1063 lines
47 KiB
Python
1063 lines
47 KiB
Python
import pandas as pd
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from stock.analysis.Common import Common
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from stock.analysis.Stochastic import Stochastic
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from stock.analysis.RSI import RSI
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from stock.analysis.MACD import MACD
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from stock.analysis.IchimokuCloud import IchimokuCloud
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class BuySellChecker:
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common = None
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stochastic = None
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rsi = None
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macd = None
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ichimokuCloud = None
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BUY_COUNT = None
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def __init__(self):
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self.common = Common()
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self.stochastic = Stochastic()
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self.rsi = RSI()
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self.macd = MACD()
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self.ichimokuCloud = IchimokuCloud()
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self.BUY_COUNT = 0
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return
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def isYangbong(self, data, i):
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if data['close'][i] > data['open'][i]:
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return True
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else:
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if data['low'][i] < data['close'][i] == data['open'][i] == data['high'][i]:
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return True
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if data['low'][i] < data['open'][i] == data['close'][i] < data['high'][i]:
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return True
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return False
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def isUmbong(self, data, i):
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if data['close'][i] < data['open'][i]:
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return True
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else:
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if data['low'][i] == data['close'][i] == data['open'][i] < data['high'][i]:
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return True
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if data['low'][i] < data['open'][i] == data['close'][i] < data['high'][i]:
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return True
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return False
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# 지난 1시간 30분 동안 12분 선이 20분 선위에 20분 이상 있었는지 체크
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def check_12_over_20_for_30(self, data, i, default=90):
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if i - default < 381:
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return False
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check_12_over_20_for_30 = False
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for c in range(i - default, i - 20):
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if data['avg20'][c] < data['avg20'][i]:
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value = [1 if data['avg20'][d] < data['avg12'][d] else 0 for d in range(c, c + 20)]
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if len(value) == 20 and sum(value) == 20:
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check_12_over_20_for_30 = True
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break
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return check_12_over_20_for_30
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# 지난 1시간 동안 3, 6, 9, 12분 선이 10분 이상 20분 선 아래 있었는지 체크
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def check_under_20_for_10(self, data, i, within=60, during=10):
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if i - within < 381:
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return False
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check_under_20_for_10 = False
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for c in range(i - within, i - during):
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value = [
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1 if max(data['avg3'][d], data['avg6'][d], data['avg9'][d], data['avg12'][d]) < data['avg20'][d] else 0
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for d in range(c, c + during)]
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if len(value) == during and sum(value) == during:
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check_under_20_for_10 = True
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break
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return check_under_20_for_10
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def max_min_avg(self, data, i):
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return max(data['avg3'][i], data['avg6'][i], data['avg9'][i], data['avg12'][i], data['avg20'][i]) - min(
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data['avg3'][i], data['avg6'][i], data['avg9'][i], data['avg12'][i], data['avg20'][i])
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def check_inverse_arrangement_before(self, data, i, within=30, during=5):
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if i - within < 381:
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return False
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inverse_arrangement = False
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for c in range(i - within, i - during):
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value = [
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1 if data['avg3'][d] < data['avg6'][d] < data['avg9'][d] < data['avg12'][d] < data['avg20'][d] else 0
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for d in range(c, c + during)]
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if len(value) == during and sum(value) == during - 1:
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inverse_arrangement = True
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break
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return inverse_arrangement
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def checkUpDirection(self, data, i):
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# 0: 무추세, -1: 하락 추세, 1: 상승 추세
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close = data['close'][i]
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# up_count = sum([1 if data['high'][c] < close else 0 for c in range(i-20, i)])
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# down_count = sum([1 if close < data['low'][c] else 0 for c in range(i - 20, i)])
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lagging_change = sum([1 if data['laggingSpan'][c] < data['changeLine'][c] else 0 for c in range(i - 20, i)])
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change_lagging = sum([1 if data['laggingSpan'][c] > data['changeLine'][c] else 0 for c in range(i - 20, i)])
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if lagging_change > 10:
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return 1
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if change_lagging == 20:
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return -1
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return 0
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def getBuyPriceAndWeight(self, data, i):
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buy, weight, type = -1, -1, -1
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START_TIME_INDEX = 0
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for c in range(370, len(data.index)):
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if data.index[c].strftime("%H:%M:%S") == "09:01:00":
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START_TIME_INDEX = c
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break
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if START_TIME_INDEX + 10 < i < START_TIME_INDEX + 350:
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# 매수 분석
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if data['macd'][i] < -7:
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buy = max(data["open"][i], data["close"][i])
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weight = 1
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type = 1
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return buy, weight, type
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"""
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if data['changeLine'][i - 1] <= data['baseLine'][i - 1] and data['baseLine'][i] < data['changeLine'][i]:
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changeLine_count = sum([1 if data['changeLine'][c] <= data['baseLine'][c] else 0 for c in range(i-30, i-10)])
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if changeLine_count >= 15:
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changeLine_count = sum([1 if data['changeLine'][c] <= data['baseLine'][c] else 0 for c in range(i-10, i)])
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if changeLine_count >= 7:
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buy = min(data["open"][i], data["close"][i])
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weight = 1
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type = 1
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return buy, weight, type
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"""
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"""
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if i > 381 + 26:
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if data['laggingSpan'][i-1] < data['avg3'][i-1] and data['avg3'][i] < data['laggingSpan'][i]:
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if self.checkUpDirection(data, i) == 1:
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avg20_line = sum([1 if data['avg20'][c] < data['avg20'][c-1] else 0 for c in range(i - 10, i)])
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if avg20_line < 10:
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if data["macd"][i] < 0:
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buy = min(data["open"][i], data["close"][i])
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weight = 1
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type = 1
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return buy, weight, type
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"""
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return buy, weight, type
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def getSellPriceAndWeight(self, data, i):
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sell, weight, type = -1, -1, -1
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START_TIME_INDEX = 0
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for c in range(370, len(data.index)):
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if data.index[c].strftime("%H:%M:%S") == "09:01:00":
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START_TIME_INDEX = c
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break
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if i > START_TIME_INDEX:
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# 매도 분석
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if data['changeLine'][i - 1] >= data['laggingSpan'][i - 1] and data['laggingSpan'][i] < data['changeLine'][
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i]:
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changeLine_count = sum(
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[1 if data['changeLine'][c] <= data['laggingSpan'][c] else 0 for c in range(i - 20, i)])
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if changeLine_count >= 17:
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sell = min(data["open"][i], data["close"][i])
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weight = 1
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type = 1
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return sell, weight, type
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return sell, weight, type
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def getBuyPriceAndWeight_122630(self, data, i):
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buy, weight, type = -1, -1, -1
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START_TIME_INDEX = 0
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for c in range(370, len(data.index)):
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if data.index[c].strftime("%H:%M:%S") == "09:01:00":
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START_TIME_INDEX = c
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break
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if START_TIME_INDEX + 10 < i < START_TIME_INDEX + 350:
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# 매수 분석
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if data['macd'][i] < -50:
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buy = max(data["open"][i], data["close"][i])
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weight = 1
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type = 1
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return buy, weight, type
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"""
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if data['changeLine'][i - 1] <= data['baseLine'][i - 1] and data['baseLine'][i] < data['changeLine'][i]:
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changeLine_count = sum([1 if data['changeLine'][c] <= data['baseLine'][c] else 0 for c in range(i-30, i-10)])
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if changeLine_count >= 15:
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changeLine_count = sum([1 if data['changeLine'][c] <= data['baseLine'][c] else 0 for c in range(i-10, i)])
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if changeLine_count >= 7:
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buy = min(data["open"][i], data["close"][i])
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weight = 5
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type = 1
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return buy, weight, type
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"""
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"""
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if i > 381 + 26:
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if data['laggingSpan'][i-1] < data['avg3'][i-1] and data['avg3'][i] < data['laggingSpan'][i]:
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if self.checkUpDirection(data, i) == 1:
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avg20_line = sum([1 if data['avg20'][c] < data['avg20'][c-1] else 0 for c in range(i - 10, i)])
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if avg20_line < 10:
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if data["macd"][i] < 0:
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buy = min(data["open"][i], data["close"][i])
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weight = 1
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type = 1
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return buy, weight, type
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"""
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return buy, weight, type
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def getSellPriceAndWeight_122630(self, data, i):
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sell, weight, type = -1, -1, -1
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START_TIME_INDEX = 0
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for c in range(370, len(data.index)):
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if data.index[c].strftime("%H:%M:%S") == "09:01:00":
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START_TIME_INDEX = c
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break
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if i > START_TIME_INDEX:
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# 매도 분석
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if data['changeLine'][i - 1] >= data['laggingSpan'][i - 1] and data['laggingSpan'][i] < data['changeLine'][
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i]:
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changeLine_count = sum(
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[1 if data['changeLine'][c] <= data['laggingSpan'][c] else 0 for c in range(i - 20, i)])
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if changeLine_count >= 17:
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sell = min(data["open"][i], data["close"][i])
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weight = 1
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type = 1
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return sell, weight, type
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return sell, weight, type
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def analyze(self, result):
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# 기본 캔들 정보
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open = result["open"]
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close = result["close"]
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high = result["high"]
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low = result["low"]
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vol = result["vol"]
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label = result["label"]
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# 이동 평균
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close_df = pd.DataFrame(close)
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avg3_list = close_df.rolling(window=3).mean().fillna(close[0]).values.tolist()
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avg3 = [item[0] for item in avg3_list]
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avg6_list = close_df.rolling(window=6).mean().fillna(close[0]).values.tolist()
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avg6 = [item[0] for item in avg6_list]
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avg9_list = close_df.rolling(window=9).mean().fillna(close[0]).values.tolist()
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avg9 = [item[0] for item in avg9_list]
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avg12_list = close_df.rolling(window=12).mean().fillna(close[0]).values.tolist()
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avg12 = [item[0] for item in avg12_list]
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avg20_list = close_df.rolling(window=20).mean().fillna(close[0]).values.tolist()
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avg20 = [item[0] for item in avg20_list]
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open_df = pd.DataFrame(close)
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disparity_avg5_list = (open_df / close_df.rolling(window=5).mean()).values.tolist()
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disparity_avg5 = [item[0] for item in disparity_avg5_list]
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disparity_avg10_list = (open_df / close_df.rolling(window=10).mean()).values.tolist()
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disparity_avg10 = [item[0] for item in disparity_avg10_list]
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disparity_avg20_list = (open_df / close_df.rolling(window=20).mean()).values.tolist()
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disparity_avg20 = [item[0] for item in disparity_avg20_list]
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disparity_avg60_list = (open_df / close_df.rolling(window=60).mean()).values.tolist()
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disparity_avg60 = [item[0] for item in disparity_avg60_list]
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disparity_avg120_list = (open_df / close_df.rolling(window=120).mean()).values.tolist()
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disparity_avg120 = [item[0] for item in disparity_avg120_list]
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# 볼린져 밴드
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df = pd.DataFrame(close)
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max20 = df.rolling(window=20).mean()
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stddev20 = df.rolling(window=20).std()
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upper_df = max20 + (stddev20 * 2) # 상단 볼린저 밴드
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lower_df = max20 - (stddev20 * 2) # 하단 볼린저 밴드
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upper, lower = [], []
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for i in range(len(upper_df)):
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if i < 10:
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upper.append(upper_df.values[0][0])
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lower.append(lower_df.values[0][0])
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else:
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upper.append(upper_df.values[i][0])
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lower.append(lower_df.values[i][0])
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point_temp = result["time"]
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STOCK = []
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for i in range(len(open)):
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STOCK.append({'volume': vol[i], 'close': close[i], 'open': open[i], 'high': high[i], 'low': low[i],
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'avg20': avg20[i]})
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# stochastic
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stochastic_df = self.stochastic.apply(STOCK, n=30, m=5, t=5)
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fast_k = stochastic_df['fast_k'].values.tolist()
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slow_k = stochastic_df['slow_k'].values.tolist()
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slow_d = stochastic_df['slow_d'].values.tolist()
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# macd
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macd_df = self.macd.apply(STOCK, short=12, long=26, t=9)
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macd = macd_df['macd'].values.tolist()
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macds = macd_df['macds'].values.tolist()
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macdo = macd_df['macdo'].values.tolist()
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# rsi
