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Tag: training pipeline

Scaling Laws in Practice: When to Stop Training Large Language Models
Scaling Laws in Practice: When to Stop Training Large Language Models

Tamara Weed, Apr, 30 2026

Stop wasting compute. Learn when to move past Chinchilla optimality and enter the overtraining regime to balance training costs with inference performance.

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