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China's $50 Billion Chip Fund Switches Tack to Fight US Curbs

China's $50 Billion Chip Fund Switches Tack to Fight US Curbs

Bloomberg4 hours ago

China's main chip investment fund is planning to focus on the country's key shortcomings in sectors like lithography and semiconductor design software, adjusting its approach to better overcome US efforts to stop its technological advances.
The third phase of the state-backed National Integrated Circuit Industry Investment Fund, better known as Big Fund III, will focus on backing local companies and projects in areas considered bottlenecks to technological advances, people familiar with the matter said. That includes lithography systems, where Dutch firm ASML Holding NV dominates, and chip design tools, an arena controlled by US companies Cadence Design Systems Inc. and Synopsys Inc.

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