Carousel ia a framework for simulating mathematical models that decouples the models from the simulation implementation. It takes care of boilerplate routines such as loading data from various sources into a key store that can be used from any calculation, determining the correct order of calculations, stepping through dynamic simulations and generating output reports and visualizations, so that you can focus on developing models and don't have to worry about how to add new models or how to integrate changes.
Carousel releases are on PyPI and on GitHub. You can use either pip
, conda
, or distutils
to install Carousel.
pip :
$ pip install Carousel
Extract the archive to use disutils :
$ python setup.py install
$ conda install -c sunpower Carousel
Carousel documentation is online. It's also included in the distribution and can be built using Sphinx by running the Makefile
found in the docs
folder of the Carousel package. Once built documentation will be found in the _build
folder under the tree corresponding to the type of documentation built. EG: HTML documentation is in docs/_build/html
.
Carousel source code is online. Fork it and report issues, make suggestions or create pull requests. Discuss the roadmap or download presentations on the wiki
The change log for all releases is on GitHub.
Define data, outputs, formulas, calculations, simulations and model:
#! python
from carousel.core.data_sources import DataSource, DataParameter
from carousel.core.outputs import Output, OutputParameter
from carousel.core.formulas import Formula, FormulaParameter
from carousel.core.calculations import Calc, CalcParameter
from carousel.core.simulations import Simulation, SimParameter
from carousel.core.models import Model, ModelParameter
from carousel.contrib.readers import ArgumentReader
from carousel.core import UREG
import numpy as np
import os
DATA = {'PythagoreanData': {'adjacent_side': 3.0, 'opposite_side': 4.0}}
class PythagoreanData(DataSource):
adjacent_side = DataParameter(units='cm', uncertainty=1.0)
opposite_side = DataParameter(units='cm', uncertainty=1.0)
def __prepare_data__(self):
for k, v in self.parameters.iteritems():
self.uncertainty[k] = {k: v['uncertainty'] * UREG.percent}
class Meta:
data_cache_enabled = False
data_reader = ArgumentReader
class PythagoreanOutput(Output):
hypotenuse = OutputParameter(units='cm')
def f_pythagorean(a, b):
a, b = np.atleast_1d(a), np.atleast_1d(b)
return np.sqrt(a * a + b * b).reshape(1, -1)
class PythagoreanFormula(Formula):
f_pythagorean = FormulaParameter(
units=[('=A', ), ('=A', '=A')],
isconstant=[]
)
class Meta:
module = __name__
class PythagoreanCalc(Calc):
pythagorean_thm = CalcParameter(
formula='f_pythagorean',
args={'data': {'a': 'adjacent_side', 'b': 'opposite_side'}},
returns=['hypotenuse']
)
class PythagoreanSim(Simulation):
settings = SimParameter(
ID='Pythagorean Theorem',
commands=['start', 'load', 'run'],
sim_length=[0, 'hour'],
write_fields={
'data': ['adjacent_side', 'opposite_side'],
'outputs': ['hypotenuse']
}
)
class PythagoreanModel(Model):
data = ModelParameter(sources=[PythagoreanData])
outputs = ModelParameter(sources=[PythagoreanOutput])
formulas = ModelParameter(sources=[PythagoreanFormula])
calculations = ModelParameter(sources=[PythagoreanCalc])
simulations = ModelParameter(sources=[PythagoreanSim])
class Meta:
modelpath = os.path.dirname(__file__)
if __name__ == '__main__':
m = PythagoreanModel()
m.command('run', data=DATA)
out_reg = m.registries['outputs']
fmt = {
'output': out_reg['hypotenuse'],
'uncertainty': out_reg.uncertainty['hypotenuse']['hypotenuse']
}
print 'hypotenuse = %(output)s +/- %(uncertainty)s' % fmt
This is the MCVE of a Carousel model.