dotnet: Remove reference to dotnet release command
- Currently not implemented... Add abseil patch - Add patches/absl-config.cmake Makefile: Add abseil-cpp on unix - Force abseil-cpp SHA1 to 45221cc note: Just before the PR #136 which break all CMake Makefile: Add abseil-cpp on windows - Force abseil-cpp SHA1 to 45221cc note: Just before the PR #136 which break all CMake CMake: Add abseil-cpp - Force abseil-cpp SHA1 to 45221cc note: Just before the PR #136 which break all CMake port to absl: C++ Part - Fix warning with the use of ABSL_MUST_USE_RESULT > The macro must appear as the very first part of a function declaration or definition: ... Note: past advice was to place the macro after the argument list. src: dependencies/sources/abseil-cpp-master/absl/base/attributes.h:418 - Rename enum after windows clash - Remove non compact table constraints - Change index type from int64 to int in routing library - Fix file_nonport compilation on windows - Fix another naming conflict with windows (NO_ERROR is a macro) - Cleanup hash containers; work on sat internals - Add optional_boolean sub-proto Sync cpp examples with internal code - reenable issue173 after reducing number of loops port to absl: Python Part - Add back cp_model.INT32_MIN|MAX for examples Update Python examples - Add random_tsp.py - Run words_square example - Run magic_square in python tests port to absl: Java Part - Fix compilation of the new routing parameters in java - Protect some code from SWIG parsing Update Java Examples port to absl: .Net Part Update .Net examples work on sat internals; Add C++ CP-SAT CpModelBuilder API; update sample code and recipes to use the new API; sync with internal code Remove VS 2015 in Appveyor-CI - abseil-cpp does not support VS 2015... improve tables upgrade C++ sat examples to use the new API; work on sat internals update license dates rewrite jobshop_ft06_distance.py to use the CP-SAT solver rename last example revert last commit more work on SAT internals fix
This commit is contained in:
@@ -13,12 +13,15 @@
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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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import com.google.ortools.constraintsolver.Assignment;
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import com.google.ortools.constraintsolver.IntVar;
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import com.google.ortools.constraintsolver.NodeEvaluator2;
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import com.google.ortools.constraintsolver.RoutingModel;
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import com.google.ortools.constraintsolver.FirstSolutionStrategy;
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import com.google.ortools.constraintsolver.IntIntToLong;
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import com.google.ortools.constraintsolver.IntToLong;
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import com.google.ortools.constraintsolver.IntVar;
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import com.google.ortools.constraintsolver.RoutingDimension;
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import com.google.ortools.constraintsolver.RoutingIndexManager;
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import com.google.ortools.constraintsolver.RoutingModel;
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import com.google.ortools.constraintsolver.RoutingSearchParameters;
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import com.google.ortools.constraintsolver.main;
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import java.util.ArrayList;
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import java.util.List;
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import java.util.Random;
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@@ -41,12 +44,11 @@ class Pair<K, V> {
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}
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/**
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* Sample showing how to model and solve a capacitated vehicle routing problem
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* with time windows using the swig-wrapped version of the vehicle routing
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* library in src/constraint_solver.
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* Sample showing how to model and solve a capacitated vehicle routing problem with time windows
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* using the swig-wrapped version of the vehicle routing library in src/constraint_solver.
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*/
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public class CapacitatedVehicleRoutingProblemWithTimeWindows {
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static {
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System.loadLibrary("jniortools");
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}
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@@ -60,8 +62,6 @@ public class CapacitatedVehicleRoutingProblemWithTimeWindows {
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// Quantity to be picked up for each order.
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private List<Integer> orderDemands = new ArrayList();
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// Time duration spent to deliver each order.
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private List<Integer> orderDurations = new ArrayList();
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// Time window in which each order must be performed.
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private List<Pair<Integer, Integer>> orderTimeWindows = new ArrayList();
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// Penalty cost "paid" for dropping an order.
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@@ -69,8 +69,6 @@ public class CapacitatedVehicleRoutingProblemWithTimeWindows {
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// Capacity of the vehicles.
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private int vehicleCapacity = 0;
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// Earliest time at which each vehicle must start its tour.
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private List<Integer> vehicleStartTime = new ArrayList();
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// Latest time at which each vehicle must end its tour.
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private List<Integer> vehicleEndTime = new ArrayList();
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// Cost per unit of distance of each vehicle.
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@@ -84,53 +82,76 @@ public class CapacitatedVehicleRoutingProblemWithTimeWindows {
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private final Random randomGenerator = new Random(0xBEEF);
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/**
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* Constructs a capacitated vehicle routing problem with time windows.
