Quarkus Quick Start Guide
1. What you will build
You will build a REST application that optimizes a school timetable for students and teachers:
Your service will assign Lesson
instances to Timeslot
and Room
instances automatically
by using AI to adhere to hard and soft scheduling constraints, such as the following examples:
-
A room can have at most one lesson at the same time.
-
A teacher can teach at most one lesson at the same time.
-
A student can attend at most one lesson at the same time.
-
A teacher prefers to teach all lessons in the same room.
-
A teacher prefers to teach sequential lessons and dislikes gaps between lessons.
-
A student dislikes sequential lessons on the same subject.
Mathematically speaking, school timetabling is an NP-hard problem. This means it is difficult to scale. Simply brute force iterating through all possible combinations takes millions of years for a non-trivial dataset, even on a supercomputer. Luckily, AI constraint solvers such as Timefold Solver have advanced algorithms that deliver a near-optimal solution in a reasonable amount of time.
2. Solution source code
Follow the instructions in the next sections to create the application step by step (recommended).
Alternatively, you can also skip right to the completed example:
-
Clone the Git repository:
$ git clone https://github.com/TimefoldAI/timefold-quickstarts
or download an archive.
-
Find the solution in {quarkus-quickstart-url-quickstart-url}[the
java
directory] and run it (see its README file).
3. Prerequisites
To complete this guide, you need:
-
JDK 17+ with
JAVA_HOME
configured appropriately. For example with Sdkman:$ curl -s "https://get.sdkman.io" | bash $ sdk install java
-
Apache Maven 3.9.2+ or Gradle 7+
-
An IDE, such as IntelliJ IDEA, VSCode or Eclipse
4. The build file and the dependencies
Use code.quarkus.io to generate an application with the following extensions, for Maven or Gradle:
Clicking the link above will automatically select the dependencies for you on code.quarkus.io. |
-
RESTEasy JAX-RS (
quarkus-resteasy
) -
RESTEasy Jackson (
quarkus-resteasy-jackson
) -
Timefold Solver (
timefold-solver-quarkus
) -
Timefold Solver Jackson (
timefold-solver-quarkus-jackson
)
5. Model the domain objects
Your goal is to assign each lesson to a time slot and a room. You will create these classes:
5.1. Timeslot
The Timeslot
class represents a time interval when lessons are taught,
for example, Monday 10:30 - 11:30
or Tuesday 13:30 - 14:30
.
For simplicity’s sake, all time slots have the same duration
and there are no time slots during lunch or other breaks.
A time slot has no date, because a high school schedule just repeats every week. So there is no need for continuous planning.
-
Java
-
Kotlin
Create the src/main/java/org/acme/schooltimetabling/domain/Timeslot.java
class:
package org.acme.schooltimetabling.domain;
import java.time.DayOfWeek;
import java.time.LocalTime;
public class Timeslot {
private DayOfWeek dayOfWeek;
private LocalTime startTime;
private LocalTime endTime;
public Timeslot() {
}
public Timeslot(DayOfWeek dayOfWeek, LocalTime startTime, LocalTime endTime) {
this.dayOfWeek = dayOfWeek;
this.startTime = startTime;
this.endTime = endTime;
}
public DayOfWeek getDayOfWeek() {
return dayOfWeek;
}
public LocalTime getStartTime() {
return startTime;
}
public LocalTime getEndTime() {
return endTime;
}
@Override
public String toString() {
return dayOfWeek + " " + startTime;
}
}
Create the src/main/kotlin/org/acme/schooltimetabling/domain/Timeslot.kt
class:
package org.acme.schooltimetabling.domain
import java.time.DayOfWeek
import java.time.LocalTime
data class Timeslot(
val dayOfWeek: DayOfWeek,
val startTime: LocalTime,
val endTime: LocalTime) {
override fun toString(): String = "$dayOfWeek $startTime"
}
Because no Timeslot
instances change during solving, a Timeslot
is called a problem fact.
Such classes do not require any Timefold Solver specific annotations.
Notice the toString()
method keeps the output short,
so it is easier to read Timefold Solver’s DEBUG
or TRACE
log, as shown later.
5.2. Room
The Room
class represents a location where lessons are taught,
for example, Room A
or Room B
.
For simplicity’s sake, all rooms are without capacity limits
and they can accommodate all lessons.
-
Java
-
Kotlin
Create the src/main/java/org/acme/schooltimetabling/domain/Room.java
class:
package org.acme.schooltimetabling.domain;
public class Room {
private String name;
public Room() {
}
public Room(String name) {
this.name = name;
}
public String getName() {
return name;
}
@Override
public String toString() {
return name;
}
}
Create the src/main/kotlin/org/acme/schooltimetabling/domain/Room.kt
class:
package org.acme.schooltimetabling.domain
data class Room(
val name: String) {
override fun toString(): String = name
}
Room
instances do not change during solving, so Room
is also a problem fact.
