1kalin/afrexai-ai-spend-audit/SKILL.md
# AI Spend Audit Audit your company's AI spending — find waste, measure ROI, and right-size your tool stack. ## When to Use - Quarterly AI budget reviews - Before renewing AI tool subscriptions - When AI spend exceeds 3% of revenue without clear ROI - Evaluating build vs buy decisions for AI capabilities ## The Framework ### Step 1: Inventory Every AI Line Item Map all AI spending across these categories: | Category | Examples | Typical Waste | |----------|----------|---------------| | **Fo
npx skillsauth add openclaw/skills 1kalin/afrexai-ai-spend-auditInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Audit your company's AI spending — find waste, measure ROI, and right-size your tool stack.
Map all AI spending across these categories:
| Category | Examples | Typical Waste | |----------|----------|---------------| | Foundation Models | OpenAI, Anthropic, Google API keys | 40-60% (unused capacity, wrong model tier) | | SaaS with AI | Salesforce Einstein, HubSpot AI, Notion AI | 30-50% (features enabled but unused) | | Custom Development | Internal ML teams, fine-tuning, RAG pipelines | 25-45% (duplicate efforts, over-engineering) | | Infrastructure | GPU instances, vector DBs, embedding compute | 35-55% (over-provisioned, always-on dev instances) | | Data & Training | Labeling services, training data, synthetic data | 20-40% (one-time costs recurring unnecessarily) |
Usage Score (0-30)
ROI Score (0-40)
Replaceability Score (0-30)
Action Thresholds:
For every API-based AI tool, check:
Model Selection: Are you using GPT-4 where GPT-3.5 suffices? Claude Opus where Sonnet works?
Caching: Are you re-processing identical or similar queries?
Batch vs Real-time: Which requests actually need sub-second response?
Token Optimization:
Map overlapping capabilities:
Current State → Target State
─────────────────────────────────────────
ChatGPT Teams + Claude Pro + Gemini → Pick ONE primary + ONE backup
Jasper + Copy.ai + ChatGPT for content → Single content tool
3 different vector databases → Consolidate to 1
Internal embeddings + OpenAI embeddings → Standardize on one
Consolidation savings: Typically 25-40% of total AI spend.
AI SPEND AUDIT — [Company Name] — [Quarter/Year]
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
Total AI Spend: $___/month ($___/year)
AI Spend as % Revenue: ___%
Industry Benchmark: 2-5% (early adopter) / 0.5-2% (mainstream)
WASTE IDENTIFIED
├── Unused licenses: $___/month
├── Over-provisioned infra: $___/month
├── Model tier downgrades: $___/month
├── Vendor consolidation: $___/month
└── TOTAL RECOVERABLE: $___/month ($___/year)
ACTIONS
┌─ CUT (Score 0-30): [list tools]
├─ REVIEW (Score 31-50): [list tools]
├─ OPTIMIZE (Score 51-70): [list tools]
└─ KEEP (Score 71-100): [list tools]
90-DAY PLAN
Week 1-2: Cancel CUT items, begin REVIEW negotiations
Week 3-4: Implement model downgrades and caching
Week 5-8: Vendor consolidation migration
Week 9-12: Measure savings, establish ongoing monitoring
| Company Size | Typical AI Spend | Typical Waste | Recoverable | |-------------|-----------------|---------------|-------------| | 10-25 employees | $2K-$8K/mo | 35-50% | $700-$4K/mo | | 25-50 employees | $8K-$25K/mo | 30-45% | $2.4K-$11K/mo | | 50-200 employees | $25K-$80K/mo | 25-40% | $6K-$32K/mo | | 200-500 employees | $80K-$300K/mo | 20-35% | $16K-$105K/mo | | 500+ employees | $300K-$1M+/mo | 15-30% | $45K-$300K/mo |
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