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1810 1811 1812 1813 1814 1815 1816 1817 1818 1819 1820 1821 1822 1823 1824 1825 1826 1827 1828 1829 1830 1831 1832 1833 1834 1835 1836 1837 1838 1839 1840 1841 1842 1843 1844 1845 1846 1847 1848 1849 1850 1851 1852 1853 1854 1855 1856 1857 1858 1859 1860 1861 1862 1863 1864 1865 1866 1867 1868 1869 1870 1871 1872 1873 1874 1875 1876 1877 1878 1879 1880 1881 1882 1883 1884 1885 1886 1887 1888 1889 1890 1891 1892 1893 1894 1895 1896 1897 1898 1899 1900 1901 1902 1903 1904 1905 1906 1907 1908 1909 1910 1911 1912 1913 1914 1915 1916 1917 1918 1919 1920 1921 1922 1923 1924 1925 1926 1927 1928 1929 1930 1931 1932 1933 1934 1935 1936 1937 1938 1939 1940 1941 1942 1943 1944 1945 1946 1947 1948 1949 1950 1951 1952 1953 1954 | from __future__ import annotations
from collections import defaultdict
import json
import logging
import threading
from typing import Any
_log = logging.getLogger(__name__)
import pandas as pd
from sqlalchemy import text
from database.db import get_connection, replace_table_contents, safe_read_sql, upsert_dataframe
from features.pitch_features import add_pitch_features
from models.rolling_form_model import (
build_batter_rolling_form_row,
build_pitcher_rolling_form_row,
)
from utils.helpers import utc_now_iso
from visualization.cards.player_identity import load_identity_map, normalize_for_matching, to_canonical_name
PRIOR_SEASONS = (2021, 2022, 2023, 2024, 2025)
CURRENT_SEASON = 2026
_HITTER_BLEND_K = 260.0
_PITCHER_BLEND_K = 320.0
_MAX_ROWS_PER_PLAYER = 420
_MIN_CURRENT_ROWS_WHEN_AVAILABLE = 20
_SNAPSHOT_VERSION = "shared_baseline_v1"
_DEFAULT_SNAPSHOT_MAX_AGE_SECONDS = 60 * 30
_FALLBACK_BUILD_TIMEOUT_SECONDS: int = 5
_SNAPSHOT_READ_TIMEOUT_SECONDS: int = 20 # wall-clock cap for the 8 DB reads in load_shared_baseline_bundle_from_snapshots
_PRIOR_SEASON_RECENCY_WEIGHTS = {
2025: 1.00,
2024: 0.85,
2023: 0.70,
2022: 0.55,
2021: 0.45,
}
_REFRESH_LOCK = threading.Lock()
_REFRESH_INFLIGHT: set[tuple[tuple[str, ...], tuple[str, ...]]] = set()
_PERSIST_LOCK = threading.Lock()
_PERSIST_INFLIGHT: set[tuple[str, tuple[str, ...], tuple[str, ...]]] = set()
_NUMERIC_COLS = [
"batter",
"pitcher",
"game_pk",
"source_season",
"inning",
"at_bat_number",
"pitch_number",
"plate_x",
"plate_z",
"release_speed",
"release_spin_rate",
"release_extension",
"release_pos_x",
"release_pos_z",
"pfx_x",
"pfx_z",
"launch_speed",
"launch_angle",
"estimated_woba_using_speedangle",
"spray_angle",
"hc_x",
"hc_y",
"balls",
"strikes",
"outs_when_up",
"bat_score",
"fld_score",
"post_bat_score",
"post_fld_score",
]
_EVENT_SNAPSHOT_COLS = [
"player_name",
"event_key",
"batter",
"pitcher",
"game_date",
"game_pk",
"source_season",
"pitch_type",
"pitch_name",
"events",
"description",
"stand",
"p_throws",
"home_team",
"away_team",
"inning",
"inning_topbot",
"at_bat_number",
"pitch_number",
"plate_x",
"plate_z",
"release_speed",
"release_spin_rate",
"release_extension",
"release_pos_x",
"release_pos_z",
"pfx_x",
"pfx_z",
"launch_speed",
"launch_angle",
"estimated_woba_using_speedangle",
"spray_angle",
"hc_x",
"hc_y",
"bb_type",
"balls",
"strikes",
"outs_when_up",
"bat_score",
"fld_score",
"post_bat_score",
"post_fld_score",
"pitcher_hand",
"batter_stand",
"movement_magnitude",
"spin_efficiency_proxy",
"release_height_proxy",
"release_side_proxy",
"count_string",
"baseline_mode",
"prior_sample_size",
"season_2026_sample_size",
"prior_weight",
"season_2026_weight",
"baseline_driver",
"rolling_overlay_active",
"baseline_role",
"_baseline_source",
"snapshot_built_at",
"snapshot_version",
"source_status",
]
_BATTER_ROLLING_COLS = [
"player_name",
"batter_ev_5g",
"batter_ev_10g",
"batter_ev90_5g",
"batter_ev90_10g",
"batter_hard_hit_rate_5g",
"batter_hard_hit_rate_10g",
"batter_barrel_rate_5g",
"batter_barrel_rate_10g",
"batter_avg_launch_angle_5g",
"batter_avg_launch_angle_10g",
"batter_fb_rate_5g",
"batter_fb_rate_10g",
"batter_ld_rate_5g",
"batter_gb_rate_5g",
"batter_air_ball_rate_5g",
"batter_hr_rate_5g",
"batter_hr_rate_10g",
"batter_pull_air_rate_5g",
"batter_pulled_hard_air_rate_5g",
"batter_pulled_barrel_rate_5g",
"batter_games_in_window_5g",
"batter_games_in_window_10g",
"batter_recent_form_available",
"source_row_count",
"snapshot_built_at",
"snapshot_version",
"source_status",
]
_PITCHER_ROLLING_COLS = [
"player_name",
"pitcher_avg_release_speed_5g",
"pitcher_avg_release_speed_10g",
"pitcher_avg_release_spin_rate_5g",
"pitcher_ev_allowed_5g",
"pitcher_ev_allowed_10g",
"pitcher_hard_hit_rate_allowed_5g",
"pitcher_hard_hit_rate_allowed_10g",
"pitcher_barrel_rate_allowed_5g",
"pitcher_barrel_rate_allowed_10g",
"pitcher_avg_launch_angle_allowed_5g",
"pitcher_fb_rate_allowed_5g",
"pitcher_ld_rate_allowed_5g",
"pitcher_gb_rate_allowed_5g",
"pitcher_hr_allowed_rate_5g",
"pitcher_hr_allowed_rate_10g",
"pitcher_games_in_window_5g",
"pitcher_games_in_window_10g",
"pitcher_recent_form_available",
"pitcher_rolling_confidence",
"source_row_count",
"snapshot_built_at",
"snapshot_version",
"source_status",
]
def _safe_int(value: Any) -> int | None:
try:
if value is None or str(value).strip() in {"", "nan", "None"}:
return None
return int(float(value))
except Exception:
return None
def _coerce_bool(value: Any) -> bool:
text = str(value or "").strip().lower()
return text in {"1", "true", "yes"}
def _normalize_name(value: Any) -> str:
return normalize_for_matching(to_canonical_name(str(value or "").strip()))
def _normalized_name_set(values: list[Any] | tuple[Any, ...] | set[Any] | pd.Series | None) -> set[str]:
if values is None:
return set()
return {
_normalize_name(value)
for value in list(values)
if _normalize_name(value)
}
def _compute_missing_requested_names(
requested_names: tuple[str, ...] | list[str] | None,
available_names: set[str],
) -> list[str]:
if not requested_names:
return []
out: list[str] = []
for raw_name in requested_names:
cleaned = str(raw_name or "").strip()
if not cleaned:
continue
if _normalize_name(cleaned) not in available_names:
out.append(cleaned)
return out
def _annotate_request_coverage(
bundle: dict[str, pd.DataFrame],
*,
requested_hitter_names: tuple[str, ...],
requested_pitcher_names: tuple[str, ...],
coverage_mode: str,
background_refresh_queued: bool,
) -> dict[str, pd.DataFrame]:
available_hitters = _normalized_name_set(
bundle.get("batter_baseline_meta", pd.DataFrame()).get("player_name", pd.Series(dtype="object")).dropna().astype(str).tolist()
if isinstance(bundle.get("batter_baseline_meta", pd.DataFrame()), pd.DataFrame)
else []
)
available_pitchers = _normalized_name_set(
bundle.get("pitcher_baseline_meta", pd.DataFrame()).get("player_name", pd.Series(dtype="object")).dropna().astype(str).tolist()
if isinstance(bundle.get("pitcher_baseline_meta", pd.DataFrame()), pd.DataFrame)
else []
)
missing_hitter_names = _compute_missing_requested_names(requested_hitter_names, available_hitters)
missing_pitcher_names = _compute_missing_requested_names(requested_pitcher_names, available_pitchers)
bundle["requested_hitter_count"] = int(len(requested_hitter_names))
bundle["requested_pitcher_count"] = int(len(requested_pitcher_names))
bundle["resolved_hitter_count"] = int(len(requested_hitter_names) - len(missing_hitter_names))
