Current Location: Home > Network Security > Z.ai’s open-weights GLM-5.2 beats GPT-5.5 on multiple long-horizon coding benchmarks for 1/6th the cost
Date: 2026-06-18 15:38:39 Source: Web Source Editor: Network Security
来源:VentureBeat · 作者:[email protected] (Carl Franzen) · Tue, 16 Ju· 分类:TechnologyToday, Ch
来源:VentureBeat · 作者:[email protected] (Carl Franzen) · · 分类:TechnologyToday, Chinese AI startup Z.ai (formerly Zhipu AI) announced the immediate release of GLM-5.2, a 753-billion parameter open-weights large language model (LLM) engineered specifically to dominate "long-horizon" autonomous coding and engineering tasks.
Available immediately on Hugging Face, the Z.ai API, and more than 20 third-party coding environments, the model boasts a highly stable 1-million-token context window alongside enterprise subscription tiers starting at just $12.60 per month.
In excellent news for cost and security-conscious businesses, z.ai has released GLM-5.2's core weights under an unrestricted MIT open-source license, allowing enterprises to download the model freely from Hugging Face, customize or fine-tune it to their liking, and run it potentially locally or via virtual machines for only the cost of their compute and electricity.
This is an increasingly appealing option for enterprises, as state-of-the-art American proprietary models face an uncertain and potentially interrupted regulatory future, following the Trump Administration's export control directive last week prohibiting foreign nationals from using Anthropic's new Claude Fable 5 model (which that company responded to by taking the models in question entirely offline for allusers).
For enterprise technical decision-makers, z.ai's GLM-5.2 provides a highly capable path to host frontier-level AI locally, entirely bypassing the geographic fencing and commercial limitations.
Under the hood, GLM-5.2 operates with 753 billion parameters and introduces a major architectural optimization called "IndexShare".
In standard massive language models, recalculating attention mechanisms across long documents is computationally exorbitant. IndexShare solves this by reusing the identical indexer across every four sparse attention layers.
At the maximum 1-million-token context length, this single innovation reduces per-token compute FLOPs by a massive 2.9 times.
The model also features an upgraded Multi-Token Prediction (MTP) layer for speculative decoding, which boosts accepted token length by up to 20% during inference.
Additionally, Z.ai has implemented flexible, selectable "Thinking Modes". Users can toggle the model's reasoning effort between "Max," designed to push the limits of logical problem-solving, or "High," which strikes a careful balance between high-end performance and latency-sensitive token efficiency.
On industry-standard third-party benchmark tests, GLM-5.2 performs above most open source flagship models, even DeepSeek v4 and scores near or above its closed-weights rivals, OpenAI's GPT-5.5 and Anthropic's Claude Opus 4.8.
The model particularly shines in agentic tool use and long-horizon software engineering tasks:
SWE-bench Pro: GLM-5.2 scored 62.1, decisively beating GPT-5.5 (58.6) and its own predecessor, GLM-5.1 (58.4).
FrontierSWE (Dominance): Designed to test long-horizon task completion, GLM-5.2 hit 74.4%, surpassing GPT-5.5 (72.6%) and finishing in a near-tie with Claude Opus 4.8 (75.1%).
MCP-Atlas: On this tool-usage evaluation, GLM-5.2 achieved a 77.0, outscoring GPT-5.5 (75.3) and performing just shy of Claude Opus 4.8 (77.8).
Humanity's Last Exam (w/ Tools): When equipped with external tools, GLM-5.2 reached a score of 54.7, coming out ahead of GPT-5.5 (52.2) and tracking closely behind Claude Opus 4.8 (57.9).
PostTrainBench & SWE-Marathon: In extended, multi-hour engineering workloads, GLM-5.2 consistently topped GPT-5.5, scoring 34.3% against GPT-5.5's 25.0% on PostTrainBench, and 13.0% against GPT-5.5's 12.0% on SWE-Marathon.
While GLM-5.2 trails Claude Opus 4.8 and GPT-5.5 slightly on raw Terminal-Bench 2.1 scores (81.0 versus 85.0 and 84.0, respectively), it significantly outscores Google's Gemini 3.1 Pro (74.0).
