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import os
import re
import gc
import sys
import time
import queue
import random
import asyncio
import threading
import requests
import collections
import torch
import numpy as np
from typing import List, Optional, Dict, Any, Literal, Union
from pydantic import BaseModel, Field, model_validator
from pydantic_settings import BaseSettings
from fastapi import FastAPI, HTTPException, Request
from fastapi.responses import StreamingResponse
from fastapi.middleware.cors import CORSMiddleware
from fastapi.staticfiles import StaticFiles
from fastapi.middleware.gzip import GZipMiddleware
from huggingface_hub import hf_hub_download
from snowflake import SnowflakeGenerator

if os.environ.get("MODELSCOPE_ENVIRONMENT") == "studio":
    from modelscope import patch_hub
    patch_hub()

os.environ["PYTORCH_CUDA_ALLOC_CONF"] = "max_split_size_mb:64"
os.environ["RWKV_V7_ON"] = "1"
os.environ["RWKV_JIT_ON"] = "1"
os.environ["RWKV_CUDA_ON"] = "1"

GPU_LOCK = asyncio.Lock()

class ChatMessage(BaseModel):
    role: str = Field()
    content: str = Field()

class Logprob(BaseModel):
    token: str
    logprob: float
    top_logprobs: Optional[List[Dict[str, Any]]] = None

class LogprobsContent(BaseModel):
    content: Optional[List[Logprob]] = None
    refusal: Optional[List[Logprob]] = None

class ChatCompletionMessage(BaseModel):
    role: Optional[str] = Field(None)
    content: Optional[str] = Field(None)
    reasoning_content: Optional[str] = Field(None)
    tool_calls: Optional[List[Dict[str, Any]]] = Field(None)

class PromptTokensDetails(BaseModel):
    cached_tokens: int

class Usage(BaseModel):
    prompt_tokens: int
    completion_tokens: int
    total_tokens: int
    prompt_tokens_details: Optional[PromptTokensDetails]

class ChatCompletionChoice(BaseModel):
    index: int
    message: Optional[ChatCompletionMessage] = None
    delta: Optional[ChatCompletionMessage] = None
    logprobs: Optional[LogprobsContent] = None
    finish_reason: Optional[str] = Field(...)

class ChatCompletionChunk(BaseModel):
    id: str = Field(...)
    object: Literal["chat.completion.chunk"] = "chat.completion.chunk"
    created: int = Field(...)
    model: str
    choices: List[ChatCompletionChoice]
    usage: Optional[Usage]

def remove_nested_think_tags_stack(text):
    stack = []
    result = ""
    i = 0
    while i < len(text):
        if text[i : i + 7] == "<think>":
            stack.append("<think>")
            i += 7
        elif text[i : i + 8] == "</think>":
            if stack and stack[-1] == "<think>":
                stack.pop()
                i += 8
            else:
                result += text[i : i + 8]
                i += 8
        elif not stack:
            result += text[i]
            i += 1
        else:
            i += 1
    return result

def cleanMessages(messages: List[ChatMessage], removeThinkingContent: bool = False):
    promptStrList = []
    for message in messages:
        content = message.content.strip()
        content = re.sub(r"\n+", "\n", content)
        role_str = message.role.strip().lower().capitalize()
        if role_str == 'Assistant' and removeThinkingContent:
            content = remove_nested_think_tags_stack(content)
        promptStrList.append(f"{role_str}: {content}")
    return "\n\n".join(promptStrList)

class SamplerConfig(BaseModel):
    max_tokens: int = 4096
    temperature: float = 1.0
    top_p: float = 0.3
    presence_penalty: float = 0.5
    count_penalty: float = 0.5
    penalty_decay: float = 0.996
    stop: List[str] = ["\n\n"]
    stop_tokens: List[int] = [0]

class ModelConfig(BaseModel):
    SERVICE_NAME: str
    DOWNLOAD_MODEL_FILE_NAME: str
    DOWNLOAD_MODEL_REPO_ID: str
    DOWNLOAD_MODEL_DIR: str = "models"
    MODEL_FILE_PATH: Optional[str] = None
    DEFAULT_CHAT: bool = False
    DEFAULT_REASONING: bool = False
    REASONING: bool = False
    VOCAB: str = "rwkv_vocab_v20230424"
    CTX_LEN: int = 4096
    DEFAULT_SAMPLER: SamplerConfig = Field(default_factory=SamplerConfig)

