""" DataBus Cache Layer - Three-Tier Cache with SWR + Per-Type Stats ================================================================ L1: In-memory dict (sub-millisecond, 4096 keys, LRU eviction) + SWR stale buffer L2: Redis (sub-millisecond, shared across processes, TTL-managed) L3: Cloudflare R2 cold storage (RAG permanence, nightly snapshots) Stale-While-Revalidate (SWR): - L1 stores both fresh and stale entries (stale = TTL * 2) - On cache read, if entry is fresh → direct hit - If entry is stale (past TTL but within stale window) → return stale data AND flag for background refresh via cache.stale_refresh_callback - User NEVER waits for a refresh - always gets instant data Per-Type Stats: - Tracks hits/misses per data_type for tuning TTLs - health() flags types with hit_rate < 30% as "increase TTL" """ import asyncio import contextlib import hashlib import json import logging import os import time from collections import OrderedDict, defaultdict from collections.abc import Callable from typing import Any from dotenv import load_dotenv load_dotenv("/app/.env", override=True) logger = logging.getLogger("databus.cache") REDIS_HOST = os.getenv("REDIS_HOST", "rmi-redis") REDIS_PORT = int(os.getenv("REDIS_PORT", "6379")) REDIS_PASSWORD = os.getenv("REDIS_PASSWORD", "") REDIS_DB = int(os.getenv("REDIS_DB", "0")) class L1Cache: """In-memory LRU cache with Stale-While-Revalidate support. Entries are stored with TWO expiry windows: - fresh_expiry: data is fresh, return immediately (normal hit) - stale_expiry: data is stale but usable (SWR hit) Stale entries are returned instantly; the caller triggers background refresh. """ def __init__(self, max_keys: int = 4096, stale_multiplier: float = 2.5): self._max = max_keys self._stale_mult = stale_multiplier self._store: OrderedDict[str, tuple[Any, float, float]] = OrderedDict() # (value, fresh_expiry, stale_expiry) self.hits = 0 self.stale_hits = 0 self.misses = 0 self._lock = asyncio.Lock() async def get(self, key: str) -> tuple[Any | None, bool]: """Returns (value, is_stale). is_stale=True means background refresh needed.""" async with self._lock: entry = self._store.get(key) if entry is None: self.misses += 1 return None, False value, fresh_expiry, stale_expiry = entry now = time.monotonic() if now > stale_expiry: # Fully expired - evict del self._store[key] self.misses += 1 return None, False if now > fresh_expiry: # Stale but usable - SWR hit self._store.move_to_end(key) self.stale_hits += 1 return value, True # Fresh hit self._store.move_to_end(key) self.hits += 1 return value, False async def set(self, key: str, value: Any, ttl: int): async with self._lock: now = time.monotonic() fresh = now + ttl stale = now + int(ttl * self._stale_mult) self._store[key] = (value, fresh, stale) self._store.move_to_end(key) while len(self._store) > self._max: self._store.popitem(last=False) async def delete(self, key: str): async with self._lock: self._store.pop(key, None) async def clear(self): async with self._lock: self._store.clear() def stats(self) -> dict: total = self.hits + self.stale_hits + self.misses return { "keys": len(self._store), "max_keys": self._max, "hits": self.hits, "stale_hits": self.stale_hits, "misses": self.misses, "hit_rate": round((self.hits + self.stale_hits) / total * 100, 1) if total > 0 else 0, "fresh_hit_rate": round(self.hits / total * 100, 1) if total > 0 else 0, } class L2RedisCache: """Redis cache. Shared across processes. TTL-managed automatically.""" def __init__(self): self._redis = None self._available = False self._prefix = "databus:" self.hits = 0 self.misses = 0 async def _connect(self): if self._redis and self._available: return True try: import redis.asyncio as aioredis kwargs = { "host": REDIS_HOST, "port": REDIS_PORT, "db": REDIS_DB, "socket_connect_timeout": 2, "socket_timeout": 2, "decode_responses": True, "protocol": 2, # Redis 7.2 compat - avoid HELLO/AUTH handshake issue } if REDIS_PASSWORD: kwargs["password"] = REDIS_PASSWORD self._redis = aioredis.Redis(**kwargs) await self._redis.ping() self._available = True logger.info("DataBus Cache: Redis connected") return True except Exception as e: logger.warning(f"DataBus Cache: Redis unavailable ({e}), L2 disabled") self._available = False return False async def get(self, key: str) -> Any | None: if not self._available and not await self._connect(): self.misses += 1 return None try: raw = await self._redis.get(f"{self._prefix}{key}") if raw: self.hits += 1 return