惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

Engineering at Meta
Engineering at Meta
人人都是产品经理
人人都是产品经理
大猫的无限游戏
大猫的无限游戏
博客园 - 三生石上(FineUI控件)
量子位
腾讯CDC
The Cloudflare Blog
酷 壳 – CoolShell
酷 壳 – CoolShell
云风的 BLOG
云风的 BLOG
Vercel News
Vercel News
钛媒体:引领未来商业与生活新知
钛媒体:引领未来商业与生活新知
L
LangChain Blog
aimingoo的专栏
aimingoo的专栏
The Hacker News
The Hacker News
T
The Exploit Database - CXSecurity.com
B
Blog
S
SegmentFault 最新的问题
P
Privacy & Cybersecurity Law Blog
T
Threatpost
博客园 - 聂微东
T
Tailwind CSS Blog
The Last Watchdog
The Last Watchdog
C
Check Point Blog
N
Netflix TechBlog - Medium
D
DataBreaches.Net
爱范儿
爱范儿
IT之家
IT之家
S
Secure Thoughts
M
MIT News - Artificial intelligence
NISL@THU
NISL@THU
C
Cisco Blogs
TaoSecurity Blog
TaoSecurity Blog
有赞技术团队
有赞技术团队
A
Arctic Wolf
OSCHINA 社区最新新闻
OSCHINA 社区最新新闻
P
Proofpoint News Feed
Spread Privacy
Spread Privacy
Schneier on Security
Schneier on Security
Simon Willison's Weblog
Simon Willison's Weblog
G
GRAHAM CLULEY
雷峰网
雷峰网
Project Zero
Project Zero
博客园 - Franky
H
Heimdal Security Blog
A
About on SuperTechFans
Security Latest
Security Latest
Webroot Blog
Webroot Blog
Exploit-DB.com RSS Feed
Exploit-DB.com RSS Feed
Hugging Face - Blog
Hugging Face - Blog
H
Hackread – Cybersecurity News, Data Breaches, AI and More

