Multichem commited on
Commit
ea01e10
1 Parent(s): bb21e49

Upload app.py

Browse files
Files changed (1) hide show
  1. app.py +1096 -0
app.py ADDED
@@ -0,0 +1,1096 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ import streamlit as st
2
+ st.set_page_config(layout="wide")
3
+
4
+ for name in dir():
5
+ if not name.startswith('_'):
6
+ del globals()[name]
7
+
8
+ import numpy as np
9
+ import pandas as pd
10
+ import streamlit as st
11
+ import gspread
12
+
13
+ @st.cache_resource
14
+ def init_conn():
15
+ scope = ['https://www.googleapis.com/auth/spreadsheets',
16
+ "https://www.googleapis.com/auth/drive"]
17
+
18
+ credentials = {
19
+ "type": "service_account",
20
+ "project_id": "sheets-api-connect-378620",
21
+ "private_key_id": "1005124050c80d085e2c5b344345715978dd9cc9",
22
+ "private_key": "-----BEGIN PRIVATE KEY-----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\nJuElxA33rFEjbgbzdyrE768=\n-----END PRIVATE KEY-----\n",
23
+ "client_email": "gspread-connection@sheets-api-connect-378620.iam.gserviceaccount.com",
24
+ "client_id": "106625872877651920064",
25
+ "auth_uri": "https://accounts.google.com/o/oauth2/auth",
26
+ "token_uri": "https://oauth2.googleapis.com/token",
27
+ "auth_provider_x509_cert_url": "https://www.googleapis.com/oauth2/v1/certs",
28
+ "client_x509_cert_url": "https://www.googleapis.com/robot/v1/metadata/x509/gspread-connection%40sheets-api-connect-378620.iam.gserviceaccount.com"
29
+ }
30
+
31
+ gc = gspread.service_account_from_dict(credentials)
32
+ return gc
33
+
34
+ gc = init_conn()
35
+
36
+ game_format = {'Win Percentage': '{:.2%}','First Inning Lead Percentage': '{:.2%}',
37
+ 'Fifth Inning Lead Percentage': '{:.2%}', '8+ runs': '{:.2%}', 'DK LevX': '{:.2%}', 'FD LevX': '{:.2%}'}
38
+
39
+ player_roo_format = {'Top_finish': '{:.2%}','Top_5_finish': '{:.2%}', 'Top_10_finish': '{:.2%}', '20+%': '{:.2%}', '2x%': '{:.2%}', '3x%': '{:.2%}',
40
+ '4x%': '{:.2%}','GPP%': '{:.2%}'}
41
+
42
+ freq_format = {'Proj Own': '{:.2%}', 'Exposure': '{:.2%}', 'Edge': '{:.2%}'}
43
+
44
+ @st.cache_resource(ttl=300)
45
+ def load_dk_player_projections():
46
+ sh = gc.open_by_url('https://docs.google.com/spreadsheets/d/1aLVN4izjSuqZGRyz73Kip6U1q3rubh6v9GrckgEqbfs/edit?pli=1#gid=1205205406')
47
+ worksheet = sh.worksheet('CSGO_ROO')
48
+ load_display = pd.DataFrame(worksheet.get_all_records())
49
+ load_display['Own'] = load_display['Own'] * 100
50
+ load_display = load_display[load_display['Own'] > 0 ]
51
+ load_display['Floor'] = load_display['Median'] * .25
52
+ load_display['Ceiling'] = load_display['Median'] + (load_display['Median'] * .75)
53
+ load_display.replace('', np.nan, inplace=True)
54
+ raw_display = load_display.dropna(subset=['Median'])
55
+
56
+ return raw_display
57
+
58
+ @st.cache_resource(ttl=300)
59
+ def load_fd_player_projections():
60
+ sh = gc.open_by_url('https://docs.google.com/spreadsheets/d/1aLVN4izjSuqZGRyz73Kip6U1q3rubh6v9GrckgEqbfs/edit?pli=1#gid=1205205406')
61
+ worksheet = sh.worksheet('CSGO_ROO')
62
+ load_display = pd.DataFrame(worksheet.get_all_records())
63
+
64
+ load_display['Own'] = load_display['Own'] * 100
65
+ load_display = load_display[load_display['Own'] > 0 ]
66
+ load_display['Floor'] = load_display['Median'] * .25
67
+ load_display['Ceiling'] = load_display['Median'] + (load_display['Median'] * .75)
68
+ load_display.replace('', np.nan, inplace=True)
69
+ raw_display = load_display.dropna(subset=['Median'])
70
+
71
+ return raw_display
72
+
73
+ @st.cache_data
74
+ def convert_df_to_csv(df):
75
+ return df.to_csv().encode('utf-8')
76
+
77
+ def run_seed_frame(seed_depth1, Strength_var, strength_grow, Teams_used, Total_Runs):
78
+ RunsVar = 1
79
+ seed_depth_def = seed_depth1
80
+ Strength_var_def = Strength_var
81
+ strength_grow_def = strength_grow
82
+ Teams_used_def = Teams_used
83
+ Total_Runs_def = Total_Runs
84
+ while RunsVar <= seed_depth_def:
85
+ if RunsVar <= 3:
86
+ FieldStrength = Strength_var_def
87
+ RandomPortfolio, maps_dict = get_correlated_portfolio_for_sim(Total_Runs_def * .1)
88
+ FinalPortfolio = RandomPortfolio
89
+ FinalPortfolio2, maps_dict2 = get_uncorrelated_portfolio_for_sim(Total_Runs_def * .1)
90
+ FinalPortfolio = pd.concat([FinalPortfolio, FinalPortfolio2], axis=0)
91
+ maps_dict.update(maps_dict2)
92
+ del FinalPortfolio2
93
+ del maps_dict2
94
+ elif RunsVar > 3 and RunsVar <= 4:
95
+ FieldStrength += (strength_grow_def + ((30 - len(Teams_used_def)) * .001))
96
+ FinalPortfolio3, maps_dict3 = get_correlated_portfolio_for_sim(Total_Runs_def * .1)
97
+ FinalPortfolio4, maps_dict4 = get_uncorrelated_portfolio_for_sim(Total_Runs_def * .1)
98
+ FinalPortfolio = pd.concat([FinalPortfolio, FinalPortfolio3], axis=0)
99
+ FinalPortfolio = pd.concat([FinalPortfolio, FinalPortfolio4], axis=0)
100
+ FinalPortfolio = FinalPortfolio.drop_duplicates(subset = ['Projection', 'Own'],keep = 'last').reset_index(drop = True)
101
+ maps_dict.update(maps_dict3)
102
+ maps_dict.update(maps_dict4)
103
+ del FinalPortfolio3
104
+ del maps_dict3
105
+ del FinalPortfolio4
106
+ del maps_dict4
107
+ elif RunsVar > 4:
108
+ FieldStrength = 1
109
+ FinalPortfolio3, maps_dict3 = get_correlated_portfolio_for_sim(Total_Runs_def * .1)
110
+ FinalPortfolio4, maps_dict4 = get_uncorrelated_portfolio_for_sim(Total_Runs_def * .1)
111
+ FinalPortfolio = pd.concat([FinalPortfolio, FinalPortfolio3], axis=0)
112
+ FinalPortfolio = pd.concat([FinalPortfolio, FinalPortfolio4], axis=0)
113
+ FinalPortfolio = FinalPortfolio.drop_duplicates(subset = ['Projection', 'Own'],keep = 'last').reset_index(drop = True)
114
+ maps_dict.update(maps_dict3)
115
+ maps_dict.update(maps_dict4)
116
+ del FinalPortfolio3
117
+ del maps_dict3
118
+ del FinalPortfolio4
119
+ del maps_dict4
120
+ RunsVar += 1
121
+
122
+ return FinalPortfolio, maps_dict
123
+
124
+ def create_overall_dfs(pos_players, table_name, dict_name, pos):
125
+ pos_players = pos_players.sort_values(by='Value', ascending=False)
126
+ table_name_raw = pos_players.reset_index(drop=True)
127
+ overall_table_name = table_name_raw.head(round(len(table_name_raw)))
128
+ overall_table_name = overall_table_name.assign(Var = range(0,len(overall_table_name)))
129
+ overall_dict_name = pd.Series(overall_table_name.Player.values, index=overall_table_name.Var).to_dict()
130
+
131
+ del pos_players
132
+ del table_name_raw
133
+
134
+ return overall_table_name, overall_dict_name
135
+
136
+
137
+ def get_overall_merged_df():
138
+ ref_dict = {
139
+ 'pos':['FLEX'],
140
+ 'pos_dfs':['FLEX_Table'],
141
+ 'pos_dicts':['flex_dict']
142
+ }
143
+
144
+ for i in range(0,1):
145
+ ref_dict['pos_dfs'][i], ref_dict['pos_dicts'][i] =\
146
+ create_overall_dfs(pos_players, ref_dict['pos_dfs'][i], ref_dict['pos_dicts'][i], ref_dict['pos'][i])
147
+
148
+ df_out = pd.concat(ref_dict['pos_dfs'], ignore_index=True)
149
+
150
+ return df_out, ref_dict
151
+
152
+ def create_random_portfolio(Total_Sample_Size):
153
+
154
+ O_merge, full_pos_player_dict = get_overall_merged_df()
155
+ Overall_Merge = O_merge[['Var', 'Player', 'Team', 'Salary', 'Median', 'Own']].copy()
156
+
157
+ # Calculate Floor, Ceiling, and STDev directly
158
+ Overall_Merge['Floor'] = Overall_Merge['Median'] * .25
159
+ Overall_Merge['Ceiling'] = Overall_Merge['Median'] + Overall_Merge['Floor']
