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AI Research","lazyEnabled":true,"width":"800",":type":"snowflake-site/components/image"},"authorCta":{"id":"button-1719ee8f50","showOutboundIcon":false,"buttonLink":{"valid":true,"url":"/en/blog/authors/snowflake-ai-research/"},"linkTargetContentType":"DOCUMENT_LEARN",":type":"snowflake-site/components/button","linkType":"SNOWFLAKE_INTERNAL","text":"Snowflake AI Research"}}],"image":{"id":"image-100a357997","height":"720","src":"https://www.snowflake.com/adobe/dynamicmedia/deliver/dm-aid--5802ecd3-9104-41ce-ba1d-b68593bb9c70/sf-eng-blog-ml-2.png?quality=85&preferwebp=true","lazyEnabled":true,"width":"1680",":type":"snowflake-site/components/image"},"publicationDate":"MAY 01, 2025","timeToRead":"18","tag":{"tagText":"Gen AI","tagColor":"#29B5E8"},"title":{"lines":["Fastest Speculative Decoding in vLLM with Arctic Inference and Arctic Training"],"type":"heading2",":type":"snowflake-site/components/title-v2"},":type":"snowflake-site/components/blog/blog-hero"}},":itemsOrder":["blog_hero"]},"responsivegrid_content":{"gridClassNames":"aem-Grid aem-Grid--12 aem-Grid--default--12","columnClassNames":{"container":"aem-GridColumn aem-GridColumn--default--12","image_1646305000":"aem-GridColumn aem-GridColumn--default--12","blog_text_1888680092":"aem-GridColumn aem-GridColumn--default--12","code_snippet_875199059":"aem-GridColumn aem-GridColumn--default--12","image_1646305000_cop_1428187161":"aem-GridColumn aem-GridColumn--default--12","markup_editor":"aem-GridColumn aem-GridColumn--default--12","code_snippet_641522356":"aem-GridColumn aem-GridColumn--default--12","container_1378839184":"aem-GridColumn aem-GridColumn--default--12","blog_text_1764483518":"aem-GridColumn aem-GridColumn--default--12","blog_text":"aem-GridColumn aem-GridColumn--default--12","blog_text_1721426635":"aem-GridColumn aem-GridColumn--default--12","image_1646305000_cop_734093606":"aem-GridColumn aem-GridColumn--default--12","blog_text_917563650":"aem-GridColumn aem-GridColumn--default--12","image_1646305000_cop_1575476826":"aem-GridColumn aem-GridColumn--default--12","blog_text_887355338":"aem-GridColumn aem-GridColumn--default--12","image_1646305000_cop":"aem-GridColumn aem-GridColumn--default--12","image":"aem-GridColumn aem-GridColumn--default--12","blog_text_72543362":"aem-GridColumn aem-GridColumn--default--12","blog_text_1097295097":"aem-GridColumn aem-GridColumn--default--12","code_snippet_2102223824":"aem-GridColumn aem-GridColumn--default--12","blog_text_1425177393":"aem-GridColumn aem-GridColumn--default--12","blog_text_659707920":"aem-GridColumn aem-GridColumn--default--12","blog_text_392763307":"aem-GridColumn aem-GridColumn--default--12","container_1346094598":"aem-GridColumn aem-GridColumn--default--12","blog_text_190843877":"aem-GridColumn aem-GridColumn--default--12","image_1646305000_cop_671556436":"aem-GridColumn aem-GridColumn--default--12","container_1342494834":"aem-GridColumn aem-GridColumn--default--12"},"columnCount":12,"appliedCssClassNames":"snowflake-layout-container-inner-padding-small",":items":{"blog_text":{"id":"blog-text-40acbd4278","text":"\u003Cp\u003E\u003Cb\u003EAuthors: \u003C/b\u003E\u003Ca rel=\"nofollow noopener noreferrer\" href=\"https://snowflake.com/en/blog/authors/ye-wang/\" target=\"_blank\"\u003EYe Wang\u003C/a\u003E, \u003Ca rel=\"nofollow noopener noreferrer\" href=\"https://www.gabrieleoliaro.com/\" target=\"_blank\"\u003EGabriele Oliaro\u003C/a\u003E, \u003Ca rel=\"nofollow noopener noreferrer\" href=\"http://thnkinbtfly.github.io/\" target=\"_blank\"\u003EJaeseong Lee\u003C/a\u003E, \u003Ca rel=\"nofollow noopener noreferrer\" href=\"https://www.snowflake.com/en/blog/authors/yuxiong-he/\" target=\"_blank\"\u003EYuxiong He\u003C/a\u003E, \u003Ca rel=\"nofollow noopener noreferrer\" href=\"https://www.snowflake.com/en/blog/authors/aurick-qiao/\" target=\"_blank\"\u003EAurick Qiao\u003C/a\u003E (co-lead), \u003Ca rel=\"nofollow noopener noreferrer\" href=\"https://www.snowflake.com/en/blog/authors/samyam-rajbhandari/\" target=\"_blank\"\u003ESamyam Rajbhandari\u003C/a\u003E (co-lead)\u003C/p\u003E\r\n","richText":true,":type":"snowflake-site/components/blog/blog-text"},"image":{"id":"image-e74ed6b48a","height":"1044","src":"https://www.snowflake.com/adobe/dynamicmedia/deliver/dm-aid--27f95a17-4d41-4035-b1ec-c40f6f27f0b4/screenshot-2025-05-01-at-2.24.30%25E2%2580%25AFpm.png?quality=85&preferwebp=true","alt":"Figure 1. Generation speed for Llama-3.1-70B-Instruct, using speculative decoding in vLLM running on 8xH100 GPUs.","lazyEnabled":true,"width":"2508","title":"Figure 1: Generation speed for Llama-3.1-70B-Instruct, using speculative decoding in vLLM running on 8xH100 GPUs.",":type":"snowflake-site/components/image"},"blog_text_1764483518":{"id":"blog-text-e115211af3","additionalClasses":"page-anchor","text":"\u003Cp\u003EIn this blog, we present our recent work in speculative decoding, and how Arctic Inference + vLLM can achieve 4x faster inference for LLM agents (averaged across SWE-Bench tasks) and up to 2.8x faster decoding for open-ended interactive workloads, when compared with vLLM without speculation.\u003C/p\u003E\r\n\u003Cp\u003EAt the time of publishing, Arctic Inference is the fastest speculative decoding solution for vLLM (v0.8.4), significantly surpassing both the native N-gram and EAGLE speculators in vLLM v1 across several workloads.\u003C/p\u003E\r\n\u003Cp\u003EThis work is released in the following open source projects from Snowflake AI Research:\u003C/p\u003E\r\n\u003Cul\u003E\r\n\u003Cli\u003E\u003Cp\u003E\u003Ca href=\"https://github.com/snowflakedb/ArcticInference/tree/main\" target=\"_blank\" rel=\"nofollow noopener noreferrer\"\u003EArctic Inference\u003C/a\u003E: a vLLM-compatible plugin with fast speculation and verification\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003C/ul\u003E\r\n\u003Cul\u003E\r\n\u003Cli\u003E\u003Ca href=\"https://github.com/snowflakedb/ArcticTraining/tree/main\" target=\"_blank\" rel=\"nofollow noopener noreferrer\"\u003EArctic Training\u003C/a\u003E: a speculator training framework with reproducible YAML-based recipes\u003C/li\u003E\r\n\u003C/ul\u003E\r\n\u003Cul\u003E\r\n\u003Cli\u003EPretrained speculators for \u003Ca href=\"https://huggingface.co/Snowflake/Arctic-LSTM-Speculator-Llama-3.1-8B-Instruct\" target=\"_blank\" rel=\"nofollow noopener