I am including the full text of the post
Despite not being a pure functional language, a lot of praise that python receives are for features that stem from functional paradigms. Many are second nature to python programmers, but over the years I have seen people miss out on some important features. I gathered a few, along with examples, to give a brief demonstration of the convenience they can bring.
Replace if/else
with or
With values that might be None
, you can use or
instead of if/else
to provide a default. I had used this for years with Javascript, without knowing it was also possible in Python.
def get_greeting_prefix(user_title: str | None):
if user_title:
return user_title
return ""
Above snippet can shortened to this:
def get_greeting_prefix(user_title: str | None):
return user_title or ""
Pattern Matching and Unpacking
The overdue arrival of match
to python means that so many switch
style statements are expressed instead with convoluted if/else
blocks. Using match
is not even from the functional paradigm, but combining it with unpacking opens up new possibilities for writing more concise code.
Let’s start by looking at a primitive example of unpacking. Some libraries have popularised use of [
, but unpacking in python is much powerful than that. ] = some_fun()
[first, *mid, last] = [1, 2, 3, 4, 5]
# first -> 1, mid -> [2, 3, 4], last -> 5
Matching Lists
Just look at the boost in readability when we are able to name and extract relevant values effortlessly:
def sum(numbers: [int]):
if len(numbers) == 0:
return 0
else:
return numbers[0] + sum(numbers[1:])
def sum(numbers: [int]):
match numbers:
case []:
return 0
case [first, *rest]:
return first + sum(rest)
Matching Dictionaries
Smooth, right? We can go even further with dictionaries. This example is not necessarily better than its if/else
counterpart, but I will use it for the purpose of demonstrating the functionality.
sample_country = {"economic_zone": "EEA", "country_code": "AT"}
def determine_tourist_visa_requirement(country: dict[str, str]):
match country:
case {"economic_zone": "EEA"}:
return "no_visa"
case {"country_code": code} if code in tourist_visa_free_countries:
return "non_tourist_visa_only"
case default:
return "visa_required"
Matching Dataclasses
Let’s write a function that does a primitive calculation of an estimated number of days for shipment
@dataclass
class Address:
street: str
zip_code: str
country_code: str
def calculate_shipping_estimate(address: Address) -> int:
match address:
case Address(zip_code=zc) if close_to_warehouse(zc):
return 1
case Address(country_code=cc) if cc in express_shipping_countries:
return 2
case default:
return provider_estimate(city.coordinates)
Comprehensions
List comprehensions get their deserved spotlight, but I’ve seen cases where dictionary comprehension would’ve cut multiple lines. You can look at examples on this page on python.org