Files
Quant_Code/1.交易策略/999.其他策略/2.松鼠SF12_日内订单流横截面交易策略/使用文稿/dingdanliu_nb_flake8.py
T

1610 lines
62 KiB
Python

"""
该代码的主要目的是处理Tick数据并生成交易信号。代码中定义了一个tickcome函数,它接收到Tick数据后会进行一系列的处理,包括构建Tick字典、更新上一个Tick的成交量、保存Tick数据、生成K线数据等。其中涉及到的一些函数有:
on_tick(tick): 处理单个Tick数据,根据Tick数据生成K线数据。
tickdata(df, symbol): 处理Tick数据,生成K线数据。
orderflow_df_new(df_tick, df_min, symbol): 处理Tick和K线数据,生成订单流数据。
GetOrderFlow_dj(kData): 计算订单流的信号指标。
除此之外,代码中还定义了一个MyTrader类,继承自TraderApiBase,用于实现交易相关的功能。
"""
from multiprocessing import Process, Queue
import queue
import threading
from AlgoPlus.CTP.MdApi import run_tick_engine
from AlgoPlus.CTP.FutureAccount import get_simulate_account
# from AlgoPlus.CTP.FutureAccount import FutureAccount
from AlgoPlus.CTP.TraderApiBase import TraderApiBase
# from AlgoPlus.ta.time_bar import tick_to_bar
import pandas as pd
# from datetime import timedelta
from datetime import datetime
from datetime import time as s_time
import operator
import time
import numpy as np
import os
import csv
# import re
# # jerome:增加tushare接口
# import tushare as ts
# ts.set_token('78282dabb315ee578fb73a9b328f493026e97d5af709acb331b7b348')
# pro = ts.pro_api()
# 加入邮件通知
import smtplib
from email.mime.text import MIMEText # 导入 MIMEText 类发送纯文本邮件
from email.mime.multipart import MIMEMultipart # 导入MIMEMultipart类发送带有附件的邮件
# from email.mime.application import MIMEApplication # 导入MIMEApplication类发送二进制附件
# 配置邮件信息
receivers = list["240884432@qq.com"] # 设置邮件接收人地址
subject = "模拟账户订单流策略交易信号" # 设置邮件主题
# text = " " # 设置邮件正文
# file_path = "test.txt" # 设置邮件附件文件路径
# 配置邮件服务器信息
smtp_server = "smtp.qq.com" # 设置发送邮件的 SMTP 服务器地址
smtp_port = 465 # 设置发送邮件的 SMTP 服务器端口号,一般为 25 端口 465
sender = "240884432@qq.com" # 设置发送邮件的邮箱地址
username = "240884432@qq.com" # 设置发送邮件的邮箱用户名
password = "osjyjmbqrzxtbjbf" # zrmpcgttataabhjh,设置发送邮件的邮箱密码或授权码
tickdatadict = {} # 存储Tick数据的字典
quotedict = {} # 存储行情数据的字典
ofdatadict = {} # 存储K线数据的字典
trade_dfs = {} # pd.DataFrame({})存储交易数据的DataFrame对象
previous_volume = {} # 上一个Tick的成交量
tsymbollist = {} # 过渡tick
截面数据_资金流向 = {}
top_two_symbols = []
# Jerome:夜盘商品期货交易品种
commodity_night_dict = {
"sc": s_time(2, 30),
"bc": s_time(1, 0),
"lu": s_time(23, 0),
"nr": s_time(23, 0),
"au": s_time(2, 30),
"ag": s_time(2, 30),
"ss": s_time(1, 0),
"sn": s_time(1, 0),
"ni": s_time(1, 0),
"pb": s_time(1, 0),
"zn": s_time(1, 0),
"al": s_time(1, 0),
"cu": s_time(1, 0),
"ru": s_time(23, 0),
"rb": s_time(23, 0),
"hc": s_time(23, 0),
"fu": s_time(23, 0),
"bu": s_time(23, 0),
"sp": s_time(23, 0),
"PF": s_time(23, 0),
"SR": s_time(23, 0),
"CF": s_time(23, 0),
"CY": s_time(23, 0),
"RM": s_time(23, 0),
"MA": s_time(23, 0),
"TA": s_time(23, 0),
"ZC": s_time(23, 0),
"FG": s_time(23, 0),
"OI": s_time(23, 0),
"SA": s_time(23, 0),
"p": s_time(23, 0),
"j": s_time(23, 0),
"jm": s_time(23, 0),
"i": s_time(23, 0),
"l": s_time(23, 0),
"v": s_time(23, 0),
"pp": s_time(23, 0),
"eg": s_time(23, 0),
"c": s_time(23, 0),
"cs": s_time(23, 0),
"y": s_time(23, 0),
"m": s_time(23, 0),
"a": s_time(23, 0),
"b": s_time(23, 0),
"rr": s_time(23, 0),
"eb": s_time(23, 0),
"pg": s_time(23, 0),
"SH": s_time(23, 00),
}
fees_df = pd.read_csv(
"./futures_fees_info.csv",
header=0,
usecols=[1, 4, 17, 19, 25],
names=["合约代码", "合约乘数", "做多保证金率", "做空保证金率", "品种代码"],
)
contacts_df = pd.read_csv(
"./main_contacts.csv", header=0, usecols=[16, 17], names=["主连代码", "品种代码"]
)
# 交易程序---------------------------------------------------------------------------------------------------------------------------------------------------------------------
class ParamObj:
