Gemma 2 9B β€” RL-MPQ Conservative

Standalone RL-MPQ (Reinforcement Learning Mixed-Precision Quantization) checkpoint for the Conservative scenario β€” a quantized variant of google/gemma-2-9b.

Field Value
Base model google/gemma-2-9b
Scenario Conservative
Avg bits / weight 5.1429
Compression vs FP16 3.1111Γ—
WikiText-2 PPL 116.5244
Layers 42
Bit distribution {'4': 30, '8': 12}
Format Fake-quant FP16 + rlmpq_policy.json

Collection: RL-MPQ β€” Gemma 2 9B β€” all five scenarios for Gemma 2 9B.

Usage

from transformers import AutoModelForCausalLM, AutoTokenizer

repo = "AvoCahDoe/gemma-2-9b-rlmpq-conservative"

model = AutoModelForCausalLM.from_pretrained(repo, torch_dtype="float16")
tokenizer = AutoTokenizer.from_pretrained(repo)

Other Gemma 2 9B scenarios

Scenario Avg bits Compression WikiText-2 PPL
Aggressive 3.6667 4.3636x 162.8437
Balanced 4.2857 3.7333x 127.0798
Extreme Survival 2.7857 5.7436x 424.7991
High Fidelity 7.0476 2.2703x 104.8098

Grouped archive (all scenarios in one repo): AvoCahDoe/gemma-2-9b-rlmpq

Method

  1. Phase 3 β€” PPO agent assigns per-layer bit widths under the Conservative reward target.
  2. Phase 4 β€” Policy replayed on real weights; WikiText-2 perplexity validates quality.
  3. Export β€” Fake-quantized FP16 weights compatible with Hugging Face Transformers.

Files

File Description
config.json Llama architecture + RL-MPQ metadata
model.safetensors Fake-quantized weights
rlmpq_policy.json Per-layer bit-width policy
rlmpq_metrics.json Validation & PPL summary

Citation

@misc{rlmpq_gemma_2_9b_conservative_2026,
  title  = {RL-MPQ Conservative: Gemma 2 9B Mixed-Precision Quantization},
  author = {AvoCahDoe},
  year   = {2026},
  url    = {https://huggingface.co/AvoCahDoe/gemma-2-9b-rlmpq-conservative}
}
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