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"""Custom inference handler for Hugging Face Inference Endpoints.

This module exposes :class:`EndpointHandler`, the entrypoint used by the
Hugging Face serving stack when ``--task custom`` is selected.  The handler
loads the exported Noesis decoder ONNX graph and accepts symbolic intent
vectors (``psi``) along with an optional ``slow_state`` memory tensor.  The
outputs mirror the values produced by the training runtime:

* ``z_out`` – semantic embedding projected back into symbolic space.
* ``choice``, ``pain``, ``memory`` and ``quality`` – diagnostic scalars.
* ``slow_state`` – updated slow memory tensor suitable for recurrent usage.

The handler is intentionally lightweight so it can run without the rest of the
AletheiaEngine Python package being installed.
"""

from __future__ import annotations

import importlib
import importlib.util
from dataclasses import dataclass
from pathlib import Path
import hashlib
import re
from typing import Any, Mapping, MutableMapping, Optional, Sequence, Tuple

import numpy as np


_WORD_RE = re.compile(r"\w+", re.UNICODE)

_INTENT_VOCAB = [
    "clarity",
    "empathy",
    "analysis",
    "evidence",
    "caution",
    "curiosity",
    "context",
    "precision",
    "ethics",
    "resilience",
    "coherence",
    "safety",
    "humility",
    "breadth",
    "depth",
    "innovation",
    "structure",
    "rigour",
    "balance",
    "confidence",
]

_DEFAULT_PROVIDER = "aletheia-noesis"
_DEFAULT_MODEL = "noesis-transformer-onnx"


class _TextEncoder:
    """Deterministic text → vector encoder.

    The Hugging Face Inference Endpoints frequently pass user prompts as
    strings via the ``inputs`` field.  The Noesis decoder, however, expects a
    symbolic vector (``psi``) as input.  To provide a graceful fallback the
    handler lazily converts short text prompts into a stable float32 vector by
    hashing tokens onto a hypersphere.  This mirrors the lightweight
    ``TextEncoder256`` implementation bundled with the full AletheiaEngine
    package while avoiding a heavy import dependency inside the endpoint
    container.
    """

    def __init__(self, dim: int) -> None:
        self.dim = dim

    @staticmethod
    def _tokens(text: str) -> list[str]:
        return [tok.lower() for tok in _WORD_RE.findall(text)]

    @staticmethod
    def _seed(tok: str) -> int:
        # FNV-1a hash for determinism across processes/platforms.
        value = 2166136261
        for byte in tok.encode("utf-8"):
            value ^= byte
            value = (value * 16777619) & 0xFFFFFFFF
        return int(value)

    def encode(self, text: str) -> np.ndarray:
        tokens = self._tokens(text)
        if not tokens:
            return np.zeros((1, self.dim), dtype=np.float32)

        vecs = []
        for tok in tokens:
            rs = np.random.RandomState(self._seed(tok))
            embedding = rs.normal(0.0, 1.0, size=(self.dim,)).astype(np.float32)
            norm = float(np.linalg.norm(embedding)) or 1.0
            vecs.append(embedding / norm)

        stacked = np.stack(vecs, axis=0)
        pooled = stacked.mean(axis=0, dtype=np.float32, keepdims=True)
        pooled_norm = float(np.linalg.norm(pooled)) or 1.0
        return pooled / pooled_norm


class _SimpleTokenizer:
    """Minimal tokenizer mirroring the reference Noesis runtime."""

    def __init__(self) -> None:
        special_tokens = ["<pad>", "<bos>", "<eos>", "<unk>"]
        alphabet = list("abcdefghijklmnopqrstuvwxyz0123456789 .,;:'\"!?-\n")
        self._tokens = special_tokens + alphabet
        self._token_to_id = {token: idx for idx, token in enumerate(self._tokens)}

    @property
    def pad_token_id(self) -> int:
        return 0

    @property
    def bos_token_id(self) -> int:
        return 1

    @property
    def eos_token_id(self) -> int:
        return 2

    @property
    def unk_token_id(self) -> int:
        return 3

    def encode(self, text: str) -> list[int]:
        tokens = [self.bos_token_id]
        for char in text:
            tokens.append(self._token_to_id.get(char.lower(), self.unk_token_id))
        tokens.append(self.eos_token_id)
        return tokens

    def decode(self, token_ids: Sequence[int]) -> str:
        """Convert token IDs back into a text string."""

