| 123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170171172173174175176177178179180181182183184185186187188189190191192193194195196197198199200201202203204205206207208209210211212213214215216217218219220221222223224225226227228229230231232233234235236237238239240241242243244245246247248249250251252253254255256257258259260261262263264265266267268269270271272273274275276277278279280281282283284285286287288289290291292293294295296297298299300301302303304305306307308309310311312313314315316317318319320321322323324325326327328329330331332333334335336337338339340341 |
- from __future__ import annotations
- import json
- from datetime import UTC, datetime
- from pathlib import Path
- ROOT = Path(__file__).resolve().parents[1]
- STRATEGY_PATH = ROOT / "freqtrade" / "user_data" / "strategies" / "EthFocusedInformativeDry.py"
- REPORT_DIR = ROOT / "reports" / "eth-exploration"
- STRATEGY_SOURCE = '''from __future__ import annotations
- from datetime import datetime
- import pandas as pd
- from freqtrade.persistence import Trade
- from freqtrade.strategy import IStrategy
- class EthFocusedInformativeDry(IStrategy):
- INTERFACE_VERSION = 3
- timeframe = "5m"
- can_short = False
- startup_candle_count = 480
- process_only_new_candles = True
- minimal_roi = {"0": 100.0}
- stoploss = -0.02
- use_exit_signal = True
- exit_profit_only = False
- ignore_roi_if_entry_signal = False
- eth_rsi_trend_sma = 120
- eth_rsi_length = 2
- eth_rsi_threshold = 3.0
- eth_exit_rsi = 55.0
- btc_trend_sma = 480
- btc_momentum_lookback = 240
- btc_min_momentum = 0.0
- lead_lookback_15m = 8
- lead_lookback_5m = 16
- btc_return_threshold_15m = 0.018
- btc_return_threshold_5m = 0.012
- lag_gap = 0.006
- lead_lag_max_hold_bars = 8
- lead_lag_stop_loss = -0.006
- lead_lag_take_profit = 0.018
- rsi_filter_leverage = 3.0
- lead_lag_leverage = 3.0
- def informative_pairs(self) -> list[tuple[str, str]]:
- return [
- ("BTC/USDT:USDT", "5m"),
- ("BTC/USDT:USDT", "15m"),
- ("ETH/USDT:USDT", "15m"),
- ]
- def populate_indicators(self, dataframe: pd.DataFrame, metadata: dict) -> pd.DataFrame:
- dataframe["eth_return_5m"] = dataframe["close"].pct_change(self.lead_lookback_5m)
- if self.dp:
- btc_5m = self.dp.get_pair_dataframe(pair="BTC/USDT:USDT", timeframe="5m")
- btc_5m["btc_return"] = btc_5m["close"].pct_change(self.lead_lookback_5m)
- dataframe = self._merge_informative(dataframe, btc_5m, "btc", "5m")
- btc_15m = self.dp.get_pair_dataframe(pair="BTC/USDT:USDT", timeframe="15m")
- btc_15m["btc_trend"] = btc_15m["close"].rolling(self.btc_trend_sma).mean()
- btc_15m["btc_momentum"] = btc_15m["close"].pct_change(self.btc_momentum_lookback)
- btc_15m["btc_return"] = btc_15m["close"].pct_change(self.lead_lookback_15m)
- dataframe = self._merge_informative(dataframe, btc_15m, "btc", "15m")
- eth_15m = self.dp.get_pair_dataframe(pair=metadata["pair"], timeframe="15m")
- eth_15m["eth_trend"] = eth_15m["close"].rolling(self.eth_rsi_trend_sma).mean()
- eth_15m["eth_rsi2"] = self._rsi(eth_15m["close"], self.eth_rsi_length)
- eth_15m["eth_return"] = eth_15m["close"].pct_change(self.lead_lookback_15m)
- dataframe = self._merge_informative(dataframe, eth_15m, "eth", "15m")
- return dataframe
- def populate_entry_trend(self, dataframe: pd.DataFrame, metadata: dict) -> pd.DataFrame:
- rsi_filter = (
- (dataframe["eth_close_15m"] > dataframe["eth_trend_15m"])
- & (dataframe["eth_rsi2_15m"] <= self.eth_rsi_threshold)
- & (dataframe["btc_close_15m"] > dataframe["btc_trend_15m"])
- & (dataframe["btc_momentum_15m"] >= self.btc_min_momentum)
- )
- lead_lag_15m = (
- (dataframe["btc_return_15m"] >= self.btc_return_threshold_15m)
- & ((dataframe["btc_return_15m"] - dataframe["eth_return_15m"]) >= self.lag_gap)
- )
- lead_lag_5m = (
- (dataframe["btc_return_5m"] >= self.btc_return_threshold_5m)
- & ((dataframe["btc_return_5m"] - dataframe["eth_return_5m"]) >= self.lag_gap)
- )
- dataframe.loc[rsi_filter, ["enter_long", "enter_tag"]] = (1, "eth_btc_rsi_filter_15m")
