Files
tradeing/app_streamlit.py
T
ILSEON-RYU 949d876887 손절가 비율 2% -> 1.5% (10x 레버리지 기준 ROI -15%)
손익은 가격 변동 × 레버리지 이므로:
  10x 에서 ROI = -15% <=> 가격 = ±1.5%

따라서 STOP_LOSS_PCT = 0.015. 롱은 진입가 * 0.985, 숏은 진입가 * 1.015
에 도달 시 손절 알림.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-03 13:04:12 +09:00

845 lines
40 KiB
Python

import sys
import os
sys.stdout.reconfigure(line_buffering=True, encoding="utf-8")
sys.stderr.reconfigure(line_buffering=True, encoding="utf-8")
os.environ["PYTHONUNBUFFERED"] = "1"
os.environ["PYTHONIOENCODING"] = "utf-8"
import time
import requests
from dotenv import load_dotenv
load_dotenv()
import pandas as pd
import numpy as np
from datetime import datetime, timezone, timedelta
import threading
import streamlit as st
import plotly.graph_objects as go
from plotly.subplots import make_subplots
import ta
import urllib3
urllib3.disable_warnings(urllib3.exceptions.InsecureRequestWarning)
# ──────────────────────────────────────────────
# 페이지 설정 (반드시 최상단)
# ──────────────────────────────────────────────
st.set_page_config(
page_title="BTC/ETH Futures Dashboard",
layout="wide",
initial_sidebar_state="collapsed"
)
# 라이트모드 강제 CSS
st.markdown("""
<style>
html, body, [data-testid="stAppViewContainer"], [data-testid="stHeader"] {
background-color: #ffffff !important;
color: #131722 !important;
}
[data-testid="stSidebar"] { background-color: #f0f3fa !important; }
.stSelectbox > div > div { background-color: #ffffff !important; color: #131722 !important; }
.stButton > button { background-color: #238636 !important; color: #ffffff !important; border: none !important; }
header { background-color: #f0f0f0 !important; }
</style>
""", unsafe_allow_html=True)
# ──────────────────────────────────────────────
# 설정
# ──────────────────────────────────────────────
TELEGRAM_TOKEN = os.getenv("TELEGRAM_TOKEN", "")
TELEGRAM_CHAT_ID = os.getenv("TELEGRAM_CHAT_ID", "")
ALERT_COOLDOWN = 600
BASE = "https://fapi.binance.com"
KST = timedelta(hours=9)
STOP_LOSS_PCT = 0.015 # 10x 레버리지 기준 ROI -15% (= 가격 1.5% 역방향)
LONG_SIGNALS = {"strong_long_signal", "long_signal", "vol_long_signal"}
SHORT_SIGNALS = {"strong_short_signal", "short_signal", "vol_short_signal"}
TF_LABEL_MAP = {
"1m": "1분봉", "3m": "3분봉", "5m": "5분봉",
"15m": "15분봉", "30m": "30분봉",
"1h": "1시간봉", "4h": "4시간봉", "12h": "12시간봉",
"1d": "1일봉", "3d": "3일봉", "1M": "1개월봉",
}
# Streamlit 은 매 rerun 마다 메인 스크립트를 새 namespace 에서 재실행해
# globals() 가드도 우회된다. 알림 mutable 상태는 별도 모듈에 두어 sys.modules
# 캐싱으로 process lifetime 보존되도록 한다 (alert_state.py 참조).
import alert_state
# ──────────────────────────────────────────────
# 텔레그램
# ──────────────────────────────────────────────
def send_telegram(message: str):
try:
url = f"https://api.telegram.org/bot{TELEGRAM_TOKEN}/sendMessage"
requests.post(url, data={"chat_id": TELEGRAM_CHAT_ID, "text": message}, timeout=10)
except Exception as e:
print(f"[텔레그램 오류] {e}")
SIG_DEFS = [
("strong_long_signal", "strong_long", "🟢 강한 롱", "long"),
("strong_short_signal", "strong_short", "🔴 강한 숏", "short"),
("long_signal", "long", "🔼 일반 롱", "long"),
("short_signal", "short", "🔽 일반 숏", "short"),
("vol_long_signal", "vol_long", "🔼 볼륨 롱", "long"),
("vol_short_signal", "vol_short", "🔽 볼륨 숏", "short"),
("short_caution_signal","short_caution","⚠️ 숏 주의", "caution"),
]
def check_and_alert(df, symbol, interval):
now = time.time()
recent = df.tail(3)
eligible = []
for sig, key, sub_label, direction in SIG_DEFS:
if sig not in recent.columns:
continue
triggered = recent[recent[sig].fillna(False)]
if triggered.empty:
continue
candle_time = triggered.iloc[-1]["open_time"]
if candle_time == alert_state.last_fired_candle.get(key):
continue
if now - alert_state.last_alert[key] <= ALERT_COOLDOWN:
continue
eligible.append({
"sig": sig, "key": key, "sub_label": sub_label,
"direction": direction, "candle_time": candle_time, "row": triggered.iloc[-1],
})
if not eligible:
groups = {}
else:
groups = {"long": [], "short": [], "caution": []}
for e in eligible:
groups[e["direction"]].append(e)
tf_label = TF_LABEL_MAP.get(interval, interval)
def _send_group(group):
if not group:
return
candle_time = group[0]["candle_time"]
candle_time_str = pd.Timestamp(candle_time).strftime("%Y-%m-%d %H:%M")
sub_labels = " + ".join(e["sub_label"] for e in group)
direction = group[0]["direction"]