        characters: list[str] = []
        for idx in token_ids:
            if idx == self.eos_token_id:
                break
            if idx in {self.pad_token_id, self.bos_token_id}:
                continue

            if 0 <= idx < len(self._tokens):
                token = self._tokens[idx]
                if token not in {"<pad>", "<bos>", "<eos>", "<unk>"}:
                    characters.append(token)
                else:
                    characters.append("?")
            else:
                characters.append("?")

        return "".join(characters)


def _summarise_intent(psi: Sequence[float], top_k: int = 4) -> list[str]:
    """Convert strongest symbolic dimensions into descriptors."""

    vector = np.asarray(list(psi), dtype=np.float32).reshape(-1)
    if vector.size == 0:
        return []

    k = min(top_k, vector.size)
    magnitudes = np.abs(vector)
    top_indices = magnitudes.argsort()[::-1][:k]
    summary: list[str] = []
    for index in top_indices.tolist():
        descriptor = _INTENT_VOCAB[index % len(_INTENT_VOCAB)]
        direction = "elevated" if vector[index] >= 0 else "attenuated"
        summary.append(f"{descriptor} ({direction}, |ψ|={magnitudes[index]:.2f})")
    return summary


@dataclass(frozen=True)
class _DecodingParams:
    beam_size: int = 6
    temperature: float = 0.8
    top_p: float = 0.9
    max_new_tokens: int = 1024
    min_new_tokens: int = 16  # Minimum tokens before allowing EOS
    stop_quality: float = 0.6

    @classmethod
    def from_payload(cls, payload: Mapping[str, Any]) -> "_DecodingParams":
        source: Mapping[str, Any] | None = None
        if "decoding" in payload and isinstance(payload["decoding"], Mapping):
            source = payload["decoding"]
        elif "parameters" in payload and isinstance(payload["parameters"], Mapping):
            candidate = payload["parameters"].get("decoding")
            if isinstance(candidate, Mapping):
                source = candidate

        if not source:
            return cls()

        kwargs: dict[str, Any] = {}
        for field in cls.__dataclass_fields__.keys():  # type: ignore[attr-defined]
            if field in source:
                try:
                    kwargs[field] = type(getattr(cls(), field))(source[field])
                except (TypeError, ValueError):
                    continue
        return cls(**kwargs)

    def to_dict(self) -> dict[str, Any]:
        return {field: getattr(self, field) for field in self.__dataclass_fields__.keys()}  # type: ignore[attr-defined]


@dataclass(frozen=True)
class _ModelIO:
    """Snapshot of ONNX input and output metadata."""

    inputs: tuple[Any, ...]
    outputs: tuple[Any, ...]


class EndpointHandler:
    """Callable endpoint used by Hugging Face to drive inference."""

    def __init__(self, path: str | None = None) -> None:
        self.model_dir = Path(path or Path(__file__).parent)
        self.session = self._load_session()
        self.io = self._capture_io()

        self.primary_input = self.io.inputs[0].name
        self.slow_input = self._find_input("slow_state")
        self.tokens_input = self._find_input("tokens")
        self._primary_dim = self._infer_primary_dim()
        self._text_encoder = _TextEncoder(self._primary_dim)
        self._tokenizer = _SimpleTokenizer()
        self._defaults = {}
        skip_inputs = {self.primary_input}
        if self.slow_input is not None:
            skip_inputs.add(self.slow_input)
        if self.tokens_input is not None:
            skip_inputs.add(self.tokens_input)
        for node in self.io.inputs:
            if node.name in skip_inputs:
                continue
            self._defaults[node.name] = self._zeros_like(node)
        if self.slow_input is not None:
            self._slow_fallback = self._zeros_like(self._input_map[self.slow_input])
        else:
            self._slow_fallback = None
        if self.tokens_input is not None:
            token_node = self._input_map[self.tokens_input]
            self._token_sequence_length = self._infer_sequence_length(token_node)
            self._token_dtype = self._dtype_for(token_node)
        else:
            self._token_sequence_length = 0
            self._token_dtype = np.int64

    def _load_session(self):
        """Load the ONNX session, tolerating alternate filenames."""

        ort = self._import_onnxruntime()
        preferred_names = ("model.onnx", "model_infer.onnx")
        for name in preferred_names:
            candidate = self.model_dir / name
            if candidate.exists():
                return ort.InferenceSession(str(candidate), providers=["CPUExecutionProvider"])

        available = sorted(str(p.name) for p in self.model_dir.glob("*.onnx"))
        if len(available) == 1:
            # Fall back to the lone ONNX artefact if it has a non-standard name.
            return ort.InferenceSession(str(self.model_dir / available[0]), providers=["CPUExecutionProvider"])

        choices = ", ".join(available) or "<none>"
        raise FileNotFoundError(
            "Could not locate any of %s in %s (available: %s)"
            % (", ".join(preferred_names), self.model_dir, choices)
        )

