China's Top AI Firm iFlytek Blames Washington Pressure for Projected $65 Million Loss - Tech Times
<a href="https://news.google.com/rss/articles/CBMivgFBVV95cUxQdHVzV20tQzRNRjhjMmlqSzRQVW1oUngxdFZudjktNUF3VlFDU0VXN0llM2ZIRExZQTNmS1BwN0NRZC1Xa0RxQ0NJLUJsQVIyMFVyRWU4SzZxUjBKMW55WnlYUmZ5VDdvZ0VYbkpTa2MySVdKSUpaM3A5NTJRdVhDT2xBclZxbGdLWkllUEFJcFBYeTE0WENMV0xpOThpS0JycDBSTm5EYWNQRTg4VU9jS0g4MldjcFk5bmZqOEFB?oc=5" target="_blank">China's Top AI Firm iFlytek Blames Washington Pressure for Projected $65 Million Loss</a> <font color="#6f6f6f">Tech Times</font>
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<p> <img loading="lazy" src="https://www.cmu.edu/news/sites/default/files/styles/listings_desktop_1x_/public/2026-01/250716A_3D_Bio_Lab234.jpg.webp?itok=f-g_ECey" width="900" height="508" alt="Tissue lab"> </p> Researchers at Carnegie Mellon University are revolutionizing medical care for diseases that impact millions of Americans and the treatments they develop could alleviate major public health challenges.

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<p> <img loading="lazy" src="https://www.cmu.edu/news/sites/default/files/styles/listings_desktop_1x_/public/2026-01/MC-200709A-Nanolab-0658.jpeg.webp?itok=tnAFG-Hk" width="900" height="508" alt="Nanotechnology laboratory"> </p> Researchers at Carnegie Mellon University are developing ways to catch cancer earlier than ever before. The project showed such promise that it was awarded up to $26.7 million in federal funding from the Advanced Research Projects Agency for Health (ARPA-H).
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