Buckets:
| import{s as tt,o as ot,n as lt}from"../chunks/scheduler.d586627e.js";import{S as nt,i as at,g as r,s as n,r as m,A as rt,h as s,f as o,c as a,j as Ke,u as c,x as p,k as et,y as st,a as l,v as T,d as f,t as d,w as U}from"../chunks/index.8589a59c.js";import{T as pt}from"../chunks/Tip.84e2336e.js";import{C as ee}from"../chunks/CodeBlock.47c46d2c.js";import{H as J,E as it}from"../chunks/EditOnGithub.073dfa26.js";function mt(oe){let i,$=`A partir da versão 2.3.0 o script de conversão agora faz parte do transformers CLI (<strong>transformers-cli</strong>) disponível em qualquer instalação | |
| transformers >= 2.3.0.`,h,_,b="A documentação abaixo reflete o formato do comando <strong>transformers-cli convert</strong>.";return{c(){i=r("p"),i.innerHTML=$,h=n(),_=r("p"),_.innerHTML=b},l(u){i=s(u,"P",{"data-svelte-h":!0}),p(i)!=="svelte-opr9ez"&&(i.innerHTML=$),h=a(u),_=s(u,"P",{"data-svelte-h":!0}),p(_)!=="svelte-12vk8vx"&&(_.innerHTML=b)},m(u,y){l(u,i,y),l(u,h,y),l(u,_,y)},p:lt,d(u){u&&(o(i),o(h),o(_))}}}function ct(oe){let i,$,h,_,b,u,y,Xe=`Uma interface de linha de comando é fornecida para converter os checkpoints originais Bert/GPT/GPT-2/Transformer-XL/XLNet/XLM em modelos | |
| que podem ser carregados usando os métodos <code>from_pretrained</code> da biblioteca.`,le,M,ne,w,ae,C,ke=`Você pode converter qualquer checkpoint do BERT em TensorFlow (em particular <a href="https://github.com/google-research/bert#pre-trained-models" rel="nofollow">os modelos pré-treinados lançados pelo Google</a>) em um arquivo PyTorch usando um | |
| <a href="https://github.com/huggingface/transformers/tree/main/src/transformers/models/bert/convert_bert_original_tf_checkpoint_to_pytorch.py" rel="nofollow">convert_bert_original_tf_checkpoint_to_pytorch.py</a> script.`,re,v,Se=`Esta Interface de Linha de Comando (CLI) recebe como entrada um checkpoint do TensorFlow (três arquivos começando com <code>bert_model.ckpt</code>) e o | |
| arquivo de configuração (<code>bert_config.json</code>), e então cria um modelo PyTorch para esta configuração, carrega os pesos | |
| do checkpoint do TensorFlow no modelo PyTorch e salva o modelo resultante em um arquivo PyTorch que pode | |
| ser importado usando <code>from_pretrained()</code> (veja o exemplo em <a href="quicktour">quicktour</a> , <a href="https://github.com/huggingface/transformers/tree/main/examples/pytorch/text-classification/run_glue.py" rel="nofollow">run_glue.py</a> ).`,se,V,Le=`Você só precisa executar este script de conversão <strong>uma vez</strong> para obter um modelo PyTorch. Você pode então desconsiderar o checkpoint em | |
| TensorFlow (os três arquivos começando com <code>bert_model.ckpt</code>), mas certifique-se de manter o arquivo de configuração (\\ | |
