Artificial intelligence (AI) has made big promises to hospitality. From automated guest messaging to forecasting demand, nearly every vendor today touts some kind of “AI feature.” Yet, most of these capabilities remain surface-level. Truly autonomous AI agents—the kind that can understand, plan and take action amid the complexities of day-to-day hotel operations—have been held back by a fundamental problem: connectivity.
No matter how powerful an AI model is, it cannot act if it cannot access and understand other tools and resources. Until now, connecting AI with fragmented hotel tech stacks has required custom integrations for every property, vendor and use case. That makes automation slow, expensive and difficult to scale.
The Model Context Protocol (MCP) changes this equation. MCP is a new standard built for AI agents, allowing them to connect with other tools and resources in a consistent way. Think of it like a “universal travel adapter” for agentic AI technology. With MCP, agents can seamlessly connect to property management systems (PMSs), customer relationship management systems (CRMs), payments, housekeeping, maintenance and others—without weeks of bespoke coding each time.
MCP is the breakthrough that turns AI agents from concept into practical, daily operations.
Why is MCP the missing link
Hotels today rely on dozens of specialized systems: reservations, payments, guest communications, housekeeping, maintenance, revenue optimization, restaurant point of sale and more. Each typically connects through separate APIs, creating a sprawling web of one-off integrations.
Subscribe to our newsletter below
This setup creates two problems. First is staff inefficiency. Employees still jump between multiple systems to complete a task. The second is vendor overhead. Every supplier must build and maintain separate connections for every system pairing.
MCP answers both problems. By having AI agents and tools all connect to an MCP server, the agents discover and orchestrate workflows across all systems in the network. Instead of a maze of disconnected endpoints, hotels get a unified ecosystem where AI can act to its fullest potential.
To illustrate: Without MCP, asking an AI to “move the Friday booking to Saturday and add airport pickup” would require custom connections across PMS, CRM and transport vendors. With MCP, the request chains seamlessly across systems in seconds, all in one workflow. MCP unlocks scale and reliability that custom-built integrations cannot.
From AI hype to reality
Where this really matters is in daily hotel operations. With MCP, AI agents can execute entire multi-step workflows much faster. For example, with MCP, hotels can connect to generative AI and automate daily summaries. Each morning, on-site teams receive AI-generated performance briefs covering revenue, arrivals and departures. Time previously spent compiling reports is now redirected to serving guests.
The same capability extends to revenue optimization. With AI agents able to access multiple tools and resources, they can analyze historical booking data and surface behavioral patterns to spot new revenue opportunities.
Accounts receivable is yet another powerful example. Traditionally, staff must pull outstanding accounts, categorize them, generate reports and send follow-ups—these are scattered across different systems. With MCP, an AI agent can manage this entire workflow—retrieving balances from the PMS, categorizing by aging bucket, generating and distributing reports, triggering follow-up actions and even prompting staff for edge-case decisions—all without custom integrations.
What hoteliers should do now
- Agentic AI in hospitality has been here for some time, but capturing its full value requires preparation. Here are some practical steps hoteliers can take today:
- Audit for agent-readiness: List the top five workflows that consume the most staff time (e.g., changes, refunds, invoicing, group prep, maintenance). Rank them by frequency and impact.
- Ask your vendors about MCP: Demand clarity from PMS, CRM, payments and housekeeping providers: Do they expose capabilities via MCP, or have it on their roadmap?
- Start small but end-to-end: Choose one multi-system workflow to experiment with, such as late checkout. Define success metrics, for example, minutes saved or errors avoided.
- Connect through an MCP server: Expose capabilities once; let agents discover and orchestrate them automatically.
- Measure and expand: Track results with a scorecard—time saved, tasks automated per week, guest response time—then gradually expand to other workflows.
Hotels at the heart of the agentic AI ecosystem
Just as cloud technology once reshaped hospitality, MCP is set to redefine the industry again. It is the bridge between the promise of agentic AI and operational reality—enabling agents to work across systems, at scale and in real time without the integration barriers that hold them back today.
The industry is at an inflection point around agentic AI. There is still time to explore, to run pilots and to prepare systems, but the window for gaining a first-mover advantage is gradually narrowing. MCP is giving industry players a chance not just to adopt the next wave of automation, but to define it. Those who start now get to set the standard for how agentic AI transforms hospitality.
About the author…