bundle["resolved_pitcher_count"] = int(len(requested_pitcher_names) - len(missing_pitcher_names))
bundle["missing_hitter_names"] = missing_hitter_names
bundle["missing_pitcher_names"] = missing_pitcher_names
bundle["snapshot_coverage_mode"] = coverage_mode
bundle["background_refresh_queued"] = background_refresh_queued
return bundle
def _merge_bundle_frames(
left: pd.DataFrame | None,
right: pd.DataFrame | None,
*,
subset_candidates: list[str],
) -> pd.DataFrame:
left_df = left if isinstance(left, pd.DataFrame) else pd.DataFrame()
right_df = right if isinstance(right, pd.DataFrame) else pd.DataFrame()
if left_df.empty:
return right_df.copy()
if right_df.empty:
return left_df.copy()
merged = pd.concat([left_df, right_df], ignore_index=True, sort=False)
subset = [col for col in subset_candidates if col in merged.columns]
if subset:
merged = merged.drop_duplicates(subset=subset, keep="last")
else:
merged = merged.drop_duplicates(keep="last")
return merged.reset_index(drop=True)
def _merge_shared_baseline_bundles(
snapshot_bundle: dict[str, pd.DataFrame],
patch_bundle: dict[str, pd.DataFrame],
) -> dict[str, pd.DataFrame]:
merged = dict(snapshot_bundle)
merged["blended_batter_df"] = _merge_bundle_frames(
snapshot_bundle.get("blended_batter_df"),
patch_bundle.get("blended_batter_df"),
subset_candidates=["player_name", "event_key", "game_pk", "at_bat_number", "pitch_number"],
)
merged["blended_pitcher_df"] = _merge_bundle_frames(
snapshot_bundle.get("blended_pitcher_df"),
patch_bundle.get("blended_pitcher_df"),
subset_candidates=["player_name", "event_key", "game_pk", "at_bat_number", "pitch_number"],
)
merged["batter_baseline_meta"] = _merge_bundle_frames(
snapshot_bundle.get("batter_baseline_meta"),
patch_bundle.get("batter_baseline_meta"),
subset_candidates=["player_name"],
)
merged["pitcher_baseline_meta"] = _merge_bundle_frames(
snapshot_bundle.get("pitcher_baseline_meta"),
patch_bundle.get("pitcher_baseline_meta"),
subset_candidates=["player_name"],
)
merged["hitter_rolling_snapshot"] = _merge_bundle_frames(
snapshot_bundle.get("hitter_rolling_snapshot"),
patch_bundle.get("hitter_rolling_snapshot"),
subset_candidates=["player_name"],
)
merged["pitcher_rolling_snapshot"] = _merge_bundle_frames(
snapshot_bundle.get("pitcher_rolling_snapshot"),
patch_bundle.get("pitcher_rolling_snapshot"),
subset_candidates=["player_name"],
)
merged["snapshot_status"] = _merge_bundle_frames(
snapshot_bundle.get("snapshot_status"),
patch_bundle.get("snapshot_status"),
subset_candidates=["table_name"],
)
merged["snapshot_source_status"] = "snapshot_request_patched"
merged["runtime_fallback_used"] = False
merged["request_patch_used"] = True
return merged
def _queue_shared_baseline_bundle_persist(
bundle: dict[str, pd.DataFrame],
*,
source_status: str,
) -> bool:
batter_meta = bundle.get("batter_baseline_meta", pd.DataFrame())
pitcher_meta = bundle.get("pitcher_baseline_meta", pd.DataFrame())
batter_names = tuple(
sorted(
{
_normalize_name(name)
for name in (
batter_meta.get("player_name", pd.Series(dtype="object")).dropna().astype(str).tolist()
if isinstance(batter_meta, pd.DataFrame)
else []
)
if _normalize_name(name)
}
)
)
pitcher_names = tuple(
sorted(
{
_normalize_name(name)
for name in (
pitcher_meta.get("player_name", pd.Series(dtype="object")).dropna().astype(str).tolist()
if isinstance(pitcher_meta, pd.DataFrame)
else []
)
if _normalize_name(name)
}
)
)
key = (str(source_status or "").strip().lower(), batter_names, pitcher_names)
with _PERSIST_LOCK:
if key in _PERSIST_INFLIGHT:
return False
_PERSIST_INFLIGHT.add(key)
persist_bundle = {
k: (v.copy() if isinstance(v, pd.DataFrame) else v)
for k, v in dict(bundle).items()
}
def _run() -> None:
try:
persist_shared_baseline_snapshots(
persist_bundle,
source_status=source_status,
)
except Exception:
pass
finally:
with _PERSIST_LOCK:
_PERSIST_INFLIGHT.discard(key)
threading.Thread(target=_run, daemon=True).start()
return True
def _clamp(value: float, lo: float, hi: float) -> float:
return max(lo, min(hi, value))
def _current_weight(current_sample_size: int, k: float) -> float:
if current_sample_size <= 0:
return 0.0
raw = float(current_sample_size) / float(current_sample_size + k)
return _clamp(raw, 0.05, 0.85)
def _load_identity_maps() -> dict[str, Any]:
identity_df = load_identity_map()
batter_id_to_name: dict[int, str] = {}
pitcher_id_to_name: dict[int, str] = {}
batter_name_to_ids: dict[str, set[int]] = defaultdict(set)
pitcher_name_to_ids: dict[str, set[int]] = defaultdict(set)
if identity_df is None or identity_df.empty:
return {
"batter_id_to_name": batter_id_to_name,
"pitcher_id_to_name": pitcher_id_to_name,
"batter_name_to_ids": batter_name_to_ids,
"pitcher_name_to_ids": pitcher_name_to_ids,
}
for _, row in identity_df.dropna(subset=["player_id"]).iterrows():
player_id = _safe_int(row.get("player_id"))
if player_id is None:
continue
canonical_name = str(
row.get("display_name")
or row.get("canonical_name")
or row.get("statcast_name")
or ""
).strip()
pitcher_name = str(
row.get("statcast_name")
or row.get("canonical_name")
or row.get("display_name")
or ""
).strip()
if not canonical_name:
canonical_name = pitcher_name
if not pitcher_name:
pitcher_name = canonical_name
if _coerce_bool(row.get("role_hitter")):
batter_id_to_name[player_id] = canonical_name
if _coerce_bool(row.get("role_pitcher")):
pitcher_id_to_name[player_id] = pitcher_name
for raw_name in [
row.get("display_name"),
row.get("canonical_name"),
row.get("statcast_name"),
row.get("pybaseball_name"),
]:
normalized = _normalize_name(raw_name)
if not normalized:
continue
if _coerce_bool(row.get("role_hitter")):
batter_name_to_ids[normalized].add(player_id)
if _coerce_bool(row.get("role_pitcher")):
pitcher_name_to_ids[normalized].add(player_id)
return {
"batter_id_to_name": batter_id_to_name,
"pitcher_id_to_name": pitcher_id_to_name,
"batter_name_to_ids": batter_name_to_ids,
"pitcher_name_to_ids": pitcher_name_to_ids,
}
def _build_requested_ids(
names: tuple[str, ...] | None,
lookup: dict[str, set[int]],
) -> set[int]:
if not names:
return set()
ids: set[int] = set()
for name in names:
normalized = _normalize_name(name)
ids.update(lookup.get(normalized, set()))
return ids
def _format_id_list(ids: set[int]) -> str:
return ", ".join(str(int(v)) for v in sorted(ids))
def _prepare_frame(df: pd.DataFrame) -> pd.DataFrame:
if df.empty:
return df.copy()
out = df.copy()
for col in _NUMERIC_COLS:
if col in out.columns:
out[col] = pd.to_numeric(out[col], errors="coerce")
if "game_date" in out.columns:
out["game_date"] = pd.to_datetime(out["game_date"], errors="coerce")
if "p_throws" in out.columns and "pitcher_hand" not in out.columns:
out["pitcher_hand"] = out["p_throws"]
if "stand" in out.columns and "batter_stand" not in out.columns:
out["batter_stand"] = out["stand"]
return add_pitch_features(out)
def _json_default(value: Any) -> Any:
if isinstance(value, (pd.Timestamp, pd.Timedelta)):
return str(value)
return str(value)
def _serialize_payload_frame(df: pd.DataFrame) -> str:
if df is None or df.empty:
return "[]"
out = df.copy()
if "game_date" in out.columns:
out["game_date"] = out["game_date"].astype(str)
return json.dumps(out.where(out.notna(), other=None).to_dict("records"), default=_json_default)
