Copyright © WANNACRACK.COM. All Rights Reserved
This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.
Category
Latest Update
4/28/2020
Rating
Report
Deep Learning Prerequisites: The Numpy Stack in Python (V2 +) is a training package for deep learning prerequisites in the Python programming language. These prerequisites include the Numpy, Scipy, Pandas, and Matplotlib modules, all of which will teach you all of them and prepare you for the development of in-depth machine learning and artificial intelligence. Many people today want to learn these concepts and technologies, but many of them refuse to continue because they are not familiar with the necessary modules. One of these modules is called Numpy. This module is the basis of everything else and is used to build arrays that are designed to change and speed, so they can also be used to build operational matrices such as multiplication and subtraction.
The next module is called Pandas. This library is designed to build a DataFrame (similar to the R language), which is very useful for processing and managing large volumes of information. With the help of this module, tasks such as filtering, applying functions and combinations are easily done. Matplotlib module is used to draw various graphs such as linear and histograms and Scipy module is also used to calculate statistical specifications. With this module you can calculate values such as PDF and CDF, sample a distribution and perform statistical tests. In general, if you want to enter the world of deep learning and artificial intelligence, mastering these modules is vital that this training package will provide you with the commands, applications, functions and everything that these modules have to offer. teaches .
Supervised machine learning such as categorization and regression using real-world examples and Scikit-Learn
How to use Numpy, Scipy, Matplotlib and Pandas to implement numerical algorithms
How to implement Stack in Numpy
Learn the differences and strengths of different machine learning models
And
Inexperienced or inexperienced people about Numpy who want to learn deep and machine learning later
People who have previously tried machine learning or data science but have not been successful
Publisher: Udemy
Instructor: Lazy Programmer Inc
English language
Level of training: from basic to advanced
Number of courses: 50
Duration: 5 hours and 54 minutes
Understand linear algebra and the Gaussian distribution
Be comfortable with coding in Python
You should already know “why” things like a dot product, matrix inversion, and Gaussian probability distributions are useful and what they can be used for
After Extract, watch with your favorite Player.
English subtitle
Quality: 720p
Changes:
Version 2020/11 has increased by at least 3 lessons and about half an hour compared to 2020/5.
Comments
Similar