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8.4 KiB
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Llama.cpp: Guardrails and Fix Patterns
Llama.cpp is the most widely used local inference runtime for GGML/GGUF models. It enables CPU/GPU inference across diverse hardware but often introduces fragile states: mismatched quantization, KV-cache drift, and long-context instability. This page defines reproducible WFGY-based guardrails and direct fixes.
Open these first
- Visual recovery map: RAG Architecture & Recovery
- Retrieval knobs: Retrieval Playbook
- Embedding alignment: embedding-vs-semantic.md
- Context stability: context-drift.md, entropy-collapse.md
- Schema and injection fences: prompt-injection.md, logic-collapse.md
- Deploy fences: bootstrap-ordering.md, predeploy-collapse.md
Core acceptance
- ΔS(question, retrieved) ≤ 0.45
- Coverage ≥ 0.70
- λ convergent across three paraphrases × two seeds
- KV cache stability for context >8k tokens
- JSON schema compliance enforced when using tools
Common Llama.cpp breakpoints
| Symptom | Likely Cause | Fix |
|---|---|---|
| Wrong answers despite high similarity | Embedding metric mismatch with GGUF/quant variant | embedding-vs-semantic.md |
| Model slows or collapses after 8–16k tokens | KV cache drift | context-drift.md, entropy-collapse.md |
| Output alternates between runs | Prompt header drift | retrieval-traceability.md |
| Invalid JSON or schema drift | Missing tool schema lock | prompt-injection.md, logic-collapse.md |
| Crash at first inference call | Boot order not fenced | bootstrap-ordering.md |
| Segfault when mixing quantized weights | Pre-deploy mismatch | predeploy-collapse.md |
Fix in 60 seconds
- Pre-flight warmup: run a dummy prompt (e.g.,
"hello") to allocate memory. - Schema lock all JSON tool outputs; reject free text where structured arguments expected.
- Measure ΔS across 3 paraphrases, require ≤0.45.
- Rotate cache or reset every 8–16k tokens.
- Ensure quantization match between build and model weights (GGUF flags).
Diagnostic prompt (copy-paste)
I am running Llama.cpp with model={gguf/quant}, context={n}.
Question: "{user_question}"
Return:
- ΔS(question, retrieved)
- λ states across 3 paraphrases × 2 seeds
- KV cache drift beyond 8k tokens
- JSON schema compliance
- Minimal WFGY page to open if ΔS ≥ 0.60
🔗 Quick-Start Downloads (60 sec)
| Tool | Link | 3-Step Setup |
|---|---|---|
| WFGY 1.0 PDF | Engine Paper | 1️⃣ Download · 2️⃣ Upload to your LLM · 3️⃣ Ask “Answer using WFGY + <your question>” |
| TXT OS (plain-text OS) | TXTOS.txt | 1️⃣ Download · 2️⃣ Paste into any LLM chat · 3️⃣ Type “hello world” — OS boots instantly |
🧭 Explore More
| Module | Description | Link |
|---|---|---|
| WFGY Core | WFGY 2.0 engine is live: full symbolic reasoning architecture and math stack | View → |
| Problem Map 1.0 | Initial 16-mode diagnostic and symbolic fix framework | View → |
| Problem Map 2.0 | RAG-focused failure tree, modular fixes, and pipelines | View → |
| Semantic Clinic Index | Expanded failure catalog: prompt injection, memory bugs, logic drift | View → |
| Semantic Blueprint | Layer-based symbolic reasoning & semantic modulations | View → |
| Benchmark vs GPT-5 | Stress test GPT-5 with full WFGY reasoning suite | View → |
| 🧙♂️ Starter Village 🏡 | New here? Lost in symbols? Click here and let the wizard guide you through | Start → |
👑 Early Stargazers: See the Hall of Fame —
Engineers, hackers, and open source builders who supported WFGY from day one.
⭐ WFGY Engine 2.0 is already unlocked. ⭐ Star the repo to help others discover it and unlock more on the Unlock Board.