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"""
generation_task.py β€” Text generation quality evaluation tasks.

Top-level functions for ProcessPoolExecutor (spawn) compatibility:
  - eval_generation(device) -> dict
  - eval_repetition_grid(device) -> dict

Helper functions (also top-level, used internally):
  - top_p_filtering(logits, top_p, top_k)
  - generate_one(model, tokenizer, prompt, temperature, ...)
  - compute_ngram_rep(text, n)
"""
from __future__ import annotations

import logging
import os
import sys
import time
from pathlib import Path

import numpy as np
import torch
import torch.nn.functional as F

logger = logging.getLogger(__name__)

_PROJECT_ROOT = Path(__file__).resolve().parent.parent.parent
if str(_PROJECT_ROOT) not in sys.path:
    sys.path.insert(0, str(_PROJECT_ROOT))

_DEFAULT_CHECKPOINT = str(_PROJECT_ROOT / "checkpoints" / "korean_3b_fp8_run1" / "checkpoint-0057000")
CHECKPOINT = os.environ.get("EVAL_CHECKPOINT", _DEFAULT_CHECKPOINT)
TOKENIZER_PATH = os.environ.get("EVAL_TOKENIZER", str(_PROJECT_ROOT / "tokenizer" / "korean_sp" / "tokenizer.json"))

# Chat template support for SFT models
USE_CHAT_TEMPLATE = os.environ.get("USE_CHAT_TEMPLATE", "0") == "1"
CHAT_TEMPLATE_FMT = "<|user|>\n{prompt}\n<|assistant|>\n"
DATA_DIR = _PROJECT_ROOT / "data"
SEQ_LEN = 2048
STRIDE = 512
BATCH_SIZE = 32

# ---------------------------------------------------------------------------
# Prompt / temperature constants
# ---------------------------------------------------------------------------

PROMPTS = [
    "λŒ€ν•œλ―Όκ΅­μ˜ μˆ˜λ„λŠ”",
    "인곡지λŠ₯μ΄λž€",
    "ν•œκ΅­μ˜ 전톡 μŒμ‹ μ€‘μ—μ„œ",
    "지ꡬ μ˜¨λ‚œν™”μ˜ μ£Όμš” 원인은",
    "ν”„λ‘œκ·Έλž˜λ°μ„ 배우렀면",
    "μ‘°μ„ μ‹œλŒ€μ—λŠ”",
    "λ¬Όλ¦¬ν•™μ—μ„œ μ—λ„ˆμ§€λž€",
    "ν•œκ΅­μ–΄λŠ” μ„Έκ³„μ—μ„œ",
    "경제 μ„±μž₯을 μœ„ν•΄μ„œλŠ”",
    "우주 νƒμ‚¬μ˜ 역사λ₯Ό 보면",
    "λ¨Έμ‹ λŸ¬λ‹κ³Ό λ”₯λŸ¬λ‹μ˜ μ°¨μ΄λŠ”",
    "ν•œκ΅­ λ¬Έν•™μ˜ λŒ€ν‘œμ μΈ μž‘ν’ˆμœΌλ‘œλŠ”",
    "μ–‘μž μ»΄ν“¨ν„°λž€",
    "κ±΄κ°•ν•œ μ‹μŠ΅κ΄€μ„ μœ„ν•΄μ„œλŠ”",
    "세계 2μ°¨ λŒ€μ „ 이후",
]

TEMPERATURES = [0.0, 0.5, 0.8, 1.0]

REP_GRID = [
    {"name": "greedy",       "temperature": 0.0, "repetition_penalty": 1.0},
    {"name": "t0.5",         "temperature": 0.5, "repetition_penalty": 1.0},
    {"name": "t0.5_rep1.1",  "temperature": 0.5, "repetition_penalty": 1.1},
    {"name": "t0.7",         "temperature": 0.7, "repetition_penalty": 1.0},
    {"name": "t0.7_rep1.1",  "temperature": 0.7, "repetition_penalty": 1.1},
    {"name": "t0.7_rep1.2",  "temperature": 0.7, "repetition_penalty": 1.2},
    {"name": "t0.7_rep1.3",  "temperature": 0.7, "repetition_penalty": 1.3},
    {"name": "t0.9",         "temperature": 0.9, "repetition_penalty": 1.0},
    {"name": "t0.9_rep1.1",  "temperature": 0.9, "repetition_penalty": 1.1},
    {"name": "t0.9_rep1.2",  "temperature": 0.9, "repetition_penalty": 1.2},
    {"name": "t1.0",         "temperature": 1.0, "repetition_penalty": 1.0},
    {"name": "t1.0_rep1.1",  "temperature": 1.0, "repetition_penalty": 1.1},
]


