Fit the bag of routes with bag of rooms. - algorithm

I came up with the idea to exercise algorithmics when I received interesting task to do.
Namely, my university organizes "open days" and they want to guide the students with few different routes (for exmple 10 routes), so that all rooms, where are some exhibitions that took different time, were fit effectively to this routes. Important is that, that the rooms has limited size and different times.
Do you have any idea for effective algorithm? Or only greedy algo is possible here?

Related

What algorithm do food delivery apps use to group nearby orders?

I've noticed on food delivery apps it says something like 'orders with nearby collection and drop off points are grouped together for efficiency'. I have a similar problem where delivery jobs can come in real time or pre booked, and the algorithm needs to group jobs to get them done faster. I have data on distance between locations and how jobs are grouped manually.
I was wondering what kind of algorithms these big companies use (here its grab, foodpanda, deliveroo etc) to group orders. Is it like a secret?
Also, I was told this algorithm has to have AI in it because its a buzzword that clients love. I'm scratching my head trying to figure out how to incorporate that. e.g. use supervised learning and treat it like a classification problem on which person to choose for each job, based on distance or something?? The 'label' would be data on how humans grouped jobs, which isn't really optimal and the client wants an improvement from that as well.
My question is if these commercial algorithms out there for grouping food orders use AI, if its appropriate to use AI and how, and in general any insight into what kind of algorithms they use. Thanks in advance.

Divide a group of people into teams with constraints

So I want to write a small program that would be able to take a group of people (100-200) and divide them into several equal groups (10-15) with constraints.
Each person has a city they came from (usually around 8-12 different cities total).
Each person was in a group of people before this new division (10-20 different groups).
Thats it for the example.
Now I want to divide those people in different group such that we strive to have same number of people from different cities in each team (so not all new yorkes are in the same team etc) and strive that people who have been in the same team before wont team up again.
Cant find an algorithm that can help me.
There is an np-complete feeling about finding an absolute best answer. But you just want a pretty good answer, pretty fast, it isn't hard to come up with a heuristic.
Set up your empty teams. Decide on the maximum team size. Sort people by the number of other people to avoid (same city or past same team) descending. Put each person in the non-full team with the least other people you are trying to avoid, breaking ties for the team with smaller people, and randomly breaking any remaining ties.
This is not guaranteed to produce optimal results. But it is simple and will produce pretty good ones.

Algorithm for preference based grouping

I am looking to figure out a way to sort people into classes by preference.
For example, say there are 100 students that are each going to be assigned one of five classes:
Science - 40 seats
Math - 15 seats
History - 15 seats
Computers - 20 seats
Writing - 10 seats
Each student has three preferred classes that are ordered by preference. What is the best way to approach dividing up the students so that as many people get their first and second choice classes as possible, while at the same time making sure that no class has too many students for the room.
I've thought about approaching it by the following method:
Group all students by their first choice class
See which classes have too many students and which have too few
Check to see if any students in the overbooked classes have second choice classes which are underbooked
Move those students accordingly
Repeat 2-4 with 3rd choice classes
While I feel like this is a reasonable implementation, I am wondering if there are any other algorithms that solve this problem in a better way. I have tried searching all over, but I cannot find anything that would solve this kind of problem.
From your description, this sounds very much like one of the variations of the Stable Marriage Problem
Check the Wiki link and you will see a description of the Gale-Shapley Algorithm, which is a good solution.

how to categorize but don't use Classification or Clustering algorithms?