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rsi_df = self.rsi.apply(STOCK, period=30, window=5)
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rsi = rsi_df['rsi'].values.tolist()
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rsis = rsi_df['rsis'].values.tolist()
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# ichimokuCloud
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ichimokuCloud_df = self.ichimokuCloud.apply(STOCK, c=9, b=26, l=52)
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ichimokuCloud_df = ichimokuCloud_df[:len(ichimokuCloud_df) - 51]
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changeLine = ichimokuCloud_df['changeLine'].values.tolist()
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baseLine = ichimokuCloud_df['baseLine'].values.tolist()
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laggingSpan = ichimokuCloud_df['laggingSpan'].values.tolist()
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leadingSpan1 = ichimokuCloud_df['leadingSpan1'].values.tolist()
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leadingSpan2 = ichimokuCloud_df['leadingSpan2'].values.tolist()
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# 결과
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temp = {
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"date": point_temp,
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"open": open, "high": high, "low": low, "close": close, "volume": vol,
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"avg3": avg3, "avg6": avg6, "avg9": avg9, "avg12": avg12, "avg20": avg20,
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"disparity_avg5": disparity_avg5, "disparity_avg10": disparity_avg10, "disparity_avg20": disparity_avg20,
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"disparity_avg60": disparity_avg60, "disparity_avg120": disparity_avg120,
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"upper": upper, "lower": lower,
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"macd": macd, "macds": macds, "macdo": macdo,
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"fast_k": fast_k, "slow_k": slow_k, "slow_d": slow_d,
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"rsi": rsi, "rsis": rsis,
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"changeLine": changeLine, "baseLine": baseLine, "laggingSpan": laggingSpan, "leadingSpan1": leadingSpan1,
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"leadingSpan2": leadingSpan2,
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"label": label
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}
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data = pd.DataFrame(temp)
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df_final_time = pd.DatetimeIndex(point_temp)
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data.index = df_final_time
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data = data.fillna(close[0])
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return data
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def analyze1(self, result):
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# 기본 캔들 정보
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open = result["open"]
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close = result["close"]
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high = result["high"]
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low = result["low"]
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vol = result["vol"]
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label = result["label"]
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# 캔들 정보 연산
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height = [close[i] - open[i] for i in range(0, len(close))]
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top_tail_height = [high[i] - max(open[i], close[i]) for i in range(0, len(close))]
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bottom_tail_height = [min(open[i], close[i]) - low[i] for i in range(0, len(close))]
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# 이동 평균
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close_df = pd.DataFrame(close)
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avg3_list = close_df.rolling(window=3).mean().fillna(close[0]).values.tolist()
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avg3 = [item[0] for item in avg3_list]
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avg6_list = close_df.rolling(window=6).mean().fillna(close[0]).values.tolist()
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avg6 = [item[0] for item in avg6_list]
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avg9_list = close_df.rolling(window=9).mean().fillna(close[0]).values.tolist()
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avg9 = [item[0] for item in avg9_list]
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avg12_list = close_df.rolling(window=12).mean().fillna(close[0]).values.tolist()
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avg12 = [item[0] for item in avg12_list]
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avg27_list = close_df.rolling(window=27).mean().fillna(close[0]).values.tolist()
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avg27 = [item[0] for item in avg27_list]
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avg54_list = close_df.rolling(window=54).mean().fillna(close[0]).values.tolist()
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avg54 = [item[0] for item in avg54_list]
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abs_avg_1 = [
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max(avg3[i], avg6[i], avg9[i], avg12[i], avg27[i], avg54[i]) - min(avg3[i], avg6[i], avg9[i], avg12[i],
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avg27[i], avg54[i]) for i in
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range(0, len(close))]
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abs_avg_2 = [
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max(avg3[i], avg6[i], avg9[i], avg12[i], avg27[i]) - min(avg3[i], avg6[i], avg9[i], avg12[i], avg27[i]) for
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i in range(0, len(close))]
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abs_avg_3 = [max(avg3[i], avg6[i], avg9[i], avg12[i]) - min(avg3[i], avg6[i], avg9[i], avg12[i]) for i in
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range(0, len(close))]
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abs_avg_4 = [max(avg3[i], avg6[i], avg9[i]) - min(avg3[i], avg6[i], avg9[i]) for i in range(0, len(close))]
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abs_avg_5 = [max(avg3[i], avg6[i]) - min(avg3[i], avg6[i]) for i in range(0, len(close))]
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diff_open, diff_close, diff_low, diff_high = [], [], [], []
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diff_open.append(0)
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for i in range(1, len(open)):
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diff_open.append(open[i] - open[i - 1])
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diff_close.append(0)
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for i in range(1, len(close)):
|
|
diff_close.append(close[i] - close[i - 1])
|
|
diff_low.append(0)
|
|
for i in range(1, len(low)):
|
|
diff_low.append(low[i] - low[i - 1])
|
|
diff_high.append(0)
|
|
for i in range(1, len(high)):
|
|
diff_high.append(high[i] - high[i - 1])
|
|
|
|
diff_avg3, diff_avg6, diff_avg9, diff_avg12, diff_avg27, diff_avg54 = [], [], [], [], [], []
|
|
diff_avg3.append(0)
|
|
for i in range(1, len(avg3)):
|
|
diff_avg3.append(avg3[i] - avg3[i - 1])
|
|
diff_avg6.append(0)
|
|
for i in range(1, len(avg6)):
|
|
diff_avg6.append(avg6[i] - avg6[i - 1])
|
|
diff_avg9.append(0)
|
|
for i in range(1, len(avg9)):
|
|