json.loads(raw) self.misses += 1 return None except Exception: self._available = False self.misses += 1 return None async def set(self, key: str, value: Any, ttl: int): if not self._available and not await self._connect(): return try: await self._redis.setex(f"{self._prefix}{key}", ttl, json.dumps(value, default=str)) except Exception: self._available = False async def delete(self, key: str): if not self._available: return with contextlib.suppress(Exception): await self._redis.delete(f"{self._prefix}{key}") async def clear(self): if not self._available: return try: async for key in self._redis.scan_iter(f"{self._prefix}*"): await self._redis.delete(key) except Exception: pass def stats(self) -> dict: total = self.hits + self.misses return { "available": self._available, "hits": self.hits, "misses": self.misses, "hit_rate": round(self.hits / total * 100, 1) if total > 0 else 0, } class CacheLayer: """ Three-tier cache with Stale-While-Revalidate + per-type stats. L1 (memory, SWR) → L2 (Redis) → L3 (R2, async, background) Read path: L1 (fresh? → done. stale? → return stale + schedule refresh) → L2 → miss Write path: External API → L1 + L2 (L3 batched via RAG permanence cron) SWR callback: When L1 returns stale data, cache fires stale_refresh_callback so the caller can schedule background re-fetch without blocking the user. """ def __init__(self): self.l1 = L1Cache(max_keys=4096) self.l2 = L2RedisCache() self._l3_enabled = True # SWR: caller sets this to a coroutine factory for background refresh self.stale_refresh_callback: Callable | None = None # Per-type hit/miss tracking for TTL tuning self._type_stats: dict[str, dict[str, int]] = defaultdict(lambda: {"hits": 0, "stale_hits": 0, "misses": 0}) # Data type TTLs - optimized for FREE tier usage to avoid rate limits # and maximize our 1-month Arkham trial + Alchemy free quota. self.ttl_config = { # ── High Frequency (Cache aggressively to save free API calls) ── "token_price": 60, # Increased from 15s to 60s (better cache reuse for price data) "market_overview": 60, # Increased from 30s to 60s "trending": 120, # Increased from 60s to 120s "market_movers": 60, # Increased from 30s to 60s "alerts": 30, # Increased from 15s to 30s # ── Medium Frequency ── "token_detail": 60, # Increased from 30s "token_meta": 300, # Increased from 120s (Alchemy free tier) "wallet_balance": 30, # Increased from 10s (Alchemy free tier) "wallet_tokens": 300, # Increased from 60s to 300s (reduce misses on uncached provider) "wallet_pnl": 120, # Increased from 60s "tx_history": 60, # Increased from 30s "dex_data": 60, # Increased from 30s "holder_data": 120, # Increased from 60s # ── Low Frequency (Static or slow-moving data) ── "risk_scan": 600, # Increased from 300s "sentinel_deep": 600, # Increased from 300s "funding_source": 7200, # Increased from 3600s (2 hours) "solana_funding": 7200, # Increased from 3600s (2 hours) "wallet_labels": 86400, # 24 hours (local data, no API cost) "entity_intel": 3600, # Increased from 1800s (1 hour) "socialfi_resolve": 86400, # 24 hours "cross_chain": 3600, # Increased from 1800s "wallet_cluster": 3600, # Increased from 1800s "bundle_detect": 600, # Increased from 300s # ── ARKHAM INTELLIGENCE (1-Month Free Trial: 100k quota) ── # Cache aggressively to maximize the 100,000 monthly request limit "arkham_entity": 600, # Increased from 300s (10 mins) "arkham_portfolio": 300, # Increased from 120s (5 mins) "arkham_labels": 7200, # Increased from 3600s (2 hours) "arkham_transfers": 300, # Increased from 60s (5 mins) "arkham_counterparties": 600, # Increased from 300s (10 mins) # ── Other ── "nansen_labels": 3600, "nansen_smart_money": 1800, "news": 600, # Increased from 300s (10 mins) "news_intel": 600, # 10 mins for aggregated news "messari_news": 900, # 15 mins for Messari institutional feed "social_feed": 300, # Increased from 120s (5 mins) "sentiment": 600, # Increased from 300s "whale_data": 300, # Increased from 120s "smart_money": 300, # Increased from 120s "gmgn_smart_money": 300, # Increased from 120s "launches": 120, # Increased from 60s "bubble_map": 600, # Increased from 300s "rugmaps_analysis": 1200, # Increased from 600s (20 mins) "contract_scan": 3600, # Increased from 1800s (1 hour) "threat_check": 600, # Increased from 300s "prediction_markets": 120, # Increased from 60s "prediction_signals": 300, # Increased from 120s "defi_protocols": 600, # Increased from 300s "rag_search": 600, # Increased from 300s "tvl": 300, # Increased