# ---------------------------------------------------------------------------
# Shared model utilities
# ---------------------------------------------------------------------------

def _load_model(device: str):
    """Load FRANKENSTALLM 3B from checkpoint onto the given device."""
    from model.transformer import LLM  # type: ignore[import]

    model = LLM.from_pretrained(CHECKPOINT)
    model = model.to(device=device, dtype=torch.bfloat16)
    model.eval()
    return model


def _load_tokenizer():
    """Load the Korean SentencePiece tokenizer."""
    from tokenizers import Tokenizer  # type: ignore[import]

    return Tokenizer.from_file(TOKENIZER_PATH)


# ---------------------------------------------------------------------------
# Generation helpers (top-level for pickle compatibility)
# ---------------------------------------------------------------------------

def top_p_filtering(logits: torch.Tensor, top_p: float = 0.9, top_k: int = 0) -> torch.Tensor:
    """Apply top-p (nucleus) and/or top-k filtering to a logits tensor.

    Args:
        logits: Shape (..., vocab_size).
        top_p:  Nucleus probability threshold in (0, 1). 0 or 1 disables.
        top_k:  Keep only the top-k tokens. 0 disables.

    Returns:
        Filtered logits tensor of the same shape.
    """
    if logits.dim() == 1:
        logits = logits.unsqueeze(0)
        squeeze = True
    else:
        squeeze = False

    if top_k > 0:
        k = min(top_k, logits.size(-1))
        kth = torch.topk(logits, k, dim=-1).values[:, -1, None]
        logits = logits.masked_fill(logits < kth, float("-inf"))

    if 0.0 < top_p < 1.0:
        sorted_logits, sorted_idx = torch.sort(logits, dim=-1, descending=True)
        cum_probs = torch.cumsum(F.softmax(sorted_logits, dim=-1), dim=-1)
        remove = cum_probs - F.softmax(sorted_logits, dim=-1) >= top_p
        sorted_logits[remove] = float("-inf")
        logits = torch.zeros_like(logits).scatter_(-1, sorted_idx, sorted_logits)

    if squeeze:
        logits = logits.squeeze(0)
    return logits


def generate_one(
    model,
    tokenizer,
    prompt: str,
    temperature: float,
    top_p: float = 0.9,
    top_k: int = 50,
    max_new_tokens: int = 256,
    device: str = "cuda:0",
    repetition_penalty: float = 1.0,
) -> tuple[str, int, bool]:
    """Generate a single continuation for a prompt using the given model.

    Args:
        model:              Pre-loaded language model (eval mode).
        tokenizer:          Tokenizer with encode/decode methods.
        prompt:             Input prompt string.
        temperature:        Sampling temperature. 0.0 = greedy.
        top_p:              Nucleus filtering threshold.
        top_k:              Top-k filtering count.
        max_new_tokens:     Maximum number of tokens to generate.
        device:             CUDA device string.
        repetition_penalty: Penalty > 1.0 discourages token repetition.

