cluster-controller / controller.py
Timo123432345443's picture
Upload controller.py with huggingface_hub
c04d0d9 verified
"""
Hugging Face Spaces Cluster - Controller
=========================================
Koordiniert Worker Spaces und verteilt Tasks.
Deployment:
1. Diese Datei auf Hugging Face Space hochladen
2. requirements.txt hochladen
3. Space startet automatisch
"""
import os
import time
import json
import uuid
import threading
import numpy as np
from collections import defaultdict
from datetime import datetime
import gradio as gr
# Hugging Face Konfiguration
HF_TOKEN = os.getenv("HF_TOKEN", "")
CONTROLLER_ID = os.getenv("CONTROLLER_ID", "controller")
SPACE_NAME = os.getenv("SPACE_NAME", "")
# ============================================
# Cluster Management
# ============================================
class ClusterController:
"""Verwaltet Worker und verteilt Tasks"""
def __init__(self):
self.workers = {} # worker_id -> {status, last_seen, tasks_completed}
self.tasks = {} # task_id -> {status, result, worker_id}
self.results = {} # task_id -> result
self.lock = threading.Lock()
def register_worker(self, worker_id):
"""Registriert einen Worker"""
with self.lock:
self.workers[worker_id] = {
"status": "ready",
"last_seen": datetime.now(),
"tasks_completed": 0
}
print(f"✅ Worker registriert: {worker_id}")
return {"status": "ok"}
def get_available_worker(self):
"""Findet verfügbaren Worker"""
with self.lock:
for worker_id, info in self.workers.items():
if info["status"] == "ready":
# Worker als busy markieren
info["status"] = "busy"
return worker_id
return None
def submit_task(self, task_type, data):
"""Submit一个新 Task"""
task_id = str(uuid.uuid4())
with self.lock:
self.tasks[task_id] = {
"type": task_type,
"data": data,
"status": "pending",
"created": datetime.now(),
"worker_id": None,
"result": None
}
# Task an Worker verteilen
self._distribute_task(task_id)
return task_id
def _distribute_task(self, task_id):
"""Verteilt Task an verfügbaren Worker"""
worker_id = self.get_available_worker()
if worker_id is None:
# Kein Worker verfügbar, Task bleibt pending
return None
with self.lock:
task = self.tasks[task_id]
task["worker_id"] = worker_id
task["status"] = "assigned"
print(f"📤 Task {task_id[:8]} → Worker {worker_id}")
return worker_id
def submit_result(self, worker_id, task_id, result):
"""Speichert Ergebnis von Worker"""
with self.lock:
if task_id in self.tasks:
self.tasks[task_id]["result"] = result
self.tasks[task_id]["status"] = "completed"
if worker_id in self.workers:
self.workers[worker_id]["status"] = "ready"
self.workers[worker_id]["tasks_completed"] += 1
print(f"✅ Task {task_id[:8]} abgeschlossen von {worker_id}")
return {"status": "ok"}
def get_task_status(self, task_id):
"""Gibt Task-Status zurück"""
with self.lock:
if task_id in self.tasks:
task = self.tasks[task_id]
return {
"task_id": task_id,
"status": task["status"],
"result": task["result"],
"worker_id": task["worker_id"]
}
return {"status": "not_found"}
def get_cluster_status(self):
"""Gibt Cluster-Übersicht"""
with self.lock:
total_workers = len(self.workers)
ready_workers = sum(1 for w in self.workers.values() if w["status"] == "ready")
busy_workers = sum(1 for w in self.workers.values() if w["status"] == "busy")
total_tasks = len(self.tasks)
pending_tasks = sum(1 for t in self.tasks.values() if t["status"] == "pending")
completed_tasks = sum(1 for t in self.tasks.values() if t["status"] == "completed")
return {
"workers": {
"total": total_workers,
"ready": ready_workers,
"busy": busy_workers
},
"tasks": {
"total": total_tasks,
"pending": pending_tasks,
"completed": completed_tasks
},
"worker_list": [
{"id": wid, "status": info["status"], "tasks": info["tasks_completed"]}
for wid, info in self.workers.items()
]
}
def process_batch(self, task_type, data_chunks):
"""Verarbeitet Batch von Daten-Chunks parallel"""
task_ids = []
# Tasks für alle Chunks erstellen
for chunk in data_chunks:
task_id = self.submit_task(task_type, chunk)
task_ids.append(task_id)
# Auf Ergebnisse warten
results = []
start_time = time.time()
timeout = 60 # 60 Sekunden Timeout
for task_id in task_ids:
remaining = timeout - (time.time() - start_time)
if remaining <= 0:
results.append({"error": "timeout"})
continue
while True:
status = self.get_task_status(task_id)
if status["status"] == "completed":
results.append(status["result"])
break
elif status["status"] == "pending":
# Retry Task-Verteilung
self._distribute_task(task_id)
time.sleep(0.5)
if time.time() - start_time > timeout:
results.append({"error": "timeout"})
break
return results
# Globaler Controller
controller = ClusterController()
