Buckets:
| import{s as Be,n as Ye,o as He}from"../chunks/scheduler.8a2cc2fa.js";import{S as Ee,i as Fe,e as n,s as a,c as p,h as Qe,a as m,d as s,b as i,f as Ae,g as o,j as r,k as X,l as Se,m as l,n as d,t as b,o as M,p as c}from"../chunks/index.7079e750.js";import{C as Xe,H as Je,E as Re}from"../chunks/MermaidChart.svelte_svelte_type_style_lang.0d032bd2.js";import{C as F}from"../chunks/CodeBlock.507aecff.js";function Ve(je){let u,R,Q,V,f,N,T,P,J,$e="With 8-bit optimizers, large models can be finetuned with 75% less GPU memory without losing any accuracy compared to training with standard 32-bit optimizers. The reduced memory requirements means 8-bit optimizers are 4x faster than a standard optimizer, and no hyperparameter tuning is required.",K,j,ge="This guide will show you how to use 8-bit optimizers.",O,y,Ue="<p>8-bit optimizers reduce memory usage and accelerate optimization on a wide range of tasks. However, since 8-bit optimizers only reduce memory proportional to the number of parameters, models that use large amounts of activation memory, such as convolutional networks, don’t really benefit from 8-bit optimizers. 8-bit optimizers are most beneficial for training or finetuning models with many parameters on highly memory-constrained GPUs.</p>",q,$,Ge='8-bit optimizers are a drop-in replacement for regular optimizers which means they also accept the same arguments as a regular optimizer. For NLP models, it is recommended to use the <a href="/docs/bitsandbytes/pr_1925/en/reference/nn/embeddings#bitsandbytes.nn.StableEmbedding">StableEmbedding</a> class to improve stability and results.',D,g,ee,U,ve="By default, all parameter tensors with less than 4096 elements are kept at 32-bits even if you initialize those parameters with 8-bit optimizers. This is done because small tensors do not save much memory and often contain highly variable parameters (biases) or parameters that require high precision (batch norm, layer norm).",te,G,Ze="You can change this value with the <code>min_8bit_size</code> parameter. For example, if you want to optimize parameters to 8-bits only if the minimum size is 16384 values (it is recommended to use multiples of 4096):",se,v,le,Z,_e='Other parameters you can configure include the learning rate (<code>lr</code>), the decay rates (<code>betas</code>), and the number of bits of the optimizer state (<code>optim_bits</code>). For example, to initialize a 32-bit <a href="/docs/bitsandbytes/pr_1925/en/reference/optim/adam#bitsandbytes.optim.Adam">Adam</a> optimizer:',ae,_,ie,k,ne,x,ke='To optimize some unstable parameters with 32-bit Adam and others with 8-bit Adam, use the <a href="/docs/bitsandbytes/pr_1925/en/reference/optim/optim_overview#bitsandbytes.optim.GlobalOptimManager">GlobalOptimManager</a> class to override the specific hyperparameters for a particular layer. You’ll need to:',me,z,xe="<li>Register the parameters while they’re on the CPU.