Trump says Apple will build chips with Intel in US
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Intel has started early production of its 18A-P chip manufacturing process. This new technology offers better speed and power efficiency. Chips made with 18A-P will run cooler. Existing chip designs can be used with 18A-P.
The chip industry is the most complex that you could imagine, and quantum computing, intrinsically, is based on some of the most complex, non-intuitively understandable math that humankind has ever discovered,
Risk production for 18A-P is a concrete execution milestone, and Intel claims clear, customer-friendly gains (up to +9% performance at same power or -18% power at same performance) plus 20–40% better thermal behavior.
TSMC’s capacity struggles are turning into a boon for Intel. As the Taiwanese chip making giant struggles to meet overwhelming demand for its chip manufacturing capacity, several major AI chip design companies,
CEO Elon Musk dropped a striking claim during a recent conversation with Baron Capital founder Ron Baron, circulated widely after being posted to X by @carm1nee. Musk said he is building a chip that will be “two to three times better than NVIDIA” at 10% of the cost,
TSMC’s dominance in advanced chip manufacturing has been good for consistency, but it also comes with downsides. When one company controls most of the cutting-edge process nodes, chipmakers have fewer options, and that usually means higher prices.
As traditional chip miniaturization slows, researchers have found a way to pack more computing power into the same space by stacking silicon circuits in multiple layers. The new process uses ultra-thin silicon membranes and low-temperature manufacturing techniques to overcome a major obstacle that has long blocked the production of true 3D chips.
KLAC's yield tools gain relevance as AI chip complexity drives demand for defect detection, process monitoring and faster production ramp-up.
