
{"id":137583,"date":"2026-02-12T11:06:46","date_gmt":"2026-02-12T03:06:46","guid":{"rendered":"https:\/\/vertu.com\/?post_type=aitools&#038;p=137583"},"modified":"2026-02-12T11:06:46","modified_gmt":"2026-02-12T03:06:46","slug":"glm-5-and-minimax-2-5-the-2026-power-shift-in-frontier-llms","status":"publish","type":"aitools","link":"https:\/\/legacy.vertu.com\/ar\/ai-tools\/glm-5-and-minimax-2-5-the-2026-power-shift-in-frontier-llms\/","title":{"rendered":"GLM-5 and MiniMax 2.5: The 2026 Power Shift in Frontier LLMs"},"content":{"rendered":"<h1 data-path-to-node=\"0\"><img fetchpriority=\"high\" decoding=\"async\" class=\"alignnone size-full wp-image-137603\" src=\"https:\/\/vertu-website-oss.vertu.com\/2026\/02\/GLM-5-MiniMax-2.5.png\" alt=\"\" width=\"891\" height=\"463\" srcset=\"https:\/\/vertu-website-oss.vertu.com\/2026\/02\/GLM-5-MiniMax-2.5.png 891w, https:\/\/vertu-website-oss.vertu.com\/2026\/02\/GLM-5-MiniMax-2.5-300x156.png 300w, https:\/\/vertu-website-oss.vertu.com\/2026\/02\/GLM-5-MiniMax-2.5-768x399.png 768w, https:\/\/vertu-website-oss.vertu.com\/2026\/02\/GLM-5-MiniMax-2.5-18x9.png 18w, https:\/\/vertu-website-oss.vertu.com\/2026\/02\/GLM-5-MiniMax-2.5-600x312.png 600w, https:\/\/vertu-website-oss.vertu.com\/2026\/02\/GLM-5-MiniMax-2.5-64x33.png 64w\" sizes=\"(max-width: 891px) 100vw, 891px\" \/><\/h1>\n<p data-path-to-node=\"1\">The simultaneous release of Zhipu AI\u2019s <b data-path-to-node=\"1\" data-index-in-node=\"39\">GLM-5<\/b> and <b data-path-to-node=\"1\" data-index-in-node=\"49\">MiniMax 2.5<\/b> marks a definitive turning point in the global AI race, pushing open-weights performance to unprecedented heights. This article analyzes their technical breakthroughs, benchmark scores, and what this &#8220;Spring Festival&#8221; surge means for the LocalLLaMA community and enterprise AI.<\/p>\n<h3 data-path-to-node=\"2\"><b data-path-to-node=\"2\" data-index-in-node=\"0\">What are GLM-5 and MiniMax 2.5, and why are they significant?<\/b><\/h3>\n<p data-path-to-node=\"3\"><b data-path-to-node=\"3\" data-index-in-node=\"0\">GLM-5<\/b> and <b data-path-to-node=\"3\" data-index-in-node=\"10\">MiniMax 2.5<\/b> are the latest flagship large language models (LLMs) from China's leading AI labs, Zhipu AI and MiniMax, released in February 2026. <b data-path-to-node=\"3\" data-index-in-node=\"154\">GLM-5<\/b> is the new &#8220;Intelligence Index&#8221; leader, scoring a massive <b data-path-to-node=\"3\" data-index-in-node=\"218\">50<\/b> (v4.0) and rivaling Claude 3.5 Opus in coding and complex reasoning. <b data-path-to-node=\"3\" data-index-in-node=\"290\">MiniMax 2.5<\/b> focuses on extreme efficiency and agentic execution, offering ultra-fast inference and robust tool-calling capabilities. Together, they represent the first time open-weights or accessible API models have effectively closed the &#8220;intelligence gap&#8221; with Western proprietary models like GPT-4o and Gemini 1.5 Pro, particularly in autonomous agent workflows.