Spaces:
Runtime error
Runtime error
import os | |
import random | |
import pandas as pd | |
from datetime import datetime | |
from huggingface_hub import HfApi, Repository | |
DATASET_REPO_URL = "https://huggingface.co/datasets/CarlCochet/BotFightData" | |
ELO_FILENAME = "soccer_elo.csv" | |
HF_TOKEN = os.environ.get("HF_TOKEN") | |
repo = Repository( | |
clone_from=DATASET_REPO_URL, use_auth_token=HF_TOKEN | |
) | |
class Model: | |
""" | |
Class containing the info of a model. | |
:param name: Name of the model | |
:param elo: Elo rating of the model | |
:param games_played: Number of games played by the model (useful if we implement sigma uncertainty) | |
""" | |
def __init__(self, author, name, elo=1200, games_played=0): | |
self.author = author | |
self.name = name | |
self.elo = elo | |
self.games_played = games_played | |
class Matchmaking: | |
""" | |
Class managing the matchmaking between the models. | |
:param models: List of models | |
:param queue: Temporary list of models used for the matching process | |
:param k: Dev coefficient | |
:param max_diff: Maximum difference considered between two models' elo | |
:param matches: Dictionary containing the match history (to later upload as CSV) | |
""" | |
def __init__(self, models): | |
self.models = models | |
self.queue = self.models.copy() | |
self.k = 20 | |
self.max_diff = 500 | |
self.matches = { | |
"model1": [], | |
"model2": [], | |
"result": [], | |
"datetime": [], | |
"env": [] | |
} | |
def run(self): | |
""" | |
Run the matchmaking process. | |
Add models to the queue, shuffle it, and match the models one by one to models with close ratings. | |
Compute the new elo for each model after each match and add the match to the match history. | |
""" | |
self.queue = self.models.copy() | |
random.shuffle(self.queue) | |
while len(self.queue) > 1: | |
model1 = self.queue.pop(0) | |
model2 = self.queue.pop(self.find_n_closest_indexes(model1, 10)) | |
result = match(model1, model2) | |
self.compute_elo(model1, model2, result) | |
self.matches["model1"].append(model1.name) | |
self.matches["model2"].append(model2.name) | |
self.matches["result"].append(result) | |
self.matches["datetime"].append(datetime.now().strftime("%Y-%m-%d %H:%M:%S.%f")) | |
def compute_elo(self, model1, model2, result): | |
""" Compute the new elo for each model based on a match result. """ | |
delta = model1.elo - model2.elo | |
win_probability = 1 / (1 + 10 ** (-delta / 500)) | |
model1.elo += self.k * (result - win_probability) | |
model2.elo -= self.k * (result - win_probability) | |
def find_n_closest_indexes(self, model, n) -> int: | |
""" | |
Get a model index with a fairly close rating. If no model is found, return the last model in the queue. | |
We don't always pick the closest rating to add variety to the matchups. | |
:param model: Model to compare | |
:param n: Number of close models from which to pick a candidate | |
:return: id of the chosen candidate | |
""" | |
indexes = [] | |
closest_diffs = [9999999] * n | |
for i, m in enumerate(self.queue): | |
if m.name == model.name: | |
continue | |
diff = abs(m.elo - model.elo) | |
if diff < max(closest_diffs): | |
closest_diffs.append(diff) | |
closest_diffs.sort() | |
closest_diffs.pop() | |
indexes.append(i) | |
random.shuffle(indexes) | |
return indexes[0] | |
def to_csv(self): | |
""" Save the match history as a CSV file to the hub. """ | |
data_dict = {"rank": [], "author": [], "model": [], "elo": [], "games_played": []} | |
sorted_models = sorted(self.models, key=lambda x: x.elo, reverse=True) | |
for i, model in enumerate(sorted_models): | |
data_dict["rank"].append(i + 1) | |
data_dict["author"].append(model.author) | |
data_dict["model"].append(model.name) | |
data_dict["elo"].append(model.elo) | |
data_dict["games_played"].append(model.games_played) | |
df = pd.DataFrame(data_dict) | |
print(df.head()) | |
df.to_csv(ELO_FILENAME) | |
repo.push_to_hub(commit_message="Update ELO") | |
# df_matches = pd.DataFrame(self.matches) | |
# date = datetime.now() | |
# df_matches.to_csv(f"match_history/{date.strftime('%Y-%m-%d_%H-%M-%S_%f')}.csv", index=False) | |
def match(model1, model2) -> float: | |
""" | |
!!! Current code is placeholder !!! | |
TODO: Launch a Unity process with the 2 models and get the result of the match | |
:param model1: First Model object | |
:param model2: Second Model object | |
:return: match result (0: model1 lost, 0.5: draw, 1: model1 won) | |
""" | |
result = random.randint(0, 2) / 2 | |
model1.games_played += 1 | |
model2.games_played += 1 | |
return result | |
def get_models_list() -> list: | |
""" | |
!!! Current code is placeholder !!! | |
TODO: Create a list of Model objects from the models found on the hub | |
:return: list of Model objects | |
""" | |
models = [] | |
models_names = [] | |
data = pd.read_csv(os.path.join(DATASET_REPO_URL, "resolve", "main", ELO_FILENAME)) | |
# models_on_hub = api.list_models(filter=["reinforcement-learning", env, "stable-baselines3"]) | |
models_on_hub = [] | |
for i, row in data.iterrows(): | |
models.append(Model(row["author"], row["model"], row["elo"], row["games_played"])) | |
models_names.append(row["model"]) | |
for model in models_on_hub: | |
if model.modelId not in models_names: | |
models.append(Model(model.author, model.modelId)) | |
return models | |
def init_matchmaking(): | |
models = get_models_list() | |
matchmaking = Matchmaking(models) | |
matchmaking.run() | |
matchmaking.to_csv() | |
print("Matchmaking done ---", datetime.now().strftime("%Y-%m-%d %H:%M:%S.%f")) | |
if __name__ == "__main__": | |
print("It's running!") | |
api = HfApi() | |
init_matchmaking() | |