1a377055a7
Reviewers: sivachandra Reviewed By: sivachandra Differential Revision: https://reviews.llvm.org/D82143 |
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.. | ||
CMakeLists.txt | ||
configuration_big.json | ||
configuration_small.json | ||
JSON.cpp | ||
JSON.h | ||
JSONTest.cpp | ||
LibcBenchmark.cpp | ||
LibcBenchmark.h | ||
LibcBenchmarkTest.cpp | ||
LibcMemoryBenchmark.cpp | ||
LibcMemoryBenchmark.h | ||
LibcMemoryBenchmarkMain.cpp | ||
LibcMemoryBenchmarkMain.h | ||
LibcMemoryBenchmarkTest.cpp | ||
Memcmp.cpp | ||
Memcpy.cpp | ||
Memset.cpp | ||
RATIONALE.md | ||
README.md | ||
render.py3 |
Libc mem* benchmarks
This framework has been designed to evaluate and compare relative performance of memory function implementations on a particular host.
It will also be use to track implementations performances over time.
Quick start
Setup
Python 2 being deprecated it is advised to used Python 3.
Then make sure to have matplotlib
, scipy
and numpy
setup correctly:
apt-get install python3-pip
pip3 install matplotlib scipy numpy
You may need python3-gtk
or similar package for displaying benchmark results.
To get good reproducibility it is important to make sure that the system runs in
performance
mode. This is achieved by running:
cpupower frequency-set --governor performance
Run and display memcpy
benchmark
The following commands will run the benchmark and display a 95 percentile confidence interval curve of time per copied bytes. It also features host informations and benchmarking configuration.
cd llvm-project
cmake -B/tmp/build -Sllvm -DLLVM_ENABLE_PROJECTS='clang;clang-tools-extra;libc' -DCMAKE_BUILD_TYPE=Release -G Ninja
ninja -C /tmp/build display-libc-memcpy-benchmark-small
The display target will attempt to open a window on the machine where you're
running the benchmark. If this may not work for you then you may want render
or run
instead as detailed below.
Benchmarking targets
The benchmarking process occurs in two steps:
- Benchmark the functions and produce a
json
file - Display (or renders) the
json
file
Targets are of the form <action>-libc-<function>-benchmark-<configuration>
action
is one of :run
, runs the benchmark and writes thejson
filedisplay
, displays the graph on screenrender
, renders the graph on disk as apng
file
function
is one of :memcpy
,memcmp
,memset
configuration
is one of :small
,big
Benchmarking regimes
Using a profiler to observe size distributions for calls into libc functions, it was found most operations act on a small number of bytes.
Function | % of calls with size ≤ 128 | % of calls with size ≤ 1024 |
---|---|---|
memcpy | 96% | 99% |
memset | 91% | 99.9% |
memcmp1 | 99.5% | ~100% |
Benchmarking configurations come in two flavors:
- small
- Exercises sizes up to
1KiB
, representative of normal usage - The data is kept in the
L1
cache to prevent measuring the memory subsystem
- Exercises sizes up to
- big
- Exercises sizes up to
32MiB
to test large operations - Caching effects can show up here which prevents comparing different hosts
- Exercises sizes up to
1 - The size refers to the size of the buffers to compare and not the number of bytes until the first difference.
Superposing curves
It is possible to merge several json
files into a single graph. This is
useful to compare implementations.
In the following example we superpose the curves for memcpy
, memset
and
memcmp
:
> make -C /tmp/build run-libc-memcpy-benchmark-small run-libc-memcmp-benchmark-small run-libc-memset-benchmark-small
> python libc/utils/benchmarks/render.py3 /tmp/last-libc-memcpy-benchmark-small.json /tmp/last-libc-memcmp-benchmark-small.json /tmp/last-libc-memset-benchmark-small.json
Useful render.py3
flags
- To save the produced graph
--output=/tmp/benchmark_curve.png
. - To prevent the graph from appearing on the screen
--headless
.
Under the hood
To learn more about the design decisions behind the benchmarking framework, have a look at the RATIONALE.md file.