Exemplo n.º 1
0
def add_volatility_indicators(data: pd.DataFrame) -> pd.DataFrame:
    """Adds the volatility indicators.

    Parameters
    ----------
    data : pd.DataFrame
        A dataframe with daily stock values. Must include: open, high,
        low, close and volume. It should also be sorted in a descending
        manner.

    Returns
    -------
    pd.DataFrame
        The input dataframe with the indicators added.
    """
    bb = BollingerBands(data['close'])

    data.loc[:, 'bollinger_hband'] = bb.bollinger_hband()
    data.loc[:, 'bollinger_hband_indicator'] = bb.bollinger_hband_indicator()
    data.loc[:, 'bollinger_lband'] = bb.bollinger_lband()
    data.loc[:, 'bollinger_lband_indicator'] = bb.bollinger_lband_indicator()
    data.loc[:, 'bollinger_mavg'] = bb.bollinger_mavg()
    data.loc[:, 'bollinger_pband'] = bb.bollinger_pband()
    data.loc[:, 'bollinger_wband'] = bb.bollinger_wband()

    return data
Exemplo n.º 2
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    def get_signal(self, input_df, ticker, run_id):
        df = input_df.copy()

        indicator_bb = BollingerBands(
            close=df["Close"],
            window=self.indicator["window"],
            window_dev=self.indicator["window_dev"],
            fillna=self.indicator["fillna"],
        )

        # Add Bollinger Bands features
        df["bb_bbm"] = indicator_bb.bollinger_mavg()
        df["bb_bbh"] = indicator_bb.bollinger_hband()
        df["bb_bbl"] = indicator_bb.bollinger_lband()

        df["bb_bbhi"] = indicator_bb.bollinger_hband_indicator()
        df["bb_bbli"] = indicator_bb.bollinger_lband_indicator()
        df["bb_bbp"] = indicator_bb.bollinger_pband()

        row = df.iloc[-1]

        if row.bb_bbhi.item():
            sell_signal = {
                "ticker":
                ticker,
                "datetime":
                row.Date,
                "indicator":
                self.name,
                "param":
                self.param,
                "reason":
                "High BollingerBand percentage - currently at {}%".format(
                    int(row.bb_bbp.item() * 100.0)),
                "image":
                self.draw_image(df, ticker, run_id),
            }
        else:
            sell_signal = None

        if row.bb_bbli.item():
            buy_signal = {
                "ticker":
                ticker,
                "datetime":
                row.Date,
                "indicator":
                self.name,
                "param":
                self.param,
                "reason":
                "Low BollingerBand percentage - currently at {}%".format(
                    int(row.bb_bbp.item() * 100.0)),
                "image":
                self.draw_image(df, ticker, run_id),
            }
        else:
            buy_signal = None

        return buy_signal, sell_signal
def AddIndicators(df):
    # Add Simple Moving Average (SMA) indicators
    df["sma7"] = SMAIndicator(close=df["Close"], window=7,
                              fillna=True).sma_indicator()
    df["sma25"] = SMAIndicator(close=df["Close"], window=25,
                               fillna=True).sma_indicator()
    df["sma99"] = SMAIndicator(close=df["Close"], window=99,
                               fillna=True).sma_indicator()

    # Add Bollinger Bands indicator
    indicator_bb = BollingerBands(close=df["Close"], window=20, window_dev=2)
    df['bb_bbm'] = indicator_bb.bollinger_mavg()
    df['bb_bbh'] = indicator_bb.bollinger_hband()
    df['bb_bbl'] = indicator_bb.bollinger_lband()

    # Add Parabolic Stop and Reverse (Parabolic SAR) indicator
    indicator_psar = PSARIndicator(high=df["High"],
                                   low=df["Low"],
                                   close=df["Close"],
                                   step=0.02,
                                   max_step=2,
                                   fillna=True)
    df['psar'] = indicator_psar.psar()

    # Add Moving Average Convergence Divergence (MACD) indicator
    df["MACD"] = macd(close=df["Close"],
                      window_slow=26,
                      window_fast=12,
                      fillna=True)  # mazas

    # Add Relative Strength Index (RSI) indicator
    df["RSI"] = rsi(close=df["Close"], window=14, fillna=True)  # mazas

    return df
Exemplo n.º 4
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def add_volatility_ta(df: pd.DataFrame,
                      high: str,
                      low: str,
                      close: str,
                      fillna: bool = False,
                      colprefix: str = "") -> pd.DataFrame:
    """Add volatility technical analysis features to dataframe.

