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Automation that stands the test of time will be software defined. At DevCon 2, New Product Development Engineer Ed Barmettler shared how AT&T leveraged Palantir AIP to transform unstructured data from 70k support tickets and years of institutional knowledge into searchable knowledge-based articles.

25,314 views • 1 year ago •via X (Twitter)

4 Comments

Ben Rainville's profile picture
Ben Rainville1 year ago

@ATT Palantir is doing everything right to have a lasting long future of dominance in the industry.

NICE's profile picture
NICE1 year ago

Stay competitive by balancing cutting-edge AI with automation tools. Forrester shows how.

Jeremy Stankiewicz's profile picture
Jeremy Stankiewicz1 year ago

@ATT 👊🏻

Truth in Accounting's profile picture
Truth in Accounting1 year ago

@ATT This type of innovation is coming to government financial data!

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