LLM API Selling to the Head of AI Engineering — 60-Min Training
Direct Answer
LLM API Selling to the Head of AI Engineering is a 60-minute training for AEs, SEs, and channel sellers running $200K–$5M ACV cycles against incumbents like Anthropic Claude, OpenAI GPT-5, Google Gemini, AWS Bedrock, Azure OpenAI. The session teaches sellers to qualify against the three-buyer reality (Head of AI Engineering, CFO, CISO), run a structured discovery on token economics + frontier benchmarks + compliance, demo against the customer's actual eval set, and trap-set the multi-year renewal at month 12.
Built on MEDDPICC, Force Management's Command of the Message, and Andy Paul's "Sell Without Selling Out" discovery cadence.
Section 1 — Why LLM API Selling Is Different (5 min)
LLM API is not classic SaaS — token economics, frontier benchmarks, and compliance posture all gate every deal. The Head of AI Engineering is the technical buyer; CFO scrutinizes the token bill; CISO governs the compliance and data-handling posture.
Set the frame.
- Three buyers. Head of AI Engineering picks; CFO funds; CISO governs.
- Frontier benchmarks open inbound. SWE-Bench, GPQA, Chatbot Arena.
- Caching is the margin lever. 40–60% input-cost reduction.
- Compliance gates enterprise. SOC 2, HIPAA BAA, GDPR DPA, FedRAMP.
End with Mark Roberge's rule: *"Sell the eval-set win, not the marketing benchmark."*
Section 2 — The 60-Minute Discovery (15 min)
- Opening (3 min): "Walk me through your AI workloads — tokens monthly, current vendor mix, eval set."
- Token volume baseline (10 min): "What's your monthly token consumption by use case?"
- Vendor mix (10 min): "Are you multi-provider? Anthropic, OpenAI, Google, Llama?"
- Eval set maturity (10 min): "Do you have a golden eval set? How many examples?"
- Compliance posture (8 min): "SOC 2, HIPAA, GDPR, FedRAMP requirements?"
- Cache adoption (7 min): "Are you structuring prompts for cache hit rate above 50%?"
- Renewal posture (5 min): "Existing contracts and renewal dates?"
Section 3 — The POC That Wins (15 min)
Failure modes to ban. Sample-eval POCs. No cache discipline. Single-use-case POCs.
Wins to coach. Customer's own eval set ingested. Walk through Anthropic and OpenAI POC agendas — both require golden eval set first. Side-by-side benchmark scorecard. Caching coverage demo.
End with Andy Paul's rule: *"Show the customer their eval set won, not your benchmark expanded."*
Section 4 — Handling the Incumbent (10 min)
Counter-move 1 — Eval-set wedge. Ask the Head of AI: *"What's your incumbent's latest score on your golden eval set?"*
Counter-move 2 — Cache adoption wedge. Ask the CFO: *"What's your incumbent's cache hit rate? 40–60% is best-in-class."*
Counter-move 3 — Frontier benchmark wedge. *"How does your incumbent compare on SWE-Bench Verified, GPQA Diamond, Chatbot Arena Elo?"*
Show Force Management's command-of-the-message rule: *"Displace on customer's eval, not on marketing benchmarks."*
Section 5 — Pricing Conversation (10 min)
Landmine 1 — Per-token vs. Committed-use. Committed-use discounts at $1M+ annual spend.
Landmine 2 — Multi-year discount math. Three-year deals justify 12–18% discount.
Landmine 3 — The procurement-only meeting. No procurement-only rule.
Section 6 — The Trap-Set for Renewal at Month 12 (5 min)
Trap-set 1 — Cache adoption above 50% within 6 months.
Trap-set 2 — Eval-set win on weekly bake-off.
Trap-set 3 — Compliance certification verified at bind.
Trap-set 4 — Joint engineering dashboard in QBR.
Close with Jeb Blount's rule: *"The renewal is sold on day one."*
FAQ
Anthropic or OpenAI default? Anthropic for coding + safety; OpenAI for reasoning + multimodal.
Self-hosted Llama competitive? At 5B+ tokens/month with GPU capacity, yes.
Eval set size target? 150–500 examples.
Cache adoption target? 50%+.
Multi-year discount target? 15–25%.
Sources
- Anthropic — Customer Outcomes Reference
- OpenAI — Enterprise API Documentation
- Google — Gemini API Reference
- AWS — Bedrock Documentation
- Force Management — MEDDPICC Reference
- Mark Roberge — "The Sales Acceleration Formula"
- Andy Paul — "Sell Without Selling Out"
- Jeb Blount — "Fanatical Prospecting"
- Gartner — LLM API Market Tracker (2026)
- LMSys — Chatbot Arena Leaderboard