smact.dopant_prediction.doper module#
A class to create possible n-type and p-type dopants according to their accessible oxidation states.
The dopant prediction module facilitates high-throughput prediction of p-type and n-type dopants.
The search and ranking process is based on electronic filters (e.g. accessible oxidation states) and chemical filters (e.g. difference in ionic radius).
- class smact.dopant_prediction.doper.Doper(original_species: tuple[str, ...], filepath: str | None = None, embedding: str | None = None, use_probability: bool = True)[source]#
Bases:
objectA class to search for n & p type dopants.
Methods: get_dopants, plot_dopants.
- get_dopants(num_dopants: int = 5, get_selectivity: bool = True, group_by_charge: bool = True) dict[source]#
Get the top n dopants for each case.
Args:#
num_dopants (int): The number of dopants to return. get_selectivity (bool): Whether to calculate the selectivity of the dopants. group_by_charge (bool): Whether to group the dopants by charge.
Returns:#
dict: A dictionary of the top n dopants for each case.
- plot_dopants(cmap: str = 'YlOrRd', plot_value: str = 'probability') None[source]#
Plot the dopant suggestions using the periodic table heatmap.
Args:#
cmap (str): The colormap to use for the heatmap. plot_value (str): The value to plot on the heatmap.
Options are “probability”, “similarity” or “selectivity”.
Returns:#
None