March 26, 2026

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Automotive, Mobility & Travel | Customer Experience, AI and GenAI for Customer Experience, AI & Agentic AI services, Agentic AI for Customer Experience

Transforming Iberostar’s check-in experience with AI-powered room assignment

Konecta transformed Iberostar's check-in operations by deploying an AI-powered decision engine that automates room allocations, eliminating manual staff intervention and reducing average guest wait times by 65%.

The client in short

Iberostar Hotels & Resorts is the hotel division and core business of Grupo Iberostar, a 100% family-owned Spanish multinational with 70 years of history in tourism and business roots dating back to 1877. Its portfolio includes more than 33,500 rooms across 100 four- and five-star hotels located in 14 countries, with a commitment to delivering exceptional quality while promoting a responsible tourism model focused on caring for people and the environment.

Key figures

65%

reduction in check-in wait times 

75%

reduction in staff operational workload for this duty 

Managing daily hotel reservations means juggling millions of potential room-to-guest combinations. Iberostar needed a reliable way to instantly and accurately assign short-term bookings up to 4 days out, while also tackling the harder-to-place reservations (such as those with limited gaps or no easy upgrades) up to 15 days in advance.

Relying on human effort to map out these assignments was not only a drain on resources but also inefficient, as manual planning cannot easily account for every future variable or optimization goal. The primary objective was clear: drastically reduce the human effort required while simultaneously achieving a much more precise and strategic allocation of rooms.

To solve this, Konecta implemented an AI-powered decision engine backed by digital twin simulation. Instead of relying on manual spreadsheets, optimization agents now evaluate thousands of room allocation scenarios in real time to assign the best possible room configuration.

To make this engine highly accurate and empathetic to guest needs, Konecta structured the foundational data using smart variables:

  • A distance matrix maps out room numbers, floors, and the physical distances between buildings using map coordinates.
  • A semantic comparison tool identified similar bookings to ensure that families and friends are placed in close proximity to each other.


The AI evaluates scenarios in a two-step process: first, it prioritizes keeping related guests close together by minimizing physical distance; then, using that configuration, it optimizes the entire board to actively reduce guest wait times. The system is programmed to automatically sideline mathematically impossible requests, ensuring the rest of the hotel's operations run without disruption.

By replacing manual guesswork with an automated, multi-objective model, the hotel entirely transformed its daily operations. The system now runs without staff intervention, allowing the team to dedicate their time to direct guest care rather than back-office logistics. The real-world impact was clearly demonstrated during the peak occupancy months of July and August:

  • Guest wait times were slashed by 65%
  • Families and group travelers enjoyed a better experience, with the average distance between linked bookings improving by 10%.


The shift to automated allocation drove an  improvement in overall guest experience, proving that complex data models can directly translate into warmer, more human hospitality.

Success stories