James McCool
initial sort by ownership for raw_baselines
91ac673
import numpy as np
import pandas as pd
import streamlit as st
import gspread
st.set_page_config(layout="wide")
@st.cache_resource
def init_conn():
scope = ['https://spreadsheets.google.com/feeds', 'https://www.googleapis.com/auth/drive']
credentials = {
"type": "service_account",
"project_id": "model-sheets-connect",
"private_key_id": st.secrets['model_sheets_connect_pk'],
"private_key": "-----BEGIN PRIVATE KEY-----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\nF/j9eUXfXjAlb042MphoF3ZC\n-----END PRIVATE KEY-----\n",
"client_email": "[email protected]",
"client_id": "100369174533302798535",
"auth_uri": "https://accounts.google.com/o/oauth2/auth",
"token_uri": "https://oauth2.googleapis.com/token",
"auth_provider_x509_cert_url": "https://www.googleapis.com/oauth2/v1/certs",
"client_x509_cert_url": "https://www.googleapis.com/robot/v1/metadata/x509/gspread-connection%40model-sheets-connect.iam.gserviceaccount.com"
}
credentials2 = {
"type": "service_account",
"project_id": "sheets-api-connect-378620",
"private_key_id": st.secrets['sheets_api_connect_pk'],
"private_key": "-----BEGIN PRIVATE KEY-----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\nJuElxA33rFEjbgbzdyrE768=\n-----END PRIVATE KEY-----\n",
"client_email": "gspread-connection@sheets-api-connect-378620.iam.gserviceaccount.com",
"client_id": "106625872877651920064",
"auth_uri": "https://accounts.google.com/o/oauth2/auth",
"token_uri": "https://oauth2.googleapis.com/token",
"auth_provider_x509_cert_url": "https://www.googleapis.com/oauth2/v1/certs",
"client_x509_cert_url": "https://www.googleapis.com/robot/v1/metadata/x509/gspread-connection%40sheets-api-connect-378620.iam.gserviceaccount.com"
}
NFL_Data = st.secrets['NFL_Data']
gc = gspread.service_account_from_dict(credentials)
gc2 = gspread.service_account_from_dict(credentials2)
return gc, gc2, NFL_Data
gcservice_account, gcservice_account2, NFL_Data = init_conn()
wrong_acro = ['WSH', 'AZ']
right_acro = ['WAS', 'ARI']
game_format = {'Win Percentage': '{:.2%}','First Inning Lead Percentage': '{:.2%}',
'Fifth Inning Lead Percentage': '{:.2%}', '8+ runs': '{:.2%}', 'DK LevX': '{:.2%}', 'FD LevX': '{:.2%}'}
team_roo_format = {'Top Score%': '{:.2%}','0 Runs': '{:.2%}', '1 Run': '{:.2%}', '2 Runs': '{:.2%}', '3 Runs': '{:.2%}', '4 Runs': '{:.2%}',
'5 Runs': '{:.2%}','6 Runs': '{:.2%}', '7 Runs': '{:.2%}', '8 Runs': '{:.2%}', '9 Runs': '{:.2%}', '10 Runs': '{:.2%}'}
player_roo_format = {'Top_finish': '{:.2%}','Top_5_finish': '{:.2%}', 'Top_10_finish': '{:.2%}', '20+%': '{:.2%}', '2x%': '{:.2%}', '3x%': '{:.2%}',
'4x%': '{:.2%}','GPP%': '{:.2%}'}
@st.cache_resource(ttl = 600)
def player_stat_table():
try:
sh = gcservice_account.open_by_url(NFL_Data)
except:
sh = gcservice_account2.open_by_url(NFL_Data)
worksheet = sh.worksheet('Player_Projections')
player_stats = pd.DataFrame(worksheet.get_all_records())
worksheet = sh.worksheet('DK_Stacks')
load_display = pd.DataFrame(worksheet.get_all_records())
raw_display = load_display
dk_stacks_raw = raw_display.sort_values(by='Own', ascending=False)
worksheet = sh.worksheet('FD_Stacks')
load_display = pd.DataFrame(worksheet.get_all_records())
raw_display = load_display