I have a crawler program that stores sport data from 7 difference news agencies every day. it stores about 1200 sport news every day.
I want to categorize news of last two days into sub-categories. So every two days I have about 2400 news that are exactly for these days and many of their topics are talking exactly about the same event.
for example:
70 news are talking about 500 miles racing of Brad Keselowski.
120 news are talking about US swimmer Nyad that begins swimming.
28 new are talking about the match between Man United and Man City.
. . .
In other words, I want to make something like Google News.
The problem is that this situation is not a classification problem, because I don't have special classes. for example, my classes are not swimming, golf, football, etc. my classes are a special events in every field that happened in these two years. So I cannot use classification algorithms such as Naive Bayes.
On the other hand, my problem is not solving with clustering algorithms too. Because I don't want to force them to put into n clusters. Maybe one of the news doesn't have any similar news or maybe in one pack of two days, there are 12 different stories, but in other two days, there are 30 different issues. So I cannot use clustering algorithms such as "Single Link( Maximum Similarity)", "Complete Link( Minimum Similarity)", "Maximum Weighted Matching" or "Group Average( Average Intra Similarity)".
I have some ideas myself to do this, for example, each two news that have 10 common words, should be in the same class. But if we don't consider some parameters such as length of documents, influence of common and rare words and some other things, this will not work well.
I have read this paper, but it was not my answer.
Is there any known algorithm to solve this problem?
The problem strikes me as a clustering problem with an unknown quality measure for the clusters. That points to an unsupervised method, which is ultimately based on detecting correlations using redundancy in the data. Perhaps something like principal component analysis or latent semantic analysis could be useful. The different dimensions (principal components or singular vectors) would indicate distinct major themes, with the terms corresponding to the vector components hopefully being the words appearing in the description. One drawback is that there's no guarantee that the strongest correlations would lead easily to a sensible description.
Take a look at "topic models" and "Latent Dirichlet Allocation". These are popular and you'll find code in a variety of languages.
You might use hierarchical clustering algorithms to investigate relationships between your items - the closest items (news with almost the same description) would be in the same clusters, and the closest clusters (groups of similar news) would be in the same super-cluster etc.
Also, there is pretty nice and fast algorithm called CLOPE - http://www.google.com.ua/url?sa=t&source=web&cd=11&sqi=2&ved=0CF0QFjAK&url=http%3A%2F%2Fciteseerx.ist.psu.edu%2Fviewdoc%2Fdownload%3Fdoi%3D10.1.1.13.7142%26rep%3Drep1%26type%3Dpdf&rct=j&q=CLOPE&ei=gvo_Tsi4AsKa-gas-uCkAw&usg=AFQjCNGcR9sFqhsEkAJowEjIGbDBwSjeXw&cad=rja
There are many document clustering algorithms out there. Take a look at "Hierarchical document clustering using frequent itemsets", for example, and see if that is similar to what you want. If you're programming in Java, you may get some mileage out of the S-space package, which includes algorithms for latent semantic analysis (LSA) among others.

