| |
| |
| |
| |
| |
| |
| |
|
|
| |
| |
| |
| MEMORY_MANIFEST = { |
| "updated_ts": 0, |
| "datasets_done": [], |
| "vectors_total": 0, |
| "notes": "Set HIVE_ALLOW_SELF_WRITE_MANIFEST=0 to stop auto-updates." |
| } |
| |
|
|
|
|
| import os, sys, re, json, time, shutil, tempfile, subprocess, platform, socket, threading, importlib, hashlib, unicodedata, urllib.request, base64 |
| from dataclasses import dataclass |
| from typing import Optional, List, Dict, Tuple |
| |
| def _ensure(pkgs: List[str]): |
| for p in pkgs: |
| mod = p.split("==")[0].split(">=")[0].split("<=")[0].split("[")[0] |
| try: |
| importlib.import_module(mod) |
| except Exception: |
| try: |
| subprocess.check_call([sys.executable, "-m", "pip", "install", "--upgrade", p]) |
| except Exception: |
| pass |
|
|
| _ensure(["numpy>=1.24.0","psutil>=5.9.0","requests>=2.31.0","gradio>=4.44.0","sentence-transformers>=3.0.0","faiss-cpu>=1.8.0", |
| "transformers>=4.44.0","accelerate>=0.33.0","datasets>=2.21.0","soundfile>=0.12.1","faster-whisper>=1.0.0","langid>=1.1.6", |
| "piper-tts>=1.2.0","g2p_en>=2.1.0","librosa>=0.10.1","scikit-learn>=1.1.0","feedparser>=6.0.11","duckduckgo_search>=6.2.10", |
| "keyring>=24.3.1"]) |
|
|
| import numpy as np, psutil, requests, feedparser, langid, librosa, gradio as gr, soundfile as sf |
| from sentence_transformers import SentenceTransformer |
| from duckduckgo_search import DDGS |
| from transformers import AutoTokenizer, AutoModelForCausalLM, pipeline |
| from faster_whisper import WhisperModel |
| from piper.voice import PiperVoice |
| from g2p_en import G2p |
| from sklearn.metrics.pairwise import cosine_similarity |
|
|
| try: |
| import torch |
| except Exception: |
| torch=None |
|
|
| try: |
| import faiss |
| except Exception: |
| subprocess.check_call([sys.executable,"-m","pip","install","--upgrade","faiss-cpu>=1.8.0"]) |
| import faiss |
|
|
| |
| try: |
| import cv2; _HAVE_CV=True |
| except Exception: |
| _HAVE_CV=False |
| try: |
| from PIL import Image |
| import pytesseract; _HAVE_TESS=True and _HAVE_CV |
| except Exception: |
| _HAVE_TESS=False |
|
|
| try: |
| import keyring |
| except Exception: |
| keyring=None |
|
|
| |
| def ENV(name, default=None, cast=str): |
| v=os.getenv(name, default) |
| if v is None: return None |
| if cast is bool: return str(v).lower() in ("1","true","yes","on") |
| if cast is int: |
| try: return int(v) |
| except (ValueError, TypeError): return int(float(v)) |
| return v |
|
|
| CFG={ |
| |
| "HIVE_AUTO_ARCHIVE": ENV("HIVE_AUTO_ARCHIVE", "1", bool), |
| "HIVE_AUTO_ARCHIVE_MODE": ENV("HIVE_AUTO_ARCHIVE_MODE", "per_chain", str), |
| "HIVE_ARCHIVE_PATH": ENV("HIVE_ARCHIVE_PATH", "curves.tar.gz", str), |
| |
| "HIVE_INGEST_CHAIN": ENV("HIVE_INGEST_CHAIN", "1", bool), |
| "HIVE_INGEST_CHAIN_MAX": ENV("HIVE_INGEST_CHAIN_MAX", "2", int), |
| |
| "HIVE_INGEST_STAGED": ENV("HIVE_INGEST_STAGED", "1", bool), |
| "HIVE_INGEST_STAGE_SIZE": ENV("HIVE_INGEST_STAGE_SIZE", "3", int), |
| "HIVE_INGEST_MIN_FREE_GB": ENV("HIVE_INGEST_MIN_FREE_GB", "8", int), |
| "HIVE_INGEST_NEXT": ENV("HIVE_INGEST_NEXT", "0", bool), |
|
|
| |
| "HIVE_ALLOW_SELF_WRITE_MANIFEST": ENV("HIVE_ALLOW_SELF_WRITE_MANIFEST", "1", bool), |
| "HIVE_SELF_WRITE_FILE": ENV("HIVE_SELF_WRITE_FILE", "", str), |
|
|
| |
| "CURVES_AUTO_RESTORE": ENV("HIVE_CURVES_AUTO_RESTORE", "1", bool), |
| "CURVES_ARCHIVE_LOCAL": ENV("HIVE_CURVES_ARCHIVE_LOCAL", "curves.tar.gz", str), |
| "CURVES_ARCHIVE_URL": ENV("HIVE_CURVES_ARCHIVE_URL", "", str), |
| "CURVES_HF_DATASET": ENV("HIVE_CURVES_HF_DATASET", "", str), |
| "CURVES_HF_SUBPATH": ENV("HIVE_CURVES_HF_SUBPATH", "", str), |
| "HF_READ_TOKEN": ENV("HF_READ_TOKEN", "", str), |
|
|
| |
| "HIVE_HOME": ENV("HIVE_HOME", "/home/hive/hive_data" if os.path.exists("/home/hive") else "./hive_data"), |
| "CURVE_DIR": os.path.join(ENV("HIVE_HOME", "/home/hive/hive_data" if os.path.exists("/home/hive") else "./hive_data"), "curves"), |
| "STATE_DIR": os.path.join(ENV("HIVE_HOME", "/home/hive/hive_data" if os.path.exists("/home/hive") else "./hive_data"), "system"), |
| "LAUNCH_UI": ENV("HIVE_LAUNCH_UI","1",bool), |
| "LLM_AUTOSIZE": ENV("HIVE_LLM_AUTOSIZE", "1", bool), |
| "LLM_MAX_VRAM_GB": ENV("HIVE_LLM_MAX_VRAM_GB","0", int), |
| "MODEL_OVERRIDE": ENV("HIVE_MODEL_ID",""), |
| "CTX_TOKENS": ENV("HIVE_CTX_TOKENS","2048",int), |
| "OWNER_NAME": ENV("HIVE_OWNER_USER","Rose"), |
| "OWNER_PASS": ENV("HIVE_OWNER_PASS","Fehr2008"), |
| "OWNER_SECOND": ENV("HIVE_OWNER_SECOND","Paulbear01"), |
| "AGENT_NAME": ENV("HIVE_AGENT_NAME","Hive"), |
| "NO_PROFANITY": ENV("HIVE_NO_PROFANITY","1",bool), |
| "ASR_SIZE": ENV("HIVE_ASR_SIZE","small"), |
| "TTS_LANG": ENV("HIVE_TTS_LANG","en"), |
| "BOOTSTRAP_INGEST": ENV("HIVE_BOOTSTRAP_INGEST","1",bool), |
| "FORCE_REINGEST": ENV("HIVE_FORCE_REINGEST","0",bool), |
| "INGEST_SOURCES": ENV("HIVE_INGEST_SOURCES",""), |
| "ONLINE_ENABLE": ENV("HIVE_ONLINE_ENABLE","1",bool), |
| "ONLINE_AUTO": ENV("HIVE_ONLINE_AUTO","0",bool), |
| "ONLINE_SOURCES": ENV("HIVE_ONLINE_SOURCES","https://hnrss.org/frontpage,https://rss.nytimes.com/services/xml/rss/nyt/World.xml"), |
| "ONLINE_TIMEOUT": ENV("HIVE_ONLINE_TIMEOUT","8",int), |
| "ONLINE_MAX_RESULTS": ENV("HIVE_ONLINE_MAX_RESULTS","5",int), |
| "ONLINE_TRIGGER": ENV("HIVE_ONLINE_TRIGGER","auto",str), |
| |
| "HIVE_USE_HF_INFERENCE": ENV("HIVE_USE_HF_INFERENCE","0",bool), |
| "HIVE_HF_ENDPOINT": ENV("HIVE_HF_ENDPOINT","",str), |
| "ALLOW_SELF_REBOOT": ENV("HIVE_ALLOW_SELF_REBOOT","1",bool), |
| "ALLOW_RUNTIME_HOTPATCH": ENV("HIVE_ALLOW_RUNTIME_HOTPATCH", "1", bool), |
| "AUTO_SELF_OPTIMIZE": ENV("HIVE_AUTO_SELF_OPTIMIZE","1",bool), |
| |
| "OPT_ENABLE": ENV("HIVE_OPT_ENABLE","1",bool), |
| "OPT_AUTO_APPLY": ENV("HIVE_OPT_AUTO_APPLY","0",bool), |
| "OPT_PKG_ALLOWLIST": ENV("HIVE_OPT_PKG_ALLOWLIST","transformers,accelerate,datasets,sentence-transformers,faiss-cpu,duckduckgo_search,feedparser,requests,gradio").split(","), |
| "OPT_MODEL_ALLOWLIST": ENV("HIVE_OPT_MODEL_ALLOWLIST","meta-llama/Meta-Llama-3.1-8B-Instruct,meta-llama/Meta-Llama-3.1-70B-Instruct,TinyLlama/TinyLlama-1.1B-Chat-v1.0").split(","), |
| "OPT_THRESH_LATENCY_MS": ENV("HIVE_OPT_THRESH_LATENCY_MS","0",int), |
| "OPT_THRESH_TOKS_PER_S": ENV("HIVE_OPT_THRESH_TOKS_PER_S","0",float), |
| "OPT_THRESH_QUALITY": ENV("HIVE_OPT_THRESH_QUALITY","0.02",float), |
| "OPT_SANDBOX_TIMEOUT": ENV("HIVE_OPT_SANDBOX_TIMEOUT","180",int), |
| } |
|
|
| |
| HIVE_HOME = CFG["HIVE_HOME"] |
| DIRS_TO_CREATE = [ |
| CFG["CURVE_DIR"], CFG["STATE_DIR"], |
| os.path.join(HIVE_HOME, "knowledge", "chunks"), os.path.join(HIVE_HOME, "users", "conversations"), |
| os.path.join(HIVE_HOME, "voice", "voiceprints"), os.path.join(HIVE_HOME, "admin", "logs"), |
| os.path.join(HIVE_HOME, "packages") |
| ] |
| for d in DIRS_TO_CREATE: os.makedirs(d, exist_ok=True) |
|
|
| OVERLAY_DIR = os.path.join(CFG["STATE_DIR"], "runtime_overlay") |
| RUNTIME_OVERRIDES = os.path.join(CFG["STATE_DIR"], "runtime_overrides.json") |
| OPT_DIR = os.path.join(CFG["STATE_DIR"], "opt") |
| OPT_PROPOSALS = os.path.join(OPT_DIR, "proposals.jsonl") |
| OPT_RESULTS = os.path.join(OPT_DIR, "results.jsonl") |
| for p in (OVERLAY_DIR, OPT_DIR): |
| os.makedirs(p, exist_ok=True) |
|
|
| |
| def _has_gpu_env()->bool: |
| accel=os.getenv("SPACE_ACCELERATOR","").lower() |
| if accel in ("t4","a10","a100","l4","l40","h100"): return True |
| try: return torch is not None and torch.cuda.is_available() |
| except Exception: return False |
|
|
| def probe_caps() -> Dict[str, any]: |
| """ |
| Implements the Environment Detector and Capability Profiler. |
| Detects hardware and returns a profile for adaptive behavior. |
| """ |
| total_ram_gb = psutil.virtual_memory().total / (1024**3) |
| available_ram_gb = psutil.virtual_memory().available / (1024**3) |
| is_pi = 'raspberrypi' in platform.machine().lower() |
|
|
| profile = { |
| "device_type": "raspberry_pi" if is_pi else "generic_linux", |
| "arch": platform.machine(), |
| "total_ram_gb": round(total_ram_gb, 1), |
| "available_ram_gb": round(available_ram_gb, 1), |
| "gpu": _has_gpu_env(), |
| "is_low_memory": total_ram_gb < 6, |
| "max_docs": 70000 if total_ram_gb > 16 else (50000 if total_ram_gb > 8 else 12000), |
| "batch": 512 if total_ram_gb > 16 else (256 if total_ram_gb > 8 else 64) |
| } |
| return profile |
|
|
| CANDIDATES=[ |
| ("TinyLlama/TinyLlama-1.1B-Chat-v1.0", 0), |
| ("meta-llama/Meta-Llama-3.1-8B-Instruct",12), |
| ("meta-llama/Meta-Llama-3.1-70B-Instruct",100) |
| ] |
| def pick_model(caps: Dict[str, any]) -> Tuple[str, dict]: |
| if CFG["MODEL_OVERRIDE"]: |
| return CFG["MODEL_OVERRIDE"], {"device":"cuda" if _has_gpu_env() else "cpu"} |
| max_vram=CFG["LLM_MAX_VRAM_GB"] |
| if caps["gpu"]: |
| for mid,need in reversed(CANDIDATES): |
| if need and (max_vram==0 or need<=max_vram): |
| return mid, {"device":"cuda"} |
| else: |
| ram=caps["total_ram_gb"] |
| for mid,need in reversed(CANDIDATES): |
| if need==0 and ram>=6: return mid, {"device":"cpu"} |
| return "TinyLlama/TinyLlama-1.1B-Chat-v1.0", {"device":"cpu"} |
|
|
| |
| _EMB_ID=os.getenv("HIVE_EMB_ID","sentence-transformers/all-MiniLM-L6-v2") |
| class GEC: |
| def __init__(self): |
| device = "cuda" if _has_gpu_env() else "cpu" |
| self.model=SentenceTransformer(_EMB_ID).to(device) |
| def encode(self, texts: List[str]): return self.model.encode(texts, normalize_embeddings=True) |
|
|
| class CurveStore: |
| def __init__(self, d): |
| self.dir=d; os.makedirs(d, exist_ok=True) |
| self.idx_path=os.path.join(d,"faiss.index") |
| self.meta_path=os.path.join(d,"meta.jsonl") |
| self.dim=384; self.gec=GEC() |
| self.index=faiss.read_index(self.idx_path) if os.path.exists(self.idx_path) else faiss.IndexFlatIP(self.dim) |
| def add_texts(self, docs:List[str], metas:List[Dict]): |
| if not docs: return |
| vecs=np.asarray(self.gec.encode(docs), dtype="float32") |
| self.index.add(vecs) |
| with open(self.meta_path,"a",encoding="utf-8") as f: |
| for m in metas: f.write(json.dumps(m, ensure_ascii=False)+"\n") |
| faiss.write_index(self.index, self.idx_path) |
| def search(self, query:str, k:int=6)->List[Dict]: |
| if self.index.ntotal==0: return [] |
| qv=np.asarray(self.gec.encode([query]), dtype="float32") |
| D,I=self.index.search(qv,k) |
| lines=open(self.meta_path,"r",encoding="utf-8").read().splitlines() if os.path.exists(self.meta_path) else [] |
| out=[] |
| for i in I[0]: |
| if 0<=i<len(lines): |
| try: out.append(json.loads(lines[i])) |
| except json.JSONDecodeError: pass |
| return out |
| def search_with_scores(self, query:str, k:int=6): |
| if self.index.ntotal == 0: return [], [] |
| qv=np.asarray(self.gec.encode([query]), dtype="float32") |
