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Bandit ML helps e-commerce businesses present the most effective offer to each shopper

TechCrunch

The idea, as he explained via email, is that one customer might be more excited about a $5 discount, while another might be more effectively enticed by free shipping, and a third might be completely uninterested because they just made a large purchase. The startup was part of the summer 2020 class at accelerator Y Combinator.

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Automated Claims Processing: Using RPA and Machine Learning to Manage Insurance Claims

Altexsoft

Customer satisfaction score (CSAT) and Net Promoter Score (NPS) are the most important metrics for any insurance company. Customer satisfaction score (CSAT) and Net Promoter Score (NPS) are the most important metrics for any insurance company. The insurance industry is notoriously bad at customer experience.

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Three surveys of AI adoption reveal key advice from more mature practices

O'Reilly Media - Ideas

An overview of emerging trends, known hurdles, and best practices in artificial intelligence. That was the third of three industry surveys conducted in 2018 to probe trends in artificial intelligence (AI), big data, and cloud adoption. These points would have been out of scope for any of the individual reports.

Survey 94
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How to Successfully Implement HR Analytics and People Analytics in a Company

Altexsoft

The day may come when a seasoned professional tells you or your colleague about their plan to leave the company in a month. This situation isn’t extraordinary: managers and HR specialists of any organization have been there. What’s clear is that employees and managers will have work to do. The problem can be viewed on a greater scale.

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Automating the Automators: Shift Change in the Robot Factory

O'Reilly Media - Ideas

” I, thankfully, learned this early in my career, at a time when I could still refer to myself as a software developer. Building Models. A common task for a data scientist is to build a predictive model. You might say that the outcome of this exercise is a performant predictive model. Pretty simple.