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Kipu Quantum Launches Hybrid Framework to Enable Offline Inference for Quantum Machine Learning

Kipu Quantum has released an off-line Digitized Quantum Feature Extraction (DQFE) pipeline that allows quantum-enhanced machine learning models to execute inference operations entirely on classical hardware. The architecture separates the quantum and classical processing loops, restricting quantum processor utilization to an initial, specialized training stage. By eliminating real-time Quantum Processing Unit (QPU) dependencies during active inference loops, the framework removes operational bottlenecks such as multi-user cloud queue latency and continuous hardware access costs. The system has been validated on IBM Quantum hardware, including the 156-qubit IBM Quantum Heron r2 processor, across multiple high-volume enterprise analytics use cases.