    Args:
        df (pandas.core.frame.DataFrame): Dataframe base.
        high (str): Name of 'high' column.
        low (str): Name of 'low' column.
        close (str): Name of 'close' column.
        fillna(bool): if True, fill nan values.
        colprefix(str): Prefix column names inserted

    Returns:
        pandas.core.frame.DataFrame: Dataframe with new features.
    """

    # Average True Range
    df[f'{colprefix}volatility_atr'] = AverageTrueRange(
        close=df[close], high=df[high], low=df[low], n=10,
        fillna=fillna).average_true_range()

    # Bollinger Bands
    indicator_bb = BollingerBands(close=df[close], n=20, ndev=2, fillna=fillna)
    df[f'{colprefix}volatility_bbm'] = indicator_bb.bollinger_mavg()
    df[f'{colprefix}volatility_bbh'] = indicator_bb.bollinger_hband()
    df[f'{colprefix}volatility_bbl'] = indicator_bb.bollinger_lband()
    df[f'{colprefix}volatility_bbw'] = indicator_bb.bollinger_wband()
    df[f'{colprefix}volatility_bbhi'] = indicator_bb.bollinger_hband_indicator(
    )
    df[f'{colprefix}volatility_bbli'] = indicator_bb.bollinger_lband_indicator(
    )

    # Keltner Channel
    indicator_kc = KeltnerChannel(close=df[close],
                                  high=df[high],
                                  low=df[low],
                                  n=10,
                                  fillna=fillna)
    df[f'{colprefix}volatility_kcc'] = indicator_kc.keltner_channel_central()
    df[f'{colprefix}volatility_kch'] = indicator_kc.keltner_channel_hband()
    df[f'{colprefix}volatility_kcl'] = indicator_kc.keltner_channel_lband()
    df[f'{colprefix}volatility_kchi'] = indicator_kc.keltner_channel_hband_indicator(
    )
    df[f'{colprefix}volatility_kcli'] = indicator_kc.keltner_channel_lband_indicator(
    )

    # Donchian Channel
    indicator_dc = DonchianChannel(close=df[close], n=20, fillna=fillna)
    df[f'{colprefix}volatility_dcl'] = indicator_dc.donchian_channel_lband()
    df[f'{colprefix}volatility_dch'] = indicator_dc.donchian_channel_hband()
    df[f'{colprefix}volatility_dchi'] = indicator_dc.donchian_channel_hband_indicator(
    )
    df[f'{colprefix}volatility_dcli'] = indicator_dc.donchian_channel_lband_indicator(
    )

    return df
Exemplo n.º 5
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def AddIndicators(df):
    # Add Bollinger Bands indicator
    indicator_bb = BollingerBands(close=df["Close"], window=20, window_dev=2)
    df['bb_bbm'] = indicator_bb.bollinger_mavg()
    df['bb_bbh'] = indicator_bb.bollinger_hband()
    df['bb_bbl'] = indicator_bb.bollinger_lband()

    return df
Exemplo n.º 6
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class TestBollingerBands(unittest.TestCase):
    """
    https://school.stockcharts.com/doku.php?id=technical_indicators:bollinger_bands
    """

    _filename = 'ta/tests/data/cs-bbands.csv'

    def setUp(self):
        self._df = pd.read_csv(self._filename, sep=',')
        self._indicator = BollingerBands(close=self._df['Close'],
                                         n=20,
                                         ndev=2,
                                         fillna=False)

    def tearDown(self):
        del (self._df)

    def test_mavg(self):
        target = 'MiddleBand'
        result = self._indicator.bollinger_mavg()
        pd.testing.assert_series_equal(self._df[target].tail(),
                                       result.tail(),
                                       check_names=False)

    def test_hband(self):
        target = 'HighBand'
        result = self._indicator.bollinger_hband()
        pd.testing.assert_series_equal(self._df[target].tail(),
                                       result.tail(),
                                       check_names=False)

    def test_lband(self):
        target = 'LowBand'
        result = self._indicator.bollinger_lband()
        pd.testing.assert_series_equal(self._df[target].tail(),
                                       result.tail(),
                                       check_names=False)

    def test_wband(self):
        target = 'WidthBand'
        result = self._indicator.bollinger_wband()
        pd.testing.assert_series_equal(self._df[target].tail(),
                                       result.tail(),
                                       check_names=False)

