示例#1
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def main():
    """Test for the DD classes."""
    # import logging
    # from pymhlib.demos.common import data_dir
    parser = get_settings_parser()
    parser.add("--inst_file",
               type=str,
               default=data_dir + 'mknap-small.txt',
               help='problem instance file')
    # parser.set_defaults(seed=3)

    parse_settings()
    init_logger()
    logger = logging.getLogger("pymhlib")
    logger.info("pymhlib demo for using decision diagrams for the MKP")
    logger.info(get_settings_as_str())
    instance = MKPInstance(settings.inst_file)
    logger.info("MKP instance read:\n%s", str(instance))

    # solution = MKPSolution(instance)
    # solution.initialize(0)
    dd = MKPDecisionDiag(instance)
    dd.expand_all('relaxed')
    logger.info(dd)
    sol = dd.derive_solution()
    # sol.check()
    logger.info("Solution: %s, obj=%f", sol, sol.obj())
示例#2
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def run_algorithm_visualisation(config: Configuration):
    settings.mh_out = sum_log_vis_path
    settings.mh_log = iter_log_vis_path
    settings.mh_log_step = step_log_path 
    init_logger()

    settings.seed =  config.seed
    seed_random_generators()

    solution = run_algorithm(config,True)
    return get_log_data(config.problem.name.lower(), config.algorithm.name.lower()), solution.inst
示例#3
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def run_algorithm_comparison(config: Configuration):
    settings.mh_out = sum_log_path
    settings.mh_log = iter_log_path
    settings.mh_log_step = 'None'
    init_logger()
    settings.seed =  config.seed
    seed_random_generators()

    for i in range(config.runs):
        _ = run_algorithm(config)
    log_df = read_iter_log(config.name)
    summary = read_sum_log()

    return log_df, summary
示例#4
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def run_optimization(problem_name: str,
                     instance_class,
                     solution_class,
                     default_inst_file: str = "inst.dat",
                     own_settings: dict = None,
                     embedded: bool = False,
                     iter_cb: Callable = None,
                     seed: int = 0) -> Solution:
    """Initialize and run optimization algorithm given by parameter alg on given problem instance.

    First, some general parameters for the algorithm to be applied, the instance file, and the methods to
    be applied are registered and the settings are parsed.
    Then the loggers are initialized, instance and solution objects are created and the chosen algorithm is
    performed. The resulting solution is finally returned.

    :param problem_name: name of the problem to be printed
    :param instance_class: class of the instance to be solved
    :param solution_class: concrete solution class to be used
    :param default_inst_file: default instance file to be loaded and solved
    :param own_settings: optional run-specific settings dictionary
    :param embedded: if set it is assumed that the call is embedded in a Notebook or other larger framework,
        and therefore, the parameters are assumed to be already registered and parsed
    :param iter_cb: optional callback function that is called each iteration by some of the algorithms
    :param seed: optional seed value for the random number generators; 0: random initialization
    """
    if not embedded:
        add_general_arguments_and_parse_settings(default_inst_file, seed=seed)

    init_logger()
    logger = logging.getLogger("pymhlib")
    logger.info("pymhlib demo for solving %s", problem_name)
    logger.info(get_settings_as_str())
    instance = instance_class(settings.inst_file)
    logger.info("%s instance read:\n%s", problem_name, str(instance))
    solution = solution_class(instance)
    # solution.initialize(0)

    logger.info("Solution: %s, obj=%f\n", solution, solution.obj())

    if settings.alg == 'gvns':
        alg = GVNS(solution, [
            Method(f"ch{i}", solution_class.construct, i)
            for i in range(settings.meths_ch)
        ], [
            Method(f"li{i}", solution_class.local_improve, i)
            for i in range(1, settings.meths_li + 1)
        ], [
            Method(f"sh{i}", solution_class.shaking, i)
            for i in range(1, settings.meths_sh + 1)
        ], own_settings)
    elif settings.alg == 'alns':
        alg = ALNS(solution, [
            Method(f"ch{i}", solution_class.construct, i)
            for i in range(settings.meths_ch)
        ], [
            Method(f"de{i}", solution_class.destroy, i)
            for i in range(1, settings.meths_de + 1)
        ], [
            Method(f"re{i}", solution_class.repair, i)
            for i in range(1, settings.meths_re + 1)
        ], own_settings)
    elif settings.alg == 'pbig':
        alg = PBIG(solution, [
            Method(f"ch{i}", solution_class.construct, i)
            for i in range(settings.meths_ch)
        ], [
            Method(f"li{i}", solution_class.local_improve, i)
            for i in range(1, settings.meths_li + 1)
        ] + [
            Method(f"sh{i}", solution_class.shaking, i)
            for i in range(1, settings.meths_sh + 1)
        ], own_settings)
    elif settings.alg == 'par_alns':
        alg = ParallelALNS(solution, [
            Method(f"ch{i}", solution_class.construct, i)
            for i in range(settings.meths_ch)
        ], [
            Method(f"de{i}", solution_class.destroy, i)
            for i in range(1, settings.meths_de + 1)
        ], [
            Method(f"re{i}", solution_class.repair, i)
            for i in range(1, settings.meths_re + 1)
        ], own_settings)
    elif settings.alg == 'ssga':
        alg = SteadyStateGeneticAlgorithm(
            solution, [
                Method("ch{i}", solution_class.construct, i)
                for i in range(settings.meths_ch)
            ], solution_class.crossover, Method("mu", solution_class.shaking,
                                                1),
            Method("ls", solution_class.local_improve, 1), own_settings)
    elif settings.alg == 'sa':
        alg = SA(solution, [
            Method(f"ch{i}", solution_class.construct, i)
            for i in range(settings.meths_ch)
        ], solution_class.random_move_delta_eval,
                 solution_class.apply_neighborhood_move, iter_cb, own_settings)
    else:
        raise ValueError(
            'Invalid optimization algorithm selected (settings.alg): ',
            settings.alg)