| <code>bert_config.json</code>) e o arquivo de vocabulário (<code>vocab.txt</code>), pois eles também são necessários para o modelo PyTorch.`,pe,R,Ze="Para executar este script de conversão específico, você precisará ter o TensorFlow e o PyTorch instalados (<code>pip install tensorflow</code>). O resto do repositório requer apenas o PyTorch.",ie,E,Qe="Aqui está um exemplo do processo de conversão para um modelo <code>BERT-Base Uncased</code> pré-treinado:",me,F,ce,g,Ae='Você pode baixar os modelos pré-treinados do Google para a conversão <a href="https://github.com/google-research/bert#pre-trained-models" rel="nofollow">aqui</a>.',Te,I,fe,P,je=`Converta os checkpoints do modelo ALBERT em TensorFlow para PyTorch usando o | |
| <a href="https://github.com/huggingface/transformers/tree/main/src/transformers/models/albert/convert_albert_original_tf_checkpoint_to_pytorch.py" rel="nofollow">convert_albert_original_tf_checkpoint_to_pytorch.py</a> script.`,de,B,He=`A Interface de Linha de Comando (CLI) recebe como entrada um checkpoint do TensorFlow (três arquivos começando com <code>model.ckpt-best</code>) e o | |
| arquivo de configuração (<code>albert_config.json</code>), então cria e salva um modelo PyTorch. Para executar esta conversão, você | |
| precisa ter o TensorFlow e o PyTorch instalados.`,Ue,N,xe="Aqui está um exemplo do processo de conversão para o modelo <code>ALBERT Base</code> pré-treinado:",ue,X,_e,k,Ge='Você pode baixar os modelos pré-treinados do Google para a conversão <a href="https://github.com/google-research/albert#pre-trained-models" rel="nofollow">aqui</a>.',ye,S,he,L,Oe=`Aqui está um exemplo do processo de conversão para um modelo OpenAI GPT pré-treinado, supondo que seu checkpoint NumPy | |
| foi salvo com o mesmo formato do modelo pré-treinado OpenAI (veja <a href="https://github.com/openai/finetune-transformer-lm" rel="nofollow">aqui</a>\\ | |
| )`,be,Z,Me,Q,Je,A,We='Aqui está um exemplo do processo de conversão para um modelo OpenAI GPT-2 pré-treinado (consulte <a href="https://github.com/openai/gpt-2" rel="nofollow">aqui</a>)',$e,j,we,H,Ce,x,Ye="Aqui está um exemplo do processo de conversão para um modelo XLNet pré-treinado:",ve,G,Ve,O,Re,W,De="Aqui está um exemplo do processo de conversão para um modelo XLM pré-treinado:",Ee,Y,Fe,D,ge,q,qe="Aqui está um exemplo do processo de conversão para um modelo T5 pré-treinado:",Ie,z,Pe,K,Be,te,Ne;return b=new J({props:{title:"Convertendo checkpoints do TensorFlow para Pytorch",local:"convertendo-checkpoints-do-tensorflow-para-pytorch",headingTag:"h1"}}),M=new pt({props:{$$slots:{default:[mt]},$$scope:{ctx:oe}}}),w=new J({props:{title:"BERT",local:"bert",headingTag:"h2"}}),F=new ee({props:{code:"ZXhwb3J0JTIwQkVSVF9CQVNFX0RJUiUzRCUyRnBhdGglMkZ0byUyRmJlcnQlMkZ1bmNhc2VkX0wtMTJfSC03NjhfQS0xMiUwQSUwQXRyYW5zZm9ybWVycy1jbGklMjBjb252ZXJ0JTIwLS1tb2RlbF90eXBlJTIwYmVydCUyMCU1QyUwQSUyMCUyMC0tdGZfY2hlY2twb2ludCUyMCUyNEJFUlRfQkFTRV9ESVIlMkZiZXJ0X21vZGVsLmNrcHQlMjAlNUMlMEElMjAlMjAtLWNvbmZpZyUyMCUyNEJFUlRfQkFTRV9ESVIlMkZiZXJ0X2NvbmZpZy5qc29uJTIwJTVDJTBBJTIwJTIwLS1weXRvcmNoX2R1bXBfb3V0cHV0JTIwJTI0QkVSVF9CQVNFX0RJUiUyRnB5dG9yY2hfbW9kZWwuYmlu",highlighted:`<span class="hljs-built_in">export</span> BERT_BASE_DIR=/path/to/bert/uncased_L-12_H-768_A-12 | |