# 策略需要用到的参数,在新建合约对象的时候传入!!
symbol = None # 合约名称
Lots = None # 下单手数
py = None # 设置委托价格的偏移,更加容易促成成交
trailing_stop_percent = None # 跟踪出场参数
fixed_stop_loss_percent = None # 固定出场参数
dj_X = None # 开仓的堆积参数
delta = None # 开仓的delta参数
sum_delta = None # 开仓的delta累积参数
失衡 = None
堆积 = None
周期 = None
# 策略需要用到的变量
cont_df = 0
pos = 0
clearing_executed = False
kgdata = True
多头止损价格 = 0
空头止损价格 = 0
多头成本价格 = 0
空头成本价格 = 0
多头开仓历时 = 0
空头开仓历时 = 0
平_多时间 = 4
平_空时间 = 4
def __init__(
self,
symbol,
Lots,
py,
dj_X,
delta,
sum_delta,
失衡,
堆积,
周期,
平_多时间,
平_空时间,
):
self.symbol = symbol
self.Lots = Lots
self.py = py
self.dj_X = dj_X
self.delta = delta
self.sum_delta = sum_delta
self.失衡 = 失衡
self.堆积 = 堆积
self.周期 = 周期
self.平_多时间 = 平_多时间
self.平_空时间 = 平_空时间
class MyTrader(TraderApiBase):
def __init__(
self,
broker_id,
td_server,
investor_id,
password,
app_id,
auth_code,
md_queue=None,
page_dir="",
private_resume_type=2,
public_resume_type=2,
):
self.param_dict = {}
self.queue_dict = {}
self.品种 = " "
def tickcome(self, md_queue):
global previous_volume
data = md_queue
instrument_id = data["InstrumentID"].decode() # 品种代码
ActionDay = data["ActionDay"].decode() # 交易日日期
update_time = data["UpdateTime"].decode() # 更新时间
update_millisec = str(data["UpdateMillisec"]) # 更新毫秒数
created_at = (
ActionDay[:4]
+ "-"
+ ActionDay[4:6]
+ "-"
+ ActionDay[6:]
+ " "
+ update_time
+ "."
+ update_millisec
) # 创建时间
# 构建tick字典
tick = {
"symbol": instrument_id, # 品种代码和交易所ID
"created_at": datetime.strptime(created_at, "%Y-%m-%d %H:%M:%S.%f"),
# 'created_at': created_at, # 创建时间
"price": float(data["LastPrice"]), # 最新价
"last_volume": (
int(data["Volume"]) - previous_volume.get(instrument_id, 0)
if previous_volume.get(instrument_id, 0) != 0
else 0
), # 瞬时成交量
"bid_p": float(data["BidPrice1"]), # 买价
"bid_v": int(data["BidVolume1"]), # 买量
"ask_p": float(data["AskPrice1"]), # 卖价
"ask_v": int(data["AskVolume1"]), # 卖量
"UpperLimitPrice": float(data["UpperLimitPrice"]), # 涨停价
"LowerLimitPrice": float(data["LowerLimitPrice"]), # 跌停价
"TradingDay": data["TradingDay"].decode(), # 交易日日期
"cum_volume": int(data["Volume"]), # 最新总成交量
"cum_amount": float(data["Turnover"]), # 最新总成交额
"cum_position": int(data["OpenInterest"]), # 合约持仓量
}
# print('&&&&&&&&',instrument_id, tick['created_at'],'vol:',tick['last_volume'])
# 更新上一个Tick的成交量
previous_volume[instrument_id] = int(data["Volume"])
if tick["last_volume"] > 0:
# print(tick['created_at'],'vol:',tick['last_volume'])
# 处理Tick数据
self.on_tick(tick)
def can_time(self, hour, minute):
hour = str(hour)
minute = str(minute)
if len(minute) == 1:
minute = "0" + minute
return int(hour + minute)
def on_tick(self, tick):
if tick["last_volume"] == 0:
return
quotes = tick
timetick = str(tick["created_at"]).replace("+08:00", "")
tsymbol = tick["symbol"]
if tsymbol not in tsymbollist.keys():
# 获取tick的买卖价和买卖量
tsymbollist[tsymbol] = tick
bid_p = quotes["bid_p"]
ask_p = quotes["ask_p"]
bid_v = quotes["bid_v"]
ask_v = quotes["ask_v"]
else:
# 获取上一个tick的买卖价和买卖量
rquotes = tsymbollist[tsymbol]
bid_p = rquotes["bid_p"]
ask_p = rquotes["ask_p"]
bid_v = rquotes["bid_v"]
ask_v = rquotes["ask_v"]
tsymbollist[tsymbol] = tick
tick_dt = pd.DataFrame(
{
"datetime": timetick,
"symbol": tick["symbol"],
"mainsym": tick["symbol"].rstrip("0123456789").upper(),
"lastprice": tick["price"],
"vol": tick["last_volume"],
"bid_p": bid_p,
"ask_p": ask_p,
"bid_v": bid_v,
"ask_v": ask_v,
},
index=[0],
)
sym = tick_dt["symbol"][0]
# print(tick_dt)
self.tickdata(tick_dt, sym)
# 公众号:松鼠Quant
# 主页:www.quant789.com
# 本策略仅作学习交流使用,实盘交易盈亏投资者个人负责!!!
# 版权归松鼠Quant所有,禁止转发、转卖源码违者必究。
def data_of(self, symbol, df):
global trade_dfs
# 将df数据合并到trader_df中
# if symbol not in trade_dfs.keys():
# trade_df = pd.DataFrame({})
# else:
# trade_df = trade_dfs[symbol]
trade_dfs[symbol] = pd.concat([trade_dfs[symbol], df], ignore_index=True)
# print('!!!!!!!!!!!trader_df: ', symbol, df['datetime'].iloc[-1])
# print(trader_df)
def process(self, bidDict, askDict, symbol):
try:
# 尝试从quotedict中获取对应品种的报价数据
dic = quotedict[symbol]
bidDictResult = dic["bidDictResult"]
askDictResult = dic["askDictResult"]
except Exception:
bidDictResult, askDictResult = (
{},
{},
) # 如果获取失败,则初始化bidDictResult和askDictResult为空字典
# 将所有买盘字典和卖盘字典的key合并,并按升序排序
sList = sorted(set(list(bidDict.keys()) + list(askDict.keys())))
# 遍历所有的key,将相同key的值进行累加
for s in sList:
if s in bidDict:
if s in bidDictResult:
bidDictResult[s] = int(bidDict[s]) + bidDictResult[s]
else:
bidDictResult[s] = int(bidDict[s])
if s not in askDictResult:
askDictResult[s] = 0
else:
if s in askDictResult:
askDictResult[s] = int(askDict[s]) + askDictResult[s]
else:
askDictResult[s] = int(askDict[s])
if s not in bidDictResult:
