11cc482599
Store 1m/5m/1h/12h/1d/1w with per-timeframe policies, aggregate 15m and 2h/4h on read, and support left-pan history fetches via before_ms. Co-authored-by: Cursor <cursoragent@cursor.com>
620 lines
18 KiB
Python
620 lines
18 KiB
Python
"""中控行情区:各实例 ccxt OHLCV 拉取(hub_bridge /api/hub/ohlcv 共用)。"""
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from __future__ import annotations
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import math
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import os
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import time
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from typing import Any, Callable, Optional
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CHART_TIMEFRAMES = frozenset(
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{
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"1m",
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"5m",
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"15m",
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"1h",
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"2h",
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"4h",
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"12h",
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"1d",
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"1w",
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}
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)
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CHART_TIMEFRAME_ORDER = (
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"1m",
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"5m",
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"15m",
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"1h",
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"2h",
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"4h",
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"12h",
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"1d",
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"1w",
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)
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DAILY_PLUS_TIMEFRAMES = frozenset({"1d", "1w"})
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# 入库 / 同步真源(交易所拉取)
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STORED_TIMEFRAMES = frozenset({"1m", "5m", "1h", "12h", "1d", "1w"})
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PERMANENT_STORED_TIMEFRAMES = frozenset({"12h", "1d", "1w"})
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YEAR_ROLLING_STORED = frozenset({"5m", "1h"})
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# 展示周期 → 本地聚合源(不落库)
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CHART_DISPLAY_AGGREGATE_FROM: dict[str, str] = {
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"15m": "5m",
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"2h": "1h",
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"4h": "1h",
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}
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SMALL_DISPLAY_TFS = frozenset({"1m", "5m", "15m"})
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MID_DISPLAY_TFS = frozenset({"1h", "2h", "4h"})
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HUB_KLINE_1M_MAX_BARS = max(1000, int(os.getenv("HUB_KLINE_1M_MAX_BARS", "10000")))
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HUB_KLINE_5M_1H_RETENTION_DAYS = max(30, int(os.getenv("HUB_KLINE_5M_1H_RETENTION_DAYS", "365")))
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HUB_KLINE_SEED_BARS = max(100, int(os.getenv("HUB_KLINE_SEED_BARS", "500")))
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# 部分交易所 ccxt 无原生 12h,或原生 K 线间隔异常时从 1h 聚合(仅远程拉取 fallback)
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OHLCV_AGGREGATE_FROM: dict[str, str] = {
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"12h": "1h",
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}
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TIMEFRAME_MS: dict[str, int] = {
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"1m": 60_000,
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"5m": 5 * 60_000,
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"15m": 15 * 60_000,
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"1h": 60 * 60_000,
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"2h": 2 * 60 * 60_000,
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"4h": 4 * 60 * 60_000,
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"12h": 12 * 60 * 60_000,
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"1d": 24 * 60 * 60_000,
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"1w": 7 * 24 * 60 * 60_000,
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}
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def normalize_chart_timeframe(raw: str | None, default: str = "5m") -> str:
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tf = (raw or default).strip().lower()
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return tf if tf in CHART_TIMEFRAMES else default
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def sync_timeframe_for_display(timeframe: str) -> str:
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"""展示周期对应的入库 / 同步周期。"""
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tf = normalize_chart_timeframe(timeframe)
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return CHART_DISPLAY_AGGREGATE_FROM.get(tf, tf)
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def aggregation_source_for_display(timeframe: str) -> str | None:
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tf = normalize_chart_timeframe(timeframe)
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return CHART_DISPLAY_AGGREGATE_FROM.get(tf)
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def aggregate_ratio(display_tf: str, source_tf: str) -> int:
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d = normalize_chart_timeframe(display_tf)
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s = normalize_chart_timeframe(source_tf)
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return max(1, int(TIMEFRAME_MS[d] // TIMEFRAME_MS[s]))
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def chart_initial_limit(timeframe: str) -> int:
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tf = normalize_chart_timeframe(timeframe)
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if tf in SMALL_DISPLAY_TFS:
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return 300
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if tf == "1w":
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return 150
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return 200
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def chart_chunk_limit(timeframe: str) -> int:
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tf = normalize_chart_timeframe(timeframe)
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if tf in SMALL_DISPLAY_TFS:
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return 500
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if tf == "1w":
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return 150
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if tf in MID_DISPLAY_TFS:
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return 300
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return 200
