en
Knjige
Finn Sanders

Python Machine Learning For Beginners

Imagine a world where you can make a computer program learn for itself? What if it could recognize who is in a picture or the exact websites that you want to look for when you type it into the program? What if you were able to create any kind of program that you wanted, even as a beginner programmer, without all of the convoluted codes and other information that makes your head spin?

This is actually all possible. The programs that were mentioned before are all a part of machine learning. This is a breakthrough in the world of information technology, which allows the computer to learn how to behave, rather than asking the programmer to think of every single instance that may show up with their user ahead of time. it is taking over the world, and you may be using it now, without even realizing it. 
If you have used a search engine, worked with photo recognition, or done speech recognition devices on your phone, then you have worked with machine learning. And if you combine it with the Python programming language, it is faster, more powerful, and easier (even for beginners) to create your own programs today. Python is considered the ultimate coding language for beginners, but once you start to use it, you will never be able to tell. Many of the best programs out there use this language behind them, and if you are a beginner who is ready to learn, this is a great place to start. 
If you have a program in mind, or you just want to be able to get some programming knowledge and learn more about the power that comes behind it, then this is the guidebook for you. 


★★Some of the topics that we will discuss include★★

♦ The Fundamentals of Machine Learning, Deep learning, And Neural Networks
♦ How To Set Up Your Environment And Make Sure That Python, TensorFlow And Scikit-Learn Work Well For You
♦ How To Master Neural Network Implementation Using Different Libraries
♦ How Random Forest Algorithms Are Able To Help Out With Machine Learning
♦ How To Uncover Hidden Patterns And Structures With Clustering
♦ How Recurrent Neural Networks Work And When To Use
♦ The Importance Of Linear Classifiers And Why They Need To Be Used In Machine Learning
♦ And Much More!


This guidebook is going to provide you with the information you need to get started with Python Machine Learning. If you have an idea for a great program, but you don't have the technical knowledge to make it happen, then this guidebook will help you get started. Machine learning has the capabilities, and Python has the ease, to help you, even as a beginner, create any product that you would like. 


If you want to learn more about how to make the best programs with Python Machine learning, buy the book today!
116 štampanih stranica
Prvi put objavljeno
2019
Godina izdavanja
2019
Izdavač
Finn Sanders
Da li već pročitali? Kakvo je vaše mišljenje?
👍👎

Utisci

  • Angel Johnyje podelio/la utisakпре 3 године
    💡Poučna

Citati

  • Aya Addalije citiraoпрошле године
    algorithm will strive to find the patterns that come from those examples all on its own, rather than being told the answers.
  • Aya Addalije citiraoпрошле године
    The concept that comes with supervised learning can be seen to be similar to learning under the supervision of a teacher to their students. The teacher is going to give a lesson to the students with some examples, and then the student is going to derive the new rules and knowledge from these examples. They can then take the knowledge and apply it to different situations, even if they don’t match up directly to the examples that the teacher gives.
  • Aya Addalije citiraoпрошле године
    Supervised machine learning

Na policama za knjige

fb2epub
Prevucite i otpustite datoteke (ne više od 5 odjednom)