    Returns:
        Tuple of (generated_text, num_new_tokens, hit_eos).
    """
    input_ids = torch.tensor(
        [tokenizer.encode(prompt).ids], dtype=torch.long, device=device
    )
    eos_id = tokenizer.token_to_id("</s>")
    generated = input_ids
    new_ids: list[int] = []
    hit_eos = False

    for _ in range(max_new_tokens):
        logits_all, _ = model(generated)
        logits = logits_all[:, -1, :].clone()

        if repetition_penalty != 1.0:
            for tid in set(generated[0].tolist()):
                if logits[0, tid] > 0:
                    logits[0, tid] /= repetition_penalty
                else:
                    logits[0, tid] *= repetition_penalty

        if temperature == 0.0:
            next_id = logits.argmax(dim=-1, keepdim=True)
        else:
            logits = logits / max(temperature, 1e-8)
            logits = top_p_filtering(logits, top_p=top_p, top_k=top_k)
            probs = F.softmax(logits, dim=-1)
            next_id = torch.multinomial(probs, num_samples=1)

        generated = torch.cat([generated, next_id], dim=-1)
        new_ids.append(next_id.item())

        if eos_id is not None and next_id.item() == eos_id:
            hit_eos = True
            break

    text = tokenizer.decode(new_ids)
    return text, len(new_ids), hit_eos


def compute_ngram_rep(text: str, n: int) -> float:
    """Compute n-gram repetition rate for a whitespace-tokenized string.

    Repetition rate = 1 - (unique n-grams / total n-grams).
    A value of 0 means no repeated n-grams; 1 means all n-grams are repeated.

    Args:
        text: Input text (whitespace-tokenized).
        n:    N-gram order (1, 2, 3, 4, ...).

    Returns:
        Float in [0, 1].
    """
    tokens = text.split()
    if len(tokens) < n:
        return 0.0
    ngrams = [tuple(tokens[i : i + n]) for i in range(len(tokens) - n + 1)]
    if not ngrams:
        return 0.0
    return 1.0 - len(set(ngrams)) / len(ngrams)


def compute_diversity_metrics(text: str) -> dict:
    """N-gram 반볡λ₯ μ„ λ³΄μ™„ν•˜λŠ” μ–΄νœ˜ λ‹€μ–‘μ„± λ©”νŠΈλ¦­.

    - Distinct-n (Li et al., 2016): 고유 n-gram λΉ„μœ¨
    - Type-Token Ratio: μ–΄νœ˜ 풍뢀도
    """
    tokens = text.split()
    n = len(tokens)
    if n == 0:
        return {"distinct_1": 0.0, "distinct_2": 0.0, "distinct_3": 0.0,
                "type_token_ratio": 0.0, "vocab_size": 0, "total_tokens": 0}

    unigrams = set(tokens)
    bigrams = set(zip(tokens, tokens[1:])) if n > 1 else set()
    trigrams = set(zip(tokens, tokens[1:], tokens[2:])) if n > 2 else set()

    return {
        "distinct_1": len(unigrams) / n,
        "distinct_2": len(bigrams) / max(n - 1, 1),
        "distinct_3": len(trigrams) / max(n - 2, 1),
        "type_token_ratio": len(unigrams) / n,
        "vocab_size": len(unigrams),
        "total_tokens": n,
    }


# ---------------------------------------------------------------------------
# Main task functions (must be top-level for pickle / spawn compatibility)
# ---------------------------------------------------------------------------

def eval_generation(device: str) -> dict:
    """Evaluate generation quality: 15 prompts x 4 temperatures.

    For each (prompt, temperature) combination:
      - Generates up to 256 new tokens
      - Computes 1-gram through 4-gram repetition rates

    Args:
        device: CUDA device string, e.g. "cuda:4".

    Returns:
        Dict with keys:
          - summary: aggregate statistics across all generations
          - samples: list of per-generation result dicts
    """
    torch.cuda.set_device(int(device.split(":")[-1]))
    print(f"[GEN {device}] Loading model...")
    model = _load_model(device)
    tokenizer = _load_tokenizer()
    t0 = time.time()

    results: list[dict] = []
    total_combinations = len(PROMPTS) * len(TEMPERATURES)
    done = 0

    if USE_CHAT_TEMPLATE:
        print(f"[GEN {device}] Chat template ENABLED", flush=True)

    for prompt in PROMPTS:
        effective_prompt = CHAT_TEMPLATE_FMT.format(prompt=prompt) if USE_CHAT_TEMPLATE else prompt
        for temp in TEMPERATURES:
            with torch.inference_mode():
                text, n_tokens, hit_eos = generate_one(
                    model, tokenizer, effective_prompt, temp, device=device
                )
            rep1 = compute_ngram_rep(text, 1)
            rep2 = compute_ngram_rep(text, 2)
            rep3 = compute_ngram_rep(text, 3)
            rep4 = compute_ngram_rep(text, 4)
            diversity = compute_diversity_metrics(text)