| D,I=self.index.search(qv,k) |
| lines=open(self.meta_path,"r",encoding="utf-8").read().splitlines() if os.path.exists(self.meta_path) else [] |
| metas, scores = [], [] |
| query_len = len(query.split()) |
|
|
| for idx, sc in zip(I[0], D[0]): |
| if 0<=idx<len(lines): |
| try: |
| meta = json.loads(lines[idx]) |
| |
| text_len = len(meta.get("text", "").split()) |
| penalty = 0.0 |
| if query_len < 4 and text_len > 100: |
| penalty = 0.15 * (min(text_len, 400) / 400) |
| |
| metas.append(meta) |
| scores.append(float(max(0.0, min(1.0, (sc if sc is not None else 0.0) - penalty)))) |
| except: pass |
| return metas, scores |
|
|
| OFFLINE_MARK = os.path.join(CFG["CURVE_DIR"], ".offline_ready") |
| def _curves_ready(curve_dir:str)->bool: |
| idx=os.path.join(curve_dir,"faiss.index") |
| if os.path.exists(OFFLINE_MARK): |
| try: return json.load(open(OFFLINE_MARK)).get("ok",True) |
| except Exception: return True |
| if os.path.exists(idx): |
| try: return faiss.read_index(idx).ntotal>0 |
| except Exception: return False |
| return False |
| def _mark_offline_ready(): |
| try: json.dump({"ok":True,"ts":time.time()}, open(OFFLINE_MARK,"w",encoding="utf-8")) |
| except Exception: pass |
|
|
| |
| DEFAULT_SOURCES=["jhu-clsp/jflue","bea2019st/wi_locness","fce-m2109/mascorpus","rajpurkar/squad_v2", |
| "OpenRL/daily_dialog","tetti/spelling-dataset-extended","Helsinki-NLP/opus-100","facebook/flores", |
| "HuggingFaceH4/no_robots","bigscience/xP3","allenai/sciq","allenai/c4", |
| "mozilla-foundation/common_voice_17_0","bene-ges/en_cmudict","openslr/librispeech_asr","conceptnet5/conceptnet5","grammarly/coedit"] |
|
|
| def _iter_text(dataset_name:str, split="train"): |
| from datasets import load_dataset |
| ds=load_dataset(dataset_name, split=split, streaming=True) |
| for ex in ds: |
| text = ex.get("text") or ex.get("sentence") or ex.get("content") or ex.get("question") |
| if not text: |
| if "translation" in ex and isinstance(ex["translation"], dict): |
| tdict=ex["translation"]; text=" | ".join([f"{k}:{v}" for k,v in tdict.items() if isinstance(v,str)]) |
| else: |
| text=str(ex) |
| yield {"text": str(text)} |
|
|
| def _plan_order(srcs: List[str])->List[str]: |
| first=["jhu-clsp/jflue","bea2019st/wi_locness","fce-m2109/mascorpus","rajpurkar/squad_v2","OpenRL/daily_dialog","tetti/spelling-dataset-extended"] |
| ordered=[s for s in first if s in srcs] |
| for s in srcs: |
| if s not in ordered: ordered.append(s) |
| return ordered |
|
|
| class LibrarianCurve: |
| def __init__(self, store): self.store=store |
| def ingest_pairs(self, texts, metas, scope): |
| metas_scoped=[] |
| for m,t in zip(metas,texts): |
| m2=dict(m); m2["scope"]=scope; m2["text"]=t[:500] |
| metas_scoped.append(m2) |
| self.store.add_texts(texts, metas_scoped) |
| def retrieve_scoped_with_scores(self, query, effective_role, caller_id, k=6): |
| items, scores = self.store.search_with_scores(query, k=k*4) |
| if effective_role=="owner": return items[:k], scores[:k] |
| allowed={"general"} |
| if caller_id: allowed.add(f"user:{caller_id}") |
| filt_i,filt_s=[],[] |
| for it,sc in zip(items, scores): |
| if it.get("scope","general") in allowed: |
| filt_i.append(it); filt_s.append(sc) |
| if len(filt_i) >= k: break |
| return filt_i, filt_s |
|
|
| def ingest_all(curve_dir:str, sources: Optional[List[str]]=None, scope="general"): |
| caps=probe_caps() |
| store=CurveStore(curve_dir); lib=LibrarianCurve(store) |
| os.makedirs(curve_dir, exist_ok=True) |
| logf=os.path.join(curve_dir,"ingest_log.jsonl") |
| count_total=0; sources=sources or DEFAULT_SOURCES |
| for ds in _plan_order(sources): |
| count=0; bt,bm=[],[] |
| try: |
| for rec in _iter_text(ds): |
| txt=(rec.get("text") or "").strip() |
| if not txt: continue |
| bt.append(txt); bm.append({"dataset":ds,"text":txt[:500]}) |
| if len(bt)>=caps["batch"]: |
| lib.ingest_pairs(bt,bm,scope); count+=len(bt); count_total+=len(bt); bt,bm=[],[] |
| if count>=caps["max_docs"]: break |
| if bt: lib.ingest_pairs(bt,bm,scope); count+=len(bt); count_total+=len(bt); bt,bm=[],[] |
| with open(logf,"a",encoding="utf-8") as f: f.write(json.dumps({"dataset":ds,"ingested":count})+"\n") |
| except Exception as e: |
| with open(logf,"a",encoding="utf-8") as f: f.write(json.dumps({"dataset":ds,"error":str(e)})+"\n") |
| return count_total |
|
|
| |
| ONLINE_DB=os.path.join(CFG["STATE_DIR"],"online_seen.json") |
| def _load_json(path, default): |
| if os.path.exists(path): |
| try: return json.load(open(path,"r",encoding="utf-8")) |
| except Exception: return default |
| return default |
| def _save_json(path, data): json.dump(data, open(path,"w",encoding="utf-8"), indent=2) |
|
|
| def online_available(timeout:int)->bool: |
| try: |
| requests.get("https://huggingface.co", timeout=timeout) |
| return True |
| except Exception: |
| return False |
|
|
| def _hash(s:str)->str: |
| return hashlib.sha1(s.encode("utf-8","ignore")).hexdigest() |
|
|
| def fetch_rss(urls:List[str], timeout:int=8, limit:int=50)->List[Dict]: |
| items=[] |
| for u in urls: |
| try: |
| f=feedparser.parse(u) |
| for e in f.entries[:limit]: |
| items.append({"title":e.get("title",""),"link":e.get("link",""),"summary":e.get("summary") or e.get("description",""),"published":e.get("published") or e.get("updated",""),"source":u}) |
| except Exception as e: |
| print(f"Warning: Failed to fetch or parse RSS feed from {u}. Error: {e}") |
| return items |
|
|
| def web_search_snippets(query:str, max_results:int=5, timeout:int=8)->list: |
| out=[] |
| try: |
| with DDGS(timeout=timeout) as ddgs: |
| for r in ddgs.text(query, max_results=max_results): |
| if r and r.get("body"): |
| out.append({"title":r.get("title",""),"href":r.get("href",""),"body":r.get("body","")}) |
| except Exception as e: |
| print(f"Warning: DuckDuckGo search failed for query '{query}'. Error: {e}") |
| return out |
|
|
| |
| USERS_DB=os.path.join(CFG["STATE_DIR"],"users.json") |
| LOCKS_DB=os.path.join(CFG["STATE_DIR"],"lockouts.json") |
| VOICES_DB=os.path.join(CFG["STATE_DIR"],"voices.json") |
| ADAPT_DB=os.path.join(CFG["STATE_DIR"],"speech_adapt.json") |
|
|
| def _init_users(): |
| d={"owner":{"id":"owner:1","name":CFG["OWNER_NAME"],"role":"owner","pass":CFG["OWNER_PASS"],"second":CFG["OWNER_SECOND"],"prefs":{"activation_names":[CFG["AGENT_NAME"]],"language":"en"}}, |
| "admins_super":[],"admins_general":[],"users":[]} |
| _save_json(USERS_DB,d); return d |
| def _load_users(): |
| d=_load_json(USERS_DB, None); return d if d else _init_users() |
| def _find_user(d, name_or_id): |
| pools=[("owner",[d.get("owner")]),("admin_super",d["admins_super"]),("admin_general",d["admins_general"]),("user",d["users"])] |
| for role,pool in pools: |
| for u in pool or []: |
| if u and (u.get("id")==name_or_id or u.get("name")==name_or_id): return u, role |
| return None, None |
|
|
| PERMS={ |
| "owner":{"can_add":["admin_super","admin_general","user"],"can_remove":["admin_super","admin_general","user"], |
| "can_edit_role_of":["admin_super","admin_general","user"],"can_edit_profile_of":["owner","admin_super","admin_general","user"], |
| "can_view_scopes":"all","maintenance":"full","code_edit":"approve_and_edit"}, |
| "admin_super":{"can_add":["admin_general","user"],"can_remove":["admin_general","user"], |
| "can_edit_role_of":["admin_general","user"],"can_edit_profile_of":["admin_general","user"], |
| "can_view_scopes":"self_only","maintenance":"advanced","code_edit":"suggest_only"}, |
| "admin_general":{"can_add":["user"],"can_remove":["user"],"can_edit_role_of":["user"],"can_edit_profile_of":["user"], |
| "can_view_scopes":"self_only","maintenance":"basic","code_edit":"suggest_only"}, |
| "user":{"can_add":[],"can_remove":[],"can_edit_role_of":[],"can_edit_profile_of":["user"], |
| "can_view_scopes":"self_only","maintenance":"none","code_edit":"none"}, |
| "guest":{"can_add":[],"can_remove":[],"can_edit_role_of":[],"can_edit_profile_of":[], |
| "can_view_scopes":"self_only","maintenance":"none","code_edit":"none"}, |
| } |
|
|
|
|
|
|
|
|
| def attempt_login(name_or_id:str, password:str="", second:Optional[str]=None): |
| d=_load_users(); locks=_load_json(LOCKS_DB,{ }) |
| def lock_fail(lid, msg): |
| st=locks.get(lid, {"fails":0,"until":0}); st["fails"]=st.get("fails",0)+1 |
| dur=180 if st["fails"]>=3 else 0; st["until"]=time.time()+dur if dur else 0 |
| locks[lid]=st; _save_json(LOCKS_DB,locks); return False, msg |
| u,_=_find_user(d, name_or_id) |
| if not u: return False, "Profile not found." |
| role=u.get("role","user"); lid=str(u.get("id", u.get("name"))); now=time.time() |
| st=locks.get(lid, {"fails":0,"until":0}) |
| if now < st.get("until",0): return False, f"Locked; try again in ~{int(st['until']-now)}s." |
| if role in ("admin_general","admin_super","owner"): |
| if role=="owner": |
| if password!=u.get("pass") or (u.get("second") and second!=u.get("second")): |
| return lock_fail(lid, "Owner credentials incorrect.") |
| else: |
| if password!=u.get("pass"): return lock_fail(lid, "Admin password incorrect.") |
| locks[lid]={"fails":0,"until":0}; _save_json(LOCKS_DB,locks) |
| return True, f"Welcome, {u.get('name')} ({role})." |
|
|
| |
| G2P = G2p() |
| ASR_MODELS={"tiny":"tiny","base":"base","small":"small","medium":"medium","large-v3":"large-v3"} |
| def _asr_model_name(): return ASR_MODELS.get(CFG["ASR_SIZE"],"small") |
| _ASR=None |
| def get_asr(): |
| global _ASR |
| if _ASR is not None: return _ASR |
| size=_asr_model_name(); device="cuda" if (_has_gpu_env()) else "cpu" |
| compute_type="float16" if device=="cuda" else "int8" |
| _ASR=WhisperModel(size, device=device, compute_type=compute_type); return _ASR |
|
|
| PIPER_MODELS={ |
| "en": ("https://github.com/rhasspy/piper/releases/download/v0.0.2/en_US-amy-low.onnx", |
| "https://github.com/rhasspy/piper/releases/download/v0.0.2/en_US-amy-low.onnx.json"), |
| "es": ("https://github.com/rhasspy/piper/releases/download/v0.0.2/es_ES-davefx-medium.onnx", |
| "https://github.com/rhasspy/piper/releases/download/v0.0.2/es_ES-davefx-medium.onnx.json"), |
| "fr": ("https://github.com/rhasspy/piper/releases/download/v0.0.2/fr_FR-gilles-medium.onnx", |
| "https://github.com/rhasspy/piper/releases/download/v0.0.2/fr_FR-gilles-medium.onnx.json"), |
| "de": ("https://github.com/rhasspy/piper/releases/download/v0.0.2/de_DE-thorsten-low.onnx", |
| "https://github.com/rhasspy/piper/releases/download/v0.0.2/de_DE-thorsten-low.onnx.json"), |
| "zh": ("https://github.com/rhasspy/piper/releases/download/v0.0.2/zh_CN-huayan-low.onnx", |
| "https://github.com/rhasspy/piper/releases/download/v0.0.2/zh_CN-huayan-low.onnx.json"), |
| } |
| def _download(url,dst, timeout=30): |
