HT_DCPHASE
real = HT_DCPHASE(close)
Plot
Working Example
from cloudquant.interfaces import Strategy
from collections import OrderedDict
import ktgfunc
import talib
class WE_HT_DCPHASE(Strategy):
def on_start(self, md, order, service, account):
# symbol and timestamp
print(self.symbol + ": " + service.time_to_string(service.system_time))
daily_bars = md.bar.daily(start=-100)
close = daily_bars.close
real = talib.HT_DCPHASE(close)
# get the date values
dates = service._context.market._storage.market_hours.keys()
dateList = []
for date in dates:
dateList.append(str(date.strftime('%Y-%m-%d')))
dates = sorted(dateList, reverse=True)[1:101]
dates.sort()
dict = OrderedDict()
dict['date'] = dates
dict['close'] = close
dict['real'] = real
symbol = 'HT_DCPHASE: ' + self.symbol
print ktgfunc.talib_table(symbol, 1, dict)
Console
MSFT: 2017-02-09 09:30:00.000000
HT_DCPHASE: MSFT | ||
---|---|---|
Input | Output | |
date | close | real |
2016-09-16 | 56.87 | nan |
2016-09-19 | 56.55 | nan |
2016-09-20 | 56.43 | nan |
2016-09-21 | 57.37 | nan |
2016-09-22 | 57.43 | nan |
2016-09-23 | 57.04 | nan |
2016-09-26 | 56.52 | nan |
2016-09-27 | 57.56 | nan |
2016-09-28 | 57.64 | nan |
2016-09-29 | 57.01 | nan |
2016-09-30 | 57.21 | nan |
2016-10-03 | 57.03 | nan |
2016-10-04 | 56.86 | nan |
2016-10-05 | 57.25 | nan |
2016-10-06 | 57.35 | nan |
2016-10-07 | 57.41 | nan |
2016-10-10 | 57.65 | nan |
2016-10-11 | 56.81 | nan |
2016-10-12 | 56.73 | nan |
2016-10-13 | 56.54 | nan |
2016-10-14 | 57.03 | nan |
2016-10-17 | 56.84 | nan |
2016-10-18 | 57.27 | nan |
2016-10-19 | 57.14 | nan |
2016-10-20 | 56.87 | nan |
2016-10-21 | 59.26 | nan |
2016-10-24 | 60.59 | nan |
2016-10-25 | 60.58 | nan |
2016-10-26 | 60.22 | nan |
2016-10-27 | 59.70 | nan |
2016-10-28 | 59.47 | nan |
2016-10-31 | 59.52 | nan |
2016-11-01 | 59.40 | nan |
2016-11-02 | 59.03 | nan |
2016-11-03 | 58.81 | nan |
2016-11-04 | 58.32 | nan |
2016-11-07 | 60.01 | nan |
2016-11-08 | 60.06 | nan |
2016-11-09 | 59.77 | nan |
2016-11-10 | 58.31 | nan |
2016-11-11 | 58.62 | nan |
2016-11-14 | 57.73 | nan |
2016-11-15 | 58.87 | nan |
2016-11-16 | 59.65 | nan |
2016-11-17 | 60.64 | nan |
2016-11-18 | 60.35 | nan |
2016-11-21 | 60.86 | nan |
2016-11-22 | 61.12 | nan |
2016-11-23 | 60.40 | nan |
2016-11-25 | 60.53 | nan |
2016-11-28 | 60.61 | nan |
2016-11-29 | 61.09 | nan |
2016-11-30 | 60.26 | nan |
2016-12-01 | 59.20 | nan |
2016-12-02 | 59.25 | nan |
2016-12-05 | 60.22 | nan |
2016-12-06 | 59.95 | nan |
2016-12-07 | 61.37 | nan |
2016-12-08 | 61.01 | nan |
2016-12-09 | 61.97 | nan |
2016-12-12 | 62.17 | nan |
2016-12-13 | 62.98 | nan |
2016-12-14 | 62.68 | nan |
2016-12-15 | 62.58 | 180.15 |
2016-12-16 | 62.30 | 174.80 |
2016-12-19 | 63.62 | 168.59 |
2016-12-20 | 63.54 | 154.27 |
2016-12-21 | 63.54 | 151.70 |
2016-12-22 | 63.55 | 153.50 |
2016-12-23 | 63.24 | 163.54 |
2016-12-27 | 63.28 | 172.52 |
2016-12-28 | 62.99 | 181.32 |
2016-12-29 | 62.90 | 190.28 |
2016-12-30 | 62.14 | 200.15 |
2017-01-03 | 62.58 | 205.10 |
2017-01-04 | 62.30 | 215.58 |
2017-01-05 | 62.30 | 220.07 |
2017-01-06 | 62.84 | 223.82 |
2017-01-09 | 62.64 | 233.30 |
2017-01-10 | 62.62 | 242.12 |
2017-01-11 | 63.19 | 250.28 |
2017-01-12 | 62.61 | 259.58 |
2017-01-13 | 62.70 | 281.16 |
2017-01-17 | 62.53 | 299.61 |
2017-01-18 | 62.50 | -19.49 |
2017-01-19 | 62.30 | -2.72 |
2017-01-20 | 62.74 | 23.65 |
2017-01-23 | 62.96 | 52.66 |
2017-01-24 | 63.52 | 68.23 |
2017-01-25 | 63.68 | 93.40 |
2017-01-26 | 64.27 | 119.97 |
2017-01-27 | 65.78 | 128.09 |
2017-01-30 | 65.13 | 134.91 |
2017-01-31 | 64.65 | 140.94 |
2017-02-01 | 63.58 | 149.89 |
2017-02-02 | 63.17 | 161.43 |
2017-02-03 | 63.68 | 174.73 |
2017-02-06 | 63.64 | 188.68 |
2017-02-07 | 63.43 | 209.98 |
2017-02-08 | 63.34 | 227.03 |