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- Remove debugging service documentation (DEBUgging_SERVICES.md) - Remove development logs policy and quick reference guides - Remove E2E test creation summary - Remove gift certificate example file - Remove GitHub pull summary documentation
264 lines
11 KiB
Python
Executable File
264 lines
11 KiB
Python
Executable File
#!/usr/bin/env python3
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"""
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End-to-End GPU Marketplace Workflow
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User (aitbc server) → GPU Bidding → Ollama Task → Blockchain Payment
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"""
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import requests
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import json
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import time
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import sys
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from typing import Dict, List
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class MarketplaceWorkflow:
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def __init__(self, coordinator_url: str = "http://localhost:8000"):
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self.coordinator_url = coordinator_url
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self.workflow_steps = []
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def log_step(self, step: str, status: str, details: str = ""):
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"""Log workflow step"""
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timestamp = time.strftime("%H:%M:%S")
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self.workflow_steps.append({
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"timestamp": timestamp,
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"step": step,
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"status": status,
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"details": details
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})
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status_icon = "✅" if status == "success" else "❌" if status == "error" else "🔄"
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print(f"{timestamp} {status_icon} {step}")
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if details:
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print(f" {details}")
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def get_available_gpus(self) -> List[Dict]:
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"""Get list of available GPUs"""
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try:
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print(f"🔍 DEBUG: Requesting GPU list from {self.coordinator_url}/v1/marketplace/gpu/list")
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response = requests.get(f"{self.coordinator_url}/v1/marketplace/gpu/list")
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print(f"🔍 DEBUG: Response status: {response.status_code}")
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response.raise_for_status()
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gpus = response.json()
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print(f"🔍 DEBUG: Total GPUs found: {len(gpus)}")
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available_gpus = [gpu for gpu in gpus if gpu["status"] == "available"]
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print(f"🔍 DEBUG: Available GPUs: {len(available_gpus)}")
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return available_gpus
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except Exception as e:
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print(f"🔍 DEBUG: Error in get_available_gpus: {str(e)}")
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self.log_step("Get Available GPUs", "error", str(e))
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return []
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def book_gpu(self, gpu_id: str, duration_hours: int = 2) -> Dict:
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"""Book a GPU for computation"""
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try:
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print(f"🔍 DEBUG: Attempting to book GPU {gpu_id} for {duration_hours} hours")
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booking_data = {"duration_hours": duration_hours}
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print(f"🔍 DEBUG: Booking data: {booking_data}")
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response = requests.post(
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f"{self.coordinator_url}/v1/marketplace/gpu/{gpu_id}/book",
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json=booking_data
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)
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print(f"🔍 DEBUG: Booking response status: {response.status_code}")
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print(f"🔍 DEBUG: Booking response: {response.text}")
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response.raise_for_status()
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booking = response.json()
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print(f"🔍 DEBUG: Booking successful: {booking}")
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self.log_step("Book GPU", "success", f"GPU {gpu_id} booked for {duration_hours} hours")
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return booking
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except Exception as e:
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print(f"🔍 DEBUG: Error in book_gpu: {str(e)}")
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self.log_step("Book GPU", "error", str(e))
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return {}
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def submit_ollama_task(self, gpu_id: str, task_data: Dict) -> Dict:
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"""Submit Ollama task to the booked GPU"""
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try:
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print(f"🔍 DEBUG: Submitting Ollama task to GPU {gpu_id}")
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print(f"🔍 DEBUG: Task data: {task_data}")
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# Simulate Ollama task submission
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task_payload = {
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"gpu_id": gpu_id,
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"model": task_data.get("model", "llama2"),
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"prompt": task_data.get("prompt", "Hello, world!"),
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"parameters": task_data.get("parameters", {})
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}
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print(f"🔍 DEBUG: Task payload: {task_payload}")
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# This would integrate with actual Ollama service
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# For now, simulate task submission
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task_id = f"task_{int(time.time())}"
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print(f"🔍 DEBUG: Generated task ID: {task_id}")
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self.log_step("Submit Ollama Task", "success", f"Task {task_id} submitted to GPU {gpu_id}")
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return {
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"task_id": task_id,
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"gpu_id": gpu_id,
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"status": "submitted",
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"model": task_payload["model"]
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}
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except Exception as e:
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print(f"🔍 DEBUG: Error in submit_ollama_task: {str(e)}")
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self.log_step("Submit Ollama Task", "error", str(e))
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return {}
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def process_blockchain_payment(self, booking: Dict, task_result: Dict) -> Dict:
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"""Process payment via blockchain"""
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try:
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print(f"🔍 DEBUG: Processing blockchain payment")
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print(f"🔍 DEBUG: Booking data: {booking}")
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print(f"🔍 DEBUG: Task result: {task_result}")
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# Calculate payment amount
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payment_amount = booking.get("total_cost", 0.0)
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print(f"🔍 DEBUG: Payment amount: {payment_amount} AITBC")
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# Simulate blockchain payment processing
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payment_data = {
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"from": "aitbc_server_user",
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"to": "gpu_provider",
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"amount": payment_amount,
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"currency": "AITBC",
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"booking_id": booking.get("booking_id"),
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"task_id": task_result.get("task_id"),
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"gpu_id": booking.get("gpu_id")
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}
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print(f"🔍 DEBUG: Payment data: {payment_data}")
