Quantum-Classical Bridge

v2.3.0

Seamless Hybrid Computing

Intelligently partition workloads between quantum and classical systems with AI-driven optimization. Achieve up to 67% cost savings while maintaining optimal performance across hybrid algorithms.

AI-driven workload partitioning
Real-time cost optimization
Adaptive resource allocation
Enterprise security & compliance
67%

Key Features

AI-Driven Partitioning

Machine learning algorithms automatically determine optimal workload distribution between quantum and classical resources.

  • Real-time performance analysis
  • Adaptive learning from usage patterns
  • Multi-objective optimization
Cost Optimization

Intelligent cost analysis and resource allocation to minimize expenses while maintaining performance requirements.

Cost Reduction67%
Resource Efficiency94%
Workflow Orchestration

Build complex hybrid workflows with dependencies, parallel execution, and error handling across quantum and classical systems.

  • Visual workflow builder
  • Dependency management
  • Fault tolerance & recovery

Implementation Guide

Basic Hybrid Computing
Get started with quantum-classical hybrid algorithms
import { QuantumClassicalBridge, WorkloadPartitioner } from '@q-intercept/sdk';

// Initialize hybrid computing bridge
const bridge = new QuantumClassicalBridge({
  quantumBackends: ['ibm_quantum', 'google_sycamore'],
  classicalBackends: ['aws_batch', 'gcp_compute'],
  optimizationLevel: 3,
  autoPartitioning: true
});

// Define hybrid algorithm
const hybridAlgorithm = {
  name: 'portfolio_optimization',
  quantumParts: ['qaoa_optimization', 'variational_eigensolver'],
  classicalParts: ['data_preprocessing', 'result_analysis'],
  dataFlow: {
    input: 'classical',
    processing: 'hybrid',
    output: 'classical'
  }
};

// Execute with automatic workload partitioning
const result = await bridge.execute(hybridAlgorithm, {
  data: portfolioData,
  constraints: {
    maxQuantumTime: 300000, // 5 minutes
    maxCost: 50,
    minAccuracy: 0.95
  }
});

console.log(`Optimization completed in ${result.totalTime}ms`);
console.log(`Cost savings: ${result.costOptimization}%`);

Performance Metrics

67%
Cost Reduction
94%
Resource Efficiency
2.3x
Performance Gain
99.9%
Uptime