# Eval: Cost Reporting and Efficiency
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> **Evaluation disclaimer (cost reporting)** > Any cost and efficiency numbers on this page come from specific runs with specific models and hardware. > They are for comparison inside that context only and are not economic guarantees or universal prices. --- This page defines how to measure and report **cost per correct answer** in retrieval-augmented and reasoning pipelines. Latency and accuracy alone are insufficient. Without cost analysis, systems regress into wasteful configurations. ## Open these first * Latency vs Accuracy trade-off: [eval\_latency\_vs\_accuracy.md](https://github.com/onestardao/WFGY/blob/main/ProblemMap/GlobalFixMap/Eval/eval_latency_vs_accuracy.md) * Benchmark suite: [eval\_benchmarking.md](https://github.com/onestardao/WFGY/blob/main/ProblemMap/GlobalFixMap/Eval/eval_benchmarking.md) * Observability probes: [alerting\_and\_probes.md](https://github.com/onestardao/WFGY/blob/main/ProblemMap/GlobalFixMap/Eval_Observability/alerting_and_probes.md) --- ## Acceptance targets * **Cost per correct answer** ≤ 1.3× baseline * **Cost stability variance** ≤ 15% across 3 seeds and 3 paraphrases * **Token efficiency** ≥ 0.7 (fraction of tokens contributing to correct citation) * **Budget alerting**: auto-flag when projected monthly spend > 110% of budget cap --- ## Reporting dimensions Each evaluation run must record cost on three levels: 1. **Raw tokens** * input, output, total per query * broken down by retrieval, rerank, reasoning 2. **Cost per unit** * \$/1k tokens per provider and model * normalized into `usd_equiv` 3. **Cost per correct** * (total spend ÷ number of correct answers) * stratified by question bucket (short, medium, long) --- ## JSON schema ```json { "suite": "v1_cost", "arm": "with_hybrid", "provider": "anthropic", "model": "claude-3.7-sonnet", "bucket": "long", "precision": 0.79, "recall": 0.68, "ΔS_avg": 0.41, "correct_answers": 40, "total_questions": 50, "tokens": { "in": 2850, "out": 920, "total": 3770 }, "cost_per_1k_tokens_usd": 0.006, "spend_usd": 0.0226, "cost_per_correct": 0.00056, "variance_across_runs": 0.11, "notes": "within budget and stable" } ``` --- ## Diagnostic questions * Are rerankers worth the extra spend? → check ΔS reduction vs token increase. * Is hybrid retrieval doubling retrieval tokens with little gain? * Does the large model add accuracy, or is a small model + WFGY equal at lower cost? * Is citation length inflated (long snippets)? → enforce snippet contract. --- ## Escalation and fixes * **High cost per correct** → switch to caching, smaller model with WFGY overlay. * **Variance >15%** → clamp paraphrases, normalize prompt headers. * **Budget overrun** → auto-throttle evals, alert with [alerting\_and\_probes.md](https://github.com/onestardao/WFGY/blob/main/ProblemMap/GlobalFixMap/Eval_Observability/alerting_and_probes.md). --- ## Minimal run 1. Select 20 mixed-length questions. 2. Run baseline and candidate arms. 3. Compute cost per correct. 4. Ship only if candidate ≤ 1.3× baseline and stable across seeds. --- ### 🔗 Quick-Start Downloads (60 sec) | Tool | Link | 3-Step Setup | | -------------------------- | ------------------------------------------------------------------------------------------------------------------------------------------ | ---------------------------------------------------------------------------------------- | | **WFGY 1.0 PDF** | [Engine Paper](https://github.com/onestardao/WFGY/blob/main/I_am_not_lizardman/WFGY_All_Principles_Return_to_One_v1.0_PSBigBig_Public.pdf) | 1️⃣ Download · 2️⃣ Upload to your LLM · 3️⃣ Ask “Answer using WFGY + \” | | **TXT OS (plain-text OS)** | [TXTOS.txt](https://github.com/onestardao/WFGY/blob/main/OS/TXTOS.txt) | 1️⃣ Download · 2️⃣ Paste into any LLM chat · 3️⃣ Type “hello world” — OS boots instantly | --- ### Explore More | Layer | Page | What it’s for | | --- | --- | --- | | ⭐ Proof | [WFGY Recognition Map](/recognition/README.md) | External citations, integrations, and ecosystem proof | | ⚙️ Engine | [WFGY 1.0](/legacy/README.md) | Original PDF tension engine and early logic sketch (legacy reference) | | ⚙️ Engine | [WFGY 2.0](/core/README.md) | Production tension kernel for RAG and agent systems | | ⚙️ Engine | [WFGY 3.0](/TensionUniverse/EventHorizon/README.md) | TXT based Singularity tension engine (131 S class set) | | 🗺️ Map | [Problem Map 1.0](/ProblemMap/README.md) | Flagship 16 problem RAG failure taxonomy and fix map | | 🗺️ Map | [Problem Map 2.0](/ProblemMap/wfgy-rag-16-problem-map-global-debug-card.md) | Global Debug Card for RAG and agent pipeline diagnosis | | 🗺️ Map | [Problem Map 3.0](/ProblemMap/wfgy-ai-problem-map-troubleshooting-atlas.md) | Global AI troubleshooting atlas and failure pattern map | | 🧰 App | [TXT OS](/OS/README.md) | .txt semantic OS with fast bootstrap | | 🧰 App | [Blah Blah Blah](/OS/BlahBlahBlah/README.md) | Abstract and paradox Q&A built on TXT OS | | 🧰 App | [Blur Blur Blur](/OS/BlurBlurBlur/README.md) | Text to image generation with semantic control | | 🏡 Onboarding | [Starter Village](/StarterVillage/README.md) | Guided entry point for new users | If this repository helped, starring it improves discovery so more builders can find the docs and tools. 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