@ibmresearch
  @ibmresearch
IBM Research | What's Next in AI: Our vision for the future of AI hardware @ibmresearch | Uploaded October 2020 | Updated October 2024, 4 days ago.
Since 2012 the computation requirements for large AI training jobs have grown more than 300,000x.  To proliferate progress, we must overcome long-standing bottlenecks in scientific discovery. CPU advancements alone are no longer the primary source of competitive advantage in the world of large-scale, complex computing. In coming years, more specialized accelerators beyond the GPU will enable significant performance advantages.  

At IBM Research, we’re developing a new class of AI hardware that is inherently energy-efficient, increasing compute power by orders of magnitude without the demand for increased energy.  By leveraging the power of AI and the flexibility of the hybrid cloud, we can comprehend and apply massive and growing bodies of scientific knowledge.
Whats Next in AI: Our vision for the future of AI hardwareThe future of computer chips is being made in Albany, NYMaximo Voice AssistantHow the hybrid cloud can create the worlds computerHow can generative models fuel scientific discovery?Detection of coherent noise through the output of random quantum circuitsThe Short: IBM Quantum in Québec, 10 years in Africa, Granite foundation models on watsonxGAAMA: Go Ahead Ask Me AnythingIntroducing the first open-source library for individual fairnessIBM Research Horizons: Future of Climate | Day 2: Adapting to Climate ChangeCayley path and quantum computational supremacy*Whats Next: The Future of Quantum Computing

What's Next in AI: Our vision for the future of AI hardware @ibmresearch

SHARE TO X SHARE TO REDDIT SHARE TO FACEBOOK WALLPAPER