By Raffaello Papadopoullos, Digital Marketing Coordinator at Coginov
The financial savings of implementing a machine learning-based system for identifying personal information in electronic documents can vary depending on several factors. Here are some potential areas where savings can be realized:
It’s important to note that the financial savings will depend on factors such as the size of the organization, the volume of documents to process, the complexity of personal information identification, the quality of the machine learning model, and the extent of existing manual processes. Conducting a cost-benefit analysis specific to the organization’s needs and context will provide a more accurate estimation of the financial savings achievable through the implementation of a machine learning-based system for identifying personal information in electronic documents.
We create innovative solutions.
COGINOV is recognized as a world leader in semantic technologies and information management. We are a Canadian software company offering our customers innovative solutions for managing structured and unstructured information. Our head office is based in Montreal.
Coginov’s Qore platform technology enhances the information value chain, transforming unstructured content into highly contextualized, accessible and valuable information. Coginov’s solutions enable you to capture, analyze, engage, automate and manage your information assets, with unrivalled accuracy and efficiency.
Discover our solutions QoreAudit, QoreUltima and QoreMail
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