5.3. Lesson
During a lesson, represented by the Lesson
class,
a teacher teaches a subject to a group of students,
for example, Math by A.Turing for 9th grade
or Chemistry by M.Curie for 10th grade
.
If a subject is taught multiple times per week by the same teacher to the same student group,
there are multiple Lesson
instances that are only distinguishable by id
.
For example, the 9th grade has six math lessons a week.
During solving, Timefold Solver changes the timeslot
and room
fields of the Lesson
class,
to assign each lesson to a time slot and a room.
Because Timefold Solver changes these fields, Lesson
is a planning entity:
Most of the fields in the previous diagram contain input data, except for the orange fields:
A lesson’s timeslot
and room
fields are unassigned (null
) in the input data
and assigned (not null
) in the output data.
Timefold Solver changes these fields during solving.
Such fields are called planning variables.
In order for Timefold Solver to recognize them,
both the timeslot
and room
fields require an @PlanningVariable
annotation.
Their containing class, Lesson
, requires an @PlanningEntity
annotation.
-
Java
-
Kotlin
Create the src/main/java/org/acme/schooltimetabling/domain/Lesson.java
class:
package org.acme.schooltimetabling.domain;
import ai.timefold.solver.core.api.domain.entity.PlanningEntity;
import ai.timefold.solver.core.api.domain.lookup.PlanningId;
import ai.timefold.solver.core.api.domain.variable.PlanningVariable;
@PlanningEntity
public class Lesson {
@PlanningId
private String id;
private String subject;
private String teacher;
private String studentGroup;
@PlanningVariable
private Timeslot timeslot;
@PlanningVariable
private Room room;
public Lesson() {
}
public Lesson(String id, String subject, String teacher, String studentGroup) {
this.id = id;
this.subject = subject;
this.teacher = teacher;
this.studentGroup = studentGroup;
}
public String getId() {
return id;
}
public String getSubject() {
return subject;
}
public String getTeacher() {
return teacher;
}
public String getStudentGroup() {
return studentGroup;
}
public Timeslot getTimeslot() {
return timeslot;
}
public void setTimeslot(Timeslot timeslot) {
this.timeslot = timeslot;
}
public Room getRoom() {
return room;
}
public void setRoom(Room room) {
this.room = room;
}
@Override
public String toString() {
return subject + "(" + id + ")";
}
}
Create the src/main/kotlin/org/acme/schooltimetabling/domain/Lesson.kt
class:
package org.acme.schooltimetabling.domain
import ai.timefold.solver.core.api.domain.entity.PlanningEntity
import ai.timefold.solver.core.api.domain.lookup.PlanningId
import ai.timefold.solver.core.api.domain.variable.PlanningVariable
@PlanningEntity
data class Lesson (
@PlanningId
val id: String,
val subject: String,
val teacher: String,
val studentGroup: String) {
@PlanningVariable
var timeslot: Timeslot? = null
@PlanningVariable
var room: Room? = null
// No-arg constructor required for Timefold
constructor() : this("0", "", "", "")
override fun toString(): String = "$subject($id)"
}
The Lesson
class has an @PlanningEntity
annotation,
so Timefold Solver knows that this class changes during solving
because it contains one or more planning variables.
The timeslot
field has an @PlanningVariable
annotation,
so Timefold Solver knows that it can change its value.
In order to find potential Timeslot
instances to assign to this field,
Timefold Solver uses the variable type to connect to a value range provider
that provides a List<Timeslot>
to pick from.
The room
field also has an @PlanningVariable
annotation, for the same reasons.
Determining the |
6. Define the constraints and calculate the score
A score represents the quality of a specific solution. The higher the better. Timefold Solver looks for the best solution, which is the solution with the highest score found in the available time. It might be the optimal solution.
Because this use case has hard and soft constraints,
use the HardSoftScore
class to represent the score:
-
Hard constraints must not be broken. For example: A room can have at most one lesson at the same time.
-
Soft constraints should not be broken. For example: A teacher prefers to teach in a single room.
Hard constraints are weighted against other hard constraints. Soft constraints are weighted too, against other soft constraints. Hard constraints always outweigh soft constraints, regardless of their respective weights.
