Your message dated Mon, 08 Sep 2025 18:25:00 +0000
with message-id <[email protected]>
and subject line Bug#1113919: Removed package(s) from unstable
has caused the Debian Bug report #1078417,
regarding symfit: FTBFS:         with pytest.raises(NameError):
to be marked as done.

This means that you claim that the problem has been dealt with.
If this is not the case it is now your responsibility to reopen the
Bug report if necessary, and/or fix the problem forthwith.

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-- 
1078417: https://bugs.debian.org/cgi-bin/bugreport.cgi?bug=1078417
Debian Bug Tracking System
Contact [email protected] with problems
--- Begin Message ---
Source: symfit
Version: 0.5.6-3
Severity: serious
Justification: FTBFS
Tags: trixie sid ftbfs
User: [email protected]
Usertags: ftbfs-20240809 ftbfs-trixie

Hi,

During a rebuild of all packages in sid, your package failed to build
on amd64.


Relevant part (hopefully):
> make[1]: Entering directory '/<<PKGBUILDDIR>>'
> dh_auto_test
> I: pybuild base:311: cd /<<PKGBUILDDIR>>/.pybuild/cpython3_3.12/build; 
> python3.12 -m pytest tests
> ============================= test session starts 
> ==============================
> platform linux -- Python 3.12.5, pytest-8.3.2, pluggy-1.5.0
> rootdir: /<<PKGBUILDDIR>>/.pybuild/cpython3_3.12/build
> configfile: pytest.ini
> collected 123 items
> 
> tests/test_argument.py ....                                              [  
> 3%]
> tests/test_auto_fit.py ......                                            [  
> 8%]
> tests/test_constrained.py .....s............                             [ 
> 22%]
> tests/test_distributions.py ..                                           [ 
> 24%]
> tests/test_finite_difference.py ........                                 [ 
> 30%]
> tests/test_fit_result.py ..........                                      [ 
> 39%]
> tests/test_general.py .........s.........F....s......                    [ 
> 64%]
> tests/test_global_opt.py ....                                            [ 
> 67%]
> tests/test_minimize.py ......                                            [ 
> 72%]
> tests/test_minimizers.py .......                                         [ 
> 78%]
> tests/test_model.py ............                                         [ 
> 87%]
> tests/test_objectives.py .....                                           [ 
> 91%]
> tests/test_ode.py ........                                               [ 
> 98%]
> tests/test_support.py ..                                                 
> [100%]
> 
> =================================== FAILURES 
> ===================================
> __________________ test_likelihood_fitting_bivariate_gaussian 
> __________________
> 
>     def test_likelihood_fitting_bivariate_gaussian():
>         """
>         Fit using the likelihood method.
>         """
>         # Make variables and parameters
>         x = Variable('x')
>         y = Variable('y')
>         x0 = Parameter('x0', value=0.6, min=0.5, max=0.7)
>         sig_x = Parameter('sig_x', value=0.1, max=1.0)
>         y0 = Parameter('y0', value=0.7, min=0.6, max=0.9)
>         sig_y = Parameter('sig_y', value=0.05, max=1.0)
>         rho = Parameter('rho', value=0.001, min=-1, max=1)
>     
>         pdf = BivariateGaussian(x=x, mu_x=x0, sig_x=sig_x, y=y, mu_y=y0,
>                                 sig_y=sig_y, rho=rho)
>     
>         # Draw 100000 samples from a bivariate distribution
>         mean = [0.59, 0.8]
>         r = 0.6
>         cov = np.array([[0.11 ** 2, 0.11 * 0.23 * r],
>                         [0.11 * 0.23 * r, 0.23 ** 2]])
>         np.random.seed(42)
>         # TODO: Do we really need 100k points?
>         xdata, ydata = np.random.multivariate_normal(mean, cov, 100000).T
>     
>         fit = Fit(pdf, x=xdata, y=ydata, objective=LogLikelihood)
>         fit_result = fit.execute()
>     
>         assert fit_result.value(x0) == pytest.approx(mean[0], 1e-2)
>         assert fit_result.value(y0) == pytest.approx(mean[1], 1e-2)
>         assert fit_result.value(sig_x) == pytest.approx(np.sqrt(cov[0, 0]), 
> 1e-2)
>         assert fit_result.value(sig_y) == pytest.approx(np.sqrt(cov[1, 1]), 
> 1e-2)
>         assert fit_result.value(rho) == pytest.approx(r, 1e-2)
>     
>         marginal = integrate(pdf, (y, -oo, oo), conds='none')
>         fit = Fit(marginal, x=xdata, objective=LogLikelihood)
>     
>         with pytest.raises(NameError):
>             # Should raise a NameError, not a TypeError, see #219
> >           fit.execute()
> 
> tests/test_general.py:615: 
> _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ 
> _ 
> symfit/core/fit.py:573: in execute
>     minimizer_ans = self.minimizer.execute(**minimize_options)
> symfit/core/minimizers.py:400: in execute
>     return super(ScipyGradientMinimize, self).execute(jacobian=jacobian, 
> **minimize_options)
> symfit/core/minimizers.py:419: in execute
>     return super(ScipyBoundedMinimizer, self).execute(bounds=self.bounds,
> symfit/core/minimizers.py:339: in execute
>     ans = minimize(
> /usr/lib/python3/dist-packages/scipy/optimize/_minimize.py:713: in minimize
>     res = _minimize_lbfgsb(fun, x0, args, jac, bounds,
> /usr/lib/python3/dist-packages/scipy/optimize/_lbfgsb_py.py:347: in 
> _minimize_lbfgsb
>     sf = _prepare_scalar_function(fun, x0, jac=jac, args=args, epsilon=eps,
> /usr/lib/python3/dist-packages/scipy/optimize/_optimize.py:288: in 
> _prepare_scalar_function
>     sf = ScalarFunction(fun, x0, args, grad, hess,
> /usr/lib/python3/dist-packages/scipy/optimize/_differentiable_functions.py:166:
>  in __init__
>     self._update_fun()