noreferrer\"\u003ELlama-3.1-8B\u003C/a\u003E, \u003Ca href=\"https://huggingface.co/Snowflake/Arctic-LSTM-Speculator-Llama-3.1-70B-Instruct\" target=\"_blank\" rel=\"nofollow noopener noreferrer\"\u003ELlama-3.1-70B\u003C/a\u003E, \u003Ca href=\"https://huggingface.co/Snowflake/Arctic-LSTM-Speculator-Llama-3.3-70B-Instruct\" target=\"_blank\" rel=\"nofollow noopener noreferrer\"\u003ELlama-3.3-70B\u003C/a\u003E, and \u003Ca href=\"https://huggingface.co/Snowflake/Arctic-LSTM-Speculator-Qwen2.5-32B-Instruct\" target=\"_blank\" rel=\"nofollow noopener noreferrer\"\u003EQwen2.5-32B\u003C/a\u003E\u003C/li\u003E\r\n\u003C/ul\u003E\r\n\u003Cp\u003EThe rest of this blog presents an overview of what we built \u003Ca data-anchor=\"deploy\" href=\"#deploy\"\u003Ehow to get started\u003C/a\u003E and a deep dive into \u003Ca href=\"#methodology\"\u003Emethodology\u003C/a\u003E. If you would like to cite our work, check out our \u003Ca href=\"#citation\"\u003EBibTeX citation\u003C/a\u003E below.\u003C/p\u003E\r\n\u003Chr\u003E\r\n\r\n\u003Ch2\u003EWhy traditional speculative decoding falls short in the real world\u003C/h2\u003E\r\n\u003Cp\u003EGeneration latency remains the primary bottleneck in modern LLM applications — slowing down chat assistants, coding tools and multistep agentic workflows. Long wait times not only reduce productivity, they frustrate users and limit the practical use of emerging agentic applications.\u003C/p\u003E\r\n\u003Cp\u003E\u003Cb\u003ESpeculative decoding\u003C/b\u003E offers a solution by predicting and validating multiple tokens in parallel, slashing latency for chatbots, coding assistants and complex agentic loops. However, existing open source speculative decoding solutions have several shortcomings (Figure 2):\u003C/p\u003E\r\n\u003Cul\u003E\r\n\u003Cli\u003EThey fail to fully exploit the repetitive generation patterns&nbsp;present in many emerging agentic applications (e.g., self-reflection loops, multiple reasoning paths) because they only predict a small number of tokens in advance even when there are many obvious repeated tokens.\u003C/li\u003E\r\n\u003Cli\u003EThey lack a simple and standardized framework for training custom draft models&nbsp;and bringing them seamlessly to production-serving, which is necessary for speculating non-repetitive generation patterns common in open-ended conversations. Additionally, system-level overheads prevent draft models from achieving their theoretical peak speedups.\u003C/li\u003E\r\n\u003C/ul\u003E\r\n","richText":true,":type":"snowflake-site/components/blog/blog-text"},"image_1646305000":{"id":"image-0b7bfcce3f","height":"727","src":"https://www.snowflake.com/adobe/dynamicmedia/deliver/dm-aid--e4db5be4-e386-4622-a208-027ceda5b0a3/specdecfig2.png?quality=85&preferwebp=true","alt":"Figure 2: Repetitive patterns in agentic code generation (left) and real-world speedup vs. theoretical speedup for draft-model speculation (right).","lazyEnabled":true,"width":"1600","title":"Figure 2. Repetitive patterns in agentic code generation (left) and real-world speedup vs. theoretical speedup for draft-model speculation (right).",":type":"snowflake-site/components/image"},"blog_text_659707920":{"id":"blog-text-2d2b4bae8d","text":"\u003Ch3\u003EIntroducing enhanced speculative decoding with Arctic Inference and Arctic Training\u003C/h3\u003E\r\n\u003Cp\u003EWe’re excited to introduce enhanced speculative decoding capabilities, for our Arctic Inference and Arctic Training ecosystems, that solve these challenges with two set of improvements:\u003C/p\u003E\r\n\u003Col\u003E\r\n\u003Cli\u003E\u003Cp\u003E\u003Cb\u003ESuffix decoding for repetitive (i.e., agentic) generation:\u003C/b\u003E It unlocks efficient speculation across longer-token sequences, at a blazing 20 microseconds per speculated token on the CPU, without needing a draft model.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003Cli\u003E\u003Cp\u003E\u003Cb\u003ESpeculative training and inference pipeline for non-repetitive generation:\u003C/b\u003E&nbsp;It provides easy-to-use training pipelines for creating powerful but lightweight draft models. It also implements an optimized speculation code path that achieves up to 91% of the theoretical maximum speedup in vLLM.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003C/ol\u003E\r\n\u003Cp\u003EFinally, we combined both suffix decoding and optimized draft model speculation to realize the best of both worlds. These capabilities dramatically reduce generation latency across repetitive and non-repetitive workloads (see Figure 1), making Llama 3.3 70B generation up to:\u003C/p\u003E\r\n\u003Cul\u003E\r\n\u003Cli\u003E\u003Cp\u003E4x faster for agentic tasks like SWE-Bench, resulting in 1.8-4.5x faster end-to-end task completion\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003C/ul\u003E\r\n\u003Cul\u003E\r\n\u003Cli\u003E\u003Cp\u003E2.8x faster for open conversations like ShareGPT and code generation like HumanEval\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003Cli\u003E\u003Cp\u003E1.8x faster than the best available open source alternative in vLLM\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003C/ul\u003E\r\n\u003Cp\u003EHere’s how you can \u003Ca data-anchor=\"deploy\"\u003Eget started\u003C/a\u003E using Arctic Inference’s enhanced speculative decoding pipeline in your existing vLLM deployment. You’ll also learn how to customize your own draft model with Arctic Training.\u003C/p\u003E\r\n","richText":true,":type":"snowflake-site/components/blog/blog-text"},"container_1342494834":{"gridClassNames":"aem-Grid aem-Grid--12 aem-Grid--default--12","columnClassNames":{"blog_text_659707920_":"aem-GridColumn aem-GridColumn--default--12"},"id":"methodology","layout":"RESPONSIVE_GRID","columnCount":12,":type":"snowflake-site/components/container",":items":{"blog_text_659707920_":{"id":"blog-text-d4670dadbb","text":"\u003Chr\u003E\r\n\r\n\u003Ch2\u003EDeep dive into our methodology\u003C/h2\u003E\r\n\u003Csection id=\"methodology\"\u003E\r\n\u003Cp\u003EFor readers who would like to go deeper into the technical details, the rest of this blog will cover some background on speculative decoding, detailed architecture of our solutions for both repetitive and non-repetitive tasks, and real-world benchmarks across SWE-Bench, ShareGPT and HumanEval data sets.