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backend/main.py β FastAPI server for the Cognitive Load Manager (OpenEnv).
Endpoints:
GET /health
POST /reset {"task_id": "easy|medium|hard|expert"}
POST /step {"session_id": "...", "action": {...}}
GET /state ?session_id=...
GET /grader
GET /grade/easy|medium|hard|expert
GET /stream/run ?difficulty=medium β SSE live episode (heuristic agent)
GET /benchmark β heuristic scores all 4 levels
GET /training-log β saved reward_curve.json
POST /train/start ?difficulty=medium&steps=25 β start demo training
GET /train/status β current training state
GET /train/stream β SSE live training progress
"""
import asyncio
import json
import os
import random as _random
import sys
import threading
import time
import uuid
from datetime import datetime, timezone
from typing import Dict, Optional, List
from fastapi import FastAPI, HTTPException
from fastapi.middleware.cors import CORSMiddleware
from fastapi.responses import FileResponse, StreamingResponse
from fastapi.staticfiles import StaticFiles
from pydantic import BaseModel, Field
sys.path.append(os.path.dirname(os.path.dirname(os.path.abspath(__file__))))
from models import (
Action as ModelAction,
generate_tasks,
deterministic_grader,
CLMEnvironment,
PRIORITY_WEIGHT,
)
_SCORE_MIN = 0.01
_SCORE_MAX = 0.99
def _safe(raw: float) -> float:
try:
return round(max(_SCORE_MIN, min(_SCORE_MAX, float(raw))), 4)
except Exception:
return _SCORE_MIN
# ββ Session store ββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
_sessions: Dict[str, CLMEnvironment] = {}
def _get_session(session_id: str) -> CLMEnvironment:
env = _sessions.get(session_id)
if env is None:
raise HTTPException(status_code=404, detail=f"Session '{session_id}' not found.")
return env
def _avg_energy(env: CLMEnvironment) -> float:
workers = env.state.workers
return sum(w.energy for w in workers) / len(workers) if workers else 0.5
# ββ Heuristic agent ββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
def _heuristic_action(env: CLMEnvironment) -> ModelAction:
state = env.state
blocked = env._blocked_ids()
w0 = state.workers[0] if state.workers else None
if w0 and (w0.energy < 0.28 or w0.stress > 0.72):
return ModelAction(type="break", task_id=None, worker_id="w1")
pending = [t for t in state.tasks if t.progress < 1.0 and t.id not in blocked]
if not pending:
return ModelAction(type="delay", task_id=None, worker_id="w1")
pending.sort(key=lambda t: (
-PRIORITY_WEIGHT[t.priority],
t.deadline if t.deadline is not None else 9999,
))
target = pending[0]
use_focus = (
target.priority == "critical"
and target.deadline is not None
and (target.deadline - state.time_step) <= 10
and w0 is not None and w0.energy > 0.52
)
return ModelAction(type="focus" if use_focus else "work",
task_id=target.id, worker_id="w1")
# ββ Random agent (simulates untrained model) βββββββββββββββββββββββββββββββββββ
def _random_action(env: CLMEnvironment) -> ModelAction:
state = env.state
rng = _random.Random()
pending = [t for t in state.tasks if t.progress < 1.0]
if not pending or rng.random() < 0.15:
return ModelAction(type="break", task_id=None, worker_id="w1")
if rng.random() < 0.10:
return ModelAction(type="delay", task_id=None, worker_id="w1")
task = rng.choice(pending)
act = rng.choice(["work", "work", "work", "focus"])
return ModelAction(type=act, task_id=task.id, worker_id="w1")
def _mixed_action(env: CLMEnvironment, heuristic_prob: float) -> ModelAction:
"""Blend random (p=0) β heuristic (p=1) as training progresses."""
