Python modules to support AI/ML
R modules to support AI/ML
Economic Trend Modeling
Enhance economic forecasting accuracy beyond traditional statistical models to better predict economic events
PDF Optical Character Recognition (Text)
Automate extraction of structured column data from unstructured PDF reports to reduce manual processing time and errors
PDF Optical Character Recognition (Images)
PDF OCR (Images) – Extract textual information from images embedded within PDF documents for comprehensive document analysis
Stock Market Analysis
Quantify relationships between news media narratives and stock market volatility to improve market event understanding
Commercial Real Estate Index
Synthesize commercial real estate data points into a comprehensive market index for improved market monitoring
Variable Optimization
Determine optimal lag structures to enhance accuracy for forecasting call report metrics
Credit Fragment Analysis
Identify meaningful patterns in fragmented data to support more comprehensive research analysis
Proposals and Public Comments
Efficiently process large volumes of public regulatory comments while ensuring proper handling of sensitive information
Manufacturer Sentiment Analysis
Convert qualitative survey responses into quantitative insights on industrial production forecasts
Supply Chain Estimations
Identify and measure supply chain constraints that could impact broader economic performance
Body Worn Cameras Data Management System
Body Worn Cameras Data Management – Ensure proper handling of information in body camera footage while making content searchable
Market Fund Portfolio
Accurately identify security issuers in money market fund portfolios
Sentiment Analysis of Earnings Transcripts
Measure and classify sentiment in bank earnings calls to identify emerging trends
Anomaly Detection
Identifying irregular patterns in firm-submitted information based on historical submission patterns
Consumer Complaints Explorer
Categorize large volumes of consumer complaints into topics to facilitate appropriate analysis and response
Regulatory Data Analysis
Identify potential reporting anomalies by comparing current submitted values against expected ranges based on historical patterns
Decision Tree for Deposits Data
Detect outliers in current reporting data to enhance overall data quality and reliability
Novel Activities Call Report Classification
Identify emerging or non-traditional banking activities
Financial News Processing
Transform large volumes of unstructured financial news into structured, actionable insights
Bank Exam Quality Control – Model 1
Enhance quality control by incorporating external news data into performance assessment models
Document Summarization Statistics
Extract meaningful metrics and term frequencies from lengthy documents to identify trends and common issues
Writing Quality Analysis Model
Ensure consistent, high-quality writing across organizational documents through automated style and quality assessment