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Deep Learning with PyTorch: Predicting Global Gold Price

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Qiuhua (Jessica) Sheng

1:04:34

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  • 1 - Explore and Visualize Gold Price Data.mp4
    09:54
  • 1 - gold-price.csv
  • 1 - lecture1-code.html
  • 2 - Feature Engineering.mp4
    17:36
  • 2 - gold-price.csv
  • 2 - lecture2-code.html
  • 3 - Tensor Data Preparation Model Construction.mp4
    18:49
  • 3 - gold-price.csv
  • 3 - lecture3-code.html
  • 4 - Predictive Model Training and Evaluation.mp4
    13:39
  • 4 - lecture4-code.html
  • 5 - Model Performance Improvement.mp4
    04:36
  • 5 - lecture5-code.html
  • Description


    Sequential Data Prediction Using LSTM Model with PyTorch

    What You'll Learn?


    • perform comprehensive data exploratory analysis, including data preprocessing, visualization, and feature engineering using Python
    • apply deep learning methods to predict global gold prices, utilizing Python and PyTorch.
    • evaluate the performance of deep learning models using appropriate metrics
    • extend acquired skills to other sequential prediction scenarios

    Who is this for?


  • python developers
  • people who love data science and predictive analytics
  • What You Need to Know?


  • Familiarity with Python syntax, data types, and basic operations
  • More details


    Description
    • The global precious metal market (e.g., gold, silver, etc.) has significantly grown over the past decades and is expected to grow in future. Specifically, gold, a highly liquid asset, plays a crucial role in preventing individuals and organizations from the adverse effects of a declining dollar. Accurately predicting gold prices not only allows us to uncover evolving patterns in asset prices but also offers opportunities to make strategic investment decisions. Such knowledge is important for both investors and those new to the financial markets.

    • This course introduce deep learning predictive analytics focusing on the global gold market. It provides detailed guidelines for analyzing and forecasting future gold prices using advanced deep learning models, such as Long Short-Term Memory (LSTM) network.

    • Throughout the course, students will gain hands-on experience in conducting exploratory data analysis, mastering feature engineering, and building robust deep learning models using Python/PyTorch. This practical approach ensures students understand the theoretical underpinnings and apply knowledge effectively in real-world scenarios.

    • At the end of this class, students are expected to be proficient in utilizing deep learning models (e.g., LSTM) for time series analysis and extend these applications to other domains (e.g., stock market prediction, trend analysis, temperature forecast, etc.)

    Who this course is for:

    • python developers
    • people who love data science and predictive analytics

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    Qiuhua (Jessica) Sheng
    Qiuhua (Jessica) Sheng
    Instructor's Courses
    Dr. Qiuhua (Jessica) Sheng is an Assistant Professor in the Department of Systems and Operations Management, California State University Northridge. She specializes in teaching statistics, data visualization, and machine learning, where she is fostering a welcome learning environment for her students in the field of business analytics. Her research focuses on predictive analytics, healthcare informatics, deep learning, and social network analysis, etc.
    Students take courses primarily to improve job-related skills.Some courses generate credit toward technical certification. Udemy has made a special effort to attract corporate trainers seeking to create coursework for employees of their company.
    • language english
    • Training sessions 5
    • duration 1:04:34
    • Release Date 2024/06/25