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379 lines
13 KiB
Python
379 lines
13 KiB
Python
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# -*- coding:utf-8 -*
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#
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# Copyright 2023
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# - Skia <skia@hya.sk>
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#
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# Ce fichier fait partie du site de l'Association des Étudiants de l'UTBM,
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# http://ae.utbm.fr.
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#
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# This program is free software; you can redistribute it and/or modify it under
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# the terms of the GNU General Public License a published by the Free Software
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# Foundation; either version 3 of the License, or (at your option) any later
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# version.
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#
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# This program is distributed in the hope that it will be useful, but WITHOUT
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# ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
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# FOR A PARTICULAR PURPOSE. See the GNU General Public License for more
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# details.
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#
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# You should have received a copy of the GNU General Public License along with
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# this program; if not, write to the Free Sofware Foundation, Inc., 59 Temple
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# Place - Suite 330, Boston, MA 02111-1307, USA.
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#
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#
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import math
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import logging
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from typing import Tuple
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from django.db import models
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from django.db.models import Q, Case, F, Value, When, Count
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from django.db.models.functions import Concat
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from django.utils import timezone
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from django.utils.translation import gettext_lazy as _
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from typing import List, TypedDict
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from core.models import User
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from club.models import Club
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from sas.models import Picture
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class GalaxyStar(models.Model):
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"""
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This class defines a star (vertex -> user) in the galaxy graph, storing a reference to its owner citizen, and being
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referenced by GalaxyLane.
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It also stores the individual mass of this star, used to push it towards the center of the galaxy.
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"""
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owner = models.OneToOneField(
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User,
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verbose_name=_("star owner"),
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related_name="galaxy_user",
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on_delete=models.CASCADE,
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)
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mass = models.PositiveIntegerField(
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_("star mass"),
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default=0,
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)
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def __str__(self):
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return str(self.owner)
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class GalaxyLane(models.Model):
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"""
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This class defines a lane (edge -> link between galaxy citizen) in the galaxy map, storing a reference to both its
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ends and the distance it covers.
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Score details between citizen owning the stars is also stored here.
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"""
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star1 = models.ForeignKey(
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GalaxyStar,
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verbose_name=_("galaxy star 1"),
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related_name="lanes1",
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on_delete=models.CASCADE,
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)
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star2 = models.ForeignKey(
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GalaxyStar,
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verbose_name=_("galaxy star 2"),
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related_name="lanes2",
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on_delete=models.CASCADE,
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)
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distance = models.PositiveIntegerField(
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_("distance"),
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default=0,
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help_text=_("Distance separating star1 and star2"),
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)
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family = models.PositiveIntegerField(
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_("family score"),
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default=0,
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)
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pictures = models.PositiveIntegerField(
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_("pictures score"),
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default=0,
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)
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clubs = models.PositiveIntegerField(
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_("clubs score"),
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default=0,
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)
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class StarDict(TypedDict):
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id: int
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name: str
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mass: int
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class GalaxyDict(TypedDict):
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nodes: List[StarDict]
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links: List
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class Galaxy(models.Model):
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logger = logging.getLogger("main")
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GALAXY_SCALE_FACTOR = 2_000
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FAMILY_LINK_POINTS = 366 # Equivalent to a leap year together in a club, because.
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PICTURE_POINTS = 2 # Equivalent to two days as random members of a club.
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CLUBS_POINTS = 1 # One day together as random members in a club is one point.