fd_stacks_raw = raw_display.sort_values(by='Own', ascending=False)
worksheet = sh.worksheet('DK_ROO')
load_display = pd.DataFrame(worksheet.get_all_records())
load_display.replace('', np.nan, inplace=True)
dk_roo_raw = load_display.dropna(subset=['Own'])
worksheet = sh.worksheet('FD_ROO')
load_display = pd.DataFrame(worksheet.get_all_records())
load_display.replace('', np.nan, inplace=True)
fd_roo_raw = load_display.dropna(subset=['Own'])
worksheet = sh.worksheet('Site_Info')
site_slates = pd.DataFrame(worksheet.get_all_records())
return player_stats, dk_stacks_raw, fd_stacks_raw, dk_roo_raw, fd_roo_raw, site_slates
@st.cache_data
def convert_df_to_csv(df):
return df.to_csv().encode('utf-8')
player_stats, dk_stacks_raw, fd_stacks_raw, dk_roo_raw, fd_roo_raw, site_slates = player_stat_table()
opp_dict = dict(zip(dk_roo_raw.Team, dk_roo_raw.Opp))
t_stamp = f"Last Update: " + str(dk_roo_raw['timestamp'][0]) + f" CST"
tab1, tab2 = st.tabs(['Pivot Finder', 'Uploads and Info'])
with tab1:
col1, col2 = st.columns([1, 5])
with col1:
st.info(t_stamp)
if st.button("Load/Reset Data", key='reset1'):
st.cache_data.clear()
player_stats, dk_stacks_raw, fd_stacks_raw, dk_roo_raw, fd_roo_raw, site_slates = player_stat_table()
opp_dict = dict(zip(dk_roo_raw.Team, dk_roo_raw.Opp))
t_stamp = f"Last Update: " + str(dk_roo_raw['timestamp'][0]) + f" CST"
data_var1 = st.radio("Which data are you loading?", ('Paydirt', 'User'), key='data_var1')
site_var1 = st.radio("What site are you working with?", ('Draftkings', 'Fanduel'), key='site_var1')
if site_var1 == 'Draftkings':
if data_var1 == 'User':
raw_baselines = proj_dataframe
elif data_var1 != 'User':
raw_baselines = dk_roo_raw[dk_roo_raw['slate'] == 'Main Slate']
raw_baselines = raw_baselines[raw_baselines['version'] == 'overall']
raw_baselines = raw_baselines.sort_values(by='Own', ascending=False)
elif site_var1 == 'Fanduel':
if data_var1 == 'User':
raw_baselines = proj_dataframe
elif data_var1 != 'User':
raw_baselines = fd_roo_raw[fd_roo_raw['slate'] == 'Main Slate']
raw_baselines = raw_baselines[raw_baselines['version'] == 'overall']
raw_baselines = raw_baselines.sort_values(by='Own', ascending=False)
check_seq = st.radio("Do you want to check a single player or the top 10 in ownership?", ('Single Player', 'Top X Owned'), key='check_seq')
if check_seq == 'Single Player':
player_check = st.selectbox('Select player to create comps', options = raw_baselines['Player'].unique(), key='dk_player')
elif check_seq == 'Top X Owned':
top_x_var = st.number_input('How many players would you like to check?', min_value = 1, max_value = 10, value = 5, step = 1)
Salary_var = st.number_input('Acceptable +/- Salary range', min_value = 0, max_value = 1000, value = 300, step = 100)
Median_var = st.number_input('Acceptable +/- Median range', min_value = 0, max_value = 10, value = 3, step = 1)
pos_var1 = st.radio("Compare to all positions or specific positions?", ('All Positions', 'Specific Positions'), key='pos_var1')
if pos_var1 == 'Specific Positions':
pos_var_list = st.multiselect('Which positions would you like to include?', options = raw_baselines['Position'].unique(), key='pos_var_list')
elif pos_var1 == 'All Positions':
pos_var_list = raw_baselines.Position.values.tolist()