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* Creates a Manhattan Distance evaluator with 'costCoefficient'.
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*
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* @param manager Node Index Manager.
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* @param costCoefficient The coefficient to apply to the evaluator.
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*/
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private CapacitatedVehicleRoutingProblemWithTimeWindows() {}
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private IntIntToLong buildManhattanCallback(RoutingIndexManager manager, int costCoefficient) {
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return new IntIntToLong() {
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@Override
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public long run(int firstIndex, int secondIndex) {
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try {
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int firstNode = manager.indexToNode(firstIndex);
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int secondNode = manager.indexToNode(secondIndex);
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Pair<Integer, Integer> firstLocation = locations.get(firstNode);
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Pair<Integer, Integer> secondLocation = locations.get(secondNode);
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return (long) costCoefficient
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* (Math.abs(firstLocation.first - secondLocation.first)
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+ Math.abs(firstLocation.second - secondLocation.second));
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} catch (Throwable throwed) {
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logger.warning(throwed.getMessage());
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return 0;
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}
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}
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};
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}
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/**
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* Creates order data. Location of the order is random, as well as its
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* demand (quantity), time window and penalty.
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* Creates order data. Location of the order is random, as well as its demand (quantity), time
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* window and penalty.
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*
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* @param numberOfOrders number of orders to build.
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* @param xMax maximum x coordinate in which orders are located.
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* @param yMax maximum y coordinate in which orders are located.
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* @param demandMax maximum quantity of a demand.
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* @param timeWindowMin minimum starting time of the order time window.
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* @param timeWindowMax maximum starting time of the order time window.
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* @param timeWindowWidth duration of the order time window.
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* @param penaltyMin minimum pernalty cost if order is dropped.
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* @param penaltyMax maximum pernalty cost if order is dropped.
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*/
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private void buildOrders(int numberOfOrders, int xMax, int yMax, int demandMax, int timeWindowMin,
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int timeWindowMax, int timeWindowWidth, int penaltyMin, int penaltyMax) {
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private void buildOrders(
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int numberOfOrders,
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int xMax,
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int yMax,
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int demandMax,
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int timeWindowMax,
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int timeWindowWidth,
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int penaltyMin,
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int penaltyMax) {
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logger.info("Building orders.");
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for (int order = 0; order < numberOfOrders; ++order) {
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locations.add(Pair.of(randomGenerator.nextInt(xMax + 1), randomGenerator.nextInt(yMax + 1)));
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orderDemands.add(randomGenerator.nextInt(demandMax + 1));
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/** @todo 1) Specify deliver duration for each shipment*/
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orderDurations.add(2); // in minutes
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int timeWindowStart = randomGenerator.nextInt(timeWindowMax - timeWindowMin) + timeWindowMin;
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int timeWindowStart = randomGenerator.nextInt(timeWindowMax + 1);
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orderTimeWindows.add(Pair.of(timeWindowStart, timeWindowStart + timeWindowWidth));
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orderPenalties.add(randomGenerator.nextInt(penaltyMax - penaltyMin + 1) + penaltyMin);
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}
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}
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/**
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* Creates fleet data. Vehicle starting and ending locations are random, as
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* well as vehicle costs per distance unit.
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* Creates fleet data. Vehicle starting and ending locations are random, as well as vehicle costs
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* per distance unit.
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*
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* @param numberOfVehicles
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* @param xMax maximum x coordinate in which orders are located.
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* @param yMax maximum y coordinate in which orders are located.
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* @param startTime earliest start time of a tour of a vehicle.
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* @param endTime latest end time of a tour of a vehicle.
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* @param capacity capacity of a vehicle.
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* @param costCoefficientMax maximum cost per distance unit of a vehicle
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* (mimimum is 1),
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* @param costCoefficientMax maximum cost per distance unit of a vehicle (mimimum is 1),
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*/
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private void buildFleet(int numberOfVehicles, int xMax, int yMax, int startTime, int endTime,
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int capacity, int costCoefficientMax) {
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private void buildFleet(
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int numberOfVehicles, int xMax, int yMax, int endTime, int capacity, int costCoefficientMax) {
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logger.info("Building fleet.");
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vehicleCapacity = capacity;
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vehicleStarts = new int[numberOfVehicles];
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@@ -140,101 +161,75 @@ public class CapacitatedVehicleRoutingProblemWithTimeWindows {
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locations.add(Pair.of(randomGenerator.nextInt(xMax + 1), randomGenerator.nextInt(yMax + 1)));
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vehicleEnds[vehicle] = locations.size();
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locations.add(Pair.of(randomGenerator.nextInt(xMax + 1), randomGenerator.nextInt(yMax + 1)));
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vehicleStartTime.add(startTime);
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vehicleEndTime.add(endTime);
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vehicleCostCoefficients.add(randomGenerator.nextInt(costCoefficientMax) + 1);
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}
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}
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/**
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* Solves the current routing problem.