> /usr/lib/python3/dist-packages/scipy/optimize/_differentiable_functions.py:262:
>  in _update_fun
>     self._update_fun_impl()
> /usr/lib/python3/dist-packages/scipy/optimize/_differentiable_functions.py:163:
>  in update_fun
>     self.f = fun_wrapped(self.x)
> /usr/lib/python3/dist-packages/scipy/optimize/_differentiable_functions.py:145:
>  in fun_wrapped
>     fx = fun(np.copy(x), *args)
> symfit/core/objectives.py:454: in __call__
>     evaluated_func = super(LogLikelihood, self).__call__(
> symfit/core/objectives.py:93: in __call__
>     result = self.model(**key2str(parameters))._asdict()
> symfit/core/models.py:706: in __call__
>     return ModelOutput(self.keys(), self.eval_components(*args, **kwargs))
> symfit/core/models.py:654: in eval_components
>     kwargs[symbol.name] = components[symbol](**dependencies_kwargs)
> <lambdifygenerated-1398>:2: in _lambdifygenerated
>     return (1/2)*exp(-x0**2/(-2*rho**2*sig_x**2 + 
> 2*sig_x**2))*exp(-y0**2/(-2*rho**2*sig_y**2 + 
> 2*sig_y**2))*exp(-x**2/(-2*rho**2*sig_x**2 + 
> 2*sig_x**2))*exp(2*x0*x/(-2*rho**2*sig_x**2 + 
> 2*sig_x**2))*exp(2*rho*x0*y0/(-2*rho**2*sig_x*sig_y + 
> 2*sig_x*sig_y))*exp(-2*rho*y0*x/(-2*rho**2*sig_x*sig_y + 
> 2*sig_x*sig_y))*quad(lambda y: exp(-y**2/(-2*rho**2*sig_y**2 + 
> 2*sig_y**2))*exp(2*y0*y/(-2*rho**2*sig_y**2 + 
> 2*sig_y**2))*exp(-2*rho*x0*y/(-2*rho**2*sig_x*sig_y + 
> 2*sig_x*sig_y))*exp(2*rho*x*y/(-2*rho**2*sig_x*sig_y + 2*sig_x*sig_y)), -inf, 
> inf)[0]/(sig_x*sig_y*pi*sqrt(-(rho - 1)*(rho + 1)))
> /usr/lib/python3/dist-packages/scipy/integrate/_quadpack_py.py:464: in quad
>     retval = _quad(func, a, b, args, full_output, epsabs, epsrel, limit,
> _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ 
> _ 
> 
> func = <function _lambdifygenerated.<locals>.<lambda> at 0x7ff39297bf60>
> a = -inf, b = inf, args = (), full_output = 0, epsabs = 1.49e-08
> epsrel = 1.49e-08, limit = 50, points = None
> 
>     def _quad(func,a,b,args,full_output,epsabs,epsrel,limit,points):
>         infbounds = 0
>         if (b != np.inf and a != -np.inf):
>             pass   # standard integration
>         elif (b == np.inf and a != -np.inf):
>             infbounds = 1
>             bound = a
>         elif (b == np.inf and a == -np.inf):
>             infbounds = 2
>             bound = 0     # ignored
>         elif (b != np.inf and a == -np.inf):
>             infbounds = -1
>             bound = b
>         else:
>             raise RuntimeError("Infinity comparisons don't work for you.")
>     
>         if points is None:
>             if infbounds == 0:
>                 return 
> _quadpack._qagse(func,a,b,args,full_output,epsabs,epsrel,limit)
>             else:
> >               return _quadpack._qagie(func, bound, infbounds, args, 
> > full_output,
>                                         epsabs, epsrel, limit)
> E               TypeError: only length-1 arrays can be converted to Python 
> scalars
> 
> /usr/lib/python3/dist-packages/scipy/integrate/_quadpack_py.py:613: TypeError
> =============================== warnings summary 
> ===============================
> symfit/core/printing.py:13
>   /<<PKGBUILDDIR>>/.pybuild/cpython3_3.12/build/symfit/core/printing.py:13: 
> DeprecationWarning: pkg_resources is deprecated as an API. See 
> https://setuptools.pypa.io/en/latest/pkg_resources.html
>     import pkg_resources
> 
> tests/test_auto_fit.py: 3 warnings
> tests/test_constrained.py: 14 warnings
> tests/test_finite_difference.py: 1 warning
> tests/test_fit_result.py: 5 warnings
> tests/test_general.py: 16 warnings
> tests/test_minimizers.py: 2 warnings
> tests/test_objectives.py: 1 warning
> tests/test_ode.py: 1 warning
>   /<<PKGBUILDDIR>>/.pybuild/cpython3_3.12/build/symfit/core/fit.py:278: 
> DeprecationWarning: `product` is deprecated as of NumPy 1.25.0, and will be 
> removed in NumPy 2.0. Please use `prod` instead.
>     cov_matrix = self._covariance_matrix(best_fit_params,
> 
> tests/test_auto_fit.py: 2 warnings
> tests/test_constrained.py: 13 warnings
> tests/test_finite_difference.py: 2 warnings
> tests/test_fit_result.py: 1 warning
> tests/test_general.py: 12 warnings
> tests/test_global_opt.py: 3 warnings
> tests/test_ode.py: 7 warnings
>   /<<PKGBUILDDIR>>/.pybuild/cpython3_3.12/build/symfit/core/fit.py:301: 
> DeprecationWarning: `product` is deprecated as of NumPy 1.25.0, and will be 
> removed in NumPy 2.0. Please use `prod` instead.
>     cov_matrix = self._covariance_matrix(best_fit_params,
> 
> tests/test_constrained.py: 196 warnings
>   
> /<<PKGBUILDDIR>>/.pybuild/cpython3_3.12/build/tests/test_constrained.py:766: 
> DeprecationWarning: 'scipy.integrate.simps' is deprecated in favour of 
> 'scipy.integrate.simpson' and will be removed in SciPy 1.14.0
>     {Y: lambda x, y: simps(y, x) - 1},  # Integrate using simps
> 
> tests/test_general.py::test_likelihood_fitting_exponential
>   /usr/lib/python3/dist-packages/_pytest/python.py:159: DeprecationWarning: 
> `product` is deprecated as of NumPy 1.25.0, and will be removed in NumPy 2.0. 
> Please use `prod` instead.
>     result = testfunction(**testargs)
> 
> -- Docs: https://docs.pytest.org/en/stable/how-to/capture-warnings.html
> =========================== short test summary info 
> ============================
> FAILED tests/test_general.py::test_likelihood_fitting_bivariate_gaussian - 
> Ty...
> ====== 1 failed, 119 passed, 3 skipped, 281 warnings in 117.77s (0:01:57) 
> ======
> E: pybuild pybuild:389: test: plugin distutils failed with: exit code=1: cd 
> /<<PKGBUILDDIR>>/.pybuild/cpython3_3.12/build; python3.12 -m pytest tests
> dh_auto_test: error: pybuild --test --test-pytest -i python{version} -p 3.12 
> returned exit code 13


