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Applied Time Series Analysis in Python

  • Development
  • Nov 26, 2024
SynopsisApplied Time Series Analysis in Python, available at $69.99,...
Applied Time Series Analysis in Python  No.1

Applied Time Series Analysis in Python, available at $69.99, has an average rating of 4.3, with 43 lectures, based on 805 reviews, and has 3345 subscribers.

You will learn about Descriptive vs inferential statistics Random walk model Moving average model Autoregression ACF and PACF Stationarity ARIMA, SARIMA, SARIMAX VAR, VARMA, VARMAX Apply deep learning for time series analysis with Tensorflow Linear models, DNN, LSTM, CNN, ResNet Automate time series analysis with Prophet This course is ideal for individuals who are Beginner data scientists looking to gain experience with time series or Deep learning beginners curious about times series or Professional data scientists who need to analyze time series or Data scientists looking to transition from R to Python It is particularly useful for Beginner data scientists looking to gain experience with time series or Deep learning beginners curious about times series or Professional data scientists who need to analyze time series or Data scientists looking to transition from R to Python.

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Summary

Title: Applied Time Series Analysis in Python

Price: $69.99

Average Rating: 4.3

Number of Lectures: 43

Number of Published Lectures: 43

Number of Curriculum Items: 43

Number of Published Curriculum Objects: 43

Original Price: $89.99

Quality Status: approved

Status: Live

What You Will Learn

  • Descriptive vs inferential statistics
  • Random walk model
  • Moving average model
  • Autoregression
  • ACF and PACF
  • Stationarity
  • ARIMA, SARIMA, SARIMAX
  • VAR, VARMA, VARMAX
  • Apply deep learning for time series analysis with Tensorflow
  • Linear models, DNN, LSTM, CNN, ResNet
  • Automate time series analysis with Prophet
  • Who Should Attend

  • Beginner data scientists looking to gain experience with time series
  • Deep learning beginners curious about times series
  • Professional data scientists who need to analyze time series
  • Data scientists looking to transition from R to Python
  • Target Audiences

  • Beginner data scientists looking to gain experience with time series
  • Deep learning beginners curious about times series
  • Professional data scientists who need to analyze time series
  • Data scientists looking to transition from R to Python
  • This is the only course that combines the latest statistical and deep learning techniques for time series analysis. First, the course covers the basic concepts of time series:

  • stationarity and augmented Dicker-Fuller test

  • seasonality

  • white noise

  • random walk

  • autoregression

  • moving average

  • ACF and PACF,

  • Model selection with AIC (Akaike’s Information Criterion)

  • Then, we move on and apply more complex statistical models for time series forecasting:

  • ARIMA (Autoregressive Integrated Moving Average model)

  • SARIMA (Seasonal Autoregressive Integrated Moving Average model)

  • SARIMAX (Seasonal Autoregressive Integrated Moving Average model with exogenous variables)

  • We also cover multiple time series forecasting with:

  • VAR (Vector Autoregression)

  • VARMA (Vector Autoregressive Moving Average model)

  • VARMAX (Vector Autoregressive Moving Average model with exogenous variable)

  • Then, we move on to the deep learning section, where we will use Tensorflow to apply different deep learning techniques for times series analysis:

  • Simple linear model (1 layer neural network)

  • DNN (Deep Neural Network)

  • CNN (Convolutional Neural Network)

  • LSTM (Long Short-Term Memory)

  • CNN + LSTM models

  • ResNet (Residual Networks)

  • Autoregressive LSTM

  • Throughout the course, you will complete more than 5 end-to-end projects in Python, with all source code available to you.

    Course Curriculum

    Chapter 1: Introduction

    Lecture 1: Introduction

    Lecture 2: What are Time Series?

    Chapter 2: Statistical Learning Approach: The Building Blocks

    Lecture 1: Basic Statistics

    Lecture 2: Setup for coding exercises

    Lecture 3: Coding Exercise: Descriptive and Inferential Statistics

    Lecture 4: Autocorrelation and White Noise

    Lecture 5: Stationarity and Differencing

    Chapter 3: Statistical Learning Approach: Basic Models

    Lecture 1: Random Walk

    Lecture 2: Coding Excercise: Random Walk

    Lecture 3: Moving Average Model

    Lecture 4: Coding Exercise: Moving Average Model

    Lecture 5: Autoregressive Model

    Lecture 6: Mini Project: Autoregressive Model

    Lecture 7: ARMA: Autoregressive Moving Average Model

    Lecture 8: Coding Exercise: ARMA

    Chapter 4: Statistical Learning Approach: Advanced Models

    Lecture 1: ARIMA: Autoregressive Integrated Moving Average Model

    Lecture 2: Project 1: ARIMA

    Lecture 3: SARIMA

    Lecture 4: Project 2: SARIMA

    Lecture 5: AIC: Akaike Information Criterion

    Lecture 6: SARIMAX

    Lecture 7: Project 3: SARIMAX

    Lecture 8: General Modelling Procedure

    Lecture 9: VAR: Vector Autoregressions

    Lecture 10: Project 4 – Part 1: VAR

    Lecture 11: Project 4 – Part 2: VARMA

    Lecture 12: Project 4 – Part 3: VARMAX

    Chapter 5: Deep Learning Approach: Theory

    Lecture 1: Introduction

    Lecture 2: Deep Neural Networks (DNN)

    Lecture 3: Recurrent Neural Network and Long Short-Term Memory (RNN and LSTM)

    Lecture 4: Convolutional Neural Networks (CNN)

    Chapter 6: Deep Learning Approach: End-to-end Project

    Lecture 1: Project 5 – Part 1: Initial setup

    Lecture 2: Project 5 – Part 2: Exploratory Data Analysis (EDA)

    Lecture 3: Project 5 – Part 3: Feature Engineering

    Lecture 4: Project 5 – Part 4: Data Windowing and Training Function

    Lecture 5: Project 5 – Part 5: Single Step Models

    Lecture 6: Project 5 – Part 6: Multi Output Models

    Lecture 7: Project 5 – Part 7: Multi Step Models

    Chapter 7: Conclusion and References

    Lecture 1: Congratulations and Thank You!

    Lecture 2: References

    Chapter 8: Bonus: Automated Time Series Analysis with Prophet

    Lecture 1: Introduction to Prophet

    Lecture 2: Working with Prophet

    Lecture 3: Project: Predict Bus Ridership with Prophet

    Instructors

  • Applied Time Series Analysis in Python  No.2
    Marco Peixeiro
    Data Scientist and Instructor
  • Rating Distribution

  • 1 stars: 13 votes
  • 2 stars: 14 votes
  • 3 stars: 90 votes
  • 4 stars: 280 votes
  • 5 stars: 408 votes
  • Frequently Asked Questions

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