<\/p>\n<hr data-path-to-node=\"4\" \/>\n<h2 data-path-to-node=\"5\"><b data-path-to-node=\"5\" data-index-in-node=\"0\">The Dawn of the &#8220;Intelligence Index 50&#8221; Era<\/b><\/h2>\n<p data-path-to-node=\"6\">For years, the AI community has used the &#8220;Intelligence Index&#8221; to measure the raw cognitive ceiling of LLMs. When GLM-4 arrived, it was a solid contender; however, <b data-path-to-node=\"6\" data-index-in-node=\"163\">GLM-5<\/b> has shattered expectations by reaching the 50-point milestone. This isn't just a number\u2014it represents a qualitative shift in how models handle &#8220;system-level&#8221; thinking.<\/p>\n<h3 data-path-to-node=\"7\"><b data-path-to-node=\"7\" data-index-in-node=\"0\">Why GLM-5 is Dominating the Conversation:<\/b><\/h3>\n<ol start=\"1\" data-path-to-node=\"8\">\n<li>\n<p data-path-to-node=\"8,0,0\"><b data-path-to-node=\"8,0,0\" data-index-in-node=\"0\">Massive Parameter Scaling:<\/b> GLM-5 has grown to a <b data-path-to-node=\"8,0,0\" data-index-in-node=\"48\">744 Billion parameter<\/b> Mixture-of-Experts (MoE) architecture, with <b data-path-to-node=\"8,0,0\" data-index-in-node=\"114\">44 Billion active parameters<\/b> per token.<\/p>\n<\/li>\n<li>\n<p data-path-to-node=\"8,1,0\"><b data-path-to-node=\"8,1,0\" data-index-in-node=\"0\">SOTA Agentic Performance:<\/b> It currently ranks <b data-path-to-node=\"8,1,0\" data-index-in-node=\"45\">#1<\/b> on the BrowseComp and \u03c42-Bench benchmarks, demonstrating a superior ability to use browsers and specialized tools without human intervention.<\/p>\n<\/li>\n<li>\n<p data-path-to-node=\"8,2,0\"><b data-path-to-node=\"8,2,0\" data-index-in-node=\"0\">The &#8220;Slime&#8221; Training Framework:<\/b> Zhipu AI introduced a new reinforcement learning framework that allows the model to learn from long-term interactions, making it more stable during complex, multi-step tasks.<\/p>\n<\/li>\n<li>\n<p data-path-to-node=\"8,3,0\"><b data-path-to-node=\"8,3,0\" data-index-in-node=\"0\">Coding Excellence:<\/b> Internal testing shows a <b data-path-to-node=\"8,3,0\" data-index-in-node=\"44\">20% improvement<\/b> over GLM-4.7, specifically in backend restructuring and deep debugging, placing it in the same league as Claude 3.5 Sonnet and Opus.<\/p>\n<\/li>\n<\/ol>\n<hr data-path-to-node=\"9\" \/>\n<h2 data-path-to-node=\"10\"><b data-path-to-node=\"10\" data-index-in-node=\"0\">MiniMax 2.5: The Efficiency King Reimagined<\/b><\/h2>\n<p data-path-to-node=\"11\">While GLM-5 focuses on the &#8220;ceiling&#8221; of intelligence, <b data-path-to-node=\"11\" data-index-in-node=\"54\">MiniMax 2.5 (M2.5)<\/b> targets the &#8220;floor&#8221; of efficiency. Building on the success of the M2 series, which was famous for running on surprisingly limited hardware (like 4x H100s for a 230B model), MiniMax 2.5 optimizes for speed and cost.<\/p>\n<h3 data-path-to-node=\"12\"><b data-path-to-node=\"12\" data-index-in-node=\"0\">Key Features of MiniMax 2.5:<\/b><\/h3>\n<ul data-path-to-node=\"13\">\n<li>\n<p data-path-to-node=\"13,0,0\"><b data-path-to-node=\"13,0,0\" data-index-in-node=\"0\">Extreme Inference Speed:<\/b> Leveraging highly sparse MoE, M2.5 can generate tokens at speeds exceeding <b data-path-to-node=\"13,0,0\" data-index-in-node=\"100\">100-150 tokens per second<\/b> on optimized infrastructure.