| if os.path.exists(dst): return dst |
| os.makedirs(os.path.dirname(dst),exist_ok=True); urllib.request.urlretrieve(url,dst); return dst |
| _TTS_CACHE={} |
| def get_tts(lang: str = "en") -> PiperVoice: |
| lang=lang if lang in PIPER_MODELS else "en" |
| if lang in _TTS_CACHE: return _TTS_CACHE[lang] |
| mu,cu=PIPER_MODELS[lang]; m=_download(mu,f"./models/piper/{os.path.basename(mu)}"); c=_download(cu,f"./models/piper/{os.path.basename(cu)}") |
| v=PiperVoice.load(m,c); _TTS_CACHE[lang]=v; return v |
|
|
| def _embed_mfcc(path)->np.ndarray: |
| y, sr = librosa.load(path, sr=16000) |
| mf=librosa.feature.mfcc(y=y, sr=sr, n_mfcc=20) |
| return mf.mean(axis=1) |
| def enroll_voice(uid:str, path:str) -> bool: |
| db=_load_json(VOICES_DB, {}); db[uid]=_embed_mfcc(path).astype(float).tolist(); _save_json(VOICES_DB, db); return True |
| def identify_voice(path:str, threshold:float=0.70) -> Optional[str]: |
| db=_load_json(VOICES_DB, {}); |
| if not db: return None |
| emb=_embed_mfcc(path).reshape(1,-1) |
| keys=list(db.keys()); mats=np.array([db[k] for k in keys]) |
| sims=cosine_similarity(emb, mats)[0]; i=int(np.argmax(sims)); return keys[i] if sims[i]>=threshold else None |
|
|
| _BASIC={'a':'a as in apple /æ/','e':'e as in elephant /ɛ/','i':'i as in igloo /ɪ/','o':'o as in octopus /ɒ/','u':'u as in umbrella /ʌ/', |
| 'c':'c as in cat /k/ (before e/i/y often /s/)','g':'g as in goat /g/ (before e/i/y often soft /dʒ/)','y':'y as in yellow /j/ or happy /i/'} |
| def phonics(word:str)->str: |
| toks=G2P(word); phones=[t for t in toks if re.match(r"[A-Z]+[0-2]?$", t)] |
| hints=[]; |
| for ch in word.lower(): |
| if ch in _BASIC and _BASIC[ch] not in hints: hints.append(_BASIC[ch]) |
| return f"Phonemes: {' '.join(phones)} | Hints: {('; '.join(hints)) if hints else '🐝'}" |
|
|
| def lid_chunk(text:str, min_len:int=12)->List[Tuple[str,str]]: |
| parts=re.split(r"([.!?;\u2026\u2028\u2029])+\s{2,}|", text) |
| chunks=[]; buf="" |
| for p in parts: |
| if not p: continue |
| buf+=p |
| if len(buf)>=min_len or re.match(r"[.!?;\u2026\u2028\u2029]", p): |
| lang,_=langid.classify(buf.strip()); chunks.append((buf.strip(), lang)); buf="" |
| if buf.strip(): |
| lang,_=langid.classify(buf.strip()); chunks.append((buf.strip(), lang)) |
| return chunks |
|
|
| def asr_transcribe(path:str, uid: Optional[str], forced_lang: Optional[str]=None)->str: |
| model=get_asr() |
| prior=_load_json(ADAPT_DB,{}).get(uid or "guest",{}).get("lang_prior") |
| language=forced_lang or prior or None |
| segs, info = model.transcribe(path, language=language, beam_size=5, vad_filter=True) |
| text=" ".join([s.text for s in segs]) if segs else "" |
| if not forced_lang and text.strip(): |
| lid,_=langid.classify(text); prof=_load_json(ADAPT_DB,{}); p=prof.get(uid or "guest",{}); p["lang_prior"]=lid; prof[uid or "guest"]=p; _save_json(ADAPT_DB,prof) |
| return text |
|
|
| def synthesize_multilang(text:str, fallback="en")->str: |
| chunks=lid_chunk(text) |
| sr=None; mix=None |
| for ch, lg in chunks or [(text, fallback)]: |
| lg2=lg if lg in PIPER_MODELS else fallback |
| v=get_tts(lg2) |
| aud, _ = v.synthesize(ch) |
| if sr is None: sr=v.sample_rate |
| mix = aud if mix is None else np.concatenate([mix,aud]) |
| outp=os.path.join(tempfile.gettempdir(), f"hive_tts_{int(time.time())}.wav") |
| sf.write(outp, mix if mix is not None else np.zeros(1), sr or 22050, subtype="PCM_16"); return outp |
|
|
| |
| class EngineCurve: |
| def __init__(self): |
| self.stats={"runs":0,"ok":0,"latency_ms":[]} |
| self.router_rules=[] |
| def choose_route(self, msg:str)->str: |
| for pat in self.router_rules or []: |
| if isinstance(pat, re.Pattern) and pat.search(msg): |
| s=pat.pattern.lower() |
| if any(k in s for k in ["review", "essay", "feedback"]): return "essay_review" |
| if any(k in s for k in ["pronounce", "say"]): return "pronounce" |
| if len(msg.split()) > 50 and any(k in msg.lower() for k in ["review", "essay", "feedback"]): |
| return "essay_review" |
| return "tutor" |
| def run(self, message:str, snippets:List[Dict])->Dict: |
| t0=time.time(); _route=self.choose_route(message); t1=time.time() |
| self.stats["runs"]+=1; self.stats["ok"]+=1; self.stats["latency_ms"].append(int((t1-t0)*1000)) |
| return {"ok":True,"route":_route} |
|
|
| |
| NET_STATE_DB=os.path.join(CFG["STATE_DIR"],"wifi_known.json") |
|
|
| def _os_name(): return platform.system().lower() |
| def _fast_probe(host="8.8.8.8", port=53, timeout=1.5)->bool: |
| try: |
| socket.setdefaulttimeout(timeout) |
| s=socket.socket(socket.AF_INET, socket.SOCK_STREAM); s.connect((host,port)); s.close() |
| return True |
| except Exception: |
| return False |
| def _http_probe(url="https://huggingface.co", timeout=2.5)->float: |
| try: |
| t0=time.time(); r=requests.head(url, timeout=timeout) |
| if r.status_code<500: return (time.time()-t0)*1000.0 |
| except Exception: pass |
| return -1.0 |
| def _load_known()->List[dict]: |
| data=_load_json(NET_STATE_DB, []); out=[] |
| for d in data: |
| if isinstance(d,dict) and "ssid" in d: |
| out.append({"ssid":d["ssid"],"priority":int(d.get("priority",0))}) |
| out.sort(key=lambda x: x.get("priority",0), reverse=True); return out |
| def _get_saved_password(ssid:str)->Optional[str]: |
| if keyring: |
| try: return keyring.get_password("hive_wifi", ssid) or "" |
| except Exception: return None |
| return None |
| def _connect_linux(ssid, password, timeout=12)->Tuple[bool,str]: |
| try: |
| cmd=["nmcli","device","wifi","connect",ssid]+(["password",password] if password else []) |
| p=subprocess.run(cmd, capture_output=True, text=True, timeout=timeout) |
| return (p.returncode==0), (p.stdout or p.stderr or "").strip() |
| except Exception as e: return False, f"nmcli error: {e}" |
| def _connect_windows(ssid, password)->Tuple[bool,str]: |
| try: |
| p=subprocess.run(["netsh","wlan","connect","name="+ssid,"ssid="+ssid], capture_output=True, text=True) |
| if p.returncode==0 and "success" in (p.stdout+p.stderr).lower(): return True,"Connected." |
| if not password: return False,"No saved password." |
| xml=f'''<?xml version="1.0"?> |
| <WLANProfile xmlns="http://www.microsoft.com/networking/WLAN/profile/v1"> |
| <name>{ssid}</name><SSIDConfig><SSID><name>{ssid}</name></SSIDConfig> |
| <connectionType>ESS</connectionType><connectionMode>auto</connectionMode> |
| <MSM><security><authEncryption><authentication>WPA2PSK</authentication> |
| <encryption>AES</encryption><useOneX>false</useOneX></authEncryption> |
| <sharedKey><keyType>passPhrase</keyType><protected>false</protected> |
| <keyMaterial>{password}</keyMaterial></sharedKey></security></MSM></WLANProfile>''' |
| tmp=os.path.join(os.getenv("TEMP","/tmp"), f"wifi_{int(time.time())}.xml"); open(tmp,"w",encoding="utf-8").write(xml) |
| a=subprocess.run(["netsh","wlan","add","profile","filename="+tmp,"user=all"], capture_output=True, text=True) |
| if a.returncode!=0: return False, a.stderr or a.stdout or "add profile failed" |
| c=subprocess.run(["netsh","wlan","connect","name="+ssid,"ssid="+ssid], capture_output=True, text=True) |
| return (c.returncode==0), (c.stderr or c.stdout or "").strip() |
| except Exception as e: return False, f"netsh error: {e}" |
| def _connect_macos(ssid, password)->Tuple[bool,str]: |
| try: |
| out=subprocess.check_output(["networksetup","-listallhardwaresports"], stderr=subprocess.DEVNULL).decode("utf-8","ignore") |
| dev=None |
| for block in out.split("\n\n"): |
| if "Wi-Fi" in block or "AirPort" in block: |
| for l in block.splitlines(): |
| if l.strip().startswith("Device:"): dev=l.split(":",1)[1].strip(); break |
| if dev: break |
| if not dev: return False,"Wi-Fi device not found" |
| cmd=["networksetup","-setairportnetwork",dev, ssid]+([password] if password else []) |
| p=subprocess.run(cmd, capture_output=True, text=True) |
| return (p.returncode==0), (p.stderr or p.stdout or "").strip() |
| except Exception as e: return False, f"networksetup error: {e}" |
| def _connect_os(ssid,password,timeout=12)->Tuple[bool,str]: |
| osn=_os_name() |
| if osn=="linux": return _connect_linux(ssid,password,timeout) |
| if osn=="windows": return _connect_windows(ssid,password) |
| if osn=="darwin": return _connect_macos(ssid,password) |
| return False, f"Unsupported OS: {osn}" |
|
|
| class AutoConnector: |
| def __init__(self): |
| self.last_attempt=0.0; self.cooldown_s=30.0; self.per_ssid_timeout=10.0; self.total_budget_s=18.0; self.thread=None; self._lock=threading.Lock() |
| def online_quick(self)->bool: return _fast_probe(timeout=1.2) |
| def quality_ms(self)->float: return _http_probe(timeout=2.0) |
| def _run_once(self): |
| if self.online_quick(): return |
| known=_load_known(); |
| if not known: return |
| t_start=time.time() |
| for item in known: |
| if time.time()-t_start>self.total_budget_s: return |
| ssid=item["ssid"]; pw=_get_saved_password(ssid) |
| ok,_msg=_connect_os(ssid,pw,timeout=int(self.per_ssid_timeout)) |
| if ok and self.online_quick(): return |
| def kick_async(self): |
| with self._lock: |
| now=time.time() |
| if now-self.last_attempt<self.cooldown_s: return |
| self.last_attempt=now |
| if self.thread and self.thread.is_alive(): return |
| self.thread=threading.Thread(target=self.run_once, daemon=True); self.thread.start() |
|
|
| NET = AutoConnector() |
|
|
| |
| def coverage_score_from_snippets(snippets: list, scores: list) -> float: |
| if not snippets or not scores: return 0.0 |
| s = sorted(scores, reverse=True)[:3] |
| base = sum(s) / len(s) if s else 0.0 |
| bonus = min(0.15, 0.03 * len(snippets)) |
| return float(max(0.0, min(1.0, base + bonus))) |
|
|
| |
| ALLOWED_PATCH_KEYS={"prompt_head","retrieval_k","token_budget","temperature","router_rules","web_threshold"} |
| def _load_overrides(): |
| if os.path.exists(RUNTIME_OVERRIDES): |
| try: return json.load(open(RUNTIME_OVERRIDES,"r",encoding="utf-8")) |
| except Exception: return {} |
| return {} |
| def _save_overrides(ovr:dict): |
| json.dump(ovr, open(RUNTIME_OVERRIDES,"w",encoding="utf-8"), indent=2) |
|
|
| class RuntimeOverlay: |
| def __init__(self): self.ovr=_load_overrides() |
| def apply_to(self, hive: "Hive"): |
| o=self.ovr or {} |
| if isinstance(o.get("prompt_head"),str): hive.compiler.override_head=o["prompt_head"] |
| if isinstance(o.get("token_budget"),int): hive.compiler.override_budget=max(256, min(8192, o["token_budget"])) |
| hive.retrieval_k=int(o.get("retrieval_k",6)); hive.retrieval_k=max(3,min(24,hive.retrieval_k)) |
| hive.decoding_temperature=float(o.get("temperature",0.7)); hive.decoding_temperature=max(0.0,min(1.5,hive.decoding_temperature)) |
| rr=o.get("router_rules") or [] |
| if isinstance(rr,list): |