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def chart_memory_cap(timeframe: str) -> int:
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tf = normalize_chart_timeframe(timeframe)
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if tf in SMALL_DISPLAY_TFS:
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return 5000
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if tf == "1w":
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return 500
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return 1000
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def bar_limit_for_timeframe(timeframe: str) -> int:
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return chart_memory_cap(timeframe)
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def storage_retention_days(storage_tf: str) -> int | None:
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"""None 表示不按天截断(1m 按根数;12h/1d/1w 永久)。"""
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tf = normalize_chart_timeframe(storage_tf)
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if tf in YEAR_ROLLING_STORED:
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return HUB_KLINE_5M_1H_RETENTION_DAYS
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return None
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def history_cutoff_ms_for_storage(storage_tf: str, now_ms: int | None = None) -> int:
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days = storage_retention_days(storage_tf)
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if days is None:
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return 0
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now = int(now_ms if now_ms is not None else time.time() * 1000)
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return max(0, now - int(days) * 86400000)
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def seed_bar_target(storage_tf: str) -> int:
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tf = normalize_chart_timeframe(storage_tf)
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if tf == "1m":
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return HUB_KLINE_1M_MAX_BARS
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if tf in YEAR_ROLLING_STORED:
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period = TIMEFRAME_MS[tf]
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return min(
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int(86400000 * HUB_KLINE_5M_1H_RETENTION_DAYS / period) + 20,
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150000,
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)
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return HUB_KLINE_SEED_BARS
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def retention_policy_meta() -> dict[str, Any]:
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return {
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"1m": {"mode": "bars", "max_bars": HUB_KLINE_1M_MAX_BARS},
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"5m": {"mode": "days", "days": HUB_KLINE_5M_1H_RETENTION_DAYS},
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"1h": {"mode": "days", "days": HUB_KLINE_5M_1H_RETENTION_DAYS},
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"12h": {"mode": "permanent"},
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"1d": {"mode": "permanent"},
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"1w": {"mode": "permanent"},
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"aggregate_from": dict(CHART_DISPLAY_AGGREGATE_FROM),
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}
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def last_closed_bar_open_ms(timeframe: str, now_ms: int | None = None) -> int:
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"""上一根已收盘 K 的 open_time(毫秒 UTC)。"""
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tf = normalize_chart_timeframe(timeframe)
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period = TIMEFRAME_MS[tf]
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now = int(now_ms if now_ms is not None else time.time() * 1000)
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current_open = (now // period) * period
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return int(current_open - period)
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def window_start_ms(timeframe: str, need: int, retention_days: int, now_ms: int | None = None) -> int:
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"""本地库清理/读库窗口:不超过 retention_days。"""
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now = int(now_ms if now_ms is not None else time.time() * 1000)
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period = TIMEFRAME_MS[normalize_chart_timeframe(timeframe)]
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retention_cutoff = now - max(1, int(retention_days)) * 86400000
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want = now - max(1, int(need)) * period
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return max(retention_cutoff, want)
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def chart_fetch_start_ms(timeframe: str, need: int, now_ms: int | None = None) -> int:
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"""行情展示拉取起点:按 need 根回看(日线 500 / 日内 1000),不受 DB 保留天数限制。"""
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now = int(now_ms if now_ms is not None else time.time() * 1000)
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period = TIMEFRAME_MS[normalize_chart_timeframe(timeframe)]
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return max(0, now - max(1, int(need)) * period)
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def _positive_float(value: Any) -> Optional[float]:
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if value in (None, ""):
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return None
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try:
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v = float(value)
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except (TypeError, ValueError):
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return None
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return v if v > 0 else None
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def _price_tick_from_market_info(info: dict) -> Optional[float]:
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"""从 market.info 解析 tick(含币安 PRICE_FILTER.filters)。"""
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for key in ("tickSize", "tickSz", "price_increment", "order_price_round", "quote_increment"):
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v = _positive_float(info.get(key))
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if v is not None:
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return v
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for key in ("pricePrecision", "price_precision"):
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raw = info.get(key)
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if raw in (None, ""):
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continue
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try:
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p = float(raw)
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except (TypeError, ValueError):
