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import pulp
import numpy as np
import pandas as pd
import streamlit as st
import pymongo
from itertools import combinations
import time
@st.cache_resource
def init_conn():
uri = st.secrets['mongo_uri']
client = pymongo.MongoClient(uri, retryWrites=True, serverSelectionTimeoutMS=500000)
nba_db = client["NBA_DFS"]
nfl_db = client["NFL_Database"]
return nba_db, nfl_db
st.set_page_config(layout="wide")
nba_db, nfl_db = 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%}'}
nfl_player_roo_format = {'Top_finish': '{:.2%}','Top_5_finish': '{:.2%}', 'Top_10_finish': '{:.2%}', '20+%': '{:.2%}', '2x%': '{:.2%}', '3x%': '{:.2%}',
'4x%': '{:.2%}','GPP%': '{:.2%}'}
nba_player_roo_format = {'Top_finish': '{:.2%}','Top_5_finish': '{:.2%}', 'Top_10_finish': '{:.2%}', '20+%': '{:.2%}', '4x%': '{:.2%}', '5x%': '{:.2%}',
'6x%': '{:.2%}','GPP%': '{:.2%}'}
expose_format = {'Proj Own': '{:.2%}','Exposure': '{:.2%}'}
all_dk_player_projections = st.secrets["NFL_data"]
st.markdown("""
<style>
/* Tab styling */
.stTabs [data-baseweb="tab-list"] {
gap: 8px;
padding: 4px;
}
.stTabs [data-baseweb="tab"] {
height: 50px;
white-space: pre-wrap;
background-color: #FFD700;
color: white;
border-radius: 10px;
gap: 1px;
padding: 10px 20px;
font-weight: bold;
transition: all 0.3s ease;
}
.stTabs [aria-selected="true"] {
background-color: #DAA520;
color: white;
}
.stTabs [data-baseweb="tab"]:hover {
background-color: #DAA520;
cursor: pointer;
}
</style>""", unsafe_allow_html=True)
@st.cache_resource(ttl=60)
def init_baselines():
collection = nba_db["Player_SD_Range_Of_Outcomes"]
cursor = collection.find()
raw_display = pd.DataFrame(list(cursor))
raw_display = raw_display[['Player', 'Minutes Proj', 'Position', 'Team', 'Opp', 'Salary', 'Floor', 'Median', 'Ceiling', 'Top_finish', 'Top_5_finish', 'Top_10_finish', '20+%', '4x%', '5x%', '6x%', 'GPP%',
'Own', 'Small_Own', 'Large_Own', 'Cash_Own', 'CPT_Own', 'LevX', 'ValX', 'site', 'version', 'slate', 'timestamp', 'player_id']]
raw_display = raw_display.loc[raw_display['Median'] > 0]
raw_display = raw_display.sort_values(by='Median', ascending=False)
nba_dk_sd_raw = raw_display[raw_display['site'] == 'Draftkings']
nba_fd_sd_raw = raw_display[raw_display['site'] == 'Fanduel']
try:
collection = nfl_db["DK_SD_NFL_ROO"]
cursor = collection.find()
raw_display = pd.DataFrame(list(cursor))
raw_display = raw_display[['Player', 'Position', 'Team', 'Opp', 'Salary', 'Floor', 'Median', 'Ceiling', 'Top_finish', 'Top_5_finish', 'Top_10_finish', '20+%', '2x%', '3x%', '4x%',
'Own', 'Small_Field_Own', 'Large_Field_Own', 'Cash_Field_Own', 'CPT_Own', 'LevX', 'version', 'slate', 'timestamp', 'player_id', 'site']]
raw_display = raw_display.loc[raw_display['Median'] > 0]
raw_display = raw_display.apply(pd.to_numeric, errors='ignore')
nfl_dk_sd_raw = raw_display.sort_values(by='Median', ascending=False)
except:
nfl_dk_sd_raw = pd.DataFrame()
try:
collection = nfl_db["FD_SD_NFL_ROO"]
cursor = collection.find()
raw_display = pd.DataFrame(list(cursor))
raw_display = raw_display[['Player', 'Position', 'Team', 'Opp', 'Salary', 'Floor', 'Median', 'Ceiling', 'Top_finish', 'Top_5_finish', 'Top_10_finish', '20+%', '2x%', '3x%', '4x%',
'Own', 'Small_Field_Own', 'Large_Field_Own', 'Cash_Field_Own', 'CPT_Own', 'LevX', 'version', 'slate', 'timestamp', 'player_id', 'site']]
raw_display = raw_display.loc[raw_display['Median'] > 0]
raw_display = raw_display.apply(pd.to_numeric, errors='ignore')
nfl_fd_sd_raw = raw_display.sort_values(by='Median', ascending=False)
except:
nfl_fd_sd_raw = pd.DataFrame()
try:
nba_timestamp = nba_dk_sd_raw['timestamp'].values[0]
except:
nba_timestamp = nba_fd_sd_raw['timestamp'].values[0]
try:
try:
nfl_dk_timestamp = nfl_dk_sd_raw['timestamp'].values[0]
except:
nfl_dk_timestamp = nfl_fd_sd_raw['timestamp'].values[0]
except:
try:
nfl_dk_timestamp = time.time()
except:
nfl_dk_timestamp = time.time()
try:
nba_dk_id_dict = dict(zip(nba_dk_sd_raw['Player'], nba_dk_sd_raw['player_id']))
nfl_dk_id_dict = dict(zip(nfl_dk_sd_raw['Player'], nfl_dk_sd_raw['player_id']))
nba_fd_id_dict = dict(zip(nba_fd_sd_raw['Player'], nba_fd_sd_raw['player_id']))
nfl_fd_id_dict = dict(zip(nfl_fd_sd_raw['Player'], nfl_fd_sd_raw['player_id']))
except:
nba_dk_id_dict = dict(zip(nba_dk_sd_raw['Player'], nba_dk_sd_raw['player_id']))
nfl_dk_id_dict = dict()
nba_fd_id_dict = dict(zip(nba_fd_sd_raw['Player'], nba_fd_sd_raw['player_id']))
nfl_fd_id_dict = dict()
return nba_dk_sd_raw, nba_fd_sd_raw, nfl_dk_sd_raw, nfl_fd_sd_raw, nba_timestamp, nfl_dk_timestamp, nba_dk_id_dict, nfl_dk_id_dict, nba_fd_id_dict, nfl_fd_id_dict
nba_dk_sd_raw, nba_fd_sd_raw, nfl_dk_sd_raw, nfl_fd_sd_raw, nba_timestamp, nfl_dk_timestamp, nba_dk_id_dict, nfl_dk_id_dict, nba_fd_id_dict, nfl_fd_id_dict = init_baselines()
@st.cache_data
def convert_df_to_csv(df):
return df.to_csv().encode('utf-8')
tab1, tab2 = st.tabs(['Range of Outcomes', 'Optimizer'])
with tab1:
with st.expander('Info and Filters'):
if st.button("Load/Reset Data", key='reset2'):
st.cache_data.clear()
nba_dk_sd_raw, nba_fd_sd_raw, nfl_dk_sd_raw, nfl_fd_sd_raw, nba_timestamp, nfl_dk_timestamp, nba_dk_id_dict, nfl_dk_id_dict, nba_fd_id_dict, nfl_fd_id_dict = init_baselines()
info_container = st.container()
with info_container:
st.info("Simple view is better for mobile and shows just the most valuable stats, Advanced view is better for desktop and shows all stats and thresholds")
options_container = st.container()
with options_container:
col1, col2, col3, col4 = st.columns(4)
with col1:
view_var2 = st.radio("View Type", ("Simple", "Advanced"), key='view_var2')
with col2:
sport_var2 = st.radio("Sport", ('NBA', 'NFL'), key='sport_var2')
if sport_var2 == 'NBA':
dk_roo_raw = nba_dk_sd_raw
fd_roo_raw = nba_fd_sd_raw
elif sport_var2 == 'NFL':
dk_roo_raw = nfl_dk_sd_raw
fd_roo_raw = nfl_fd_sd_raw
with col3:
slate_var2 = st.radio("Slate", ('Paydirt (Main)', 'Paydirt (Secondary)', 'Paydirt (Auxiliary)'), key='slate_var2')
with col4:
site_var2 = st.radio("Site", ('Draftkings', 'Fanduel'), key='site_var2')
if site_var2 == 'Draftkings':
if slate_var2 == 'Paydirt (Main)':
raw_baselines = dk_roo_raw
raw_baselines = raw_baselines[raw_baselines['slate'] == 'Showdown #1']
elif slate_var2 == 'Paydirt (Secondary)':
raw_baselines = dk_roo_raw
raw_baselines = raw_baselines[raw_baselines['slate'] == 'Showdown #2']
elif slate_var2 == 'Paydirt (Auxiliary)':
raw_baselines = dk_roo_raw
raw_baselines = raw_baselines[raw_baselines['slate'] == 'Showdown #3']
elif site_var2 == 'Fanduel':
if slate_var2 == 'Paydirt (Main)':
raw_baselines = fd_roo_raw
raw_baselines = raw_baselines[raw_baselines['slate'] == 'Showdown #1']
elif slate_var2 == 'Paydirt (Secondary)':
raw_baselines = fd_roo_raw
raw_baselines = raw_baselines[raw_baselines['slate'] == 'Showdown #2']
elif slate_var2 == 'Paydirt (Auxiliary)':
raw_baselines = fd_roo_raw
raw_baselines = raw_baselines[raw_baselines['slate'] == 'Showdown #3']
hold_container = st.empty()
if sport_var2 == 'NBA':
if view_var2 == 'Simple':
display_Proj = raw_baselines[['Player', 'Position', 'Salary', 'Median', 'GPP%', 'Own']]
display_Proj = display_Proj.drop_duplicates(subset=['Player'])
display_Proj = display_Proj.set_index('Player')
elif view_var2 == 'Advanced':
display_Proj = raw_baselines[['Player', 'Position', 'Team', 'Opp', 'Salary', 'Floor', 'Median', 'Ceiling', 'Top_finish', 'Top_5_finish', 'Top_10_finish', '20+%', '4x%', '5x%', '6x%', 'GPP%', 'Own', 'Small_Own', 'Large_Own', 'Cash_Own', 'CPT_Own', 'LevX', 'ValX', 'site', 'version', 'slate', 'timestamp', 'player_id']]
display_Proj = display_Proj.drop_duplicates(subset=['Player'])
display_Proj = display_Proj.set_index('Player')