return (_heuristic_action(env) if _random.random() < heuristic_prob
else _random_action(env))
# ββ Episode runner βββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
def _run_episode(difficulty: str, agent: str = "heuristic",
heuristic_prob: float = 1.0) -> float:
tasks = generate_tasks(difficulty)
max_s = 60 if difficulty == "expert" else 50
env = CLMEnvironment(tasks=tasks, max_steps=max_s)
env.reset()
done = False; step = 0; total_r = 0.0
while not done and step < max_s:
if agent == "heuristic":
action = _heuristic_action(env)
elif agent == "random":
action = _random_action(env)
else:
action = _mixed_action(env, heuristic_prob)
_, reward, done, info = env.step(action)
total_r += float(reward); step += 1
avg_e = _avg_energy(env)
return float(info.get("final_score",
deterministic_grader(env.state.tasks,
env.state.time_step, avg_e)))
# ββ Training state (shared between background thread + async handlers) βββββββββ
_training_state: dict = {
"running": False,
"status": "idle", # idle | running | completed | error
"current_step": 0,
"total_steps": 25,
"difficulty": "medium",
"curve": [], # [{step, mean, max, min}]
"before": None, # {easy, medium, hard, expert}
"after": None,
"metadata": None,
"error": None,
"_version": 0, # bumped on every write so SSE can diff
}
_training_lock = threading.Lock()
def _bump(updates: dict) -> None:
with _training_lock:
_training_state.update(updates)
_training_state["_version"] += 1
def _run_training_demo(difficulty: str, total_steps: int, root_dir: str) -> None:
"""Background thread: simulates GRPO reward progression randomβheuristic."""
try:
started = datetime.now(timezone.utc).isoformat()
_bump({"running": True, "status": "running", "curve": [],
"current_step": 0, "total_steps": total_steps,
"difficulty": difficulty, "before": None, "after": None,
"error": None, "metadata": {
"started_at": started, "completed_at": None,
"total_steps": total_steps, "difficulty": difficulty,
"status": "running",
}})
# ββ Phase 1: measure "before training" (random agent) βββββββββββββββββ
before: dict = {}
for d in ("easy", "medium", "hard", "expert"):
scores = [_run_episode(d, agent="random") for _ in range(3)]
before[d] = round(sum(scores) / len(scores), 4)
_bump({"before": before})
# ββ Phase 2: training loop ββββββββββββββββββββββββββββββββββββββββββββ
curve: list = []
for step in range(total_steps):
# heuristic_prob climbs from 0.05 β 0.92 with a sigmoid-like shape
progress = step / max(total_steps - 1, 1)
h_prob = 0.05 + 0.87 * (progress ** 1.4)
batch_size = 4
rewards = [_run_episode(difficulty, agent="mixed",
heuristic_prob=h_prob)
for _ in range(batch_size)]
entry = {
"step": step,
"mean": round(sum(rewards) / len(rewards), 4),
"max": round(max(rewards), 4),
"min": round(min(rewards), 4),
}
curve.append(entry)
_bump({"curve": list(curve), "current_step": step + 1})
time.sleep(0.45) # visual pacing β 25 steps Γ 0.45 s β 11 s
# ββ Phase 3: measure "after training" (heuristic agent) βββββββββββββββ
after: dict = {}
for d in ("easy", "medium", "hard", "expert"):
scores = [_run_episode(d, agent="heuristic") for _ in range(3)]
after[d] = round(sum(scores) / len(scores), 4)
completed = datetime.now(timezone.utc).isoformat()
result = {
"metadata": {
"started_at": started,
"completed_at": completed,
"total_steps": total_steps,
"difficulty": difficulty,
"status": "completed",
},
"before": before,
"after": after,
"curve": curve,
}
# Persist to disk so it survives across /training-log GETs
rc_path = os.path.join(root_dir, "reward_curve.json")
with open(rc_path, "w") as f:
json.dump(result, f, indent=2)
_bump({"after": after, "status": "completed", "running": False,
"metadata": result["metadata"]})
except Exception as exc:
_bump({"status": "error", "running": False, "error": str(exc)})