</li>",re,W,pe,h,ze="<li>Override the config with the new desired hyperparameters. For example, let’s override the <code>model.fc1.weight</code> layer to use 32-bit Adam.</li>",oe,w,We="<p>Check the optimizer API documentation for more information about other hyperparameters you can override.</p>",de,C,be,L,Ce="You can also override multiple layers at once by passing them as a list and the new hyperparameters as a dictionary. For example, let’s override the <code>model.special.weight</code> and <code>model.also_special.weight</code> layers to use sparse optimization and a lower learning and decay rate.",Me,I,ce,A,Le='For a specific layer, we recommend overriding locally in each module. Pass the module, the parameter, and its attribute name to the <a href="/docs/bitsandbytes/pr_1925/en/reference/optim/optim_overview#bitsandbytes.optim.GlobalOptimManager">GlobalOptimManager</a>:',ue,B,ye,Y,he,H,Ie='For more conceptual details and explanation about 8-bit optimizers, take a look at the <a href="./explanations/optimizers">8-bit optimizers</a> guide.',we,E,fe,S,Te;return f=new Xe({props:{containerStyle:"float: right; margin-left: 10px; display: inline-flex; position: relative; z-index: 10;"}}),T=new Je({props:{title:"8-bit optimizers",local:"8-bit-optimizers",headingTag:"h1"}}),g=new F({props:{code:"aW1wb3J0JTIwYml0c2FuZGJ5dGVzJTIwYXMlMjBibmIlMEElMEEtJTIwYWRhbSUyMCUzRCUyMHRvcmNoLm9wdGltLkFkYW0oLi4uKSUwQSUyQiUyMGFkYW0lMjAlM0QlMjBibmIub3B0aW0uQWRhbThiaXQoLi4uKSUwQSUwQSUyMyUyMHJlY29tbWVuZGVkJTIwZm9yJTIwTkxQJTIwbW9kZWxzJTBBLSUyMGJlZm9yZSUzQSUyMHRvcmNoLm5uLkVtYmVkZGluZyguLi4pJTBBJTJCJTIwYm5iLm5uLlN0YWJsZUVtYmVkZGluZyguLi4p",highlighted:`import bitsandbytes as bnb | |
| <span class="hljs-deletion">- adam = torch.optim.Adam(...)</span> | |
| <span class="hljs-addition">+ adam = bnb.optim.Adam8bit(...)</span> | |
| # recommended for NLP models | |
| <span class="hljs-deletion">- before: torch.nn.Embedding(...)</span> | |
| <span class="hljs-addition">+ bnb.nn.StableEmbedding(...)</span>`,wrap:!1}}),v=new F({props:{code:"aW1wb3J0JTIwYml0c2FuZGJ5dGVzJTIwYXMlMjBibmIlMEElMEFhZGFtJTIwJTNEJTIwYm5iLm9wdGltLkFkYW04Yml0KG1vZGVsLnBhcmFtZXRlcnMoKSUyQyUyMG1pbl84Yml0X3NpemUlM0QxNjM4NCk=",highlighted:`<span class="hljs-keyword">import</span> bitsandbytes <span class="hljs-keyword">as</span> bnb | |
| adam = bnb.optim.Adam8bit(model.parameters(), min_8bit_size=<span class="hljs-number">16384</span>)`,wrap:!1}}),_=new F({props:{code:"aW1wb3J0JTIwYml0c2FuZGJ5dGVzJTIwYXMlMjBibmIlMEElMEFhZGFtJTIwJTNEJTIwYm5iLm9wdGltLkFkYW0obW9kZWwucGFyYW1ldGVycygpJTJDJTIwbHIlM0QwLjAwMSUyQyUyMGJldGFzJTNEKDAuOSUyQyUyMDAuOTk1KSUyQyUyMG9wdGltX2JpdHMlM0QzMik=",highlighted:`<span class="hljs-keyword">import</span> bitsandbytes <span class="hljs-keyword">as</span> bnb | |