class Config(BaseSettings):
    HOST: str = "0.0.0.0"
    PORT: int = 7860
    STRATEGY: str = "cuda fp16"
    RWKV_CUDA_ON: bool = True
    CHUNK_LEN: int = 256
    MODELS: List[ModelConfig] = [
        ModelConfig(
            SERVICE_NAME="rwkv7-g1a4-2.9b-20251118-ctx8192",
            DOWNLOAD_MODEL_FILE_NAME="rwkv7-g1a4-2.9b-20251118-ctx8192.pth",
            DOWNLOAD_MODEL_REPO_ID="BlinkDL/rwkv7-g1",
            REASONING=True,
            CTX_LEN=8192
        ),
        ModelConfig(
            SERVICE_NAME="rwkv7-g1a3-1.5b-20251015-ctx8192",
            DOWNLOAD_MODEL_FILE_NAME="rwkv7-g1a3-1.5b-20251015-ctx8192.pth",
            DOWNLOAD_MODEL_REPO_ID="BlinkDL/rwkv7-g1",
            REASONING=True,
            CTX_LEN=8192
        ),
        ModelConfig(
            SERVICE_NAME="rwkv7-g1a-0.4b-20250905-ctx4096",
            DOWNLOAD_MODEL_FILE_NAME="rwkv7-g1a-0.4b-20250905-ctx4096.pth",
            DOWNLOAD_MODEL_REPO_ID="BlinkDL/rwkv7-g1",
            REASONING=True,
            CTX_LEN=4096
        ),
        ModelConfig(
            SERVICE_NAME="rwkv7-g1a-0.1b-20250728-ctx4096",
            DOWNLOAD_MODEL_FILE_NAME="rwkv7-g1a-0.1b-20250728-ctx4096.pth",
            DOWNLOAD_MODEL_REPO_ID="BlinkDL/rwkv7-g1",
            REASONING=True,
            DEFAULT_CHAT=True,
            DEFAULT_REASONING=True,
            CTX_LEN=4096
        ),
    ]

CONFIG = Config()

try:
    from duckduckgo_search import DDGS
    HAS_DDG = True
except ImportError:
    HAS_DDG = False

try:
    from faker import Faker
    fake = Faker()
    HAS_FAKER = True
except ImportError:
    HAS_FAKER = False

CompletionIdGenerator = SnowflakeGenerator(42, timestamp=1741101491595)

if "cuda" in CONFIG.STRATEGY.lower() and not torch.cuda.is_available():
    CONFIG.STRATEGY = "cpu fp16"
    CONFIG.RWKV_CUDA_ON = False

if CONFIG.RWKV_CUDA_ON and "cuda" in CONFIG.STRATEGY.lower():
    from pynvml import *
    nvmlInit()
    os.environ["RWKV_CUDA_ON"] = "1"
    torch.backends.cudnn.benchmark = True
    torch.backends.cudnn.allow_tf32 = True
    torch.backends.cuda.matmul.allow_tf32 = True
else:
    os.environ["RWKV_CUDA_ON"] = "0"

from rwkv.model import RWKV
from rwkv.utils import PIPELINE, PIPELINE_ARGS

class ModelStorage:
    MODEL_CONFIG: Optional[ModelConfig] = None
    model: Optional[RWKV] = None
    pipeline: Optional[PIPELINE] = None

MODEL_STORAGE: Dict[str, ModelStorage] = {}
DEFALUT_MODEL_NAME = None
DEFAULT_REASONING_MODEL_NAME = None

for model_config in CONFIG.MODELS:
    if model_config.MODEL_FILE_PATH is None:
        model_config.MODEL_FILE_PATH = hf_hub_download(
            repo_id=model_config.DOWNLOAD_MODEL_REPO_ID,
            filename=model_config.DOWNLOAD_MODEL_FILE_NAME,
            local_dir=model_config.DOWNLOAD_MODEL_DIR,
        )
    if model_config.DEFAULT_CHAT:
        DEFALUT_MODEL_NAME = model_config.SERVICE_NAME
    if model_config.DEFAULT_REASONING:
        DEFAULT_REASONING_MODEL_NAME = model_config.SERVICE_NAME
    
