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Artificialintelligence (AI) has revolutionized various industries, including financial services and lending. In this article, we will explore how AI processes unstructured data, its applications in document sorting and lending, the benefits it offers, and the future outlook for Document AI in loan origination and servicing processes.
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Analyze and identify top customer complaints and sentiments and recurring patterns, automatically using machinelearning and AI-enabled text and sentiment analytics. Thats why you can seamlessly integrate any kind of platform that you use every day such as Outlook, Salesforce, Hubspot, Zendesk, Zapier, etc with SurveySensum.
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