shrecc.treatment
Functions
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Adds missing elements (rows or columns) to a dataframe. |
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Calculates the consumption matrix Z_cons. |
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Calculates results by inverting matrices over time. |
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Concatenates results into a single DataFrame. |
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Creates a block diagonal matrix from a list of data arrays. |
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Processes data, adds missing countries, and correctly divides them between consumption and demand. |
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Loads an object from a pickle file. |
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Applies a specified operation to a dataframe or matrix. |
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Processes the results to a lighter format. |
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Saves an object to a pickle file. |
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Function called from data_processing. This includes heavy operations, so it's advised to run this part on a server. |
Module Contents
- shrecc.treatment.add_missing_elements(df, existing_elements, all_elements, axis=0, fill_value=0)[source]
Adds missing elements (rows or columns) to a dataframe.
- Parameters:
df (pd.DataFrame) – The dataframe to which elements will be added.
existing_elements (set) – The set of existing elements in the dataframe.
all_elements (set) – The set of all possible elements.
axis (int) – The axis along which to add missing elements (0 for index, 1 for columns).
fill_value – The value to fill for the missing elements.
- Returns:
The dataframe with missing elements added.
- Return type:
pd.DataFrame
- shrecc.treatment.calculate_Z_cons(filename, L_series, output, Z_indices)[source]
Calculates the consumption matrix Z_cons.
- Parameters:
year (int) – The selected year.
L_series (pd.DataFrame) – The L series DataFrame.
output (pd.Series) – The output series.
Z_indices (dict) – The Z indices dictionary.
- Returns:
The consumption matrix Z_cons.
- Return type:
pd.DataFrame
- shrecc.treatment.calculate_results(year, n_c, n_p, t_index, Z_net, Z_load, data_dir)[source]
Calculates results by inverting matrices over time.
- Parameters:
year (int) – The selected year.
n_c (int) – The number of countries.
n_p (int) – The number of production mix elements.
t_index (pd.Index) – The time index.
Z_net (pd.DataFrame) – The net consumption dataframe.
Z_load (pd.DataFrame) – The load dataframe.
data_dir (Path) – location of the data.
- Returns:
The results dictionary.
- Return type:
dict
- shrecc.treatment.concatenate_results(results, Z)[source]
Concatenates results into a single DataFrame.
- Parameters:
results_light (dict) – The light results dictionary.
Z (pd.DataFrame) – The network dataframe.
- Returns:
The concatenated DataFrame.
- Return type:
pd.DataFrame
- shrecc.treatment.create_block_diagonal_matrix(data_list)[source]
Creates a block diagonal matrix from a list of data arrays.
- Parameters:
data_list (list) – A list of data arrays to be combined into a block diagonal matrix.
- Returns:
A block diagonal matrix containing the input data.
- Return type:
pd.DataFrame
- shrecc.treatment.data_processing(data_df, year, path_to_data=None)[source]
Processes data, adds missing countries, and correctly divides them between consumption and demand.
- Parameters:
data_df (pd.DataFrame) – All of the downloaded data for the selected year (from get_data).
year (int) – The selected year, e.g., 2023.
path_to_data (str or Path) – location of the data.
- Returns:
Doesn’t return anything, but saves files to the directory ‘data’.
- Return type:
None
- shrecc.treatment.load_from_pickle(filename)[source]
Loads an object from a pickle file.
- Parameters:
filename (Path) – Path to the filename where the object will be saved.
- Returns:
The object loaded from the pickle file.
- Return type:
object
- shrecc.treatment.process_matrix(df, operation, axis=1, **kwargs)[source]
Applies a specified operation to a dataframe or matrix.
- Parameters:
df (pd.DataFrame) – The dataframe or matrix to process.
operation (str) – The operation to perform (e.g., ‘normalize’, ‘reorder_levels’).
axis (int) – The axis along which the operation should be applied, if applicable.
kwargs – Additional arguments for specific operations.
- Returns:
The processed dataframe or matrix.
- Return type:
pd.DataFrame
- shrecc.treatment.process_results_light(results, filename, n_c)[source]
Processes the results to a lighter format.
- Parameters:
results (dict) – The results dictionary.
filename (Path) – Path to the filename where the object will be saved.
n_c (int) – The number of countries.
- Returns:
The light results dictionary.
- Return type:
dict
- shrecc.treatment.save_to_pickle(obj, filename)[source]
Saves an object to a pickle file.
- Parameters:
obj – The object to be saved.
filename (Path) – Path to the filename where the object will be saved.
- Returns:
None
- shrecc.treatment.treating_data(year, n_c, n_p, t_index, Z_net, data_dir)[source]
Function called from data_processing. This includes heavy operations, so it’s advised to run this part on a server.
- Parameters:
year (int) – The selected year, passed from data_processing.
n_c (int) – The number of all countries (including missing ones) in the dataframe, passed from data_processing.
n_p (int) – The number of production mix elements, passed from data_processing.
t_index (pd.Index) – The time index, passed from data_processing.
Z_net (pd.DataFrame) – The net consumption dataframe, passed from data_processing.
data_dir (Path) – location of the data.
- Returns:
Doesn’t return anything; everything gets saved to the directory ‘data’.
- Return type:
None