    def test_hband_indicator(self):
        target = 'CrossUp'
        result = self._indicator.bollinger_hband_indicator()
        pd.testing.assert_series_equal(self._df[target].tail(),
                                       result.tail(),
                                       check_names=False)

    def test_lband_indicator(self):
        target = 'CrossDown'
        result = self._indicator.bollinger_lband_indicator()
        pd.testing.assert_series_equal(self._df[target].tail(),
                                       result.tail(),
                                       check_names=False)
Exemplo n.º 7
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def bollinger_bands(df):
    indicator_bb = BollingerBands(close=df["Close"])
    df['bb_bbh'] = indicator_bb.bollinger_hband()
    df['bb_bbl'] = indicator_bb.bollinger_lband()
    df['bb_avg'] = indicator_bb.bollinger_mavg()
    df['bb_bbh_ind'] = indicator_bb.bollinger_hband_indicator()
    df['bb_bbl_ind'] = indicator_bb.bollinger_lband_indicator()
    df['bb_pband'] = indicator_bb.bollinger_pband()
    df['bb_wband'] = indicator_bb.bollinger_wband()
Exemplo n.º 8
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def bollinger_bands(data, days=20, std=2, price="Close"):
    df = data
    # Initialize Bollinger Bands Indicator
    indicator_bb = BollingerBands(close=df[price], window=days, window_dev=std)
    # Add Bollinger Bands features
    df["bb_ma"] = indicator_bb.bollinger_mavg()
    df["bb_high"] = indicator_bb.bollinger_hband()
    df["bb_low"] = indicator_bb.bollinger_lband()

    # Add Bollinger Band high indicator
    df["bb_bbhi"] = indicator_bb.bollinger_hband_indicator()

    # Add Bollinger Band low indicator
    df["bb_bbli"] = indicator_bb.bollinger_lband_indicator()

    return df
Exemplo n.º 9
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def analysis(df, ma_f, ma_s, period):
    df["ema_f"] = ta.ema(high=df.high, low=df.low, close=df.close, length=ma_f)
    df["ema_s"] = ta.ema(high=df.high, low=df.low, close=df.close, length=ma_s)

    df.fillna(0, inplace=True)

    df['s'] = (df['ema_s'] - df['ema_s'].shift(1)) >= 0
    df['f'] = (df['ema_f'] - df['ema_f'].shift(1)) >= 0

    df['buy_ema'] = df['ema_f'] > df['ema_s']
    df['sell_ema'] = df['ema_f'] <= df['ema_s']

    df['buy_change'] = (df['buy_ema'] != df['buy_ema'].shift(1)) & df['buy_ema']
    df['sell_change'] = (df['sell_ema'] != df['sell_ema'].shift(1)) & df['sell_ema']

    # df["RSI"] = ta.rsi(high=df.high, low=df.low, close=df.close, length=period)
    # df['RSIs'] = (df['RSI'] - df['RSI'].shift(1)) >= 0
    # df['RSI_ups'] = df.groupby(
    #     (df['RSIs'] != df['RSIs'].shift(1)).cumsum()).cumcount() + 1
    # df['adx'] = ta.adx(high=df.high, low=df.low, close=df.close, length=period)['ADX_%s' % period]
    # df['adx_s'] = (df['adx'] - df['adx'].shift(1)) >= 0
    # df['adx_ups'] = df.groupby(
    #     (df['adx_s'] != df['adx_s'].shift(1)).cumsum()).cumcount() + 1
    # df['ATR'] = df.ta.atr()

    indicator_bb = BollingerBands(close=df.close, window=10, window_dev=1.8)
    df['bb_bbm'] = indicator_bb.bollinger_mavg()
    df['b_m'] = (df['bb_bbm'] - df['bb_bbm'].shift(1)) >= 0
    df['bb_bbh'] = indicator_bb.bollinger_hband()
    df['bb_bbl'] = indicator_bb.bollinger_lband()
    df['bb_bbhi'] = indicator_bb.bollinger_hband_indicator()
    df['bb_bbli'] = indicator_bb.bollinger_lband_indicator()

    df['pvt'] = ta.pvt(close=df.close, volume=df.volume)
    df['pvt_t'] = (df['pvt'] - df['pvt'].shift(1)) >= 0

    df['close_variation'] = df['close'] - df['close'].shift(1)
    #
    # df = ema(df, ma_f, ma_s)
    df = rsi(df, period)
    df = momentum(df)

    df['trend'] = df['momentum_s'] & df['RSIs']

    return df
Exemplo n.º 10
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    def transform_one(self, entity_id, df: pd.DataFrame) -> pd.DataFrame:
        indicator_bb = BollingerBands(close=df["close"],
                                      window=20,
                                      window_dev=2)