- dataframe.loc[lead_lag_15m, ["enter_long", "enter_tag"]] = (1, "btc_lead_eth_lag_15m")
- dataframe.loc[lead_lag_5m, ["enter_long", "enter_tag"]] = (1, "btc_lead_eth_lag_5m")
- return dataframe
- def populate_exit_trend(self, dataframe: pd.DataFrame, metadata: dict) -> pd.DataFrame:
- dataframe.loc[
- (dataframe["eth_rsi2_15m"] >= self.eth_exit_rsi)
- | (dataframe["btc_close_15m"] <= dataframe["btc_trend_15m"]),
- ["exit_long", "exit_tag"],
- ] = (1, "rsi_or_btc_trend_exit")
- return dataframe
- def custom_exit(
- self,
- pair: str,
- trade: Trade,
- current_time: datetime,
- current_rate: float,
- current_profit: float,
- **kwargs,
- ) -> str | None:
- if trade.enter_tag not in {"btc_lead_eth_lag_15m", "btc_lead_eth_lag_5m"}:
- return None
- held_bars = int((current_time - trade.open_date_utc).total_seconds() // (5 * 60))
- if current_profit <= self.lead_lag_stop_loss:
- return "lead_lag_stop"
- if current_profit >= self.lead_lag_take_profit:
- return "lead_lag_take_profit"
- if held_bars >= self.lead_lag_max_hold_bars:
- return "lead_lag_max_hold"
- return None
- def leverage(
- self,
- pair: str,
- current_time: datetime,
- current_rate: float,
- proposed_leverage: float,
- max_leverage: float,
- entry_tag: str | None,
- side: str,
- **kwargs,
- ) -> float:
- if entry_tag in {"btc_lead_eth_lag_15m", "btc_lead_eth_lag_5m"}:
- return min(self.lead_lag_leverage, max_leverage)
- return min(self.rsi_filter_leverage, max_leverage)
- @staticmethod
- def _merge_informative(
- dataframe: pd.DataFrame,
- informative: pd.DataFrame,
- prefix: str,
- timeframe: str,
- ) -> pd.DataFrame:
- minutes = {"5m": 5, "15m": 15}[timeframe]
- informative = informative.copy()
- informative["merge_date"] = informative["date"] + pd.to_timedelta(minutes, unit="m")
- columns = ["merge_date", "open", "high", "low", "close", "volume"]
- columns += [column for column in informative.columns if column.startswith(f"{prefix}_")]
- informative = informative[columns].rename(
- columns={
- column: f"{prefix}_{column}_{timeframe}"
- for column in columns
- if column != "merge_date" and not column.startswith(f"{prefix}_")
- }
- )
- informative = informative.rename(
- columns={
- column: f"{column}_{timeframe}"
- for column in informative.columns
- if column.startswith(f"{prefix}_") and not column.endswith(f"_{timeframe}")
- }
- )
- merged = pd.merge_asof(
- dataframe.sort_values("date"),
- informative.sort_values("merge_date"),
- left_on="date",
- right_on="merge_date",
- direction="backward",
- ).ffill()
- return merged.drop(columns=[column for column in merged.columns if column.startswith("merge_date")])
- @staticmethod
- def _rsi(close: pd.Series, length: int) -> pd.Series:
- deltas = close.diff()
- gains = deltas.clip(lower=0.0)
- losses = -deltas.clip(upper=0.0)
- values = [float("nan")] * len(close)
- if len(close) <= length:
- return pd.Series(values, index=close.index)
- average_gain = float(gains.iloc[1 : length + 1].mean())
- average_loss = float(losses.iloc[1 : length + 1].mean())
- for index in range(length, len(close)):
- if index > length:
- average_gain = ((average_gain * (length - 1)) + float(gains.iloc[index])) / length
- average_loss = ((average_loss * (length - 1)) + float(losses.iloc[index])) / length
- if pd.isna(average_gain) or pd.isna(average_loss):
- continue
- if average_loss == 0.0:
- values[index] = 100.0 if average_gain > 0.0 else 50.0
- continue
- relative_strength = average_gain / average_loss
- values[index] = 100.0 - (100.0 / (1.0 + relative_strength))
- return pd.Series(values, index=close.index)
- '''
- def build_payload(generated_at: str) -> dict[str, object]:
- return {
- "generated_at": generated_at,
- "mode": "backtest_comparison_skeleton_only",
- "strategy": str(STRATEGY_PATH.relative_to(ROOT)),
- "scope": {
- "real_trading": False,
- "config_changed": False,
- "existing_strategy_changed": False,
- "base_pair": "ETH/USDT:USDT",
- "informative_pairs": ["BTC/USDT:USDT 5m", "BTC/USDT:USDT 15m", "ETH/USDT:USDT 15m"],
- "base_timeframe": "5m",
- },
- "legs": [
- {
