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from __future__ import annotations

import asyncio
import json
from pathlib import Path

import numpy as np
from fastapi import HTTPException, WebSocket
from fastapi.responses import HTMLResponse, JSONResponse
from fastapi.staticfiles import StaticFiles

from openenv.core.env_server.http_server import create_app

from env.environment import OrigamiEnvironment
from openenv_runtime.environment import OpenEnvOrigamiEnvironment
from openenv_runtime.models import OrigamiAction, OrigamiObservation
from server.training_broadcast import TrainingBroadcastServer


# ---------------------------------------------------------------------------
# Numpy-safe JSON response
# ---------------------------------------------------------------------------

def _np_default(obj):
    if isinstance(obj, np.bool_):
        return bool(obj)
    if isinstance(obj, np.integer):
        return int(obj)
    if isinstance(obj, np.floating):
        return float(obj)
    if isinstance(obj, np.ndarray):
        return obj.tolist()
    raise TypeError(f"Not serializable: {type(obj)}")


class NumpyJSONResponse(JSONResponse):
    def render(self, content) -> bytes:
        return json.dumps(content, default=_np_default).encode("utf-8")


# ---------------------------------------------------------------------------
# Episode registry for replay
# ---------------------------------------------------------------------------

_episode_registry: dict[str, dict] = {}


# ---------------------------------------------------------------------------
# OpenEnv app + training broadcast server
# ---------------------------------------------------------------------------

app = create_app(
    env=lambda: OpenEnvOrigamiEnvironment(mode="step"),
    action_cls=OrigamiAction,
    observation_cls=OrigamiObservation,
    env_name="optigami",
)

broadcast = TrainingBroadcastServer()


def _ensure_broadcast_loop():
    """Set broadcast loop on first use (replaces deprecated on_event('startup'))."""
    if broadcast._loop is None or broadcast._loop.is_closed():
        try:
            broadcast._loop = asyncio.get_running_loop()
        except RuntimeError:
            pass


@app.middleware("http")
async def _set_broadcast_loop(request, call_next):
    """Ensure broadcast has event loop before handling requests."""
    _ensure_broadcast_loop()
    return await call_next(request)


# ---------------------------------------------------------------------------
# Health endpoint
# ---------------------------------------------------------------------------

@app.get("/health", include_in_schema=True)
async def health():
    return {"status": "ok"}


# ---------------------------------------------------------------------------
# Episode replay endpoint
# ---------------------------------------------------------------------------

@app.get("/episode/replay/{ep_id}", include_in_schema=True, response_class=NumpyJSONResponse)
async def replay_episode(ep_id: str):
    if ep_id not in _episode_registry:
        raise HTTPException(status_code=404, detail="Episode not found")
    return NumpyJSONResponse(_episode_registry[ep_id])


# ---------------------------------------------------------------------------
# Training grid viewer WebSocket
# ---------------------------------------------------------------------------

@app.websocket("/ws/training")
async def training_ws(websocket: WebSocket):
    """Read-only spectator WebSocket for the training grid viewer."""
    _ensure_broadcast_loop()
    await broadcast.connect_spectator(websocket)


# ---------------------------------------------------------------------------
# Helper: extract crease folds from .fold target
# ---------------------------------------------------------------------------

def _target_to_folds(target: dict) -> list[dict]:
    """Extract crease folds from a target .fold dict (edges with M or V)."""
    verts = target.get("vertices_coords", [])
    edges_v = target.get("edges_vertices", [])
    edges_a = target.get("edges_assignment", [])
    folds = []
    for (v1, v2), ass in zip(edges_v, edges_a):
        if ass in ("M", "V") and v1 < len(verts) and v2 < len(verts):
            p1 = verts[v1]
            p2 = verts[v2]
            folds.append({"from": p1, "to": p2, "assignment": ass})
    return folds


def _graph_state_to_fold(paper_dict: dict) -> dict:
    """Convert internal graph state dict to FOLD-format arrays for the frontend.