split_var1 = st.radio("Are you running the full slate or certain games?", ('Full Slate Run', 'Specific Games'), key='split_var1')
if split_var1 == 'Specific Games':
team_var1 = st.multiselect('Which teams would you like to include?', options = raw_baselines['Team'].unique(), key='team_var1')
elif split_var1 == 'Full Slate Run':
team_var1 = raw_baselines.Team.values.tolist()
with col2:
placeholder = st.empty()
displayholder = st.empty()
if st.button('Simulate appropriate pivots'):
with placeholder:
if site_var1 == 'Draftkings':
working_roo = raw_baselines
working_roo.replace('', 0, inplace=True)
if site_var1 == 'Fanduel':
working_roo = raw_baselines
working_roo.replace('', 0, inplace=True)
own_dict = dict(zip(working_roo.Player, working_roo.Own))
team_dict = dict(zip(working_roo.Player, working_roo.Team))
opp_dict = dict(zip(working_roo.Player, working_roo.Opp))
pos_dict = dict(zip(working_roo.Player, working_roo.Position))
total_sims = 1000
if check_seq == 'Single Player':
player_var = working_roo.loc[working_roo['Player'] == player_check]
player_var = player_var.reset_index()
working_roo = working_roo[working_roo['Position'].isin(pos_var_list)]
working_roo = working_roo[working_roo['Team'].isin(team_var1)]
working_roo = working_roo.loc[(working_roo['Salary'] >= player_var['Salary'][0] - Salary_var) & (working_roo['Salary'] <= player_var['Salary'][0] + Salary_var)]
working_roo = working_roo.loc[(working_roo['Median'] >= player_var['Median'][0] - Median_var) & (working_roo['Median'] <= player_var['Median'][0] + Median_var)]
flex_file = working_roo[['Player', 'Position', 'Salary', 'Median']]
flex_file['Floor_raw'] = flex_file['Median'] * .25
flex_file['Ceiling_raw'] = flex_file['Median'] * 1.75
flex_file['Floor'] = np.where(flex_file['Position'] == 'QB', (flex_file['Median'] * .33), flex_file['Floor_raw'])
flex_file['Floor'] = np.where(flex_file['Position'] == 'WR', (flex_file['Median'] * .15), flex_file['Floor_raw'])
flex_file['Ceiling'] = np.where(flex_file['Position'] == 'QB', (flex_file['Median'] * 1.75), flex_file['Ceiling_raw'])
flex_file['Ceiling'] = np.where(flex_file['Position'] == 'WR', (flex_file['Median'] * 1.85), flex_file['Ceiling_raw'])
flex_file['STD'] = flex_file['Median'] / 4
flex_file = flex_file[['Player', 'Position', 'Salary', 'Floor', 'Median', 'Ceiling', 'STD']]
hold_file = flex_file.copy()
overall_file = flex_file.copy()
salary_file = flex_file.copy()
overall_players = overall_file[['Player']]
for x in range(0,total_sims):
salary_file[x] = salary_file['Salary']
salary_file=salary_file.drop(['Player', 'Position', 'Salary', 'Floor', 'Median', 'Ceiling', 'STD'], axis=1)
salary_file = salary_file.div(1000)
for x in range(0,total_sims):
overall_file[x] = np.random.normal(overall_file['Median'],overall_file['STD'])
overall_file=overall_file.drop(['Player', 'Position', 'Salary', 'Floor', 'Median', 'Ceiling', 'STD'], axis=1)
players_only = hold_file[['Player']]
raw_lineups_file = players_only
for x in range(0,total_sims):
maps_dict = {'proj_map':dict(zip(hold_file.Player,overall_file[x]))}
raw_lineups_file[x] = sum([raw_lineups_file['Player'].map(maps_dict['proj_map'])])
players_only[x] = raw_lineups_file[x].rank(ascending=False)
players_only=players_only.drop(['Player'], axis=1)
salary_2x_check = (overall_file - (salary_file*2))
