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Enter Gen AI, a transformative force reshaping digital experience analytics (DXA). Gen AI as a catalyst for actionable insights One of the biggest challenges in digital analytics isn’t just understanding what’s happening, but why it’s happening—and doing so at scale, and quickly. That’s where Gen AI comes in.
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Speaker: Miles Robinson, Agile and Management Consultant, Motivational Speaker
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Speaker: Ian Thompson, Head of Business Intelligence at King, and Zara Wells, Strategic Customer Success Manager at Looker
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Speaker: Dean Yao, Sr. Director of Product Marketing, Logi Analytics
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