pddl
aims to be an unquestionable and complete parser for PDDL 3.1.
- from PyPI:
pip install pddl
- from source (
main
branch):
pip install git+https://github.com/AI-Planning/pddl.git
- or, clone the repository and install:
git clone https://github.com/AI-Planning/pddl.git
cd pddl
pip install .
You can use the pddl
package in two ways: as a library, and as a CLI tool.
This is an example of how you can build a PDDL domain or problem programmatically:
from pddl.logic import Predicate, constants, variables
from pddl.core import Domain, Problem
from pddl.action import Action
from pddl.requirements import Requirements
# set up variables and constants
x, y, z = variables("x y z", types=["type_1"])
a, b, c = constants("a b c", type_="type_1")
# define predicates
p1 = Predicate("p1", x, y, z)
p2 = Predicate("p2", x, y)
# define actions
a1 = Action(
"action-1",
parameters=[x, y, z],
precondition=p1(x, y, z) & ~p2(y, z),
effect=p2(y, z)
)
# define the domain object.
requirements = [Requirements.STRIPS, Requirements.TYPING]
domain = Domain("my_domain",
requirements=requirements,
types={"type_1": None},
constants=[a, b, c],
predicates=[p1, p2],
actions=[a1])
print(domain)
that gives:
(define (domain my_domain)
(:requirements :strips :typing)
(:types type_1)
(:constants a b c - type_1)
(:predicates (p1 ?x - type_1 ?y - type_1 ?z - type_1) (p2 ?x - type_1 ?y - type_1))
(:action action-1
:parameters (?x - type_1 ?y - type_1 ?z - type_1)
:precondition (and (p1 ?x ?y ?z) (not (p2 ?y ?z)))
:effect (p2 ?y ?z)
)
)
As well as a PDDL problem:
problem = Problem(
"problem-1",
domain=domain,
requirements=requirements,
objects=[a, b, c],
init=[p1(a, b, c), ~p2(b, c)],
goal=p2(b, c)
)
print(problem)
Output:
(define (problem problem-1)
(:domain my_domain)
(:requirements :strips :typing)
(:objects a b c - type_1)
(:init (not (p2 b c)) (p1 a b c))
(:goal (p2 b c))
)
Example parsing:
from pddl import parse_domain, parse_problem
domain = parse_domain('d.pddl')
problem = parse_problem('p.pddl')
The package can also be used as a CLI tool. Supported commands are:
pddl domain FILE
: validate a PDDL domain file, and print it formatted.pddl problem FILE
: validate a PDDL problem file, and print it formatted.
Supported PDDL 3.1 requirements:
-
:strips
-
:typing
-
:negative-preconditions
-
:disjunctive-preconditions
-
:equality
-
:existential-preconditions
-
:universal-preconditions
-
:quantified-preconditions
-
:conditional-effects
-
:fluents
-
:numeric-fluents
-
:non-deterministic
(see 6th IPC: Uncertainty Part) -
:adl
-
:durative-actions
-
:duration-inequalities
-
:derived-predicates
-
:timed-initial-literals
-
:preferences
-
:constraints
-
:action-costs
If you want to contribute, here's how to set up your development environment.
- Install Pipenv
- Clone the repository:
git clone https://github.com/AI-Planning/pddl.git && cd pddl
- Install development dependencies:
pipenv shell --python 3.8 && pipenv install --dev
To run tests: tox
To run only the code tests: tox -e py37
To run only the code style checks: tox -e flake8
To build the docs: mkdocs build
To view documentation in a browser: mkdocs serve
and then go to http://localhost:8000
pddl
is released under the MIT License.
Copyright (c) 2021-2023 WhiteMech
The pddl
project is partially supported by the ERC Advanced Grant WhiteMech
(No. 834228), the EU ICT-48 2020 project TAILOR (No. 952215),
the PRIN project RIPER (No. 20203FFYLK), and the JPMorgan AI Faculty
Research Award "Resilience-based Generalized Planning and Strategic
Reasoning".