Very often, I find myself coding trivial datatypes like

class Pruefer:
    def __init__(self, ident, maxNum=float('inf'), name=""):
        self.ident  = ident
        self.maxNum = maxNum
        self.name   = name

While this is very useful (Clearly I don't want to replace the above with anonymous 3-tuples), it's also very boilerplate.

Now for example, when I want to use the class in a dict, I have to add more boilerplate like

    def __hash__(self):
        return hash(self.ident, self.maxNum, self.name)

I admit that it might be difficult to recognize a general pattern amongst all my boilerplate classes, but nevertheless I'd like to as this question:

  • Are there any popular idioms in python to derive quick and dirty datatypes with named accessors?

  • Or maybe if there are not, maybe a Python guru might want to show off some metaclass hacking or class factory to make my life easier?

  • 2
    I think namedtuple is good enough (added full answer with code example) Dec 18, 2012 at 12:50
  • namedtuple now allows default values in 3.7+
    – pylang
    Sep 13, 2019 at 17:50

6 Answers 6

>>> from collections import namedtuple
>>> Pruefer = namedtuple("Pruefer", "ident maxNum name")
>>> pr = Pruefer(1,2,3)
>>> pr.ident
>>> pr.maxNum
>>> pr.name
>>> hash(pr)

To provide default values, you need to do little bit more... Simple solution is to write subclass with redefinition for __new__ method:

>>> class Pruefer(namedtuple("Pruefer", "ident maxNum name")):
...     def __new__(cls, ident, maxNum=float('inf'), name=""):
...         return super(Pruefer, cls).__new__(cls, ident, maxNum, name)
>>> Pruefer(1)
Pruefer(ident=1, maxNum=inf, name='')
  • 1
    That's very nice! Do you happen to also know something that allows me to have default values?
    – Jo So
    Dec 18, 2012 at 13:03
  • 1
    @JoSo -- You could just have a factory function which has defaults and returns a Pruefer instance.
    – mgilson
    Dec 18, 2012 at 13:12
  • This might be just me, but I would prefer ("ident","maxNum","name") to the version with a whitespace separated string ... It seems a little more obvious to me what is going on.
    – mgilson
    Dec 18, 2012 at 13:15
  • @mgilson: The docs say that you can use ["a1","a2","a3"], too. (But I'm personally fine with the less-ink "a1 a2 a3". Just think perl's qw(a1 a2 a3) ;>)
    – Jo So
    Dec 18, 2012 at 13:17
  • 1
    @Duncan -- I personally like to add the defaults after the fact: Pruefer.__new__.func_defaults=(1,float('inf'),"") (See my late answer)
    – mgilson
    Dec 18, 2012 at 13:33

One of the most promising things from with Python 3.6 is variable annotations. They allow to define namedtuple as class in next way:

In [1]: from typing import NamedTuple

In [2]: class Pruefer(NamedTuple):
   ...:     ident: int
   ...:     max_num: int
   ...:     name: str

In [3]: Pruefer(1,4,"name")
Out[3]: Pruefer(ident=1, max_num=4, name='name')

It same as a namedtuple, but is saves annotations and allow to check type with some static type analyzer like mypy.

Update: 15.05.2018

Now, in Python 3.7 dataclasses are present so this would preferable way of defining DTO, also for backwardcompatibility you could use attrs library.


Are there any popular idioms in python to derive quick ... datatypes with named accessors?

Dataclases. They accomplish this exact need.

Some answers have mentioned dataclasses, but here is an example.


import dataclasses as dc

class Pruefer:
    ident : int
    maxnum : float = float("inf")
    name : str  = ""


pr = Pruefer(1, 2.0, "3")

# Pruefer(ident=1, maxnum=2.0, name='3')

# 1

# 2.0

# '3'

# -5655986875063568239


You get:

  • pretty reprs
  • default values
  • hashing
  • dotted attribute-access
  • ... much more

You don't (directly) get:

  • tuple unpacking (unlike namedtuple)

Here's a guide on the details of dataclasses.


I don't have much to add to the already excellent answer by Alexey Kachayev -- However, one thing that may be useful is the following pattern:

Pruefer.__new__.func_defaults = (1,float('inf'),"")

This would allow you to create a factory function which returns a new named-tuple which can have default arguments:

def default_named_tuple(name,args,defaults=None):
    named_tuple = collections.namedtuple(name,args)
    if defaults is not None:
        named_tuple.__new__.func_defaults = defaults
    return named_tuple

This may seem like black magic -- It did to me at first, but it's all documented in the Data Model and discussed in this post.

In action:

>>> default_named_tuple("Pruefer", "ident maxNum name",(1,float('inf'),''))
<class '__main__.Pruefer'>
>>> Pruefer = default_named_tuple("Pruefer", "ident maxNum name",(1,float('inf'),''))
>>> Pruefer()
Pruefer(ident=1, maxNum=inf, name='')
>>> Pruefer(3)
Pruefer(ident=3, maxNum=inf, name='')
>>> Pruefer(3,10050)
Pruefer(ident=3, maxNum=10050, name='')
>>> Pruefer(3,10050,"cowhide")
Pruefer(ident=3, maxNum=10050, name='cowhide')
>>> Pruefer(maxNum=12)
Pruefer(ident=1, maxNum=12, name='')

And only specifying some of the arguments as defaults:

>>> Pruefer = default_named_tuple("Pruefer", "ident maxNum name",(float('inf'),''))
>>> Pruefer(maxNum=12)
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
TypeError: __new__() takes at least 2 arguments (2 given)
>>> Pruefer(1,maxNum=12)
Pruefer(ident=1, maxNum=12, name='')

Note that as written, It's probably only safe to pass a tuple in as defaults. However, you could easily get more fancy by ensuring you have a reasonable tuple object within the function.


An alternate approach which might help you to make your boiler plate code a little more generic is the iteration over the (local) variable dicts. This enables you to put your variables in a list and the processing of these in a loop. E.g:

class Pruefer:
     def __init__(self, ident, maxNum=float('inf'), name=""):
         for n in "ident maxNum name".split():
             v = locals()[n]  # extract value from local variables
             setattr(self, n, v)  # set member variable

     def printMemberVars(self):
         print("Member variables are:")
         for k,v in vars(self).items():
             print("  {}: '{}'".format(k, v))

P = Pruefer("Id", 100, "John")


Member Variables are:
  ident: 'Id'
  maxNum: '100'
  name: 'John'

From the viewpoint of efficient resource usage, this approach is of course suboptimal.


if using Python 3.7 you can use Data Classes; Data Classes can be thought of as "mutable namedtuples with defaults"



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