Algorithm for creating a school timetable

I've been wondering if there are known solutions for algorithm of creating a school timetable. Basically, it's about optimizing "hour-dispersion" (both in teachers and classes case) for given class-subject-teacher associations. We can assume that we have sets of classes, lesson subjects and teachers associated with each other at the input and that timetable should fit between 8AM and 4PM.
I guess that there is probably no accurate algorithm for that, but maybe someone knows a good approximation or hints for developing it.
This problem is NP-Complete!
In a nutshell one needs to explore all possible combinations to find the list of acceptable solutions. Because of the variations in the circumstances in which the problem appears at various schools (for example: Are there constraints with regards to classrooms?, Are some of the classes split in sub-groups some of the time?, Is this a weekly schedule? etc.) there isn't a well known problem class which corresponds to all the scheduling problems. Maybe, the Knapsack problem has many elements of similarity with these problems at large.
A confirmation that this is both a hard problem and one for which people perennially seek a solution, is to check this (long) list of (mostly commercial) software scheduling tools
Because of the big number of variables involved, the biggest source of which are, typically, the faculty member's desires ;-)..., it is typically impractical to consider enumerating all possible combinations. Instead we need to choose an approach which visits a subset of the problem/solution spaces.
- Genetic Algorithms, cited in another answer is (or, IMHO, seems) well equipped to perform this kind of semi-guided search (The problem being to find a good evaluation function for the candidates to be kept for the next generation)
- Graph Rewriting approaches are also of use with this type of combinatorial optimization problems.
Rather than focusing on particular implementations of an automatic schedule generator program, I'd like to suggest a few strategies which can be applied, at the level of the definition of the problem.
The general rationale is that in most real world scheduling problems, some compromises will be required, not all constraints, expressed and implied: will be satisfied fully. Therefore we help ourselves by:
Defining and ranking all known constraints
Reducing the problem space, by manually, providing a set of additional constraints.This may seem counter-intuitive but for example by providing an initial, partially filled schedule (say roughly 30% of the time-slots), in a way that fully satisfies all constraints, and by considering this partial schedule immutable, we significantly reduce the time/space needed to produce candidate solutions. Another way additional constraints help is for example "artificially" adding a constraint which prevent teaching some subjects on some days of the week (if this is a weekly schedule...); this type of constraints results in reducing the problem/solution spaces, without, typically, excluding a significant number of good candidates.
Ensuring that some of the constraints of the problem can be quickly computed. This is often associated with the choice of data model used to represent the problem; the idea is to be able to quickly opt-for (or prune-out) some of the options.
Redefining the problem and allowing some of the constraints to be broken, a few times, (typically towards the end nodes of the graph). The idea here is to either remove some of constraints for filling-in the last few slots in the schedule, or to have the automatic schedule generator program stop shy of completing the whole schedule, instead providing us with a list of a dozen or so plausible candidates. A human is often in a better position to complete the puzzle, as indicated, possibly breaking a few of the contraints, using information which is not typically shared with the automated logic (eg "No mathematics in the afternoon" rule can be broken on occasion for the "advanced math and physics" class; or "It is better to break one of Mr Jones requirements than one of Ms Smith ... ;-) )
In proof-reading this answer , I realize it is quite shy of providing a definite response, but it none the less full of practical suggestions. I hope this help, with what is, after all, a "hard problem".
It's a mess. a royal mess. To add to the answers, already very complete, I want to point out my family experience. My mother was a teacher and used to be involved in the process.
Turns out that having a computer to do so is not only difficult to code per-se, it is also difficult because there are conditions that are difficult to specify to a pre-baked computer program. Examples:
a teacher teaches both at your school and at another institute. Clearly, if he ends the lesson there at 10.30, he cannot start at your premises at 10.30, because he needs some time to commute between the institutes.
two teachers are married. In general, it's considered good practice not to have two married teachers on the same class. These two teachers must therefore have two different classes
two teachers are married, and their child attends the same school. Again, you have to prevent the two teachers to teach in the specific class where their child is.
the school has separate facilities, like one day the class is in one institute, and another day the class is in another.
the school has shared laboratories, but these laboratories are available only on certain weekdays (for security reasons, for example, where additional personnel is required).
