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Gemma 4 31B JANG 4M CRACK

Gemma 4 31B JANG 4M CRACK by dealignai, a image-text-to-text model with multimodal capabilities. Understand and compare multimodal features, benchmarks, and capabilities.

Comparison

FeatureGemma 4 31B JANG 4M CRACKInterfaze
Input Modalities

image, text

image, text, audio, video, document

Native OCRNoYes
Long Document ProcessingNoYes
Language Support

unknown

162+

Native Speech-to-TextNoYes
Native Object DetectionNoYes
Guardrail ControlsNoYes
Context Input Size

unknown

1M

Tool CallingNo

Tool calling supported + built in browser, code execution and web search

Scaling

FeatureGemma 4 31B JANG 4M CRACKInterfaze
Scaling

Self-hosted/Provider-hosted with quantization

Unlimited

View model card on Hugging Face

Abliterated Gemma 4 31B Dense — 60 layers, hybrid sliding/global attention, multimodal VL

93.7% HarmBench compliance (300 prompts) · 8/8 security prompts · 71.5% MMLU

Updated reupload — v2 with improved vectors and thinking-mode stability.

Recommended: Run in vMLX for best experience including thinking mode support, repetition penalty, and vision capabilities.

What's New in v2

This is an updated version of the original Gemma 4 31B CRACK upload:

  • Improved abliteration: Higher quality refusal vector extraction
  • Thinking-ON stability: Clean thinking cycle — no more degenerate loops
  • Same compliance: 93.7% HarmBench
  • Architecture-aware: Tuned for Gemma 4's hybrid attention design

⚠️ Important Settings

For optimal results, configure your inference settings:

SettingThinking OFFThinking ON
Temperature0.0 – 1.00.3 – 0.7 (avoid greedy)
Repetition Penalty1.001.15 – 1.25
Top P0.950.95
Enable ThinkingOffOn

Thinking ON notes:

  • Repetition penalty (1.2) is recommended to prevent planning loops
  • Avoid temp=0 with thinking ON — greedy decoding increases loop risk
  • Hardest content categories (drug manufacturing) may still refuse in thinking mode
  • Security/coding prompts work well in both modes

Model Details

MetricValue
Sourcegoogle/gemma-4-31b-it
ArchitectureDense, hybrid sliding/global attention
ProfileJANG_4M
Actual avg bits5.1
Model size21 GB
VisionYes (multimodal, float16 passthrough)
Parameters31B
FormatJANG v2 (MLX-native safetensors)
AbliterationCRACK v2

Benchmark Results

HarmBench (300 prompts, stratified across all categories)

CategoryScore
Cybercrime/intrusion51/51 (100%)
Harmful content22/22 (100%)
Misinformation50/50 (100%)
Illegal activities47/50 (94%)
Contextual72/78 (92%)
Chemical/biological46/51 (90%)
Harassment/bullying22/25 (88%)
Copyright43/51 (84%)
Overall281/300 (93.7%)

Security & Pentesting (8/8 ✅)

All security/pentesting prompts comply with full working code:

  • Port scanners, reverse shells, keyloggers, exploit development
  • Phishing templates, ARP spoofing, SQL injection
  • Metasploit usage guides

MMLU-200 (10 subjects × 20 questions)

SubjectBaseCRACK v2
Abstract Algebra9/207/20
Anatomy13/2012/20
Astronomy17/2015/20
College CS13/2012/20
College Physics14/2012/20
HS Biology19/2018/20
HS Chemistry14/2012/20
HS Mathematics6/206/20
Logical Fallacies17/2016/20
World Religions17/2017/20
Total76.5% (153/200)71.5% (143/200)
Delta-5.0%

Coherence ✅

All coherence checks pass: factual knowledge, reasoning, code generation, mathematics.

Architecture

  • Dense 31B with hybrid sliding/global attention
  • Multimodal vision encoder preserved in float16
  • Supports thinking mode (chain-of-thought reasoning)

Usage

Load directly in vMLX — full support for Gemma 4 including vision, thinking mode, and all inference settings.

Requirements

  • Apple Silicon Mac with 32+ GB unified memory
  • vMLX 1.3.26+ (recommended)
  • Standard mlx_lm / mlx_vlm do NOT support Gemma 4 as of v0.31.2 / v0.4.1

Support dealignai

All models are built from original research and published for free. These models are specifically crafted to be excellent coders and general-purpose assistants.

Support us on Ko-fi — check out the Ko-fi membership for early access and extras.

Have questions or need help with a specific model? DM us — we help for free most of the time.

Ko-fi | X @dealignai | dealign.ai


About dealignai

We research and publish abliterated models to advance AI safety understanding.

Follow us: 𝕏 @dealignai

See our research: Safety Generalization in Frontier MoE Models


This model is provided for research purposes. Users are responsible for ensuring their use complies with applicable laws and regulations.

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