Ryan MacLagan has been appointed Vice President of Business Development at LodgIQ™
MacLagan's track record includes global sales leadership, product development, and account management across dynamic sectors. At LodgIQ, he will focus on cultivating strategic partnerships, expanding the company's footprint in key markets, and aligning commercial strategies with LodgIQ's vision of modernizing revenue intelligence for hotels. His extensive background in both traditional hospitality and the parking vertical positions him to identify new opportunities for growth and collaboration.
"Joining LodgIQ is an exciting opportunity to help redefine how the industry approaches revenue optimization and look towards the broader scope of commercial strategy,"
said Ryan MacLagan. "I'm looking forward to working with hoteliers to bring modern and AI-based revenue management solutions that grow revenue and free up time."
MacLagan's appointment signals LodgIQ's emphasis on executive leadership that understands both the operational realities and the technology challenges facing revenue teams today. At IDeaS, he played a critical role in scaling revenue solutions for global clients. This perspective will now support LodgIQ's mission to provide predictive, data-driven tools for modern hoteliers.
"Ryan's depth of industry knowledge and his deep understanding of the revenue management industry and how to help hotels generate more revenue makes him a valuable asset to LodgIQ and our industry," said Vincent Ramelli, CEO of LodgIQ. "His leadership will be instrumental in accelerating our commercial growth and strengthening client relationships."
With this leadership addition, LodgIQ continues to strengthen its executive team as part of its broader strategy to enhance its revenue optimization platform. The company remains focused on developing flexible, intelligent solutions that empower hoteliers to maximize performance across all revenue streams.
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