    Input format (from env.state()['paper']):
        vertices: {id: (x, y), ...}
        edges: {id: (v1_id, v2_id, assignment), ...}  (only M/V)

    Output format (FOLD):
        vertices_coords: [[x, y, 0], ...]
        edges_vertices: [[i, j], ...]
        edges_assignment: ['M'|'V'|'B', ...]
        faces_vertices: [[i, j, k], ...]  (Delaunay triangulation for 3D)
    """
    raw_verts = paper_dict.get("vertices", {})
    raw_edges = paper_dict.get("edges", {})

    if not raw_verts:
        return {}

    sorted_ids = sorted(raw_verts.keys(), key=lambda k: int(k) if isinstance(k, (int, str)) else k)
    id_to_idx = {vid: idx for idx, vid in enumerate(sorted_ids)}

    vertices_coords = []
    for vid in sorted_ids:
        xy = raw_verts[vid]
        vertices_coords.append([float(xy[0]), float(xy[1]), 0.0])

    edges_vertices = []
    edges_assignment = []
    for eid in sorted(raw_edges.keys(), key=lambda k: int(k) if isinstance(k, (int, str)) else k):
        v1_id, v2_id, asgn = raw_edges[eid]
        if v1_id in id_to_idx and v2_id in id_to_idx:
            edges_vertices.append([id_to_idx[v1_id], id_to_idx[v2_id]])
            edges_assignment.append(asgn)

    faces_vertices = _triangulate_vertices(vertices_coords)
    return {
        "vertices_coords": vertices_coords,
        "edges_vertices": edges_vertices,
        "edges_assignment": edges_assignment,
        "faces_vertices": faces_vertices,
    }


def _triangulate_vertices(vertices_coords: list) -> list:
    """Delaunay triangulate the 2D vertex set for 3D mesh rendering."""
    if len(vertices_coords) < 3:
        return []
    try:
        from scipy.spatial import Delaunay
        pts = np.array([[v[0], v[1]] for v in vertices_coords])
        tri = Delaunay(pts)
        return tri.simplices.tolist()
    except Exception:
        return [[0, 1, 2], [0, 2, 3]] if len(vertices_coords) >= 4 else []


# ---------------------------------------------------------------------------
# API routes — must be registered BEFORE the StaticFiles catch-all mount
# ---------------------------------------------------------------------------

@app.get("/targets", include_in_schema=True, response_class=NumpyJSONResponse)
def get_targets():
    """Return available target names and metadata from env/targets/*.fold."""
    env = OrigamiEnvironment()
    names = env.available_targets()
    result: dict[str, dict] = {}
    for name in names:
        target = env._targets.get(name, {})
        result[name] = {
            "name": name,
            "level": target.get("level", 1),
            "description": target.get("description", ""),
            "n_creases": len([a for a in target.get("edges_assignment", []) if a in ("M", "V")]),
            "difficulty": target.get("level", 1),
            "material": "paper",
        }
    return NumpyJSONResponse(result)


@app.get("/episode/demo", include_in_schema=True, response_class=NumpyJSONResponse)
def demo_episode(target: str = "half_horizontal"):
    """Return a pre-solved demo episode for the given .fold target."""
    env = OrigamiEnvironment(mode="step")
    targets = env.available_targets()
    if target not in targets:
        target = targets[0] if targets else "half_horizontal"

    t = env._targets.get(target, {})
    folds = _target_to_folds(t)

    obs_dict = env.reset(target_name=target)
    steps: list[dict] = []

    for i, fold_dict in enumerate(folds):
        obs_dict, reward, done, info = env.step(fold_dict)
        graph = env.paper.graph
        all_edges = {eid: (v1, v2, a) for eid, (v1, v2, a) in graph.edges.items()}
        fold_state = _graph_state_to_fold({
            "vertices": dict(graph.vertices),
            "edges": all_edges,
        })

        steps.append({
            "step": i + 1,
            "fold": fold_dict,
            "paper_state": fold_state,
            "metrics": reward if isinstance(reward, dict) else {"total": reward},
            "done": done,
        })
        if done:
            break

    return NumpyJSONResponse({
        "task_name": target,
        "task": {"name": target, "level": t.get("level", 1), "description": t.get("description", "")},
        "target_crease": t,
        "steps": steps,
        "final_metrics": steps[-1]["metrics"] if steps else {},
    })


# ---------------------------------------------------------------------------
# Static file serving — must come LAST so API routes take priority
# ---------------------------------------------------------------------------

_BUILD_DIR = Path(__file__).resolve().parent.parent / "build"

if _BUILD_DIR.exists():
    app.mount("/", StaticFiles(directory=str(_BUILD_DIR), html=True), name="renderer")
else:
    @app.get("/", include_in_schema=False)
    def missing_renderer_build() -> HTMLResponse:
        return HTMLResponse(
            """
            <html><body style="font-family: sans-serif; margin: 24px;">
            <h3>Renderer build not found</h3>
            <p>No <code>build/</code> directory is present in the container.</p>
            <p>OpenEnv API docs are available at <a href="/docs">/docs</a>.</p>
            </body></html>
            """,
            status_code=200,
        )