In this episode of the AI Concepts Podcast, host Shea breaks down the concept of gradient descent, a crucial mechanism in machine learning that helps models learn and improve by reducing errors. Using simple examples and analogies, Shea explores how gradient descent functions like a guide, enabling machine learning models to adjust themselves and make more accurate predictions over time.
Listen in to grasp how machine learning models start with random parameter settings and progressively fine-tune them to minimize errors through the systematic process of measuring errors, calculating gradients, and making small, guided adjustments. Discover why gradient descent is an essential tool for tackling complex problems and achieving accurate results step by step.
Join us on this deep dive to understand the power of gradient descent, its simplicity, and why small, steady progress makes all the difference in both machine learning and real life. Stay curious and keep exploring AI with us!
24/7 News: The Latest
The latest news in 4 minutes updated every hour, every day.
Therapy Gecko
An unlicensed lizard psychologist travels the universe talking to strangers about absolutely nothing. TO CALL THE GECKO: follow me on https://www.twitch.tv/lyleforever to get a notification for when I am taking calls. I am usually live Mondays, Wednesdays, and Fridays but lately a lot of other times too. I am a gecko.
The Joe Rogan Experience
The official podcast of comedian Joe Rogan.