281 lines
9.8 KiB
Python
281 lines
9.8 KiB
Python
# Copyright 2010-2024 Google LLC
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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"""Cutting stock problem with the objective to minimize wasted space."""
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import collections
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import time
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import numpy as np
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from absl import app
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from absl import flags
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from google.protobuf import text_format
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from ortools.linear_solver.python import model_builder as mb
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from ortools.sat.python import cp_model
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FLAGS = flags.FLAGS
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_OUTPUT_PROTO = flags.DEFINE_string(
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'output_proto', '', 'Output file to write the cp_model proto to.')
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_PARAMS = flags.DEFINE_string(
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'params',
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'num_search_workers:8,log_search_progress:true,max_time_in_seconds:10',
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'Sat solver parameters.')
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_SOLVER = flags.DEFINE_string(
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'solver', 'sat', 'Method used to solve: sat, mip.')
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DESIRED_LENGTHS = [
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2490, 3980, 2490, 3980, 2391, 2391, 2391, 596, 596, 596, 2456, 2456, 3018,
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938, 3018, 938, 943, 3018, 943, 3018, 2490, 3980, 2490, 3980, 2391, 2391,
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2391, 596, 596, 596, 2456, 2456, 3018, 938, 3018, 938, 943, 3018, 943,
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3018, 2890, 3980, 2890, 3980, 2391, 2391, 2391, 596, 596, 596, 2856, 2856,
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3018, 938, 3018, 938, 943, 3018, 943, 3018, 3290, 3980, 3290, 3980, 2391,
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2391, 2391, 596, 596, 596, 3256, 3256, 3018, 938, 3018, 938, 943, 3018,
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943, 3018, 3690, 3980, 3690, 3980, 2391, 2391, 2391, 596, 596, 596, 3656,
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3656, 3018, 938, 3018, 938, 943, 3018, 943, 3018, 2790, 3980, 2790, 3980,
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2391, 2391, 2391, 596, 596, 596, 2756, 2756, 3018, 938, 3018, 938, 943,
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3018, 943, 3018, 2790, 3980, 2790, 3980, 2391, 2391, 2391, 596, 596, 596,
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2756, 2756, 3018, 938, 3018, 938, 943
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]
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POSSIBLE_CAPACITIES = [4000, 5000, 6000, 7000, 8000]
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# Toy problem
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# DESIRED_LENGTHS = [12, 12, 8, 8, 8]
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# POSSIBLE_CAPACITIES = [10, 20]
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def regroup_and_count(raw_input):
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"""Regroup all equal capacities in a multiset."""
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grouped = collections.defaultdict(int)
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for i in raw_input:
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grouped[i] += 1
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output = []
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for size, count in grouped.items():
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output.append([size, count])
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output.sort(reverse=False)
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return output
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def price_usage(usage, capacities):
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"""Compute the best price for a given usage and possible capacities."""
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price = max(capacities)
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for capacity in capacities:
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if capacity < usage:
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continue
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price = min(capacity - usage, price)
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return price
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def create_state_graph(items, max_capacity):
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"""Create a state graph from a multiset of items, and a maximum capacity."""
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states = []
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state_to_index = {}
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states.append(0)
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state_to_index[0] = 0
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transitions = []
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for item_index, size_and_count in enumerate(items):
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size, count = size_and_count
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num_states = len(states)
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for state_index in range(num_states):
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current_state = states[state_index]
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current_state_index = state_index
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for card in range(count):
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new_state = current_state + size * (card + 1)
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if new_state > max_capacity:
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break
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new_state_index = -1
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if new_state in state_to_index:
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new_state_index = state_to_index[new_state]
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else:
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new_state_index = len(states)
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states.append(new_state)
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state_to_index[new_state] = new_state_index
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# Add the transition
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transitions.append([
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current_state_index, new_state_index, item_index, card + 1
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])
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return states, transitions
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def solve_cutting_stock_with_arc_flow_and_sat(output_proto_file: str, params: str):
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"""Solve the cutting stock with arc-flow and the CP-SAT solver."""