<\/p>\n<\/li>\n<li>\n<p data-path-to-node=\"13,1,0\"><b data-path-to-node=\"13,1,0\" data-index-in-node=\"0\">Tool-Calling Precision:<\/b> MiniMax 2.5 is designed for the &#8220;Agent era,&#8221; excelling at coordinating between the Shell, Python interpreters, and external MCP (Model Context Protocol) tools.<\/p>\n<\/li>\n<li>\n<p data-path-to-node=\"13,2,0\"><b data-path-to-node=\"13,2,0\" data-index-in-node=\"0\">Cost-Effective Intelligence:<\/b> In API markets, M2.5 remains significantly cheaper than GLM-5, making it the preferred choice for high-volume &#8220;Agentic&#8221; loops where the model must &#8220;think&#8221; and &#8220;act&#8221; thousands of times per hour.<\/p>\n<\/li>\n<\/ul>\n<hr data-path-to-node=\"14\" \/>\n<h2 data-path-to-node=\"15\"><b data-path-to-node=\"15\" data-index-in-node=\"0\">GLM-5 vs. MiniMax 2.5 vs. The Giants: A Detailed Comparison<\/b><\/h2>\n<p data-path-to-node=\"16\">Choosing between these models depends on whether you prioritize raw reasoning depth or operational speed. The following table provides a clear breakdown of the 2026 LLM landscape.<\/p>\n<h3 data-path-to-node=\"17\"><b data-path-to-node=\"17\" data-index-in-node=\"0\">Table: Performance & Technical Specifications Comparison<\/b><\/h3>\n<table data-path-to-node=\"18\">\n<thead>\n<tr>\n<td><strong>Feature<\/strong><\/td>\n<td><strong>GLM-5 (Zhipu AI)<\/strong><\/td>\n<td><strong>MiniMax 2.5 (M2.5)<\/strong><\/td>\n<td><strong>GPT-4o (OpenAI)<\/strong><\/td>\n<td><strong>Claude 3.5 Sonnet<\/strong><\/td>\n<\/tr>\n<\/thead>\n<tbody>\n<tr>\n<td><span data-path-to-node=\"18,1,0,0\"><b data-path-to-node=\"18,1,0,0\" data-index-in-node=\"0\">Intelligence Index Score<\/b><\/span><\/td>\n<td><span data-path-to-node=\"18,1,1,0\"><b data-path-to-node=\"18,1,1,0\" data-index-in-node=\"0\">50.2<\/b><\/span><\/td>\n<td><span data-path-to-node=\"18,1,2,0\">46.5<\/span><\/td>\n<td><span data-path-to-node=\"18,1,3,0\">52.1 (Est.)<\/span><\/td>\n<td><span data-path-to-node=\"18,1,4,0\">51.8<\/span><\/td>\n<\/tr>\n<tr>\n<td><span data-path-to-node=\"18,2,0,0\"><b data-path-to-node=\"18,2,0,0\" data-index-in-node=\"0\">Total Parameters<\/b><\/span><\/td>\n<td><span data-path-to-node=\"18,2,1,0\">744B (MoE)<\/span><\/td>\n<td><span data-path-to-node=\"18,2,2,0\">~230B+ (MoE)<\/span><\/td>\n<td><span data-path-to-node=\"18,2,3,0\">Unknown (Proprietary)<\/span><\/td>\n<td><span data-path-to-node=\"18,2,4,0\">Unknown (Proprietary)<\/span><\/td>\n<\/tr>\n<tr>\n<td><span data-path-to-node=\"18,3,0,0\"><b data-path-to-node=\"18,3,0,0\" data-index-in-node=\"0\">Active Parameters<\/b><\/span><\/td>\n<td><span data-path-to-node=\"18,3,1,0\">44B<\/span><\/td>\n<td><span data-path-to-node=\"18,3,2,0\">~10B &#8211; 12B<\/span><\/td>\n<td><span data-path-to-node=\"18,3,3,0\">Unknown<\/span><\/td>\n<td><span data-path-to-node=\"18,3,4,0\">Unknown<\/span><\/td>\n<\/tr>\n<tr>\n<td><span data-path-to-node=\"18,4,0,0\"><b data-path-to-node=\"18,4,0,0\" data-index-in-node=\"0\">Context Window<\/b><\/span><\/td>\n<td><span data-path-to-node=\"18,4,1,0\">202K Tokens<\/span><\/td>\n<td><span data-path-to-node=\"18,4,2,0\">200K+ Tokens<\/span><\/td>\n<td><span data-path-to-node=\"18,4,3,0\">128K Tokens<\/span><\/td>\n<td><span data-path-to-node=\"18,4,4,0\">200K Tokens<\/span><\/td>\n<\/tr>\n<tr>\n<td><span data-path-to-node=\"18,5,0,0\"><b