# ============================================
# Gradio Interface
# ============================================
def ui_submit_task(task_type, data_str):
"""UI: Task submit"""
import numpy as np
try:
data = json.loads(data_str)
if isinstance(data, list):
data = np.array(data)
task_id = controller.submit_task(task_type, data)
return f"✅ Task submitted: `{task_id[:8]}`"
except Exception as e:
return f"❌ Error: {e}"
def ui_get_status():
"""UI: Cluster Status anzeigen"""
status = controller.get_cluster_status()
workers_html = "<br>".join([
f" • {w['id']}: {'🟢' if w['status'] == 'ready' else '🔴'} ({w['tasks']} Tasks)"
for w in status["worker_list"]
]) or " Keine Worker registriert"
return f"""
## Cluster Status
### Workers
- Gesamt: {status['workers']['total']}
- Bereit: {status['workers']['ready']} 🟢
- Beschäftigt: {status['workers']['busy']} 🔴
### Tasks
- Gesamt: {status['tasks']['total']}
- Pending: {status['tasks']['pending']}
- Abgeschlossen: {status['tasks']['completed']}
### Worker Liste
{workers_html}
"""
def ui_check_task(task_id):
"""UI: Task-Status prüfen"""
status = controller.get_task_status(task_id)
return json.dumps(status, indent=2, default=str)
def ui_process_batch(num_chunks):
"""UI: Batch Processing Demo"""
import numpy as np
# Daten in Chunks teilen
data = np.random.random(10000)
chunks = np.array_split(data, int(num_chunks))
# Batch verarbeiten
results = controller.process_batch("sum", chunks)
# Ergebnisse aggregieren
valid_results = [r for r in results if isinstance(r, (int, float))]
total = sum(valid_results)
return f"""
### Batch-Ergebnis
- Chunks: {len(chunks)}
- Ergebnisse: {len(valid_results)}/{len(results)}
- Summe: {total:.4f}
- Durchschnitte: {[f'{r:.4f}' for r in valid_results[:5]]}{'...' if len(valid_results) > 5 else ''}
"""
# Gradio UI
with gr.Blocks(title="Cluster Controller") as demo:
gr.Markdown("# 🤗 Hugging Face Spaces Cluster Controller")
with gr.Tabs():
with gr.Tab("Cluster Status"):
status_btn = gr.Button("Status aktualisieren")
status_output = gr.Markdown(ui_get_status())
status_btn.click(ui_get_status, outputs=status_output)
with gr.Tab("Task Submit"):
task_type = gr.Dropdown(
choices=["sum", "mean", "matrix_multiply", "inference"],
value="sum",
label="Task Typ"
)
data_input = gr.Textbox(
label="Daten (JSON)",
placeholder="[1, 2, 3, 4, 5]",
value="[1, 2, 3, 4, 5]"
)
submit_btn = gr.Button("Task absenden")
task_result = gr.Textbox(label="Ergebnis")
submit_btn.click(ui_submit_task, inputs=[task_type, data_input], outputs=task_result)
with gr.Tab("Batch Processing"):
num_chunks = gr.Slider(1, 10, value=3, step=1, label="Anzahl Chunks")
batch_btn = gr.Button("Batch starten")
batch_output = gr.Markdown()
batch_btn.click(ui_process_batch, inputs=num_chunks, outputs=batch_output)
with gr.Tab("API Info"):
gr.Markdown("""
## API Endpoints
```
POST /api/register
{"worker_id": "worker-1"}
GET /api/get_task?worker_id=worker-1
POST /api/submit_result
{"worker_id": "worker-1", "task_id": "...", "result": 42}
GET /api/task_status?task_id=...
GET /api/cluster_status
```
""")
# Auto-refresh alle 5 Sekunden
demo.load(ui_get_status, outputs=status_output, every=5)
# ============================================
# FastAPI Backend (für Worker-Kommunikation)
# ============================================
from fastapi import FastAPI, Request
from fastapi.responses import JSONResponse
app = FastAPI()
@app.post("/api/register")
async def register_worker(request: Request):
data = await request.json()
return controller.register_worker(data["worker_id"])
@app.get("/api/get_task")
async def get_task(worker_id: str):
# Einfache Implementierung - in Produktion besser queue-basiert
with controller.lock:
for task_id, task in controller.tasks.items():
if task["status"] == "pending":
task["status"] = "assigned"
task["worker_id"] = worker_id
return {"id": task_id, "type": task["type"], "data": task["data"]}
return {}
@app.post("/api/submit_result")
async def submit_result(request: Request):
data = await request.json()
return controller.submit_result(
data["worker_id"],
data["task_id"],
data["result"]
)
@app.get("/api/task_status")
async def task_status(task_id: str):
return controller.get_task_status(task_id)
@app.get("/api/cluster_status")
async def cluster_status():
return controller.get_cluster_status()
# ============================================
# Main
# ============================================
if __name__ == "__main__":
import uvicorn
print(f"🚀 Starte Cluster Controller: {CONTROLLER_ID}")
print(f" Space: {SPACE_NAME}")
# Gradio + FastAPI starten
demo.launch(server_name="0.0.0.0", server_port=7860)