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Gradient Dissent: Conversations on AI cover image

Jeremy Howard β€” The Simple but Profound Insight Behind Diffusion

Gradient Dissent: Conversations on AI

NOTE

Embrace Iteration and Feedback in Innovation

Utilizing available computing resources effectively can catalyze advancements, especially when focusing on useful work. Assumptions about current capabilities should include an awareness of their limitations and a vision for future improvements. Adopting simpler, equivalent problems allows for experimentation and developing solutions. Working on reduced datasets, like the Fashion MNIST, enables efficient testing and rapid feedback loops essential for refining ideas. Prioritizing close correlation between tests and final objectives optimizes the learning and development process.

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