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by swiftcoder
252 days ago
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It's rarely the python version itself that is the problem (provided everything supports 3.9+ or similarly recent versions). The package versions are however fraught - our machine learning codebase at work only was stuck on the 1.x versions of numpy for more than a year, as scipy and ultralytics both took forever to upgrade, and that prevented us adopting packages that depend on the 2.x numpy. |
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But the language isn't designed to support multiple versions of the same library in the same runtime environment. If you get them both to load (and there are a lot of ways), they are different libraries (actual different module objects) with different names (or the same name in different namespaces). Packaging tools can't do anything meaningful about this. I write about this on HN more often than I'd like; see e.g. https://news.ycombinator.com/item?id=45467514 . It's also covered in https://zahlman.github.io/posts/2024/12/24/python-packaging-... .