summaryrefslogtreecommitdiff
path: root/development/numpy-legacy
diff options
context:
space:
mode:
authorB. Watson <yalhcru@gmail.com>2020-10-13 00:36:13 -0400
committerWilly Sudiarto Raharjo <willysr@slackbuilds.org>2020-10-17 09:39:27 +0700
commitfc08383c336b42005c7e82333ef163ed7562f5d7 (patch)
tree41b9fc4674090d56a3618e2654213f033e18b6e9 /development/numpy-legacy
parent08400975d728302ea0b1fe34624467063c7497cf (diff)
downloadslackbuilds-fc08383c336b42005c7e82333ef163ed7562f5d7.tar.gz
development/numpy-legacy: Fix README.
Signed-off-by: B. Watson <yalhcru@gmail.com> Signed-off-by: Willy Sudiarto Raharjo <willysr@slackbuilds.org>
Diffstat (limited to 'development/numpy-legacy')
-rw-r--r--development/numpy-legacy/README31
1 files changed, 16 insertions, 15 deletions
diff --git a/development/numpy-legacy/README b/development/numpy-legacy/README
index 0d3993e366..582c0ae544 100644
--- a/development/numpy-legacy/README
+++ b/development/numpy-legacy/README
@@ -2,34 +2,35 @@ NumPy is a general-purpose array-processing package designed to
efficiently manipulate large multi-dimensional arrays of arbitrary
records without sacrificing too much speed for small multi-dimensional
arrays. NumPy is built on the Numeric code base and adds features
-introduced by numarray as well as an extended C-API and the ability to
-create arrays of arbitrary type which also makes NumPy suitable for
+introduced by numarray as well as an extended C-API and the ability
+to create arrays of arbitrary type which also makes NumPy suitable for
interfacing with general-purpose data-base applications.
There are also basic facilities for discrete fourier transform, basic
linear algebra and random number generation.
-If you need to build numpy for debugging, set DEBUG=y. If you use software
-which is having problems with numpy's new relaxed strides checking, set
-NPY_RSC=0.
+If you need to build numpy for debugging, set DEBUG=y. If you use
+software which is having problems with numpy's new relaxed strides
+checking, set NPY_RSC=0.
-It is highly recommended to install libraries implementing BLAS and LAPACK
-before installing numpy. You may choose between:
+It is highly recommended to install libraries implementing BLAS and
+LAPACK before installing numpy. You may choose between:
a) BLAS and LAPACK (reference but unoptimized and thus slow)
b) OpenBLAS (optimized, provides LAPACK too)
c) ATLAS and LAPACK (optimized), good to read README.ATLAS
All these are available on SlackBuilds.org.
-If you want to use the UMFPACK library instead of SuperLU to solve unsymmetric
-sparse linear systems, then run this Slackbuild with NO_UMFPACK set to "no"
-and then install scikit-umfpack on top of scipy. In this context, UMFPACK is an
-optional dependency for numpy. Nevertheless, note that presently scikit-umfpack
-is not available on SlackBuilds.org while its dependencies are.
+If you want to use the UMFPACK library instead of SuperLU to solve
+unsymmetric sparse linear systems, then run this Slackbuild with
+NO_UMFPACK set to "no" and then install scikit-umfpack on top of
+scipy. In this context, UMFPACK is an optional dependency for
+numpy. Nevertheless, note that presently scikit-umfpack is not
+available on SlackBuilds.org while its dependencies are.
NOTE: If you use this SlackBuild, numpy will run with the python version
- provided by Slackware Linux, which is presently 2.7.xx. If you'd like to
- use python 3.x then you have to install numpy with the numpy-legacy3
- SlackBuild.
+ provided by Slackware Linux, which is presently 2.7.xx. If you'd
+ like to use python 3.x then you have to install numpy with the
+ numpy-legacy3 SlackBuild.
IMPORTANT: This version, 1.8.2, is the latest to include the oldnumeric
and numarray compatibility modules. Starting with version