Call Center QA Agent – Audit Support Calls in Minutes with AI
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Listening to support calls for quality and compliance is one of the most time-consuming tasks for any QA or compliance team. At DivamTech, we built a Call Center QA Agent that automates this process with precision — without sacrificing accuracy or context.
📞 The Challenge
Manual QA takes up hundreds of hours monthly
Mistakes can expose companies to legal and customer service risks
Reviewing all calls is simply not scalable
🤖 The AI Agent Solution
The Call Center QA Agent:
Accepts audio recordings
Transcribes them into text
Analyzes the dialogue using QA and compliance rules
Outputs a report detailing compliance score and flagged moments
⚙️ How It Works
Interface: Form with file upload
LLM Used: AWS Bedrock – Claude 3.5 Sonnet
Data Source: Uploaded audio files (support calls)
Output: QA/compliance report
Time to Launch: Easy
📈 Business Impact
⏱ Cut QA analysis from 100 hours/month to 4
⚖️ Strengthens compliance coverage
🧑⚕️ Frees up human reviewers for high-level strategy and training
💼 Why DivamTech?
We engineer domain-specific AI workflows with compliance at their core. Whether it’s for healthcare, finance, or SaaS support — our agents follow the rules and scale your review process.
Want to automate compliance in your support center?
Let’s build your AI QA agent → divamtech.com/contact
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