160
+ Overall_Merge['STDev'] = Overall_Merge['Median'] / 4
161
+
162
+ # Calculate the flex range and generate unique range list
163
+ flex_range_var = len(Overall_Merge)
164
+ ranges_dict = {'flex_range': flex_range_var}
165
+ ranges_dict['flex_Uniques'] = list(range(0, flex_range_var))
166
+
167
+ # Generate random portfolios
168
+ rng = np.random.default_rng()
169
+ all_choices = rng.choice(flex_range_var, size=(Total_Sample_Size, 6))
170
+
171
+ # Create RandomPortfolio DataFrame
172
+ RandomPortfolio = pd.DataFrame(all_choices, columns=['CPT', 'FLEX1', 'FLEX2', 'FLEX3', 'FLEX4', 'FLEX5'])
173
+ RandomPortfolio['User/Field'] = 0
174
+
175
+ return RandomPortfolio, maps_dict, ranges_dict, full_pos_player_dict
176
+
177
+ def get_correlated_portfolio_for_sim(Total_Sample_Size):
178
+
179
+ sizesplit = round(Total_Sample_Size * .50)
180
+
181
+ RandomPortfolio, maps_dict, ranges_dict, full_pos_player_dict = create_random_portfolio(sizesplit)
182
+
183
+ RandomPortfolio['CPT'] = pd.Series(list(RandomPortfolio['CPT'].map(full_pos_player_dict['pos_dicts'][0])), dtype="string[pyarrow]")
184
+ RandomPortfolio['FLEX1'] = pd.Series(list(RandomPortfolio['FLEX1'].map(full_pos_player_dict['pos_dicts'][0])), dtype="string[pyarrow]")
185
+ RandomPortfolio['FLEX2'] = pd.Series(list(RandomPortfolio['FLEX2'].map(full_pos_player_dict['pos_dicts'][0])), dtype="string[pyarrow]")
186
+ RandomPortfolio['FLEX3'] = pd.Series(list(RandomPortfolio['FLEX3'].map(full_pos_player_dict['pos_dicts'][0])), dtype="string[pyarrow]")
187
+ RandomPortfolio['FLEX4'] = pd.Series(list(RandomPortfolio['FLEX4'].map(full_pos_player_dict['pos_dicts'][0])), dtype="string[pyarrow]")
188
+ RandomPortfolio['FLEX5'] = pd.Series(list(RandomPortfolio['FLEX5'].map(full_pos_player_dict['pos_dicts'][0])), dtype="string[pyarrow]")
189
+ RandomPortfolio['plyr_list'] = RandomPortfolio[RandomPortfolio.columns.values.tolist()].values.tolist()
190
+ RandomPortfolio['plyr_count'] = RandomPortfolio['plyr_list'].apply(lambda x: len(set(x)))
191
+ RandomPortfolio = RandomPortfolio[RandomPortfolio['plyr_count'] == 7].drop(columns=['plyr_list','plyr_count']).\
192
+ reset_index(drop=True)
193
+
194
+ del sizesplit
195
+ del full_pos_player_dict
196
+ del ranges_dict
197
+
198
+ RandomPortfolio['CPTs'] = RandomPortfolio['CPT'].map(maps_dict['Salary_map']).astype(np.int32) * 1.5
199
+ RandomPortfolio['FLEX1s'] = RandomPortfolio['FLEX1'].map(maps_dict['Salary_map']).astype(np.int32)
200
+ RandomPortfolio['FLEX2s'] = RandomPortfolio['FLEX2'].map(maps_dict['Salary_map']).astype(np.int32)
201
+ RandomPortfolio['FLEX3s'] = RandomPortfolio['FLEX3'].map(maps_dict['Salary_map']).astype(np.int32)
202
+ RandomPortfolio['FLEX4s'] = RandomPortfolio['FLEX4'].map(maps_dict['Salary_map']).astype(np.int32)
203
+ RandomPortfolio['FLEX5s'] = RandomPortfolio['FLEX5'].map(maps_dict['Salary_map']).astype(np.int32)
204
+
205
+ RandomPortfolio['CPTp'] = RandomPortfolio['CPT'].map(maps_dict['Projection_map']).astype(np.float16) * 1.5
206
+ RandomPortfolio['FLEX1p'] = RandomPortfolio['FLEX1'].map(maps_dict['Projection_map']).astype(np.float16)
207
+ RandomPortfolio['FLEX2p'] = RandomPortfolio['FLEX2'].map(maps_dict['Projection_map']).astype(np.float16)
208
+ RandomPortfolio['FLEX3p'] = RandomPortfolio['FLEX3'].map(maps_dict['Projection_map']).astype(np.float16)
209
+ RandomPortfolio['FLEX4p'] = RandomPortfolio['FLEX4'].map(maps_dict['Projection_map']).astype(np.float16)
210
+ RandomPortfolio['FLEX5p'] = RandomPortfolio['FLEX5'].map(maps_dict['Projection_map']).astype(np.float16)
211
+
212
+ RandomPortfolio['CPTo'] = RandomPortfolio['CPT'].map(maps_dict['Own_map']).astype(np.float16) / 4
213
+ RandomPortfolio['FLEX1o'] = RandomPortfolio['FLEX1'].map(maps_dict['Own_map']).astype(np.float16)
214
+ RandomPortfolio['FLEX2o'] = RandomPortfolio['FLEX2'].map(maps_dict['Own_map']).astype(np.float16)
215
+ RandomPortfolio['FLEX3o'] = RandomPortfolio['FLEX3'].map(maps_dict['Own_map']).astype(np.float16)
216
+ RandomPortfolio['FLEX4o'] = RandomPortfolio['FLEX4'].map(maps_dict['Own_map']).astype(np.float16)
217
+ RandomPortfolio['FLEX5o'] = RandomPortfolio['FLEX5'].map(maps_dict['Own_map']).astype(np.float16)
218
+
219
+ portHeaderList = RandomPortfolio.columns.values.tolist()
220
+ portHeaderList.append('Salary')
221
+ portHeaderList.append('Projection')
222
+ portHeaderList.append('Own')
223
+
224
+ RandomPortArray = RandomPortfolio.to_numpy()
225
+ del RandomPortfolio
226
+
227
+ RandomPortArray = np.c_[RandomPortArray, np.einsum('ij->i',RandomPortArray[:,7:13].astype(int))]
228
+ RandomPortArray = np.c_[RandomPortArray, np.einsum('ij->i',RandomPortArray[:,13:19].astype(np.double))]
229
+ RandomPortArray = np.c_[RandomPortArray, np.einsum('ij->i',RandomPortArray[:,19:25].astype(np.double))]
230
+
231
+ RandomPortArrayOut = np.delete(RandomPortArray, np.s_[7:25], axis=1)
232
+ RandomPortfolioDF = pd.DataFrame(RandomPortArrayOut, columns = ['CPT', 'FLEX1', 'FLEX2', 'FLEX3', 'FLEX4', 'FLEX5', 'User/Field', 'Salary', 'Projection', 'Own'])
233
+ RandomPortfolioDF = RandomPortfolioDF.sort_values(by=Sim_function, ascending=False)
234
+ del RandomPortArray
235
+ del RandomPortArrayOut
236
+ # st.table(RandomPortfolioDF.head(50))
237
+
238
+ if insert_port == 1:
239
+ CleanPortfolio['Salary'] = sum([CleanPortfolio['CPT'].map(maps_dict['Salary_map']) * 1.5,
240
+ CleanPortfolio['FLEX1'].map(maps_dict['Salary_map']),
241
+ CleanPortfolio['FLEX2'].map(maps_dict['Salary_map']),
242
+ CleanPortfolio['FLEX3'].map(maps_dict['Salary_map']),
243
+ CleanPortfolio['FLEX4'].map(maps_dict['Salary_map']),
244
+ CleanPortfolio['FLEX5'].map(maps_dict['Salary_map'])
245
+ ]).astype(np.int16)
246
+ if insert_port == 1:
247
+ CleanPortfolio['Projection'] = sum([CleanPortfolio['CPT'].map(maps_dict['Projection_map']) * 1.5,
248
+ CleanPortfolio['FLEX1'].map(maps_dict['Projection_map']),
249
+ CleanPortfolio['FLEX2'].map(maps_dict['Projection_map']),
250
+ CleanPortfolio['FLEX3'].map(maps_dict['Projection_map']),
251
+ CleanPortfolio['FLEX4'].map(maps_dict['Projection_map']),
252
+ CleanPortfolio['FLEX5'].map(maps_dict['Projection_map'])
253
+ ]).astype(np.float16)
254
+ if insert_port == 1:
255
+ CleanPortfolio['Own'] = sum([CleanPortfolio['CPT'].map(maps_dict['own_map']) / 4,
256
+ CleanPortfolio['FLEX1'].map(maps_dict['own_map']),
257
+ CleanPortfolio['FLEX2'].map(maps_dict['own_map']),
258
+ CleanPortfolio['FLEX3'].map(maps_dict['own_map']),
259
+ CleanPortfolio['FLEX4'].map(maps_dict['own_map']),
260
+ CleanPortfolio['FLEX5'].map(maps_dict['own_map'])
261
+ ]).astype(np.float16)
262
+
263
+ if site_var1 == 'Draftkings':
264
+ RandomPortfolioDF = RandomPortfolioDF[RandomPortfolioDF['Salary'] <= 50000].reset_index(drop=True)
265
+ RandomPortfolioDF = RandomPortfolioDF[RandomPortfolioDF['Salary'] >= 49500 - (FieldStrength * 1000)].reset_index(drop=True)
266
+ elif site_var1 == 'Fanduel':
267
+ RandomPortfolioDF = RandomPortfolioDF[RandomPortfolioDF['Salary'] <= 60000].reset_index(drop=True)
268
+ RandomPortfolioDF = RandomPortfolioDF[RandomPortfolioDF['Salary'] >= 59500 - (FieldStrength * 1000)].reset_index(drop=True)
269
+
270
+ RandomPortfolio = RandomPortfolioDF.sort_values(by=Sim_function, ascending=False)
271
+
272