elif sport_var2 == 'NFL':
if view_var2 == 'Simple':
display_Proj = raw_baselines[['Player', 'Position', 'Salary', 'Median', '20+%', 'Own']]
display_Proj = display_Proj.drop_duplicates(subset=['Player'])
display_Proj = display_Proj.set_index('Player')
elif view_var2 == 'Advanced':
display_Proj = raw_baselines[['Player', 'Position', 'Team', 'Opp', 'Salary', 'Floor', 'Median', 'Ceiling', 'Top_finish', 'Top_5_finish', 'Top_10_finish', '20+%', '2x%', '3x%', '4x%', 'Own', 'Small_Field_Own', 'Large_Field_Own', 'Cash_Field_Own', 'CPT_Own', 'LevX', 'version', 'slate', 'timestamp', 'player_id', 'site']]
display_Proj = display_Proj.drop_duplicates(subset=['Player'])
display_Proj = display_Proj.set_index('Player')
display_Proj = display_Proj.sort_values(by='Median', ascending=False)
with hold_container:
hold_container = st.empty()
if sport_var2 == 'NBA':
st.dataframe(display_Proj.style.background_gradient(axis=0).background_gradient(cmap='RdYlGn').format(nba_player_roo_format, precision=2), height=1000, use_container_width = True)
elif sport_var2 == 'NFL':
st.dataframe(display_Proj.style.background_gradient(axis=0).background_gradient(cmap='RdYlGn').format(nfl_player_roo_format, precision=2), height=1000, use_container_width = True)
st.download_button(
label="Export Tables",
data=convert_df_to_csv(raw_baselines),
file_name='NFL_SD_export.csv',
mime='text/csv',
)
with tab2:
with st.expander('Info and Filters'):
if st.button("Load/Reset Data", key='reset1'):
st.cache_data.clear()
nba_dk_sd_raw, nba_fd_sd_raw, nfl_dk_sd_raw, nfl_fd_sd_raw, nba_timestamp, nfl_dk_timestamp, nba_dk_id_dict, nfl_dk_id_dict, nba_fd_id_dict, nfl_fd_id_dict = init_baselines()
for key in st.session_state.keys():
del st.session_state[key]
sport_var1 = st.radio("What sport are you optimizing?", ('NBA', 'NFL'), key='sport_var1')
if sport_var1 == 'NBA':
dk_roo_raw = nba_dk_sd_raw
fd_roo_raw = nba_fd_sd_raw
elif sport_var1 == 'NFL':
dk_roo_raw = nfl_dk_sd_raw
fd_roo_raw = nfl_fd_sd_raw
slate_var1 = st.radio("Which data are you loading?", ('Paydirt (Main)', 'Paydirt (Secondary)', 'Paydirt (Auxiliary)'), key='slate_var1')
site_var1 = st.selectbox("What site is the showdown on?", ('Draftkings', 'Fanduel'), key='site_var1')
if site_var1 == 'Draftkings':
if slate_var1 == 'Paydirt (Main)':
raw_baselines = dk_roo_raw
raw_baselines = raw_baselines[raw_baselines['slate'] == 'Showdown #1']
elif slate_var1 == 'Paydirt (Secondary)':
raw_baselines = dk_roo_raw
raw_baselines = raw_baselines[raw_baselines['slate'] == 'Showdown #2']
elif slate_var1 == 'Paydirt (Auxiliary)':
raw_baselines = dk_roo_raw
raw_baselines = raw_baselines[raw_baselines['slate'] == 'Showdown #3']
elif site_var1 == 'Fanduel':
if slate_var1 == 'Paydirt (Main)':
st.info("Showdown on Fanduel sucks, you should not do that, but I understand degen's gotta degen")
raw_baselines = fd_roo_raw
raw_baselines = raw_baselines[raw_baselines['slate'] == 'Showdown #1']
elif slate_var1 == 'Paydirt (Secondary)':
st.info("Showdown on Fanduel sucks, you should not do that, but I understand degen's gotta degen")
raw_baselines = fd_roo_raw
raw_baselines = raw_baselines[raw_baselines['slate'] == 'Showdown #2']
elif slate_var1 == 'Paydirt (Auxiliary)':
st.info("Showdown on Fanduel sucks, you should not do that, but I understand degen's gotta degen")
raw_baselines = fd_roo_raw
raw_baselines = raw_baselines[raw_baselines['slate'] == 'Showdown #3']
contest_var1 = st.selectbox("What contest type are you optimizing for?", ('Cash', 'Small Field GPP', 'Large Field GPP'), key='contest_var1')
lock_var1 = st.multiselect("Are there any players you want to use in all lineups in the CAPTAIN (Lock Button)?", options = raw_baselines['Player'].unique(), key='lock_var1')
lock_var2 = st.multiselect("Are there any players you want to use in all lineups in the FLEX (Lock Button)?", options = raw_baselines['Player'].unique(), key='lock_var2')
