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

T
Threat Research - Cisco Blogs
S
Securelist
H
Heimdal Security Blog
Scott Helme
Scott Helme
D
Darknet – Hacking Tools, Hacker News & Cyber Security
The Hacker News
The Hacker News
C
CXSECURITY Database RSS Feed - CXSecurity.com
Spread Privacy
Spread Privacy
Cyberwarzone
Cyberwarzone
V
Vulnerabilities – Threatpost
C
Cybersecurity and Infrastructure Security Agency CISA
C
CERT Recently Published Vulnerability Notes
P
Proofpoint News Feed
Threat Intelligence Blog | Flashpoint
Threat Intelligence Blog | Flashpoint
人人都是产品经理
人人都是产品经理
C
Cisco Blogs
www.infosecurity-magazine.com
www.infosecurity-magazine.com
Engineering at Meta
Engineering at Meta
Project Zero
Project Zero
CTFtime.org: upcoming CTF events
CTFtime.org: upcoming CTF events
cs.AI updates on arXiv.org
cs.AI updates on arXiv.org
有赞技术团队
有赞技术团队
T
Tailwind CSS Blog
Cisco Talos Blog
Cisco Talos Blog
Last Week in AI
Last Week in AI
让小产品的独立变现更简单 - ezindie.com
让小产品的独立变现更简单 - ezindie.com
O
OpenAI News
P
Proofpoint News Feed
Google Online Security Blog
Google Online Security Blog
Recent Announcements
Recent Announcements
Hacker News: Ask HN
Hacker News: Ask HN
美团技术团队
Stack Overflow Blog
Stack Overflow Blog
U
Unit 42
P
Privacy International News Feed
Google DeepMind News
Google DeepMind News
G
GRAHAM CLULEY
Apple Machine Learning Research
Apple Machine Learning Research
TaoSecurity Blog
TaoSecurity Blog
S
Security @ Cisco Blogs
C
Check Point Blog
H
Hackread – Cybersecurity News, Data Breaches, AI and More
Jina AI
Jina AI
S
Secure Thoughts
G
Google Developers Blog
C
Cyber Attacks, Cyber Crime and Cyber Security
L
LINUX DO - 最新话题
T
Tenable Blog
Latest news
Latest news
I
InfoQ

