在Django的模型中添加自定义方法的示例
为了给你的对像添加一个行级功能,那就定义一个自定义方法。 有鉴于manager经常被用来用一些整表操作(table-wide),模型方法应该只对特殊模型实例起作用。
这是一项在模型的一个地方集中业务逻辑的技术。
最好用例子来解释一下。 这个模型有一些自定义方法:
from django.contrib.localflavor.us.models import USStateField from django.db import models class Person(models.Model): first_name = models.CharField(max_length=50) last_name = models.CharField(max_length=50) birth_date = models.DateField() address = models.CharField(max_length=100) city = models.CharField(max_length=50) state = USStateField() # Yes, this is U.S.-centric... def baby_boomer_status(self): "Returns the person's baby-boomer status." import datetime if datetime.date(1945, 8, 1) <= self.birth_date <= datetime.date(1964, 12, 31): return "Baby boomer" if self.birth_date < datetime.date(1945, 8, 1): return "Pre-boomer" return "Post-boomer" def is_midwestern(self): "Returns True if this person is from the Midwest." return self.state in ('IL', 'WI', 'MI', 'IN', 'OH', 'IA', 'MO') def _get_full_name(self): "Returns the person's full name." return u'%s %s' % (self.first_name, self.last_name) full_name = property(_get_full_name)
例子中的最后一个方法是一个property。 想了解更多关于属性的信息请访问http://www.python.org/download/releases/2.2/descrintro/#property
这是用法的实例:
>>> p = Person.objects.get(first_name='Barack', last_name='Obama') >>> p.birth_date datetime.date(1961, 8, 4) >>> p.baby_boomer_status() 'Baby boomer' >>> p.is_midwestern() True >>> p.full_name # Note this isn't a method -- it's treated as an attribute u'Barack Obama'

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