Paul,

Wot, no AMD64?

Colin W.
On 11-Jan-15 12:50 PM, Paul Virtanen wrote:
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> Dear all,
>
> We are pleased to announce the Scipy 0.15.0 release.
>
> The 0.15.0 release contains bugfixes and new features, most important
> of which are mentioned in the excerpt from the release notes below.
>
> Source tarballs, binaries, and full release notes are available at
> https://sourceforge.net/projects/scipy/files/scipy/0.15.0/
>
> Best regards,
> Pauli Virtanen
>
>
> ==========================
> SciPy 0.15.0 Release Notes
> ==========================
>
> SciPy 0.15.0 is the culmination of 6 months of hard work. It contains
> several new features, numerous bug-fixes, improved test coverage and
> better documentation.  There have been a number of deprecations and
> API changes in this release, which are documented below.  All users
> are encouraged to upgrade to this release, as there are a large number
> of bug-fixes and optimizations.  Moreover, our development attention
> will now shift to bug-fix releases on the 0.16.x branch, and on adding
> new features on the master branch.
>
> This release requires Python 2.6, 2.7 or 3.2-3.4 and NumPy 1.5.1 or
> greater.
>
>
> New features
> ============
>
> Linear Programming Interface
> - ----------------------------
>
> The new function `scipy.optimize.linprog` provides a generic
> linear programming similar to the way `scipy.optimize.minimize`
> provides a generic interface to nonlinear programming optimizers.
> Currently the only method supported is *simplex* which provides
> a two-phase, dense-matrix-based simplex algorithm. Callbacks
> functions are supported, allowing the user to monitor the progress
> of the algorithm.
>
> Differential evolution, a global optimizer
> - ------------------------------------------
>
> A new `scipy.optimize.differential_evolution` function has been added
> to the
> ``optimize`` module.  Differential Evolution is an algorithm used for
> finding
> the global minimum of multivariate functions. It is stochastic in
> nature (does
> not use gradient methods), and can search large areas of candidate
> space, but
> often requires larger numbers of function evaluations than conventional
> gradient based techniques.
>
> ``scipy.signal`` improvements
> - -----------------------------
>
> The function `scipy.signal.max_len_seq` was added, which computes a
> Maximum
> Length Sequence (MLS) signal.
>
> ``scipy.integrate`` improvements
> - --------------------------------
>
> It is now possible to use `scipy.integrate` routines to integrate
> multivariate ctypes functions, thus avoiding callbacks to Python and
> providing better performance.
>
> ``scipy.linalg`` improvements
> - -----------------------------
>
> The function `scipy.linalg.orthogonal_procrustes` for solving the
> procrustes
> linear algebra problem was added.
>
> BLAS level 2 functions ``her``, ``syr``, ``her2`` and ``syr2`` are now
> wrapped
> in ``scipy.linalg``.
>
> ``scipy.sparse`` improvements
> - -----------------------------
>
> `scipy.sparse.linalg.svds` can now take a ``LinearOperator`` as its
> main input.
>
> ``scipy.special`` improvements
> - ------------------------------
>
> Values of ellipsoidal harmonic (i.e. Lame) functions and associated
> normalization constants can be now computed using ``ellip_harm``,
> ``ellip_harm_2``, and ``ellip_normal``.
>
> New convenience functions ``entr``, ``rel_entr`` ``kl_div``,
> ``huber``, and ``pseudo_huber`` were added.
>
> ``scipy.sparse.csgraph`` improvements
> - -------------------------------------
>
> Routines ``reverse_cuthill_mckee`` and ``maximum_bipartite_matching``
> for computing reorderings of sparse graphs were added.
>
> ``scipy.stats`` improvements
> - ----------------------------
>
> Added a Dirichlet multivariate distribution, `scipy.stats.dirichlet`.
>
> The new function `scipy.stats.median_test` computes Mood's median test.
>
> The new function `scipy.stats.combine_pvalues` implements Fisher's
> and Stouffer's methods for combining p-values.
>
> `scipy.stats.describe` returns a namedtuple rather than a tuple, allowing
> users to access results by index or by name.
>
>
> Deprecated features
> ===================
>
> The `scipy.weave` module is deprecated.  It was the only module never
> ported
> to Python 3.x, and is not recommended to be used for new code - use Cython
> instead.  In order to support existing code, ``scipy.weave`` has been
> packaged
> separately: https://github.com/scipy/weave.  It is a pure Python
> package, and
> can easily be installed with ``pip install weave``.
>
> `scipy.special.bessel_diff_formula` is deprecated.  It is a private
> function,
> and therefore will be removed from the public API in a following release.
>
> ``scipy.stats.nanmean``, ``nanmedian`` and ``nanstd`` functions are
> deprecated
> in favor of their numpy equivalents.
>
>
> Backwards incompatible changes
> ==============================
>
> scipy.ndimage
> - -------------
>
> The functions `scipy.ndimage.minimum_positions`,
> `scipy.ndimage.maximum_positions`` and `scipy.ndimage.extrema` return
> positions as ints instead of floats.
>
> scipy.integrate
> - ---------------
>
> The format of banded Jacobians in `scipy.integrate.ode` solvers is
> changed. Note that the previous documentation of this feature was
> erroneous.
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