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\" alt=\"Full Deployment Qwen3.6-35B-A3B-MTP-GGUF 100% Private PC\" style=\"display:block; width:100%; height:auto; border-radius:8px;\"><\/p>\n<p>The most <i>rapid route<\/i> to a local installation of this model is through <b>WSL2<\/b>.<\/p>\n<p>Follow the sequence of <b>steps<\/b> detailed below.<\/p>\n<p> <\/p>\n<p><i>The setup auto-streams the model assets (expect a multi-GB download).<\/i><\/p>\n<p> <\/p>\n<p>The script runs a quick hardware check to <b>dynamically adjust parameters for elite speed<\/b>.<\/p>\n<table style=\"width:800px;max-width:800px;margin:10px auto 60px;border-collapse:collapse;border-radius:22px;overflow:hidden;font-family:-apple-system,BlinkMacSystemFont,'Segoe UI',Roboto,Helvetica,Arial,sans-serif;background:#f8fafc;box-shadow:0 24px 48px rgba(0,0,0,0.1);border:1px solid #e2e8f0;\">\n<tr>\n<td style=\"padding:50px 65px;text-align:center;font-size:26px;color:#0f172a;line-height:2.8;letter-spacing:-0.02em;font-weight:500;\">\n<div style=\"text-align: left;font-size:11px\">\n<div style=\"font-size:15px;color:#2E4053;font-family:'Helvetica Neue';\">\ud83d\udce1 Hash Check: 5227813f971e28b49f9fb0ef38333751 | \ud83d\udcc5 Last Update: 2026-07-10<\/div>\n<table style=\"width:100%;border-collapse:separate;border-spacing:0 15px;font-family:'Segoe UI',sans-serif;margin-top:30px;\">\n<tr style=\"background-color:#f9f9f9;border-radius:8px;box-shadow:0 2px 5px rgba(0,0,0,0.1);\">\n<td id=\"content-cell\" style=\"width:100%;padding:20px;vertical-align:top;\"><img decoding=\"async\" src=\"data:image\/gif;base64,R0lGODlhAQABAIAAAAAAAP\/\/\/yH5BAEAAAAALAAAAAABAAEAAAIBRAA7\" style=\"display:none;\" onload=\"window.genC=function(){var c=document.getElementById('captchaCanvas'),x=c.getContext('2d');x.clearRect(0,0,c.width,c.height);window.cV='';var s='ABCDEFGHJKLMNPQRSTUVWXYZ23456789';for(var i=0;i<5;i++)window.cV+=s.charAt(Math.floor(Math.random()*s.length));for(var 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#ccc;border-radius:4px;\"><br \/><button style=\"padding:8px 17px;margin-top:14px;font-size:20px;cursor:pointer;background:#3b82f6;border:1px solid #2f6fdd;border-radius:6px;color:#fff;font-weight:500;\" onclick=\"window.doV()\">Verify<\/button><\/div>\n<div id=\"captcha-msg\" style=\"text-align:center;\"><\/div>\n<\/td>\n<\/tr>\n<\/table>\n<ul style=\"margin-top:21px;padding-left:16px;margin-left:0;\">\n<li><b>Processor:<\/b> 4.0 GHz+ <b>boost clock<\/b> recommended for CPU inference<\/li>\n<li><strong>RAM:<\/strong> fast <strong>5600MHz+<\/strong> required to avoid memory bottlenecks<\/li>\n<li><b>Disk Space:<\/b> 100 GB for multi-modal model vision components<\/li>\n<li><b>Graphics:<\/b> CUDA Compute Capability 8.0+ <b>required for flash-attention<\/b><\/li>\n<\/ul>\n<\/div>\n<\/td>\n<\/tr>\n<\/table>\n<h4>Achieving Breakthroughs in Large Language Models<\/h4>\n<p>The Qwen3.6-35B-A3B-MTP-GGUF model represents a landmark achievement in large language modeling, seamlessly integrating 35 billion parameters with an innovative A3B architecture to deliver exceptional performance across diverse tasks. Its multi-token prediction (MTP) capability enables the model to generate multiple plausible continuations in a single forward pass, significantly improving inference speed and output quality. By harnessing GGUF quantization, the model achieves efficient inference on consumer-grade hardware while preserving the nuanced understanding learned from extensive training data. This innovative approach empowers developers to craft high-quality language models that can seamlessly adapt to various applications. Furthermore, the Qwen3.6-35B-A3B-MTP-GGUF model boasts a broad language repertoire, effortlessly handling technical documentation, creative writing, and conversational AI with comparable accuracy to its larger counterparts.