To calculate the score, you could implement an EasyScoreCalculator
class:
-
Java
-
Kotlin
public class TimetableEasyScoreCalculator implements EasyScoreCalculator<Timetable, HardSoftScore> {
@Override
public HardSoftScore calculateScore(Timetable timetable) {
List<Lesson> lessons = timetable.getLessons();
int hardScore = 0;
for (Lesson a : lessons) {
for (Lesson b : lessons) {
if (a.getTimeslot() != null && a.getTimeslot().equals(b.getTimeslot())
&& a.getId() < b.getId()) {
// A room can accommodate at most one lesson at the same time.
if (a.getRoom() != null && a.getRoom().equals(b.getRoom())) {
hardScore--;
}
// A teacher can teach at most one lesson at the same time.
if (a.getTeacher().equals(b.getTeacher())) {
hardScore--;
}
// A student can attend at most one lesson at the same time.
if (a.getStudentGroup().equals(b.getStudentGroup())) {
hardScore--;
}
}
}
}
int softScore = 0;
// Soft constraints are only implemented in the timefold-quickstarts code
return HardSoftScore.of(hardScore, softScore);
}
}
class TimetableEasyScoreCalculator : EasyScoreCalculator<Timetable, HardSoftScore> {
override fun calculateScore(solution: Timetable): HardSoftScore {
val lessons = solution.lessons
var hardScore = 0
for (a in lessons) {
for (b in lessons) {
if (a.timeslot != null && a.timeslot == b.timeslot && a.id!! < b.id!!) {
// A room can accommodate at most one lesson at the same time.
if (a.room != null && a.room == b.room) {
hardScore--
}
// A teacher can teach at most one lesson at the same time.
if (a.teacher == b.teacher) {
hardScore--
}
// A student can attend at most one lesson at the same time.
if (a.studentGroup == b.studentGroup) {
hardScore--
}
}
}
}
val softScore = 0
// Soft constraints are only implemented in the timefold-quickstarts code
return HardSoftScore.of(hardScore, softScore)
}
}
Unfortunately that does not scale well, because it is non-incremental: every time a lesson is assigned to a different time slot or room, all lessons are re-evaluated to calculate the new score.
Instead, create a TimetableConstraintProvider
class
to perform incremental score calculation.
It uses Timefold Solver’s Constraint Streams API
which is inspired by Java Streams and SQL:
-
Java
-
Kotlin
Create a src/main/java/org/acme/schooltimetabling/solver/TimetableConstraintProvider.java
class:
package org.acme.schooltimetabling.solver;
import org.acme.schooltimetabling.domain.Lesson;
import ai.timefold.solver.core.api.score.buildin.hardsoft.HardSoftScore;
import ai.timefold.solver.core.api.score.stream.Constraint;
import ai.timefold.solver.core.api.score.stream.ConstraintFactory;
import ai.timefold.solver.core.api.score.stream.ConstraintProvider;
import ai.timefold.solver.core.api.score.stream.Joiners;
public class TimetableConstraintProvider implements ConstraintProvider {
@Override
public Constraint[] defineConstraints(ConstraintFactory constraintFactory) {
return new Constraint[] {
// Hard constraints
roomConflict(constraintFactory),
teacherConflict(constraintFactory),
studentGroupConflict(constraintFactory),
// Soft constraints are only implemented in the timefold-quickstarts code
};
}
Constraint roomConflict(ConstraintFactory constraintFactory) {
// A room can accommodate at most one lesson at the same time.
return constraintFactory
// Select each pair of 2 different lessons ...
.forEachUniquePair(Lesson.class,
// ... in the same timeslot ...
Joiners.equal(Lesson::getTimeslot),
// ... in the same room ...
Joiners.equal(Lesson::getRoom))
// ... and penalize each pair with a hard weight.
.penalize(HardSoftScore.ONE_HARD)
.asConstraint("Room conflict");
}
Constraint teacherConflict(ConstraintFactory constraintFactory) {
// A teacher can teach at most one lesson at the same time.
return constraintFactory
.forEachUniquePair(Lesson.class,
Joiners.equal(Lesson::getTimeslot),
Joiners.equal(Lesson::getTeacher))
.penalize(HardSoftScore.ONE_HARD)
.asConstraint("Teacher conflict");
}
Constraint studentGroupConflict(ConstraintFactory constraintFactory) {
// A student can attend at most one lesson at the same time.
return constraintFactory
.forEachUniquePair(Lesson.class,
Joiners.equal(Lesson::getTimeslot),
Joiners.equal(Lesson::getStudentGroup))
.penalize(HardSoftScore.ONE_HARD)
.asConstraint("Student group conflict");
}
}
Create a src/main/kotlin/org/acme/schooltimetabling/solver/TimetableConstraintProvider.kt
class:
package org.acme.kotlin.schooltimetabling.solver
import ai.timefold.solver.core.api.score.buildin.hardsoft.HardSoftScore
import ai.timefold.solver.core.api.score.stream.Constraint
import ai.timefold.solver.core.api.score.stream.ConstraintFactory
import ai.timefold.solver.core.api.score.stream.ConstraintProvider
import ai.timefold.solver.core.api.score.stream.Joiners
import org.acme.kotlin.schooltimetabling.domain.Lesson
import org.acme.kotlin.schooltimetabling.solver.justifications.*
import java.time.Duration
class TimeTableConstraintProvider : ConstraintProvider {
override fun defineConstraints(constraintFactory: ConstraintFactory): Array<Constraint> {
return arrayOf(
// Hard constraints
roomConflict(constraintFactory),
teacherConflict(constraintFactory),
studentGroupConflict(constraintFactory),
// Soft constraints
teacherRoomStability(constraintFactory),
teacherTimeEfficiency(constraintFactory),
studentGroupSubjectVariety(constraintFactory)
)
}
fun roomConflict(constraintFactory: ConstraintFactory): Constraint {
// A room can accommodate at most one lesson at the same time.
return constraintFactory
// Select each pair of 2 different lessons ...
