- Code: https://github.com/tisimst/mcerp
- Documentation: (not online yet, for now, see the doc folder on Github)
- License: BSD-3-Clause
mcerp
is a stochastic calculator for Monte Carlo methods that uses
latin-hypercube sampling to perform non-order specific
error propagation (or uncertainty analysis).
With this package you can easily and transparently track the effects of uncertainty through mathematical calculations. Advanced mathematical functions, similar to those in the standard math module, and statistical functions like those in the scipy.stats module, can also be evaluated directly.
If you are familiar with Excel-based risk analysis programs like @Risk, Crystal Ball, ModelRisk, etc., this package will work wonders for you (and probably even be faster!) and give you more modelling flexibility with the powerful Python language. This package also doesn't cost a penny, compared to those commercial packages which cost thousands of dollars for a single-seat license. Feel free to copy and redistribute this package as much as you desire!
- Transparent calculations. No or little modification to existing code required.
- Basic NumPy support without modification. (I haven't done extensive testing, so please let me know if you encounter bugs.)
- Advanced mathematical functions supported through the
mcerp.umath
sub-module. If you think a function is in there, it probably is. If it isn't, please request it! - Easy statistical distribution constructors. The location, scale, and shape parameters follow the notation in the respective Wikipedia articles and other relevant web pages.
- Correlation enforcement and variable sample visualization capabilities.
- Probability calculations using conventional comparison operators.
- Advanced Scipy statistical function compatibility with package functions. Depending on your version of Scipy, some functions might not work.
mcerp
works on Linux, MacOS and Windows, with Python 2.7 or with Python 3.5 or later.
To install it, use pip
:
pip install mcerp
The mcerp
dependencies should be installed automatically if using pip
,
otherwise they will need to be installed manually:
- NumPy : Numeric Python
- SciPy : Scientific Python
- Matplotlib : Python plotting library
- uncertainties : First-order error propagation
- soerp : Second-order error propagation
Please send feature requests, bug reports, or feedback to Abraham Lee.