AIvsAI-SoccerTwos / background_task.py
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import os
import time
import random
import asyncio
import subprocess
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"
ELO_DIR = "soccer_elo"
HF_TOKEN = os.environ.get("HF_TOKEN")
subprocess.run("rm -rf .git/hooks".split())
repo = Repository(
local_dir=ELO_DIR, clone_from=DATASET_REPO_URL, use_auth_token=HF_TOKEN
)
api = HfApi()
os.chmod('./SoccerTows.x86_64', 0o755)
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))
match(model1, model2)
self.load_results()
def load_results(self):
""" Load the match history from the hub. """
repo.git_pull()
results = pd.read_csv(
"https://huggingface.co/datasets/huggingface-projects/temp-match-results/raw/main/results.csv"
)
# while len(results) < len(self.matches["model1"]):
# time.sleep(60)
# results = pd.read_csv(
# "https://huggingface.co/datasets/huggingface-projects/temp-match-results/raw/main/results.csv"
# )
for i, row in results.iterrows():
model1 = row["model1"].split("/")
model2 = row["model2"].split("/")
model1 = self.find_model(model1[0], model1[1])
model2 = self.find_model(model2[0], model2[1])
result = row["result"]
if model1 is not None or model2 is not None:
self.compute_elo(row["model1"], row["model2"], row["result"])
self.matches["model1"].append(model1.name)
self.matches["model2"].append(model2.name)
self.matches["result"].append(result)
self.matches["timestamp"].append(row["timestamp"])
def find_model(self, author, name):
""" Find a model in the models list. """
for model in self.models:
if model.author == author and model.name == name:
return model
return None
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())
repo.git_pull()
df.to_csv(os.path.join(ELO_DIR, ELO_FILENAME), index=False)
repo.push_to_hub(commit_message="Update ELO")
def match(model1, model2):
"""
:param model1: First Model object
:param model2: Second Model object
:return: match result (0: model1 lost, 0.5: draw, 1: model1 won)
"""
model1_id = model1.author + "/" + model1.name
model2_id = model2.author + "/" + model2.name
# subprocess.run(["./SoccerTows.x86_64", "-model1", model1_id, "-model2", model2_id])
print(f"Match {model1_id} against {model2_id} ended.")
model1.games_played += 1
model2.games_played += 1
def get_models_list() -> list:
"""
: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", "ml-agents", "ML-Agents-SoccerTwos"])
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:
author, name = model.modelId.split("/")[0], model.modelId.split("/")[1]
if model.modelId not in models_names:
models.append(Model(author, name))
print("New model found: ", author, "-", name)
return models
def get_elo_data() -> pd.DataFrame:
repo.git_pull()
data = pd.read_csv(os.path.join(DATASET_REPO_URL, "resolve", "main", ELO_FILENAME))
return data
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"))