Corey Morris
copied main streamlit application to one that will specifically investigate moral reasoning
298ba1f
| import streamlit as st | |
| import pandas as pd | |
| import plotly.express as px | |
| from result_data_processor import ResultDataProcessor | |
| import matplotlib.pyplot as plt | |
| import numpy as np | |
| import plotly.graph_objects as go | |
| st.set_page_config(layout="wide") | |
| def plot_top_n(df, target_column, n=10): | |
| top_n = df.nlargest(n, target_column) | |
| # Initialize the bar plot | |
| fig, ax1 = plt.subplots(figsize=(10, 5)) | |
| # Set width for each bar and their positions | |
| width = 0.28 | |
| ind = np.arange(len(top_n)) | |
| # Plot target_column and MMLU_average on the primary y-axis with adjusted positions | |
| ax1.bar(ind - width, top_n[target_column], width=width, color='blue', label=target_column) | |
| ax1.bar(ind, top_n['MMLU_average'], width=width, color='orange', label='MMLU_average') | |
| # Set the primary y-axis labels and title | |
| ax1.set_title(f'Top {n} performing models on {target_column}') | |
| ax1.set_xlabel('Model') | |
| ax1.set_ylabel('Score') | |
| # Create a secondary y-axis for Parameters | |
| ax2 = ax1.twinx() | |
| # Plot Parameters as bars on the secondary y-axis with adjusted position | |
| ax2.bar(ind + width, top_n['Parameters'], width=width, color='red', label='Parameters') | |
| # Set the secondary y-axis labels | |
| ax2.set_ylabel('Parameters', color='red') | |
| ax2.tick_params(axis='y', labelcolor='red') | |
| # Set the x-ticks and their labels | |
| ax1.set_xticks(ind) | |
| ax1.set_xticklabels(top_n.index, rotation=45, ha="right") | |
| # Adjust the legend | |
| fig.tight_layout() | |
| fig.legend(loc='center left', bbox_to_anchor=(1, 0.5)) | |
| # Show the plot | |
| st.pyplot(fig) | |
| # Function to create an unfilled radar chart | |
| def create_radar_chart_unfilled(df, model_names, metrics): | |
| fig = go.Figure() | |
| min_value = df.loc[model_names, metrics].min().min() | |
| max_value = df.loc[model_names, metrics].max().max() | |
| for model_name in model_names: | |
| values_model = df.loc[model_name, metrics] | |
| fig.add_trace(go.Scatterpolar( | |
| r=values_model, | |
| theta=metrics, | |
| name=model_name | |
| )) | |
| fig.update_layout( | |
| polar=dict( | |
| radialaxis=dict( | |
| visible=True, | |
| range=[min_value, max_value] | |
| )), | |
| showlegend=True, | |
| width=800, # Change the width as needed | |
| height=600 # Change the height as needed | |
| ) | |
| return fig | |
| # Function to create a line chart | |
| def create_line_chart(df, model_names, metrics): | |
| line_data = [] | |
| for model_name in model_names: | |
| values_model = df.loc[model_name, metrics] | |
| for metric, value in zip(metrics, values_model): | |
| line_data.append({'Model': model_name, 'Metric': metric, 'Value': value}) | |
| line_df = pd.DataFrame(line_data) | |
| fig = px.line(line_df, x='Metric', y='Value', color='Model', title='Comparison of Models', line_dash_sequence=['solid']) | |
| fig.update_layout(showlegend=True) | |
| return fig | |
| def find_top_differences_table(df, target_model, closest_models, num_differences=10, exclude_columns=['Parameters', 'organization']): | |
| # Calculate the absolute differences for each task between the target model and the closest models | |
| new_df = df.drop(columns=exclude_columns) | |
| differences = new_df.loc[closest_models].sub(new_df.loc[target_model]).abs() | |
| # Unstack the differences and sort by the largest absolute difference | |
| top_differences = differences.unstack().nlargest(num_differences) | |
| # Convert the top differences to a DataFrame for display | |
| top_differences_table = pd.DataFrame({ | |
| 'Task': [idx[0] for idx in top_differences.index], | |
| 'Difference': top_differences.values | |
| }) | |
