AI RESEARCH
Democratizing AI: A Comparative Study in Deep Learning Efficiency and Future Trends in Computational Processing
arXiv CS.AI
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ArXi:2603.20920v1 Announce Type: cross The exponential growth in data has intensified the demand for computational power to train large-scale deep learning models. However, the rapid growth in model size and complexity raises concerns about equal and fair access to computational resources, particularly under increasing energy and infrastructure constraints. GPUs have emerged as essential for accelerating such workloads. This study benchmarks four deep learning models (Conv6, VGG16, ResNet18, CycleGAN) using TensorFlow and PyTorch on Intel Xeon CPUs and NVIDIA Tesla T4 GPUs.