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87295ad9b7
* galaxy: improve logging and performance reporting * galaxy: add a full galaxy state test * galaxy: optimize user self score computation * galaxy: add 'generate_galaxy_test_data' command for development at scale * galaxy: big refactor Main changes: - Multiple Galaxy objects can now exist at the same time in DB. This allows for ruling a new galaxy while still displaying the old one. - The criteria to quickly know whether a user is a possible citizen is now a simple query on picture count. This avoids a very complicated query to database, that could often result in huge working memory load. With this change, it should be possible to run the galaxy even on a vanilla Postgres that didn't receive fine tuning for the Sith's galaxy. * galaxy: template: make the galaxy graph work and be usable with a lot of stars - Display focused star and its connections clearly - Display star label faintly by default for other stars to avoid overloading the graph - Hide non-focused lanes - Avoid clicks on non-highlighted, too far stars - Make the canva adapt its width to initial screen size, doesn't work dynamically * galaxy: better docstrings * galaxy: use bulk_create whenever possible This is a big performance gain, especially for the tests. Examples: ---- `./manage.py test galaxy.tests.GalaxyTest.test_full_galaxy_state` Measurements averaged over 3 run on *my machine*™: Before: 2min15s After: 1m41s ---- `./manage.py generate_galaxy_test_data --user-pack-count 1` Before: 48s After: 25s ---- `./manage.py rule_galaxy` (for 600 citizen, corresponding to 1 user-pack) Before: 14m4s After: 12m34s * core: populate: use a less ambiguous 'timezone.now()' When running the tests around midnight, the day is changing, leading to some values being offset to the next day depending on the timezone, and making some tests to fail. This ensure to use a less ambiguous `now` when populating the database. * write more extensive documentation - add documentation to previously documented classes and functions and refactor some of the documented one, in accordance to the PEP257 and ReStructuredText standards ; - add some type hints ; - use a NamedTuple for the `Galaxy.compute_users_score` method instead of a raw tuple. Also change a little bit the logic in the function which call the latter ; - add some additional parameter checks on a few functions ; - change a little bit the logic of the log level setting for the galaxy related commands. * galaxy: tests: split Model and View for more efficient data usage --------- Co-authored-by: maréchal <thgirod@hotmail.com>
630 lines
23 KiB
Python
630 lines
23 KiB
Python
# -*- 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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from __future__ import annotations
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import math
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import logging
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import time
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from typing import List, TypedDict, NamedTuple, Union, Optional
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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 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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Define a star (vertex -> user) in the galaxy graph,
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storing a reference to its owner citizen.
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Stars are linked to each others through the :class:`GalaxyLane` model.
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Each GalaxyStar has a mass which push it towards the center of the galaxy.
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This mass is proportional to the number of pictures the owner of the star
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is tagged on.
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"""
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owner = models.ForeignKey(
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User,
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verbose_name=_("star owner"),
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related_name="stars",
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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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galaxy = models.ForeignKey(
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"Galaxy",
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verbose_name=_("the galaxy this star belongs to"),
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related_name="stars",
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on_delete=models.CASCADE,
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null=True,
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)
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def __str__(self):
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return str(self.owner)
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@property
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def current_star(self) -> Optional[GalaxyStar]:
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"""
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The star of this user in the :class:`Galaxy`.
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Only take into account the most recent active galaxy.
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:return: The star of this user if there is an active Galaxy
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and this user is a citizen of it, else ``None``
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"""
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return self.stars.filter(galaxy=Galaxy.get_current_galaxy()).last()
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# Adding a shortcut to User class for getting its star belonging to the latest ruled Galaxy
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setattr(User, "current_star", current_star)
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class GalaxyLane(models.Model):
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"""
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Define a lane (edge -> link between galaxy citizen)
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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 RelationScore(NamedTuple):
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family: int
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pictures: int
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clubs: int
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class Galaxy(models.Model):
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"""
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The Galaxy, a graph linking the active users between each others.
