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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,
)
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