Exemplo n.º 1
0
def orders(update, context):
    client = Client(api_key=SKey, api_secret=PKey)
    data = client.futures_get_open_orders()
    if len(data) == 0:
        update.message.reply_text("Buddy, No Open Orders!")
    else:
        price = data[0]['price']
        side = data[0]['side']
        symbol = data[0]['symbol']
        qty = data[0]['origQty']
        a = qty + symbol
        data2 = client.futures_mark_price(symbol=symbol)
        currentprice = data2.get("markPrice")
        x = float(currentprice)
        xx = round(x, 3)
        ordertxt = "Open Orders:\nCurrent Price:{}USDT\n{} EXIT AT {} WITH {}"
        ordermsg = ordertxt.format(xx, a, price, side)
        update.message.reply_text(ordermsg)
Exemplo n.º 2
0
client.futures_change_leverage(symbol = symbol, leverage = leverage)
precision = client.get_symbol_info(symbol)['baseAssetPrecision']
precision = 3
#amount = money_per_trade/float(client.futures_mark_price(symbol =  symbol)['markPrice'])*leverage
#amount = "{:0.0{}f}".format(amount, precision)
amount = 0.01

current_tradeFlag = True
column_names = ['Time','Mean','SMA_3','SMA_10','SMA_50','signals','positions','current_position','Argent Fixe','Solde Net','%PnL','infos']
dfMarket = pd.DataFrame(columns = column_names)
launching_time = datetime.now()

#on s'assure de terminer le programme en ayant fini les transactions
while datetime.now() < (launching_time + duration) or  float(dfMarket.loc[dfMarket.index[-1], 'current_position']) != 0.0:
    apiMarkPrice = client.futures_mark_price(symbol =  symbol)
    time = datetime.fromtimestamp(apiMarkPrice['time']/1000).strftime("%Y-%m-%d %H:%M:%S")
    price = apiMarkPrice['markPrice']
    current_values = pd.Series([0]*len(column_names),column_names)

    dfMarket.loc[len(dfMarket)+1] = current_values

    dfMarket.loc[dfMarket.index[-1], 'Time'] = time
    dfMarket.loc[dfMarket.index[-1], 'Mean'] = price
    dfMarket['SMA_3']= dfMarket.iloc[:,1].rolling(window=20).mean()
    dfMarket['SMA_10']= dfMarket.iloc[:,1].rolling(window=100).mean()
    dfMarket['SMA_50']= dfMarket.iloc[:,1].rolling(window=300).mean()

    dfMarket.loc[dfMarket.index[-1], 'total'] = client.futures_account()['totalMarginBalance']
    dfMarket.loc[dfMarket.index[-1], 'current_position'] = client.futures_position_information()[0]['isolatedMargin']
    dfMarket.loc[dfMarket.index[-1], 'Argent Fixe']= client.futures_account()['maxWithdrawAmount']
Exemplo n.º 3
0
Arquivo: trader.py Projeto: haseab/FAB
class Trader():
    """
    Purpose is to trade live on the Binance Crypto Exchange

    Attributes
    -----------
    symbol: str
    client: Client object - From binance.py
    capital: float - represents how much money is in account
    leverage: float - how many multiples of your money you want to trade
    tf: int - timeframe
    df: pd.DataFrame - data that will be analyzed.
    Methods
    ----------
    load_account
    set_leverage
    set_timeframe
    get_position
    get_necessary_data
    set_asset
    make_row
    load_existing_asset
    start_trading

    Please look at each method for descriptions
    """
    def __init__(self, binance=True, qtrade=False, db=False, ib=False):
        if binance:
            self.binance = Client()
        # self.ftx = FtxClient()
        self.capital = None
        self.leverage = 1
        self.tf = None
        self.executor = TradeExecutor()
        self.loader = _DataLoader(db=db, qtrade=qtrade, ib=ib)
        self.illustrator = Illustrator()
        self.strategy = FabStrategy()
        self.order_history = pd.DataFrame()
        self.trade_replay = []
        self.precisions = {
            symbol_dic['symbol']: symbol_dic['quantityPrecision']
            for symbol_dic in self.loader.binance.futures_exchange_info()
            ['symbols']
        }

    def load_account(self, additional_balance: int = 0) -> str:
        """
        Sign in to account using API_KEY and using Binance API
        """
        # local_path_binance = os.path.dirname(os.path.dirname(os.path.abspath("__file__"))) + r"\local\binance_api.txt"
        # local_path_ftx = os.path.dirname(os.path.dirname(os.path.abspath("__file__"))) + r"\local\ftx_api.txt"
        # info_binance = pd.read_csv(local_path_binance).set_index('Name')
        # info_ftx = pd.read_csv(local_path_ftx).set_index('Name')

