James McCool
Refactor file upload sections in `app.py` for improved organization and clarity
1689df1
| import streamlit as st | |
| st.set_page_config(layout="wide") | |
| import numpy as np | |
| import pandas as pd | |
| import time | |
| from fuzzywuzzy import process | |
| import random | |
| ## import global functions | |
| from global_func.clean_player_name import clean_player_name | |
| 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 | |
| tab1, tab2 = st.tabs(["Data Load", "Contest Analysis"]) | |
| with tab1: | |
| if st.button('Clear data', key='reset1'): | |
| st.session_state.clear() | |
| # Add file uploaders to your app | |
| col1, col2, col3 = st.columns(3) | |
| 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['position_dict'], st.session_state['ownership_dict'], st.session_state['entry_list'] = load_file(Contest_file) | |
| 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.") | |
| # Create two columns for the uploader and template button | |
| 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: | |
| # Create empty DataFrame with required columns | |
| template_df = pd.DataFrame(columns=['player_names', 'position', 'team', 'salary', 'median', 'ownership', 'captain ownership']) | |
| # Add download button for template | |
| 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 Analysis") | |
| # # Initialize projections_df in session state if it doesn't exist | |
| # 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)) | |
| # # Update projections_df with any new matches | |
| # st.session_state['projections_df'] = find_name_mismatches(st.session_state['Contest'], st.session_state['projections_df']) | |
| # if csv_file is not None and 'export_dict' not in st.session_state: | |
| # # Create a dictionary of Name to Name+ID from csv_file | |
| # try: | |
| # name_id_map = dict(zip( | |
| # st.session_state['csv_file']['Name'], | |
| # st.session_state['csv_file']['Name + ID'] | |
| # )) | |
| # except: | |
| # name_id_map = dict(zip( | |
| # st.session_state['csv_file']['Nickname'], | |
| # st.session_state['csv_file']['Id'] | |
| # )) | |
| # # Function to find best match | |
| # def find_best_match(name): | |
| # best_match = process.extractOne(name, name_id_map.keys()) | |
| # if best_match and best_match[1] >= 85: # 85% match threshold | |
| # return name_id_map[best_match[0]] | |
| # return name # Return original name if no good match found | |
| # # Apply the matching | |
| # projections['upload_match'] = projections['player_names'].apply(find_best_match) | |
| # st.session_state['export_dict'] = dict(zip(projections['player_names'], projections['upload_match'])) | |
| with tab2: | |
| if st.button('Clear data', key='reset3'): | |
| st.session_state.clear() | |