.forEachUniquePair(
Lesson::class.java,
// ... in the same timeslot ...
Joiners.equal(Lesson::timeslot),
// ... in the same room ...
Joiners.equal(Lesson::room)
)
// ... and penalize each pair with a hard weight.
.penalize(HardSoftScore.ONE_HARD)
.justifyWith { lesson1: Lesson, lesson2: Lesson, _ ->
RoomConflictJustification(lesson1.room, lesson1,lesson2)}
.asConstraint("Room conflict")
}
fun teacherConflict(constraintFactory: ConstraintFactory): Constraint {
// A teacher can teach at most one lesson at the same time.
return constraintFactory
.forEachUniquePair(
Lesson::class.java,
Joiners.equal(Lesson::timeslot),
Joiners.equal(Lesson::teacher)
)
.penalize(HardSoftScore.ONE_HARD)
.justifyWith { lesson1: Lesson, lesson2: Lesson, _ ->
TeacherConflictJustification(lesson1.teacher, lesson1, lesson2)}
.asConstraint("Teacher conflict")
}
fun studentGroupConflict(constraintFactory: ConstraintFactory): Constraint {
// A student can attend at most one lesson at the same time.
return constraintFactory
.forEachUniquePair(
Lesson::class.java,
Joiners.equal(Lesson::timeslot),
Joiners.equal(Lesson::studentGroup)
)
.penalize(HardSoftScore.ONE_HARD)
.justifyWith { lesson1: Lesson, lesson2: Lesson, _ ->
StudentGroupConflictJustification(lesson1.studentGroup, lesson1, lesson2)}
.asConstraint("Student group conflict")
}
fun teacherRoomStability(constraintFactory: ConstraintFactory): Constraint {
// A teacher prefers to teach in a single room.
return constraintFactory
.forEachUniquePair(
Lesson::class.java,
Joiners.equal(Lesson::teacher)
)
.filter { lesson1: Lesson, lesson2: Lesson -> lesson1.room !== lesson2.room }
.penalize(HardSoftScore.ONE_SOFT)
.justifyWith { lesson1: Lesson, lesson2: Lesson, _ ->
TeacherRoomStabilityJustification(lesson1.teacher, lesson1, lesson2)}
.asConstraint("Teacher room stability")
}
fun teacherTimeEfficiency(constraintFactory: ConstraintFactory): Constraint {
// A teacher prefers to teach sequential lessons and dislikes gaps between lessons.
return constraintFactory
.forEach(Lesson::class.java)
.join(Lesson::class.java,
Joiners.equal(Lesson::teacher),
Joiners.equal { lesson: Lesson -> lesson.timeslot?.dayOfWeek })
.filter { lesson1: Lesson, lesson2: Lesson ->
val between = Duration.between(
lesson1.timeslot?.endTime,
lesson2.timeslot?.startTime
)
!between.isNegative && between <= Duration.ofMinutes(30)
}
.reward(HardSoftScore.ONE_SOFT)
.justifyWith{ lesson1: Lesson, lesson2: Lesson, _ ->
TeacherTimeEfficiencyJustification(lesson1.teacher, lesson1, lesson2)}
.asConstraint("Teacher time efficiency")
}
fun studentGroupSubjectVariety(constraintFactory: ConstraintFactory): Constraint {
// A student group dislikes sequential lessons on the same subject.
return constraintFactory
.forEach(Lesson::class.java)
.join(Lesson::class.java,
Joiners.equal(Lesson::subject),
Joiners.equal(Lesson::studentGroup),
Joiners.equal { lesson: Lesson -> lesson.timeslot?.dayOfWeek })
.filter { lesson1: Lesson, lesson2: Lesson ->
val between = Duration.between(
lesson1.timeslot?.endTime,
lesson2.timeslot?.startTime
)
!between.isNegative && between <= Duration.ofMinutes(30)
}
.penalize(HardSoftScore.ONE_SOFT)
.justifyWith { lesson1: Lesson, lesson2: Lesson, _ ->
StudentGroupSubjectVarietyJustification(lesson1.studentGroup, lesson1, lesson2)}
.asConstraint("Student group subject variety")
}
}
The ConstraintProvider
scales an order of magnitude better than the EasyScoreCalculator
: O(n) instead of O(n²).