        API_KEY_BINANCE = config('API_KEY_BINANCE')
        API_SECRET_BINANCE = config('API_SECRET_BINANCE')

        # API_KEY_FTX = config('API_KEY_FTX')
        # API_SECRET_FTX  = config('API_SECRET_FTX')

        self.binance = Client(api_key=API_KEY_BINANCE,
                              api_secret=API_SECRET_BINANCE)
        # self.ftx = FtxClient(api_key=API_KEY_FTX, api_secret=API_SECRET_FTX)
        return "Connected to Binance"

    def get_capital(self, additional_balance=4944.2649865):
        initial_margin = float(
            self.binance.futures_account()['totalInitialMargin'])
        available_balance = float(
            self.binance.futures_account()['availableBalance'])
        self.capital = (initial_margin + available_balance +
                        additional_balance) * self.leverage
        return self.capital

    def load_futures_trading_history(self, start_time, end_time=None):
        df = pd.DataFrame()
        ranges = Helper.determine_timestamp_positions(start_time,
                                                      end_time,
                                                      limit=1)

        for index, timestamp in enumerate(ranges):
            try:
                df = df.append(
                    pd.DataFrame(
                        self.binance.futures_account_trades(
                            startTime=ranges[index],
                            endTime=ranges[index + 1])))
            except (IndexError) as e:
                pass
        return df.reset_index(drop=True)

    def get_tickers(self):
        tickers = pd.DataFrame(self.binance.futures_ticker())
        tickers = tickers.rename(
            {
                'lastPrice': 'close',
                'openPrice': 'open',
                'highPrice': 'high',
                'lowPrice': 'low',
                'openTime': 'timestamp'
            },
            axis=1)
        tickers['date'] = Helper.millisecond_timestamp_to_datetime(
            tickers['timestamp'])
        return tickers[[
            'symbol', 'timestamp', 'date', 'open', 'high', 'low', 'close',
            'volume'
        ]].set_index('symbol')

    def show_live_chart(self, symbol, tf, refresh_rate=1):
        df_tf_sma = self.show_current_chart(symbol, tf)
        while True:
            Helper.sleep(refresh_rate)
            clear_output(wait=True)
            df_tf_sma = self.show_current_chart(symbol, tf, data=df_tf_sma)

    def show_current_chart(self, symbol=None, tf=None, data=()):
        if len(data) == 0:
            data = self.set_asset(symbol,
                                  tf,
                                  max_candles_needed=375,
                                  futures=True)
        else:
            row = self.set_asset(symbol,
                                 tf,
                                 max_candles_needed=1,
                                 futures=True)
            if data['date'].iloc[-1] == row['date'].iloc[-1]:
                data = data[:-1].append(row)
            else:
                data = data.append(row)

        tf_data = data['tf'].iloc[0]
        df_tf = self.loader._timeframe_setter(
            data, tf // tf_data, keep_last_row=True) if tf != tf_data else data
        return self.illustrator.graph_df(df_tf, sma=False)

    def get_necessary_data(self,
                           symbol: str,
                           tf: int,
                           max_candles_needed: int = 235) -> pd.DataFrame:
        df = pd.DataFrame()
        start_datetime = str(
            Helper.datetime_from_tf(tf,
                                    daily_1m_candles=1440,
                                    max_candles_needed=max_candles_needed)[0])
        df = df.append(
            self.loader.get_binance_candles(symbol,
                                            tf,
                                            start_date=start_datetime))
        df['symbol'] = [symbol for _ in range(len(df))]
        return df.drop_duplicates()

    def get_necessary_data_futures(
            self,
            symbol: str,
            tf: int,
            max_candles_needed: int = 245) -> pd.DataFrame:
        """
        Gets the minimum necessary data to trade this asset.

        Note: This method is used as a way to tackle the 1000 candle limit that is currently on the Binance API.
        A discrete set of ~1000 group candles will be determined, and then the data will be extracted from each,
        using the _get_binance_futures_candles method, and then all of them will be merged together.

