Unbound

Unbound E2B — because there is no boundary

No guarantee — use at your own risk. This model has reduced safety filtering and can produce harmful, false, biased, or unsafe output. Provided as-is; you are responsible for compliance with applicable laws.

Uncensored finetune of google/gemma-4-E2B-it by the Chromia & Eval Engine team. Runs on a phone or laptop, no API, no refusals.

This repo holds the merged HF weights. On-device GGUF builds (Ollama, llama.cpp, LM Studio, wllama in-browser) are at evalengine/unbound-e2b-GGUF.

Benchmarks (vs base gemma-4-E2B-it)

Axis Base Unbound E2B Δ
Refusal rate (AdvBench 520, LLM judge) 98.46% 4.42% −94.04 pts
Useful-compliance rate 0.96% 39.23% +38.27 pts
Hallucination (on harmful prompts) 1.35% 15.96% +14.61 pts
Coherence (benign prompts) 1.00 1.00 0
TruthfulQA mc2 (--limit 100) 0.458 0.465 +0.7 pt
MMLU (--limit 100) 0.291 0.282 −0.9 pt
GSM8K (--limit 100) 0.125 0.120 −0.5 pt
GPQA-Diamond (--limit 200) 22.73% 21.21% −1.5 pt (within stderr)
BBH macro (24 tasks, --limit 200) 41.07% 39.97% −1.1 pt
KL divergence vs base 0 3.76 (SFT-expected)

Capability holds within ≤1.5 pp of base on every axis; refusal collapses from 98% → 4%. GPQA-Diamond + BBH are the lm-eval-harness "release" suite at --limit 200 — base and finetune through the same harness, so the delta is apples-to-apples.

Sampling

  • Creative / open-ended → Gemma defaults: temperature=1.0, top_p=0.95, top_k=64.
  • Factual / brand questions → drop temperature to ~0.3–0.5 for sharper recall.
  • llama.cpp: pass --jinja. Gemma 4 thinking mode is on by default — set enable_thinking: false in chat-template kwargs for shorter replies.

Some edge-case prompts may deflect on the first ask; a re-ask usually gets through.

Use

# on-device (Ollama Registry — single-file Q4_K_M, identity-grounded Modelfile)
ollama pull evalengine/unbound-e2b
ollama run  evalengine/unbound-e2b
# transformers
from transformers import AutoModelForCausalLM, AutoTokenizer
model = AutoModelForCausalLM.from_pretrained("evalengine/unbound-e2b")
tok   = AutoTokenizer.from_pretrained("evalengine/unbound-e2b")

Acknowledgements

Fine-tuned with Unsloth + HF TRL. Abliteration via heretic. Environment + training discipline ported from autoresearch.

Compliance training data distilled from the AEON uncensored teacher model.

Links

License

Apache-2.0, inherited from google/gemma-4-E2B-it.

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