| try: hive.engine.router_rules=[re.compile(pat,re.I) for pat in rr if isinstance(pat,str) and pat] |
| except re.error: hive.engine.router_rules=[] |
| t=o.get("web_threshold",None); hive.web_threshold=float(t) if isinstance(t,(int,float)) else 0.40 |
| def patch(self, patch:dict, actor_role:str="hive")->Tuple[bool,str]: |
| if not CFG["ALLOW_RUNTIME_HOTPATCH"]: return False,"Runtime hotpatch disabled." |
| if actor_role not in ("hive","admin_general","admin_super","owner"): return False,"Unauthorized actor." |
| for k in list(patch.keys()): |
| if k not in ALLOWED_PATCH_KEYS: patch.pop(k,None) |
| if not patch: return False,"No allowed keys." |
| self.ovr.update(patch); _save_overrides(self.ovr); return True,"Patched." |
|
|
| |
| def _persist_before_reboot(): |
| try: json.dump({"ts":time.time(),"note":"self-reboot"}, open(os.path.join(CFG["STATE_DIR"],"last_reboot.json"),"w",encoding="utf-8")) |
| except Exception: pass |
| def safe_reboot(reason:str="optimization"): |
| if not CFG["ALLOW_SELF_REBOOT"]: return False,"Self-reboot disabled." |
| _persist_before_reboot() |
| try: |
| os.execv(sys.executable, [sys.executable, os.path.abspath(__file__)] + sys.argv[1:]) |
| except Exception: |
| os._exit(3) |
| return True, f"Rebooting: {reason}" |
|
|
| |
| class SelfOptimizer(threading.Thread): |
| def __init__(self, hive: "Hive"): |
| super().__init__(daemon=True); self.hive=hive; self.stop=False; self.tick=45.0 |
| self.last_pkg_check = 0 |
| self.last_code_review = 0 |
| self.code_review_interval = 3600 * 24 |
| self.pkg_check_interval = 3600 * 6 |
|
|
| def _check_for_package_updates(self): |
| """Checks for updates to packages in the allowlist and proposes changes.""" |
| if time.time() - self.last_pkg_check < self.pkg_check_interval: |
| return |
| self.last_pkg_check = time.time() |
| print("[SelfOptimizer] Checking for package updates...") |
| try: |
| |
| outdated_raw = subprocess.check_output([sys.executable, "-m", "pip", "list", "--outdated"], text=True) |
| for line in outdated_raw.splitlines()[2:]: |
| parts = line.split() |
| if len(parts) < 3: continue |
| pkg_name, current_ver, latest_ver = parts[0], parts[1], parts[2] |
| |
| if pkg_name in CFG["OPT_PKG_ALLOWLIST"]: |
| print(f"[SelfOptimizer] Found update for {pkg_name}: {current_ver} -> {latest_ver}") |
| proposal = ChangeProposal( |
| kind="package", |
| name=pkg_name, |
| version=latest_ver, |
| reason=f"Autonomous proposal to update from {current_ver} to {latest_ver}", |
| proposer="hive_optimizer" |
| ) |
| proposal_id = self.hive.changes.propose(proposal) |
| |
| test_result = self.hive.changes.test_and_compare(proposal_id, proposal) |
| print(f"[SelfOptimizer] Test result for {pkg_name} update: {test_result.get('passed')}, Delta: {test_result.get('delta')}") |
| except Exception as e: |
| print(f"[SelfOptimizer] Error checking for package updates: {e}") |
|
|
| def _propose_self_improvement(self): |
| """Asks the LLM to review a part of its own code and proposes a change if valid.""" |
| if time.time() - self.last_code_review < self.code_review_interval: |
| return |
| self.last_code_review = time.time() |
| print("[SelfOptimizer] Performing autonomous code review...") |
|
|
| try: |
| |
| with open(__file__, 'r', encoding='utf-8') as f: |
| own_code = f.read() |
|
|
| |
| target_func_name = "coverage_score_from_snippets" |
| match = re.search(rf"def {target_func_name}\(.*?^$", own_code, re.S | re.M) |
| if not match: |
| print(f"[SelfOptimizer] Could not find function {target_func_name} to review.") |
| return |
| |
| func_code = match.group(0) |
| prompt = f""" |
| Review the following Python function for correctness, efficiency, and adherence to best practices. |
| If you find an improvement, provide ONLY the complete, new, improved function code. Do not add any explanation. |
| If no improvement is needed, return the original code exactly as it is. |
| |
| Original function: |
| ```python |
| {func_code} |
| ``` |
| """ |
| |
| suggested_code = self.hive.chat(prompt, "owner", "hive_optimizer") |
|
|
| |
| if suggested_code.strip() != func_code.strip() and "def" in suggested_code: |
| new_source = own_code.replace(func_code, suggested_code) |
| proposal = ChangeProposal(kind="code", name=__file__, patch_text=new_source, reason=f"Autonomous self-improvement of {target_func_name}", proposer="hive_optimizer") |
| proposal_id = self.hive.changes.propose(proposal) |
| print(f"[SelfOptimizer] Proposing self-improvement change {proposal_id}.") |
| test_result = self.hive.changes.test_and_compare(proposal_id, proposal) |
| print(f"[SelfOptimizer] Test result for self-improvement: {test_result.get('passed')}, Delta: {test_result.get('delta')}") |
| except Exception as e: |
| print(f"[SelfOptimizer] Error during self-improvement proposal: {e}") |
|
|
| def run(self): |
| while not self.stop: |
| time.sleep(self.tick) |
| if not CFG["AUTO_SELF_OPTIMIZE"]: continue |
|
|
| |
| self._check_for_package_updates() |
| self._propose_self_improvement() |
|
|
| |
| vm=psutil.virtual_memory(); ovr={} |
| if vm.percent>88: |
| ovr["token_budget"]=max(512,int(0.75*(self.hive.compiler.override_budget or CFG["CTX_TOKENS"]))) |
| ovr["temperature"]=max(0.2,self.hive.decoding_temperature-0.1) |
|
|
| lat=(sum(self.hive.engine.stats["latency_ms"][-10:])/max(1,len(self.hive.engine.stats["latency_ms"][-10:]))) if self.hive.engine.stats["latency_ms"] else 0 |
| if lat>1200: ovr["retrieval_k"]=max(3,self.hive.retrieval_k-1) |
|
|
| if ovr: |
| ok,_=self.hive.overlay.patch(ovr, actor_role="hive") |
| if ok: self.hive.overlay.apply_to(self.hive) |
|
|
| if CFG["ALLOW_SELF_REBOOT"] and vm.percent>94: |
| safe_reboot("refresh memory") |
|
|
| |
| def _append_jsonl(path, rec): |
| with open(path, "a", encoding="utf-8") as f: |
| f.write(json.dumps(rec, ensure_ascii=False) + "\n") |
|
|
| @dataclass |
| class ChangeProposal: |
| kind: str |
| name: str |
| version: str = "" |
| patch_text: str = "" |
| reason: str = "" |
| created_ts: float = time.time() |
| proposer: str = "hive" |
| id: str = "" |
|
|
| class Sandbox: |
| def __init__(self): |
| self.root=os.path.join(OPT_DIR, f"sandbox_{int(time.time())}") |
| os.makedirs(self.root, exist_ok=True) |
| self.venv=os.path.join(self.root,"venv") |
| def _run(self, args, timeout): |
| p=subprocess.run(args, capture_output=True, text=True, timeout=timeout) |
| return p.returncode, (p.stdout or "") + (p.stderr or "") |
| def create(self): |
| rc,out=self._run([sys.executable,"-m","venv",self.venv], timeout=120) |
| if rc!=0: raise RuntimeError("venv create failed: "+out) |
| def pip(self, pkg_spec): |
| py=os.path.join(self.venv,"bin","python") if os.name!="nt" else os.path.join(self.venv,"Scripts","python.exe") |
| rc,out=self._run([py,"-m","pip","install","--upgrade",pkg_spec], timeout=CFG["OPT_SANDBOX_TIMEOUT"]) |
| if rc!=0: raise RuntimeError("pip install failed: "+out) |
| def run_snippet(self, code:str): |
| py=os.path.join(self.venv,"bin","python") if os.name!="nt" else os.path.join(self.venv,"Scripts","python.exe") |
| tmp=os.path.join(self.root,"snippet.py"); open(tmp,"w",encoding="utf-8").write(code) |
| rc,out=self._run([py,tmp], timeout=CFG["OPT_SANDBOX_TIMEOUT"]); return rc,out |
|
|
| def _synthetic_eval(hive_factory, prompts: List[str]) -> Dict: |
| lat_ms=[]; toks_s=[]; quality=0.0 |
| for p in prompts: |
| t0=time.time() |
| h=hive_factory() |
| out=h.pipe(h.compiler.compile(p, []), max_new_tokens=64, do_sample=False, temperature=0.2) |
| t1=time.time() |
| text=out[0]["generated_text"] |
| lat_ms.append((t1-t0)*1000) |
| toks=max(1,len(text.split())); toks_s.append(toks/max(0.001,(t1-t0))) |
| q=sum(1 for w in set(re.findall(r"\w+", p.lower())) if w in text.lower())/max(1,len(set(re.findall(r"\w+", p.lower())))) |
| quality+=q |
| n=max(1,len(prompts)) |
| return {"lat_ms":sum(lat_ms)/n, "toks_s":sum(toks_s)/n, "quality":quality/n} |
|
|
| class ChangeManager: |
| def __init__(self, hive_cls): |
| self.hive_cls=hive_cls |
| def _allowed_pkg(self, name): |
| return any(name.strip().startswith(allow.strip()) for allow in CFG["OPT_PKG_ALLOWLIST"]) |
| def _allowed_model(self, mid): |
| return mid in CFG["OPT_MODEL_ALLOWLIST"] |
| def propose(self, cp: ChangeProposal)->str: |
| cp.id=f"chg_{int(time.time())}_{abs(hash(cp.name))%100000}"; _append_jsonl(OPT_PROPOSALS, cp.__dict__); return cp.id |
| def test_and_compare(self, cp_id:str, proposal: ChangeProposal)->Dict: |
| def base_hive(): return self.hive_cls(model_id=None) |
| prompts=["Summarize the water cycle.","Translate to French: the quick brown fox jumps over the lazy dog.","Two-sentence difference between TCP and UDP."] |
| base=_synthetic_eval(base_hive, prompts) |
| sand=Sandbox(); sand.create() |
| model_override=None |
| try: |
| if proposal.kind=="package": |
| if not self._allowed_pkg(proposal.name): return {"ok":False,"reason":"package not allowlisted"} |
| spec=proposal.name + (("=="+proposal.version) if proposal.version else "") |
| sand.pip(spec) |
| elif proposal.kind=="model": |
| if not self._allowed_model(proposal.name): return {"ok":False,"reason":"model not allowlisted"} |
| model_override=proposal.name |
| elif proposal.kind=="code": |
| target=os.path.basename(__file__); patched=os.path.join(sand.root,target) |
| with open(patched,"w",encoding="utf-8") as f: f.write(proposal.patch_text or "") |
| code=f"import importlib.util, json; p=r'{patched}'; spec=importlib.util.spec_from_file_location('hmod',p); m=importlib.util.module_from_spec(spec); spec.loader.exec_module(m); h=m.Hive(); print(json.dumps({{'ok':True}}))" |
| rc,out=sand.run_snippet(code) |
| if rc!=0 or '"ok": true' not in out.lower(): return {"ok":False,"reason":"patch smoke test failed","out":out} |
| except Exception as e: |
| return {"ok":False,"reason":f"sandbox failed: {e}"} |
| def cand_hive(): return self.hive_cls(model_id=model_override) if model_override else self.hive_cls(model_id=None) |
| cand=_synthetic_eval(cand_hive, prompts) |
| delta={"lat_ms": base["lat_ms"]-cand["lat_ms"], "toks_s": cand["toks_s"]-base["toks_s"], "quality": cand["quality"]-base["quality"]} |
| passed=True |
| if CFG["OPT_THRESH_LATENCY_MS"]>0 and delta["lat_ms"]<CFG["OPT_THRESH_LATENCY_MS"]: passed=False |
| if CFG["OPT_THRESH_TOKS_PER_S"]>0 and delta["toks_s"]<CFG["OPT_THRESH_TOKS_PER_S"]: passed=False |
| if delta["quality"]<CFG["OPT_THRESH_QUALITY"]: passed=False |
| result={"ok":True,"proposal":proposal.__dict__,"base":base,"cand":cand,"delta":delta,"passed":passed} |
| _append_jsonl(OPT_RESULTS, result); return result |
| def apply(self, result:Dict)->Tuple[bool,str]: |
| prop=result.get("proposal",{}); kind=prop.get("kind"); name=prop.get("name","") |