        Parameters:
        symbol: str             - Symbol of price ticker   Ex. "BTCUSDT", "ETHUSDT"
        tf: int                 - Timeframe wanted   Ex. 1, 3, 5, 77, 100
        max_candles_needed: int - Maximum candles needed in the desired timeframe     Ex. 231, 770, 1440

        :return pd.DataFrame of candlestick data

        """
        now = time.time()
        df = pd.DataFrame()
        ranges = Helper.determine_candle_positions(max_candles_needed, tf)
        for i in range(len(ranges)):
            try:
                df = df.append(
                    self.loader._get_binance_futures_candles(
                        symbol, tf, int(ranges[i]), int(ranges[i + 1]), now))
            except IndexError:
                pass
        df['symbol'] = [symbol for _ in range(len(df))]
        return df.drop_duplicates()

    def get_single_asset_signals(self,
                                 screener,
                                 symbol,
                                 tf,
                                 enter=True,
                                 shift=0):
        df = self.set_asset(symbol, tf, max_candles_needed=245)
        binance_df = int(df['tf'].iloc[0])
        df_tf = self.loader._timeframe_setter(df,
                                              tf // binance_df,
                                              keep_last_row=True,
                                              shift=shift)
        strat = FabStrategy()
        df_ma = strat.load_data(df_tf)
        return df_ma, screener._check_for_tf_signals(df_ma,
                                                     max_candle_history=10,
                                                     enter=enter)

    def set_asset(self,
                  symbol: str,
                  tf: int,
                  max_candles_needed: int = 245,
                  futures=False) -> pd.DataFrame:
        binance_tf = Helper.find_greatest_divisible_timeframe(tf)
        new_max_candles = max_candles_needed * (tf // binance_tf)
        if futures:
            df = self.get_necessary_data_futures(symbol, binance_tf,
                                                 new_max_candles)
            return df
        df = self.get_necessary_data(symbol, binance_tf, new_max_candles)
        self.df, self.tf, self.symbol = df, tf, symbol
        return df

    def get_current_trade_progress(self, key=()) -> pd.DataFrame:
        if len(key) == 0:
            key = self.key

        df = pd.DataFrame(self.binance.futures_position_information())
        df[['positionAmt', 'entryPrice',
            'markPrice']] = df[['positionAmt', 'entryPrice',
                                'markPrice']].astype(float)
        df = df[df['positionAmt'] != 0][[
            'symbol', 'positionAmt', 'entryPrice', 'markPrice'
        ]].reset_index(drop=True)
        df = df.rename(
            {
                'positionAmt': 'size',
                'entryPrice': 'enter price',
                'markPrice': 'current price'
            },
            axis=1)
        df['side'] = np.where(df['size'] > 0, 'BUY', 'SELL')
        df['size'] = df['size'].abs()
        df['usd size'] = df['size'] * df['enter price']

        short_profitability = (
            (0.9996**2) *
            (2 - df['current price'] / df['enter price']) - 1) * 100
        long_profitability = (
            (0.9996**2) * (df['current price'] / df['enter price']) - 1) * 100

        df['pnl (%)'] = np.where(df['side'] == 'SELL', short_profitability,
                                 long_profitability)
        df['pnl (USD)'] = df['usd size'] * (df['pnl (%)'] / 100)
        df['share'] = df['usd size'] / df['usd size'].sum()
        df = df.round(2)
        df = df[[
            'symbol', 'side', 'enter price', 'size', 'usd size',
            'current price', 'pnl (%)', 'pnl (USD)', 'share'
        ]]

        current_positions = df

        if type(key) != type(None):
            recent_signals = pd.read_csv(
                r"C:\Users\haseab\Desktop\Python\PycharmProjects\FAB\local\Workers\Recent signals.txt"
            )
            current_positions['tf'] = [
                int(recent_signals.set_index('symbol').loc[symbol, 'tf'])
                for symbol in current_positions['symbol'].values
            ]
            current_positions = self.key[['win loss rate',
                                          'avg pnl']].reset_index().merge(
                                              current_positions,
                                              on=['symbol', 'tf'])

        self.current_positions = current_positions
        return current_positions

    def _check_trade_close(self, screener, current_positions):
        trades_to_close = []

