"""
Bumps command line interface.
The functions in this module are used by the bumps command to implement
the command line interface. Bumps plugin models can use them to create
stand alone applications with a similar interface. For example, the
Refl1D application uses the following::
from . import fitplugin
import bumps.cli
bumps.cli.set_mplconfig(appdatadir='Refl1D')
bumps.cli.install_plugin(fitplugin)
bumps.cli.main()
After completing a set of fits on related systems, a post-analysis script
can use :func:`load_model` to load the problem definition and
:func:`load_best` to load the best value found in the fit. This can
be used for example in experiment design, where you look at the expected
parameter uncertainty when fitting simulated data from a range of experimental
systems.
"""
from __future__ import with_statement, print_function
__all__ = ["main", "install_plugin", "set_mplconfig", "config_matplotlib",
"load_model", "preview", "load_best", "save_best", "resynth"]
import sys
import os
import re
import warnings
import traceback
import shutil
try:
import dill as pickle
except ImportError:
import pickle
import numpy as np
# np.seterr(all="raise")
from . import fitters
from .fitters import FitDriver, StepMonitor, ConsoleMonitor, nllf_scale
from .mapper import MPMapper, AMQPMapper, MPIMapper, SerialMapper
from .formatnum import format_uncertainty
from . import util
from . import initpop
from . import __version__
from . import plugin
from . import options
from .util import pushdir
[docs]def install_plugin(p):
"""
Replace symbols in :mod:`bumps.plugin` with application specific
methods.
"""
for symbol in plugin.__all__:
if hasattr(p, symbol):
setattr(plugin, symbol, getattr(p, symbol))
[docs]def load_model(path, model_options=None):
"""
Load a model file.
*path* contains the path to the model file.
*model_options* are any additional arguments to the model. The sys.argv
variable will be set such that *sys.argv[1:] == model_options*.
"""
from .fitproblem import load_problem
# Change to the target path before loading model so that data files
# can be given as relative paths in the model file. This should also
# allow imports as expected from the model file.
directory, filename = os.path.split(path)
with pushdir(directory):
# Try a specialized model loader
problem = plugin.load_model(filename)
if problem is None:
# print "loading",filename,"from",directory
if filename.endswith('pickle'):
# First see if it is a pickle
problem = pickle.load(open(filename, 'rb'))
else:
# Then see if it is a python model script
problem = load_problem(filename, options=model_options)
# Guard against the user changing parameters after defining the problem.
problem.model_reset()
problem.path = os.path.abspath(path)
if not hasattr(problem, 'title'):
problem.title = filename
problem.name, _ = os.path.splitext(filename)
problem.options = model_options
return problem
[docs]def preview(problem):
"""
Show the problem plots and parameters.
"""
import pylab
problem.show()
problem.plot()
pylab.show()
[docs]def save_best(fitdriver, problem, best):
"""
Save the fit data, including parameter values, uncertainties and plots.
*fitdriver* is the fitter that was used to drive the fit.
*problem* is a FitProblem instance.
*best* is the parameter set to save.
"""
# Make sure the problem contains the best value
# TODO: avoid recalculating if problem is already at best.
problem.setp(best)
# print "remembering best"
pardata = "".join("%s %.15g\n" % (name, value)
for name, value in zip(problem.labels(), problem.getp()))
open(problem.output_path + ".par", 'wt').write(pardata)
fitdriver.save(problem.output_path)
with util.redirect_console(problem.output_path + ".err"):
fitdriver.show()
fitdriver.plot(problem.output_path)
fitdriver.show()
# print "plotting"
PARS_PATTERN = re.compile(r"^(?P<label>.*) (?P<value>[^ ]*)\n$")
[docs]def load_best(problem, path):
"""
Load parameter values from a file.
"""
#targets = dict(zip(problem.labels(), problem.getp()))
targets = dict((name, np.NaN) for name in problem.labels())
with open(path, 'rt') as fid:
for line in fid:
m = PARS_PATTERN.match(line)
label, value = m.group('label'), float(m.group('value'))
if label in targets:
targets[label] = value
values = [targets[label] for label in problem.labels()]
problem.setp(np.asarray(values))
#CRUFT
recall_best = load_best
def store_overwrite_query_gui(path):
"""
Ask if store path should be overwritten.
