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Floating Point and Integer Arithmetic Benchmark

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5 Jun 2018CPOL2 min read 21.7K   301   3   10
Performance of Floating Point and Integer Arithmetic has closed gap in modern CPU

Introduction

This is not much of a tip, just a posting of benchmark result to compare integer and floating point arithmetic timing. All the integer and floating point types used in Benchmark are 64bit. Timing is based on looping 100 million times. Clarification: SmallInt and SmallDouble refers to small values (10-10000) stored in int64_t and double, not referring to the type size. Big integer and double value range from 10,000 to 1000,000, if they are any bigger, there would be overflow in 64bit integer.

Hardware Specs

  • Processor: Intel i7-6700 CPU @ 3.40GHz, 3400 Mhz, 4 Cores, 8 Logical Processors
  • RAM: 16 GB
  • Graphics Card: NVIDIA GeForce GTX 1060 6GB

CSharp x64 Benchmark

Note: x86-32 executable typically has worse integer performance than floating point (not shown here). You can build as x86-32 executable and run it to see for yourself.

Multiplication and Division Benchmark
=====================================
MulBigDouble RunTime:00:00.186
MulBigInt RunTime:00:00.157
DivBigDouble RunTime:00:00.160
DivBigInt RunTime:00:00.776
MulSmallDouble RunTime:00:00.192
MulSmallInt RunTime:00:00.191
DivSmallDouble RunTime:00:00.205
DivSmallInt RunTime:00:00.933

Addition and Subtraction Benchmark
==================================
AddBigDouble RunTime:00:00.167
AddBigInt RunTime:00:00.154
SubBigDouble RunTime:00:00.151
SubBigInt RunTime:00:00.152
AddSmallDouble RunTime:00:00.204
AddSmallInt RunTime:00:00.187
SubSmallDouble RunTime:00:00.186
SubSmallInt RunTime:00:00.218

C++ x64 Benchmark

Multiplication and Division Benchmark
=====================================
       MulBigDouble:   57ms
          MulBigInt:   49ms
       DivBigDouble:   96ms
          DivBigInt:  636ms
     MulSmallDouble:   60ms
        MulSmallInt:   68ms
     DivSmallDouble:  118ms
        DivSmallInt:  823ms

Addition and Subtraction Benchmark
==================================
       AddBigDouble:   57ms
          AddBigInt:   49ms
       SubBigDouble:   64ms
          SubBigInt:   49ms
     AddSmallDouble:   69ms
        AddSmallInt:   59ms
     SubSmallDouble:   63ms
        SubSmallInt:   59ms

Most of the time, integer performance is on par with floating point, with exception of division.

The performance of floating point arithmetic has caught up with the integer in the last 15 years. This very much removes the requirement to have our own custom fixed point type to wring last drop of performance out of processor. For those who are not familiar, fixed point is arithmetic type which is like floating point except its decimal point is fixed, does not move, hence its name. The main difference is fixed point arithmetic is executed on the integer unit, not on floating point unit. Fixed point type was relevant during the period where integer perf was crown over floating point. Source code download consists of the CSharp and C++ version of the same benchmark.

Any suggestions on how to improve the nature of benchmark or constructive criticism on what I have been doing wrong, are all welcome.

License

This article, along with any associated source code and files, is licensed under The Code Project Open License (CPOL)


Written By
Software Developer (Senior)
Singapore Singapore
Shao Voon is from Singapore. His interest lies primarily in computer graphics, software optimization, concurrency, security, and Agile methodologies.

In recent years, he shifted focus to software safety research. His hobby is writing a free C++ DirectX photo slideshow application which can be viewed here.

Comments and Discussions

 
QuestionHow about benchmark on x86? Pin
Southmountain13-Jun-18 16:25
Southmountain13-Jun-18 16:25 
QuestionComparable results Pin
KarstenK11-Jun-18 0:44
mveKarstenK11-Jun-18 0:44 
QuestionUseful Pin
Rick York7-Jun-18 7:38
mveRick York7-Jun-18 7:38 
AnswerRe: Useful Pin
Jochen Arndt7-Jun-18 21:22
professionalJochen Arndt7-Jun-18 21:22 
GeneralRe: Useful Pin
Rick York8-Jun-18 4:19
mveRick York8-Jun-18 4:19 
GeneralRe: Useful Pin
Avitevet11-Jun-18 5:50
Avitevet11-Jun-18 5:50 
QuestionInteresting Pin
Yves7-Jun-18 7:16
Yves7-Jun-18 7:16 
PraiseUseful updated information Pin
Armando A Bouza7-Jun-18 6:24
Armando A Bouza7-Jun-18 6:24 
Useful updated information for us educated on the old idea that floating point arithmetic was terribly slower than integer counterpart. I remember the era of 8086, 80286, when software libraries for float and doubles were the only widely available because of 8087 coprocessor was a luxury...

This new condition is very important for us working with physics, math, and engineering.

Some other results suggest that vectorization on the floats and doubles are even better that integers on frequent context.
SuggestionSuggestions Pin
Jochen Arndt5-Jun-18 23:03
professionalJochen Arndt5-Jun-18 23:03 
GeneralRe: Suggestions Pin
Avitevet11-Jun-18 7:59
Avitevet11-Jun-18 7:59 

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