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continue
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if p >= 1 and abs(p - round(p)) < 1e-9 and p <= 12:
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return 10 ** (-int(p))
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if 0 < p < 1:
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return p
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filters = info.get("filters")
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if isinstance(filters, list):
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for f in filters:
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if not isinstance(f, dict):
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continue
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if str(f.get("filterType") or "").upper() != "PRICE_FILTER":
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continue
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v = _positive_float(f.get("tickSize"))
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if v is not None:
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return v
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return None
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def round_price_to_tick(value: Any, tick: Optional[float]) -> Optional[float]:
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"""按交易所 tick 对齐价格(K 线/标记线与坐标轴一致)。"""
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t = normalize_price_tick(tick)
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if t is None:
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return None
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try:
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v = float(value)
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except (TypeError, ValueError):
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return None
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n = round(v / t) * t
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d = _decimals_from_tick(t)
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return float(f"{n:.{d}f}")
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def round_ohlcv_bars_to_tick(bars: list[dict[str, Any]], tick: Optional[float]) -> None:
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t = normalize_price_tick(tick)
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if t is None:
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return
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for b in bars:
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for key in ("open", "high", "low", "close"):
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if key in b:
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rounded = round_price_to_tick(b.get(key), t)
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if rounded is not None:
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b[key] = rounded
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def price_tick_from_market(exchange, exchange_symbol: str) -> Optional[float]:
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"""最小价格变动单位(与交易所 tick / price_to_precision 一致)。"""
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try:
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if not getattr(exchange, "markets", None):
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exchange.load_markets()
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market = exchange.market(exchange_symbol)
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except Exception:
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return None
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info = market.get("info") or {}
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if isinstance(info, dict):
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tick = _price_tick_from_market_info(info)
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if tick is not None:
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return tick
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limits = market.get("limits") or {}
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price_limits = limits.get("price") or {}
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if price_limits.get("min") not in (None, ""):
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try:
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v = float(price_limits["min"])
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if v > 0:
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return v
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except (TypeError, ValueError):
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pass
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try:
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sample = exchange.price_to_precision(exchange_symbol, 12345.678901234)
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s = str(sample).strip()
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if "." in s:
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frac = s.split(".", 1)[1]
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if frac:
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return 10 ** (-len(frac))
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return 1.0
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except Exception:
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pass
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prec = (market.get("precision") or {}).get("price")
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if prec is not None:
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try:
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p = float(prec)
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if p >= 1 and abs(p - round(p)) < 1e-9 and p <= 12:
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return 10 ** (-int(p))
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if 0 < p < 1:
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return p
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except (TypeError, ValueError):
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pass
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return None
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def normalize_price_tick(tick: Optional[float]) -> Optional[float]:
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"""将 tick 对齐为 10^-n,避免浮点噪声导致前端 lightweight-charts unexpected base。"""
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if tick is None:
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return None
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try:
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t = float(tick)
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except (TypeError, ValueError):
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return None
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if t <= 0:
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return None
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if t >= 1:
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return t
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try:
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exp = int(round(-math.log10(t)))
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except (ValueError, OverflowError):