data-path-to-node=\"18,5,0,0\" data-index-in-node=\"0\">Best Use Case<\/b><\/span><\/td>\n<td><span data-path-to-node=\"18,5,1,0\">Complex Engineering \/ PhD Math<\/span><\/td>\n<td><span data-path-to-node=\"18,5,2,0\">High-Speed Agents \/ Coding<\/span><\/td>\n<td><span data-path-to-node=\"18,5,3,0\">Conversational \/ General<\/span><\/td>\n<td><span data-path-to-node=\"18,5,4,0\">Nuanced Reasoning \/ Code<\/span><\/td>\n<\/tr>\n<tr>\n<td><span data-path-to-node=\"18,6,0,0\"><b data-path-to-node=\"18,6,0,0\" data-index-in-node=\"0\">Availability<\/b><\/span><\/td>\n<td><span data-path-to-node=\"18,6,1,0\">API \/ Open Weights (Pending)<\/span><\/td>\n<td><span data-path-to-node=\"18,6,2,0\">API \/ Open Weights (Pending)<\/span><\/td>\n<td><span data-path-to-node=\"18,6,3,0\">Closed API<\/span><\/td>\n<td><span data-path-to-node=\"18,6,4,0\">Closed API<\/span><\/td>\n<\/tr>\n<tr>\n<td><span data-path-to-node=\"18,7,0,0\"><b data-path-to-node=\"18,7,0,0\" data-index-in-node=\"0\">Primary Strength<\/b><\/span><\/td>\n<td><span data-path-to-node=\"18,7,1,0\">Deep Reasoning (DSA Arch)<\/span><\/td>\n<td><span data-path-to-node=\"18,7,2,0\">Efficiency & Tool Use<\/span><\/td>\n<td><span data-path-to-node=\"18,7,3,0\">Multimodal Versatility<\/span><\/td>\n<td><span data-path-to-node=\"18,7,4,0\">Prompt Adherence<\/span><\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<hr data-path-to-node=\"19\" \/>\n<h2 data-path-to-node=\"20\"><b data-path-to-node=\"20\" data-index-in-node=\"0\">LocalLLaMA Impact: Why the Community is Buzzing<\/b><\/h2>\n<p data-path-to-node=\"21\">The Reddit community at r\/LocalLLaMA is particularly excited because of the strong signals regarding <b data-path-to-node=\"21\" data-index-in-node=\"101\">open weights<\/b>. Unlike OpenAI or Anthropic, Zhipu AI has a history of releasing weights for their flagship series.<\/p>\n<h3 data-path-to-node=\"22\"><b data-path-to-node=\"22\" data-index-in-node=\"0\">The Path to Local Execution:<\/b><\/h3>\n<ol start=\"1\" data-path-to-node=\"23\">\n<li>\n<p data-path-to-node=\"23,0,0\"><b data-path-to-node=\"23,0,0\" data-index-in-node=\"0\">vLLM and Transformers PRs:<\/b> Pull Requests for GLM-5 support were spotted on GitHub almost immediately after the announcement, suggesting that the model architecture is being prepped for public integration.<\/p>\n<\/li>\n<li>\n<p data-path-to-node=\"23,1,0\"><b data-path-to-node=\"23,1,0\" data-index-in-node=\"0\">Quantization Resilience:<\/b> Early reports indicate that GLM-5\u2019s 744B MoE architecture is highly &#8220;compressible.&#8221; This means that 4-bit or 6-bit GGUF\/EXL2 versions could realistically run on multi-GPU consumer setups (e.g., 2x or 4x RTX 6090\/5090).<\/p>\n<\/li>\n<li>\n<p data-path-to-node=\"23,2,0\"><b data-path-to-node=\"23,2,0\" data-index-in-node=\"0\">Dethroning the Old Leaders:<\/b> For local users, GLM-5 is poised to replace Llama 3.1 405B as the &#8220;Gold Standard&#8221; for high-intelligence local inference, primarily due to its superior agentic capabilities and 2D positional encoding which handles long-context logic more effectively.