Introducing the Meta AI App: A New Way to Access Your AI Assistant - meta.com
<a href="https://news.google.com/rss/articles/CBMijwFBVV95cUxQX0g4Ql9Jak1sTzc0LTc3MEFmVFJuRkVfWGVFTktPUkxkRU43SHhpekJXYXlVQlRjVzRYNnRldHViQUVtemxHcmxnczdSRTl5VlVveXZoRzh0YVdXa2prU1F3bXZ0QTFLSlVBcFpkTUptSHE3elFva1BudjRrQkxtRHdBbmtsMWswYlRpdEFhQdIBlAFBVV95cUxPcnhjeWZ4UVRIWGVfNE9FV3dIbWpLZUZzbEtSeUxoWWlSb2o0WnZIWGFBd0lzV1BJTGVDR0Z2M2p6RWpYdHRvUk93VVRVOG5lUFJGSXJsNkVOZThBTWRLUXFkTXJDUDVkZm81MU40NVZkc1Z0d0FYMWtxMzdQNWlsdHRiWWJ5dEYxY0NkZW80TlAzaHhN?oc=5" target="_blank">Introducing the Meta AI App: A New Way to Access Your AI Assistant</a> <font color="#6f6f6f">meta.com</font>
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OpenAI Tops $850 Billion Valuation | Bloomberg Tech 4/1/2026
Bloomberg’s Tim Stenovec discusses OpenAI’s recent mega-funding round that valued the company at $852 billion. Plus, Anthropic blames the accidental release of internal source code behind its Claude coding assistant on human error. And, it’s launch day for Artemis II as NASA prepares to send astronauts back to the moon’s vicinity. (Source: Bloomberg)
Baidu’s AI Assistant Reaches Milestone of 200 Million Monthly Active Users - WSJ
<a href="https://news.google.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?oc=5" target="_blank">Baidu’s AI Assistant Reaches Milestone of 200 Million Monthly Active Users</a> <font color="#6f6f6f">WSJ</font>
Amazon's Rufus AI shopping assistant can be easily jailbroken and tricked into answering other questions — specific prompts break the chatbot's guidelines and reach underlying AI engine - Tom's Hardware
<a href="https://news.google.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?oc=5" target="_blank">Amazon's Rufus AI shopping assistant can be easily jailbroken and tricked into answering other questions — specific prompts break the chatbot's guidelines and reach underlying AI engine</a> <font color="#6f6f6f">Tom's Hardware</font>
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