if direction == "caution":
msg = (
f"{sub_labels} 신호\n{symbol} {tf_label}\n"
f"시간: {candle_time_str}"
)
send_telegram(msg)
else:
entry_price = float(group[0]["row"]["open"])
if direction == "long":
stop_price = entry_price * (1 - STOP_LOSS_PCT)
else:
stop_price = entry_price * (1 + STOP_LOSS_PCT)
msg = (
f"{sub_labels} 진입 신호\n{symbol} {tf_label}\n"
f"시간: {candle_time_str}\n"
f"진입가: {entry_price:,.2f}\n"
f"손절가: {stop_price:,.2f}"
)
entry_record = {"price": entry_price, "stop": stop_price, "open_time": candle_time, "entry_msg": msg}
if direction == "long":
alert_state.long_entry = entry_record
else:
alert_state.short_entry = entry_record
send_telegram(msg)
for e in group:
alert_state.last_alert[e["key"]] = now
alert_state.last_fired_candle[e["key"]] = e["candle_time"]
_send_group(groups.get("long", []))
_send_group(groups.get("short", []))
_send_group(groups.get("caution", []))
current_price = float(df.iloc[-1]["close"])
if alert_state.long_entry is not None and current_price <= alert_state.long_entry["stop"]:
send_telegram(
f"[손절가알림]\n{alert_state.long_entry['entry_msg']}\n"
f"현재가: {current_price:,.2f}"
)
alert_state.long_entry = None
if alert_state.short_entry is not None and current_price >= alert_state.short_entry["stop"]:
send_telegram(
f"[손절가알림]\n{alert_state.short_entry['entry_msg']}\n"
f"현재가: {current_price:,.2f}"
)
alert_state.short_entry = None
# ──────────────────────────────────────────────
# 데이터 수집
# ──────────────────────────────────────────────
def get_klines(symbol="BTCUSDT", interval="5m", limit=375):
url = f"{BASE}/fapi/v1/klines"
r = requests.get(url, params={"symbol": symbol, "interval": interval, "limit": limit}, timeout=10, verify=False)
df = pd.DataFrame(r.json(), columns=[
"open_time","open","high","low","close","volume",
"close_time","quote_vol","trades","taker_buy_vol","taker_sell_vol","ignore"
])
for c in ["open","high","low","close","volume","taker_buy_vol","taker_sell_vol"]:
df[c] = df[c].astype(float)
df["taker_sell_vol"] = df["volume"] - df["taker_buy_vol"]
df["open_time"] = pd.to_datetime(df["open_time"], unit="ms") + KST
return df
def get_funding_rate(symbol="BTCUSDT", limit=100):
url = f"{BASE}/fapi/v1/fundingRate"
r = requests.get(url, params={"symbol": symbol, "limit": limit}, timeout=10, verify=False)
df = pd.DataFrame(r.json())
df["fundingRate"] = df["fundingRate"].astype(float) * 100
df["fundingTime"] = pd.to_datetime(df["fundingTime"], unit="ms") + KST
return df
def get_open_interest_history(symbol="BTCUSDT", period="5m", limit=100):
url = f"{BASE}/futures/data/openInterestHist"
r = requests.get(url, params={"symbol": symbol, "period": period, "limit": limit}, timeout=10, verify=False)
df = pd.DataFrame(r.json())
df["sumOpenInterest"] = df["sumOpenInterest"].astype(float)
df["timestamp"] = pd.to_datetime(df["timestamp"], unit="ms") + KST
return df
def get_long_short_ratio(symbol="BTCUSDT", period="5m", limit=500):
url = f"{BASE}/futures/data/topLongShortPositionRatio"
r = requests.get(url, params={"symbol": symbol, "period": period, "limit": limit}, timeout=10, verify=False)
df = pd.DataFrame(r.json())
df["longShortRatio"] = df["longShortRatio"].astype(float)
df["timestamp"] = pd.to_datetime(df["timestamp"], unit="ms") + KST
return df
def get_taker_buy_sell_ratio(symbol="BTCUSDT", period="5m", limit=100):
url = f"{BASE}/futures/data/takerlongshortRatio"
r = requests.get(url, params={"symbol": symbol, "period": period, "limit": limit}, timeout=10, verify=False)
df = pd.DataFrame(r.json())
df["buySellRatio"] = df["buySellRatio"].astype(float)
df["timestamp"] = pd.to_datetime(df["timestamp"], unit="ms") + KST
return df
# ──────────────────────────────────────────────
# 지표 계산
# ──────────────────────────────────────────────
def compute_indicators(df, interval="5m"):
c = df["close"]
df["MA7"] = c.rolling(7).mean()
df["MA25"] = c.rolling(25).mean()
df["MA99"] = c.rolling(99).mean()
df["MA200"] = c.rolling(200).mean()
df["BB_mid"] = c.rolling(20).mean()
df["BB_std"] = c.rolling(20).std()
df["BB_upper"] = df["BB_mid"] + 2 * df["BB_std"]
df["BB_lower"] = df["BB_mid"] - 2 * df["BB_std"]
df["RSI"] = ta.momentum.RSIIndicator(c, window=14).rsi()
macd = ta.trend.MACD(c, window_slow=26, window_fast=12, window_sign=9)
df["MACD"] = macd.macd()
df["MACD_signal"] = macd.macd_signal()