7. Gather the domain objects in a planning solution
A Timetable
wraps all Timeslot
, Room
, and Lesson
instances of a single dataset.
Furthermore, because it contains all lessons, each with a specific planning variable state,
it is a planning solution and it has a score:
-
If lessons are still unassigned, then it is an uninitialized solution, for example, a solution with the score
-4init/0hard/0soft
. -
If it breaks hard constraints, then it is an infeasible solution, for example, a solution with the score
-2hard/-3soft
. -
If it adheres to all hard constraints, then it is a feasible solution, for example, a solution with the score
0hard/-7soft
.
-
Java
-
Kotlin
Create the src/main/java/org/acme/schooltimetabling/domain/Timetable.java
class:
package org.acme.schooltimetabling.domain;
import java.util.List;
import ai.timefold.solver.core.api.domain.solution.PlanningEntityCollectionProperty;
import ai.timefold.solver.core.api.domain.solution.PlanningScore;
import ai.timefold.solver.core.api.domain.solution.PlanningSolution;
import ai.timefold.solver.core.api.domain.solution.ProblemFactCollectionProperty;
import ai.timefold.solver.core.api.domain.valuerange.ValueRangeProvider;
import ai.timefold.solver.core.api.score.buildin.hardsoft.HardSoftScore;
@PlanningSolution
public class Timetable {
@ValueRangeProvider
@ProblemFactCollectionProperty
private List<Timeslot> timeslots;
@ValueRangeProvider
@ProblemFactCollectionProperty
private List<Room> rooms;
@PlanningEntityCollectionProperty
private List<Lesson> lessons;
@PlanningScore
private HardSoftScore score;
public Timetable() {
}
public Timetable(List<Timeslot> timeslots, List<Room> rooms, List<Lesson> lessons) {
this.timeslots = timeslots;
this.rooms = rooms;
this.lessons = lessons;
}
public List<Timeslot> getTimeslots() {
return timeslots;
}
public List<Room> getRooms() {
return rooms;
}
public List<Lesson> getLessons() {
return lessons;
}
public HardSoftScore getScore() {
return score;
}
}
Create the src/main/kotlin/org/acme/schooltimetabling/TimetableApp.kt
class:
package org.acme.schooltimetabling.domain
import ai.timefold.solver.core.api.domain.solution.PlanningEntityCollectionProperty
import ai.timefold.solver.core.api.domain.solution.PlanningScore
import ai.timefold.solver.core.api.domain.solution.PlanningSolution
import ai.timefold.solver.core.api.domain.solution.ProblemFactCollectionProperty
import ai.timefold.solver.core.api.domain.valuerange.ValueRangeProvider
import ai.timefold.solver.core.api.score.buildin.hardsoft.HardSoftScore
import ai.timefold.solver.core.api.solver.SolverStatus
@PlanningSolution
data class Timetable (
@ProblemFactCollectionProperty
@ValueRangeProvider
val timeslots: List<Timeslot>,
@ProblemFactCollectionProperty
@ValueRangeProvider
val rooms: List<Room>,
@PlanningEntityCollectionProperty
val lessons: List<Lesson>,
@PlanningScore
var score: HardSoftScore? = null) {
// No-arg constructor required for Timefold
constructor() : this(emptyList(), emptyList(), emptyList())
}
The Timetable
class has an @PlanningSolution
annotation,
so Timefold Solver knows that this class contains all of the input and output data.
Specifically, these classes are the input of the problem:
-
The
timeslots
field with all time slots-
This is a list of problem facts, because they do not change during solving.
-
-
The
rooms
field with all rooms-
This is a list of problem facts, because they do not change during solving.
-
-
The
lessons
field with all lessons-
This is a list of planning entities, because they change during solving.
-
Of each
Lesson
:-
The values of the
timeslot
androom
fields are typically stillnull
, so unassigned. They are planning variables. -
The other fields, such as
subject
,teacher
andstudentGroup
, are filled in. These fields are problem properties.
-
-
However, this class is also the output of the solution:
-
The
lessons
field for which eachLesson
instance has non-nulltimeslot
androom
fields after solving. -
The
score
field that represents the quality of the output solution, for example,0hard/-5soft
.
7.1. The value range providers
The timeslots
field is a value range provider.
It holds the Timeslot
instances which Timefold Solver can pick from to assign to the timeslot
field of Lesson
instances.
The timeslots
field has an @ValueRangeProvider
annotation to connect the @PlanningVariable
with the @ValueRangeProvider
,
by matching the type of the planning variable with the type returned by the value range provider.
Following the same logic, the rooms
field also has an @ValueRangeProvider
annotation.
7.2. The problem fact and planning entity properties
Furthermore, Timefold Solver needs to know which Lesson
instances it can change
as well as how to retrieve the Timeslot
and Room
instances used for score calculation
by your TimetableConstraintProvider
.