def _deserialize_payload_frame(payload_json: str) -> pd.DataFrame:
try:
payload = json.loads(str(payload_json or "[]"))
except Exception:
payload = []
if not payload:
return pd.DataFrame()
return _prepare_frame(pd.DataFrame(payload))
def _normalize_names_tuple(values: tuple[str, ...] | None) -> tuple[str, ...]:
if not values:
return tuple()
out = []
seen = set()
for value in values:
cleaned = str(value or "").strip()
if not cleaned:
continue
normalized = _normalize_name(cleaned)
if normalized in seen:
continue
seen.add(normalized)
out.append(cleaned)
return tuple(sorted(out))
def _resolve_snapshot_player_names(
names: tuple[str, ...] | None,
*,
role: str,
) -> tuple[str, ...]:
normalized_names = _normalize_names_tuple(names)
if not normalized_names:
return tuple()
identity_maps = _load_identity_maps()
if role == "pitcher":
name_to_ids = identity_maps.get("pitcher_name_to_ids", {})
id_to_name = identity_maps.get("pitcher_id_to_name", {})
else:
name_to_ids = identity_maps.get("batter_name_to_ids", {})
id_to_name = identity_maps.get("batter_id_to_name", {})
resolved: list[str] = []
seen: set[str] = set()
for raw_name in normalized_names:
mapped_ids = name_to_ids.get(_normalize_name(raw_name), set())
mapped_names = [
str(id_to_name.get(player_id) or "").strip()
for player_id in mapped_ids
if str(id_to_name.get(player_id) or "").strip()
]
candidates = mapped_names or [str(raw_name).strip()]
for candidate in candidates:
lowered = candidate.lower()
if not candidate or lowered in seen:
continue
seen.add(lowered)
resolved.append(candidate)
return tuple(sorted(resolved))
def _is_snapshot_stale(built_at: Any, max_age_seconds: int) -> bool:
if not built_at:
return True
try:
built_ts = pd.to_datetime(built_at, errors="coerce", utc=True)
if pd.isna(built_ts):
return True
now_ts = pd.Timestamp.now(tz="UTC")
age_seconds = max(0.0, float((now_ts - built_ts).total_seconds()))
return age_seconds > float(max_age_seconds)
except Exception:
return True
def _load_current_events(
conn,
current_season: int,
batter_ids: set[int] | None = None,
pitcher_ids: set[int] | None = None,
) -> pd.DataFrame:
filters = ["lpm.source_season = :season"]
if batter_ids:
filters.append(f"lpm.batter IN ({_format_id_list(batter_ids)})")
if pitcher_ids:
filters.append(f"lpm.pitcher IN ({_format_id_list(pitcher_ids)})")
where_clause = " AND ".join(filters)
query = text(
f"""
SELECT
lpm.event_key,
lpm.player_name AS pitcher_player_name,
lpm.batter,
lpm.pitcher,
lpm.game_date,
lpm.game_pk,
lpm.source_season,
lpm.pitch_type,
lpm.pitch_name,
lpm.events,
lpm.description,
lpm.stand,
lpm.p_throws,
lpm.home_team,
lpm.away_team,
lpm.inning,
lpm.inning_topbot,
lpm.at_bat_number,
lpm.pitch_number,
lpm.plate_x,
lpm.plate_z,
lpm.release_speed,
lpm.release_spin_rate,
lpm.release_extension,
lpm.release_pos_x,
lpm.release_pos_z,
lpm.pfx_x,
lpm.pfx_z,
lpm.launch_speed,
lpm.launch_angle,
lpm.estimated_woba_using_speedangle,
lpm.spray_angle,
lpm.hc_x,
lpm.hc_y,
lpm.bb_type,
lpm.balls,
lpm.strikes,
lpm.outs_when_up,
lpm.bat_score,
lpm.fld_score,
NULL::DOUBLE PRECISION AS post_bat_score,
NULL::DOUBLE PRECISION AS post_fld_score
FROM live_pitch_mix_2026 lpm
WHERE {where_clause}
"""
)
return pd.read_sql(query, conn, params={"season": int(current_season)})
def _load_prior_hitter_events(conn, seasons: tuple[int, ...], batter_ids: set[int]) -> pd.DataFrame:
if not batter_ids:
return pd.DataFrame()
query = text(
f"""
SELECT
ec.event_key,
ec.player_name AS pitcher_player_name,
ec.batter,
ec.pitcher,
ec.game_date,
ec.game_pk,
ec.source_season,
NULL::TEXT AS pitch_type,
ec.pitch_name,
ec.events,
ec.description,
ec.stand,
ec.p_throws,
ec.home_team,
ec.away_team,
ec.inning,
ec.inning_topbot,
ec.at_bat_number,
ec.pitch_number,
ec.plate_x,
ec.plate_z,
pr.release_speed,
pr.release_spin_rate,
pr.release_extension,
NULL::DOUBLE PRECISION AS release_pos_x,
NULL::DOUBLE PRECISION AS release_pos_z,
pr.pfx_x,
pr.pfx_z,
bb.launch_speed,
bb.launch_angle,
bb.estimated_woba_using_speedangle,
NULL::DOUBLE PRECISION AS spray_angle,
NULL::DOUBLE PRECISION AS hc_x,
NULL::DOUBLE PRECISION AS hc_y,
bb.bb_type,
NULL::DOUBLE PRECISION AS balls,
NULL::DOUBLE PRECISION AS strikes,
NULL::DOUBLE PRECISION AS outs_when_up,
NULL::DOUBLE PRECISION AS bat_score,
NULL::DOUBLE PRECISION AS fld_score,
NULL::DOUBLE PRECISION AS post_bat_score,
NULL::DOUBLE PRECISION AS post_fld_score
FROM statcast_event_core ec
LEFT JOIN statcast_batted_ball bb
ON ec.event_key = bb.event_key
LEFT JOIN statcast_pitch_release pr
ON ec.event_key = pr.event_key
WHERE ec.source_season IN ({", ".join(str(int(season)) for season in seasons)})
AND ec.batter IN ({_format_id_list(batter_ids)})
"""
)
return pd.read_sql(query, conn)
def _load_prior_pitcher_events(conn, seasons: tuple[int, ...], pitcher_ids: set[int]) -> pd.DataFrame:
if not pitcher_ids:
return pd.DataFrame()
query = text(
f"""
SELECT
ec.event_key,
ec.player_name AS pitcher_player_name,
ec.batter,
ec.pitcher,
ec.game_date,
ec.game_pk,
ec.source_season,
NULL::TEXT AS pitch_type,
ec.pitch_name,
ec.events,
ec.description,
ec.stand,
ec.p_throws,
ec.home_team,
ec.away_team,
ec.inning,
ec.inning_topbot,
ec.at_bat_number,
ec.pitch_number,
ec.plate_x,
ec.plate_z,
pr.release_speed,
pr.release_spin_rate,
pr.release_extension,
NULL::DOUBLE PRECISION AS release_pos_x,
NULL::DOUBLE PRECISION AS release_pos_z,
pr.pfx_x,
pr.pfx_z,
bb.launch_speed,
bb.launch_angle,
bb.estimated_woba_using_speedangle,
NULL::DOUBLE PRECISION AS spray_angle,
NULL::DOUBLE PRECISION AS hc_x,
NULL::DOUBLE PRECISION AS hc_y,
bb.bb_type,
NULL::DOUBLE PRECISION AS balls,
NULL::DOUBLE PRECISION AS strikes,
NULL::DOUBLE PRECISION AS outs_when_up,
NULL::DOUBLE PRECISION AS bat_score,
NULL::DOUBLE PRECISION AS fld_score,
NULL::DOUBLE PRECISION AS post_bat_score,
NULL::DOUBLE PRECISION AS post_fld_score
FROM statcast_event_core ec
LEFT JOIN statcast_batted_ball bb
ON ec.event_key = bb.event_key
LEFT JOIN statcast_pitch_release pr
ON ec.event_key = pr.event_key
WHERE ec.source_season IN ({", ".join(str(int(season)) for season in seasons)})
AND ec.pitcher IN ({_format_id_list(pitcher_ids)})
"""
)
return pd.read_sql(query, conn)
def _to_hitter_frame(events_df: pd.DataFrame, batter_id_to_name: dict[int, str]) -> pd.DataFrame:
if events_df.empty:
return pd.DataFrame()
out = events_df.copy()
out["player_name"] = out["batter"].apply(lambda value: batter_id_to_name.get(_safe_int(value) or -1))
out = out.dropna(subset=["player_name"]).copy()
return _prepare_frame(out)
def _to_pitcher_frame(events_df: pd.DataFrame) -> pd.DataFrame:
if events_df.empty:
return pd.DataFrame()
out = events_df.copy()
out["player_name"] = out["pitcher_player_name"].astype(str).str.strip()
out = out[out["player_name"] != ""].copy()
return _prepare_frame(out)
def _allocate_prior_counts(prior_df: pd.DataFrame, target_count: int) -> dict[int, int]:
if target_count <= 0 or prior_df.empty or "source_season" not in prior_df.columns:
return {}
available_by_season = prior_df["source_season"].dropna().astype(int).value_counts().to_dict()
weighted_caps: dict[int, float] = {}
for season, available in available_by_season.items():
weighted_caps[season] = float(available) * float(_PRIOR_SEASON_RECENCY_WEIGHTS.get(season, 0.35))