\u003C/p\u003E\r\n\u003C/section\u003E\r\n\u003Ch3\u003EWhat is speculative decoding?\u003C/h3\u003E\r\n\u003Cp\u003ESpeculative decoding works by using a smaller, faster model to speculate or propose potential future tokens, which are then efficiently checked by the main, larger model.\u003C/p\u003E\r\n\u003Cp\u003EWe can break down the speculative decoding process into three components:\u003C/p\u003E\r\n\u003Col\u003E\r\n\u003Cli\u003E\u003Cp\u003E\u003Cb\u003EProposer:\u003C/b\u003E This can be a smaller and cheaper language model (known as a draft model) that rapidly generates a sequence of candidate tokens (e.g., 3 to 5 tokens). It can also be model-free and generate candidate tokens from a different source (such as n-grams from the prompt itself).\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003Cli\u003E\u003Cp\u003E\u003Cb\u003EScorer (base model): \u003C/b\u003EThis is the large, high-performance LLM whose output quality we want to preserve. Instead of generating just one token, it takes the sequence of draft tokens proposed by the Proposer and evaluates them all in parallel within a single computational forward pass.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003Cli\u003E\u003Cp\u003E\u003Cb\u003EVerifier (rejection sampling): \u003C/b\u003EThis is a step that determines which tokens are accepted.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003C/ol\u003E\r\n\u003Ch3\u003EAcceptance rate and its implications\u003C/h3\u003E\r\n\u003Cp\u003EThe acceptance rate is a key metric used to measure how effective the speculative decoding process is. This metric calculates the average number or percentage of draft tokens that the Proposer suggests, which are then validated and accepted by the Verifier during each decoding step.\u003C/p\u003E\r\n\u003Cp\u003EA high acceptance rate signifies that the draft model is adept at predicting the output of the target model. This translates to a greater number of tokens being generated per verification step, culminating in an enhanced speedup. Conversely, a low acceptance rate implies that the speculations of the draft model are frequently incorrect, leading to inefficiencies in the decoding process.\u003C/p\u003E\r\n\u003Ch3\u003EBalancing acceptance rate vs. draft overhead&nbsp;\u003C/h3\u003E\r\n\u003Cp\u003EThe relationship between acceptance rate and computational resources underscores a fundamental trade-off in speculative decoding. While a higher acceptance rate is desirable for faster decoding, it is equally important to minimize the computational overhead of producing the draft tokens. Therefore, to achieve the best performance, it is critical to develop a speculator that can balance the acceptance rate and computational resources based on model and workload characteristics.\u003C/p\u003E\r\n\u003Ch3\u003EA Simple Example\u003C/h3\u003E\r\n","richText":true,":type":"snowflake-site/components/blog/blog-text"}},":itemsOrder":["blog_text_659707920_"],"appliedCssClassNames":"snowflake-responsive-container-inner-padding-small"},"image_1646305000_cop":{"id":"image-edf37f83d9","height":"291","src":"https://www.snowflake.com/adobe/dynamicmedia/deliver/dm-aid--5026c1f6-b01e-40a8-90ba-4799c2c14712/specdecfig3.png?quality=85&preferwebp=true","alt":"Figure 3: Illustration of one speculative decoding step","lazyEnabled":true,"width":"988","title":"Figure 3. Illustration of one speculative decoding step",":type":"snowflake-site/components/image"},"blog_text_917563650":{"id":"blog-text-03cb998f67","text":"\u003Cp\u003EFigure 3 demonstrates how speculative decoding functions in a single decoding step. Using the states generated from the prefill step, the Proposer speculates three additional tokens: 13, 578 and 7301. The Scorer then runs the base model and in parallel obtains the token IDs of the last verified token plus the speculated tokens, which are 16, 13, 578, and 7301. Using the sampling strategy, the Verifier determines that 13 and 578 are acceptable and appends 21747 as the last verified token.\u003C/p\u003E\r\n\u003Cp\u003EIn this instance, the speculative decoding step accepts two out of three predicted tokens, resulting in a 66.7% acceptance rate.&nbsp;\u003C/p\u003E\r\n\u003Cp\u003ELet us now review the enhanced speculative decoding capabilities for both repetitive and non-repetitive generation.\u003C/p\u003E\r\n\u003Cp\u003E&nbsp;\u003C/p\u003E\r\n\u003Chr\u003E\r\n\r\n\u003Ch2\u003ESuffix decoding for repetitive (agentic) generation\u003C/h2\u003E\r\n\u003Cp\u003EMany agentic workflows consist of iterative self-reflection loops and/or sampling multiple reasoning paths, containing predictable and repeated token sequences. But most speculative approaches only predict a small handful of tokens at a time and do not fully exploit the opportunity to accelerate these naturally repetitive tasks.\u003Cbr\u003E\r\n\u003Cbr\u003E\r\nWe develop a novel lightweight speculative approach called \u003Ca href=\"https://arxiv.org/pdf/2411.04975\" target=\"_blank\" rel=\"nofollow noopener noreferrer\"\u003ESuffix Decoding\u003C/a\u003E to address this limitation. It exploits repetitive textual structures by dynamically building speculative sequences based on historical outputs and current inputs. Instead of speculating a fixed number of tokens, Suffix Decoding adaptively identifies the matching sequences that are highly likely to occur next.\u003C/p\u003E\r\n\u003Cp\u003EAt its core, Suffix Decoding maintains a compact cache of previously generated sequences, using a data structure called a suffix tree. A suffix tree efficiently indexes and matches repeating token patterns from both historical generations and the current input prompt, enabling rapid and adaptive speculation. With this optimized structure, Suffix Decoding can speculate tokens extremely quickly — on the order of \u003Cb\u003E20 microseconds per token\u003C/b\u003E — enabling adaptive speculation of significantly longer sequences than previously possible.