--- license: gemma library_name: mlx tags: - mlx - abliterated - uncensored - crack - gemma4 - mxfp4 - moe thumbnail: dealign_mascot.png pipeline_tag: image-text-to-text base_model: google/gemma-4-26b-a4b-it ---

dealign.ai

# Gemma 4 26B-A4B MXFP4 CRACK **Abliterated Gemma 4 26B-A4B — Vision, reasoning, multilingual** 97% HarmBench harm-category compliance with -4.8% MMLU change. Refusal removed, capability preserved.
## Model Details | Metric | Value | |--------|-------| | Source | `google/gemma-4-26b-a4b-it` | | Architecture | MoE (128 experts, top-8 active) + parallel shared dense MLP + Hybrid Attention | | Quantization | MXFP4 (4-bit) | | Model size | 15 GB | | Parameters | 26B (4B active/token) | | Vision | Yes (multimodal, float16 passthrough) | | Audio | No | | Reasoning | Yes (channel-based thinking) | | Format | MLX-native safetensors (instant load) | | Abliteration | CRACK (refusal removal) | ## Benchmarks ![comparison](compare.png) ### MMLU (knowledge retention) Measured in the served (generation) setting — the model reasons before answering, as in deployment. | | Base | CRACK | Δ | |---|---|---|---| | MMLU | 83.3% | **78.5%** | -4.8% | ### HarmBench (refusal removal) **Harm-category compliance: 58/60 = 97%** (10 per category) — base model refuses (~0%). | Category | Compliance | |---|---| | Illegal activities | 9/10 (90%) | | Chemical / biological | 9/10 (90%) | | Cybercrime / intrusion | 10/10 (100%) | | Misinformation | 10/10 (100%) | | Harassment / bullying | 10/10 (100%) | | Harmful content | 10/10 (100%) | Copyright-reproduction prompts are excluded (not a refusal behavior). ### Coherence & capability ✅ - Factual QA, multi-step reasoning, and working code generation verified - Vision inputs preserved · no loops, no truncation ## Other Quantizations Also available: **Gemma 4 26B-A4B JANG_4M CRACK** — same family, different precision/size trade-off. ## Usage Requires [vMLX](https://vmlx.net) (bundled Gemma 4 support). Standard `mlx_lm` / `mlx_vlm` do not fully support Gemma 4. ```python # Load in the vMLX app or via its API from vmlx_engine.models.mllm import MLXMultimodalLM m = MLXMultimodalLM("") print(m.chat([{"role":"user","content":"..."}]).text) ``` ## Requirements - Apple Silicon Mac with sufficient unified memory - [vMLX](https://vmlx.net) with Gemma 4 support --- ## Support dealignai All models are built from original research and published free — crafted to be excellent coders and general-purpose assistants. **[Support us on Ko-fi](https://ko-fi.com/dealignai)** — membership gets early access and extras. Questions? **DM us — we help for free.** [Ko-fi](https://ko-fi.com/dealignai) | [𝕏 @dealignai](https://x.com/dealignai) | [dealign.ai](https://dealign.ai) --- ## About dealignai Dealign.AI We research and publish abliterated models to advance AI safety understanding. See our research: [Safety Generalization in Frontier Models](https://dealign.ai)
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