total_weighted = sum(weighted_caps.values())
if total_weighted <= 0:
return {season: min(available, target_count) for season, available in available_by_season.items()}
allocations: dict[int, int] = {}
remainders: list[tuple[float, int]] = []
assigned = 0
for season, weighted_cap in weighted_caps.items():
raw = (weighted_cap / total_weighted) * float(target_count)
base = int(raw)
capped = min(base, available_by_season.get(season, 0))
allocations[season] = capped
assigned += capped
remainders.append((raw - base, season))
remaining = max(0, target_count - assigned)
for _, season in sorted(remainders, reverse=True):
if remaining <= 0:
break
available = available_by_season.get(season, 0)
if allocations.get(season, 0) >= available:
continue
allocations[season] = allocations.get(season, 0) + 1
remaining -= 1
return allocations
def _sample_prior_rows(prior_df: pd.DataFrame, target_count: int) -> pd.DataFrame:
if prior_df.empty or target_count <= 0:
return pd.DataFrame(columns=prior_df.columns)
if len(prior_df) <= target_count:
return prior_df.copy()
out_frames: list[pd.DataFrame] = []
allocations = _allocate_prior_counts(prior_df, target_count)
for season, keep_count in allocations.items():
if keep_count <= 0:
continue
season_df = prior_df[prior_df["source_season"].astype(int) == int(season)].copy()
if season_df.empty:
continue
season_df = season_df.sort_values("game_date", ascending=False, na_position="last")
out_frames.append(season_df.head(keep_count))
if not out_frames:
return prior_df.sort_values("game_date", ascending=False, na_position="last").head(target_count).copy()
combined = pd.concat(out_frames, ignore_index=True)
if len(combined) < target_count:
existing_keys = set(combined["event_key"].astype(str).tolist()) if "event_key" in combined.columns else set()
remainder = prior_df[
~prior_df["event_key"].astype(str).isin(existing_keys)
].sort_values("game_date", ascending=False, na_position="last")
combined = pd.concat([combined, remainder.head(target_count - len(combined))], ignore_index=True)
return combined.head(target_count).copy()
def _sample_entity_rows(
prior_df: pd.DataFrame,
season_df: pd.DataFrame,
player_name: str,
blend_k: float,
role_label: str,
) -> tuple[pd.DataFrame, dict[str, Any]]:
prior_count = int(len(prior_df))
season_count = int(len(season_df))
rolling_overlay_active = season_count > 0
if prior_count == 0 and season_count == 0:
return (
pd.DataFrame(columns=(season_df.columns if not season_df.empty else prior_df.columns)),
{
"player_name": player_name,
"baseline_mode": "unavailable",
"prior_sample_size": 0,
"season_2026_sample_size": 0,
"prior_weight": 0.0,
"season_2026_weight": 0.0,
"baseline_driver": "unavailable",
"rolling_overlay_active": False,
"baseline_role": role_label,
},
)
if prior_count == 0:
sampled = season_df.sort_values("game_date", ascending=False, na_position="last").head(_MAX_ROWS_PER_PLAYER).copy()
sampled["_baseline_source"] = "season_2026"
metadata = {
"player_name": player_name,
"baseline_mode": "current_only",
"prior_sample_size": 0,
"season_2026_sample_size": season_count,
"prior_weight": 0.0,
"season_2026_weight": 1.0,
"baseline_driver": "current_season_led",
"rolling_overlay_active": rolling_overlay_active,
"baseline_role": role_label,
}
return sampled, metadata
if season_count == 0:
sampled = _sample_prior_rows(prior_df, min(prior_count, _MAX_ROWS_PER_PLAYER))
sampled["_baseline_source"] = "prior"
metadata = {
"player_name": player_name,
"baseline_mode": "prior_only",
"prior_sample_size": prior_count,
"season_2026_sample_size": 0,
"prior_weight": 1.0,
"season_2026_weight": 0.0,
"baseline_driver": "prior_led",
"rolling_overlay_active": False,
"baseline_role": role_label,
}
return sampled, metadata
season_weight = _current_weight(season_count, blend_k)
prior_weight = _clamp(1.0 - season_weight, 0.15, 0.95)
total_weight = prior_weight + season_weight
prior_weight /= total_weight
season_weight /= total_weight
target_total = min(_MAX_ROWS_PER_PLAYER, prior_count + season_count)
target_current = min(
season_count,
max(_MIN_CURRENT_ROWS_WHEN_AVAILABLE, int(round(target_total * season_weight))),
)
target_current = min(target_current, target_total)
target_prior = min(prior_count, max(0, target_total - target_current))
current_rows = season_df.sort_values("game_date", ascending=False, na_position="last").head(target_current).copy()
prior_rows = _sample_prior_rows(prior_df, target_prior)
current_rows["_baseline_source"] = "season_2026"
prior_rows["_baseline_source"] = "prior"
sampled = pd.concat([current_rows, prior_rows], ignore_index=True)
if sampled.empty:
sampled = season_df.sort_values("game_date", ascending=False, na_position="last").head(target_total).copy()
sampled["_baseline_source"] = "season_2026"
metadata = {
"player_name": player_name,
"baseline_mode": "blended",
"prior_sample_size": prior_count,
"season_2026_sample_size": season_count,
"prior_weight": float(prior_weight),
"season_2026_weight": float(season_weight),
"baseline_driver": "current_season_led" if season_weight > prior_weight else "prior_led",
"rolling_overlay_active": rolling_overlay_active,
"baseline_role": role_label,
}
return sampled, metadata
def _blend_entity_frames(
prior_df: pd.DataFrame,
season_df: pd.DataFrame,
blend_k: float,
role_label: str,
) -> tuple[pd.DataFrame, pd.DataFrame]:
player_names = sorted(
{
str(name).strip()
for name in pd.concat(
[
prior_df["player_name"] if "player_name" in prior_df.columns else pd.Series(dtype="object"),
season_df["player_name"] if "player_name" in season_df.columns else pd.Series(dtype="object"),
],
ignore_index=True,
).dropna().tolist()
if str(name).strip()
}
)
sampled_frames: list[pd.DataFrame] = []
metadata_rows: list[dict[str, Any]] = []
for player_name in player_names:
player_prior = prior_df[prior_df["player_name"].astype(str) == player_name].copy() if not prior_df.empty else pd.DataFrame(columns=season_df.columns)
player_season = season_df[season_df["player_name"].astype(str) == player_name].copy() if not season_df.empty else pd.DataFrame(columns=prior_df.columns)
sampled, metadata = _sample_entity_rows(
prior_df=player_prior,
season_df=player_season,
player_name=player_name,
blend_k=blend_k,
role_label=role_label,
)
if not sampled.empty:
for key, value in metadata.items():
sampled[key] = value
sampled_frames.append(sampled)
metadata_rows.append(metadata)
blended_df = pd.concat(sampled_frames, ignore_index=True, sort=False) if sampled_frames else pd.DataFrame()
metadata_df = pd.DataFrame(metadata_rows)
if not blended_df.empty and "game_date" in blended_df.columns:
blended_df = blended_df.sort_values(
["player_name", "game_date", "source_season"],
ascending=[True, False, False],
na_position="last",
).reset_index(drop=True)
return blended_df, metadata_df
def _build_snapshot_rows(
frame: pd.DataFrame,
built_at: str,
snapshot_version: str,
source_status: str,
) -> pd.DataFrame:
rows: list[dict[str, Any]] = []
if frame is None or frame.empty or "player_name" not in frame.columns:
return pd.DataFrame(
columns=[
"player_name",
"source_row_count",
"payload_json",
"snapshot_built_at",
"snapshot_version",
"source_status",
]
)
for player_name, player_df in frame.groupby("player_name", dropna=False):
