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Kursteilnehmer-Bewertung und -Feedback für Predict Sales Revenue with scikit-learn von Coursera Project Network

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152 Bewertungen
29 Bewertungen

Über den Kurs

In this 2-hour long project-based course, you will build and evaluate a simple linear regression model using Python. You will employ the scikit-learn module for calculating the linear regression, while using pandas for data management, and seaborn for plotting. You will be working with the very popular Advertising data set to predict sales revenue based on advertising spending through mediums such as TV, radio, and newspaper. By the end of this course, you will be able to: - Explain the core ideas of linear regression to technical and non-technical audiences - Build a simple linear regression model in Python with scikit-learn - Employ Exploratory Data Analysis (EDA) to small data sets with seaborn and pandas - Evaluate a simple linear regression model using appropriate metrics This course runs on Coursera's hands-on project platform called Rhyme. On Rhyme, you will get instant access to pre-configured cloud desktops containing all of the software and data you need for the project. Everything is already set up directly in your internet browser so you can just focus on learning. For this project, you’ll get instant access to a cloud desktop with Jupyter and Python 3.7 with all the necessary libraries pre-installed. Notes: - You will be able to access the cloud desktop 5 times. However, you will be able to access instructions videos as many times as you want. - This course works best for learners who are based in the North America region. We’re currently working on providing the same experience in other regions....

Top-Bewertungen

SA

Jul 20, 2020

This course give enough base understanding on how to work with simple linear regression. The instructor explanation was also so easy to understand.

GR

Jul 08, 2020

After I did this guided project, I was able to build simple regression models by applying the skills I learnt.

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1 - 25 von 29 Bewertungen für Predict Sales Revenue with scikit-learn

von SY. R M A

Jul 20, 2020

This course give enough base understanding on how to work with simple linear regression. The instructor explanation was also so easy to understand.

von Goldy J R

Jul 08, 2020

After I did this guided project, I was able to build simple regression models by applying the skills I learnt.

von Ashray G

May 20, 2020

Gain a simple understanding of Simple Linear Regression.

von Dr. M N

May 12, 2020

Excellent course for prediction analysis.

von Budi S

Mar 14, 2020

awesome with this project course

von Etape M

Mar 07, 2020

I loved his explanations.

von Widhi A P

Jul 21, 2020

Very good for beginner

von Gangone R

Jul 02, 2020

very useful course

von FRANSESCO M

Jun 26, 2020

Very nice Project

von Shashank S

Jun 10, 2020

Awesome project

von Sibananda M

Jun 12, 2020

nice to learn

von shiva s t

Mar 16, 2020

great course

von Rakshitha R p

Jun 11, 2020

Very good

von Kaustab C S

Jun 10, 2020

Awesome.

von Uppalapati. S S

Jun 21, 2020

Great

von tale p

Jun 22, 2020

good

von Ashish K

Jun 11, 2020

Good

von HAY a

Jul 19, 2020

Love the course. The instructor covered all the basic simple regression and some data manipulation techniques in machine learning.

von Siddharth S

May 15, 2020

Simple and easy to guided project. Explain the theory and behind the scene concepts very well!

von Aman

Jul 03, 2020

If YOU are very beginner in ML. You can take this course. Otherwise check for another

von RAMYA R B

Jun 08, 2020

Good Course but you need atleast some idea before hand about machine learning...

von Harsh K

May 10, 2020

It was just too easy for me! It could have been some more harder and larger

von Rohit M

Apr 14, 2020

Very easy to understand and perform at the same time on #rhyme platform.

von Karim E

Dec 05, 2019

just need to illustrate how to judge the error

von Shubham d

Jun 01, 2020

while the session platform where lagging.