OpenAI’s new LLM exposes the secrets of how AI really works

MIT Technology ReviewThursday, November 13, 2025 at 6:00:00 PM
OpenAI's recent development of a more transparent large language model (LLM) marks a significant step in demystifying artificial intelligence. As highlighted in related articles, the complexity of existing models often obscures their inner workings, leading to a lack of understanding among users and researchers. The new model not only enhances transparency but also aligns with OpenAI's ongoing efforts to improve its offerings, such as the introduction of Friendlier GPT-5.1 in ChatGPT. This evolution reflects a broader trend in AI development, where clarity and user-friendliness are becoming paramount, ensuring that advancements in technology are accessible and comprehensible.
— via World Pulse Now AI Editorial System

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