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The distance between two users is given by a relation score which takes
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into account a few parameter like the number of pictures they are both tagged on,
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the time during which they were in the same clubs and whether they are
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in the same family.
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The citizens of the Galaxy are represented by :class:`GalaxyStar`
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and their relations by :class:`GalaxyLane`.
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Several galaxies can coexist. In this case, only the most recent active one
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shall usually be taken into account.
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This is useful to keep the current galaxy while generating a new one
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and swapping them only at the very end.
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Please take into account that generating the galaxy is a very expensive
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operation. For this reason, try not to call the :meth:`rule` method more
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than once a day in production.
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To quickly access to the state of a galaxy, use the :attr:`state` attribute.
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"""
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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(_("The galaxy current state"), null=True)
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class Meta:
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ordering = ["pk"]
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def __str__(self):
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stars_count = self.stars.count()
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s = f"GLX-ID{self.pk}-SC{stars_count}-"
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if self.state is None:
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s += "CHS" # CHAOS
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else:
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s += "RLD" # RULED
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return s
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@classmethod
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def get_current_galaxy(
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cls,
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) -> Galaxy: # __future__.annotations is required for this
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return Galaxy.objects.filter(state__isnull=False).last()
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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: User) -> int:
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"""
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Compute an individual score for each citizen.
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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: User) -> int:
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"""
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Perform the db query to get the individual score
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of the given user in the galaxy.
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"""
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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: User, user2: User) -> RelationScore:
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"""
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Compute the relationship scores of the two given users
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in the following fields :
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- family: if they have some godfather/godchild relation
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- pictures: in how many pictures are both tagged
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- clubs: during how many days they were members of the same clubs
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"""
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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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return RelationScore(family=family, pictures=pictures, clubs=clubs)
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@classmethod
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def compute_users_family_score(cls, user1: User, user2: User) -> int:
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"""
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Compute the family score of the relation between the given users.
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This takes into account mutual godfathers.
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:return: 366 if user1 is the godfather of user2 (or vice versa) else 0
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"""
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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 > 0:
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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: User, user2: User) -> int:
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"""
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Compute the pictures score of the relation between the given users.
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The pictures score is obtained by counting the number
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of :class:`Picture` in which they have been both identified.
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This score is then multiplied by 2.
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:return: The number of pictures both users have in common, times 2
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"""
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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: User, user2: User) -> int:
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"""
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Compute the clubs score of the relation between the given users.
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The club score is obtained by counting the number of days
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during which the memberships (see :class:`club.models.Membership`)
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of both users overlapped.
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For example, if user1 was a member of Unitec from 01/01/2020 to 31/12/2021
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(two years) and user2 was a member of the same club from 01/01/2021 to
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31/12/2022 (also two years, but with an offset of one year), then their
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club score is 365.
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:return: the number of days during which both users were in the same club
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"""
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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.save() is not called in this function, hence this is safe
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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 scale_distance(cls, value: Union[int, float]) -> int:
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"""
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Given a numeric value, return a scaled value which can
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be used in the Galaxy's graphical interface to set the distance
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between two stars
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:return: the scaled value usable in the Galaxy's 3d graph
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"""
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# TODO: this will need adjustements with the real, typical data on Taiste
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if value == 0:
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return 4000 # Following calculus would give us +∞, we cap it to 4000
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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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def rule(self, picture_count_threshold=10) -> None:
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"""
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Main function of the Galaxy.
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Iterate over all the rulable users to promote them to citizens.
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A citizen is a user who has a corresponding star in the Galaxy.
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Also build up the lanes, which are the links between the different citizen.
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Users who can be ruled are defined with the `picture_count_threshold`:
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all users who are identified in a strictly lower number of pictures
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won't be promoted to citizens.
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This does very effectively limit the quantity of computing to do
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and only includes users who have had a minimum of activity.
