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BackGoogle Unveils TPU 8t and TPU 8i AI Processors at Cloud Next 2026
Google Unveils TPU 8t and TPU 8i AI Processors at Cloud Next 2026
Tech
Decrypt4/23/2026Tech1 min read

Google Unveils TPU 8t and TPU 8i AI Processors at Cloud Next 2026

Eighth-generation custom silicon targets Nvidia dominance with training and inference chips

Quick Look

  • Google unveiled two new AI processors at its Cloud Next 2026 conference in Las Vegas: the training-focused TPU 8t delivering 121 ExaFlops per superpod with 2.8x price-performance improvement, and the inference-optimized TPU 8i featuring 384 MB on-chip SRAM with 80% better performance per dollar.
  • Both chips use Google's Boardfly architecture reducing latency by up to 50%.
  • The company announced a partnership with Anthropic providing multiple gigawatts of TPU capacity.

AI-generated summary

Why It Matters

Google has been developing custom AI chips since 2016, with previous TPU generations serving both internal products and cloud customers. The company faces intensifying competition from Nvidia in the AI infrastructure market, which has driven billions in capital expenditure across the industry.

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Google unveiled two AI processors at its Cloud Next 2026 conference in Las Vegas on Wednesday, marking the company's eighth generation of custom silicon designed to challenge Nvidia's AI chip dominance. The training-focused TPU 8t delivers nearly 3x the compute performance per pod compared to its predecessor, with a single superpod scaling to 9,600 chips and delivering 121 ExaFlops of compute capacity. The architecture also offers 2.8x better price-to-performance, according to Google. The TPU 8i takes a different approach, optimizing for inference workloads with 3x more on-chip SRAM than previous generations—384 MB of on-chip SRAM paired with 288 GB of high-bandwidth memory. The chip delivers up to 80% better performance per dollar and 2x the performance per watt, the company claimed. Both chips leverage Google's new Boardfly architecture, which achieves up to a 50% improvement in latency for communication-intensive workloads by reducing network diameter, the technical documentation shows. The hardware announcement follows Google's expanded partnership with Anthropic earlier this month, which will provide the AI startup with multiple gigawatts of next-generation TPU capacity. The deal highlights how Google is leveraging its custom silicon to attract major AI companies seeking alternatives to Nvidia's GPUs in the increasingly competitive infrastructure market. Google CEO Sundar Pichai positioned the chips as purpose-built for AI agents, stating they deliver the massive throughput and low latency needed to concurrently run millions of agents cost-effectively. The company has already secured adoption from Citadel Securities, with the financial services firm choosing TPUs to power their AI workloads. The dual-chip strategy reflects the diverging computational needs of modern AI systems: massive parallel processing for training frontier models versus rapid, memory-intensive operations for deploying those models as interactive agents.

What to Watch

AI outlook — possibilities, not facts

  • More enterprises will adopt Google TPUs as Nvidia alternative

    Likely · Within months

  • Nvidia will respond with new product announcements

    Likely · Within months

Open Questions

  • What are the exact pricing models for TPU 8t and 8i?
  • How does performance compare directly to Nvidia's latest GPUs?
  • What is the timeline for general availability?

Related Topics

This article was originally published by Decrypt.

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