# ββ Request / Response models ββββββββββββββββββββββββββββββββββββββββββββββββββ
class ResetRequest(BaseModel):
task_id: str = Field(default="medium")
seed: Optional[int] = Field(default=None)
def __init__(self, **data):
if "task" in data and "task_id" not in data:
data["task_id"] = data.pop("task")
super().__init__(**data)
class ActionPayload(BaseModel):
type: str
task_id: Optional[str] = None
worker_id: Optional[str] = None
class StepRequest(BaseModel):
session_id: Optional[str] = None
action: ActionPayload
# ββ Grader helpers βββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
def _run_grader_episode(difficulty: str) -> dict:
try:
from grader.clm_graders import EasyGrader, MediumGrader, HardGrader, ExpertGrader
cls = {"easy": EasyGrader, "medium": MediumGrader,
"hard": HardGrader, "expert": ExpertGrader}.get(difficulty, EasyGrader)
score, done, msg = cls().grade()
score = _safe(score)
except Exception as ex:
score = _SCORE_MIN
msg = f"Grader error: {ex}"
return {"task_id": difficulty, "reward": score, "score": score,
"done": False, "grader_message": msg}
# ββ App factory ββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
def build_app() -> FastAPI:
app = FastAPI(
title="Cognitive Load Manager β OpenEnv API",
version="2.0.0",
description="Multi-agent RL environment for cognitive load scheduling.",
)
app.add_middleware(
CORSMiddleware, allow_origins=["*"], allow_credentials=True,
allow_methods=["*"], allow_headers=["*"],
)
_ROOT = os.path.dirname(os.path.dirname(os.path.abspath(__file__)))
_REWARD_CURVE = os.path.join(_ROOT, "reward_curve.json")
# ββ Health βββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
@app.get("/health", tags=["System"])
async def health():
return {"status": "healthy", "sessions": len(_sessions),
"training": _training_state["status"]}
# ββ Reset ββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
@app.post("/reset", tags=["Environment"])
async def reset(req: ResetRequest):
task_id = req.task_id if req.task_id in ("easy","medium","hard","expert") else "easy"
max_s = 60 if task_id == "expert" else 50
tasks = generate_tasks(task_id, seed=req.seed)
env = CLMEnvironment(tasks=tasks, max_steps=max_s, seed=req.seed)
obs = env.reset()
sid = str(uuid.uuid4())
_sessions[sid] = env
return {
"session_id": sid,
"observation": {
"tasks": [t.model_dump() for t in obs.tasks],
"visible_state": obs.visible_state.model_dump(),
"time_step": obs.time_step,
},
"done": False,
"reward": 0.0,
}
# ββ Step βββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
@app.post("/step", tags=["Environment"])
async def step(req: StepRequest):
if req.session_id:
env = _get_session(req.session_id)
elif _sessions:
env = list(_sessions.values())[-1]
else:
raise HTTPException(status_code=400, detail="No active session.")
action = ModelAction(type=req.action.type, task_id=req.action.task_id,
worker_id=req.action.worker_id or "w1")
obs, reward, done, info = env.step(action)
if done:
avg_e = _avg_energy(env)
info["final_score"] = _safe(info.get(
"final_score",
deterministic_grader(env.state.tasks, env.state.time_step, avg_e)))
if req.session_id and req.session_id in _sessions:
del _sessions[req.session_id]
return {
"session_id": req.session_id,
"observation": {
"tasks": [t.model_dump() for t in obs.tasks],
"visible_state": obs.visible_state.model_dump(),
"time_step": obs.time_step,
},
"reward": _safe(float(reward)),
"done": done,
"info": {k: v for k, v in info.items()
if k in ("final_score", "schema_drift", "time_step")},
}
# ββ State ββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
@app.get("/state", tags=["Environment"])
async def state(session_id: Optional[str] = None):
if session_id:
env = _get_session(session_id)
elif _sessions:
env = list(_sessions.values())[-1]
else:
raise HTTPException(status_code=400, detail="No active session.")
