– March 19th, 2026 –
Modern Lakehouse for AI, Without the Lock‑In
Most enterprises don’t have AI‑ready data, while AI demand and cloud costs explode. In this webinar, Zetaris and Hitachi Vantara show you how a modern lakehouse can unlock more AI revenue from existing accounts, cut platform spend, and keep sensitive data under control.
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Modern Lakehouse for AI, Without the Lock‑In
Webinar details
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Virtual webinar for Sales Leaders
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Date: March 19, 2026
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Time: 10:30am
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Duration: 45 minutes + live Q&A
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Meet the Zetaris Team
Sanny You
VP BUSINESS DEVELOPMENT - EU
Sanny Y., Vice President of Business Development at Zetaris, drives growth for the networked data platform with over 7 years in data, AI, and tech projects. A certified Scrum Master and Program Director, she excels in cybersecurity (ISO27001, SOC2), digital transformation, and delivering customer solutions via Agile and Waterfall.
Darl Alfonso
Market Lead
Darl Alfonso helps global enterprises unlock the value of AI‑ready data as part of the Market Development team at Zetaris, the Modern Lakehouse for AI. Drawing on experience in executive leadership, sales, and community building, Darl connects complex data and AI capabilities with real‑world business outcomes and revenue growth.
Chris Drieberg
VP Sales - ANZ
Chris Drieberg, based in Greater Melbourne, is a data and AI leader with deep expertise in modern data platforms. He champions efficient data strategies that cut waste—observing that 40% of data costs are avoidable—and helps enterprises optimize for AI without unnecessary movement or complexity.
Robert De Cesaris
VP Sales - ANZ
Robert DeCesare, a seasoned data infrastructure executive with decades in enterprise storage and analytics, drives strategic partnerships at Hitachi Vantara. Specializing in AI‑driven modernization and lakehouse architectures, he helps organizations repatriate workloads, optimize costs, and scale data for high‑value AI outcomes.