salary_3x_check = (overall_file - (salary_file*3))
salary_4x_check = (overall_file - (salary_file*4))
players_only['Average_Rank'] = players_only.mean(axis=1)
players_only['Top_finish'] = players_only[players_only == 1].count(axis=1)/total_sims
players_only['Top_5_finish'] = players_only[players_only <= 5].count(axis=1)/total_sims
players_only['Top_10_finish'] = players_only[players_only <= 10].count(axis=1)/total_sims
players_only['20+%'] = overall_file[overall_file >= 20].count(axis=1)/float(total_sims)
players_only['2x%'] = salary_2x_check[salary_2x_check >= 1].count(axis=1)/float(total_sims)
players_only['3x%'] = salary_3x_check[salary_3x_check >= 1].count(axis=1)/float(total_sims)
players_only['4x%'] = salary_4x_check[salary_4x_check >= 1].count(axis=1)/float(total_sims)
players_only['Player'] = hold_file[['Player']]
final_outcomes = players_only[['Player', 'Top_finish', 'Top_5_finish', 'Top_10_finish', '20+%', '2x%', '3x%', '4x%']]
final_Proj = pd.merge(hold_file, final_outcomes, on="Player")
final_Proj = final_Proj[['Player', 'Position', 'Salary', 'Floor', 'Median', 'Ceiling', 'Top_finish', 'Top_5_finish', 'Top_10_finish', '20+%', '2x%', '3x%', '4x%']]
final_Proj['Own'] = final_Proj['Player'].map(own_dict)
final_Proj['Team'] = final_Proj['Player'].map(team_dict)
final_Proj['Opp'] = final_Proj['Player'].map(opp_dict)
final_Proj = final_Proj[['Player', 'Position', 'Team', 'Opp', 'Salary', 'Floor', 'Median', 'Ceiling', 'Top_finish', 'Top_5_finish', 'Top_10_finish', '20+%', '2x%', '3x%', '4x%', 'Own']]
final_Proj['Projection Rank'] = final_Proj.Median.rank(pct = True)
final_Proj['Own Rank'] = final_Proj.Own.rank(pct = True)
final_Proj['LevX'] = 0
final_Proj['LevX'] = np.where(final_Proj['Position'] == 'QB', final_Proj[['Projection Rank', 'Top_5_finish']].mean(axis=1) + final_Proj['4x%'] - final_Proj['Own Rank'], final_Proj['LevX'])
final_Proj['LevX'] = np.where(final_Proj['Position'] == 'TE', final_Proj[['Projection Rank', '2x%']].mean(axis=1) + final_Proj['4x%'] - final_Proj['Own Rank'], final_Proj['LevX'])
final_Proj['LevX'] = np.where(final_Proj['Position'] == 'RB', final_Proj[['Projection Rank', 'Top_5_finish']].mean(axis=1) + final_Proj['20+%'] - final_Proj['Own Rank'], final_Proj['LevX'])
final_Proj['LevX'] = np.where(final_Proj['Position'] == 'WR', final_Proj[['Projection Rank', 'Top_10_finish']].mean(axis=1) + final_Proj['4x%'] - final_Proj['Own Rank'], final_Proj['LevX'])
final_Proj['CPT_Own'] = final_Proj['Own'] / 4
final_Proj = final_Proj[['Player', 'Position', 'Team', 'Opp', 'Salary', 'Floor', 'Median', 'Ceiling', 'Top_finish', 'Top_5_finish', 'Top_10_finish', '20+%', '2x%', '3x%', '4x%', 'Own', 'LevX']]
final_Proj = final_Proj.set_index('Player')
st.session_state.final_Proj = final_Proj.sort_values(by='Top_finish', ascending=False)
elif check_seq == 'Top X Owned':
if pos_var1 == 'Specific Positions':
raw_baselines = raw_baselines[raw_baselines['Position'].isin(pos_var_list)]
player_check = raw_baselines['Player'].head(top_x_var).tolist()
final_proj_list = []
for players in player_check:
players_pos = pos_dict[players]
player_var = working_roo.loc[working_roo['Player'] == players]
player_var = player_var.reset_index()
working_roo_temp = working_roo[working_roo['Position'] == players_pos]