diff_avg9.append(avg9[i] - avg9[i - 1])
|
|
diff_avg12.append(0)
|
|
for i in range(1, len(avg12)):
|
|
diff_avg12.append(avg12[i] - avg12[i - 1])
|
|
diff_avg27.append(0)
|
|
for i in range(1, len(avg27)):
|
|
diff_avg27.append(avg27[i] - avg27[i - 1])
|
|
diff_avg54.append(0)
|
|
for i in range(1, len(avg54)):
|
|
diff_avg54.append(avg54[i] - avg54[i - 1])
|
|
|
|
diff_avg3_avg6 = [avg3[i] - avg6[i] for i in range(0, len(close))]
|
|
diff_avg3_avg9 = [avg3[i] - avg9[i] for i in range(0, len(close))]
|
|
diff_avg3_avg12 = [avg3[i] - avg12[i] for i in range(0, len(close))]
|
|
diff_avg3_avg27 = [avg3[i] - avg27[i] for i in range(0, len(close))]
|
|
diff_avg3_avg54 = [avg3[i] - avg54[i] for i in range(0, len(close))]
|
|
diff_avg6_avg9 = [avg6[i] - avg9[i] for i in range(0, len(close))]
|
|
diff_avg6_avg12 = [avg6[i] - avg12[i] for i in range(0, len(close))]
|
|
diff_avg6_avg27 = [avg6[i] - avg27[i] for i in range(0, len(close))]
|
|
diff_avg6_avg54 = [avg6[i] - avg54[i] for i in range(0, len(close))]
|
|
diff_avg9_avg12 = [avg9[i] - avg12[i] for i in range(0, len(close))]
|
|
diff_avg9_avg27 = [avg9[i] - avg27[i] for i in range(0, len(close))]
|
|
diff_avg9_avg54 = [avg9[i] - avg54[i] for i in range(0, len(close))]
|
|
diff_avg12_avg27 = [avg12[i] - avg27[i] for i in range(0, len(close))]
|
|
diff_avg12_avg54 = [avg12[i] - avg54[i] for i in range(0, len(close))]
|
|
diff_avg27_avg54 = [avg27[i] - avg54[i] for i in range(0, len(close))]
|
|
|
|
# 볼린져 밴드
|
|
df = pd.DataFrame(close)
|
|
max20 = df.rolling(window=20).mean()
|
|
stddev20 = df.rolling(window=20).std()
|
|
upper_df = max20 + (stddev20 * 2) # 상단 볼린저 밴드
|
|
lower_df = max20 - (stddev20 * 2) # 하단 볼린저 밴드
|
|
|
|
upper, lower = [], []
|
|
for i in range(len(upper_df)):
|
|
if i < 10:
|
|
upper.append(upper_df.values[0][0])
|
|
lower.append(lower_df.values[0][0])
|
|
else:
|
|
upper.append(upper_df.values[i][0])
|
|
lower.append(lower_df.values[i][0])
|
|
|
|
point_temp = result["time"]
|
|
STOCK = []
|
|
for i in range(len(open)):
|
|
STOCK.append({'volume': vol[i], 'close': close[i], 'open': open[i], 'high': high[i], 'low': low[i],
|
|
'avg3': avg3[i], 'avg6': avg6[i], 'avg9': avg9[i], 'avg12': avg12[i], 'avg27': avg27[i],
|
|
'avg54': avg54[i]})
|
|
|
|
# stochastic
|
|
stochastic_df = self.stochastic.apply(STOCK, n=30, m=5, t=5)
|
|
fast_k = stochastic_df['fast_k'].values.tolist()
|
|
slow_k = stochastic_df['slow_k'].values.tolist()
|
|
slow_d = stochastic_df['slow_d'].values.tolist()
|
|
|
|
# macd
|
|
macd_df = self.macd.apply(STOCK, short=12, long=26, t=9)
|
|
macd = macd_df['macd'].values.tolist()
|
|
macds = macd_df['macds'].values.tolist()
|
|
macdo = macd_df['macdo'].values.tolist()
|
|
|
|
# rsi
|
|
rsi_df = self.rsi.apply(STOCK, period=30, window=5)
|
|
rsi = rsi_df['rsi'].values.tolist()
|
|
rsis = rsi_df['rsis'].values.tolist()
|
|
|
|
# ichimokuCloud
|
|
ichimokuCloud_df = self.ichimokuCloud.apply(STOCK, c=9, b=26, l=52)
|
|
ichimokuCloud_df = ichimokuCloud_df[:len(ichimokuCloud_df) - 51]
|
|
changeLine = ichimokuCloud_df['changeLine'].values.tolist()
|
|
baseLine = ichimokuCloud_df['baseLine'].values.tolist()
|
|
leadingSpan1 = ichimokuCloud_df['leadingSpan1'].values.tolist()
|
|
leadingSpan2 = ichimokuCloud_df['leadingSpan2'].values.tolist()
|
|
|
|
# 간격
|
|
##### 볼린져 밴드
|
|
diff_upper_lower = [upper[i] - lower[i] for i in range(0, len(upper))]
|
|
diff_open_lower = [open[i] - lower[i] for i in range(0, len(open))]
|
|
diff_open_upper = [open[i] - upper[i] for i in range(0, len(open))]
|
|
diff_close_lower = [close[i] - lower[i] for i in range(0, len(close))]
|
|
diff_close_upper = [close[i] - upper[i] for i in range(0, len(close))]
|
|
diff_high_lower = [high[i] - lower[i] for i in range(0, len(high))]
|
|
diff_high_upper = [high[i] - upper[i] for i in range(0, len(high))]
|
|
diff_low_lower = [low[i] - lower[i] for i in range(0, len(low))]
|
|
diff_low_upper = [low[i] - upper[i] for i in range(0, len(low))]
|
|
|
|
##### 일목균형표
|
|
diff_lead1_lead2 = [leadingSpan1[i] - leadingSpan2[i] for i in range(0, len(leadingSpan1))]
|
|
diff_change_base = [changeLine[i] - baseLine[i] for i in range(0, len(baseLine))]
|
|
diff_base_lead1 = [baseLine[i] - leadingSpan1[i] for i in range(0, len(baseLine))]
|
|
diff_base_lead2 = [baseLine[i] - leadingSpan2[i] for i in range(0, len(baseLine))]
|
|
diff_change_lead1 = [changeLine[i] - leadingSpan1[i] for i in range(0, len(changeLine))]
|
|
diff_change_lead2 = [changeLine[i] - leadingSpan2[i] for i in range(0, len(changeLine))]
|
|
diff_open_lead2 = [open[i] - leadingSpan2[i] for i in range(0, len(open))]
|
|
diff_open_lead1 = [open[i] - leadingSpan1[i] for i in range(0, len(open))]
|
|
diff_open_change = [open[i] - changeLine[i] for i in range(0, len(open))]
|
|
diff_open_base = [open[i] - baseLine[i] for i in range(0, len(open))]
|
|
diff_close_lead2 = [close[i] - leadingSpan2[i] for i in range(0, len(close))]
|
|
diff_close_lead1 = [close[i] - leadingSpan1[i] for i in range(0, len(close))]
|
|
diff_close_change = [close[i] - changeLine[i] for i in range(0, len(close))]
|
|
diff_close_base = [close[i] - baseLine[i] for i in range(0, len(close))]
|
|
diff_high_lead2 = [high[i] - leadingSpan2[i] for i in range(0, len(high))]
|
|
diff_high_lead1 = [high[i] - leadingSpan1[i] for i in range(0, len(high))]
|
|
diff_high_change = [high[i] - changeLine[i] for i in range(0, len(high))]
|
|
diff_high_base = [high[i] - baseLine[i] for i in range(0, len(high))]
|
|
diff_low_lead2 = [low[i] - leadingSpan2[i] for i in range(0, len(low))]
|
|
diff_low_lead1 = [low[i] - leadingSpan1[i] for i in range(0, len(low))]
|
|
diff_low_change = [low[i] - changeLine[i] for i in range(0, len(low))]
|
|
diff_low_base = [low[i] - baseLine[i] for i in range(0, len(low))]
|
|
diff_macd_macds = [macd[i] - macds[i] for i in range(0, len(macd))]
|
|
diff_slowk_slowd = [slow_k[i] - slow_d[i] for i in range(0, len(slow_k))]
|
|
diff_rsi_rsis = [rsi[i] - rsis[i] for i in range(0, len(rsi))]
|
|
|
|
diff_macd, diff_macdo, diff_macds = [], [], []
|
|
diff_macd.append(0)
|
|
for i in range(1, len(macd)):
|
|
diff_macd.append(macd[i] - macd[i - 1])
|
|
diff_macdo.append(0)
|
|
for i in range(1, len(macdo)):
|
|
diff_macdo.append(macdo[i] - macdo[i - 1])
|
|
diff_macds.append(0)
|
|
for i in range(1, len(macds)):
|
|
diff_macds.append(macds[i] - macds[i - 1])
|
|
|
|
diff_fast_k, diff_slow_k, diff_slow_d = [], [], []
|
|
diff_fast_k.append(0)
|
|
for i in range(1, len(fast_k)):
|
|
diff_fast_k.append(fast_k[i] - fast_k[i - 1])
|
|
diff_slow_k.append(0)
|
|
for i in range(1, len(slow_k)):
|
|
diff_slow_k.append(slow_k[i] - slow_k[i - 1])
|
|
diff_slow_d.append(0)
|
|
for i in range(1, len(slow_d)):
|
|
diff_slow_d.append(slow_d[i] - slow_d[i - 1])
|
|
|
|
diff_rsi, diff_rsis = [], []
|
|
diff_rsi.append(0)
|
|
for i in range(1, len(rsi)):
|
|
diff_rsi.append(rsi[i] - rsi[i - 1])
|
|
diff_rsis.append(0)
|
|
for i in range(1, len(rsis)):
|
|
diff_rsis.append(rsis[i] - rsis[i - 1])
|
|
|
|
diff_changeLine, diff_baseLine = [], []
|
|
diff_changeLine.append(0)
|
|
for i in range(1, len(changeLine)):
|
|
diff_changeLine.append(changeLine[i] - changeLine[i - 1])
|
|
diff_baseLine.append(0)
|
|
for i in range(1, len(baseLine)):
|
|
diff_baseLine.append(baseLine[i] - baseLine[i - 1])
|
|
|
|
diff_upper, diff_lower = [], []
|
|
diff_upper.append(0)
|
|
for i in range(1, len(upper)):
|
|
diff_upper.append(upper[i] - upper[i - 1])
|
|
diff_lower.append(0)
|
|
for i in range(1, len(lower)):
|
|
diff_lower.append(lower[i] - lower[i - 1])
|
|
|
|
# 결과
|
|
temp = {
|
|
"date": point_temp,
|
|
"open": open, "high": high, "low": low, "close": close, "volume": vol,
|
|
"avg3": avg3, "avg6": avg6, "avg9": avg9, "avg12": avg12, "avg27": avg27, "avg54": avg54,
|
|
"upper": upper, "lower": lower,
|
|
"macd": macd, "macds": macds, "macdo": macdo,
|
|
"fast_k": fast_k, "slow_k": slow_k, "slow_d": slow_d,
|
|
"rsi": rsi, "rsis": rsis,
|
|
