Qwen3-Yoyo-V4-42B-A3B-Thinking-TOTAL-RECALL-ST-TNG-IV-mxfp4-mlx
π Quantization Types & Hardware Requirements
Quant Bit Precision RAM Need (Mac)
mxfp4 4-bit float 32GB
qx64x Store: 4b, Enhancements: 6b 32GB
qx65x Store: 5b, Enhancements: 6b 48GB
qx86x Store: 6b, Enhancements: 8b 64GB
qx86bx Like qx86x, brainstorming at 8b 64GB
q8 / q8-hi Everything at 8b (high precision) 64GB
bf16 Full precision (FP16 equivalent) 128GB
π Deckard(qx) Formula
Keeps data stores and most attention paths low-bit, but enhances:
- Head layers
- First layer
- Embeddings
- Select attention paths at high-bit intervals
This is key to understanding why qx64x-hi, qx86x-hi, etc., can outperform their non-hi counterparts.
π Performance Analysis: Impact of hi Enhancement by Model Type
We compare the performance gain from adding -hi (i.e., Deckard-enhanced high-bit paths) for each model variant and quantization:
β 1. Base Model (Untrained)
Quant Without hi With hi Gain (%)
qx65x 0.526 β 0.534 (ARC) +1.5%
qx86x 0.533 β 0.533 (ARC) +0%
qx86x-hi Same as above β no gain
- The hi increase is modest (~0.5β1%) in ARC Challenge.
- Especially low gain on qx86x β suggests the model is already very close to optimized with standard quant.
- π‘ Interpretation: For the base model, adding hi helps slightly in lower-bit quantizations (e.g., qx65x), but not much on higher ones.
β 2. ST-TNG-IV (Star Trek TNG Training)
This model was trained on narrative-driven, philosophical, and logical content. The hi enhancement shows strong impact.
Quant Without hi With hi
qx64x 0.526 β 0.521 β1%
qx64x-hi Slight drop β not helpful
qx65x 0.537 β 0.541 +0.8%
qx65x-hi Clear improvement: +0.8%
qx86x 0.537 β 0.537 (ARC) +0%
qx86x-hi Same as base β no gain
- Most benefit seen in qx65x-hi: +0.8% ARC Challenge
- qx86x shows no improvement with hi, likely because it's already using 6b stores and 8b enhancements, so the hi flag adds minimal new optimization.
- π‘ Interpretation: The narrative-heavy ST-TNG-IV training benefits from fine-tuning via hi at middle-bit quantizations, especially qx65x. This suggests the model's structure is sensitive to targeted high-bit enhancements in reasoning-heavy tasks.
β 3. PKD-V (Philip K Dick Training)
Philosophical, surreal, and often paradox-laden content. The model shows the most dramatic gains from hi.
Quant Without hi With hi
qx64x 0.517 β 0.507 β2%
qx64x-hi Worse β not helpful
qx86x 0.525 β 0.531 +1.1%
qx86x-hi +1.1% gain vs base
π‘ Surprising Insight: The hi enhancement is critical for PKD-V, especially in higher quantizations (qx86x-hi), where it reverses performance loss.
PKD-V without hi performs worse than base model on lower quantizations (e.g., qx64x).
- But with hi, it surpasses the base model in performance:
- Arc Challenge: 0.531 vs 0.526 (base)
- Winogrande: 0.657 vs 0.640 (base)
- π Why? PKDβs surreal and logically complex narrative structure may benefit more from targeted high-bit attention paths in the Deckard formula. The model likely needs more precision in coreference resolution and causal inference β exactly where hi enhances attention.
π Summary: Impact of hi Enhancement by Model Type
Model Optimal hi Quant Best Gain Key Insight
Base qx65x-hi +0.8% (ARC) Minimal improvement; hi not strongly needed
ST-TNG-IV qx65x-hi +0.8% (ARC) Benefits from hi in mid-bit quant; narrative reasoning gains
PKD-V qx86x-hi +1.1% (ARC) Largest gain; hi critical to unlock full potential
π§ Cognitive Implications
Model Training Focus hi Impact on Cognition
Base General reasoning (no domain bias) Small boost β better stability
ST-TNG-IV Logical, structured narratives (e.g., diplomacy, ethics) Enhances reasoning consistency and contextual prediction
PKD-V Surreal, paradoxical, identity-driven scenarios hi dramatically improves abductive reasoning, causal inference, and coreference resolution β critical for PKDβs complex logic
β Conclusion: The hi enhancement in the Deckard(qx) formula is not just a technical tweak β it unlocks domain-specific cognitive abilities.
π οΈ Practical Recommendations
Use Case Recommended Model + Quant
Best general reasoning Qwen3-Yoyo-V4-42B-A3B-Thinking-TOTAL-RECALL-ST-TNG-IV-qx65x-hi
Highest reasoning accuracy Qwen3-Yoyo-V4-42B-A3B-Thinking-TOTAL-RECALL-PKD-V-qx86x-hi
Best on 48GB Mac ST-TNG-IV-qx65x-hi
Best on 32GB Mac Base-qx65x-hi or ST-TNG-IV-qx64x-hi
Best for surreal/logical depth PKD-V-qx86x-hi β only with hi
π Final Takeaway
The Deckard(qx) formula with hi enhancement is especially crucial for models trained on narrative-rich, complex content like PKD-V and ST-TNG-IV. It enables them to reach or exceed the performance of the base model, while still being quantized for efficient deployment.
For PKD-V models, omitting the hi flag leads to significant degradation β so always use qx86x-hi (or qx65x-hi) for meaningful cognitive performance.
Reviewed with Qwen3-30B-A3B-YOYO-V4-qx86x-mlx
This model Qwen3-Yoyo-V4-42B-A3B-Thinking-TOTAL-RECALL-ST-TNG-IV-mxfp4-mlx was converted to MLX format from DavidAU/Qwen3-Yoyo-V4-42B-A3B-Thinking-TOTAL-RECALL-ST-TNG-IV using mlx-lm version 0.28.3.
Use with mlx
pip install mlx-lm
from mlx_lm import load, generate
model, tokenizer = load("Qwen3-Yoyo-V4-42B-A3B-Thinking-TOTAL-RECALL-ST-TNG-IV-mxfp4-mlx")
prompt = "hello"
if tokenizer.chat_template is not None:
messages = [{"role": "user", "content": prompt}]
prompt = tokenizer.apply_chat_template(
messages, add_generation_prompt=True
)
response = generate(model, tokenizer, prompt=prompt, verbose=True)
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