From 6e9b439d4b3d303b246d9e66b3ed3852e3fad9a5 Mon Sep 17 00:00:00 2001 From: David Luevano <55825613+luevano@users.noreply.github.com> Date: Thu, 23 Jan 2020 18:59:34 -0700 Subject: Rename lj_matrix to ml_exp --- lj_matrix/misc.py | 174 ------------------------------------------------------ 1 file changed, 174 deletions(-) delete mode 100644 lj_matrix/misc.py (limited to 'lj_matrix/misc.py') diff --git a/lj_matrix/misc.py b/lj_matrix/misc.py deleted file mode 100644 index e9142b05f..000000000 --- a/lj_matrix/misc.py +++ /dev/null @@ -1,174 +0,0 @@ -"""MIT License - -Copyright (c) 2019 David Luevano Alvarado - -Permission is hereby granted, free of charge, to any person obtaining a copy -of this software and associated documentation files (the "Software"), to deal -in the Software without restriction, including without limitation the rights -to use, copy, modify, merge, publish, distribute, sublicense, and/or sell -copies of the Software, and to permit persons to whom the Software is -furnished to do so, subject to the following conditions: - -The above copyright notice and this permission notice shall be included in all -copies or substantial portions of the Software. - -THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR -IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, -FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE -AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER -LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, -OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE -SOFTWARE. -""" -from colorama import init, Fore, Style -import pandas as pd - -init() - - -def printc(text, color): - """ - Prints texts normaly, but in color. Using colorama. - text: string with the text to print. - color: color to be used, same as available in colorama. - """ - color_dic = {'BLACK': Fore.BLACK, - 'RED': Fore.RED, - 'GREEN': Fore.GREEN, - 'YELLOW': Fore.YELLOW, - 'BLUE': Fore.BLUE, - 'MAGENTA': Fore.MAGENTA, - 'CYAN': Fore.CYAN, - 'WHITE': Fore.WHITE, - 'RESET': Fore.RESET} - - color_dic_keys = color_dic.keys() - if color not in color_dic_keys: - print(Fore.RED - + '\'{}\' not found, using default color.'.format(color) - + Style.RESET_ALL) - actual_color = Fore.RESET - else: - actual_color = color_dic[color] - - print(actual_color + text + Style.RESET_ALL) - - -def plot_benchmarks(): - """ - For plotting the benchmarks. - """ - # Original columns. - or_cols = ['ml_type', - 'tr_size', - 'te_size', - 'kernel_s', - 'mae', - 'time', - 'lj_s', - 'lj_e', - 'date_ran'] - # Drop some original columns. - dor_cols = ['te_size', - 'kernel_s', - 'time', - 'date_ran'] - - # Read benchmarks data and drop some columns. - data_temp = pd.read_csv('data\\benchmarks.csv',) - data = pd.DataFrame(data_temp, columns=or_cols) - data = data.drop(columns=dor_cols) - - # Get the data of the first benchmarks and drop unnecesary columns. - first_data = pd.DataFrame(data, index=range(0, 22)) - first_data = first_data.drop(columns=['lj_s', 'lj_e']) - - # Columns to keep temporarily. - fd_columns = ['ml_type', - 'tr_size', - 'mae'] - - # Create new dataframes for each matrix descriptor and fill them. - first_data_cm = pd.DataFrame(columns=fd_columns) - first_data_ljm = pd.DataFrame(columns=fd_columns) - for i in range(first_data.shape[0]): - temp_df = first_data.iloc[[i]] - if first_data.at[i, 'ml_type'] == 'CM': - first_data_cm = first_data_cm.append(temp_df) - else: - first_data_ljm = first_data_ljm.append(temp_df) - - # Drop unnecesary column and rename 'mae' for later use. - first_data_cm = first_data_cm.drop(columns=['ml_type'])\ - .rename(columns={'mae': 'cm_mae'}) - first_data_ljm = first_data_ljm.drop(columns=['ml_type'])\ - .rename(columns={'mae': 'ljm_mae'}) - # print(first_data_cm) - # print(first_data_ljm) - - # Get the cm data axis so it can be joined with the ljm data axis. - cm_axis = first_data_cm.plot(x='tr_size', - y='cm_mae', - kind='line') - # Get the ljm data axis and join it with the cm one. - plot_axis = first_data_ljm.plot(ax=cm_axis, - x='tr_size', - y='ljm_mae', - kind='line') - plot_axis.set_xlabel('tr_size') - plot_axis.set_ylabel('mae') - plot_axis.set_title('mae for different tr_sizes') - # Get the figure and save it. - # plot_axis.get_figure().savefig('.figs\\mae_diff_tr_sizes.pdf') - - # Get the rest of the benchmark data and drop unnecesary column. - new_data = data.drop(index=range(0, 22)) - new_data = new_data.drop(columns=['ml_type']) - - # Get the first set and rename it. - nd_first = first_data_ljm.rename(columns={'ljm_mae': '1, 1'}) - ndf_axis = nd_first.plot(x='tr_size', - y='1, 1', - kind='line') - last_axis = ndf_axis - for i in range(22, 99, 11): - lj_s = new_data['lj_s'][i] - lj_e = new_data['lj_e'][i] - new_mae = '{}, {}'.format(lj_s, lj_e) - nd_temp = pd.DataFrame(new_data, index=range(i, i + 11))\ - .drop(columns=['lj_s', 'lj_e'])\ - .rename(columns={'mae': new_mae}) - last_axis = nd_temp.plot(ax=last_axis, - x='tr_size', - y=new_mae, - kind='line') - print(nd_temp) - - last_axis.set_xlabel('tr_size') - last_axis.set_ylabel('mae') - last_axis.set_title('mae for different parameters of lj(s)') - - last_axis.get_figure().savefig('.figs\\mae_diff_param_lj_s.pdf') - - ndf_axis = nd_first.plot(x='tr_size', - y='1, 1', - kind='line') - last_axis = ndf_axis - for i in range(99, data.shape[0], 11): - lj_s = new_data['lj_s'][i] - lj_e = new_data['lj_e'][i] - new_mae = '{}, {}'.format(lj_s, lj_e) - nd_temp = pd.DataFrame(new_data, index=range(i, i + 11))\ - .drop(columns=['lj_s', 'lj_e'])\ - .rename(columns={'mae': new_mae}) - last_axis = nd_temp.plot(ax=last_axis, - x='tr_size', - y=new_mae, - kind='line') - print(nd_temp) - - last_axis.set_xlabel('tr_size') - last_axis.set_ylabel('mae') - last_axis.set_title('mae for different parameters of lj(e)') - - last_axis.get_figure().savefig('.figs\\mae_diff_param_lj_e.pdf') -- cgit v1.2.3-54-g00ecf