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"""
data/provider_scrape.py

Fallback scraper for HR props when The Odds API hasn't yet indexed player props.
Hits each book's semi-public JSON API directly using requests only (no browser).

Books: DraftKings, FanDuel, BetMGM, Caesars
Each book's fetch is independent — one failure does not block the others.
Results are concatenated across all books that respond successfully.
"""
from __future__ import annotations

import json
import logging
import re
import threading
import time
from typing import Any

import pandas as pd
import requests

from data.market_provider_base import MarketProviderBase
from data.odds_name_map import map_odds_name_to_model_name

_log = logging.getLogger(__name__)

_HEADERS = {
    "User-Agent": (
        "Mozilla/5.0 (Windows NT 10.0; Win64; x64) "
        "AppleWebKit/537.36 (KHTML, like Gecko) "
        "Chrome/120.0.0.0 Safari/537.36"
    ),
    "Accept": "application/json, text/plain, */*",
    "Accept-Language": "en-US,en;q=0.9",
}

_DK_BASE = "https://sportsbook-nash.draftkings.com/api/odds/v1/league/84240"
_DK_HR_ROUTE = (
    "https://sportsbook.draftkings.com/leagues/baseball/mlb"
    "?category=batter-props&subcategory=home-runs"
)
_FD_BASE = "https://sbapi.il.sportsbook.fanduel.com/api"
_FD_AK = "FhMFpcPWXMeyZxOx"
_BETMGM_ACCESS_ID = "NmFjNjYzMmQtMmZlNS00MDQ3LWIzZjctNGMxMjhmNjNmNWVm"

_BOOK_FETCHERS = {
    "draftkings": "_fetch_draftkings",
    "fanduel": "_fetch_fanduel",
    "betmgm": "_fetch_betmgm",
    "williamhill_us": "_fetch_caesars",
}

_HR_MARKET_KEYWORDS = (
    "home run",
    "home_run",
    "homer",
    "to hit a home run",
    "to record a home run",
    "player to hit a home run",
    "player home runs",
    "anytime hr",
    "anytime home run",
)

_ADAPTER_STATE_LOCK = threading.Lock()
_ADAPTER_STATE: dict[str, dict[str, Any]] = {}
_HARD_FAILURE_RETRY_SECONDS = 60 * 30
_SOFT_FAILURE_RETRY_SECONDS = 60 * 10


def _looks_like_hr_market(*values: Any) -> bool:
    haystack = " | ".join(str(value or "").strip().lower() for value in values if str(value or "").strip())
    if not haystack:
        return False
    return any(keyword in haystack for keyword in _HR_MARKET_KEYWORDS)


def _extract_american_odds(*values: Any) -> int | None:
    for value in values:
        if value is None:
            continue
        try:
            text = str(value).strip()
            if not text:
                continue
            return int(text.replace("+", ""))
        except (TypeError, ValueError):
            continue
    return None


def _utc_epoch_seconds() -> float:
    return float(time.time())


def _utc_iso_now() -> str:
    return pd.Timestamp.utcnow().isoformat()


def _book_display_name(book_key: str) -> str:
    labels = {
        "draftkings": "DraftKings",
        "fanduel": "FanDuel",
        "betmgm": "BetMGM",
        "williamhill_us": "Caesars",
    }
    return labels.get(str(book_key or "").strip().lower(), str(book_key or "").strip())


def _is_hard_failure(status: str, error_text: str) -> bool:
    haystack = f"{status} {error_text}".lower()
    hard_markers = ("404", "400", "tls", "ssl", "parse", "json", "not found")
    return any(marker in haystack for marker in hard_markers)


def _get_adapter_state(book_key: str) -> dict[str, Any]:
    with _ADAPTER_STATE_LOCK:
        return dict(_ADAPTER_STATE.get(book_key, {}))


def _set_adapter_state(
    book_key: str,
    *,
    status: str,
    error: str = "",
    rows_returned: int = 0,
) -> dict[str, Any]:
    now_epoch = _utc_epoch_seconds()
    now_iso = _utc_iso_now()
    existing = _get_adapter_state(book_key)
    failure_streak = int(existing.get("failure_streak") or 0)
    if status == "healthy":
        failure_streak = 0
        retry_after_epoch = None
    else:
        failure_streak += 1
        delay_seconds = (
            _HARD_FAILURE_RETRY_SECONDS
            if _is_hard_failure(status, error)
            else _SOFT_FAILURE_RETRY_SECONDS
        )
        retry_after_epoch = now_epoch + delay_seconds