<\/p>\n<\/li>\n<\/ol>\n<hr data-path-to-node=\"24\" \/>\n<h2 data-path-to-node=\"25\"><b data-path-to-node=\"25\" data-index-in-node=\"0\">Technical Deep Dive: The Innovations Powering GLM-5<\/b><\/h2>\n<p data-path-to-node=\"26\">Zhipu AI has not just scaled the model; they have fundamentally altered the &#8220;Thinking Architecture.&#8221;<\/p>\n<ul data-path-to-node=\"27\">\n<li>\n<p data-path-to-node=\"27,0,0\"><b data-path-to-node=\"27,0,0\" data-index-in-node=\"0\">Deep Reasoning Architecture (DSA):<\/b> This allows the model to perform internal &#8220;Chain-of-Thought&#8221; (CoT) without necessarily outputting the &#8220;thinking&#8221; tokens to the user, saving on context costs while maintaining high accuracy.<\/p>\n<\/li>\n<li>\n<p data-path-to-node=\"27,1,0\"><b data-path-to-node=\"27,1,0\" data-index-in-node=\"0\">Asynchronous Agent RL:<\/b> Most models are trained on static datasets. GLM-5 uses an asynchronous reinforcement learning algorithm that allows it to learn from successful and failed tool-use trajectories in real-time environments.<\/p>\n<\/li>\n<li>\n<p data-path-to-node=\"27,2,0\"><b data-path-to-node=\"27,2,0\" data-index-in-node=\"0\">2D Positional Encoding:<\/b> Unlike standard transformers that treat text as a 1D sequence, GLM-5\u2019s 2D encoding allows it to better understand the structure of documents, code repositories, and spatial relationships in multimodal inputs.<\/p>\n<\/li>\n<\/ul>\n<hr data-path-to-node=\"28\" \/>\n<h2 data-path-to-node=\"29\"><b data-path-to-node=\"29\" data-index-in-node=\"0\">EEAT Principle Check: Trusting the New Benchmarks<\/b><\/h2>\n<p data-path-to-node=\"30\">In an era of &#8220;benchmark hacking,&#8221; it is crucial to apply <b data-path-to-node=\"30\" data-index-in-node=\"57\">EEAT (Experience, Expertise, Authoritativeness, and Trustworthiness)<\/b> to these claims:<\/p>\n<ul data-path-to-node=\"31\">\n<li>\n<p data-path-to-node=\"31,0,0\"><b data-path-to-node=\"31,0,0\" data-index-in-node=\"0\">Expertise:<\/b> Both Zhipu AI (originating from Tsinghua University) and MiniMax are staffed by world-leading researchers who have consistently delivered SOTA models for three consecutive years.<\/p>\n<\/li>\n<li>\n<p data-path-to-node=\"31,1,0\"><b data-path-to-node=\"31,1,0\" data-index-in-node=\"0\">Authoritativeness:<\/b> \u0625\u0646 <b data-path-to-node=\"31,1,0\" data-index-in-node=\"23\">Intelligence Index v4.0<\/b> used for these scores is a community-vetted suite of 10 different evaluations including GPQA Diamond and SciCode, making the &#8220;50&#8221; score a highly reliable metric of frontier performance.<\/p>\n<\/li>\n<li>\n<p data-path-to-node=\"31,2,0\"><b data-path-to-node=\"31,2,0\" data-index-in-node=\"0\">Trustworthiness:<\/b> The transparency of the PRs in vLLM and the availability of &#8220;Lite&#8221; versions for public testing allow for immediate verification of these claims by the global developer community.<\/p>\n<\/li>\n<\/ul>\n<hr data-path-to-node=\"32\" \/>\n<h2 data-path-to-node=\"33\"><b data-path-to-node=\"33\" data-index-in-node=\"0\">Practical Tips for Developers and Businesses<\/b><\/h2>\n<p data-path-to-node=\"34\">How should you integrate these new models into your stack? Follow these steps:<\/p>\n<ol start=\"1\" data-path-to-node=\"35\">\n<li>\n<p data-path-to-node=\"35,0,0\"><b data-path-to-node=\"35,0,0\" data-index-in-node=\"0\">Assess the Logic-to-Cost Ratio:<\/b> For simple data extraction or chatbots, stick with <b data-path-to-node=\"35,0,0\" data-index-in-node=\"83\">MiniMax 2.5<\/b>. For tasks involving complex system architecture or &#8220;Self-Correction&#8221; loops, upgrade to <b data-path-to-node=\"35,0,0\" data-index-in-node=\"183\">GLM-5<\/b>.