what would be potentially useful is some sort of stats about the distribution that would let someone writing a tool or library or whatever say "I want to target at least X% of C++ developers and thus will develop with compatibility back to C++ Y"
@manro It's almost impossible to know all subtleties of C++. The job listing just means that you're familiar with and/or willing to use any of those versions.
@RyanM Eh, it's likely that they have legacy code still using C++11, but have migrated to C++17 for new projects. But also, people put the damndest things on job listings...
but also (and Cody can correct me if I'm wrong) I believe that if you know C++17 you mostly know lower versions, except for the hacky workarounds required to do things that you can do more easily in newer versions.
Microsoft used to have a survey asking what C++ language standard that devs were targeting. I remember filling it out a few years ago. But I can't find the results. I'm betting they were shared in someone's blog on MSDN, which is impossible to search effectively.
There are a tiny few edge-cases where some behavior changed between one standard to the next, or, a bit more commonly, where something was deprecated or even removed, but they're quite few and far between.
If you're writing code like that, you're probably an expert.
@manro No, almost never. They're two totally different jobs. Just like bad programmers aren't turned into sales people. But sales people don't know how to program.
You might underestimate your own abilities there. I would have thought I'd be horrible at it, but I have been forced to do it (the joys of a small company), and I'm actually not horrible at it. However, I do absolutely hate it.
I'm just not much of a people person. I like specific people, but I don't care much for hanging out with people in general or doing things that involve lots of people, especially people I don't know well.
Granted, there is an appealing edge to Julia for each language: its aggressive optimizations allow for better running performance without depending on impls in other languages (unlike Python). And it's actually free and open (unlike MATLAB).
@CodyGray Also false. Many use cases for which both Python and Julia claim to excel in expect quick prototyping and bootstrap times. Python's ability to run new code dynamically is good. Julia isn't that great here.
At least last time I tried. Sometimes I had to wait several seconds just to update an interactive notebook cell.
Right, yeah, I didn't have interactive usage in mind, necessarily.
My company has gobs and gobs of algorithms written in MATLAB, which we run over and over again on different data, without actually changing the code. Because they're in MATLAB, they're ungodly slow. I have ported some of them to C++, increasing performance on the order of 10 to 60 times (yes). But some of the algorithms are still under active development (tweaking), so me porting them to C++, as the only C++ programmer, is not a very smart idea.
This would be a fantastic use-case for Julia.
It's too late for us now, with such a large installed base of algorithms already written in MATLAB (and if we were going to port them, why port to Julia when you can port to C++), but if we were going to start over and I was advising, I'd have to strongly consider recommending to write in Julia, rather than MATLAB or Python or R.
It's never a bad thing to learn new things. Everything new you learn makes it easier to learn other new things.
That said, I don't necessarily think it makes much sense to spend a lot of time learning Julia when you don't even have a need for it, unless you just really like it and want to use it for fun (and/or are actively seeking a job using it because you like it).
@manro A great deal. The official website shows 4 major use cases (CLI, embedded, network, WebAssembly), but it has also ventures into HPC, game development, an more.
Basically, @manro, it's like C or C++, but designed to be a "safer" language and also more "modern" (using more modern constructs and more syntactic sugar, if you will). So you can pretty much do anything with it.
Yeah, there's a thing called Embedded Python, designed for use in embedded environments
That works because transistor technology has come so far that what is functionally an embedded device is actually an extremely powerful and capable computer
You're not going to be running Python on an 8-bit PIC
But if you've got a big honkin' 32-bit or 64-bit ARM processor in there, sure, why the heck not? (Actually, there are lots of reasons why not. Power consumption/efficiency is one.)
The thing about technology fields, though, is that... if there's a way that something can be done, someone is probably trying to do it!
As you well mentioned, each may serve a different purpose, as in, do a specific task well. But if you want to do more than one task and use different languages, one needs to think about how to combine the outcomes. This isn't always trivial.
The generalist is probably on a better path to become a manager. Being a manager can pay better than just being a grunt doing the work.
On the other hand, the expert will have skills that other people won't, so there might be specialized things that only the expert can do. That'll lead to the expert getting paid more than the typical programmer who can do many things.