\u003C/p\u003E\r\n","richText":true,":type":"snowflake-site/components/blog/blog-text"},"image_1646305000_cop_1575476826":{"id":"image-f53c118652","height":"640","src":"https://www.snowflake.com/adobe/dynamicmedia/deliver/dm-aid--3a7d3558-0dbd-4a98-87ee-c0f672c0738e/specdecfig4.png?quality=85&preferwebp=true","alt":"Figure 4: Suffix Decoding two suffix trees: one for the prompt of the current request and another for the outputs of previous requests. Draft tokens are proposed by matching the most recently generated tokens in each suffix tree and scoring their most likely continuations.","lazyEnabled":true,"width":"1600","title":"Figure 4. Suffix Decoding two suffix trees: one for the prompt of the current request and another for the outputs of previous requests. Draft tokens are proposed by matching the most recently generated tokens in each suffix tree and scoring their most likely continuations.",":type":"snowflake-site/components/image"},"blog_text_1097295097":{"id":"blog-text-25c13563c1","text":"\u003Cp\u003EIn practice, Suffix Decoding (Figure 4) works as follows:\u003C/p\u003E\r\n\u003Col\u003E\r\n\u003Cli\u003E\u003Cp\u003E\u003Cb\u003ESuffix tree construction:\u003C/b\u003E Historical outputs from past generations and the current prompt context are decomposed into token suffixes and indexed into a compact suffix tree, allowing very rapid lookups of repeating patterns.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003Cli\u003E\u003Cp\u003E\u003Cb\u003EAdaptive pattern matching for speculation: \u003C/b\u003EAt inference time, Suffix Decoding rapidly matches the current token sequence against the suffix tree, adaptively identifying the longest speculative sequences that historically followed similar contexts.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003Cli\u003E\u003Cp\u003E\u003Cb\u003EFrequency-based expansion:\u003C/b\u003E Each speculative candidate is prioritized by empirical likelihood (frequency-based scoring), enabling speculative expansions to remain highly accurate even for longer sequences.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003Cli\u003E\u003Cp\u003E\u003Cb\u003EParallel verification: \u003C/b\u003ESpeculated token sequences are efficiently verified in a single forward pass by the primary LLM model, accepting correct predictions and discarding incorrect ones with minimal computational overhead.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003C/ol\u003E\r\n\u003Cp\u003EFor further details on how Suffix Decoding works, see \u003Ca href=\"https://arxiv.org/pdf/2411.04975\" target=\"_blank\" rel=\"nofollow noopener noreferrer\"\u003Eour paper\u003C/a\u003E.\u003C/p\u003E\r\n\u003Cp\u003ESuffix Decoding significantly outperforms existing speculative decoding techniques for agentic applications that involve repetitive LLM queries, delivering \u003Cb\u003E1.8x-4.5x speedups on end-to-end SWE-Bench task completion (generation and performing actions)\u003C/b\u003E. A more thorough evaluation is presented near the end of this blog.\u003C/p\u003E\r\n\u003Cp\u003E&nbsp;\u003C/p\u003E\r\n\u003Chr\u003E\r\n\r\n\u003Ch2\u003EImproving speculation for non-repetitive generation\u003C/h2\u003E\r\n\u003Ch3\u003EEasy-to-use speculator training recipes\u003C/h3\u003E\r\n\u003Cp\u003EDraft models for speculative decoding are a well-established method, particularly useful in open-ended conversational settings with less repetition that can be exploited. However, adoption has been slowed by the lack of standardized training tools. Our \u003Ca href=\"https://github.com/snowflakedb/ArcticTraining\" target=\"_blank\" rel=\"nofollow noopener noreferrer\"\u003EArctic Training\u003C/a\u003E framework addresses this gap by offering accessible, standardized training recipes. Each recipe includes the data set, hyperparameters and model architecture bundled into a single YAML file, simplifying reproducibility and result sharing.\u003C/p\u003E\r\n\u003Cp\u003EWhile the framework supports arbitrary draft model architectures, we focus on \u003Ca href=\"https://arxiv.org/abs/2404.19124\" target=\"_blank\" rel=\"nofollow noopener noreferrer\"\u003EMLP-Speculator\u003C/a\u003E-like designs due to their simplicity and strong balance between acceptance rate and inference latency optimization.\u003C/p\u003E\r\n\u003Cp\u003EWe provide end-to-end recipes, including data generation, for two draft model types:\u003C/p\u003E\r\n\u003Cul\u003E\r\n\u003Cli\u003E\u003Cb\u003EMLP-based speculators (Figure 5a):\u003C/b\u003E Simple feed-forward models using LLM final hidden states and last token IDs, similar to RNNs by passing hidden states between steps.\u003C/li\u003E\r\n\u003Cli\u003E\u003Cb\u003ELSTM-based speculators (Figure 5b): \u003C/b\u003EAn extended version of the MLP speculator with standard LSTM gates (forget, input, output, cell), to demonstrate the flexibility of our training pipeline.\u003C/li\u003E\r\n\u003C/ul\u003E\r\n","richText":true,":type":"snowflake-site/components/blog/blog-text"},"image_1646305000_cop_671556436":{"id":"image-84d69c4627","height":"899","src":"https://www.snowflake.com/adobe/dynamicmedia/deliver/dm-aid--6d53e0bd-b255-4696-a5cc-ab5799328b29/specdecfig5.png?quality=85&preferwebp=true","alt":"Figure 5. Illustration of (a) MLP-Speculator and (b) LSTM-Speculator.","lazyEnabled":true,"width":"1600","title":"Figure 5. Illustration of (a) MLP-Speculator and (b) LSTM-Speculator.",":type":"snowflake-site/components/image"},"blog_text_1888680092":{"id":"blog-text-6b69587dd5","text":"\u003Ctable\u003E\r\n\u003Cthead\u003E\u003Ctr\u003E\u003Cth\u003E&nbsp;\u003C/th\u003E\r\n\u003Cth\u003EParameter counts (B)\u003C/th\u003E\r\n\u003Cth\u003EAcceptance rate\u003C/th\u003E\r\n\u003C/tr\u003E\u003C/thead\u003E\u003Ctbody\u003E\u003Ctr\u003E\u003Ctd\u003EMLP-Speculator (original)\u003C/td\u003E\r\n\u003Ctd\u003E2.1\u003C/td\u003E\r\n\u003Ctd\u003E13.7%\u003C/td\u003E\r\n\u003C/tr\u003E\u003Ctr\u003E\u003Ctd\u003EMLP-Speculator (ours)\u003C/td\u003E\r\n\u003Ctd\u003E2.1\u003C/td\u003E\r\n\u003Ctd\u003E42.7%\u003C/td\u003E\r\n\u003C/tr\u003E\u003Ctr\u003E\u003Ctd\u003ELSTM-Speculator (ours)\u003C/td\u003E\r\n\u003Ctd\u003E1.8\u003C/td\u003E\r\n\u003Ctd\u003E44.5%\u003C/td\u003E\r\n\u003C/tr\u003E\u003C/tbody\u003E\u003C/table\u003E\r\n\u003Cp\u003ETable 1. Comparison of speculators with three additional heads on Llama 3.1-70B-Instruct. We evaluated the acceptance rate with the ShareGPT data set.