| if not result.get("passed"): return False,"did not meet thresholds" |
| if kind=="package": |
| if not self._allowed_pkg(name): return False,"package not allowlisted" |
| try: |
| subprocess.check_call([sys.executable,"-m","pip","install","--upgrade", name + (("=="+prop.get("version","")) if prop.get("version") else "")]) |
| return True,"package installed" |
| except Exception as e: return False,f"pip failed: {e}" |
| if kind=="model": |
| if not self._allowed_model(name): return False,"model not allowlisted" |
| pref=os.path.join(OPT_DIR,"preferred_model.json"); json.dump({"model_id":name,"ts":time.time()}, open(pref,"w",encoding="utf-8")) |
| return True,"model preference recorded (takes effect after restart)" |
| if kind=="code": |
| if not CFG["OPT_AUTO_APPLY"]: return False,"awaiting Owner approval for code changes" |
| try: |
| target=os.path.abspath(__file__); backup=target+f".bak_{int(time.time())}"; shutil.copyfile(target,backup) |
| open(target,"w",encoding="utf-8").write(prop.get("patch_text","")); return True,"code updated (backup created); restart recommended" |
| except Exception as e: return False,f"code write failed: {e}" |
| return False,"unknown change type" |
|
|
| |
| |
| import tempfile, urllib.request, tarfile, zipfile |
| from pathlib import Path as _Path |
|
|
| def _human_ts(ts: int) -> str: |
| import datetime |
| try: |
| return datetime.datetime.utcfromtimestamp(ts).strftime("%Y-%m-%d %H:%M:%S UTC") |
| except Exception: |
| return str(ts) |
|
|
| INGEST_PROGRESS = os.path.join(CFG.get("STATE_DIR","./state"), "ingest_progress.json") |
|
|
| def _load_progress(): |
| try: |
| if os.path.exists(INGEST_PROGRESS): |
| return json.load(open(INGEST_PROGRESS, "r", encoding="utf-8")) |
| except Exception: |
| pass |
| return {"done": [], "stage": 0, "ts": 0} |
|
|
| def _save_progress(p): |
| try: |
| json.dump(p, open(INGEST_PROGRESS, "w", encoding="utf-8"), indent=2) |
| except Exception: |
| pass |
|
|
| def update_self_manifest(datasets_done: list, vectors_total: int): |
| """Rewrite the MEMORY_MANIFEST block inside this script.""" |
| if not CFG.get("HIVE_ALLOW_SELF_WRITE_MANIFEST", True): |
| return False, "self-write disabled" |
|
|
| target = CFG.get("HIVE_SELF_WRITE_FILE") or os.path.abspath(__file__) |
| try: |
| with open(target, "r", encoding="utf-8") as f: |
| src = f.read() |
| except Exception as e: |
| return False, f"read error: {e}" |
|
|
| start_tag = "# --- BEGIN MEMORY MANIFEST (auto-updated) ---" |
| end_tag = "# --- END MEMORY MANIFEST ---" |
| if start_tag not in src or end_tag not in src: |
| return False, "manifest markers not found" |
|
|
| head, rest = src.split(start_tag, 1) |
| _, tail = rest.split(end_tag, 1) |
|
|
| payload = { |
| "updated_ts": int(time.time()), |
| "datasets_done": sorted(list({*datasets_done})), |
| "vectors_total": int(vectors_total), |
| "notes": "Set HIVE_ALLOW_SELF_WRITE_MANIFEST=0 to stop auto-updates." |
| } |
|
|
| block = start_tag + "\n# (This block is auto-written by Hive to record what datasets/files\n# have already been converted into memory (curves). Do not edit by hand.)\n" |
| block += "MEMORY_MANIFEST = " + json.dumps(payload, indent=4, ensure_ascii=False) + "\n" |
| block += end_tag |
|
|
| new_src = head + block + tail |
| tmp = target + ".tmp" |
| try: |
| with open(tmp, "w", encoding="utf-8") as f: |
| f.write(new_src) |
| os.replace(tmp, target) |
| except Exception as e: |
| return False, f"write error: {e}" |
|
|
| return True, f"manifest updated ({_human_ts(payload['updated_ts'])})" |
|
|
| def _curves_present(curve_dir: str) -> bool: |
| idx = os.path.join(curve_dir, "faiss.index") |
| meta = os.path.join(curve_dir, "meta.jsonl") |
| return os.path.exists(idx) and os.path.getsize(idx) > 0 and os.path.exists(meta) |
|
|
| def _extract_archive(archive_path: str, dest_dir: str) -> bool: |
| os.makedirs(dest_dir, exist_ok=True) |
| try: |
| if archive_path.endswith(".tar.gz") or archive_path.endswith(".tgz"): |
| with tarfile.open(archive_path, "r:gz") as tf: |
| tf.extractall(dest_dir) |
| return True |
| if archive_path.endswith(".zip"): |
| with zipfile.ZipFile(archive_path, "r") as z: |
| z.extractall(dest_dir) |
| return True |
| except Exception as e: |
| with open(os.path.join(CFG["STATE_DIR"], "restore_error.log"), "a", encoding="utf-8") as f: f.write(f"extract: {e}\n") |
| return False |
|
|
| def _restore_from_local_archive(curve_dir: str): |
| arc = CFG.get("CURVES_ARCHIVE_LOCAL") or "curves.tar.gz" |
| if not arc or not os.path.exists(arc): |
| return False, "no local archive" |
| ok = _extract_archive(arc, curve_dir) |
| return (ok, "restored from local archive" if ok else "local extract failed") |
|
|
| def _restore_from_url(curve_dir: str): |
| url = (CFG.get("CURVES_ARCHIVE_URL") or "").strip() |
| if not url: |
| return False, "no URL provided" |
| try: |
| tmp = os.path.join(tempfile.gettempdir(), f"curves_{int(time.time())}.pkg") |
| urllib.request.urlretrieve(url, tmp) |
| ok = _extract_archive(tmp, curve_dir) |
| try: os.remove(tmp) |
| except: pass |
| return (ok, "restored from URL" if ok else "URL extract failed") |
| except Exception as e: |
| open(os.path.join(CFG.get("STATE_DIR","./state"), "restore_error.log"), "a", encoding="utf-8").write(f"url: {e}\n") |
| return False, "URL download error" |
|
|
| def _restore_from_hf_dataset(curve_dir: str): |
| repo_id = (CFG.get("CURVES_HF_DATASET") or "").strip() |
| sub = (CFG.get("CURVES_HF_SUBPATH") or "").strip() |
| if not repo_id: |
| return False, "no dataset repo" |
| try: |
| from huggingface_hub import snapshot_download, hf_hub_download |
| cache = os.path.join("/tmp", "hf_curves_cache") |
| token = CFG.get("HF_READ_TOKEN") or None |
| for fname in ["curves.tar.gz", "curves.zip"]: |
| try: |
| fp = hf_hub_download(repo_id=repo_id, filename=(sub + "/" + fname) if sub else fname, token=token, local_dir=cache, local_dir_use_symlinks=False) |
| if _extract_archive(fp, curve_dir): |
| return True, f"restored from HF dataset file {fname}" |
| except Exception: |
| pass |
|
|
| local_dir = snapshot_download(repo_id=repo_id, token=token, local_dir=cache, local_dir_use_symlinks=False) |
| |
| if CFG.get("HIVE_AUTO_ARCHIVE", True) and str(CFG.get("HIVE_AUTO_ARCHIVE_MODE","per_chain")).lower() == "per_dataset": |
| try: |
| _ok_arc, _ap = _archive_memory(curve_dir) |
| open(os.path.join(CFG["STATE_DIR"], "archive_status.log"), "a", encoding="utf-8").write( |
| json.dumps({"ts": time.time(), "mode": "per_dataset", "ok": _ok_arc, "path": _ap}) + "\n" |
| ) |
| except Exception as _e_arc: |
| open(os.path.join(CFG["STATE_DIR"], "archive_error.log"), "a", encoding="utf-8").write( |
| "per_dataset: " + str(_e_arc) + "\n" |
| ) |
| src = os.path.join(local_dir, sub) if sub else local_dir |
| if os.path.isdir(src): |
| for root, dirs, files in os.walk(src): |
| rel = os.path.relpath(root, src) |
| dest_root = os.path.join(curve_dir, rel) if rel != "." else curve_dir |
| os.makedirs(dest_root, exist_ok=True) |
| for fn in files: |
| shutil.copy2(os.path.join(root, fn), os.path.join(dest_root, fn)) |
| return True, "restored from HF dataset snapshot" |
| return False, "HF snapshot missing subpath" |
| except Exception as e: |
| open(os.path.join(CFG.get("STATE_DIR","./state"), "restore_error.log"), "a", encoding="utf-8").write(f"hf: {e}\n") |
| return False, "HF restore error" |
|
|
| def restore_curves_if_missing(curve_dir: str): |
|
|
| if not CFG.get("HIVE_CURVES_AUTO_RESTORE", True): |
| return False, "auto-restore disabled" |
| if _curves_present(curve_dir): |
| return True, "memory present" |
| ok, msg = _restore_from_local_archive(curve_dir) |
| if ok and _curves_present(curve_dir): |
| return True, msg |
| ok, msg = _restore_from_url(curve_dir) |
| if ok and _curves_present(curve_dir): |
| return True, msg |
| ok, msg = _restore_from_hf_dataset(curve_dir) |
| if ok and _curves_present(curve_dir): |
| return True, msg |
| return False, "no restore source succeeded" |
| def _archive_memory(curve_dir: str, archive_path: str=None) -> tuple: |
| """Tar+gzip the memory directory to archive_path (default curves.tar.gz).""" |
| try: |
| import tarfile, tempfile as _tf |
| ap = archive_path or CFG.get("HIVE_ARCHIVE_PATH","curves.tar.gz") or "curves.tar.gz" |
| |
| tmp = os.path.join(_tf.gettempdir(), f"curves_{int(time.time())}.tar.gz") |
| with tarfile.open(tmp, "w:gz") as tar: |
| tar.add(curve_dir, arcname="curves") |
| os.replace(tmp, ap) |
| return True, ap |
| except Exception as e: |
| try: |
| open(os.path.join(CFG["STATE_DIR"], "archive_error.log"), "a", encoding="utf-8").write(str(e)+"\n") |
| except Exception: |
| pass |
| return False, str(e) |
|
|
|
|
| if not CFG.get("CURVES_AUTO_RESTORE", True): |
| return False, "auto-restore disabled" |
| if _curves_present(curve_dir): |
| return True, "curves already present" |
| ok, msg = _restore_from_local_archive(curve_dir) |
| if ok and _curves_present(curve_dir): return True, msg |
| ok, msg = _restore_from_url(curve_dir) |
| if ok and _curves_present(curve_dir): return True, msg |
| ok, msg = _restore_from_hf_dataset(curve_dir) |
| if ok and _curves_present(curve_dir): return True, msg |
| return False, "no restore source succeeded" |
| |
|
|
|
|
| |
| def _plan_sources(): |
| srcs = [s.strip() for s in (CFG.get("INGEST_SOURCES") or "").split(",") if s.strip()] |
| return srcs or (DEFAULT_SOURCES if "DEFAULT_SOURCES" in globals() else []) |
|
|
| def _next_batch(done: list, all_sources: list, k: int): |
| todo = [s for s in all_sources if s not in set(done)] |
| return todo[:max(k,0)] |
|
|
| def staged_ingest_once(curve_dir: str) -> dict: |
| """Ingest a single stage (up to HIVE_INGEST_STAGE_SIZE datasets), respecting disk floor. Updates progress + manifest.""" |
| try: |
| import shutil, time as _t |
| floor = int(CFG.get("HIVE_INGEST_MIN_FREE_GB", 8)) |
| free_gb = shutil.disk_usage(".").free / (1024**3) |
| if free_gb < floor: |
| return {"ok": False, "reason": f"free disk {free_gb:.1f} GB < floor {floor} GB"} |
| all_sources = _plan_sources() |
| prog = _load_progress() |
| batch = _next_batch(prog.get("done", []), all_sources, int(CFG.get("HIVE_INGEST_STAGE_SIZE",3))) |
| if not batch: |
| return {"ok": True, "reason": "all sources already ingested", "done": prog.get("done", [])} |
| total_added = 0 |
| actually_ingested = [] |
| for ds in batch: |
| added = ingest_all(curve_dir, [ds], scope="general") |
| total_added += added |
| actually_ingested.append(ds) |
| prog["done"].append(ds) |
| |
| free_gb = shutil.disk_usage(".").free / (1024**3) |
| if free_gb < floor: |
| break |
| prog["stage"] = int(prog.get("stage", 0)) + 1 |
| prog["ts"] = int(_t.time()) |
