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How Toronto’s airport modernized its IT operations by changing the vendor relationship

CIO Business Intelligence

It’s no secret that travelers around the world have been demanding more seamless, convenient, and personalized experiences. Consequently, airports are continually under pressure to adapt to the changing industry and meet the needs of the flying public. It’s also seen multiple improvements in its help-desk operations:

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Building a Career in Tech: TDI 38

Data Science 101

Threads Dev Interviews I am finding developers on Threads and interviewing them, right on Threads. You are welcome to follow along and let me know on Threads if you would like to be interviewed. Note: The views in these interviews are personal views and do not represent the interviewee’s employer.

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Five Startup Apps with Embedded Use Cases We Love

Sisense

According to Constellation Research in a recent report commissioned by Sisense, “innovative organizations across every industry are increasingly recognizing the value of embedded analytics.” For startup companies that make apps, nothing is more important than the ability to scale for rapid growth. trillion minutes in their apps during 2020.

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Themes and Conferences per Pacoid, Episode 12

Domino Data Lab

First and foremost: there’s substantial overlap between what the scientific community is working toward for scholarly infrastructure and some of the current needs of data governance in industry. Introduction. Welcome back to our monthly burst of themespotting and conference summaries. In mid-July I got to attend Sci Foo , held at Google X.

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Data Science at The New York Times

Domino Data Lab

Wiggins advocated that data scientists find problems that impact the business; re-frame the problem as a machine learning (ML) task; execute on the ML task; and communicate the results back to the business in an impactful way. He covered examples of how his team addressed business problems with descriptive, predictive, and prescriptive ML solutions.