| import streamlit as st |
| st.set_page_config(layout="wide") |
| import numpy as np |
| import pandas as pd |
| import time |
| from fuzzywuzzy import process |
| from collections import Counter |
|
|
| |
| from global_func.clean_player_name import clean_player_name |
| from global_func.load_contest_file import load_contest_file |
| from global_func.load_file import load_file |
| from global_func.load_ss_file import load_ss_file |
| from global_func.find_name_mismatches import find_name_mismatches |
| from global_func.predict_dupes import predict_dupes |
| from global_func.highlight_rows import highlight_changes, highlight_changes_winners, highlight_changes_losers |
| from global_func.load_csv import load_csv |
| from global_func.find_csv_mismatches import find_csv_mismatches |
|
|
| player_exposure_format = {'Exposure Overall': '{:.2%}', 'Exposure Top 1%': '{:.2%}', 'Exposure Top 5%': '{:.2%}', 'Exposure Top 10%': '{:.2%}', 'Exposure Top 20%': '{:.2%}'} |
|
|
| tab1, tab2 = st.tabs(["Data Load", "Contest Analysis"]) |
| with tab1: |
| if st.button('Clear data', key='reset1'): |
| st.session_state.clear() |
| sport_select = st.selectbox("Select Sport", ['MLB', 'NBA', 'NFL']) |
| |
| col1, col2 = st.columns(2) |
| |
| with col1: |
| st.subheader("Contest File") |
| st.info("Go ahead and upload a Contest file here. Only include player columns and an optional 'Stack' column if you are playing MLB.") |
| Contest_file = st.file_uploader("Upload Contest File (CSV or Excel)", type=['csv', 'xlsx', 'xls']) |
| if 'Contest' in st.session_state: |
| del st.session_state['Contest'] |
|
|
| if Contest_file: |
| st.session_state['Contest'], st.session_state['ownership_dict'], st.session_state['actual_dict'], st.session_state['entry_list'] = load_contest_file(Contest_file, sport_select) |
| st.session_state['Contest'] = st.session_state['Contest'].dropna(how='all') |
| st.session_state['Contest'] = st.session_state['Contest'].reset_index(drop=True) |
| if st.session_state['Contest'] is not None: |
| st.success('Contest file loaded successfully!') |
| st.dataframe(st.session_state['Contest'].head(10)) |
|
|
| with col2: |
| st.subheader("Projections File") |
| st.info("upload a projections file that has 'player_names', 'salary', 'median', 'ownership', and 'captain ownership' (Needed for Showdown) columns. Note that the salary for showdown needs to be the FLEX salary, not the captain salary.") |
| |
| |
| upload_col, template_col = st.columns([3, 1]) |
| |
| with upload_col: |
| projections_file = st.file_uploader("Upload Projections File (CSV or Excel)", type=['csv', 'xlsx', 'xls']) |
| if 'projections_df' in st.session_state: |
| del st.session_state['projections_df'] |
| |
| with template_col: |
| |
| template_df = pd.DataFrame(columns=['player_names', 'position', 'team', 'salary', 'median', 'ownership', 'captain ownership']) |
| |
| st.download_button( |
| label="Template", |
| data=template_df.to_csv(index=False), |
| file_name="projections_template.csv", |
| mime="text/csv" |
| ) |
| |
| if projections_file: |
| export_projections, projections = load_file(projections_file) |
| if projections is not None: |
| st.success('Projections file loaded successfully!') |
| st.dataframe(projections.head(10)) |
|
|
| if Contest_file and projections_file: |
| if st.session_state['Contest'] is not None and projections is not None: |
| st.subheader("Name Matching functions") |
| |
| if 'projections_df' not in st.session_state: |
| st.session_state['projections_df'] = projections.copy() |
| st.session_state['projections_df']['salary'] = (st.session_state['projections_df']['salary'].astype(str).str.replace(',', '').astype(float).astype(int)) |