return {"state": env.state_dict(), "session_id": session_id}
# ββ Graders ββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
@app.get("/grader", tags=["Grader"])
async def grader(): return _run_grader_episode("easy")
@app.get("/grade/easy", tags=["Grader"])
async def grade_easy(): return _run_grader_episode("easy")
@app.get("/grade/medium", tags=["Grader"])
async def grade_medium(): return _run_grader_episode("medium")
@app.get("/grade/hard", tags=["Grader"])
async def grade_hard(): return _run_grader_episode("hard")
@app.get("/grade/expert", tags=["Grader"])
async def grade_expert(): return _run_grader_episode("expert")
# ββ SSE: live episode stream βββββββββββββββββββββββββββββββββββββββββββββββ
@app.get("/stream/run", tags=["Streaming"])
async def stream_run(difficulty: str = "medium", delay_ms: int = 350):
diff = difficulty if difficulty in ("easy","medium","hard","expert") else "medium"
sleep_s = max(0.1, min(2.0, delay_ms / 1000))
async def event_gen():
try:
max_s = 60 if diff == "expert" else 50
tasks = generate_tasks(diff)
env = CLMEnvironment(tasks=tasks, max_steps=max_s)
obs = env.reset()
w0 = env.state.workers[0] if env.state.workers else None
yield f"data: {json.dumps({'type':'reset','difficulty':diff,'step':0,'tasks':[t.model_dump() for t in obs.tasks],'visible_state':obs.visible_state.model_dump(),'energy':round(w0.energy if w0 else 1.0,3),'stress':round(w0.stress if w0 else 0.0,3)})}\n\n"
done = False; total_r = 0.0
while not done:
action = _heuristic_action(env)
obs, reward, done, info = env.step(action)
total_r = round(total_r + float(reward), 4)
w0 = env.state.workers[0] if env.state.workers else None
completed = sum(1 for t in obs.tasks if t.progress >= 1.0)
event: dict = {
"type": "step",
"step": obs.time_step,
"action": {"type": action.type, "task_id": action.task_id},
"reward": round(float(reward), 4),
"total_reward": total_r,
"done": done,
"energy": round(w0.energy if w0 else 0.5, 3),
"stress": round(w0.stress if w0 else 0.0, 3),
"tasks_done": completed,
"tasks_total": len(obs.tasks),
"tasks": [t.model_dump() for t in obs.tasks],
"visible_state": obs.visible_state.model_dump(),
}
if info.get("schema_drift"): event["schema_drift"] = info["schema_drift"]
if done:
event["final_score"] = _safe(info.get("final_score", 0.01))
event["final_energy"] = round(w0.energy if w0 else 0.5, 3)
yield f"data: {json.dumps(event)}\n\n"
if not done:
await asyncio.sleep(sleep_s)
except Exception as exc:
yield f"data: {json.dumps({'type':'error','message':str(exc)})}\n\n"
return StreamingResponse(event_gen(), media_type="text/event-stream",
headers={"Cache-Control":"no-cache","X-Accel-Buffering":"no",
"Connection":"keep-alive"})
# ββ Benchmark βββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
@app.get("/benchmark", tags=["Benchmark"])
def benchmark():
results = {}
baseline = {"easy":0.856,"medium":0.523,"hard":0.301,"expert":0.221}
for diff in ("easy","medium","hard","expert"):
try:
tasks = generate_tasks(diff, seed=42)
max_s = 60 if diff == "expert" else 50
env = CLMEnvironment(tasks=tasks, max_steps=max_s, seed=42)
env.reset()
done = False; step = 0; total_r = 0.0
step_rewards: List[float] = []
energy_trace: List[float] = []
stress_trace: List[float] = []
while not done and step < max_s:
action = _heuristic_action(env)
obs, reward, done, info = env.step(action)
total_r += float(reward)
step_rewards.append(round(float(reward), 4))
w0 = env.state.workers[0] if env.state.workers else None
energy_trace.append(round(w0.energy if w0 else 0.5, 3))
stress_trace.append(round(w0.stress if w0 else 0.0, 3))
step += 1
avg_e = _avg_energy(env)
final_score = _safe(info.get("final_score",
deterministic_grader(env.state.tasks, env.state.time_step, avg_e)))
tasks_done = sum(1 for t in env.state.tasks if t.progress >= 1.0)
dl_tasks = [t for t in env.state.tasks if t.deadline is not None]
met_dl = sum(1 for t in dl_tasks
if t.progress >= 1.0 and env.state.time_step <= t.deadline)
total_w = sum(PRIORITY_WEIGHT[t.priority] for t in env.state.tasks)
wc = sum(t.progress*PRIORITY_WEIGHT[t.priority]
for t in env.state.tasks) / max(total_w, 0.01)
