Case Studies

A selection of engagements across industries — each one a real business problem, a tailored solution, and a measurable outcome. Client names are confidential.

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01

Sales & Inventory Forecasting

Global Technology Manufacturing

Classic MLDeep LearningTime-Series
Challenge
  • Complex inventory management across multiple international markets
  • Pricing optimization for aged and slow-moving inventory
  • Sales forecasting accuracy well below business requirements
Our Solution
  • Time-series forecasting models for multi-market sales prediction
  • Multi-variable inventory optimization algorithms
  • Dynamic pricing models for aged stock liquidation
Results
  • 50% accuracy improvement over prior PhD-led manual analysis
  • Significant cost reduction through better demand forecasting
  • Architecture designed to scale across additional business segments
02

Competitive Product Review Intelligence

Global Technology Manufacturing

NLPSentiment AnalysisWeb Scraping
Challenge
  • No scalable way to monitor how products compared to competitors in customer reviews
  • Employees spending excessive manual hours reading and categorizing online reviews
Our Solution
  • Automated news and review web scraping pipeline targeting key sources
  • Sentiment analysis to score and classify customer opinion at scale
  • Periodic intelligence reports delivered directly to the client team
Results
  • Eliminated manual review monitoring — process now runs automatically
  • Faster, data-driven competitive insights with consistent coverage
  • Freed up employee time for higher-value analysis work
03

Healthcare Worker–Patient Matching

US Home Health Care Technology

ML RecommenderPredictive ModelingReal-Time Optimization
Challenge
  • Matching the right healthcare workers to the right patient needs at scale
  • Optimizing workforce allocation across a large distributed network
  • Maintaining quality of care standards while improving operational efficiency
Our Solution
  • Multi-factor matching algorithm integrating worker skills, availability, and patient requirements
  • Predictive modeling for worker–patient compatibility scoring
  • Real-time optimization engine integrated into the existing platform
Results
  • Measurable improvement in matching accuracy and patient satisfaction scores
  • Operational efficiency gains across workforce scheduling
  • Demonstrated that specialized AI — not off-the-shelf solutions — was essential given the integration complexity
04

Intelligent Billing Process Automation

US Home Health Care Technology

Intelligent AutomationCompliance MonitoringHuman-in-the-Loop
Challenge
  • Highly complex billing processes prone to errors and delays
  • Government compliance requirements (EVV — Electronic Visit Verification)
  • Heavy administrative burden consuming staff time and introducing risk
Our Solution
  • Automated billing validation and processing pipeline
  • Compliance monitoring and reporting system aligned with EVV requirements
  • Exception-handling workflow with human-in-the-loop for edge cases
Results
  • Significant time savings and reduction in billing errors
  • Compliance assurance in a highly regulated industry
  • Provided a blueprint for change management when automating critical workflows
05

AI-Powered Newsletter Automation

US Home Health Care Technology

n8nMLNLPContent Curation
Challenge
  • Limited client engagement due to infrequent and resource-intensive newsletter production
  • Small team unable to maintain consistent, high-quality content output
Our Solution
  • Automated news scraping from targeted industry sources via n8n
  • AI-powered sentiment analysis to filter for relevant, positive signals
  • Intelligent content curation ranking articles by relevance before generation
  • End-to-end pipeline: scrape → analyze → curate → generate → email
Results
  • 80–90% reduction in time spent producing each newsletter
  • Higher content quality through automated curation and filtering
  • Scalable communication capability without additional headcount
06

Agent Performance Behavioral Analytics

Insurance / Financial Services

Behavioral DataCustom MetricsPerformance Analytics
Challenge
  • No way to measure individual agent performance beyond final sales volume alone
  • Missing behavioral data: abandonment rates, completion times, correction frequency
  • Could not identify which agents excelled at quoting versus actual conversions
Our Solution
  • Custom efficiency coefficient formula: Volume / Error rate
  • Tracked granular metrics: application duration, abandonment rate, corrections per application
  • Monthly performance reports ranking all agents by efficiency score
Results
  • Clear identification of top and lowest-performing agents through behavioral metrics
  • Key insight: agents with high quote volume did not always drive high sales conversions
  • Enabled data-driven decisions for hiring, training, and performance evaluation
  • Improved customer satisfaction through better agent quality standards
07

Bot Detection via Behavioral Fingerprinting

Insurance / Financial Services

Pattern RecognitionBehavioral DataAnomaly Detection
Challenge
  • Personally identifiable information (PII) leaking through automated bot attacks
  • Internal tools unable to distinguish bots from legitimate applicants
  • Urgent need to protect customer data from coordinated automated activity
Our Solution
  • Visualized bot actions step-by-step from raw application event data
  • Identified attack patterns: attempt count, targeted form fields, timing signatures
  • Discovered bots specifically targeted driver license and VIN number fields
  • Isolated two distinct bot timing profiles: under 35ms and 1,000–3,100ms per field interaction
Results
  • Enabled real-time bot detection using pattern-based threshold alerts
  • Identified the highest-risk form fields requiring priority protection
  • Gave the development team concrete patterns to block at the application layer
  • Uncovered correlation between number of attempts and time-per-field — a new detection signal
08

COVID-19 Impact on Driver Sign-Ups

Gig Economy / Mobility

Time-Series AnalysisRegional AnalysisTrend Visualization
Challenge
  • No visibility into how daily driver application trends were shifting during the pandemic
  • No internal data science team to perform the analysis
  • Required market-specific understanding across multiple geographic regions
Our Solution
  • Daily trend analysis of applications started versus applications submitted
  • Regional pattern mapping across all active markets
  • Correlation analysis tied to the March 26, 2020 emergency declaration
Results
  • Largest single drop correlated precisely with the March 26, 2020 announcement
  • Markets 2 and 4 bucked the trend and increased sign-ups while others fell
  • Market 3 declined until mid-April; all other markets began recovering after April 2
  • Gave leadership market-specific data to inform resource and communication strategy

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