Perennial’s Implementation
- Conducted a comprehensive assessment of the data infrastructure to determine the feasibility of implementing AI and ML on the existing data models.
- Re-architected the Azure PaaS-based technology stack, utilizing Data Lake and Data Warehouse Analytics to optimize data processing time.
- Leveraged Azure ML Studio to develop data algorithms trained on historical financial transaction data, customer spending patterns and revenue data.
- Integrated Azure Stream Analytics and Power Automate to establish real-time data analytics, enabling live recommendations without manual intervention.
- Implemented Azure Cognitive Services to analyze large data sets, detect potential fraud and report anomalies.
- Engineered a scalable data architecture to support machine learning for near-accurate revenue projections, customer service recommendations, growth analytics and predictive fraud detection.