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import os
import math
from typing import Optional, Dict, Any, List

import numpy as np
from numpy.linalg import norm
from scipy.linalg import expm

from fastapi import FastAPI, HTTPException
from pydantic import BaseModel, Field

from sentence_transformers import SentenceTransformer
from huggingface_hub import hf_hub_download
import joblib

# ============================
# Configuración de modelos
# ============================

HF_TOKEN = os.environ.get("HF_TOKEN", "")
os.environ["HF_TOKEN"] = HF_TOKEN

ENCODER_MODEL_ID    = "antonypamo/RRFSAVANTMADE"
META_LOGIT_REPO     = "antonypamo/RRFSavantMetaLogit"
META_LOGIT_FILENAME = "logreg_rrf_savant_15.joblib"  # versión 15 features

print("🔄 [Startup] Cargando encoder RRFSAVANTMADE...", flush=True)
encoder = SentenceTransformer(ENCODER_MODEL_ID)
print("✅ [Startup] Encoder cargado.", flush=True)

print("🔄 [Startup] Descargando meta-logit desde HF Hub...", flush=True)
meta_logit_path = hf_hub_download(
    repo_id=META_LOGIT_REPO,
    filename=META_LOGIT_FILENAME,
    token=HF_TOKEN if HF_TOKEN else None,
)
print(f"🔄 [Startup] Cargando modelo meta-logit '{META_LOGIT_FILENAME}'...", flush=True)
meta_logit = joblib.load(meta_logit_path)
try:
    print(f"🔎 [Startup] Meta-logit espera {meta_logit.n_features_in_} features.", flush=True)
except Exception:
    print("⚠️ [Startup] No se pudo leer n_features_in_.", flush=True)
print("✅ [Startup] Meta-logit cargado.", flush=True)


# ============================
# Geometría icosaédrica Φ12.0
# ============================

phi = (1 + np.sqrt(5)) / 2
nodes = np.array([
    [0, 1, phi], [0, -1, phi], [0, 1, -phi], [0, -1, -phi],
    [1, phi, 0], [-1, phi, 0], [1, -phi, 0], [-1, -phi, 0],
    [phi, 0, 1], [phi, 0, -1], [-phi, 0, 1], [-phi, 0, -1]
], dtype=float)
nodes /= norm(nodes, axis=1, keepdims=True)
N = nodes.shape[0]  # 12 nodos

sigma_x = np.array([[0, 1], [1, 0]], dtype=complex)
sigma_y = np.array([[0, -1j], [1j, 0]], dtype=complex)
sigma_z = np.array([[1, 0], [0, -1]], dtype=complex)


def kron_IN(M, N_sites):
    return np.kron(M, np.eye(N_sites, dtype=complex))


def site_op(block_2x2, i, j, N_sites):
    K = np.zeros((N_sites, N_sites), dtype=complex)
    K[i, j] = 1.0
    return np.kron(K, block_2x2)


def geodesic_kernel(nodes, sigma=0.618, alpha_log=0.10):
    diff = nodes[:, None, :] - nodes[None, :, :]
    dist = norm(diff, axis=-1)

    W = np.exp(-(dist**2) / (sigma**2))
    np.fill_diagonal(W, 0.0)

    if alpha_log > 0.0:
        corr = 1.0 + alpha_log * np.log1p(dist**2)
        corr[range(N), range(N)] = 1.0
        W = W / corr

    row_sums = W.sum(axis=1, keepdims=True)
    row_sums[row_sums == 0] = 1.0
    return W / row_sums


def u1_edge_phases(nodes, flux_vector=(0.0, 0.0, 0.0), q=1.0, gauge_scale=1.0):
    A = gauge_scale * np.asarray(flux_vector, dtype=float)
    midpoints = (nodes[:, None, :] + nodes[None, :, :]) / 2.0
    theta = (midpoints @ A).astype(float)
    theta = 0.5 * (theta - theta.T)
    return theta * q


def build_dirac_hamiltonian(
    m=0.25,
    v=1.0,
    sigma=0.618,
    alpha_log=0.10,
    q=1.0,
    flux_vector=(0.0, 0.0, 0.0),
    gauge_scale=0.0,
):
    W = geodesic_kernel(nodes, sigma=sigma, alpha_log=alpha_log)

    if gauge_scale != 0.0 and any(flux_vector):
        theta = u1_edge_phases(nodes, flux_vector=flux_vector,
                               q=q, gauge_scale=gauge_scale)
        U = np.exp(1j * theta)
    else:
        U = np.ones((N, N), dtype=complex)

