Add rolling average to mood statistics chart

Add ordering clause to Status objects
This commit is contained in:
Kumi 2021-02-22 07:51:27 +01:00
parent a19c0a2ad1
commit 209c1c1429
3 changed files with 15 additions and 6 deletions

View file

@ -20,6 +20,9 @@ class Mood(models.Model):
return self.name return self.name
class Status(models.Model): class Status(models.Model):
class Meta:
ordering = ["timestamp"]
user = models.ForeignKey(get_user_model(), models.CASCADE) user = models.ForeignKey(get_user_model(), models.CASCADE)
timestamp = models.DateTimeField(default=timezone.now) timestamp = models.DateTimeField(default=timezone.now)
mood = models.ForeignKey(Mood, models.SET_NULL, null=True) mood = models.ForeignKey(Mood, models.SET_NULL, null=True)

View file

@ -4,6 +4,7 @@ import pandas as pd
from django.utils import timezone from django.utils import timezone
from bokeh.models import HoverTool from bokeh.models import HoverTool
from holoviews.operation import timeseries
from dateutil.relativedelta import relativedelta from dateutil.relativedelta import relativedelta
from .models import Status, Mood from .models import Status, Mood
@ -28,7 +29,7 @@ def moodstats(user, mindate=None, maxdate=None, days=7):
pointdict = {"date": [], "value": [], "color": []} pointdict = {"date": [], "value": [], "color": []}
for status in Status.objects.filter(user=user, timestamp__gte=mindate, timestamp__lte=maxdate): for status in Status.objects.filter(user=user):
if status.mood: if status.mood:
pointdict["date"].append(status.timestamp) pointdict["date"].append(status.timestamp)
pointdict["value"].append(status.mood.value) pointdict["value"].append(status.mood.value)
@ -48,10 +49,14 @@ def moodstats(user, mindate=None, maxdate=None, days=7):
line = hv.Curve(pointtuples) line = hv.Curve(pointtuples)
maxy = Mood.objects.filter(user=user).latest("value").value + 1 maxval = Mood.objects.filter(user=user).latest("value").value
maxy = maxval + min(maxval * 0.1, 1)
output = points * line maxx = maxdate.timestamp() * 1000
output.opts(tools=["xwheel_zoom"], ylim=(0, maxy)) minx = maxx - (60*60*24*7) * 1000
output = points * line * timeseries.rolling(line, rolling_window=7)
output.opts(ylim=(0, maxy), xlim=(minx, maxx))
return output return output

View file

@ -16,5 +16,6 @@ python-telegram-bot
python-dateutil python-dateutil
matrix-nio matrix-nio
holoviews holoviews
bokeh==2.3.0dev13 bokeh
panel==0.11.0a16 panel
scipy