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algorithms for scheduling and learning scheduling constraints

Project description

Prolothar Constraint Acquisition

Algorithms for constraint acquisition, e.g. discovery of scheduling constraints

Based on the publication

Boris Wiegand, Dietrich Klakow, and Jilles Vreeken. What Are the Rules? Discovering Constraints from Data. In: Proceedings of the 38th AAAI Conference on Artificial Intelligence (AAAI), Vancouver, Canada. 2024, pp. 4237–4244.

Prerequisites

Python 3.11+

Usage

See prolothar_tests/prolothar_ca/ca/methods/custom/test_urpils.py for some simple examples.

If you want to run the algorithms on your own data, follow the steps below.

Installing

pip install prolothar-constraint-acquisition

Discovering Constraints for Constraint Programming Problems

In this example, we acquire constraints for the N-Queens problem, in which we want to place 8 queens on a 8x8 checkerboard, such that no two queens attack each other.

First, we need to create a dataset with examples from which we want to acquire constraints.

from prolothar_ca.model.ca.dataset import CaDataset
from prolothar_ca.model.ca.example import CaExample
from prolothar_ca.model.ca.obj import CaObject, CaObjectType
from prolothar_ca.model.ca.relation import CaRelation, CaRelationType
from prolothar_ca.model.ca.targets import CaTarget, RelationTarget
from prolothar_ca.model.ca.variable_type import CaBoolean, CaNumber

# this is the relation for which we want to find constraints
queen_on_square = CaRelationType(
    'queen_on_square',
    ('Queen', 'Square'),
    CaBoolean()
)

dataset = CaDataset({
    'Square': CaObjectType(
        'Square',
        {
            'x': CaNumber(),
            'y': CaNumber(),
        }
    ),
    'Queen': CaObjectType('Queen', {})
},
{
    'queen_on_square': queen_on_square
})

queen_list = [CaObject(f'queen{i+1}', QUEEN_TYPE_NAME, {}) for i in range(8)]
square_set = set(
    CaObject(f'square_{x}_{y}', SQUARE_TYPE_NAME, {'x': x, 'y': y})
    for x in range(8)
    for y in range(8)
)

#the following 2d array defines a valid solution
# 0 = no queen on this square
# a number != 0 is the ID of the queen on this square
solution = [
    [0, 0, 0, 1, 0, 0, 0, 0],
    [0, 0, 0, 0, 0, 2, 0, 0],
    [0, 0, 0, 0, 0, 0, 0, 3],
    [0, 4, 0, 0, 0, 0, 0, 0],
    [0, 0, 0, 0, 0, 0, 5, 0],
    [6, 0, 0, 0, 0, 0, 0, 0],
    [0, 0, 7, 0, 0, 0, 0, 0],
    [0, 0, 0, 0, 8, 0, 0, 0]
]

# Let us create an example from this solution
# 1. parameter defines which types of objects are involved
# 2. parameter defines values for relations
# 3. parameter defines whether this example is a valid solution or not
example = CaExample(
    {
        'Queen': set(queen_list),
        'Square': square_set
    },
    {
        'queen_on_square': set(
            CaRelation(
                'queen_on_square', (queen, square),
                solution[square.features['x']][square.features['y']] == i+1
            ) for square in square_set
        )
    },
    True
)
for square in example.all_objects_per_type[SQUARE_TYPE_NAME]:
    for i,queen in enumerate(queen_list):
        example.add_relation(CaRelation(
            'queen_on_square',
            (queen, square),
            solution[square.features['x']][square.features['y']] == i + 1
        ))
dataset.add_example(example)

#Now, you can add multiple valid examples to the dataset

Having a dataset with examples, we can now learn constraints.

from prolothar_ca.ca.methods import URPiLs

urpils = URPiLs(verbose=True)
constraints = urpils.acquire_constraints(dataset, RelationTarget('queen_on_square'))
for constraint in constraints:
    print(constraint)

# If your problem has a higher dimensionality, you can speed up computations by activating sampling (can reduce accuracy):
# "max_nr_of_target_zeros" determines how many zeros of the target relation are used to compute the MDL score (we had good results with 50-100)
# "implication_pairs_limit" controls the datset size to learn complex constraints (we had good results 1000). set it to 0 to turn off search for complex constraints.
urpils = URPiLs(verbose=True, max_nr_of_target_zeros=100, implication_pairs_limit=1000)

Discovering Constraints for AI planning Problems

from prolothar_ca.ca.dataset_generator.metaplanning import MetaplanningCaDatasetGenerator

#the directory contains
# 1. a file "empty", which contains an empty domain (actions do not have defined effects or preconditions)
# 2. files "trajectory-{number}" with exemplary execution trajectories (states and action executions)
# 3. an optional file "reference", which contains the full domain with preconditions and effects (only necessary if you want to generate negative examples or additional positive examples)
dataset_generator = MetaplanningCaDatasetGenerator(
    'prolothar_tests/resources/meta_planning/hanoi',
    filter_actions_with_duplicate_parameter=True)

#create a dataset with 30 examples of valid action executions
dataset = dataset_generator.generate(30, 0, random_seed=20022023)

#learn constraints for the planning problem
urpils = URPiLs(planning_dataset=True, verbose=True)
for constraint in constraints:
    print(constraint)

Development

These instructions will get you a copy of the project up and running on your local machine for development and testing purposes.

Additional Prerequisites

  • make (optional)

Compile Cython code

make cython

Running the tests

make test

Deployment

make clean_package || make package && make publish

You should also create a tag for the current version

git tag -a [version] -m "describe what has changed"
git push --tags

Versioning

We use SemVer for versioning.

Authors

If you have any questions, feel free to ask one of our authors:

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