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@ -2,8 +2,11 @@
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# Copyright (C) 2020, UChicago Argonne, LLC. All rights reserved.
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# Released under the modified BSD license. See COPYING.md for more details.
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import gzip
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import json
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from abc import ABC, abstractmethod
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import pickle, gzip, json
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import numpy as np
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class Instance(ABC):
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@ -23,7 +26,6 @@ class Instance(ABC):
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"""
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pass
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@abstractmethod
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def get_instance_features(self):
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"""
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Returns a 1-dimensional Numpy array of (numerical) features describing the entire instance.
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@ -41,10 +43,11 @@ class Instance(ABC):
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The returned array MUST have the same length for all relevant instances of the problem. If
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two instances map into arrays of different lengths, they cannot be solved by the same
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LearningSolver object.
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By default, returns [0].
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"""
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pass
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return np.zeros(1)
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@abstractmethod
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def get_variable_features(self, var, index):
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"""
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Returns a 1-dimensional array of (numerical) features describing a particular decision
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@ -61,8 +64,10 @@ class Instance(ABC):
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Like instance features, the arrays returned by this method MUST have the same length for
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all variables within the same category, for all relevant instances of the problem.
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By default, returns [0].
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"""
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pass
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return np.zeros(1)
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def get_variable_category(self, var, index):
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"""
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@ -70,12 +75,12 @@ class Instance(ABC):
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variable.
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If two variables have the same category, LearningSolver will use the same internal ML
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model to predict the values of both variables. By default, all variables belong to the
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"default" category, and therefore only one ML model is used for all variables.
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If the returned category is None, ML models will ignore the variable.
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model to predict the values of both variables. If the returned category is None, ML
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models will ignore the variable.
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By default, returns None.
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"""
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return "default"
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return None
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def has_static_lazy_constraints(self):
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return False
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@ -87,7 +92,10 @@ class Instance(ABC):
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return False
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def get_lazy_constraint_features(self, cid):
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pass
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return np.zeros(1)
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def get_lazy_constraint_category(self, cid):
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return cid
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def find_violated_lazy_constraints(self, model):
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"""
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@ -131,13 +139,13 @@ class Instance(ABC):
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def build_user_cut(self, model, violation):
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pass
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def load(self, filename):
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with gzip.GzipFile(filename, 'r') as f:
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data = json.loads(f.read().decode('utf-8'))
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self.__dict__ = data
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def dump(self, filename):
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data = json.dumps(self.__dict__, indent=2).encode('utf-8')
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with gzip.GzipFile(filename, 'w') as f:
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f.write(data)
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f.write(data)
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