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#!/usr/bin/env python3
"""InferenceGym submission runner.

Expected environment variables for judged LLM path:
- API_BASE_URL
- MODEL_NAME
- HF_TOKEN
"""
from __future__ import annotations

import json
import os
import re
import sys
from typing import Any

from openai import OpenAI

sys.path.insert(0, os.path.dirname(os.path.abspath(__file__)))

from llmserve_env.models import ServeAction, default_action  # noqa: E402
from server.grader import GraderEngine  # noqa: E402
from server.llmserve_environment import LLMServeEnvironment  # noqa: E402


API_BASE_URL = os.getenv("API_BASE_URL", "https://router.huggingface.co/v1")
MODEL_NAME = os.getenv("MODEL_NAME", "Qwen/Qwen2.5-72B-Instruct")
HF_TOKEN = os.getenv("HF_TOKEN")
LOCAL_IMAGE_NAME = os.getenv("LOCAL_IMAGE_NAME")

DEFAULT_SEED = int(os.getenv("SEED", "42"))
MAX_STEPS = int(os.getenv("MAX_STEPS", "60"))
ENV_NAME = "InferenceGym"
TASKS = ["static_workload", "bursty_workload", "adversarial_multitenant"]

SYSTEM_PROMPT = (
    "You are controlling an LLM serving environment. "
    "Return exactly one JSON object with these keys: "
    "batch_cap (1..512), kv_budget_fraction (0.1..1.0), speculation_depth (0..8), "
    "quantization_tier (FP16|INT8|INT4), prefill_decode_split (bool), priority_routing (bool). "
    "Do not include markdown or extra text."
)


def _action_dict(action: ServeAction) -> dict[str, Any]:
    payload = action.model_dump(mode="json")
    payload.pop("metadata", None)
    return payload


def _create_fallback_agent(task_id: str):
    try:
        from agents.ppo_agent import PPOAgent, find_weights

        weights_path = find_weights(task_id)
        if weights_path:
            return PPOAgent(weights_path)
    except Exception:
        pass

    from server.baseline_agent import HeuristicPolicy

    return HeuristicPolicy()


def _create_client() -> OpenAI | None:
    if not HF_TOKEN:
        return None
    return OpenAI(api_key=HF_TOKEN, base_url=API_BASE_URL)


def _parse_action_payload(raw: str) -> dict[str, Any] | None:
    candidate = raw.strip()
    if candidate.startswith("```"):
        candidate = re.sub(r"^```(?:json)?\s*|\s*```$", "", candidate, flags=re.IGNORECASE | re.DOTALL).strip()
    start = candidate.find("{")
    end = candidate.rfind("}")
    if start != -1 and end != -1 and end > start:
        candidate = candidate[start : end + 1]
    try:
        parsed = json.loads(candidate)
    except json.JSONDecodeError:
        return None
    return parsed if isinstance(parsed, dict) else None


def _llm_action(client: OpenAI, task_id: str, observation: Any, previous_action: dict[str, Any] | None) -> ServeAction:
    user_payload = {
        "task_id": task_id,
        "observation": observation.model_dump(mode="json"),
        "previous_action": previous_action,
    }
    response = client.chat.completions.create(
        model=MODEL_NAME,
        temperature=0,
        messages=[
            {"role": "system", "content": SYSTEM_PROMPT},
            {"role": "user", "content": json.dumps(user_payload, separators=(",", ":"))},
        ],
        response_format={"type": "json_object"},
    )
    raw = response.choices[0].message.content or "{}"
    payload = _parse_action_payload(raw)
    if payload is None:
        return default_action()
    try:
        return ServeAction.model_validate(payload)
    except Exception:
        return default_action()


def _sanitize_error(error: Exception | str | None) -> str:
    if error is None:
        return "null"
    text = str(error).strip()
    if not text:
        return "null"
    return text.replace("\n", " ").replace("\r", " ")[:220]


def _log_start(task: str, env_name: str, model: str) -> None:
    print(f"[START] task={task} env={env_name} model={model}", flush=True)