    H = np.kron(np.eye(N, dtype=complex), m * sigma_z)

    diff = nodes[:, None, :] - nodes[None, :, :]
    dist = norm(diff, axis=-1) + 1e-12
    d_hat = diff / dist[..., None]

    for i in range(N):
        for j in range(N):
            if i == j or W[i, j] == 0:
                continue
            nvec = d_hat[i, j]
            S = (nvec[0] * sigma_x +
                 nvec[1] * sigma_y +
                 nvec[2] * sigma_z)
            H += v * W[i, j] * U[i, j] * site_op(S, i, j, N)

    H = 0.5 * (H + H.conj().T)
    return H


def site_probs(psi):
    N2 = psi.shape[0]
    n = N2 // 2
    psi_mat = psi.reshape(n, 2)
    return np.sum(np.abs(psi_mat)**2, axis=1).real


def chirality(psi):
    S = kron_IN(sigma_z, N)
    return float(np.vdot(psi, S @ psi).real)


def energy_expectation(psi, H):
    return float(np.vdot(psi, H @ psi).real)


def spatial_entropy(p):
    p = np.clip(p, 1e-12, 1.0)
    return float(-np.sum(p * np.log(p)).real)


def evolve_dirac_shell(psi0, H, dt=0.05, steps=200, record_every=20):
    U = expm(-1j * dt * H)
    psi = psi0.copy()

    probs_hist = []
    energy_hist = []
    chir_hist = []
    ent_hist = []

    for t in range(steps + 1):
        if t % record_every == 0:
            p = site_probs(psi)
            probs_hist.append(p)
            energy_hist.append(energy_expectation(psi, H))
            chir_hist.append(chirality(psi))
            ent_hist.append(spatial_entropy(p))

        psi = U @ psi
        psi /= np.sqrt(np.vdot(psi, psi))

    return {
        "probs": np.array(probs_hist, dtype=float),
        "energy": np.array(energy_hist, dtype=float),
        "chirality": np.array(chir_hist, dtype=float),
        "entropy": np.array(ent_hist, dtype=float),
        "dt": dt,
        "record_every": record_every,
    }


# ============================
# Core RRF: embeddings + features + scores
# ============================

def get_embedding(text: str) -> np.ndarray:
    emb = encoder.encode([text], convert_to_numpy=True, normalize_embeddings=True)
    return emb[0]


def compute_rrf_features(prompt: str, answer: str) -> Dict[str, float]:
    # Embeddings
    e_p = get_embedding(prompt)
    e_a = get_embedding(answer)

    cosine_pa = float(np.dot(e_p, e_a))
    len_ratio = len(answer) / (len(prompt) + 1.0)

    rng = np.random.default_rng(abs(hash(prompt + answer)) % (2**32))
    vec = rng.normal(0, 1, (2*N,)) + 1j * rng.normal(0, 1, (2*N,))
    vec /= np.sqrt(np.vdot(vec, vec))
    psi0 = vec

    H = build_dirac_hamiltonian(
        m=0.25, v=1.0, sigma=0.618,
        alpha_log=0.10, q=1.0,
        flux_vector=(0.0, 0.0, 0.0),
        gauge_scale=0.0
    )

    out = evolve_dirac_shell(psi0, H, dt=0.05, steps=100, record_every=25)

    entropy = out["entropy"]
    energy = out["energy"]
    chir = out["chirality"]