    alg.run()
    logger.info("")
    alg.method_statistics()
    alg.main_results()
    return solution
示例#5
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def run_optimization(problem_name: str, Instance, Solution, default_inst_file: str, own_settings=None, embedded=False, iter_cb=None):
    """Run optimization algorithm given by parameter alg on given problem instance."""
    if not embedded:
        parser = get_settings_parser()
        parser.add("--alg", type=str, default='gvns', help='optimization algorithm to be used '
                                                           '(gvns, alns, parallel_alns, ssga)')
        parser.add("--inst_file", type=str, default=default_inst_file,
                   help='problem instance file')
        parser.add("--meths_ch", type=int, default=1,
                   help='number of construction heuristics to be used')
        parser.add("--meths_li", type=int, default=1,
                   help='number of local improvement methods to be used')
        parser.add("--meths_sh", type=int, default=5,
                   help='number of shaking methods to be used')
        parser.add("--meths_de", type=int, default=3,
                   help='number of destroy methods to be used')
        parser.add("--meths_re", type=int, default=3,
                   help='number of repair methods to be used')
        # parser.set_defaults(seed=3)
        parse_settings()

    init_logger()
    logger = logging.getLogger("pymhlib")
    logger.info(f"pymhlib demo for solving {problem_name}")
    logger.info(get_settings_as_str())
    instance = Instance(settings.inst_file)
    logger.info(f"{problem_name} instance read:\n" + str(instance))
    solution = Solution(instance)
    # solution.initialize(0)

    logger.info(f"Solution: {solution}, obj={solution.obj()}\n")

    if settings.alg == 'gvns':
        alg = GVNS(solution,
                   [Method(f"ch{i}", Solution.construct, i) for i in range(settings.meths_ch)],
                   [Method(f"li{i}", Solution.local_improve, i) for i in range(1, settings.meths_li + 1)],
                   [Method(f"sh{i}", Solution.shaking, i) for i in range(1, settings.meths_sh + 1)],
                   own_settings)
    elif settings.alg == 'alns':
        alg = ALNS(solution,
                   [Method(f"ch{i}", Solution.construct, i) for i in range(settings.meths_ch)],
                   [Method(f"de{i}", Solution.destroy, i) for i in range(1, settings.meths_de + 1)],
                   [Method(f"re{i}", Solution.repair, i) for i in range(1, settings.meths_re + 1)],
                   own_settings)
    elif settings.alg == 'pbig':
        alg = PBIG(solution,
                   [Method(f"ch{i}", Solution.construct, i) for i in range(settings.meths_ch)],
                   [Method(f"li{i}", Solution.local_improve, i) for i in range(1, settings.meths_li + 1)] +
                   [Method(f"sh{i}", Solution.shaking, i) for i in range(1, settings.meths_sh + 1)],
                   own_settings)
    elif settings.alg == 'par_alns':
        alg = ParallelALNS(solution,
                           [Method(f"ch{i}", Solution.construct, i) for i in range(settings.meths_ch)],
                           [Method(f"de{i}", Solution.destroy, i) for i in range(1, settings.meths_de + 1)],
                           [Method(f"re{i}", Solution.repair, i) for i in range(1, settings.meths_re + 1)],
                           own_settings)
    elif settings.alg == 'ssga':
        alg = SteadyStateGeneticAlgorithm(solution,
                                          [Method(f"ch{i}", Solution.construct, i) for i in range(settings.meths_ch)],
                                          Solution.crossover,
                                          Method(f"mu", Solution.shaking, 1),
                                          Method(f"ls", Solution.local_improve, 1),
                                          own_settings)
    elif settings.alg == 'sa':
        alg = SA(solution,
                 [Method(f"ch{i}", Solution.construct, i) for i in range(settings.meths_ch)],
                 Solution.random_move_delta_eval, Solution.apply_neighborhood_move, iter_cb, own_settings)
    else:
        raise ValueError('Invalid optimization algorithm selected (settings.alg): ', settings.alg)

    alg.run()
    logger.info("")
    alg.method_statistics()
    alg.main_results()