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Customer preference for digital channels has increased usage of mobile, website and email for customer service requests and complaints. Typically 60-70% requests are covered by the top 5 request categories. However expensive and scarce service agent bandwidth is wasted in reviewing and responding to each individual email manually.

Multi-channel Response Automation (mRA) uses cognitive capabilities of Natural Language Processing to identify the customer service intent, extract key elements (like Account #, Name, Email Address, Phone Number) as well as understand customer sentiment. 

The extracted information is then utilized to prioritize requests based on category and sentiment. The solution also integrates directly with customer relation management (CRM) system to ensure that all requests are tagged in CRM and tracked to closure. 

Additionally, rules can be configured for automated response to frequent service categories with instructions to resolve the problem with self-help tools with a specific context of the service request type.

By close looping the entire process based on Cognitive insights from unstructured data, your business can achieve complete Cognitive Process Automation

Key Features

  • Integration with email data and data from other digital channels like Twitter, Website as well text notes in CRM system
  • Custom Model to extract business specific entities (e.g. Account Number, Make/Model, Claim Number)
  • Ability to extract intent of communication (e.g. Request for a document copy, Changes in Account, Complaint, Escalation etc.)
  • Ability to extract key elements like Name, Email, Phone Number
  • Extract customer sentiment, emotions from
  • Perform analysis of service categories for root cause analysis, identify peak requests and capacity planning
  • Analyse product / service with maximum requests and / or complaints and optimize for better customer experience
  • Integration with customer facing as well as downstream systems for end-to-end automation
  • Ability to train the machine learning model to understand business context and terms
  • Real-time integration to close loop the entire process flow

What benefit will it provide?

Better Customer Experience by enabling quicker response time. Productivity gains for service agents. Reduced overall servicing cost.

Why is it required?

Customer Service teams have limited capacity and digital service interactions are increasing by the day. Manual identification, classification and response to all interactions is inefficient, time consuming and error-prone. It also leads to poor customer experience.

What does it do?

The solution extracts intents from unstructured data communication for service requests like email, customer service notes, social channel messages and converts the intents into actions.