Google Cloud unveils Ironwood, its 7th Gen TPU to help boost AI performance and inference


- Google unveils Ironwood, its 7th-generation TPU
- Ironwood is designed for inference, the new big challenge for AI
- It offers huge advances in power and efficiency, and even outperforms El Capitain supercomputer
Google has revealed its most powerful AI training hardware to date as it looks to take another major step forward in inference.
Ironwood is the company’s 7th-generation Tensor Processing Unit (TPU) – the hardware powering both Google Cloud and its customers AI training and workload handling.
The hardware was revealed at the company’s Google Cloud Next 25 event in Las Vegas, where it was keen to highlight the great strides forward in efficiency which should also mean workloads can run more cost-effectively.
Google Ironwood TPU
The company says Ironwood marks “a significant shift” in the development of AI, making part of the move from responsive AI models which simply present real-time information for the users to process, towards proactive models which can interpret and infer by themselves.
This is essentially the next generation of AI computing, Google Cloud believes, allowing its most demanding customers to set up and establish ever greater workloads.
At its top-end Ironwood can scale up to 9,216 chips per pod, for a total of 42.5 exaflops – more than 24x the compute power of El Capitan, the world’s current largest supercomputer.
Each individual chip offers peak compute of 4,614 TFLOPs, what the company says is a huge leap forward in capacity and capability – even at its slightly less grand configuration of “only” 256 chips.
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However the scale can get even greater, as Ironwood allows developers to utilize the company’s DeepMind-designed Pathways software stack to harness the combined computing power of tens of thousands of Ironwood TPUs.
Ironwood also offers a major increase in high bandwidth memory capacity (192GB per chip, up to 6x greater than the previous Trillium sixth-generation TPU) and bandwidth – able to reach 7.2TBps, 4.5x greater than Trillium.
“For more than a decade, TPUs have powered Google’s most demanding AI training and serving workloads, and have enabled our Cloud customers to do the same,” noted Amin Vahdat, VP/GM, ML, Systems & Cloud AI.
“Ironwood is our most powerful, capable and energy efficient TPU yet. And it’s purpose-built to power thinking, inferential AI models at scale.”
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Google unveils Ironwood, its 7th-generation TPU Ironwood is designed for inference, the new big challenge for AI It offers huge advances in power and efficiency, and even outperforms El Capitain supercomputer Google has revealed its most powerful AI training hardware to date as it looks to take another major step…
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