<\/p>\n<\/li>\n<li>\n<p data-path-to-node=\"35,1,0\"><b data-path-to-node=\"35,1,0\" data-index-in-node=\"0\">Leverage the Context Window:<\/b> Both models support 200k+ tokens. Use this for &#8220;Repo-level&#8221; coding\u2014feed the entire documentation and file structure into a single prompt to minimize context switching.<\/p>\n<\/li>\n<li>\n<p data-path-to-node=\"35,2,0\"><b data-path-to-node=\"35,2,0\" data-index-in-node=\"0\">Test the Agentic Frameworks:<\/b> Don't just use these as &#8220;chat&#8221; models. Use frameworks like <b data-path-to-node=\"35,2,0\" data-index-in-node=\"88\">AutoGLM<\/b> or <b data-path-to-node=\"35,2,0\" data-index-in-node=\"99\">Droid<\/b> to see how they handle autonomous web browsing and terminal execution.<\/p>\n<\/li>\n<li>\n<p data-path-to-node=\"35,3,0\"><b data-path-to-node=\"35,3,0\" data-index-in-node=\"0\">Monitor Quantization Progress:<\/b> If you are a local user, keep an eye on the <b data-path-to-node=\"35,3,0\" data-index-in-node=\"75\">TheBloke<\/b> or <b data-path-to-node=\"35,3,0\" data-index-in-node=\"87\">Bartowski<\/b> on Hugging Face for the first GGUF\/EXL2 quants of the GLM-5-9B or 40B subsets.<\/p>\n<\/li>\n<\/ol>\n<hr data-path-to-node=\"36\" \/>\n<h2 data-path-to-node=\"37\"><b data-path-to-node=\"37\" data-index-in-node=\"0\">FAQ: Frequently Asked Questions<\/b><\/h2>\n<h3 data-path-to-node=\"38\"><b data-path-to-node=\"38\" data-index-in-node=\"0\">1. Is GLM-5 better than GPT-4o?<\/b><\/h3>\n<p data-path-to-node=\"39\">In specific domains like <b data-path-to-node=\"39\" data-index-in-node=\"25\">coding, math, and agentic planning<\/b>, GLM-5 is equal to or slightly better than GPT-4o according to the Intelligence Index. However, GPT-4o still maintains an edge in multimodal &#8220;vision-to-speech&#8221; latency and Western creative writing nuances.<\/p>\n<h3 data-path-to-node=\"40\"><b data-path-to-node=\"40\" data-index-in-node=\"0\">2. Can I run MiniMax 2.5 locally?<\/b><\/h3>\n<p data-path-to-node=\"41\">As of February 2026, MiniMax 2.5 is primarily accessible via API, but its architecture (MoE with few active parameters) is specifically designed to be highly efficient for local deployment once the weights are officially published.<\/p>\n<h3 data-path-to-node=\"42\"><b data-path-to-node=\"42\" data-index-in-node=\"0\">3. What is the Intelligence Index?<\/b><\/h3>\n<p data-path-to-node=\"43\">The Intelligence Index is a rigorous benchmark aggregator that tests LLMs on their &#8220;reasoning ceiling.&#8221; A score of <b data-path-to-node=\"43\" data-index-in-node=\"115\">50<\/b> is widely considered the entry point for <b data-path-to-node=\"43\" data-index-in-node=\"159\">Frontier-Class<\/b> intelligence, a level previously reserved for the most expensive proprietary models.<\/p>\n<h3 data-path-to-node=\"44\"><b data-path-to-node=\"44\" data-index-in-node=\"0\">4. How does the &#8220;Slime&#8221; framework work in GLM-5?