🤖 AI

Cascading AI

Make the bank magical

#Artificial Intelligence
#automation
#customer service
#bank
Cascading AI

Product Details

Cascading AI is committed to unlocking $1 trillion in advanced artificial intelligence value for global banks. Our products can automate banks' manual processes, including loan applications, account opening, KYC/KYB, etc. It can contact customers by text, email or phone, collect documents such as pay stubs, bank statements, tax returns, good credit certificates, etc., and analyze these documents and follow up with customers to solve problems, improving conversion rates and saving time communicating with customers compared to traditional workflows. In addition, our products can be used for customer service, including information requests, card locks, travel notifications, etc., increasing customer satisfaction and reducing customer support costs by clustering customer complaints, providing appropriate information and generating responses to be sent. In addition, our products can also be used for back-end automation, including exception handling, securities settlement, etc., by navigating the core banking system and analyzing non-STP exceptions that cannot be resolved through the rules engine, improving STP rates and reducing back-end manual workload. We work with the world's leading providers of core banking systems and technology, saving months of work from building custom interfaces and infrastructure. We're backed by the best in the industry and backed by Stanford engineering talent, with access to reliable funding and strong connections to the heart of Silicon Valley. We provide more than 100 artificial intelligence use cases for banks, covering the front office, middle office and back office. Feel free to join our waiting list to learn more about the possibilities.

Main Features

1
Automate manual processes in banks
2
Document collection
3
customer service
4
Backend automation

Target Users

bank

Quick Access

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Categories

🤖 AI
› customer service
› finance

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