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import{s as Y,n as Z,o as tt}from"../chunks/scheduler.8a2cc2fa.js";import{S as et,i as at,e as x,s,c as m,h as nt,a as E,d as a,b as r,f as P,g as p,j as st,k as z,l as rt,m as n,n as o,t as l,o as d,p as b}from"../chunks/index.7079e750.js";import{C as it,H as U,E as mt}from"../chunks/MermaidChart.svelte_svelte_type_style_lang.e7a75db4.js";import{D as B}from"../chunks/Docstring.dce52892.js";function pt(J){let i,D,T,C,$,H,f,F,g,K="RMSprop is an adaptive learning rate optimizer that is very similar to <code>Adagrad</code>. RMSprop stores a <em>weighted average</em> of the squared past gradients for each parameter and uses it to scale their learning rate. 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