# flake8: noqa # yapf: disable import functools import getpass import math import os import os.path as osp from datetime import datetime from typing import Any, Dict, List, Optional import matplotlib.pyplot as plt import mmengine import numpy as np import pandas as pd import seaborn as sns import tabulate from matplotlib.colors import LinearSegmentedColormap from mmengine import ConfigDict from tqdm import tqdm from opencompass.summarizers.default import ( METRIC_BLACKLIST, METRIC_WHITELIST, DefaultSummarizer, model_abbr_from_cfg_used_in_summarizer) from opencompass.utils import (LarkReporter, dataset_abbr_from_cfg, get_infer_output_path, get_logger, model_abbr_from_cfg) from opencompass.utils.prompt import get_prompt_hash def read_after_specific_line_except_last(file_name, keyword, offset): with open(file_name, 'r', encoding='utf-8') as file: lines = file.readlines() for index, line in enumerate(lines): if keyword in line: start_index = index + offset + 1 break else: return '' return ''.join(lines[start_index:-1]) def create_model_dataframe(nested_dict, model_name, dataset_abbr, parallel=False): if model_name not in nested_dict: print(f'Model {model_name} not found in the provided data.') return pd.DataFrame() model_data = nested_dict[model_name] data = [] for key, value in model_data.items(): if parallel: if dataset_abbr in key: new_key_base = key.replace(dataset_abbr, '').strip('_') for depth_key, score in value.items(): new_key = f'{new_key_base}{depth_key}' if 'average_score' not in new_key: data.append([new_key, score]) else: if dataset_abbr in key: score = value.get('score', None) new_key = key.replace(dataset_abbr, '').strip('_') data.append([new_key, score]) df = pd.DataFrame(data, columns=['dataset', model_name]) return df def parse_model_scores(text): lines = text.split('\n') result_dict = {} current_model = None for line in lines: if line.startswith('Model:'): current_model = line.split('Model:')[1].strip() result_dict[current_model] = {} elif current_model and ':' in line: dataset, score_str = line.split(':', 1) score_dict = eval(score_str.strip()) result_dict[current_model][dataset] = score_dict return result_dict def visualize(df_raw, save_path: str,model_name: str ,dataset_type:str): df = df_raw.copy() df['Context Length'] = df['dataset'].apply( lambda x: int(x.split('Length')[1].split('Depth')[0])) df['Document Depth'] = df['dataset'].apply( lambda x: float(x.split('Depth')[1].split('_')[0])) model_columns = [ col for col in df.columns if col not in ['Context Length', 'Document Depth'] ] for model_name in model_columns[1:]: model_df = df[['Document Depth', 'Context Length', model_name]].copy() model_df.rename(columns={model_name: 'Score'}, inplace=True) # Create pivot table pivot_table = pd.pivot_table(model_df, values='Score', index=['Document Depth'], columns=['Context Length'], aggfunc='mean') # Calculate mean scores mean_scores = pivot_table.mean().values # Calculate overall score overall_score = mean_scores.mean() # Create heatmap and line plot plt.figure(figsize=(15.5, 8)) ax = plt.gca() cmap = LinearSegmentedColormap.from_list( 'custom_cmap', ['#F0496E', '#EBB839', '#0CD79F']) # Draw heatmap sns.heatmap(pivot_table, cmap=cmap, ax=ax, cbar_kws={'label': 'Score'}, vmin=0, vmax=100) # Set line plot data x_data = [i + 0.5 for i in range(len(mean_scores))] y_data = mean_scores # Create twin axis for line plot ax2 = ax.twinx() # Draw line plot ax2.plot(x_data, y_data, color='white', marker='o', linestyle='-', linewidth=2, markersize=8, label='Average Depth Score') # Set y-axis range ax2.set_ylim(0, 100) # Hide original y-axis ticks and labels ax2.set_yticklabels([]) ax2.set_yticks([]) # Add legend ax2.legend(loc='upper left') # Set chart title and labels