Udemy

Mastering Time Series Forecasting with Python

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  • 22,280 Students
  • Updated 1/2022
4.3
(139 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
11 Hour(s) 38 Minute(s)
Language
English
Taught by
datascience Anywhere, G Sudheer, Brightshine Learn
Rating
4.3
(139 Ratings)
2 views

Course Overview

Mastering Time Series Forecasting with Python

Learn Python, Time Series Model Additive, Multiplicative, AR, Moving Average, Exponential, ARIMA models

Welcome to Mastering Time Series Forecasting in Python

Time series analysis and forecasting is one of the areas of Data Science and has a wide variety of applications in the industries in the current world. Many industries looking for a Data Scientist with these skills. This course covers all types of modeling techniques for forecasting and analysis.

We start with programming in Python which is the essential skill required and then we will exploring the fundamental time series theory to help you understand the modeling that comes afterward.

Then throughout the course, we will work with a number of Python libraries, providing you with complete training. We will use the powerful time-series functionality built into pandas, as well as other fundamental libraries such as NumPy, matplotlib, statsmodels, Sklearn, and ARCH.

With these tools we will master the most widely used models out there:

  • Additive Model

  • Multiplicative Model

  • AR (autoregressive model)

  • Simple Moving Average

  • Weighted Moving Average

  • Exponential Moving Average

  • ARMA (autoregressive-moving-average model)

  • ARIMA (autoregressive integrated moving average model)

  • Auto ARIMA



We know that time series is one of those topics that always leaves some doubts.

Until now.

This course is exactly what you need to comprehend the time series once and for all. Not only that, but you will also get a ton of additional materials – notebooks files, course notes – everything is included.



Course Content

  • 10 section(s)
  • 119 lecture(s)
  • Section 1 Introduction
  • Section 2 Setting Google Colab
  • Section 3 Time Series Visualizations
  • Section 4 Linear Regression Intution
  • Section 5 Regression for Time Series Forecasting
  • Section 6 Additive Time Series Model with Statsmodels
  • Section 7 Multiplicative Time Series Model
  • Section 8 Auto Regressive Methods
  • Section 9 Smoothing Methods (Moving Average)
  • Section 10 Non Seasonal ARIMA models

What You’ll Learn

  • Python Programing
  • Basic to Advanced Time Series Methods
  • Time Series Visualization in Python
  • Auto Regressive Methods,
  • Moving Average, Exponential Moving Average
  • Linear Regression and Evaluation
  • Additive and Multiplicative Models
  • ARMA, ARIMA, SARIMA in Python
  • ACF and PACF
  • Auto ARIMA in Python
  • Stationary and Non Stationary
  • GARCH Models


Reviews

  • O
    Omar Hernandez
    5.0

    Easy to follow

  • G
    Gautam Patel
    4.0

    To the point, which i needed

  • F
    Florian Otel
    3.5

    Good material, but a bit messy / sloppy presentation. Worst part is that referenced material is missing -- e.g. the referred website "datascienceanywhere.com" has changed owner, blog posts are offline. All that material collateral should be included with the course to make it self-contained.

  • D
    Debashis Mishra
    3.0

    In Naive Based Forecasting, the statistics coming after model fit is not well explained. Seemed like the tutor is running short of details on that. Kind consider. Each parameter of output need to be explained in detail.

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