avoid_var1 = st.multiselect("Are there any players you want to remove from the pool (Drop Button)?", options = raw_baselines['Player'].unique(), key='avoid_var1')
trim_choice1 = st.selectbox("Allow overowned lineups?", options = ['Yes', 'No'])
linenum_var1 = st.number_input("How many lineups would you like to produce?", min_value = 1, max_value = 300, value = 20, step = 1, key='linenum_var1')
if trim_choice1 == 'Yes':
trim_var1 = 0
elif trim_choice1 == 'No':
trim_var1 = 1
if site_var1 == 'Draftkings':
min_sal1 = st.number_input('Min Salary', min_value = 35000, max_value = 49900, value = 49000, step = 100, key='min_sal1')
max_sal1 = st.number_input('Max Salary', min_value = 35000, max_value = 50000, value = 50000, step = 100, key='max_sal1')
elif site_var1 == 'Fanduel':
min_sal1 = st.number_input('Min Salary', min_value = 45000, max_value = 59900, value = 59000, step = 100, key='min_sal1')
max_sal1 = st.number_input('Max Salary', min_value = 45000, max_value = 60000, value = 60000, step = 100, key='max_sal1')
if contest_var1 == 'Small Field GPP':
ownframe = raw_baselines.copy()
if sport_var1 == 'NBA':
ownframe['Own'] = ownframe['Small_Own']
elif sport_var1 == 'NFL':
ownframe['Own'] = ownframe['Small_Field_Own']
elif contest_var1 == 'Large Field GPP':
ownframe = raw_baselines.copy()
if sport_var1 == 'NBA':
ownframe['Own'] = ownframe['Large_Own']
elif sport_var1 == 'NFL':
ownframe['Own'] = ownframe['Large_Field_Own']
elif contest_var1 == 'Cash':
ownframe = raw_baselines.copy()
if sport_var1 == 'NBA':
ownframe['Own'] = ownframe['Cash_Own']
elif sport_var1 == 'NFL':
ownframe['Own'] = ownframe['Cash_Field_Own']
export_baselines = ownframe[['Player', 'Salary', 'Position', 'Team', 'Opp', 'Median', 'Own', 'CPT_Own', 'player_id']]
export_baselines['CPT_Proj'] = export_baselines['Median'] * 1.5
if sport_var1 == 'NBA':
export_baselines['CPT_Salary'] = export_baselines['Salary'] * 1.5
elif sport_var1 == 'NFL':
export_baselines['CPT_Salary'] = export_baselines['Salary']
export_baselines['salary'] = export_baselines['Salary'] / 1.5
export_baselines['ID'] = export_baselines['player_id']
display_baselines = ownframe[['Player', 'Salary', 'Position', 'Team', 'Opp', 'Median', 'Own', 'CPT_Own']]
display_baselines = display_baselines.sort_values(by='Median', ascending=False)
display_baselines['cpt_lock'] = np.where(display_baselines['Player'].isin(lock_var1), 1, 0)
display_baselines['lock'] = np.where(display_baselines['Player'].isin(lock_var2), 1, 0)
display_baselines = display_baselines.drop_duplicates(subset=['Player'])
st.session_state.display_baselines = display_baselines.copy()
st.session_state.export_baselines = export_baselines.copy()
index_check = pd.DataFrame()
flex_proj = pd.DataFrame()
cpt_proj = pd.DataFrame()
if site_var1 == 'Draftkings':
cpt_proj['Player'] = display_baselines['Player']
if sport_var1 == 'NBA':
cpt_proj['Salary'] = display_baselines['Salary'] * 1.5
elif sport_var1 == 'NFL':
cpt_proj['Salary'] = display_baselines['Salary']
cpt_proj['Position'] = display_baselines['Position']
cpt_proj['Team'] = display_baselines['Team']
cpt_proj['Opp'] = display_baselines['Opp']
cpt_proj['Median'] = display_baselines['Median'] * 1.5
cpt_proj['Own'] = display_baselines['CPT_Own']
cpt_proj['lock'] = display_baselines['cpt_lock']
cpt_proj['roster'] = 'CPT'
if len(lock_var1) > 0:
cpt_proj = cpt_proj[cpt_proj['lock'] == 1]
if len(lock_var2) > 0:
cpt_proj = cpt_proj[~cpt_proj['Player'].isin(lock_var2)]
flex_proj['Player'] = display_baselines['Player']
if sport_var1 == 'NBA':
flex_proj['Salary'] = display_baselines['Salary']
elif sport_var1 == 'NFL':
flex_proj['Salary'] = display_baselines['Salary'] / 1.5
flex_proj['Position'] = display_baselines['Position']
flex_proj['Team'] = display_baselines['Team']
flex_proj['Opp'] = display_baselines['Opp']
