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As we looked to develop our APIs we considered the huge number of jobs that people use Intercom for , including jobs we might not yet be able to predict, and concluded that we should build a very versatile and intuitive search function into the API. We developed a set of principles for our APIs, and how we want them to behave.
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Speaker: Edie Kirkman - VP, Digital at Focus Brands
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Strategic Partnerships Toast has developed robust partnerships with companies like US Foods, which provide valuable introductions and help sales reps get in the door with potential customers. This emphasis on developing talent rather than individual deal pursuit creates sustainable growth.
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They develop strategies to reduce customer churn (the rate at which customers stop using a service) and increase customer loyalty. They develop strategies to reduce customer churn (the rate at which customers stop using a service) and increase customer loyalty. What does a retention manager do?
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Tableau for advanced dataanalysis Geographic visualization on Tableau. When it comes to advanced data analytics and visualization platforms, Tableau is one of the market leaders. The no-code user tracking software caters to a broad spectrum of users, from marketers and product developers to data scientists.
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Product insights : Feedback and data specific to product usage and perception, guiding development and innovation. Marketing insights : Data on the effectiveness of marketing efforts used to optimize reach, engagement, and conversions. Once you have the data, visualize it to make it easier to find trends and patterns.
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