Data scientists out here mixing pandas, numpy, matplotlib, sklearn, and PyTorch like they're crafting some kind of cursed potion. Each library has its own quirks, data structures, and ways of doing things—pandas DataFrames, numpy arrays, PyTorch tensors—and you're constantly converting between them like some kind of data type translator.
The forced smile says it all. Sure, everything's "compatible" and "works together," but deep down you know you're just duct-taping five different ecosystems together and praying nothing breaks when you run that training loop for the third time today. The shadow looming behind? That's the production environment waiting for you to deploy this Frankenstein's monster.
Fun fact: The average data science notebook has approximately 47 different import statements and at least 3 dependency conflicts that somehow still work. Don't ask how. It just does.
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