+ RandomPortfolio = RandomPortfolio[['CPT', 'FLEX1', 'FLEX2', 'FLEX3', 'FLEX4', 'FLEX5', 'User/Field', 'Salary', 'Projection', 'Own']]
273
+
274
+ return RandomPortfolio, maps_dict
275
+
276
+ def get_uncorrelated_portfolio_for_sim(Total_Sample_Size):
277
+
278
+ sizesplit = round(Total_Sample_Size * .50)
279
+
280
+ RandomPortfolio, maps_dict, ranges_dict, full_pos_player_dict = create_random_portfolio(sizesplit)
281
+
282
+ RandomPortfolio['CPT'] = pd.Series(list(RandomPortfolio['CPT'].map(full_pos_player_dict['pos_dicts'][0])), dtype="string[pyarrow]")
283
+ RandomPortfolio['FLEX1'] = pd.Series(list(RandomPortfolio['FLEX1'].map(full_pos_player_dict['pos_dicts'][0])), dtype="string[pyarrow]")
284
+ RandomPortfolio['FLEX2'] = pd.Series(list(RandomPortfolio['FLEX2'].map(full_pos_player_dict['pos_dicts'][0])), dtype="string[pyarrow]")
285
+ RandomPortfolio['FLEX3'] = pd.Series(list(RandomPortfolio['FLEX3'].map(full_pos_player_dict['pos_dicts'][0])), dtype="string[pyarrow]")
286
+ RandomPortfolio['FLEX4'] = pd.Series(list(RandomPortfolio['FLEX4'].map(full_pos_player_dict['pos_dicts'][0])), dtype="string[pyarrow]")
287
+ RandomPortfolio['FLEX5'] = pd.Series(list(RandomPortfolio['FLEX5'].map(full_pos_player_dict['pos_dicts'][0])), dtype="string[pyarrow]")
288
+ RandomPortfolio['plyr_list'] = RandomPortfolio[RandomPortfolio.columns.values.tolist()].values.tolist()
289
+ RandomPortfolio['plyr_count'] = RandomPortfolio['plyr_list'].apply(lambda x: len(set(x)))
290
+ RandomPortfolio = RandomPortfolio[RandomPortfolio['plyr_count'] == 7].drop(columns=['plyr_list','plyr_count']).\
291
+ reset_index(drop=True)
292
+
293
+ del sizesplit
294
+ del full_pos_player_dict
295
+ del ranges_dict
296
+
297
+ RandomPortfolio['CPTs'] = RandomPortfolio['CPT'].map(maps_dict['Salary_map']).astype(np.int32) * 1.5
298
+ RandomPortfolio['FLEX1s'] = RandomPortfolio['FLEX1'].map(maps_dict['Salary_map']).astype(np.int32)
299
+ RandomPortfolio['FLEX2s'] = RandomPortfolio['FLEX2'].map(maps_dict['Salary_map']).astype(np.int32)
300
+ RandomPortfolio['FLEX3s'] = RandomPortfolio['FLEX3'].map(maps_dict['Salary_map']).astype(np.int32)
301
+ RandomPortfolio['FLEX4s'] = RandomPortfolio['FLEX4'].map(maps_dict['Salary_map']).astype(np.int32)
302
+ RandomPortfolio['FLEX5s'] = RandomPortfolio['FLEX5'].map(maps_dict['Salary_map']).astype(np.int32)
303
+
304
+ RandomPortfolio['CPTp'] = RandomPortfolio['CPT'].map(maps_dict['Projection_map']).astype(np.float16) * 1.5
305
+ RandomPortfolio['FLEX1p'] = RandomPortfolio['FLEX1'].map(maps_dict['Projection_map']).astype(np.float16)
306
+ RandomPortfolio['FLEX2p'] = RandomPortfolio['FLEX2'].map(maps_dict['Projection_map']).astype(np.float16)
307
+ RandomPortfolio['FLEX3p'] = RandomPortfolio['FLEX3'].map(maps_dict['Projection_map']).astype(np.float16)
308
+ RandomPortfolio['FLEX4p'] = RandomPortfolio['FLEX4'].map(maps_dict['Projection_map']).astype(np.float16)
309
+ RandomPortfolio['FLEX5p'] = RandomPortfolio['FLEX5'].map(maps_dict['Projection_map']).astype(np.float16)
310
+
311
+ RandomPortfolio['CPTo'] = RandomPortfolio['CPT'].map(maps_dict['Own_map']).astype(np.float16) / 4
312
+ RandomPortfolio['FLEX1o'] = RandomPortfolio['FLEX1'].map(maps_dict['Own_map']).astype(np.float16)
313
+ RandomPortfolio['FLEX2o'] = RandomPortfolio['FLEX2'].map(maps_dict['Own_map']).astype(np.float16)
314
+ RandomPortfolio['FLEX3o'] = RandomPortfolio['FLEX3'].map(maps_dict['Own_map']).astype(np.float16)
315
+ RandomPortfolio['FLEX4o'] = RandomPortfolio['FLEX4'].map(maps_dict['Own_map']).astype(np.float16)
316
+ RandomPortfolio['FLEX5o'] = RandomPortfolio['FLEX5'].map(maps_dict['Own_map']).astype(np.float16)
317
+
318
+ portHeaderList = RandomPortfolio.columns.values.tolist()
319
+ portHeaderList.append('Salary')
320
+ portHeaderList.append('Projection')
321
+ portHeaderList.append('Own')
322
+
323
+ RandomPortArray = RandomPortfolio.to_numpy()
324
+ del RandomPortfolio
325
+
326
+ RandomPortArray = np.c_[RandomPortArray, np.einsum('ij->i',RandomPortArray[:,7:13].astype(int))]
327
+ RandomPortArray = np.c_[RandomPortArray, np.einsum('ij->i',RandomPortArray[:,13:19].astype(np.double))]
328
+ RandomPortArray = np.c_[RandomPortArray, np.einsum('ij->i',RandomPortArray[:,19:25].astype(np.double))]
329
+
330
+ RandomPortArrayOut = np.delete(RandomPortArray, np.s_[7:25], axis=1)
331
+ RandomPortfolioDF = pd.DataFrame(RandomPortArrayOut, columns = ['CPT', 'FLEX1', 'FLEX2', 'FLEX3', 'FLEX4', 'FLEX5', 'User/Field', 'Salary', 'Projection', 'Own'])
332
+ RandomPortfolioDF = RandomPortfolioDF.sort_values(by=Sim_function, ascending=False)
333
+ del RandomPortArray
334
+ del RandomPortArrayOut
335
+ # st.table(RandomPortfolioDF.head(50))
336
+
337
+ if insert_port == 1:
338
+ CleanPortfolio['Salary'] = sum([CleanPortfolio['CPT'].map(maps_dict['Salary_map']) * 1.5,
339
+ CleanPortfolio['FLEX1'].map(maps_dict['Salary_map']),
340
+ CleanPortfolio['FLEX2'].map(maps_dict['Salary_map']),
341
+ CleanPortfolio['FLEX3'].map(maps_dict['Salary_map']),
342
+ CleanPortfolio['FLEX4'].map(maps_dict['Salary_map']),
343
+ CleanPortfolio['FLEX5'].map(maps_dict['Salary_map'])
344
+ ]).astype(np.int16)
345
+ if insert_port == 1:
346
+ CleanPortfolio['Projection'] = sum([CleanPortfolio['CPT'].map(maps_dict['Projection_map']) * 1.5,
347
+ CleanPortfolio['FLEX1'].map(maps_dict['Projection_map']),
348
+ CleanPortfolio['FLEX2'].map(maps_dict['Projection_map']),
349
+ CleanPortfolio['FLEX3'].map(maps_dict['Projection_map']),
350
+ CleanPortfolio['FLEX4'].map(maps_dict['Projection_map']),
351
+ CleanPortfolio['FLEX5'].map(maps_dict['Projection_map'])
352
+ ]).astype(np.float16)
353
+ if insert_port == 1:
354
+ CleanPortfolio['Own'] = sum([CleanPortfolio['CPT'].map(maps_dict['own_map']) / 4,
355
+ CleanPortfolio['FLEX1'].map(maps_dict['own_map']),
356
+ CleanPortfolio['FLEX2'].map(maps_dict['own_map']),
357
+ CleanPortfolio['FLEX3'].map(maps_dict['own_map']),
358
+ CleanPortfolio['FLEX4'].map(maps_dict['own_map']),
359
+ CleanPortfolio['FLEX5'].map(maps_dict['own_map'])
360
+ ]).astype(np.float16)
361
+
362
+ if site_var1 == 'Draftkings':
363
+ RandomPortfolioDF = RandomPortfolioDF[RandomPortfolioDF['Salary'] <= 50000].reset_index(drop=True)
364
+ RandomPortfolioDF = RandomPortfolioDF[RandomPortfolioDF['Salary'] >= 49500 - (FieldStrength * 1000)].reset_index(drop=True)
365
+ elif site_var1 == 'Fanduel':
366
+ RandomPortfolioDF = RandomPortfolioDF[RandomPortfolioDF['Salary'] <= 60000].reset_index(drop=True)
367
+ RandomPortfolioDF = RandomPortfolioDF[RandomPortfolioDF['Salary'] >= 59500 - (FieldStrength * 1000)].reset_index(drop=True)
368
+
369
+ RandomPortfolio = RandomPortfolioDF.sort_values(by=Sim_function, ascending=False)
370
+
371
+ RandomPortfolio = RandomPortfolio[['CPT', 'FLEX1', 'FLEX2', 'FLEX3', 'FLEX4', 'FLEX5', 'User/Field', 'Salary', 'Projection', 'Own']]
372
+
373
+ return RandomPortfolio, maps_dict
374
+
375
+ dk_roo_raw = load_dk_player_projections()
376
+ fd_roo_raw = load_fd_player_projections()
377
+
378
+ static_exposure = pd.DataFrame(columns=['Player', 'count'])
379
+ overall_exposure = pd.DataFrame(columns=['Player', 'count'])
380
+
381
+ tab1, tab2 = st.tabs(['Uploads', 'Contest Sim'])
382
+
383
+ with tab1:
384
+ with st.container():
385
+ 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'. Upload your projections first to avoid an error message.")
