ParallelTemperingOptimizer.__init__()   A
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Total Lines 23
Code Lines 22

Duplication

Lines 23
Ratio 100 %

Importance

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Metric Value
eloc 22
dl 23
loc 23
rs 9.352
c 0
b 0
f 0
cc 1
nop 9

How to fix   Many Parameters   

Many Parameters

Methods with many parameters are not only hard to understand, but their parameters also often become inconsistent when you need more, or different data.

There are several approaches to avoid long parameter lists:

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# Author: Simon Blanke
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# Email: [email protected]
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# License: MIT License
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from typing import List, Dict, Literal, Union
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from ..search import Search
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from ..optimizers import (
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    ParallelTemperingOptimizer as _ParallelTemperingOptimizer,
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)
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class ParallelTemperingOptimizer(_ParallelTemperingOptimizer, Search):
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    """
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    A class implementing **parallel tempering** for the public API.
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    Inheriting from the `Search`-class to get the `search`-method and from
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    the `ParallelTemperingOptimizer`-backend to get the underlying algorithm.
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    Parameters
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    ----------
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    search_space : dict[str, list]
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        The search space to explore. A dictionary with parameter
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        names as keys and a numpy array as values.
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    initialize : dict[str, int]
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        The method to generate initial positions. A dictionary with
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        the following key literals and the corresponding value type:
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        {"grid": int, "vertices": int, "random": int, "warm_start": list[dict]}
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    constraints : list[callable]
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        A list of constraints, where each constraint is a callable.
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        The callable returns `True` or `False` dependend on the input parameters.
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    random_state : None, int
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        If None, create a new random state. If int, create a new random state
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        seeded with the value.
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    rand_rest_p : float
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        The probability of a random iteration during the the search process.
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    population : int
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        The number of simulated annealers in the population.
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    n_iter_swap : int
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        The number of iterations the algorithm performs before switching temperatures of the individual optimizers in the population.
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    """
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    def __init__(
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        self,
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        search_space: Dict[str, list],
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        initialize: Dict[
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            Literal["grid", "vertices", "random", "warm_start"],
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            Union[int, list[dict]],
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        ] = {"grid": 4, "random": 2, "vertices": 4},
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        constraints: List[callable] = [],
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        random_state: int = None,
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        rand_rest_p: float = 0,
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        nth_process: int = None,
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        population: int = 5,
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        n_iter_swap: int = 5,
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    ):
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        super().__init__(
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            search_space=search_space,
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            initialize=initialize,
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            constraints=constraints,
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            random_state=random_state,
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            rand_rest_p=rand_rest_p,
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            nth_process=nth_process,
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            population=population,
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            n_iter_swap=n_iter_swap,
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        )
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