bidDictResult[s] = 0
# 构建包含bidDictResult和askDictResult的字典,并存入quotedict中
df = {"bidDictResult": bidDictResult, "askDictResult": askDictResult}
quotedict[symbol] = df
return bidDictResult, askDictResult
# 公众号:松鼠Quant
# 主页:www.quant789.com
# 本策略仅作学习交流使用,实盘交易盈亏投资者个人负责!!!
# 版权归松鼠Quant所有,禁止转发、转卖源码违者必究。
def tickdata(self, df, symbol):
tickdata = pd.DataFrame(
{
"datetime": df["datetime"],
"symbol": df["symbol"],
"lastprice": df["lastprice"],
"volume": df["vol"],
"bid_p": df["bid_p"],
"bid_v": df["bid_v"],
"ask_p": df["ask_p"],
"ask_v": df["ask_v"],
}
)
try:
if symbol in tickdatadict.keys():
rdf = tickdatadict[symbol]
rdftm = pd.to_datetime(rdf["bartime"][0]).strftime("%Y-%m-%d %H:%M:%S")
now = str(tickdata["datetime"][0])
if now > rdftm:
try:
oo = ofdatadict[symbol]
self.data_of(symbol, oo)
# print('oo',oo)
if symbol in quotedict.keys():
quotedict.pop(symbol)
if symbol in tickdatadict.keys():
tickdatadict.pop(symbol)
if symbol in ofdatadict.keys():
ofdatadict.pop(symbol)
except IOError as e:
print("rdftm捕获到异常", e)
tickdata["bartime"] = pd.to_datetime(tickdata["datetime"])
tickdata["open"] = tickdata["lastprice"]
tickdata["high"] = tickdata["lastprice"]
tickdata["low"] = tickdata["lastprice"]
tickdata["close"] = tickdata["lastprice"]
tickdata["starttime"] = tickdata["datetime"]
else:
tickdata["bartime"] = rdf["bartime"]
tickdata["open"] = rdf["open"]
tickdata["high"] = max(
tickdata["lastprice"].values, rdf["high"].values
)
tickdata["low"] = min(
tickdata["lastprice"].values, rdf["low"].values
)
tickdata["close"] = tickdata["lastprice"]
tickdata["volume"] = df["vol"] + rdf["volume"].values
tickdata["starttime"] = rdf["starttime"]
else:
print("新bar的第一个tick进入")
tickdata["bartime"] = pd.to_datetime(tickdata["datetime"])
tickdata["open"] = tickdata["lastprice"]
tickdata["high"] = tickdata["lastprice"]
tickdata["low"] = tickdata["lastprice"]
tickdata["close"] = tickdata["lastprice"]
tickdata["starttime"] = tickdata["datetime"]
except IOError as e:
print("捕获到异常", e)
tickdata["bartime"] = pd.to_datetime(tickdata["bartime"])
param = self.param_dict[self.品种]
bardata = (
tickdata.resample(
on="bartime", rule=param.周期, label="right", closed="right"
)
.agg(
{
"starttime": "first",
"symbol": "last",
"open": "first",
"high": "max",
"low": "min",
"close": "last",
"volume": "sum",
}
)
.reset_index(drop=False)
)
bardata = bardata.dropna().reset_index(drop=True)
bardata["bartime"] = pd.to_datetime(bardata["bartime"][0]).strftime(
"%Y-%m-%d %H:%M:%S"
)
tickdatadict[symbol] = bardata
tickdata["volume"] = df["vol"].values
# print(bardata['symbol'].values,bardata['bartime'].values)
self.orderflow_df_new(tickdata, bardata, symbol)
# time.sleep(0.5)
def orderflow_df_new(self, df_tick, df_min, symbol):
voluememin = df_min["volume"].values
highs = df_min["high"].values
lows = df_min["low"].values
opens = df_min["open"].values
closes = df_min["close"].values
# endArray = pd.to_datetime(df_min['bartime']).values
endArray = df_min["bartime"].values
bp1TickArray = df_tick["bid_p"].values
ap1TickArray = df_tick["ask_p"].values
lastTickArray = df_tick["lastprice"].values
volumeTickArray = df_tick["volume"].values
symbolarray = df_tick["symbol"].values
for index, tEnd in enumerate(endArray):
dt = endArray[index]
bidDict = {}
askDict = {}
bar_vol = voluememin[index]
bar_close = closes[index]
bar_open = opens[index]
bar_low = lows[index]
bar_high = highs[index]
bar_symbol = symbolarray[index]
Bp = round(bp1TickArray[0], 4)
Ap = round(ap1TickArray[0], 4)
LastPrice = round(lastTickArray[0], 4)
Volume = volumeTickArray[0]
if LastPrice >= Ap:
if str(LastPrice) in askDict.keys():
askDict[str(LastPrice)] += Volume
else:
askDict[str(LastPrice)] = Volume
if LastPrice <= Bp:
if str(LastPrice) in bidDict.keys():
bidDict[str(LastPrice)] += Volume
else:
bidDict[str(LastPrice)] = Volume
# indexFinal = indexTick
bidDictResult, askDictResult = self.process(bidDict, askDict, symbol)
bidDictResult = dict(
sorted(bidDictResult.items(), key=operator.itemgetter(0))
)
askDictResult = dict(
sorted(askDictResult.items(), key=operator.itemgetter(0))
)
prinslist = list(bidDictResult.keys())
asklist = list(askDictResult.values())
bidlist = list(bidDictResult.values())
delta = sum(askDictResult.values()) - sum(bidDictResult.values())
# print(prinslist,asklist,bidlist)
# print(len(prinslist),len(bidDictResult),len(askDictResult))
df = pd.DataFrame(
{
"price": pd.Series([prinslist]),
"Ask": pd.Series([asklist]),
"Bid": pd.Series([bidlist]),
}
)
# df=pd.DataFrame({'price':pd.Series(bidDictResult.keys()),'Ask':pd.Series(askDictResult.values()),'Bid':pd.Series(bidDictResult.values())})
df["symbol"] = bar_symbol
df["datetime"] = dt
df["delta"] = str(delta)
df["close"] = bar_close
df["open"] = bar_open
df["high"] = bar_high
df["low"] = bar_low
df["volume"] = bar_vol
# df['ticktime']=tTickArray[0]
df["dj"] = self.GetOrderFlow_dj(df)