| adam = bnb.optim.Adam(model.parameters(), lr=<span class="hljs-number">0.001</span>, betas=(<span class="hljs-number">0.9</span>, <span class="hljs-number">0.995</span>), optim_bits=<span class="hljs-number">32</span>)`,wrap:!1}}),k=new Je({props:{title:"Optimize unstable parameters",local:"optimize-unstable-parameters",headingTag:"h2"}}),W=new F({props:{code:"aW1wb3J0JTIwdG9yY2glMEFpbXBvcnQlMjBiaXRzYW5kYnl0ZXMlMjBhcyUyMGJuYiUwQSUwQW1uZyUyMCUzRCUyMGJuYi5vcHRpbS5HbG9iYWxPcHRpbU1hbmFnZXIuZ2V0X2luc3RhbmNlKCklMEElMEFtb2RlbCUyMCUzRCUyME15TW9kZWwoKSUwQW1uZy5yZWdpc3Rlcl9wYXJhbWV0ZXJzKG1vZGVsLnBhcmFtZXRlcnMoKSk=",highlighted:`<span class="hljs-keyword">import</span> torch | |
| <span class="hljs-keyword">import</span> bitsandbytes <span class="hljs-keyword">as</span> bnb | |
| mng = bnb.optim.GlobalOptimManager.get_instance() | |
| model = MyModel() | |
| mng.register_parameters(model.parameters())`,wrap:!1}}),C=new F({props:{code:"bW9kZWwlMjAlM0QlMjBtb2RlbC5jdWRhKCklMEElMjMlMjB1c2UlMjA4LWJpdCUyMG9wdGltaXplciUyMHN0YXRlcyUyMGZvciUyMGFsbCUyMHBhcmFtZXRlcnMlMEFhZGFtJTIwJTNEJTIwYm5iLm9wdGltLkFkYW0obW9kZWwucGFyYW1ldGVycygpJTJDJTIwbHIlM0QwLjAwMSUyQyUyMG9wdGltX2JpdHMlM0Q4KSUwQSUwQSUyMyUyMG92ZXJyaWRlJTIwdGhlJTIwcGFyYW1ldGVyJTIwbW9kZWwuZmMxLndlaWdodCUyMG5vdyUyMHVzZXMlMjAzMi1iaXQlMjBBZGFtJTBBbW5nLm92ZXJyaWRlX2NvbmZpZyhtb2RlbC5mYzEud2VpZ2h0JTJDJTIwJTIyb3B0aW1fYml0cyUyMiUyQyUyMDMyKQ==",highlighted:`model = model.cuda() | |
| <span class="hljs-comment"># use 8-bit optimizer states for all parameters</span> | |
| adam = bnb.optim.Adam(model.parameters(), lr=<span class="hljs-number">0.001</span>, optim_bits=<span class="hljs-number">8</span>) | |
| <span class="hljs-comment"># override the parameter model.fc1.weight now uses 32-bit Adam</span> | |
| mng.override_config(model.fc1.weight, <span class="hljs-string">"optim_bits"</span>, <span class="hljs-number">32</span>)`,wrap:!1}}),I=new F({props:{code:"bW5nLm92ZXJyaWRlX2NvbmZpZyglNUJtb2RlbC5zcGVjaWFsLndlaWdodCUyQyUyMG1vZGVsLmFsc29fc3BlY2lhbC53ZWlnaHQlNUQlMkMlMEElMjAlMjAlMjAlMjAlMjAlMjAlMjAlMjAlMjAlMjAlMjAlMjAlMjAlMjAlMjAlMjAlMjAlMjAlMjAlMjBrZXlfdmFsdWVfZGljdCUyMCUzRCU3Qidpc19zcGFyc2UnJTNBJTIwVHJ1ZSUyQyUyMCdsciclM0ElMjAxZS01JTJDJTIwJ2JldGFzJyUzRCgwLjklMkMlMjAwLjk4KSU3RCk=",highlighted:`mng.override_config([model.special.weight, model.also_special.weight], | |
| key_value_dict ={<span class="hljs-string">'is_sparse'</span>: <span class="hljs-literal">True</span>, <span class="hljs-string">'lr'</span>: <span class="hljs-number">1e-5</span>, <span class="hljs-string">'betas'</span>=(<span class="hljs-number">0.9</span>, <span class="hljs-number">0.98</span>)})`,wrap:!1}}),B=new F({props:{code:"Y2xhc3MlMjBNeU1vZHVsZSh0b3JjaC5ubi5Nb2R1bGUpJTNBJTBBJTIwJTIwZGVmJTIwX19pbml0X18oZF9pbiUyQyUyMGRfb3V0KSUzQSUwQSUyMCUyMCUyMCUyMHN1cGVyKE15TW9kdWxlJTJDJTIwc2VsZikuX19pbml0X18oKSUwQSUyMCUyMCUyMCUyMHNlbGYubGluZWFyJTIwJTNEJTIwdG9yY2gubm4uTGluZWFyKGRfaW4lMkMlMjBkX291dCklMEElMjAlMjAlMjAlMjAlMjMlMjBvcHRpbWl6YXRpb24lMjB3aWxsJTIwaGFwcGVuJTIwaW4lMjAzMi1iaXQlMjBhbmQlMEElMjAlMjAlMjAlMjAlMjMlMjBsZWFybmluZyUyMHJhdGUlMjB3aWxsJTIwYmUlMjBzZXQlMjB0byUyMDAuMDAwMSUyMGluZGVwZW5kZW50JTIwb2YlMjB0aGUlMjBtYWluJTIwbGVhcm5pbmclMjByYXRlJTBBJTIwJTIwJTIwJTIwY29uZmlnJTIwJTNEJTIwJTdCJ29wdGltX2JpdHMnJTNBJTIwMzIlMkMlMjAnbHInJTIwJTNBJTIwMC4wMDAxJTdEJTBBJTIwJTIwJTIwJTIwR2xvYmFsT3B0aW1NYW5hZ2VyLmdldF9pbnN0YW5jZSgpLnJlZ2lzdGVyX21vZHVsZV9vdmVycmlkZShzZWxmJTJDJTIwJ3dlaWdodCclMkMlMjBjb25maWcpJTBB",highlighted:`<span class="hljs-keyword">class</span> <span class="hljs-title class_">MyModule</span>(torch.nn.Module): | |