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state = models.JSONField("current state")
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@staticmethod
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def make_state() -> None:
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"""
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Compute JSON structure to send to 3d-force-graph: https://github.com/vasturiano/3d-force-graph/
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"""
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without_nickname = Concat(
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F("owner__first_name"), Value(" "), F("owner__last_name")
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)
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with_nickname = Concat(
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F("owner__first_name"),
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Value(" "),
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F("owner__last_name"),
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Value(" ("),
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F("owner__nick_name"),
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Value(")"),
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)
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stars = GalaxyStar.objects.annotate(
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owner_name=Case(
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When(owner__nick_name=None, then=without_nickname),
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default=with_nickname,
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)
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)
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lanes = GalaxyLane.objects.annotate(
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star1_owner=F("star1__owner__id"),
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star2_owner=F("star2__owner__id"),
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)
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json = GalaxyDict(
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nodes=[
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StarDict(id=star.owner_id, name=star.owner_name, mass=star.mass)
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for star in stars
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],
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links=[],
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)
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# Make bidirectional links
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# TODO: see if this impacts performance with a big graph
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for path in lanes:
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json["links"].append(
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{
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"source": path.star1_owner,
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"target": path.star2_owner,
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"value": path.distance,
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}
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)
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json["links"].append(
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{
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"source": path.star2_owner,
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"target": path.star1_owner,
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"value": path.distance,
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}
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)
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Galaxy.objects.all().delete()
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Galaxy(state=json).save()
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###################
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# User self score #
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###################
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@classmethod
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def compute_user_score(cls, user) -> int:
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"""
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This compute an individual score for each citizen. It will later be used by the graph algorithm to push
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higher scores towards the center of the galaxy.
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Idea: This could be added to the computation:
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- Forum posts
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- Picture count
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- Counter consumption
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- Barman time
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- ...
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"""
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user_score = 1
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user_score += cls.query_user_score(user)
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# TODO:
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# Scale that value with some magic number to accommodate to typical data
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# Really active galaxy citizen after 5 years typically have a score of about XXX
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# Citizen that were seen regularly without taking much part in organizations typically have a score of about XXX
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# Citizen that only went to a few events typically score about XXX
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user_score = int(math.log2(user_score))
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return user_score
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@classmethod
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def query_user_score(cls, user) -> int:
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score_query = (
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User.objects.filter(id=user.id)
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.annotate(
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godchildren_count=Count("godchildren", distinct=True)
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* cls.FAMILY_LINK_POINTS,
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godfathers_count=Count("godfathers", distinct=True)
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* cls.FAMILY_LINK_POINTS,
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pictures_score=Count("pictures", distinct=True) * cls.PICTURE_POINTS,
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clubs_score=Count("memberships", distinct=True) * cls.CLUBS_POINTS,
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)
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.aggregate(
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score=models.Sum(
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F("godchildren_count")
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+ F("godfathers_count")
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+ F("pictures_score")
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+ F("clubs_score")
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)
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)
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)
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return score_query.get("score")
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####################
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# Inter-user score #
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####################
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@classmethod
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def compute_users_score(cls, user1, user2) -> Tuple[int, int, int, int]:
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family = cls.compute_users_family_score(user1, user2)
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pictures = cls.compute_users_pictures_score(user1, user2)
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clubs = cls.compute_users_clubs_score(user1, user2)
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score = family + pictures + clubs
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return score, family, pictures, clubs
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@classmethod
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def compute_users_family_score(cls, user1, user2) -> int:
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link_count = User.objects.filter(
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Q(id=user1.id, godfathers=user2) | Q(id=user2.id, godfathers=user1)
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).count()
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if link_count:
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cls.logger.debug(
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f"\t\t- '{user1}' and '{user2}' have {link_count} direct family link"
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)
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return link_count * cls.FAMILY_LINK_POINTS
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@classmethod
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def compute_users_pictures_score(cls, user1, user2) -> int:
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picture_count = (
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Picture.objects.filter(people__user__in=(user1,))
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.filter(people__user__in=(user2,))