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This method still remains very expensive, so think thoroughly before
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you call it, especially in production.
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:param picture_count_threshold: the minimum number of picture to have to be
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included in the galaxy
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"""
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total_time = time.time()
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self.logger.info("Listing rulable citizen.")
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rulable_users = (
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User.objects.filter(subscriptions__isnull=False)
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.annotate(pictures_count=Count("pictures"))
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.filter(pictures_count__gt=picture_count_threshold)
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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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rulable_users_count = len(rulable_users)
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user1_count = 0
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self.logger.info(
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f"{rulable_users_count} citizen have been listed. Starting to rule."
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)
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stars = []
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self.logger.info("Creating stars for all citizen")
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for user in rulable_users:
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star = GalaxyStar(
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owner=user, galaxy=self, mass=self.compute_user_score(user)
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)
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stars.append(star)
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GalaxyStar.objects.bulk_create(stars)
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stars = {}
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for star in GalaxyStar.objects.filter(galaxy=self):
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stars[star.owner.id] = star
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self.logger.info("Creating lanes between stars")
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# Display current speed every $speed_count_frequency users
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speed_count_frequency = max(rulable_users_count // 10, 1) # ten time at most
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global_avg_speed_accumulator = 0
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global_avg_speed_count = 0
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t_global_start = time.time()
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while len(rulable_users) > 0:
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user1 = rulable_users.pop()
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user1_count += 1
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rulable_users_count2 = len(rulable_users)
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star1 = stars[user1.id]
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user_avg_speed = 0
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user_avg_speed_count = 0
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tstart = time.time()
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lanes = []
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|
for user2_count, user2 in enumerate(rulable_users, start=1):
|
|
self.logger.debug("")
|
|
self.logger.debug(
|
|
f"\t> Examining '{user1}' ({user1_count}/{rulable_users_count}) with '{user2}' ({user2_count}/{rulable_users_count2})"
|
|
)
|
|
|
|
star2 = stars[user2.id]
|
|
|
|
score = Galaxy.compute_users_score(user1, user2)
|
|
distance = self.scale_distance(sum(score))
|
|
if distance < 30: # TODO: this needs tuning with real-world data
|
|
lanes.append(
|
|
GalaxyLane(
|
|
star1=star1,
|
|
star2=star2,
|
|
distance=distance,
|
|
family=score.family,
|
|
pictures=score.pictures,
|
|
clubs=score.clubs,
|
|
)
|
|
)
|
|
|
|
if user2_count % speed_count_frequency == 0:
|
|
tend = time.time()
|
|
delta = tend - tstart
|
|
speed = float(speed_count_frequency) / delta
|
|
user_avg_speed += speed
|
|
user_avg_speed_count += 1
|
|
self.logger.debug(
|
|
f"\tSpeed: {speed:.2f} users per second (time for last {speed_count_frequency} citizens: {delta:.2f} second)"
|
|
)
|
|
tstart = time.time()
|
|
|
|
GalaxyLane.objects.bulk_create(lanes)
|
|
|
|
self.logger.info("")
|
|
|
|
t_global_end = time.time()
|
|
global_delta = t_global_end - t_global_start
|
|
speed = 1.0 / global_delta
|
|
global_avg_speed_accumulator += speed
|
|
global_avg_speed_count += 1
|
|
global_avg_speed = global_avg_speed_accumulator / global_avg_speed_count
|
|
|
|
self.logger.info(f" Ruling of {self} ".center(60, "#"))
|
|
self.logger.info(
|
|
f"Progression: {user1_count}/{rulable_users_count} citizen -- {rulable_users_count - user1_count} remaining"
|
|
)
|
|
self.logger.info(f"Speed: {60.0*global_avg_speed:.2f} citizen per minute")
|
|
|
|
# We can divide the computed ETA by 2 because each loop, there is one citizen less to check, and maths tell
|
|
# us that this averages to a division by two
|
|
eta = rulable_users_count2 / global_avg_speed / 2
|
|
eta_hours = int(eta // 3600)
|
|
eta_minutes = int(eta // 60 % 60)
|
|
self.logger.info(
|
|
f"ETA: {eta_hours} hours {eta_minutes} minutes ({eta / 3600 / 24:.2f} days)"
|
|
)
|
|
self.logger.info("#" * 60)
|
|
t_global_start = time.time()