    state = {
        "adapter_status": status,
        "adapter_error": str(error or ""),
        "adapter_rows_returned": int(rows_returned or 0),
        "last_attempted_at": now_iso,
        "retry_after": (
            pd.Timestamp.fromtimestamp(retry_after_epoch, tz="UTC").isoformat()
            if retry_after_epoch is not None
            else ""
        ),
        "failure_streak": failure_streak,
        "_retry_after_epoch": retry_after_epoch,
    }
    with _ADAPTER_STATE_LOCK:
        _ADAPTER_STATE[book_key] = state
    return dict(state)


def _throttled_adapter_state(book_key: str) -> dict[str, Any] | None:
    state = _get_adapter_state(book_key)
    retry_after_epoch = state.get("_retry_after_epoch")
    if retry_after_epoch is None:
        return None
    if float(retry_after_epoch) <= _utc_epoch_seconds():
        return None
    throttled = dict(state)
    throttled["adapter_status"] = "throttled"
    return throttled


def _make_row(
    provider_name: str,
    event_id: str,
    commence_time: str,
    away_team: str,
    home_team: str,
    sportsbook: str,
    sportsbook_key: str,
    player_name_raw: str,
    odds_american: int,
    line: float = 0.5,
    selection_label: str | None = None,
) -> dict[str, Any]:
    return {
        "provider": provider_name,
        "event_id": event_id,
        "commence_time": commence_time,
        "away_team": away_team,
        "home_team": home_team,
        "sportsbook": sportsbook,
        "sportsbook_key": sportsbook_key,
        "market_key": "batter_home_runs",
        "market": "hr",
        "player_name_raw": player_name_raw,
        "selection_label": selection_label,
        "player_name": map_odds_name_to_model_name(player_name_raw),
        "odds_american": odds_american,
        "line": line,
    }


class ScrapeFallbackProvider(MarketProviderBase):
    provider_name = "scrape_fallback"

    def fetch_live_prop_odds(
        self,
        game_context,
        sportsbooks=None,
        markets=None,
    ) -> pd.DataFrame:
        return pd.DataFrame()

    def fetch_all_upcoming_hr_props(self, sportsbooks=None, markets=None) -> pd.DataFrame:
        result, _ = self.fetch_all_upcoming_hr_props_with_meta(
            sportsbooks=sportsbooks,
            markets=markets,
        )
        return result

    def fetch_all_upcoming_hr_props_with_meta(
        self,
        sportsbooks=None,
        markets=None,
    ) -> tuple[pd.DataFrame, dict[str, Any]]:
        del markets
        requested_books = [
            str(book or "").strip().lower()
            for book in (sportsbooks or list(_BOOK_FETCHERS.keys()))
        ]

        frames = []
        adapter_status_by_book: dict[str, str] = {}
        adapter_error_by_book: dict[str, str] = {}
        adapter_rows_by_book: dict[str, int] = {}
        adapter_last_attempted_at_by_book: dict[str, str] = {}
        adapter_retry_after_by_book: dict[str, str] = {}

        for book_key in requested_books:
            fetch_name = _BOOK_FETCHERS.get(book_key)
            if not fetch_name:
                continue
            throttled_state = _throttled_adapter_state(book_key)
            if throttled_state is not None:
                adapter_status_by_book[book_key] = str(throttled_state.get("adapter_status") or "throttled")
                adapter_error_by_book[book_key] = str(throttled_state.get("adapter_error") or "")
                adapter_rows_by_book[book_key] = int(throttled_state.get("adapter_rows_returned") or 0)
                adapter_last_attempted_at_by_book[book_key] = str(throttled_state.get("last_attempted_at") or "")
                adapter_retry_after_by_book[book_key] = str(throttled_state.get("retry_after") or "")
                _log.warning(
                    "[scrape_fallback] %s (%s) throttled until %s",
                    fetch_name,
                    book_key,
                    adapter_retry_after_by_book[book_key] or "unknown",
                )
                continue
            fetch_fn = getattr(self, fetch_name)
            try:
                df = fetch_fn()
                state = _set_adapter_state(
                    book_key,
                    status="healthy" if not df.empty else "empty_result",
                    rows_returned=len(df),
                )
                if not df.empty:
                    frames.append(df)
                    _log.warning(
                        "[scrape_fallback] %s (%s) returned %d rows",
                        fetch_fn.__name__,
                        book_key,
                        len(df),
                    )
                else:
                    _log.warning(
                        "[scrape_fallback] %s (%s) returned 0 rows",
                        fetch_fn.__name__,
                        book_key,
                    )
            except Exception as exc:
                state = _set_adapter_state(
                    book_key,
                    status=exc.__class__.__name__.lower() or "error",
                    error=str(exc),
                    rows_returned=0,
                )
                _log.warning(
                    "[scrape_fallback] %s (%s) failed: %s",
                    fetch_fn.__name__,
                    book_key,
                    exc,
                )
            adapter_status_by_book[book_key] = str(state.get("adapter_status") or "")
            adapter_error_by_book[book_key] = str(state.get("adapter_error") or "")
            adapter_rows_by_book[book_key] = int(state.get("adapter_rows_returned") or 0)
            adapter_last_attempted_at_by_book[book_key] = str(state.get("last_attempted_at") or "")
            adapter_retry_after_by_book[book_key] = str(state.get("retry_after") or "")

