πŸ“‹ Model Description


language:
  • en
  • zh
library_name: transformers license: mit pipeline_tag: text-generation base_model:
  • zai-org/GLM-5
tags:
  • unsloth
  • glmmoedsa

See how to run GLM-5 locally - Read our Guide!

Unsloth Dynamic 2.0 achieves superior accuracy & outperforms other leading quants.

You can follow instructions in our guide here.


GLM-5





πŸ‘‹ Join our WeChat or Discord community.


πŸ“– Check out the GLM-5 technical blog.


πŸ“ Use GLM-5 API services on Z.ai API Platform.


πŸ‘‰ One click to GLM-5.

Introduction

We are launching GLM-5, targeting complex systems engineering and long-horizon agentic tasks. Scaling is still one of the most important ways to improve the intelligence efficiency of Artificial General Intelligence (AGI). Compared to GLM-4.5, GLM-5 scales from 355B parameters (32B active) to 744B parameters (40B active), and increases pre-training data from 23T to 28.5T tokens. GLM-5 also integrates DeepSeek Sparse Attention (DSA), largely reducing deployment cost while preserving long-context capacity.

Reinforcement learning aims to bridge the gap between competence and excellence in pre-trained models. However, deploying it at scale for LLMs is a challenge due to the RL training inefficiency. To this end, we developed slime, a novel asynchronous RL infrastructure that substantially improves training throughput and efficiency, enabling more fine-grained post-training iterations. With advances in both pre-training and post-training, GLM-5 delivers significant improvement compared to GLM-4.7 across a wide range of academic benchmarks and achieves best-in-class performance among all open-source models in the world on reasoning, coding, and agentic tasks, closing the gap with frontier models.

Benchmark

GLM-5GLM-4.7DeepSeek-V3.2Kimi K2.5Claude Opus 4.5Gemini 3 ProGPT-5.2 (xhigh)
HLE30.524.825.131.528.437.235.4
HLE (w/ Tools)50.442.840.851.843.445.845.5*
AIME 2026 I92.792.992.792.593.390.6-
HMMT Nov. 202596.993.590.291.191.793.097.1
IMOAnswerBench82.582.078.381.878.583.386.3
GPQA-Diamond86.085.782.487.687.091.992.4
SWE-bench Verified77.873.873.176.880.976.280.0
SWE-bench Multilingual73.366.770.273.077.565.072.0
Terminal-Bench 2.0 (Terminus 2)56.2 / 60.7 †41.039.350.859.354.254.0
Terminal-Bench 2.0 (Claude Code)56.2 / 61.1 †32.846.4-57.9--
CyberGym43.223.517.341.350.639.9-
BrowseComp62.052.051.460.637.037.8-
BrowseComp (w/ Context Manage)75.967.567.674.967.859.265.8
BrowseComp-Zh72.766.665.062.362.466.876.1
τ²-Bench89.787.485.380.291.690.785.5
MCP-Atlas (Public Set)67.852.062.263.865.266.668.0
Tool-Decathlon38.023.835.227.843.536.446.3
Vending Bench 2$4,432.12$2,376.82$1,034.00$1,198.46$4,967.06$5,478.16$3,591.33

*: refers to their scores of full set.

>

†: A verified version of Terminal-Bench 2.0 that fixes some ambiguous instructions.

See footnote for more evaluation details.

Footnote

  • Humanity’s Last Exam (HLE) & other reasoning tasks: We evaluate with a maximum generation length of 131,072 tokens (temperature=1.0, topp=0.95, maxnewtokens=131072). By default, we report the text-only subset; results marked with * are from the full set. We use GPT-5.2 (medium) as the judge model. For HLE-with-tools, we use a maximum context length of 202,752 tokens.
  • SWE-bench & SWE-bench Multilingual: We run the SWE-bench suite with OpenHands using a tailored instruction prompt. Settings: temperature=0.7, topp=0.95, maxnewtokens=16384, with a 200K context window.
  • BrowserComp: Without context management, we retain details from the most recent 5 turns. With context management, we use the same discard-all strategy as DeepSeek-v3.2 and Kimi K2.5.
  • Terminal-Bench 2.0 (Terminus 2): We evaluate with the Terminus framework using timeout=2h, temperature=0.7, topp=1.0, maxnewtokens=8192, with a 128K context window. Resource limits are capped at 16 CPUs and 32 GB RAM.
  • Terminal-Bench 2.0 (Claude Code): We evaluate in Claude Code 2.1.14 (think mode, default effort) with temperature=1.0, topp=0.95, maxnewtokens=65536. We remove wall-clock time limits due to generation speed, while preserving per-task CPU and memory constraints. Scores are averaged over 5 runs. We fix environment issues introduced by Claude Code and also report results on a verified Terminal-Bench 2.0 dataset that resolves ambiguous instructions (see: https://huggingface.co/datasets/zai-org/terminal-bench-2-verified).
  • CyberGym: We evaluate in Claude Code 2.1.18 (think mode, no web tools) with (temperature=1.0, topp=1.0, maxnewtokens=32000) and a 250-minute timeout per task. Results are single-run Pass@1 over 1,507 tasks.
  • MCP-Atlas: All models are evaluated in think mode on the 500-task public subset with a 10-minute timeout per task. We use Gemini 3 Pro as the judge model.
  • τ²-bench: We add a small prompt adjustment in Retail and Telecom to avoid failures caused by premature user termination. For Airline, we apply the domain fixes proposed in the Claude Opus 4.5 system card.
  • Vending Bench 2: Runs are conducted independently by Andon Labs.

Serve GLM-5 Locally

Prepare environment

vLLM, SGLang, and xLLM all support local deployment of GLM-5. A simple deployment guide is provided here.

  • vLLM

Using Docker as:

docker pull vllm/vllm-openai:nightly

or using pip:

pip install -U vllm --pre --index-url https://pypi.org/simple --extra-index-url https://wheels.vllm.ai/nightly

then upgrade transformers:

pip install git+https://github.com/huggingface/transformers.git
  • SGLang

Using Docker as:

docker pull lmsysorg/sglang:glm5-hopper # For Hopper GPU
docker pull lmsysorg/sglang:glm5-blackwell # For Blackwell GPU

Deploy

  • vLLM
vllm serve zai-org/GLM-5-FP8 \
         --tensor-parallel-size 8 \
         --gpu-memory-utilization 0.85 \
         --speculative-config.method mtp \
         --speculative-config.numspeculativetokens 1 \
         --tool-call-parser glm47 \
         --reasoning-parser glm45 \
         --enable-auto-tool-choice \
         --served-model-name glm-5-fp8

Check the recipes for more details.

  • SGLang
python3 -m sglang.launch_server \
      --model-path zai-org/GLM-5-FP8 \
      --tp-size 8 \
      --tool-call-parser glm47  \
      --reasoning-parser glm45 \
      --speculative-algorithm EAGLE \
      --speculative-num-steps 3 \
      --speculative-eagle-topk 1 \
      --speculative-num-draft-tokens 4 \
      --mem-fraction-static 0.85 \
      --served-model-name glm-5-fp8

Check the sglang cookbook for more details.

  • xLLM and other Ascend NPU

Please check the deployment guide here.

Citation

Our technical report is coming soon.

πŸ“‚ GGUF File List

πŸ“ Filename πŸ“¦ Size ⚑ Download
GLM-5-UD-TQ1_0.gguf
Recommended LFS
164.05 GB Download