The timeslots
and rooms
fields have an @ProblemFactCollectionProperty
annotation,
so your TimetableConstraintProvider
can select from those instances.
The lessons
has an @PlanningEntityCollectionProperty
annotation,
so Timefold Solver can change them during solving
and your TimetableConstraintProvider
can select from those too.
8. Create the solver service
Now you are ready to put everything together and create a REST service.
But solving planning problems on REST threads causes HTTP timeout issues.
Therefore, the Quarkus extension injects a SolverManager
instance,
which runs solvers in a separate thread pool
and can solve multiple datasets in parallel.
-
Java
-
Kotlin
Create the src/main/java/org/acme/schooltimetabling/rest/TimetableResource.java
class:
package org.acme.schooltimetabling.rest;
import java.util.UUID;
import java.util.concurrent.ExecutionException;
import jakarta.inject.Inject;
import jakarta.ws.rs.POST;
import jakarta.ws.rs.Path;
import org.acme.schooltimetabling.domain.Timetable;
import ai.timefold.solver.core.api.solver.SolverJob;
import ai.timefold.solver.core.api.solver.SolverManager;
@Path("/timetables")
public class TimetableResource {
@Inject
SolverManager<Timetable, UUID> solverManager;
@POST
@Path("/solve")
public Timetable solve(Timetable problem) {
UUID problemId = UUID.randomUUID();
// Submit the problem to start solving
SolverJob<Timetable, UUID> solverJob = solverManager.solve(problemId, problem);
Timetable solution;
try {
// Wait until the solving ends
solution = solverJob.getFinalBestSolution();
} catch (InterruptedException | ExecutionException e) {
throw new IllegalStateException("Solving failed.", e);
}
return solution;
}
}
Create the src/main/kotlin/org/acme/schooltimetabling/rest/TimetableResource.kt
class:
package org.acme.schooltimetabling.rest
import ai.timefold.solver.core.api.score.analysis.ScoreAnalysis
import ai.timefold.solver.core.api.score.buildin.hardsoft.HardSoftScore
import ai.timefold.solver.core.api.solver.ScoreAnalysisFetchPolicy
import ai.timefold.solver.core.api.solver.SolutionManager
import ai.timefold.solver.core.api.solver.SolverManager
import jakarta.inject.Inject
import jakarta.ws.rs.Consumes
import jakarta.ws.rs.DELETE
import jakarta.ws.rs.GET
import jakarta.ws.rs.POST
import jakarta.ws.rs.PUT
import jakarta.ws.rs.Path
import jakarta.ws.rs.PathParam
import jakarta.ws.rs.Produces
import jakarta.ws.rs.QueryParam
import jakarta.ws.rs.core.MediaType
import jakarta.ws.rs.core.Response
import org.acme.schooltimetabling.domain.Timetable
import org.acme.schooltimetabling.rest.exception.ErrorInfo
import org.acme.schooltimetabling.rest.exception.TimetableSolverException
import org.slf4j.Logger
import org.slf4j.LoggerFactory
import java.util.*
@Path("timetables")
class TimetableResource {
@Inject
private final var solverManager: SolverManager<Timetable, String>?
@POST
@Consumes(
MediaType.APPLICATION_JSON
)
@Produces(MediaType.TEXT_PLAIN)
fun solve(problem: Timetable?): Timetable {
val problemId = UUID.randomUUID()
// Submit the problem to start solving
val solverJob = solverManager!!.solve(problemId, problem)
val solution: Timetable
try {
// Wait until the solving ends
solution = solverJob.finalBestSolution
} catch (e: InterruptedException) {
throw IllegalStateException("Solving failed.", e)
} catch (e: ExecutionException) {
throw IllegalStateException("Solving failed.", e)
}
return solution
}
}
For simplicity’s sake, this initial implementation waits for the solver to finish, which can still cause an HTTP timeout. The complete implementation avoids HTTP timeouts much more elegantly.
9. Set the termination time
Without a termination setting or a terminationEarly()
event, the solver runs forever.
To avoid that, limit the solving time to five seconds.
That is short enough to avoid the HTTP timeout.
Create the src/main/resources/application.properties
file:
# The solver runs only for 5 seconds to avoid a HTTP timeout in this simple implementation.
# It's recommended to run for at least 5 minutes ("5m") otherwise.
quarkus.timefold.solver.termination.spent-limit=5s
Timefold Solver returns the best solution found in the available termination time. Due to the nature of NP-hard problems, the best solution might not be optimal, especially for larger datasets. Increase the termination time to potentially find a better solution.
10. Run the application
First start the application in dev mode:
-
Maven
-
Gradle
$ mvn compile quarkus:dev
$ gradle --console=plain quarkusDev
10.1. Try the application
Now that the application is running, you can test the REST service.
You can use any REST client you wish.