Beyond traditional coding metrics, GLM-5.2 took an impressive first place on the crowdsourced design task benchmark Design Arena, beating out even the aforementioned state-of-the-art Claude Fable 5 with an ELO score of 1360.
Furthermore, the impact of Z.ai's new selectable "thinking modes" is clearly visible in the data: under the "Max" effort level, GLM-5.2 pushes to peak intelligence, but utilizes nearly 85k output tokens per task. Switching to the "High" effort setting sacrifices only a few points in performance while effectively halving the required token output, providing a crucial optimization lever for latency-sensitive applications.
To operationalize the model, Z.ai launched the GLM Coding Plan, aiming squarely at developer workflows rather than simple chat interfaces.
The plan offers out-of-the-box support for third-party U.S. and global agentic coding harnesses and tools including Claude Code, OpenClaw, Cline, Kilo Code, Crush, and Factory, among others. The Coding Plan pricing tiers (when billed annually) are highly competitive:
Lite: $12.60 per month ($151.20 per year starting in the 2nd year), geared toward lightweight iteration on small repositories.
Pro: $50.40 per month for day-to-day development on mid-sized repositories, offering 5x the usage allowance of the Lite plan.
Max: $112.00 per month for heavy workloads, offering 20x the Lite usage and dedicated resources during peak hours.
For enterprise developers integrating the raw model into their own applications, Z.ai's API pricing undercuts its Western rivals significantly while matching the exact rates of the previous GLM-5.1 generation.
GLM-5.2 API access is priced at $1.40 per million input tokens and $4.40 per million output tokens, making it a mid-priced model globally, but about
Sorted by total cost (input + output) from least to most expensive. Pricing shown is standard pay-as-you-go pricing per 1 million tokens.
Model | Input | Output | Total Cost | Source |
MiMo-V2.5 Flash | $0.10 | $0.30 | $0.40 | Xiaomi MiMo |
deepseek-v4-flash | $0.14 | $0.28 | $0.42 | DeepSeek |
deepseek-v4-pro | $0.435 | $0.87 | $1.305 | DeepSeek |
MiniMax-M3 | $0.30 | $1.20 | $1.50 | MiniMax |
Gemini 3.1 Flash-Lite | $0.25 | $1.50 | $1.75 | |
Qwen3.7-Plus | $0.40 | $1.60 | $2.00 | Alibaba Cloud |
MiMo-V2.5 | $0.40 | $2.00 | $2.40 | Xiaomi MiMo |
Grok 4.3 (low context) | $1.25 | $2.50 | $3.75 | xAI |
MiMo-V2.5 Pro (≤256K) | $1.00 | $3.00 | $4.00 | Xiaomi MiMo |
Kimi-K2.6 | $0.95 | $4.00 | $4.95 | Moonshot/Kimi |
GLM-5.2 | $1.40 | $4.40 | $5.80 | Z.ai |
Grok 4.3 (high context) | $2.50 | $5.00 | $7.50 | xAI |
MiMo-V2.5 Pro (>256K) | $2.00 | $6.00 | $8.00 | Xiaomi MiMo |
Qwen3.7-Max | $2.50 | $7.50 | $10.00 | Alibaba Cloud |
Gemini 3.5 Flash | $1.50 | $9.00 | $10.50 | |
Gemini 3.1 Pro Preview (≤200K) | $2.00 | $12.00 | $14.00 | |
GPT-5.4 | $2.50 | $15.00 | $17.50 | OpenAI |
Gemini 3.1 Pro Preview (>200K) | $4.00 | $18.00 | $22.00 | |
Claude Opus 4.8 | $5.00 | $25.00 | $30.00 | Anthropic |
GPT-5.5 | $5.00 | $30.00 | $35.00 | OpenAI |
Claude Fable 5 / Claude Mythos 5 | $10.00 | $50.00 | $60.00 | Anthropic |
To further optimize costs for long-context workloads, Z.ai offers a cached input rate of just $0.26 per million tokens, alongside a limited-time offer for free cached input storage.
The stark contrast between open-weights innovators and proprietary Western labs has not gone unnoticed by the developer community.
On X, prolific AI observer Lisan al Gaib (@scaling01) argued that "frontier labs are absolutely scamming you on API pricing".