| transformers-cli convert --model_type bert \\ | |
| --tf_checkpoint <span class="hljs-variable">$BERT_BASE_DIR</span>/bert_model.ckpt \\ | |
| --config <span class="hljs-variable">$BERT_BASE_DIR</span>/bert_config.json \\ | |
| --pytorch_dump_output <span class="hljs-variable">$BERT_BASE_DIR</span>/pytorch_model.bin`,wrap:!1}}),I=new J({props:{title:"ALBERT",local:"albert",headingTag:"h2"}}),X=new ee({props:{code:"ZXhwb3J0JTIwQUxCRVJUX0JBU0VfRElSJTNEJTJGcGF0aCUyRnRvJTJGYWxiZXJ0JTJGYWxiZXJ0X2Jhc2UlMEElMEF0cmFuc2Zvcm1lcnMtY2xpJTIwY29udmVydCUyMC0tbW9kZWxfdHlwZSUyMGFsYmVydCUyMCU1QyUwQSUyMCUyMC0tdGZfY2hlY2twb2ludCUyMCUyNEFMQkVSVF9CQVNFX0RJUiUyRm1vZGVsLmNrcHQtYmVzdCUyMCU1QyUwQSUyMCUyMC0tY29uZmlnJTIwJTI0QUxCRVJUX0JBU0VfRElSJTJGYWxiZXJ0X2NvbmZpZy5qc29uJTIwJTVDJTBBJTIwJTIwLS1weXRvcmNoX2R1bXBfb3V0cHV0JTIwJTI0QUxCRVJUX0JBU0VfRElSJTJGcHl0b3JjaF9tb2RlbC5iaW4=",highlighted:`<span class="hljs-built_in">export</span> ALBERT_BASE_DIR=/path/to/albert/albert_base | |
| transformers-cli convert --model_type albert \\ | |
| --tf_checkpoint <span class="hljs-variable">$ALBERT_BASE_DIR</span>/model.ckpt-best \\ | |
| --config <span class="hljs-variable">$ALBERT_BASE_DIR</span>/albert_config.json \\ | |
| --pytorch_dump_output <span class="hljs-variable">$ALBERT_BASE_DIR</span>/pytorch_model.bin`,wrap:!1}}),S=new J({props:{title:"OpenAI GPT",local:"openai-gpt",headingTag:"h2"}}),Z=new ee({props:{code:"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",highlighted:`<span class="hljs-built_in">export</span> OPENAI_GPT_CHECKPOINT_FOLDER_PATH=/path/to/openai/pretrained/numpy/weights | |
| transformers-cli convert --model_type gpt \\ | |
| --tf_checkpoint <span class="hljs-variable">$OPENAI_GPT_CHECKPOINT_FOLDER_PATH</span> \\ | |
| --pytorch_dump_output <span class="hljs-variable">$PYTORCH_DUMP_OUTPUT</span> \\ | |
| [--config OPENAI_GPT_CONFIG] \\ | |
| [--finetuning_task_name OPENAI_GPT_FINETUNED_TASK] \\`,wrap:!1}}),Q=new J({props:{title:"OpenAI GPT-2",local:"openai-gpt-2",headingTag:"h2"}}),j=new ee({props:{code:"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",highlighted:`<span class="hljs-built_in">export</span> OPENAI_GPT2_CHECKPOINT_PATH=/path/to/openai-community/gpt2/pretrained/weights | |
| transformers-cli convert --model_type gpt2 \\ | |
| --tf_checkpoint <span class="hljs-variable">$OPENAI_GPT2_CHECKPOINT_PATH</span> \\ | |
| --pytorch_dump_output <span class="hljs-variable">$PYTORCH_DUMP_OUTPUT</span> \\ | |
| [--config OPENAI_GPT2_CONFIG] \\ | |
