
Abstract Temporal Large Language Models (TLLMs) represent a groundbreaking advancement in artificial intelligence, enabling the analysis and utilization of vast amounts of historical and contemporary data within a temporal context. This multi-part paper explores the foundations, applications, and implications of TLLMs across various domains, including engineering,scientific research, social sciences, and the humanities. We introduce the concept of "wet" and "dry" AGIs, highlighting their unique capabilities in leveraging TLLMs through the Temporal LLM Transfer Protocol (TTP). We delve into the concept of AI-Time, a vastly accelerated processing speed that allows AGIs to achieve in seconds what would take humans years or even centuries. Furthermore, we examine the potential of Synthetic Artifact Regeneration (SyAR) to virtually reconstruct lost or damaged artifacts, texts, and environments. Through illustrative examples, we showcase how TLLMs and AGIs can revolutionize problem-solving, accelerate innovation, and deepen our understanding of the past,present, and future. We also discuss the ethical, social, and economic implications of TLLMs, emphasizing the importance of responsible development, equitable access, and human-AI collaboration. By harnessing the power of TLLMs, we can unlock new frontiers of knowledge and innovation, ushering in a new era of human advancement.
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