- Windows 11 24H2 hit by a brand new bug, but there's a workaround
- This Samsung OLED spoiled every other TV for me, and it's $1,400 off for Black Friday
- NetBox Labs launches tools to combat network configuration drift
- Navigating the Complexities of AI in Content Creation and Cybersecurity
- Russian Cyber Spies Target Organizations with Custom Malware
Nvidia and Google Cloud collaborate to accelerate AI
Axion is based on Arm’s Neoverse V2 design, a data-center-oriented chip built on the ARMv9 architecture. Arm doesn’t make chips; it makes designs, and then licensees take those design and do their own customizations by adding to the basic configuration they get from Arm. Some make smart phones (Apple, Qualcomm), and others make server chips (Ampere).
Google declined to comment on speeds, fees, and cores, but it did claim that Axion processors would deliver instances with up to 30% better performance than the fastest general-purpose Arm-based instances available in the cloud today, up to 50% better performance, and up to 60% better energy-efficiency than comparable current-generation x86-based instances.
Axion is built on Titanium, a system of Google’s own purpose-built custom silicon microcontrollers and tiered scale-out offloads. It offloads operations like networking and security, so Axion processors can focus on computation of the workload, much like the SuperNIC offloads networking traffic from the CPU.
Virtual machines based on Axion processors will be available in preview in the coming months, according to Google.
AI software services updated
In February, Google introduced Gemma, a suite of open models using the same research and technology used to create Google’s Gemini generative AI service. Now, teams from Google and Nvidia have worked together to accelerate the performance of Gemma with Nvidia’s TensorRT-LLM, an open-source library for optimizing LLM inference.
Google Cloud also has made it easier to deploy Nvidia’s NeMo framework for building custom generative AI applications across its platform via its GKE Kubernetes engine and Google Cloud HPC Toolkit. This enables developers to jumpstart the development of generative AI models, allowing for the rapid deployment of turnkey AI products.