df["MACD_hist"] = macd.macd_diff()
stoch = ta.momentum.StochRSIIndicator(c, window=14, smooth1=3, smooth2=3)
df["StochRSI_k"] = stoch.stochrsi_k() * 100
df["StochRSI_d"] = stoch.stochrsi_d() * 100
df["ATR"] = ta.volatility.AverageTrueRange(df["high"], df["low"], df["close"], window=14).average_true_range()
df = compute_signals(df, interval)
return df
def compute_signals(df, interval="5m"):
df["bull_ma_2"] = (
(df["close"] > df["MA7"]) & (df["MA7"] > df["MA25"])
)
df["bear_ma_2"] = (
(df["close"] < df["MA7"]) & (df["MA7"] < df["MA25"])
)
df["bull_ma"] = (
(df["close"] > df["MA7"]) & (df["MA7"] > df["MA25"]) &
(df["MA25"] > df["MA99"])
)
df["bear_ma"] = (
(df["close"] < df["MA7"]) & (df["MA7"] < df["MA25"]) &
(df["MA25"] < df["MA99"])
)
df["long_signal"] = df["bull_ma_2"] & (df["RSI"] < 60) & (df["MACD_hist"] > df["MACD_hist"].shift(1)) & (df["close"] > df["BB_mid"])
df["short_signal"] = df["bear_ma_2"] & (df["RSI"] > 35) & (df["MACD_hist"] < df["MACD_hist"].shift(1)) & (df["close"] < df["BB_mid"])
df["long_signal"] = df["long_signal"] & (df["long_signal"].rolling(5, min_periods=1).sum().shift(1).fillna(0) == 0)
df["short_signal"] = df["short_signal"] & (df["short_signal"].rolling(5, min_periods=1).sum().shift(1).fillna(0) == 0)
if "sumOpenInterest" in df.columns and df["sumOpenInterest"].notna().sum() > 5:
oi_series = df["sumOpenInterest"].ffill()
else:
oi_series = df["close"] * df["volume"]
df["oi_up"] = oi_series > oi_series.shift(1)
df["oi_down"] = oi_series < oi_series.shift(1)
df["oi_up_2"] = df["oi_up"] & df["oi_up"].shift(1).fillna(False)
df["oi_down_2"] = df["oi_down"] & df["oi_down"].shift(1).fillna(False)
df["taker_buy_dom"] = df["taker_buy_vol"] > df["taker_sell_vol"]
df["taker_sell_dom"] = df["taker_sell_vol"] > df["taker_buy_vol"]
df["taker_buy_2"] = df["taker_buy_dom"] & df["taker_buy_dom"].shift(1).fillna(False)
df["taker_sell_2"] = df["taker_sell_dom"] & df["taker_sell_dom"].shift(1).fillna(False)
df["fr_long_favor"] = df["taker_buy_vol"].rolling(3).mean() > df["taker_sell_vol"].rolling(3).mean()
df["fr_short_favor"] = df["taker_sell_vol"].rolling(3).mean() > df["taker_buy_vol"].rolling(3).mean()
df["strong_long_signal"] = df["bull_ma"] & (df["RSI"] < 65) & (df["MACD_hist"] > df["MACD_hist"].shift(1)) & df["oi_up_2"] & df["taker_buy_2"] & df["fr_long_favor"]
df["strong_short_signal"] = df["bear_ma"] & (df["RSI"] > 35) & (df["MACD_hist"] < df["MACD_hist"].shift(1)) & df["oi_down_2"] & df["taker_sell_2"] & df["fr_short_favor"]
df["strong_long_signal"] = df["strong_long_signal"] & (df["strong_long_signal"].rolling(10, min_periods=1).sum().shift(1).fillna(0) == 0)
df["strong_short_signal"] = df["strong_short_signal"] & (df["strong_short_signal"].rolling(10, min_periods=1).sum().shift(1).fillna(0) == 0)
vol_avg = df["volume"].rolling(10).mean()
spike = df["volume"] > vol_avg * 3
buy_spike = spike & (df["taker_buy_vol"] > df["taker_sell_vol"])
sell_spike = spike & (df["taker_sell_vol"] > df["taker_buy_vol"])
df["exhaustion_short"] = buy_spike.shift(1).fillna(False)
df["exhaustion_long"] = sell_spike.shift(1).fillna(False)
_vol_min_map = {"1m": 33, "3m": 100, "5m": 100, "15m": 300, "30m": 600, "1h": 1200, "2h": 2400, "4h": 4800, "12h": 14400, "1d": 28800, "3d": 86400, "1M": 864000}
_vol_min = _vol_min_map.get(interval, 100)
df["sell_net"] = df["taker_sell_vol"] - df["taker_buy_vol"]
sell_net_avg = df["sell_net"].rolling(10).mean()
sell_spike_strong = (
(df["sell_net"] > sell_net_avg * 2) &
(df["sell_net"] > 0) &
(df["taker_sell_vol"] > _vol_min) &
df["oi_up"]
)
cooldown_vol_short = sell_spike_strong.rolling(10, min_periods=1).sum().shift(1).fillna(0) == 0
df["vol_short_signal"] = sell_spike_strong & cooldown_vol_short
df["buy_net"] = df["taker_buy_vol"] - df["taker_sell_vol"]
buy_net_avg = df["buy_net"].rolling(10).mean()
buy_spike_strong = (
(df["buy_net"] > buy_net_avg * 2) &
(df["buy_net"] > 0) &
(df["taker_buy_vol"] > _vol_min) &
df["oi_up"]
)
cooldown_vol_long = buy_spike_strong.rolling(10, min_periods=1).sum().shift(1).fillna(0) == 0
df["vol_long_signal"] = buy_spike_strong & cooldown_vol_long
if "fundingRate" in df.columns and "sumOpenInterest" in df.columns:
fr_extreme = df["fundingRate"] <= -0.007
raw_signal = df["oi_down_2"] & fr_extreme
cooldown_mask = raw_signal.rolling(5, min_periods=1).sum().shift(1).fillna(0) == 0