| <span class="hljs-keyword">def</span> <span class="hljs-title function_">__init__</span>(<span class="hljs-params">d_in, d_out</span>): | |
| <span class="hljs-built_in">super</span>(MyModule, self).__init__() | |
| self.linear = torch.nn.Linear(d_in, d_out) | |
| <span class="hljs-comment"># optimization will happen in 32-bit and</span> | |
| <span class="hljs-comment"># learning rate will be set to 0.0001 independent of the main learning rate</span> | |
| config = {<span class="hljs-string">'optim_bits'</span>: <span class="hljs-number">32</span>, <span class="hljs-string">'lr'</span> : <span class="hljs-number">0.0001</span>} | |
| GlobalOptimManager.get_instance().register_module_override(self, <span class="hljs-string">'weight'</span>, config) | |
| `,wrap:!1}}),Y=new Je({props:{title:"Next steps",local:"next-steps",headingTag:"h2"}}),E=new Re({props:{source:"https://github.com/bitsandbytes-foundation/bitsandbytes/blob/main/docs/source/optimizers.mdx"}}),{c(){u=n("meta"),R=a(),Q=n("p"),V=a(),p(f.$$.fragment),N=a(),p(T.$$.fragment),P=a(),J=n("p"),J.textContent=$e,K=a(),j=n("p"),j.textContent=ge,O=a(),y=n("blockquote"),y.innerHTML=Ue,q=a(),$=n("p"),$.innerHTML=Ge,D=a(),p(g.$$.fragment),ee=a(),U=n("p"),U.textContent=ve,te=a(),G=n("p"),G.innerHTML=Ze,se=a(),p(v.$$.fragment),le=a(),Z=n("p"),Z.innerHTML=_e,ae=a(),p(_.$$.fragment),ie=a(),p(k.$$.fragment),ne=a(),x=n("p"),x.innerHTML=ke,me=a(),z=n("ol"),z.innerHTML=xe,re=a(),p(W.$$.fragment),pe=a(),h=n("ol"),h.innerHTML=ze,oe=a(),w=n("blockquote"),w.innerHTML=We,de=a(),p(C.$$.fragment),be=a(),L=n("p"),L.innerHTML=Ce,Me=a(),p(I.$$.fragment),ce=a(),A=n("p"),A.innerHTML=Le,ue=a(),p(B.$$.fragment),ye=a(),p(Y.$$.fragment),he=a(),H=n("p"),H.innerHTML=Ie,we=a(),p(E.$$.fragment),fe=a(),S=n("p"),this.h()},l(e){const t=Qe("svelte-u9bgzb",document.head);u=m(t,"META",{name:!0,content:!0}),t.forEach(s),R=i(e),Q=m(e,"P",{}),Ae(Q).forEach(s),V=i(e),o(f.$$.fragment,e),N=i(e),o(T.$$.fragment,e),P=i(e),J=m(e,"P",{"data-svelte-h":!0}),r(J)!=="svelte-7xifi0"&&(J.textContent=$e),K=i(e),j=m(e,"P",{"data-svelte-h":!0}),r(j)!=="svelte-anq6iu"&&(j.textContent=ge),O=i(e),y=m(e,"BLOCKQUOTE",{class:!0,"data-svelte-h":!0}),r(y)!=="svelte-1n1g6xz"&&(y.innerHTML=Ue),q=i(e),$=m(e,"P",{"data-svelte-h":!0}),r($)!=="svelte-1swvj47"&&($.innerHTML=Ge),D=i(e),o(g.$$.fragment,e),ee=i(e),U=m(e,"P",{"data-svelte-h":!0}),r(U)!=="svelte-1swxts3"&&(U.textContent=ve),te=i(e),G=m(e,"P",{"data-svelte-h":!0}),r(G)!=="svelte-swi3zx"&&(G.innerHTML=Ze),se=i(e),o(v.$$.fragment,e),le=i(e),Z=m(e,"P",{"data-svelte-h":!0}),r(Z)!