In my experience, some 95% of the questions on Stack Overflow regarding poor performance are caused by incorrect benchmarking. Benchmarking is not trivial - in most systems it is a more complex topic than actually writing efficient code for that system. And then there's an embarrassingly high amount of questions asking about performance when the OP has not even enabled compiler optimizations.
Therefore, a good performance question first of all needs to state:
- Target system. That is, instruction set (ISA) and OS.
- Compiler and compiler options used.
- How the benchmarking was performed.
- Benchmarking results - why they are considered poor and what the OP is hoping for instead.
The next mistake to avoid is mixing up algorithm theory with actual program performance. "Big O" notation is a way to measure the number of iterations in an algorithm. This does often not correspond to the number of actual comparisons, making it a somewhat irrelevant metric for real-world performance.
On a modern high-end computer with instruction cache, branch prediction and pipelining, iterations are cheap, but comparisons are expensive. Therefore, "Big O" may or may not be relevant. For example, searching through the whole of a (sorted) array of data with a brute force linear search might be much faster than searching through the same data with binary search. A linear search may have fewer comparisons, leading to fewer branches and may also allow the computer to utilize data cache more efficiently than an O(log n) binary search that jumps around and touches various parts of the data, with little or no correspondence to actual cache lines. For each iteration in a binary search, there are likely multiple comparisons.
Also, binary search often involves division which may be inefficient - "Big O" knows nothing about such things. The whole "Big O" algorithm theory pre-dates cache memories by some decades and has no connection to the underlying machine code in general. (Unless one claims that "Big O" is the number of comparisons, then it's another story.)
The linked C++ question is a perfect example of someone mixing up algorithm theory with real-world performance. It's very branch-intensive code. Furthermore, the C++ type-generic programming is likely going to result in wildly different code depending on what type that is used. The question says that the template type might be a std::vector, so this code sits on multiple abstraction layers above the actual machine code. In which case the focus should first of all be: do these abstraction layers make sense for the problem this code is supposed to solve, or are there more efficient ones? Is there hidden bloat caused by type-generic programming? And so on - it's kind of an "XY question".
It is a decent question if it is asking about algorithm theory, but it is a bad question in case it is asking about real-world performance of executed C++ code.
[performance]tag, some of them are still considered on-topic today, even old ones like SO's highest voted Q&A about branch prediction: Why is processing a sorted array faster than processing an unsorted array?. Also Why are elementwise additions much faster in separate loops than in a combined loop? (4k aliasing effects on Intel)
[code-review]tag on Stackoverflow, nobody would ever discuss whether a particular question is off-topic because it belongs to Codereview.SE. I’ve seen questions which were well on-topic because the OP provided plenty of information, but turned code-review because the issue was something else… That’s life.