


The ost Underrated Python Libraries You Should Start Using Right Now
Nov 03, 2024 am 07:02 AM“Wait… there are Python libraries other than Pandas and NumPy?”
If you just thought that, welcome to the club! Sure, Pandas and NumPy are great, but there’s a whole world of underrated Python libraries that can make you look like a coding wizard ??♂? (my favorite kind of work, TBH).
In this post, I’m going to introduce you to 5 hidden gems in the Python ecosystem. Use these libraries and people will think you’re some kind of Python sorcerer (don’t worry, I won’t tell them how easy it was).
And if you’re a lazy developer (like me), you can skip the research and just sign up for my Beehive newsletter(Its Completely Free ) where I regularly drop code, hacks, and life-saving libraries straight to your inbox. No spam, just code.
Alright, let’s get to it!
1. Rich: Beautiful Console Output, Easy Peasy
You ever been jealous of those fancy, colorful terminal outputs you see online? No? Well, now you will be.
With Rich, you can add pretty colors, progress bars, and even Markdown support to your terminal output in just a few lines of code. It’s basically like giving your terminal a glow-up.
from rich.console import Console console = Console() # Welcome to the world of fancy console output console.print("Hello, [bold magenta]World![/bold magenta] ?")
Why You’ll Love It: Because plain text is boring, and now you can flex on your coworkers with a terminal that looks like it’s auditioning for a sci-fi movie. ?
2. Typer: Making CLI Tools Without Wanting to Cry
Building command-line interfaces (CLI) in Python can sometimes feel like you’re in a battle with your keyboard. Enter Typer, the library that makes CLI tools so easy you’ll wonder if you’re cheating.
import typer # Behold! The world's simplest CLI def greet(name: str): print(f"Hello, {name}! ?") if __name__ == "__main__": # Trust me, this one line is about to blow your mind typer.run(greet)
Why You’ll Love It: One line to create a fully functional CLI app. It’s like magic, but without the top hat and rabbits. Also, you get to say things like “I made a CLI tool” at parties. ?
3. Arrow: Timezones Without Losing Your Mind
Working with dates and timezones in Python is like trying to assemble IKEA furniture — without the instructions. Arrow is here to save your sanity.
import arrow now = arrow.now() # Because we're too fancy for basic datetime print(now.shift(hours=+1).format('YYYY-MM-DD HH:mm:ss'))
Why You’ll Love It: No more needing to decipher ancient timezone scrolls. Now you can manipulate dates and times like a pro while pretending you totally understand timezones. ?
4. Pydantic: Data Validation Done Right
Have you ever tried to validate data manually? No? Well, you’re lucky. It’s a headache. But with Pydantic, data validation becomes fun (yes, I just said that).
from rich.console import Console console = Console() # Welcome to the world of fancy console output console.print("Hello, [bold magenta]World![/bold magenta] ?")
Why You’ll Love It: Data validation doesn’t have to make you want to throw your laptop out the window. With Pydantic, it’s like having a built-in proofreader for your code. ?
5. Loguru: Logging Without the Setup Headache
Logging in Python can be… uh, tedious. Enter Loguru, which makes setting up logs so easy that even your dog could do it (probably).
import typer # Behold! The world's simplest CLI def greet(name: str): print(f"Hello, {name}! ?") if __name__ == "__main__": # Trust me, this one line is about to blow your mind typer.run(greet)
Why You’ll Love It: One line, no setup, and now your code will tell you what’s going wrong without sending you into a tailspin. It’s logging without the emotional breakdown. ?
Conclusion: Go Forth and Code (But Use These Libraries)
There you have it — 5 Python libraries that are seriously underrated and will save you hours of work. Try them out, and soon you’ll be dropping cool one-liners like, “Oh yeah, I built a CLI tool with Typer” or “You’re still using basic logs? I switched to Loguru.”
And if you’re a lazy developer (like me), don’t forget to sign up for my Beehive newsletter(Its Completely Free ). I’ll deliver more hidden Python gems, tips, and tricks right to your inbox so you can spend less time Googling and more time looking like a genius. ??
Happy coding!
FAQs About Underrated Python Libraries
Why should I use these lesser-known Python libraries instead of more popular ones?
While popular libraries like Pandas and NumPy are fantastic, these underrated libraries provide more specialized functionality that can save you time and effort in specific areas like terminal output, logging, and CLI creation.
- Can I use these libraries in any Python project?
Yes! These libraries are highly versatile and can be used across a wide range of Python projects, from small scripts to large-scale applications. They integrate seamlessly with other libraries and frameworks too.
- Is Rich really going to make my terminal look pretty, or is it just hype?
Rich isn’t just hype! It genuinely transforms your terminal output with colors, formatting, and progress bars. It’s like the makeup artist of Python libraries — it’ll make your terminal look fabulous without any extra effort.
- I’m new to Python. Will these libraries be too advanced for me?
Not at all! Each of these libraries was chosen because they simplify tasks, even for beginners. They cut down the complexity and make coding more fun and intuitive. You’ll look like a pro in no time!
- What’s the easiest way to get started with these libraries?
You can find code snippets and documentation on each library’s website, or if you’re feeling extra lazy (like me), just sign up for my newsletter,(Its Completely Free )where I’ll send you tips, tricks, and pre-written code directly to your inbox. No need to spend hours Googling!
- Do these libraries work well together?
Absolutely! These libraries can be used independently or together in larger projects. For example, you can use Rich for output, Loguru for logging, and Typer for your command-line interfaces, all in one project.
- How do these libraries improve my productivity as a developer?
They remove a lot of boilerplate code and allow you to focus on the core logic of your application. Whether it’s handling timezones, creating CLI tools, or logging, these libraries take care of the repetitive stuff, giving you more time to work on the fun parts.
- How can I learn more about cool Python libraries like these?
Easy! Subscribe to my Beehive newsletter (Its Completely Free ), where I regularly drop hidden Python gems, tips, and ready-to-use code. You’ll be the first to know about these tools before they go mainstream!
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