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    td-random-forest

    teradata-labs/td-random-forest
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    About

    Random forest ensemble classifier for high-accuracy classification

    SKILL.md

    Teradata Random Forest Analytics

    Skill Name Teradata Random Forest Analytics
    Description Random forest ensemble classifier for high-accuracy classification
    Category Classification Analytics
    Function TD_RandomForest

    Core Capabilities

    • Complete analytical workflow from data exploration to model deployment
    • Automated preprocessing including scaling, encoding, and train-test splitting
    • Advanced TD_RandomForest implementation with parameter optimization
    • Comprehensive evaluation metrics and model validation
    • Production-ready SQL generation with proper table management
    • Error handling and data quality checks throughout the pipeline
    • Business-focused interpretation of analytical results

    Table Analysis Workflow

    This skill automatically analyzes your provided table to generate optimized SQL workflows. Here's how it works:

    1. Table Structure Analysis

    • Column Detection: Automatically identifies all columns and their data types
    • Data Type Classification: Distinguishes between numeric, categorical, and text columns
    • Primary Key Identification: Detects unique identifier columns
    • Missing Value Assessment: Analyzes data completeness

    2. Feature Engineering Recommendations

    • Numeric Features: Identifies columns suitable for scaling and normalization
    • Categorical Features: Detects columns requiring encoding (one-hot, label encoding)
    • Target Variable: Helps identify the dependent variable for modeling
    • Feature Selection: Recommends relevant features based on data types

    3. SQL Generation Process

    • Dynamic Column Lists: Generates column lists based on your table structure
    • Parameterized Queries: Creates flexible SQL templates using your table schema
    • Table Name Integration: Replaces placeholders with your actual table names
    • Database Context: Adapts to your database and schema naming conventions

    How to Use This Skill

    1. Provide Your Table Information:

      "Analyze table: database_name.table_name"
      or
      "Use table: my_data with target column: target_var"
      
    2. The Skill Will:

      • Query your table structure using SHOW COLUMNS FROM table_name
      • Analyze data types and suggest appropriate preprocessing
      • Generate complete SQL workflow with your specific column names
      • Provide optimized parameters based on your data characteristics

    Input Requirements

    Data Requirements

    • Source table: Teradata table with analytical data
    • Target column: Dependent variable for classification analysis
    • Feature columns: Independent variables (numeric and categorical)
    • ID column: Unique identifier for record tracking
    • Minimum sample size: 100+ records for reliable classification modeling

    Technical Requirements

    • Teradata Vantage with ClearScape Analytics enabled
    • Database permissions: CREATE, DROP, SELECT on working database
    • Function access: TD_RandomForest, TD_RandomForestPredict

    Output Formats

    Generated Tables

    • Preprocessed data tables with proper scaling and encoding
    • Train/test split tables for model validation
    • Model table containing trained TD_RandomForest parameters
    • Prediction results with confidence metrics
    • Evaluation metrics table with performance statistics

    SQL Scripts

    • Complete workflow scripts ready for execution
    • Parameterized queries for different datasets
    • Table management with proper cleanup procedures

    Classification Use Cases Supported

    1. High-accuracy classification: Comprehensive analysis workflow
    2. Feature ranking: Comprehensive analysis workflow
    3. Ensemble learning: Comprehensive analysis workflow

    Best Practices Applied

    • Data validation before analysis execution
    • Proper feature scaling and categorical encoding
    • Train-test splitting with stratification when appropriate
    • Cross-validation for robust model evaluation
    • Parameter optimization using systematic approaches
    • Residual analysis and diagnostic checks
    • Business interpretation of statistical results
    • Documentation of methodology and assumptions

    Example Usage

    -- Example workflow for Teradata Random Forest Analytics
    -- Replace 'your_table' with actual table name
    
    -- 1. Data exploration and validation
    SELECT COUNT(*),
           COUNT(DISTINCT your_id_column),
           AVG(your_target_column),
           STDDEV(your_target_column)
    FROM your_database.your_table;
    
    -- 2. Execute complete classification workflow
    -- (Detailed SQL provided by the skill)
    

    Scripts Included

    Core Analytics Scripts

    • preprocessing.sql: Data preparation and feature engineering
    • table_analysis.sql: Automatic table structure analysis
    • complete_workflow_template.sql: End-to-end workflow template
    • model_training.sql: TD_RandomForest training procedures
    • prediction.sql: TD_RandomForestPredict execution
    • evaluation.sql: Model validation and metrics calculation

    Utility Scripts

    • data_quality_checks.sql: Comprehensive data validation
    • parameter_tuning.sql: Systematic parameter optimization
    • diagnostic_queries.sql: Model diagnostics and interpretation

    Limitations and Disclaimers

    • Data quality: Results depend on input data quality and completeness
    • Sample size: Minimum sample size requirements for reliable results
    • Feature selection: Manual feature engineering may be required
    • Computational resources: Large datasets may require optimization
    • Business context: Statistical results require domain expertise for interpretation
    • Model assumptions: Understand underlying mathematical assumptions

    Quality Checks

    Automated Validations

    • Data completeness verification before analysis
    • Statistical assumptions testing where applicable
    • Model convergence monitoring during training
    • Prediction quality assessment using validation data
    • Performance metrics calculation and interpretation

    Manual Review Points

    • Feature selection appropriateness for business problem
    • Model interpretation alignment with domain knowledge
    • Results validation against business expectations
    • Documentation completeness for reproducibility

    Updates and Maintenance

    • Version compatibility: Tested with latest Teradata Vantage releases
    • Performance optimization: Regular query performance reviews
    • Best practices: Updated based on analytics community feedback
    • Documentation: Maintained with latest ClearScape Analytics features
    • Examples: Updated with real-world use cases and scenarios

    This skill provides production-ready classification analytics using Teradata ClearScape Analytics TD_RandomForest with comprehensive data science best practices.

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