informationweek

2026 tech company layoffs InformationWeek Podcast: CTOs on using AI in regulated spaces How top CIOs are measuring the real ROI of IT automation What AI must learn from Roosevelt, conservation and 1929 Experian's chief innovation officer gleans AI gains with startup collab ETS CIO on competing with AI startups 'running with scissors' Before the next VMware: How CIOs prepare for vendor shocks The strategic alignment powering cyber-resilient organizations The AI infrastructure bottleneck is becoming a CIO problem InformationWeek Podcast: CTOs on reining in rogue AI agents Workplace equity in the age of AI Why and how to implement an AI asset rationalization strategy Why companies are shifting toward private AI models AI agents in automation: When to build, when to buy Navan CTO AI on trial: The Workday case that CIOs can The AI infrastructure boom is coming for enterprise budgets How CIOs can manage LLM costs: A practical guide What CIOs miss when buying vertical SaaS software InformationWeek Podcast: How CTOs balance AI and their teams Whirlpool, Duke Energy, Cleveland Clinic CIOs on scaling AI Where CIOs get stuck rebuilding the enterprise: What 'Rewired' reveals As AI makes projects harder to track, will CIOs need new controls? Why disaster recovery plans fail in geopolitical crises A silent erosion of enterprise AI by data poisoning Priceline CTO prioritizes engineers able to 'hold a room and a roadmap' InformationWeek Podcast: When CTOs need to restart IT projects Wayfair CTO maps agentic path across digital and brick-and-mortar commerce The AI contract gaps the Google-Pentagon deal just made visible Non-human identity sprawl is agentic AI's real risk Anthropic's Mythos forces a rethink of vulnerability management Outsourcing contracts weren't built for AI. CIOs are renegotiating now The AI spend hangover companies didn't plan for The power of CIO networking in the competitive AI world Why CIOs see AI projects stall: Speed without structure kills scale IT leaders should never let a good crisis go to waste SFO's digital twin maps airport operations from the curb to takeoff CIOs caught in the middle as AI startups disrupt vertical Saas Submit an IT Leadership column to InformationWeek Podcast: Rightsizing AI frameworks to avoid failure modes The invisible labor crisis inside IT: AI work the org chart can't see Why AI teams treat training data like capital Ask the Experts: How CIOs can identify and overcome cultural barriers to innovation Nobody told legal about your RAG pipeline -- why that's a problem Meta's new 'AI Zuckerberg' is a mirror for every C-suite Will the music stop for AI's funding dance? Rethink tech talent: Local is the smartest play for IT InformationWeek Podcast: Catching errors in AI-powered code CIOs can combat talent scarcity with AI-augmented leadership -- Gartner How Bellevue, Wash., is applying AI to streamline a broken permitting process Ignore the hype: Smarter tech bets at speed of change Who controls the fix? Colorado's repair fight tests CIO power Ask the Experts: The red flags that signal an AI project isn't worth pursuing The hidden high cost of training AI on AI Red Hat's Marco Bill: Resource control is key for AI sovereignty InformationWeek Podcast: New IT architecture, cloud, edge and AI Enterprises need Tier 1 provider relationships to deliver on AI How CIOs run and rebuild the business at the same time in the AI era It's not your tech stack, it's your structure -- fix it Confidential computing resurfaces as security priority for CIOs FinOps: Helpful tool, or a cloud control placebo for CIOs? Cleveland's open data overhaul: From sticky notes to public dashboards As Microsoft expands Copilot, CIOs face a new AI security gap Why build vs. buy doesn't fit modern IT systems InformationWeek Podcast: Is quantum computing slumbering? Your AI vendor is now a single point of failure Vibe coding: Speed without security is a liability A practical guide to controlling AI agent costs before they spiral AI fuels a new wave of technical debt The sunsetting of Sora: A hard lesson in AI portfolio resilience HP pushes broad internal AI use after early productivity gains Why value-based pricing is inevitable InformationWeek Podcast: Safeguarding ecosystems from outsiders Why AI scaling is so hard -- and what CIOs say works Humans are the North Star for AI-native workplaces -- Gartner How IT leaders build a culture for what comes next Compliance costs risk widening the AI gap AI-driven layoffs add new demands on CIOs to prove value AI transformation: Early wins are not enough for CIOs Why CIOs can't let users wait on IT Memory shortage doesn't have to spell disaster for IT budgets Accelerate AI adoption: 3 reasons for adopting MCP How techno-nationalism is complicating IT resilience and supply chains for CIOs InformationWeek Podcast: Compliance crackdown on AI and BYOD Workday’s AI reset: Agents and the race to remake SaaS Why enterprise AI initiatives keep dying before production Metrics of meaning: What do we really measure in AI? Techno-nationalism is reshaping CIO infrastructure strategy Using AI to pick team leaders -- without crossing legal or ethical lines What Oracle's layoffs reveal about running IT with fewer people Chief AI Officer on course-correcting when AI moves too fast Large enterprises need high-performing networks to scale AI InformationWeek Podcast: When do smaller AI models make sense? The future belongs to AI-driven IT Ways AI supercharges risk awareness and data insights for CIOs How automation prepares you for agentic NetOps Should the CIO, CFO or CEO hold the kill switch on AI? The CIO's new mandate: Redesign work itself Ask the Experts: CIOs say they wouldn’t pull workloads back from the cloud How AI is Reshaping the Enterprise
The real heat behind OpenAI
Madeleine Streets · 2026-06-26 · via informationweek

No, OpenAI hasn't expanded into snack foods. The company's new Jalapeño chip, unveiled Wednesday morning, is a custom inference chip developed with Broadcom and designed to help power its growing AI infrastructure. Although Jalapeño has yet to be deployed at scale, it has been described as comparable to Nvidia's coveted Blackwell chips and Alphabet's tensor processing units — at least, according to Broadcom CEO Hock Tan.

The move to custom silicon isn't unique. OpenAI joins the likes of Google, Meta and Amazon, who have all launched their own custom chips as they seek greater control over the infrastructure behind their AI services. Rather, this latest announcement is confirmation that major providers are disrupting the standard supply of off-the-shelf hardware in favor of systems tailored to their own workloads. 

"AI as an application has been so demanding that it's forced the industry to switch strategy to customization and higher levels of integration," said Alexander Harrowell, senior principal analyst at Omdia.

Related:What Apple's AI update reveals about the future of build vs. buy

In an industry like AI, where supply deals are valued in the billions, this pivot is notable. But the ramifications ripple beyond the AI providers' financial statements. For the enterprise customer, there is also impact — less from the technical specifications of a single new chip and more from what it reveals about the economics and future architecture of AI services.

Why now is the time to invest in custom silicon

This cycle in the electronics industry between standardized, merchant products and customized, application-specific ones is so common it has a name: Makimoto's Wave. Within the AI processor space, the wave has also been visible from afar; Harrowell said Omdia analysts have been working on the basis that we have been experiencing the wave since 2022. 

OpenAI's Jalapeño project was even less of a surprise.

"Specifically, we've been aware of an OpenAI/Broadcom project for some time," Harrowell said. "Not only has it been in the rumor mill, but it was also an obvious thing to happen — and then Hock Tan blurted it out on the 3Q 2025 earnings call."

The expectation that this will happen is tied to the clear advantages custom silicon offers, which are only amplified by the current market. While the initial outlay is significant, the resulting custom chip offers several benefits.