            entry = {
                "prompt": prompt,
                "chat_template": USE_CHAT_TEMPLATE,
                "effective_prompt": effective_prompt if USE_CHAT_TEMPLATE else prompt,
                "temperature": temp,
                "generated_tokens": n_tokens,
                "hit_eos": hit_eos,
                "1gram_rep": round(rep1, 4),
                "2gram_rep": round(rep2, 4),
                "3gram_rep": round(rep3, 4),
                "4gram_rep": round(rep4, 4),
                "distinct_1": round(diversity["distinct_1"], 4),
                "distinct_2": round(diversity["distinct_2"], 4),
                "distinct_3": round(diversity["distinct_3"], 4),
                "type_token_ratio": round(diversity["type_token_ratio"], 4),
                "text": text[:500],  # truncate for readability
            }
            results.append(entry)
            done += 1

            label = "greedy" if temp == 0.0 else f"t={temp}"
            print(
                f"[GEN {device}] ({done}/{total_combinations}) "
                f"{prompt[:15]}... ({label}): "
                f"{n_tokens}tok, 3gram_rep={rep3:.2%}, eos={hit_eos}"
            )

    elapsed = time.time() - t0

    # Aggregate stats per temperature group
    greedy = [r for r in results if r["temperature"] == 0.0]
    sampled = [r for r in results if r["temperature"] > 0.0]

    if not greedy:
        logger.warning("No greedy generation results β€” all prompts may have failed")
    if not sampled:
        logger.warning("No sampled generation results")

    summary = {
        "total_generations": len(results),
        "n_prompts": len(PROMPTS),
        "temperatures": TEMPERATURES,
        "greedy_avg_1gram_rep": round(np.mean([r["1gram_rep"] for r in greedy]), 4) if greedy else 0.0,
        "greedy_avg_2gram_rep": round(np.mean([r["2gram_rep"] for r in greedy]), 4) if greedy else 0.0,
        "greedy_avg_3gram_rep": round(np.mean([r["3gram_rep"] for r in greedy]), 4) if greedy else 0.0,
        "greedy_avg_4gram_rep": round(np.mean([r["4gram_rep"] for r in greedy]), 4) if greedy else 0.0,
        "greedy_eos_rate": round(np.mean([r["hit_eos"] for r in greedy]), 4) if greedy else 0.0,
        "greedy_avg_tokens": round(np.mean([r["generated_tokens"] for r in greedy]), 1) if greedy else 0.0,
        "sampled_avg_3gram_rep": round(np.mean([r["3gram_rep"] for r in sampled]), 4) if sampled else 0.0,
        "sampled_eos_rate": round(np.mean([r["hit_eos"] for r in sampled]), 4) if sampled else 0.0,
        "sampled_avg_tokens": round(np.mean([r["generated_tokens"] for r in sampled]), 1) if sampled else 0.0,
        "greedy_avg_distinct_1": round(float(np.mean([r["distinct_1"] for r in greedy])), 4) if greedy else 0.0,
        "greedy_avg_distinct_2": round(float(np.mean([r["distinct_2"] for r in greedy])), 4) if greedy else 0.0,
        "greedy_avg_distinct_3": round(float(np.mean([r["distinct_3"] for r in greedy])), 4) if greedy else 0.0,
        "sampled_avg_distinct_2": round(float(np.mean([r["distinct_2"] for r in sampled])), 4) if sampled else 0.0,
        "token_count_min": int(np.min([r["generated_tokens"] for r in results])) if results else 0,
        "token_count_max": int(np.max([r["generated_tokens"] for r in results])) if results else 0,
        "token_count_p25": int(np.percentile([r["generated_tokens"] for r in results], 25)) if results else 0,
        "token_count_p75": int(np.percentile([r["generated_tokens"] for r in results], 75)) if results else 0,
        "elapsed_sec": round(elapsed, 1),
    }

    print(
        f"[GEN {device}] DONE greedy 3gram_rep={summary['greedy_avg_3gram_rep']:.4f}, "
        f"eos_rate={summary['greedy_eos_rate']:.2%}, {elapsed:.1f}s"
    )
    return {"summary": summary, "samples": results}


def eval_repetition_grid(device: str) -> dict:
    """Grid search over 12 generation parameter combinations x 5 prompts.

