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I've had a question that is rather unusual, but that I still think is valuable for this community. Instead just discarding it, I've posted it here and made this SO post to open a debate and justify why I think this way.
Mapping/reducing an array is a very generic operation that is widely used to implement all kinds of algorithms and computations. As such, it is often necessary for a programmer to estimate how much time it would take to complete a specific computation in specific dataset. Often, this boils down to implementing and testing. In the best case, it works. In the worst case, the programmer will realize he misestimated the task. He will then have to re-evaluate everything, possibly needing to port his code to another language or even architecture.
You might be aware of latency numbers every programmer should know. It is a small file with a big importance. It has been widely been used by programmers all around to estimate if a certain system will handle a task. Knowing a disk seek costs roughly 4 orders of magnitude more time than a memory seek, for example, might impact your decision to keep critical data memory cached in your web server, saving it from a huge waste of resources. A veteran programmer might know this from experience, but, for a newcomer, those numbers are insightful.
The purpose of this question is to aggregate information that can help us estimating the computational cost of a specific task, in the same vein of the file above. I believe it is on topic because it is helpful for a community of developers trying to solve problems. I believe it isn't too broad because, while this could help a wide number of programmers solving different problems, the question itself has a well defined and limited. And I believe this is different from a "programming language contest" because I'm not asking for opinions or debate, but for numbers and data.
Is this point of view correct? What do you think?