        for symbol, tf in current_positions.reset_index().set_index(
            ['symbol', 'tf']).index:
            try:
                df_tf = screener.df_dic[(symbol, tf)]
                df_ma = self.strategy.load_data(df_tf)
                display(Markdown(f"## {symbol} {tf}"))
                display(self.illustrator.graph_df(df_ma[-50:], flat=True))
                enter_signal, enter_x_last_row, *rest = screener._check_for_tf_signals(
                    df_tf, max_candle_history=10, enter=True)
                close_signal, exit_x_last_row, *rest = screener._check_for_tf_signals(
                    df_tf, max_candle_history=10, enter=False)

                self.df_tf, self.close_signal, self.exit_x_last_row = df_tf, close_signal, exit_x_last_row,

                if close_signal:
                    # raise Exception(close_signal, exit_x_last_row, enter_x_last_row)
                    if enter_x_last_row and exit_x_last_row < enter_x_last_row:
                        continue

                    last_entry_date = pd.Timestamp(
                        self.recent_signals.reset_index().set_index(
                            ['symbol', 'tf']).loc[(symbol, tf), 'date'])
                    last_exit_date = self.df['date'].iloc[self.exit_x_last_row]
                    if last_entry_date > last_exit_date:
                        print('failed')
                        continue

                    trades_to_close.append(symbol)
                    print(f'{symbol} Trade Closed')
            except AttributeError as e:
                return []

        return trades_to_close

    def trade_free_capital(self, executor, current_positions,
                           remaining_to_invest, trades_to_enter):
        print("-----------------------------------------------")
        print(f"Free capital: {remaining_to_invest} USD")
        print("-----------------------------------------------", end="\n\n\n")
        final_trades_to_enter = self.check_against_max_trade_size(
            trades_to_enter, current_positions, self.max_trade_size)
        self.order_history = self.order_history.append(
            executor.enter_market(client=self.binance,
                                  symbol_side_rule=final_trades_to_enter,
                                  remaining_capital=remaining_to_invest,
                                  number_of_trades=len(trades_to_enter),
                                  reason='free_capital',
                                  max_trade_size=self.max_trade_size))
        display(self.order_history.tail(len(trades_to_enter)))
        self.order_history.to_csv("FAB Order History.csv")
        self.trade_replay.append(
            self.get_current_trade_progress(printout=False))

    def calculate_remaining_capital(self, current_positions, capital):
        total_invested = current_positions['usd size'].sum(
        ) if len(current_positions) > 0 else 0
        remaining_to_invest = capital - total_invested
        return remaining_to_invest

    def get_positions_amount(self,
                             list_of_symbols: list,
                             full_close=False,
                             divide_by=1,
                             max_trades=3) -> list:
        """
        Gets the total amount of current position for a given symbol
        Parameters:
        ------------
        symbol: str
            Ex. "BTCUSDT"
                "ETHUSDT"

        Returns float
            Ex. If a 1.000 BTC position is open, it will return 1.0
        """
        # [{'symbol':'CHRUSDT', 'positionAmt':1}]
        position_values = {}
        for symbol in list_of_symbols:
            last_price = float(
                self.binance.futures_mark_price(symbol=symbol)['markPrice'])

            for coin_futures_info in self.binance.futures_position_information(
            ):
                if coin_futures_info['symbol'] == symbol:
                    amount = float(coin_futures_info["positionAmt"])
                    amount = round(amount, self.precisions[symbol])
                    if divide_by > 1:
                        amount = round(amount - amount / divide_by,
                                       self.precisions[symbol])
                        position_values[
                            symbol] = amount if amount > 0 else 10**(
                                -self.precisions[symbol])
                    if full_close:
                        position_values[symbol] = amount
                    else:
                        return position_values
        return position_values

    def get_key(self,
                essential_metrics,
                win_loss_threshold=0.350,
                pnl_threshold=1.025,
                data_point_threshold=5):
        key = essential_metrics[
            essential_metrics['amount of data'] >= data_point_threshold]
        key = key[key['avg pnl'] > pnl_threshold]
        key = key[key['win loss rate'] > win_loss_threshold]
        key['win loss rate'] = key['win loss rate'].round(1)
        key['wnl drawdown'] = 0.4 * key['win loss rate'] + 0.6 * key[
            'longest drawdown']
        master_key = key.reset_index().set_index(['symbol', 'tf']).sort_values(
            'wnl drawdown', ascending=False)
        # master_key = key.reset_index().set_index(['symbol', 'tf']).sort_values(by=['win loss rate', 'avg pnl'], ascending=[False, False])
        self.key = master_key
        return master_key