    @staticmethod
    def _import_onnxruntime():
        """Import :mod:`onnxruntime`, providing a helpful error if unavailable."""

        spec = importlib.util.find_spec("onnxruntime")
        if spec is None:
            raise ModuleNotFoundError(
                "onnxruntime is required to load Noesis decoder ONNX graphs. "
                "Install it with 'pip install onnxruntime'."
            )
        return importlib.import_module("onnxruntime")

    @property
    def _input_map(self) -> Mapping[str, Any]:
        return {node.name: node for node in self.io.inputs}

    def _capture_io(self) -> _ModelIO:
        return _ModelIO(inputs=tuple(self.session.get_inputs()), outputs=tuple(self.session.get_outputs()))

    def _find_input(self, target: str) -> Optional[str]:
        target = target.lower()
        for node in self.io.inputs:
            if node.name.lower() == target:
                return node.name
        return None

    def _infer_primary_dim(self) -> int:
        node = self._input_map[self.primary_input]
        for dim in reversed(node.shape):
            if isinstance(dim, int) and dim > 0:
                return dim
        # Conservative default matching TextEncoder256.
        return 256

    def _infer_sequence_length(self, node: Any) -> int:
        for dim in reversed(getattr(node, "shape", [])):
            if isinstance(dim, int) and dim > 0:
                return dim
        return 1

    @staticmethod
    def _onnx_type_to_numpy(type_str: str | None) -> np.dtype:
        mapping = {
            "tensor(float)": np.float32,
            "tensor(float16)": np.float16,
            "tensor(double)": np.float64,
            "tensor(int64)": np.int64,
            "tensor(int32)": np.int32,
            "tensor(int16)": np.int16,
            "tensor(int8)": np.int8,
            "tensor(uint8)": np.uint8,
            "tensor(bool)": np.bool_,
        }
        return mapping.get(type_str, np.float32)

    def _dtype_for(self, node: Any) -> np.dtype:
        return self._onnx_type_to_numpy(getattr(node, "type", None))

    def _zeros_like(self, node: Any) -> np.ndarray:
        shape: list[int] = []
        for dim in node.shape:
            if isinstance(dim, int) and dim > 0:
                shape.append(dim)
            else:
                shape.append(1)
        dtype = self._dtype_for(node)
        return np.zeros(shape, dtype=dtype)

    def _coerce_array(self, value: Any, *, node: Any, allow_empty: bool = False) -> np.ndarray:
        dtype = self._dtype_for(node)
        array = np.asarray(value, dtype=dtype)
        if array.size == 0 and not allow_empty:
            raise ValueError("Received an empty array; provide at least one value.")
        if array.ndim == 1:
            array = np.expand_dims(array, axis=0)
        elif array.ndim > 2:
            raise ValueError("Expected a 1D or batched 2D array; received shape %s" % (array.shape,))
        if array.dtype != dtype:
            array = array.astype(dtype, copy=False)
        return array

    def _prepare_inputs(self, payload: Mapping[str, Any]) -> MutableMapping[str, np.ndarray]:
        psi = payload.get("psi")
        if psi is None:
            psi = (
                payload.get("vector")
                or payload.get("psi_s")
                or payload.get("inputs")
                or payload.get("prompt")
                or payload.get("text")
            )
        if psi is None:
            raise KeyError("Payload must include a 'psi' field containing the symbolic vector.")

        primary_node = self._input_map[self.primary_input]
        inputs: MutableMapping[str, np.ndarray] = {
            self.primary_input: self._vector_from_payload(psi, node=primary_node)
        }

        if self.slow_input is not None:
            slow_value = payload.get("slow_state") or payload.get("slow") or payload.get("state")
            if slow_value is None:
                inputs[self.slow_input] = self._slow_fallback.copy()
            else:
                inputs[self.slow_input] = self._coerce_array(
                    slow_value,
                    node=self._input_map[self.slow_input],
                    allow_empty=True,
                )

        for name, default in self._defaults.items():
            inputs[name] = default.copy()

        return inputs

    def _vector_from_payload(self, value: Any, *, node: Any) -> np.ndarray:
        if isinstance(value, str):
            encoded = self._text_encoder.encode(value)
            return self._coerce_array(encoded, node=node)

        if isinstance(value, (list, tuple)) and value and all(isinstance(v, str) for v in value):
            encoded = self._text_encoder.encode(" ".join(value))
            return self._coerce_array(encoded, node=node)

        return self._coerce_array(value, node=node)

