To give the context, I have a lot of temperature measurements taken at different stations and I want to check if it is in accordance with what was forecast. My model is :
class Station(models.Model): station_id = models.CharField(max_length = 18 ,primary_key = True) sector = models.CharField(max_length = 40) class Weather(models.Model): station = models.ForeignKey(Station) temperature = models.FloatField() date = models.DateField() class Forecast(models.Model): station = models.ForeignKey(Station) date = models.DateField() score = models.IntegerField()
For each temperature measurement, I would like to know the average of the forecasting scores for the station over the last 7 days, unless there is another temperature measurement in this time frame, in which case it is the starting point. The following code does what I want but is much too slow to execute (~10minutes !) :
observations = Weather.objects.all().order_by('station','date') for obs in observations: try : if obs.station == previous.station: date_inf = min(obs.date- timedelta(days=7), previous.date) else : date_inf = obs.date- timedelta(days=7) except UnboundLocalError : date_inf = obs.date- timedelta(days=7) forecast = Forecast.objects.filter( station=obs.station ).filter( date__gte = date_inf ).filter( date__lte = obs.date - timedelta(days=1) ).aggregate(average_score=Avg('score')) if forecast["average_score"] is not None: print(forecast["average_score"],obs.rating) # Some more code.... previous = obs
How can I optimize the execution time ? Is there a way to do it with a single query ?