working_roo_temp = working_roo_temp[working_roo_temp['Team'].isin(team_var1)]
working_roo_temp = working_roo_temp.loc[(working_roo_temp['Salary'] >= player_var['Salary'][0] - Salary_var) & (working_roo_temp['Salary'] <= player_var['Salary'][0] + Salary_var)]
working_roo_temp = working_roo_temp.loc[(working_roo_temp['Median'] >= player_var['Median'][0] - Median_var) & (working_roo_temp['Median'] <= player_var['Median'][0] + Median_var)]
flex_file = working_roo_temp[['Player', 'Position', 'Salary', 'Median']]
flex_file['Floor_raw'] = flex_file['Median'] * .25
flex_file['Ceiling_raw'] = flex_file['Median'] * 1.75
flex_file['Floor'] = np.where(flex_file['Position'] == 'QB', (flex_file['Median'] * .33), flex_file['Floor_raw'])
flex_file['Floor'] = np.where(flex_file['Position'] == 'WR', (flex_file['Median'] * .15), flex_file['Floor_raw'])
flex_file['Ceiling'] = np.where(flex_file['Position'] == 'QB', (flex_file['Median'] * 1.75), flex_file['Ceiling_raw'])
flex_file['Ceiling'] = np.where(flex_file['Position'] == 'WR', (flex_file['Median'] * 1.85), flex_file['Ceiling_raw'])
flex_file['STD'] = flex_file['Median'] / 4
flex_file = flex_file[['Player', 'Position', 'Salary', 'Floor', 'Median', 'Ceiling', 'STD']]
hold_file = flex_file.copy()
overall_file = flex_file.copy()
salary_file = flex_file.copy()
overall_players = overall_file[['Player']]
for x in range(0,total_sims):
salary_file[x] = salary_file['Salary']
salary_file=salary_file.drop(['Player', 'Position', 'Salary', 'Floor', 'Median', 'Ceiling', 'STD'], axis=1)
salary_file = salary_file.div(1000)
for x in range(0,total_sims):
overall_file[x] = np.random.normal(overall_file['Median'],overall_file['STD'])
overall_file=overall_file.drop(['Player', 'Position', 'Salary', 'Floor', 'Median', 'Ceiling', 'STD'], axis=1)
players_only = hold_file[['Player']]
raw_lineups_file = players_only
for x in range(0,total_sims):
maps_dict = {'proj_map':dict(zip(hold_file.Player,overall_file[x]))}
raw_lineups_file[x] = sum([raw_lineups_file['Player'].map(maps_dict['proj_map'])])
players_only[x] = raw_lineups_file[x].rank(ascending=False)
players_only=players_only.drop(['Player'], axis=1)
salary_2x_check = (overall_file - (salary_file*2))
salary_3x_check = (overall_file - (salary_file*3))
salary_4x_check = (overall_file - (salary_file*4))
players_only['Average_Rank'] = players_only.mean(axis=1)
players_only['Top_finish'] = players_only[players_only == 1].count(axis=1)/total_sims
players_only['Top_5_finish'] = players_only[players_only <= 5].count(axis=1)/total_sims
players_only['Top_10_finish'] = players_only[players_only <= 10].count(axis=1)/total_sims
players_only['20+%'] = overall_file[overall_file >= 20].count(axis=1)/float(total_sims)
players_only['2x%'] = salary_2x_check[salary_2x_check >= 1].count(axis=1)/float(total_sims)
players_only['3x%'] = salary_3x_check[salary_3x_check >= 1].count(axis=1)/float(total_sims)
players_only['4x%'] = salary_4x_check[salary_4x_check >= 1].count(axis=1)/float(total_sims)
players_only['Player'] = hold_file[['Player']]
final_outcomes = players_only[['Player', 'Top_finish', 'Top_5_finish', 'Top_10_finish', '20+%', '2x%', '3x%', '4x%']]
final_Proj = pd.merge(hold_file, final_outcomes, on="Player")