386
+ col1, col2 = st.columns([3, 3])
387
+
388
+ with col1:
389
+ proj_file = st.file_uploader("Upload Projections File", key = 'proj_uploader')
390
+
391
+ if proj_file is not None:
392
+ try:
393
+ proj_dataframe = pd.read_csv(proj_file)
394
+ proj_dataframe = proj_dataframe.dropna(subset='Median')
395
+ except:
396
+ proj_dataframe = pd.read_excel(proj_file)
397
+ proj_dataframe = proj_dataframe.dropna(subset='Median')
398
+
399
+ player_salary_dict = dict(zip(proj_dataframe.Player, proj_dataframe.Salary))
400
+ player_proj_dict = dict(zip(proj_dataframe.Player, proj_dataframe.Median))
401
+ player_own_dict = dict(zip(proj_dataframe.Player, proj_dataframe.Own))
402
+ player_team_dict = dict(zip(proj_dataframe.Player, proj_dataframe.Team))
403
+
404
+ with col2:
405
+ portfolio_file = st.file_uploader("Upload Portfolio File", key = 'portfolio_uploader')
406
+
407
+ if portfolio_file is not None:
408
+ try:
409
+ portfolio_dataframe = pd.read_csv(portfolio_file)
410
+ except:
411
+ portfolio_dataframe = pd.read_excel(portfolio_file)
412
+ try:
413
+ try:
414
+ portfolio_dataframe.columns=["CPT", "FLEX1", "FLEX2", "FLEX3", "FLEX4", "FLEX5"]
415
+ split_portfolio = portfolio_dataframe
416
+ split_portfolio[['CPT', 'CPT_ID']] = split_portfolio.CPT.str.split("(", n=1, expand = True)
417
+ split_portfolio[['FLEX1', 'FLEX1_ID']] = split_portfolio.FLEX1.str.split("(", n=1, expand = True)
418
+ split_portfolio[['FLEX2', 'FLEX2_ID']] = split_portfolio.FLEX2.str.split("(", n=1, expand = True)
419
+ split_portfolio[['FLEX3', 'FLEX3_ID']] = split_portfolio.FLEX3.str.split("(", n=1, expand = True)
420
+ split_portfolio[['FLEX4', 'FLEX4_ID']] = split_portfolio.FLEX4.str.split("(", n=1, expand = True)
421
+ split_portfolio[['FLEX5', 'FLEX5_ID']] = split_portfolio.FLEX5.str.split("(", n=1, expand = True)
422
+
423
+ split_portfolio['CPT'] = split_portfolio['CPT'].str.strip()
424
+ split_portfolio['FLEX1'] = split_portfolio['FLEX1'].str.strip()
425
+ split_portfolio['FLEX2'] = split_portfolio['FLEX2'].str.strip()
426
+ split_portfolio['FLEX3'] = split_portfolio['FLEX3'].str.strip()
427
+ split_portfolio['FLEX4'] = split_portfolio['FLEX4'].str.strip()
428
+ split_portfolio['FLEX5'] = split_portfolio['FLEX5'].str.strip()
429
+
430
+ CPT_dict = dict(zip(split_portfolio.CPT, split_portfolio.CPT_ID))
431
+ FLEX1_dict = dict(zip(split_portfolio.FLEX1, split_portfolio.FLEX1_ID))
432
+ FLEX2_dict = dict(zip(split_portfolio.FLEX2, split_portfolio.FLEX2_ID))
433
+ FLEX3_dict = dict(zip(split_portfolio.FLEX3, split_portfolio.FLEX3_ID))
434
+ FLEX4_dict = dict(zip(split_portfolio.FLEX4, split_portfolio.FLEX4_ID))
435
+ FLEX5_dict = dict(zip(split_portfolio.FLEX5, split_portfolio.FLEX5_ID))
436
+
437
+ split_portfolio['Salary'] = sum([split_portfolio['CPT'].map(player_salary_dict) * 1.5,
438
+ split_portfolio['FLEX1'].map(player_salary_dict),
439
+ split_portfolio['FLEX2'].map(player_salary_dict),
440
+ split_portfolio['FLEX3'].map(player_salary_dict),
441
+ split_portfolio['FLEX4'].map(player_salary_dict),
442
+ split_portfolio['FLEX5'].map(player_salary_dict)])
443
+
444
+ del player_salary_dict
445
+
446
+ split_portfolio['Projection'] = sum([split_portfolio['CPT'].map(player_proj_dict) * 1.5,
447
+ split_portfolio['FLEX1'].map(player_proj_dict),
448
+ split_portfolio['FLEX2'].map(player_proj_dict),
449
+ split_portfolio['FLEX3'].map(player_proj_dict),
450
+ split_portfolio['FLEX4'].map(player_proj_dict),
451
+ split_portfolio['FLEX5'].map(player_proj_dict)])
452
+
453
+ del player_proj_dict
454
+
455
+ split_portfolio['Ownership'] = sum([split_portfolio['CPT'].map(player_own_dict) / 4,
456
+ split_portfolio['FLEX1'].map(player_own_dict),
457
+ split_portfolio['FLEX2'].map(player_own_dict),
458
+ split_portfolio['FLEX3'].map(player_own_dict),
459
+ split_portfolio['FLEX4'].map(player_own_dict),
460
+ split_portfolio['FLEX5'].map(player_own_dict)])
461
+
462
+ del player_own_dict
463
+
464
+ split_portfolio['CPT_team'] = split_portfolio['CPT'].map(player_team_dict)
465
+ split_portfolio['FLEX1_team'] = split_portfolio['FLEX1'].map(player_team_dict)
466
+ split_portfolio['FLEX2_team'] = split_portfolio['FLEX2'].map(player_team_dict)
467
+ split_portfolio['FLEX3_team'] = split_portfolio['FLEX3'].map(player_team_dict)
468
+ split_portfolio['FLEX4_team'] = split_portfolio['FLEX4'].map(player_team_dict)
469
+ split_portfolio['FLEX5_team'] = split_portfolio['FLEX5'].map(player_team_dict)
470
+
471
+ split_portfolio = split_portfolio[['CPT', 'FLEX1', 'FLEX2', 'FLEX3', 'FLEX4', 'FLEX5', 'Salary', 'Projection', 'Ownership', 'CPT_team',
472
+ 'FLEX1_team', 'FLEX2_team', 'FLEX3_team', 'FLEX4_team', 'FLEX5_team']]
473
+
474
+ split_portfolio['Main_Stack'] = 0
475
+ split_portfolio['Main_Stack_Size'] = 0
476
+ split_portfolio['Main_Stack_Size'] = 0
477
+ except:
478
+ portfolio_dataframe.columns=["CPT", "FLEX1", "FLEX2", "FLEX3", "FLEX4", "FLEX5"]
479
+ split_portfolio = portfolio_dataframe
480
+ split_portfolio[['CPT_ID', 'CPT']] = split_portfolio.CPT.str.split(":", n=1, expand = True)
481
+ split_portfolio[['FLEX1_ID', 'FLEX1']] = split_portfolio.FLEX1.str.split(":", n=1, expand = True)
482
+ split_portfolio[['FLEX2_ID', 'FLEX2']] = split_portfolio.FLEX2.str.split(":", n=1, expand = True)
483
+ split_portfolio[['FLEX3_ID', 'FLEX3']] = split_portfolio.FLEX3.str.split(":", n=1, expand = True)
484
+ split_portfolio[['FLEX4_ID', 'FLEX4']] = split_portfolio.FLEX4.str.split(":", n=1, expand = True)
485
+ split_portfolio[['FLEX5_ID', 'FLEX5']] = split_portfolio.FLEX5.str.split(":", n=1, expand = True)
486
+
487
+ split_portfolio['CPT'] = split_portfolio['CPT'].str.strip()
488
+ split_portfolio['FLEX1'] = split_portfolio['FLEX1'].str.strip()
489
+ split_portfolio['FLEX2'] = split_portfolio['FLEX2'].str.strip()
490
+ split_portfolio['FLEX3'] = split_portfolio['FLEX3'].str.strip()
491
+ split_portfolio['FLEX4'] = split_portfolio['FLEX4'].str.strip()
492
+ split_portfolio['FLEX5'] = split_portfolio['FLEX5'].str.strip()
493
+
494
+ CPT_dict = dict(zip(split_portfolio.CPT, split_portfolio.CPT_ID))
495
+ FLEX1_dict = dict(zip(split_portfolio.FLEX1, split_portfolio.FLEX1_ID))
496
+ FLEX2_dict = dict(zip(split_portfolio.FLEX2, split_portfolio.FLEX2_ID))
497
+ FLEX3_dict = dict(zip(split_portfolio.FLEX3, split_portfolio.FLEX3_ID))
498
+ FLEX4_dict = dict(zip(split_portfolio.FLEX4, split_portfolio.FLEX4_ID))
499
+ FLEX5_dict = dict(zip(split_portfolio.FLEX5, split_portfolio.FLEX5_ID))
500
+
501
+ split_portfolio['Salary'] = sum([split_portfolio['CPT'].map(player_salary_dict),
502
+ split_portfolio['FLEX1'].map(player_salary_dict),
503
+ split_portfolio['FLEX2'].map(player_salary_dict),
504
+ split_portfolio['FLEX3'].map(player_salary_dict),
505
+ split_portfolio['FLEX4'].map(player_salary_dict),
506
+ split_portfolio['FLEX5'].map(player_salary_dict)])
507
+
508
+ del player_salary_dict
509
+
510
+ split_portfolio['Projection'] = sum([split_portfolio['CPT'].map(player_proj_dict) * 1.5,
511
+ split_portfolio['FLEX1'].map(player_proj_dict),
512
+ split_portfolio['FLEX2'].map(player_proj_dict),
513
+ split_portfolio['FLEX3'].map(player_proj_dict),
514
+ split_portfolio['FLEX4'].map(player_proj_dict),
515
+ split_portfolio['FLEX5'].map(player_proj_dict)])
516
+
517
+ del player_proj_dict
518
+
519
+ split_portfolio['Ownership'] = sum([split_portfolio['CPT'].map(player_own_dict) / 4,
520
+ split_portfolio['FLEX1'].map(player_own_dict),
521
+ split_portfolio['FLEX2'].map(player_own_dict),
522
+ split_portfolio['FLEX3'].map(player_own_dict),
523
+ split_portfolio['FLEX4'].map(player_own_dict),
524
+ split_portfolio['FLEX5'].map(player_own_dict)])
525
+
526
+ del player_own_dict
527
+
528
+ split_portfolio['CPT_team'] = split_portfolio['CPT'].map(player_team_dict)
529
