I have two dataframes, the first is of the form (note that the dates are datetime objects):
df = DataFrame('key': [0,1,2,3,4,5], 'date': [date0,date1, date2, date3, date4, date5], 'value': [0,10,20,30,40,50])
And a second which is of the form:
df2 = DataFrame('key': [0,1,2,3,4,5], 'valid_from': [date0, date0, date0, date3, date3, date3], 'valid_to': [date2, date2, date2, date5, date5, date5], 'value': [0, 100, 200, 300, 400, 500])
And I'm trying to efficiently join where the keys match and the date is between the valid_from and valid_to. What I've come up with is the following:
def map_keys(df2, key, date): value = df2[df2['key'] == key & df2['valid_from'] <= date & df2['valid_to'] >= date]['value'].values return value keys = df['key'].values dates = df['date'].values keys_dates = zip(keys, dates) values =  for key_date in keys_dates: value = map_keys(df2, key_date, key_date) values.append(value) df['joined_value'] = values
While this seems to do the job it doesn't feel like a particularly elegant solution. I was wondering if anybody had a better idea for a join such as this.
Thanks for you help - it is much appreciated.