df["short_caution_signal"] = raw_signal & cooldown_mask
else:
df["short_caution_signal"] = False
return df
# ──────────────────────────────────────────────
# 차트 빌드
# ──────────────────────────────────────────────
COLORS = {
"bg": "#ffffff",
"grid": "#e0e3eb",
"text": "#131722",
"green": "#26a69a",
"red": "#ef5350",
"yellow":"#f5ce05",
"blue": "#2962ff",
"purple":"#9c27b0",
"orange":"#ff9800",
"MA7": "#f5ce05",
"MA25": "#ef5350",
"MA99": "#9c27b0",
"MA200": "#2962ff",
"BB": "rgba(41,98,255,0.1)",
}
def _to_floor_freq(period):
return {"1m":"1min","3m":"3min","5m":"5min","15m":"15min","30m":"30min","1h":"1h","4h":"4h","12h":"12h","1d":"1D","3d":"3D","1M":"1ME"}.get(period, period)
def build_chart(symbol, interval, candle_limit=200):
df = get_klines(symbol, interval, candle_limit)
oi_period = interval if interval in ["5m","15m","30m","1h","4h","12h","1d","3d","1M"] else "5m"
try:
oi = get_open_interest_history(symbol, oi_period, 200)
if not oi.empty:
oi_m = oi[["timestamp","sumOpenInterest"]].rename(columns={"timestamp":"open_time"})
df["open_time_r"] = df["open_time"].dt.floor(_to_floor_freq(oi_period))
oi_m["open_time"] = oi_m["open_time"].dt.floor(_to_floor_freq(oi_period))
df = df.merge(oi_m, left_on="open_time_r", right_on="open_time", how="left", suffixes=("","_oi"))
df = df.drop(columns=["open_time_r","open_time_oi"], errors="ignore")
df["sumOpenInterest"] = df["sumOpenInterest"].ffill()
except: pass
try:
fr = get_funding_rate(symbol, 200)
if not fr.empty:
fr_m = fr[["fundingTime","fundingRate"]].rename(columns={"fundingTime":"open_time"})
fr_m["open_time"] = fr_m["open_time"].dt.floor(_to_floor_freq("1h"))
df["open_time_r2"] = df["open_time"].dt.floor(_to_floor_freq("1h"))
df = df.merge(fr_m, left_on="open_time_r2", right_on="open_time", how="left", suffixes=("","_fr"))
df = df.drop(columns=["open_time_r2","open_time_fr"], errors="ignore")
df["fundingRate"] = df["fundingRate"].ffill().fillna(0)
except: pass
try:
ls = get_long_short_ratio(symbol, oi_period, 200)
if not ls.empty:
ls_m = ls[["timestamp","longShortRatio"]].rename(columns={"timestamp":"open_time"})
df["open_time_r3"] = df["open_time"].dt.floor(_to_floor_freq(oi_period))
ls_m["open_time"] = ls_m["open_time"].dt.floor(_to_floor_freq(oi_period))
df = df.merge(ls_m, left_on="open_time_r3", right_on="open_time", how="left", suffixes=("","_ls"))
df = df.drop(columns=["open_time_r3","open_time_ls"], errors="ignore")
df["longShortRatio"] = df["longShortRatio"].ffill()
except: pass
df = compute_indicators(df, interval)
try:
if interval != "1h":
df_1h = get_klines(symbol, "1h", 150)
df_1h["MA7"] = df_1h["close"].rolling(7).mean()
df_1h["MA25"] = df_1h["close"].rolling(25).mean()
df_1h["MA99"] = df_1h["close"].rolling(99).mean()
df_1h["MA200"] = df_1h["close"].rolling(200).mean()
df_1h["h1_bull_2"] = (
(df_1h["close"] > df_1h["MA7"]) & (df_1h["MA7"] > df_1h["MA25"])
)
df_1h["h1_bear_2"] = (
(df_1h["close"] < df_1h["MA7"]) & (df_1h["MA7"] < df_1h["MA25"])
)
df_1h["h1_bull"] = (
(df_1h["close"] > df_1h["MA7"]) &
(df_1h["MA7"] > df_1h["MA25"]) &
(df_1h["MA25"] > df_1h["MA99"])
)
df_1h["h1_bear"] = (
(df_1h["close"] < df_1h["MA7"]) &
(df_1h["MA7"] < df_1h["MA25"]) &
(df_1h["MA25"] < df_1h["MA99"])
)
df_1h_m = df_1h[["open_time","h1_bull","h1_bear","h1_bull_2","h1_bear_2"]].copy()
df["open_time_1h"] = df["open_time"].dt.floor("1h")
df_1h_m["open_time"] = df_1h_m["open_time"].dt.floor("1h")
df = df.merge(df_1h_m, left_on="open_time_1h", right_on="open_time",
how="left", suffixes=("","_1h"))
df = df.drop(columns=["open_time_1h","open_time_1h_x","open_time_1h_y"], errors="ignore")
df["_date"] = df["open_time"].dt.date
for col in ["h1_bull","h1_bear","h1_bull_2","h1_bear_2"]:
df[col] = df.groupby("_date")[col].transform(lambda x: x.ffill())
df.drop(columns=["_date"], inplace=True)
df["h1_bull"] = df["h1_bull"].fillna(False)
df["h1_bear"] = df["h1_bear"].fillna(False)
df["h1_bull_2"] = df["h1_bull_2"].fillna(False)
df["h1_bear_2"] = df["h1_bear_2"].fillna(False)
else:
df["h1_bull"] = df["bull_ma"]
df["h1_bear"] = df["bear_ma"]
df["h1_bull_2"] = df["bull_ma_2"]
df["h1_bear_2"] = df["bear_ma_2"]
except:
df["h1_bull"] = False
df["h1_bear"] = False
df["long_signal"] = df["long_signal"] & df["taker_buy_dom"]
df["short_signal"] = df["short_signal"] & df["taker_sell_dom"]
