OOP is all about abstraction, not necessarily overengineering => ask your self: what is easier: update size, space-left and the data itself -- or -- call it "Array" and think about it as an object?
@PeterVaro definitely. But I think one of the ideas in OOP that lead to overengineered code is not separating the objects and behaviours. Also, inheritance makes the code harder (or at least, slower) to follow
@BartekBanachewicz well it's clear I can't give any citation beside my personal experience on linux kernel and c++ projects I worked on. Me and a few of my friends started reading about linux kernel together, and we got a basic understanding of kernel if a few months.
@PeterVaro yeah but methods and properties belong to objects, so that's not a separation at all
@BartekBanachewicz in big projects, that usually never works. You usually need to make your way through lots of virtual functions, try to guess which object is of which type, then go to a method defined in that type etc.
@PeterVaro That usually brings many pitfalls. What I'm trying to say in the whole conversation is that OOP by itself may be good or bad, but it provides ways for bad engineering.
In this specific case, let's think about string manipulation. If you use c, you'll know a strcpy actually copies, malloc actually allocates etc. But a higher level language user would concatenate strings without thinking that, usually leading to poor performance
two days, in fact. Quote: > "Support for the Linux kernel has been primarily written to prove that it is trivial to support new kernels. Without any prior exposure to Linux kernel programming, I have been able to port the kernel stub in about three days: Two days were spent analyzing the parts of the Linux kernel that are touched by the debugger. Another day was needed to do the actual implementation. Someone more familiar with the inner workings of the Linux kernel would most likely complete the port in a fraction of this time." [1]
@holgac well, it is probably my fault then, I did not want to "send" that message.. some design decision can have overheads, sure, think about getters and setters for example, BUT they are bringing new things to the table: opaqueness and safety
@BartekBanachewicz concrete example was on Linux kernel. You asked for the quote. So, here it is. In fact, it's project concentrated on software debugging.
that's why I said, everything is a multiblade swoird, like the time-space complexity: one data type has faster lookup, while the other has faster add/remove functionality
but ofc these are just examples, my point is => higher level does not mean poor performance, although it can mean that, but in those cases in a well designed object, it is there for a reason (like safety for example)
anyway, I think this discussion has no real goal: 1) we should talk about an exact example, so we could decide wether OOP is needed or not 2) you should learn and practice OOP a lot, before we can get into details/comparing
SUM: wether you should use some design, practice or concept is entirely depending on the exact task or situation
(without that we are just shooting in the air, repeating buzzwords and fancy terms..)
exactly, but no one said otherwise anyway. I had two points in the whole conversation: 1- I've worked with some projects developed in OOP and iterative languages, and I found OOP projects are harder and slower to understand 2- OOP provides many ways to overengineer a project, while it's somewhat harder to overengineer in iterative languages
What am I to say? That you're ignoring a lot of research being done on programming practices? That OOP has been done over and over for the last 20 years and now we're moving on to Functional Programming anyway?
But how can we talk about functional programming if you're still stuck at thinking that "tying data and functionality isn't separation".
@holgac Perhaps. "OOP" as it stands has been reevaluated as a term over and over again
We've moved through "class-based OOP" and inheritance chains through prototypal mechanisms, through message-passing smalltalk-like objects, through pythonish mixins, through IOC containers...