Improved performance where it counts

Jalapeno is an application-specific integrated circuit (ASIC), meaning it functions as an "AI accelerator" optimized for AI inference requirements, said Richard Simon, CTO at T-Systems International. It is intended to support the day-to-day operation of AI applications — which in OpenAI's case will include every prompt sent to ChatGPT. 

Related:Why bank AI projects stall at approval

Simons described the downstream effects of such proprietary silicon as: "Cost efficiency per inference token and better performance per watt, reduced latency and faster responses for applications and API calls, and rapid improvement and enhanced performance for consumer and enterprise customers."

Substantial cost savings

Perhaps most notably for OpenAI, the introduction of in-house chips makes a big difference to the company's bottom line. This is critically important at a time when many providers — including OpenAI — have expensive contracts with their own suppliers. 

"Every time a user prompts an OpenAI model, the company incurs high computational cost," said Quentin Reul, director of global AI strategy and solutions at expert.ai. "Based on its existing agreements and partnerships, most of the money generated from model inference is flowing directly to infrastructure providers such as Microsoft, OCI, AWS and NVIDIA."

By developing its own chips and data centers, OpenAI can reduce these operational costs through bypassing third-party margins. This lowers the long-term cost of serving their models, making the entire business proposition more sustainable.

Related:The agentic shift at the Snowflake Summit: Finding a platform's 'right to win'

As Harrowell explained: "NVIDIA's gross margin is between 75% and 78%, and all of that comes out of your margin. If you replace that with the 30%-35% margin an ASIC outsourcer like Broadcom usually gets, you've halved the drain on your profitability."

Reduced power consumption

One of the biggest challenges currently plaguing the AI sector is power consumption. While the U.S. government and the enterprise technology sector are working in tandem to expand data center capacity, these projects could take years to come to fruition, leaving AI providers in the dark. This is where a custom chip can have an outsized impact.

"Customizing helps manage the power draw, which is the biggest driver of costs in a data center environment," Harrowell said.

Customized chips require less power to achieve the same results, since they are optimized for their specific use case. This enables the company to keep its accelerator's thermal design power to 700W-800W, rather than pushing over the kilowatt, which allows it to skip liquid cooling altogether, Harrowell explained. This substantially changes the economics of AI and the data center.

The impact on enterprise customers

Most enterprise customers will never interact directly with a Jalapeño chip. Organizations consume AI through applications, platforms and APIs, while the underlying infrastructure remains largely invisible. Yet the infrastructure decisions being made today could shape the cost, performance and availability of enterprise AI services for years to come. 

At Omdia, analysts are forecasting that ASICs will start taking substantial market share in 2027, probably much more in volume rather than value as the price gap is large. Simons is optimistic that this will have positive knock-on effects for customer AI pricing.

"IT leaders will benefit from the full spectrum of economies of scale that this will usher in," he said. "Inference (and thus, Token) Economics will benefit from reduced cost-per-request, at scale."

Then there's the performance benefits. For every optimized deployment within OpenAI's products, customers will reap those rewards too, possibly at a similar or equal cost to what they're paying today due to OpenAI's own cost savings.

Finally, Reul observed a less obvious benefit for enterprise customers, in terms of data security: "By developing its own chip and building dedicated data centers, OpenAI can now reduce the risk of data leakage as data is shared across cloud infrastructure," he said.

Of course, it's important to note that the finished Jalapeño chip has not yet been released for external testing, so there has been no independent corroboration of its efficacy. However, Harrowell noted that OpenAI is using both the same ASIC shop and the same server OEM (Celestica) as Google, which suggests that the chip might be quite similar. Since Google's TPUs are "definitely competitive with the Blackwells," this casts the Jalapeño in a favorable light.

That said — even if comparisons to Nvidia's Blackwell chip turn out not to be accurate, they might not even be relevant. Since Jalapeño is not being used for model training but for inference, the goalposts are different. As Reul said, "the goal is to develop chips that are better aligned with its architecture." 

With Jalapeño, it seems to have done that.

About the Author

Madeleine Streets

Senior Editor, InformationWeek

Madeleine Streets is a senior editor at InformationWeek, where she shapes stories and contributes news analysis through a CIO lens. 

She comes to InformationWeek from TechTarget’s Learning Content team, in which she authored explainers and features on a range of enterprise IT topics. Before moving to the field of enterprise technology, Madeleine spent several years covering retail, consumer finance, and ecommerce technology for fashion trade publication Footwear News. She has also been published in Women’s Wear Daily, TIME, Associated Press, SELF, and Observer, among others. The thread that ties her coverage together is a commitment to honest, impactful storytelling -- and insatiable curiosity.

Outside of writing, Madeleine can be found studying wine, singing in her local choir, and working her way towards her annual reading goal of 100 books. She is based in New York City, US.