Sherpa

Sherpa is a modeling and fitting application for Python. It contains a powerful language for combining simple models into complex expressions that can be fit to the data using a variety of statistics and optimization methods. It is easily extensible to include user models, statistics, and optimization methods. It provides a high-level User Interface for interactive data-analysis work, such as within a Jupyter notebook, and it can also be used as a library component, providing fitting and modeling capabilities to an application.

What can you do with Sherpa?

  • fit 1D (multiple) data including: spectra, surface brightness profiles, light curves, general ASCII arrays
  • fit 2D images/surfaces in Poisson/Gaussian regime
  • build complex model expressions
  • import and use your own models
  • use appropriate statistics for modeling Poisson or Gaussian data
  • import new statistics, with priors if required by analysis
  • visualize the parameter space with simulations or using 1D/2D cuts of the parameter space
  • calculate confidence levels on the best fit model parameters
  • choose a robust optimization method for the fit: Levenberg-Marquardt, Nelder-Mead Simplex or Monte Carlo/Differential Evolution.

GitHub

https://github.com/sherpa/sherpa