    MODEL_STORAGE[model_config.SERVICE_NAME] = ModelStorage()
    MODEL_STORAGE[model_config.SERVICE_NAME].MODEL_CONFIG = model_config
    MODEL_STORAGE[model_config.SERVICE_NAME].model = RWKV(
        model=model_config.MODEL_FILE_PATH.replace(".pth", ""),
        strategy=CONFIG.STRATEGY,
    )
    MODEL_STORAGE[model_config.SERVICE_NAME].pipeline = PIPELINE(
        MODEL_STORAGE[model_config.SERVICE_NAME].model, model_config.VOCAB
    )
    if "cuda" in CONFIG.STRATEGY:
        torch.cuda.empty_cache()
        gc.collect()

class ChatCompletionRequest(BaseModel):
    model: str = Field(default="rwkv-latest")
    messages: Optional[List[ChatMessage]] = Field(default=None)
    prompt: Optional[str] = Field(default=None)
    max_tokens: Optional[int] = Field(default=None)
    temperature: Optional[float] = Field(default=None)
    top_p: Optional[float] = Field(default=None)
    presence_penalty: Optional[float] = Field(default=None)
    count_penalty: Optional[float] = Field(default=None)
    penalty_decay: Optional[float] = Field(default=None)
    stream: Optional[bool] = Field(default=False)
    stop: Optional[List[str]] = Field(["\n\n"])
    stop_tokens: Optional[List[int]] = Field([0])

    @model_validator(mode="before")
    @classmethod
    def validate_mutual_exclusivity(cls, data: Any) -> Any:
        if not isinstance(data, dict): return data
        if "messages" in data and "prompt" in data and data["messages"] and data["prompt"]:
            raise ValueError("messages and prompt cannot coexist.")
        return data

class TruthProtocol:
    STRICT_SYSTEM_PROMPT = """
CRITICAL PROTOCOL: OBJECTIVE_REALITY_ONLY
1. NEUTRALITY: Abandon all bias, opinions, and emotional language.
2. FACTS ONLY: State verified facts. If data is missing, say [NO DATA]. Do not guess.
3. NO HALLUCINATIONS: Do not invent dates, names, or events.
4. LABELS: Tag assertions with [VERIFIED] or [UNCERTAIN].
5. TONE: Robotic, precise, dense. No pleasantries.
""".strip()

    @staticmethod
    def enforce_truth_params(request: ChatCompletionRequest):
        request.temperature = 0.12
        request.top_p = 0.1
        request.count_penalty = 1.1
        request.presence_penalty = 0.6
        request.penalty_decay = 0.996

    @staticmethod
    def sanitise_search(query: str, results: List[dict]) -> str:
        context = "RAW DATA STREAM (IGNORE OPINIONS, EXTRACT FACTS):\n"
        for i, res in enumerate(results):
            clean_body = res['body'].replace("\n", " ").strip()
            context += f"SOURCE [{i+1}]: {clean_body} (Origin: {res['title']})\n"
        return context

search_cache = collections.OrderedDict()

def search_facts(query: str) -> str:
    if not HAS_DDG: return ""
    if query in search_cache: return search_cache[query]
    try:
        ddgs = DDGS()
        results = ddgs.text(query, max_results=4)
        if any(x in query.lower() for x in ["verdad", "fake", "cierto", "mentira"]):
             check = ddgs.text(f"{query} fact check verified", max_results=2)
             if check: results.extend(check)
        if not results: return ""
        ctx = TruthProtocol.sanitise_search(query, results)
        if len(search_cache) > 50: search_cache.popitem(last=False)
        search_cache[query] = ctx
        return ctx
    except:
        return ""

def needs_verification(msg: str, model: str) -> bool:
    if ":online" in model: return True
    triggers = ["es verdad", "dato", "precio", "cuando", "quien", "noticia", "actualidad", "verify"]
    return any(t in msg.lower() for t in triggers)

app = FastAPI(title="RWKV Ultimate Server")

app.add_middleware(
    CORSMiddleware,
    allow_origins=["*"],
    allow_credentials=True,
    allow_methods=["*"],
    allow_headers=["*"],
)
app.add_middleware(GZipMiddleware, minimum_size=1000, compresslevel=5)