The following example uses the Linux command curl
to send a POST request:
$ curl -i -X POST http://localhost:8080/timetables/solve -H "Content-Type:application/json" -d '{"timeslots":[{"dayOfWeek":"MONDAY","startTime":"08:30:00","endTime":"09:30:00"},{"dayOfWeek":"MONDAY","startTime":"09:30:00","endTime":"10:30:00"}],"rooms":[{"name":"Room A"},{"name":"Room B"}],"lessons":[{"id":1,"subject":"Math","teacher":"A. Turing","studentGroup":"9th grade"},{"id":2,"subject":"Chemistry","teacher":"M. Curie","studentGroup":"9th grade"},{"id":3,"subject":"French","teacher":"M. Curie","studentGroup":"10th grade"},{"id":4,"subject":"History","teacher":"I. Jones","studentGroup":"10th grade"}]}'
After about five seconds, according to the termination spent time defined in your application.properties
,
the service returns an output similar to the following example:
HTTP/1.1 200
Content-Type: application/json
...
{"timeslots":...,"rooms":...,"lessons":[{"id":1,"subject":"Math","teacher":"A. Turing","studentGroup":"9th grade","timeslot":{"dayOfWeek":"MONDAY","startTime":"08:30:00","endTime":"09:30:00"},"room":{"name":"Room A"}},{"id":2,"subject":"Chemistry","teacher":"M. Curie","studentGroup":"9th grade","timeslot":{"dayOfWeek":"MONDAY","startTime":"09:30:00","endTime":"10:30:00"},"room":{"name":"Room A"}},{"id":3,"subject":"French","teacher":"M. Curie","studentGroup":"10th grade","timeslot":{"dayOfWeek":"MONDAY","startTime":"08:30:00","endTime":"09:30:00"},"room":{"name":"Room B"}},{"id":4,"subject":"History","teacher":"I. Jones","studentGroup":"10th grade","timeslot":{"dayOfWeek":"MONDAY","startTime":"09:30:00","endTime":"10:30:00"},"room":{"name":"Room B"}}],"score":"0hard/0soft"}
Notice that your application assigned all four lessons to one of the two time slots and one of the two rooms. Also notice that it conforms to all hard constraints. For example, M. Curie’s two lessons are in different time slots.
On the server side, the info
log shows what Timefold Solver did in those five seconds:
... Solving started: time spent (33), best score (-8init/0hard/0soft), environment mode (REPRODUCIBLE), random (JDK with seed 0).
... Construction Heuristic phase (0) ended: time spent (73), best score (0hard/0soft), move evaluation speed (459/sec), step total (4).
... Local Search phase (1) ended: time spent (5000), best score (0hard/0soft), move evaluation speed (28949/sec), step total (28398).
... Solving ended: time spent (5000), best score (0hard/0soft), move evaluation speed (28524/sec), phase total (2), environment mode (REPRODUCIBLE).
The solver runs considerably slower in dev mode since the JVM C2 compiler is disabled to decrease live reload times. |
10.2. Test the application
A good application includes test coverage.
10.2.1. Test the constraints
To test each constraint in isolation, use a ConstraintVerifier
in unit tests.
It tests each constraint’s corner cases in isolation from the other tests,
which lowers maintenance when adding a new constraint with proper test coverage.
First update your build tool configuration:
-
Maven
-
Gradle
Add a timefold-solver-test
dependency in your pom.xml
:
<dependency>
<groupId>io.quarkus</groupId>
<artifactId>quarkus-junit5</artifactId>
<scope>test</scope>
</dependency>
<dependency>
<groupId>ai.timefold.solver</groupId>
<artifactId>timefold-solver-test</artifactId>
<scope>test</scope>
</dependency>
Add the subsequent dependencies to your build.gradle
:
testImplementation "io.quarkus:quarkus-junit5"
testImplementation "ai.timefold.solver:timefold-solver-test"
include::../shared/constrainttests.adoc
10.2.2. Test the solver
In a JUnit test, generate a test dataset and send it to the TimetableResource
to solve.