ax.set_title(f'{model_name} {dataset_type} Context ' 'Performance\nFact Retrieval Across ' 'Context Lengths ("Needle In A Haystack")') ax.set_xlabel('Token Limit') ax.set_ylabel('Depth Percent') ax.set_xticklabels(pivot_table.columns.values, rotation=45) ax.set_yticklabels(pivot_table.index.values, rotation=0) # Add overall score as a subtitle plt.text(0.5, -0.13, f'Overall Score for {model_name}: ' f'{overall_score:.2f}', ha='center', va='center', transform=ax.transAxes, fontsize=13) plt.tight_layout() plt.subplots_adjust(right=1) plt.draw() plt.savefig(save_path) print(f'Saved :{save_path}') plt.close() # Close figure to prevent memory leaks return overall_score def save_results_to_plots(txt_results_save_path): content = read_after_specific_line_except_last(txt_results_save_path, 'raw format', 2) parsed_data = parse_model_scores(content) model_names = get_dict_model_names(parsed_data) numbers = [2, 3, 4, 5] languages = ['en', 'zh'] size_exists = [] sizes_origin = ['_4k', '_8k', '_32k', '_128k', '_200k'] for size in sizes_origin: if size in content: size_exists.append(size) multi_dataset_abbrs = [f'{num}needle_{lang}{size}' for num in numbers for lang in languages for size in size_exists] origin_dataset_abbrs = [f'origin_{lang}{size}' for lang in languages for size in size_exists] parallel_dataset_abbrs = [f'parallel_{lang}{size}' for lang in languages for size in size_exists] dataset_abbrs = multi_dataset_abbrs + origin_dataset_abbrs + \ parallel_dataset_abbrs base_path = os.path.dirname(txt_results_save_path) plot_path = os.path.join(base_path, 'plots') model_scores = {} for model_name in tqdm(model_names): model_datasets_scores = {} # Dictionary to store scores for each dataset for the current model for dataset_abbr in dataset_abbrs: parallel_flag = 'parallel' in dataset_abbr # Create a directory for each dataset_abbr folder_path = os.path.join(plot_path, dataset_abbr) ensure_directory(folder_path) # Construct the full path to save the image save_path = os.path.join(folder_path, f'{model_name}.png') # Create DataFrame for the model and dataset df = create_model_dataframe(parsed_data, model_name, dataset_abbr, parallel=parallel_flag) # Generate visualization and get the score score = visualize(df, save_path, model_name, dataset_abbr) # Store the score in the dictionary model_datasets_scores[dataset_abbr] = '{:.02f}'.format(score) # Process and visualize the overall score overall_score_pic_path = os.path.join(plot_path, f'{model_name}_overall.png') merged_df = merge_dataframes(model_name, dataset_abbrs, parsed_data) print(merge_dataframes) averaged_df = calculate_elementwise_average(merged_df) # Assume visualize returns the average score for the overall visualization overall_score = visualize(averaged_df, overall_score_pic_path, 'weighted_average_score', 'Overall Score') # Add the overall score to the dictionary model_datasets_scores['Overall'] = '{:.02f}'.format(overall_score) # Add the model's scores to the main dictionary model_scores[model_name] = model_datasets_scores def ensure_directory(path): if not os.path.exists(path): os.makedirs(path) def get_dict_model_names(nested_dict): model_names = [] for first_level_key in nested_dict: model_names.append(first_level_key) return model_names def merge_dataframes(model_name, dataset_abbrs, parsed_data): dfs = [] for dataset_abbr in dataset_abbrs: parallel_flag = 'parallel' in dataset_abbr df = create_model_dataframe(parsed_data, model_name, dataset_abbr, parallel=parallel_flag) if not df.empty and len(df.columns) > 1: score_column = df.columns[-1] df.rename(columns={score_column: dataset_abbr}, inplace=True) dfs.append(df) from functools import reduce merged_df = reduce(lambda left, right: pd.merge(left, right, on='dataset', how='outer'), dfs) if