        # Add Bollinger Bands features
        df["bb_bbm"] = indicator_bb.bollinger_mavg()
        df["bb_bbh"] = indicator_bb.bollinger_hband()
        df["bb_bbl"] = indicator_bb.bollinger_lband()

        # Add Bollinger Band high indicator
        df["bb_bbhi"] = indicator_bb.bollinger_hband_indicator()

        # Add Bollinger Band low indicator
        df["bb_bbli"] = indicator_bb.bollinger_lband_indicator()

        # Add Width Size Bollinger Bands
        df["bb_bbw"] = indicator_bb.bollinger_wband()

        # Add Percentage Bollinger Bands
        df["bb_bbp"] = indicator_bb.bollinger_pband()
        return df
Exemplo n.º 11
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def get_bollinger_bands(config, crypto):

    close_prices = crypto.prices
    dataframe = crypto.technical_indicators

    window = 20

    indicator_bb = BollingerBands(close=close_prices,
                                  window=window,
                                  window_dev=2)

    dataframe['Bollinger_Bands_Middle'] = indicator_bb.bollinger_mavg()
    dataframe['Bollinger_Bands_Upper'] = indicator_bb.bollinger_hband()
    dataframe['Bollinger_Bands_Lower'] = indicator_bb.bollinger_lband()

    generate_buy_sell_signals(
        lambda x, signal: signal['Close'].values[x] < signal[
            'Bollinger_Bands_Lower'].values[x], lambda x, signal: signal[
                'Close'].values[x] > signal['Bollinger_Bands_Upper'].values[x],
        dataframe, 'Bollinger_Bands')

    return dataframe
Exemplo n.º 12
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def GetPriceDataFromExchangeFinnHub(event, context):
    retVal = {}
    retVal["data"] = []

    # For debugging the input, write the EVENT to CloudWatch logs
    print(json.dumps(event))

    # Data is sent to Lambda via a HTTPS POST call. We want to get to the payload send by Snowflake
    event_body = event["body"]
    payload = json.loads(event_body)

    for row in payload["data"]:
        sflkRowRef = row[
            0]  # This is how Snowflake keeps track of data as it gets returned
        symbol = row[
            1]  # The data passed in from Snowflake that the input row contains.
        fromDate = row[2]
        toDate = row[3]

        # Will return URL without token to Snowflake for tracking
        URL = f'https://finnhub.io/api/v1/stock/candle?symbol={symbol}&resolution=D&from={fromDate}&to={toDate}'

        # Add our FinnHubAPI Key to the end of the URL.
        # This is in a new variable which will not be returned to Snowflake
        URLWithToken = f'{URL}&token={FinnHubAPI.TOKEN}'

        # GET data from the API
        httpData = requests.get(url=URLWithToken).json()

        # Convert to Pandas DataFrame
        df = pd.DataFrame(httpData)

        # Add the column names
        print("Adding column names")
        df.columns = [
            "Close", "High", "Low", "Open", "Status", "OpenTime", "Volume"
        ]

        # Set DateTime columns to correct type
        df['OpenTime'] = pd.to_datetime(df['OpenTime'], unit='ms')
        df['Open'] = df['Open'].astype(float)
        df['High'] = df['High'].astype(float)
        df['Low'] = df['Low'].astype(float)
        df['Close'] = df['Close'].astype(float)
        df['Volume'] = df['Volume'].astype(float)

        # Clean NaN values
        print("Cleaning NA values")
        df = dropna(df)

        # Calculate the Bollinger Bands indicator
        indicator_bb = BollingerBands(close=df["Close"], n=20, ndev=2)
        df['bb_bbm'] = indicator_bb.bollinger_mavg()
        df['bb_bbh'] = indicator_bb.bollinger_hband()
        df['bb_bbl'] = indicator_bb.bollinger_lband()
        df['bb_bbhi'] = indicator_bb.bollinger_hband_indicator()
        df['bb_bbli'] = indicator_bb.bollinger_lband_indicator()
        df['bb_bbw'] = indicator_bb.bollinger_wband()
        df['bb_bbp'] = indicator_bb.bollinger_pband()

        print("converting OHLC pandas to JSON. This does it as a string")
        buffer = df.to_json(orient="records")

        print("Interpret the JSON string into a dictionary for output")
        jsonResponse = json.loads(buffer)