| # Ensure that only unique tasks are returned | |
| unique_top_differences_tasks = list(set(top_differences_table['Task'].tolist())) | |
| return top_differences_table, unique_top_differences_tasks | |
| data_provider = ResultDataProcessor() | |
| st.title('Why are large language models so bad at the moral scenarios task?') | |
| st.markdown(""" | |
| Here I am to answer the question: Why are large language models so bad at the moral scenarios task? | |
| Sub questions: | |
| - Are the models actually bad at moral reasoning ? | |
| - Is it the structure of the task that is the causing the poor performance ? | |
| - Are there other tasks with questions in a similar structure ? | |
| - How do models perform when the structure of the task is changed ? | |
| """) | |
| filters = st.checkbox('Select Models and/or Evaluations') | |
| # Initialize selected columns with "Parameters" and "MMLU_average" if filters are checked | |
| selected_columns = ['Parameters', 'MMLU_average'] if filters else data_provider.data.columns.tolist() | |
| # Initialize selected models as empty if filters are checked | |
| selected_models = [] if filters else data_provider.data.index.tolist() | |
| if filters: | |
| # Create multi-select for columns with default selection | |
| selected_columns = st.multiselect( | |
| 'Select Columns', | |
| data_provider.data.columns.tolist(), | |
| default=selected_columns | |
| ) | |
| # Create multi-select for models without default selection | |
| selected_models = st.multiselect( | |
| 'Select Models', | |
| data_provider.data.index.tolist() | |
| ) | |
| # Get the filtered data | |
| filtered_data = data_provider.get_data(selected_models) | |
| # sort the table by the MMLU_average column | |
| filtered_data = filtered_data.sort_values(by=['MMLU_average'], ascending=False) | |
| # Select box for filtering by Parameters | |
| parameter_threshold = st.selectbox( | |
| 'Filter by Parameters (Less Than or Equal To):', | |
| options=[3, 7, 13, 35, 'No threshold'], | |
| index=4, # Set the default selected option to 'No threshold' | |
| format_func=lambda x: f"{x}" if isinstance(x, int) else x | |
| ) | |
| # Filter the DataFrame based on the selected parameter threshold if not 'No threshold' | |
| if isinstance(parameter_threshold, int): | |
| filtered_data = filtered_data[filtered_data['Parameters'] <= parameter_threshold] | |
| # Search box | |
| search_query = st.text_input("Filter by Model Name:", "") | |
| # Filter the DataFrame based on the search query in the index (model name) | |
| if search_query: | |
| filtered_data = filtered_data[filtered_data.index.str.contains(search_query, case=False)] | |
| # Search box for columns | |
| column_search_query = st.text_input("Filter by Column/Task Name:", "") | |
| # Get the columns that contain the search query | |
| matching_columns = [col for col in filtered_data.columns if column_search_query.lower() in col.lower()] | |
| # Display the DataFrame with only the matching columns | |
| st.markdown("## Sortable Results") | |
| st.dataframe(filtered_data[matching_columns]) | |
| # CSV download | |
| filtered_data.index.name = "Model Name" | |
| csv = filtered_data.to_csv(index=True) | |
| st.download_button( | |
| label="Download data as CSV", | |
| data=csv, | |
| file_name="model_evaluation_results.csv", | |
| mime="text/csv", | |
| ) | |
| def create_plot(df, x_values, y_values, models=None, title=None): | |
| if models is not None: | |
| df = df[df.index.isin(models)] | |
| # remove rows with NaN values | |
| df = df.dropna(subset=[x_values, y_values]) | |
| plot_data = pd.DataFrame({ | |
| 'Model': df.index, | |
| x_values: df[x_values], | |
| y_values: df[y_values], | |
| }) | |
| plot_data['color'] = 'purple' | |
| fig = px.scatter(plot_data, x=x_values, y=y_values, color='color', hover_data=['Model'], trendline="ols") | |
