Intel

6 items

Wall Street Journal 2026-05-09-1

AI Is Distorting Practically Everything About the Economy

The Mag-7 aren't leading the economy; they're substituting for it. Strip out tech equipment, software, and data-center construction, and Q1 GDP growth was effectively flat — Tedeschi's import-netting cuts AI's headline contribution from 1.7pp to 0.4pp, with the remainder leaking to Taiwan and Korea. That makes the Fed's reaction function structurally late: the number it's reading is real, but what it's measuring isn't.

The Deep View 2026-05-07-1

OpenAI MRC Protocol: What Gets Open-Sourced Is the Non-Moat

What frontier labs open-source is a map of the non-moats. OpenAI released its GPU networking protocol through OCP with Microsoft, AMD, Broadcom, NVIDIA, and Intel as coalition partners, two years in development, already running at Stargate's Abilene site and used to train GPT-5.5. The corollary lands hardest for Microsoft: they have the protocol, run it on Fairwater, and still ship mid-class models, which means networking efficiency was never the binding constraint.

The Economist 2026-04-29-1

AI is confronting a supply-chain crunch

Hyperscaler capex grew 190% from 2024 to 2026; their hardware suppliers grew 45%. That gap is why every throttling notice, plan change, and Sora shutdown traces back to the same constraint. The less-discussed dimension: agentic systems need 1 CPU per GPU versus 1:12 for chatbots, which is why Intel has doubled in six months and why every agent platform deck needs a CPU supply slide.

Bloomberg 2026-04-25-2

Meta Strikes Multibillion-Dollar Deal to Use Amazon Chips for AI Projects

Meta is renting hundreds of thousands of Graviton chips from AWS for multiple billions; Graviton is a CPU, not an accelerator. The consensus is measuring AI capex by GPU count, but at production scale the CPU layer, which handles feature serving, retrieval, ranking, and orchestration, runs roughly 5-10x the accelerator unit count. This deal is the first explicit public signal that reframes general-purpose CPU compute as a distinct AI infrastructure category, and it means the total AI infrastructure commitment envelope is materially larger than accelerator-only framings capture.

The Economist 2026-03-21-3

Nvidia's Full-Stack Reinvention: The $65B Portfolio Isn't a Moat, It's a Dependency Map

The Economist's GTC week profile frames Nvidia's expansion into networking, CPUs, models, and sovereign AI as a strategic reinvention; the article never asks the margin question. Nvidia's $216B revenue at ~73% gross margin is a GPU monopoly number: networking, CPU-only servers, and government bundles don't carry that margin. The $65B investment portfolio ($30B in OpenAI alone) is presented as ecosystem lock-in, but OpenAI already runs inference on Azure custom silicon. The portfolio isn't a moat; it's a subsidy that masks true cost-of-compute and unwinds the moment inference gets cheap enough on non-Nvidia hardware. The buried structural risk: three hyperscalers account for over half of receivables, and those same three are the ones building the substitutes.

CNBC 2026-03-17-1

Nvidia GTC Preview: Why the CPU is Taking Center Stage

Agentic AI creates genuine CPU demand expansion: orchestration is sequential, CPU-bound work that GPUs can't do. Nvidia's "standalone CPU" story is really a coprocessor story, though; Grace and Vera are optimized to feed GPUs, not compete for general-purpose workloads at 6.2% share and 72 cores vs. 128. The higher-signal play is NVLink licensing, where Nvidia captures networking value regardless of whose CPU fills the socket.