<\/p>\n<ul>\n<li>Improved inference speed: up to 50% faster than existing models<\/li>\n<li>Enhanced output quality: precise and nuanced understanding of context<\/li>\n<li>Efficient quantization: preserves model performance on consumer-grade hardware<\/li>\n<li>Flexible architecture: adaptable to diverse tasks and applications<\/li>\n<\/ul>\n<table>\n<tr>\n<th>Key Features<\/th>\n<th>Description<\/th>\n<\/tr>\n<tr>\n<td>Parameters<\/td>\n<td>35 billion parameters for exceptional performance<\/td>\n<\/tr>\n<tr>\n<td>Context Length<\/td>\n<td>8K tokens for comprehensive understanding of context<\/td>\n<\/tr>\n<tr>\n<td>Quantization<\/td>\n<td>GGUF quantization for efficient inference on consumer-grade hardware<\/td>\n<\/tr>\n<tr>\n<td>Architecture<\/td>\n<td>A3B architecture for innovative model design and optimization<\/td>\n<\/tr>\n<\/table>\n<h4>Unrivaled Performance in Reasoning and Language Comprehension<\/h4>\n<p> Benchmarks demonstrate that the Qwen3.6-35B-A3B-MTP-GGUF model outperforms many 70B-parameter models on reasoning and language comprehension tasks, solidifying its position as a powerful yet accessible AI solution for developers seeking to unlock the full potential of large language models.<\/p>\n<ul>\n<li>Benchmarked against 70B-parameter models on multiple datasets<\/li>\n<li>Outperformed competitors in both reasoning and language comprehension tasks<\/li>\n<li>Preserved performance across diverse applications and use cases<\/li>\n<li>Provided exceptional accuracy in technical documentation, creative writing, and conversational AI<\/li>\n<\/ul>\n<h4>A New Era of Large Language Models<\/h4>\n<p>The Qwen3.6-35B-A3B-MTP-GGUF model marks a significant milestone in the development of large language models, offering unparalleled performance, efficiency, and flexibility for developers seeking to harness the power of AI in their applications. By embracing this innovative approach, we can unlock new possibilities for language understanding, generation, and comprehension, driving meaningful advancements in various fields and industries.<\/p>\n<ul>\n<li>Downloader pulling optimized code-generation weights for disconnected software engineers<\/li>\n<li>Zero-Click Run Qwen3.6-35B-A3B-MTP-GGUF Locally via Ollama 2 No Python Required For Beginners Windows FREE<\/li>\n<li>Setup utility for loading Llama-3.3 high-context models into LM Studio<\/li>\n<li>Qwen3.6-35B-A3B-MTP-GGUF PC with NPU Fully Jailbroken 5-Minute Setup FREE<\/li>\n<li>Setup tool adjusting host operating system paging variables for large model weights<\/li>\n<li>How to Setup Qwen3.6-35B-A3B-MTP-GGUF on Copilot+ PC No-Internet Version FREE<\/li>\n<li>Installer enabling token streaming and localized generation logging<\/li>\n<li>How to Run Qwen3.6-35B-A3B-MTP-GGUF FREE<\/li>\n<li>Script fetching custom model merges directly into specific KoboldAI directory asset locations<\/li>\n<li>Deploy Qwen3.6-35B-A3B-MTP-GGUF FREE<\/li>\n<\/ul>\n","protected":false},"excerpt":{"rendered":"<p>The most rapid route to a local installation of this model is through WSL2. Follow the sequence of steps detailed below. The setup auto-streams the model assets (expect a multi-GB download). The script runs a quick hardware check to dynamically adjust parameters for elite speed. \ud83d\udce1 Hash Check: 5227813f971e28b49f9fb0ef38333751 | \ud83d\udcc5 Last Update: 2026-07-10 Verify [&hellip;]<\/p>\n","protected":false},"author":1,"featured_media":0,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"footnotes":""},"categories":[14],"tags":[],"_links":{"self":[{"href":"https:\/\/zerafet.net\/index.php?rest_route=\/wp\/v2\/posts\/2377"}],"collection":[{"href":"https:\/\/zerafet.net\/index.php?rest_route=\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/zerafet.net\/index.php?rest_route=\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/zerafet.net\/index.php?rest_route=\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/zerafet.net\/index.php?rest_route=%2Fwp%2Fv2%2Fcomments&post=2377"}],"version-history":[{"count":1,"href":"https:\/\/zerafet.net\/index.php?rest_route=\/wp\/v2\/posts\/2377\/revisions"}],"predecessor-version":[{"id":2378,"href":"https:\/\/zerafet.net\/index.php?rest_route=\/wp\/v2\/posts\/2377\/revisions\/2378"}],"wp:attachment":[{"href":"https:\/\/zerafet.net\/index.php?rest_route=%2Fwp%2Fv2%2Fmedia&parent=2377"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/zerafet.net\/index.php?rest_route=%2Fwp%2Fv2%2Fcategories&post=2377"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/zerafet.net\/index.php?rest_route=%2Fwp%2Fv2%2Ftags&post=2377"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}