    Evaluates each config (temperature x repetition_penalty) on the first 5
    prompts and returns results sorted by average 3-gram repetition rate.

    Args:
        device: CUDA device string, e.g. "cuda:5".

    Returns:
        Dict with keys:
          - grid_results: list of per-config dicts, sorted by avg_3gram_rep
          - best: config with lowest avg_3gram_rep
          - elapsed_sec: wall-clock time
    """
    torch.cuda.set_device(int(device.split(":")[-1]))
    print(f"[REP {device}] Loading model...")
    model = _load_model(device)
    tokenizer = _load_tokenizer()
    t0 = time.time()

    rep_prompts = PROMPTS[:5]  # first 5 prompts
    results: list[dict] = []

    total = len(REP_GRID) * len(rep_prompts)
    done = 0

    if USE_CHAT_TEMPLATE:
        print(f"[REP {device}] Chat template ENABLED", flush=True)

    for params in REP_GRID:
        combo_results: list[dict] = []
        for prompt in rep_prompts:
            effective_prompt = CHAT_TEMPLATE_FMT.format(prompt=prompt) if USE_CHAT_TEMPLATE else prompt
            with torch.inference_mode():
                text, n_tokens, hit_eos = generate_one(
                    model,
                    tokenizer,
                    effective_prompt,
                    temperature=params["temperature"],
                    repetition_penalty=params["repetition_penalty"],
                    device=device,
                    max_new_tokens=256,
                )
            combo_results.append(
                {
                    "prompt": prompt,
                    "n_tokens": n_tokens,
                    "hit_eos": hit_eos,
                    "1gram_rep": compute_ngram_rep(text, 1),
                    "2gram_rep": compute_ngram_rep(text, 2),
                    "3gram_rep": compute_ngram_rep(text, 3),
                    "4gram_rep": compute_ngram_rep(text, 4),
                }
            )
            done += 1

        if not combo_results:
            logger.warning("All prompts failed for config %s β€” skipping", params.get("name", "unknown"))
            continue

        avg_3gram = float(np.mean([r["3gram_rep"] for r in combo_results]))
        avg_4gram = float(np.mean([r["4gram_rep"] for r in combo_results]))
        eos_rate = float(np.mean([r["hit_eos"] for r in combo_results]))
        avg_tokens = float(np.mean([r["n_tokens"] for r in combo_results]))

        entry = {
            "params": params["name"],
            "temperature": params["temperature"],
            "repetition_penalty": params["repetition_penalty"],
            "avg_3gram_rep": round(avg_3gram, 4),
            "avg_4gram_rep": round(avg_4gram, 4),
            "eos_rate": round(eos_rate, 4),
            "avg_tokens": round(avg_tokens, 1),
            "per_prompt": combo_results,
        }
        results.append(entry)
        print(
            f"[REP {device}] {params['name']}: "
            f"3gram={avg_3gram:.2%}, 4gram={avg_4gram:.2%}, "
            f"eos={eos_rate:.0%}, {avg_tokens:.0f}tok"
        )

    elapsed = time.time() - t0

    # Sort by avg 3-gram repetition (ascending = better)
    sorted_results = sorted(results, key=lambda r: r["avg_3gram_rep"])
    best = sorted_results[0]

    print(
        f"[REP {device}] DONE best={best['params']} "
        f"(3gram={best['avg_3gram_rep']:.2%}), {elapsed:.1f}s"
    )
    return {
        "grid_results": sorted_results,
        "best": {
            "params": best["params"],
            "temperature": best["temperature"],
            "repetition_penalty": best["repetition_penalty"],
            "avg_3gram_rep": best["avg_3gram_rep"],
            "avg_4gram_rep": best["avg_4gram_rep"],
        },
        "elapsed_sec": round(elapsed, 1),
    }