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.count()
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)
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if picture_count:
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cls.logger.debug(
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f"\t\t- '{user1}' was pictured with '{user2}' {picture_count} times"
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)
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return picture_count * cls.PICTURE_POINTS
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@classmethod
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def compute_users_clubs_score(cls, user1, user2) -> int:
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common_clubs = Club.objects.filter(members__in=user1.memberships.all()).filter(
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members__in=user2.memberships.all()
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)
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user1_memberships = user1.memberships.filter(club__in=common_clubs)
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user2_memberships = user2.memberships.filter(club__in=common_clubs)
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score = 0
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for user1_membership in user1_memberships:
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if user1_membership.end_date is None:
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user1_membership.end_date = timezone.now().date()
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query = Q( # start2 <= start1 <= end2
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start_date__lte=user1_membership.start_date,
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end_date__gte=user1_membership.start_date,
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)
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query |= Q( # start2 <= start1 <= now
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start_date__lte=user1_membership.start_date, end_date=None
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)
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query |= Q( # start1 <= start2 <= end2
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start_date__gte=user1_membership.start_date,
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start_date__lte=user1_membership.end_date,
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)
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for user2_membership in user2_memberships.filter(
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query, club=user1_membership.club
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):
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if user2_membership.end_date is None:
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user2_membership.end_date = timezone.now().date()
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latest_start = max(
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user1_membership.start_date, user2_membership.start_date
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)
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earliest_end = min(user1_membership.end_date, user2_membership.end_date)
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cls.logger.debug(
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"\t\t- '%s' was with '%s' in %s starting on %s until %s (%s days)"
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% (
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user1,
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user2,
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user2_membership.club,
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latest_start,
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earliest_end,
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(earliest_end - latest_start).days,
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)
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)
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score += cls.CLUBS_POINTS * (earliest_end - latest_start).days
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return score
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###################
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# Rule the galaxy #
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###################
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@classmethod
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def rule(cls) -> None:
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GalaxyStar.objects.all().delete()
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# The following is a no-op thanks to cascading, but in case that changes in the future, better keep it anyway.
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GalaxyLane.objects.all().delete()
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rulable_users = (
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User.objects.filter(subscriptions__isnull=False)
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.filter(
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Q(godchildren__isnull=False)
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| Q(godfathers__isnull=False)
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| Q(pictures__isnull=False)
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| Q(memberships__isnull=False)
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)
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.distinct()
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)
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# force fetch of the whole query to make sure there won't
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# be any more db hits
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# this is memory expensive but prevents a lot of db hits, therefore
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# is far more time efficient
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rulable_users = list(rulable_users)
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while len(rulable_users) > 0:
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user1 = rulable_users.pop()
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for user2 in rulable_users:
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cls.logger.debug("")
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cls.logger.debug(f"\t> Ruling '{user1}' against '{user2}'")
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star1, _ = GalaxyStar.objects.get_or_create(owner=user1)
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star2, _ = GalaxyStar.objects.get_or_create(owner=user2)
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if star1.mass == 0:
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star1.mass = cls.compute_user_score(user1)
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star1.save()
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if star2.mass == 0:
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star2.mass = cls.compute_user_score(user2)
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star2.save()
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users_score, family, pictures, clubs = cls.compute_users_score(
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user1, user2
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)
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if users_score > 0:
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GalaxyLane(
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star1=star1,
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star2=star2,
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distance=cls.scale_distance(users_score),
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family=family,
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pictures=pictures,
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clubs=clubs,
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).save()
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@classmethod
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def scale_distance(cls, value) -> int:
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# TODO: this will need adjustements with the real, typical data on Taiste
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cls.logger.debug(f"\t\t> Score: {value}")
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# Invert score to draw close users together
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value = 1 / value # Cannot be 0
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value += 2 # We use log2 just below and need to stay above 1
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value = ( # Let's get something in the range ]0; log2(3)-1≈0.58[ that we can multiply later
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math.log2(value) - 1
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)
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value *= ( # Scale that value with a magic number to accommodate to typical data
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# Really close galaxy citizen after 5 years typically have a score of about XXX
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# Citizen that were in the same year without being really friends typically have a score of about XXX
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# Citizen that have met once or twice only have a couple of pictures together typically score about XXX
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cls.GALAXY_SCALE_FACTOR
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)
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cls.logger.debug(f"\t\t> Scaled distance: {value}")
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return int(value)
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