Course curriculum

    1. 1. Business Context

    2. Course Material

    3. 2. Data Architecture Model

    4. 3. Data Source Understanding

    5. 4. DWH DB Creation

    6. 5. Apache Nifi - DWH Loading

    7. 6. DataMart DB Creation and Loading

    8. 7. Notebook - Import Libraries & DataSet

    9. 8. Notebook - Exploratory Data Analysis & Visualization

    10. 9. Notebook - Exploratory Data Analysis & Visualization (cont.)

    11. 10. Notebook - Exploratory Data Analysis & Visualization (cont.)

    12. 11. Notebook - Long Short Term Memory (LSTM) Model Development

    13. 12. XGBoost Algorithm Understanding

    14. 13. Notebook - XGBoost Model Development

    15. 14. ANN Algorithm Understanding

    16. 15. Notebook - Artificial Neural Network (ANN) Model Development

    1. 1. Apache Nifi Installation

    2. 2. Anaconda and Python Installation

    3. 3. MySQL Installation

    1. Bonus

About this course

  • $24.00
  • 20 lessons
  • 2.5 hours of video content

Credit Card Spending forecasting

What You’ll Learn πŸ“˜πŸ’³πŸ”πŸ“ˆ

  • πŸ“Š Understand Banking Forecasting Needs: Learn the essentials of credit card spending forecasts to boost customer service, personalize offers, and assess credit risk.
  • πŸ’‘ Build Predictive Models: Develop advanced forecasting models using LSTM, XGBoost, and ANN to predict spending patterns and identify trends.
  • πŸ”„ Data Integration Skills: Master Apache NiFi for real-time data integration, crucial for connecting customer, transaction, and account data.
  • πŸ’½ Data Management with MySQL: Organize and manage data in a robust MySQL data warehouse for seamless analytics.
  • πŸ›‘οΈ Applications in Banking: Gain insights for fraud prevention, customer targeting, and credit risk management.

Requirements πŸ› οΈπŸ’»

  • πŸ“‚ Basic Knowledge of SQL: Familiarity with SQL queries and database operations.
  • πŸ§‘β€πŸ’» Machine Learning Basics: Some understanding of machine learning algorithms.
  • 🌐 Interest in Banking Analytics: Suitable for those aiming to apply data analytics in banking or finance.
  • βš™οΈ Tools Needed: Access to Python, MySQL, and Apache NiFi.

Description πŸ“‘
This course dives into predicting credit card spending in banking, equipping you with the skills to create forecasting models that bring value to banks and financial institutions. You’ll start with a grounding in business requirements, identifying data sources such as customer demographics, transaction history, and account data. Then, learn modeling techniques with LSTM, XGBoost, and ANN to accurately forecast spending behavior. Real-world applications include fraud detection, customer insights, and credit risk assessment, ensuring you’re prepared for practical challenges in the industry. Data integration with Apache NiFi and storage in a MySQL data warehouse completes your end-to-end learning experience.

Who This Course is For πŸ§‘β€πŸ«πŸ‘©β€πŸ’»πŸ’Ό

  • πŸŽ“ Data Science & Analytics Enthusiasts: Looking to expand skills in banking analytics and predictive modeling.
  • 🏦 Finance Professionals: Interested in leveraging data insights for better customer management and credit risk assessment.
  • πŸ‘¨β€πŸ’Ό Banking Specialists: Aiming to enhance customer service, optimize marketing campaigns, and detect anomalies.
  • πŸ€– Machine Learning Practitioners: Those looking to apply their ML skills specifically in financial services for impactful results.

Discover your potential, starting today