Exemple #1
0
def ga(words):
    if len(words) == 2:
        type_ga = words[0]
        count = int(words[1])
    else:
        return RSP_INVALID_PARAMETERS % str(words)

    LOG.info('start NSGA with population count %d' % count)
    all_stocks = list()
    db.connect()
    for s in Stock.objects():
        all_stocks.append(s)
    db.close()
    print(len(all_stocks))
    if PARALLEL:
        workers = env.get(THREAD)
        if workers is None:
            workers = 1
        with ProcessPoolExecutor(max_workers=int(workers)) as executor:
            features = {
                executor.submit(parallel_solve, all_stocks, type_ga, curr,
                                count): curr
                for curr in range(count)
            }
            for feature in concurrent.futures.as_completed(features):
                LOG.info('Complete %s ' % feature.result())
    else:
        for curr in range(count):
            parallel_solve(all_stocks, type_ga, curr, count)
    return 'Finish GA!'
Exemple #2
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def parallel_solve(all_stocks, type_ga, curr, count):
    LOG.info('Start parallel solve in %s' % str(threading.get_ident()))
    range_stock = len(all_stocks)
    number = list()
    stocks = []

    for position in range(15):
        pos = random.randint(0, range_stock)
        while pos in number:
            pos = random.randint(0, range_stock)
        stock = all_stocks[pos - 1]
        while len(stock.day_history) < 66:
            pos = random.randint(0, range_stock)
            stock = all_stocks[pos - 1]
        stocks.append(stock)

    # download daily price data for each of the stocks in the portfolio
    data = get_stock_price(stocks)
    returns = data.pct_change()

    # calculate mean daily return and covariance of daily returns
    mean_daily_returns = returns.mean()
    cov_matrix = returns.cov()
    days = len(stocks[0].day_history)
    iterations = 50000

    start = time.time()
    if type_ga == GA_SIMPLE:
        results_frame = simple.solve(stocks, iterations, mean_daily_returns,
                                     cov_matrix, days)
    if type_ga == GA_NSGAII:
        results_frame = NSGAII.solve(stocks, iterations, mean_daily_returns,
                                     cov_matrix, days)
    if type_ga == GA_NSGAIII:
        results_frame = NSGAII.solve_nsgaiii(stocks, iterations,
                                             mean_daily_returns, cov_matrix,
                                             days)
    duration = time.time() - start
    LOG.info('Duration solved: %s' % duration)

    sharpe_id_min = results_frame['sharpe'].idxmin()
    max_sharpe_port = results_frame.iloc[sharpe_id_min]
    stdev_id_min = results_frame['stdev'].idxmax()
    min_vol_port = results_frame.iloc[stdev_id_min]

    LOG.info('Max Sharpe ratio: %s' % str(max_sharpe_port))
    LOG.info('Min standard deviation: %s' % str(min_vol_port))
    db.connect()
    solved = Portfolio()
    max_item = parse_solved_portfolio(max_sharpe_port, stocks)
    min_item = parse_solved_portfolio(min_vol_port, stocks)
    solved.max_item = max_item
    solved.min_item = min_item
    solved.date = datetime.datetime.today()
    solved.save()
    db.close()
    LOG.info('Save %d portfolio from %d in thread %s' %
             (curr + 1, count, str(threading.get_ident())))
    return 'Duration %s' % str(duration)
Exemple #3
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def history_all_stocks():
    LOG.info("Load all stocks")
    connect()
    stocks = s.Stock.objects()
    all_stocks = stocks.count()
    for num, stock in enumerate(stocks):
        load_history(stock.trade_code)
        LOG.info("Load [%d/%d] %s" % (num, all_stocks, stock.trade_code))
    close()
    return RSP_FINAM_CODE_ALL
Exemple #4
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def process_result_of_ga(results_frame, stocks, gmean):
    try:
        id_sharpe = results_frame['sharpe'].idxmax()
    except TypeError as exc:
        id_sharpe = maxId(results_frame, 'sharpe')

    try:
        max_sharpe_port = results_frame.iloc[id_sharpe]
    except TypeError as exc:
        id_sharpe = maxId(results_frame, 'sharpe')
        max_sharpe_port = results_frame.iloc[id_sharpe]

    try:
        id_stdev = results_frame['stdev'].idxmin()
    except TypeError as exc:
        id_stdev = minId(results_frame, 'stdev')

    if id_stdev == np.NaN:
        id_stdev = minId(results_frame, 'stdev')

    try:
        min_vol_port = results_frame.iloc[id_stdev]
    except TypeError as exc:
        id_stdev = minId(results_frame, 'stdev')
        min_vol_port = results_frame.iloc[id_stdev]

    LOG.info('Max Sharpe ratio: \n%s' % str(max_sharpe_port))
    LOG.info('Min standard deviation: \n%s' % str(min_vol_port))
    db.connect()
    solved = Portfolio()
    max_item = parse_solved_portfolio(max_sharpe_port, stocks)
    min_item = parse_solved_portfolio(min_vol_port, stocks)
    solved.max_item = max_item
    solved.min_item = min_item
    solved.date = datetime.datetime.today()
    solved.total_sum = 0
    for stock in max_item.stocks:
        solved.total_sum += stock.value
    if gmean is None:
        solved.gmean = 0.0
    else:
        solved.gmean = gmean
    solved.save()
    db.close()
    return max_item.sharpe_ratio, solved._id
Exemple #5
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import random

import numpy as np
import pandas as pd
import platypus as pt

from bot.my_log import get_logger
from bot.mongo import mongo as db
from bot.mongo.Stock import Stock

LOG = get_logger('platypus')
db.connect()
all_stocks = list()
for s in Stock.objects():
    all_stocks.append(s)
db.close()


class ProblemPortfolio(pt.Problem):
    def __init__(self, cov_matrix, mean_daily_returns, days):
        super(ProblemPortfolio, self).__init__(nvars=15, nobjs=2, nconstrs=4)

        self.cov_matrix = cov_matrix
        self.mean_daily_returns = mean_daily_returns
        self.days = days
        self.types[:] = pt.Real(0.0, 1.0)
        self.constraints.__setitem__(0, "==1")
        self.constraints.__setitem__(1, "<=0.06")
        self.constraints.__setitem__(2, ">=0.02")
        self.constraints.__setitem__(3, "<=0.18")