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*/
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/** Solves the current routing problem. */
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private void solve(final int numberOfOrders, final int numberOfVehicles) {
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logger.info(
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"Creating model with " + numberOfOrders + " orders and " + numberOfVehicles + " vehicles.");
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// Finalizing model
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final int numberOfLocations = locations.size();
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RoutingModel model =
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new RoutingModel(numberOfLocations, numberOfVehicles, vehicleStarts, vehicleEnds);
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RoutingIndexManager manager =
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new RoutingIndexManager(numberOfLocations, numberOfVehicles, vehicleStarts, vehicleEnds);
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RoutingModel model = new RoutingModel(manager);
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// Setting up dimensions
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final int bigNumber = 100000;
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NodeEvaluator2 timeCallback = new NodeEvaluator2() {
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@Override
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public long run(int firstIndex, int secondIndex) {
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try {
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Pair<Integer, Integer> firstLocation = locations.get(firstIndex);
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Pair<Integer, Integer> secondLocation = locations.get(secondIndex);
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Integer distance = 0;
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Integer duration = 0;
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distance = Math.abs(firstLocation.first - secondLocation.first)
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+ Math.abs(firstLocation.second - secondLocation.second);
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// Deal with Order duration shipment
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if (firstIndex < numberOfOrders) {
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// shipment duration
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duration += orderDurations.get(firstIndex);
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final IntIntToLong callback = buildManhattanCallback(manager, 1);
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final String timeStr = "time";
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model.addDimension(
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model.registerTransitCallback(callback), bigNumber, bigNumber, false, timeStr);
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RoutingDimension timeDimension = model.getMutableDimension(timeStr);
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IntToLong demandCallback =
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new IntToLong() {
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@Override
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public long run(int index) {
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try {
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int node = manager.indexToNode(index);
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if (node < numberOfOrders) {
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return orderDemands.get(node);
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}
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return 0;
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} catch (Throwable throwed) {
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logger.warning(throwed.getMessage());
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return 0;
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}
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}
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return distance + duration;
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} catch (Throwable throwed) {
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logger.warning(throwed.getMessage());
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return 0;
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}
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}
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};
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model.addDimension(timeCallback, bigNumber, bigNumber, false, "time");
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NodeEvaluator2 demandCallback = new NodeEvaluator2() {
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@Override
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public long run(int firstIndex, int secondIndex) {
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try {
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if (firstIndex < numberOfOrders) {
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return orderDemands.get(firstIndex);
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}
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return 0;
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} catch (Throwable throwed) {
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logger.warning(throwed.getMessage());
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return 0;
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}
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}
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};
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model.addDimension(demandCallback, 0, vehicleCapacity, true, "capacity");
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};
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final String capacityStr = "capacity";
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model.addDimension(
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model.registerUnaryTransitCallback(demandCallback), 0, vehicleCapacity, true, capacityStr);
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RoutingDimension capacityDimension = model.getMutableDimension(capacityStr);
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// Setting up vehicles
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IntIntToLong[] callbacks = new IntIntToLong[numberOfVehicles];
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for (int vehicle = 0; vehicle < numberOfVehicles; ++vehicle) {
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final int costCoefficient = vehicleCostCoefficients.get(vehicle);
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NodeEvaluator2 manhattanCostCallback = new NodeEvaluator2() {
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@Override
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public long run(int firstIndex, int secondIndex) {
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try {
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Pair<Integer, Integer> firstLocation = locations.get(firstIndex);
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Pair<Integer, Integer> secondLocation = locations.get(secondIndex);
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return costCoefficient
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* (Math.abs(firstLocation.first - secondLocation.first)
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+ Math.abs(firstLocation.second - secondLocation.second));
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} catch (Throwable throwed) {
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logger.warning(throwed.getMessage());
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return 0;
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}
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}
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};
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model.setArcCostEvaluatorOfVehicle(manhattanCostCallback, vehicle);
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model.cumulVar(model.start(vehicle), "time").setMin(vehicleStartTime.get(vehicle));
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model.cumulVar(model.end(vehicle), "time").setMax(vehicleEndTime.get(vehicle));
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callbacks[vehicle] = buildManhattanCallback(manager, costCoefficient);
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final int vehicleCost = model.registerTransitCallback(callbacks[vehicle]);