VentureBeat

Anthropic says it hit a $30 billion revenue run rate after 'crazy' 80x growth OpenAI voice models get GPT-5-class reasoning Vibe coding exposed 380,000 corporate apps — 5,000 held sensitive data AI agent identity: how to govern agentic AI in 6 stages Anthropic wants to own your agent's memory, evals, and orchestration — and that should make enterprises nervous Enterprise GPU utilization: why 95% of AI infrastructure spend is wasted Governance, not gatekeeping: How SAP brings enterprise‑grade safety to AI connectivity Anthropic introduces "dreaming," a system that lets AI agents learn from their own mistakes RL orchestration: how a 7B model routes tasks across GPT-5, Claude, and Gemini Meet ZAYA1-8B, a super efficient open reasoning model trained on AMD Instinct MI300 GPUs Anthropic Skill scanners passed every check. The malicious code rode in on a test file. Why AI breaks without context — and how to fix it Market research is too slow for the AI era, so Brox built 60,000 identical 'digital twins' of real people you can survey instantly, repeatedly The app store for robots has arrived: Hugging Face launches open-source Reachy Mini App Store with 200+ apps Scaling AI into production is forcing a rethink of enterprise infrastructure Miami startup Subquadratic claims 1,000x AI efficiency gain with SubQ model; researchers demand independent proof. GPT-5.5 Instant shows you what it remembered — just not all of it One command turns any open-source repo into an AI agent backdoor. OpenClaw proved no supply-chain scanner has a detection category for it AI agents are missing all the discussions your team is having. SageOX has an answer: agentic context infrastructure OpenAI turns its sold-out GPT-5.5 party into a monthlong Codex giveaway for 8,000 developers Inside AMEX’s agentic commerce stack: How intent contracts and single-use tokens enforce AI transactions Microsoft takes Agent 365 out of preview as shadow AI becomes an enterprise threat The RAG era is ending for agentic AI — a new compilation-stage knowledge layer is what comes next Salesforce Agentforce Operations fixes workflows breaking enterprise AI MCP command execution flaw: what security teams need to know The scaffolding era is over. LlamaIndex says context is the new moat xAI launches Grok 4.3 at an aggressively low price and a new, fast, powerful voice cloning suite Hidden IT problems are quietly creating risk, shadow IT, and lost productivity Alibaba's HDPO cuts AI agent tool overuse from 98% to 2% One tool call to rule them all? New open source Python tool Runpod Flash eliminates containers for faster AI dev Why OpenAI's 'goblin' problem matters — and how you can release the goblins on your own AI coding agents breached: attackers targeted credentials, not models | VentureBeat Writer launches AI agents that can act without prompts, taking on Amazon, Microsoft and Salesforce Netomi raises $110 million as Accenture and Adobe bet on AI for customer service Cheaper tokens, bigger bills: The new math of AI infrastructure Amazon’s OpenAI gambit signals a new phase in the cloud wars — one where exclusivity no longer applies Enterprise RAG rebuild: hybrid retrieval adoption tripled in Q1 2026 IBM launches Bob with multi-model routing and human checkpoints to turn AI coding into a secure production system AWS Quick's knowledge graph creates an orchestration blind spot Why enterprise GPU utilization is stuck at 5% — and why the fix makes it worse Definity embeds agents inside Spark pipelines to catch failures before they reach agentic AI systems How to build custom reasoning agents with a fraction of the compute American AI startup Poolside launches free, high-performing open model Laguna XS.2 for local agentic coding Mistral AI launches Workflows, a Temporal-powered orchestration engine already running millions of daily executions Microsoft and OpenAI gut their exclusive deal, freeing OpenAI to sell on AWS and Google Cloud Open source Xiaomi MiMo-V2.5 and V2.5-Pro are among the most efficient (and affordable) at agentic 'claw' tasks AI framework autonomously outperforms human-designed R&D baselines Why supply chains are the proving ground for automation‑led iPaaS RAG precision tuning can quietly cut retrieval accuracy by 40%, putting agentic pipelines at risk Enterprises are obsessing over model accuracy while ignoring the infrastructure layer where AI systems actually break. Monitoring LLM behavior: Drift, retries, and refusal patterns CVSS vulnerability triage: 5 failures, 5 fixes DeepSeek-V4 arrives with near state-of-the-art intelligence at fraction of the cost of Opus 4.7, GPT-5.5 85% of enterprises are running AI agents. Only 5% trust them enough to ship. AI synthetic audiences are already here and poised to upend the consulting industry Mystery solved: Anthropic reveals changes to Claude's harnesses and operating instructions likely caused degradation OpenAI's GPT-5.5 is here, and it's no potato: narrowly beats Anthropic's Claude Mythos Preview on Terminal-Bench 2.0 New startup BAND debuts agentic mesh with deterministic routing to govern multiple enterprise AI agents across model providers, channels OpenAI unveils Workspace Agents, a successor to custom GPTs for enterprises that can plug directly into Slack, Salesforce and more Google and AWS split the AI agent stack between control and execution Are you paying an AI ‘swarm tax’? Why single agents often beat complex systems OpenAI launches Privacy Filter, an open source, on-device data sanitization model that removes personal information from enterprise datasets Salesforce’s Agentforce Vibes 2.0 targets a hidden failure: context overload in AI agents Google’s Gemini can now run on a single air-gapped server — and vanish when you pull the plug The modern data stack was built for humans asking questions. Google just rebuilt its for agents taking action. Google’s new Deep Research and Deep Research Max agents can search the web and your private data Vercel breach exposes the OAuth gap most security teams cannot detect, scope or contain The AI governance mirage: Why 72% of enterprises don’t have the control and security they think they do OpenAI's ChatGPT Images 2.0 is here and it does multilingual text, full infographics, slides, maps, even manga — seemingly flawlessly Kimi K2.6 runs agents for days — and exposes the limits of enterprise orchestration What AI model should you use for revenue intelligence? Von says all the big ones, and it will automate mixing and matching for you Three AI coding agents leaked secrets through a single prompt injection. One vendor's system card predicted it Train-to-Test scaling explained: How to optimize your end-to-end AI compute budget for inference AI agent security maturity audit: enterprises funded stage one, stage-three threats arrived anyway Anthropic just launched Claude Design, an AI tool that turns prompts into prototypes and challenges Figma Should my enterprise AI agent do that? NanoClaw and Vercel launch easier agentic policy setting, approval dialogs for messaging apps Salesforce launches Headless 360 to turn its entire platform into infrastructure for AI agents Are we getting what we paid for? How to turn AI momentum into measurable value OpenAI debuts GPT-Rosalind, a new limited access model for life sciences, and broader Codex plugin on Github OpenAI drastically updates Codex desktop app to use all other apps on your computer, generate images, preview webpages Anthropic releases Claude Opus 4.7, narrowly retaking lead for most powerful generally available LLM AI lowered the cost of building software. Enterprise governance hasn’t caught up Microsoft patched a Copilot Studio prompt injection. The data exfiltrated anyway Frontier models are failing one in three production attempts — and getting harder to audit Meta researchers introduce 'hyperagents' to unlock self-improving AI for non-coding tasks We tested Anthropic’s redesigned Claude Code desktop app and 'Routines' -- here's what enterprises should know AI's next bottleneck isn't the models — it's whether agents can think together Adobe’s new Firefly AI Assistant wants to run Photoshop, Premiere, Illustrator and more from one prompt Traza raises $2.1 million led by Base10 to automate procurement workflows with AI Agentic coding at enterprise scale demands spec-driven development Designing the agentic AI enterprise for measurable performance Five signs data drift is already undermining your security models Your developers are already running AI locally: Why on-device inference is the CISO’s new blind spot AI agent credentials live in the same box as untrusted code. Two new architectures show where the blast radius actually stops. Intuit compressed months of tax code implementation into hours — and built a workflow any regulated-industry team can adapt OpenAI introduces ChatGPT Pro $100 tier with 5X usage limits for Codex compared to Plus Mythos autonomously exploited vulnerabilities that survived 27 years of human review. Security teams need a new detection playbook Claude, OpenClaw and the new reality: AI agents are here — and so is the chaos Goodbye, Llama? Meta launches new proprietary AI model Muse Spark — first since Superintelligence Labs' formation LLM-referred traffic converts at 30-40% — and most enterprises aren't optimizing for it
Google doesn't pay the Nvidia tax. Its new TPUs explain why.
sam.wittevee · 2026-04-23 · via VentureBeat