df["strong_long_signal"] = df["strong_long_signal"]
df["strong_short_signal"] = df["strong_short_signal"]
df["short_caution_signal"]= df["short_caution_signal"]
df["long_exhaustion_warn"] = False
t = df["open_time"]
fig = make_subplots(
rows=7, cols=1,
shared_xaxes=True,
row_heights=[0.38, 0.10, 0.10, 0.10, 0.10, 0.11, 0.11],
vertical_spacing=0.01,
subplot_titles=["", "Taker Buy/Sell Volume", "Open Interest",
"Funding Rate (%)", "Long/Short Ratio (탑트레이더)",
"RSI / StochRSI", "MACD"]
)
fig.add_trace(go.Candlestick(
x=t, open=df["open"], high=df["high"], low=df["low"], close=df["close"],
increasing_line_color=COLORS["green"], decreasing_line_color=COLORS["red"],
increasing_fillcolor=COLORS["green"], decreasing_fillcolor=COLORS["red"],
name="캔들", line=dict(width=1)
), row=1, col=1)
fig.add_trace(go.Scatter(x=t, y=df["BB_upper"], line=dict(color=COLORS["BB"].replace("0.1","0.6"), width=0.8), name="BB상단", showlegend=False), row=1, col=1)
fig.add_trace(go.Scatter(x=t, y=df["BB_lower"], line=dict(color=COLORS["BB"].replace("0.1","0.6"), width=0.8), fill="tonexty", fillcolor=COLORS["BB"], name="BB하단", showlegend=False), row=1, col=1)
for ma, col in [("MA200", COLORS["MA200"]), ("MA99", COLORS["MA99"]), ("MA25", COLORS["MA25"]), ("MA7", COLORS["MA7"])]:
fig.add_trace(go.Scatter(x=t, y=df[ma], line=dict(color=col, width=1.2), name=ma), row=1, col=1)
if "longShortRatio" in df.columns:
fig.add_trace(go.Scatter(x=t, y=df["longShortRatio"], line=dict(color=COLORS["orange"], width=1), name="탑트레이더 L/S"), row=1, col=1)
if "fundingRate" in df.columns:
fig.add_trace(go.Scatter(x=t, y=df["fundingRate"], line=dict(color=COLORS["purple"], width=1), name="Funding Rate"), row=1, col=1)
if "sumOpenInterest" in df.columns:
fig.add_trace(go.Scatter(x=t, y=df["sumOpenInterest"], line=dict(color=COLORS["blue"], width=1), name="OI"), row=1, col=1)
fig.add_trace(go.Scatter(x=t, y=df["taker_sell_vol"], mode="markers", marker=dict(color=COLORS["red"], size=3), name="Taker Sell"), row=1, col=1)
fig.add_trace(go.Scatter(x=t, y=df["taker_buy_vol"], mode="markers", marker=dict(color=COLORS["green"], size=3), name="Taker Buy"), row=1, col=1)
for mask, sym, color, sig_name in [
(df["exhaustion_short"], "star", COLORS["red"], "매수소진(숏)"),
(df["exhaustion_long"], "star", COLORS["green"], "매도소진(롱)"),
(df.get("long_exhaustion_warn", pd.Series([False]*len(df), index=df.index)), "x", COLORS["orange"], "롱소진경고(숏전환)"),
(df["strong_short_signal"],"triangle-down", COLORS["red"], "강한 숏 진입 신호"),
(df.get("vol_short_signal", pd.Series([False]*len(df), index=df.index)), "triangle-down", COLORS["orange"], "볼륨급등 숏 신호"),
(df.get("vol_long_signal", pd.Series([False]*len(df), index=df.index)), "triangle-up", "#00bfff", "볼륨급등 롱 신호"),
(df["strong_long_signal"], "triangle-up", COLORS["green"], "강한 롱 진입 신호"),
(df["short_signal"], "triangle-down", COLORS["orange"], "숏 진입 신호"),
(df["long_signal"], "triangle-up", COLORS["blue"], "롱 진입 신호"),
(df.get("short_caution_signal", pd.Series([False]*len(df), index=df.index)), "diamond", "#ff00ff", "숏 진입(주의)"),
]:
d = df[mask]
if not d.empty:
cd = list(zip(d["open_time"].dt.strftime("%m/%d %H:%M").tolist(), d["open"].tolist()))
_long_sigs = ["강한 롱 진입 신호", "볼륨급등 롱 신호", "롱 진입 신호", "매도소진(롱)"]
_short_sigs = ["강한 숏 진입 신호", "볼륨급등 숏 신호", "숏 진입 신호", "매수소진(숏)", "롱소진경고(숏전환)", "숏 진입(주의)"]
if sig_name in _long_sigs:
y_val = d["low"] * 0.9998
elif sig_name in _short_sigs:
y_val = d["high"] * 1.0002
else:
y_val = d["close"]
fig.add_trace(go.Scatter(
x=d["open_time"], y=y_val,
mode="markers", marker=dict(symbol=sym, color=color, size=10),
name=sig_name,
customdata=cd,
hovertemplate="<b>" + sig_name + "</b><br>신호: %{customdata[0]}<br>가격: %{customdata[1]:,.1f}<extra></extra>",
showlegend=True,
), row=1, col=1)
else:
fig.add_trace(go.Scatter(
x=[None], y=[None],
mode="markers", marker=dict(symbol=sym, color=color, size=10),
name=sig_name,
showlegend=True,
), row=1, col=1)
buy_vol = df["taker_buy_vol"] - df["taker_sell_vol"]
colors_v = [COLORS["green"] if v >= 0 else COLORS["red"] for v in buy_vol]
fig.add_trace(go.Bar(x=t, y=buy_vol, marker_color=colors_v, name="Taker Net"), row=2, col=1)
if "sumOpenInterest" not in df.columns:
df["spike_avg"] = df["volume"].rolling(10).mean()
fig.add_trace(go.Scatter(x=t, y=df["spike_avg"] * 3, line=dict(color=COLORS["yellow"], width=0.8, dash="dot"), name="스파이크 기준(3x)"), row=2, col=1)
