Deep learning models are growing exponentially in size, leading to computational inefficiencies, high energy costs, and hardware constraints. Neuro-𝑸uantis™ addresses these challenges with Quantum Tensor Networks (QTN) to optimize AI models without compromising accuracy.
AI models compressed using tensor decompositions while maintaining ≥95% accuracy.
Quantum-inspired neural architectures optimized for classical computing (CPUs, GPUs, TPUs).
Reduction in FLOPS/W measured on AI inference workloads.
Performance results are based on controlled AI benchmarking using MLPerf, DeepSpeed, and tensor compression frameworks (TT-Format, Tucker, CP decomposition). Results may vary based on AI model architecture, dataset structure, and deployment hardware.
Overcoming Deep Learning’s Biggest Bottlenecks
Performance validations conducted using benchmark datasets (ImageNet, CIFAR-10, OpenGraphBench), with AI compression efficiency tested across deep learning architectures (ResNet, ViT, GPT, BERT).
Unlock the potential of AI-powered solutions tailored for diverse industries. Experience optimized scalability that adapts seamlessly to business growth.
Optimized Neural Compression & Quantum-Inspired AI
Compression techniques validated using MLPerf inference benchmarks, NVIDIA TensorRT optimization, and Google TPU efficiency profiling.
Neural architecture optimizations tested across CPU/GPU/TPU/FPGA accelerators, with benchmarking conducted on TensorFlow Lite, NVIDIA Jetson, and Intel OpenVINO
Ongoing research focuses on hybrid quantum-inspired AI, low-energy neural architectures, and federated tensor network learning.
Accelerate AI workloads with rigorously tested Quantum-Inspired Neuromorphic AI.
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