I regularly see coder discussions here about CPU usage and questions about reducing 'high usage', covering everything from Javascript functions to compiled C executables.

I notice that almost always people are referring to the percentage of CPU being consumed - which naturally varies hugely according to where the code is running. eg. "When I run this I get 80% CPU usage, so I need to optimise my code".

Whilst it's clear that a level of 'high CPU usage' for looping code is often a good indicator that something is wrong, and code needs to sleep a little or be refactored, I am very surprised not to be able to find a common unit of processing measurement that is used to describe intense CPU usage rather than the percentage of the author's own machine's CPU, for example.

We can easily measure memory/disk usage by an algorithm on a certain platform, but is there any easily attainable and consistent useful figure for an amount of processing that could be used to compare usage?

Are FLOPS still used in the modern world, for instance?

  • 1
    A metric that is sometimes used, especially by profiling tools, is the CPI rate (clocks per instruction). But percentage of CPU usage is quite useful in tracking down where most of the time is spent, which does not necessarily mean code that needs optimization. – Banex Aug 11 '18 at 11:38
  • That's a good perspective re percentage. Maybe that explains why it is used so often - just to highlight the bottlenecks & spikes in usage, rather than to convey a standalone figure. I wonder if some simply deem it unimportant to know how much CPI is actually used when an issue of this type is being addressed, or does that itself vary according to architecture (graphics card or browser choice, for instance)? – dingles Aug 11 '18 at 12:00
  • 1
    It does depend on the underlying architecture. An instruction can take X clocks on one architecture and 2X on another. It will be very difficult to find a metric that lets you say "this piece of code is slow on every architecture" from a single test, because well, how fast the code is executed depends on the architecture. If you want something more general you may want to look at algorithms in terms of their asymptotic complexity, or in terms of an abstract computational model. – Banex Aug 11 '18 at 12:08
  • 1
    All meaningful performance numbers depend at least on the architecture of the machine, even the ratio between peak flops and attained flops (which is a good performance indicator, it's just fundamentally the case that in general the same code won't be optimal on all machines) – harold Aug 11 '18 at 12:11
  • 1
    By the way as you can maybe tell from that example, there is a huge difference between "inefficient due to doing unnecessary work" (goal: minimize CPU usage, don't regress time) and "inefficient due to performing necessary work badly" (goal: maximize instr/clock, minimize time), it's hard to cover both at the same time with a single metric – harold Aug 11 '18 at 12:19

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Browse other questions tagged or ask your own question.