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import{s as J,n as K,o as V}from"../chunks/scheduler.ddeee2a5.js";import{S as W,i as Z,e as m,s as a,c as v,h as tt,a as o,d as n,b as s,f as D,g as w,j as b,k as I,l as et,m as l,n as P,t as T,o as L,p as y}from"../chunks/index.b5ed4bbb.js";import{C as nt,H as lt,E as at}from"../chunks/MermaidChart.svelte_svelte_type_style_lang.62eb88c9.js";import{Y as st}from"../chunks/Youtube.08e6a733.js";import{C as it}from"../chunks/CourseFloatingBanner.e70be405.js";function mt(B){let i,M,d,E,r,H,f,z,p,S,u,q,$,F="デコーダーモデルとは、Transformerモデルのデコーダーのみを使用したモデルを指します。 処理の各段階で、処理対象の単語について、attention層はその単語より前に出現した単語にのみアクセスすることができます。 このようなモデルは<em>自己回帰モデル</em>と呼ばれます。",G,c,N=" デコーダーモデルの事前学習は、次に続く単語を予測するタスクを解くことを中心に展開されます。",j,h,O="これらのモデルは、文を生成するタスクに最も適しています。",R,g,Q="デコーダーモデルでは以下のものが代表的です:",U,_,X='<li><a href="https://huggingface.co/transformers/model_doc/ctrl.html" rel="nofollow">CTRL</a></li> <li><a href="https://huggingface.co/docs/transformers/model_doc/openai-gpt" rel="nofollow">GPT</a></li> <li><a href="https://huggingface.co/transformers/model_doc/gpt2.html" rel="nofollow">GPT-2</a></li> <li><a href="https://huggingface.co/transformers/model_doc/transfo-xl.html" rel="nofollow">Transformer XL</a></li>',Y,x,k,C,A;return r=new nt({props:{containerStyle:"float: right; margin-left: 10px; display: inline-flex; position: relative; z-index: 10;"}}),f=new lt({props:{title:"デコーダーモデル",local:"デコーダーモデル",headingTag:"h1"}}),p=new it({props:{chapter:1,classNames:"absolute z-10 right-0 top-0"}}),u=new st({props:{id:"d_ixlCubqQw"}}),x=new at({props:{source:"https://github.com/huggingface/course/blob/main/chapters/ja/chapter1/6.mdx"}}),{c(){i=m("meta"),M=a(),d=m("p"),E=a(),v(r.$$.fragment),H=a(),v(f.$$.fragment),z=a(),v(p.$$.fragment),S=a(),v(u.$$.fragment),q=a(),$=m("p"),$.innerHTML=F,G=a(),c=m("p"),c.textContent=N,j=a(),h=m("p"),h.textContent=O,R=a(),g=m("p"),g.textContent=Q,U=a(),_=m("ul"),_.innerHTML=X,Y=a(),v(x.$$.fragment),k=a(),C=m("p"),this.h()},l(t){const e=tt("svelte-u9bgzb",document.head);i=o(e,"META",{name:!0,content:!0}),e.forEach(n),M=s(t),d=o(t,"P",{}),D(d).forEach(n),E=s(t),w(r.$$.fragment,t),H=s(t),w(f.$$.fragment,t),z=s(t),w(p.$$.fragment,t),S=s(t),w(u.$$.fragment,t),q=s(t),$=o(t,"P",{"data-svelte-h":!0}),b($)!=="svelte-nthov6"&&($.innerHTML=F),G=s(t),c=o(t,"P",{"data-svelte-h":!0}),b(c)!=="svelte-mfhtzo"&&(c.textContent=N),j=s(t),h=o(t,"P",{"data-svelte-h":!0}),b(h)!=="svelte-ic0gz7"&&(h.textContent=O),R=s(t),g=o(t,"P",{"data-svelte-h":!0}),b(g)!=="svelte-igdfsl"&&(g.textContent=Q),U=s(t),_=o(t,"UL",{"data-svelte-h":!0}),b(_)!=="svelte-1tiql5w"&&(_.innerHTML=X),Y=s(t),w(x.$$.fragment,t),k=s(t),C=o(t,"P",{}),D(C).forEach(n),this.h()},h(){I(i,"name","hf:doc:metadata"),I(i,"content",ot)},m(t,e){et(document.head,i),l(t,M,e),l(t,d,e),l(t,E,e),P(r,t,e),l(t,H,e),P(f,t,e),l(t,z,e),P(p,t,e),l(t,S,e),P(u,t,e),l(t,q,e),l(t,$,e),l(t,G,e),l(t,c,e),l(t,j,e),l(t,h,e),l(t,R,e),l(t,g,e),l(t,U,e),l(t,_,e),l(t,Y,e),P(x,t,e),l(t,k,e),l(t,C,e),A=!0},p:K,i(t){A||(T(r.$$.fragment,t),T(f.$$.fragment,t),T(p.$$.fragment,t),T(u.$$.fragment,t),T(x.$$.fragment,t),A=!0)},o(t){L(r.$$.fragment,t),L(f.$$.fragment,t),L(p.$$.fragment,t),L(u.$$.fragment,t),L(x.$$.fragment,t),A=!1},d(t){t&&(n(M),n(d),n(E),n(H),n(z),n(S),n(q),n($),n(G),n(c),n(j),n(h),n(R),n(g),n(U),n(_),n(Y),n(k),n(C)),n(i),y(r,t),y(f,t),y(p,t),y(u,t),y(x,t)}}}const ot='{"title":"デコーダーモデル","local":"デコーダーモデル","sections":[],"depth":1}';function rt(B){return V(()=>{new URLSearchParams(window.location.search).get("fw")}),[]}class ht extends W{constructor(i){super(),Z(this,i,rt,mt,J,{})}}export{ht as component};

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