extension.
- With a UI locally in a web browser.
- Using a command line interface.
- Using an interactive command line interface.
For the command-line methods (2-4), run ./gactar help
for a list of commands and options:
Usage:
gactar [flags]
gactar [command]
Available Commands:
cli Run an interactive shell
completion Generate the autocompletion script for the specified shell
ebnf Output amod EBNF to stdout and quit
env Setup & maintain an environment
help Help about any command
module Get info about available modules
web Start a web server to run in a browser
Flags:
-d, --debug strings turn on debugging - valid options: lex, parse, exec
--env string directory where ACT-R, pyactr, and other necessary files are installed (default "./env")
-f, --framework strings add framework - valid frameworks: all, ccm, pyactr, vanilla (default [all])
-h, --help help for gactar
--no-colour do not use colour output on command line
-r, --run run the models after generating the code
--temp string directory for generated files (it will be created if it does not exist - defaults to <env>/gactar-temp)
-v, --version output the version and quit
Use "gactar [command] --help" for more information about a command.
I have created a Visual Studio Code extension called gactar-vscode to provide amod syntax highlighting, code snippets, and a command to run gactar.
The extension is published on the VS Code marketplace, so you can install it from within VS Code:
- Run VS Code.
- Go to the extensions and search for
gactar
. - Click the
Install
button on the gactar extension. - Details about using it may be found on the VS Code extension page.
The source code for gactar-vscode may be found here.
gactar includes a web server and can use your browser as its user interface.
Run ./gactar help web
for a list of options.
(env)$ ./gactar web
gactar version v0.11.0
Using virtual environment: "/path/to/gactar/env"
ccm: Using Python 3.10.9
pyactr: Using Python 3.10.9
vanilla: Using Version 1.12.1 (v1.12.1) DarwinX8664
Serving gactar on http://localhost:8181
Opening http://localhost:8181
in your browser will let you load, edit, and save amod files, and run them on the implementation frameworks. The page already has an example model loaded, so you can run it by clicking Run. You can also:
- select another example using the Load Example button
- modify the amod code in the editor
- Save the amod code to a file
- Load the amod code from a file
- choose which frameworks to run under
Select Frameworks
- set a Goal to override the default goal in the amod file
- once it's been run, browse the generated code using the tabs at the top of the code editor
The results (and any errors) will be shown on the right and the generated code that was used to run the model on each framework is shown in the editor tabs.
Important Note: This web server is only intended to be run locally. It should not be used to expose gactar to the internet. Because we are running code, a lot more checking and validation of inputs would be required before doing so.
This will generate code for all active frameworks and optionally run the models.
Run ./gactar help
for a list of options.
(env)$ ./gactar examples/count.amod
gactar version v0.11.0
Using virtual environment: "/path/to/gactar/env"
ccm: Using Python 3.10.9
pyactr: Using Python 3.10.9
vanilla: Using Version 1.12.1 (v1.12.1) DarwinX8664
Intermediate file path: "/path/to/gactar/env/gactar-temp"
Generating model for examples/count.amod
INFO: initial goal is [countFrom: 2 5 starting]
ccm
- generating code for examples/count.amod
- written to gactar-temp/ccm_count.py
pyactr
- generating code for examples/count.amod
- written to gactar-temp/pyactr_count.py
vanilla
- generating code for examples/count.amod
- written to gactar-temp/vanilla_count.lisp
You can choose which frameworks to use with -framework
or -f
like this:
(env)$ ./gactar -f ccm -f vanilla examples/count.amod
gactar version v0.11.0
Using virtual environment: "/path/to/gactar/env"
ccm: Using Python 3.10.9
vanilla: Using Version 1.12.1 (v1.12.1) DarwinX8664
Intermediate file path: "/path/to/gactar/env/gactar-temp"
Generating model for examples/count.amod
INFO: initial goal is [countFrom: 2 5 starting]
ccm
- generating code for examples/count.amod
- written to gactar-temp/ccm_count.py
vanilla
- generating code for examples/count.amod
- written to gactar-temp/vanilla_count.lisp
You can write the files to a different location using -temp
:
(env)$ ./gactar -f ccm -temp intermediate examples/count.amod
gactar version v0.11.0
Using virtual environment: "/path/to/gactar/env"
ccm: Using Python 3.10.9
Intermediate file path: "/path/to/gactar/env/gactar-temp"
Generating model for examples/count.amod
INFO: initial goal is [countFrom: 2 5 starting]
ccm
- generating code for examples/count.amod
- written to intermediate/ccm_count.py
You can also choose to run the models using -run
or -r
:
(env)$ ./gactar -f ccm -temp intermediate -r examples/count.amod
gactar version v0.11.0
Using virtual environment: "/path/to/gactar/env"
ccm: Using Python 3.10.9
Intermediate file path: "/path/to/gactar/env/gactar-temp"
Generating model for examples/count.amod
INFO: initial goal is [countFrom: 2 5 starting]
ccm
- generating code for examples/count.amod
- written to intermediate/ccm_count.py
== ccm ==
0.000 production_match_delay 0
0.000 production_threshold None
0.000 production_time 0.05
0.000 production_time_sd None
0.000 memory.error False
...
end...
gactar provides a simple interactive command-line mode to load and run models.