\u003C/p\u003E\r\n","richText":true,":type":"snowflake-site/components/blog/blog-text"},"blog_text_190843877":{"id":"blog-text-ebc51bb257","additionalClasses":"inline","text":"\u003Cp\u003EWith \u003Cb\u003EArctic Training\u003C/b\u003E, we achieve significantly stronger lightweight speculators compared to existing open source baselines. We use the same architecture, but instead of a two-stage training — on a nonsynthetic data set and then on target model-generated synthetic data — we use a single-stage training just on generated synthetic data using UltraChat and MagiCoder prompts over a longer training horizon. This allows us to get a \u003Cb\u003E3.1x higher acceptance rate\u003C/b\u003E. Our LSTM-Speculator further improves efficiency, achieving a higher acceptance rate with fewer parameters. \u003Cb\u003E\u003Ci\u003EAll training pipelines are fully reproducible with our recipes.\u003C/i\u003E\u003C/b\u003E\u003C/p\u003E\r\n\u003Cp\u003E&nbsp;\u003C/p\u003E\r\n\u003Chr\u003E\r\n\r\n\u003Ch2\u003EOptimized speculative inference pipeline\u003C/h2\u003E\r\n\u003Cp\u003EThe speculative decoding pipeline includes a Proposer (speculator), Scorer and Verifier. To speed it up, we optimized the speculator and verifier, and reduced pipeline overhead holistically.\u003C/p\u003E\r\n\u003Cp\u003E\u003Cb\u003ESpeculator optimizations:\u003C/b\u003E\u003C/p\u003E\r\n\u003Cul\u003E\r\n\u003Cli\u003E\u003Cp\u003E\u003Cb\u003EFP8 quantization:\u003C/b\u003E Reduces memory bandwidth bottleneck in linear layers, lowering proposer latency.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003Cli\u003E\u003Cp\u003E\u003Cb\u003ETensor parallelism (TP):\u003C/b\u003E Splits computation across GPUs to reduce per-GPU load and improve latency and throughput.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003Cli\u003E\u003Cp\u003E\u003Cb\u003ECommunication optimization: \u003C/b\u003EInstead of gathering full logits across GPUs, each GPU computes a local Top-K first, then allGather operates only on Top-K results, massively cutting communication overhead.\u003C/p\u003E\r\n\u003Cul\u003E\r\n\u003Cli\u003E\u003Cp\u003E\u003Ci\u003E\u003Ccode\u003EInitial: Logits(Sharded) -&gt; AllGather -&gt; Logits(Global) -&gt; TopK(Global)\u003C/code\u003E\u003C/i\u003E\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003Cli\u003E\u003Cp\u003E\u003Ci\u003E\u003Ccode\u003EOptimized: Logits(Sharded) -&gt; Topk(Sharded) -&gt; AllGather -&gt; TopK(Global)\u003C/code\u003E\u003C/i\u003E\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003C/ul\u003E\r\n\u003C/li\u003E\r\n\u003Cli\u003E\u003Cp\u003E\u003Cb\u003ECUDA graphs:\u003C/b\u003E Captures the entire speculative model and inference loop into one CUDA graph, reducing kernel launch overhead.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003C/ul\u003E\r\n\u003Cp\u003ETogether, these optimizations reduce a MLP-based proposer latency from ~1.47ms/token to ~0.47ms/token (~3.1x improvement).\u003C/p\u003E\r\n\u003Cp\u003E\u003Cb\u003EVerifier optimizations:\u003C/b\u003E\u003C/p\u003E\r\n\u003Cul\u003E\r\n\u003Cli\u003E\u003Cp\u003ESwitched from rejection sampling to \u003Cb\u003Egreedy verification\u003C/b\u003E (accept tokens only if they match greedy decoding), ensuring outputs are identical to the base model without lowering acceptance rate.\u003Cbr\u003E\r\nFurther speedup was achieved with a lightweight CUDA kernel, reducing verifier latency from ~1.34ms to ~0.38ms (~3.5× improvement) on top of vLLM V0.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003C/ul\u003E\r\n\u003Cp\u003E\u003Cb\u003EHolistic improvements:\u003C/b\u003E\u003C/p\u003E\r\n\u003Cul\u003E\r\n\u003Cli\u003E\u003Cp\u003ESimplified speculative decoding logic (e.g., replacing sampling with Top-K in the MLP-Speculator, removing metadata and unnecessary data structures) to cut GPU/CPU overhead.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003C/ul\u003E\r\n\u003Cp\u003EOverall, these changes deliver up to \u003Cb\u003E1.42x \u003C/b\u003Eend-to-end speedup over vLLM V0 using the same speculative model, achieving \u003Cb\u003Eup to 91%\u003C/b\u003E of the theoretical speculative decoding speedup, even atop highly optimized vLLM baselines.\u003C/p\u003E\r\n\u003Ch3\u003ECombining Suffix Decoding and MLP/LSTM-Speculator\u003C/h3\u003E\r\n\u003Cp\u003ESo far, we have discussed Suffix Decoding’s strength for speculating repetitive token sequences common in agentic applications, and training MLP- and LSTM-based draft models for nonrepetitive sequences common in open-ended conversational use cases. However, in the real world, LLM deployments often need to deal with both types of generations simultaneously.\u003C/p\u003E\r\n\u003Cp\u003ELuckily, we can combine both Suffix Decoding and draft models. This can be done using Suffix Decoding’s existing scoring function, which it uses to select candidate tokens. In short, the score given to candidate sequences is an empirical estimate of the number of tokens that would be accepted according to historical patterns (more details in the \u003Ca href=\"https://arxiv.org/pdf/2411.04975\" target=\"_blank\" rel=\"nofollow noopener noreferrer\"\u003Epaper\u003C/a\u003E).\u003C/p\u003E\r\n\u003Cp\u003EThus, we can decide between Suffix Decoding and draft model speculation for each sequence using a simple rule:\u003C/p\u003E\r\n\u003Col\u003E\r\n\u003Cli\u003E\u003Cp\u003EGenerate candidate tokens using Suffix Decoding.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003Cli\u003E\u003Cp\u003EIf the score is less than the max speculation tokens using a draft model, then discard the candidate tokens and use the draft model instead.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003Cli\u003E\u003Cp\u003EOtherwise, skip the draft model and use the candidate tokens from Suffix Decoding.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003C/ol\u003E\r\n\u003Ch3\u003EPerformance evaluation\u003C/h3\u003E\r\n\u003Cp\u003EFirst, we demonstrate that by leveraging Suffix Decoding, we achieve state-of-the-art generation performance for agentic workloads, like coding agents from Openhands, enabling end-to-end speedup of up to \u003Cb\u003E1.8-4.5x \u003C/b\u003Eacross the different subtasks in SWE-Bench.\u003Cbr\u003E\r\n\u003Cbr\u003E\r\nSecond, we show that for open-ended conversations (ShareGPT) and general coding (HumanEval) tasks for Llama 3.1 70B, we achieve up to 2.45x speedup over optimized baseline implementation (nonspeculative decoding), and up to 1.82x faster generation speed, compared to the best available speculative decoding offering in vLLM.