        result = pd.concat(frames, ignore_index=True) if frames else pd.DataFrame()
        _log.warning(
            "[scrape_fallback] SUMMARY requested_books=%s total_rows=%d",
            requested_books,
            len(result),
        )
        return result, {
            "adapter_status_by_book": adapter_status_by_book,
            "adapter_error_by_book": adapter_error_by_book,
            "adapter_rows_by_book": adapter_rows_by_book,
            "adapter_last_attempted_at_by_book": adapter_last_attempted_at_by_book,
            "adapter_retry_after_by_book": adapter_retry_after_by_book,
        }

    # ---------------------------------------------------------------------------
    # DraftKings
    # ---------------------------------------------------------------------------

    def _fetch_draftkings(self) -> pd.DataFrame:
        headers = dict(_HEADERS)
        headers["Accept"] = "text/html,application/xhtml+xml,application/xml;q=0.9,*/*;q=0.8"
        r = requests.get(_DK_HR_ROUTE, headers=headers, timeout=20)
        _log.warning("[dk_scrape] HTTP %s route=%s", r.status_code, _DK_HR_ROUTE)
        r.raise_for_status()
        return self._parse_dk_route_html(r.text)

    def _extract_dk_json_candidates(self, html_text: str) -> list[Any]:
        if not html_text:
            return []

        patterns = [
            r'<script[^>]*id="__NEXT_DATA__"[^>]*>\s*(.*?)\s*</script>',
            r'<script[^>]*>\s*window\.__NEXT_DATA__\s*=\s*(\{.*?\})\s*;?\s*</script>',
            r'<script[^>]*>\s*window\.__PRELOADED_STATE__\s*=\s*(\{.*?\})\s*;?\s*</script>',
            r'<script[^>]*type="application/json"[^>]*>\s*(.*?)\s*</script>',
        ]
        candidates: list[Any] = []
        for pattern in patterns:
            for match in re.finditer(pattern, html_text, flags=re.IGNORECASE | re.DOTALL):
                blob = str(match.group(1) or "").strip()
                if not blob or blob[:1] not in {"{", "["}:
                    continue
                try:
                    parsed = json.loads(blob)
                except Exception:
                    continue
                candidates.append(parsed)
        return candidates

    def _walk_json(self, payload: Any):
        if isinstance(payload, dict):
            yield payload
            for value in payload.values():
                yield from self._walk_json(value)
        elif isinstance(payload, list):
            for value in payload:
                yield from self._walk_json(value)

    def _parse_dk_route_html(self, html_text: str) -> pd.DataFrame:
        rows: list[dict[str, Any]] = []
        for candidate in self._extract_dk_json_candidates(html_text):
            for node in self._walk_json(candidate):
                event_group = None
                if isinstance(node, dict) and isinstance(node.get("eventGroup"), dict):
                    event_group = node["eventGroup"]
                elif isinstance(node, dict) and any(
                    key in node for key in ("offerCategories", "offerSubcategoryDescriptors")
                ):
                    event_group = node
                if not isinstance(event_group, dict):
                    continue
                parsed = self._parse_dk({"eventGroup": event_group})
                if not parsed.empty:
                    rows.extend(parsed.to_dict("records"))

        if not rows:
            return pd.DataFrame()

        deduped = pd.DataFrame(rows).drop_duplicates(
            subset=[
                "event_id",
                "player_name",
                "sportsbook_key",
                "market_key",
                "selection_label",
                "line",
                "odds_american",
            ],
            keep="first",
        )
        return deduped.reset_index(drop=True)