Every frontier AI lab right now is rationing two things: electricity and compute. Most of them buy their compute for model training from the same supplier, at the steep gross margins that have turned Nvidia into one of the most valuable companies in the world. Google does not.

On Tuesday night, inside a private gathering at F1 Plaza in Las Vegas, Google previewed its eighth-generation Tensor Processing Units. The pitch: two custom silicon designs shipping later this year, each purpose-built for a different half of the modern AI workload. TPU 8t targets training for frontier models, and TPU 8i targets the low-latency, memory-hungry world of agentic inference and real-time sampling.

Amin Vahdat, Google's SVP and chief technologist for AI and infrastructure (pictured above left), used his time onstage to make a point that matters more to enterprise buyers than any individual spec: Google designs every layer of its AI stack end-to-end, and that vertical integration is starting to show up in cost-per-token economics that Google says its rivals cannot match.

"One chip a year wasn't enough": Inside Google's 2024 bet on a two-chip roadmap

The more interesting story behind v8t and v8i is when the decision to split the roadmap was made. The call came in 2024, according to Vahdat — a year before the industry at large pivoted to reasoning models, agents and reinforcement learning as the dominant frontier workload.

At the time, it was a contrarian read. "We realized two years ago that one chip a year wouldn't be enough," Vahdat said during the fireside. "This is our first shot at actually going with two super high-powered specialized chips."

For enterprise buyers, the implication is concrete. Customers running fine-tuning or large-scale training on Google Cloud and customers serving production agents on Vertex AI have been renting the same accelerators and eating the inefficiency. V8 is the first generation where the silicon itself treats those as different problems with two sets of chips.

TPU 8t: A training fabric that scales to a million chips

On paper, TPU 8t is an aggressive generational step. According to Google, 8t delivers 2.8x the FP4 EFlops per pod (121 vs 42.5) against Ironwood, the seventh-generation TPU that shipped in 2025, doubles bidirectional scale-up bandwidth to 19.2 Tb/s per chip, and quadruples scale-out networking to 400 Gb/s per chip. Pod size grows modestly from 9,216 to 9,600 chips, held together by Google's 3D Torus topology.

