Former Intel CEO Pat Gelsinger, now general partner at Playground Global, recently discussed the intensifying AI chip competition during CNBC’s ‘Squawk Box.’ His key message? Google’s emergence as an AI hardware player is positive for the entire industry, including dominant leader Nvidia.
Table of Contents

The Competitive AI Chip Landscape
| Company | AI Chip | Key Advantage | Current Status |
|---|---|---|---|
| Nvidia | H100/Blackwell | Market leader, 2/3 revenue from top 5 customers | Dominant position |
| TPU (7th generation) | Custom design for internal use | Expanding commercial availability | |
| Intel | Gaudi 3 | Better TCO than H100, supply alternative | Challenging Nvidia |
| AMD | MI300 Series | Direct GPU competitor | Growing market share |
| Amazon | Trainium | Custom AI training chip | Internal deployment |
| Microsoft | Maia | Azure-optimized accelerator | Development phase |

Why Competition Matters
Gelsinger emphasized that competition fosters innovation and accelerates development across the industry. Google’s partnership with Broadcom to commercialize TPUs represents a strategic shift from internal-only deployment to broader market availability, creating meaningful alternatives to Nvidia’s dominant GPUs.
However, Gelsinger noted the challenges: building proprietary chips for internal data centers differs significantly from commercial availability in third-party facilities. This requires robust design partnerships, manufacturing scalability, and comprehensive support ecosystems.

On AI model development, Gelsinger expressed skepticism about achieving superintelligence through simply building larger models, predicting breakthroughs will come from dedicated models, multi-model experiences, and mixture of experts. This architectural shift could favor specialized, efficient chips over massive general-purpose platforms.
For comprehensive tech industry analysis and AI developments, visit TechnoSports and watch the full CNBC Squawk Box interview.
FAQs
Why are tech giants building their own AI chips?
Companies like Google spent billions on Nvidia GPUs, creating urgency to reduce costs through custom chip development.
Will Google’s TPUs replace Nvidia’s dominance?
Not immediately, but they provide viable alternatives as competition intensifies and diversifies the AI hardware market.







