aboutsummaryrefslogtreecommitdiff
path: root/math/py-iohexperimenter/pkg-descr
diff options
context:
space:
mode:
authorSunpoet Po-Chuan Hsieh <sunpoet@FreeBSD.org>2020-11-09 17:34:41 +0000
committerSunpoet Po-Chuan Hsieh <sunpoet@FreeBSD.org>2020-11-09 17:34:41 +0000
commit26da84473ad3c0266bd622d4b7aa44283b9ca956 (patch)
treed22a822f666e1d9ea275d7b8cc91a45e234f94ca /math/py-iohexperimenter/pkg-descr
parent5b2a83aa3ca614a2f2ca3b7d92b058cf4f1a773c (diff)
downloadports-26da84473ad3c0266bd622d4b7aa44283b9ca956.tar.gz
ports-26da84473ad3c0266bd622d4b7aa44283b9ca956.zip
Add py-iohexperimenter 0.2.8
IOHexperimenter is the benchmarking platform for Iterative Optimization Heuristics (IOHs). IOHexperimenter provides: - A framework for straightforward benchmarking of any iterative optimization heuristic - A suite consisting of 23 pre-made Pseudo-Boolean benchmarking function, with easily accessible methods for adding custom functions and suites - Logging methods to effortlesly store benchmarking data in a format compatible with IOHanalyzer, with future support for additional data logging options - (Soon to come:) A framework which significantly simplifies algorithm design WWW: https://github.com/IOHprofiler/IOHexperimenter
Notes
Notes: svn path=/head/; revision=554736
Diffstat (limited to 'math/py-iohexperimenter/pkg-descr')
-rw-r--r--math/py-iohexperimenter/pkg-descr13
1 files changed, 13 insertions, 0 deletions
diff --git a/math/py-iohexperimenter/pkg-descr b/math/py-iohexperimenter/pkg-descr
new file mode 100644
index 000000000000..4f23bc03fd73
--- /dev/null
+++ b/math/py-iohexperimenter/pkg-descr
@@ -0,0 +1,13 @@
+IOHexperimenter is the benchmarking platform for Iterative Optimization
+Heuristics (IOHs).
+
+IOHexperimenter provides:
+- A framework for straightforward benchmarking of any iterative optimization
+ heuristic
+- A suite consisting of 23 pre-made Pseudo-Boolean benchmarking function, with
+ easily accessible methods for adding custom functions and suites
+- Logging methods to effortlesly store benchmarking data in a format compatible
+ with IOHanalyzer, with future support for additional data logging options
+- (Soon to come:) A framework which significantly simplifies algorithm design
+
+WWW: https://github.com/IOHprofiler/IOHexperimenter