-
Java
-
Kotlin
Create the src/test/java/org/acme/schooltimetabling/rest/TimetableResourceTest.java
class:
package org.acme.schooltimetabling.rest;
import static io.restassured.RestAssured.get;
import static io.restassured.RestAssured.given;
import static org.junit.jupiter.api.Assertions.assertEquals;
import static org.junit.jupiter.api.Assertions.assertNotNull;
import static org.junit.jupiter.api.Assertions.assertTrue;
import jakarta.inject.Singleton;
import ai.timefold.solver.core.api.score.analysis.ScoreAnalysis;
import ai.timefold.solver.core.api.score.buildin.hardsoft.HardSoftScore;
import ai.timefold.solver.core.api.score.constraint.ConstraintRef;
import ai.timefold.solver.core.api.score.stream.ConstraintJustification;
import ai.timefold.solver.core.api.solver.SolverStatus;
import ai.timefold.solver.jackson.api.score.analysis.AbstractScoreAnalysisJacksonDeserializer;
import org.acme.schooltimetabling.domain.Timetable;
import org.junit.jupiter.api.Test;
import com.fasterxml.jackson.databind.ObjectMapper;
import com.fasterxml.jackson.databind.module.SimpleModule;
import io.quarkus.jackson.ObjectMapperCustomizer;
import io.quarkus.test.junit.QuarkusTest;
import io.restassured.http.ContentType;
@QuarkusTest
class TimetableResourceTest {
@Test
void solveDemoDataUntilFeasible() {
Timetable testTimetable = // setup test data
Timetable solution = given()
.contentType(ContentType.JSON)
.body(testTimetable)
.expect().contentType(ContentType.TEXT)
.when().post("/timetables")
.then()
.statusCode(200)
.extract()
.as(Timetable.class);
assertNotNull(solution.getLessons());
assertNotNull(solution.getTimeslots());
assertNotNull(solution.getRooms());
assertNotNull(solution.getLessons().get(0).getRoom());
assertNotNull(solution.getLessons().get(0).getTimeslot());
assertTrue(solution.getScore().isFeasible());
}
}
Create the src/test/kotlin/org/acme/schooltimetabling/rest/TimetableResourceTest.kt
class:
package org.acme.schooltimetabling.rest
import ai.timefold.solver.core.api.solver.SolverStatus
import io.quarkus.test.junit.QuarkusTest
import io.restassured.RestAssured.get
import io.restassured.RestAssured.given
import io.restassured.http.ContentType
import org.acme.schooltimetabling.domain.Room
import org.acme.schooltimetabling.domain.Timeslot
import org.acme.schooltimetabling.domain.Timetable
import org.junit.jupiter.api.Assertions.assertEquals
import org.junit.jupiter.api.Assertions.assertNotNull
import org.junit.jupiter.api.Assertions.assertTrue
import org.junit.jupiter.api.Test
import java.time.Duration
@QuarkusTest
class TimetableResourceTest {
@Test
fun solveDemoDataUntilFeasible() {
val testTimetable: Timetable = // setup test data
val solution: Timetable = given()
.contentType(ContentType.JSON)
.body(testTimetable)
.expect().contentType(ContentType.TEXT)
.`when`().post("/timetables")
.then()
.statusCode(200)
.extract()
.as(Timetable.class);
assertNotNull(solution.lessons)
assertNotNull(solution.timeslots)
assertNotNull(solution.rooms)
assertNotNull(solution.lessons.get(0).room)
assertNotNull(solution.lessons.get(0).timeslot)
assertTrue(solution.score?.isFeasible!!)
}
}
This test verifies that after solving, all lessons are assigned to a time slot and a room. It also verifies that it found a feasible solution (no hard constraints broken).
Add test properties to the src/main/resources/application.properties
file:
quarkus.timefold.solver.termination.spent-limit=5s
# Effectively disable spent-time termination in favor of the best-score-limit
%test.quarkus.timefold.solver.termination.spent-limit=1h
%test.quarkus.timefold.solver.termination.best-score-limit=0hard/*soft
Normally, the solver finds a feasible solution in less than 200 milliseconds.
Notice how the application.properties
overwrites the solver termination during tests
to terminate as soon as a feasible solution (0hard/*soft
) is found.
This avoids hard coding a solver time, because the unit test might run on arbitrary hardware.
This approach ensures that the test runs long enough to find a feasible solution, even on slow machines.
But it does not run a millisecond longer than it strictly must, even on fast machines.
10.3. Logging
When adding constraints in your ConstraintProvider
,
keep an eye on the move evaluation speed in the info
log,
after solving for the same amount of time, to assess the performance impact:
... Solving ended: ..., move evaluation speed (29455/sec), ...
To understand how Timefold Solver is solving your problem internally,
change the logging in the application.properties
file or with a -D
system property:
quarkus.log.category."ai.timefold.solver".level=debug
Use debug
logging to show every step:
... Solving started: time spent (67), best score (-20init/0hard/0soft), environment mode (REPRODUCIBLE), random (JDK with seed 0).
... CH step (0), time spent (128), score (-18init/0hard/0soft), selected move count (15), picked move ([Math(101) {null -> Room A}, Math(101) {null -> MONDAY 08:30}]).
... CH step (1), time spent (145), score (-16init/0hard/0soft), selected move count (15), picked move ([Physics(102) {null -> Room A}, Physics(102) {null -> MONDAY 09:30}]).
...
Use trace
logging to show every step and every move per step.
11. Summary
Congratulations! You have just developed a Quarkus application with Timefold!
Next Steps:
-
For a full implementation with a web UI and in-memory storage, check out the Quarkus quickstart source code.
-
Check out more information about Timefold’s integration with Quarkus in our Integration documentation.