How this travel company’s AI rollout drove a 73% satisfaction boost: A 5-step playbook for your business


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ZDNET’s key takeaways

  • Agentic AI is often more about talk than production services.
  • Smart professionals focus on use cases and supporting tech.
  • They test processes, refine the approach, and seek new opportunities.

Conversations with digital and business leaders about agentic AI often revolve around a similar sentiment: we’ve explored agents, but there’s nothing in production yet.

But while everyone talks about AI experimentation, no business can afford to run endless pilots without creating business value. And with experts suggesting professionals who fail to exploit AI risk being left behind, there’s an imperative to deploy successful agents sooner rather than later.

Also: How to build better AI agents for your business – without creating trust issues

At online travel specialist Booking.com, Huy Dao, director of data and machine learning platform, is charged with delivering value from AI, including agentic services. He has produced results by taking a structured approach to service rollout, creating targeted solutions to the challenges customers face today and tomorrow.

Dao referred to this approach in a conversation with ZDNET as the “connected trip,” in which Booking.com attempts to ensure all elements of a customer’s trip, whether flights, hotels, or attractions, are considered as an integrated experience.

Also: Worried AI agents will replace you? 5 ways you can turn anxiety into action at work

Creating the connected trip means working across disparate information. The data stack Dao’s team has created has allowed Booking.com to develop new AI-enabled services, including the firm’s first agentic application, a partner-to-guest system that facilitates communication between customers and hotel partners.

Here’s what he has learned so far, with five key lessons for other professionals who want to turn agentic AI pilots into brilliant production services.

1. Identify a business challenge

Dao said the key to exploiting emerging technology is finding the right use. While some professionals remain unsure about the potential of AI, he said companies can use agentic technologies to overcome intractable challenges.

“In my opinion, AI is not like a flavor of the day, or even the year — it is the real thing,” he said. “I see that every day at work how AI can impact the way that we do things.”

Also: 5 ways to use AI when your budget is tight

At Booking.com, Dao and his team identified that timely responses to customer inquiries were a key challenge for hotel partners. They recognized that agentic technology could help hotels reply to questions faster and more accurately.

“Before we rolled out the agentic solutions, whenever a customer wanted to connect to the hotel partner — for example, if you wanted to check if the hotel had a pool, or if you wanted to arrive one or two hours later — you’d contact the partner and say, ‘Hey, can I have this information?'” he said.

“However, when the hotel staff replied, they’d often need to do more work to get the response right. Also, sometimes they were unavailable when the customer asked a question. So, it could take a few hours or more before the customer receives an answer.”

2. Build a data platform

Dao said the data stack his team has created allows Booking.com to accelerate the adoption of AI and machine-learning technologies for use cases, such as the one outlined above.

Booking.com

Dao: “AI is not like a flavor of the day, or even the year — it is the real thing.”

Booking.com

The Snowflake data platform forms part of an integrated stack that includes ThoughtSpot for analytics, Astronomer and Airflow for orchestration, Immuta for access control, Arize for machine-learning observability, and AWS for cloud computing. The data team also tests and uses AI models from major providers, such as OpenAI, Amazon Bedrock, and Google Gemini.

Also: Why enterprise AI agents could become the ultimate insider threat

Booking.com’s bespoke partner-to-guest communication system was developed internally in Python, and the data team used LangGraph, an open-source agentic framework, to help the agent reason about guest inquiries.

Dao said effective agentic systems aren’t just about backend systems. His team also thought carefully about the user interface.

“We want to integrate technologies or AI capabilities wherever it makes sense to our users,” he said.

“And in this use case, our partners already had a web-based portal to view their messages, so it was clear we should integrate the agent right there to help them.”

3. Test the use case carefully

With a business challenge identified and the technology platform perfected, Dao and his team focused on implementation, which occurred in two phases.

In the first phase, they developed a trusted assistant to help hotel partners deal with customer questions.

The result was an agentic technology known as Smart Messenger, which gathers partner, property, and reservation information to support hotel staff communicating with guests.

Also: 90% of AI projects fail – here are 3 ways to ensure yours doesn’t

In this initial phase of agentic service, Dao said the human is still very much in the loop.

“We want to make sure the partner is the one who has the final say on how they want to respond to customers,” he said.