player_name_str = str(player_name or "").strip()
if not player_name_str:
continue
rows.append(
{
"player_name": player_name_str,
"source_row_count": int(len(player_df)),
"payload_json": _serialize_payload_frame(player_df.reset_index(drop=True)),
"snapshot_built_at": built_at,
"snapshot_version": snapshot_version,
"source_status": source_status,
}
)
return pd.DataFrame(rows)
def _build_event_snapshot_rows(
frame: pd.DataFrame,
built_at: str,
snapshot_version: str,
source_status: str,
) -> pd.DataFrame:
if frame is None:
frame = pd.DataFrame()
out = frame.copy()
if out.empty:
return pd.DataFrame(columns=_EVENT_SNAPSHOT_COLS)
out["snapshot_built_at"] = built_at
out["snapshot_version"] = snapshot_version
out["source_status"] = source_status
for col in _EVENT_SNAPSHOT_COLS:
if col not in out.columns:
out[col] = None
return out[_EVENT_SNAPSHOT_COLS].rename(columns={"_baseline_source": "baseline_source"}).copy()
def _build_meta_snapshot_rows(
meta_df: pd.DataFrame,
built_at: str,
snapshot_version: str,
source_status: str,
) -> pd.DataFrame:
if meta_df is None:
meta_df = pd.DataFrame()
out = meta_df.copy()
for col in [
"player_name",
"baseline_role",
"baseline_mode",
"prior_sample_size",
"season_2026_sample_size",
"prior_weight",
"season_2026_weight",
"baseline_driver",
"rolling_overlay_active",
]:
if col not in out.columns:
out[col] = None
out["snapshot_built_at"] = built_at
out["snapshot_version"] = snapshot_version
out["source_status"] = source_status
return out[
[
"player_name",
"baseline_role",
"baseline_mode",
"prior_sample_size",
"season_2026_sample_size",
"prior_weight",
"season_2026_weight",
"baseline_driver",
"rolling_overlay_active",
"snapshot_built_at",
"snapshot_version",
"source_status",
]
].copy()
def _build_rolling_snapshot_rows(
frame: pd.DataFrame,
role_label: str,
built_at: str,
snapshot_version: str,
source_status: str,
) -> pd.DataFrame:
rows: list[dict[str, Any]] = []
if frame is None or frame.empty or "player_name" not in frame.columns:
return pd.DataFrame(
columns=[
"player_name",
"source_row_count",
"payload_json",
"snapshot_built_at",
"snapshot_version",
"source_status",
]
)
for player_name, player_df in frame.groupby("player_name", dropna=False):
player_name_str = str(player_name or "").strip()
if not player_name_str:
continue
reference_date = None
if "game_date" in player_df.columns:
try:
reference_date = pd.to_datetime(
player_df["game_date"], errors="coerce"
).max()
except Exception:
reference_date = None
if role_label == "batter":
payload = build_batter_rolling_form_row(
statcast_df=frame,
player_name=player_name_str,
reference_date=reference_date,
)
else:
payload = build_pitcher_rolling_form_row(
statcast_df=frame,
pitcher_name=player_name_str,
reference_date=reference_date,
)
rows.append(
{
"player_name": player_name_str,
**payload,
"source_row_count": int(len(player_df)),
"snapshot_built_at": built_at,
"snapshot_version": snapshot_version,
"source_status": source_status,
}
)
out = pd.DataFrame(rows)
expected_cols = _BATTER_ROLLING_COLS if role_label == "batter" else _PITCHER_ROLLING_COLS
for col in expected_cols:
if col not in out.columns:
out[col] = None
return out[expected_cols].copy()
def _read_snapshot_table(
conn,
table_name: str,
player_names: tuple[str, ...] = (),
) -> pd.DataFrame:
if player_names:
clauses = []
params: dict[str, Any] = {}
for idx, player_name in enumerate(player_names):
key = f"name_{idx}"
clauses.append(f":{key}")
params[key] = str(player_name)
query = text(
f"SELECT * FROM {table_name} WHERE player_name IN ({', '.join(clauses)}) ORDER BY player_name"
)
return safe_read_sql(query, conn, params=params)
return safe_read_sql(text(f"SELECT * FROM {table_name} ORDER BY player_name"), conn)
def _replace_snapshot_scope(
conn,
table_name: str,
df: pd.DataFrame,
player_names: tuple[str, ...],
) -> None:
scoped_names = tuple(sorted({str(name or "").strip() for name in player_names if str(name or "").strip()}))
if scoped_names:
clauses = []
params: dict[str, Any] = {}
for idx, player_name in enumerate(scoped_names):
key = f"name_{idx}"
clauses.append(f":{key}")
params[key] = player_name
conn.execute(
text(f"DELETE FROM {table_name} WHERE player_name IN ({', '.join(clauses)})"),
params,
)
if df is not None and not df.empty:
upsert_dataframe(conn, table_name, df, replace=False)
return
replace_table_contents(conn, table_name, df)
def _hydrate_snapshot_frame(snapshot_df: pd.DataFrame) -> pd.DataFrame:
if snapshot_df is None or snapshot_df.empty:
return pd.DataFrame()
frames: list[pd.DataFrame] = []
for _, row in snapshot_df.iterrows():
frame = _deserialize_payload_frame(row.get("payload_json"))
if frame.empty:
continue
frames.append(frame)
if not frames:
return pd.DataFrame()
return pd.concat(frames, ignore_index=True, sort=False)
def _hydrate_rolling_snapshot_frame(snapshot_df: pd.DataFrame) -> pd.DataFrame:
if snapshot_df is None or snapshot_df.empty:
return pd.DataFrame()
return snapshot_df.copy()
def persist_shared_baseline_snapshots(
bundle: dict[str, pd.DataFrame],
source_status: str = "runtime_refreshed",
) -> dict[str, pd.DataFrame]:
built_at = utc_now_iso()
batter_names = _normalize_names_tuple(
tuple(bundle.get("batter_baseline_meta", pd.DataFrame()).get("player_name", pd.Series(dtype="object")).dropna().astype(str).tolist())
)
pitcher_names = _normalize_names_tuple(
tuple(bundle.get("pitcher_baseline_meta", pd.DataFrame()).get("player_name", pd.Series(dtype="object")).dropna().astype(str).tolist())
)
hitter_snapshot = _build_snapshot_rows(
bundle.get("blended_batter_df", pd.DataFrame()),
built_at=built_at,
snapshot_version=_SNAPSHOT_VERSION,
source_status=source_status,
)
hitter_event_rows = _build_event_snapshot_rows(
bundle.get("blended_batter_df", pd.DataFrame()),
built_at=built_at,
snapshot_version=_SNAPSHOT_VERSION,
source_status=source_status,
)
pitcher_snapshot = _build_snapshot_rows(
bundle.get("blended_pitcher_df", pd.DataFrame()),
built_at=built_at,
snapshot_version=_SNAPSHOT_VERSION,
source_status=source_status,
)
pitcher_event_rows = _build_event_snapshot_rows(
bundle.get("blended_pitcher_df", pd.DataFrame()),
built_at=built_at,
snapshot_version=_SNAPSHOT_VERSION,
source_status=source_status,
)
hitter_meta = _build_meta_snapshot_rows(
bundle.get("batter_baseline_meta", pd.DataFrame()),
built_at=built_at,
snapshot_version=_SNAPSHOT_VERSION,
source_status=source_status,
)
pitcher_meta = _build_meta_snapshot_rows(
bundle.get("pitcher_baseline_meta", pd.DataFrame()),
built_at=built_at,
snapshot_version=_SNAPSHOT_VERSION,
source_status=source_status,
)
hitter_rolling = _build_rolling_snapshot_rows(
bundle.get("season_2026_ytd_hitter_df", pd.DataFrame()),
role_label="batter",
built_at=built_at,
snapshot_version=_SNAPSHOT_VERSION,
source_status=source_status,
)
pitcher_rolling = _build_rolling_snapshot_rows(
bundle.get("season_2026_ytd_pitcher_df", pd.DataFrame()),
role_label="pitcher",
built_at=built_at,
snapshot_version=_SNAPSHOT_VERSION,
source_status=source_status,
)
conn = get_connection()
try:
_replace_snapshot_scope(conn, "shared_hitter_baseline_event_rows", hitter_event_rows, batter_names)
_replace_snapshot_scope(conn, "shared_pitcher_baseline_event_rows", pitcher_event_rows, pitcher_names)