flex_proj['Median'] = display_baselines['Median']
flex_proj['Own'] = display_baselines['Own']
flex_proj['lock'] = display_baselines['lock']
flex_proj['roster'] = 'FLEX'
elif site_var1 == 'Fanduel':
cpt_proj['Player'] = display_baselines['Player']
cpt_proj['Salary'] = display_baselines['Salary']
cpt_proj['Position'] = display_baselines['Position']
cpt_proj['Team'] = display_baselines['Team']
cpt_proj['Opp'] = display_baselines['Opp']
cpt_proj['Median'] = display_baselines['Median'] * 1.5
cpt_proj['Own'] = display_baselines['CPT Own'] * .75
cpt_proj['lock'] = display_baselines['cpt_lock']
cpt_proj['roster'] = 'CPT'
flex_proj['Player'] = display_baselines['Player']
flex_proj['Salary'] = display_baselines['Salary']
flex_proj['Position'] = display_baselines['Position']
flex_proj['Team'] = display_baselines['Team']
flex_proj['Opp'] = display_baselines['Opp']
flex_proj['Median'] = display_baselines['Median']
flex_proj['Own'] = display_baselines['Own']
flex_proj['lock'] = display_baselines['lock']
flex_proj['roster'] = 'FLEX'
combo_file = pd.concat([cpt_proj, flex_proj], ignore_index=True)
display_container = st.empty()
display_dl_container = st.empty()
optimize_container = st.empty()
download_container = st.empty()
freq_container = st.empty()
if st.button('Optimize'):
for key in st.session_state.keys():
del st.session_state[key]
max_proj = 1000
max_own = 1000
total_proj = 0
total_own = 0
display_container = st.empty()
display_dl_container = st.empty()
optimize_container = st.empty()
download_container = st.empty()
freq_container = st.empty()
lineup_display = []
check_list = []
lineups = []
portfolio = pd.DataFrame()
x = 1
with st.spinner('Wait for it...'):
with optimize_container:
while x <= linenum_var1:
sorted_lineup = []
p_used = []
raw_proj_file = combo_file
raw_flex_file = raw_proj_file.dropna(how='all')
raw_flex_file = raw_flex_file.loc[raw_flex_file['Median'] > 0]
flex_file = raw_flex_file
flex_file.rename(columns={"Own": "Proj DK Own%"}, inplace = True)
flex_file['name_var'] = flex_file['Player']
flex_file['lock'] = np.where(flex_file['Player'].isin(lock_var2), 1, 0)
flex_file = flex_file[~flex_file['Player'].isin(avoid_var1)]
flex_file['Player'] = np.where(flex_file['roster'] == 'CPT', flex_file['Player'] + ' - CPT', flex_file['Player'] + ' - FLEX')
player_ids = flex_file.index
overall_players = flex_file[['Player']]
overall_players['player_var_add'] = flex_file.index
overall_players['player_var'] = 'player_vars_' + overall_players['player_var_add'].astype(str)
player_vars = pulp.LpVariable.dicts("player_vars", flex_file.index, 0, 1, pulp.LpInteger)
total_score = pulp.LpProblem("Fantasy_Points_Problem", pulp.LpMaximize)
player_match = dict(zip(overall_players['player_var'], overall_players['Player']))
player_index_match = dict(zip(overall_players['player_var'], overall_players['player_var_add']))
player_own = dict(zip(flex_file['Player'], flex_file['Proj DK Own%']))
player_team = dict(zip(flex_file['Player'], flex_file['Team']))
player_pos = dict(zip(flex_file['Player'], flex_file['Position']))
player_sal = dict(zip(flex_file['Player'], flex_file['Salary']))
player_proj = dict(zip(flex_file['Player'], flex_file['Median']))
obj_points = {idx: (flex_file['Median'][idx]) for idx in flex_file.index}
total_score += sum([player_vars[idx]*obj_points[idx] for idx in flex_file.index])
obj_points_max = {idx: (flex_file['Median'][idx]) for idx in flex_file.index}
obj_own_max = {idx: (flex_file['Proj DK Own%'][idx]) for idx in flex_file.index}
obj_salary = {idx: (flex_file['Salary'][idx]) for idx in flex_file.index}
total_score += pulp.lpSum([player_vars[idx]*obj_salary[idx] for idx in flex_file.index]) <= max_sal1
total_score += pulp.lpSum([player_vars[idx]*obj_salary[idx] for idx in flex_file.index]) >= min_sal1
if site_var1 == 'Draftkings':
for flex in flex_file['lock'].unique():