ofdatadict[symbol] = df
# 公众号:松鼠Quant
# 主页:www.quant789.com
# 本策略仅作学习交流使用,实盘交易盈亏投资者个人负责!!!
# 版权归松鼠Quant所有,禁止转发、转卖源码违者必究。
def GetOrderFlow_dj(self, kData):
param = self.param_dict[self.品种]
Config = {
"Value1": param.失衡,
"Value2": param.堆积,
"Value4": True,
}
aryData = kData
djcout = 0
# 遍历kData中的每一行,计算djcout指标
for index, row in aryData.iterrows():
kItem = aryData.iloc[index]
dtime = kItem["datetime"]
price_s = kItem["price"]
Ask_s = kItem["Ask"]
Bid_s = kItem["Bid"]
delta = kItem["delta"]
price_s = price_s
Ask_s = Ask_s
Bid_s = Bid_s
gj = 0
xq = 0
gxx = 0
xxx = 0
# 遍历price_s中的每一个元素,计算相关指标
for i in np.arange(0, len(price_s), 1):
duiji = {
"price": 0,
"time": 0,
"longshort": 0,
}
if i == 0:
delta = delta
order = {
"Price": price_s[i],
"Bid": {"Value": Bid_s[i]},
"Ask": {"Value": Ask_s[i]},
}
# 空头堆积
if i >= 0 and i < len(price_s) - 1:
if order["Bid"]["Value"] > Ask_s[i + 1] * int(Config["Value1"]):
gxx += 1
gj += 1
if gj >= int(Config["Value2"]) and Config["Value4"] is True:
duiji["price"] = price_s[i]
duiji["time"] = dtime
duiji["longshort"] = -1
if float(duiji["price"]) > 0:
djcout += -1
else:
gj = 0
# 多头堆积
if i >= 1 and i <= len(price_s) - 1:
if order["Ask"]["Value"] > Bid_s[i - 1] * int(Config["Value1"]):
xq += 1
xxx += 1
if xq >= int(Config["Value2"]) and Config["Value4"] is True:
duiji["price"] = price_s[i]
duiji["time"] = dtime
duiji["longshort"] = 1
if float(duiji["price"]) > 0:
djcout += 1
else:
xq = 0
# 返回计算得到的djcout值
return djcout
# def OnRtnTrade(self, pTrade):
# print("||成交回报||", pTrade)
# def OnRspOrderInsert(self, pInputOrder, pRspInfo, nRequestID, bIsLast):
# print("||OnRspOrderInsert||", pInputOrder, pRspInfo, nRequestID, bIsLast)
# 订单状态通知
# def OnRtnOrder(self, pOrder):
# print("||订单回报||", pOrder)
# 保存OF数据
def save_trade_data(self, df, instrument_id):
# 定义文件路径
csv_file_path = f"ofdata/{instrument_id}_ofdata.csv"
directory = os.path.dirname(csv_file_path)
# 检查目录是否存在,如果不存在则创建它
if not os.path.exists(directory):
os.makedirs(directory)
# 如果文件夹存在,则追加数据;否则,创建新文件并保存整个 DataFrame
if os.path.exists(csv_file_path):
# 仅保存最后一行数据
df.tail(1).to_csv(csv_file_path, mode="a", header=False, index=False)
else:
# 创建新文件并保存整个 DataFrame
df.to_csv(csv_file_path, index=False)
def w_log(self, symbol, log_message):
# 创建文件夹(如果不存在)
log_dir = "tradelogs"
if not os.path.exists(log_dir):
os.makedirs(log_dir)
# 写入日志到 CSV 文件
now = datetime.now().strftime("%Y-%m-%d %H:%M:%S")
log_file = os.path.join(log_dir, f"{symbol}log.csv")
# 打印日志到控制台
print(f"{now}: {log_message}")
with open(log_file, "a", encoding="utf-8", newline="") as csvfile:
writer = csv.writer(csvfile)
# 如果文件为空,写入表头
if csvfile.tell() == 0:
writer.writerow(["time", "logs"])
writer.writerow([now, log_message])
# 计算单品种资金流向数据
def 资金流向计算(self, df):
# 将 'delta' 和 'close' 转换为数值类型,强制转换错误
df["delta"] = pd.to_numeric(df["delta"], errors="coerce")
df["close"] = pd.to_numeric(df["close"], errors="coerce")
# 删除 'delta' 或 'close' 中的 NaN 值
df = df.dropna(subset=["delta", "close"])
symbol = df["symbol"].iloc[-1]
# symbol = ''.join(filter(str.isalpha, symbol)).upper()
# 资金净流向 = abs(sum(df['delta']*df['close']))*合约信息[symbol]['合约单位']*合约信息[symbol]['保证金']
hycs = int(fees_df[fees_df["合约代码"] == symbol]["合约乘数"].iloc[0])
bzj = (
float(fees_df[fees_df["合约代码"] == symbol]["做多保证金率"].iloc[0])
+ float(fees_df[fees_df["合约代码"] == symbol]["做空保证金率"].iloc[0])
) / 2
print("%s品种的合约乘数:%s,保证金率:%s" % (symbol, hycs, bzj))
资金净流向 = abs(sum(df["delta"] * df["close"])) * hycs * bzj
symbol = "".join(filter(str.isalpha, symbol)).upper()
更新状态 = True
# 将结果放入 DataFrame
result_df = pd.DataFrame({"资金净流向": [资金净流向], "更新状态": [更新状态]})
return result_df
# 收盘清仓
def 收盘清仓(self, symbol, data):
param = self.param_dict[symbol]
# 获取当前时间
current_time = datetime.now().time()
# 设置清仓操作的时间范围1:14:55到15:00
clearing_time1_start = s_time(14, 55)
clearing_time1_end = s_time(15, 0)
# 设置清仓操作的时间范围2:00:55到01:00
clearing_time2_start = s_time(22, 55)
clearing_time2_end = s_time(23, 0)
clearing_time3_start = s_time(0, 55)
clearing_time3_end = s_time(1, 0)
clearing_time4_start = s_time(2, 25)
clearing_time4_end = s_time(2, 30)
# jerome:增加修改合约代码识别
alpha_chars = ""
numeric_chars = ""
for char in symbol:
if char.isalpha():
alpha_chars = char
elif char.isdigit():
numeric_chars = char
# 检查当前时间是否在第一个清仓操作的时间范围内,并且清仓操作未执行过
if (
clearing_time1_start <= current_time <= clearing_time1_end
and not param.clearing_executed
):
# trade_dfs.drop(trade_dfs.index,inplace=True)#清除当天的行情数据
if param.pos > 0:
# 平多
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["BidPrice1"] - param.py,