Run ./gactar help cli
for a list of options.
(env)$ ./gactar cli
gactar version v0.11.0
Using virtual environment: "/path/to/gactar/env"
ccm: Using Python 3.10.9
pyactr: Using Python 3.10.9
vanilla: Using Version 1.12.1 (v1.12.1) DarwinX8664
Type 'help' for a list of commands.
To exit, type 'exit' or 'quit'.
> help
exit: exits the program
frameworks: choose frameworks to run (e.g. "ccm pyactr", "all")
help: exits the program
history: outputs your command history
load: loads a model: load [FILENAME]
quit: exits the program
reset: resets the current model
run: runs the current model: run [INITIAL STATE]
version: outputs version info
> load examples/count.amod
model loaded
examples:
run [countFrom: 2 5 starting]
run [countFrom: 1 7 starting]
> frameworks ccm
active frameworks: ccm
> run [countFrom: 2 4 starting]
0.000 production_match_delay 0
0.000 production_threshold None
0.000 production_time 0.05
0.000 production_time_sd None
0.000 memory.error False
0.000 memory.busy False
0.000 memory.latency 0.05
0.000 memory.threshold 0
0.000 memory.maximum_time 10.0
0.000 memory.record_all_chunks False
0.000 retrieval.chunk None
0.050 production None
0.050 memory.busy True
0.050 goal.chunk countFrom 2 4 counting
0.100 retrieval.chunk count 2 3
0.100 memory.busy False
0.100 production increment
0.150 production None
2
0.150 memory.busy True
0.150 goal.chunk countFrom 3 4 counting
0.200 retrieval.chunk count 3 4
0.200 memory.busy False
0.200 production increment
0.250 production None
3
0.250 memory.busy True
0.250 goal.chunk countFrom 4 4 counting
0.250 production stop
0.300 retrieval.chunk count 4 5
0.300 memory.busy False
0.300 production None
4
0.300 goal.chunk None
Total time: 3.250
goal.chunk None
memory.busy False
memory.error False
memory.latency 0.05
memory.maximum_time 10.0
memory.record_all_chunks False
memory.threshold 0
production None
production_match_delay 0
production_threshold None
production_time 0.05
production_time_sd None
retrieval.chunk count 4 5
end...
> exit
You may choose which of the frameworks to run using the frameworks
command.
Specifying frameworks on the command line will limit you to selecting those frameworks. For example this will make only ccm
available in interactive mode:
./gactar cli -f ccm
If you want to build gactar
from scratch, you will need git, make, and the go compiler installed for your platform.
Then you just need to clone this repository:
git clone https://github.com/asmaloney/gactar
cd gactar
...and run make:
make
This will create the gactar
executable.
See the web README for information on developing the web interface.
To run the built-in tests, from the top-level of the repo run:
make test
gactar provides an HTTP-based API to compile and run amod files. The available endpoints are documented separately in the Web API documentation.
gactar models are written using the amod format which is designed to be an easy-to-understand description of an ACT-R model.
Here is an example of a gactar model:
~~ model ~~
// The name of the model (used when generating code and for error messages)
name: count
// Description of the model (currently output as a comment in the generated code)
description: 'This is a model which adds numbers. Based on the ccm u1_count.py tutorial.'
// A list of authors. These are output as comments in the generated code.
authors {
'Andy Maloney <asmaloney@gmail.com>'
}
// Examples of starting goals to use when running the model
examples {
[countFrom: 2 5 'starting']
[countFrom: 1 3 'starting']
}
~~ config ~~
gactar {
// Logging level can be 'min', 'info' (default), or 'detail'
log_level: 'detail'
// Show detailed information about activations (if available)
trace_activations: false
}
// Declare chunk types and their layouts
chunks {
[count: first second]
[countFrom: start end status]
}
~~ init ~~
// Initialize the memory
memory {
// Initializers can have an optional chunk name like this:
one [count: 0 1]
two [count: 1 2]
three [count: 2 3]
four [count: 3 4]
five [count: 4 5]
}
// Default goal
goal [countFrom: 2 5 'starting']
~~ productions ~~
// Name of the production
begin {
// Optional description
description: 'Starting point - first production to match'
// Buffers to match
match {
goal [countFrom: ?start ?end 'starting']
}
// Statements to execute
do {
recall [count: ?start *]
set goal to [countFrom: ?start ?end 'counting']
}
}
increment {
match {
goal [countFrom: ?x !?x 'counting']
retrieval [count: ?x ?next]
}
do {
print ?x
recall [count: ?next *]
set goal.start to ?next
}
}
end {
match {
goal [countFrom: ?x ?x 'counting']
}
do {
print ?x
stop
}
}
You can find other examples of amod
files in the examples folder.