| |
| st.session_state['Contest'], st.session_state['projections_df'], st.session_state['ownership_dict'], st.session_state['actual_dict'] = find_name_mismatches(st.session_state['Contest'], st.session_state['projections_df'], st.session_state['ownership_dict'], st.session_state['actual_dict']) |
|
|
| with tab2: |
| if 'Contest' in st.session_state and 'projections_df' in st.session_state: |
| col1, col2 = st.columns([1, 8]) |
| excluded_cols = ['BaseName', 'EntryCount'] |
| player_columns = [col for col in st.session_state['Contest'].columns if col not in excluded_cols] |
| |
| |
| map_dict = { |
| 'pos_map': dict(zip(st.session_state['projections_df']['player_names'], st.session_state['projections_df']['position'])), |
| 'team_map': dict(zip(st.session_state['projections_df']['player_names'], st.session_state['projections_df']['team'])), |
| 'salary_map': dict(zip(st.session_state['projections_df']['player_names'], st.session_state['projections_df']['salary'])), |
| 'proj_map': dict(zip(st.session_state['projections_df']['player_names'], st.session_state['projections_df']['median'])), |
| 'own_map': dict(zip(st.session_state['projections_df']['player_names'], st.session_state['projections_df']['ownership'])), |
| 'own_percent_rank': dict(zip(st.session_state['projections_df']['player_names'], st.session_state['projections_df']['ownership'].rank(pct=True))), |
| 'cpt_salary_map': dict(zip(st.session_state['projections_df']['player_names'], st.session_state['projections_df']['salary'])), |
| 'cpt_proj_map': dict(zip(st.session_state['projections_df']['player_names'], st.session_state['projections_df']['median'] * 1.5)), |
| 'cpt_own_map': dict(zip(st.session_state['projections_df']['player_names'], st.session_state['projections_df']['captain ownership'])) |
| } |
| |
| working_df = st.session_state['Contest'].copy() |
|
|
| with col1: |
| with st.expander("Info and filters"): |
| if st.button('Clear data', key='reset3'): |
| st.session_state.clear() |
| with st.form(key='filter_form'): |
| type_var = st.selectbox("Select Game Type", ['Classic', 'Showdown']) |
| entry_parse_var = st.selectbox("Do you want to view a specific player(s) or a group of players?", ['All', 'Specific']) |
| entry_names = st.multiselect("Select players", options=st.session_state['entry_list'], default=[]) |
| submitted = st.form_submit_button("Submit") |
| if submitted: |
| if 'player_frame' in st.session_state: |
| del st.session_state['player_frame'] |
| del st.session_state['stack_frame'] |
| |
| if entry_parse_var == 'Specific' and entry_names: |
| working_df = working_df[working_df['BaseName'].isin(entry_names)] |
|
|
| |
| if type_var == 'Classic': |
| working_df['stack'] = working_df.apply( |
| lambda row: Counter( |
| map_dict['team_map'].get(player, '') for player in row[4:] |
| if map_dict['team_map'].get(player, '') != '' |
| ).most_common(1)[0][0] if any(map_dict['team_map'].get(player, '') for player in row[4:]) else '', |
| axis=1 |
| ) |
| working_df['stack_size'] = working_df.apply( |
| lambda row: Counter( |
| map_dict['team_map'].get(player, '') for player in row[4:] |
| if map_dict['team_map'].get(player, '') != '' |
| ).most_common(1)[0][1] if any(map_dict['team_map'].get(player, '') for player in row[4:]) else '', |
| axis=1 |
| ) |
| working_df['salary'] = working_df.apply(lambda row: sum(map_dict['salary_map'].get(player, 0) for player in row), axis=1) |
| working_df['median'] = working_df.apply(lambda row: sum(map_dict['proj_map'].get(player, 0) for player in row), axis=1) |