merged_df.isnull().any().any(): print('Warning: Some rows were filtered out due to NaN values. This is often due to mismatched row counts among DataFrames.') merged_df = merged_df.dropna() return merged_df def calculate_elementwise_average(merged_df): score_columns = [col for col in merged_df.columns if col != 'dataset'] origin_columns = [col for col in score_columns if 'origin' in col] parallel_columns = [col for col in score_columns if 'parallel' in col] multi_columns = [col for col in score_columns if 'needle' in col] if origin_columns and parallel_columns and multi_columns: origin_avg = merged_df[origin_columns].mean(axis=1) * 0.4 parallel_avg = merged_df[parallel_columns].mean(axis=1) * 0.3 multi_avg = merged_df[multi_columns].mean(axis=1) * 0.3 merged_df['weighted_average_score'] = origin_avg + parallel_avg + multi_avg else: merged_df['weighted_average_score'] = pd.Series([0] * len(merged_df)) return merged_df.iloc[:, [0, -1]] class NeedleBenchSummarizer(DefaultSummarizer): """NeedleBench summarizer in OpenCompass. Args: config (ConfigDict): The configuration object of the evaluation task. It's expected to be filled out at runtime. dataset_abbrs (list[str], optional): Dataset abbreviations to be listed in the summary. summary_groups (list): The dataset groups whose results need to be averaged out. For example, mmlu. Each item it a dict with 'name' (str) and 'subsets' (list of dataset abbrs), and optionally 'weights' if weighted average is needed. prompt_db: A deprecated field. """ def _format_table(self, parsed_results, dataset_metrics, dataset_eval_mode): dataset_abbrs = [dataset_abbr_from_cfg(dataset) for dataset in self.dataset_cfgs] prompt_version = {dataset_abbr_from_cfg(d): get_prompt_hash(d)[:6] for d in self.dataset_cfgs} summarizer_dataset_abbrs = [] if self.dataset_abbrs is None: # display all dataset metrics included in the config for dataset_abbr in dataset_abbrs: if dataset_abbr in dataset_metrics: for metric in dataset_metrics[dataset_abbr]: summarizer_dataset_abbrs.append((dataset_abbr, metric)) else: summarizer_dataset_abbrs.append((dataset_abbr, None)) # along with all possible group metrics for dataset_abbr in dataset_metrics: for metric in dataset_metrics[dataset_abbr]: if (dataset_abbr, metric) not in summarizer_dataset_abbrs: summarizer_dataset_abbrs.append((dataset_abbr, metric)) else: # follow the required order for item in self.dataset_abbrs: if isinstance(item, str): summarizer_dataset_abbrs.append((item, None)) elif isinstance(item, (list, tuple)): summarizer_dataset_abbrs.append((item[0], item[1])) table = [] header = ['dataset', 'version', 'metric', 'mode'] + self.model_abbrs table.append(header) for key in dataset_metrics: dataset_metrics[key] = list(set(dataset_metrics[key])) for dataset_abbr, metric in summarizer_dataset_abbrs: if dataset_abbr not in dataset_metrics: table.append([dataset_abbr, '-', '-', '-'] + ['-'] * len(self.model_abbrs)) table.append(header) continue if len(dataset_metrics[dataset_abbr]) >= 10: metric = 'average_score' if metric is None: metric = dataset_metrics[dataset_abbr][0] elif metric in dataset_metrics[dataset_abbr]: pass else: table.append([dataset_abbr, '-', '-', '-'] + ['-'] * len(self.model_abbrs)) continue row = [dataset_abbr, prompt_version.get(dataset_abbr, '-'), metric, dataset_eval_mode.get(dataset_abbr, '-')] for model_abbr in self.model_abbrs: if dataset_abbr in parsed_results[model_abbr]: row.append('{:.02f}'.format(parsed_results[model_abbr][dataset_abbr][metric])) else: row.append('-') table.append(row) for i in range(len(table)): if i == 0 or table[i][0].startswith('---------'): table[i] = [table[i][0]] + table[i][4:] else: table[i] = [table[i][0]] + table[i][4:] return table def _format_raw_txt(self, raw_results): raw_dataset_abbrs = [] for model_abbr in self.model_abbrs: for dataset_abbr in raw_results[model_abbr]: if dataset_abbr not in raw_dataset_abbrs: raw_dataset_abbrs.append(dataset_abbr) raw_txts = [] for model_abbr in self.model_abbrs: raw_txts.append('-------------------------------') raw_txts.append(f'Model: {model_abbr}') for dataset_abbr in raw_dataset_abbrs: result = raw_results[model_abbr].get(dataset_abbr, '{}') raw_txts.append(f'{dataset_abbr}: {result}') raw_txts = '\n'.join(raw_txts) return raw_txts def _read_and_sort_dataframe(self, file_path): # Read the file without treating the first row as a header df = pd.read_csv(file_path, header=None) # Function to sort columns based on the value of a specific row, excluding the first column def sort_columns_based_on_row_corrected(df, base_row_idx, start_row_idx, end_row_idx): # Extract the rows for sorting sort_values_row = df.iloc[base_row_idx, 1:].replace('-', np.nan).apply(pd.to_numeric, errors='coerce') # Handle NaNs by setting them to a value less than the minimum or using a method to keep them at the end min_possible_value = sort_values_row.min(skipna=True) - 1 # Use min value in the row minus 1 or another method sort_values_row_filled = sort_values_row.fillna(min_possible_value) # Get the sorted order of indices, excluding the first column sorted_col_indices = sort_values_row_filled.sort_values(ascending=False).index # Apply the sorted column indices to the whole DataFrame, adjusting for Python's 0-based index df.iloc[start_row_idx:end_row_idx+1] = df.iloc[start_row_idx:end_row_idx+1, [0] + sorted_col_indices.tolist()] # Apply the corrected sorting function based on the description sort_columns_based_on_row_corrected(df, 1, 0, 2) # For rows 1-2 based on row 2's values sort_columns_based_on_row_corrected(df, 4, 3, 7) # For rows 4-7 based on row 5's values sort_columns_based_on_row_corrected(df, 9, 8, 12) # For rows 9-12 based on row 10's values sort_columns_based_on_row_corrected(df, 14, 13, 25) # For rows 14-25 based on row 15's values # Return the sorted DataFrame return df def _output_to_file(self, output_path, time_str, table, raw_txts): # output to file if output_path is None: output_path = osp.join(self.work_dir, 'summary', f'summary_{time_str}.txt') output_csv_path = osp.join(self.work_dir, 'summary', f'summary_{time_str}.csv') else: output_csv_path = output_path.replace('.txt', '.csv') output_dir = osp.split(output_path)[0] mmengine.mkdir_or_exist(output_dir) with open(output_path, 'w', encoding='utf-8') as f: text = f'{time_str}\n' + \ 'tabulate format\n' + \ '^' * 128 + '\n' + \ tabulate.tabulate(table, headers='firstrow') + '\n' + \ '$' * 128 + '\n\n' + \ '-' * 128 + ' THIS IS A DIVIDER ' + '-' * 128 + '\n\n' + \ 'csv format\n' + \ '^' * 128 + '\n' + \ '\n'.join([','.join(row) for row in table]) + '\n' + \ '$' * 128 + '\n\n' + \ '-' * 128 + ' THIS IS A DIVIDER ' + '-' * 128 + '\n\n' + \ 'raw format\n' + \ '^' * 128 + '\n' + \ raw_txts + '\n' + \ '$' * 128 + '\n' f.write(text) self.logger.info(f'write summary to {osp.abspath(output_path)}') with open(output_csv_path, 'w', encoding='utf-8') as f: f.write('\n'.join([','.join(row) for row in table]) + '\n') self.logger.info(f'write csv to {osp.abspath(output_csv_path)}') df_sorted = self._read_and_sort_dataframe(output_csv_path) sorted_file_path = osp.abspath(output_csv_path).split('.')