| [--finetuning_task_name OPENAI_GPT2_FINETUNED_TASK]`,wrap:!1}}),H=new J({props:{title:"XLNet",local:"xlnet",headingTag:"h2"}}),G=new ee({props:{code:"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",highlighted:`<span class="hljs-built_in">export</span> TRANSFO_XL_CHECKPOINT_PATH=/path/to/xlnet/checkpoint | |
| <span class="hljs-built_in">export</span> TRANSFO_XL_CONFIG_PATH=/path/to/xlnet/config | |
| transformers-cli convert --model_type xlnet \\ | |
| --tf_checkpoint <span class="hljs-variable">$TRANSFO_XL_CHECKPOINT_PATH</span> \\ | |
| --config <span class="hljs-variable">$TRANSFO_XL_CONFIG_PATH</span> \\ | |
| --pytorch_dump_output <span class="hljs-variable">$PYTORCH_DUMP_OUTPUT</span> \\ | |
| [--finetuning_task_name XLNET_FINETUNED_TASK] \\`,wrap:!1}}),O=new J({props:{title:"XLM",local:"xlm",headingTag:"h2"}}),Y=new ee({props:{code:"ZXhwb3J0JTIwWExNX0NIRUNLUE9JTlRfUEFUSCUzRCUyRnBhdGglMkZ0byUyRnhsbSUyRmNoZWNrcG9pbnQlMEElMEF0cmFuc2Zvcm1lcnMtY2xpJTIwY29udmVydCUyMC0tbW9kZWxfdHlwZSUyMHhsbSUyMCU1QyUwQSUyMCUyMC0tdGZfY2hlY2twb2ludCUyMCUyNFhMTV9DSEVDS1BPSU5UX1BBVEglMjAlNUMlMEElMjAlMjAtLXB5dG9yY2hfZHVtcF9vdXRwdXQlMjAlMjRQWVRPUkNIX0RVTVBfT1VUUFVUJTBBJTIwJTVCLS1jb25maWclMjBYTUxfQ09ORklHJTVEJTIwJTVDJTBBJTIwJTVCLS1maW5ldHVuaW5nX3Rhc2tfbmFtZSUyMFhNTF9GSU5FVFVORURfVEFTSyU1RA==",highlighted:`<span class="hljs-built_in">export</span> XLM_CHECKPOINT_PATH=/path/to/xlm/checkpoint | |
| transformers-cli convert --model_type xlm \\ | |
| --tf_checkpoint <span class="hljs-variable">$XLM_CHECKPOINT_PATH</span> \\ | |
| --pytorch_dump_output <span class="hljs-variable">$PYTORCH_DUMP_OUTPUT</span> | |
| [--config XML_CONFIG] \\ | |
| [--finetuning_task_name XML_FINETUNED_TASK]`,wrap:!1}}),D=new J({props:{title:"T5",local:"t5",headingTag:"h2"}}),z=new ee({props:{code:"ZXhwb3J0JTIwVDUlM0QlMkZwYXRoJTJGdG8lMkZ0NSUyRnVuY2FzZWRfTC0xMl9ILTc2OF9BLTEyJTBBJTBBdHJhbnNmb3JtZXJzLWNsaSUyMGNvbnZlcnQlMjAtLW1vZGVsX3R5cGUlMjB0NSUyMCU1QyUwQSUyMCUyMC0tdGZfY2hlY2twb2ludCUyMCUyNFQ1JTJGdDVfbW9kZWwuY2twdCUyMCU1QyUwQSUyMCUyMC0tY29uZmlnJTIwJTI0VDUlMkZ0NV9jb25maWcuanNvbiUyMCU1QyUwQSUyMCUyMC0tcHl0b3JjaF9kdW1wX291dHB1dCUyMCUyNFQ1JTJGcHl0b3JjaF9tb2RlbC5iaW4=",highlighted:`<span class="hljs-built_in">export</span> T5=/path/to/t5/uncased_L-12_H-768_A-12 | |
| transformers-cli convert --model_type t5 \\ | |
| --tf_checkpoint <span class="hljs-variable">$T5</span>/t5_model.ckpt \\ | |
| --config <span class="hljs-variable">$T5</span>/t5_config.json \\ | |