    def _parse_dk(self, data: dict) -> pd.DataFrame:
        rows: list[dict[str, Any]] = []
        event_group = data.get("eventGroup", {})
        for offer_cat in event_group.get("offerCategories", []):
            for sub_desc in offer_cat.get("offerSubcategoryDescriptors", []):
                for offer_group in sub_desc.get("offerGroups", []):
                    event_id = str(offer_group.get("eventId", "") or "")
                    event_desc = str(offer_group.get("eventDescription", "") or "")
                    parts = [p.strip() for p in event_desc.replace(" vs ", " @ ").split(" @ ")]
                    away_team = parts[0] if len(parts) >= 2 else ""
                    home_team = parts[1] if len(parts) >= 2 else ""
                    commence_time = str(offer_group.get("startDate", "") or "")
                    for offer_list in offer_group.get("offers", []):
                        for offer in (offer_list if isinstance(offer_list, list) else [offer_list]):
                            for outcome in offer.get("outcomes", []):
                                player_name_raw = str(
                                    offer.get("label", "")
                                    or outcome.get("label", "")
                                    or outcome.get("participant", "")
                                    or outcome.get("name", "")
                                    or ""
                                ).strip()
                                if not player_name_raw:
                                    continue
                                price = _extract_american_odds(
                                    outcome.get("oddsAmerican"),
                                    outcome.get("odds_american"),
                                    outcome.get("price"),
                                )
                                if price is None:
                                    continue
                                rows.append(_make_row(
                                    self.provider_name, event_id, commence_time,
                                    away_team, home_team,
                                    "DraftKings", "draftkings",
                                    player_name_raw, price,
                                    selection_label=str(outcome.get("label", "") or outcome.get("name", "") or "").strip() or None,
                                ))
        return pd.DataFrame(rows)

    # ---------------------------------------------------------------------------
    # FanDuel
    # ---------------------------------------------------------------------------

    def _fetch_fanduel(self) -> pd.DataFrame:
        url = (
            f"{_FD_BASE}/content-managed-page"
            f"?page=SPORT_LEAGUE&countryCode=US&regionCode=IL"
            f"&channel=BASEBALL&lang=en-US&_ak={_FD_AK}"
        )
        r = requests.get(url, headers=_HEADERS, timeout=20)
        _log.warning("[fd_scrape] HTTP %s", r.status_code)
        r.raise_for_status()
        return self._parse_fd(r.json())

    def _parse_fd(self, data: dict) -> pd.DataFrame:
        rows: list[dict[str, Any]] = []
        attachments = data.get("attachments", {})
        events = attachments.get("events", {})
        markets = attachments.get("markets", {})
        for _market_id, market in markets.items():
            market_type = str(market.get("marketType", "") or "")
            market_name = str(market.get("marketName", "") or market.get("name", "") or market.get("title", "") or "")
            if not _looks_like_hr_market(market_type, market_name):
                continue
            event_id = str(market.get("eventId", "") or "")
            event = events.get(str(event_id), {})
            away_team = str(
                event.get("awayTeam", {}).get("name", "")
                or event.get("awayTeamName", "")
                or ""
            )
            home_team = str(
                event.get("homeTeam", {}).get("name", "")
                or event.get("homeTeamName", "")
                or ""
            )
            commence_time = str(event.get("openDate", "") or "")
            for runner in market.get("runners", []):
                player_name_raw = str(
                    runner.get("runnerName", "")
                    or runner.get("runnerTitle", "")
                    or runner.get("name", "")
                    or ""
                ).strip()
                if not player_name_raw:
                    continue
                price = _extract_american_odds(
                    (
                        runner.get("winRunnerOdds", {})
                        .get("americanDisplayOdds", {})
                        .get("americanOdds", "")
                    ),
                    runner.get("price"),
                    runner.get("odds"),
                )
                if price is None:
                    continue
                rows.append(_make_row(
                    self.provider_name, event_id, commence_time,
                    away_team, home_team,
                    "FanDuel", "fanduel",
                    player_name_raw, price,
                    selection_label=str(runner.get("result", "") or runner.get("name", "") or "").strip() or None,
                ))
        return pd.DataFrame(rows)