        # Prepare the output response
        response = {}
        response["url"] = URL
        response["response"] = jsonResponse

        retVal["data"].append([sflkRowRef, response])

    # For debugging the output, write the RETurn VALue to CloudWatch logs
    # print(json.dumps(retVal))

    return retVal
Exemplo n.º 13
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    def handle(self, *args, **options):
        # import pdb
        # pdb.set_trace()
        if not options['update']:
            NSETechnical.objects.all().delete()
        symbols = Symbol.objects.all()
        for symbol in symbols:
            nse_history_data = NSEHistoricalData.objects.filter(
                symbol__symbol_name=symbol).order_by('timestamp')
            if not nse_history_data:
                continue
            nse_technical = pd.DataFrame(
                list(
                    nse_history_data.values('timestamp', 'open', 'high', 'low',
                                            'close', 'total_traded_quantity')))
            '''
                Moving average convergence divergence
            '''
            indicator_macd = MACD(close=nse_technical['close'],
                                  window_slow=26,
                                  window_fast=12,
                                  window_sign=9,
                                  fillna=False)
            nse_technical["trend_macd"] = indicator_macd.macd()
            nse_technical["trend_macd_signal"] = indicator_macd.macd_signal()
            nse_technical["trend_macd_diff"] = indicator_macd.macd_diff()
            '''
                Simple Moving Average
            '''
            nse_technical["trend_sma_fast"] = SMAIndicator(
                close=nse_technical['close'], window=12,
                fillna=False).sma_indicator()
            nse_technical["trend_sma_slow"] = SMAIndicator(
                close=nse_technical['close'], window=26,
                fillna=False).sma_indicator()
            '''
                Exponential Moving Average
            '''
            nse_technical["trend_ema_fast"] = EMAIndicator(
                close=nse_technical['close'], window=12,
                fillna=False).ema_indicator()
            nse_technical["trend_ema_slow"] = EMAIndicator(
                close=nse_technical['close'], window=26,
                fillna=False).ema_indicator()
            '''
                Ichimoku Indicator
            '''
            indicator_ichi = IchimokuIndicator(
                high=nse_technical['high'],
                low=nse_technical['low'],
                window1=9,
                window2=26,
                window3=52,
                visual=False,
                fillna=False,
            )
            nse_technical[
                "trend_ichimoku_conv"] = indicator_ichi.ichimoku_conversion_line(
                )
            nse_technical[
                "trend_ichimoku_base"] = indicator_ichi.ichimoku_base_line()
            nse_technical["trend_ichimoku_a"] = indicator_ichi.ichimoku_a()
            nse_technical["trend_ichimoku_b"] = indicator_ichi.ichimoku_b()
            indicator_ichi_visual = IchimokuIndicator(
                high=nse_technical['high'],
                low=nse_technical['low'],
                window1=9,
                window2=26,
                window3=52,
                visual=True,
                fillna=False,
            )
            nse_technical[
                "trend_visual_ichimoku_a"] = indicator_ichi_visual.ichimoku_a(
                )
            nse_technical[
                "trend_visual_ichimoku_b"] = indicator_ichi_visual.ichimoku_b(
                )
            '''
                Bollinger Band
            '''
            indicator_bb = BollingerBands(close=nse_technical['close'],
                                          window=20,
                                          window_dev=2,
                                          fillna=False)
            nse_technical["volatility_bbm"] = indicator_bb.bollinger_mavg()
            nse_technical["volatility_bbh"] = indicator_bb.bollinger_hband()
            nse_technical["volatility_bbl"] = indicator_bb.bollinger_lband()
            nse_technical["volatility_bbw"] = indicator_bb.bollinger_wband()
            nse_technical["volatility_bbp"] = indicator_bb.bollinger_pband()
            nse_technical[
                "volatility_bbhi"] = indicator_bb.bollinger_hband_indicator()
            nse_technical[
                "volatility_bbli"] = indicator_bb.bollinger_lband_indicator()
            '''
                Accumulation Distribution Index
            '''
            nse_technical["volume_adi"] = AccDistIndexIndicator(
                high=nse_technical['high'],
                low=nse_technical['low'],
                close=nse_technical['close'],
                volume=nse_technical['total_traded_quantity'],
                fillna=False).acc_dist_index()
            '''
                Money Flow Index
            '''
            nse_technical["volume_mfi"] = MFIIndicator(
                high=nse_technical['high'],
                low=nse_technical['low'],
                close=nse_technical['close'],
                volume=nse_technical['total_traded_quantity'],
                window=14,
                fillna=False,
            ).money_flow_index()
            '''
                Relative Strength Index (RSI)
            '''
            nse_technical["momentum_rsi"] = RSIIndicator(
                close=nse_technical['close'], window=14, fillna=False).rsi()
            '''
                Stoch RSI (StochRSI)
            '''
            indicator_srsi = StochRSIIndicator(close=nse_technical['close'],
                                               window=14,
                                               smooth1=3,
                                               smooth2=3,
                                               fillna=False)
            nse_technical["momentum_stoch_rsi"] = indicator_srsi.stochrsi()
            nse_technical["momentum_stoch_rsi_k"] = indicator_srsi.stochrsi_k()
            nse_technical["momentum_stoch_rsi_d"] = indicator_srsi.stochrsi_d()