| --pytorch_dump_output <span class="hljs-variable">$T5</span>/pytorch_model.bin`,wrap:!1}}),K=new it({props:{source:"https://github.com/huggingface/transformers/blob/main/docs/source/pt/converting_tensorflow_models.md"}}),{c(){i=r("meta"),$=n(),h=r("p"),_=n(),m(b.$$.fragment),u=n(),y=r("p"),y.innerHTML=Xe,le=n(),m(M.$$.fragment),ne=n(),m(w.$$.fragment),ae=n(),C=r("p"),C.innerHTML=ke,re=n(),v=r("p"),v.innerHTML=Se,se=n(),V=r("p"),V.innerHTML=Le,pe=n(),R=r("p"),R.innerHTML=Ze,ie=n(),E=r("p"),E.innerHTML=Qe,me=n(),m(F.$$.fragment),ce=n(),g=r("p"),g.innerHTML=Ae,Te=n(),m(I.$$.fragment),fe=n(),P=r("p"),P.innerHTML=je,de=n(),B=r("p"),B.innerHTML=He,Ue=n(),N=r("p"),N.innerHTML=xe,ue=n(),m(X.$$.fragment),_e=n(),k=r("p"),k.innerHTML=Ge,ye=n(),m(S.$$.fragment),he=n(),L=r("p"),L.innerHTML=Oe,be=n(),m(Z.$$.fragment),Me=n(),m(Q.$$.fragment),Je=n(),A=r("p"),A.innerHTML=We,$e=n(),m(j.$$.fragment),we=n(),m(H.$$.fragment),Ce=n(),x=r("p"),x.textContent=Ye,ve=n(),m(G.$$.fragment),Ve=n(),m(O.$$.fragment),Re=n(),W=r("p"),W.textContent=De,Ee=n(),m(Y.$$.fragment),Fe=n(),m(D.$$.fragment),ge=n(),q=r("p"),q.textContent=qe,Ie=n(),m(z.$$.fragment),Pe=n(),m(K.$$.fragment),Be=n(),te=r("p"),this.h()},l(e){const t=rt("svelte-u9bgzb",document.head);i=s(t,"META",{name:!0,content:!0}),t.forEach(o),$=a(e),h=s(e,"P",{}),Ke(h).forEach(o),_=a(e),c(b.$$.fragment,e),u=a(e),y=s(e,"P",{"data-svelte-h":!0}),p(y)!=="svelte-p2yt92"&&(y.innerHTML=Xe),le=a(e),c(M.$$.fragment,e),ne=a(e),c(w.$$.fragment,e),ae=a(e),C=s(e,"P",{"data-svelte-h":!0}),p(C)!=="svelte-r87t7w"&&(C.innerHTML=ke),re=a(e),v=s(e,"P",{"data-svelte-h":!0}),p(v)!=="svelte-cbmmh7"&&(v.innerHTML=Se),se=a(e),V=s(e,"P",{"data-svelte-h":!0}),p(V)!=="svelte-b84z4n"&&(V.innerHTML=Le),pe=a(e),R=s(e,"P",{"data-svelte-h":!0}),p(R)!=="svelte-kemlzt"&&(R.innerHTML=Ze),ie=a(e),E=s(e,"P",{"data-svelte-h":!0}),p(E)!=="svelte-10rkvg8"&&(E.innerHTML=Qe),me=a(e),c(F.$$.fragment,e),ce=a(e),g=s(e,"P",{"data-svelte-h":!0}),p(g)!=="svelte-12fpvhp"&&(g.innerHTML=Ae),Te=a(e),c(I.$$.fragment,e),fe=a(e),P=s(e,"P",{"data-svelte-h":!0}),p(P)!=="svelte-19k3jdm"&&(P.innerHTML=je),de=a(e),B=s(e,"P",{"data-svelte-h":!0}),p(B)!=="svelte-zkcyaa"&&(B.innerHTML=He),Ue=a(e),N=s(e,"P",{"data-svelte-h":!0}),p(N)!=="svelte-73nhvy"&&(N.innerHTML=xe),ue=a(e),c(X.$$.fragment,e),_e=a(e),k=s(e,"P",{"data-svelte-h":!0}),p(k)!=="svelte-1jgcpzg"&&(k.innerHTML=Ge),ye=a(e),c(S.$$.fragment,e),he=a(e),L=s(e,"P",{"data-svelte-h":!0}),p(L)!=="svelte-15p0tsr"&&(L.innerHTML=Oe),be=a(e),c(Z.$$.fragment,e),Me=a(e),c(Q.$$.fragment,e),Je=a(e),A=s(e,"P",{"data-svelte-h":!0}),p(A)!=="svelte-51129x"&&(A.innerHTML=We),$e=a(e),c(j.$$.fragment,e),we=a(e),c(H.$$.fragment,e),Ce=a(e),x=s(e,"P",{"data-svelte-h":!0}),p(x)!=="svelte-14ewucc"&&(x.textContent=Ye),ve=a(e),c(G.$$.fragment,e),Ve=a(e),c(O.$$.fragment,e),Re=a(e),W=s(e,"P",{"data-svelte-h":!0}),p(W)!=="svelte-1nhafvs"&&(W.textContent=De),Ee=a(e),c(Y.$$.fragment,e),Fe=a(e),c(D.$$.fragment,e),ge=a(e),q=s(e,"P",{"data-svelte-h":!0}),p(q)!=="svelte-5kcfwq"&&(q.textContent=qe),Ie=a(e),c(z.$$.fragment,e),Pe=a(e),c(K.