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    Introduction to Time Series With Python

    Posted By: ELK1nG
    Introduction to Time Series With Python

    Introduction to Time Series With Python
    MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
    Language: English | Size: 5.67 GB | Duration: 12h 23m

    Hello everyone!
    Welcome to Introduction to Time Series Course with Python [2021].

    Time Series Analysis has become an especially important field in recent years.

    With inflation on the rise, many are turning to the stock market and cryptocurrencies in order to ensure their savings do not lose their value.
    COVID-19 has shown us how forecasting is an essential tool for driving public health decisions.
    Businesses are becoming increasingly efficient, forecasting inventory and operational needs ahead of time.
    Let me cut to the chase. This is not your average Time Series Analysis course. This course covers modern developments such as deep learning, time series classification (which can drive user insights from smartphone data, or read your thoughts from electrical activity in the brain), and more.

    We will cover techniques such as:

    Basic Pandas Operations
    Advanced Pandas Operations
    Working with Pandas Datetime
    Modelling Time Series
    Components of a Time Series
    Differencing
    Percentage Change, Subtracting the mean
    Correlation in Time Series
    Rolling Window of Correlations
    High Correlation
    AutoCorrelation
    AR & MA Models
    ARMA model
    Decision Tree Model
    Forest Random Model
    Gradient Boosted Tree Model
    Handling Missing Data
    Cointegration Model
    Non-Stationary Series and No Cointegration
    Granger Causality
    ARIMA Model and forecasting
    We will cover applications such as:

    Netflix dataset
    Disney dataset
    Google Trend vacation dataset
    Spotify dataset
    Temperature average of ST.Louis dataset
    Bank of America dataset
    J.P. Morgan dataset
    Furniture dataset
    Corn dataset
    So what are you waiting for? Signup now to get the skills to use the latest time series analysis techniques that you cannot learn anywhere else.

    Thanks for reading, and I'll see you in class!