    # ---------------------------------------------------------------------------
    # BetMGM
    # ---------------------------------------------------------------------------

    def _fetch_betmgm(self) -> pd.DataFrame:
        url = (
            "https://sports.nj.betmgm.com/en/sports/api/v2/leagues/baseball-mlb/events"
            f"?lang=en-us&x-bwin-accessid={_BETMGM_ACCESS_ID}"
        )
        r = requests.get(url, headers=_HEADERS, timeout=20)
        _log.warning("[betmgm_scrape] HTTP %s", r.status_code)
        r.raise_for_status()
        return self._parse_betmgm(r.json())

    def _parse_betmgm(self, data: dict | list) -> pd.DataFrame:
        rows: list[dict[str, Any]] = []
        events = (
            data
            if isinstance(data, list)
            else data.get("result", {}).get("dataList", data.get("events", []))
        )
        for event in events:
            event_id = str(event.get("id", "") or "")
            name_obj = event.get("name", {})
            name = str(name_obj.get("value", "") if isinstance(name_obj, dict) else name_obj or "")
            parts = [p.strip() for p in name.replace(" vs ", " @ ").split(" @ ")]
            away_team = parts[0] if len(parts) >= 2 else ""
            home_team = parts[1] if len(parts) >= 2 else ""
            commence_time = str(event.get("startDate", "") or "")
            for fixture in event.get("markets", []):
                mkt_name_obj = fixture.get("name", {})
                mkt_name = str(
                    mkt_name_obj.get("value", "") if isinstance(mkt_name_obj, dict) else mkt_name_obj or ""
                )
                if not _looks_like_hr_market(mkt_name, fixture.get("type"), fixture.get("key")):
                    continue
                for selection in fixture.get("selections", []):
                    sel_name_obj = selection.get("name", {})
                    player_name_raw = str(
                        sel_name_obj.get("value", "") if isinstance(sel_name_obj, dict) else sel_name_obj or ""
                    ).strip()
                    if not player_name_raw:
                        continue
                    price = _extract_american_odds(
                        selection.get("price", {}).get("americanOdds"),
                        selection.get("americanOdds"),
                        selection.get("price"),
                    )
                    if price is None:
                        continue
                    rows.append(_make_row(
                        self.provider_name, event_id, commence_time,
                        away_team, home_team,
                        "BetMGM", "betmgm",
                        player_name_raw, price,
                        selection_label=str(selection.get("result", "") or "").strip() or None,
                    ))
        return pd.DataFrame(rows)

    # ---------------------------------------------------------------------------
    # Caesars
    # ---------------------------------------------------------------------------

    def _fetch_caesars(self) -> pd.DataFrame:
        url = (
            "https://api.levelmgr.caesarssportsbook.com/api/v1"
            "/leagues/baseball-mlb/player-props/home-run"
        )
        r = requests.get(url, headers=_HEADERS, timeout=20)
        _log.warning("[caesars_scrape] HTTP %s", r.status_code)
        r.raise_for_status()
        return self._parse_caesars(r.json())

    def _parse_caesars(self, data: dict | list) -> pd.DataFrame:
        rows: list[dict[str, Any]] = []
        items = (
            data
            if isinstance(data, list)
            else data.get("data", data.get("events", data.get("items", [])))
        )
        for item in items:
            event_id = str(item.get("eventId", item.get("id", "")) or "")
            away_team = str(item.get("awayTeamName", item.get("away_team", "")) or "")
            home_team = str(item.get("homeTeamName", item.get("home_team", "")) or "")
            commence_time = str(item.get("eventDate", item.get("startTime", "")) or "")
            selections = item.get("participants", item.get("props", item.get("selections", [])))
            for prop in selections:
                if not _looks_like_hr_market(
                    item.get("marketName"),
                    item.get("name"),
                    prop.get("marketName"),
                    prop.get("name"),
                ):
                    continue
                player_name_raw = str(
                    prop.get("name", prop.get("participantName", prop.get("playerName", ""))) or ""
                ).strip()
                if not player_name_raw:
                    continue
                price = _extract_american_odds(
                    prop.get("odds", {}).get("american")
                    if isinstance(prop.get("odds"), dict)
                    else None,
                    prop.get("americanOdds"),
                    prop.get("price"),
                )
                if price is None:
                    continue
                rows.append(_make_row(
                    self.provider_name, event_id, commence_time,
                    away_team, home_team,
                    "Caesars", "williamhill_us",
                    player_name_raw, price,
                    selection_label=str(prop.get("result", "") or prop.get("selection", "") or "").strip() or None,
                ))
        return pd.DataFrame(rows)