Use this in a call to :func:`make_store` from a graphical user interface.
"""
import wx
msg_dlg = wx.MessageDialog(None, path + " already exists. Press 'yes' to overwrite, or 'No' to abort and restart with newpath", 'Overwrite Directory',
wx.YES_NO | wx.ICON_QUESTION)
retCode = msg_dlg.ShowModal()
msg_dlg.Destroy()
if retCode != wx.ID_YES:
raise RuntimeError("Could not create path")
def store_overwrite_query(path):
"""
Ask if store path should be overwritten.
Use this in a call to :func:`make_store` from a command line interface.
"""
print(path, "already exists.")
print(
"Press 'y' to overwrite, or 'n' to abort and restart with --store=newpath")
ans = input("Overwrite [y/n]? ")
if ans not in ("y", "Y", "yes"):
sys.exit(1)
def make_store(problem, opts, exists_handler):
"""
Create the store directory and populate it with the model definition file.
"""
# Determine if command line override
if opts.store:
problem.store = opts.store
problem.output_path = os.path.join(problem.store, problem.name)
# Check if already exists
if not opts.overwrite and os.path.exists(problem.output_path + '.out'):
if opts.batch:
print(
problem.store + " already exists. Use --overwrite to replace.", file=sys.stderr)
sys.exit(1)
exists_handler(problem.output_path)
# Create it and copy model
if not os.path.exists(problem.store):
os.mkdir(problem.store)
shutil.copy2(problem.path, problem.store)
# Redirect sys.stdout to capture progress
if opts.batch:
sys.stdout = open(problem.output_path + ".mon", "w")
def run_profiler(problem, steps):
"""
Model execution profiler.
Run the program with "--profiler --steps=N" to generate a function
profile chart breaking down the cost of evaluating N models.
"""
# Here is the findings from one profiling session::
# 23 ms total
# 6 ms rendering model
# 8 ms abeles
# 4 ms convolution
# 1 ms setting parameters and computing nllf
from .util import profile
p = initpop.random_init(int(steps), None, problem)
# Note: map is an iterator in python 3
profile(lambda *args: list(map(*args)), problem.nllf, p)
def run_timer(mapper, problem, steps):
"""
Model execution timer.
Run the program with "--timer --steps=N" to determine the average
run time of the model. If --parallel is included, then the model
will be run in parallel on separate cores.
"""
import time
T0 = time.time()
p = initpop.random_init(int(steps), None, problem)
mapper(p)
print("time per model eval: %g ms" % (1000 * (time.time() - T0) / steps,))
def start_remote_fit(problem, options, queue, notify):
"""
Queue remote fit.
"""
from jobqueue.client import connect
data = dict(package='bumps',
version=__version__,
problem=pickle.dumps(problem),
options=pickle.dumps(options))
request = dict(service='fitter',
version=__version__, # fitter service version
notify=notify,
name=problem.title,
data=data)
server = connect(queue)
job = server.submit(request)
return job
# ==== Main ====
def initial_model(opts):
"""
Load and initialize the model.
*opts* are the processed command line options.
If --pars is in opts, then load the parameters from a .par file.
If --simulate is in opts, then generate random data from the model.
If --simrandom is in opts, then generate random data from a random model.
If --shake is in opts, then use a random initial state for the fit.
"""
if opts.seed is not None:
np.random.seed(opts.seed)
if opts.args:
problem = load_model(opts.args[0],opts.args[1:])
if opts.pars is not None:
load_best(problem, opts.pars)
if opts.simrandom:
problem.randomize()
if opts.simulate or opts.simrandom:
noise = None if opts.noise == "data" else float(opts.noise)
problem.simulate_data(noise=noise)
print("simulation parameters")
print(problem.summarize())
print("chisq at simulation", problem.chisq())
if opts.shake:
problem.randomize()
else:
problem = None
return problem
[docs]def resynth(fitdriver, problem, mapper, opts):
"""
Generate maximum likelihood fits to resynthesized data sets.
