How to use from
Hermes Agent
Start the llama.cpp server
# Install llama.cpp:
brew install llama.cpp
# Start a local OpenAI-compatible server:
llama serve -hf maczzzzzz/ThinkingCap-Qwen3.6-27B-TQ3_4S-GGUF
Configure Hermes
# Install Hermes:
curl -fsSL https://hermes-agent.nousresearch.com/install.sh | bash
hermes setup
# Point Hermes at the local server:
hermes config set model.provider custom
hermes config set model.base_url http://127.0.0.1:8080/v1
hermes config set model.default maczzzzzz/ThinkingCap-Qwen3.6-27B-TQ3_4S-GGUF
Run Hermes
hermes
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ThinkingCap-Qwen3.6-27B TQ3_4S — GGUF

TQ3_4S quant of bottlecapai/ThinkingCap-Qwen3.6-27B (Apache 2.0), produced via turbo-tan's llama.cpp-tq3 CUDA fork. ThinkingCap is a Qwen3.6-27B fine-tune optimized for reasoning-heavy tasks. Benchmarked on a Blackwell RTX 5060 Ti (16 GB). Mean AEON score: 0.480 (75 cases, 6144 budget).

File

File Size Quant BPW
ThinkingCap-Qwen3.6-27B-TQ3_4S.gguf 14 GB TQ3_4S (turbo-tan) ~3.8 bpw

NOT a stock llama.cpp quant

TQ3_4S (TurboQuant 3-bit 4-state) is a custom weight format unique to turbo-tan/llama.cpp-tq3. Stock llama.cpp and nixpkgs llama-cpp will exit with unknown quantization at load time. Use the llama-server/llama-cli from the tq3 fork.

Scope of these benchmarks — read this first

These numbers are a light baseline, not a thorough TQ3 evaluation. The mesh's bench framework is built for production agent workload regression-detection on the local stack, not for the kind of multi-axis sweep that upstream quant maintainers typically publish. Specifically:

  • Harness scope is bounded. The numbers below come from the mesh's Aeon-Bench-Pod (self-reported mode, 75-case --fast shape, text-only, no agentic harness). That's a regression suite, not a quality benchmark.
  • Sample sizes are small. 75 cases on a single GPU, single rep. None are powered for statistical significance.
  • No perplexity / wikitext / MMLU / GSM8K. The mesh's stack isn't a quality benchmark — those are upstream's territory.
  • Single GPU class (Blackwell 16 GB). All measurements are on an NVIDIA RTX 5060 Ti 16 GB (CUDA 13.2, turbo-tan/llama.cpp-tq3 77dd77473). No RDNA4, no multi-GPU, no Vulkan. Cross-hardware generalization is NOT implied.
  • No human eval. "0.480 mean on the AEON suite" is not a quality verdict on this specific quant.
  • 30 prose cases unscored — no frontier judge endpoint configured, so the prose category is excluded from the mean.

What this IS good for: a quick signal that the quant (a) loads, (b) runs at sane throughput, (c) doesn't break the mesh's agent tool-calling. What this is NOT good for: claiming "this is the best quant of this model," reproducing academic benchmark results, or substituting for upstream's validation work.

For a rigorous view, see bottlecapai/ThinkingCap-Qwen3.6-27B (parent model) and turbo-tan/llama.cpp-tq3 (quantizer). Raw bench reports are attached as BENCH-*.md files in this repo.

What we measured

AEON v3 — 75 cases (self-reported, 6144 budget)

Benchmarked on Blackwell RTX 5060 Ti 16 GB, --limit 75 --fast --max-tokens 6144.

Category Mean N
Overall 0.480 75
math 0.400 30
instruction 0.300 30
reasoning 1.000 15
Difficulty Mean N
easy 1.000 6
medium 0.778 9
hard 0.733 15
expert 0.429 21
frontier 0.125 24

ThinkingCap's profile: pure reasoning specialist (1.000 — perfect on reasoning). Weak on instruction (0.300) and math (0.400). Best suited for roles where reasoning depth is the priority.

Comparison vs. sibling quants (75-case @6144, same harness, node-d)

Model mean math instruction reasoning
Tess-4-27B-TQ3_4S 0.560 0.500 0.333 0.933
ThinkingCap-Qwen3.6-27B-TQ3_4S 0.480 0.400 0.300 1.000
Qwen3.6-27B-TQ3_4S (prod baseline) 0.520 0.500 0.333 0.933

Quick start

# Build turbo-tan's tq3 fork
git clone https://github.com/turbo-tan/llama.cpp-tq3
cd llama.cpp-tq3
mkdir build && cd build
cmake .. -DGGML_CUDA=ON -DCUDA_DOCKER_ARCH=sm_120
make -j$(nproc)

# Serve
llama-server \
  -m ThinkingCap-Qwen3.6-27B-TQ3_4S.gguf \
  --host 0.0.0.0 --port 8081 \
  -ngl 99 -c 131072 -t 12 \
  -ctk q4_0 -ctv q4_0 \
  -np 1 --batch-size 512 --ubatch-size 128 \
  --jinja --metrics -rea off

Reproduce the quant

# Requires the tq3 fork and the F16 source GGUF
llama-quantize --allow-requantize ThinkingCap-Qwen3.6-27B-f16.gguf \
  ThinkingCap-Qwen3.6-27B-TQ3_4S.gguf TQ3_4S

Files in this repo

File Description
ThinkingCap-Qwen3.6-27B-TQ3_4S.gguf The quantized model (LFS-tracked)
README.md This model card
BENCH-aeon-75-case-6144.md AEON bench results (75 cases, 6144 budget)

What's NOT in this repo (caveats)

  • Stock llama.cpp will not load this file. TQ3_4S is a custom weight format unique to turbo-tan/llama.cpp-tq3.
  • No AMD GPU bench. All measurements are RTX 5060 Ti (CUDA). No RDNA4, no ROCm.
  • No quality benchmark (perplexity, MMLU, GSM8K). The custom 3-bit quant works on the mesh's regression tests; whether it's "the best TQ3 quant" needs upstream validation.
  • No MTP / speculative-decode bench. ThinkingCap was tested without MTP.
  • No prose/creativity evaluation. 30 prose cases were unscored (no judge endpoint configured).

Provenance

  • Source model: bottlecapai/ThinkingCap-Qwen3.6-27B — Qwen3.6-27B fine-tune
  • Source model license: Apache 2.0
  • Quantizer: turbo-tan/llama.cpp-tq3 @ 77dd77473
  • Quantizer license: MIT
  • Build hardware: NVIDIA RTX 5060 Ti 16 GB (Blackwell), CUDA 13.2, NixOS 25.11
  • Bench harness: Aeon-Bench-Pod v1 (self-reported mode)
  • Original bench report: raw/benchmarks/2026-07-09-node-d-thinkingcap-tq3/ in the meshina repo

License

  • ThinkingCap-Qwen3.6-27B is Apache 2.0 (per its HF model card).
  • turbo-tan/llama.cpp-tq3 is MIT.
  • The GGUF in this repo is a derivative of the Apache 2.0-licensed parent, produced with the MIT-licensed quantizer. The Apache 2.0 license is preserved.
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