Exemplo n.º 1
0
def head_to_head_season(user1_players,
                        user2_players,
                        user1_name="User 1",
                        user2_name="User 2",
                        year=os.getenv("YEAR", 2020),
                        verbose=False):
    if verbose:
        print(f"Begin running simulation for NBA {year-1}-{year} season\n")

    data = Data(year)
    user1_players = data.convert_names(user1_players)
    user2_players = data.convert_names(user2_players)

    player1_total_wins = []
    player2_total_wins = []

    for date, game_data in data.per_week_game_data():
        series1_wins, series2_wins = head_to_head_week(date, game_data,
                                                       user1_players,
                                                       user2_players,
                                                       user1_name, user2_name,
                                                       verbose)
        player1_total_wins += series1_wins
        player2_total_wins += series2_wins

    print(
        f"\nTotal Results for {year-1}-{year} season\n\t\t{user1_name}: {len(player1_total_wins)}\t{user2_name}: {len(player2_total_wins)}"
    )
    if verbose:
        print_common_wins(player1_total_wins, user1_name)
        print_common_wins(player2_total_wins, user2_name)
    return
Exemplo n.º 2
0
def main():
    parser = argparse.ArgumentParser(description='Program.')
    parser.add_argument('--test-data-dir', dest='test_data_dir', required=True)
    parser.add_argument('--train-data-dir',
                        dest='train_data_dir',
                        required=True)
    parser.add_argument('--work-dir', dest='work_dir', required=True)
    parser.add_argument('--res-path', dest='res_path', required=True)
    args = parser.parse_args()

    print(args)
    seed_everything(2020)

    prod_model = MeanModel([
        LgbModel({
            'boosting_type': 'gbdt',
            'min_data_in_leaf': 25,
            'lambda_l2': 0.06,
            'num_leaves': 20,
            'learning_rate': 0.035,
            'feature_fraction': 0.6,
            'bagging_fraction': 0.9,
            'bagging_freq': 6,
            'num_boost_round': 400,
            'group_embeddings_n_components': 7,
            'group_embeddings_n_iter': 24,
        }),
        KerasModel({
            'epochs': 100,
            'verbose': 0,
            'n1': 100,
            'n2': 70,
            'dropout': 0.1,
            'learning_rate': 0.003,
        }),
    ],
                           coefs=(0.7, 0.3))

    train = Data()
    train.read(args.train_data_dir, 'train')

    test = Data()
    test.read(args.test_data_dir, 'test')

    prod_model.prepare(train, test)
    prod_model.fit(train)

    #prod_model.load(os.path.join(args.work_dir, 'models/lgb.txt'))

    try:
        res = prod_model.predict(test)
        pd.DataFrame({
            'uid': test.edu.uid,
            'age': res
        }).to_csv(args.res_path, header=True, index=False)
    except DebugError:
        pd.DataFrame({
            'uid': test.edu.uid,
            'age': np.repeat(35, test.edu.shape[0])
        }).to_csv(args.res_path, header=True, index=False)
Exemplo n.º 3
0
from lib import Data
from tqdm import tqdm
import pandas as pd

data = Data(2019)
total_game_data = []
for date, day_data in tqdm(data.per_day_game_data(),
                           desc="Getting per day data"):
    for player_data in day_data:
        player_data['date'] = date
    total_game_data += day_data

print("Saving data...")
df = pd.DataFrame(total_game_data)
filename = "data/nba_2018_2019_season_data.csv"
df.to_csv(filename, index=False)
print(f"Successfully saved to {filename}")
Exemplo n.º 4
0
args = parser.parse_args()

if torch.cuda.is_available() and not args.usegpu:
    print 'WARNING: You have a CUDA device, so you should probably run with --usegpu'

model_dir = os.path.dirname(args.model)

# Load Seeds
random.seed(s.SEED)
np.random.seed(s.SEED)
torch.manual_seed(s.SEED)

# Load Data
data = Data(data_file=args.data,
            input_horizon=s.INPUT_HORIZON,
            n_stations=args.n_stations,
            train_ratio=s.TRAIN_RATIO,
            val_ratio=s.VAL_RATIO,
            debug=False)

# Load Model
model = Model(args.n_stations,
              s.MOVING_HORIZON,
              s.ACTIVATION,
              s.CRITERION,
              load_model_path=args.model,
              usegpu=args.usegpu)