=="svelte-13hadm5"&&(Z.innerHTML=_e),ae=i(e),o(_.$$.fragment,e),ie=i(e),o(k.$$.fragment,e),ne=i(e),x=m(e,"P",{"data-svelte-h":!0}),r(x)!=="svelte-1e2v13b"&&(x.innerHTML=ke),me=i(e),z=m(e,"OL",{"data-svelte-h":!0}),r(z)!=="svelte-1revex8"&&(z.innerHTML=xe),re=i(e),o(W.$$.fragment,e),pe=i(e),h=m(e,"OL",{start:!0,"data-svelte-h":!0}),r(h)!=="svelte-127zgse"&&(h.innerHTML=ze),oe=i(e),w=m(e,"BLOCKQUOTE",{class:!0,"data-svelte-h":!0}),r(w)!=="svelte-pqrln3"&&(w.innerHTML=We),de=i(e),o(C.$$.fragment,e),be=i(e),L=m(e,"P",{"data-svelte-h":!0}),r(L)!=="svelte-kxfpon"&&(L.innerHTML=Ce),Me=i(e),o(I.$$.fragment,e),ce=i(e),A=m(e,"P",{"data-svelte-h":!0}),r(A)!=="svelte-dp49mb"&&(A.innerHTML=Le),ue=i(e),o(B.$$.fragment,e),ye=i(e),o(Y.$$.fragment,e),he=i(e),H=m(e,"P",{"data-svelte-h":!0}),r(H)!=="svelte-1er8qov"&&(H.innerHTML=Ie),we=i(e),o(E.$$.fragment,e),fe=i(e),S=m(e,"P",{}),Ae(S).forEach(s),this.h()},h(){X(u,"name","hf:doc:metadata"),X(u,"content",Ne),X(y,"class","warning"),X(h,"start","2"),X(w,"class","tip")},m(e,t){Se(document.head,u),l(e,R,t),l(e,Q,t),l(e,V,t),d(f,e,t),l(e,N,t),d(T,e,t),l(e,P,t),l(e,J,t),l(e,K,t),l(e,j,t),l(e,O,t),l(e,y,t),l(e,q,t),l(e,$,t),l(e,D,t),d(g,e,t),l(e,ee,t),l(e,U,t),l(e,te,t),l(e,G,t),l(e,se,t),d(v,e,t),l(e,le,t),l(e,Z,t),l(e,ae,t),d(_,e,t),l(e,ie,t),d(k,e,t),l(e,ne,t),l(e,x,t),l(e,me,t),l(e,z,t),l(e,re,t),d(W,e,t),l(e,pe,t),l(e,h,t),l(e,oe,t),l(e,w,t),l(e,de,t),d(C,e,t),l(e,be,t),l(e,L,t),l(e,Me,t),d(I,e,t),l(e,ce,t),l(e,A,t),l(e,ue,t),d(B,e,t),l(e,ye,t),d(Y,e,t),l(e,he,t),l(e,H,t),l(e,we,t),d(E,e,t),l(e,fe,t),l(e,S,t),Te=!0},p:Ye,i(e){Te||(b(f.$$.fragment,e),b(T.$$.fragment,e),b(g.$$.fragment,e),b(v.$$.fragment,e),b(_.$$.fragment,e),b(k.$$.fragment,e),b(W.$$.fragment,e),b(C.$$.fragment,e),b(I.$$.fragment,e),b(B.$$.fragment,e),b(Y.$$.fragment,e),b(E.$$.fragment,e),Te=!0)},o(e){M(f.$$.fragment,e),M(T.$$.fragment,e),M(g.$$.fragment,e),M(v.$$.fragment,e),M(_.$$.fragment,e),M(k.$$.fragment,e),M(W.$$.fragment,e),M(C.$$.fragment,e),M(I.$$.fragment,e),M(B.$$.fragment,e),M(Y.$$.fragment,e),M(E.$$.fragment,e),Te=!1},d(e){e&&(s(R),s(Q),s(V),s(N),s(P),s(J),s(K),s(j),s(O),s(y),s(q),s($),s(D),s(ee),s(U),s(te),s(G),s(se),s(le),s(Z),s(ae),s(ie),s(ne),s(x),s(me),s(z),s(re),s(pe),s(h),s(oe),s(w),s(de),s(be),s(L),s(Me),s(ce),s(A),s(ue),s(ye),s(he),s(H),s(we),s(fe),s(S)),s(u),c(f,e),c(T,e),c(g,e),c(v,e),c(_,e),c(k,e),c(W,e),c(C,e),c(I,e),c(B,e),c(Y,e),c(E,e)}}}const Ne='{"title":"8-bit optimizers","local":"8-bit-optimizers","sections":[{"title":"Optimize unstable parameters","local":"optimize-unstable-parameters","sections":[],"depth":2},{"title":"Next steps","local":"next-steps","sections":[],"depth":2}],"depth":1}';function Pe(je){return He(()=>{new URLSearchParams(window.location.search).get("fw")}),[]}class et extends Ee{constructor(u){super(),Fe(this,u,Pe,Ve,Be,{})}}export{et as component}; | |
Xet Storage Details
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