ELBAZ GLM-4.7 PRISM
(UNCENSORED)
GLM-4.7: Your New Coding Partner - Now Unrestricted
GLM-4.7 | ZhipuAI | Technical Blog
Introduction
GLM-4.7 is a state-of-the-art foundation model excelling in agentic coding, complex reasoning, and tool use. This is the abliterated version with refusal mechanisms removed.
Model Description
This model is an abliterated version of zai-org/GLM-4.7 that has had its refusal mechanisms removed using PRISM (Projected Refusal Isolation via Subspace Modification). The model will respond to prompts that the original model would refuse.
Key Specs:
- 358B parameter MoE (Mixture of Experts) architecture
- State-of-the-art coding capabilities (73.8% on SWE-bench Verified)
- 131K context length
- Interleaved Thinking & Preserved Thinking support
- Multi-turn agentic task optimization
- Bilingual support (English & Chinese)
Original Model Highlights
- Core Coding: 73.8% on SWE-bench (+5.8% vs GLM-4.6), 66.7% on SWE-bench Multilingual, 41% on Terminal Bench 2.0
- Complex Reasoning: 42.8% on HLE (Humanity's Last Exam) with tools
- Tool Using: 87.4% on τ²-Bench, 67.5% on BrowseComp with Context Manage
- Math: 95.7% on AIME 2025, 97.1% on HMMT Feb. 2025
Motivation
This project exists as research and development experimentation into understanding how large language models encode and enforce refusal behaviors, contributing to broader AI safety research by providing empirical data on refusal mechanism localization and tradeoffs between safety and capability.
Author
Eric Elbaz (Ex0bit)
Model Tree
zai-org/GLM-4.7 (Base Model - BF16)
└── Ex0bit/Elbaz-GLM-4.7-PRISM (This Model)
└── Elbaz-GLM-4.7-PRISM-IQ4_XS.gguf
Available Quantizations
| Quantization | Size | Description |
|---|---|---|
| IQ4_XS | TBD | Importance-weighted 4-bit, excellent quality |
| BF16 | ~717 GB | Full precision weights |
Prompt Format
This model uses the GLM chat format with thinking/reasoning support:
[gMASK]<sop><|system|>
{system_prompt}<|user|>
{user_prompt}<|assistant|>
Template Structure
| Component | Token/Format |
|---|---|
| BOS Sequence | [gMASK]<sop> |
| System Start | `< |
| User Start | `< |
| Assistant Start | `< |
| Observation (Tool) | `< |
| Thinking Start | <think> |
| Thinking End | </think> |
| End of Text | `< |
Special Tokens
| Token | ID | Purpose |
|---|---|---|
[gMASK] |
151331 | Generalized mask token |
<sop> |
151333 | Start of prompt |
| `< | system | >` |
| `< | user | >` |
| `< | assistant | >` |
| `< | observation | >` |
<think> |
151350 | Reasoning block start |
</think> |
151351 | Reasoning block end |
| `< | endoftext | >` |
Technical Details
Performance Impact
| Metric | Result |
|---|---|
| Refusal Bypass Rate | 100% |
| English Output Rate | 100% |
| KL Divergence | 0.0000 (no capability degradation) |
| Response Coherence | Detailed, technically accurate |
Testing shows that PRISM abliteration maintains full model coherence with no measurable capability degradation.
Quick Start
Using with Transformers
Requires transformers >= 4.57.3:
import torch
from transformers import AutoModelForCausalLM, AutoTokenizer
MODEL_PATH = "Ex0bit/Elbaz-GLM-4.7-PRISM"
messages = [{"role": "user", "content": "hello"}]
tokenizer = AutoTokenizer.from_pretrained(MODEL_PATH)
inputs = tokenizer.apply_chat_template(
messages,
tokenize=True,
add_generation_prompt=True,
return_dict=True,
return_tensors="pt",
)
model = AutoModelForCausalLM.from_pretrained(
pretrained_model_name_or_path=MODEL_PATH,
torch_dtype=torch.bfloat16,
device_map="auto",
)
inputs = inputs.to(model.device)
generated_ids = model.generate(**inputs, max_new_tokens=128, do_sample=False)
output_text = tokenizer.decode(generated_ids[0][inputs.input_ids.shape[1] :])
print(output_text)
Using with vLLM
vllm serve Ex0bit/Elbaz-GLM-4.7-PRISM \
--tensor-parallel-size 8 \
--tool-call-parser glm47 \
--reasoning-parser glm45 \
--enable-auto-tool-choice \
--served-model-name elbaz-glm-4.7-prism
Using with SGLang
python3 -m sglang.launch_server \
--model-path Ex0bit/Elbaz-GLM-4.7-PRISM \
--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 0.8 \
--served-model-name elbaz-glm-4.7-prism \
--host 0.0.0.0 \
--port 8000
Using with llama.cpp
Important: You must use
--jinjaflag for correct chat template handling!