The post noted that while massive open models like the 744-billion-parameter GLM-5.2 charge $4.40 per million output tokens and DeepSeek-V4-Pro (1.6 trillion parameters) charges just $0.87, proprietary models demand heavy premiums: Anthropic's Sonnet 4.6 and Opus 4.8 charge $15.00 and $25.00 respectively, while OpenAI's GPT-5.5 costs $30.00 for output.
Highlighting that open-model developers are operating profitably without relying on the newest "fancy Blackwell chips," the commentator suggested that leading proprietary labs are "probably at 90%+ margins at this point".
The most disruptive aspect of the GLM-5.2 release is its licensing. Z.ai released the model's weights under an MIT open-source license, establishing it as a "Pure Open" system.
The company’s technical documentation explicitly notes that this license guarantees "no regional limits" and allows "technical access without borders".
For enterprise technology leaders, an MIT license means the software can be used, modified, and commercialized without paying royalties or adhering to restrictive "acceptable use" governance policies common to dual-use licenses.
It allows engineering teams to host frontier-level AI on their own sovereign infrastructure, entirely eliminating vendor lock-in.
The developer reaction to the release has been immediate and overwhelmingly positive.
The team behind Kilo Code confirmed day-one integration, posting on X: "GLM-5.2 runs in Kilo Code on day one. The 1M context window and Max effort mode are both live. Point your config at it and go!".
Open-source coding environment Cline IDE echoed this sentiment on X, noting the economic advantage: "GLM-5.2 is the first open-weights model to cross 80% on Terminal-Bench, and beats every other open model available. It also beats Gemini, making it a frontier-level model for a fraction of the cost. Open weights is back. This model is a game changer. Available in Cline now!".
Similarly, rival open source coding desktop agent Eigent AI also tested the model's new capabilities on complex agentic workflows, noting on X: "threw a real long-horizon task: research 30 companies across 6 sectors of the AI infrastructure stack, structure it into JSON, then build an interactive HTML report... where 5.2 pulls ahead: -> plans...".
原文链接:https://venturebeat.com/technology/z-ais-open-weights-glm-5-2-beats-gpt-5-5-on-multiple-long-horizon-coding-benchmarks-for-1-6th-the-costLuigi Mangione will assert psychiatric defense in murder case in UnitedHealthcare CEO’s killing2026-06-18 15:01
Can Bankova Muster Political Will to Make Institutional Reforms During War?2026-06-18 14:35
Analysis: Energy-efficient air conditioning could save Indian homes 69bn rupees a year2026-06-18 14:16
In a Volatile Market, Art Basel Galleries Bet on Our Attention2026-06-18 14:11
The Download: a reality check for geoengineering and the science of interoception2026-06-18 14:10
Honduras: Cedeño won’t disappear, it will relocate and persevere2026-06-18 13:58
Marvel's Spider-Man 2 Is Adding New Suit from Brand New Day for Free2026-06-18 13:54
EU plans to strengthen passenger rights, compensation rules: What travelers need to know2026-06-18 13:53
U.S. and Iran sign deal ahead of schedule2026-06-18 13:52
Inside the government’s push to divert Puerto Rico solar funds to a bankrupt utility2026-06-18 13:24
NIH diversity programs doubled undergraduates’ odds of getting a Ph.D., 20-year study finds2026-06-18 15:36
Unreal Engine 6 has a novel idea: you using your Fortnite skins in other Unreal games and vice versa2026-06-18 15:33
The ‘super El Niño’ is here. What happens next could upend food systems worldwide.2026-06-18 15:13
Stingless bees in Peru become the first insects with legal rights. Will it happen globally?2026-06-18 14:43
New electricity rates put off until review2026-06-18 14:17
Bravo Teases ‘The Real Housewives Ultimate Girls Trip: Roaring 20th’ With First Look Video2026-06-18 14:16
Air India Goes Budget With ‘Basic’ Fare Option2026-06-18 13:52
Lebanon: Israel radically expands use of unlawful mass ‘evacuation’ orders and commits war crime of unlawful transfer2026-06-18 13:42
The Korean Telecom Giant at the Center of Anthropic’s Mythos Controversy2026-06-18 13:11
How Japan Could Co-Produce the Navy’s Future Fleet2026-06-18 12:58