param.Lots,
b"1",
b"1",
)
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["BidPrice1"] - param.py,
param.Lots,
b"1",
b"3",
)
param.pos = 0
self.w_log(symbol, f"{symbol}多头清仓操作")
# 发送邮件:
text = f"14:55平多清仓交易: 交易品种为{data['InstrumentID']}, 反手平空的平仓价格为{data['BidPrice1']-param.py}, 交易手数位{param.Lots}"
send_mail(text)
pass
elif param.pos < 0:
# 平空
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["AskPrice1"] + param.py,
param.Lots,
b"0",
b"1",
)
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["AskPrice1"] + param.py,
param.Lots,
b"0",
b"3",
)
param.pos = 0
self.w_log(symbol, f"{symbol}空头清仓操作")
# 发送邮件:
text = f"14:55平空清仓交易: 交易品种为{data['InstrumentID']}, 反手平空的平仓价格为{data['AskPrice1']+param.py}, 交易手数位{param.Lots}"
send_mail(text)
pass
param.clearing_executed = True # 设置标志变量为已执行
# 检查当前时间是否在第二个清仓操作的时间范围内,并且清仓操作未执行过
elif (
clearing_time2_start <= current_time <= clearing_time2_end
and not param.clearing_executed
and commodity_night_dict[alpha_chars] == s_time(23, 00)
):
# trade_dfs.drop(trade_dfs.index,inplace=True) #清除当天的行情数据
if param.pos > 0:
# 平多
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["BidPrice1"] - param.py,
param.Lots,
b"1",
b"1",
)
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["BidPrice1"] - param.py,
param.Lots,
b"1",
b"3",
)
param.pos = 0
self.w_log(symbol, f"{symbol}多头清仓操作")
# 发送邮件:
text = f"22:55平多清仓交易: 交易品种为{data['InstrumentID']}, 反手平空的平仓价格为{data['BidPrice1']-param.py}, 交易手数位{param.Lots}"
send_mail(text)
pass
elif param.pos < 0:
# 平空
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["AskPrice1"] + param.py,
param.Lots,
b"0",
b"1",
)
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["AskPrice1"] + param.py,
param.Lots,
b"0",
b"3",
)
param.pos = 0
self.w_log(symbol, f"{symbol}空头清仓操作")
# 发送邮件:
text = f"22:55平空清仓交易: 交易品种为{data['InstrumentID']}, 反手平空的平仓价格为{data['AskPrice1']+param.py}, 交易手数位{param.Lots}"
send_mail(text)
pass
# 检查当前时间是否在第三个清仓操作的时间范围内,并且清仓操作未执行过
elif (
clearing_time3_start <= current_time <= clearing_time3_end
and not param.clearing_executed
and commodity_night_dict[alpha_chars] == s_time(1, 00)
):
# trade_dfs.drop(trade_dfs.index,inplace=True) #清除当天的行情数据
if param.pos > 0:
# 平多
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["BidPrice1"] - param.py,
param.Lots,
b"1",
b"1",
)
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["BidPrice1"] - param.py,
param.Lots,
b"1",
b"3",
)
param.pos = 0
self.w_log(f"{symbol}多头清仓操作")
# 发送邮件:
text = f"00:55平多清仓交易: 交易品种为{data['InstrumentID']}, 反手平空的平仓价格为{data['BidPrice1']-param.py}, 交易手数位{param.Lots}"
send_mail(text)
pass
elif param.pos < 0:
# 平空
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["AskPrice1"] + param.py,
param.Lots,
b"0",
b"1",
)
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["AskPrice1"] + param.py,
param.Lots,
b"0",
b"3",
)
param.pos = 0
self.w_log(f"{symbol}空头清仓操作")
# 发送邮件:
text = f"00:55平空清仓交易: 交易品种为{data['InstrumentID']}, 反手平空的平仓价格为{data['AskPrice1']+param.py}, 交易手数位{param.Lots}"
send_mail(text)
pass
elif (
clearing_time4_start <= current_time <= clearing_time4_end
and not param.clearing_executed
and commodity_night_dict[alpha_chars] == s_time(2, 30)
):
# trade_dfs.drop(trade_dfs.index,inplace=True) #清除当天的行情数据
if param.pos > 0:
# 平多
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["BidPrice1"] - param.py,
param.Lots,
b"1",
b"1",
)
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["BidPrice1"] - param.py,
param.Lots,
b"1",
b"3",
)
param.pos = 0
self.w_log(f"{symbol}多头清仓操作")
# 发送邮件:
text = f"2:25平多清仓交易: 交易品种为{data['InstrumentID']}, 反手平空的平仓价格为{data['BidPrice1']-param.py}, 交易手数位{param.Lots}"
send_mail(text)
pass
elif param.pos < 0:
# 平空
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["AskPrice1"] + param.py,
param.Lots,
b"0",
b"1",
)
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["AskPrice1"] + param.py,
param.Lots,
b"0",
b"3",
)
param.pos = 0
self.w_log(f"{symbol}空头清仓操作")
# 发送邮件:
text = f"2:25平空清仓交易: 交易品种为{data['InstrumentID']}, 反手平空的平仓价格为{data['AskPrice1']+param.py}, 交易手数位{param.Lots}"
send_mail(text)
pass
param.clearing_executed = True # 设置标志变量为已执行
# 如果不在任何清仓操作的时间范围内,可以执行其他操作或不执行任何操作
else:
param.clearing_executed = False
pass
# print("不在清仓操作时间范围内")
return param.clearing_executed
def cal_sig(self, symbol_queue):
while True:
try:
data = symbol_queue.get(
block=True, timeout=5
) # 如果5秒没收到新的tick行情,则抛出异常
instrument_id = data["InstrumentID"].decode() # 品种代码
size = symbol_queue.qsize()
if size > 1:
print(
f"当前{instrument_id}共享队列长度为{size}, 有点阻塞!!!!!"