if "sumOpenInterest" in df.columns:
fig.add_trace(go.Scatter(x=t, y=df["sumOpenInterest"], line=dict(color=COLORS["purple"], width=1.5), fill="tozeroy", fillcolor="rgba(156,39,176,0.15)", name="OI"), row=3, col=1)
if "fundingRate" in df.columns:
fr_colors = [COLORS["red"] if v < 0 else COLORS["green"] for v in df["fundingRate"]]
fig.add_trace(go.Bar(x=t, y=df["fundingRate"], marker_color=fr_colors, name="FR"), row=4, col=1)
fig.add_hline(y=0.005, line=dict(color=COLORS["orange"], width=1, dash="dash"), row=4, col=1)
fig.add_hline(y=-0.005, line=dict(color=COLORS["orange"], width=1, dash="dash"), row=4, col=1)
fig.add_hline(y=-0.007, line=dict(color=COLORS["red"], width=1, dash="dash"), row=4, col=1)
if "longShortRatio" in df.columns:
fig.add_trace(go.Scatter(x=t, y=df["longShortRatio"], line=dict(color=COLORS["orange"], width=1.5), name="탑트레이더 L/S"), row=5, col=1)
fig.add_hline(y=1.0, line=dict(color=COLORS["grid"], width=0.8, dash="dash"), row=5, col=1)
fig.add_trace(go.Scatter(x=t, y=df["RSI"], line=dict(color=COLORS["blue"], width=1.5), name="RSI(14)"), row=6, col=1)
fig.add_trace(go.Scatter(x=t, y=df["StochRSI_k"],line=dict(color=COLORS["red"], width=1.5), name="StochRSI K"), row=6, col=1)
fig.add_trace(go.Scatter(x=t, y=df["StochRSI_d"],line=dict(color=COLORS["orange"], width=1.0, dash="dot"), name="StochRSI D"), row=6, col=1)
for lvl in [20, 50, 80]:
fig.add_hline(y=lvl, line=dict(color=COLORS["grid"], width=0.6, dash="dash"), row=6, col=1)
hist_colors = [COLORS["green"] if v >= 0 else COLORS["red"] for v in df["MACD_hist"].fillna(0)]
fig.add_trace(go.Bar(x=t, y=df["MACD_hist"], marker_color=hist_colors, name="MACD Hist"), row=7, col=1)
fig.add_trace(go.Scatter(x=t, y=df["MACD"], line=dict(color=COLORS["blue"], width=1.2), name="MACD"), row=7, col=1)
fig.add_trace(go.Scatter(x=t, y=df["MACD_signal"], line=dict(color=COLORS["orange"], width=1.2), name="Signal"), row=7, col=1)
fig.add_hline(y=0, line=dict(color=COLORS["grid"], width=0.5), row=7, col=1)
last_price = df["close"].iloc[-1]
fig.add_hline(y=last_price, line=dict(color=COLORS["yellow"], width=1, dash="dash"), row=1, col=1)
fig.add_annotation(
x=df["open_time"].iloc[-1], y=last_price,
text=f"{last_price:,.1f}",
showarrow=False,
font=dict(color=COLORS["yellow"], size=12),
xanchor="left", yanchor="middle",
bgcolor="rgba(245,206,5,0.15)",
bordercolor=COLORS["yellow"], borderwidth=1,
row=1, col=1
)
fig.update_layout(
height=1600,
paper_bgcolor="#ffffff",
plot_bgcolor="#ffffff",
font=dict(color=COLORS["text"], size=11, family="monospace"),
legend=dict(bgcolor="rgba(255,255,255,0.95)", bordercolor=COLORS["grid"], borderwidth=1,
orientation="h", x=0, y=1.02, yanchor="bottom", font=dict(size=10)),
xaxis_rangeslider_visible=False,
margin=dict(l=60, r=100, t=60, b=20),
hovermode="x unified",
dragmode="pan",
showlegend=False,
)
for i in range(1, 8):
fig.update_xaxes(showgrid=True, gridcolor=COLORS["grid"], zeroline=False, row=i, col=1,
showline=True, linecolor=COLORS["grid"])
fig.update_yaxes(showgrid=True, gridcolor=COLORS["grid"], zeroline=False, row=i, col=1,
showline=True, linecolor=COLORS["grid"])
def tight(series, pad=0.03):
s = series.dropna()
if s.empty: return None, None
lo, hi = s.min(), s.max()
margin = (hi - lo) * pad if (hi - lo) > 0 else abs(lo) * pad + 1
return lo - margin, hi + margin
lo, hi = tight(pd.concat([df["low"], df["high"]]), pad=0.02)
if lo: fig.update_yaxes(range=[lo, hi], row=1, col=1)
buy_vol = df["taker_buy_vol"] - df["taker_sell_vol"]
abs_max = buy_vol.abs().quantile(0.98) * 1.5
if abs_max > 0: fig.update_yaxes(range=[-abs_max, abs_max], row=2, col=1)
if "sumOpenInterest" in df.columns:
lo, hi = tight(df["sumOpenInterest"], pad=0.05)
if lo: fig.update_yaxes(range=[lo, hi], row=3, col=1)
if "fundingRate" in df.columns:
lo, hi = tight(df["fundingRate"], pad=0.2)
if lo: fig.update_yaxes(range=[lo, hi], row=4, col=1)
if "longShortRatio" in df.columns:
lo, hi = tight(df["longShortRatio"], pad=0.05)
if lo: fig.update_yaxes(range=[lo, hi], row=5, col=1)
fig.update_yaxes(range=[0, 100], row=6, col=1)
macd_all = pd.concat([df["MACD"], df["MACD_signal"], df["MACD_hist"]]).dropna()
lo, hi = tight(macd_all, pad=0.1)
if lo: fig.update_yaxes(range=[lo, hi], row=7, col=1)