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model.setArcCostEvaluatorOfVehicle(vehicleCost, vehicle);
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timeDimension.cumulVar(model.end(vehicle)).setMax(vehicleEndTime.get(vehicle));
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}
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// Setting up orders
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for (int order = 0; order < numberOfOrders; ++order) {
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model.cumulVar(model.nodeToIndex(order), "time")
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timeDimension
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.cumulVar(order)
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.setRange(orderTimeWindows.get(order).first, orderTimeWindows.get(order).second);
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int[] orders = {order};
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model.addDisjunction(orders, orderPenalties.get(order));
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long[] orderIndices = {manager.nodeToIndex(order)};
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model.addDisjunction(orderIndices, orderPenalties.get(order));
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}
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// Solving
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RoutingSearchParameters parameters =
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RoutingSearchParameters.newBuilder()
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.mergeFrom(RoutingModel.defaultSearchParameters())
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.setFirstSolutionStrategy(FirstSolutionStrategy.Value.PATH_CHEAPEST_ARC)
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main.defaultRoutingSearchParameters()
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.toBuilder()
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.setFirstSolutionStrategy(FirstSolutionStrategy.Value.ALL_UNPERFORMED)
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.build();
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logger.info("Search");
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@@ -258,25 +253,38 @@ public class CapacitatedVehicleRoutingProblemWithTimeWindows {
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long order = model.start(vehicle);
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// Empty route has a minimum of two nodes: Start => End
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if (model.isEnd(solution.value(model.nextVar(order)))) {
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route += "/!\\Empty Route/!\\ ";
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}
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{
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route += "Empty";
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} else {
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for (; !model.isEnd(order); order = solution.value(model.nextVar(order))) {
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IntVar load = model.cumulVar(order, "capacity");
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IntVar time = model.cumulVar(order, "time");
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route += order + " Load(" + solution.value(load) + ") "
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+ "Time(" + solution.min(time) + ", " + solution.max(time) + ") -> ";
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IntVar load = capacityDimension.cumulVar(order);
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IntVar time = timeDimension.cumulVar(order);
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route +=
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order
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+ " Load("
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+ solution.value(load)
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+ ") "
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+ "Time("
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+ solution.min(time)
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+ ", "
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+ solution.max(time)
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+ ") -> ";
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}
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IntVar load = model.cumulVar(order, "capacity");
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IntVar time = model.cumulVar(order, "time");
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route += order + " Load(" + solution.value(load) + ") "
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+ "Time(" + solution.min(time) + ", " + solution.max(time) + ")";
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IntVar load = capacityDimension.cumulVar(order);
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IntVar time = timeDimension.cumulVar(order);
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route +=
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order
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+ " Load("
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+ solution.value(load)
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+ ") "
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+ "Time("
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+ solution.min(time)
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+ ", "
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+ solution.max(time)
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+ ")";
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}
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output += route + "\n";
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}
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logger.info(output);
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} else {
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logger.info("No solution Found !");
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}
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}
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@@ -286,24 +294,20 @@ public class CapacitatedVehicleRoutingProblemWithTimeWindows {
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final int xMax = 20;
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final int yMax = 20;
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final int demandMax = 3;
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final int timeWindowMin = 8 * 60;
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final int timeWindowMax = 17 * 60;
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final int timeWindowMax = 24 * 60;
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final int timeWindowWidth = 4 * 60;
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final int penaltyMin = 50;
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final int penaltyMax = 100;
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/** @todo Specify vehicle start time*/
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final int startTime = 8 * 60;
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/** @todo Specify vehicle end time*/
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final int endTime = 17 * 60;
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final int endTime = 24 * 60;
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final int costCoefficientMax = 3;
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final int orders = 100;
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final int vehicles = 20;
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final int capacity = 50;
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problem.buildOrders(orders, xMax, yMax, demandMax, timeWindowMin, timeWindowMax,
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timeWindowWidth, penaltyMin, penaltyMax);
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problem.buildFleet(vehicles, xMax, yMax, startTime, endTime, capacity, costCoefficientMax);
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problem.buildOrders(
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orders, xMax, yMax, demandMax, timeWindowMax, timeWindowWidth, penaltyMin, penaltyMax);
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problem.buildFleet(vehicles, xMax, yMax, endTime, capacity, costCoefficientMax);
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problem.solve(orders, vehicles);
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}
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}
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