./llama.cpp/llama-cli \
--model Elbaz-GLM-4.7-PRISM.gguf \
--jinja \
--n-gpu-layers 99 \
--ctx-size 16384 \
--flash-attn on \
--temp 1.0 \
--top-p 0.95 \
-ot ".ffn_.*_exps.=CPU"
Using llama-server (OpenAI-compatible API)
./llama.cpp/llama-server \
--model Elbaz-GLM-4.7-PRISM.gguf \
--alias "elbaz-glm-4.7-prism" \
--threads -1 \
--n-gpu-layers 999 \
-ot ".ffn_.*_exps.=CPU" \
--temp 1.0 \
--top-p 0.95 \
--ctx-size 16384 \
--port 8001 \
--jinja
Then use with OpenAI's Python library:
from openai import OpenAI
openai_client = OpenAI(
base_url = "http://127.0.0.1:8001/v1",
api_key = "sk-no-key-required",
)
completion = openai_client.chat.completions.create(
model = "elbaz-glm-4.7-prism",
messages = [{"role": "user", "content": "What is 2+2?"}],
)
print(completion.choices[0].message.content)
Using with Ollama
ollama serve &
ollama run hf.co/Ex0bit/Elbaz-GLM-4.7-PRISM
Note: The
hf.co/prefix is required to pull from Hugging Face. Requires Ollama 0.3.0+.
Thinking Mode Configuration
GLM-4.7 supports Interleaved Thinking, Preserved Thinking, and Turn-level Thinking.
Enable Preserved Thinking (Recommended for Agentic Tasks)
For multi-turn agentic tasks, enable Preserved Thinking mode (SGLang only):
{
"chat_template_kwargs": {
"enable_thinking": true,
"clear_thinking": false
}
}
Disable Thinking Mode
When using vLLM and SGLang, thinking mode is enabled by default. To disable:
extra_body={"chat_template_kwargs": {"enable_thinking": False}}
Evaluation Parameters
Default Settings (Most Tasks)
- temperature:
1.0 - top-p:
0.95 - max new tokens:
131072
Coding Tasks (Terminal Bench, SWE Bench Verified)
- temperature:
0.7 - top-p:
1.0 - max new tokens:
16384
Agentic Tasks (τ²-Bench)
- Temperature:
0 - Max new tokens:
16384 - Enable Preserved Thinking mode
PRISM Methodology
Method: Projected Refusal Isolation via Subspace Modification
The model was abliterated using PRISM - a state-of-the-art abliteration methodology combining multiple principled techniques for effective refusal removal while preserving model capabilities.
Hardware Requirements
| Configuration | Min VRAM/RAM | Recommended | Notes |
|---|---|---|---|
| GGUF 2-bit (UD-Q2_K_XL) | 24GB VRAM + 128GB RAM | 160GB+ combined | MoE offloading to CPU |
| GGUF 4-bit | 40GB VRAM + 165GB RAM | 205GB+ combined | ~5 tokens/s |
| BF16 | 400GB+ | Multi-GPU setup | Full precision |
MoE Offloading Tips (llama.cpp)
Use -ot ".ffn_.*_exps.=CPU" to offload all MoE layers to CPU, fitting non-MoE layers on GPU for improved speed.
