python-bumps 0.7.6-3 source package in Ubuntu

Changelog

python-bumps (0.7.6-3) unstable; urgency=medium

  * Allow numerical fuzz in tests.
  * Update Standards-Version to 4.1.2 (no changes required).
  * Set Rules-Require-Root: no.
  * Switch to dehelper compat 11.
   - update to place documentation in /usr/share/doc/python-bumps as per
     Policy ยง12.3.

 -- Stuart Prescott <email address hidden>  Sat, 30 Dec 2017 16:38:43 +1100

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Uploaded by:
Debian Science Team
Uploaded to:
Sid
Original maintainer:
Debian Science Team
Architectures:
all
Section:
misc
Urgency:
Medium Urgency

See full publishing history Publishing

Series Pocket Published Component Section
Bionic release universe misc

Builds

Bionic: [FULLYBUILT] amd64

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python-bumps_0.7.6-3.dsc 2.6 KiB 55e4d4f2ae6845df7048401bfa5d8e5d2cb3f47ffa4e28d2066103c5861d3384
python-bumps_0.7.6.orig.tar.gz 2.5 MiB 1097734255516b0cedb9cf8706801faa6285c2c9356a92cd6fc7f3ebab113d9d
python-bumps_0.7.6-3.debian.tar.xz 11.4 KiB e960af013d6719b3ff50ac2ff20836ba36d0efe3bf074271409955d6ac659617

Available diffs

No changes file available.

Binary packages built by this source

python-bumps: data fitting and Bayesian uncertainty modeling for inverse problems (Python 2)

 Bumps is a set of routines for curve fitting and uncertainty analysis
 from a Bayesian perspective. In addition to traditional optimizers
 which search for the best minimum they can find in the search space,
 bumps provides uncertainty analysis which explores all viable minima
 and finds confidence intervals on the parameters based on uncertainty
 in the measured values. Bumps has been used for systems of up to 100
 parameters with tight constraints on the parameters. Full uncertainty
 analysis requires hundreds of thousands of function evaluations,
 which is only feasible for cheap functions, systems with many
 processors, or lots of patience.
 .
 Bumps includes several traditional local optimizers such as
 Nelder-Mead simplex, BFGS and differential evolution. Bumps
 uncertainty analysis uses Markov chain Monte Carlo to explore the
 parameter space. Although it was created for curve fitting problems,
 Bumps can explore any probability density function, such as those
 defined by PyMC. In particular, the bumps uncertainty analysis works
 well with correlated parameters.
 .
 Bumps can be used as a library within your own applications, or as a
 framework for fitting, complete with a graphical user interface to
 manage your models.
 .
 This package installs the library for Python 2.

python-bumps-doc: data fitting and Bayesian uncertainty modeling for inverse problems (docs)

 Bumps is a set of routines for curve fitting and uncertainty analysis
 from a Bayesian perspective. In addition to traditional optimizers
 which search for the best minimum they can find in the search space,
 bumps provides uncertainty analysis which explores all viable minima
 and finds confidence intervals on the parameters based on uncertainty
 in the measured values. Bumps has been used for systems of up to 100
 parameters with tight constraints on the parameters. Full uncertainty
 analysis requires hundreds of thousands of function evaluations,
 which is only feasible for cheap functions, systems with many
 processors, or lots of patience.
 .
 Bumps includes several traditional local optimizers such as
 Nelder-Mead simplex, BFGS and differential evolution. Bumps
 uncertainty analysis uses Markov chain Monte Carlo to explore the
 parameter space. Although it was created for curve fitting problems,
 Bumps can explore any probability density function, such as those
 defined by PyMC. In particular, the bumps uncertainty analysis works
 well with correlated parameters.
 .
 Bumps can be used as a library within your own applications, or as a
 framework for fitting, complete with a graphical user interface to
 manage your models.
 .
 This is the common documentation package.

python3-bumps: data fitting and Bayesian uncertainty modeling for inverse problems (Python 3)

 Bumps is a set of routines for curve fitting and uncertainty analysis
 from a Bayesian perspective. In addition to traditional optimizers
 which search for the best minimum they can find in the search space,
 bumps provides uncertainty analysis which explores all viable minima
 and finds confidence intervals on the parameters based on uncertainty
 in the measured values. Bumps has been used for systems of up to 100
 parameters with tight constraints on the parameters. Full uncertainty
 analysis requires hundreds of thousands of function evaluations,
 which is only feasible for cheap functions, systems with many
 processors, or lots of patience.
 .
 Bumps includes several traditional local optimizers such as
 Nelder-Mead simplex, BFGS and differential evolution. Bumps
 uncertainty analysis uses Markov chain Monte Carlo to explore the
 parameter space. Although it was created for curve fitting problems,
 Bumps can explore any probability density function, such as those
 defined by PyMC. In particular, the bumps uncertainty analysis works
 well with correlated parameters.
 .
 Bumps can be used as a library within your own applications, or as a
 framework for fitting, complete with a graphical user interface to
 manage your models.
 .
 This package installs the library for Python 3.