    @staticmethod
    def _candidate_seed(psi: np.ndarray) -> int:
        digest = hashlib.sha1(psi.tobytes()).digest()
        return int.from_bytes(digest[:4], "little", signed=False)

    def _token_array_from_ids(self, token_ids: Sequence[int]) -> np.ndarray:
        ids = list(token_ids)
        if self._token_sequence_length <= 0:
            return np.asarray([ids], dtype=self._token_dtype)

        padded = np.full(
            (1, self._token_sequence_length),
            fill_value=self._tokenizer.pad_token_id,
            dtype=self._token_dtype,
        )
        length = min(len(ids), self._token_sequence_length)
        if length > 0:
            padded[0, :length] = np.asarray(ids[:length], dtype=self._token_dtype)
        return padded

    def _run_candidate(self, base_feed: Mapping[str, np.ndarray], tokens: Sequence[int]) -> list[tuple[Any, np.ndarray]]:
        feed = {
            name: (value.copy() if isinstance(value, np.ndarray) else value)
            for name, value in base_feed.items()
        }
        if self.tokens_input is not None:
            feed[self.tokens_input] = self._token_array_from_ids(tokens)
        outputs = self.session.run(None, feed)
        return list(zip(self.io.outputs, outputs))

    @staticmethod
    def _extract_logits(outputs: Sequence[tuple[Any, np.ndarray]]) -> Optional[np.ndarray]:
        for node, value in outputs:
            if getattr(node, "name", "").lower() == "logits":
                return np.asarray(value, dtype=np.float32)
        if outputs:
            return np.asarray(outputs[0][1], dtype=np.float32)
        return None

    @staticmethod
    def _sample_next_token(
        logits: np.ndarray,
        decoding: _DecodingParams,
        rng: np.random.Generator,
    ) -> int:
        vector = np.asarray(logits, dtype=np.float64).reshape(-1)
        temperature = max(float(decoding.temperature), 1e-5)
        top_p = float(decoding.top_p)

        if temperature <= 1e-5 or not np.isfinite(vector).any():
            return int(int(np.argmax(vector)))

        stabilized = vector / temperature
        stabilized -= np.max(stabilized)
        probs = np.exp(stabilized)
        probs = np.nan_to_num(probs, nan=0.0, posinf=0.0, neginf=0.0)
        total = probs.sum()
        if total <= 0.0:
            return int(np.argmax(vector))
        probs /= total

        if top_p <= 0.0:
            return int(np.argmax(probs))

        if 0.0 < top_p < 1.0:
            sorted_indices = np.argsort(-probs)
            sorted_probs = probs[sorted_indices]
            cumulative = np.cumsum(sorted_probs)
            mask = cumulative <= top_p
            if mask.size > 0:
                mask[0] = True
            filtered_indices = sorted_indices[mask]
            filtered_probs = sorted_probs[mask]
            filtered_total = filtered_probs.sum()
            if filtered_total <= 0.0:
                filtered_indices = sorted_indices
                filtered_probs = sorted_probs
                filtered_total = filtered_probs.sum()
            filtered_probs = filtered_probs / filtered_total
            choice = rng.choice(len(filtered_indices), p=filtered_probs)
            return int(filtered_indices[int(choice)])

        choice = rng.choice(len(probs), p=probs)
        return int(choice)

    def _generate_sequence(
        self,
        base_feed: Mapping[str, np.ndarray],
        *,
        decoding: _DecodingParams,
        seed: int,
    ) -> Optional[Tuple[str, list[int], float, list[tuple[Any, np.ndarray]], int]]:
        if self.tokens_input is None:
            return None

        rng = np.random.default_rng(seed)
        token_ids: list[int] = [self._tokenizer.bos_token_id]
        quality = float("-inf")
        formatted_outputs: list[tuple[Any, np.ndarray]] | None = None
        steps = 0

        max_steps = max(decoding.max_new_tokens, 1)
        for _ in range(max_steps):
            outputs = self._run_candidate(base_feed, token_ids)
            logits = self._extract_logits(outputs)
            if logits is None:
                break
            last_index = min(len(token_ids) - 1, logits.shape[1] - 1)
            next_logits = logits[0, last_index].copy()

            # Apply strong penalty to EOS token if we haven't reached min_new_tokens
            # This reduces the probability of generating EOS prematurely
            if steps < decoding.min_new_tokens:
                next_logits[self._tokenizer.eos_token_id] -= 10.0

            next_token = self._sample_next_token(next_logits, decoding, rng)
            token_ids.append(int(next_token))
            steps += 1