)
param = self.param_dict[instrument_id]
self.品种 = instrument_id
# OF计算数据开始
self.tickcome(data)
trade_df = trade_dfs[instrument_id]
# 清仓开关
run_kg = self.收盘清仓(instrument_id, data)
最新价 = data["LastPrice"]
# #多头时间出场
if param.pos > 0 and param.多头开仓历时 > param.平_多时间:
# 平多
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["BidPrice1"] - param.py,
param.Lots,
b"1",
b"1",
)
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["BidPrice1"] - param.py,
param.Lots,
b"1",
b"3",
)
param.pos = 0
param.多头止损价格 = 0
param.多头开仓历时 = 0
param.多头成本价格 = 0
self.w_log(
instrument_id,
f"历时{param.平_多时间}***多头***{self.品种}时间出场",
)
# 发送邮件
text = f"平多时间交易: 交易品种为{data['InstrumentID']}, 交易时间为{trade_df['datetime'].iloc[-1]}, 反手平多的平仓价格{data['BidPrice1']-param.py}, 交易手数位{param.Lots}"
send_mail(text)
# 多头价格止损
if param.pos > 0 and 最新价 < param.多头止损价格:
# 平多
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["BidPrice1"] - param.py,
param.Lots,
b"1",
b"1",
)
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["BidPrice1"] - param.py,
param.Lots,
b"1",
b"3",
)
param.pos = 0
param.多头止损价格 = 0
param.多头开仓历时 = 0
param.多头成本价格 = 0
self.w_log(
instrument_id,
f"多头止损触发: {最新价},多头止损价格:{param.多头止损价格} ***{instrument_id}多头止损***",
)
# 发送邮件
text = f"平多止损交易: 交易品种为{data['InstrumentID']}, 交易时间为{trade_df['datetime'].iloc[-1]}, 反手平多的平仓价格{data['BidPrice1']-param.py}, 交易手数位{param.Lots}"
send_mail(text)
# #多头跟踪止盈-----------------------暂时用不到------------------------
# elif param.pos>0 and len(trade_df)>1 and 最新价<trade_df['10_MA'].iloc[-1] and 最新价>param.多头成本价格 :
# #平多
# self.insert_order(data['ExchangeID'], data['InstrumentID'], data['BidPrice1']-param.py,param.Lots,b'1',b'1')
# self.insert_order(data['ExchangeID'], data['InstrumentID'], data['BidPrice1']-param.py,param.Lots,b'1',b'3')
# param.pos=0
# param.多头止损价格=0
# param.多头开仓历时=0
# param.多头成本价格=0
# self.w_log(instrument_id,f'多头跟踪止盈触发: {最新价} ***{instrument_id}多头止盈***')
# # #空头时间出场
if param.pos < 0 and param.空头开仓历时 > param.平_空时间:
# 平空
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["AskPrice1"] + param.py,
param.Lots,
b"0",
b"1",
)
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["AskPrice1"] + param.py,
param.Lots,
b"0",
b"3",
)
param.pos = 0
param.空头止损价格 = 0
param.空头开仓历时 = 0
param.空头成本价格 = 0
self.w_log(
instrument_id,
f"历时{param.平_空时间}***空头***{self.品种}时间出场",
)
# 发送邮件
text = f"平空时间交易: 交易品种为{data['InstrumentID']}, 交易时间为{trade_df['datetime'].iloc[-1]}, 反手平空的平仓价格为{data['AskPrice1']+param.py}, 交易手数位{param.Lots}"
send_mail(text)
# 空头价格止损
if param.pos < 0 and 最新价 > param.空头止损价格:
# 平空
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["AskPrice1"] + param.py,
param.Lots,
b"0",
b"1",
)
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["AskPrice1"] + param.py,
param.Lots,
b"0",
b"3",
)
param.pos = 0
param.空头止损价格 = 0
param.空头开仓历时 = 0
param.空头成本价格 = 0
self.w_log(
instrument_id,
f"空头止损触发: {最新价},空头止损价格:{param.空头止损价格} ***{instrument_id}空头止损***",
)
# 发送邮件
text = f"平空止损交易: 交易品种为{data['InstrumentID']}, 交易时间为{trade_df['datetime'].iloc[-1]}, 反手平空的平仓价格为{data['AskPrice1']+param.py}, 交易手数位{param.Lots}"
send_mail(text)
# #空头跟踪止盈-----------------------暂时用不到------------------------
# elif param.pos<0 and len(trade_df)>1 and 最新价>trade_df['10_MA'].iloc[-1] and 最新价<param.空头成本价格 :
# #平空
# self.insert_order(data['ExchangeID'], data['InstrumentID'], data['AskPrice1']+param.py,param.Lots,b'0',b'1')
# self.insert_order(data['ExchangeID'], data['InstrumentID'], data['AskPrice1']+param.py,param.Lots,b'0',b'3')
# param.pos=0
# param.空头止损价格=0
# param.空头开仓历时=0
# param.空头成本价格=0
# self.w_log(instrument_id,f'空头跟踪止盈触发: {最新价},***{instrument_id}空头止盈***')
# 交易程序开始
if len(trade_df) > param.cont_df and run_kg is False:
# 开仓历时更新:
if param.pos > 0:
param.多头开仓历时 += 1
elif param.pos < 0:
param.空头开仓历时 += 1
# 计算截面数据
截面数据_资金流向[instrument_id] = self.资金流向计算(trade_df)
# 日均线
trade_df["dayma"] = trade_df["close"].mean()
# 计算5日均线和10日均线,即使数据不足5日或10日
trade_df["5_MA"] = (
trade_df["close"].rolling(window=5, min_periods=1).mean()
)
trade_df["10_MA"] = (
trade_df["close"].rolling(window=10, min_periods=1).mean()
)
# 计算累积的delta值
trade_df["delta"] = trade_df["delta"].astype(float)
trade_df["delta累计"] = trade_df["delta"].cumsum()
# 大于日均线
开多1 = (
trade_df["dayma"].iloc[-1] > 0
and trade_df["close"].iloc[-1] > trade_df["dayma"].iloc[-1]
)
# 累计多空净量大于X
开多4 = (
trade_df["delta累计"].iloc[-1] > param.sum_delta
and trade_df["delta"].iloc[-1] > param.delta
)
# 小于日均线
开空1 = (
trade_df["dayma"].iloc[-1] > 0
and trade_df["close"].iloc[-1] < trade_df["dayma"].iloc[-1]
)
# 累计多空净量小于X
开空4 = (
trade_df["delta累计"].iloc[-1] < -param.sum_delta
and trade_df["delta"].iloc[-1] < -param.delta
)
开多组合 = (
开多1
and 开多4
and trade_df["dj"].iloc[-1] > param.dj_X
and trade_df["5_MA"].iloc[-1] > trade_df["10_MA"].iloc[-1]
)
开空条件 = (
开空1
and 开空4
and trade_df["dj"].iloc[-1] < -param.dj_X
and trade_df["5_MA"].iloc[-1] < trade_df["10_MA"].iloc[-1]
)
# 开平仓
# 换仓平多
if param.pos > 0 and instrument_id not in top_two_symbols:
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["BidPrice1"] - param.py,
param.Lots,
b"1",
b"1",
)
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["BidPrice1"] - param.py,
param.Lots,
b"1",
b"3",
)
param.pos = 0
param.多头止损价格 = 0
param.多头开仓历时 = 0
param.多头成本价格 = 0
self.w_log(
instrument_id,
f"当前截面品种{top_two_symbols},{instrument_id}不在范围,***多平仓***",
)
# 发送邮件
text = f"换仓平多交易: 交易品种为{data['InstrumentID']}, 交易时间为{trade_df['datetime'].iloc[-1]}, 反手平多的平仓价格{data['BidPrice1']-param.py}, 交易手数位{param.Lots}"
send_mail(text)
# 多头开仓
if param.pos == 0 and 开多组合 and instrument_id in top_two_symbols:
# 开多
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["AskPrice1"] + param.py,
param.Lots,
b"0",
b"0",
)
param.pos = 1
param.多头止损价格 = trade_df["low"].iloc[-2]
param.多头成本价格 = data["AskPrice1"]
param.多头开仓历时 = 1
self.w_log(
instrument_id,
f"品种:{instrument_id},委托价格: {param.多头成本价格}***开多***",
)
# 发送邮件
text = f"多头开仓交易: 交易品种为{data['InstrumentID']}, 交易时间为{trade_df['datetime'].iloc[-1]}, 多头开仓的开仓价格{data['AskPrice1']+param.py}, 交易手数位{param.Lots}"
send_mail(text)
# 换仓平空
if param.pos < 0 and instrument_id not in top_two_symbols:
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["AskPrice1"] + param.py,
param.Lots,
b"0",
b"1",
)
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["AskPrice1"] + param.py,
param.Lots,
b"0",
b"3",
)
param.pos = 0
param.空头止损价格 = 0
param.空头开仓历时 = 0
param.空头成本价格 = 0
self.w_log(
instrument_id,
f"当前截面品种{top_two_symbols},{instrument_id}不在范围,***空平仓***",
)
# 发送邮件
text = f"换仓平空交易: 交易品种为{data['InstrumentID']}, 交易时间为{trade_df['datetime'].iloc[-1]}, 反手平空的平仓价格为{data['AskPrice1']+param.py}, 交易手数位{param.Lots}"
send_mail(text)
# 空头开仓
if param.pos == 0 and 开空条件 and instrument_id in top_two_symbols:
# 开空
self.insert_order(
data["ExchangeID"],
data["InstrumentID"],
data["BidPrice1"] - param.py,
param.Lots,
b"1",
b"0",
)
param.pos = -1
param.空头止损价格 = trade_df["high"].iloc[-2]
param.空头成本价格 = data["BidPrice1"]
param.空头开仓历时 = 1
self.w_log(
instrument_id,
f"品种:{instrument_id},委托价格: {param.空头成本价格}***开空***",
)
# 发送邮件
text = f"空头开仓交易: 交易品种为{data['InstrumentID']}, 交易时间为{trade_df['datetime'].iloc[-1]}, 空头开仓的开仓价格{data['BidPrice1']-param.py}, 交易手数位{param.Lots}"
send_mail(text)
# print(trade_df)
# 保存OF数据
self.save_trade_data(trade_df, instrument_id)
# 保存bar计数
param.cont_df = len(trade_df)
except queue.Empty:
# print(f"当前合约队列为空,等待新数据插入。")
pass
# 将CTP推送的行情数据分发给对应线程队列去执行
def distribute_tick(self):
while True:
if self.status == 0:
data = None
while not self.md_queue.empty():
data = self.md_queue.get(block=False)
instrument_id = data["InstrumentID"].decode() # 品种代码
try:
self.queue_dict[instrument_id].put(
data, block=False
) # 往对应合约队列中插入行情
# print(f"{instrument_id}合约数据插入。")
except queue.Full:
# 当某个线程阻塞导致对应队列容量超限时抛出异常,不会影响其他合约的信号计算
print(
f"{instrument_id}合约信号计算阻塞导致对应队列已满,请检查对应代码逻辑后重启。"
)
else:
time.sleep(1)
def start(self, param_dict):
threads = []
self.param_dict = param_dict
thread1 = threading.Thread(target=横截面计算)
for symbol in param_dict.keys():
trade_dfs[symbol] = pd.DataFrame({})
self.queue_dict[symbol] = queue.Queue(
10
) # 为每个合约创建一个限制数为10的队列,当计算发生阻塞导致队列达到限制数时会抛出异常
t = threading.Thread(
target=self.cal_sig, args=(self.queue_dict[symbol],)
) # 为每个合约单独创建一个线程计算开仓逻辑
threads.append(t)
t.start()
thread1.start()
self.distribute_tick()
for t in threads:
t.join()
thread1.join()
# 定义横截面计算函数
def 横截面计算():
global top_two_symbols
while True:
if len(截面数据_资金流向) > 2:
goss = 1
# 检查是否有任何品种的更新状态为 False,如果有则直接返回
for symbol, data in 截面数据_资金流向.items():
if not data["更新状态"].iloc[-1]:
# print(f"品种 {symbol} 的更新状态为 False,跳过计算。")
goss = 0
break
if goss == 1:
# 继续计算资金净流向
sorted_items = sorted(
截面数据_资金流向.items(),
key=lambda item: item[1]["资金净流向"].iloc[-1],
reverse=True,
)
max_symbol = sorted_items[0][0]
second_max_symbol = sorted_items[1][0]
SAN_max_symbol = sorted_items[2][0]
top_two_symbols = [max_symbol, second_max_symbol, SAN_max_symbol]
print(f"最大值和第二大值对应的键: {top_two_symbols}")
print(f"截面数据_资金流向: {截面数据_资金流向}")
# 将所有品种的更新状态设置为 False
for symbol in 截面数据_资金流向:
截面数据_资金流向[symbol]["更新状态"] = False
time.sleep(1)
def get_main_contact_on_time(main_symbol_code, contacts_df):
main_symbol = contacts_df[contacts_df["品种代码"] == main_symbol_code][
"主连代码"
].iloc[0]
print("最终使用的主连代码:", main_symbol)
return main_symbol
def send_mail(text):
msg = MIMEMultipart()
msg["From"] = sender
msg["To"] = ";".join(receivers)
msg["Subject"] = subject
msg.attach(MIMEText(text, "plain", "utf-8"))
smtp = smtplib.SMTP_SSL(smtp_server, smtp_port)
smtp.login(username, password)
smtp.sendmail(sender, receivers, msg.as_string())
smtp.quit()
def run_trader(
param_dict,
broker_id,
td_server,
investor_id,
password,
app_id,
auth_code,
md_queue=None,
page_dir="",
private_resume_type=2,
public_resume_type=2,
):
my_trader = MyTrader(
broker_id,
td_server,
investor_id,
password,
app_id,
auth_code,
md_queue,
page_dir,
private_resume_type,
public_resume_type,
)
my_trader.start(param_dict)
if __name__ == "__main__":