    S_final = float(entropy[-1])
    S_initial = float(entropy[0])
    S_delta = S_final - S_initial
    C_final = float(chir[-1])
    E_mean = float(np.mean(energy))
    E_std = float(np.std(energy))

    feats: Dict[str, float] = {
        "cosine_pa": cosine_pa,
        "len_ratio": len_ratio,
        "dirac_entropy_final": S_final,
        "dirac_entropy_delta": S_delta,
        "dirac_chirality_final": C_final,
        "dirac_energy_mean": E_mean,
        "dirac_energy_std": E_std,
    }

    # Derivadas extra para llegar a 15 features
    S_max = math.log(N)
    feats["entropy_norm"]      = feats["dirac_entropy_final"] / S_max
    feats["entropy_abs_delta"] = abs(feats["dirac_entropy_delta"])
    feats["chirality_abs"]     = abs(feats["dirac_chirality_final"])
    feats["energy_abs_mean"]   = abs(feats["dirac_energy_mean"])
    feats["energy_std_sq"]     = feats["dirac_energy_std"] ** 2
    feats["cosine_sq"]         = feats["cosine_pa"] ** 2
    feats["len_log"]           = math.log1p(feats["len_ratio"])
    feats["len_inv"]           = 1.0 / (1.0 + feats["len_ratio"])

    return feats


def features_to_vector(feats: Dict[str, float]) -> np.ndarray:
    keys = [
        "cosine_pa",
        "len_ratio",
        "dirac_entropy_final",
        "dirac_entropy_delta",
        "dirac_chirality_final",
        "dirac_energy_mean",
        "dirac_energy_std",
        "entropy_norm",
        "entropy_abs_delta",
        "chirality_abs",
        "energy_abs_mean",
        "energy_std_sq",
        "cosine_sq",
        "len_log",
        "len_inv",
    ]
    return np.array([feats[k] for k in keys], dtype=float)


def compute_scores_srff_crrf_ephi(prompt: str, answer: str):
    feats = compute_rrf_features(prompt, answer)
    x = features_to_vector(feats).reshape(1, -1)

    proba = meta_logit.predict_proba(x)[0]
    p_good = float(proba[1])

    SRRF = p_good
    CRRF = p_good * feats["cosine_pa"]

    S_max = math.log(N)
    norm_entropy = float(feats["dirac_entropy_final"] / S_max)
    E_phi = 0.5 * (SRRF + norm_entropy)

    scores = {
        "SRRF": SRRF,
        "CRRF": CRRF,
        "E_phi": E_phi,
        "p_good": p_good,
    }
    return scores, feats


# ============================
# FastAPI app
# ============================

class EvaluateRequest(BaseModel):
    prompt: str = Field(..., description="Pregunta / instrucción original.")
    answer: str = Field(..., description="Respuesta generada por un LLM.")
    model_label: Optional[str] = Field(
        None, description="Etiqueta opcional del modelo que generó la respuesta."
    )


class EvaluateResponse(BaseModel):
    scores: Dict[str, float]
    features: Dict[str, float]
    sim_summary: Dict[str, Any]


class QualityRemoteRequest(EvaluateRequest):
    """Alias de EvaluateRequest para /quality_remote."""
    pass


class RerankRequest(BaseModel):
    """
    Petición para /v1/rerank
    """
    query: str = Field(..., description="Query de búsqueda o pregunta del usuario.")
    documents: List[str] = Field(..., description="Lista de documentos candidatos a rerankear.")
    alpha: float = Field(
        0.2,
        description="Peso de la corrección log_rdf en el score_final. 0 = solo cosine, 1 = solo log_rdf."
    )
    query_embedding_norm: bool = Field(
        True,
        description="Si True, normaliza el embedding de query (útil para cosine)."
    )


class RerankDocumentResult(BaseModel):
    id: int = Field(..., description="Índice del documento en la lista de entrada.")
    score_cosine: float
    score_log_rdf: float
    score_final: float
    rank: int


class RerankResponse(BaseModel):
    model_id: str
    alpha: float
    query_embedding_norm: bool
    results: List[RerankDocumentResult]


app = FastAPI(
    title="Savant RRF Φ12.0 API",
    description="Dirac-Resonant conceptual quality + reranking para texto generado por LLMs.",
    version="1.0.0",
)