# Train First RNN
_, _, [X_test, y_test] = data.load_data_lstm_1()

print '\n\n' + '#' * 10 + ' TESTING ' + '#' * 10
Exemplo n.º 5
0
def getChannels():
    channels = Data.getChannels()
    template = env.get_template("channels.html")
    return  template.render(channels=channels)
Exemplo n.º 6
0
def showTags(tagname):
    courses = Data.getCoursesByTagname(tagname)
    template = env.get_template("categories.html")
    return  template.render(category=tagname, courses=courses)
Exemplo n.º 7
0
def getVideo(courseAlias, videoAlias):
    video = Data.getVideoByAlias(courseAlias, videoAlias)
    template = env.get_template("screencast.html")
    return template.render(video=video)
Exemplo n.º 8
0
def getCourse(courseAlias):
    course = Data.getCourseByAlias(courseAlias)
    template = env.get_template("course.html")
    return  template.render(course=course)
Exemplo n.º 9
0
def coursesDetails():
    courses = Data.getCourses()
    template = env.get_template("courses.html")
    return  template.render(courses=courses)
Exemplo n.º 10
0
def index():
    courses = Data.getCourses()
    template = env.get_template("index.html")
    return  template.render(courses=courses)
Exemplo n.º 11
0
def convert_name(player_names, year):
  data = Data(year)
  player_slugs = []
  for player_name in player_names:
    player_slugs.append(data.NAME_SLUG_CONVERTER[player_name.strip().lower()])
  return player_slugs
Exemplo n.º 12
0
from lib import Data
import pandas as pd
from tqdm import tqdm

data = Data(2018)
total_game_data = []
for date, day_data in tqdm(data.per_day_game_data(), desc="Getting per day data"):
  for player_data in day_data:
    player_data['date'] = date
  total_game_data += day_data

print("Saving data...")
df = pd.DataFrame(total_game_data)
filename = "data/nba_2017_2018_season_data.csv"
df.to_csv(filename, index=False)
print(f"Successfully saved to {filename}")
Exemplo n.º 13
0
import os
from lib import Data
from tqdm import tqdm
import pandas as pd

YEAR = int(os.getenv("YEAR", 2020))
PREVIOUS_YEAR = YEAR - 1
DATA = Data(YEAR)
PREVIOUS_YEAR_DATA = Data(PREVIOUS_YEAR)


# PREVIOUS SEASON
def start():
    total_game_data = []
    for date, day_data in tqdm(PREVIOUS_YEAR_DATA.per_day_game_data(),
                               desc="Getting previous season data"):
        for player_data in day_data:
            player_data['date'] = date
        total_game_data += day_data

    print("Saving data...")
    df = pd.DataFrame(total_game_data)
    filename = "data/previous_season_data.csv"
    df.to_csv(filename, index=False)
    print(f"Successfully saved to {filename}")

    # THIS SEASON
    total_game_data = []

    print("Saving data...")
    df = pd.DataFrame(DATA.player_total)
Exemplo n.º 14
0
import os
from flask import Flask, render_template, request, jsonify
from lib import Data
import pandas as pd

app = Flask(__name__)

YEAR = int(os.getenv("YEAR"))
PREVIOUS_YEAR = YEAR - 1
DATA = Data(YEAR)


def send_json(status_code, message):
    resp = jsonify(message)
    resp.status_code = status_code
    return resp


@app.route('/')
@app.route('/index')
def index():
    df = pd.read_csv("data/this_season_player_data.csv")
    return render_template('players.html',
                           data=df[['slug', 'name', 'age', 'drafted']].values)


@app.route('/draft', methods=['POST', 'GET'])
def draft():
    if request.method == 'POST':
        userid = request.json.get('userid') or ""
        playerid = request.json.get('playerid') or ""
Exemplo n.º 15
0
    os.makedirs(output_dir)
except:
    pass

pin_memory = False
if args.usegpu:
    pin_memory = True

# Load Seeds
random.seed(s.SEED)
np.random.seed(s.SEED)
torch.manual_seed(s.SEED)

# Load Data
data = Data(data_file=args.data, input_horizon=s.INPUT_HORIZON,
            n_stations=args.n_stations, train_ratio=s.TRAIN_RATIO,
            val_ratio=s.VAL_RATIO, debug=args.debug)

# Load Model
model = Model(args.n_stations, s.MOVING_HORIZON, s.ACTIVATION, s.CRITERION, usegpu=args.usegpu)

# Train First RNN
[X_train, y_train], [X_val, y_val], [X_test, y_test] = data.load_data_lstm_1()

rnn_model_num = 1
print '#' * 10 + ' RNN 1 ' + '#' * 10

train_loader = torch.utils.data.DataLoader(Loader((X_train, y_train)), batch_size=args.batch_size, shuffle=True,
                                           num_workers=args.n_workers, pin_memory=pin_memory)

val_loader = torch.utils.data.DataLoader(Loader((X_val, y_val)), batch_size=args.batch_size, shuffle=False,