return fig, df
# ──────────────────────────────────────────────
# 알림 스레드
# ──────────────────────────────────────────────
# 알림 스레드용 mutable state 는 alert_state 모듈에 보관 (위 import 참조).
def _build_signal_df(symbol, interval, klines_limit=200):
df = get_klines(symbol, interval, klines_limit)
oi_period = interval if interval in ["5m","15m","30m","1h","4h","12h","1d","3d","1M"] else "5m"
try:
oi = get_open_interest_history(symbol, oi_period, min(klines_limit, 500))
if not oi.empty:
oi_m = oi[["timestamp","sumOpenInterest"]].rename(columns={"timestamp":"open_time"})
df["open_time_r"] = df["open_time"].dt.floor(_to_floor_freq(oi_period))
oi_m["open_time"] = oi_m["open_time"].dt.floor(_to_floor_freq(oi_period))
df = df.merge(oi_m, left_on="open_time_r", right_on="open_time", how="left", suffixes=("","_oi"))
df = df.drop(columns=["open_time_r","open_time_oi"], errors="ignore")
df["sumOpenInterest"] = df["sumOpenInterest"].ffill()
except: pass
try:
fr = get_funding_rate(symbol, 200)
if not fr.empty:
fr_m = fr[["fundingTime","fundingRate"]].rename(columns={"fundingTime":"open_time"})
fr_m["open_time"] = fr_m["open_time"].dt.floor(_to_floor_freq("1h"))
df["open_time_r2"] = df["open_time"].dt.floor(_to_floor_freq("1h"))
df = df.merge(fr_m, left_on="open_time_r2", right_on="open_time", how="left", suffixes=("","_fr"))
df = df.drop(columns=["open_time_r2","open_time_fr"], errors="ignore")
df["fundingRate"] = df["fundingRate"].ffill().fillna(0)
except: pass
df = compute_indicators(df, interval)
return df
def _alert_loop():
while True:
try:
with alert_state.alert_lock:
symbol = alert_state.alert_symbol
interval = alert_state.alert_interval
df = _build_signal_df(symbol, interval, 200)
check_and_alert(df, symbol, interval)
except Exception as e:
print(f"[알림스레드 오류] {e}")
time.sleep(30)
# ──────────────────────────────────────────────
# 일일 리포트 (자정 KST)
# ──────────────────────────────────────────────
DAILY_REPORT_TIMEFRAMES = ["5m", "15m", "30m", "1h", "4h"]
DAILY_REPORT_KLINES_LIMIT = {"5m": 500, "15m": 250, "30m": 200, "1h": 200, "4h": 200}
DAILY_REPORT_PAIRS = [
("strong_long_signal", "strong_short_signal"),
("long_signal", "short_signal"),
("vol_long_signal", "vol_short_signal"),
]
DAILY_REPORT_SIGNAL_LABELS = [
("strong_long_signal", "강한 롱"),
("strong_short_signal", "강한 숏"),
("long_signal", "일반 롱"),
("short_signal", "일반 숏"),
("vol_long_signal", "볼륨 롱"),
("vol_short_signal", "볼륨 숏"),
]
def _count_daily_signals_per_type(df, cutoff_kst, offset=1):
result = {sig: [0, 0] for sig, _ in DAILY_REPORT_SIGNAL_LABELS}
if df is None or df.empty or "open_time" not in df.columns:
return result
recent = df[df["open_time"] >= cutoff_kst].reset_index(drop=True)
if len(recent) <= offset:
return result
for long_sig, short_sig in DAILY_REPORT_PAIRS:
if long_sig not in recent.columns or short_sig not in recent.columns:
continue
for i in range(len(recent) - offset):
row = recent.iloc[i]
future = recent.iloc[i + offset]
if bool(row.get(long_sig, False)):
result[long_sig][0] += 1
if bool(future.get(short_sig, False)):
result[long_sig][1] += 1
if bool(row.get(short_sig, False)):
result[short_sig][0] += 1
if bool(future.get(long_sig, False)):
result[short_sig][1] += 1
return result
def _build_daily_report_lines(dfs, cutoff_kst, now_kst, symbol, offset, header_suffix):
lines = [
f"📊 24시간 신호 통계 ({symbol}) - {header_suffix}",
f"기준: {now_kst.strftime('%Y-%m-%d %H:%M')} KST",
]
for tf in DAILY_REPORT_TIMEFRAMES:
df = dfs.get(tf)
counts = _count_daily_signals_per_type(df, cutoff_kst, offset=offset)
lines.append("")
lines.append(f"[{TF_LABEL_MAP.get(tf, tf)}]")
total_all = 0
failed_all = 0
for sig, sig_label in DAILY_REPORT_SIGNAL_LABELS:
t, f = counts.get(sig, [0, 0])
passed = t - f
lines.append(f"{sig_label}: {passed}T {f}F")
total_all += t
