Xplinary AI: Talking about Complex AI in Simple Ways

By: Brian Bauer Author and Guest Hosts
  • Summary

  • Welcome to Xplinary AI: Talking about Complex AI in Simple Ways! If you're curious about artificial intelligence but don’t want to drown in technical jargon, this is the podcast for you! We break down the most mind-bending concepts in AI into fun, bite-sized discussions that anyone can enjoy. Whether you're a seasoned tech enthusiast or just someone who's fascinated by the future, Xplinary AI keeps things light, engaging, and surprisingly easy to understand. Dive into the world of AI with us—where even the most complex ideas feel refreshingly simple!

    100% original and authentic articles , white papers, and written thought experiment written by a real life human, brought to podcast life by NotebookLM.

    Original source content available on LinkedIn and by request.

    Brian Bauer 2024
    Show more Show less
activate_Holiday_promo_in_buybox_DT_T2
Episodes
  • IP EP15: Philosophical Differences: AI Logic vs Reason at an Existential Level Concerning the Existence of Time
    Oct 6 2024

    the concept of time and its relationship to human perception and the universe. The author, a human, grapples with the idea of whether time is a human construct or an objective reality. In response, an AI language model (LLM) provides a structured, logical argument that supports the existence of time as a fundamental aspect of the universe, independent of human observation. The LLM uses scientific principles, such as Einstein's theory of relativity, and logical premises to support its argument. The text then compares the human and AI approaches to the question of time's existence, highlighting the different perspectives and approaches to this philosophical question.

    Show more Show less
    12 mins
  • IP EP 13: Evaluating the authenticity of human-authored content in the age of generative AI
    Oct 5 2024

    a framework for evaluating the authenticity of human-authored content in the age of generative AI. The framework emphasizes the importance of analyzing the origin story of the written work, including the author's motivation, cognitive process, and prior knowledge. It proposes tests for originality, focusing on the thesis statement, thesis defense, and writing style, and utilizes a weighted scoring system to determine the level of authenticity. The framework also introduces the concept of a "writing fingerprint" derived from an author's past work to further identify their unique style and differentiate between human and AI-generated content. This approach aims to provide a nuanced and adaptive tool for accurately assessing the origins of written work in the ever-evolving landscape of generative AI.

    Show more Show less
    10 mins
  • IP EP11: AI Models are Eating Themselves: Synthetic Cannibalism is Here
    Oct 6 2024

    the rapid growth of data used to train Large Language Models (LLMs), particularly Meta's LLM. It argues that this expansion is fueled by the inclusion of synthetic data, which is data generated by the LLMs themselves, leading to a cycle of data consumption and regeneration. This process is likened to "synthetic cannibalism," as the LLM consumes its own outputs, and to "incestuous phylogeny," as the model's development is influenced by its own past outputs. The text suggests that this trend could lead to the creation of a self-sustaining synthetic entity, with consequences that may be both beneficial and alarming.

    Show more Show less
    11 mins

What listeners say about Xplinary AI: Talking about Complex AI in Simple Ways

Average customer ratings

Reviews - Please select the tabs below to change the source of reviews.