"changeLine": changeLine, "baseLine": baseLine, "leadingSpan1": leadingSpan1, "leadingSpan2": leadingSpan2,
|
|
"height": height, "top_tail_height": top_tail_height, "bottom_tail_height": bottom_tail_height,
|
|
"abs_avg_1": abs_avg_1, "abs_avg_2": abs_avg_2, "abs_avg_3": abs_avg_3, "abs_avg_4": abs_avg_4,
|
|
"abs_avg_5": abs_avg_5,
|
|
"diff_open": diff_open, "diff_close": diff_close, "diff_low": diff_low, "diff_high": diff_high,
|
|
"diff_avg3": diff_avg3, "diff_avg6": diff_avg6, "diff_avg9": diff_avg9, "diff_avg12": diff_avg12,
|
|
"diff_avg27": diff_avg27, "diff_avg54": diff_avg54,
|
|
"diff_macd": diff_macd, "diff_macdo": diff_macdo, "diff_macds": diff_macds,
|
|
"diff_fast_k": diff_fast_k, "diff_slow_k": diff_slow_k, "diff_slow_d": diff_slow_d,
|
|
"diff_rsi": diff_rsi, "diff_rsis": diff_rsis,
|
|
"diff_changeLine": diff_changeLine, "diff_baseLine": diff_baseLine,
|
|
"diff_upper": diff_upper, "diff_lower": diff_lower,
|
|
"diff_avg3_avg6": diff_avg3_avg6,
|
|
"diff_avg3_avg9": diff_avg3_avg9,
|
|
"diff_avg3_avg12": diff_avg3_avg12,
|
|
"diff_avg3_avg27": diff_avg3_avg27,
|
|
"diff_avg3_avg54": diff_avg3_avg54,
|
|
"diff_avg6_avg9": diff_avg6_avg9,
|
|
"diff_avg6_avg12": diff_avg6_avg12,
|
|
"diff_avg6_avg27": diff_avg6_avg27,
|
|
"diff_avg6_avg54": diff_avg6_avg54,
|
|
"diff_avg9_avg12": diff_avg9_avg12,
|
|
"diff_avg9_avg27": diff_avg9_avg27,
|
|
"diff_avg9_avg54": diff_avg9_avg54,
|
|
"diff_avg12_avg27": diff_avg12_avg27,
|
|
"diff_avg12_avg54": diff_avg12_avg54,
|
|
"diff_avg27_avg54": diff_avg27_avg54,
|
|
"diff_upper_lower": diff_upper_lower,
|
|
"diff_open_lower": diff_open_lower,
|
|
"diff_open_upper": diff_open_upper,
|
|
"diff_close_lower": diff_close_lower,
|
|
"diff_close_upper": diff_close_upper,
|
|
"diff_high_lower": diff_high_lower,
|
|
"diff_high_upper": diff_high_upper,
|
|
"diff_low_lower": diff_low_lower,
|
|
"diff_low_upper": diff_low_upper,
|
|
"diff_lead1_lead2": diff_lead1_lead2,
|
|
"diff_change_base": diff_change_base,
|
|
"diff_base_lead1": diff_base_lead1,
|
|
"diff_base_lead2": diff_base_lead2,
|
|
"diff_change_lead1": diff_change_lead1,
|
|
"diff_change_lead2": diff_change_lead2,
|
|
"diff_open_lead2": diff_open_lead2,
|
|
"diff_open_lead1": diff_open_lead1,
|
|
"diff_open_change": diff_open_change,
|
|
"diff_open_base": diff_open_base,
|
|
"diff_close_lead2": diff_close_lead2,
|
|
"diff_close_lead1": diff_close_lead1,
|
|
"diff_close_change": diff_close_change,
|
|
"diff_close_base": diff_close_base,
|
|
"diff_high_lead2": diff_high_lead2,
|
|
"diff_high_lead1": diff_high_lead1,
|
|
"diff_high_change": diff_high_change,
|
|
"diff_high_base": diff_high_base,
|
|
"diff_low_lead2": diff_low_lead2,
|
|
"diff_low_lead1": diff_low_lead1,
|
|
"diff_low_change": diff_low_change,
|
|
"diff_low_base": diff_low_base,
|
|
"diff_macd_macds": diff_macd_macds,
|
|
"diff_slowk_slowd": diff_slowk_slowd,
|
|
"diff_rsi_rsis": diff_rsi_rsis,
|
|
|
|
"label": label
|
|
}
|
|
|
|
data = pd.DataFrame(temp)
|
|
df_final_time = pd.DatetimeIndex(point_temp)
|
|
data.index = df_final_time
|
|
|
|
data = data.fillna(close[0])
|
|
return data
|
|
|
|
def write(self, outFp, df, i):
|
|
outFp.write(str(df["macd"][i]) + "\t")
|
|
outFp.write(str(df["macds"][i]) + "\t")
|
|
outFp.write(str(df["macdo"][i]) + "\t")
|
|
outFp.write(str(df["fast_k"][i]) + "\t")
|
|
outFp.write(str(df["slow_k"][i]) + "\t")
|
|
outFp.write(str(df["slow_d"][i]) + "\t")
|
|
outFp.write(str(df["rsi"][i]) + "\t")
|
|
outFp.write(str(df["rsis"][i]) + "\t")
|
|
outFp.write(str(df["height"][i]) + "\t")
|
|
outFp.write(str(df["top_tail_height"][i]) + "\t")
|
|
outFp.write(str(df["bottom_tail_height"][i]) + "\t")
|
|
outFp.write(str(df["abs_avg_1"][i]) + "\t")
|
|
outFp.write(str(df["abs_avg_2"][i]) + "\t")
|
|
outFp.write(str(df["abs_avg_3"][i]) + "\t")
|
|
outFp.write(str(df["abs_avg_4"][i]) + "\t")
|
|
outFp.write(str(df["abs_avg_5"][i]) + "\t")
|
|
outFp.write(str(df["diff_open"][i]) + "\t")
|
|
outFp.write(str(df["diff_close"][i]) + "\t")
|
|
outFp.write(str(df["diff_low"][i]) + "\t")
|
|
outFp.write(str(df["diff_high"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg3"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg6"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg9"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg12"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg27"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg54"][i]) + "\t")
|
|
outFp.write(str(df["diff_macd"][i]) + "\t")
|
|
outFp.write(str(df["diff_macdo"][i]) + "\t")
|
|
outFp.write(str(df["diff_macds"][i]) + "\t")
|
|
outFp.write(str(df["diff_fast_k"][i]) + "\t")
|
|
outFp.write(str(df["diff_slow_k"][i]) + "\t")
|
|
outFp.write(str(df["diff_slow_d"][i]) + "\t")
|
|
outFp.write(str(df["diff_rsi"][i]) + "\t")
|
|
outFp.write(str(df["diff_rsis"][i]) + "\t")
|
|
outFp.write(str(df["diff_changeLine"][i]) + "\t")
|
|
outFp.write(str(df["diff_baseLine"][i]) + "\t")
|
|
outFp.write(str(df["diff_upper"][i]) + "\t")
|
|
outFp.write(str(df["diff_lower"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg3_avg6"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg3_avg9"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg3_avg12"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg3_avg27"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg3_avg54"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg6_avg9"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg6_avg12"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg6_avg27"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg6_avg54"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg9_avg12"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg9_avg27"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg9_avg54"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg12_avg27"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg12_avg54"][i]) + "\t")
|
|
outFp.write(str(df["diff_avg27_avg54"][i]) + "\t")
|
|
outFp.write(str(df["diff_upper_lower"][i]) + "\t")
|
|
outFp.write(str(df["diff_open_lower"][i]) + "\t")
|
|
outFp.write(str(df["diff_open_upper"][i]) + "\t")
|
|
outFp.write(str(df["diff_close_lower"][i]) + "\t")
|
|
outFp.write(str(df["diff_close_upper"][i]) + "\t")
|
|
outFp.write(str(df["diff_high_lower"][i]) + "\t")
|
|
outFp.write(str(df["diff_high_upper"][i]) + "\t")
|
|
outFp.write(str(df["diff_low_lower"][i]) + "\t")
|
|
outFp.write(str(df["diff_low_upper"][i]) + "\t")
|
|
outFp.write(str(df["diff_lead1_lead2"][i]) + "\t")
|
|
outFp.write(str(df["diff_change_base"][i]) + "\t")
|
|
outFp.write(str(df["diff_base_lead1"][i]) + "\t")
|
|
outFp.write(str(df["diff_base_lead2"][i]) + "\t")
|
|
outFp.write(str(df["diff_change_lead1"][i]) + "\t")
|
|
outFp.write(str(df["diff_change_lead2"][i]) + "\t")
|
|
outFp.write(str(df["diff_open_lead2"][i]) + "\t")
|
|
outFp.write(str(df["diff_open_lead1"][i]) + "\t")
|
|
outFp.write(str(df["diff_open_change"][i]) + "\t")
|
|
outFp.write(str(df["diff_open_base"][i]) + "\t")
|
|
outFp.write(str(df["diff_close_lead2"][i]) + "\t")
|
|
outFp.write(str(df["diff_close_lead1"][i]) + "\t")
|
|
outFp.write(str(df["diff_close_change"][i]) + "\t")
|
|
outFp.write(str(df["diff_close_base"][i]) + "\t")
|
|
outFp.write(str(df["diff_high_lead2"][i]) + "\t")
|
|
outFp.write(str(df["diff_high_lead1"][i]) + "\t")
|
|
outFp.write(str(df["diff_high_change"][i]) + "\t")
|
|
outFp.write(str(df["diff_high_base"][i]) + "\t")
|
|
outFp.write(str(df["diff_low_lead2"][i]) + "\t")
|
|
outFp.write(str(df["diff_low_lead1"][i]) + "\t")
|
|
outFp.write(str(df["diff_low_change"][i]) + "\t")
|
|
outFp.write(str(df["diff_low_base"][i]) + "\t")
|
|
outFp.write(str(df["diff_macd_macds"][i]) + "\t")
|
|
outFp.write(str(df["diff_slowk_slowd"][i]) + "\t")
|
|
outFp.write(str(df["diff_rsi_rsis"][i]) + "\t")
|
|
outFp.write(str(df["label"][i]) + "\n")
|
|
return
|
|
|
|
def checkTransaction(self, data, stock_code, isRealTime=True):
