OpenAI shutting down Sora video-generating app - NBC News
<a href="https://news.google.com/rss/articles/CBMingFBVV95cUxOejJ0N0NpRUhQYWpwZXRsY3k1WU5PUlJYOHlqN1JRMC1JWGVzQjNoYlY3eHZ6WlVaTE93Z0lmT2FWdDFlcWk2eHNtTVZwLWI1M05Ca2Q5Y2ZWU3FHNWdTN29JcXNrSm1XYzVpM1dvZnM3R1ZxQTJ5RkliRzROVmxCd0R1LWhwZzlmc1Z1RXlfQTNxeWVaVGxHdmpPZER6UQ?oc=5" target="_blank">OpenAI shutting down Sora video-generating app</a> <font color="#6f6f6f">NBC News</font>
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