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<a accesskey="3" href="page.php?w=Neural_scaling_law&amp;p=2">3.Next</a>
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<p>In <a href="page.php?w=machine_learning">machine learning</a>, a <b>neural scaling law</b> is an empirical <a href="page.php?w=scaling_law">scaling law</a> that describes how <a href="page.php?w=Neural_network_%28machine_learning%29">neural network</a> performance changes as key factors are scaled up or down. These factors typically include the number of parameters, <a href="page.php?w=Training%2C_validation%2C_and_test_data_sets">training dataset</a> size, and training cost. Some models also exhibit performance gains by scaling <a href="page.php?w=inference">inference</a></p><p>
<a accesskey="3" href="page.php?w=Neural_scaling_law&amp;p=2">3.Next</a>
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