Welcome to this episode of the AI Concepts Podcast. Join host Shay as we delve into the fundamental architecture behind modern deep learning - the feedforward neural network. In this session, we take a closer look at how data flows through this network, transforming input into output without the need for loops or memory.
Learn about the mechanics of feedforward networks, including weights, biases, and activation functions, and discover why they form the backbone of more complex network models.
We also explore the practical applications and limitations of feedforward networks, discussing their role in image classification, sentiment analysis, and more.
Stay tuned for the next episode where we'll discuss backpropagation - the process enabling neural networks to learn and improve.
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