some teachers have preferences for the free day: some prefer on Monday, some on Friday, some on Wednesday. Some prefer to come early in the morning, some prefer to come later.
you should not have situations where you have a lesson of say, history at the first hour, then three hours of math, then another hour of history. It does not make sense for the students, nor for the teacher.
you should spread the arguments evenly. It does not make sense to have the first days in the week only math, and then the rest of the week only literature.
you should give some teachers two consecutive hours to do evaluation tests.
As you can see, the problem is not NP-complete, it's NP-insane.
So what they do is that they have a large table with small plastic insets, and they move the insets around until a satisfying result is obtained. They never start from scratch: they normally start from the previous year timetable and make adjustments.
The International Timetabling Competition 2007 had a lesson scheduling track and exam scheduling track. Many researchers participated in that competition. Lots of heuristics and metaheuristics were tried, but in the end the local search metaheuristics (such as Tabu Search and Simulated Annealing) clearly beat other algorithms (such as genetic algorithms).
Take a look at the 2 open source frameworks used by some of the finalists:
JBoss OptaPlanner (Java, open source)
Unitime (Java, open source) - more for universities
One of my half-term assignments was an genetic-algorithm school table generation.
Whole table is one "organism". There were some changes and caveats to the generic genetic algorithms approach:
Rules were made for "illegal tables": two classes in the same classroom, one teacher teaching two groups at the same time etc. These mutations were deemed lethal immediately and a new "organism" was sprouted in place of the "deceased" immediately. The initial one was generated by a series of random tries to get a legal (if senseless) one. Lethal mutation wasn't counted towards count of mutations in iteration.
"Exchange" mutations were much more common than "Modify" mutations. Changes were only between parts of the gene that made sense - no substituting a teacher with a classroom.
Small bonuses were assigned for bundling certain 2 hours together, for assigning same generic classroom in sequence for the same group, for keeping teacher's work hours and class' load continuous. Moderate bonuses were assigned for giving correct classrooms for given subject, keeping class hours within bonds (morning or afternoon), and such. Big bonuses were for assigning correct number of given subject, given workload for a teacher etc.
Teachers could create their workload schedules of "want to work then", "okay to work then", "doesn't like to work then", "can't work then", with proper weights assigned. Whole 24h were legal work hours except night time was very undesired.
The weight function... oh yeah. The weight function was huge, monstrous product (as in multiplication) of weights assigned to selected features and properties. It was extremely steep, one property easily able to change it by an order of magnitude up or down - and there were hundreds or thousands of properties in one organism. This resulted in absolutely HUGE numbers as the weights, and as a direct result, need to use a bignum library (gmp) to perform the calculations. For a small testcase of some 10 groups, 10 teachers and 10 classrooms, the initial set started with note of 10^-200something and finished with 10^+300something. It was totally inefficient when it was more flat. Also, the values grew a lot wider distance with bigger "schools".
Computation time wise, there was little difference between a small population (100) over a long time and a big population (10k+) over less generations. The computation over the same time produced about the same quality.
The calculation (on some 1GHz CPU) would take some 1h to stabilize near 10^+300, generating schedules that looked quite nice, for said 10x10x10 test case.
The problem is easily paralellizable by providing networking facility that would exchange best specimens between computers running the computation.
The resulting program never saw daylight outside getting me a good grade for the semester. It showed some promise but I never got enough motivation to add any GUI and make it usable to general public.
This problem is tougher than it seems.
As others have alluded to, this is a NP-complete problem, but let's analyse what that means.
Basically, it means you have to look at all possible combinations.
But "look at" doesn't tell you much what you need to do.
Generating all possible combinations is easy. It might produce a huge amount of data, but you shouldn't have much problems understanding the concepts of this part of the problem.
The second problem is the one of judging whether a given possible combination is good, bad, or better than the previous "good" solution.
For this you need more than just "is it a possible solution".
For instance, is the same teacher working 5 days a week for X weeks straight? Even if that is a working solution, it might not be a better solution than alternating between two people so that each teacher does one week each. Oh, you didn't think about that? Remember, this is people you're dealing with, not just a resource allocation problem.
Even if one teacher could work full-time for 16 weeks straight, that might be a sub-optimal solution compared to a solution where you try to alternate between teachers, and this kind of balancing is very hard to build into software.