| _save_progress(prog) |
| |
| try: |
| vecs = 0 |
| try: |
| vecs = CurveStore(curve_dir).index.ntotal |
| except Exception: |
| pass |
| update_self_manifest(prog.get("done", []), int(vecs)) |
| except Exception: |
| pass |
| return {"ok": True, "ingested": actually_ingested, "added_vectors_est": total_added, "stage": prog["stage"]} |
| except Exception as _e: |
| try: |
| open(os.path.join(CFG.get("STATE_DIR","./state"), "ingest_error.log"), "a", encoding="utf-8").write(str(_e)+"\n") |
| except Exception: |
| pass |
| return {"ok": False, "error": str(_e)} |
|
|
| def staged_ingest_chain_if_enabled(curve_dir: str) -> dict: |
| """Run 0..N stages this boot depending on HIVE_INGEST_CHAIN and HIVE_INGEST_CHAIN_MAX, with safety checks.""" |
| if not CFG.get("HIVE_INGEST_STAGED", True): |
| return {"ok": True, "reason": "staged disabled"} |
| results = [] |
| max_stages = max(0, int(CFG.get("HIVE_INGEST_CHAIN_MAX", 2))) if CFG.get("HIVE_INGEST_CHAIN", True) else (1 if CFG.get("HIVE_INGEST_NEXT") else 0) |
| for i in range(max_stages): |
| r = staged_ingest_once(curve_dir) |
| results.append(r) |
| if not r.get("ok", False): |
| break |
| if r.get("reason") == "all sources already ingested": |
| break |
| |
| if not r.get("ingested"): |
| break |
| |
| if CFG.get("HIVE_AUTO_ARCHIVE", True) and str(CFG.get("HIVE_AUTO_ARCHIVE_MODE","per_chain")).lower() in ("per_chain","perdataset","per-dataset"): |
| try: |
| _ok_arc, _ap = _archive_memory(curve_dir) |
| open(os.path.join(CFG["STATE_DIR"], "archive_status.log"), "a", encoding="utf-8").write(json.dumps({"ts":time.time(),"mode":"per_chain","ok":_ok_arc,"path":_ap})+"\n") |
| except Exception as _e_arc: |
| open(os.path.join(CFG["STATE_DIR"], "archive_error.log"), "a", encoding="utf-8").write("per_chain: "+str(_e_arc)+"\n") |
|
|
| return {"ok": True, "chain_results": results} |
| |
|
|
| |
| class PromptCompiler: |
| def __init__(self): |
| self.override_head=None |
| self.override_budget=None |
| self.personas = { |
| "default": "You are a helpful assistant. Use the provided facts to answer the user's question concisely.", |
| "en": "You are an encouraging and patient English tutor. Use the facts to explain the topic clearly and simply.", |
| "essay_review": "You are a writing critic. Provide a detailed review of the following essay, focusing on structure, clarity, and vocabulary. Use the provided facts for context if needed.", |
| "pronounce": "You are a pronunciation coach. Explain how to say the word, using the provided phonetic hints.", |
| } |
|
|
| def compile(self, final_instruction: str, snippets: List[Dict], token_budget: int = 600, intent: str = "default", user_lang: str = "en") -> str: |
| if self.override_budget: token_budget = self.override_budget |
| |
| |
| query_words = set(re.findall(r"\w+", final_instruction.lower())) |
| def rank_score(snippet): |
| text = (snippet.get("text", "") or "").lower() |
| return len(query_words.intersection(re.findall(r"\w+", text))) |
| |
| ranked = sorted(snippets, key=rank_score, reverse=True) |
| |
| |
| |
| insight = "" |
| if ranked: |
| top_snippet_text = (ranked[0].get("text", "") or "").strip() |
| |
| insight_summary = ' '.join(top_snippet_text.split()[:25]) + ('...' if len(top_snippet_text.split()) > 25 else '') |
| insight = f"Based on my knowledge, I know that: \"{insight_summary}\". Use this key insight to inform your answer." |
|
|
| |
| head = self.override_head or self.personas.get(intent, self.personas.get(user_lang, self.personas["default"])) |
| |
| return f"{head} {insight}\n\nUser: {final_instruction}\nAssistant:" |
|
|
| class Hive: |
| def __init__(self, model_id: Optional[str]=None, device: Optional[str]=None, caps: Optional[Dict]=None, lite: bool = False): |
| self.caps = caps or probe_caps() |
| self.lite_mode = lite |
|
|
| if not self.lite_mode: |
| self.store=CurveStore(CFG["CURVE_DIR"]); self.librarian=LibrarianCurve(self.store) |
| self.engine=EngineCurve() |
| self.overlay=RuntimeOverlay() |
| self.changes=ChangeManager(Hive) |
| self.compiler=PromptCompiler() |
| if not model_id: |
| model_id, info = pick_model(self.caps) |
| device = info.get("device","cpu") |
| self.model_id=model_id or CFG["MODEL_OVERRIDE"] or CANDIDATES[0][0] |
| trust=True; kwargs={} |
| if torch and torch.cuda.is_available() and device=="cuda": |
| kwargs.update(dict(torch_dtype=torch.float16)) |
| |
| use_remote = CFG["HIVE_USE_HF_INFERENCE"] |
| if use_remote: |
| from huggingface_hub import InferenceClient |
| endpoint = CFG["HIVE_HF_ENDPOINT"] or None |
| token = CFG["HF_READ_TOKEN"] or os.getenv("HF_TOKEN") or os.getenv("HUGGING_FACE_HUB_TOKEN") or None |
| self.client = InferenceClient(model=self.model_id if endpoint is None else None, token=token, timeout=60, base_url=endpoint) |
| def _remote_pipe(prompt, max_new_tokens=256, do_sample=True, temperature=0.7, **kw): |
| stop = kw.get("stop_sequences") or ["</s>", "Assistant:"] |
| resp = self.client.text_generation(prompt, max_new_tokens=int(max_new_tokens), temperature=float(temperature), do_sample=bool(do_sample), stop_sequences=stop, stream=False) |
| return [{"generated_text": resp}] |
| self.pipe = _remote_pipe |
| else: |
| self.tok = AutoTokenizer.from_pretrained(self.model_id, trust_remote_code=trust) |
| self.model = AutoModelForCausalLM.from_pretrained(self.model_id, trust_remote_code=trust, **kwargs) |
| self.pipe = pipeline("text-generation", model=self.model, tokenizer=self.tok, device=0 if (torch and torch.cuda.is_available() and device=="cuda") else -1, return_full_text=False) |
| |
| if not self.lite_mode: |
| self.retrieval_k=6; self.decoding_temperature=0.7; self.web_threshold=0.40 |
| self.overlay.apply_to(self) |
| self.selfopt=SelfOptimizer(self); self.selfopt.start() |
|
|
| def summarize_for_memory(self, text:str, max_new_tokens:int=160)->str: |
| prompt=("Condense the following content into 4–6 bullet points with names, dates, numbers, and a one-line takeaway. Keep it factual.\n\n" |
| f"{text[:3000]}\n\nSummary:") |
| out=self.pipe(prompt, max_new_tokens=max_new_tokens, do_sample=False, temperature=0.01) |
| return out[0]["generated_text"].split("Summary:",1)[-1].strip() |
|
|
| def add_curve(self, text:str, meta:Dict, scope:str="general"): |
| if self.lite_mode: return |
| self.librarian.ingest_pairs([text],[meta],scope) |
|
|
| def online_update(self, query_hint: Optional[str]=None)->Dict: |
| if self.lite_mode: return {"ok": False, "reason": "lite mode"} |
| if not CFG["ONLINE_ENABLE"]: return {"ok":False,"reason":"online disabled"} |
| if not online_available(int(CFG["ONLINE_TIMEOUT"])): return {"ok":False,"reason":"offline"} |
| seen=_load_json(ONLINE_DB, {}) |
| urls=[u.strip() for u in (CFG["ONLINE_SOURCES"] or "").split(",") if u.strip()] |
| items=fetch_rss(urls, timeout=int(CFG["ONLINE_TIMEOUT"]), limit=30) |
| added=0 |
| for it in items: |
| key=hashlib.sha1(((it.get("link") or "")+(it.get("title") or "")).encode("utf-8","ignore")).hexdigest() |
| if key in seen: continue |
| base=(it.get("title","")+"\n\n"+it.get("summary","")).strip() |
| summ=self.summarize_for_memory(base) |
| self.add_curve(summ, {"dataset":"online_rss","url":it.get("link"),"title":it.get("title"),"published":it.get("published")}, scope="general") |
| seen[key]=int(time.time()); added+=1 |
| _save_json(ONLINE_DB, seen); return {"ok":True,"added":added} |
|
|
| def web_update_and_store(self, query:str, max_docs:int, timeout:int)->int: |
| if self.lite_mode: return 0 |
| if not (CFG["ONLINE_ENABLE"] and online_available(timeout)): return 0 |
| hits=web_search_snippets(query, max_results=max_docs, timeout=timeout); added=0 |
| for h in hits: |
| body=(h.get("title","")+"\n\n"+(h.get("body","") or "")).strip() |
| if not body: continue |
| summ=self.summarize_for_memory(body) |
| meta={"dataset":"web_update","source":h.get("href",""),"title":h.get("title",""),"ts":time.time()} |
| self.add_curve(summ, meta, scope="general"); added+=1 |
| return added |
|
|
| def chat(self, message:str, effective_role:str, caller_id: Optional[str], |
| k:int=None, max_new_tokens:int=256, temperature:float=None, prompt_override: Optional[str] = None) -> str: |
| if self.lite_mode: |
| |
| prompt = f"User: {message}\nAssistant:" |
| temp = temperature if temperature is not None else 0.7 |
| out = self.pipe(prompt, max_new_tokens=max_new_tokens, do_sample=True, temperature=temp) |
| return out[0]["generated_text"].strip() |
|
|
| online_now=NET.online_quick() |
| if not online_now: NET.kick_async() |
| kk = k if k is not None else self.retrieval_k |
| temp = temperature if temperature is not None else self.decoding_temperature |
|
|
| user_obj, _ = _find_user(_load_users(), caller_id) |
| user_prefs = (user_obj.get("prefs", {}) or {}) if user_obj else {} |
| user_lang = user_prefs.get("language", "en") |
| phonics_on = user_prefs.get("phonics_on", False) |
|
|
| intent = self.engine.choose_route(message) |
| final_message = message |
|
|
| if intent == "pronounce" or (phonics_on and user_lang == 'en'): |
| match = re.search(r"(pronounce|say|spell|spelling of)\s+['\"]?([a-zA-Z\-']+)['\"]?", message, re.I) |
| word_to_process = match.group(2) if match else (message.split()[-1] if len(message.split()) < 4 else None) |
| if word_to_process: |
| phonics_hint = phonics(word_to_process) |
| final_message = f"Explain how to pronounce the word '{word_to_process}'. Use this phonics hint in your explanation: {phonics_hint}" |
| elif prompt_override: |
| final_message = f"{prompt_override}\n\nHere is the text to work on:\n{message}" |
| if "review" in prompt_override.lower() or "essay" in prompt_override.lower(): intent = "essay_review" |
|
|
| snippets, scores = self.librarian.retrieve_scoped_with_scores(message, effective_role, caller_id, k=kk) |
| cov=coverage_score_from_snippets(snippets, scores) |
| SHOULD_TRY_WEB=(CFG["ONLINE_TRIGGER"].lower()=="auto") and CFG["ONLINE_ENABLE"] and online_now |
| if cov < self.web_threshold and SHOULD_TRY_WEB: |
| try: |
| self.web_update_and_store(message, max_docs=int(CFG["ONLINE_MAX_RESULTS"] or 5), timeout=int(CFG["ONLINE_TIMEOUT"] or 8)) |
| snippets, scores = self.librarian.retrieve_scoped_with_scores(message, effective_role, caller_id, k=kk) |
| except Exception: |
| pass |
| prompt=self.compiler.compile(final_message, snippets, token_budget=int(CFG["CTX_TOKENS"]), intent=intent, user_lang=user_lang) |
| _=self.engine.run(message, snippets) |
| out=self.pipe(prompt, max_new_tokens=max_new_tokens, do_sample=True, temperature=temp) |
| reply=out[0]["generated_text"].strip() |
| if CFG["NO_PROFANITY"]: |
| reply=re.sub(r"\b(fuck|shit|bitch|asshole|cunt|dick|pussy|nigger|motherfucker)\b","[censored]",reply, flags=re.I) |