$$.fragment,e),Be=a(e),te=s(e,"P",{}),Ke(te).forEach(o),this.h()},h(){et(i,"name","hf:doc:metadata"),et(i,"content",Tt)},m(e,t){st(document.head,i),l(e,$,t),l(e,h,t),l(e,_,t),T(b,e,t),l(e,u,t),l(e,y,t),l(e,le,t),T(M,e,t),l(e,ne,t),T(w,e,t),l(e,ae,t),l(e,C,t),l(e,re,t),l(e,v,t),l(e,se,t),l(e,V,t),l(e,pe,t),l(e,R,t),l(e,ie,t),l(e,E,t),l(e,me,t),T(F,e,t),l(e,ce,t),l(e,g,t),l(e,Te,t),T(I,e,t),l(e,fe,t),l(e,P,t),l(e,de,t),l(e,B,t),l(e,Ue,t),l(e,N,t),l(e,ue,t),T(X,e,t),l(e,_e,t),l(e,k,t),l(e,ye,t),T(S,e,t),l(e,he,t),l(e,L,t),l(e,be,t),T(Z,e,t),l(e,Me,t),T(Q,e,t),l(e,Je,t),l(e,A,t),l(e,$e,t),T(j,e,t),l(e,we,t),T(H,e,t),l(e,Ce,t),l(e,x,t),l(e,ve,t),T(G,e,t),l(e,Ve,t),T(O,e,t),l(e,Re,t),l(e,W,t),l(e,Ee,t),T(Y,e,t),l(e,Fe,t),T(D,e,t),l(e,ge,t),l(e,q,t),l(e,Ie,t),T(z,e,t),l(e,Pe,t),T(K,e,t),l(e,Be,t),l(e,te,t),Ne=!0},p(e,[t]){const ze={};t&2&&(ze.$$scope={dirty:t,ctx:e}),M.$set(ze)},i(e){Ne||(f(b.$$.fragment,e),f(M.$$.fragment,e),f(w.$$.fragment,e),f(F.$$.fragment,e),f(I.$$.fragment,e),f(X.$$.fragment,e),f(S.$$.fragment,e),f(Z.$$.fragment,e),f(Q.$$.fragment,e),f(j.$$.fragment,e),f(H.$$.fragment,e),f(G.$$.fragment,e),f(O.$$.fragment,e),f(Y.$$.fragment,e),f(D.$$.fragment,e),f(z.$$.fragment,e),f(K.$$.fragment,e),Ne=!0)},o(e){d(b.$$.fragment,e),d(M.$$.fragment,e),d(w.$$.fragment,e),d(F.$$.fragment,e),d(I.$$.fragment,e),d(X.$$.fragment,e),d(S.$$.fragment,e),d(Z.$$.fragment,e),d(Q.$$.fragment,e),d(j.$$.fragment,e),d(H.$$.fragment,e),d(G.$$.fragment,e),d(O.$$.fragment,e),d(Y.$$.fragment,e),d(D.$$.fragment,e),d(z.$$.fragment,e),d(K.$$.fragment,e),Ne=!1},d(e){e&&(o($),o(h),o(_),o(u),o(y),o(le),o(ne),o(ae),o(C),o(re),o(v),o(se),o(V),o(pe),o(R),o(ie),o(E),o(me),o(ce),o(g),o(Te),o(fe),o(P),o(de),o(B),o(Ue),o(N),o(ue),o(_e),o(k),o(ye),o(he),o(L),o(be),o(Me),o(Je),o(A),o($e),o(we),o(Ce),o(x),o(ve),o(Ve),o(Re),o(W),o(Ee),o(Fe),o(ge),o(q),o(Ie),o(Pe),o(Be),o(te)),o(i),U(b,e),U(M,e),U(w,e),U(F,e),U(I,e),U(X,e),U(S,e),U(Z,e),U(Q,e),U(j,e),U(H,e),U(G,e),U(O,e),U(Y,e),U(D,e),U(z,e),U(K,e)}}}const Tt='{"title":"Convertendo checkpoints do TensorFlow para Pytorch","local":"convertendo-checkpoints-do-tensorflow-para-pytorch","sections":[{"title":"BERT","local":"bert","sections":[],"depth":2},{"title":"ALBERT","local":"albert","sections":[],"depth":2},{"title":"OpenAI GPT","local":"openai-gpt","sections":[],"depth":2},{"title":"OpenAI GPT-2","local":"openai-gpt-2","sections":[],"depth":2},{"title":"XLNet","local":"xlnet","sections":[],"depth":2},{"title":"XLM","local":"xlm","sections":[],"depth":2},{"title":"T5","local":"t5","sections":[],"depth":2}],"depth":1}';function ft(oe){return ot(()=>{new URLSearchParams(window.location.search).get("fw")}),[]}class ht extends nt{constructor(i){super(),at(this,i,ft,ct,tt,{})}}export{ht as component}; | |
Xet Storage Details
- Size:
- 18.1 kB
- Xet hash:
- 0d07cfdaab7e51c2581551d5a3a3cac72f55e1e430a62926df0fbeed332517bc
·
Xet efficiently stores files, intelligently splitting them into unique chunks and accelerating uploads and downloads. More info.