\u003C/p\u003E\r\n\u003Ch3\u003EAccelerating coding agents via Suffix Decoding\u003C/h3\u003E\r\n\u003Cp\u003EWe designed Suffix Decoding to effectively speculate long sequences, which are frequent opportunities in agentic tasks. To demonstrate this, let’s consider the \u003Ca href=\"https://www.all-hands.dev/blog/openhands-codeact-21-an-open-state-of-the-art-software-development-agent\" target=\"_blank\" rel=\"nofollow noopener noreferrer\"\u003ECodeAct 2.1 agent from OpenHands\u003C/a\u003E, which achieves state-of-the-art performance on SWE-Bench (resolving real-world GitHub issues).\u003C/p\u003E\r\n\u003Cp\u003EA CodeAct agent can perform a combination of \u003Cb\u003ELLM queries\u003C/b\u003E and \u003Cb\u003Eactions\u003C/b\u003E:\u003C/p\u003E\r\n\u003Col\u003E\r\n\u003Cli\u003E\u003Cp\u003EReceive instructions and feedback conversationally from the user.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003Cli\u003E\u003Cp\u003EGenerate code and execute that code against a sandboxed environment.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003Cli\u003E\u003Cp\u003EObserve the outcomes of executing the generated code.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003Cli\u003E\u003Cp\u003ERespond to the user conversationally.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003C/ol\u003E\r\n\u003Cp\u003EThe agent is backed by a custom-trained LLM (\u003Ca href=\"https://huggingface.co/all-hands/openhands-lm-32b-v0.1-ep3\" target=\"_blank\" rel=\"nofollow noopener noreferrer\"\u003Eall-hands/openhands-lm-32b-v0.1-ep3\u003C/a\u003E), which is repeatedly queried for reasoning/planning to decide the best next step based on prior instructions, feedback and code-execution outcomes. In our benchmarks, these LLM queries take the majority of the total time needed to complete various SWE-Bench tasks.\u003C/p\u003E\r\n\u003Cp\u003ETo accelerate the CodeAct agent, we employ Suffix Decoding on the core reasoning and planning queries to the LLM. We also compared our implementation of Suffix Decoding with the other popular methods in vLLM: (1) prompt-lookup decoding (e.g., ngram), and (2) vanilla decoding (no speculation). For EAGLE-3, a draft model trained for the agent’s custom LLM is not available, so we could not compare against it. The results are in Figure 6.\u003C/p\u003E\r\n","richText":true,":type":"snowflake-site/components/blog/blog-text"},"image_1646305000_cop_734093606":{"id":"image-659005d81c","height":"788","src":"https://www.snowflake.com/adobe/dynamicmedia/deliver/dm-aid--f1a4ec57-ba5a-4864-8106-07576fd5047d/specdecfig6.png?quality=85&preferwebp=true","alt":"Figure 6. SWE-Bench performance results for Suffix Decoding in Arctic Inference.","lazyEnabled":true,"width":"1600","title":"Figure 6. SWE-Bench performance results for Suffix Decoding in Arctic Inference.",":type":"snowflake-site/components/image"},"blog_text_72543362":{"id":"blog-text-d1dde4b8ac","text":"\u003Cp\u003ESuffix Decoding reduces the decoding time over vanilla decoding by \u003Cb\u003E2.3x-6.3x\u003C/b\u003E, which leads to a corresponding \u003Cb\u003E1.8x-4.5x\u003C/b\u003E reduction in end-to-end completion time across various SWE-Bench tasks. At the time of this blog, Suffix Decoding implemented in Arctic Inference is the fastest available option for running SWE-Bench with vLLM, being \u003Cb\u003E1.4x-3.9x\u003C/b\u003E faster than prompt-lookup decoding (e.g., N-gram speculation in vLLM). At the same time, we verified that Suffix Decoding matches or exceeds the advertised \u003Ca href=\"https://www.all-hands.dev/blog/introducing-openhands-lm-32b----a-strong-open-coding-agent-model\" target=\"_blank\" rel=\"nofollow noopener noreferrer\"\u003E37%+ resolve rate\u003C/a\u003E of the original agent.\u003C/p\u003E\r\n\u003Cp\u003EWe obtain these speedups by exploiting the substantial repetition in the LLM reasoning queries. This repetition arises naturally from (see Figure 2):\u003C/p\u003E\r\n\u003Col\u003E\r\n\u003Cli\u003E\u003Cp\u003E\u003Cb\u003ECode corrections due to execution feedback\u003C/b\u003E. Often, generated code will contain bugs that are fixed with minor modifications. The newly generated code is highly repetitive with the previously generated code.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003Cli\u003E\u003Cp\u003E\u003Cb\u003ESampling multiple reasoning paths.\u003C/b\u003E To enhance reasoning ability, the agent will query the LLM multiple times during each step and choose the best response. Although these reasoning paths are different, they still contain substantial repetition with each other.\u003C/p\u003E\r\n\u003C/li\u003E\r\n\u003C/ol\u003E\r\n\u003Ch3\u003EAccelerating open-ended conversations and coding tasks\u003C/h3\u003E\r\n\u003Cp\u003EWe evaluated the ability of our speculative decoding enhancements to accelerate open-ended conversations and coding tasks by benchmarking average generation throughput on ShareGPT and HumanEval (Figure 7), using Llama 3.1 70B as the target model. We used MLP/LSTM-based speculators trained via the Arctic Training recipe and ran inference with Arctic Inference atop vLLM V1. The request arrival rate was set at 0.5 req/sec.\u003C/p\u003E\r\n\u003Cp\u003ETo establish competitive baselines, we used the fastest setups supported by vLLM: (i) nonspeculative decoding with FP8 and TP=8 (vLLM V1), and (ii) speculative decoding with FP8, TP=8 using open source MLP-Speculator (vLLM V0) and EAGLE/EAGLE-3 checkpoints (vLLM V1). We also chose the best-performing version of FlashAttention (V2 or V3).\u003C/p\u003E\r\n\u003Cp\u003EWe note that the full acceptance rate and speedup from EAGLE/EAGLE-3 could not be replicated in vLLM, which could be due to the EAGLE speculator not being fine-tuned on a similar data set, vLLM's lack of a tree-decoding speculative system or overheads in the speculative inference code path.