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Home » 10% of Nvidia’s cost: Why Tesla-Intel chip partnership require attention

10% of Nvidia’s cost: Why Tesla-Intel chip partnership require attention

Tarun Khanna by Tarun Khanna
November 10, 2025
in Artificial Intelligence
Reading Time: 4 mins read
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10% of Nvidia’s cost: Why Tesla-Intel chip partnership require attention

Photo Credit: https://www.artificialintelligence-news.com/

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The potential Tesla-Intel chip partnership ought to supply AI chips at just 10% of Nvidia’s value – a declare that represents a massive development in AI infrastructure that organization technology leaders can’t afford to ignore.

On November 6, 2025, Tesla CEO Elon Musk stated publicly at the corporation’s annual shareholder meeting that the electrical car producers is considering working with Intel to produce its 5th-generation AI chips, signaling a chief strategic shift in how AI computing hardware might be manufactured and distributed.

“You know, maybe we’ll, we’ll do something with Intel,” Musk instructed shareholders, in keeping with a Reuters report. “We haven’t signed any deal, but it’s probably really worth having discussions with Intel.” The statement sent Intel shares up 4% in after-hours trading, underscoring how significantly the market views the capacity collaboration.

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The strategic context in the back of the partnership

Tesla’s consideration of Intel as a production associate comes at a critical juncture for both organizations. Tesla is designing its AI5 chip to power its sufficient driving systems.

Recently on its fourth-generation chip, Tesla has identified a huge supply constraint that traditional partnerships with Taiwan’s TSMC and South Korea’s Samsung cannot deal fully.

“Even while we extrapolate the first-class-case scenario for chip manufacturing from our providers, it’s still now not sufficient,” Musk stated during the shareholder assembly. The deliver gap has led Tesla to reconsider building what Musk calls a “terafab” – a huge chip fabrication facility able to producing at least 100,000 wafer begins per month.

For Intel, the potential partnership provides an critical opportunity. The US chipmaker has lagged substantially in the back of Nvidia inside the AI chip race and desperately needs external clients for its latest production technology.

The US government currently took a 10% stake in Intel, underscoring the strategic significance of maintaining domestic chip manufacturing skills.

Cost and performance implications

At 10% of Nvidia’s production cost, the technical specifications Musk outlined throughout the shareholder assembly may want to reshape organisation AI economics. According to Musk, Tesla’s AI5 chip would take about one-third of the power utilized by Nvidia’s flagship Blackwell chip, and cost just 10% as a great deal to production.

“I’m great hardcore on chips right now, as you may be able to tell,” Musk stated. “I even have chips on the brain.”

The value and performance projections, if realised, could regulate the economics of AI deployment. Enterprise leaders investing closely in AI infrastructure have to monitor whether these overall performance goals materialise, as they may influence future technology buying choices within the industry.

The chip could be cheaper, power-efficient, and optimized for Tesla’s own software, Musk stated.

Manufacturing timeline and scale

Tesla’s chip manufacturing roadmap presents a timeline for enterprise planning. A small wide variety of AI5 units could be generated in 2026, with excessive-quantity manufacturing feasible in 2027. Musk indicated in a post on social media that AI6 will use the same fabrication centers but attain more or less two times the overall performance, with volume manufacturing focused for mid-2028.

The scale of Tesla’s ambitions is great. The proposed “terafab” would represent an enlargement of domestic chip production capability, potentially reducing deliver chain vulnerabilities that have plagued the technology industry in recent years.

“So I assume we may also ought to do a Tesla terafab. It’s like a giga but way larger. I can’t see every other manner to get to the extent of chips that we’re seeking out. So I think we’re likely going to have to build a colossal chip fab. It’s got to be finished,” Musk said.

What this indicates for enterprise decision-makers

Numerous strategic issues emerge from any potential Tesla-Intel chip partnership:

Supply chain resilience: The flow closer to domestic chip manufacturing addresses issues approximately supply chain concentration in Asia. Enterprise leaders dealing with generation hazard should remember how shifts in chip production geography may affect their deliver chains and supplier relationships.

Cost structure adjustments: If Tesla achieves its said price goals, the aggressive panorama for AI chips could shift. Organisations must put together contingency plans for potential price pressure on contemporary providers and compare whether or not alternative chip architectures are possible.

Technology sovereignty: The US government’s stake in Intel and guide for domestic chip production replicate broader geopolitical considerations. Enterprise leaders in regulated industries or those managing touchy information must check how the trends might affect their era assets.

Innovation tempo: Tesla’s competitive timeline for more than one chip generations indicates an accelerating pace of AI hardware innovation. Technology leaders should issue this into refresh cycles and architecture selections, warding off untimely dedication to current-technology generation.

The broader industry context

Musk’s statements occur against the backdrop of US-China technology opposition. Export restrictions have impacted Nvidia’s commercial enterprise in China, in which its marketplace percentage has reportedly dropped from 95% to near 0.

Intel declined to touch upon Musk’s comments, and no formal settlement has been introduced. However, the general public nature of the statements, and the marketplace’s reaction, advocate sizeable discussions may quickly be underway.

The AI chip landscape is coming into a duration of flux. Organizations have to keep flexibility of their infrastructure strategy and reveal how partnerships like Tesla-Intel would possibly reshape the aggressive dynamics of AI hardware production.

The selections made nowadays about chip manufacturing partnerships should determine which establishments have get admission to to cost-powerful, excessive-performance AI infrastructure within the coming years.

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Tarun Khanna

Tarun Khanna

Founder DeepTech Bytes - Data Scientist | Author | IT Consultant
Tarun Khanna is a versatile and accomplished Data Scientist, with expertise in IT Consultancy as well as Specialization in Software Development and Digital Marketing Solutions.

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