Data Science-Forecasting&Time series Using XLMinerR&Tableau

Course Feature
  • Cost
    Paid
  • Provider
    Udemy
  • Certificate
    Paid Certification
  • Language
    English
  • Start Date
    2018-03-01
  • Learners
    No Information
  • Duration
    No Information
  • Instructor
    ExcelR Solutions
Next Course
4.2
1,345 Ratings
This course on Forecasting using XLminar, Tableau, and R is designed to cover the majority of capabilities from an Analytics & Data Science perspective. Learn about scatter diagrams, autocorrelation functions, confidence intervals, and more, all required for understanding forecasting models. Discover the usage of XLminar, R, and Tableau for building forecasting models, as well as the science behind forecasting and forecasting strategies. Plus, learn about forecasting models such as AR, MA, ES, ARMA, ARIMA, and more, and how to accomplish the same using the best tools. Finally, explore Logistic Regression and Forecasting Techniques such as Linear, Exponential, Quadratic Seasonality models, Linear Regression, Autoregression, Smoothing Methods, Seasonal Indexes, and Moving Average.
Show All
Course Overview

❗The content presented here is sourced directly from Udemy platform. For comprehensive course details, including enrollment information, simply click on the 'Go to class' link on our website.

Updated in [July 25th, 2023]

This course on Forecasting and Time Series Using XLMinerR and Tableau is designed to provide students with a comprehensive overview of the capabilities of analytics and data science. Students will learn about scatter diagrams, autocorrelation functions, and confidence intervals, which are all essential for understanding forecasting models. Additionally, students will gain an understanding of the usage of XLminar, R, and Tableau for building forecasting models, as well as the science behind forecasting, forecasting strategies, and how to accomplish the same using XLminar and R. Furthermore, students will learn about forecasting models such as AR, MA, ES, ARMA, ARIMA, and how to use the best tools to accomplish them. Additionally, students will learn about logistic regression and how to accomplish the same using XLminar. Finally, students will gain an understanding of forecasting techniques such as linear, exponential, quadratic seasonality models, linear regression, autoregression, smoothing methods, seasonal indexes, and moving averages.

Course Syllabus

Forecasting Introduction

Forecasting Using R and XL Miner

Forecasting Model Based Approaches

Forecasting Model Based Approaches Using R

Forecasting Data Driven Approaches

Forecasting Data Driven Approach Using R

Forecasting using Tableau

Show All
Recommended Courses
demand-planning-forecasting-best-practices-7353
Demand Planning & Forecasting - Best Practices
3.6
Udemy 1,100 learners
Learn More
This course on Demand Planning & Forecasting - Best Practices is the most viewed and top-rated course on Udemy. Learn how to use current and historical data to make accurate predictions for future trends and forecasts. Get the industry-leading tips, techniques, and best practices for your Demand Planning & Forecasting process. With this course, you'll be able to make informed business decisions and develop data-driven strategies. Don't miss out on this opportunity to learn from an experienced professional and get the most out of your forecasting process. Enroll now and see the future of your business!
time-series-analysis-and-forecasting-using-power-bi-7354
Time Series Analysis and Forecasting using Power BI
3.4
Udemy 87 learners
Learn More
This course is perfect for business analysts, finance professionals, Python developers, and Power BI and Excel users who are interested in time series analysis and forecasting. Students will learn about the forecasting models available in Power BI, and gain hands-on experience in advanced error handling techniques in Power Query. They will be able to manipulate the forecast line efficiently for daily, monthly, and yearly predictions of univariate data, and tune parameters efficiently for cyclical and seasonal datasets. A basic understanding of Power BI is recommended, but prior experience with Power Query or writing M scripts is not required.
demand-forecasting-7355
Demand Forecasting
4.1
Udemy 72 learners
Learn More
This course on Demand Forecasting will provide students and professionals with the knowledge and skills to accurately forecast demand. Through 28 lectures, you will learn the different methods of forecasting, including qualitative methods such as Delphi method, Sales force forecasting, Executive opinion and Customer survey/market research. You will also learn how to find the forecast when the historical data has a trend, as well as the fundamentals of simple moving average, weighted moving average, exponential smoothing, and seasonal influence in forecasting. Finally, you will learn how to measure forecasting error using Mean Squared error (MSE), Standard deviation (sigma), Mean absolute deviation (MAD) and Mean absolute percent error (MAPE). This course is ideal for those studying operations management or working in the IT industry.
demand-forecasting-a-beginners-guide-7356
Demand Forecasting - A Beginners guide
3.8
Udemy 111 learners
Learn More
Demand forecasting is an essential tool for businesses to plan, set goals, and budget for the future. This course provides a beginner's guide to understanding demand forecasting and its importance. Learn how to use historical data and other information to anticipate customer demand, optimize inventory levels, increase inventory turnover rate, and identify and rectify any issues in the sales pipeline. Plus, gain insight into upcoming cash flow and when to increase staff and allocate resources. Get the skills you need to make informed decisions and ensure your business runs smoothly.
Favorites (0)
Favorites
0 favorite option

You have no favorites

Name delet