+ split_portfolio['FLEX1_team'] = split_portfolio['FLEX1'].map(player_team_dict)
530
+ split_portfolio['FLEX2_team'] = split_portfolio['FLEX2'].map(player_team_dict)
531
+ split_portfolio['FLEX3_team'] = split_portfolio['FLEX3'].map(player_team_dict)
532
+ split_portfolio['FLEX4_team'] = split_portfolio['FLEX4'].map(player_team_dict)
533
+ split_portfolio['FLEX5_team'] = split_portfolio['FLEX5'].map(player_team_dict)
534
+
535
+ split_portfolio = split_portfolio[['CPT', 'FLEX1', 'FLEX2', 'FLEX3', 'FLEX4', 'FLEX5', 'Salary', 'Projection', 'Ownership', 'CPT_team',
536
+ 'FLEX1_team', 'FLEX2_team', 'FLEX3_team', 'FLEX4_team', 'FLEX5_team']]
537
+
538
+ split_portfolio['Main_Stack'] = 0
539
+ split_portfolio['Main_Stack_Size'] = 0
540
+ split_portfolio['Main_Stack_Size'] = 0
541
+ except:
542
+ split_portfolio = portfolio_dataframe
543
+
544
+ split_portfolio['CPT'] = split_portfolio['CPT'].str[:-6]
545
+ split_portfolio['FLEX1'] = split_portfolio['FLEX1'].str[:-6]
546
+ split_portfolio['FLEX2'] = split_portfolio['FLEX2'].str[:-6]
547
+ split_portfolio['FLEX3'] = split_portfolio['FLEX3'].str[:-6]
548
+ split_portfolio['FLEX4'] = split_portfolio['FLEX4'].str[:-6]
549
+ split_portfolio['FLEX5'] = split_portfolio['FLEX5'].str[:-6]
550
+
551
+ split_portfolio['CPT'] = split_portfolio['CPT'].str.strip()
552
+ split_portfolio['FLEX1'] = split_portfolio['FLEX1'].str.strip()
553
+ split_portfolio['FLEX2'] = split_portfolio['FLEX2'].str.strip()
554
+ split_portfolio['FLEX3'] = split_portfolio['FLEX3'].str.strip()
555
+ split_portfolio['FLEX4'] = split_portfolio['FLEX4'].str.strip()
556
+ split_portfolio['FLEX5'] = split_portfolio['FLEX5'].str.strip()
557
+
558
+ split_portfolio['Salary'] = sum([split_portfolio['CPT'].map(player_salary_dict) * 1.5,
559
+ split_portfolio['FLEX1'].map(player_salary_dict),
560
+ split_portfolio['FLEX2'].map(player_salary_dict),
561
+ split_portfolio['FLEX3'].map(player_salary_dict),
562
+ split_portfolio['FLEX4'].map(player_salary_dict),
563
+ split_portfolio['FLEX5'].map(player_salary_dict)])
564
+
565
+ del player_salary_dict
566
+
567
+ split_portfolio['Projection'] = sum([split_portfolio['CPT'].map(player_proj_dict) * 1.5,
568
+ split_portfolio['FLEX1'].map(player_proj_dict),
569
+ split_portfolio['FLEX2'].map(player_proj_dict),
570
+ split_portfolio['FLEX3'].map(player_proj_dict),
571
+ split_portfolio['FLEX4'].map(player_proj_dict),
572
+ split_portfolio['FLEX5'].map(player_proj_dict)])
573
+
574
+ del player_proj_dict
575
+
576
+ split_portfolio['Ownership'] = sum([split_portfolio['CPT'].map(player_own_dict) / 4,
577
+ split_portfolio['FLEX1'].map(player_own_dict),
578
+ split_portfolio['FLEX2'].map(player_own_dict),
579
+ split_portfolio['FLEX3'].map(player_own_dict),
580
+ split_portfolio['FLEX4'].map(player_own_dict),
581
+ split_portfolio['FLEX5'].map(player_own_dict)])
582
+
583
+ del player_own_dict
584
+
585
+ split_portfolio['CPT_team'] = split_portfolio['CPT'].map(player_team_dict)
586
+ split_portfolio['FLEX1_team'] = split_portfolio['FLEX1'].map(player_team_dict)
587
+ split_portfolio['FLEX2_team'] = split_portfolio['FLEX2'].map(player_team_dict)
588
+ split_portfolio['FLEX3_team'] = split_portfolio['FLEX3'].map(player_team_dict)
589
+ split_portfolio['FLEX4_team'] = split_portfolio['FLEX4'].map(player_team_dict)
590
+ split_portfolio['FLEX5_team'] = split_portfolio['FLEX5'].map(player_team_dict)
591
+
592
+ split_portfolio = split_portfolio[['CPT', 'FLEX1', 'FLEX2', 'FLEX3', 'FLEX4', 'FLEX5', 'Salary', 'Projection', 'Ownership', 'CPT_team',
593
+ 'FLEX1_team', 'FLEX2_team', 'FLEX3_team', 'FLEX4_team', 'FLEX5_team']]
594
+
595
+ split_portfolio['Main_Stack'] = 0
596
+ split_portfolio['Main_Stack_Size'] = 0
597
+ split_portfolio['Main_Stack_Size'] = 0
598
+
599
+ for player_cols in split_portfolio.iloc[:, 0:6]:
600
+ static_col_raw = split_portfolio[player_cols].value_counts()
601
+ static_col = static_col_raw.to_frame()
602
+ static_col.reset_index(inplace=True)
603
+ static_col.columns = ['Player', 'count']
604
+ static_exposure = pd.concat([static_exposure, static_col], ignore_index=True)
605
+ static_exposure['Exposure'] = static_exposure['count'] / len(split_portfolio)
606
+ static_exposure = static_exposure[['Player', 'Exposure']]
607
+
608
+ del static_col_raw
609
+ del static_col
610
+ with st.container():
611
+ col1, col2 = st.columns([3, 3])
612
+
613
+ if portfolio_file is not None:
614
+ with col1:
615
+ st.write(len(portfolio_dataframe))
616
+ team_split_var1 = st.radio("Are you wanting to isolate any lineups with specific main stacks?", ('Full Portfolio', 'Specific Stacks'))
617
+ if team_split_var1 == 'Specific Stacks':
618
+ team_var1 = st.multiselect('Which main stacks would you like to include in the Portfolio?', options = split_portfolio['Main_Stack'].unique())
619
+ elif team_split_var1 == 'Full Portfolio':
620
+ team_var1 = split_portfolio.Main_Stack.values.tolist()
621
+ with col2:
622
+ player_split_var1 = st.radio("Are you wanting to isolate any lineups with specific players?", ('Full Players', 'Specific Players'))
623
+ if player_split_var1 == 'Specific Players':
624
+ find_var1 = st.multiselect('Which players must be included in the lineups?', options = static_exposure['Player'].unique())
625
+ elif player_split_var1 == 'Full Players':
626
+ find_var1 = static_exposure.Player.values.tolist()
627
+
628
+ split_portfolio = split_portfolio[split_portfolio['Main_Stack'].isin(team_var1)]
629
+ if player_split_var1 == 'Specific Players':
630
+ split_portfolio = split_portfolio[np.equal.outer(split_portfolio.to_numpy(copy=False), find_var1).any(axis=1).all(axis=1)]
631
+ elif player_split_var1 == 'Full Players':
632
+ split_portfolio = split_portfolio
633
+
634
+ for player_cols in split_portfolio.iloc[:, 0:6]:
635
+ exposure_col_raw = split_portfolio[player_cols].value_counts()
636
+ exposure_col = exposure_col_raw.to_frame()
637
+ exposure_col.reset_index(inplace=True)
638
+ exposure_col.columns = ['Player', 'count']
639
+ overall_exposure = pd.concat([overall_exposure, exposure_col], ignore_index=True)
640
+ overall_exposure['Exposure'] = overall_exposure['count'] / len(split_portfolio)
641
+ overall_exposure = overall_exposure.groupby('Player').sum()
642
+ overall_exposure.reset_index(inplace=True)
643
+ overall_exposure = overall_exposure[['Player', 'Exposure']]
644
+ overall_exposure = overall_exposure.set_index('Player')
645
+ overall_exposure = overall_exposure.sort_values(by='Exposure', ascending=False)
646
+ overall_exposure['Exposure'] = overall_exposure['Exposure'].astype(float).map(lambda n: '{:.2%}'.format(n))
647
+
648
+ with st.container():
649
+ col1, col2 = st.columns([1, 6])
650
+
651
+ with col1:
652
+ if portfolio_file is not None:
653
+ st.header('Exposure View')
654
+ st.dataframe(overall_exposure)
655
+
656
+ with col2:
657
+ if portfolio_file is not None:
658
+ st.header('Portfolio View')
659
+ split_portfolio = split_portfolio.reset_index()
660
+ split_portfolio['Lineup'] = split_portfolio['index'] + 1
661
+ display_portfolio = split_portfolio[['Lineup', 'CPT', 'FLEX1', 'FLEX2', 'FLEX3', 'FLEX4', 'FLEX5', 'Salary', 'Main_Stack', 'Main_Stack_Size', 'Projection', 'Ownership']]
662
+ hold_display = display_portfolio
663
+ display_portfolio = display_portfolio.set_index('Lineup')
664
+ st.dataframe(display_portfolio.style.background_gradient(axis=0).background_gradient(cmap='RdYlGn').background_gradient(cmap='RdYlGn_r', subset=['Ownership']).format(precision=2))
665
+ del split_portfolio
666
+ del exposure_col_raw
667
+ del exposure_col
668
+ with tab2:
669
+ col1, col2 = st.columns([1, 5])
670
+ with col1:
671
+ if st.button("Load/Reset Data", key='reset1'):
672
+ st.cache_data.clear()
673
+ dk_roo_raw = load_dk_player_projections()
674
+ fd_roo_raw = load_fd_player_projections()
