Metadata-Version: 2.1
Name: ndradex
Version: 0.2.1
Summary: Python package for RADEX grid calculation
Home-page: https://github.com/astropenguin/ndradex
Author: astropenguin
Author-email: taniguchi@a.phys.nagoya-u.ac.jp
License: MIT
Description: # ndRADEX
        
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        Python package for RADEX grid calculation
        
        ## TL;DR
        
        ndRADEX is a Python package which can run [RADEX], non-LTE molecular radiative transfer code, with parameters of multiple values (i.e., RADEX with grid parameters).
        The output will be multi-dimensional arrays, which may be useful for parameter search of physical conditions in comparison with observed values.
        
        ## Features
        
        - **Grid calculation:** ndRADEX has a simple `run()` function, where all parameters of RADEX can be griddable (i.e., they can be list-like with length of more than one).
        - **Builtin RADEX:** ndRADEX provides builtin RADEX binaries in the package, which are automatically downloaded and built during the package installation. This also enables us to do RADEX calculations in the cloud such as [Google Colaboratory](https://colab.research.google.com).
        - **Multiprocessing:** ndRADEX supports multiprocessing RADEX run by default. At least twice speedup is expected compared to single processing.
        - **Handy I/O:** The output of ndRADEX is a [xarray]'s Dataset, a standard multi-dimensional data structure as well as [pandas]. You can handle it in the same manner as NumPy and pandas (i.e., element-wise operation, save/load data, plotting, etc).
        
        ## Requirements
        
        - Python 3.6, 3.7, or 3.8 (tested by the author)
        - gfortran (necessary to build RADEX)
        
        ## Installation
        
        You can install ndRADEX with pip:
        
        ```shell
        $ pip install ndradex
        ```
        
        Please make sure that all requirements are met before the installation.
        
        ## Usages
        
        Within Python, import the package like:
        
        ```python
        >>> import ndradex
        ```
        
        ### Single RADEX run
        
        The main funtion of ndRADEX is `ndradex.run()`.
        For example, to get RADEX results of CO(1-0) with kinetic temperature of 100 K, CO column density of 1e15 cm^-2, and H2 density of 1e3 cm^-3:
        
        ```python
        >>> ds = ndradex.run('co.dat', '1-0', 100, 1e15, 1e3)
        ```
        
        where `'co.dat'` is a name of [LAMDA] datafile and `'1-0'` is a name of transition.
        The available values are listed in [List of available LAMDA datafiles and transitions](https://github.com/astropenguin/ndradex/wiki/List-of-available-LAMDA-datafiles-and-transitions).
        Note that you don't need to any download datafiles:
        ndRADEX automatically manage this.
        
        In this case, other parameters like line width, background temperature are default values defined in the function.
        The geometry of escape probability is uniform (`'uni'`) by default.
        You can change these values with custom config (see customizations below).
        
        The output is a [xarray]'s Dataset with no dimension:
        
        ```python
        >>> print(ds)
        <xarray.Dataset>
        Dimensions:      ()
        Coordinates:
            QN_ul        <U3 '1-0'
            T_kin        int64 100
            N_mol        float64 1e+15
            n_H2         float64 1e+03
            T_bg         float64 2.73
            dv           float64 1.0
            geom         <U3 'uni'
            description  <U9 'LAMDA(CO)'
        Data variables:
            E_u          float64 5.5
            freq         float64 115.3
            wavel        float64 2.601e+03
            T_ex         float64 132.5
            tau          float64 0.009966
            T_r          float64 1.278
            pop_u        float64 0.4934
            pop_l        float64 0.1715
            I            float64 1.36
            F            float64 2.684e-08
        ```
        
        You can access each result value like:
        
        ```python
        >>> flux = ds['F'].values
        ```
        
        ### Grid RADEX run
        
        As a natural extension, you can run grid RADEX calculation like:
        
        ```python
        >>> ds = ndradex.run('co.dat', ['1-0', '2-1'], T_kin=[100, 200, 300],
                             N_mol=1e15, n_H2=[1e3, 1e4, 1e5, 1e6, 1e7])
        ```
        
        There are 13 parameters which can be griddable:
        `QN_ul` (transition name), `T_kin` (kinetic temperature), `N_mol` (column density), `n_H2` (H2 density), `n_pH2` (para-H2 density), `n_oH2` (ortho-H2 density), `n_e` (electron density), `n_H` (atomic hydrogen density), `n_He` (Helium density), `n_Hp` (ionized hydrogen density), `T_bg` (background temperature), `dv` (line width), and `geom` (photon escape geometry).
        
