Buckets:
| import{s as Q,n as Z,o as j}from"../chunks/scheduler.49e4e380.js";import{S as J,i as X,g as s,s as n,r as E,A as Y,h as o,f as d,c as a,j as R,u as F,x as y,k as K,y as tt,a as r,v as G,d as I,t as H,w as D}from"../chunks/index.fb15006d.js";import{H as N,E as et}from"../chunks/getInferenceSnippets.dee27c70.js";function dt(V){let i,P,k,L,l,w,u,q="<thead><tr><th>Original</th> <th>Übersetzung</th></tr></thead> <tbody><tr><td>Abstraction</td> <td>Abstraktion</td></tr> <tr><td>Account</td> <td>Account</td></tr> <tr><td>Accuracy</td> <td>Genauigkeit</td></tr> <tr><td>Artificial General Intelligence</td> <td>künstliche allgemeine Intelligenz</td></tr> <tr><td>Attention</td> <td>Attention</td></tr> <tr><td>Attention mask (layer)</td> <td>Attention-Mask (Layer)</td></tr> <tr><td>Backward Pass</td> <td>Rückwärtsalgorithmus berechnen</td></tr> <tr><td>Batch</td> <td>Batch</td></tr> <tr><td>Bias</td> <td>Bias (Voreingenommenheit)</td></tr> <tr><td>Causal Language Modeling</td> <td>kausale Sprachmodellierung</td></tr> <tr><td>Chapter</td> <td>Kapitel</td></tr> <tr><td>Checkpoint(s)</td> <td>Checkpoint(s)</td></tr> <tr><td>Class</td> <td>Klasse</td></tr> <tr><td>Classification</td> <td>Klassifizierung</td></tr> <tr><td>Code</td> <td>Code</td></tr> <tr><td>Colab Notebook</td> <td>Colab Notebook</td></tr> <tr><td>Command</td> <td>Befehl</td></tr> <tr><td>Computer Vision</td> <td>Computer Vision</td></tr> <tr><td>Configuration</td> <td>Konfiguration</td></tr> <tr><td>Course</td> <td>Kurs</td></tr> <tr><td>Decoder</td> <td>Decoder</td></tr> <tr><td>Dependency</td> <td>Abhängigkeitsbeziehung</td></tr> <tr><td>Deployment</td> <td>Deployment</td></tr> <tr><td>Development</td> <td>Entwicklung</td></tr> <tr><td>Dictionary</td> <td>Dictionary</td></tr> <tr><td>Distribution</td> <td>Verteilung</td></tr> <tr><td>Download</td> <td>Download</td></tr> <tr><td>Encoder</td> <td>Encoder</td></tr> <tr><td>Extractive question answering</td> <td>Extraktives Question Answering</td></tr> <tr><td>F1 score</td> <td>F1-Maß</td></tr> <tr><td>Feature</td> <td>Feature</td></tr> <tr><td>Fine-tune</td> <td>feintunen</td></tr> <tr><td>Fine-tuning</td> <td>Feintuning</td></tr> <tr><td>Folder</td> <td>Ordner</td></tr> <tr><td>Forward Pass</td> <td>Vorwärtsalgorithmus berechnen</td></tr> <tr><td>Function</td> <td>Funktion</td></tr> <tr><td>Generative question answering</td> <td>Generatives Question Answering</td></tr> <tr><td>Google</td> <td>Google</td></tr> <tr><td>Hugging Face</td> <td>Hugging Face</td></tr> <tr><td>Incompatibility</td> <td>Inkompatibilität</td></tr> <tr><td>Inference</td> <td>Inferenz</td></tr> <tr><td>Input</td> <td>Input</td></tr> <tr><td>Input data</td> <td>Input-Daten</td></tr> <tr><td>Label (verb)</td> <td>labeln (gelabelt), annotieren</td></tr> <tr><td>Label (subj)</td> <td>Label, das / Labels, die (plur.)