{"version":"1.0","type":"rich","provider_name":"Acast","provider_url":"https://acast.com","height":250,"width":700,"html":"<iframe src=\"https://embed.acast.com/$/688bd9d76bbbf6afc7811bec/68c7fcd61f3cc96453625a94?\" frameBorder=\"0\" width=\"700\" height=\"250\"></iframe>","title":"Large Language Models: Teaching the Parrot to Talk | AI Series Pt. 2","description":"<p>In Episode 7 of <em>Mr. Fred’s Tech Talks</em>, I dive deeper into Large Language Models (LLMs) and explore how they’re trained. Using the fun analogy of a parrot that never stops practicing, Mr. Fred explains the 9-step training pipeline: from collecting massive datasets and tokenizing text, to neurons, weights, backpropagation, GPUs, fine-tuning, and safety alignment...but in a LOW TECH JARGON way.</p><p><br></p><p>I’ll also talk about probability math, why LLMs don’t really “understand” but instead predict the most likely next word, like rolling loaded dice. Along the way, enjoy some nostalgic sound bites from movies and TV that connect the dots between memory, patterns, and AI.</p><p><br></p><p>🎧 Highlights:</p><ul><li>The parrot analogy for LLMs</li><li>What AI “neurons” are (tiny math functions, not brain cells)</li><li>Why data quality and fine-tuning matter</li><li>Probability explained with dice and jokes</li><li>Tech Tip: Ask AI <em>how</em> it got its answer</li></ul><p><br></p><p>Whether you’re a parent, teacher, student, or just curious about AI, this episode will give you a fun and clear view of how language models actually learn.</p>","author_name":"Fred Aebli"}