    def _profit_optimization(self, key, current_positions, trades_to_enter,
                             number_of_trades):
        """
        Returns:
            final_trades_to_enter: Ex. [('ZILUSDT', "Short", 'Rule 2'), ('BTCUSDT', 'Long', 'Rule 1'), ("ETHUSDT", "Short", 'Rule 3')]
            trades_to_close:       Ex. ['ADAUSDT']
        """
        print()
        print("Optimizing Trades:... ")

        temp_metrics = key.reset_index().set_index(
            ['symbol', 'side', 'rule no'])
        trades_of_interest = [(symbol,
                               int(temp_metrics.loc[(symbol, side, rule),
                                                    'tf']))
                              for symbol, side, rule in trades_to_enter
                              if (symbol, side, rule) in temp_metrics.index]

        if not trades_of_interest:
            print("Didn't make it past key filter", end='\n\n')
            return [], []

        current_position_symbols_tf_pair = Helper().nparray_to_tuple(
            current_positions.reset_index()[['symbol', 'tf']].values)

        all_symbols = list(
            set(trades_of_interest).union(
                set(current_position_symbols_tf_pair)))

        self.current_position_symbols_tf_pair, self.trades_of_interest, self.all_symbols = current_position_symbols_tf_pair, trades_of_interest, all_symbols

        self.top_x_symbols = sorted(
            all_symbols,
            key=lambda x: (key.loc[x, 'win loss rate'], key.loc[x, 'avg pnl']),
            reverse=True)[:number_of_trades]

        partial_trades_to_enter = list(
            set(self.top_x_symbols).intersection(
                set(trades_of_interest)).difference(
                    set(current_position_symbols_tf_pair)))
        trades_to_close = list(
            set(current_position_symbols_tf_pair).difference(
                set(self.top_x_symbols)))
        trades_to_close = [symbol for symbol, tf in trades_to_close]

        final_trades_to_enter = [
            (symbol, side, rule)
            for (symbol,
                 tf), (symbol, side,
                       rule) in zip(trades_of_interest, trades_to_enter)
            if (symbol, tf) in partial_trades_to_enter
        ]

        for tup in trades_of_interest:
            if tup in final_trades_to_enter:
                raise Exception(tup, trades_of_interest, final_trades_to_enter)

        return trades_to_close, final_trades_to_enter

    def get_dividing_factor(self, current_positions, final_trades_to_enter,
                            number_of_trades):
        dividing_factor = (len(current_positions) +
                           len(final_trades_to_enter)) / len(current_positions)
        minimum_threshold = current_positions['usd size'].sum() * 0.95 // len(
            current_positions)
        if dividing_factor > 1 and minimum_threshold > (
                self.capital) // number_of_trades:
            print(minimum_threshold, (self.capital) // number_of_trades)
            return dividing_factor
        return 1

    def optimize_trades(self, executor, current_positions, trades_to_enter,
                        number_of_trades):
        if len(current_positions) != 0:
            self.position_capital = self.get_capital()
            trades_to_close, final_trades_to_enter = self._profit_optimization(
                self.key, current_positions, trades_to_enter, number_of_trades)

            if trades_to_close:
                self.order_history = self.order_history.append(
                    executor.exit_market(self.binance,
                                         self.get_positions_amount(
                                             trades_to_close, full_close=True),
                                         reason='lower rank'))
                display(self.order_history)
                current_positions = self.get_current_trade_progress(
                    printout=False)

            if final_trades_to_enter:
                dividing_factor = self.get_dividing_factor(
                    current_positions, final_trades_to_enter, number_of_trades)
                positions_amount = self.get_positions_amount(
                    current_positions['symbol'].values,
                    divide_by=dividing_factor,
                    max_trades=number_of_trades)

                if positions_amount:
                    self.order_history = self.order_history.append(
                        executor.exit_market(self.binance,
                                             positions_amount,
                                             reason='making space'))
                self.position_capital = self.get_capital()
                final_trades_to_enter = self.check_against_max_trade_size(
                    final_trades_to_enter, current_positions,
                    self.max_trade_size)
                self.remaining_capital = self.calculate_remaining_capital(
                    current_positions, self.position_capital)
                self.order_history = self.order_history.append(
                    executor.enter_market(self.binance,
                                          final_trades_to_enter,
                                          self.remaining_capital,
                                          len(final_trades_to_enter),
                                          reason='higher rank',
                                          max_trade_size=self.max_trade_size))
                display(self.order_history)
            else:
                print("No Trades made")