@app.middleware("http")
async def privacy_middleware(request: Request, call_next):
    if HAS_FAKER:
        request.scope["client"] = (fake.ipv4(), request.client.port if request.client else 80)
    return await call_next(request)

def prune_context(messages: List[ChatMessage], model_name: str, max_gen_tokens: int):
    storage = MODEL_STORAGE[model_name]
    limit = storage.MODEL_CONFIG.CTX_LEN
    pipeline = storage.pipeline
    
    current_text = cleanMessages(messages)
    tokens = pipeline.encode(current_text)
    
    if len(tokens) + max_gen_tokens < limit:
        return messages
        
    system_msgs = [m for m in messages if m.role == "System"]
    other_msgs = [m for m in messages if m.role != "System"]
    
    while len(other_msgs) > 1:
        candidate_text = cleanMessages(system_msgs + other_msgs)
        if len(pipeline.encode(candidate_text)) + max_gen_tokens < limit:
            break
        other_msgs.pop(0)
    
    return system_msgs + other_msgs

async def runPrefill(request: ChatCompletionRequest, ctx: str, model_tokens: List[int], model_state):
    ctx = ctx.replace("\r\n", "\n")
    tokens = MODEL_STORAGE[request.model].pipeline.encode(ctx)
    model_tokens.extend([int(x) for x in tokens])
    while len(tokens) > 0:
        out, model_state = MODEL_STORAGE[request.model].model.forward(tokens[: CONFIG.CHUNK_LEN], model_state)
        tokens = tokens[CONFIG.CHUNK_LEN :]
        await asyncio.sleep(0)
    return out, model_tokens, model_state

def generate(request: ChatCompletionRequest, out, model_tokens: List[int], model_state, max_tokens=2048):
    args = PIPELINE_ARGS(
        temperature=request.temperature,
        top_p=request.top_p,
        alpha_frequency=request.count_penalty,
        alpha_presence=request.presence_penalty,
        token_ban=[], token_stop=[0]
    )
    occurrence = {}
    out_tokens = []
    out_last = 0
    cache_word_list = []
    
    stop_sequences = request.stop if request.stop else []

    for i in range(max_tokens):
        for n in occurrence: out[n] -= args.alpha_presence + occurrence[n] * args.alpha_frequency
        token = MODEL_STORAGE[request.model].pipeline.sample_logits(out, temperature=args.temperature, top_p=args.top_p)
        
        if token == 0:
             yield {"content": "".join(cache_word_list), "finish_reason": "stop", "state": model_state}
             del out; gc.collect(); return

        out, model_state = MODEL_STORAGE[request.model].model.forward([token], model_state)
        model_tokens.append(token)
        out_tokens.append(token)
        
        for xxx in occurrence: occurrence[xxx] *= request.penalty_decay
        occurrence[token] = 1 + (occurrence.get(token, 0))
        
        tmp = MODEL_STORAGE[request.model].pipeline.decode(out_tokens[out_last:])
        if "\ufffd" in tmp: continue
        cache_word_list.append(tmp)
        out_last = i + 1
        
        current_buffer = "".join(cache_word_list)
        for s in stop_sequences:
            if s in current_buffer:
                final_content = current_buffer.split(s)[0]
                yield {"content": final_content, "finish_reason": "stop", "state": model_state}
                del out; gc.collect(); return

        if len(cache_word_list) > 1:
            yield {"content": cache_word_list.pop(0), "finish_reason": None}
            
    yield {"content": "".join(cache_word_list), "finish_reason": "length"}

async def chatResponseStream(request: ChatCompletionRequest, model_state: any, completionId: str, enableReasoning: bool):
    clean_msg = cleanMessages(request.messages, enableReasoning)
    prompt = f"{clean_msg}\n\nAssistant:{' <think' if enableReasoning else ''}"
    
    async with GPU_LOCK:
        try:
            out, model_tokens, model_state = await runPrefill(request, prompt, [0], model_state)
            
            yield f"data: {ChatCompletionChunk(id=completionId, created=int(time.time()), model=request.model, choices=[ChatCompletionChoice(index=0, delta=ChatCompletionMessage(role='Assistant', content=''), finish_reason=None)]).model_dump_json()}\n\n"
            
