statistical analysis Algorythms

  • what? optimize & predict - Present/Future data
    • data science to analyze
    • descriptive & prescriptive
    • Modeling, forecasting
    • for: analysts/strategists
  • why? Increase efficiency, revenue, & reduce costs
    • Anticipate customer needs and market shifts
    • e.g. use-cases
      • Retail: Forecast demand and optimize inventory
      • Finance: Detect fraud and assess credit risk
      • Healthcare: Predict patient readmissions
      • Marketing: Segment customers and personalize campaigns
  • skills

  • Components
    • Modeling: scikit-learn, TensorFlow, SAS
    • Data management: Snowflake, BigQuery, Redshift
    • Data analysis: Python, R, SQL
    • Visualization: Tableau, Power BI, Superset

SQL, Excel Basic stats, trend analysis KPI-driven

  • ba

    • SQL, Python, R
    • Predictive modeling, regression, clustering
    • Data modeling - Star/snowflake schemas
  • Star/snowflake schemas

  • ETL tools

    • Apache Airflow, Talend, Fivetran, AWS Glue, dbt, Informatica
Skill AreaBusiness Intelligence (BI)Business Analytics (BA)Data Analytics (DA)
Data queryingSQL, ExcelSQL, Python, RSQL, Python, R
VisualizationPower BI, Tableau, QlikTableau, Superset, LookerGrafana, Matplotlib, Seaborn
Statistical analysisBasic stats, trend analysisPredictive modeling, regression, clusteringFull range: descriptive to prescriptive
Data modelingStar/snowflake schemas, KPIsForecasting, optimization modelsMachine learning, deep learning
ETL & data prepETL tools, data warehousesData wrangling, transformationData pipelines, APIs, scripting
Business acumenHigh (KPI-driven)High (strategy-driven)Medium to high (depends on domain)
CommunicationDashboards, reports, storytellingInsight presentation, stakeholder alignmentData storytelling, technical reporting
ToolsPower BI, Tableau, Excel, SQL ServerPython, R, SAS, Superset, LookerJupyter, Pandas, Spark, BigQuery