SecurityLLM GGUF
GGUF quantizations of ZySec-AI/SecurityLLM, verified end-to-end on the NVIDIA DGX Spark (GB10, 128 GB unified memory).
Notebooks
Two runnable notebooks ship with this model โ open either on a free cloud GPU:
| Notebook | What it does | Open |
|---|---|---|
| Builder | Reproduce this model's build and DGX Spark benchmarks end-to-end with fieldkit. |
๐ Open In Colab ๐ Open in Kaggle |
| User | Load the published model and call it from your own app in a few lines. | ๐ Open In Colab ๐ Open in Kaggle |
Spark-tested
Every Orionfold quant ships with a measurement quad on the NVIDIA DGX Spark (GB10, 128 GB unified memory): perplexity, sustained tok/s, thermal envelope, and CyberMetric (n=50, mcq_letter) accuracy. The numbers below are the actual run, not a wishlist.
| Variant | Size | Perplexity (wikitext-2) | tok/s on Spark | CyberMetric (n=50, mcq_letter) |
|---|---|---|---|---|
| Q4_K_M | 4.1 GB | 7.400 | 47.7 | 40.0% |
| Q5_K_M | 4.8 GB | 7.314 | 40.0 | 38.0% |
| Q6_K | 5.5 GB | 7.313 | 35.0 | 36.0% |
| Q8_0 | 7.2 GB | 7.307 | 30.3 | 36.0% |
| F16 | 13.5 GB | 7.301 | 17.4 | 34.0% |
Thermal envelope: sustained-load minutes before thermal throttle on a single GB10 = 5 min. Beyond this, expect tok/s degradation; the duty-cycle disclosure is per Orionfold's quant-card standard.
Variants
| Variant | Recommended use |
|---|---|
| Q4_K_M | Best balance โ fits comfortably in Spark unified memory at 70B; default pick. |
| Q5_K_M | Higher quality than Q4_K_M with modest size bump. |
| Q6_K | Near-lossless; recommended if memory headroom allows. |
| Q8_0 | Effectively lossless; reach for this when quality matters more than throughput. |
| F16 | Reference โ no quantization. Use only for measurement / baseline. |
How to run
Pull a variant:
huggingface-cli download Orionfold/SecurityLLM-GGUF model-Q5_K_M.gguf \
--local-dir ./models/securityllm
Serve it via llama-server (OpenAI-compatible API):
llama-server -m ./models/securityllm/model-Q5_K_M.gguf \
-c 4096 -ngl 99 -t 8 \
--host 0.0.0.0 --port 8080
Or run in-process via llama-cpp-python:
from llama_cpp import Llama
llm = Llama(
model_path="./models/securityllm/model-Q5_K_M.gguf",
n_ctx=4096, n_gpu_layers=99, chat_format="zephyr",
)
out = llm.create_chat_completion(
messages=[
{"role": "user",
"content": "What is the primary purpose of a key-derivation function (KDF)?\n\n"
"A) Generate public keys\n"
"B) Authenticate digital signatures\n"
"C) Encrypt data using a password\n"
"D) Transform a secret into keys and Initialization Vectors\n\n"
"Reply with only the single letter A, B, C, or D."}
],
temperature=0.0,
)
print(out["choices"][0]["message"]["content"])
LM Studio and Ollama (via a Modelfile) load the GGUF directly with no additional setup.
Methods
Full methodology and Spark-side measurement protocol: Vertical-curator quants on Spark โ SecurityLLM-GGUF + CyberMetric mini-eval.
Other Orionfold vertical curators
Same Spark-tested recipe across the curator-on-Spark series:
- finance-chat-GGUF โ AdaptLLM finance-chat (Llama-2-7B lineage) for FinanceBench-shaped queries
- Saul-7B-Instruct-v1-GGUF โ Equall Saul-7B legal-instruct for LegalBench-shaped queries
- II-Medical-8B-GGUF โ Qwen3-8B + DAPO reasoning for MedMCQA-shaped queries
Each card lists its own measurement quad; the headline numbers are recorded as the actual sweep ran, never pre-corrected.
Published by Orionfold LLC ยท orionfold.com ยท Methods documented at ainative.business/field-notes.
Want to know when the next Orionfold vertical curator drops? Join the launch list at orionfold.com.
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Model tree for Orionfold/SecurityLLM-GGUF
Base model
ZySec-AI/SecurityLLM