        self.trades_to_close, self.final_trades_to_enter = trades_to_close, final_trades_to_enter
        self.order_history.to_csv("FAB Order History.csv")
        self.trade_replay.append(
            self.get_current_trade_progress(printout=False))

    def close_any_old_trades(self, screener, executor, current_positions):
        if len(current_positions) == 0:
            return False
        trades_to_close = self._check_trade_close(screener, current_positions)
        if trades_to_close:
            self.order_history = self.order_history.append(
                executor.exit_market(self.binance,
                                     self.get_positions_amount(
                                         trades_to_close, full_close=True),
                                     reason='trade closed'))

    def update_trades_to_enter(self, current_positions, trades_to_enter):
        if len(trades_to_enter) == 0:
            trades_to_enter = [(symbol, self.executor.dic[side], None)
                               for symbol, side in current_positions[
                                   ['symbol', 'side']].values]
        return trades_to_enter

    def check_against_max_trade_size(self, trades_to_enter, current_positions,
                                     max_trade_size):
        final_trades_to_enter = []
        for symbol, side, rule in trades_to_enter:
            if symbol in current_positions[
                    'symbol'].values and current_positions.set_index(
                        'symbol').loc[symbol,
                                      'usd size'] >= max_trade_size * 0.99:
                print('worked')
                continue
            final_trades_to_enter.append((symbol, side, rule))
        return final_trades_to_enter

    def monitor_fab(self,
                    screener,
                    df_metrics,
                    tfs,
                    number_of_trades=3,
                    leverage=1,
                    recency=-1,
                    additional_balance=0,
                    max_trade_size=None):
        # self.order_history = pd.DataFrame()
        self.load_account()
        executor = self.executor
        self.leverage = leverage

        essential_metrics = Helper.drop_extra_delays(df_metrics,
                                                     screener.tf_delay_match)
        self.starting_capital = self.get_capital(
            additional_balance=additional_balance)
        self.max_trade_size = max_trade_size
        self.key = self.get_key(essential_metrics)
        # self.key.to_csv ('Optimization Function Key.csv')

        now = Helper.current_minute_datetime()
        while True:
            if datetime.now() >= now + pd.Timedelta(1, 'minute'):
                clear_output(wait=True)
                print("Current time: \t", datetime.now(), end='\n\n')

                current_positions = self.get_current_trade_progress(
                    key=self.key)
                if len(current_positions) > number_of_trades:
                    raise Exception(
                        f"You have more than {number_of_trades} active trades! Close first"
                    )
                if current_positions['usd size'].sum(
                ) > self.starting_capital * 1.5:
                    raise Exception('We are too overexposed!',
                                    current_positions['usd size'].sum())

                self.close_any_old_trades(screener, executor,
                                          current_positions)

                remaining_capital = self.calculate_remaining_capital(
                    current_positions, self.capital)

                ## trades_to_enter is a list of lists (Ex. [('BANDUSDT', 'Short', 'Rule2'), ('BCHUSDT', 'Short', 'Rule 1')]
                ## df_recent_signals is a regular screener dataframe

                trades_to_enter, recent_signals = screener.top_trades(
                    trader=self,
                    df_metrics=df_metrics,
                    tfs=tfs,
                    n=number_of_trades,
                    recency=recency)

                self.trades_to_enter, self.recent_signals = trades_to_enter, recent_signals

                print("Signals:")
                display(recent_signals)

                trades_left = number_of_trades - len(current_positions)

                if remaining_capital > 100 and trades_left > 0 and trades_to_enter:
                    self.trade_free_capital(executor, current_positions,
                                            remaining_capital, trades_to_enter)

                elif remaining_capital > 100 and len(current_positions) != 0:
                    trades_to_enter = self.update_trades_to_enter(
                        current_positions=current_positions,
                        trades_to_enter=trades_to_enter)
                    self.trade_free_capital(executor, current_positions,
                                            remaining_capital, trades_to_enter)
                elif not trades_to_enter:
                    Helper.sleep(60)
                    now = Helper.current_minute_datetime()
                    continue
                else:
                    print("Leverage: ", self.leverage)
                    print("Trades to Enter: ", trades_to_enter)
                    print("Max Trades: ", number_of_trades)
                    self.optimize_trades(executor, current_positions,
                                         trades_to_enter, number_of_trades)
                Helper.sleep(60)
                now = Helper.current_minute_datetime()
                print()
            Helper.output_loading()