            # Check if we generated EOS prematurely and replace with space
            if token_ids[-1] == self._tokenizer.eos_token_id and steps < decoding.min_new_tokens:
                # Find space token ID (fallback to 'a' if space not found)
                space_token_id = self._tokenizer._token_to_id.get(" ", self._tokenizer._token_to_id.get("a", self._tokenizer.unk_token_id))
                token_ids[-1] = space_token_id
                # Note: In production, add logging here to track how often this happens

            outputs = self._run_candidate(base_feed, token_ids)
            formatted_outputs = outputs
            quality = self._extract_q_hat(outputs)

            # Only allow EOS break if we've generated at least min_new_tokens (excluding BOS)
            if token_ids[-1] == self._tokenizer.eos_token_id and steps >= decoding.min_new_tokens:
                break
            if self._token_sequence_length > 0 and len(token_ids) >= self._token_sequence_length:
                break

        if formatted_outputs is None:
            return None

        text = self._tokenizer.decode(token_ids)
        return text, token_ids, float(quality), formatted_outputs, steps

    @staticmethod
    def _extract_q_hat(outputs: Sequence[tuple[Any, np.ndarray]]) -> float:
        for node, value in outputs:
            if getattr(node, "name", "").lower() == "q_hat":
                return float(np.squeeze(np.asarray(value, dtype=np.float32)))
        # Fallback if the node name differs slightly.
        for node, value in outputs:
            if "q" in getattr(node, "name", "").lower():
                return float(np.squeeze(np.asarray(value, dtype=np.float32)))
        return float("-inf")

    @staticmethod
    def _format_output(name: str, value: np.ndarray) -> Any:
        value = np.asarray(value, dtype=np.float32)
        value = np.nan_to_num(value, nan=0.0, posinf=0.0, neginf=0.0)
        squeezed = np.squeeze(value)
        if squeezed.ndim == 0:
            return float(squeezed)
        return squeezed.tolist()

    def __call__(self, data: Mapping[str, Any]) -> Mapping[str, Any]:
        payload = data.get("inputs", data)
        if not isinstance(payload, Mapping):
            payload = {"psi": payload}

        feed = self._prepare_inputs(payload)
        psi_vector = np.asarray(feed[self.primary_input], dtype=np.float32).reshape(-1)
        state_constraints = payload.get("constraints")
        if not isinstance(state_constraints, Mapping):
            state_constraints = None
        decoding = _DecodingParams.from_payload(payload)
        system_prompt = payload.get("system_prompt")
        user_prompt = payload.get("user_prompt")

        descriptors = _summarise_intent(psi_vector)
        summary = ", ".join(descriptors) if descriptors else "balanced intent"

        best_candidate: Optional[Tuple[str, list[int], float, list[tuple[Any, np.ndarray]], int]] = None
        seeds: list[int] = []

        if self.tokens_input is not None:
            beams = max(decoding.beam_size, 1)
            base_seed = self._candidate_seed(psi_vector)
            for beam_idx in range(beams):
                seed = base_seed + beam_idx
                seeds.append(seed)
                candidate = self._generate_sequence(
                    feed,
                    decoding=decoding,
                    seed=seed,
                )
                if candidate is None:
                    continue
                text, token_ids, quality, outputs, steps = candidate
                if (
                    best_candidate is None
                    or quality > best_candidate[2]
                ):
                    best_candidate = candidate
                if quality >= decoding.stop_quality:
                    break

        if best_candidate is None:
            outputs = self.session.run(None, feed)
            formatted_outputs = list(zip(self.io.outputs, outputs))
            quality = self._extract_q_hat(formatted_outputs)
            text = f"Symbolic synopsis → {summary}."
            token_ids: list[int] = []
            steps = 0
        else:
            text, token_ids, quality, formatted_outputs, steps = best_candidate

        formatted = {
            node.name: self._format_output(node.name, value)
            for node, value in formatted_outputs
        }

        if not np.isfinite(quality):
            quality = 0.0
        quality = float(quality)

        metadata = {
            "summary": summary,
            "descriptors": descriptors,
            "constraints": state_constraints or {},
            "decoding": decoding.to_dict(),
            "seeds": seeds,
            "steps": steps,
            "system_prompt": system_prompt if isinstance(system_prompt, str) else None,
            "user_prompt": user_prompt if isinstance(user_prompt, str) else None,
        }

        response = {
            "text": text,
            "tokens": token_ids,
            "quality": quality,
            "q_hat": quality,
            "provider": _DEFAULT_PROVIDER,
            "model": _DEFAULT_MODEL,
            "metadata": metadata,
        }
        response.update(formatted)
        return response


__all__ = ["EndpointHandler"]