675
+
676
+ slate_var1 = st.radio("Which data are you loading?", ('Paydirt', 'User'))
677
+ site_var1 = 'Draftkings'
678
+ if site_var1 == 'Draftkings':
679
+ if slate_var1 == 'User':
680
+ raw_baselines = proj_dataframe[['Player', 'Salary', 'Position', 'Team', 'Opp', 'Median', 'Own']]
681
+ elif slate_var1 != 'User':
682
+ raw_baselines = dk_roo_raw
683
+ elif site_var1 == 'Fanduel':
684
+ if slate_var1 == 'User':
685
+ raw_baselines = proj_dataframe
686
+ elif slate_var1 != 'User':
687
+ raw_baselines = fd_roo_raw
688
+ st.info("If you are uploading a portfolio, note that there is an adjustments to projections and deviation mapping to prevent 'Projection Bias' and create a fair simulation")
689
+ insert_port1 = st.selectbox("Are you uploading a portfolio?", ('No', 'Yes'))
690
+ if insert_port1 == 'Yes':
691
+ insert_port = 1
692
+ elif insert_port1 == 'No':
693
+ insert_port = 0
694
+ contest_var1 = st.selectbox("What contest size are you simulating?", ('Small', 'Medium', 'Large'))
695
+ if contest_var1 == 'Small':
696
+ Contest_Size = 500
697
+ elif contest_var1 == 'Medium':
698
+ Contest_Size = 2500
699
+ elif contest_var1 == 'Large':
700
+ Contest_Size = 10000
701
+ linenum_var1 = 1000
702
+ strength_var1 = st.selectbox("How sharp is the field in the contest?", ('Not Very', 'Average', 'Very'))
703
+ if strength_var1 == 'Not Very':
704
+ Strength_var = 1
705
+ scaling_var = 5
706
+ elif strength_var1 == 'Average':
707
+ Strength_var = .75
708
+ scaling_var = 10
709
+ elif strength_var1 == 'Very':
710
+ Strength_var = .5
711
+ scaling_var = 15
712
+
713
+ with col2:
714
+ if st.button("Simulate Contest", key='sim1'):
715
+ try:
716
+ del dst_freq
717
+ del flex_freq
718
+ del te_freq
719
+ del wr_freq
720
+ del rb_freq
721
+ del qb_freq
722
+ del player_freq
723
+ del Sim_Winner_Export
724
+ del Sim_Winner_Frame
725
+ except:
726
+ pass
727
+ with st.container():
728
+ st.write('Contest Simulation Starting')
729
+ Total_Runs = 1000000
730
+ seed_depth1 = 5
731
+ Total_Runs = 2500000
732
+ if Contest_Size <= 1000:
733
+ strength_grow = .01
734
+ elif Contest_Size > 1000 and Contest_Size <= 2500:
735
+ strength_grow = .025
736
+ elif Contest_Size > 2500 and Contest_Size <= 5000:
737
+ strength_grow = .05
738
+ elif Contest_Size > 5000 and Contest_Size <= 20000:
739
+ strength_grow = .075
740
+ elif Contest_Size > 20000:
741
+ strength_grow = .1
742
+
743
+ field_growth = 100 * strength_grow
744
+
745
+ Sort_function = 'Median'
746
+ if Sort_function == 'Median':
747
+ Sim_function = 'Projection'
748
+ elif Sort_function == 'Own':
749
+ Sim_function = 'Own'
750
+
751
+ if slate_var1 == 'User':
752
+ OwnFrame = proj_dataframe
753
+ if contest_var1 == 'Large':
754
+ OwnFrame['Own%'] = np.where((OwnFrame['Position'] == 'QB') & (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] == 'QB', 'Own'].mean() >= 0), OwnFrame['Own'] * (10 * (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] == 'QB', 'Own'].mean())/100) + OwnFrame.loc[OwnFrame['Position'] == 'QB', 'Own'].mean(), OwnFrame['Own'])
755
+ OwnFrame['Own%'] = np.where((OwnFrame['Position'] != 'QB') & (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] != 'QB', 'Own'].mean() >= 0), OwnFrame['Own'] * (5 * (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] != 'QB', 'Own'].mean())/100) + OwnFrame.loc[OwnFrame['Position'] != 'QB', 'Own'].mean(), OwnFrame['Own%'])
756
+ OwnFrame['Own%'] = np.where(OwnFrame['Own%'] > 75, 75, OwnFrame['Own%'])
757
+ OwnFrame['Own'] = OwnFrame['Own%'] * (500 / OwnFrame['Own%'].sum())
758
+ if contest_var1 == 'Medium':
759
+ OwnFrame['Own%'] = np.where((OwnFrame['Position'] == 'QB') & (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] == 'QB', 'Own'].mean() >= 0), OwnFrame['Own'] * (6 * (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] == 'QB', 'Own'].mean())/100) + OwnFrame.loc[OwnFrame['Position'] == 'QB', 'Own'].mean(), OwnFrame['Own'])
760
+ OwnFrame['Own%'] = np.where((OwnFrame['Position'] != 'QB') & (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] != 'QB', 'Own'].mean() >= 0), OwnFrame['Own'] * (3 * (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] != 'QB', 'Own'].mean())/100) + OwnFrame.loc[OwnFrame['Position'] != 'QB', 'Own'].mean(), OwnFrame['Own%'])
761
+ OwnFrame['Own%'] = np.where(OwnFrame['Own%'] > 75, 75, OwnFrame['Own%'])
762
+ OwnFrame['Own'] = OwnFrame['Own%'] * (500 / OwnFrame['Own%'].sum())
763
+ if contest_var1 == 'Small':
764
+ OwnFrame['Own%'] = np.where((OwnFrame['Position'] == 'QB') & (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] == 'QB', 'Own'].mean() >= 0), OwnFrame['Own'] * (3 * (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] == 'QB', 'Own'].mean())/100) + OwnFrame.loc[OwnFrame['Position'] == 'QB', 'Own'].mean(), OwnFrame['Own'])
765
+ OwnFrame['Own%'] = np.where((OwnFrame['Position'] != 'QB') & (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] != 'QB', 'Own'].mean() >= 0), OwnFrame['Own'] * (1.5 * (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] != 'QB', 'Own'].mean())/100) + OwnFrame.loc[OwnFrame['Position'] != 'QB', 'Own'].mean(), OwnFrame['Own%'])
766
+ OwnFrame['Own%'] = np.where(OwnFrame['Own%'] > 75, 75, OwnFrame['Own%'])
767
+ OwnFrame['Own'] = OwnFrame['Own%'] * (500 / OwnFrame['Own%'].sum())
768
+ Overall_Proj = OwnFrame[['Player', 'Team', 'Position', 'Median', 'Own', 'Salary']]
769
+
770
+ del OwnFrame
771
+
772
+ elif slate_var1 != 'User':
773
+ initial_proj = raw_baselines
774
+ drop_frame = initial_proj.drop_duplicates(subset = 'Player',keep = 'first')
775
+ OwnFrame = drop_frame[['Player', 'Team', 'Position', 'Median', 'Own', 'Floor', 'Ceiling', 'Salary']]
776
+ if contest_var1 == 'Large':
777
+ OwnFrame['Own%'] = np.where((OwnFrame['Position'] == 'QB') & (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] == 'QB', 'Own'].mean() >= 0), OwnFrame['Own'] * (10 * (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] == 'QB', 'Own'].mean())/100) + OwnFrame.loc[OwnFrame['Position'] == 'QB', 'Own'].mean(), OwnFrame['Own'])
778
+ OwnFrame['Own%'] = np.where((OwnFrame['Position'] != 'QB') & (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] != 'QB', 'Own'].mean() >= 0), OwnFrame['Own'] * (5 * (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] != 'QB', 'Own'].mean())/100) + OwnFrame.loc[OwnFrame['Position'] != 'QB', 'Own'].mean(), OwnFrame['Own%'])
779
+ OwnFrame['Own%'] = np.where(OwnFrame['Own%'] > 75, 75, OwnFrame['Own%'])
780
+ OwnFrame['Own'] = OwnFrame['Own%'] * (500 / OwnFrame['Own%'].sum())
781
+ if contest_var1 == 'Medium':
782
+ OwnFrame['Own%'] = np.where((OwnFrame['Position'] == 'QB') & (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] == 'QB', 'Own'].mean() >= 0), OwnFrame['Own'] * (6 * (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] == 'QB', 'Own'].mean())/100) + OwnFrame.loc[OwnFrame['Position'] == 'QB', 'Own'].mean(), OwnFrame['Own'])
783
+ OwnFrame['Own%'] = np.where((OwnFrame['Position'] != 'QB') & (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] != 'QB', 'Own'].mean() >= 0), OwnFrame['Own'] * (3 * (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] != 'QB', 'Own'].mean())/100) + OwnFrame.loc[OwnFrame['Position'] != 'QB', 'Own'].mean(), OwnFrame['Own%'])
784
+ OwnFrame['Own%'] = np.where(OwnFrame['Own%'] > 75, 75, OwnFrame['Own%'])
785
+ OwnFrame['Own'] = OwnFrame['Own%'] * (500 / OwnFrame['Own%'].sum())
786
+ if contest_var1 == 'Small':
787
+ OwnFrame['Own%'] = np.where((OwnFrame['Position'] == 'QB') & (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] == 'QB', 'Own'].mean() >= 0), OwnFrame['Own'] * (3 * (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] == 'QB', 'Own'].mean())/100) + OwnFrame.loc[OwnFrame['Position'] == 'QB', 'Own'].mean(), OwnFrame['Own'])
788