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# This would integrate with actual blockchain service
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# For now, simulate payment
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transaction_id = f"tx_{int(time.time())}"
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print(f"🔍 DEBUG: Generated transaction ID: {transaction_id}")
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self.log_step("Process Blockchain Payment", "success",
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f"Payment {payment_amount} AITBC processed (TX: {transaction_id})")
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return {
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"transaction_id": transaction_id,
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"amount": payment_amount,
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"status": "confirmed",
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"payment_data": payment_data
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}
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except Exception as e:
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print(f"🔍 DEBUG: Error in process_blockchain_payment: {str(e)}")
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self.log_step("Process Blockchain Payment", "error", str(e))
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return {}
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def release_gpu(self, gpu_id: str) -> Dict:
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"""Release the GPU after task completion"""
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try:
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print(f"🔍 DEBUG: Releasing GPU {gpu_id}")
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response = requests.post(f"{self.coordinator_url}/v1/marketplace/gpu/{gpu_id}/release")
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print(f"🔍 DEBUG: Release response status: {response.status_code}")
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print(f"🔍 DEBUG: Release response: {response.text}")
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response.raise_for_status()
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release_result = response.json()
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print(f"🔍 DEBUG: GPU release successful: {release_result}")
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self.log_step("Release GPU", "success", f"GPU {gpu_id} released")
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return release_result
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except Exception as e:
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print(f"🔍 DEBUG: Error in release_gpu: {str(e)}")
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self.log_step("Release GPU", "error", str(e))
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return {}
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def run_complete_workflow(self, task_data: Dict = None) -> bool:
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"""Run the complete end-to-end workflow"""
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print("🚀 Starting End-to-End GPU Marketplace Workflow")
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print("=" * 60)
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# Default task data if not provided
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if not task_data:
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task_data = {
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"model": "llama2",
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"prompt": "Analyze this data and provide insights",
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"parameters": {"temperature": 0.7, "max_tokens": 100}
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}
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# Step 1: Get available GPUs
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self.log_step("Initialize Workflow", "info", "Starting GPU marketplace workflow")
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available_gpus = self.get_available_gpus()
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if not available_gpus:
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self.log_step("Workflow Failed", "error", "No available GPUs in marketplace")
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return False
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# Select best GPU (lowest price)
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selected_gpu = min(available_gpus, key=lambda x: x["price_per_hour"])
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gpu_id = selected_gpu["id"]
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self.log_step("Select GPU", "success",
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f"Selected {selected_gpu['model']} @ ${selected_gpu['price_per_hour']}/hour")
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# Step 2: Book GPU
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booking = self.book_gpu(gpu_id, duration_hours=2)
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if not booking:
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return False
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# Step 3: Submit Ollama Task
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task_result = self.submit_ollama_task(gpu_id, task_data)
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if not task_result:
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return False
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# Simulate task processing time
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self.log_step("Process Task", "info", "Simulating Ollama task execution...")
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time.sleep(2) # Simulate processing
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# Step 4: Process Blockchain Payment
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payment = self.process_blockchain_payment(booking, task_result)
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if not payment:
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return False
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# Step 5: Release GPU
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release_result = self.release_gpu(gpu_id)
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if not release_result:
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return False
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# Workflow Summary
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self.print_workflow_summary()
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return True
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def print_workflow_summary(self):
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"""Print workflow execution summary"""
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print("\n📊 WORKFLOW EXECUTION SUMMARY")
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print("=" * 60)
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successful_steps = sum(1 for step in self.workflow_steps if step["status"] == "success")
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total_steps = len(self.workflow_steps)
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print(f"✅ Successful Steps: {successful_steps}/{total_steps}")
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print(f"📈 Success Rate: {successful_steps/total_steps*100:.1f}%")
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print(f"\n📋 Step-by-Step Details:")
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for step in self.workflow_steps:
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status_icon = "✅" if step["status"] == "success" else "❌" if step["status"] == "error" else "🔄"
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print(f" {step['timestamp']} {status_icon} {step['step']}")
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if step["details"]:
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print(f" {step['details']}")
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print(f"\n🎉 Workflow Status: {'✅ COMPLETED' if successful_steps == total_steps else '❌ FAILED'}")
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def main():
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"""Main execution function"""
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workflow = MarketplaceWorkflow()
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# Example task data
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task_data = {
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"model": "llama2",
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"prompt": "Analyze the following GPU marketplace data and provide investment insights",
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"parameters": {
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"temperature": 0.7,
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"max_tokens": 150,
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"top_p": 0.9
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}
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}
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# Run the complete workflow
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success = workflow.run_complete_workflow(task_data)
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if success:
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print("\n🎊 End-to-End GPU Marketplace Workflow completed successfully!")
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print("✅ User bid on GPU → Ollama task executed → Blockchain payment processed")
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else:
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print("\n❌ Workflow failed. Check the logs above for details.")
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sys.exit(1)
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if __name__ == "__main__":
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main()
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