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Distinct solutions after online classification (auto/crowd-tune GCC compiler flags (minimize execution time))
Scenario UID
8289e0cf24346aa7 (experiment.tune.compiler.flags.gcc.e)
Data UID
98dfd62a3ca917cb
Discuss (optimizations to improve compilers,
semantic/data set/hardware features
to improve predictions
, etc):
GitHub wiki
,
Google group
Download:
[
All solutions in JSON
], [
Solutions' classification in JSON
]
Reproduce all (with reactions):
ck replay 8289e0cf24346aa7:98dfd62a3ca917cb
Compiler
GCC 5.4.0
CPU
Intel(R) Core(TM) i7-4910MQ CPU @ 2.90GHz
Objective
min
Improvement key IK1
Main kernel execution time speedup [min]
Improvement key IK2
Code size improvement
Improvements (<4% variation)
Distinct workload for highest improvement
#
Solution UID
IK1
IK2
New distinct optimization choices
Ref
Best species
Worst species
Touched
Iters
Program
CMD
Dataset
Dataset file
CPU freq (MHz)
Cores
Platform
OS
Replay
S1
d01dc0796d84f68a
1.43
0.76
-O3 -fno-reorder-blocks-and-partition -funroll-all-loops
-O3
2
0
5
33
milepost-codelet-mibench-automotive-susan-e-src-susan-codelet-10-1
default
2901, 2901, 2901, 2901, 2901, 2901, 2901, 2901
8
VMware, Inc. None (VMware Virtual Platform)
Ubuntu 16.04.1 LTS
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