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return None
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exp = max(0, min(12, exp))
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return 10 ** (-exp)
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def _decimals_from_tick(tick: float) -> int:
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if tick >= 1:
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return 0
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s = f"{tick:.12f}".rstrip("0")
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if "." in s:
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frac = s.split(".", 1)[1]
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if frac:
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return min(12, len(frac))
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return max(0, min(12, int(round(-math.log10(tick)))))
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def format_price_by_tick(value: Any, tick: Optional[float]) -> str:
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if value in (None, ""):
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return "-"
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try:
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v = float(value)
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except (TypeError, ValueError):
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return str(value)
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if v == 0:
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return "0"
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if tick and tick > 0:
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return f"{v:.{_decimals_from_tick(float(tick))}f}"
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av = abs(v)
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if av >= 10000:
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d = 2
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elif av >= 100:
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d = 3
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elif av >= 1:
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d = 4
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elif av >= 0.01:
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d = 6
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else:
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d = 8
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text = f"{v:.{d}f}"
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return text.rstrip("0").rstrip(".") if "." in text else text
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def exchange_supports_timeframe(exchange, timeframe: str) -> bool:
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tf = normalize_chart_timeframe(timeframe)
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tfs = getattr(exchange, "timeframes", None) or {}
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if not tfs:
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return True
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return tf in tfs
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def _median_bar_step_ms(bars: list[dict[str, Any]]) -> Optional[int]:
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if len(bars) < 2:
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return None
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steps: list[int] = []
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for i in range(1, min(len(bars), 64)):
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step = int(bars[i]["open_time_ms"]) - int(bars[i - 1]["open_time_ms"])
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if step > 0:
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steps.append(step)
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if not steps:
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return None
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steps.sort()
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return steps[len(steps) // 2]
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def bars_spacing_matches_timeframe(
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bars: list[dict[str, Any]], timeframe: str, *, tolerance: float = 0.08
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) -> bool:
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if len(bars) < 2:
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return True
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period = TIMEFRAME_MS[normalize_chart_timeframe(timeframe)]
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step = _median_bar_step_ms(bars)
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if step is None:
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return False
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return abs(step - period) <= period * tolerance
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def align_bar_open_ms(open_time_ms: int, period_ms: int) -> int:
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return (int(open_time_ms) // period_ms) * period_ms
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def aggregate_ohlcv_bars(
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bars: list[dict[str, Any]], target_timeframe: str
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) -> list[dict[str, Any]]:
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"""将细周期 OHLCV 聚合为目标周期(UTC 对齐 bucket)。"""
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tf = normalize_chart_timeframe(target_timeframe)
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period = TIMEFRAME_MS[tf]
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buckets: dict[int, dict[str, Any]] = {}
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for b in bars or []:
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try:
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key = align_bar_open_ms(int(b["open_time_ms"]), period)
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o = float(b["open"])
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h = float(b["high"])
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l = float(b["low"])
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c = float(b["close"])
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v = float(b.get("volume") or 0)
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except (KeyError, TypeError, ValueError):
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continue
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cur = buckets.get(key)
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if cur is None:
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buckets[key] = {
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"open_time_ms": key,
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"open": o,
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"high": h,
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"low": l,
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"close": c,
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"volume": v,
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}
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continue
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cur["high"] = max(float(cur["high"]), h)