+ OwnFrame['Own%'] = np.where((OwnFrame['Position'] != 'QB') & (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] != 'QB', 'Own'].mean() >= 0), OwnFrame['Own'] * (1.5 * (OwnFrame['Own'] - OwnFrame.loc[OwnFrame['Position'] != 'QB', 'Own'].mean())/100) + OwnFrame.loc[OwnFrame['Position'] != 'QB', 'Own'].mean(), OwnFrame['Own%'])
789
+ OwnFrame['Own%'] = np.where(OwnFrame['Own%'] > 75, 75, OwnFrame['Own%'])
790
+ OwnFrame['Own'] = OwnFrame['Own%'] * (500 / OwnFrame['Own%'].sum())
791
+ Overall_Proj = OwnFrame[['Player', 'Team', 'Position', 'Median', 'Own', 'Floor', 'Ceiling', 'Salary']]
792
+
793
+ del initial_proj
794
+ del drop_frame
795
+ del OwnFrame
796
+
797
+ if insert_port == 1:
798
+ UserPortfolio = portfolio_dataframe[['CPT', 'FLEX1', 'FLEX2', 'FLEX3', 'FLEX4', 'FLEX5']]
799
+ elif insert_port == 0:
800
+ UserPortfolio = pd.DataFrame(columns = ['CPT', 'FLEX1', 'FLEX2', 'FLEX3', 'FLEX4', 'FLEX5'])
801
+
802
+ Overall_Proj.replace('', np.nan, inplace=True)
803
+ Overall_Proj = Overall_Proj.dropna(subset=['Median'])
804
+ Overall_Proj = Overall_Proj.assign(Value=lambda x: (x.Median / (x.Salary / 1000)))
805
+ Overall_Proj['Sort_var'] = (Overall_Proj['Median'].rank(ascending=False) + Overall_Proj['Value'].rank(ascending=False)) / 2
806
+ Overall_Proj = Overall_Proj.sort_values(by='Sort_var', ascending=False)
807
+ Overall_Proj['Own'] = np.where((Overall_Proj['Median'] > 0) & (Overall_Proj['Own'] == 0), 1, Overall_Proj['Own'])
808
+ Overall_Proj = Overall_Proj.loc[Overall_Proj['Own'] > 0]
809
+
810
+ Overall_Proj['Floor'] = np.where(Overall_Proj['Position'] == 'QB', Overall_Proj['Median'] * .5, Overall_Proj['Median'] * .25)
811
+ Overall_Proj['Ceiling'] = np.where(Overall_Proj['Position'] == 'WR', Overall_Proj['Median'] + Overall_Proj['Median'], Overall_Proj['Median'] + Overall_Proj['Floor'])
812
+ Overall_Proj['STDev'] = Overall_Proj['Median'] / 4
813
+
814
+ Teams_used = Overall_Proj['Team'].drop_duplicates().reset_index(drop=True)
815
+ Teams_used = Teams_used.reset_index()
816
+ Teams_used['team_item'] = Teams_used['index'] + 1
817
+ Teams_used = Teams_used.drop(columns=['index'])
818
+ Teams_used_dictraw = Teams_used.drop(columns=['team_item'])
819
+ Teams_used_dict = Teams_used_dictraw.to_dict()
820
+
821
+ del Teams_used_dictraw
822
+
823
+ team_list = Teams_used['Team'].to_list()
824
+ item_list = Teams_used['team_item'].to_list()
825
+
826
+ FieldStrength_raw = Strength_var + ((30 - len(Teams_used)) * .01)
827
+ FieldStrength = FieldStrength_raw - (FieldStrength_raw * (20000 / Contest_Size))
828
+
829
+ del FieldStrength_raw
830
+
831
+ if FieldStrength < 0:
832
+ FieldStrength = Strength_var
833
+ field_split = Strength_var
834
+
835
+ for checkVar in range(len(team_list)):
836
+ Overall_Proj['Team'] = Overall_Proj['Team'].replace(team_list, item_list)
837
+
838
+ flex_raw = Overall_Proj
839
+ flex_raw.dropna(subset=['Median']).reset_index(drop=True)
840
+ flex_raw = flex_raw.reset_index(drop=True)
841
+ flex_raw = flex_raw.sort_values(by='Own', ascending=False)
842
+
843
+ pos_players = flex_raw
844
+ pos_players.dropna(subset=['Median']).reset_index(drop=True)
845
+ pos_players = pos_players.reset_index(drop=True)
846
+
847
+ del flex_raw
848
+
849
+ if insert_port == 1:
850
+ try:
851
+ # Initialize an empty DataFrame to store raw portfolio data
852
+ Raw_Portfolio = pd.DataFrame()
853
+
854
+ # Split each portfolio column and concatenate to Raw_Portfolio
855
+ columns_to_process = ['CPT', 'FLEX1', 'FLEX2', 'FLEX3', 'FLEX4', 'FLEX5']
856
+ for col in columns_to_process:
857
+ temp_df = UserPortfolio[col].str.split("(", n=1, expand=True)
858
+ temp_df.columns = [col, 'Drop']
859
+ Raw_Portfolio = pd.concat([Raw_Portfolio, temp_df], axis=1)
860
+
861
+ # Keep only required variables and remove whitespace
862
+ keep_vars = columns_to_process
863
+ CleanPortfolio = Raw_Portfolio[keep_vars]
864
+ CleanPortfolio = CleanPortfolio.apply(lambda x: x.str.strip())
865
+
866
+ # Reset index and clean up the DataFrame
867
+ CleanPortfolio.reset_index(inplace=True)
868
+ CleanPortfolio['User/Field'] = CleanPortfolio['index'] + 1
869
+ CleanPortfolio.drop(columns=['index'], inplace=True)
870
+ CleanPortfolio.replace('', np.nan, inplace=True)
871
+ CleanPortfolio.dropna(subset=['QB'], inplace=True)
872
+
873
+ # Create cleaport_players DataFrame
874
+ unique_vals, counts = np.unique(CleanPortfolio.iloc[:, 0:6].values, return_counts=True)
875
+ cleaport_players = pd.DataFrame(np.column_stack([unique_vals, counts]), columns=['Player', 'Freq']).astype({'Freq': int}).sort_values('Freq', ascending=False).reset_index(drop=True)
876
+
877
+ # Merge and update nerf_frame DataFrame
878
+ nerf_frame = pd.merge(cleaport_players, Overall_Proj, on='Player', how='left')
879
+ nerf_frame[['Median', 'Floor', 'Ceiling', 'STDev']] *= 0.9
880
+ del Raw_Portfolio
881
+ except:
882
+ # Reset index and perform column-wise operations
883
+ CleanPortfolio = UserPortfolio.reset_index(drop=True)
884
+ CleanPortfolio['User/Field'] = CleanPortfolio.index + 1
885
+ CleanPortfolio.replace('', np.nan, inplace=True)
886
+ CleanPortfolio.dropna(subset=['QB'], inplace=True)
887
+
888
+ # Create cleaport_players DataFrame
889
+ unique_vals, counts = np.unique(CleanPortfolio.iloc[:, 0:6].values, return_counts=True)
890
+ cleaport_players = pd.DataFrame({'Player': unique_vals, 'Freq': counts}).sort_values('Freq', ascending=False).reset_index(drop=True).astype({'Freq': int})
891
+
892
+ # Merge and update nerf_frame DataFrame
893
+ nerf_frame = pd.merge(cleaport_players, Overall_Proj, on='Player', how='left')
894
+ nerf_frame[['Median', 'Floor', 'Ceiling', 'STDev']] *= 0.9
895
+
896
+ elif insert_port == 0:
897
+ CleanPortfolio = UserPortfolio
898
+ cleaport_players = pd.DataFrame(np.column_stack(np.unique(CleanPortfolio.iloc[:,0:6].values, return_counts=True)),
899
+ columns=['Player','Freq']).sort_values('Freq', ascending=False).reset_index(drop=True)
900
+ cleaport_players['Freq'] = cleaport_players['Freq'].astype(int)
901
+ nerf_frame = Overall_Proj
902
+
903
+ ref_dict = {
904
+ 'pos':['FLEX'],
905
+ 'pos_dfs':['FLEX_Table'],
906
+ 'pos_dicts':['flex_dict']
907
+ }
908
+
909
+ maps_dict = {
910
+ 'Floor_map':dict(zip(Overall_Proj.Player,Overall_Proj.Floor)),
911
+ 'Projection_map':dict(zip(Overall_Proj.Player,Overall_Proj.Median)),
912
+ 'Ceiling_map':dict(zip(Overall_Proj.Player,Overall_Proj.Ceiling)),
913
+ 'Salary_map':dict(zip(Overall_Proj.Player,Overall_Proj.Salary)),
914
+ 'Pos_map':dict(zip(Overall_Proj.Player,Overall_Proj.Position)),
915
+ 'Own_map':dict(zip(Overall_Proj.Player,Overall_Proj.Own)),
916
+ 'Team_map':dict(zip(Overall_Proj.Player,Overall_Proj.Team)),
917
+ 'STDev_map':dict(zip(Overall_Proj.Player,Overall_Proj.STDev)),
918
+ 'team_check_map':dict(zip(Overall_Proj.Player,Overall_Proj.Team))
919
+ }
920
+
921
+ up_dict = {
922
+ 'Floor_map':dict(zip(cleaport_players.Player,nerf_frame.Floor)),
923
+ 'Projection_map':dict(zip(cleaport_players.Player,nerf_frame.Median)),
924
+ 'Ceiling_map':dict(zip(cleaport_players.Player,nerf_frame.Ceiling)),
925
+ 'Salary_map':dict(zip(cleaport_players.Player,nerf_frame.Salary)),
926
+ 'Pos_map':dict(zip(cleaport_players.Player,nerf_frame.Position)),
927
+ 'Own_map':dict(zip(cleaport_players.Player,nerf_frame.Own)),
928
+ 'Team_map':dict(zip(cleaport_players.Player,nerf_frame.Team)),
929
+ 'STDev_map':dict(zip(cleaport_players.Player,nerf_frame.STDev)),
930
+ 'team_check_map':dict(zip(cleaport_players.Player,nerf_frame.Team))
931
+ }
932
+
933
+ del Overall_Proj
934
+ del nerf_frame
935
+
936
+ RunsVar = 1
937
+ st.write('Seed frame creation')
938
+ FinalPortfolio, maps_dict = run_seed_frame(seed_depth1, Strength_var, strength_grow, Teams_used, Total_Runs)
939
+
940
+ Sim_size = linenum_var1
941
+ SimVar = 1
942
+ Sim_Winners = []
943