- "tag": "eth_btc_rsi_filter_15m",
- "timeframe": "15m",
- "entry": "ETH close > ETH SMA120, ETH RSI2 <= 3, BTC close > BTC SMA480, BTC momentum240 >= 0",
- "exit": "ETH RSI2 >= 55 or BTC close <= BTC SMA480",
- "leverage": 3.0,
- },
- {
- "tag": "btc_lead_eth_lag_15m",
- "timeframe": "15m",
- "entry": "BTC return8 >= 0.018 and BTC return8 - ETH return8 >= 0.006",
- "exit": "stop -0.006, take profit 0.018, or max 8 base 5m bars",
- "leverage": 3.0,
- },
- {
- "tag": "btc_lead_eth_lag_5m",
- "timeframe": "5m",
- "entry": "BTC return16 >= 0.012 and BTC return16 - ETH return16 >= 0.006",
- "exit": "stop -0.006, take profit 0.018, or max 8 base 5m bars",
- "leverage": 3.0,
- },
- ],
- "data_export_commands": [
- "rtk uv run python scripts/export_freqtrade_data.py --symbol ETH-USDT-SWAP --bar 5m",
- "rtk uv run python scripts/export_freqtrade_data.py --symbol BTC-USDT-SWAP --bar 5m",
- "rtk uv run python scripts/export_freqtrade_data.py --symbol ETH-USDT-SWAP --bar 15m",
- "rtk uv run python scripts/export_freqtrade_data.py --symbol BTC-USDT-SWAP --bar 15m",
- ],
- "backtesting_command": (
- "rtk freqtrade backtesting --config freqtrade/config-okx-futures.json "
- "--userdir freqtrade/user_data --strategy EthFocusedInformativeDry "
- "--timeframe 5m --pairs ETH/USDT:USDT --timerange 20230101-"
- ),
- "notes": [
- "The skeleton is for backtest comparison only and does not modify config.",
- "The strategy models signal legs with entry tags on one ETH futures pair; it is not a multi-position portfolio allocator.",
- "The maker-dependent ETH robust TWAP leg is intentionally excluded.",
- ],
- }
- def build_markdown(payload: dict[str, object]) -> str:
- lines = [
- "# Freqtrade ETH informative skeleton",
- "",
- "Purpose: backtest comparison only. No live or dry-run trading command was executed, and no config file was changed.",
- "",
- "## Generated files",
- "",
- f"- Strategy: `{payload['strategy']}`",
- f"- JSON report: `{payload['json_report']}`",
- f"- Markdown report: `{payload['markdown_report']}`",
- "",
- "## Strategy mapping",
- "",
- "| Entry tag | Timeframe | Entry | Exit |",
- "| --- | --- | --- | --- |",
- ]
- for leg in payload["legs"]:
- lines.append(f"| `{leg['tag']}` | `{leg['timeframe']}` | {leg['entry']} | {leg['exit']} |")
- lines.extend(
- [
- "",
- "## Data export",
- "",
- "Export cached OKX candles into Freqtrade JSON futures files before backtesting:",
- "",
- ]
- )
- for command in payload["data_export_commands"]:
- lines.append(f"```bash\n{command}\n```")
- lines.extend(
- [
- "",
- "## Backtesting",
- "",
- "Run this only as a backtest comparison against exported data:",
- "",
- f"```bash\n{payload['backtesting_command']}\n```",
- "",
- "This uses the existing config path but does not require editing it. The `--pairs ETH/USDT:USDT` argument keeps the run focused on the ETH base pair while BTC is used only as informative data.",
- "",
- "## Boundaries",
- "",
- ]
- )
- for note in payload["notes"]:
- lines.append(f"- {note}")
- lines.append("")
- return "\n".join(lines)
- def main() -> int:
- generated_at = datetime.now(UTC).isoformat(timespec="seconds").replace("+00:00", "Z")
- stamp = datetime.now(UTC).strftime("%Y%m%dT%H%M%SZ")
- json_path = REPORT_DIR / f"freqtrade-eth-skeleton-{stamp}.json"
- md_path = REPORT_DIR / f"freqtrade-eth-skeleton-{stamp}.md"
- REPORT_DIR.mkdir(parents=True, exist_ok=True)
- STRATEGY_PATH.parent.mkdir(parents=True, exist_ok=True)
- STRATEGY_PATH.write_text(STRATEGY_SOURCE, encoding="utf-8")
- payload = build_payload(generated_at)
- payload["json_report"] = str(json_path.relative_to(ROOT))
- payload["markdown_report"] = str(md_path.relative_to(ROOT))
- json_path.write_text(json.dumps(payload, indent=2, sort_keys=True) + "\n", encoding="utf-8")
- md_path.write_text(build_markdown(payload), encoding="utf-8")
- print(STRATEGY_PATH.relative_to(ROOT))
- print(json_path.relative_to(ROOT))
- print(md_path.relative_to(ROOT))
- return 0
- if __name__ == "__main__":
- raise SystemExit(main())
|