final_Proj = final_Proj[['Player', 'Position', 'Salary', 'Floor', 'Median', 'Ceiling', 'Top_finish', 'Top_5_finish', 'Top_10_finish', '20+%', '2x%', '3x%', '4x%']]
final_Proj['Own'] = final_Proj['Player'].map(own_dict)
final_Proj['Team'] = final_Proj['Player'].map(team_dict)
final_Proj['Opp'] = final_Proj['Player'].map(opp_dict)
final_Proj = final_Proj[['Player', 'Position', 'Team', 'Opp', 'Salary', 'Floor', 'Median', 'Ceiling', 'Top_finish', 'Top_5_finish', 'Top_10_finish', '20+%', '2x%', '3x%', '4x%', 'Own']]
final_Proj['Projection Rank'] = final_Proj.Median.rank(pct = True)
final_Proj['Own Rank'] = final_Proj.Own.rank(pct = True)
final_Proj['LevX'] = 0
final_Proj['LevX'] = np.where(final_Proj['Position'] == 'QB', final_Proj[['Projection Rank', 'Top_5_finish']].mean(axis=1) + final_Proj['4x%'] - final_Proj['Own Rank'], final_Proj['LevX'])
final_Proj['LevX'] = np.where(final_Proj['Position'] == 'TE', final_Proj[['Projection Rank', '2x%']].mean(axis=1) + final_Proj['4x%'] - final_Proj['Own Rank'], final_Proj['LevX'])
final_Proj['LevX'] = np.where(final_Proj['Position'] == 'RB', final_Proj[['Projection Rank', 'Top_5_finish']].mean(axis=1) + final_Proj['20+%'] - final_Proj['Own Rank'], final_Proj['LevX'])
final_Proj['LevX'] = np.where(final_Proj['Position'] == 'WR', final_Proj[['Projection Rank', 'Top_10_finish']].mean(axis=1) + final_Proj['4x%'] - final_Proj['Own Rank'], final_Proj['LevX'])
final_Proj['CPT_Own'] = final_Proj['Own'] / 4
final_Proj['Pivot_source'] = players
final_Proj = final_Proj[['Player', 'Pivot_source', 'Position', 'Team', 'Opp', 'Salary', 'Floor', 'Median', 'Ceiling', 'Top_finish', 'Top_5_finish', 'Top_10_finish', '20+%', '2x%', '3x%', '4x%', 'Own', 'LevX']]
final_Proj = final_Proj.sort_values(by='Top_finish', ascending=False)
final_proj_list.append(final_Proj)
st.write(f'finished run for {players}')
# Concatenate all the final_Proj dataframes
final_Proj_combined = pd.concat(final_proj_list)
final_Proj_combined = final_Proj_combined.sort_values(by='LevX', ascending=False)
final_Proj_combined = final_Proj_combined[final_Proj_combined['Player'] != final_Proj_combined['Pivot_source']]
st.session_state.final_Proj = final_Proj_combined.reset_index(drop=True) # Assign the combined dataframe back to final_Proj
placeholder.empty()
with displayholder.container():
if 'final_Proj' in st.session_state:
st.dataframe(st.session_state.final_Proj.style.background_gradient(axis=0).background_gradient(cmap='RdYlGn').format(player_roo_format, precision=2), use_container_width = True)
st.download_button(
label="Export Tables",
data=convert_df_to_csv(st.session_state.final_Proj),
file_name='NFL_pivot_export.csv',
mime='text/csv',
)
else:
st.write("Run some pivots my dude/dudette")
with tab2:
st.info("The Projections file can have any columns in any order, but must contain columns explicitly named: 'Player', 'Salary', 'Position', 'Team', 'Opp', 'Median', and 'Own'.")
col1, col2 = st.columns([1, 5])
with col1:
proj_file = st.file_uploader("Upload Projections File", key = 'proj_uploader')
if proj_file is not None:
try:
proj_dataframe = pd.read_csv(proj_file)
except:
proj_dataframe = pd.read_excel(proj_file)
with col2:
if proj_file is not None:
st.dataframe(proj_dataframe.style.background_gradient(axis=0).background_gradient(cmap='RdYlGn').format(precision=2), use_container_width = True)