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cur["low"] = min(float(cur["low"]), l)
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cur["close"] = c
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cur["volume"] = float(cur.get("volume") or 0) + v
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return [buckets[k] for k in sorted(buckets.keys())]
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def _next_since_from_batch(batch: list, period_ms: int) -> int:
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last_ts = int(batch[-1][0])
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if len(batch) >= 2:
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step = int(batch[-1][0]) - int(batch[-2][0])
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if step > 0:
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return last_ts + step
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return last_ts + period_ms
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def _paginate_fetch_ohlcv(
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exchange,
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ex_sym: str,
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timeframe: str,
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*,
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want: int,
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since_ms: int | None,
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period_ms: int,
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chunk_max: int = 300,
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) -> list[dict[str, Any]]:
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tf = normalize_chart_timeframe(timeframe)
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collected: list = []
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if since_ms is not None and int(since_ms) > 0:
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since = int(since_ms)
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else:
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since = max(0, int(time.time() * 1000) - want * period_ms)
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now_ms = int(time.time() * 1000)
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guard = 0
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prev_since = None
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while len(collected) < want and guard < 80:
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guard += 1
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if since >= now_ms:
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break
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req_limit = min(chunk_max, want - len(collected))
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try:
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batch = exchange.fetch_ohlcv(
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ex_sym, timeframe=tf, since=since, limit=req_limit
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)
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except Exception as e:
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err = str(e).lower()
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if collected and (
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"from" in err
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and "to" in err
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or "invalid request parameter" in err
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):
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break
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raise
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if not batch:
|
||
break
|
||
collected.extend(batch)
|
||
next_since = _next_since_from_batch(batch, period_ms)
|
||
if next_since >= now_ms:
|
||
break
|
||
if prev_since is not None and next_since <= prev_since:
|
||
break
|
||
prev_since = since
|
||
since = next_since
|
||
|
||
bars = _bars_to_dicts(collected)
|
||
uniq: dict[int, dict[str, Any]] = {}
|
||
for b in bars:
|
||
uniq[int(b["open_time_ms"])] = b
|
||
merged = [uniq[k] for k in sorted(uniq.keys())]
|
||
if len(merged) > want:
|
||
merged = merged[-want:]
|
||
return merged
|
||
|
||
|
||
def _bars_to_dicts(ohlcv: list) -> list[dict[str, Any]]:
|
||
out: list[dict[str, Any]] = []
|
||
for bar in ohlcv or []:
|
||
if not bar or len(bar) < 6:
|
||
continue
|
||
try:
|
||
out.append(
|
||
{
|
||
"open_time_ms": int(bar[0]),
|
||
"open": float(bar[1]),
|
||
"high": float(bar[2]),
|
||
"low": float(bar[3]),
|
||
"close": float(bar[4]),
|
||
"volume": float(bar[5]),
|
||
}
|
||
)
|
||
except (TypeError, ValueError):
|
||
continue
|
||
return out
|
||
|
||
|
||
def fetch_ohlcv_for_hub(
|
||
*,
|
||
symbol: str,
|
||
timeframe: str,
|
||
since_ms: int | None = None,
|
||
limit: int = 500,
|
||
normalize_symbol_input: Callable[[Any], str],
|
||
normalize_exchange_symbol: Callable[[str], str],
|
||
ensure_markets_loaded: Callable[[], None],
|
||
exchange,
|
||
friendly_error: Callable[[Exception], str] | None = None,
|
||
) -> dict[str, Any]:
|
||
"""从 ccxt 拉 OHLCV,供 hub_bridge /api/hub/ohlcv 返回。"""
|
||
tf = normalize_chart_timeframe(timeframe)
|
||
sym = normalize_symbol_input(symbol)
|
||
if not sym:
|
||
return {"ok": False, "msg": "symbol 不能为空"}
|
||
try:
|
||
ensure_markets_loaded()
|
||
ex_sym = normalize_exchange_symbol(sym)
|
||
want = max(1, min(int(limit or bar_limit_for_timeframe(tf)), 1500))
|
||
period = TIMEFRAME_MS[tf]
|
||
merged: list[dict[str, Any]] = []
|
||
src_tf = OHLCV_AGGREGATE_FROM.get(tf)
|
||
|
||
if exchange_supports_timeframe(exchange, tf):
|
||
candidate = _paginate_fetch_ohlcv(
|
||
exchange,
|
||
ex_sym,
|
||
tf,
|
||
want=want,
|
||
since_ms=since_ms,
|
||
period_ms=period,
|
||
)
|
||
if candidate and bars_spacing_matches_timeframe(candidate, tf):
|
||
merged = candidate
|
||
|
||
if (
|
||
not merged
|
||
and src_tf
|
||
and exchange_supports_timeframe(exchange, src_tf)
|
||
):
|
||
src_period = TIMEFRAME_MS[normalize_chart_timeframe(src_tf)]
|
||
ratio = max(1, int(math.ceil(period / src_period)))
|
||
src_want = min(1500, want * ratio + ratio * 4)
|
||
src_bars = _paginate_fetch_ohlcv(
|
||
exchange,
|
||
ex_sym,
|
||
src_tf,
|
||
want=src_want,
|
||
since_ms=since_ms,
|
||
period_ms=src_period,
|
||
)
|
||
if not src_bars or not bars_spacing_matches_timeframe(src_bars, src_tf):
|
||
return {
|
||
"ok": False,
|
||
"msg": f"无法获取 {tf} K 线(细周期 {src_tf} 数据异常)",
|
||
}
|
||
merged = aggregate_ohlcv_bars(src_bars, tf)
|
||
if len(merged) > want:
|
||
merged = merged[-want:]
|
||
|
||
if not merged:
|
||
try:
|
||
tail = exchange.fetch_ohlcv(
|
||
ex_sym, timeframe=tf, limit=min(want, 300)
|
||
)
|
||
merged = _bars_to_dicts(tail or [])
|
||
if len(merged) > want:
|
||
merged = merged[-want:]
|
||
except Exception:
|
||
pass
|
||
if not merged:
|
||
return {"ok": False, "msg": "交易所未返回 K 线"}
|
||
|
||
tick = normalize_price_tick(price_tick_from_market(exchange, ex_sym))
|
||
round_ohlcv_bars_to_tick(merged, tick)
|
||
|
||
return {
|
||
"ok": True,
|
||
"symbol": sym,
|
||
"exchange_symbol": ex_sym,
|
||
"timeframe": tf,
|
||
"price_tick": tick,
|
||
"bars": merged,
|
||
}
|
||
except Exception as e:
|
||
msg = friendly_error(e) if friendly_error else str(e)
|
||
return {"ok": False, "msg": f"K线加载失败:{msg}"}
|