Improving Popular Voice AI Performance with Annotation Analytics Built on AWS QuickSight

Client Overview

A leading U.S.-based data science company focused on advancing multilingual AI systems, our client is one of the top partners powering the world’s most popular virtual assistants. As a top AI data localization expert, they are responsible for training AI to understand and respond effectively across 200+ languages.

Client’s Objective & Challenges

To enhance the quality and reliability of conversational AI responses, the client needed to improve the efficiency and accuracy of their annotation workflows. Key challenges included:

  • Massive annotation volumes in over 200 languages with tight deadlines
  • Dependency on static spreadsheets for reporting, offering limited insights
  • Lack of visibility into team productivity and project risks
  • Inability to predict or course-correct missed annotation deadlines
  • Manual workflows that slowed down QA and review processes

The need to transform these legacy processes into scalable, intelligent workflows was critical for ensuring AI systems delivered contextually accurate and timely responses.

Industry​

Industry​

Hi-Tech

Solution

Solution

Data & Analytics, Workflow Analytics and Forecasting, AWS QuickSight

Location

Location

USA

Solution Delivered

Rysun implemented a data-driven solution that combined automation, forecasting, and visualization to overhaul the annotation lifecycle.

  • Smart Dashboards: Delivered interactive, role-specific dashboards using Amazon QuickSight, transforming raw data into actionable insights
  • Predictive Forecasting: Leveraged QuickSight’s ML capabilities to model project timelines and identify risks early
  • Project Planning Optimization: Equipped project managers with dynamic dashboards to manage team allocation proactively
  • Workflow Automation: Automated end-to-end workflows for annotation, QA, and review using integrated AWS Lambda functions
Benefits or Impact Delivered

Rysun’s solution helped the client close critical performance gaps in their AI training workflows:

  • Increased on-time completion of annotation projects through improved forecasting
  • Proactive risk mitigation, enabling managers to adjust resourcing well before deadlines slipped
  • 40% boost in productivity by automating QA and review workflows
  • Streamlined data operations, leading to higher-quality training data and better AI response accuracy
Rysun Approach & Advantage

Beyond automation, Rysun delivered a system that scales with the client’s evolving AI goals. By combining advanced analytics with domain-specific expertise, we created a solution that not only optimizes performance but also supports strategic decision-making for future AI training programs.