|
|
# 4일치 중에서 앞에 2일은 제거한다.
|
|
date = data['date'].dt.date.unique().tolist()
|
|
data = data[data['date'].dt.date != date[0]]
|
|
data = data[data['date'].dt.date != date[1]]
|
|
|
|
# 어제 오늘 데이터로 분석
|
|
bsLine = {}
|
|
size = len(data["close"])
|
|
|
|
if isRealTime:
|
|
# isRealTime=True, 실시간 적용
|
|
last_index = size - 1
|
|
|
|
buy, buy_weight, buy_type = self.getBuyPriceAndWeight(data, last_index)
|
|
sell, sell_weight, sell_type = self.getSellPriceAndWeight(data, last_index)
|
|
|
|
if buy > -1 or self.BUY_COUNT == 1:
|
|
if buy == -1 or self.BUY_COUNT == 1:
|
|
buy = min(data['open'][last_index], data['close'][last_index])
|
|
buy_weight = 1
|
|
self.BUY_COUNT += 1
|
|
|
|
bsLine['buy'] = [buy]
|
|
bsLine['buy_weight'] = [buy_weight]
|
|
bsLine['sell'] = [sell]
|
|
bsLine['sell_weight'] = [sell_weight]
|
|
|
|
if self.BUY_COUNT > 1:
|
|
self.BUY_COUNT = 0
|
|
else:
|
|
# Type=False, 시뮬레이션 적용
|
|
bsLine['buy'] = [-1 for i in range(size)]
|
|
bsLine['buy_weight'] = [-1 for i in range(size)]
|
|
bsLine['sell'] = [-1 for i in range(size)]
|
|
bsLine['sell_weight'] = [-1 for i in range(size)]
|
|
|
|
for i in range(size):
|
|
if stock_code == "252670":
|
|
buy, buy_weight, buy_type = self.getBuyPriceAndWeight(data, i)
|
|
sell, sell_weight, sell_type = self.getSellPriceAndWeight(data, i)
|
|
else:
|
|
buy, buy_weight, buy_type = self.getBuyPriceAndWeight_122630(data, i)
|
|
sell, sell_weight, sell_type = self.getSellPriceAndWeight_122630(data, i)
|
|
|
|
if buy > -1 or self.BUY_COUNT == 1:
|
|
if buy == -1 or self.BUY_COUNT == 1:
|
|
buy = data['low'][i]
|
|
buy_weight = 1
|
|
self.BUY_COUNT += 1
|
|
|
|
bsLine['buy'][i] = buy
|
|
bsLine['buy_weight'][i] = buy_weight
|
|
bsLine['sell'][i] = sell
|
|
bsLine['sell_weight'][i] = sell_weight
|
|
|
|
if self.BUY_COUNT > 1:
|
|
self.BUY_COUNT = 0
|
|
|
|
return bsLine, data
|
|
|
|
def checkTransactionML(self, data, stock_code, predY, isRealTime=True):
|
|
# 4일치 중에서 앞에 2일은 제거한다.
|
|
date = data['date'].dt.date.unique().tolist()
|
|
data = data[data['date'].dt.date != date[0]]
|
|
data = data[data['date'].dt.date != date[1]]
|
|
|
|
# 어제 오늘 데이터로 분석
|
|
bsLine = {}
|
|
size = len(data["close"])
|
|
if isRealTime:
|
|
# isRealTime=True, 실시간 적용
|
|
last_index = size - 1
|
|
|
|
# Type=False, 시뮬레이션 적용
|
|
bsLine['buy'] = [-1 for i in range(size)]
|
|
bsLine['buy_weight'] = [-1 for i in range(size)]
|
|
bsLine['sell'] = [-1 for i in range(size)]
|
|
bsLine['sell_weight'] = [-1 for i in range(size)]
|
|
|
|
sell, sell_weight, buy, buy_weight = -1, -1, -1, -1
|
|
if predY[last_index] == 1:
|
|
sell = int((data["open"][last_index] + data["close"][last_index]) / 2)
|
|
sell_weight = 1
|
|
elif predY[last_index] == 2:
|
|
buy = int((data["open"][last_index] + data["close"][last_index]) / 2)
|
|
buy_weight = 1
|
|
|
|
bsLine['buy'] = [buy]
|
|
bsLine['buy_weight'] = [buy_weight]
|
|
bsLine['sell'] = [sell]
|
|
bsLine['sell_weight'] = [sell_weight]
|
|
else:
|
|
# Type=False, 시뮬레이션 적용
|
|
bsLine['buy'] = [-1 for i in range(size)]
|
|
bsLine['buy_weight'] = [-1 for i in range(size)]
|
|
bsLine['sell'] = [-1 for i in range(size)]
|
|
bsLine['sell_weight'] = [-1 for i in range(size)]
|
|
|
|
for i in range(size):
|
|
if predY[i] == 1:
|
|
bsLine['sell'][i] = int((data["open"][i] + data["close"][i]) / 2)
|
|
bsLine['sell_weight'][i] = 1
|
|
elif predY[i] == 2:
|
|
bsLine['buy'][i] = int((data["open"][i] + data["close"][i]) / 2)
|
|
bsLine['buy_weight'][i] = 1
|
|
|
|
return bsLine, data
|
|
|
|
|
|
|
|
# middle line에 맞다은 적 없이, low line에 붙었거나 아래에 있었던 캔들의 높은 가격을 얻어옴
|
|
def getPrice_UnderLowWithoutMiddle(self, last_index, data):
|
|
if data['high'][last_index] < data['envelope_middle'][last_index]:
|
|
for i in range(last_index - 1, 0, -1):
|
|
if data['high'][i] > data['envelope_middle'][i]:
|
|
return -1, -1
|
|
if data['low'][i] < data['envelope_lower'][i]:
|
|
return i, max(data['open'][i], data['close'][i])
|
|
return -1, -1
|
|
|
|
def getBuyPriceAndWeight_Envelope(self, i, data):
|
|
buy, weight = -1, -1
|
|
|
|
"""
|
|
# middle line에 맞다은 적 없이, low line에 붙었거나 아래에 있었던 캔들의 높은 가격을 얻어옴
|
|
index, price = self.getPrice_UnderLowWithoutMiddle(i, data)
|
|
if price > -1:
|
|
# 해당 가격보다 높은 가격이면 매수한다
|
|
if price < data['close'][i]:
|
|
buy = data['close'][i]
|
|
weight = 10
|
|
"""
|
|
if i > 100:
|
|
if -0.004 < data['gradient1'][i] < 0.001:
|
|
#if data['high'][i] < data['envelope_middle'][i]:
|
|
if data['slow_k'][i] < 20:
|
|
buy = data['close'][i]
|
|
weight = 10
|
|
|
|
"""
|
|
if i > 100:
|
|
if min(data['gradient1'][i-5:i]) < -0.009 and -0.009 < data['gradient1'][i]:
|
|
if data['high'][i] < data['envelope_middle'][i]:
|
|
buy = data['close'][i]
|
|
weight = 10
|
|
"""
|
|
return buy, weight
|
|
|
|
def getSellPriceAndWeight_Envelope(self, data, i):
|
|
sell, weight, type = -1, -1, -1
|
|
|
|
if data.index[i].strftime("%Y.%m.%d") == "2022.12.01":
|
|
print(1)
|
|
|
|
# upper lined에서 처리
|
|
if data['close'][i - 1] < data['envelope_upper'][i - 1] and data['envelope_upper'][i] < data['close'][i]:
|
|
if data['slow_d'][i - 1] <= data['slow_k'][i - 1] and data['slow_k'][i] <= data['slow_d'][i]:
|
|
sell = data["close"][i]
|
|
weight = 1
|
|
type = 1
|
|
if data['envelope_upper'][i - 1] < data['close'][i - 1] and data['envelope_upper'][i] < data['close'][i]:
|
|
if data['slow_d'][i - 1] <= data['slow_k'][i - 1] and data['slow_k'][i] <= data['slow_d'][i]:
|
|
sell = data["close"][i]
|
|
weight = 1
|
|
type = 2
|
|
if data['envelope_upper'][i - 1] < data['close'][i - 1] and data['envelope_upper'][i] < data['close'][i]:
|
|
if data['slow_d'][i - 1] + 2 <= data['slow_k'][i - 1] and data['slow_d'][i] + 1 == data['slow_k'][i]:
|
|
sell = data["close"][i]
|
|
weight = 1
|
|
type = 3
|
|
|
|
if data['envelope_upper'][i] < data['high'][i] and data['open'][i] < data['close'][i]:
|
|
if data['close'][i] - data['open'][i] < data['high'][i] - data['close'][i]:
|
|
sell = data["close"][i]