        The output of this example is a [xarray]'s Dataset with three dimensions of (`QN_ul`, `T_kin`, `n_H2`):
        
        ```python
        >>> print(ds)
        <xarray.Dataset>
        Dimensions:      (QN_ul: 2, T_kin: 3, n_H2: 5)
        Coordinates:
          * QN_ul        (QN_ul) <U3 '1-0' '2-1'
          * T_kin        (T_kin) int64 100 200 300
            N_mol        float64 1e+15
          * n_H2         (n_H2) float64 1e+03 1e+04 1e+05 1e+06 1e+07
            T_bg         float64 2.73
            dv           float64 1.0
            geom         <U3 'uni'
            description  <U9 'LAMDA(CO)'
        Data variables:
            E_u          (QN_ul, T_kin, n_H2) float64 5.5 5.5 5.5 5.5 ... 16.6 16.6 16.6
            freq         (QN_ul, T_kin, n_H2) float64 115.3 115.3 115.3 ... 230.5 230.5
            wavel        (QN_ul, T_kin, n_H2) float64 2.601e+03 2.601e+03 ... 1.3e+03
            T_ex         (QN_ul, T_kin, n_H2) float64 132.5 -86.52 127.6 ... 316.6 301.6
            tau          (QN_ul, T_kin, n_H2) float64 0.009966 -0.005898 ... 0.0009394
            T_r          (QN_ul, T_kin, n_H2) float64 1.278 0.5333 ... 0.3121 0.2778
            pop_u        (QN_ul, T_kin, n_H2) float64 0.4934 0.201 ... 0.04972 0.04426
            pop_l        (QN_ul, T_kin, n_H2) float64 0.1715 0.06286 ... 0.03089 0.02755
            I            (QN_ul, T_kin, n_H2) float64 1.36 0.5677 ... 0.3322 0.2957
            F            (QN_ul, T_kin, n_H2) float64 2.684e-08 1.12e-08 ... 4.666e-08
        ```
        
        For more information, run `help(ndradex.run)` to see the docstrings.
        
        ### Save/load results
        
        You can save and load the dataset like:
        
        ```python
        # save results to a netCDF file
        >>> ndradex.save_dataset(ds, 'results.nc')
        
        # load results from a netCDF file
        >>> ds = ndradex.load_dataset('results.nc')
        ```
        
        ## Customizations
        
        For the first time you import ndRADEX, the custom configuration file is created as `~/.config/ndradex/config.toml`.
        By editing this, you can customize the following two settings of ndRADEX.
        Note that you can change the path of configuration file by setting an environment variable, `NDRADEX_PATH`.
        
        ### Changing default values
        
        As mentioned above, you can change the default values of the `run()` function like:
        
        ```toml
        # config.toml
        
        [grid]
        T_bg = 10 # change default background temp to 10 K
        geom = "lvg" # change default geometry to LVG
        timeout = 30
        n_procs = 2
        ```
        
        You can also change the number of multiprocesses (`n_procs`) and timeout (`timeout`) here.
        
        ### Setting datafile aliases
        
        Sometimes datafile names are not intuitive (for example, name of CS datafile is `cs@lique.dat`).
        For convenience, you can define aliases of datafile names like:
        
        ```toml
        # config.toml
        
        [lamda]
        CS = "cs@lique.dat"
        CO = "~/your/local/co.dat"
        H13CN = "https://home.strw.leidenuniv.nl/~moldata/datafiles/h13cn@xpol.dat"
        ```
        
        As shown in the second and third examples, you can also specify a local file path or a URL on the right hand.
        After the customization, you can use these aliases in the `run()` function:
        
        ```python
        >>> ds = ndradex.run('CS', '1-0', ...) # equiv to cs@lique.dat
        ```
        
        ## References
        
        - [RADEX]
        - [LAMDA]
        - [xarray]
        - [pandas]
        
        [xarray]: http://xarray.pydata.org/en/stable/
        [RADEX]: https://home.strw.leidenuniv.nl/~moldata/radex.html
        [LAMDA]: https://home.strw.leidenuniv.nl/~moldata/
        [pandas]: https://pandas.pydata.org/
        
Keywords: radio-astronomy,python,radex,xarray
Platform: any
Classifier: Programming Language :: Python :: 3.6
Classifier: Programming Language :: Python :: 3.7
Classifier: Programming Language :: Python :: 3.8
Requires-Python: >=3.6
Description-Content-Type: text/markdown
