YFDashboard / src /simulate.py
Jon Solow
Implement existing simulation in admin page
af23901
raw
history blame
5.24 kB
import numpy as np
import pandas as pd
from stqdm import stqdm
from typing import List, Mapping, MutableMapping, Tuple
def simulate_game(team_name: str, mean_points: float, std_points: float) -> float:
general_normal = np.round(np.random.normal(mean_points, std_points), 3)
return general_normal
def simulate_week_matchups(df_week: pd.DataFrame, mean_points: float, std_points: float) -> pd.DataFrame:
df_week.loc[:, "team_points"] = df_week.team_name.apply(lambda x: simulate_game(x, mean_points, std_points)).values
df_week.loc[:, "max_match"] = df_week.groupby("match_index").team_points.transform("max").values
df_week.loc[:, "win_probability"] = ((df_week["team_points"] == df_week["max_match"]) * 1.0).values
df_week.drop(columns=["max_match"], inplace=True)
return df_week
def simulate_remaining_season(df_completed_weeks: pd.DataFrame, df_incomplete_weeks: pd.DataFrame) -> pd.DataFrame:
df_comp = df_completed_weeks.copy()
df_inc = df_incomplete_weeks.copy()
mean_points = df_comp.team_points.mean()
std_points = df_comp.team_points.std()
sim_week_list = [
simulate_week_matchups(df_week, mean_points, std_points) for (_, df_week) in df_inc.groupby("week")
]
df_full_sim = pd.concat([df_comp] + sim_week_list)
return df_full_sim
def summarize_season(df_sim: pd.DataFrame, n_bye: int, n_playoff: int) -> pd.DataFrame:
sim_sum = (
df_sim.groupby("team_name")[["win_probability", "team_points"]]
.sum()
.sort_values(["win_probability", "team_points"], ascending=False)
)
sim_sum["season_rank"] = range(1, 1 + len(sim_sum))
sim_sum["bye"] = (sim_sum["season_rank"] <= n_bye) * 1
sim_sum["playoff"] = (sim_sum["season_rank"] <= n_playoff) * 1
return sim_sum
def finalize_all(df: pd.DataFrame) -> None:
df["win_probability"] = (df.groupby(["week", "match_index"]).team_points.transform("max") == df.team_points) * 1
def run_simulations(df: pd.DataFrame, complete_weeks: int, n_sims: int, n_playoff: int):
if n_playoff == 6:
n_bye = 2
else:
n_bye = 0
df_comp = df[df.week <= complete_weeks]
finalize_all(df_comp)
df_inc = df[df.week > complete_weeks]
sim_list = []
for i in stqdm(range(n_sims)):
df_sim = simulate_remaining_season(df_comp, df_inc)
sim_sum = summarize_season(df_sim, n_bye, n_playoff)
df_simmed = df_sim[df_sim.week > complete_weeks]
win_dict = {
match_key: df_match.sort_values("team_points").team_name.iloc[-1]
for (match_key, df_match) in df_simmed.groupby(["week", "match_index"])
}
df_wins = pd.DataFrame(win_dict, index=[i])
df_melt = (
sim_sum.reset_index()[["team_name", "bye", "playoff", "season_rank", "team_points"]]
.melt(id_vars="team_name")
.sort_values(["variable", "team_name"])
)
df_team_sum = pd.DataFrame(
{x[0]: x[1] for x in df_melt.apply(lambda r: [(r.variable, r.team_name), r.value], axis=1).values},
index=[i],
)
df_sim_result = df_team_sum.join(df_wins)
sim_list.append(df_sim_result)
df_all_sims = pd.concat(sim_list)
return df_all_sims
def create_simulate_summary(sims: pd.DataFrame) -> pd.DataFrame:
df_sim_sum = pd.DataFrame()
df_sim_sum["bye"] = sims.bye.mean()
df_sim_sum["playoffs"] = sims.playoff.mean()
return (
df_sim_sum[["bye", "playoffs"]]
.sort_values(["playoffs", "bye"], ascending=False)
.map(lambda n: "{:,.2%}".format(n))
)
def get_matches_by_team_from_sims_df(sims: pd.DataFrame) -> Mapping[str, List[Tuple[int]]]:
team_matches: MutableMapping[str, List[Tuple[int]]] = {}
for col in sims.columns:
if isinstance(col[0], (int, float)):
teams_in_match = sims[col].unique()
for team in teams_in_match:
if team in team_matches:
team_matches[team].append(col)
else:
team_matches[team] = [col]
return team_matches
def calc_wins_on_scenario(team_name, match_cols_list, sims_df):
n_matches = len(match_cols_list)
scenario_bye_playoff_results = {}
for i in range(2**n_matches):
binary_scenario = format(i, f"0{n_matches}b")
filters = []
for scenario, match in zip(binary_scenario, match_cols_list):
match_filter = (sims_df[match] == team_name) == bool(int(scenario))
filters.append(match_filter)
filtered_sims = sims_df[pd.DataFrame(filters).all()]
playoff_odds = filtered_sims["playoff"][team_name].mean()
bye_odds = filtered_sims["bye"][team_name].mean()
scenario_bye_playoff_results[binary_scenario] = np.nan_to_num(
[len(filtered_sims), round(playoff_odds, 3), round(bye_odds, 3)]
).tolist()
return scenario_bye_playoff_results
def calculate_scenario_probabilities(sims: pd.DataFrame) -> Mapping:
remaining_matches = get_matches_by_team_from_sims_df(sims)
team_scenario_probs = {
team: calc_wins_on_scenario(team, matches, sims) for team, matches in remaining_matches.items()
}
return team_scenario_probs