The full build log is available from:
http://qa-logs.debian.net/2024/08/09/symfit_0.5.6-3_unstable.log

All bugs filed during this archive rebuild are listed at:
https://bugs.debian.org/cgi-bin/pkgreport.cgi?tag=ftbfs-20240809;[email protected]
or:
https://udd.debian.org/bugs/?release=na&merged=ign&fnewerval=7&flastmodval=7&fusertag=only&fusertagtag=ftbfs-20240809&[email protected]&allbugs=1&cseverity=1&ctags=1&caffected=1#results

A list of current common problems and possible solutions is available at
http://wiki.debian.org/qa.debian.org/FTBFS . You're welcome to contribute!

If you reassign this bug to another package, please mark it as 'affects'-ing
this package. See https://www.debian.org/Bugs/server-control#affects

If you fail to reproduce this, please provide a build log and diff it with mine
so that we can identify if something relevant changed in the meantime.

--- End Message ---
--- Begin Message ---
Version: 0.5.6-3+rm

Dear submitter,

as the package symfit has just been removed from the Debian archive
unstable we hereby close the associated bug reports.  We are sorry
that we couldn't deal with your issue properly.

For details on the removal, please see https://bugs.debian.org/1113919

The version of this package that was in Debian prior to this removal
can still be found using https://snapshot.debian.org/.

Please note that the changes have been done on the master archive and
will not propagate to any mirrors until the next dinstall run at the
earliest.

This message was generated automatically; if you believe that there is
a problem with it please contact the archive administrators by mailing
[email protected].

Debian distribution maintenance software
pp.
Paul Tagliamonte (the ftpmaster behind the curtain)

--- End Message ---
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