[0] + '_sorted.csv' df_sorted.to_csv(sorted_file_path, index=False, header=False) self.logger.info(f'write sorted csv to {sorted_file_path}') def summarize( self, output_path: str = None, time_str: str = datetime.now().strftime('%Y%m%d_%H%M%S')): # noqa # pick up results raw_results, parsed_results, dataset_metrics, dataset_eval_mode = self._pick_up_results() # calculate group metrics raw_results, parsed_results, dataset_metrics, dataset_eval_mode = \ self._calculate_group_metrics(raw_results, parsed_results, dataset_metrics, dataset_eval_mode) # format table table = self._format_table(parsed_results, dataset_metrics, dataset_eval_mode) # format raw txt raw_txts = self._format_raw_txt(raw_results) # output to screen print(tabulate.tabulate(table, headers='firstrow')) # output to .text / .csv files self._output_to_file(output_path, time_str, table, raw_txts) if self.lark_reporter: content = f'{getpass.getuser()} 的' content += f'详细评测汇总已输出至 {osp.abspath(output_path)}' self.lark_reporter.post(content) if output_path is None: output_path = osp.join(self.work_dir, 'summary', f'summary_{time_str}.txt') # plot to show visualize results save_results_to_plots(output_path) class NeedleBenchATCSummarizer(DefaultSummarizer): """NeedleBench-ATC summarizer in OpenCompass. Args: config (ConfigDict): The configuration object of the evaluation task. It's expected to be filled out at runtime. dataset_abbrs (list[str], optional): Dataset abbreviations to be listed in the summary. summary_groups (list): The dataset groups whose results need to be averaged out. For example, mmlu. Each item it a dict with 'name' (str) and 'subsets' (list of dataset abbrs), and optionally 'weights' if weighted average is needed. prompt_db: A deprecated field. """ def _format_table(self, parsed_results, dataset_metrics, dataset_eval_mode): dataset_abbrs = [dataset_abbr_from_cfg(dataset) for dataset in self.dataset_cfgs] prompt_version = {dataset_abbr_from_cfg(d): get_prompt_hash(d)[:6] for d in self.dataset_cfgs} summarizer_dataset_abbrs = [] if self.dataset_abbrs is None: # display all dataset metrics included in the config for dataset_abbr in dataset_abbrs: if dataset_abbr in dataset_metrics: for metric in dataset_metrics[dataset_abbr]: summarizer_dataset_abbrs.append((dataset_abbr, metric)) else: summarizer_dataset_abbrs.append((dataset_abbr, None)) # along with all possible group metrics for dataset_abbr in dataset_metrics: for metric in dataset_metrics[dataset_abbr]: if (dataset_abbr, metric) not in summarizer_dataset_abbrs: summarizer_dataset_abbrs.append((dataset_abbr, metric)) else: # follow the required order for item in self.dataset_abbrs: if isinstance(item, str): summarizer_dataset_abbrs.append((item, None)) elif isinstance(item, (list, tuple)): summarizer_dataset_abbrs.append((item[0], item[1])) table = [] header = ['dataset', 'version', 'metric', 'mode'] + self.model_abbrs table.append(header) for key in dataset_metrics: dataset_metrics[key] = list(set(dataset_metrics[key])) for dataset_abbr, metric in summarizer_dataset_abbrs: if dataset_abbr not in dataset_metrics: table.append([dataset_abbr, '-', '-', '-'] + ['-'] * len(self.model_abbrs)) table.append(header) continue if len(dataset_metrics[dataset_abbr]) >= 10: metric = 'average_score' if metric is None: metric = dataset_metrics[dataset_abbr][0] elif metric in dataset_metrics[dataset_abbr]: pass else: table.append([dataset_abbr, '-', '-', '-'] + ['-'] * len(self.model_abbrs)) continue row = [dataset_abbr, prompt_version.get(dataset_abbr, '-'), metric, dataset_eval_mode.get(dataset_abbr, '-')] for model_abbr in self.model_abbrs: if dataset_abbr in parsed_results[model_abbr]: row.append('{:.02f}'.format(parsed_results[model_abbr][dataset_abbr][metric])) else: row.append('-') table.append(row) for i in range(len(table)): if i == 0 or table[i][0].startswith('---------'): table[i] = [table[i][0]] + table[i][4:] else: table[i] = [table[i][0]] + table[i][4:] return table def _read_and_sort_dataframe(self, file_path): # Read the file without treating the first row as a header data = pd.read_csv(file_path) # print(data) # Correct