| import streamlit as st |
| import pandas as pd |
|
|
| def load_contest_file(upload, helper = None, sport = None): |
| if sport == 'MLB': |
| pos_list = [' P ', ' C ', '1B ', ' 2B ', ' 3B ', ' SS ', ' OF '] |
| if upload is not None: |
| try: |
| try: |
| if upload.name.endswith('.csv'): |
| raw_df = pd.read_csv(upload) |
| elif upload.name.endswith(('.xls', '.xlsx')): |
| raw_df = pd.read_excel(upload) |
| else: |
| st.error('Please upload either a CSV or Excel file') |
| return None |
| except: |
| raw_df = upload |
| if helper is not None: |
| helper_df = helper |
| |
| |
| if helper is None: |
| df = raw_df[['EntryId', 'EntryName', 'TimeRemaining', 'Points', 'Lineup', 'Player', 'Roster Position', '%Drafted', 'FPTS', 'Salary', 'Team']] |
| else: |
| df = raw_df[['EntryId', 'EntryName', 'TimeRemaining', 'Points', 'Lineup', 'Player', 'Roster Position', '%Drafted', 'FPTS']] |
| df = df.rename(columns={'Roster Position': 'Pos', '%Drafted': 'Own'}) |
| |
| |
| df['BaseName'] = df['EntryName'].str.replace(r'\s*\(\d+/\d+\)$', '', regex=True) |
| df['EntryCount'] = df['EntryName'].str.extract(r'\((\d+/\d+)\)') |
| df['EntryCount'] = df['EntryCount'].fillna('1/1') |
| |
| |
| try: |
| df['Own'] = df['Own'].str.replace('%', '').astype(float) |
| except: |
| df['Own'] = df['Own'].astype(float) |
| |
| |
| if helper is not None: |
| df_helper = helper_df[['EntryId', 'EntryName', 'TimeRemaining', 'Points', 'Lineup', 'Player', 'Roster Position', '%Drafted', 'FPTS', 'Salary', 'Team']] |
| df_helper = df_helper.rename(columns={'Roster Position': 'Pos', '%Drafted': 'Own'}) |
| |
| |
| df_helper['BaseName'] = df_helper['EntryName'].str.replace(r'\s*\(\d+/\d+\)$', '', regex=True) |
| df_helper['EntryCount'] = df_helper['EntryName'].str.extract(r'\((\d+/\d+)\)') |
| df_helper['EntryCount'] = df_helper['EntryCount'].fillna('1/1') |
| |
| |
| try: |
| df_helper['Own'] = df_helper['Own'].str.replace('%', '').astype(float) |
| except: |
| df_helper['Own'] = df_helper['Own'].astype(float) |
| |
| |
| if helper is not None: |
| ownership_df = df[['Player', 'Own']] |
| fpts_df = df[['Player', 'FPTS']] |
| salary_df = df_helper[['Player', 'Salary']] |
| team_df = df_helper[['Player', 'Team']] |
| pos_df = df[['Player', 'Pos']] |
| else: |
| ownership_df = df[['Player', 'Own']] |
| fpts_df = df[['Player', 'FPTS']] |
| salary_df = df[['Player', 'Salary']] |
| team_df = df[['Player', 'Team']] |
| pos_df = df[['Player', 'Pos']] |
| |
| |
| cleaned_df = df[['BaseName', 'Lineup']] |
| cleaned_df['Lineup'] = cleaned_df['Lineup'].replace(pos_list, value=',', regex=True) |
| check_lineups = cleaned_df.copy() |
| cleaned_df[['Remove', '1B', '2B', '3B', 'C', 'OF1', 'OF2', 'OF3', 'P1', 'P2', 'SS']] = cleaned_df['Lineup'].str.split(',', expand=True) |
| cleaned_df = cleaned_df.drop(columns=['Lineup', 'Remove']) |
| entry_counts = cleaned_df['BaseName'].value_counts() |
| cleaned_df['EntryCount'] = cleaned_df['BaseName'].map(entry_counts) |
| cleaned_df = cleaned_df[['BaseName', 'EntryCount', 'P1', 'P2', 'C', '1B', '2B', '3B', 'SS', 'OF1', 'OF2', 'OF3']] |
| |
| |
| entry_list = list(set(df['BaseName'])) |
| entry_list.sort() |
| |
| return cleaned_df, ownership_df, fpts_df, salary_df, team_df, pos_df, entry_list, check_lineups |
| |
| except Exception as e: |
| st.error(f'Error loading file: {str(e)}') |
| return None |
| return None |