            nse_technical.replace({np.nan: None}, inplace=True)
            nse_technical.replace([np.inf, -np.inf], None, inplace=True)
            list_to_create = []
            list_to_update = []
            for index in range(len(nse_history_data) - 1, -1, -1):
                data = nse_history_data[index]
                if data.technicals:
                    break
                technical = NSETechnical(
                    nse_historical_data=data,
                    trend_macd=nse_technical['trend_macd'][index],
                    trend_macd_signal=nse_technical['trend_macd_signal']
                    [index],
                    trend_macd_diff=nse_technical['trend_macd_diff'][index],
                    trend_sma_fast=nse_technical['trend_sma_fast'][index],
                    trend_sma_slow=nse_technical['trend_sma_slow'][index],
                    trend_ema_fast=nse_technical['trend_ema_fast'][index],
                    trend_ema_slow=nse_technical['trend_ema_slow'][index],
                    trend_ichimoku_conv=nse_technical['trend_ichimoku_conv']
                    [index],
                    trend_ichimoku_base=nse_technical['trend_ichimoku_base']
                    [index],
                    trend_ichimoku_a=nse_technical['trend_ichimoku_a'][index],
                    trend_ichimoku_b=nse_technical['trend_ichimoku_b'][index],
                    trend_visual_ichimoku_a=nse_technical[
                        'trend_visual_ichimoku_a'][index],
                    trend_visual_ichimoku_b=nse_technical[
                        'trend_visual_ichimoku_b'][index],
                    volatility_bbm=nse_technical['volatility_bbm'][index],
                    volatility_bbh=nse_technical['volatility_bbh'][index],
                    volatility_bbl=nse_technical['volatility_bbl'][index],
                    volatility_bbw=nse_technical['volatility_bbw'][index],
                    volatility_bbp=nse_technical['volatility_bbp'][index],
                    volatility_bbhi=nse_technical['volatility_bbhi'][index],
                    volatility_bbli=nse_technical['volatility_bbli'][index],
                    volume_adi=nse_technical['volume_adi'][index],
                    volume_mfi=nse_technical['volume_mfi'][index],
                    momentum_rsi=nse_technical['momentum_rsi'][index],
                    momentum_stoch_rsi=nse_technical['momentum_stoch_rsi']
                    [index],
                    momentum_stoch_rsi_k=nse_technical['momentum_stoch_rsi_k']
                    [index],
                    momentum_stoch_rsi_d=nse_technical['momentum_stoch_rsi_d']
                    [index])
                data.technicals = True
                list_to_update.append(data)
                list_to_create.append(technical)
            NSETechnical.objects.bulk_create(list_to_create)
            NSEHistoricalData.objects.bulk_update(list_to_update,
                                                  ['technicals'])
            print(f"Technicals updated for {symbol}")
Exemplo n.º 14
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 def _bollinger_bands(self, df, close):
     bb = BollingerBands(close=close)
     df['bb_bbm'] = bb.bollinger_mavg()
     df['bb_bbh'] = bb.bollinger_hband()
     df['bb_bbl'] = bb.bollinger_lband()
Exemplo n.º 15
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features_considered = [
    'Close', 'Volume', 'MA_short', 'MA_long', 'Wilders_EMA', 'bb_bbm',
    'bb_bbh', 'bb_bbl', 'bb_bbhi', 'bb_bbli'
]
# features_considered = ['Close', 'MA_short', 'MA_long', 'Wilders_EMA']
# Initialize Bollinger Bands Indicator
e = EquityData('data/SPY.csv', 'SPY')
indicator_bb = BollingerBands(close=e.close(), n=20, ndev=2)
e.data['MA_short'] = moving_average(e, window=history_size)
e.data['MA_long'] = moving_average(e, window=5)
e.data['Wilders_EMA'] = e.close().ewm(alpha=1 / history_size,
                                      adjust=False).mean()