\u003C/p\u003E\r\n\u003Ch4\u003EResults\u003C/h4\u003E\r\n","richText":true,":type":"snowflake-site/components/blog/blog-text"},"image_1646305000_cop_1428187161":{"id":"image-f32cc71d21","height":"520","src":"https://www.snowflake.com/adobe/dynamicmedia/deliver/dm-aid--fd7e6e4a-68f1-48c7-891b-55ddafce1c9f/specdecfig7.png?quality=85&preferwebp=true","alt":"Figure 7. Our improvements achieve 2.05x - 2.45x speedup over optimized non-speculative decoding running on top of vLLM V1 (left). It delivers 1.69x - 1.84x speedup (right) compared to the best speculative decoding in vLLM (EAGLE + vLLM V1).","lazyEnabled":true,"width":"1600","title":"Figure 7. Our improvements achieve 2.05x - 2.45x speedup over optimized non-speculative decoding running on top of vLLM V1 (left). It delivers 1.69x - 1.84x speedup (right) compared to the best speculative decoding in vLLM (EAGLE + vLLM V1).",":type":"snowflake-site/components/image"},"container_1378839184":{"gridClassNames":"aem-Grid aem-Grid--12 aem-Grid--default--12","columnClassNames":{},"id":"container-28cfbba4be","layout":"RESPONSIVE_GRID","columnCount":12,":type":"snowflake-site/components/container",":items":{},":itemsOrder":[],"appliedCssClassNames":"snowflake-responsive-container-inner-padding-small"},"blog_text_392763307":{"id":"blog-text-88bb831382","text":"\u003Ch4\u003EKey drivers of improvement:\u003C/h4\u003E\r\n\u003Ctable\u003E\r\n\u003Cthead\u003E\u003Ctr\u003E\u003Cth\u003E&nbsp;\u003C/th\u003E\r\n\u003Cth\u003EPublic MLP\u003Cbr\u003E\r\n(vLLM V0)\u003C/th\u003E\r\n\u003Cth\u003EOur MLP\u003Cbr\u003E\r\n(vLLM V0)\u003C/th\u003E\r\n\u003Cth\u003EImprovement\u003C/th\u003E\r\n\u003C/tr\u003E\u003C/thead\u003E\u003Ctbody\u003E\u003Ctr\u003E\u003Ctd\u003EShareGPT\u003C/td\u003E\r\n\u003Ctd\u003E77.9 tokens/s\u003C/td\u003E\r\n\u003Ctd\u003E120.5 tokens/s\u003C/td\u003E\r\n\u003Ctd\u003E54.7%\u003C/td\u003E\r\n\u003C/tr\u003E\u003Ctr\u003E\u003Ctd\u003EHumanEval\u003C/td\u003E\r\n\u003Ctd\u003E66.7 tokens/s\u003C/td\u003E\r\n\u003Ctd\u003E144.7 tokens/s\u003C/td\u003E\r\n\u003Ctd\u003E116.9%\u003C/td\u003E\r\n\u003C/tr\u003E\u003C/tbody\u003E\u003C/table\u003E\r\n\u003Cp\u003E\u003Cb\u003ETable 2. \u003C/b\u003EArctic-trained MLP/LSTM speculators vs public speculators on vLLM V0\u003C/p\u003E\r\n\u003Cp\u003E\u003Cb\u003ESuperior draft models: \u003C/b\u003EArctic-trained MLP/LSTM speculators achieve up to \u003Cb\u003E3.1x higher acceptance rates\u003C/b\u003E on ShareGPT compared to open source MLP-Speculator (Table 1). Additional comparisons (Table 2) show throughput speedup by simply replacing with Arctic-trained speculators.\u003C/p\u003E\r\n\u003Cp\u003E&nbsp;\u003C/p\u003E\r\n\u003Ctable\u003E\r\n\u003Cthead\u003E\u003Ctr\u003E\u003Cth\u003E&nbsp;\u003C/th\u003E\r\n\u003Cth\u003EvLLM V0\u003C/th\u003E\r\n\u003Cth\u003EArctic Inference\u003Cbr\u003E\r\n+ vLLM V0\u003C/th\u003E\r\n\u003Cth\u003EArctic Inference\u003Cbr\u003E\r\n+ vLLM V1\u003C/th\u003E\r\n\u003Cth\u003EImprovement\u003C/th\u003E\r\n\u003C/tr\u003E\u003C/thead\u003E\u003Ctbody\u003E\u003Ctr\u003E\u003Ctd\u003EShareGPT\u003C/td\u003E\r\n\u003Ctd\u003E120.5 tokens/s\u003C/td\u003E\r\n\u003Ctd\u003E153.1 tokens/s\u003C/td\u003E\r\n\u003Ctd\u003E171.2 tokens/s\u003C/td\u003E\r\n\u003Ctd\u003E42.1%\u003C/td\u003E\r\n\u003C/tr\u003E\u003Ctr\u003E\u003Ctd\u003EHumanEval\u003C/td\u003E\r\n\u003Ctd\u003E144.7 tokens/s\u003C/td\u003E\r\n\u003Ctd\u003E186.6 tokens/s\u003C/td\u003E\r\n\u003Ctd\u003E205.8 tokens/s\u003C/td\u003E\r\n\u003Ctd\u003E42.2%\u003C/td\u003E\r\n\u003C/tr\u003E\u003C/tbody\u003E\u003C/table\u003E\r\n\u003Cp\u003E\u003Cb\u003ETable 3. \u003C/b\u003ESpeculative inference pipeline with or without optimizations\u003C/p\u003E\r\n\u003Cp\u003E\u003Cb\u003EFaster speculative decoding system: \u003C/b\u003EGeneration throughput significantly improved over vLLM V0, and further accelerated after porting MLP-Speculator in Arctic Inference to vLLM V1 (Table 3).\u003C/p\u003E\r\n\u003Ch3\u003ECombining Suffix Decoding and draft model speculation\u003C/h3\u003E\r\n\u003Cp\u003EFinally, we evaluate the effectiveness of combining Suffix Decoding and draft-model-based speculative decoding. We measured the output tokens per second on four workloads: ShareGPT, HumanEval, SWE-Bench and a mixture of the three (Table 4).\u003C/p\u003E\r\n\u003Cp\u003E&nbsp;\u003C/p\u003E\r\n\u003Ctable\u003E\r\n\u003Cthead\u003E\u003Ctr\u003E\u003Cth\u003EWorkload\u003C/th\u003E\r\n\u003Cth\u003ENo Spec\u003C/th\u003E\r\n\u003Cth\u003EN-gram (vLLM V1)\u003C/th\u003E\r\n\u003Cth\u003EEAGLE (vLLM V1)\u003C/th\u003E\r\n\u003Cth\u003ELSTM Only (Ours)\u003C/th\u003E\r\n\u003Cth\u003ESuffix Only (Ours)\u003C/th\u003E\r\n\u003Cth\u003ELSTM + Suffix (Ours)\u003C/th\u003E\r\n\u003C/tr\u003E\u003C/thead\u003E\u003Ctbody\u003E\u003Ctr\u003E\u003Ctd\u003EShareGPT\u003C/td\u003E\r\n\u003Ctd\u003E76.0 tok/s\u003C/td\u003E\r\n\u003Ctd\u003E91.2 tok/s\u003C/td\u003E\r\n\u003Ctd\u003E102 tok/s\u003C/td\u003E\r\n\u003Ctd\u003E172 tok/s\u003C/td\u003E\r\n\u003Ctd\u003E113 tok/s\u003C/td\u003E\r\n\u003Ctd\u003E179 tok/s\u003C/td\u003E\r\n\u003C/tr\u003E\u003Ctr\u003E\u003Ctd\u003EHumanEval\u003C/td\u003E\r\n\u003Ctd\u003E77.2 tok/s\u003C/td\u003E\r\n\u003Ctd\u003E100 tok/s\u003C/td\u003E\r\n\u003Ctd\u003E112 tok/s\u003C/td\u003E\r\n\u003Ctd\u003E204 tok/s\u003C/td\u003E\r\n\u003Ctd\u003E148 tok/s\u003C/td\u003E\r\n\u003Ctd\u003E217 tok/s\u003C/td\u003E\r\n\u003C/tr\u003E\u003Ctr\u003E\u003Ctd\u003ESWE-Bench\u003C/td\u003E\r\n\u003Ctd\u003E75.8 tok/s\u003C/td\u003E\r\n\u003Ctd\u003E175 tok/s\u003C/td\u003E\r\n\u003Ctd\u003E-\u003C/td\u003E\r\n\u003Ctd\u003E123 tok/s\u003C/td\u003E\r\n\u003Ctd\u003E286 tok/s\u003C/td\u003E\r\n\u003Ctd\u003E302 tok/s\u003C/td\u003E\r\n\u003C/tr\u003E\u003Ctr\u003E\u003Ctd\u003EMixed\u003C/td\u003E\r\n\u003Ctd\u003E82.9 tok/s\u003C/td\u003E\r\n\u003Ctd\u003E112 tok/s\u003C/td\u003E\r\n\u003Ctd\u003E-\u003C/td\u003E\r\n\u003Ctd\u003E154 tok/s\u003C/td\u003E\r\n\u003Ctd\u003E155 tok/s\u003C/td\u003E\r\n\u003Ctd\u003E209 tok/s\u003C/td\u003E\r\n\u003C/tr\u003E\u003C/tbody\u003E\u003C/table\u003E\r\n\u003Cp\u003E\u003Cb\u003ETable 4.\u003C/b\u003E Evaluation of combining LSTM and Suffix Decoding in Arctic Inference\u003C/p\u003E\r\n\u003Cp\u003EFirst, as expected, the LSTM-based speculator performs better on ShareGPT and HumanEval, and Suffix Decoding performs better on SWE-Bench. However, the \u003Cb\u003Ehybrid LSTM–Suffix speculator matches or exceeds both at all workloads\u003C/b\u003E, and is a full 55 tokens-per-second higher than either the LSTM or Suffix speculators alone on the mixed workload. EAGLE could not be run on SWE-Bench and Mixed because its draft models only supported 2K sequence lengths.\u003C/p\u003E\r\n\u003Cp\u003EThis result shows that one does not need to choose between Suffix Decoding and model-based speculative decoding, and can get the best of both worlds for both open-ended conversational tasks and repetitive agentic tasks simultaneously.