</td></tr> <tr><td>Layer</td> <td>Layer (plur. Layer(n))</td></tr> <tr><td>Library</td> <td>Bibliothek</td></tr> <tr><td>Linux</td> <td>Linux</td></tr> <tr><td>Load</td> <td>laden</td></tr> <tr><td>Loss function</td> <td>Verlustfunktion</td></tr> <tr><td>Machine Learning</td> <td>Maschinelles Lernen</td></tr> <tr><td>macOS</td> <td>macOS</td></tr> <tr><td>Mask</td> <td>Maskierung</td></tr> <tr><td>Mask Filling</td> <td>Mask Filling</td></tr> <tr><td>Mask Token</td> <td>Mask-Token</td></tr> <tr><td>Masked Language Modeling</td> <td>maskierte Sprachmodellierung</td></tr> <tr><td>Model</td> <td>Modell</td></tr> <tr><td>Model Hub</td> <td>Model Hub</td></tr> <tr><td>Module</td> <td>Modul</td></tr> <tr><td>Named Entities</td> <td>benannte Entitäten</td></tr> <tr><td>Named Entity Recognition</td> <td>Eigennamenerkennung</td></tr> <tr><td>Natural Language Processing</td> <td>Computerlinguistik</td></tr> <tr><td>Output</td> <td>Output</td></tr> <tr><td>Package</td> <td>Paket</td></tr> <tr><td>Package Manager</td> <td>Paketverwaltung</td></tr> <tr><td>Padding</td> <td>das Padding / auffüllen</td></tr> <tr><td>Parameter</td> <td>Parameter</td></tr> <tr><td>Postprocessing</td> <td>Nachverarveitung</td></tr> <tr><td>Preprocessing</td> <td>Vorverarbeitung</td></tr> <tr><td>Pretraining</td> <td>Pretraining</td></tr> <tr><td>Pretrained model</td> <td>vortrainiertes Modell</td></tr> <tr><td>Prompt</td> <td>Prompt</td></tr> <tr><td>Python</td> <td>Python</td></tr> <tr><td>Pytorch</td> <td>Pytorch</td></tr> <tr><td>Question Answering</td> <td>Question Answering</td></tr> <tr><td>Save</td> <td>speichern</td></tr> <tr><td>Sample</td> <td>Sample (auch Stichprobe)</td></tr> <tr><td>Script</td> <td>Script</td></tr> <tr><td>Self-Contained</td> <td>in sich abgeschlossen</td></tr> <tr><td>Sentiment analysis</td> <td>Sentiment-Analyse</td></tr> <tr><td>Sequence-to-sequence models</td> <td>Sequence-to-Sequence-Modelle</td></tr> <tr><td>Setup</td> <td>Installation</td></tr> <tr><td>Speech Processing</td> <td>Verarbeitung gesprochener Sprache</td></tr> <tr><td>Speech Recognition</td> <td>Spracherkennung</td></tr> <tr><td>Summarization</td> <td>Automatische Textzusammenfassung</td></tr> <tr><td>Target</td> <td>Zielvariable / vorherzusagende Variable</td></tr> <tr><td>Task</td> <td>Aufgabe / Aufgabenstellung</td></tr> <tr><td>TensorFlow</td> <td>Tensorflow</td></tr> <tr><td>Terminal</td> <td>Terminal</td></tr> <tr><td>Text generation</td> <td>Textgenerierung</td></tr> <tr><td>Tokenizer</td> <td>Tokenizer</td></tr> <tr><td>Train</td> <td>Training</td></tr> <tr><td>Transfer Learning</td> <td>Transfer Learning</td></tr> <tr><td>Transformer</td> <td>Transformer</td></tr> <tr><td>Transformer models</td> <td>Transformer-Modelle</td></tr> <tr><td>Translation</td> <td>Maschinelle Übersetzung</td></tr> <tr><td>Virtual Environment</td> <td>Virtuelle Umgebung</td></tr> <tr><td>Weight</td> <td>Gewicht</td></tr> <tr><td>Weights</td> <td>Gewichtung</td></tr> <tr><td>Windows</td> <td>Windows</td></tr> <tr><td>Working Environment</td> <td>Arbeitsumgebung</td></tr> <tr><td>Workload</td> <td>Auslastung</td></tr> <tr><td>Workspace</td> <td>Workspace</td></tr> <tr><td>Zero-shot classification</td> <td>Zero-Shot-Klassifizierung</td></tr></tbody>",v,c,B="=======",M,g,A,m,W="<thead><tr><th>Original</th> <th>Übersetzung</th></tr></thead> <tbody><tr><td>NLP</td> <td>CL</td></tr> <tr><td>API</td> <td>API</td></tr> <tr><td>GPU</td> <td>GPU</td></tr> <tr><td>TPU</td> <td>TPU</td></tr> <tr><td>ML</td> <td>ML</td></tr></tbody>",$,h,S,p,U='Please refer to <a href="/chapters/de/TRANSLATING.txt">TRANSLATING.txt</a> for a translation guide. Here are some excerpts relevant to the glossary:',C,f,O=`<li><p>Refer and contribute to the glossary frequently to stay on top of the latest | |