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items = regroup_and_count(DESIRED_LENGTHS)
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print('Items:', items)
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num_items = len(DESIRED_LENGTHS)
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max_capacity = max(POSSIBLE_CAPACITIES)
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states, transitions = create_state_graph(items, max_capacity)
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print('Dynamic programming has generated', len(states), 'states and',
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len(transitions), 'transitions')
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incoming_vars = collections.defaultdict(list)
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outgoing_vars = collections.defaultdict(list)
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incoming_sink_vars = []
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item_vars = collections.defaultdict(list)
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item_coeffs = collections.defaultdict(list)
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transition_vars = []
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model = cp_model.CpModel()
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objective_vars = []
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objective_coeffs = []
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for outgoing, incoming, item_index, card in transitions:
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count = items[item_index][1]
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max_count = count // card
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count_var = model.NewIntVar(
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0, max_count,
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'i%i_f%i_t%i_C%s' % (item_index, incoming, outgoing, card))
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incoming_vars[incoming].append(count_var)
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outgoing_vars[outgoing].append(count_var)
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item_vars[item_index].append(count_var)
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item_coeffs[item_index].append(card)
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transition_vars.append(count_var)
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for state_index, state in enumerate(states):
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if state_index == 0:
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continue
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exit_var = model.NewIntVar(0, num_items, 'e%i' % state_index)
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outgoing_vars[state_index].append(exit_var)
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incoming_sink_vars.append(exit_var)
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price = price_usage(state, POSSIBLE_CAPACITIES)
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objective_vars.append(exit_var)
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objective_coeffs.append(price)
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# Flow conservation
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for state_index in range(1, len(states)):
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model.Add(
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sum(incoming_vars[state_index]) == sum(outgoing_vars[state_index]))
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# Flow going out of the source must go in the sink
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model.Add(sum(outgoing_vars[0]) == sum(incoming_sink_vars))
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# Items must be placed
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for item_index, size_and_count in enumerate(items):
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num_arcs = len(item_vars[item_index])
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model.Add(
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sum(item_vars[item_index][i] * item_coeffs[item_index][i]
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for i in range(num_arcs)) == size_and_count[1])
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# Objective is the sum of waste
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model.Minimize(
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sum(objective_vars[i] * objective_coeffs[i]
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for i in range(len(objective_vars))))
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# Output model proto to file.
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if output_proto_file:
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model.ExportToFile(output_proto_file)
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# Solve model.
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solver = cp_model.CpSolver()
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if params:
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text_format.Parse(params, solver.parameters)
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solver.parameters.log_search_progress = True
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solver.Solve(model)
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def solve_cutting_stock_with_arc_flow_and_mip():
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"""Solve the cutting stock with arc-flow and a MIP solver."""
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items = regroup_and_count(DESIRED_LENGTHS)
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print('Items:', items)
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num_items = len(DESIRED_LENGTHS)
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max_capacity = max(POSSIBLE_CAPACITIES)
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states, transitions = create_state_graph(items, max_capacity)
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print('Dynamic programming has generated', len(states), 'states and',
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len(transitions), 'transitions')
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incoming_vars = collections.defaultdict(list)
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outgoing_vars = collections.defaultdict(list)
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incoming_sink_vars = []
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item_vars = collections.defaultdict(list)
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item_coeffs = collections.defaultdict(list)
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start_time = time.time()
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model = mb.ModelBuilder()
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objective_vars = []
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objective_coeffs = []
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var_index = 0
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for outgoing, incoming, item_index, card in transitions:
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count = items[item_index][1]
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count_var = model.new_int_var(
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0, count, 'a%i_i%i_f%i_t%i_c%i' % (var_index, item_index, incoming,
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outgoing, card))
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var_index += 1
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incoming_vars[incoming].append(count_var)
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outgoing_vars[outgoing].append(count_var)
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item_vars[item_index].append(count_var)
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item_coeffs[item_index].append(card)
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for state_index, state in enumerate(states):
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if state_index == 0:
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continue
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exit_var = model.new_int_var(0, num_items, 'e%i' % state_index)
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outgoing_vars[state_index].append(exit_var)
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incoming_sink_vars.append(exit_var)
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price = price_usage(state, POSSIBLE_CAPACITIES)
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objective_vars.append(exit_var)
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objective_coeffs.append(price)
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# Flow conservation
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for state_index in range(1, len(states)):
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model.add(
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mb.LinearExpr.sum(incoming_vars[state_index]) == mb.LinearExpr.sum(
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outgoing_vars[state_index]))
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# Flow going out of the source must go in the sink
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model.add(
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mb.LinearExpr.sum(outgoing_vars[0]) == mb.LinearExpr.sum(
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incoming_sink_vars))
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# Items must be placed
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for item_index, size_and_count in enumerate(items):
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num_arcs = len(item_vars[item_index])
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model.add(
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mb.LinearExpr.sum([item_vars[item_index][i] * item_coeffs[item_index][i]
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for i in range(num_arcs)]) == size_and_count[1])
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# Objective is the sum of waste
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model.minimize(np.dot(objective_vars, objective_coeffs))
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solver = mb.ModelSolver('scip')
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solver.enable_output(True)
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status = solver.solve(model)
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### Output the solution.
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if status == mb.SolveStatus.OPTIMAL or status == mb.SolveStatus.FEASIBLE:
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print('Objective value = %f found in %.2f s' %
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(solver.objective_value, time.time() - start_time))
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else:
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print('No solution')
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def main(_):
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"""Main function"""
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if _SOLVER.value == 'sat':
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solve_cutting_stock_with_arc_flow_and_sat(_OUTPUT_PROTO.value,
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_PARAMS.value)
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else: # 'mip'
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solve_cutting_stock_with_arc_flow_and_mip()
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if __name__ == '__main__':
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app.run(main)
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