“But we give them an assistant, so that instead of taking five minutes to respond, it might be just a one-second click if they are happy with what the agent provides as an answer.”

4. Delegate as confidence rises

Over time, Dao said confident hotel partners can start delegating more work to the agent — and this stage represents the second phase of the agentic implementation.

Here, Booking.com’s Auto-Reply tool allows hotel partners to define custom replies and create instant responses to guest questions, such as whether a hotel has on-site parking.

“This phase is where the agent says, ‘OK, if you trust me enough, I can act for you,'” said Dao.

“In this use case, the partner might be sleeping when the customer asks a question, because it’s late at night. However, the agent can respond on behalf of the partner — and that approach helps in a few ways.”

Also: 5 ways you can stop testing AI and start scaling it responsibly

Booking.com reported that early experiments yielded a 73% increase in partner satisfaction compared to previous messaging tools. Dao said the agent continuously learns from past interactions and user feedback, adapting its responses for accuracy and relevance.

“Now, with the agent, we measure the answer against everything we do; we experiment with it, and then we compare the improvement in satisfaction,” he said.

“Because the customer gets the answers they need, they don’t have to contact customer support, and that success also reduces support costs.”

5. Look for more opportunities

Dao said agentic exploitation must be tied to the individual use case. As his team refines the customer experience, they continue to hone the platform, creating a foundation to support other agentic explorations.

“We didn’t want to build the platform for the platform’s sake,” he said. “When we built the platform, we had the user in mind. We made sure that we picked the right agentic technology.”

Also: Is Google’s new $8 AI Plus plan worth it? How it compares to the $20 Pro subscription

Dao said his team has learned a lot from the agentic development process. He advised other professionals to take heed of these lessons.

“When you do your testing, you might think the agentic system is good,” he said. “But when you go into production, things like latency can become a problem that you need to deal with. Then, you must simplify your architecture and platform.”

Over the next 24 months, Dao expects further pioneering developments at Booking.com. “You should expect that, as a company, we will invest heavily in generative and agentic AI, not for the fun of it, but to increase the user experience,” he said.

“People are looking for a ChatGPT-like experience now, and we want to have a similar experience, or even better, when it comes to the travel experience on our sites.”





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If Game Two of their first-round playoff series with the Denver Nuggets saved the 2025-26 season for the Minnesota Timberwolves, Game Three showed why it should be saved. 

The Timberwolves were a different beast while decisively thumping the Nuggets, 113-96 Thursday night at Target Center, in a game that wasn’t nearly that close. These Wolves were the mythical creature we’d heard about in preseason lore, purposefully locked and loaded to be both marauding and staunch. They owned both ends of the court, gleefully transferring back and forth from irresistible force to immovable object. 

A quartet of Timberwolves deserve special mention, but it begins with Jaden McDaniels. After his team had toppled Denver to even the series at a game apiece Monday night, McDaniels used the sizable chip on his shoulder to etch some graffiti into the public discourse, casually castigating the most prominent Nuggets players by name as “bad defenders” in a matter-of-fact manner that had the media compelling him to confirm what he had just said. 

Trash talk is fleetingly fungible in the jaundiced social environment of 2026, functioning more like coupons than currency in that it needs to be rapidly leveraged before its expiration date. The common perception naturally was that McDaniels was calling out the Nuggets. But in a more subtle, profound way, he was also putting his teammates on notice. 

All season long the Timberwolves have procrastinated on their full potential, frequently demonstrating that their preseason talk about maturity and commitment was cheap. By contrast, those words uttered by McDaniels were expensive. He had just picked a fight with the opponent, leaving open the question of how many of his teammates would join him in the fray. 

That he would lead the charge was established early, after the Timberwolves’ top two scorers, Anthony Edwards and Julius Randle, had each missed a pair of open looks against Denver’s bad defenders in the game’s first 90 seconds.  

With the game still scoreless, the NBA’s best pick-and-roll combo, Nikola Jokic and Jamal Murray, were clustered around the foul line with Minnesota’s best defenders, McDaniels and Rudy Gobert. As they jammed up Jokic, McDaniels picked the ball loose and started sprint-dribbling the other way. To no one’s surprise, Donte “Ragu” DiVincenzo was also on his horse in transition, receiving a pass from McDaniels and then lobbing it back for a Jaden slam against a hapless Murray and Murray’s late-arriving teammate, Cam Johnson, who committed the foul that allowed McDaniels to finish with the “and-1” free throw. 

