
Building AI Employees for Hospitality: How AITropos Takes Orders Where Customers Already Are
Guests
- Santi Marchiori, CEO, AITropos
- Juan Haedo, CTO, AITropos
You'll hear how they
- Spent two years exploring hundreds of startup ideas before finding the specific niche of AI-powered order taking in hospitality
- Went through three product iterations — hardware for waiters, a waiter app, and finally a customer-facing WhatsApp agent — before landing on the right form factor
- Identified order item identification accuracy as their single most important KPI
- Chose a tools-based agent architecture over MCP or pipelines to hit real-time response speed requirements
- Built a parallelized pipeline that searches for multiple products simultaneously and pre-fetches product context before the agent even calls a tool
- Use smaller, fast sub-agents to build an "immediate system prompt" that injects relevant data into each turn without extra tool calls
- Test with thousands of agent-simulated customer conversations run overnight before deploying to new venues
- Reduced new customer onboarding from three months to a few weeks — and continue to shrink it as they build domain templates
Resources & Links
- AITropos
Chapters:
00:00 Meet the Founders
00:59 What Tropos Builds
01:51 AI vs Human Touch
06:17 Restaurant Use Cases
08:16 Why Hospitality
10:47 Finding the Wedge
16:00 Early Prototypes
16:46 Hard Parts of Ordering
18:03 Speed and Channels
21:15 Iteration and Model Jumps
30:50 Customer Order Flow
35:48 Menu Discovery Question
36:07 Menus Inside WhatsApp
36:50 Finding the Chat Entry
37:37 Why Text Ordering Wins
38:30 Under the Hood Pipeline
40:54 Tools Over Workflows
45:05 Tooling and Prompt Composer
49:29 Preloading Context Fast
54:02 Founder Learning Mindset
57:21 Evaluating Order Accuracy
01:00:03 Testing and Human Takeover
01:03:56 Onboarding and Scaling Up
01:06:10 Whats Next and Wrap
Information
- Show
- FrequencyUpdated Weekly
- PublishedApril 30, 2026 at 8:00 AM UTC
- Length1h 8m
- Episode24
- RatingClean