_replace_snapshot_scope(conn, "shared_hitter_baseline_snapshot", hitter_snapshot, batter_names)
_replace_snapshot_scope(conn, "shared_pitcher_baseline_snapshot", pitcher_snapshot, pitcher_names)
_replace_snapshot_scope(conn, "shared_hitter_baseline_meta", hitter_meta, batter_names)
_replace_snapshot_scope(conn, "shared_pitcher_baseline_meta", pitcher_meta, pitcher_names)
_replace_snapshot_scope(conn, "shared_hitter_rolling_summary", hitter_rolling, batter_names)
_replace_snapshot_scope(conn, "shared_pitcher_rolling_summary", pitcher_rolling, pitcher_names)
finally:
try:
conn.close()
except Exception:
pass
snapshot_status = pd.DataFrame(
[
{
"table_name": "shared_hitter_baseline_event_rows",
"row_count": int(len(hitter_event_rows)),
"snapshot_built_at": built_at,
"snapshot_version": _SNAPSHOT_VERSION,
"source_status": source_status,
"stale": False,
},
{
"table_name": "shared_pitcher_baseline_event_rows",
"row_count": int(len(pitcher_event_rows)),
"snapshot_built_at": built_at,
"snapshot_version": _SNAPSHOT_VERSION,
"source_status": source_status,
"stale": False,
},
{
"table_name": "shared_hitter_baseline_snapshot",
"row_count": int(len(hitter_snapshot)),
"snapshot_built_at": built_at,
"snapshot_version": _SNAPSHOT_VERSION,
"source_status": source_status,
"stale": False,
},
{
"table_name": "shared_pitcher_baseline_snapshot",
"row_count": int(len(pitcher_snapshot)),
"snapshot_built_at": built_at,
"snapshot_version": _SNAPSHOT_VERSION,
"source_status": source_status,
"stale": False,
},
{
"table_name": "shared_hitter_baseline_meta",
"row_count": int(len(hitter_meta)),
"snapshot_built_at": built_at,
"snapshot_version": _SNAPSHOT_VERSION,
"source_status": source_status,
"stale": False,
},
{
"table_name": "shared_pitcher_baseline_meta",
"row_count": int(len(pitcher_meta)),
"snapshot_built_at": built_at,
"snapshot_version": _SNAPSHOT_VERSION,
"source_status": source_status,
"stale": False,
},
{
"table_name": "shared_hitter_rolling_summary",
"row_count": int(len(hitter_rolling)),
"snapshot_built_at": built_at,
"snapshot_version": _SNAPSHOT_VERSION,
"source_status": source_status,
"stale": False,
},
{
"table_name": "shared_pitcher_rolling_summary",
"row_count": int(len(pitcher_rolling)),
"snapshot_built_at": built_at,
"snapshot_version": _SNAPSHOT_VERSION,
"source_status": source_status,
"stale": False,
},
]
)
bundle["snapshot_status"] = snapshot_status
bundle["snapshot_source_status"] = source_status
bundle["runtime_fallback_used"] = False
return bundle
def load_shared_baseline_bundle_from_snapshots(
batter_names: tuple[str, ...] = (),
pitcher_names: tuple[str, ...] = (),
max_age_seconds: int = _DEFAULT_SNAPSHOT_MAX_AGE_SECONDS,
) -> dict[str, pd.DataFrame]:
batter_names = _resolve_snapshot_player_names(batter_names, role="batter")
pitcher_names = _resolve_snapshot_player_names(pitcher_names, role="pitcher")
_degraded_bundle: dict[str, Any] = {
"multi_year_prior_hitter_df": pd.DataFrame(),
"season_2026_ytd_hitter_df": pd.DataFrame(),
"multi_year_prior_pitcher_df": pd.DataFrame(),
"season_2026_ytd_pitcher_df": pd.DataFrame(),
"blended_batter_df": pd.DataFrame(),
"blended_pitcher_df": pd.DataFrame(),
"batter_baseline_meta": pd.DataFrame(),
"pitcher_baseline_meta": pd.DataFrame(),
"hitter_rolling_snapshot": pd.DataFrame(),
"pitcher_rolling_snapshot": pd.DataFrame(),
"snapshot_status": pd.DataFrame(),
"snapshot_source_status": "snapshot_unavailable",
"runtime_fallback_used": False,
}
_read_result: list[tuple | None] = [None]
_read_exc: list[Exception | None] = [None]
def _do_reads() -> None:
conn = get_connection()
try:
_read_result[0] = (
_read_snapshot_table(conn, "shared_hitter_baseline_event_rows", player_names=batter_names),
_read_snapshot_table(conn, "shared_pitcher_baseline_event_rows", player_names=pitcher_names),
_read_snapshot_table(conn, "shared_hitter_baseline_snapshot", player_names=batter_names),
_read_snapshot_table(conn, "shared_pitcher_baseline_snapshot", player_names=pitcher_names),
_read_snapshot_table(conn, "shared_hitter_baseline_meta", player_names=batter_names),
_read_snapshot_table(conn, "shared_pitcher_baseline_meta", player_names=pitcher_names),
_read_snapshot_table(conn, "shared_hitter_rolling_summary", player_names=batter_names),
_read_snapshot_table(conn, "shared_pitcher_rolling_summary", player_names=pitcher_names),
)
except Exception as exc:
_read_exc[0] = exc
finally:
try:
conn.close()
except Exception:
pass
_rt = threading.Thread(target=_do_reads, daemon=True)
_rt.start()
_rt.join(timeout=_SNAPSHOT_READ_TIMEOUT_SECONDS)
if _rt.is_alive():
_log.warning(
"[shared_baseline] snapshot DB reads timed out after %ds — returning degraded bundle",
_SNAPSHOT_READ_TIMEOUT_SECONDS,
)
return _degraded_bundle
if _read_exc[0] is not None or _read_result[0] is None:
return _degraded_bundle
(
hitter_event_rows,
pitcher_event_rows,
hitter_snapshot,
pitcher_snapshot,
hitter_meta,
pitcher_meta,
hitter_rolling,
pitcher_rolling,
) = _read_result[0]
snapshot_status_rows: list[dict[str, Any]] = []
for table_name, frame in [
("shared_hitter_baseline_snapshot", hitter_snapshot),
("shared_pitcher_baseline_snapshot", pitcher_snapshot),
("shared_hitter_baseline_meta", hitter_meta),
("shared_pitcher_baseline_meta", pitcher_meta),
("shared_hitter_baseline_event_rows", hitter_event_rows),
("shared_pitcher_baseline_event_rows", pitcher_event_rows),
("shared_hitter_rolling_summary", hitter_rolling),
("shared_pitcher_rolling_summary", pitcher_rolling),
]:
built_at = None
version = None
source_status = None
if isinstance(frame, pd.DataFrame) and not frame.empty:
built_at = frame.get("snapshot_built_at", pd.Series(dtype="object")).iloc[0]
version = frame.get("snapshot_version", pd.Series(dtype="object")).iloc[0]
source_status = frame.get("source_status", pd.Series(dtype="object")).iloc[0]
snapshot_status_rows.append(
{
"table_name": table_name,
"row_count": 0 if frame is None else int(len(frame)),
"snapshot_built_at": built_at,
"snapshot_version": version,
"source_status": source_status,
"stale": _is_snapshot_stale(built_at, max_age_seconds),
}
)
return {
"multi_year_prior_hitter_df": pd.DataFrame(),
"season_2026_ytd_hitter_df": pd.DataFrame(),
"multi_year_prior_pitcher_df": pd.DataFrame(),
"season_2026_ytd_pitcher_df": pd.DataFrame(),
"blended_batter_df": _prepare_frame(hitter_event_rows.drop(columns=["snapshot_built_at", "snapshot_version", "source_status"], errors="ignore"))
if isinstance(hitter_event_rows, pd.DataFrame) and not hitter_event_rows.empty
else _hydrate_snapshot_frame(hitter_snapshot),
"blended_pitcher_df": _prepare_frame(pitcher_event_rows.drop(columns=["snapshot_built_at", "snapshot_version", "source_status"], errors="ignore"))
if isinstance(pitcher_event_rows, pd.DataFrame) and not pitcher_event_rows.empty
else _hydrate_snapshot_frame(pitcher_snapshot),
"batter_baseline_meta": hitter_meta,
"pitcher_baseline_meta": pitcher_meta,
"hitter_rolling_snapshot": _hydrate_rolling_snapshot_frame(hitter_rolling),
"pitcher_rolling_snapshot": _hydrate_rolling_snapshot_frame(pitcher_rolling),
"snapshot_status": pd.DataFrame(snapshot_status_rows),
"snapshot_source_status": "snapshot",
"runtime_fallback_used": False,
}
def queue_shared_baseline_refresh(
batter_names: tuple[str, ...] = (),
pitcher_names: tuple[str, ...] = (),