@app.get("/")
def root():
    return {"message": "Savant RRF Φ12.0 API running", "docs": "/docs"}


@app.get("/health")
def health():
    return {
        "status": "ok",
        "encoder_model_id": ENCODER_MODEL_ID,
        "meta_logit_filename": META_LOGIT_FILENAME,
        "N_sites": N,
    }


@app.post("/evaluate", response_model=EvaluateResponse)
def evaluate_endpoint(req: EvaluateRequest):
    try:
        scores, feats = compute_scores_srff_crrf_ephi(req.prompt, req.answer)

        H = build_dirac_hamiltonian(
            m=0.25, v=1.0, sigma=0.618,
            alpha_log=0.10, q=1.0,
            flux_vector=(0.0, 0.0, 0.0),
            gauge_scale=0.0
        )
        rng = np.random.default_rng(abs(hash(req.prompt + req.answer + "sim")) % (2**32))
        vec = rng.normal(0, 1, (2*N,)) + 1j * rng.normal(0, 1, (2*N,))
        vec /= np.sqrt(np.vdot(vec, vec))
        psi0 = vec
        sim = evolve_dirac_shell(psi0, H, dt=0.05, steps=60, record_every=20)

        sim_summary = {
            "entropy_initial": float(sim["entropy"][0]),
            "entropy_final": float(sim["entropy"][-1]),
            "chirality_initial": float(sim["chirality"][0]),
            "chirality_final": float(sim["chirality"][-1]),
            "energy_mean": float(np.mean(sim["energy"])),
            "energy_std": float(np.std(sim["energy"])),
            "N_sites": int(N),
        }

        return EvaluateResponse(
            scores=scores,
            features=feats,
            sim_summary=sim_summary,
        )
    except Exception as e:
        print(f"❌ [Runtime] Error en /evaluate: {e}", flush=True)
        raise HTTPException(status_code=500, detail="Internal server error")


@app.post("/quality_remote", response_model=EvaluateResponse)
def quality_remote(req: QualityRemoteRequest):
    """Alias remoto de /evaluate."""
    return evaluate_endpoint(req)


def _compute_rerank_scores(query: str, docs: List[str], alpha: float, norm_query: bool) -> List[RerankDocumentResult]:
    q_emb = encoder.encode([query], convert_to_numpy=True, normalize_embeddings=norm_query)[0]

    results = []
    for idx, text in enumerate(docs):
        d_emb = encoder.encode([text], convert_to_numpy=True, normalize_embeddings=True)[0]
        score_cosine = float(np.dot(q_emb, d_emb))

        val = max(score_cosine, 0.0) + 1e-6
        score_log_rdf = float(np.log1p(val))

        score_final = (1.0 - alpha) * score_cosine + alpha * score_log_rdf

        results.append(
            {
                "id": idx,
                "score_cosine": score_cosine,
                "score_log_rdf": score_log_rdf,
                "score_final": score_final,
            }
        )

    results_sorted = sorted(results, key=lambda r: r["score_final"], reverse=True)
    reranked = []
    for rank, r in enumerate(results_sorted, start=1):
        reranked.append(
            RerankDocumentResult(
                id=r["id"],
                score_cosine=r["score_cosine"],
                score_log_rdf=r["score_log_rdf"],
                score_final=r["score_final"],
                rank=rank,
            )
        )
    return reranked


@app.post("/v1/rerank", response_model=RerankResponse)
def rerank_endpoint(req: RerankRequest):
    """
    Endpoint Savant Seek:
    POST /v1/rerank
    {
        "query": "...",
        "documents": ["doc1", "doc2", ...],
        "alpha": 0.2,
        "query_embedding_norm": true
    }
    """
    results = _compute_rerank_scores(
        query=req.query,
        docs=req.documents,
        alpha=req.alpha,
        norm_query=req.query_embedding_norm,
    )

    return RerankResponse(
        model_id=ENCODER_MODEL_ID,
        alpha=req.alpha,
        query_embedding_norm=req.query_embedding_norm,
        results=results,
    )