|
|
|
|
# Here, we get the IDs of the old galaxies that we'll need to delete. In normal operation, only one galaxy
|
|
# should be returned, and we can't delete it yet, as it's the one still displayed by the Sith.
|
|
old_galaxies_pks = list(
|
|
Galaxy.objects.filter(state__isnull=False).values_list("pk", flat=True)
|
|
)
|
|
self.logger.info(
|
|
f"These old galaxies will be deleted once the new one is ready: {old_galaxies_pks}"
|
|
)
|
|
|
|
# Making the state sets this new galaxy as being ready. From now on, the Sith will show us to the world.
|
|
self.make_state()
|
|
|
|
# Avoid accident if there is nothing to delete
|
|
if len(old_galaxies_pks) > 0:
|
|
# Former galaxies can now be deleted.
|
|
Galaxy.objects.filter(pk__in=old_galaxies_pks).delete()
|
|
|
|
total_time = time.time() - total_time
|
|
total_time_hours = int(total_time // 3600)
|
|
total_time_minutes = int(total_time // 60 % 60)
|
|
total_time_seconds = int(total_time % 60)
|
|
self.logger.info(
|
|
f"{self} ruled in {total_time:.2f} seconds ({total_time_hours} hours, {total_time_minutes} minutes, {total_time_seconds} seconds)"
|
|
)
|
|
|
|
def make_state(self) -> None:
|
|
"""
|
|
Compute JSON structure to send to 3d-force-graph: https://github.com/vasturiano/3d-force-graph/
|
|
"""
|
|
self.logger.info(
|
|
"Caching current Galaxy state for a quicker display of the Empire's power."
|
|
)
|
|
|
|
without_nickname = Concat(
|
|
F("owner__first_name"), Value(" "), F("owner__last_name")
|
|
)
|
|
with_nickname = Concat(
|
|
F("owner__first_name"),
|
|
Value(" "),
|
|
F("owner__last_name"),
|
|
Value(" ("),
|
|
F("owner__nick_name"),
|
|
Value(")"),
|
|
)
|
|
stars = (
|
|
GalaxyStar.objects.filter(galaxy=self)
|
|
.order_by(
|
|
"owner"
|
|
) # This helps determinism for the tests and doesn't cost much
|
|
.annotate(
|
|
owner_name=Case(
|
|
When(owner__nick_name=None, then=without_nickname),
|
|
default=with_nickname,
|
|
)
|
|
)
|
|
)
|
|
lanes = (
|
|
GalaxyLane.objects.filter(star1__galaxy=self)
|
|
.order_by(
|
|
"star1"
|
|
) # This helps determinism for the tests and doesn't cost much
|
|
.annotate(
|
|
star1_owner=F("star1__owner__id"),
|
|
star2_owner=F("star2__owner__id"),
|
|
)
|
|
)
|
|
json = GalaxyDict(
|
|
nodes=[
|
|
StarDict(
|
|
id=star.owner_id,
|
|
name=star.owner_name,
|
|
mass=star.mass,
|
|
)
|
|
for star in stars
|
|
],
|
|
links=[],
|
|
)
|
|
for path in lanes:
|
|
json["links"].append(
|
|
{
|
|
"source": path.star1_owner,
|
|
"target": path.star2_owner,
|
|
"value": path.distance,
|
|
}
|
|
)
|
|
self.state = json
|
|
self.save()
|
|
self.logger.info(f"{self} is now ready!")
|