With the development of retail business, banks generate massive voice data through channels such as phone and WeChat. The traditional quality inspection methods have exposed problems such as low execution willingness of branches, insufficient manpower at the head office, weak complex semantic recognition, high costs, and inability to empower the business. Against this backdrop, Cloopen Ai collaborated with a city commercial bank to create an intelligent quality inspection system based on large models. Through five core innovations, it comprehensively resolves the problems of traditional quality inspection in terms of coverage, accuracy, efficiency, and cost.
Innovation Point One: Multi-tenant and multi-level user capabilities, achieving data hierarchical control
The Cloopen Ai large model quality inspection system has multi-tenant isolation capabilities. It can independently divide task allocation, data storage, and report statistics dimensions based on different business scenarios such as marketing, operation, and customer service, ensuring that data from different scenarios do not interfere with each other and meeting the requirements for refined management.
At the same time, the system supports three-level user configuration of head office - jurisdiction bank - branch. Through strict permission control, it ensures that each quality inspection personnel can only view data that matches their own responsibilities (such as branch personnel can only see the quality inspection results of their own branch, and the head office can coordinate the data of the entire bank), achieving a hierarchical monitoring model of "data hierarchical visibility and management responsibility at each level", which not only ensures data security but also improves management efficiency.
Innovation Point Two: Multi-modal full coverage, completely eliminating compliance blind spots
Traditional manual quality inspection relies on sampling, with a coverage rate of ≤ 5%. Over 95% of voice data is in an unregulated state. The Cloopen Ai system breaks through channel barriers and supports unified access of data from multiple channels, achieving the collection of customer interaction information without omissions, ultimately achieving 100% full quality inspection.
Whether it is voice data from telephone marketing, text conversations from online customer service, or audio and video information from video customer service, all can be included in the quality inspection scope, completely eliminating the compliance blind spots of traditional quality inspection, ensuring that the service quality and compliance management of the entire bank have no blind spots.
Innovation Point Five: Private deployment + industry adaptation, meeting financial-level security and business requirements
Considering the sensitivity of banking data, the system supports private deployment, with all data stored on the bank's own servers, meeting the strict requirements of the banking industry for data security and privacy protection, and avoiding the risk of data leakage. Meanwhile, through domain pre-training and fine-tuning, the model is deeply adapted to the business scenarios of city commercial banks: special optimizations are carried out for bank marketing script norms, compliance clauses (such as anti-money laundering reminders), and key nodes of business processes (such as core issues of account opening follow-up), ensuring that the quality inspection rules are highly matched with the actual business of banks, and avoiding the problem of "general model not adapting well to local conditions".