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Time Series Analysis and Forecasting with Python

  • Development
  • Mar 06, 2025
SynopsisTime Series Analysis and Forecasting with Python, available a...
Time Series Analysis and Forecasting with Python  No.1

Time Series Analysis and Forecasting with Python, available at $74.99, has an average rating of 4.29, with 52 lectures, based on 454 reviews, and has 5760 subscribers.

You will learn about Basic Packages, NumPy, Pandas & Matplotlib Time Series with Pandas (Creating Date Time index, Resampling, ) Analyzing Time Series Data Using Statsmodels Package The Concept of ARIMA and SARIMAX method and How to Forecast into the Future Using Them The Concept of Deep Learning from A-Z Forecast into the Future Using LSTM Model for Single Variant Forecast into the Future Using LSTM Model for Multi Variant This course is ideal for individuals who are Data Science Enthusiast or Beginner Programmers or Python Developers or Recheachers who like to forecast into future or Data Analysts or Anyone who is interested in Time Series and Future Forecasting It is particularly useful for Data Science Enthusiast or Beginner Programmers or Python Developers or Recheachers who like to forecast into future or Data Analysts or Anyone who is interested in Time Series and Future Forecasting.

Enroll now: Time Series Analysis and Forecasting with Python

Summary

Title: Time Series Analysis and Forecasting with Python

Price: $74.99

Average Rating: 4.29

Number of Lectures: 52

Number of Published Lectures: 52

Number of Curriculum Items: 52

Number of Published Curriculum Objects: 52

Original Price: $199.99

Quality Status: approved

Status: Live

What You Will Learn

  • Basic Packages, NumPy, Pandas & Matplotlib
  • Time Series with Pandas (Creating Date Time index, Resampling, )
  • Analyzing Time Series Data Using Statsmodels Package
  • The Concept of ARIMA and SARIMAX method and How to Forecast into the Future Using Them
  • The Concept of Deep Learning from A-Z
  • Forecast into the Future Using LSTM Model for Single Variant
  • Forecast into the Future Using LSTM Model for Multi Variant
  • Who Should Attend

  • Data Science Enthusiast
  • Beginner Programmers
  • Python Developers
  • Recheachers who like to forecast into future
  • Data Analysts
  • Anyone who is interested in Time Series and Future Forecasting
  • Target Audiences

  • Data Science Enthusiast
  • Beginner Programmers
  • Python Developers
  • Recheachers who like to forecast into future
  • Data Analysts
  • Anyone who is interested in Time Series and Future Forecasting
  • “Time Series Analysis and Forecasting with Python” Course is an ultimate source for learning the concepts of Time Series and forecast into the future.

    In this course, the most famous methods such as statistical methods (ARIMA and SARIMAX) and Deep Learning Method (LSTM) are explained in detail. Furthermore, several Real World projects are developed in a Python environment and have been explained line by line!

    If you are a researcher, a student, a programmer, or a data science enthusiast that is seeking a course that shows you all about time series and prediction from A-Z, you are in a right place. Just check out what you will learn in this course below:

  • Basic libraries (NumPy, Pandas, Matplotlib)

  • How to use Pandas library to create DateTime index and how to set that as your Dataset index

  • What are statistical models?

  • How to forecast into future using the ARIMA model?

  • How to capture the seasonality using the SARIMAX model?

  • How to use endogenous variables and predict into future?

  • What is Deep Learning (Very Basic Concepts)

  • All about Artificial and Recurrent Neural Network!

  • How the LSTM method Works!

  • How to develop an LSTM model with a single variate?

  • How to develop an LSTM model using multiple variables (Multivariate)

  • As I mentioned above, in this course we tried to explain how you can develop an LSTM model when you have several predictors (variables) for the first time and you can use that for several applications and use the source code for your project as well!

    This course is for Everyone! yes everyone! that wants t to learn time-series and forecasting into the future using statistics and artificial intelligence with any kind of background! Even if you are not a programmer, I show you how to code and develop your model line by line!

    If you want to master the basics of Machine Learning in Python as well, you can check my other courses!

    Course Curriculum

    Chapter 1: Introduction

    Lecture 1: Course Content

    Lecture 2: Python IDE Installation 1

    Lecture 3: Python IDE Installation 2

    Lecture 4: Python IDE Installation 3

    Lecture 5: Installing Required Libraries

    Chapter 2: Useful Packages

    Lecture 1: Source Codes

    Lecture 2: Notice!!

    Lecture 3: NumPy 1

    Lecture 4: NumPy 2

    Lecture 5: NumPy 3

    Lecture 6: NumPy 4

    Lecture 7: NumPy 5

    Lecture 8: NumPy 6

    Lecture 9: Pandas 1

    Lecture 10: Pandas 2

    Lecture 11: Pandas 3

    Lecture 12: Pandas 4

    Lecture 13: Matplotlib 1

    Lecture 14: Matplotlib 2

    Lecture 15: Matplotlib 3

    Lecture 16: Matplotlib 4

    Lecture 17: Matplotlib 5

    Chapter 3: Pandas for Time Series Analysis

    Lecture 1: Create a Datetime with Pandas

    Lecture 2: Set Datetime as Index

    Lecture 3: Resampling Method

    Lecture 4: Pandas Date Frequencies

    Chapter 4: Statistical Models for Time Series Forecasting

    Lecture 1: Introduction to ARIMA

    Lecture 2: ARIMA Model Development 1

    Lecture 3: ARIMA Model Development 2

    Lecture 4: ARIMA Model Development 3

    Lecture 5: Introduction to SARIMAX

    Lecture 6: SARIMAX Model Development 1

    Lecture 7: SARIMAX Model Development 2

    Lecture 8: SARIMAX Model Development 3

    Chapter 5: Deep Learning for Time Series Forecasting

    Lecture 1: Introduction to Deep Learning – Basic Concepts

    Lecture 2: Introduction to Deep Learning – Activation Function

    Lecture 3: Introduction to Deep Learning – How Neural Network Learn?

    Lecture 4: Introduction to Deep Learning – Optimization

    Lecture 5: Introduction to Deep Learning – Recurrent Neural Network

    Lecture 6: Introduction to Deep Learning – LSTM Method

    Lecture 7: Development of Univariate LSTM Model 1

    Lecture 8: Development of Univariate LSTM Model 2

    Lecture 9: Development of Univariate LSTM Model 3

    Lecture 10: Development of Univariate LSTM Model 4

    Lecture 11: Development of Univariate LSTM Model 5

    Lecture 12: Development of Univariate LSTM Model 6

    Lecture 13: Development of Multivariate LSTM Model 1

    Lecture 14: Development of Multivariate LSTM Model 2

    Lecture 15: Development of Multivariate LSTM Model 3

    Lecture 16: Development of Multivariate LSTM Model 4

    Lecture 17: Development of Multivariate LSTM Model 5

    Chapter 6: Bonus

    Lecture 1: Bonus Lecture

    Instructors

  • Time Series Analysis and Forecasting with Python  No.2
    Navid Shirzadi, Ph.D.
    Data Science & Optimization Expert
  • Rating Distribution

  • 1 stars: 10 votes
  • 2 stars: 10 votes
  • 3 stars: 38 votes
  • 4 stars: 126 votes
  • 5 stars: 270 votes
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