sub_idx = flex_file[flex_file['lock'] == 1].index
total_score += pulp.lpSum([player_vars[idx] for idx in sub_idx]) == len(lock_var2)
for flex in flex_file['roster'].unique():
sub_idx = flex_file[flex_file['roster'] == "CPT"].index
total_score += pulp.lpSum([player_vars[idx] for idx in sub_idx]) == 1
for flex in flex_file['roster'].unique():
sub_idx = flex_file[flex_file['roster'] == "FLEX"].index
total_score += pulp.lpSum([player_vars[idx] for idx in sub_idx]) == 5
for playerid in player_ids:
total_score += pulp.lpSum([player_vars[i] for i in player_ids if
(flex_file['name_var'][i] == flex_file['name_var'][playerid])]) <= 1
elif site_var1 == 'Fanduel':
for flex in flex_file['lock'].unique():
sub_idx = flex_file[flex_file['lock'] == 1].index
total_score += pulp.lpSum([player_vars[idx] for idx in sub_idx]) == len(lock_var2)
for flex in flex_file['Position'].unique():
sub_idx = flex_file[flex_file['Position'] != "Var"].index
total_score += pulp.lpSum([player_vars[idx] for idx in sub_idx]) == 5
for flex in flex_file['roster'].unique():
sub_idx = flex_file[flex_file['roster'] == "CPT"].index
total_score += pulp.lpSum([player_vars[idx] for idx in sub_idx]) == 1
for playerid in player_ids:
total_score += pulp.lpSum([player_vars[i] for i in player_ids if
(flex_file['name_var'][i] == flex_file['name_var'][playerid])]) <= 1
player_count = []
player_trim = []
lineup_list = []
if contest_var1 == 'Cash':
obj_points = {idx: (flex_file['Proj DK Own%'][idx]) for idx in flex_file.index}
total_score += sum([player_vars[idx]*obj_points[idx] for idx in flex_file.index])
total_score += pulp.lpSum([player_vars[idx]*obj_points[idx] for idx in flex_file.index]) <= max_own - .001
elif contest_var1 != 'Cash':
obj_points = {idx: (flex_file['Median'][idx]) for idx in flex_file.index}
total_score += sum([player_vars[idx]*obj_points[idx] for idx in flex_file.index])
total_score += pulp.lpSum([player_vars[idx]*obj_points[idx] for idx in flex_file.index]) <= max_proj - .01
if trim_var1 == 1:
total_score += pulp.lpSum([player_vars[idx]*obj_own_max[idx] for idx in flex_file.index]) <= max_own - .001
total_score.solve()
for v in total_score.variables():
if v.varValue > 0:
lineup_list.append(v.name)
df = pd.DataFrame(lineup_list)
df['Names'] = df[0].map(player_match)
df['Cost'] = df['Names'].map(player_sal)
df['Proj'] = df['Names'].map(player_proj)
df['Own'] = df['Names'].map(player_own)
total_cost = sum(df['Cost'])
total_own = sum(df['Own'])
total_proj = sum(df['Proj'])
lineup_raw = pd.DataFrame(lineup_list)
lineup_raw['Names'] = lineup_raw[0].map(player_match)
lineup_raw['value'] = lineup_raw[0].map(player_index_match)
lineup_final = lineup_raw.sort_values(by=['value'])
del lineup_final[lineup_final.columns[0]]
del lineup_final[lineup_final.columns[1]]
lineup_final['Team'] = lineup_final['Names'].map(player_team)
lineup_final['Position'] = lineup_final['Names'].map(player_pos)
lineup_final['Salary'] = lineup_final['Names'].map(player_sal)
lineup_final['Proj'] = lineup_final['Names'].map(player_proj)
lineup_final['Own'] = lineup_final['Names'].map(player_own)
lineup_final.loc['Column_Total'] = lineup_final.sum(numeric_only=True, axis=0)
lineup_final = lineup_final.reset_index(drop=True)
max_proj = total_proj
max_own = total_own
if site_var1 == 'Draftkings':
if len(lineup_final) == 7:
port_display = pd.DataFrame(lineup_final['Names'][:-1].values.reshape(1, -1))
port_display['Cost'] = total_cost
port_display['Proj'] = total_proj
port_display['Own'] = total_own
st.table(port_display)
portfolio = pd.concat([portfolio, port_display], ignore_index = True)
elif site_var1 == 'Fanduel':
if len(lineup_final) == 6:
port_display = pd.DataFrame(lineup_final['Names'][:-1].values.reshape(1, -1))
port_display['Cost'] = total_cost
port_display['Proj'] = total_proj
port_display['Own'] = total_own
st.table(port_display)
