This is an interesting article with some important points. And. It has some points that I disagree with.
- Speed. This is a narrow perspective. numpy and pandas are fast, dask is fast. A great many Python ecosystem packages are fast. This complaint seems to be unsupported by evidence.
- Dynamic Scoping Rules. This actually isn't the problem. The problem is something about not being able to change containing scopes. First, I'm not sure changing nesting scopes is of any value at all. Second, the complaint ignores the global and nonlocal statements. The vague "leads to a lot of confusion" seems unsupported by any evidence.
- Lambdas. The distinction between expressions and statements isn't really a distinction in Python in general, only in the bodies of lambdas. I'm not sure what the real problem is, since a lambda with statements seems like a syntactic nightmare better solved with an ordinary, named function.
- Whitespace. Sigh. I've worked with many people who get the whitespace right but the {}'s wrong in C++. The code looks great but doesn't work. Python gets it right. The code looks great and works.
- Mobile App Platform. See https://beeware.org.
- Runtime Errors. "coding error manifests itself at runtime" seems to be the problem. I'm not sure what this means, because lots of programming languages have run-time problems. Here's the quote: "This leads to poor performance, time consumption, and the need for a lot of tests. Like, a lot of tests." Performance? See above. Use numpy. Or Cuda. Time consumption? Not sure what this means. A lot of tests? Yes. Software requires tests. I'm not sure that a compiled language like Rust, Go, or Julia require fewer tests. Indeed, I think the testing is essentially equivalent.
I'm interested in ways Python could be better.
Wow, people are still writing articles like that? It belies a fundamental lack of understanding what Python is and how it works. For one, it's not intended for writing CPU intensive code. Instead, it's the user-friendly glue that puts things together. In most Python code, very little time is spent actually spinning the interpreter's wheels; the work is done in the packages written in C or whatever. That's why numpy/etc are so fast. Also the idea that compilation can find anything but a tiny subset of runtime errors is absurd. You need just as many tests if not more with other languages. Oh well... thanks for posting this link, though!
ReplyDeleteFor ways to improve Python, check out the comments by Jerry Howard at the following YouTube video
ReplyDeleteJeremy Howard: fast.ai Deep Learning Courses and Research | Artificial Intelligence (AI) Podcast
Aug 27, 2019 - Lex Fridman
https://www.youtube.com/watch?v=J6XcP4JOHmk