The number that matters most to IT leaders evaluating where to run frontier-scale training: 8t clusters (Superpods) can scale beyond 1 million TPU chips in a single training job via a new interconnect Google is calling Virgo networking. 

8t also introduces TPU Direct Storage, which moves data from Google's managed storage tier directly into HBM without the usual CPU-mediated hops. For long training runs where wall-clock time is the cost driver, collapsing that data path reduces the number of pod-hours needed to finish each epoch.

v8t and v8i

Credit: Sam Witteveen

TPU 8i and Boardfly: Re-engineering the network for agents

If 8t is an evolutionary step, TPU 8i is the more architecturally interesting chip. It is also where the story for IT buyers gets most compelling.

The year-over-year spec jumps are, as Vahdat put it, “stunning.” According to Google, 8i delivers 9.8x the FP8 EFlops per pod (11.6 vs 1.2), 6.8x the HBM capacity per pod (331.8 TB vs 49.2), and a pod size that grows 4.5x from 256 to 1,152 chips.

What drove those numbers is a rethink of the network itself. Vahdat explained the insight directly: Google's default way of connecting chips together supported bandwidth over latency — good for moving large amounts of data through, not built for the minimum time it takes a response to get back. That profile works for training. For agents, it does not. In partnership with Google DeepMind, the TPU team built what Google calls Boardfly topology specifically to reduce the network diameter — shrinking the number of hops between any two chips in a pod. Paired with a Collective Acceleration Engine and what Google describes as very large on-chip SRAM, 8i delivers a claimed 5x improvement in latency for real-time LLM sampling and reinforcement learning.

The vertical-integration moat: Why Google doesn't pay the "Nvidia tax"

The subtext across Vahdat's presentation was a six-layer diagram Google calls its AI stack: energy at the foundation, then data center land and enclosures, AI infrastructure hardware, AI infrastructure software, models (Gemini 3), and services on top. Vahdat noted that designing each layer in isolation forces you to the least common denominator for each layer. Google designs them together.

This is where the competitive story for IT buyers and analysts crystallizes. OpenAI, Anthropic, xAI and Meta all depend heavily on Nvidia silicon to train their frontier models. Every H200 and Blackwell GPU they buy carries Nvidia’s data-center gross margin — the informal "Nvidia tax" that industry analysts have flagged for two years running as a structural cost disadvantage for anyone renting rather than designing. Google pays fab, packaging and engineering costs on its TPUs. It does not pay that margin. 

Google's new chips

Credit: Sam Witteveen

What v8 means for the compute race: A new evaluation checklist for IT leaders

For procurement and infrastructure teams, TPUv8 reframes the 2026–2027 cloud evaluation in concrete ways.

Teams training large proprietary models should look at 8t availability windows, Virgo networking access, and goodput SLAs — not just headline EFlops. Teams serving agents or reasoning workloads should evaluate 8i availability on Vertex AI, independent latency benchmarks as they emerge, and whether HBM-per-pod sizing fits their context windows. Teams consuming Gemini through Gemini Enterprise should inherit the 8i lift and should expect the ceiling on what they can deploy in production to rise meaningfully through 2026.

The caveats are real. General availability is still "later in 2026." The v8 is a roadmap signal, not a procurement decision today. Google's benchmarks are self-reported; undoubtedly independent numbers will come from early cloud customers and third-party evaluators over the next two quarters. And portability between JAX/XLA and the CUDA/PyTorch ecosystem remains a friction cost worth thinking about when negotiating any multi-year commitment.

Looking further out, Vahdat made two predictions worth noting. First, general-purpose CPUs will see a resurgence inside AI systems — not as accelerators, but as orchestration compute for agent sandboxes, virtual machines and tool execution. Second, framed explicitly as an industry prediction rather than a Google roadmap preview, specialization also keeps going strong. As general-purpose CPUs gain plateau at a few percent a year, workloads that matter will demand purpose-built silicon. "Two chips might become more," Vahdat said — without specifying whether the "more" would mean future TPU variants or other classes of specialized accelerators.

The frontier compute race used to be a question of who could buy the most H100s. It is now a question of who controls the stack. The shortlist of companies that genuinely do is, for the moment, two: Google and Nvidia.