# Add Bollinger Bands features
e.data['bb_bbm'] = indicator_bb.bollinger_mavg()
e.data['bb_bbh'] = indicator_bb.bollinger_hband()
e.data['bb_bbl'] = indicator_bb.bollinger_lband()
# Add Bollinger Band high indicator
e.data['bb_bbhi'] = indicator_bb.bollinger_hband_indicator()
# Add Bollinger Band low indicator
e.data['bb_bbli'] = indicator_bb.bollinger_lband_indicator()
e.data = e.data[21:]

EVALUATION_INTERVAL = int(e.data.shape[0] / BATCH_SIZE) * 2
features = e.data[features_considered]
assert (list(features)[0] == 'Close')
features.index = e.date()

# features.plot(subplots=True)
# plt.show()
Exemplo n.º 16
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def add_volatility_ta(
    df: pd.DataFrame,
    high: str,
    low: str,
    close: str,
    fillna: bool = False,
    colprefix: str = "",
    vectorized: bool = False,
) -> pd.DataFrame:
    """Add volatility technical analysis features to dataframe.

    Args:
        df (pandas.core.frame.DataFrame): Dataframe base.
        high (str): Name of 'high' column.
        low (str): Name of 'low' column.
        close (str): Name of 'close' column.
        fillna(bool): if True, fill nan values.
        colprefix(str): Prefix column names inserted
        vectorized(bool): if True, use only vectorized functions indicators

    Returns:
        pandas.core.frame.DataFrame: Dataframe with new features.
    """

    # Bollinger Bands
    indicator_bb = BollingerBands(close=df[close],
                                  window=20,
                                  window_dev=2,
                                  fillna=fillna)
    df[f"{colprefix}volatility_bbm"] = indicator_bb.bollinger_mavg()
    df[f"{colprefix}volatility_bbh"] = indicator_bb.bollinger_hband()
    df[f"{colprefix}volatility_bbl"] = indicator_bb.bollinger_lband()
    df[f"{colprefix}volatility_bbw"] = indicator_bb.bollinger_wband()
    df[f"{colprefix}volatility_bbp"] = indicator_bb.bollinger_pband()
    df[f"{colprefix}volatility_bbhi"] = indicator_bb.bollinger_hband_indicator(
    )
    df[f"{colprefix}volatility_bbli"] = indicator_bb.bollinger_lband_indicator(
    )

    # Keltner Channel
    indicator_kc = KeltnerChannel(close=df[close],
                                  high=df[high],
                                  low=df[low],
                                  window=10,
                                  fillna=fillna)
    df[f"{colprefix}volatility_kcc"] = indicator_kc.keltner_channel_mband()
    df[f"{colprefix}volatility_kch"] = indicator_kc.keltner_channel_hband()
    df[f"{colprefix}volatility_kcl"] = indicator_kc.keltner_channel_lband()
    df[f"{colprefix}volatility_kcw"] = indicator_kc.keltner_channel_wband()
    df[f"{colprefix}volatility_kcp"] = indicator_kc.keltner_channel_pband()
    df[f"{colprefix}volatility_kchi"] = indicator_kc.keltner_channel_hband_indicator(
    )
    df[f"{colprefix}volatility_kcli"] = indicator_kc.keltner_channel_lband_indicator(
    )

    # Donchian Channel
    indicator_dc = DonchianChannel(high=df[high],
                                   low=df[low],
                                   close=df[close],
                                   window=20,
                                   offset=0,
                                   fillna=fillna)
    df[f"{colprefix}volatility_dcl"] = indicator_dc.donchian_channel_lband()
    df[f"{colprefix}volatility_dch"] = indicator_dc.donchian_channel_hband()
    df[f"{colprefix}volatility_dcm"] = indicator_dc.donchian_channel_mband()
    df[f"{colprefix}volatility_dcw"] = indicator_dc.donchian_channel_wband()
    df[f"{colprefix}volatility_dcp"] = indicator_dc.donchian_channel_pband()

    if not vectorized:
        # Average True Range
        df[f"{colprefix}volatility_atr"] = AverageTrueRange(
            close=df[close],
            high=df[high],
            low=df[low],
            window=10,
            fillna=fillna).average_true_range()