| choices we make. This minimizes the amount of editing that is required. | |
| Add new terms alphabetically sorted.</p></li> <li><p>The German language accepts English words especially in modern contexts more | |
| than many other languages (i.e. Anglicisms). Check for the correct usage of | |
| terms in computer science and commonly used terms in other publications.</p></li> <li><p>Don’t translate industry-accepted acronyms. e.g. TPU or GPU.</p></li> <li><p>If translating a technical word, keep the choice of German translation consistent. | |
| This does not apply for non-technical choices, as in those cases variety actually | |
| helps keep the text engaging.</p></li> <li><p>Be exact when choosing equivalents for technical words. Package is package. | |
| Library is library. Don’t mix and match.</p></li>`,x,b,z,T,_;return l=new N({props:{title:"Wörterverzeichnis",local:"wörterverzeichnis",headingTag:"h1"}}),g=new N({props:{title:"Abkürzungen",local:"abkürzungen",headingTag:"h2"}}),h=new N({props:{title:"Notes",local:"notes",headingTag:"h2"}}),b=new et({props:{source:"https://github.com/huggingface/course/blob/main/chapters/de/glossary/1.mdx"}}),{c(){i=s("meta"),P=n(),k=s("p"),L=n(),E(l.$$.fragment),w=n(),u=s("table"),u.innerHTML=q,v=n(),c=s("p"),c.textContent=B,M=n(),E(g.$$.fragment),A=n(),m=s("table"),m.innerHTML=W,$=n(),E(h.$$.fragment),S=n(),p=s("p"),p.innerHTML=U,C=n(),f=s("ul"),f.innerHTML=O,x=n(),E(b.$$.fragment),z=n(),T=s("p"),this.h()},l(t){const e=Y("svelte-u9bgzb",document.head);i=o(e,"META",{name:!0,content:!0}),e.forEach(d),P=a(t),k=o(t,"P",{}),R(k).forEach(d),L=a(t),F(l.$$.fragment,t),w=a(t),u=o(t,"TABLE",{"data-svelte-h":!0}),y(u)!=="svelte-1so3zcs"&&(u.innerHTML=q),v=a(t),c=o(t,"P",{"data-svelte-h":!0}),y(c)!=="svelte-756rwd"&&(c.textContent=B),M=a(t),F(g.$$.fragment,t),A=a(t),m=o(t,"TABLE",{"data-svelte-h":!0}),y(m)!=="svelte-1no24c7"&&(m.innerHTML=W),$=a(t),F(h.$$.fragment,t),S=a(t),p=o(t,"P",{"data-svelte-h":!0}),y(p)!=="svelte-153d3rm"&&(p.innerHTML=U),C=a(t),f=o(t,"UL",{"data-svelte-h":!0}),y(f)!=="svelte-cei796"&&(f.innerHTML=O),x=a(t),F(b.$$.fragment,t),z=a(t),T=o(t,"P",{}),R(T).forEach(d),this.h()},h(){K(i,"name","hf:doc:metadata"),K(i,"content",rt)},m(t,e){tt(document.head,i),r(t,P,e),r(t,k,e),r(t,L,e),G(l,t,e),r(t,w,e),r(t,u,e),r(t,v,e),r(t,c,e),r(t,M,e),G(g,t,e),r(t,A,e),r(t,m,e),r(t,$,e),G(h,t,e),r(t,S,e),r(t,p,e),r(t,C,e),r(t,f,e),r(t,x,e),G(b,t,e),r(t,z,e),r(t,T,e),_=!0},p:Z,i(t){_||(I(l.$$.fragment,t),I(g.$$.fragment,t),I(h.$$.fragment,t),I(b.$$.fragment,t),_=!0)},o(t){H(l.$$.fragment,t),H(g.$$.fragment,t),H(h.$$.fragment,t),H(b.$$.fragment,t),_=!1},d(t){t&&(d(P),d(k),d(L),d(w),d(u),d(v),d(c),d(M),d(A),d(m),d($),d(S),d(p),d(C),d(f),d(x),d(z),d(T)),d(i),D(l,t),D(g,t),D(h,t),D(b,t)}}}const rt='{"title":"Wörterverzeichnis","local":"wörterverzeichnis","sections":[{"title":"Abkürzungen","local":"abkürzungen","sections":[],"depth":2},{"title":"Notes","local":"notes","sections":[],"depth":2}],"depth":1}';function nt(V){return j(()=>{new URLSearchParams(window.location.search).get("fw")}),[]}class ot extends J{constructor(i){super(),X(this,i,nt,dt,Q,{})}}export{ot as component}; | |
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