portfolio = pd.concat([portfolio, port_display], ignore_index = True)
x += 1
if site_var1 == 'Draftkings':
portfolio.rename(columns={0: "CPT", 1: "FLEX1", 2: "FLEX2", 3: "FLEX3", 4: "FLEX4", 5: "FLEX5"}, inplace = True)
elif site_var1 == 'Fanduel':
portfolio.rename(columns={0: "MVP", 1: "FLEX1", 2: "FLEX2", 3: "FLEX3", 4: "FLEX4"}, inplace = True)
portfolio = portfolio.dropna()
portfolio = portfolio.reset_index()
portfolio['Lineup_num'] = portfolio['index'] + 1
portfolio.rename(columns={'Lineup_num': "Lineup"}, inplace = True)
portfolio = portfolio.set_index('Lineup')
portfolio = portfolio.drop(columns=['index'])
st.session_state.portfolio = portfolio.drop_duplicates()
final_outcomes = portfolio
st.session_state.final_outcomes = portfolio
player_freq = pd.DataFrame(np.column_stack(np.unique(st.session_state.portfolio.iloc[:,0:6].values, return_counts=True)),
columns=['Player','Freq']).sort_values('Freq', ascending=False).reset_index(drop=True)
player_freq['Freq'] = player_freq['Freq'].astype(int)
player_freq['Position'] = player_freq['Player'].map(player_pos)
player_freq['Salary'] = player_freq['Player'].map(player_sal)
player_freq['Proj Own'] = player_freq['Player'].map(player_own) / 100
player_freq['Exposure'] = player_freq['Freq']/(linenum_var1)
player_freq['Team'] = player_freq['Player'].map(player_team)
final_outcomes_export = pd.DataFrame()
split_portfolio = pd.DataFrame()
if site_var1 == 'Draftkings':
split_portfolio[['CPT', 'CPT_ID']] = final_outcomes.CPT.str.split("-", n=1, expand = True)
split_portfolio[['FLEX1', 'FLEX1_ID']] = final_outcomes.FLEX1.str.split("-", n=1, expand = True)
split_portfolio[['FLEX2', 'FLEX2_ID']] = final_outcomes.FLEX2.str.split("-", n=1, expand = True)
split_portfolio[['FLEX3', 'FLEX3_ID']] = final_outcomes.FLEX3.str.split("-", n=1, expand = True)
split_portfolio[['FLEX4', 'FLEX4_ID']] = final_outcomes.FLEX4.str.split("-", n=1, expand = True)
split_portfolio[['FLEX5', 'FLEX5_ID']] = final_outcomes.FLEX5.str.split("-", n=1, expand = True)
split_portfolio['CPT'] = split_portfolio['CPT'].str.strip()
split_portfolio['FLEX1'] = split_portfolio['FLEX1'].str.strip()
split_portfolio['FLEX2'] = split_portfolio['FLEX2'].str.strip()
split_portfolio['FLEX3'] = split_portfolio['FLEX3'].str.strip()
split_portfolio['FLEX4'] = split_portfolio['FLEX4'].str.strip()
split_portfolio['FLEX5'] = split_portfolio['FLEX5'].str.strip()
final_outcomes_export['CPT'] = split_portfolio['CPT']
final_outcomes_export['FLEX1'] = split_portfolio['FLEX1']
final_outcomes_export['FLEX2'] = split_portfolio['FLEX2']
final_outcomes_export['FLEX3'] = split_portfolio['FLEX3']
final_outcomes_export['FLEX4'] = split_portfolio['FLEX4']
final_outcomes_export['FLEX5'] = split_portfolio['FLEX5']
if sport_var1 == 'NFL':
final_outcomes_export['CPT'].replace(nfl_dk_id_dict, inplace=True)
final_outcomes_export['FLEX1'].replace(nfl_dk_id_dict, inplace=True)
final_outcomes_export['FLEX2'].replace(nfl_dk_id_dict, inplace=True)
final_outcomes_export['FLEX3'].replace(nfl_dk_id_dict, inplace=True)
final_outcomes_export['FLEX4'].replace(nfl_dk_id_dict, inplace=True)
final_outcomes_export['FLEX5'].replace(nfl_dk_id_dict, inplace=True)
elif sport_var1 == 'NBA':
final_outcomes_export['CPT'].replace(nba_dk_id_dict, inplace=True)
final_outcomes_export['FLEX1'].replace(nba_dk_id_dict, inplace=True)
final_outcomes_export['FLEX2'].replace(nba_dk_id_dict, inplace=True)
final_outcomes_export['FLEX3'].replace(nba_dk_id_dict, inplace=True)
final_outcomes_export['FLEX4'].replace(nba_dk_id_dict, inplace=True)
final_outcomes_export['FLEX5'].replace(nba_dk_id_dict, inplace=True)
final_outcomes_export['Salary'] = final_outcomes['Cost']
final_outcomes_export['Own'] = final_outcomes['Own']
final_outcomes_export['Proj'] = final_outcomes['Proj']
st.session_state.final_outcomes_export = final_outcomes_export.copy()
