Data Management for Retail Dataset using Python and Pandas



Advertisements   
   

 

What you’ll learn

  • You will get to learn about the approach that is used to develop the data management based solution. To complete the projects, you will be working using python and all the libraries that we got covered in this training.

  • we will be using the concepts covered in the course to develop the solution. You will get to learn about various new concepts in this project and will also master the topics that revolve around data analytics.

Requirements

  • Basic understanding of Computer Programming terminologies.

  • Basic understanding of any of the programming languages is a plus.

  • Basic knowledge of Python and Mathematics

  • No prior information for machine learning is needed.

Pandas is an open-source, BSD-licensed Python library providing high-performance, easy-to-use data structures and data analysis tools for the Python programming language. This Python course will get you up and running with using Python for data analysis and visualization.

This course has a project that will be based on Data Analytics with Data Exploration Case Study. In this project, we will be using the concepts covered in the course to develop the solution. You will get to learn about various new concepts in this project and will also master the topics that revolve around data analytics. Data Management for Retail Dataset will be the next important project that has been added to this training. You will get to learn about the approach that is used to develop the data management-based solution. To complete the projects, you will be working using python and all the libraries that we got covered in this training.

Panda and NumPy is a library for Python, where NumPy helps by contributing to numerical work lads and computation works. Panda, on the other hand, is preferred for data wrangling and data manipulation-related works. Both the NumPy and Panda constitute to Pythons being a scientific language. Its possibility to encounter Matrix and Vector manipulation is possible with NumPy and Panda’s library (rather we call an essential). NumPy means Numerical Python and is an open-source structure for mathematical needs. A must-have an array for high-level mathematical functions. NumPy is associated with Machine learning in ways like Scikit-learn, Pandas, Matplotlib, and TensorFlow. Panda, on the other hand, offers similar features in Machine learning and is the most widely-used Python library. It is easy to use, easy to structure, delivers high performance, and is a great data analysis tool.

Read more course:  Beginner's Country Guitar

Who this course is for:

  • Anyone who wants to learn the basics and various functions of Pandas.
  • Data Engineers, Architects, Analysts, Software Engineers, IT operations, Technical Managers, Data Scientists

#1 Brand for Competitive Exam Preparation and Test Series

An initiative by IIT IIM Graduates, ExamTurf is a leading global provider of skill based mock exams addressing the needs of 1,000,000+ members across 70+ Countries. Our unique step-by-step, online learning model along with amazing tests series prepared by top-notch professionals from the Industry help participants achieve their goals successfully. All our test series are Job oriented skill based tests demanded by the Industry. At ExamTurf, it is a matter of pride for us to make job oriented tests series available to anyone, anytime and anywhere. Therefore we ensure that you can enroll 24 hours a day, seven days a week, 365 days a year. Learn at a time and place, and pace that is of your choice. Plan your tests to suit your convenience and schedule.

Data Management for Retail Dataset using Python and Pandas, Free Tutorials Download

Download Data Management for Retail Dataset using Python and Pandas Free Tutorials Direct Links

Go to Download Tutorials Page Go to HomePage Tutorials

Password : freetuts.download


Advertisements

Related Courses

Leave a Comment

This site uses Akismet to reduce spam. Learn how your comment data is processed.