| working_df['actual_fpts'] = working_df.apply(lambda row: sum(st.session_state['actual_dict'].get(player, 0) for player in row), axis=1) |
| working_df['Own'] = working_df.apply(lambda row: sum(map_dict['own_map'].get(player, 0) for player in row), axis=1) |
| working_df['actual_own'] = working_df.apply(lambda row: sum(st.session_state['ownership_dict'].get(player, 0) for player in row), axis=1) |
| working_df['sorted'] = working_df[player_columns].apply( |
| lambda row: ','.join(sorted(row.values)), |
| axis=1 |
| ) |
| working_df['dupes'] = working_df.groupby('sorted').transform('size') |
| working_df = working_df.drop('sorted', axis=1) |
| elif type_var == 'Showdown': |
| working_df['stack'] = working_df.apply( |
| lambda row: Counter( |
| map_dict['team_map'].get(player, '') for player in row |
| if map_dict['team_map'].get(player, '') != '' |
| ).most_common(1)[0][0] if any(map_dict['team_map'].get(player, '') for player in row) else '', |
| axis=1 |
| ) |
| working_df['stack_size'] = working_df.apply( |
| lambda row: Counter( |
| map_dict['team_map'].get(player, '') for player in row |
| if map_dict['team_map'].get(player, '') != '' |
| ).most_common(1)[0][1] if any(map_dict['team_map'].get(player, '') for player in row) else '', |
| axis=1 |
| ) |
| working_df['salary'] = working_df.apply( |
| lambda row: map_dict['cpt_salary_map'].get(row.iloc[0], 0) + |
| sum(map_dict['salary_map'].get(player, 0) for player in row.iloc[1:]), |
| axis=1 |
| ) |
| working_df['median'] = working_df.apply( |
| lambda row: map_dict['cpt_proj_map'].get(row.iloc[0], 0) + |
| sum(map_dict['proj_map'].get(player, 0) for player in row.iloc[1:]), |
| axis=1 |
| ) |
| working_df['Own'] = working_df.apply( |
| lambda row: map_dict['cpt_own_map'].get(row.iloc[0], 0) + |
| sum(map_dict['own_map'].get(player, 0) for player in row.iloc[1:]), |
| axis=1 |
| ) |
| working_df['sorted'] = working_df[player_columns].apply( |
| lambda row: row[0] + '|' + ','.join(sorted(row[1:].values)), |
| axis=1 |
| ) |
| working_df['dupes'] = working_df.groupby('sorted').transform('size') |
| working_df = working_df.drop('sorted', axis=1) |
| |
| for col in player_columns: |
| contest_players = working_df.copy() |
| players_1per = working_df.nlargest(n=int(len(working_df) * 0.01), columns='actual_fpts') |
| players_5per = working_df.nlargest(n=int(len(working_df) * 0.05), columns='actual_fpts') |
| players_10per = working_df.nlargest(n=int(len(working_df) * 0.10), columns='actual_fpts') |
| players_20per = working_df.nlargest(n=int(len(working_df) * 0.20), columns='actual_fpts') |
| player_counts = pd.Series(list(contest_players[player_columns].values.flatten())).value_counts() |
| player_1per_counts = pd.Series(list(players_1per[player_columns].values.flatten())).value_counts() |
| player_5per_counts = pd.Series(list(players_5per[player_columns].values.flatten())).value_counts() |
| player_10per_counts = pd.Series(list(players_10per[player_columns].values.flatten())).value_counts() |
| player20_per_counts = pd.Series(list(players_20per[player_columns].values.flatten())).value_counts() |
| stack_counts = pd.Series(list(contest_players['stack'])).value_counts() |
| stack_1per_counts = pd.Series(list(players_1per['stack'])).value_counts() |
| stack_5per_counts = pd.Series(list(players_5per['stack'])).value_counts() |
| stack_10per_counts = pd.Series(list(players_10per['stack'])).value_counts() |
| stack_20per_counts = pd.Series(list(players_20per['stack'])).value_counts() |
| each_set_name = ['Overall', ' Top 1%', ' Top 5%', 'Top 10%', 'Top 20%'] |