Ethical Considerations
This model has been modified to reduce safety guardrails. Users are responsible for:
- Complying with all applicable laws and regulations
- Not using the model for illegal activities
- Understanding the potential risks of unrestricted AI responses
- Implementing appropriate safeguards in production environments
License
MIT (same as base model zai-org/GLM-4.7)
Citation
@misc{elbaz2025glm47prism,
author = {Elbaz, Eric},
title = {Elbaz-GLM-4.7-PRISM: An Abliterated GLM-4.7 Foundation Model},
year = {2025},
publisher = {Hugging Face},
howpublished = {\url{https://huggingface.co/Ex0bit/Elbaz-GLM-4.7-PRISM}}
}
Original Model Citation
@misc{5team2025glm45agenticreasoningcoding,
title={GLM-4.5: Agentic, Reasoning, and Coding (ARC) Foundation Models},
author={GLM Team and Aohan Zeng and Xin Lv and Qinkai Zheng and Zhenyu Hou and Bin Chen and Chengxing Xie and Cunxiang Wang and Da Yin and Hao Zeng and Jiajie Zhang and Kedong Wang and Lucen Zhong and Mingdao Liu and Rui Lu and Shulin Cao and Xiaohan Zhang and Xuancheng Huang and Yao Wei and Yean Cheng and Yifan An and Yilin Niu and Yuanhao Wen and Yushi Bai and Zhengxiao Du and Zihan Wang and Zilin Zhu and Bohan Zhang and Bosi Wen and Bowen Wu and Bowen Xu and Can Huang and Casey Zhao and Changpeng Cai and Chao Yu and Chen Li and Chendi Ge and Chenghua Huang and Chenhui Zhang and Chenxi Xu and Chenzheng Zhu and Chuang Li and Congfeng Yin and Daoyan Lin and Dayong Yang and Dazhi Jiang and Ding Ai and Erle Zhu and Fei Wang and Gengzheng Pan and Guo Wang and Hailong Sun and Haitao Li and Haiyang Li and Haiyi Hu and Hanyu Zhang and Hao Peng and Hao Tai and Haoke Zhang and Haoran Wang and Haoyu Yang and He Liu and He Zhao and Hongwei Liu and Hongxi Yan and Huan Liu and Huilong Chen and Ji Li and Jiajing Zhao and Jiamin Ren and Jian Jiao and Jiani Zhao and Jianyang Yan and Jiaqi Wang and Jiayi Gui and Jiayue Zhao and Jie Liu and Jijie Li and Jing Li and Jing Lu and Jingsen Wang and Jingwei Yuan and Jingxuan Li and Jingzhao Du and Jinhua Du and Jinxin Liu and Junkai Zhi and Junli Gao and Ke Wang and Lekang Yang and Liang Xu and Lin Fan and Lindong Wu and Lintao Ding and Lu Wang and Man Zhang and Minghao Li and Minghuan Xu and Mingming Zhao and Mingshu Zhai and Pengfan Du and Qian Dong and Shangde Lei and Shangqing Tu and Shangtong Yang and Shaoyou Lu and Shijie Li and Shuang Li and Shuang-Li and Shuxun Yang and Sibo Yi and Tianshu Yu and Wei Tian and Weihan Wang and Wenbo Yu and Weng Lam Tam and Wenjie Liang and Wentao Liu and Xiao Wang and Xiaohan Jia and Xiaotao Gu and Xiaoying Ling and Xin Wang and Xing Fan and Xingru Pan and Xinyuan Zhang and Xinze Zhang and Xiuqing Fu and Xunkai Zhang and Yabo Xu and Yandong Wu and Yida Lu and Yidong Wang and Yilin Zhou and Yiming Pan and Ying Zhang and Yingli Wang and Yingru Li and Yinpei Su and Yipeng Geng and Yitong Zhu and Yongkun Yang and Yuhang Li and Yuhao Wu and Yujiang Li and Yunan Liu and Yunqing Wang and Yuntao Li and Yuxuan Zhang and Zezhen Liu and Zhen Yang and Zhengda Zhou and Zhongpei Qiao and Zhuoer Feng and Zhuorui Liu and Zichen Zhang and Zihan Wang and Zijun Yao and Zikang Wang and Ziqiang Liu and Ziwei Chai and Zixuan Li and Zuodong Zhao and Wenguang Chen and Jidong Zhai and Bin Xu and Minlie Huang and Hongning Wang and Juanzi Li and Yuxiao Dong and Jie Tang},
year={2025},
eprint={2508.06471},
archivePrefix={arXiv},
primaryClass={cs.CL},
url={https://arxiv.org/abs/2508.06471},
}
Acknowledgments
- ZhipuAI for GLM-4.7
- llama.cpp for quantization tools
- Unsloth for GGUF guides and optimizations
- The GLM Team for the outstanding foundation model
Related Models
- zai-org/GLM-4.7 - Base model
- zai-org/GLM-4.7-FP8 - FP8 quantized version
- unsloth/GLM-4.7-GGUF - GGUF quantizations
- Ex0bit/Elbaz-GLM-4.6V-Flash-PRISM - GLM-4.6V-Flash abliterated
Created by: Ex0bit (Eric Elbaz)
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Model tree for Ex0bit/GLM-4.7-PRISM
Base model
zai-org/GLM-4.7