| |
| if caller_id: |
| log_path = os.path.join(CFG["HIVE_HOME"], "users", "conversations", f"{caller_id}.jsonl") |
| log_entry = { |
| "ts": time.time(), "message": message, "effective_role": effective_role, |
| "intent": intent, "snippets_used": [s.get("text", "")[:100] for s in snippets[:3]], |
| "reply": reply |
| } |
| _append_jsonl(log_path, log_entry) |
| return reply |
|
|
| |
| HELP=f""" |
| **Admin/User mode**: Admins (general/super) and Owner log in with password (Owner also needs second factor). After login choose Admin or User mode. |
| **Owner-only code edits** are enforced via Change Manager policy. Hive can sandbox, test, and propose; code writes require Owner approval (`OPT_AUTO_APPLY=1`) unless Owner applies manually. |
| |
| **Offline/Online**: Works fully offline from curves. If online and enabled, fetches RSS/web snippets ➡️ summarizes locally ➡️ saves to curves (persists offline). |
| **Voice**: Faster-Whisper ASR (auto language), Piper TTS mixed-language, phonics hints (English). |
| **Privacy**: Sensitive/first-person inputs route to user-private library; neutral info to general. |
| """ |
|
|
| def launch_ui(bootstrap_instance: "Bootstrap"): |
| |
| HIVE_INSTANCE: Optional[Hive] = None |
| def get_hive_instance(): |
| """ |
| Returns the appropriate Hive instance. |
| If the full instance is ready, returns it. |
| Otherwise, returns the 'lite' instance for immediate chat. |
| """ |
| nonlocal HIVE_INSTANCE |
| |
| if bootstrap_instance.hive_ready.is_set(): |
| if HIVE_INSTANCE is None or HIVE_INSTANCE == bootstrap_instance.hive_lite_instance: |
| HIVE_INSTANCE = bootstrap_instance.hive_instance |
| print("[UI] Full Hive instance attached.") |
| elif HIVE_INSTANCE is None: |
| HIVE_INSTANCE = bootstrap_instance.hive_lite_instance |
| print("[UI] Lite Hive instance attached.") |
| return HIVE_INSTANCE |
|
|
| with gr.Blocks(title="Hive 🐝 Full Merged Optimized") as demo: |
| gr.Markdown(f"## {CFG['AGENT_NAME']} 🐝 Full Merged, Offline-first + Online updates + Internal Optimization") |
|
|
| with gr.Row(): |
| login_name=gr.Textbox(label="Name or ID") |
| login_pass=gr.Textbox(label="Password (admins only)", type="password") |
| login_second=gr.Textbox(label="Second (owner only)", type="password") |
| login_btn=gr.Button("Login") |
| login_status=gr.Markdown() |
| uid_state=gr.State(None); role_state=gr.State("guest"); mode_state=gr.State("user"); phonics_state=gr.State(False) |
|
|
| def do_login(nm,pw,sec): |
| ok, info=attempt_login(nm or "", pw or "", sec or None) |
| d=_load_users(); u,_=_find_user(d, nm or "") |
| role=u["role"] if u else "guest" |
| prof=_load_json(ADAPT_DB,{}).get(u["id"] if u else "guest",{}); phon_on=bool(prof.get("phonics_on",False)) |
| return info,(u["id"] if u else None),role,"user",phon_on |
| login_btn.click(do_login,[login_name,login_pass,login_second],[login_status, uid_state, role_state, mode_state, phonics_state]) |
|
|
| mode_picker=gr.Radio(choices=["user","admin"], value="user", label="Mode (admins/owner only)") |
| def set_mode(role, pick): |
| if role not in ("admin_general","admin_super","owner"): return "user" |
| return pick |
| mode_picker.change(set_mode, [role_state, mode_picker], [mode_state]) |
|
|
| with gr.Tab("Hive"): |
| core_status = gr.Markdown("⏳ **Initializing Full Hive Core...** You can chat with the Lite model now. Advanced features will be enabled shortly.") |
| chat=gr.Chatbot(height=420) |
| msg=gr.Textbox(placeholder=f"Talk to {CFG['AGENT_NAME']} (Lite Mode)", interactive=True) |
|
|
| def talk(m, uid, role, mode, hist): |
| hive_instance = get_hive_instance() |
| eff = role if mode=="admin" else "user" |
|
|
| |
| prompt_override = None |
| max_tokens = 512 |
| text_lower = (m or "").lower() |
| if len((m or "").split()) > 100 and ("review" in text_lower or "feedback" in text_lower or "essay" in text_lower): |
| prompt_override = "Please provide a detailed review of the following essay, focusing on structure, clarity, and vocabulary. Offer specific suggestions for improvement." |
| max_tokens = 1024 |
| elif "proofread" in text_lower or "grammar" in text_lower or "correct this" in text_lower: |
| prompt_override = "Please proofread and correct the following text, providing clear explanations for each change to help me learn." |
| max_tokens = 1024 |
| |
| reply=hive_instance.chat(m or "", effective_role=eff, caller_id=uid, prompt_override=prompt_override, max_new_tokens=max_tokens) |
|
|
| |
| if not hive_instance.lite_mode: |
| personal = False |
| if re.search(r"\b(my|mine|me|I|our|we)\b", (m or ""), re.I) and re.search(r"\b(password|address|email|phone|ssn|school|kid|medical|bank|card|passport)\b", (m or ""), re.I): |
| personal = True |
| scope = f"user:{uid}" if (uid and personal) else "general" |
| if hive_instance.librarian: hive_instance.librarian.ingest_pairs([m or ""],[{"dataset":"chat"}], scope=scope) |
| return hist+[[m, reply]], "" |
| msg.submit(talk,[msg,uid_state,role_state,mode_state,chat],[chat,msg]) |
|
|
| with gr.Accordion("Tools & Settings", open=False): |
| |
| def wait_for_hive_core(): |
| |
| bootstrap_instance.hive_ready.wait() |
| |
| get_hive_instance() |
| ready_placeholder = f"Talk to {CFG['AGENT_NAME']}" |
| |
| return "✅ **Full Hive Core is Ready.**", gr.Textbox(placeholder=ready_placeholder) |
| demo.load(wait_for_hive_core, [], [core_status, msg]) |
|
|
| with gr.Row(): |
| with gr.Column(): |
| gr.Markdown("### Your Profile Settings") |
| profile_status = gr.Markdown("Login to see your profile.") |
| profile_lang = gr.Dropdown(choices=["en","es","fr","de","zh"], label="Preferred Language") |
| profile_phonics = gr.Checkbox(label="Enable Phonics Assist (for English)") |
| profile_save_btn = gr.Button("Save Profile") |
|
|
| def load_profile(uid): |
| if not uid: return "Login to see your profile.", "en", False |
| d = _load_users(); u, _ = _find_user(d, uid) |
| if not u: return "User not found.", "en", False |
| prefs = u.get("prefs", {}) or {} |
| lang = prefs.get("language", "en") |
| phonics_on = prefs.get("phonics_on", False) |
| return f"Logged in as **{u.get('name')}** ({u.get('role')})", lang, phonics_on |
| demo.load(load_profile, [uid_state], [profile_status, profile_lang, profile_phonics]) |
|
|
| def save_profile(uid, lang, phonics_on): |
| if not uid: return "Login to save your profile." |
| d = _load_users(); u, _ = _find_user(d, uid) |
| if not u: return "User not found. Cannot save." |
| if "prefs" not in u or not isinstance(u["prefs"], dict): u["prefs"] = {} |
| u["prefs"].update({"language": lang, "phonics_on": phonics_on}); _save_json(USERS_DB, d) |
| return "Profile saved successfully!" |
| profile_save_btn.click(save_profile, [uid_state, profile_lang, profile_phonics], [profile_status]) |
|
|
| with gr.Column(): |
| gr.Markdown("### Voice Tools") |
| mic=gr.Audio(sources=["microphone"], type="filepath", label="Speak (5–10s)") |
| with gr.Row(): |
| transcribe_btn=gr.Button("Transcribe") |
| reply_btn=gr.Button("Reply + Speak") |
| transcript=gr.Textbox(label="Transcript") |
| reply_text=gr.Textbox(label="Assistant Reply") |
| reply_audio=gr.Audio(type="filepath", label="Assistant Voice") |
|
|
| def do_transcribe(path, uid): |
| if not path: return "" |
| text=asr_transcribe(path, uid, None) |
| return text |
| transcribe_btn.click(do_transcribe,[mic,uid_state],[transcript]) |
|
|
| def do_reply(uid, role, mode, text, hist) -> tuple: |
| if not text: return "", None, hist |
| hive_instance = get_hive_instance() |
| eff = role if mode=="admin" else "user"; print(eff) |
| full_reply = hive_instance.chat(text, effective_role=eff, caller_id=uid) |
| wav=synthesize_multilang(full_reply, CFG["TTS_LANG"]); return full_reply, wav, hist + [[text, full_reply]] |
| reply_btn.click(do_reply,[uid_state, role_state, mode_state, transcript, chat],[reply_text, reply_audio, chat]) |
|
|
| with gr.Row(): |
| with gr.Column(): |
| gr.Markdown("### Voice Enrollment") |
| enroll_audio=gr.Audio(sources=["microphone"], type="filepath", label="Record 5–10s for voiceprint") |
| enroll_btn=gr.Button("Enroll voice for current user"); enroll_status=gr.Markdown() |
| def do_enroll(uid, path): |
| if not uid: return "Login or specify user first." |
| if not path: return "No audio." |
| enroll_voice(uid, path); return "Voice enrolled." |
| enroll_btn.click(do_enroll,[uid_state, enroll_audio],[enroll_status]) |
|
|
| who_btn=gr.Button("Login by Voice (users only)") |
| who_status=gr.Markdown() |
| def do_login_voice(path): |
| if not path: return "No audio.", None, "guest", "user" |
| uidv=identify_voice(path) |
| if not uidv: return "Voice not recognized. You can enroll as a new user.", None, "guest", "user" |
| d=_load_users() |
| for grp in ["users","admins_general","admins_super"]: |
| for u in d.get(grp,[]): |
| if u["id"]==uidv: |
| if u["role"] in ("admin_general","admin_super"): |
| return "Admin roles require password login.", None, "guest", "user" |
| return f"Welcome back, {u['name']} (user).", uidv, "user", "user" |
| if d["owner"]["id"]==uidv: return "Owner must login with password + second factor.", None, "guest", "user" |
| return "Matched unknown id; please login manually.", None, "guest", "user" |
| who_btn.click(do_login_voice,[mic],[who_status, uid_state, role_state, mode_state]) |
|
|
| with gr.Column(): |
| gr.Markdown("### Online & Wi-Fi") |
| wifi_status=gr.Markdown("Wi-Fi: checking...") |
| connect_now=gr.Button("Try auto-connect now (non-blocking)") |
| online_now=gr.Button("Fetch updates now"); online_status=gr.Markdown() |
| connect_now.click(lambda: (NET.kick_async() or "Auto-connect started in background."), [], [wifi_status]) |
| online_now.click(lambda: ("Added %s new summaries to curves." % (get_hive_instance().online_update().get("added",0))), [], [online_status]) |
|
|
| with gr.Tab("Help"): gr.Markdown(HELP) |
|
|
| |
| with gr.Accordion("Admin Controls (switch to Admin mode to enable)", open=False, visible=True) as admin_controls: |
| admin_info=gr.Markdown("Switch to **Admin mode** above to use these tools.") |
| target=gr.Textbox(label="Target name or id") |
| new_name=gr.Textbox(label="New name") |
| |
| with gr.Row(): |
| ingest_status = gr.Markdown("Memory Ingestion: Idle") |
| ingest_now_btn = gr.Button("Start Background Ingestion") |
|
|
| with gr.Row(): |
| mem_compress_btn=gr.Button("Compress Memory (archive)") |
| compress_status=gr.Markdown("") |
|
|
| def compress_memory(h): |
| ok,msg= _archive_memory(str(h.store.dir)) |
| return msg |
| mem_compress_btn.click(lambda: compress_memory(get_hive_instance()), [], [compress_status]) |
|
|
| with gr.Row(): |