On the Timberwolves next offensive possession, McDaniels muscled his way to two offensive rebounds, feeding Ragu off the first one for a missed three-pointer, which he corralled for the second one and executed the putback in traffic. It was McDaniels 5, Nuggets 0, setting the tone for a game in which not only did the Wolves never trail, but never let the lead go under double digits after McDaniels made a consecutive pair of driving layups eight minutes into the game. 

“Spectacular. I thought his activity offensively in the first quarter was outstanding,” said Wolves coach Chris Finch after the game. “He was inspirational.” 

Among the most inspired were McDaniels fellow wing players, Ragu and Ayo Dosunmu. Ragu is exactly the kind of player who will have your back in a squabble, and his galvanized performance seemed borne of satisfaction that someone else had clarified the mission. As usual, the Timberwolves were at their best with him on the court: +20 in the 32:54 he played, -3 in the 15:06 he sat. 

“He makes so many hustle plays, momentum plays, different styles of plays.” Finch raved. “He’ll make a shot, get a transition bucket, he’ll rebound, get a steal, blow something up. So many different plays. He’s just a basketball player.”

Related: How the Timberwolves sparked a season-saving Game 2 comeback over the Nuggets in Denver

Then there was Ayo, whose fearless, blazing, bee-lines for the bucket were quicksilver kryptonite for a Nuggets defense that is neither swift nor rugged. “I’ve been waiting for him to wake up a little bit in this series,” Finch accurately observed. “The downhill mindset that he played with all season for us was back.”

Back with the sort of multipurpose propulsion that leaves witnesses with giddy whiplash. Ayo led the team with 25 points and 9 assists in 32 minutes of time-lapse hoops, the lone blemish being three clanks from long range. Why chuck treys when you can so easily undress players in the paint? Ayo was 10-for-12 on two-pointers and none of those dozen shots came from anywhere but beneath the rim. Five of his nine dimes likewise yielded layups or dunks, which means he personally accounted for 30 of the 68 points in the paint by the Timberwolves on Thursday, doubling up the Nuggets’ 34.

Which brings us to the non-wing in Game 3’s ring of honor, Rudy Gobert. For the third straight game, Gobert blunted the supposed advantage Denver had with the magical playmaker Nikola Jokic at the controls. Suffice to say that in the last five quarters, Jokic has shot 8-for-33 from the floor. If that continues, the Nuggets are toast in this series. 

When I asked Finch after the game if the herculean job Gobert was doing on Jokic made planning his defense simpler and better thus far, he replied, “Rudy is making all of us look good right now with his defense.” 

Amen.

If there is an asterisk on this game, it would be the absence of Denver’s brutishly versatile power forward Aaron Gordon. Nuggets coach David Adelman should be given a lot of credit for his honesty and transparency in dealing with the media during his first full season at the helm, but it came back to bite him and his team during the pregame presser, when he was clearly rattled and dejected by the sudden unavailability of Gordon, whose playing status went to “probable” to “out” in a period of a few hours due to a chronic calf strain. 

Gordon is far and away his team’s best defender, making the timing of his injury especially troublesome in the wake of McDaniels laying down his marker. Rattled is a good way to describe the entire team’s performance in the first quarter, an emotional wounding that needs to heal as fast as Gordon’s body if the Nuggets are going to be competitive in a series that had dramatically been flipped on its head over the past three days. 

That the Timberwolves played with such dominance despite mediocre outings from Ant and Randle would be a good thing for both of those current cornerstones to keep in mind. Ant was beset by foul trouble and Randle had a solid second quarter, but it stood out that neither player fully embraced what so often works on offense when the Wolves are at their best: Push the pace, move the ball, move without the ball, and make quick decisions. Ant and Randle can still be first among equals and blend into that catechism if they stay attuned to the possibilities of a greater good, one that all of sudden doesn’t have to end with them being postseason fodder for the Spurs or the Thunder. 

Not when you’ve got three wings at a collective peak, with a chaser of Rudy semi-clowning the Joker. 



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