def _log_step(step: int, action: str, reward: float, done: bool, error: str) -> None:
    print(
        f"[STEP] step={step} action={action} reward={reward:.2f} done={str(done).lower()} error={error}",
        flush=True,
    )


def _log_end(success: bool, steps: int, score: float, rewards: list[float]) -> None:
    rewards_str = ",".join(f"{reward:.2f}" for reward in rewards)
    print(
        f"[END] success={str(success).lower()} steps={steps} score={score:.3f} rewards={rewards_str}",
        flush=True,
    )


def _run_task(task_id: str, client: OpenAI | None) -> bool:
    model_label = MODEL_NAME if client is not None else "heuristic"
    _log_start(task=task_id, env_name=ENV_NAME, model=model_label)

    rewards: list[float] = []
    steps_taken = 0
    score = 0.0
    success = False
    previous_action: dict[str, Any] | None = None
    env: LLMServeEnvironment | None = None
    grader: GraderEngine | None = None
    fallback_agent: Any = None

    try:
        env = LLMServeEnvironment(seed=DEFAULT_SEED, mode="sim")
        grader = GraderEngine()
        fallback_agent = _create_fallback_agent(task_id)
        if hasattr(fallback_agent, "reset"):
            fallback_agent.reset()

        observation = env.reset(seed=DEFAULT_SEED, task_id=task_id)
        task_cfg = env.task_config or {}
        configured_max_steps = int(task_cfg.get("max_steps", MAX_STEPS))
        max_steps = min(configured_max_steps, MAX_STEPS)

        for step_idx in range(1, max_steps + 1):
            if client is not None:
                try:
                    action = _llm_action(client, task_id, observation, previous_action)
                except Exception as exc:
                    action = fallback_agent.act(observation, task_id)
            else:
                action = fallback_agent.act(observation, task_id)

            action_json = json.dumps(_action_dict(action), separators=(",", ":"))

            try:
                observation = env.step(action)
                reward = float(getattr(observation, "reward", 0.0) or 0.0)
                done = bool(getattr(observation, "done", False))
                rewards.append(reward)
                steps_taken = step_idx
                _log_step(step=step_idx, action=action_json, reward=reward, done=done, error="null")
                previous_action = _action_dict(action)
                if done:
                    break
            except Exception as exc:
                rewards.append(0.0)
                steps_taken = step_idx
                _log_step(step=step_idx, action=action_json, reward=0.0, done=True, error=_sanitize_error(exc))
                break

        grade = grader.grade(env.export_episode_log()) if grader is not None else {"score": 0.0}
        score = float(grade.get("score", 0.0))
        score = max(0.0, min(1.0, score))
        success = score > 0.0
    except Exception as exc:
        next_step = len(rewards) + 1
        rewards.append(0.0)
        steps_taken = next_step
        _log_step(step=next_step, action="{}", reward=0.0, done=True, error=_sanitize_error(exc))
        success = False
    finally:
        _log_end(success=success, steps=steps_taken, score=score, rewards=rewards)

    return success


def main() -> int:
    try:
        client = _create_client()
    except Exception as exc:
        print(f"[DEBUG] Failed to create LLM client: {exc}", flush=True)
        client = None

    for task_id in TASKS:
        try:
            _run_task(task_id=task_id, client=client)
        except Exception as exc:
            try:
                _log_start(task=task_id, env_name=ENV_NAME, model=MODEL_NAME if client is not None else "heuristic")
                _log_step(step=1, action="{}", reward=0.0, done=True, error=_sanitize_error(exc))
                _log_end(success=False, steps=1, score=0.0, rewards=[0.0])
            except Exception as log_exc:
                print(f"[DEBUG] Failed to log task failure: {log_exc}", flush=True)

    # The validator treats non-zero exits as infrastructure failures, so we always
    # return 0 after emitting structured episode logs for every task.
    return 0


if __name__ == "__main__":
    try:
        exit_code = main()
        raise SystemExit(exit_code)
    except Exception as exc:
        print(f"[ERROR] Unhandled exception in main: {exc}", flush=True)
        import traceback
        traceback.print_exc(file=sys.stdout)
        raise SystemExit(0)