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Contents zELDA II:

  • Introduction
  • Installation
  • About the LyaRT data grids
  • Tutorial : Computing ideal line profiles
  • Tutorial : Computing mock line profiles
  • Tutorial : Fitting a IGM/CGM attenuated line profile using deep learning
  • Tutorial : Fitting a line profile using Monte Carlo Markov Chains
  • Tutorial : Computing interestellar medium Lyman-alpha escape fractions
  • funcs module

Contents zELDA I:

  • Installation
  • Tutorial : Train your own neural network
  • Tutorial : Fitting a line profile using deep learning
zELDA
  • zELDA’s documentation v0.1
  • View page source

_images/fig_log_DOUBLE_COOL_SHELL_EDGE_r_2.0_s_30_WHITE_False.png

zELDA’s documentation v0.1

Contents zELDA II:

  • Introduction
    • Authors
    • Publication links
    • Origins and motivation
  • Installation
    • Python package
    • LyaRT data grids
    • Partial installation for testing
  • About the LyaRT data grids
    • Getting started
    • Line profile LyaRT data grids
    • Line profile grids with smaller RAM occupation
  • Tutorial : Computing ideal line profiles
    • Computing an ideal line profile
    • Computing an ideal line profile with the IGM absorption
    • Computing many ideal line profiles
  • Tutorial : Computing mock line profiles
    • Mocking Lyman-alpha line profiles
    • Plotting cooler line profiles
  • Tutorial : Fitting a IGM/CGM attenuated line profile using deep learning
    • Getting started
    • Fitting a line
    • Showing a fitted line profile
    • Showing the Monte Carlo iterations.
  • Tutorial : Fitting a line profile using Monte Carlo Markov Chains
    • Getting started
    • The MCMC anlysis
    • Tool to make corraltion plots
  • Tutorial : Computing interestellar medium Lyman-alpha escape fractions
    • Default computation of escape fractions
    • Deeper options on predicting the escape fraction
  • funcs module

Contents zELDA I:

  • Installation
    • Python package
    • LyaRT data grids
    • Partial installation for testing
  • Tutorial : Train your own neural network
    • Generating data sets for the training
    • Get your DNN ready!
    • Using your custom DNN
  • Tutorial : Fitting a line profile using deep learning
    • Getting started
    • Using the DNN in the un-perturbed line profile
    • Using the DNN with Monte Carlo perturbations

Indices and tables

  • Index

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