elif site_var1 == 'Fanduel':
split_portfolio[['MVP', 'CPT_ID']] = final_outcomes.MVP.str.split("-", n=1, expand = True)
split_portfolio[['FLEX1', 'FLEX1_ID']] = final_outcomes.FLEX1.str.split("-", n=1, expand = True)
split_portfolio[['FLEX2', 'FLEX2_ID']] = final_outcomes.FLEX2.str.split("-", n=1, expand = True)
split_portfolio[['FLEX3', 'FLEX3_ID']] = final_outcomes.FLEX3.str.split("-", n=1, expand = True)
split_portfolio[['FLEX4', 'FLEX4_ID']] = final_outcomes.FLEX4.str.split("-", n=1, expand = True)
split_portfolio['MVP'] = split_portfolio['MVP'].str.strip()
split_portfolio['FLEX1'] = split_portfolio['FLEX1'].str.strip()
split_portfolio['FLEX2'] = split_portfolio['FLEX2'].str.strip()
split_portfolio['FLEX3'] = split_portfolio['FLEX3'].str.strip()
split_portfolio['FLEX4'] = split_portfolio['FLEX4'].str.strip()
final_outcomes_export['MVP'] = split_portfolio['MVP']
final_outcomes_export['FLEX1'] = split_portfolio['FLEX1']
final_outcomes_export['FLEX2'] = split_portfolio['FLEX2']
final_outcomes_export['FLEX3'] = split_portfolio['FLEX3']
final_outcomes_export['FLEX4'] = split_portfolio['FLEX4']
if sport_var1 == 'NFL':
final_outcomes_export['MVP'].replace(nfl_fd_id_dict, inplace=True)
final_outcomes_export['FLEX1'].replace(nfl_fd_id_dict, inplace=True)
final_outcomes_export['FLEX2'].replace(nfl_fd_id_dict, inplace=True)
final_outcomes_export['FLEX3'].replace(nfl_fd_id_dict, inplace=True)
final_outcomes_export['FLEX4'].replace(nfl_fd_id_dict, inplace=True)
elif sport_var1 == 'NBA':
final_outcomes_export['MVP'].replace(nba_fd_id_dict, inplace=True)
final_outcomes_export['FLEX1'].replace(nba_fd_id_dict, inplace=True)
final_outcomes_export['FLEX2'].replace(nba_fd_id_dict, inplace=True)
final_outcomes_export['FLEX3'].replace(nba_fd_id_dict, inplace=True)
final_outcomes_export['FLEX4'].replace(nba_fd_id_dict, inplace=True)
final_outcomes_export['Salary'] = final_outcomes['Cost']
final_outcomes_export['Own'] = final_outcomes['Own']
final_outcomes_export['Proj'] = final_outcomes['Proj']
st.session_state.FD_final_outcomes_export = final_outcomes_export.copy()
st.session_state.player_freq = player_freq[['Player', 'Position', 'Team', 'Salary', 'Proj Own', 'Exposure']]
with display_container:
display_container = st.empty()
if 'display_baselines' in st.session_state:
st.dataframe(st.session_state.display_baselines.style.background_gradient(axis=0).background_gradient(cmap='RdYlGn').format(precision=2), use_container_width = True)
with display_dl_container:
display_dl_container = st.empty()
if 'export_baselines' in st.session_state:
st.download_button(
label="Export Projections",
data=convert_df_to_csv(st.session_state.export_baselines),
file_name='showdown_proj_export.csv',
mime='text/csv',
)
with optimize_container:
optimize_container = st.empty()
if 'final_outcomes' in st.session_state:
st.dataframe(st.session_state.final_outcomes.style.background_gradient(axis=0).background_gradient(cmap='RdYlGn').format(precision=2), use_container_width = True)
with download_container:
download_container = st.empty()
if site_var1 == 'Draftkings':
if 'final_outcomes_export' in st.session_state:
st.download_button(
label="Export Optimals",
data=convert_df_to_csv(st.session_state.final_outcomes_export),
file_name='NFL_optimals_export.csv',
mime='text/csv',
)
elif site_var1 == 'Fanduel':
if 'FD_final_outcomes_export' in st.session_state:
st.download_button(
label="Export Optimals",
data=convert_df_to_csv(st.session_state.FD_final_outcomes_export),
file_name='FD_NFL_optimals_export.csv',
mime='text/csv',
)
with freq_container:
freq_container = st.empty()
if 'player_freq' in st.session_state:
st.dataframe(st.session_state.player_freq.style.background_gradient(axis=0).background_gradient(cmap='RdYlGn').format(expose_format, precision=2), use_container_width = True)
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