            for chunk in generate(request, out, model_tokens, model_state, max_tokens=request.max_tokens or 4096):
                content = chunk.get("content", "")
                finish = chunk.get("finish_reason", None)
                if content:
                    yield f"data: {ChatCompletionChunk(id=completionId, created=int(time.time()), model=request.model, choices=[ChatCompletionChoice(index=0, delta=ChatCompletionMessage(content=content), finish_reason=None)]).model_dump_json()}\n\n"
                if finish:
                    yield f"data: {ChatCompletionChunk(id=completionId, created=int(time.time()), model=request.model, choices=[ChatCompletionChoice(index=0, delta=ChatCompletionMessage(content=''), finish_reason=finish)]).model_dump_json()}\n\n"
                    break
                await asyncio.sleep(0)
        finally:
            pass
            
    yield "data: [DONE]\n\n"

@app.post("/api/v1/chat/completions")
async def chat_completions(request: ChatCompletionRequest):
    completionId = str(next(CompletionIdGenerator))
    raw_model = request.model
    model_key = request.model.split(":")[0].replace(":online", "")
    is_reasoning = ":thinking" in request.model
    target_model = model_key
    if "rwkv-latest" in model_key:
        if is_reasoning and DEFAULT_REASONING_MODEL_NAME: target_model = DEFAULT_REASONING_MODEL_NAME
        elif DEFALUT_MODEL_NAME: target_model = DEFALUT_MODEL_NAME
    
    if target_model not in MODEL_STORAGE:
        raise HTTPException(404, f"Model {target_model} not loaded.")
    request.model = target_model

    default_sampler = MODEL_STORAGE[target_model].MODEL_CONFIG.DEFAULT_SAMPLER
    req_data = request.model_dump()
    for k, v in default_sampler.model_dump().items():
        if req_data.get(k) is None: req_data[k] = v
    realRequest = ChatCompletionRequest(**req_data)

    sys_msg = ChatMessage(role="System", content=TruthProtocol.STRICT_SYSTEM_PROMPT)
    if realRequest.messages:
        if realRequest.messages[0].role == "System":
             realRequest.messages[0].content = f"{TruthProtocol.STRICT_SYSTEM_PROMPT}\n\n{realRequest.messages[0].content}"
        else:
            realRequest.messages.insert(0, sys_msg)
    
    last_msg = realRequest.messages[-1]
    if last_msg.role == "user" and needs_verification(last_msg.content, raw_model):
        ctx = search_facts(last_msg.content)
        if ctx:
            realRequest.messages.insert(-1, ChatMessage(role="System", content=ctx))
    
    TruthProtocol.enforce_truth_params(realRequest)
    
    realRequest.messages = prune_context(realRequest.messages, target_model, realRequest.max_tokens or 1024)

    return StreamingResponse(chatResponseStream(realRequest, None, completionId, is_reasoning), media_type="text/event-stream")

@app.get("/api/v1/models")
@app.get("/models")
async def list_models():
    models_list = []
    ts = int(time.time())
    for model_id in MODEL_STORAGE.keys():
        models_list.append({"id": model_id, "object": "model", "created": ts, "owned_by": "rwkv-server"})
        models_list.append({"id": f"{model_id}:online", "object": "model", "created": ts, "owned_by": "rwkv-server"})
    if DEFALUT_MODEL_NAME:
        models_list.append({"id": "rwkv-latest", "object": "model", "created": ts, "owned_by": "rwkv-system"})
        models_list.append({"id": "rwkv-latest:online", "object": "model", "created": ts, "owned_by": "rwkv-system"})
    if DEFAULT_REASONING_MODEL_NAME:
        models_list.append({"id": "rwkv-latest:thinking", "object": "model", "created": ts, "owned_by": "rwkv-system"})
        models_list.append({"id": "rwkv-latest:thinking:online", "object": "model", "created": ts, "owned_by": "rwkv-system"})
    return {"object": "list", "data": models_list}

app.mount("/", StaticFiles(directory="dist-frontend", html=True), name="static")

if __name__ == "__main__":
    import uvicorn
    uvicorn.run(app, host=CONFIG.HOST, port=CONFIG.PORT)