Microsoft Debuts New Copilot Upgrades Combining Anthropic, OpenAI Models - The Information
<a href="https://news.google.com/rss/articles/CBMisgFBVV95cUxPTkJORmoyTzNCZDJpMDFCQ0pGeGVZT21fWGpEekpCaXMxczJlRU92RWlNS0JyZlRjeWdJMWg3cGJNNzY4YVRUWXA2RWFTU1hJTExPZkZtQkZwQmplanREVGJ2aDk2VmMxYTEzaEN6YkdfNTVJX3ZYUEI4M1BxYm5VLVRXaEdIVS1hR2cxTDBTNEtTc0o2NEFJVVNwU0FOSmp2eHIzZERJemdmYnlGZGxveEt3?oc=5" target="_blank">Microsoft Debuts New Copilot Upgrades Combining Anthropic, OpenAI Models</a> <font color="#6f6f6f">The Information</font>
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modelcopilotQuoting Soohoon Choi
<blockquote cite="https://www.greptile.com/blog/ai-slopware-future"><p>I want to argue that AI models will write good code because of economic incentives. Good code is cheaper to generate and maintain. Competition is high between the AI models right now, and the ones that win will help developers ship reliable features fastest, which requires simple, maintainable code. Good code will prevail, not only because we want it to (though we do!), but because economic forces demand it. Markets will not reward slop in coding, in the long-term.</p></blockquote> <p class="cite">— <a href="https://www.greptile.com/blog/ai-slopware-future">Soohoon Choi</a>, Slop Is Not Necessarily The Future</p> <p>Tags: <a href="https://simonwillison.net/tags/slop">slop</a>, <a href="https://simonwillison.net/ta
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Quoting Soohoon Choi
<blockquote cite="https://www.greptile.com/blog/ai-slopware-future"><p>I want to argue that AI models will write good code because of economic incentives. Good code is cheaper to generate and maintain. Competition is high between the AI models right now, and the ones that win will help developers ship reliable features fastest, which requires simple, maintainable code. Good code will prevail, not only because we want it to (though we do!), but because economic forces demand it. Markets will not reward slop in coding, in the long-term.</p></blockquote> <p class="cite">— <a href="https://www.greptile.com/blog/ai-slopware-future">Soohoon Choi</a>, Slop Is Not Necessarily The Future</p> <p>Tags: <a href="https://simonwillison.net/tags/slop">slop</a>, <a href="https://simonwillison.net/ta
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<h2> TL;DR </h2> <p>Em 31 de março de 2026, invasores comprometeram a conta npm do mantenedor principal do Axios, o cliente HTTP JavaScript mais popular com 83 milhões de downloads semanais. Eles publicaram versões maliciosas (1.14.1 e 0.30.4) contendo um RAT (Cavalo de Troia de Acesso Remoto) multiplataforma que rouba credenciais, chaves SSH e tokens de nuvem de máquinas de desenvolvedores. Faça downgrade para o Axios 1.14.0 imediatamente, rotacione todos os segredos e escaneie seu sistema em busca de indicadores de comprometimento.</p> <p><a href="https://apidog.com/?utm_source=dev.to&utm_medium=wanda&utm_content=n8n-post-automation" class="crayons-btn crayons-btn--primary">Experimente o Apidog hoje</a> </p> <h2> Introdução </h2> <p>Axios processa mais requisições HTTP do que qua
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