To summarize, producing a good solution to this problem will be worth a lot, to many many people. Hence, it's not an easy problem to break down and solve. Be prepared to stake out some goals that aren't 100% and calling them "good enough".
My timetabling algorithm, implemented in FET (Free Timetabling Software, http://lalescu.ro/liviu/fet/ , a successful application):
The algorithm is heuristic. I named it "recursive swapping".
Input: a set of activities A_1...A_n and the constraints.
Output: a set of times TA_1...TA_n (the time slot of each activity. Rooms are excluded here, for simplicity). The algorithm must put each activity at a time slot, respecting constraints. Each TA_i is between 0 (T_1) and max_time_slots-1 (T_m).
Constraints:
C1) Basic: a list of pairs of activities which cannot be simultaneous (for instance, A_1 and A_2, because they have the same teacher or the same students);
C2) Lots of other constraints (excluded here, for simplicity).
The timetabling algorithm (which I named "recursive swapping"):
Sort activities, most difficult first. Not critical step, but speeds up the algorithm maybe 10 times or more.
Try to place each activity (A_i) in an allowed time slot, following the above order, one at a time. Search for an available slot (T_j) for A_i, in which this activity can be placed respecting the constraints. If more slots are available, choose a random one. If none is available, do recursive swapping:
a. For each time slot T_j, consider what happens if you put A_i into T_j. There will be a list of other activities which don't agree with this move (for instance, activity A_k is on the same slot T_j and has the same teacher or same students as A_i). Keep a list of conflicting activities for each time slot T_j.
b. Choose a slot (T_j) with lowest number of conflicting activities. Say the list of activities in this slot contains 3 activities: A_p, A_q, A_r.
c. Place A_i at T_j and make A_p, A_q, A_r unallocated.
d. Recursively try to place A_p, A_q, A_r (if the level of recursion is not too large, say 14, and if the total number of recursive calls counted since step 2) on A_i began is not too large, say 2*n), as in step 2).
e. If successfully placed A_p, A_q, A_r, return with success, otherwise try other time slots (go to step 2 b) and choose the next best time slot).
f. If all (or a reasonable number of) time slots were tried unsuccessfully, return without success.
g. If we are at level 0, and we had no success in placing A_i, place it like in steps 2 b) and 2 c), but without recursion. We have now 3 - 1 = 2 more activities to place. Go to step 2) (some methods to avoid cycling are used here).
UPDATE: from comments ... should have heuristics too!
I'd go with Prolog ... then use Ruby or Perl or something to cleanup your solution into a prettier form.
teaches(Jill,math).
teaches(Joe,history).
involves(MA101,math).
involves(SS104,history).
myHeuristic(D,A,B) :- [test_case]->D='<';D='>'.
createSchedule :- findall(Class,involves(Class,Subject),Classes),
predsort(myHeuristic,Classes,ClassesNew),
createSchedule(ClassesNew,[]).
createSchedule(Classes,Scheduled) :- [the actual recursive algorithm].
I am (still) in the process of doing something similar to this problem but using the same path as I just mentioned. Prolog (as a functional language) really makes solving NP-Hard problems easier.
Genetic algorithms are often used for such scheduling.
Found this example (Making Class Schedule Using Genetic Algorithm) which matches your requirement pretty well.
Here are a few links I found:
School timetable - Lists some problems involved
A Hybrid Genetic Algorithm for School Timetabling
Scheduling Utilities and Tools
This paper describes the school timetable problem and their approach to the algorithm pretty well: "The Development of SYLLABUS—An Interactive, Constraint-Based Scheduler for Schools and Colleges."[PDF]
The author informs me the SYLLABUS software is still being used/developed here: http://www.scientia.com/uk/
I work on a widely-used scheduling engine which does exactly this. Yes, it is NP-Complete; the best approaches seek to approximate an optimal solution. And, of course there are a lot of different ways to say which one is the "best" solution - is it more important that your teachers are happy with their schedules, or that students get into all their classes, for instance?
The absolute most important question you need to resolve early on is what makes one way of scheduling this system better than another? That is, if I have a schedule with Mrs Jones teaching Math at 8 and Mr Smith teaching Math at 9, is that better or worse than one with both of them teaching Math at 10? Is it better or worse than one with Mrs Jones teaching at 8 and Mr Jones teaching at 2? Why?
The main advice I'd give here is to divide the problem up as much as possible - maybe course by course, maybe teacher by teacher, maybe room by room - and work on solving the sub-problem first. There you should end up with multiple solutions to choose from, and need to pick one as the most likely optimal. Then, work on making the "earlier" sub-problems take into account the needs of later sub-problems in scoring their potential solutions. Then, maybe work on how to get yourself out of painted-into-the-corner situations (assuming you can't anticipate those situations in earlier sub-problems) when you get to a "no valid solutions" state.
A local-search optimization pass is often used to "polish" the end answer for better results.