failed_all += f
passed_all = total_all - failed_all
rate = (passed_all / total_all * 100) if total_all > 0 else 0.0
lines.append(f"합계: {passed_all}T {failed_all}F (승률 {rate:.2f}%)")
return "\n".join(lines)
def send_daily_report(symbol="BTCUSDT"):
now_kst = (datetime.now(timezone.utc) + KST).replace(tzinfo=None)
cutoff_kst = now_kst - timedelta(hours=24)
dfs = {}
for tf in DAILY_REPORT_TIMEFRAMES:
try:
dfs[tf] = _build_signal_df(symbol, tf, DAILY_REPORT_KLINES_LIMIT[tf])
except Exception as e:
print(f"[일일리포트 {tf} 데이터 오류] {e}")
dfs[tf] = None
msg_1x = _build_daily_report_lines(dfs, cutoff_kst, now_kst, symbol, offset=1, header_suffix="1배 시간 (다음 봉 검증)")
send_telegram(msg_1x)
msg_2x = _build_daily_report_lines(dfs, cutoff_kst, now_kst, symbol, offset=2, header_suffix="2배 시간 (2번째 봉 검증)")
send_telegram(msg_2x)
def _daily_report_loop():
while True:
try:
now_kst = (datetime.now(timezone.utc) + KST).replace(tzinfo=None)
today_str = now_kst.strftime("%Y-%m-%d")
if alert_state.last_report_date is None:
alert_state.last_report_date = today_str
print(f"[일일리포트] 스레드 기동 -- 다음 자정({today_str} 24:00 KST) 까지 대기")
elif alert_state.last_report_date != today_str:
print(f"[일일리포트] 자정 통과 감지 -> 발송 ({today_str})")
with alert_state.alert_lock:
symbol = alert_state.alert_symbol
send_daily_report(symbol)
alert_state.last_report_date = today_str
except Exception as e:
print(f"[일일리포트 스레드 오류] {e}")
time.sleep(60)
# ──────────────────────────────────────────────
# 메인 UI
# ──────────────────────────────────────────────
def main():
if not alert_state.alert_started:
t = threading.Thread(target=_alert_loop, daemon=True)
t.start()
alert_state.alert_started = True
if not alert_state.daily_report_started:
dr = threading.Thread(target=_daily_report_loop, daemon=True)
dr.start()
alert_state.daily_report_started = True
col1, col2, col3, col4, col5 = st.columns([2, 1, 1, 1, 2])
with col1:
st.markdown("### 📊 Futures Dashboard")
with col2:
symbol = st.selectbox("심볼", ["BTCUSDT","ETHUSDT","SOLUSDT","BNBUSDT"], index=0, label_visibility="collapsed")
with col3:
interval = st.selectbox("시간축", ["1m","3m","5m","15m","30m","1h","4h","12h","1d","3d","1M"], index=2, label_visibility="collapsed")
with col4:
refresh_sec = st.number_input("갱신(초)", min_value=10, max_value=300, value=30)
with col5:
now_kst = datetime.now(timezone.utc) + KST
st.markdown(f"<div style='text-align:right; font-size:12px; color:#888; margin-bottom:2px;'>🕐 마지막 갱신: {now_kst.strftime('%Y-%m-%d %H:%M:%S')} KST</div>", unsafe_allow_html=True)
col5a, col5b, col5c, col5d = st.columns(4)
with col5a:
refresh_btn = st.button("🔄 새로고침")
with col5b:
auto = st.checkbox("자동갱신", value=True)
with col5c:
show_legend = st.checkbox("범례", value=False)
with col5d:
mobile_mode = st.checkbox("모바일", value=False)
candle_limit = 53 if mobile_mode else 200
with alert_state.alert_lock:
alert_state.alert_symbol = symbol
alert_state.alert_interval = interval
try:
with st.spinner("데이터 로딩 중..."):
fig, df = build_chart(symbol, interval, candle_limit)
try:
fr_df = get_funding_rate(symbol, 1)
if not fr_df.empty:
rate = fr_df["fundingRate"].iloc[-1]
if rate <= -0.007:
st.error(f"🚨 극단적 숏스퀴즈 위험 | FR: {rate:.4f}% | 숏 신규진입 절대 금지")
elif rate <= -0.005:
st.warning(f"⚠️ 숏스퀴즈 경보 구간 | FR: {rate:.4f}% | 숏 진입 시 청산가 재확인 필수")
elif rate >= 0.005:
st.info(f"📈 롱 과열 구간 | FR: {rate:.4f}% | 롱스퀴즈 주의")
else:
st.success(f"✅ FR 정상 | {rate:.4f}%")
except: pass
fig.update_layout(showlegend=show_legend)
st.plotly_chart(fig, use_container_width=True, config={
"scrollZoom": True,
"doubleClick": "reset",
"displayModeBar": True,
"modeBarButtonsToRemove": ["lasso2d", "select2d"],
})
except Exception as e:
st.error(f"데이터 로드 오류: {e}")
import traceback
st.code(traceback.format_exc())
if auto:
time.sleep(refresh_sec)
st.rerun()
if __name__ == "__main__":
main()