The EBNF (Extended Backus–Naur form) grammar for the amod file format may be found here.
For amod configuration options and a list of supported modules, please see amod Config.
In ACT-R, a buffer is the interface between modules, such as the goal & declarative memory modules, and the production system. At any point in time, each buffer either stores one instance of a chunk (see next section) or it is empty.
gactar uses several built-in buffers:
goal
stores the current goalretrieval
stores a chunk retrieved from declarative memory using arecall
statement (see below)imaginal
stores context related to the current task
A chunk is a piece of data that adheres to a user-defined structure. These chunks are stored as facts in the declarative memory and are placed in buffers where they may be matched, read, and modified.
The structure of each chunk type is declared in the config section. Chunks are delineated by square brackets. The first item is the chunk name and the items after the colon are the slot names:
[chunk_name: slot_name1 slot_name2 ...]
Examples:
[count: first second]
[word: form category]
[property: object attribute value]
User-defined chunks must not begin with underscore ('_') - these are reserved for internal use.
A production is essentially a fancy if-then statement which checks some conditions and modifies state. In gactar, they take the form:
(production_name) {
match {
(some buffer conditions)
}
do {
(some actions)
}
}
This may be read as if (all buffer conditions match) then (do all the specified actions).
The production name is used to trace the output when running a model.
The match section allows checking buffer and module states, and matching buffers by pattern.
Checking the buffer state takes the form buffer_state <buffer> <state>
. For example, to check if the retrieval buffer is full:
buffer_state retrieval full
Valid buffer states are:
empty
- the buffer does not contain a chunk and the failure flag is clearfull
- there is currently a chunk in the buffer
Checking the module state takes the form module_state <module> <state>
. For example, to check if the memory module is in the error state:
module_state memory error
Valid module states are:
busy
- the module is currently handling a requesterror
- the last request resulted in some sort of errorfree
- the module is ready for new requests
Matching buffer patterns reply on the chunks previously declared in the config section and are parsed to ensure their format is consistent.
Variables in production matches are preceded by ?
(e.g. ?object
). *
denotes a wildcard (i.e. "match anything"). Using !
negates the logic.
Every pattern match has an optional when clause to add constraints to variable matches (see example #3 below).
retrieval [count: ?x ?next]
This matches the retrieval
buffer if it contains a count
chunk, and assigns the contents to the two variables ?x
and ?next
.
goal [countFrom: ?x !?x counting]
This matches the goal
buffer if it contains a countFrom
chunk, the first two slots do not contain the same value, and the third slot contains counting
. It assigns ?x
the contents of the first slot.
goal [add: * ?num2 ?count ?sum] when (?count != ?num2)
This matches the goal
buffer if it contains an add
chunk, the first slot is any value, and the third slot is not the same value as the second. It assigns ?num2
the contents of the second slot, ?count
the value of the third, and ?sum
the value of the fourth.
The do section in the productions tells the system what actions to take if the buffers match. It uses a small language which currently understands the following commands:
command | example |
---|---|
clear (buffer name)+ | clear goal, retrieval |
print (string or var or number)+ | print 'text', ?var, 42 |
print (buffer name) or (buffer name).(slot name) | print retrieval.name |
recall (pattern) | recall [car: ?colour] |
set (buffer name).(slot name) to (string or var or number) | set goal.wall_colour to ?colour |
set (buffer name) to (pattern) | set goal to [start: 6 nil] |
stop | stop |
increment {
match {
goal [countFrom: ?x !?x counting]
retrieval [count: ?x ?next]
}
do {
print ?x
recall [count: ?next ?]
set goal.start to ?next
}
}
This production is called increment
. It attempts to match the goal
buffer to a countFrom
chunk, and the retrieval
buffer to a count
chunk. If they match, then it will print
the contents of the ?x
variable, lookup a count
chunk in memory and set the retrieval
buffer to it, and set
the start
slot of the goal
buffer to the contents of the variable ?next
.
done {
match {
goal [parsing_goal: * * ?parsed printing]
imaginal [sentence: nil * *]
}
do {
print ?parsed
set goal.task to 'done'
clear imaginal, goal
}
}
This production is called done
. It attempts to match the goal
buffer to a parsing_goal
chunk, and the imaginal
buffer to a sentence
chunk. If they match, then it will print
the contents of the ?parsed
variable, set
the task
slot of the goal
buffer to 'done'
, and clear both the imaginal
and goal
buffers.
The following diagram shows how an amod file is processed by gactar. The partial paths at the bottom of the items is the path to the source code responsible for that part of the processing.
If you need to reference this project, I wrote up a technical note which may be found on ResearchGate.
Title: gactar: A Tool For Exploring ACT-R Modelling
DOI: 10.13140/RG.2.2.25387.36642
For information on how to contribute (code, bug reports, ideas, or other resources), please see the CONTRIBUTING doc.