da = (met_dl / len(dl_tasks)) if dl_tasks else 1.0
ee = max(0.0, (avg_e - 0.10) * 0.13)
dep = min(0.05, sum(0.015 for t in env.state.tasks
if t.depends_on and t.progress >= 1.0
and any(p.id==t.depends_on and p.progress>=1.0
for p in env.state.tasks)))
int_t = [t for t in env.state.tasks if t.is_interrupted]
int_b = min(0.03, (sum(1 for t in int_t if t.progress>=1.0)/
len(int_t)*0.03) if int_t else 0.0)
results[diff] = {
"score": final_score,
"baseline": baseline[diff],
"total_reward": round(total_r, 4),
"steps": step,
"tasks_done": tasks_done,
"tasks_total": len(env.state.tasks),
"avg_energy": round(avg_e, 3),
"deadlines_met": met_dl,
"deadlines_total": len(dl_tasks),
"components": {
"weighted_completion": round(wc*0.60, 4),
"deadline_adherence": round(da*0.22, 4),
"energy_efficiency": round(ee, 4),
"dependency_bonus": round(dep, 4),
"interruption_bonus": round(int_b, 4),
},
"step_rewards": step_rewards,
"energy_trace": energy_trace,
"stress_trace": stress_trace,
}
except Exception as exc:
results[diff] = {"error":str(exc),"score":0.01,"baseline":baseline[diff]}
return results
# ββ Training log (persisted JSON) ββββββββββββββββββββββββββββββββββββββββββ
@app.get("/training-log", tags=["Training"])
async def training_log():
if os.path.exists(_REWARD_CURVE):
with open(_REWARD_CURVE) as f:
raw = json.load(f)
# Handle both formats:
# New: {metadata, before, after, curve}
# Old (legacy): [{step, mean, max, min}, ...]
if isinstance(raw, list):
return {"metadata": None, "before": None, "after": None, "curve": raw}
return raw
return {"metadata": None, "before": None, "after": None, "curve": []}
# ββ Demo training: start βββββββββββββββββββββββββββββββββββββββββββββββββββ
@app.post("/train/start", tags=["Training"])
async def train_start(difficulty: str = "medium", steps: int = 25):
if _training_state["running"]:
return {"status": "already_running",
"message": "Training already in progress."}
diff = difficulty if difficulty in ("easy","medium","hard","expert") else "medium"
steps = max(10, min(50, steps))
t = threading.Thread(
target=_run_training_demo,
args=(diff, steps, _ROOT),
daemon=True,
)
t.start()
return {"status": "started", "difficulty": diff, "total_steps": steps}
# ββ Demo training: poll status βββββββββββββββββββββββββββββββββββββββββββββ
@app.get("/train/status", tags=["Training"])
async def train_status():
with _training_lock:
return dict(_training_state)
# ββ Demo training: SSE live stream βββββββββββββββββββββββββββββββββββββββββ
@app.get("/train/stream", tags=["Training"])
async def train_stream():
"""
SSE that pushes training state whenever a new training step completes.
Terminates when training finishes or errors out.
"""
async def gen():
last_version = -1
while True:
with _training_lock:
ver = _training_state["_version"]
status = _training_state["status"]
snap = dict(_training_state)
if ver != last_version:
last_version = ver
# Don't send the internal _version field to the client
payload = {k: v for k, v in snap.items() if k != "_version"}
yield f"data: {json.dumps(payload)}\n\n"
if status in ("completed", "error"):
break
await asyncio.sleep(0.3)
return StreamingResponse(gen(), media_type="text/event-stream",
headers={"Cache-Control":"no-cache","X-Accel-Buffering":"no",
"Connection":"keep-alive"})
# ββ React SPA static serving βββββββββββββββββββββββββββββββββββββββββββββββ
_DIST = os.path.join(_ROOT, "frontend", "dist")
_ASSETS = os.path.join(_DIST, "assets")
if os.path.isdir(_ASSETS):
app.mount("/assets", StaticFiles(directory=_ASSETS), name="assets")
if os.path.isdir(_DIST):
_INDEX = os.path.join(_DIST, "index.html")
@app.get("/", include_in_schema=False)
async def spa_root():
return FileResponse(_INDEX)
@app.get("/{full_path:path}", include_in_schema=False)
async def spa_catchall(full_path: str):
return FileResponse(_INDEX)
else:
@app.get("/", tags=["System"])
async def api_root():
return {"status": "ok", "service": "CLM OpenEnv API",
"docs": "/docs", "stream": "/stream/run?difficulty=medium",
"train": "POST /train/start", "benchmark": "/benchmark"}
return app
app = build_app()
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