+ fp_array = FinalPortfolio.values
944
+ if insert_port == 1:
945
+ up_array = CleanPortfolio.values
946
+ st.write('Simulating contest on frames')
947
+ while SimVar <= Sim_size:
948
+ try:
949
+ fp_random = fp_array[np.random.choice(fp_array.shape[0], Contest_Size-len(CleanPortfolio), replace=False)]
950
+
951
+ smple_arrays1 = np.c_[fp_random,
952
+ np.sum(np.random.normal(
953
+ loc = np.vectorize(maps_dict['Projection_map'].__getitem__)(fp_random[:,:-5]),
954
+ scale = np.vectorize(maps_dict['STDev_map'].__getitem__)(fp_random[:,:-5])),
955
+ axis=1)]
956
+ try:
957
+ smple_arrays2 = np.c_[up_array,
958
+ np.sum(np.random.normal(
959
+ loc = np.vectorize(up_dict['Projection_map'].__getitem__)(up_array[:,:-5]),
960
+ scale = np.vectorize(up_dict['STDev_map'].__getitem__)(up_array[:,:-5])),
961
+ axis=1)]
962
+ except:
963
+ pass
964
+ try:
965
+ smple_arrays = np.vstack((smple_arrays1, smple_arrays2))
966
+ except:
967
+ smple_arrays = smple_arrays1
968
+ final_array = smple_arrays[smple_arrays[:, 7].argsort()[::-1]]
969
+ best_lineup = final_array[final_array[:, -1].argsort(kind='stable')[::-1][:1]]
970
+ Sim_Winners.append(best_lineup)
971
+ SimVar += 1
972
+
973
+ except:
974
+ FieldStrength += (strength_grow + ((30 - len(Teams_used)) * .001))
975
+ FinalPortfolio3, maps_dict3 = get_correlated_portfolio_for_sim(Total_Runs * field_split)
976
+ FinalPortfolio4, maps_dict4 = get_uncorrelated_portfolio_for_sim(Total_Runs * field_split)
977
+ FinalPortfolio = pd.concat([FinalPortfolio, FinalPortfolio3], axis=0)
978
+ FinalPortfolio = pd.concat([FinalPortfolio, FinalPortfolio4], axis=0)
979
+ try:
980
+ FinalPortfolio = FinalPortfolio.drop_duplicates(subset = ['Projection', 'Ownership'],keep = 'last').reset_index(drop = True)
981
+ except:
982
+ FinalPortfolio = FinalPortfolio.drop_duplicates(subset = ['Projection', 'Own'],keep = 'last').reset_index(drop = True)
983
+ maps_dict.update(maps_dict3)
984
+ maps_dict.update(maps_dict4)
985
+ del FinalPortfolio3
986
+ del maps_dict3
987
+ del FinalPortfolio4
988
+ del maps_dict4
989
+ fp_array = FinalPortfolio.values
990
+ if insert_port == 1:
991
+ up_array = CleanPortfolio.values
992
+ SimVar = SimVar
993
+ st.write('Contest simulation complete')
994
+
995
+ Sim_Winner_Frame = pd.DataFrame(np.concatenate(Sim_Winners), columns=FinalPortfolio.columns.tolist() + ['Fantasy'])
996
+ Sim_Winner_Frame['GPP_Proj'] = (Sim_Winner_Frame['Projection'] + Sim_Winner_Frame['Fantasy']) / 2
997
+ Sim_Winner_Frame['Salary'] = Sim_Winner_Frame['Salary'].astype(int)
998
+ Sim_Winner_Frame['Projection'] = Sim_Winner_Frame['Projection'].astype(np.float16)
999
+ Sim_Winner_Frame['Fantasy'] = Sim_Winner_Frame['Fantasy'].astype(np.float16)
1000
+ Sim_Winner_Frame['GPP_Proj'] = Sim_Winner_Frame['GPP_Proj'].astype(np.float16)
1001
+ Sim_Winner_Frame = Sim_Winner_Frame.sort_values(by='GPP_Proj', ascending=False)
1002
+
1003
+ player_freq = pd.DataFrame(np.column_stack(np.unique(Sim_Winner_Frame.iloc[:,0:6].values, return_counts=True)),
1004
+ columns=['Player','Freq']).sort_values('Freq', ascending=False).reset_index(drop=True)
1005
+ player_freq['Freq'] = player_freq['Freq'].astype(int)
1006
+ player_freq['Position'] = player_freq['Player'].map(maps_dict['Pos_map'])
1007
+ player_freq['Salary'] = player_freq['Player'].map(maps_dict['Salary_map'])
1008
+ player_freq['Proj Own'] = (player_freq['Player'].map(maps_dict['Own_map']) / 100)
1009
+ player_freq['Exposure'] = player_freq['Freq']/(Sim_size)
1010
+ player_freq['Edge'] = player_freq['Exposure'] - player_freq['Proj Own']
1011
+ player_freq['Team'] = player_freq['Player'].map(maps_dict['Team_map'])
1012
+ for checkVar in range(len(team_list)):
1013
+ player_freq['Team'] = player_freq['Team'].replace(item_list, team_list)
1014
+
1015
+ player_freq = player_freq[['Player', 'Position', 'Team', 'Salary', 'Proj Own', 'Exposure', 'Edge']]
1016
+
1017
+ cpt_freq = pd.DataFrame(np.column_stack(np.unique(Sim_Winner_Frame.iloc[:,0:1].values, return_counts=True)),
1018
+ columns=['Player','Freq']).sort_values('Freq', ascending=False).reset_index(drop=True)
1019
+ cpt_freq['Freq'] = cpt_freq['Freq'].astype(int)
1020
+ cpt_freq['Position'] = cpt_freq['Player'].map(maps_dict['Pos_map'])
1021
+ cpt_freq['Salary'] = cpt_freq['Player'].map(maps_dict['Salary_map'])
1022
+ cpt_freq['Proj Own'] = (cpt_freq['Player'].map(maps_dict['Own_map']) / 4) / 100
1023
+ cpt_freq['Exposure'] = cpt_freq['Freq']/(Sim_size)
1024
+ cpt_freq['Edge'] = cpt_freq['Exposure'] - cpt_freq['Proj Own']
1025
+ cpt_freq['Team'] = cpt_freq['Player'].map(maps_dict['Team_map'])
1026
+ for checkVar in range(len(team_list)):
1027
+ cpt_freq['Team'] = cpt_freq['Team'].replace(item_list, team_list)
1028
+
1029
+ cpt_freq = cpt_freq[['Player', 'Position', 'Team', 'Salary', 'Proj Own', 'Exposure', 'Edge']]
1030
+
1031
+ flex_freq = pd.DataFrame(np.column_stack(np.unique(Sim_Winner_Frame.iloc[:,[1, 2, 3, 4, 5]].values, return_counts=True)),
1032
+ columns=['Player','Freq']).sort_values('Freq', ascending=False).reset_index(drop=True)
1033
+ flex_freq['Freq'] = flex_freq['Freq'].astype(int)
1034
+ flex_freq['Position'] = flex_freq['Player'].map(maps_dict['Pos_map'])
1035
+ flex_freq['Salary'] = flex_freq['Player'].map(maps_dict['Salary_map'])
1036
+ flex_freq['Proj Own'] = (flex_freq['Player'].map(maps_dict['Own_map']) / 100) - ((flex_freq['Player'].map(maps_dict['Own_map']) / 4) / 100)
1037
+ flex_freq['Exposure'] = flex_freq['Freq']/(Sim_size)
1038
+ flex_freq['Edge'] = flex_freq['Exposure'] - flex_freq['Proj Own']
1039
+ flex_freq['Team'] = flex_freq['Player'].map(maps_dict['Team_map'])
1040
+ for checkVar in range(len(team_list)):
1041
+ flex_freq['Team'] = flex_freq['Team'].replace(item_list, team_list)
1042
+
1043
+ flex_freq = flex_freq[['Player', 'Position', 'Team', 'Salary', 'Proj Own', 'Exposure', 'Edge']]
1044
+
1045
+ del fp_random
1046
+ del smple_arrays
1047
+ del final_array
1048
+ del fp_array
1049
+ try:
1050
+ del up_array
1051
+ except:
1052
+ pass
1053
+ del best_lineup
1054
+ del CleanPortfolio
1055
+ del FinalPortfolio
1056
+ del maps_dict
1057
+ del team_list
1058
+ del item_list
1059
+ del Sim_size
1060
+
1061
+ with st.container():
1062
+ st.dataframe(Sim_Winner_Frame.style.background_gradient(axis=0).background_gradient(cmap='RdYlGn').background_gradient(cmap='RdYlGn_r', subset=['Own']).format(precision=2), use_container_width = True)
1063
+
1064
+ with st.container():
1065
+ tab1, tab2, tab3 = st.tabs(['Overall Exposures', 'CPT Exposures', 'FLEX Exposures'])
1066
+ with tab1:
1067
+ st.dataframe(player_freq.style.background_gradient(axis=0).background_gradient(cmap='RdYlGn').format(freq_format, precision=2), use_container_width = True)
1068
+ st.download_button(
1069
+ label="Export Exposures",
1070
+ data=convert_df_to_csv(player_freq),
1071
+ file_name='player_freq_export.csv',
1072
+ mime='text/csv',
1073
+ )
1074
+ with tab2:
1075
+ st.dataframe(cpt_freq.style.background_gradient(axis=0).background_gradient(cmap='RdYlGn').format(freq_format, precision=2), use_container_width = True)
1076
+ st.download_button(
1077
+ label="Export Exposures",
1078
+ data=convert_df_to_csv(cpt_freq),
1079
+ file_name='cpt_freq_export.csv',
1080
+ mime='text/csv',
1081
+ )
1082
+ with tab3:
1083
+ st.dataframe(flex_freq.style.background_gradient(axis=0).background_gradient(cmap='RdYlGn').format(freq_format, precision=2), use_container_width = True)
1084
+ st.download_button(
1085
+ label="Export Exposures",
1086
+ data=convert_df_to_csv(flex_freq),
1087
+ file_name='flex_freq_export.csv',
1088
+ mime='text/csv',
1089
+ )
1090
+
1091
+ st.download_button(
1092
+ label="Export Tables",
1093
+ data=convert_df_to_csv(Sim_Winner_Frame),
1094
+ file_name='NFL_consim_export.csv',
1095
+ mime='text/csv',
1096
+ )