) -> bool:
key = (_normalize_names_tuple(batter_names), _normalize_names_tuple(pitcher_names))
with _REFRESH_LOCK:
if key in _REFRESH_INFLIGHT:
return False
_REFRESH_INFLIGHT.add(key)
def _run() -> None:
try:
refreshed = build_shared_baseline_bundle(
batter_names=key[0],
pitcher_names=key[1],
)
persist_shared_baseline_snapshots(
refreshed,
source_status="background_refreshed",
)
except Exception:
pass
finally:
with _REFRESH_LOCK:
_REFRESH_INFLIGHT.discard(key)
threading.Thread(target=_run, daemon=True).start()
return True
def load_or_build_shared_baseline_bundle(
batter_names: tuple[str, ...] = (),
pitcher_names: tuple[str, ...] = (),
max_age_seconds: int = _DEFAULT_SNAPSHOT_MAX_AGE_SECONDS,
persist_runtime_refresh: bool = True,
) -> dict[str, pd.DataFrame]:
batter_names = _normalize_names_tuple(batter_names)
pitcher_names = _normalize_names_tuple(pitcher_names)
snapshot_batter_names = _resolve_snapshot_player_names(batter_names, role="batter")
snapshot_pitcher_names = _resolve_snapshot_player_names(pitcher_names, role="pitcher")
snapshot_bundle = load_shared_baseline_bundle_from_snapshots(
batter_names=snapshot_batter_names,
pitcher_names=snapshot_pitcher_names,
max_age_seconds=max_age_seconds,
)
snapshot_status = snapshot_bundle.get("snapshot_status", pd.DataFrame())
available_hitters = _normalized_name_set(
snapshot_bundle.get("batter_baseline_meta", pd.DataFrame())
.get("player_name", pd.Series(dtype="object"))
.dropna()
.astype(str)
.tolist()
if isinstance(snapshot_bundle.get("batter_baseline_meta", pd.DataFrame()), pd.DataFrame)
else []
)
available_pitchers = _normalized_name_set(
snapshot_bundle.get("pitcher_baseline_meta", pd.DataFrame())
.get("player_name", pd.Series(dtype="object"))
.dropna()
.astype(str)
.tolist()
if isinstance(snapshot_bundle.get("pitcher_baseline_meta", pd.DataFrame()), pd.DataFrame)
else []
)
missing_hitter_names = _compute_missing_requested_names(snapshot_batter_names, available_hitters)
missing_pitcher_names = _compute_missing_requested_names(snapshot_pitcher_names, available_pitchers)
requested_hitter_covered = True
if snapshot_batter_names:
requested_hitter_covered = not missing_hitter_names
requested_pitcher_covered = True
if snapshot_pitcher_names:
requested_pitcher_covered = not missing_pitcher_names
snapshot_has_data = not snapshot_bundle.get("blended_batter_df", pd.DataFrame()).empty or not snapshot_bundle.get("blended_pitcher_df", pd.DataFrame()).empty
snapshot_stale = bool(
isinstance(snapshot_status, pd.DataFrame)
and not snapshot_status.empty
and snapshot_status["stale"].fillna(False).any()
)
coverage_mode = "empty"
if snapshot_has_data and requested_hitter_covered and requested_pitcher_covered:
coverage_mode = "full"
elif snapshot_has_data:
coverage_mode = "partial"
background_refresh_queued = False
if snapshot_has_data and requested_hitter_covered and requested_pitcher_covered and not snapshot_stale:
return _annotate_request_coverage(
snapshot_bundle,
requested_hitter_names=snapshot_batter_names,
requested_pitcher_names=snapshot_pitcher_names,
coverage_mode=coverage_mode,
background_refresh_queued=background_refresh_queued,
)
if snapshot_has_data and (
(requested_hitter_covered and requested_pitcher_covered and snapshot_stale)
or missing_hitter_names
or missing_pitcher_names
):
background_refresh_queued = queue_shared_baseline_refresh(
batter_names=snapshot_batter_names,
pitcher_names=snapshot_pitcher_names,
)
snapshot_bundle["snapshot_source_status"] = "snapshot_partial_served" if coverage_mode == "partial" else "snapshot_stale_served"
snapshot_bundle["runtime_fallback_used"] = False
return _annotate_request_coverage(
snapshot_bundle,
requested_hitter_names=snapshot_batter_names,
requested_pitcher_names=snapshot_pitcher_names,
coverage_mode=coverage_mode,
background_refresh_queued=background_refresh_queued,
)
runtime_bundle = build_shared_baseline_bundle(
batter_names=snapshot_batter_names,
pitcher_names=snapshot_pitcher_names,
)
runtime_bundle["snapshot_source_status"] = "runtime_fallback"
runtime_bundle["runtime_fallback_used"] = True
if persist_runtime_refresh:
runtime_bundle = persist_shared_baseline_snapshots(
runtime_bundle,
source_status="runtime_refreshed",
)
runtime_bundle["runtime_fallback_used"] = True
if "snapshot_status" not in runtime_bundle:
runtime_bundle["snapshot_status"] = snapshot_status
return _annotate_request_coverage(
runtime_bundle,
requested_hitter_names=snapshot_batter_names,
requested_pitcher_names=snapshot_pitcher_names,
coverage_mode="runtime_fallback",
background_refresh_queued=background_refresh_queued,
)
def load_or_build_shared_baseline_bundle_complete_for_request(
batter_names: tuple[str, ...] = (),
pitcher_names: tuple[str, ...] = (),
max_age_seconds: int = _DEFAULT_SNAPSHOT_MAX_AGE_SECONDS,
persist_runtime_refresh: bool = True,
) -> dict[str, pd.DataFrame]:
batter_names = _normalize_names_tuple(batter_names)
pitcher_names = _normalize_names_tuple(pitcher_names)
snapshot_batter_names = _resolve_snapshot_player_names(batter_names, role="batter")
snapshot_pitcher_names = _resolve_snapshot_player_names(pitcher_names, role="pitcher")
snapshot_bundle = load_shared_baseline_bundle_from_snapshots(
batter_names=snapshot_batter_names,
pitcher_names=snapshot_pitcher_names,
max_age_seconds=max_age_seconds,
)
snapshot_status = snapshot_bundle.get("snapshot_status", pd.DataFrame())
snapshot_has_data = not snapshot_bundle.get("blended_batter_df", pd.DataFrame()).empty or not snapshot_bundle.get("blended_pitcher_df", pd.DataFrame()).empty
snapshot_stale = bool(
isinstance(snapshot_status, pd.DataFrame)
and not snapshot_status.empty
and snapshot_status["stale"].fillna(False).any()
)
available_hitters = _normalized_name_set(
snapshot_bundle.get("batter_baseline_meta", pd.DataFrame())
.get("player_name", pd.Series(dtype="object"))
.dropna()
.astype(str)
.tolist()
if isinstance(snapshot_bundle.get("batter_baseline_meta", pd.DataFrame()), pd.DataFrame)
else []
)
available_pitchers = _normalized_name_set(
snapshot_bundle.get("pitcher_baseline_meta", pd.DataFrame())
.get("player_name", pd.Series(dtype="object"))
.dropna()
.astype(str)
.tolist()
if isinstance(snapshot_bundle.get("pitcher_baseline_meta", pd.DataFrame()), pd.DataFrame)
else []
)
missing_hitter_names = _compute_missing_requested_names(snapshot_batter_names, available_hitters)
missing_pitcher_names = _compute_missing_requested_names(snapshot_pitcher_names, available_pitchers)
if snapshot_has_data and not missing_hitter_names and not missing_pitcher_names:
coverage_mode = "full" if not snapshot_stale else "stale_full"
background_refresh_queued = False
if snapshot_stale:
background_refresh_queued = queue_shared_baseline_refresh(
batter_names=snapshot_batter_names,
pitcher_names=snapshot_pitcher_names,
)
snapshot_bundle["snapshot_source_status"] = "snapshot_stale_served"
return _annotate_request_coverage(
snapshot_bundle,
requested_hitter_names=snapshot_batter_names,
requested_pitcher_names=snapshot_pitcher_names,
coverage_mode=coverage_mode,
background_refresh_queued=background_refresh_queued,
)
if snapshot_has_data and (missing_hitter_names or missing_pitcher_names):
patch_result: list[dict | None] = [None]
def _run_patch() -> None:
try:
patch_result[0] = build_shared_baseline_bundle(
batter_names=tuple(sorted(missing_hitter_names)),
pitcher_names=tuple(sorted(missing_pitcher_names)),
)
except Exception as exc:
_log.warning("[shared_baseline] patch build error: %s", exc)
_pt = threading.Thread(target=_run_patch, daemon=True)
_pt.start()
_pt.join(timeout=_FALLBACK_BUILD_TIMEOUT_SECONDS)
if patch_result[0] is not None:
patch_bundle = patch_result[0]
if persist_runtime_refresh:
_queue_shared_baseline_bundle_persist(patch_bundle, source_status="runtime_request_patch")
merged_bundle = _merge_shared_baseline_bundles(snapshot_bundle, patch_bundle)
if snapshot_stale:
merged_bundle["background_refresh_queued"] = queue_shared_baseline_refresh(
batter_names=snapshot_batter_names,
pitcher_names=snapshot_pitcher_names,
)
return _annotate_request_coverage(
merged_bundle,
requested_hitter_names=snapshot_batter_names,
requested_pitcher_names=snapshot_pitcher_names,
coverage_mode="request_completed_patch",
background_refresh_queued=bool(merged_bundle.get("background_refresh_queued")),
)
else:
_log.warning(
"[shared_baseline] patch build timed out after %ds — serving partial snapshot",
_FALLBACK_BUILD_TIMEOUT_SECONDS,
)
if persist_runtime_refresh:
def _persist_patch_when_done() -> None:
_pt.join()
if patch_result[0] is not None:
_queue_shared_baseline_bundle_persist(patch_result[0], source_status="runtime_request_patch")
threading.Thread(target=_persist_patch_when_done, daemon=True).start()
snapshot_bundle["snapshot_source_status"] = "patch_build_timeout"
return _annotate_request_coverage(
snapshot_bundle,
requested_hitter_names=snapshot_batter_names,
requested_pitcher_names=snapshot_pitcher_names,
coverage_mode="request_completed_patch_partial",
background_refresh_queued=False,
)
runtime_result: list[dict | None] = [None]
def _run_fallback() -> None:
try:
runtime_result[0] = build_shared_baseline_bundle(
batter_names=snapshot_batter_names,
pitcher_names=snapshot_pitcher_names,
)
except Exception as exc:
_log.warning("[shared_baseline] runtime fallback build error: %s", exc)
_rt = threading.Thread(target=_run_fallback, daemon=True)
_rt.start()
_rt.join(timeout=_FALLBACK_BUILD_TIMEOUT_SECONDS)
if runtime_result[0] is not None:
runtime_bundle = runtime_result[0]
runtime_bundle["snapshot_source_status"] = "runtime_fallback"
runtime_bundle["runtime_fallback_used"] = True
runtime_bundle["request_patch_used"] = False
if persist_runtime_refresh:
_queue_shared_baseline_bundle_persist(runtime_bundle, source_status="runtime_refreshed")
if "snapshot_status" not in runtime_bundle:
runtime_bundle["snapshot_status"] = snapshot_status
return _annotate_request_coverage(
runtime_bundle,
requested_hitter_names=snapshot_batter_names,
requested_pitcher_names=snapshot_pitcher_names,
coverage_mode="runtime_fallback",
background_refresh_queued=False,
)
else:
_log.warning(
"[shared_baseline] full fallback build timed out after %ds — returning empty bundle, "
"will persist when complete",
_FALLBACK_BUILD_TIMEOUT_SECONDS,
)
if persist_runtime_refresh:
def _persist_runtime_when_done() -> None:
_rt.join()
if runtime_result[0] is not None:
_queue_shared_baseline_bundle_persist(runtime_result[0], source_status="runtime_refreshed")
threading.Thread(target=_persist_runtime_when_done, daemon=True).start()
degraded: dict[str, Any] = {
"blended_batter_df": pd.DataFrame(),
"blended_pitcher_df": pd.DataFrame(),
"batter_baseline_meta": pd.DataFrame(),
"pitcher_baseline_meta": pd.DataFrame(),
"snapshot_status": snapshot_status,
"snapshot_source_status": "runtime_fallback_timeout",
"runtime_fallback_used": True,
"request_patch_used": False,
}
return _annotate_request_coverage(
degraded,
requested_hitter_names=snapshot_batter_names,
requested_pitcher_names=snapshot_pitcher_names,
coverage_mode="runtime_fallback_timeout",
background_refresh_queued=False,
)
def build_shared_baseline_bundle(
batter_names: tuple[str, ...] | None = None,
pitcher_names: tuple[str, ...] | None = None,
prior_seasons: tuple[int, ...] = PRIOR_SEASONS,
current_season: int = CURRENT_SEASON,
) -> dict[str, pd.DataFrame]:
identity_maps = _load_identity_maps()
batter_id_to_name = identity_maps["batter_id_to_name"]
pitcher_id_to_name = identity_maps["pitcher_id_to_name"]
batter_name_to_ids = identity_maps["batter_name_to_ids"]
pitcher_name_to_ids = identity_maps["pitcher_name_to_ids"]
conn = get_connection()
try:
requested_batter_ids = _build_requested_ids(batter_names, batter_name_to_ids)
requested_pitcher_ids = _build_requested_ids(pitcher_names, pitcher_name_to_ids)
requested_batter_scope = bool(batter_names)
requested_pitcher_scope = bool(pitcher_names)
current_events = _load_current_events(
conn,
current_season=current_season,
batter_ids=requested_batter_ids if requested_batter_scope else None,
pitcher_ids=requested_pitcher_ids if requested_pitcher_scope else None,
)
current_batter_ids = {
value
for value in current_events.get("batter", pd.Series(dtype="float")).dropna().apply(_safe_int).tolist()
if value is not None
}
current_pitcher_ids = {
value
for value in current_events.get("pitcher", pd.Series(dtype="float")).dropna().apply(_safe_int).tolist()
if value is not None
}
if requested_batter_scope:
active_batter_ids = requested_batter_ids
else:
active_batter_ids = current_batter_ids
if requested_pitcher_scope:
active_pitcher_ids = requested_pitcher_ids
else:
active_pitcher_ids = current_pitcher_ids
prior_hitter_events = _load_prior_hitter_events(
conn,
seasons=prior_seasons,
batter_ids=active_batter_ids,
)
prior_pitcher_events = _load_prior_pitcher_events(
conn,
seasons=prior_seasons,
pitcher_ids=active_pitcher_ids,
)
finally:
try:
conn.close()
except Exception:
pass
current_hitter_events = current_events.copy()
if active_batter_ids:
current_hitter_events = current_hitter_events[
current_hitter_events["batter"].apply(_safe_int).isin(active_batter_ids)
].copy()
current_pitcher_events = current_events.copy()
if active_pitcher_ids:
current_pitcher_events = current_pitcher_events[
current_pitcher_events["pitcher"].apply(_safe_int).isin(active_pitcher_ids)
].copy()
multi_year_prior_hitter_df = _to_hitter_frame(prior_hitter_events, batter_id_to_name)
season_2026_ytd_hitter_df = _to_hitter_frame(current_hitter_events, batter_id_to_name)
multi_year_prior_pitcher_df = _to_pitcher_frame(prior_pitcher_events)
season_2026_ytd_pitcher_df = _to_pitcher_frame(current_pitcher_events)
blended_batter_df, batter_baseline_meta = _blend_entity_frames(
prior_df=multi_year_prior_hitter_df,
season_df=season_2026_ytd_hitter_df,
blend_k=_HITTER_BLEND_K,
role_label="batter",
)
blended_pitcher_df, pitcher_baseline_meta = _blend_entity_frames(
prior_df=multi_year_prior_pitcher_df,
season_df=season_2026_ytd_pitcher_df,
blend_k=_PITCHER_BLEND_K,
role_label="pitcher",
)
return {
"multi_year_prior_hitter_df": multi_year_prior_hitter_df,
"season_2026_ytd_hitter_df": season_2026_ytd_hitter_df,
"multi_year_prior_pitcher_df": multi_year_prior_pitcher_df,
"season_2026_ytd_pitcher_df": season_2026_ytd_pitcher_df,
"blended_batter_df": blended_batter_df,
"blended_pitcher_df": blended_pitcher_df,
"batter_baseline_meta": batter_baseline_meta,
"pitcher_baseline_meta": pitcher_baseline_meta,
}
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