from 120s "wallet_profile": 600, # Increased from 300s "portfolio": 120, # Increased from 60s # ── NEW FREE SOURCES ADDED ── "defillama_tvl": 3600, # 1 hour (completely free, no API key) "defillama_chains": 3600, # 1 hour (completely free, no API key) "blockchair_address": 600, # 10 mins (free tier, no API key) "blockchair_stats": 1800, # 30 mins (free tier, no API key) "birdeye_overview": 120, # 2 mins (freemium, 50k/mo quota) "birdeye_price": 30, # 30s (freemium, 50k/mo quota, fallback to DexScreener) "solana_tracker_price": 15, # 15s (freemium, 5k/mo quota) "solana_tracker_token": 60, # 1 min (freemium, 5k/mo quota) "solana_tracker_trending": 120, # 2 mins (freemium, 5k/mo quota) "dev_activity": 3600, # 1 hour (Santiment free tier, 100 calls/day) "url_security_scan": 86400, # 24 hours (VirusTotal free tier, 500 req/day) "dune_early_buyers": 14400, # 4 hours (Dune free tier: 10k CU/mo, aggressive caching) "default": 60, } def _extract_data_type(self, key: str) -> str: """Extract data_type from cache key format 'source:data_type:hash'.""" parts = key.split(":") if len(parts) >= 2: return parts[1] return "default" async def get(self, key: str, data_type: str = "default") -> tuple[Any | None, bool]: """Get from cache with SWR. Returns (value, is_stale). If is_stale=True, caller should schedule background refresh. """ # L1 (with SWR) val, is_stale = await self.l1.get(key) if val is not None: dtype = data_type or self._extract_data_type(key) if is_stale: self._type_stats[dtype]["stale_hits"] += 1 else: self._type_stats[dtype]["hits"] += 1 # SWR: schedule background refresh if stale and callback is set if is_stale and self.stale_refresh_callback: try: # noqa: SIM105 asyncio.create_task(self.stale_refresh_callback(key)) except Exception: pass # Best-effort refresh return val, is_stale # L2 (no SWR - Redis handles its own TTL) val = await self.l2.get(key) if val is not None: # Promote to L1 with shorter TTL (fresh only for now) await self.l1.set(key, val, 60) dtype = data_type or self._extract_data_type(key) self._type_stats[dtype]["hits"] += 1 return val, False dtype = data_type or self._extract_data_type(key) self._type_stats[dtype]["misses"] += 1 return None, False async def set(self, key: str, value: Any, ttl: int | None = None, data_type: str = "default"): """Set in cache. Writes to L1 + L2.""" if ttl is None: ttl = self.ttl_config.get(data_type, 60) await self.l1.set(key, value, ttl) await self.l2.set(key, value, ttl) async def delete(self, key: str): await self.l1.delete(key) await self.l2.delete(key) async def clear(self): await self.l1.clear() await self.l2.clear() def make_key(self, source: str, data_type: str, **kwargs) -> str: """Generate a deterministic cache key.""" args_str = json.dumps(kwargs, sort_keys=True, default=str) args_hash = hashlib.sha256(args_str.encode()).hexdigest()[:16] return f"{source}:{data_type}:{args_hash}" def type_stats(self) -> dict[str, dict]: """Per-data-type hit/miss/stale stats with TTL tuning suggestions.""" result = {} for dtype, counts in self._type_stats.items(): total = counts["hits"] + counts["stale_hits"] + counts["misses"] hit_rate = round((counts["hits"] + counts["stale_hits"]) / total * 100, 1) if total > 0 else 0 entry = { "hits": counts["hits"], "stale_hits": counts["stale_hits"], "misses": counts["misses"], "hit_rate": hit_rate, "current_ttl": self.ttl_config.get(dtype, 60), } # Suggest TTL increase if hit_rate < 30% if total > 10 and hit_rate < 30: entry["suggestion"] = "increase_ttl" # Suggest TTL decrease if hit_rate > 95% and TTL > 120 elif total > 10 and hit_rate > 95 and self.ttl_config.get(dtype, 60) > 120: entry["suggestion"] = "decrease_ttl" result[dtype] = entry return result async def health(self) -> dict: l1 = self.l1.stats() l2 = self.l2.stats() total_hits = l1["hits"] + l1["stale_hits"] + l2["hits"] total_misses = l1["misses"] + l2["misses"] total = total_hits + total_misses return { "status": "ok", "l1_memory": l1, "l2_redis": l2, "l3_r2": {"enabled": self._l3_enabled, "note": "Batched via RAG permanence cron"}, "combined_hit_rate": round(total_hits / total * 100, 1) if total > 0 else 0, "total_hits": total_hits, "total_misses": total_misses, "per_type_stats": self.type_stats(), "ttl_config": self.ttl_config, } # ── Singleton ───────────────────────────────────────────────────────────────── _cache: CacheLayer | None = None def get_cache() -> CacheLayer: global _cache if _cache is None: _cache = CacheLayer() return _cache