mirror of
https://gitlab.crans.org/bde/nk20
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128 lines
4.6 KiB
Python
128 lines
4.6 KiB
Python
# Copyright (C) 2018-2024 by BDE ENS Paris-Saclay
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# SPDX-License-Identifier: GPL-3.0-or-later
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import random
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from datetime import date, timedelta
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from django.contrib.auth.models import User
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from django.test import TestCase
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from ..forms.surveys.wei2023 import WEIBusInformation2023, WEISurvey2023, WORDS, WEISurveyInformation2023
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from ..models import Bus, WEIClub, WEIRegistration
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class TestWEIAlgorithm(TestCase):
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"""
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Run some tests to ensure that the WEI algorithm is working well.
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"""
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fixtures = ('initial',)
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def setUp(self):
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"""
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Create some test data, with one WEI and 10 buses with random score attributions.
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"""
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self.user = User.objects.create_superuser(
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username="weiadmin",
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password="admin",
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email="admin@example.com",
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)
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self.user.save()
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self.client.force_login(self.user)
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sess = self.client.session
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sess["permission_mask"] = 42
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sess.save()
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self.wei = WEIClub.objects.create(
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name="WEI 2023",
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email="wei2023@example.com",
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parent_club_id=2,
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membership_fee_paid=12500,
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membership_fee_unpaid=5500,
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membership_start='2023-01-01',
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membership_end='2023-12-31',
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date_start=date.today() + timedelta(days=2),
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date_end='2023-12-31',
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year=2023,
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)
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self.buses = []
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for i in range(10):
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bus = Bus.objects.create(wei=self.wei, name=f"Bus {i}", size=10)
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self.buses.append(bus)
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information = WEIBusInformation2023(bus)
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for question in WORDS:
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information.scores[question] = {answer: random.randint(1, 5) for answer in WORDS[question][1]}
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information.save()
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bus.save()
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def test_survey_algorithm_small(self):
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"""
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There are only a few people in each bus, ensure that each person has its best bus
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"""
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# Add a few users
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for i in range(10):
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user = User.objects.create(username=f"user{i}")
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registration = WEIRegistration.objects.create(
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user=user,
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wei=self.wei,
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first_year=True,
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birth_date='2000-01-01',
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)
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information = WEISurveyInformation2023(registration)
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for question in WORDS:
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setattr(information, question, random.randint(1, 5))
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information.step = 20
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information.save(registration)
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registration.save()
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# Run algorithm
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WEISurvey2023.get_algorithm_class()().run_algorithm()
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# Ensure that everyone has its first choice
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for r in WEIRegistration.objects.filter(wei=self.wei).all():
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survey = WEISurvey2023(r)
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preferred_bus = survey.ordered_buses()[0][0]
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chosen_bus = survey.information.get_selected_bus()
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self.assertEqual(preferred_bus, chosen_bus)
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def test_survey_algorithm_full(self):
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"""
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Buses are full of first year people, ensure that they are happy
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"""
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# Add a lot of users
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for i in range(95):
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user = User.objects.create(username=f"user{i}")
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registration = WEIRegistration.objects.create(
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user=user,
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wei=self.wei,
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first_year=True,
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birth_date='2000-01-01',
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)
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information = WEISurveyInformation2023(registration)
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for question in WORDS:
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setattr(information, question, random.randint(1, 5))
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information.step = 20
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information.save(registration)
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registration.save()
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# Run algorithm
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WEISurvey2023.get_algorithm_class()().run_algorithm()
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penalty = 0
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# Ensure that everyone seems to be happy
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# We attribute a penalty for each user that didn't have its first choice
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# The penalty is the square of the distance between the score of the preferred bus
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# and the score of the attributed bus
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# We consider it acceptable if the mean of this distance is lower than 5 %
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for r in WEIRegistration.objects.filter(wei=self.wei).all():
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survey = WEISurvey2023(r)
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chosen_bus = survey.information.get_selected_bus()
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buses = survey.ordered_buses()
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score = min(v for bus, v in buses if bus == chosen_bus)
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max_score = buses[0][1]
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penalty += (max_score - score) ** 2
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self.assertLessEqual(max_score - score, 25) # Always less than 25 % of tolerance
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self.assertLessEqual(penalty / 100, 25) # Tolerance of 5 %
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