\u003C/p\u003E\r\n\u003Cp\u003E&nbsp;\u003C/p\u003E\r\n\u003Chr\u003E\r\n\r\n","richText":true,":type":"snowflake-site/components/blog/blog-text"},"container_1346094598":{"gridClassNames":"aem-Grid aem-Grid--12 aem-Grid--default--12","columnClassNames":{"code_snippet":"aem-GridColumn aem-GridColumn--default--12","blog_text":"aem-GridColumn aem-GridColumn--default--12"},"id":"deploy","layout":"RESPONSIVE_GRID","columnCount":12,":type":"snowflake-site/components/container",":items":{"blog_text":{"id":"blog-text-822f94c36a","text":"\u003Ch2\u003E\u003Ch2\u003EDeploy speculative decoding with Arctic Inference\u003C/h2\u003E\r\n\u003C/h2\u003E\r\n\u003Cp\u003ESuffix Decoding, MLP/LSTM speculation and the system optimizations described in this blog are all implemented as part of the vLLM-compatible Arctic Inference project.&nbsp;\u003C/p\u003E\r\n\u003Cp\u003E\u003Ca href=\"https://github.com/snowflakedb/ArcticInference/tree/main\"\u003EArctic Inference\u003C/a\u003E&nbsp;is an open source library that contains current and future LLM inference optimizations developed at Snowflake AI Research. It is integrated with vLLM v0.8.4 using vLLM’s custom plugin feature, allowing us to develop and integrate inference optimizations quickly into vLLM and make them available to the community.\u003C/p\u003E\r\n\u003Cp\u003EOnce installed, Arctic Inference automatically patches vLLM with the speculative decoding features from this blog, and users can continue to use their familiar vLLM APIs and CLI. It’s easy to get started!\u003C/p\u003E\r\n\u003Cp\u003EInstall vLLM and Arctic Inference:\u003C/p\u003E\r\n","richText":true,":type":"snowflake-site/components/blog/blog-text"},"code_snippet":{"id":"code-snippet-3079019ec0","codeSnippet":"pip install \"git+https://github.com/snowflakedb/ArcticInference.git#egg=arctic-inference[vllm]\"","multiLine":true,":type":"snowflake-site/components/code-snippet"}},":itemsOrder":["blog_text","code_snippet"],"appliedCssClassNames":"snowflake-responsive-container-inner-padding-small"},"blog_text_1425177393":{"id":"blog-text-1439cc8803","text":"\u003Cp\u003EArctic Inference will add several additional configurations to the speculative config option in vLLM. The example below will run the MLP/LSTM draft model with Suffix Decoding:\u003C/p\u003E\r\n","richText":true,":type":"snowflake-site/components/blog/blog-text"},"code_snippet_875199059":{"id":"code-snippet-1811d81fb6","codeSnippet":"vllm serve \\\r\n    meta-llama/Llama-3.1-70B-Instruct \\\r\n    --quantization \"fp8\" \\\r\n    --tensor-parallel-size 2 \\\r\n    --speculative-config '{\r\n        \"method\": \"arctic\",\r\n        \"model\":\"Snowflake/Arctic-LSTM-Speculator-Llama-3.1-70B-Instruct\",\r\n        \"num_speculative_tokens\": 3,\r\n        \"enable_suffix_decoding\": true\r\n    }'","multiLine":true,":type":"snowflake-site/components/code-snippet"},"blog_text_1721426635":{"id":"blog-text-af5f3071da","additionalClasses":"inline","text":"\u003Cp\u003EIn the example above, \u003Ccode\u003E&quot;method&quot;: &quot;arctic&quot;\u003C/code\u003E enables the MLP/LSTM speculator, along with the system optimizations described in this blog post. \u003Ccode\u003E&quot;enable_suffix_decoding&quot;: True\u003C/code\u003E enables Suffix Decoding.\u003C/p\u003E\r\n\u003Ch3\u003ETraining custom draft models with Arctic Training\u003C/h3\u003E\r\n\u003Cp\u003EArctic Training makes it easy to train new draft models for different LLMs and workloads, which can be directly plugged into Arctic Inference for deployment. To get started, install Arctic Training:\u003C/p\u003E\r\n","richText":true,":type":"snowflake-site/components/blog/blog-text"},"code_snippet_2102223824":{"id":"code-snippet-43d68dae34","codeSnippet":"pip install arctic-training","multiLine":true,":type":"snowflake-site/components/code-snippet"},"blog_text_887355338":{"id":"blog-text-663225dd6f","additionalClasses":"inline","text":"\u003Cp\u003EIn Arctic Training, each training recipe is entirely specified in a single YAML file, which makes them easy to share and reproduce. For example, the draft model we used above was trained using \u003Ca href=\"https://github.com/snowflakedb/ArcticTraining/blob/main/projects/arctic_lstm_speculator/llama3.1-70b.yaml\" target=\"_blank\" rel=\"nofollow noopener noreferrer\"\u003Ethis simple YAML file\u003C/a\u003E.\u003C/p\u003E\r\n\u003Cp\u003ETo reproduce training the draft model, save the YAML above into \u003Ccode\u003Econfig.yaml\u003C/code\u003E, change the desired input/output paths, and run:\u003C/p\u003E\r\n","richText":true,":type":"snowflake-site/components/blog/blog-text"},"code_snippet_641522356":{"id":"code-snippet-f65a0a263a","codeSnippet":"arctic_training config.yaml","multiLine":true,":type":"snowflake-site/components/code-snippet"},"markup_editor":{"id":"markup-editor-ac52d5777a","title":"inline","cssContent":".inline:not(pre)\u003Ecode[class*=language-]{color:#272822;background:#f6f9fa}",":type":"snowflake-site/components/markup-editor","isGSAPEnabled":false},"container":{"gridClassNames":"aem-Grid aem-Grid--12 aem-Grid--default--12","columnClassNames":{"code_snippet_4400314":"aem-GridColumn aem-GridColumn--default--12","blog_text_166575829":"aem-GridColumn aem-GridColumn--default--12","blog_text_1935617044":"aem-GridColumn aem-GridColumn--default--12","markup_editor":"aem-GridColumn aem-GridColumn--default--12"},"id":"citation","layout":"RESPONSIVE_GRID","columnCount":12,":type":"snowflake-site/components/container",":items":{"blog_text_1935617044":{"id":"blog-text-37d8f4ec12","text":"\u003Ch3\u003ECitation\u003Csection id=\"citation\"\u003E\r\n \u003C/section\u003E\r\n\u003C/h3\u003E\r\n","richText":true,":type":"snowflake-site/components/blog/blog-text"},"code_snippet_4400314":{"id":"code-snippet-1af937e9ef","codeSnippet":"@misc{arctic-speculator,\r\n  author       = {Wang, Ye and Oliaro, Gabriele and Lee, Jaeseong and He, Yuxiong and Qiao, Aurick and Rajbhandari Samyam},\r\n  title        = {Fastest Speculative Decoding in vLLM with {Arctic Inference} and {Arctic Training}},\r\n  year         = {2025},\r\n  month        = {May},\r\n  day          = {1},\r\n  howpublished = {\\url{https://www.snowflake.com/en/engineering-blog/fast-speculative-decoding-vllm-arctic}}\r\n}","multiLine":true,":type":"snowflake-site/components/code-snippet"},"blog_text_166575829":{"id":"blog-text-18631cc48c","text":"\u003Cp\u003EThat’s it! 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