*fitdriver* is a :class:`bumps.fitters.FitDriver` object with a fitter
already chosen.
*problem* is a :func:`bumps.fitproblem.FitProblem` object. It should
be initialized with optimal values for the parameters.
*mapper* is one of the available :mod:`bumps.mapper` classes.
*opts* is a :class:`bumps.cli.BumpsOpts` object representing the command
line parameters.
"""
make_store(problem, opts, exists_handler=store_overwrite_query)
fid = open(problem.output_path + ".rsy", 'at')
fitdriver.mapper = mapper.start_mapper(problem, opts.args)
for i in range(opts.resynth):
problem.resynth_data()
best, fbest = fitdriver.fit()
scale, err = nllf_scale(problem)
print("step %d chisq %g" % (i, scale * fbest))
fid.write('%.15g ' % (scale * fbest))
fid.write(' '.join('%.15g' % v for v in best))
fid.write('\n')
problem.restore_data()
fid.close()
[docs]def set_mplconfig(appdatadir):
r"""
Point the matplotlib config dir to %LOCALAPPDATA%\{appdatadir}\mplconfig.
"""
import os
import sys
if hasattr(sys, 'frozen'):
mplconfigdir = os.path.join(
os.environ['LOCALAPPDATA'], appdatadir, 'mplconfig')
mplconfigdir = os.environ.setdefault('MPLCONFIGDIR', mplconfigdir)
if not os.path.exists(mplconfigdir):
os.makedirs(mplconfigdir)
[docs]def config_matplotlib(backend=None):
"""
Setup matplotlib to use a particular backend.
The backend should be 'WXAgg' for interactive use, or 'Agg' for batch.
This distinction allows us to run in environments such as cluster computers
which do not have wx installed on the compute nodes.
This function must be called before any imports to pylab. To allow
this, modules should not import pylab at the module level, but instead
import it for each function/method that uses it. Exceptions can be made
for modules which are completely dedicated to plotting, but these modules
should never be imported at the module level.
"""
# When running from a frozen environment created by py2exe, we will not
# have a range of backends available, and must set the default to WXAgg.
# With a full matplotlib distribution we can use whatever the user prefers.
if hasattr(sys, 'frozen'):
if 'MPLCONFIGDIR' not in os.environ:
raise RuntimeError(
"MPLCONFIGDIR should be set to e.g., %LOCALAPPDATA%\YourApp\mplconfig")
if backend is None:
backend = 'WXAgg'
import matplotlib
# Specify the backend to use for plotting and import backend dependent
# classes. Note that this must be done before importing pyplot to have an
# effect. If no backend is given, let pyplot use the default.
if backend is not None:
matplotlib.use(backend)
# Disable interactive mode so that plots are only updated on show() or
# draw(). Note that the interactive function must be called before
# selecting a backend or importing pyplot, otherwise it will have no
# effect.
matplotlib.interactive(False)
def beep():
"""
Audio signal that fit is complete.
"""
if sys.platform == "win32":
import winsound
winsound.MessageBeep(winsound.MB_ICONEXCLAMATION)
else:
print("\a", file=sys.__stdout__)
def run_command(c):
"""
Run an arbitrary python command.
"""
exec(c, globals())
def setup_logging():
import logging
logging.basicConfig(level=logging.INFO)
# from http://stackoverflow.com/questions/22373927/get-traceback-of-warnings
# answered by mgab (2014-03-13)
# edited by Gareth Rees (2015-11-28)
def warn_with_traceback(message, category, filename, lineno, file=None, line=None):
traceback.print_stack()
log = file if hasattr(file, 'write') else sys.stderr
log.write(warnings.formatwarning(message, category, filename, lineno, line))
[docs]def main():
"""
Run the bumps program with the command line interface.
Input parameters are taken from sys.argv.