        # Ulcer Index
        df[f"{colprefix}volatility_ui"] = UlcerIndex(
            close=df[close], window=14, fillna=fillna).ulcer_index()

    return df
Exemplo n.º 17
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from keras.layers import Conv1D, MaxPool1D, Bidirectional, LSTM, Dropout, TimeDistributed
from keras.layers import Dense, GlobalAveragePooling2D
from ta.trend import IchimokuIndicator
from sklearn.linear_model import LinearRegression
from ta import add_all_ta_features
from ta.utils import dropna
import matplotlib.pyplot as plt
filename = 'AAPL'
stock = pd.read_csv('Data/' + filename + '.csv')
indicator_bb = BollingerBands(close=stock["Close"], n=20, ndev=2)
macd = MACD(close=stock["Close"])
rsi = RSIIndicator(close=stock["Close"])
ichi = IchimokuIndicator(high=stock["High"], low=stock["Low"])
stock['macd'] = macd.macd()
stock['rsi'] = rsi.rsi()
stock['bb_bbm'] = indicator_bb.bollinger_mavg()
stock['bb_bbh'] = indicator_bb.bollinger_hband()
stock['bb_bbl'] = indicator_bb.bollinger_lband()
stock['ichi_a'] = ichi.ichimoku_a()
stock['ichi_b'] = ichi.ichimoku_b()
stock['ichi_base'] = ichi.ichimoku_base_line()
stock['ichi_conv'] = ichi.ichimoku_conversion_line()
stock = stock.fillna(0)
print(stock)
scaler = preprocessing.MinMaxScaler()
scaled_values = scaler.fit_transform(stock.iloc[:, 1:4])
stock.iloc[:, 1:4] = scaled_values

y_scaler = preprocessing.MinMaxScaler()
scaled_values = y_scaler.fit_transform(
    np.array(stock.iloc[:, 4]).reshape(-1, 1))
Exemplo n.º 18
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    df['ppo'] = ppo_indicator.ppo()

    roc_indicator = ROCIndicator(close = df["Close"], window = 12, fillna = False)
    df['roc'] = roc_indicator.roc()

    macd_indicator = MACD(close = df["Close"], window_slow = 20, window_fast = 12, window_sign = 9, fillna = False)
    df['macd'] = macd_indicator.macd()

    rsi_indicator = RSIIndicator(close = df["Close"], window = 14, fillna = False)
    df['rsi'] = rsi_indicator.rsi()

    aroon_indicator = AroonIndicator(close = df["Close"], window = 20, fillna = False)
    df['aroon'] = aroon_indicator.aroon_indicator()

    boll_indicator = BollingerBands(close = df["Close"], window = 20, window_dev = 2, fillna = False)
    df['boll_mavg'] = boll_indicator.bollinger_mavg()

    df.rename(columns = {"Close": "price"}, inplace=True)
    prices = df['price'].to_numpy()

    df['day_of_month'] = df.index.day
    df['day_of_week'] = df.index.dayofweek
    df['month'] = df.index.month

    df.dropna(inplace=True)
    df = df.drop(df.columns[[0, 1, 2, 4, 5]], axis=1)

    X_columns = ['price', 'kama', 'ppo', 'roc', 'macd', 'rsi', 'aroon', 'boll_mavg', 
                    'day_of_month', 'day_of_week', 'month']

    X_data = df.filter(X_columns)
Exemplo n.º 19
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figure, axis = plt.subplots(4, 3)
row = 0
column = 0

# Loop over the tickers
for ticker in stock_data_biotech.columns:
    # Initalise the DataFrame
    data_plot = pd.DataFrame(stock_data_biotech[ticker])

    # Initialize Bollinger Bands Indicator
    indicator_bb = BollingerBands(close=stock_data_biotech[ticker],
                                  window=20,
                                  window_dev=2)

    # Add Bollinger Bands features
    data_plot['bb_bbm'] = indicator_bb.bollinger_mavg()
    data_plot['bb_bbh'] = indicator_bb.bollinger_hband()
    data_plot['bb_bbl'] = indicator_bb.bollinger_lband()

    # Create the plot
    axis[row, column].plot(data_plot)
    axis[row, column].set_title(health_etfs_in_biotech[ticker]['long_name'],
                                fontsize=6)
    axis[row, column].set_xticks([])
    axis[row, column].set_yticks([])

    # Count a column further
    column += 1

    # If the column reaches the max, add another row
    if column == 3: