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Scaling Laws in AI

Justified Posteriors

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Intro

This chapter examines the empirical relationships between model size, data quantity, and computational resources in machine learning performance. The speakers discuss various research claims on predictable outcomes due to resource allocation while questioning the stability and applicability of these scaling laws across diverse contexts.

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