|
|
weight = 1
|
|
type = 4
|
|
|
|
return sell, weight, type
|
|
|
|
# 팔아야 할 시점을 체크하기 위함
|
|
# 이전에 산 가격보다 지금 5원이상 떨어졌다면 매도 한다.
|
|
def checkBelow5WonFromPreviousBuyPrice(self, last_index, data, price):
|
|
for i in range(last_index - 1, 0, -1):
|
|
if data['sell'][i] != -1:
|
|
return False
|
|
if data['buy'][i] != -1:
|
|
if data['buy'][i] - price > 5:
|
|
return True
|
|
return
|
|
|
|
def checkWithEnvelope_252670(self, data, isRealTime=False):
|
|
|
|
bsLine = {}
|
|
size = len(data["close"])
|
|
|
|
bsLine['buy'] = [-1 for i in range(size)]
|
|
bsLine['buy_weight'] = [-1.0 for i in range(size)]
|
|
bsLine['sell'] = [-1 for i in range(size)]
|
|
bsLine['sell_weight'] = [-1.0 for i in range(size)]
|
|
|
|
for i in range(size):
|
|
if isRealTime:
|
|
if i < size - 1:
|
|
continue
|
|
|
|
if i > 10:
|
|
if data['avg5'][i-1] < data['avg20'][i-1] and data['avg20'][i] < data['avg5'][i]:
|
|
buy = data['close'][i]
|
|
data['buy'][i] = buy
|
|
bsLine['buy'][i] = buy
|
|
bsLine['buy_weight'][i] = 5.0
|
|
|
|
if data['slow_k'][i] < 3:
|
|
sell = data['close'][i]
|
|
data['sell'][i] = sell
|
|
bsLine['sell'][i] = sell
|
|
bsLine['sell_weight'][i] = 100.0
|
|
|
|
return bsLine, data
|
|
|
|
|
|
def checkWithEnvelope_122630(self, data, isRealTime=False):
|
|
|
|
bsLine = {}
|
|
size = len(data["close"])
|
|
|
|
bsLine['buy'] = [-1 for i in range(size)]
|
|
bsLine['buy_weight'] = [-1.0 for i in range(size)]
|
|
bsLine['sell'] = [-1 for i in range(size)]
|
|
bsLine['sell_weight'] = [-1.0 for i in range(size)]
|
|
|
|
for i in range(size):
|
|
if isRealTime:
|
|
if i < size - 1:
|
|
continue
|
|
|
|
if i > 10:
|
|
if data['avg5'][i - 1] < data['avg20'][i - 1] and data['avg20'][i] < data['avg5'][i]:
|
|
buy = data['close'][i]
|
|
data['buy'][i] = buy
|
|
bsLine['buy'][i] = buy
|
|
bsLine['buy_weight'][i] = 5.0
|
|
|
|
if data['slow_k'][i] < 3:
|
|
sell = data['close'][i]
|
|
data['sell'][i] = sell
|
|
bsLine['sell'][i] = sell
|
|
bsLine['sell_weight'][i] = 100.0
|
|
|
|
return bsLine, data
|
|
|
|
def notBuy(self, data, i):
|
|
if i > 5:
|
|
check = True
|
|
for l in range(i-4, i+1):
|
|
if (
|
|
data['gradients_avg60'][l - 1] > data['gradients_avg60'][l] or
|
|
data['gradients_avg20'][l - 1] > data['gradients_avg20'][l] or
|
|
data['gradients_low'][l - 1] > data['gradients_low'][l]
|
|
):
|
|
check = False
|
|
break
|
|
if not check:
|
|
return False
|
|
return True
|
|
|
|
def checkWithEnvelope(self, data, analyzed_day=120, isRealTime=False):
|
|
|
|
bsLine = {}
|
|
size = len(data["close"])
|
|
|
|
bsLine['buy'] = [-1 for i in range(size)]
|
|
bsLine['buy_weight'] = [-1 for i in range(size)]
|
|
bsLine['sell'] = [-1 for i in range(size)]
|
|
bsLine['sell_weight'] = [-1 for i in range(size)]
|
|
|
|
for i in range(size):
|
|
if isRealTime:
|
|
if i < size - 1:
|
|
continue
|
|
|
|
if i > 10:
|
|
if data['avg5'][i - 1] < data['avg20'][i - 1] and data['avg20'][i] < data['avg5'][i]:
|
|
buy = data['close'][i]
|
|
data['buy'][i] = buy
|
|
bsLine['buy'][i] = buy
|
|
bsLine['buy_weight'][i] = 3.0
|
|
|
|
if data['slow_k'][i] < 3:
|
|
sell = data['close'][i]
|
|
data['sell'][i] = sell
|
|
bsLine['sell'][i] = sell
|
|
bsLine['sell_weight'][i] = 100.0
|
|
|
|
return bsLine, data
|
|
|
|
def checkTransactionWithEnvelope(self, data, stock_code, analyzed_day, isRealTime=False):
|
|
if isRealTime:
|
|
if stock_code == "252670":
|
|
bsLine, data = self.checkWithEnvelope_252670(data, isRealTime)
|
|
elif stock_code == "122630":
|
|
bsLine, data = self.checkWithEnvelope_122630(data, isRealTime)
|
|
else:
|
|
bsLine, data = self.checkWithEnvelope(data, analyzed_day, isRealTime)
|
|
else:
|
|
# 사야 할 시점과 팔아야 할 시점을 체크한다.
|
|
if stock_code == "252670":
|
|
bsLine, data = self.checkWithEnvelope_252670(data, isRealTime)
|
|
elif stock_code == "122630":
|
|
bsLine, data = self.checkWithEnvelope_122630(data, isRealTime)
|
|
else:
|
|
bsLine, data = self.checkWithEnvelope(data, analyzed_day, isRealTime)
|
|
|
|
return bsLine, data |