Deep Learning Deep Dive: From Neural Networks to Differentiable Programming

07/01/2026 30 min

Listen "Deep Learning Deep Dive: From Neural Networks to Differentiable Programming"

Episode Synopsis

oin Neural Intel as we go beyond the surface of the hottest topic in computer science. In this episode, we break down the core components of machine learning, distinguishing between regression (mapping continuous inputs to outputs) and classification (assigning discrete labels). We discuss the "loose" biological inspiration behind neural networks, explaining how nodes and weighted connections simulate human intelligence to solve complex problems like object recognition.We also pull back the curtain on the math that makes AI work, moving from simple step functions to differentiable programming and stochastic gradient descent. Learn why researchers favor activation functions like the sigmoid over traditional models to ensure the mathematical derivatives are informative enough for training. Whether you are a student or a tech enthusiast, this episode will help you evaluate and criticize the deep learning models shaping our world.Follow us on X/Twitter: @neuralintelorg Visit our website: neuralintel.org

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