| each_frame_set = [contest_players, players_1per, players_5per, players_10per, players_20per] |
| with st.container(): |
| tab1, tab2 = st.tabs(['Player Used Info', 'Stack Used Info']) |
| with tab1: |
| player_count_var = 0 |
| for each_set in [player_counts, player_1per_counts, player_5per_counts, player_10per_counts, player20_per_counts]: |
| set_frame = each_set.to_frame().reset_index().rename(columns={'index': 'Player', 'count': 'Count'}) |
| set_frame['Percent'] = set_frame['Count'] / len(each_frame_set[player_count_var]) |
| set_frame = set_frame[['Player', 'Percent']] |
| set_frame = set_frame.rename(columns={'Percent': f'Exposure {each_set_name[player_count_var]}'}) |
| if 'player_frame' not in st.session_state: |
| st.session_state['player_frame'] = set_frame |
| else: |
| st.session_state['player_frame'] = pd.merge(st.session_state['player_frame'], set_frame, on='Player', how='outer') |
| player_count_var += 1 |
| st.dataframe(st.session_state['player_frame']. |
| sort_values(by='Exposure Overall', ascending=False). |
| style.background_gradient(cmap='RdYlGn'). |
| format(formatter='{:.2%}', subset=st.session_state['player_frame'].select_dtypes(include=['number']).columns), |
| hide_index=True) |
| with tab2: |
| stack_count_var = 0 |
| for each_set in [stack_counts, stack_1per_counts, stack_5per_counts, stack_10per_counts, stack_20per_counts]: |
| set_frame = each_set.to_frame().reset_index().rename(columns={'index': 'Stack', 'count': 'Count'}) |
| set_frame['Percent'] = set_frame['Count'] / len(each_frame_set[stack_count_var]) |
| set_frame = set_frame[['Stack', 'Percent']] |
| set_frame = set_frame.rename(columns={'Percent': f'Exposure {each_set_name[stack_count_var]}'}) |
| if 'stack_frame' not in st.session_state: |
| st.session_state['stack_frame'] = set_frame |
| else: |
| st.session_state['stack_frame'] = pd.merge(st.session_state['stack_frame'], set_frame, on='Stack', how='outer') |
| stack_count_var += 1 |
| st.dataframe(st.session_state['stack_frame']. |
| sort_values(by='Exposure Overall', ascending=False). |
| style.background_gradient(cmap='RdYlGn'). |
| format(formatter='{:.2%}', subset=st.session_state['stack_frame'].select_dtypes(include=['number']).columns), |
| hide_index=True) |
|
|
| start_idx = 0 |
| end_idx = 500 |
| st.dataframe( |
| working_df.iloc[start_idx:end_idx].style |
| .background_gradient(axis=0) |
| .background_gradient(cmap='RdYlGn') |
| .format(precision=2), |
| height=1000, |
| use_container_width=True, |
| hide_index=True |
| ) |
|
|
| |
| if 'current_page' not in st.session_state: |
| st.session_state.current_page = 0 |
|
|
| |
| rows_per_page = 500 |
| total_rows = len(working_df) |
| total_pages = (total_rows + rows_per_page - 1) // rows_per_page |
|
|
| |
| pagination_cols = st.columns([4, 1, 1, 1, 4]) |
| with pagination_cols[1]: |
| if st.button("← Previous", disabled=st.session_state.current_page == 0): |
| st.session_state.current_page -= 1 |
| if 'player_frame' in st.session_state: |
| del st.session_state['player_frame'] |
| del st.session_state['stack_frame'] |
|
|
| with pagination_cols[2]: |
| st.markdown(f"**Page {st.session_state.current_page + 1} of {total_pages}**", unsafe_allow_html=True) |
| with pagination_cols[3]: |
| if st.button("Next →", disabled=st.session_state.current_page == total_pages - 1): |
| st.session_state.current_page += 1 |
| if 'player_frame' in st.session_state: |
| del st.session_state['player_frame'] |
| del st.session_state['stack_frame'] |
| |
| start_idx = st.session_state.current_page * rows_per_page |
| end_idx = min((st.session_state.current_page + 1) * rows_per_page, total_rows) |
|
|