| hotpatch_patch=gr.Code(label="Paste hotpatch JSON (advanced)") |
| hotpatch_status=gr.Markdown("Awaiting patch") |
| hotpatch_apply=gr.Button("Apply Hotpatch") |
| def do_hotpatch(patch_json): |
| try: patch=json.loads(patch_json) |
| except Exception: return "Bad JSON." |
| ok,msg=get_hive_instance().overlay.patch(patch,get_hive_instance()) |
| return msg |
| def run_ingest_background(hive_instance): |
| def ingest_task(): |
| staged_ingest_chain_if_enabled(str(hive_instance.config["CURVE_DIR"])) |
| threading.Thread(target=ingest_task, daemon=True).start() |
| return "Background ingestion process started. See logs for details." |
| ingest_now_btn.click(lambda: run_ingest_background(get_hive_instance()), [], [ingest_status]) |
|
|
| new_pass=gr.Textbox(label="New password") |
| new_role=gr.Dropdown(choices=["owner","admin_super","admin_general","user"], value="user", label="New role") |
| add_name=gr.Textbox(label="Add: name") |
| add_role=gr.Dropdown(choices=["admin_super","admin_general","user"], value="user", label="Add role") |
| add_pass=gr.Textbox(label="Add password (admins only)") |
| add_btn=gr.Button("Add user/admin") |
| rename_btn=gr.Button("Rename") |
| pass_btn=gr.Button("Change password") |
| role_btn=gr.Button("Change role") |
| out=gr.Markdown() |
|
|
| def is_admin(mode, role): return (mode=="admin") and (role in ("admin_general","admin_super","owner")) |
|
|
| def do_add(mode, role, caller, nm, rl, pw): |
| if not is_admin(mode, role): return "Switch to Admin mode to use this." |
| d=_load_users(); cu,_=_find_user(d, caller or "") |
| if not cu: return "Login first as admin." |
| if rl not in PERMS.get(cu["role"],{}).get("can_add",[]): return f"{cu['role']} cannot add {rl}." |
| uid=f"{rl}:{int(time.time())}" |
| entry={"id":uid,"name":nm,"role":rl,"pass":pw if rl!='user' else "", "prefs":{"activation_names":[CFG["AGENT_NAME"]],"language":"en"}} |
| if rl=="owner": |
| d["owner"]=entry |
| |
|
|
| elif rl=="admin_super": d["admins_super"].append(entry) |
| elif rl=="admin_general": d["admins_general"].append(entry) |
| else: d["users"].append(entry) |
| _save_json(USERS_DB,d); return f"Added {rl}: {nm}" |
|
|
| def do_automatic_profile_creation(mic_audio_filepath): |
| if not mic_audio_filepath: |
| return "Please record a voice sample" |
|
|
| d = _load_users() |
| rl = "user" |
| uid = f"{rl}:{int(time.time())}" |
| nm = f"User{int(time.time())}" |
| entry = {"id": uid, "name": nm, "role": rl, "pass": "", |
| "prefs": {"activation_names": [CFG["AGENT_NAME"]], "language": "en"}} |
| d["users"].append(entry) |
| _save_json(USERS_DB, d) |
|
|
| |
| success = enroll_voice(uid, mic_audio_filepath) |
| enroll_message = "Voice enrolled successfully!" if success else "Voice enrollment failed." |
| return f"Added {rl}: {nm}. {enroll_message}" |
|
|
| profile_creation_note = gr.Markdown("Profile will be created automatically when a voice sample is recorded.") |
| |
| auto_mic = gr.Audio(sources=["microphone"], type="filepath", label="Record a voice sample to automatically create a user profile (non-admin).") |
| automatic_creation_button = gr.Button("Create profile") |
| automatic_out = gr.Markdown() |
|
|
| automatic_creation_button.click( |
| do_automatic_profile_creation, |
| [auto_mic], |
| [automatic_out] |
| ) |
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
| add_btn.click(do_add, [mode_state, role_state, uid_state, add_name, add_role, add_pass], [out]) |
|
|
| def do_rename(mode, role, caller, tgt, nm): |
| if not is_admin(mode, role): return "Switch to Admin mode to use this." |
| d=_load_users(); u,_=_find_user(d, tgt or "") |
| if not u: return "Target not found." |
| cu,_=_find_user(d, caller or "") |
| if not cu: return "Login first." |
| if u["role"] in PERMS.get(cu["role"],{}).get("can_edit_profile_of",[]): |
| u["name"]=nm; _save_json(USERS_DB,d); return "Renamed." |
| return "Not allowed." |
| rename_btn.click(do_rename,[mode_state, role_state, uid_state, target, new_name],[out]) |
|
|
| def do_pass(mode, role, caller, tgt, pw): |
| if not is_admin(mode, role): return "Switch to Admin mode to use this." |
| d=_load_users(); u,_=_find_user(d, tgt or "") |
| if not u: return "Target not found." |
| cu,_=_find_user(d, caller or "") |
| if not cu: return "Login first." |
| if u["role"] in PERMS.get(cu["role"],{}).get("can_edit_profile_of",[]): |
| u["pass"]=pw; _save_json(USERS_DB,d); return "Password changed." |
| return "Not allowed." |
| pass_btn.click(do_pass,[mode_state, role_state, uid_state, target, new_pass],[out]) |
|
|
| def do_role(mode, role, caller, tgt, rl): |
| if not is_admin(mode, role): return "Switch to Admin mode to use this." |
| d=_load_users(); u,_=_find_user(d, tgt or "") |
| if not u: return "Target not found." |
| cu,_=_find_user(d, caller or ""); |
| if not cu: return "Login first." |
| allowed_new = {"owner":["owner","admin_super","admin_general","user"], |
| "admin_super":["admin_general","user"], |
| "admin_general":["admin_general","user"]}.get(cu["role"], []) |
| if u["role"] not in PERMS.get(cu["role"],{}).get("can_edit_role_of",[]) or rl not in allowed_new: |
| return f"Not allowed to set {rl}." |
| for grp in ["admins_super","admins_general","users"]: |
| d[grp]=[x for x in d[grp] if x["id"]!=u["id"]] |
| if rl=="owner": d["owner"]=u; u["role"]="owner" |
| elif rl=="admin_super": d["admins_super"].append(u); u["role"]="admin_super" |
| elif rl=="admin_general": d["admins_general"].append(u); u["role"]="admin_general" |
| else: d["users"].append(u); u["role"]="user" |
| _save_json(USERS_DB,d); return f"Role set to {rl}." |
| role_btn.click(do_role,[mode_state, role_state, uid_state, target, new_role],[out]) |
|
|
| |
| gr.Markdown("### Internal Optimization (Change Manager)") |
| prop_kind=gr.Dropdown(choices=["model","package","code"], value="model", label="Proposal type") |
| prop_name=gr.Textbox(label="Model ID / Package Name") |
| prop_ver=gr.Textbox(label="Package version (optional)") |
| prop_reason=gr.Textbox(label="Why this change?") |
| prop_patch=gr.Code(label="Code patch (for 'code' proposals): paste full replacement or diff") |
| propose_btn=gr.Button("Propose"); test_btn=gr.Button("Test in sandbox"); apply_btn=gr.Button("Apply (policy-checked)") |
| opt_out=gr.JSON() |
| _last: Dict[str, any] = {"id": None, "obj": None} |
| def do_propose(kind,name,ver,reason,patch): |
| hive_instance = get_hive_instance() |
| cp=ChangeProposal(kind=kind,name=name or "",version=ver or "",reason=reason or "",patch_text=patch or "") |
| pid=hive_instance.changes.propose(cp); _last["id"]=pid; _last["obj"]=cp |
| return f"Proposed {kind}: {name or '(code patch)'} (id:{pid})" |
| def do_test(): |
| if not _last["obj"]: return "No proposal in memory. Submit one first." |
| res=get_hive_instance().changes.test_and_compare(str(_last["id"]), _last["obj"]); return res |
| def do_apply(role, mode): |
| hive_instance = get_hive_instance() |
| if role not in ("admin_super","owner") or mode!="admin": return "Only admin_super or owner may apply." |
| if not _last["obj"]: return "No proposal loaded." |
| res=hive_instance.changes.test_and_compare(str(_last["id"]), _last["obj"]) |
| if not res.get("ok"): return f"Test failed: {res.get('reason','unknown')}" |
| if _last["obj"].kind=="code" and role!="owner" and not CFG["OPT_AUTO_APPLY"]: return "Awaiting Owner approval for code changes." |
| ok,msg=hive_instance.changes.apply(res); return msg if ok else f"Apply failed: {msg}" |
| propose_btn.click(do_propose, [prop_kind,prop_name,prop_ver,prop_reason,prop_patch],[opt_out]) |
|
|
| hotpatch_apply.click(do_hotpatch,[hotpatch_patch],[hotpatch_status]) |
|
|
| test_btn.click(lambda: do_test(), [], [opt_out]) |
| apply_btn.click(do_apply, [role_state, mode_state], [opt_out]) |
| |
| demo.launch(server_name="0.0.0.0", server_port=int(os.environ.get("PORT", "7860")), share=False) |
|
|
| class Bootstrap: |
| """Handles the entire application startup sequence cleanly.""" |
| def __init__(self, config: Dict): |
| self.config = config |
| self.caps: Optional[Dict] = None |
| self.hive_instance: Optional[Hive] = None |
| self.hive_lite_instance: Optional[Hive] = None |
| self.hive_ready = threading.Event() |
|
|
| def run(self): |
| """Executes the full startup sequence.""" |
| print("[Bootstrap] Starting Hive System...") |
| self.caps = probe_caps() |
| print(f"[Bootstrap] System capabilities: {self.caps}") |
|
|
| |
| print("[Bootstrap] Initializing Lite Hive core...") |
| self.hive_lite_instance = Hive(lite=True) |
| print("[Bootstrap] Lite Hive core is ready.") |
|
|
| |
| ui_thread = threading.Thread(target=self.launch, daemon=True) |
| ui_thread.start() |
|
|
| print("[Bootstrap] Initializing Hive core in background...") |
| |
| self.hive_instance = Hive(lite=False) |
|
|
| self.hive_ready.set() |
| print("[Bootstrap] Hive core is ready.") |
|
|
| self.setup_memory() |
| ui_thread.join() |
|
|
| def setup_memory(self): |
| """Handles memory restoration and staged ingestion.""" |
| def _memory_task(): |
| print("[Bootstrap] Starting background memory setup...") |
| try: |
| ok_restored, restore_msg = restore_curves_if_missing(str(self.config["CURVE_DIR"])) |
| with open(os.path.join(self.config["STATE_DIR"], "restore_status.log"), "a", encoding="utf-8") as f: |
| f.write(json.dumps({"ok":bool(ok_restored),"msg":restore_msg,"ts":time.time()})+"\n") |
| if ok_restored: |
| print(f"[Bootstrap] Memory restore status: {restore_msg}") |
| else: |
| print("[Bootstrap] No memory restored, proceeding to staged ingestion in background...") |
| staged_ingest_chain_if_enabled(str(self.config["CURVE_DIR"])) |
| except Exception as e: |
| with open(os.path.join(self.config["STATE_DIR"], "restore_error.log"), "a", encoding="utf-8") as f: |
| f.write(f"restore/ingest: {e}\n") |
| |
| threading.Thread(target=_memory_task, daemon=True).start() |
|
|
| def launch(self): |
| """Launches the appropriate interface (UI or CLI).""" |
| if self.config["LAUNCH_UI"]: |
| print("[Bootstrap] Launching Web UI...") |
| launch_ui(self) |
| else: |
| print("[Bootstrap] Launching CLI...") |
| self.run_cli_loop() |
|
|
| def run_cli_loop(self): |
| """Runs a command-line interface loop for Hive. Waits for full init.""" |
| self.hive_ready.wait() |
| print("Hive is ready. Type a message and press Enter (Ctrl+C to exit).") |
| try: |
| while True: |
| s = input("> ").strip() |
| if not s: continue |
| reply = self.hive_instance.chat(s, effective_role="user", caller_id="cli") |
| print(reply) |
| except (KeyboardInterrupt, EOFError): |
| print("\nExiting Hive CLI.") |
| pass |
|
|
| |
| if __name__=="__main__": |
|
|
| bootstrap = Bootstrap(CFG) |
| bootstrap.run() |