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Known as the Martech 5000 — nicknamed after the 5,000 companies that were competing in the global marketing technology space in 2017, it’s said to be the most frequently shared slide of all time. The reasons for this growth – high-velocity economics of software innovation, the migration of money from old media to new media, etc.
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Brought to you by: • Pendo —The only all-in-one product experience platform for any type of application • Vanta —Automate compliance. Previously he was an AI Product Manager at Spotify on the ML Platform team, enabling hundreds of engineers to build and ship products across the company.
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took over the company in 1952 and decided to make his mark through modern design, they’ve become the single largest design organization in the world, with over 1500 designers working in innovative products from machinelearning to cloud to file sharing. Since Thomas Watson Jr. And that’s where Arin Bhowmick comes in.
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