China's LineShine supercomputer debuted at number one on the 67th TOP500 list on June 23, 2026, posting 2.198 exaflops on the High Performance Linpack benchmark — the first machine in the ranking's ...
Yes, that simple question is, in the modern Nvidia world that has come to dominate AI training and to a certain extent HPC simulation and modeling, heretical. But given that CPUs are in many cases ...
OpenAI partnered with Broadcom in October 2025 to design a custom inference chip aimed at reducing the growing expense of ...
Researchers at OpenAI trained a single language model on 175 billion learned numerical weights, each one adjusted during training to predict the next word in a sequence. That model, GPT-3, ...
Matrix structures don’t work on their own. The work is less about control and more about integration, often without formal ...
DeepSeek V4 architecture uses sparse attention to cut inference costs 73% at one-million-token contexts, but a NIST ...
Naveen Rao's Unconventional AI raised $475M at a $4.5B valuation to build biology-inspired, energy-efficient chips for ...
Objective We aimed to investigate the association between occupational standing, walking and forward bending during pregnancy ...
D-Matrix says its chips can run inference workloads 10 times faster and using five times less energy than a standalone graphics processing unit from Nvidia. Like Cerebras, D-Matrix is trying to prove ...
Abstract: Matrix operators are fundamental to various applications, particularly in deep learning. While early models relied on dense operations, techniques like pruning have introduced sparsity, ...
Companies spend billions on programs that don’t pay off. Here’s how to fix that. by Michael Beer, Magnus Finnström and Derek Schrader Corporations are victims of the great training robbery. American ...