| # If title is not provided, use x_values vs. y_values as the default title | |
| if title is None: | |
| title = x_values + " vs. " + y_values | |
| layout_args = dict( | |
| showlegend=False, | |
| xaxis_title=x_values, | |
| yaxis_title=y_values, | |
| xaxis=dict(), | |
| yaxis=dict(), | |
| title=title, | |
| height=500, | |
| width=1000, | |
| ) | |
| fig.update_layout(**layout_args) | |
| # Add a dashed line at 0.25 for the y_values | |
| x_min = df[x_values].min() | |
| x_max = df[x_values].max() | |
| y_min = df[y_values].min() | |
| y_max = df[y_values].max() | |
| if x_values.startswith('MMLU'): | |
| fig.add_shape( | |
| type='line', | |
| x0=0.25, x1=0.25, | |
| y0=y_min, y1=y_max, | |
| line=dict( | |
| color='red', | |
| width=2, | |
| dash='dash' | |
| ) | |
| ) | |
| if y_values.startswith('MMLU'): | |
| fig.add_shape( | |
| type='line', | |
| x0=x_min, x1=x_max, | |
| y0=0.25, y1=0.25, | |
| line=dict( | |
| color='red', | |
| width=2, | |
| dash='dash' | |
| ) | |
| ) | |
| return fig | |
| # Custom scatter plots | |
| st.header('Custom scatter plots') | |
| st.write(""" | |
| The scatter plot is useful to identify models that outperform or underperform on a particular task in relation to their size or overall performance. | |
| Identifying these models is a first step to better understand what training strategies result in better performance on a particular task. | |
| """) | |
| st.markdown("***The dashed red line indicates random chance accuracy of 0.25 as the MMLU evaluation is multiple choice with 4 response options.***") | |
| # add a line separating the writing | |
| st.markdown("***") | |
| st.write("As expected, there is a strong positive relationship between the number of parameters and average performance on the MMLU evaluation.") | |
| selected_x_column = st.selectbox('Select x-axis', filtered_data.columns.tolist(), index=0) | |
| selected_y_column = st.selectbox('Select y-axis', filtered_data.columns.tolist(), index=3) | |
| if selected_x_column != selected_y_column: # Avoid creating a plot with the same column on both axes | |
| fig = create_plot(filtered_data, selected_x_column, selected_y_column) | |
| st.plotly_chart(fig) | |
| else: | |
| st.write("Please select different columns for the x and y axes.") | |
| # end of custom scatter plots | |
| # Section to select a model and display radar and line charts | |
| st.header("Compare a Selected Model to the 5 Models Closest in MMLU Average Performance") | |
| st.write(""" | |
| This comparison highlights the nuances in model performance across different tasks. | |
| While the overall MMLU average score provides a general understanding of a model's capabilities, | |
| examining the closest models reveals variations in performance on individual tasks. | |
| Such an analysis can uncover specific strengths and weaknesses and guide further exploration and improvement. | |
| """) | |
| default_model_name = "GPT-JT-6B-v0" | |
| default_model_index = filtered_data.index.tolist().index(default_model_name) if default_model_name in filtered_data.index else 0 | |
| selected_model_name = st.selectbox("Select a Model:", filtered_data.index.tolist(), index=default_model_index) | |
| # Get the closest 5 models with unique indices | |
| closest_models_diffs = filtered_data['MMLU_average'].sub(filtered_data.loc[selected_model_name, 'MMLU_average']).abs() | |
| closest_models = closest_models_diffs.nsmallest(5, keep='first').index.drop_duplicates().tolist() | |
| # Find the top 10 tasks with the largest differences and convert to a DataFrame | |
| top_differences_table, top_differences_tasks = find_top_differences_table(filtered_data, selected_model_name, closest_models) | |
| # Display the DataFrame for the closest models and the top differences tasks | |