"""
# add full traceback to warnings
#warnings.showwarning = warn_with_traceback
if len(sys.argv) == 1:
sys.argv.append("-?")
print("\nNo modelfile parameter was specified.\n")
# run command with bumps in the environment
if sys.argv[1] == '-m':
import runpy
sys.argv = sys.argv[2:]
runpy.run_module(sys.argv[0], run_name="__main__")
sys.exit()
elif sys.argv[1] == '-p':
import runpy
sys.argv = sys.argv[2:]
runpy.run_path(sys.argv[0], run_name="__main__")
sys.exit()
elif sys.argv[1] == '-c':
run_command(sys.argv[2])
sys.exit()
elif sys.argv[1] == '-i':
sys.argv = ["ipython", "--pylab"]
from IPython import start_ipython
sys.exit(start_ipython())
opts = options.getopts()
setup_logging()
if opts.edit:
from .gui.gui_app import main as gui
gui()
return
# Set up the matplotlib backend to minimize the wx/gui dependency.
# If no GUI specified and not editing, then use the default mpl
# backend for the python version.
if opts.batch or opts.remote or opts.noshow: # no interactivity
config_matplotlib(backend='Agg')
else: # let preview use default graphs
config_matplotlib()
problem = initial_model(opts)
# TODO: AMQP mapper as implemented requires workers started up with
# the particular problem; need to be able to transport the problem
# to the worker instead. Until that happens, the GUI shouldn't use
# the AMQP mapper.
if opts.mpi:
MPIMapper.start_worker(problem)
mapper = MPIMapper
elif opts.parallel or opts.worker:
if opts.transport == 'amqp':
mapper = AMQPMapper
elif opts.transport == 'mp':
mapper = MPMapper
elif opts.transport == 'celery':
mapper = CeleryMapper
else:
mapper = SerialMapper
if opts.worker:
mapper.start_worker(problem)
return
if np.isfinite(float(opts.time)):
import time
start_time = time.time()
stop_time = start_time + float(opts.time)*3600
abort_test=lambda: time.time() >= stop_time
else:
abort_test=lambda: False
fitdriver = FitDriver(
opts.fit_config.selected_fitter, problem=problem, abort_test=abort_test,
**opts.fit_config.selected_values)
if opts.time_model:
run_timer(mapper.start_mapper(problem, opts.args),
problem, steps=int(opts.steps))
elif opts.profile:
run_profiler(problem, steps=int(opts.steps))
elif opts.chisq:
if opts.cov:
print(problem.cov())
print("chisq", problem.chisq_str())
elif opts.preview:
if opts.cov:
print(problem.cov())
preview(problem)
elif opts.resynth > 0:
resynth(fitdriver, problem, mapper, opts)
elif opts.remote:
# Check that problem runs before submitting it remotely
chisq = problem()
print("initial chisq:", chisq)
job = start_remote_fit(problem, opts,
queue=opts.queue, notify=opts.notify)
print("remote job:", job['id'])
else:
if opts.resume:
resume_path = os.path.join(opts.resume, problem.name)
else:
resume_path = None
make_store(problem, opts, exists_handler=store_overwrite_query)
# Show command line arguments and initial model
print("#", " ".join(sys.argv))
problem.show()
if opts.stepmon:
fid = open(problem.output_path + '.log', 'w')
fitdriver.monitors = [ConsoleMonitor(problem),
StepMonitor(problem, fid, fields=['step', 'value'])]
#import time; t0=time.clock()
fitdriver.mapper = mapper.start_mapper(problem, opts.args)
best, fbest = fitdriver.fit(resume=resume_path)
# print("time=%g"%(time.clock()-t0),file=sys.__stdout__)
save_best(fitdriver, problem, best)
if opts.err or opts.cov:
fitdriver.show_err()
if opts.cov:
np.set_printoptions(linewidth=1e6)
print("=== Covariance matrix ===")
print(problem.cov())
print("=========================")
if opts.entropy:
print("Calculating entropy...")
S, dS = fitdriver.entropy()
print("Entropy: %s bits" % format_uncertainty(S, dS))
mapper.stop_mapper(fitdriver.mapper)
if not opts.batch and not opts.mpi and not opts.noshow:
beep()
import pylab
pylab.show()
# Allow "$python -m bumps.cli args" calling pattern
if __name__ == "__main__":
main()