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Intelinair Welcomes Jake Juarez as Product Leader

Intelinair is pleased to welcome Jake Juarez as Product Leader, based in Indianapolis.

Jake brings extensive experience building customer-focused digital products across eCommerce, SaaS platforms, and agriculture technology. He joins Intelinair from Kroger, where he served as a Senior Product Manager leading product strategy, roadmap, and delivery for an eCommerce customer experience platform. In that role, Jake contributed to large-scale initiatives and worked across teams to improve conversion, profitability, and customer outcomes.

Prior to Kroger, Jake held product leadership roles at Greenstone Systems, PayIt, and Farmobile, with a consistent focus on turning complex customer problems into high-value, scalable solutions. His background also includes hands-on experience through earlier roles at Nutrien, where he built a strong foundation in agronomy.

“Jake has a customer-first mindset and a proven ability to align teams around priorities that drive real results,” said Tim Hassinger, CEO of Intelinair. “He brings strong product leadership and a deep appreciation for the challenges our customers face. We’re excited to have him join the team as we continue to expand our impact.”

Jake will help guide Intelinair’s product strategy and execution, working across the organization to deliver measurable value for customers and advance data-driven management decision-making for growers and ag retailers.

“I’m thrilled to join Intelinair at such a pivotal moment in its growth,” said Jake. “With experience spanning both agriculture and technology, I’m excited to collaborate with this talented team to build impactful products that solve meaningful challenges and deliver an exceptional customer experience.”

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