Note that typically we are dealing with highly resource-constrained systems in school scheduling. Schools don't go through the year with a lot of empty rooms or teachers sitting in the lounge 75% of the day. Approaches which work best in solution-rich environments aren't necessarily applicable in school scheduling.
Generally, constraint programming is a good approach to this type of scheduling problem. A search on "constraint programming" and scheduling or "constraint based scheduling" both within stack overflow and on Google will generate some good references. It's not impossible - it's just a little hard to think about when using traditional optimization methods like linear or integer optimization. One output would be - does a schedule exist that satisfies all the requirements? That, in itself, is obviously helpful.
Good luck !
I have designed commercial algorithms for both class timetabling and examination timetabling. For the first I used integer programming; for the second a heuristic based on maximizing an objective function by choosing slot swaps, very similar to the original manual process that had been evolved. They main things in getting such solutions accepted are the ability to represent all the real-world constraints; and for human timetablers to not be able to see ways to improve the solution. In the end the algorithmic part was quite straightforward and easy to implement compared with the preparation of the databases, the user interface, ability to report on statistics like room utilization, user education and so on.
You can takle it with genetic algorithms, yes. But you shouldn't :). It can be too slow and parameter tuning can be too timeconsuming etc.
There are successful other approaches. All implemented in open source projects:
Constraint based approach
Implemented in UniTime (not really for schools)
You could also go further and use Integer programming. Successfully done at Udine university and also at University Bayreuth (I was involved there) using the commercial software (ILOG CPLEX)
Rule based approach with heuristisc - See Drools planner
Different heuristics - FET and my own
See here for a timetabling software list
I think you should use genetic algorithm because:
It is best suited for large problem instances.
It yields reduced time complexity on the price of inaccurate answer(Not the ultimate best)
You can specify constraints & preferences easily by adjusting fitness punishments for not met ones.
You can specify time limit for program execution.
The quality of solution depends on how much time you intend to spend solving the program..
Genetic Algorithms Definition
Genetic Algorithms Tutorial
Class scheduling project with GA
Also take a look at :a similar question and another one
This problem is MASSIVE where I work - imagine 1800 subjects/modules, and 350 000 students, each doing 5 to 10 modules, and you want to build an exam in 10 weeks, where papers are 1 hour to 3 days long... one plus point - all exams are online, but bad again, cannot exceed the system's load of max 5k concurrent. So yes we are doing this now in cloud on scaling servers.
The "solution" we used was simply to order modules on how many other modules they "clash" with descending (where a student does both), and to "backpack" them, allowing for these long papers to actually overlap, else it simply cannot be done.
So when things get too large, I found this "heuristic" to be practical... at least.
I don't know any one will agree with this code but i developed this code with the help of my own algorithm and is working for me in ruby.Hope it will help them who are searching for it
in the following code the periodflag ,dayflag subjectflag and the teacherflag are the hash with the corresponding id and the flag value which is Boolean.
Any issue contact me.......(-_-)
periodflag.each do |k2,v2|
if(TimetableDefinition.find(k2).period.to_i != 0)
subjectflag.each do |k3,v3|
if (v3 == 0)
if(getflag_period(periodflag,k2))
#teachers=EmployeesSubject.where(subject_name: #subjects.find(k3).name, division_id: division.id).pluck(:employee_id)
#teacherlists=Employee.find(#teachers)
teacherflag=Hash[teacher_flag(#teacherlists,teacherflag,flag).to_a.shuffle]
teacherflag.each do |k4,v4|
if(v4 == 0)
if(getflag_subject(subjectflag,k3))
subjectperiod=TimetableAssign.where("timetable_definition_id = ? AND subject_id = ?",k2,k3)
if subjectperiod.blank?
issubjectpresent=TimetableAssign.where("section_id = ? AND subject_id = ?",section.id,k3)
if issubjectpresent.blank?
isteacherpresent=TimetableAssign.where("section_id = ? AND employee_id = ?",section.id,k4)
if isteacherpresent.blank?
#finaltt=TimetableAssign.new
#finaltt.timetable_struct_id=#timetable_struct.id
#finaltt.employee_id=k4
#finaltt.section_id=section.id
#finaltt.standard_id=standard.id
#finaltt.division_id=division.id
#finaltt.subject_id=k3
#finaltt.timetable_definition_id=k2
#finaltt.timetable_day_id=k1
set_school_id(#finaltt,current_user)
if(#finaltt.save)
setflag_sub(subjectflag,k3,1)
setflag_period(periodflag,k2,1)
setflag_teacher(teacherflag,k4,1)
end
end
else
#subjectdetail=TimetableAssign.find_by_section_id_and_subject_id(#section.id,k3)
#finaltt=TimetableAssign.new
#finaltt.timetable_struct_id=#subjectdetail.timetable_struct_id
#finaltt.employee_id=#subjectdetail.employee_id
#finaltt.section_id=section.id
#finaltt.standard_id=standard.id
#finaltt.division_id=division.id
#finaltt.subject_id=#subjectdetail.subject_id
#finaltt.timetable_definition_id=k2
#finaltt.timetable_day_id=k1
set_school_id(#finaltt,current_user)
if(#finaltt.save)
setflag_sub(subjectflag,k3,1)
setflag_period(periodflag,k2,1)
setflag_teacher(teacherflag,k4,1)
end
end
end
end
end
end
end
end
end
end
end

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