# global symbol
# 公众号:松鼠Quant
# 主页:www.quant789.com
# 本策略仅作学习交流使用,实盘交易盈亏投资者个人负责!!!
# 版权归松鼠Quant所有,禁止转发、转卖源码违者必究。
sb_1 = get_main_contact_on_time("IH", contacts_df)
sb_2 = get_main_contact_on_time("ag", contacts_df)
sb_3 = get_main_contact_on_time("eb", contacts_df)
sb_4 = get_main_contact_on_time("si", contacts_df)
sb_5 = get_main_contact_on_time("sc", contacts_df)
sb_6 = get_main_contact_on_time("SA", contacts_df)
sb_7 = get_main_contact_on_time("rb", contacts_df)
sb_8 = get_main_contact_on_time("ru", contacts_df)
sb_9 = get_main_contact_on_time("ni", contacts_df)
sb_10 = get_main_contact_on_time("m", contacts_df)
# 注意:运行前请先安装好algoplus,
# pip install AlgoPlus
# http://www.algo.plus/ctp/python/0103001.html
# 实盘参数字典,需要实盘交易的合约,新建对应的参数对象即可,以下参数仅供测试使用,不作为实盘参考!!!!
历时平仓 = 4
param_dict = {}
param_dict[sb_1] = ParamObj(
symbol=sb_1,
Lots=1,
py=6,
dj_X=0,
delta=500,
sum_delta=2000,
失衡=3,
堆积=3,
周期="1T",
平_多时间=历时平仓,
平_空时间=历时平仓,
)
param_dict[sb_2] = ParamObj(
symbol=sb_2,
Lots=1,
py=6,
dj_X=0,
delta=500,
sum_delta=2000,
失衡=3,
堆积=3,
周期="1T",
平_多时间=历时平仓,
平_空时间=历时平仓,
)
param_dict[sb_3] = ParamObj(
symbol=sb_3,
Lots=1,
py=6,
dj_X=0,
delta=500,
sum_delta=2000,
失衡=3,
堆积=3,
周期="1T",
平_多时间=历时平仓,
平_空时间=历时平仓,
)
param_dict[sb_4] = ParamObj(
symbol=sb_4,
Lots=1,
py=6,
dj_X=0,
delta=500,
sum_delta=2000,
失衡=3,
堆积=3,
周期="1T",
平_多时间=历时平仓,
平_空时间=历时平仓,
)
param_dict[sb_5] = ParamObj(
symbol=sb_5,
Lots=1,
py=6,
dj_X=0,
delta=500,
sum_delta=2000,
失衡=3,
堆积=3,
周期="1T",
平_多时间=历时平仓,
平_空时间=历时平仓,
)
param_dict[sb_6] = ParamObj(
symbol=sb_6,
Lots=1,
py=6,
dj_X=0,
delta=500,
sum_delta=2000,
失衡=3,
堆积=3,
周期="1T",
平_多时间=历时平仓,
平_空时间=历时平仓,
)
param_dict[sb_7] = ParamObj(
symbol=sb_7,
Lots=1,
py=6,
dj_X=0,
delta=500,
sum_delta=2000,
失衡=3,
堆积=3,
周期="1T",
平_多时间=历时平仓,
平_空时间=历时平仓,
)
param_dict[sb_8] = ParamObj(
symbol=sb_8,
Lots=1,
py=6,
dj_X=0,
delta=500,
sum_delta=2000,
失衡=3,
堆积=3,
周期="1T",
平_多时间=历时平仓,
平_空时间=历时平仓,
)
param_dict[sb_9] = ParamObj(
symbol=sb_9,
Lots=1,
py=6,
dj_X=0,
delta=500,
sum_delta=2000,
失衡=3,
堆积=3,
周期="1T",
平_多时间=历时平仓,
平_空时间=历时平仓,
)
param_dict[sb_10] = ParamObj(
symbol=sb_10,
Lots=1,
py=6,
dj_X=0,
delta=500,
sum_delta=2000,
失衡=3,
堆积=3,
周期="1T",
平_多时间=历时平仓,
平_空时间=历时平仓,
)
# 用simnow模拟,不要忘记屏蔽下方实盘的future_account字典
future_account = get_simulate_account(
investor_id="227508", # simnow账户,注意是登录账户的ID,SIMNOW个人首页查看
password="Zj1234!@#%", # simnow密码
server_name="电信1", # 电信1、电信2、移动、TEST、N视界
subscribe_list=list(param_dict.keys()), # 合约列表
)
# #实盘用这个,不要忘记屏蔽上方simnow的future_account字典
# future_account = FutureAccount(
# broker_id='', # 期货公司BrokerID
# server_dict={'TDServer': "ip:port", 'MDServer': 'ip:port'}, # TDServer为交易服务器,MDServer为行情服务器。服务器地址格式为"ip:port。"
# reserve_server_dict={}, # 备用服务器地址
# investor_id='', # 账户
# password='', # 密码
# app_id='simnow_client_test', # 认证使用AppID
# auth_code='0000000000000000', # 认证使用授权码
# subscribe_list=list(param_dict.keys()), # 订阅合约列表
# md_flow_path='./log', # MdApi流文件存储地址,默认MD_LOCATION
# td_flow_path='./log', # TraderApi流文件存储地址,默认TD_LOCATION
# )
print("开始", len(future_account.subscribe_list))
# 共享队列
share_queue = Queue(maxsize=200)
# 行情进程
md_process = Process(target=run_tick_engine, args=(future_account, [share_queue]))
# 交易进程
trader_process = Process(
target=run_trader,
args=(
param_dict,
future_account.broker_id,
future_account.server_dict["TDServer"],
future_account.investor_id,
future_account.password,
future_account.app_id,
future_account.auth_code,
share_queue, # 队列
future_account.td_flow_path,
),
)
md_process.start()
trader_process.start()
md_process.join()
trader_process.join()