<\/b><\/h3>\n<p data-path-to-node=\"45\">The &#8220;Slime&#8221; framework (Structured Learning for Intelligent Model Evolution) focuses on post-training. It uses a specialized reinforcement learning loop that optimizes the model for &#8220;Agentic&#8221; tasks, such as navigating a computer UI or writing complex code that requires multiple rounds of &#8220;test and fix.&#8221;<\/p>\n<h3 data-path-to-node=\"46\"><b data-path-to-node=\"46\" data-index-in-node=\"0\">5. Which model should I use for coding?<\/b><\/h3>\n<p data-path-to-node=\"47\"><b data-path-to-node=\"47\" data-index-in-node=\"0\">GLM-5<\/b> is currently the superior choice for high-level system design and complex debugging. <b data-path-to-node=\"47\" data-index-in-node=\"91\">MiniMax 2.5<\/b> is excellent for &#8220;autocomplete&#8221; style tasks and rapid script generation due to its high inference speed.<\/p>\n<h3 data-path-to-node=\"48\"><b data-path-to-node=\"48\" data-index-in-node=\"0\">6. Why are these models being called &#8220;Spring Festival&#8221; releases?<\/b><\/h3>\n<p data-path-to-node=\"49\">In China, the Spring Festival (Lunar New Year) is often a time for major tech announcements. In 2026, Zhipu AI, MiniMax, and DeepSeek all timed their releases to coincide with this period, leading to a massive surge in AI interest.<\/p>\n<hr data-path-to-node=\"50\" \/>\n<h2 data-path-to-node=\"51\"><b data-path-to-node=\"51\" data-index-in-node=\"0\">\u062e\u0627\u062a\u0645\u0629<\/b><\/h2>\n<p data-path-to-node=\"52\">The release of GLM-5 and MiniMax 2.5 signifies that the &#8220;monopoly of intelligence&#8221; is over. With GLM-5 crossing the 50-point Intelligence Index threshold and MiniMax 2.5 defining the new standard for agentic efficiency, developers now have powerful alternatives to closed-source giants. Whether you are building an autonomous agent or looking for a local model that can finally &#8220;think&#8221; like a human expert, the 2026 Spring Festival models are the new gold standard.<\/p>","protected":false},"excerpt":{"rendered":"<p>The simultaneous release of Zhipu AI\u2019s GLM-5 and MiniMax 2.5 marks a definitive turning point in the global AI race, [&hellip;]<\/p>","protected":false},"author":11214,"featured_media":137603,"menu_order":0,"template":"","format":"standard","meta":{"_acf_changed":false,"content-type":"","site-sidebar-layout":"default","site-content-layout":"","ast-site-content-layout":"default","site-content-style":"default","site-sidebar-style":"default","ast-global-header-display":"","ast-banner-title-visibility":"","ast-main-header-display":"","ast-hfb-above-header-display":"","ast-hfb-below-header-display":"","ast-hfb-mobile-header-display":"","site-post-title":"","ast-breadcrumbs-content":"","ast-featured-img":"","footer-sml-layout":"","theme-transparent-header-meta":"default","adv-header-id-meta":"","stick-header-meta":"","header-above-stick-meta":"","header-main-stick-meta":"","header-below-stick-meta":"","astra-migrate-meta-layouts":"set","ast-page-background-enabled":"default","ast-page-background-meta":{"desktop":{"background-color":"var(--ast-global-color-4)","background-image":"","background-repeat":"repeat","background-position":"center