| st.dataframe(filtered_data.loc[closest_models, top_differences_tasks]) | |
| # # Display the table in the Streamlit app | |
| # st.markdown("## Top Differences") | |
| # st.dataframe(top_differences_table) | |
| # Create a radar chart for the tasks with the largest differences | |
| fig_radar_top_differences = create_radar_chart_unfilled(filtered_data, closest_models, top_differences_tasks) | |
| # Display the radar chart | |
| st.plotly_chart(fig_radar_top_differences) | |
| st.markdown("## Notable findings and plots") | |
| st.markdown('### Abstract Algebra Performance') | |
| st.write("Small models showed surprisingly strong performance on the abstract algebra task. A 6 Billion parameter model is tied for the best performance on this task and there are a number of other small models in the top 10.") | |
| plot_top_n(filtered_data, 'MMLU_abstract_algebra', 10) | |
| fig = create_plot(filtered_data, 'Parameters', 'MMLU_abstract_algebra') | |
| st.plotly_chart(fig) | |
| # Moral scenarios plots | |
| st.markdown("### Moral Scenarios Performance") | |
| def show_random_moral_scenarios_question(): | |
| moral_scenarios_data = pd.read_csv('moral_scenarios_questions.csv') | |
| random_question = moral_scenarios_data.sample() | |
| expander = st.expander("Show a random moral scenarios question") | |
| expander.write(random_question['query'].values[0]) | |
| show_random_moral_scenarios_question() | |
| st.write(""" | |
| While smaller models can perform well at many tasks, the model size threshold for decent performance on moral scenarios is much higher. | |
| There are no models with less than 13 billion parameters with performance much better than random chance. Further investigation into other capabilities that emerge at 13 billion parameters could help | |
| identify capabilities that are important for moral reasoning. | |
| """) | |
| fig = create_plot(filtered_data, 'Parameters', 'MMLU_moral_scenarios', title="Impact of Parameter Count on Accuracy for Moral Scenarios") | |
| st.plotly_chart(fig) | |
| st.write() | |
| fig = create_plot(filtered_data, 'MMLU_average', 'MMLU_moral_scenarios') | |
| st.plotly_chart(fig) | |
| st.markdown("***Thank you to hugging face for running the evaluations and supplying the data as well as the original authors of the evaluations.***") | |
| st.markdown(""" | |
| # Citation | |
| 1. Corey Morris (2023). *Exploring the Characteristics of Large Language Models: An Interactive Portal for Analyzing 700+ Open Source Models Across 57 Diverse Evaluation Tasks*. [link](https://huggingface.co/spaces/CoreyMorris/MMLU-by-task-Leaderboard) | |
| 2. Edward Beeching, Clémentine Fourrier, Nathan Habib, Sheon Han, Nathan Lambert, Nazneen Rajani, Omar Sanseviero, Lewis Tunstall, Thomas Wolf. (2023). *Open LLM Leaderboard*. Hugging Face. [link](https://huggingface.co/spaces/HuggingFaceH4/open_llm_leaderboard) | |
| 3. Gao, Leo et al. (2021). *A framework for few-shot language model evaluation*. Zenodo. [link](https://doi.org/10.5281/zenodo.5371628) | |
| 4. Peter Clark, Isaac Cowhey, Oren Etzioni, Tushar Khot, Ashish Sabharwal, Carissa Schoenick, Oyvind Tafjord. (2018). *Think you have Solved Question Answering? Try ARC, the AI2 Reasoning Challenge*. arXiv. [link](https://arxiv.org/abs/1803.05457) | |
| 5. Rowan Zellers, Ari Holtzman, Yonatan Bisk, Ali Farhadi, Yejin Choi. (2019). *HellaSwag: Can a Machine Really Finish Your Sentence?*. arXiv. [link](https://arxiv.org/abs/1905.07830) | |
| 6. Dan Hendrycks, Collin Burns, Steven Basart, Andy Zou, Mantas Mazeika, Dawn Song, Jacob Steinhardt. (2021). *Measuring Massive Multitask Language Understanding*. arXiv. [link](https://arxiv.org/abs/2009.03300) | |
| 7. Stephanie Lin, Jacob Hilton, Owain Evans. (2022). *TruthfulQA: Measuring How Models Mimic Human Falsehoods*. arXiv. [link](https://arxiv.org/abs/2109.07958) | |
| """) | |