the extraction of needle counts for all settings data['needle_count'] = data['dataset'].str.extract(r'needle_(\d+)_').astype(float) data['needle_count'] = data['needle_count'].astype(int) # Define experimental settings groups experimental_settings = { 'en': '_en$', 'zh': '_zh$', 'en_ordered': '_en_ordered', 'zh_ordered': '_zh_ordered', } # Function to calculate maximum needles def calculate_max_needles(dataset): max_needles = {model: None for model in dataset.columns if 'b' in model} for model in max_needles.keys(): consecutive_low_scores = 0 previous_needle_count = 0 for index, row in dataset.sort_values(by='needle_count').iterrows(): try: score = float(row[model]) except ValueError as e: score = -1 if score < 60: consecutive_low_scores += 1 if consecutive_low_scores == 1: max_needles[model] = previous_needle_count else: consecutive_low_scores = 0 previous_needle_count = row['needle_count'] max_needle_count_seen = dataset['needle_count'].max() max_needles[model] = max_needle_count_seen if max_needles[model] is None else max_needles[model] return max_needles # Calculate max needles for each group and organize results in a DataFrame results = {} for setting, regex in experimental_settings.items(): filtered_data = data[data['dataset'].str.contains(regex)] results[setting] = calculate_max_needles(filtered_data) # Convert results to DataFrame and transpose it results_df = pd.DataFrame(results).transpose() # Return the sorted DataFrame results_df.index.name = 'ATC Experiment Type' return results_df def _output_to_file(self, output_path, time_str, table, raw_txts): # output to file if output_path is None: output_path = osp.join(self.work_dir, 'summary', f'summary_{time_str}.txt') output_csv_path = osp.join(self.work_dir, 'summary', f'summary_{time_str}.csv') else: output_csv_path = output_path.replace('.txt', '.csv') output_dir = osp.split(output_path)[0] mmengine.mkdir_or_exist(output_dir) with open(output_path, 'w', encoding='utf-8') as f: text = f'{time_str}\n' + \ 'tabulate format\n' + \ '^' * 128 + '\n' + \ tabulate.tabulate(table, headers='firstrow') + '\n' + \ '$' * 128 + '\n\n' + \ '-' * 128 + ' THIS IS A DIVIDER ' + '-' * 128 + '\n\n' + \ 'csv format\n' + \ '^' * 128 + '\n' + \ '\n'.join([','.join(row) for row in table]) + '\n' + \ '$' * 128 + '\n\n' + \ '-' * 128 + ' THIS IS A DIVIDER ' + '-' * 128 + '\n\n' + \ 'raw format\n' + \ '^' * 128 + '\n' + \ raw_txts + '\n' + \ '$' * 128 + '\n' f.write(text) self.logger.info(f'write summary to {osp.abspath(output_path)}') with open(output_csv_path, 'w', encoding='utf-8') as f: f.write('\n'.join([','.join(row) for row in table]) + '\n') # self.logger.info(f'write csv to {osp.abspath(output_csv_path)}') df_sorted = self._read_and_sort_dataframe(output_csv_path) df_sorted.to_csv(output_csv_path) self.logger.info(f'write sorted csv to {output_csv_path}') def summarize( self, output_path: str = None, time_str: str = datetime.now().strftime('%Y%m%d_%H%M%S')): # noqa # pick up results raw_results, parsed_results, dataset_metrics, dataset_eval_mode = self._pick_up_results() # calculate group metrics raw_results, parsed_results, dataset_metrics, dataset_eval_mode = \ self._calculate_group_metrics(raw_results, parsed_results, dataset_metrics, dataset_eval_mode) # format table table = self._format_table(parsed_results, dataset_metrics, dataset_eval_mode) # format raw txt raw_txts = self._format_raw_txt(raw_results) # output to .text / .csv files self._output_to_file(output_path, time_str, table, raw_txts) if self.lark_reporter: content = f'{getpass.getuser()} 的' content += f'详细评测汇总已输出至 {osp.abspath(output_path)}' self.lark_reporter.post(content) if output_path is None: output_path = osp.join(self.work_dir, 'summary', f'summary_{time_str}.txt')