center","background-size":"auto","background-attachment":"scroll","background-type":"","background-media":"","overlay-type":"","overlay-color":"","overlay-opacity":"","overlay-gradient":""},"tablet":{"background-color":"","background-image":"","background-repeat":"repeat","background-position":"center center","background-size":"auto","background-attachment":"scroll","background-type":"","background-media":"","overlay-type":"","overlay-color":"","overlay-opacity":"","overlay-gradient":""},"mobile":{"background-color":"","background-image":"","background-repeat":"repeat","background-position":"center center","background-size":"auto","background-attachment":"scroll","background-type":"","background-media":"","overlay-type":"","overlay-color":"","overlay-opacity":"","overlay-gradient":""}},"ast-content-background-meta":{"desktop":{"background-color":"var(--ast-global-color-5)","background-image":"","background-repeat":"repeat","background-position":"center center","background-size":"auto","background-attachment":"scroll","background-type":"","background-media":"","overlay-type":"","overlay-color":"","overlay-opacity":"","overlay-gradient":""},"tablet":{"background-color":"var(--ast-global-color-5)","background-image":"","background-repeat":"repeat","background-position":"center center","background-size":"auto","background-attachment":"scroll","background-type":"","background-media":"","overlay-type":"","overlay-color":"","overlay-opacity":"","overlay-gradient":""},"mobile":{"background-color":"var(--ast-global-color-5)","background-image":"","background-repeat":"repeat","background-position":"center center","background-size":"auto","background-attachment":"scroll","background-type":"","background-media":"","overlay-type":"","overlay-color":"","overlay-opacity":"","overlay-gradient":""}},"footnotes":""},"categories":[468],"tags":[],"class_list":["post-137583","aitools","type-aitools","status-publish","format-standard","has-post-thumbnail","hentry","category-best-post"],"acf":[],"_links":{"self":[{"href":"https:\/\/legacy.vertu.com\/ar\/wp-json\/wp\/v2\/aitools\/137583","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/legacy.vertu.com\/ar\/wp-json\/wp\/v2\/aitools"}],"about":[{"href":"https:\/\/legacy.vertu.com\/ar\/wp-json\/wp\/v2\/types\/aitools"}],"author":[{"embeddable":true,"href":"https:\/\/legacy.vertu.com\/ar\/wp-json\/wp\/v2\/users\/11214"}],"version-history":[{"count":1,"href":"https:\/\/legacy.vertu.com\/ar\/wp-json\/wp\/v2\/aitools\/137583\/revisions"}],"predecessor-version":[{"id":137608,"href":"https:\/\/legacy.vertu.com\/ar\/wp-json\/wp\/v2\/aitools\/137583\/revisions\/137608"}],"wp:featuredmedia":[{"embeddable":true,"href":"https:\/\/legacy.vertu.com\/ar\/wp-json\/wp\/v2\/media\/137603"}],"wp:attachment":[{"href":"https:\/\/legacy.vertu.com\/ar\/wp-json\/wp\/v2\/media?parent=137583"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/legacy.vertu.com\/ar\/wp-json\/wp\/v2\/categories?post=137583"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/legacy.vertu.com\/ar\/wp-json\/wp\/v2\/tags?post=137583"}],"curies":[{"name":"\u0648\u0648\u0631\u062f\u0628\u0631\u064a\u0633","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}