List Comprehension and Regae
Ah. The moment I've been dreading.
The first post with my own thoughts, opinions, and possible knowledge breakdown.
Mind you, dear reader, this is not a deep dive or an incredible breakdown of Python's ability to one-line a for-loop, append to a list, and return some data. No, no. This is just showcasing how fun—and how dumb—little things can come together to make something dumber... yes... but also kind of neat.
So, let's light this dumpster fire! Hooray!
A Story:
In my younger days, working at a summer camp, learning the ways of being young and from a famously hippie-esque island... I heard a song. Man, was it catchy. Not Justin Bieber catchy, but catchy nonetheless. A song I never knew would have a significant impact on how I started to learn to write code. A song named... "Pass the Dutchie."
Now, you might be thinking, "What the shit does a reggae song have to do with programming?" All ears, please.
Passing the Dutchie... List Comprehension Style:
If you're like me, list comprehensions might have looked like some wizard-science, one-liner that’s supposed to "simplify" everything. That sweet, sweet "Pythonic" way. But instead, it had me feeling like my brain cogs were kind of grinding to a halt (You ever lean into the monitor and squint? - Yeah... exactly).
It was like I was being asked to pass some mystical, magical "dutchie" (cough.. variable.. cough) to the left-hand side, but I had no idea what I was passing, where it was going, or why it mattered. (Okay, I did, but for the sake of the story...)
Let me break it down: list comprehensions are all about passing things along, just like in the song. It’s a way to filter and transform lists, all in one neat line. You should see some of the coding horrors I've written just for the sake of "hey look, I shoved it into 1 line of code! Points for Gryffindor!" which I'm SURE most of y'all can relate to,(I really prefer multiple lines of code, ya know... readability).
Why List Comprehensions Matter: Instead of using multiple lines of loops and append() methods, list comprehensions allow you to write concise, readable code in fewer lines. They’re often faster, too, making them a favorite tool for Python devs when working with lists.
So... for those of us who may or mayn't or may've (wow, autocorrect just took me for a wild ride there), I give you my brain's solution to understanding the most basic of basic list comprehension:
left_hand_side = ['dutchie', 'pon the left hand side'] def catchyReggaeFunction(lyrics): where_the_dutchie_is_passed_to = [ f"pass the {pon_the} pon the left hand side" for pon_the in lyrics if pon_the == 'dutchie' ] return where_the_dutchie_is_passed_to printer = catchyReggaeFunction(left_hand_side) print(printer)
Output:
['pass the dutchie pin the left hand side']
The point of this silly example is to show that list comprehensions are all about passing things along—just like the dutchie. In this case, I’m filtering out "dutchie" from the list and passing it into the new list.
The Takeout... er, Takeaway:
If you’re struggling with abstract concepts like list comprehensions—you’re not alone. Everyone starts out feeling like this stuff is wizard-level magic, but it starts to make sense after a while. Like the chorus of a catchy song, once you hear it enough, it sticks.
So there it is: my journey from confusion to understanding list comprehensions, one dutchie at a time.
Now, didn't we all have a good time?
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