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The Practical AI Digest

The Practical AI Digest

De : Mo Bhuiyan via NotebookLM
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Distilling AI/ML theory into practical insights. One concept at a time. No jargon.Mo Bhuiyan via NotebookLM
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    Épisodes
    • Diffusion Models: AI Image Generation Through Noise
      Jan 20 2026

      In this episode, we break down what diffusion models are and why they’ve become the go-to method for AI image generation. You’ll learn how these models gradually add and remove noise to transform random pixels into coherent images, enabling use cases from art creation to image restoration. We also explore recent advances like latent diffusion, which compresses the generation process for efficiency, and discuss how diffusion techniques have achieved state-of-the-art results in text-to-image tasks while remaining flexible for control and guidance.

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      25 min
    • Graph Neural Networks: Learning from Connections, Not Just Data
      Sep 30 2025

      This episode breaks down what graph neural networks (GNNs) are and why they matter. You’ll learn how GNNs use nodes and edges to represent relationships and how message passing lets models make sense of social, biological, and networked data. We’ll also cover recent advancements like PGNN for multi-modal graphs and common pitfalls like scalability and over-smoothing.

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      31 min
    • Neuro-Symbolic AI: Combining Learning With Logic
      Sep 16 2025

      In this episode, we explain what neuro-symbolic AI is and why it matters. You’ll learn how neural networks handle patterns, how symbolic systems handle rules, and how combining the two can help models reason more reliably. We also cover real examples where this approach is already being applied in assistants and robotics, showing how it could make AI systems more trustworthy and useful.

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      25 min
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