Home / Portfolio / Case Study / Automation /
E-Commerce
Australia
Non-Disclosable
Customer support teams generate huge volumes of call data every day, but most businesses store recordings without structured insights. DatumQuest built an AI-powered system that automatically analyzes customer calls, extracts key insights, and enables teams to search conversations using natural language queries.
AI-powered automation that analyzes customer calls, insights, and enables intelligent search across conversations in real time.
Significantly reduced manual call review time for support teams.
Enabled managers to instantly locate specific call types and issues.
Clear visibility into delivery issues and compatibility queries.
Enhanced customer service quality through better insights.
Supported more effective training and coaching for support teams.
Provided valuable product feedback and issue analysis.
Queries related to product compatibility, order tracking, delivery delays, and warranty requests
Call recordings were stored but not searchable or analyzable
Hundreds of customer support calls received daily related to orders, delivery, and product compatibility.
Managers could not easily identify recurring issues or escalations
Developed an automated workflow to process and analyze customer call recordings.
Used AI/NLP models to extract meaningful insights from conversations.
Stored processed data in a vector database for intelligent search.
Enabled semantic search to find calls based on meaning, not just keywords.
At the beginning of the project, we analyzed the client’s customer support operations and call management workflow. The business handled a high volume of calls but lacked a system to analyze conversations and identify recurring issues. This led us to design an AI-powered solution to automatically process call data and generate searchable insights.
In this phase, we established the infrastructure required to capture, store, and process customer call recordings. The system was designed to automatically collect call transcripts and store them securely in cloud storage so they could be analyzed by AI models. This step ensured that all call data could be centralized and prepared for automated processing.
During this phase, we developed the AI-powered processing system that analyzes customer conversations and extracts meaningful insights. Using Natural Language Processing models, the system identifies sentiment, detects issue categories, and extracts product mentions from call transcripts
To make call insights easily accessible, we implemented a vector database that enables semantic search capabilities. This allows managers and support teams to search conversations using natural language queries rather than keywords. The system connects processed call data with internal tools and analytics platforms.
In the final stage, the system was tested using real customer call data to ensure accuracy, performance, and reliability. The workflow was optimized to automatically process new calls, generate insights, and provide searchable results for support teams. After testing, the system was deployed into production
Datumquest specializes in AI, automation, data science, and analytics, helping businesses unlock data-driven insights and streamline operations.
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