Cover image

Fundamentals of machine learning using Python / Euan Russano and Elaine Ferreira Avelino.

By: Russano, Euan, authorContributor(s): Avelino, Elaine Ferreira, authorMaterial type: TextTextPublisher: Canada : Arcler Press, c2020Description: xix, 324 pages : color illustrationsContent type: text Media type: computer Carrier type: online resourceSubject(s): Euan Russano and Elaine Ferreira Avelino. author | | | LOC classification: EBOP QA 76.73 | R88 2020Online resources: Electronic Resources https://www.bibliotex.com/pdfreader/fundamentals-machine-learning-using-python
Contents:
Chapter 1 : Introduction to Python. Chapter 2 : Computing things With Python Chapter 3 : A General Outlook on Machine Learning Chapter 4 : Elements of Machine Learning Chapter 5 : Linear Regression with One Variable Chapter 6 : A General Review on Linear Algebra Chapter 7 : Linear Regression with Multiple Inputs/Features Chapter 8 : Classification Using Logistic Regression Model Chapter 9 : Regularization Chapter 10 : Introduction to Neural Networks Chapter 11 : Introduction to Decision Trees and Random Forest Chapter 12 : Principal Component Analysis Chapter 13 : Classification Using K-Nearest Neighbor Algorithm Chapter 14 : Introduction to Kmeans Clustering Chapter 15 : Computing with TensorFlow : Introduction and Basics Chapter 16 : TensorFLow : Activation Functions and Optimization Chapter 17 : Introduction to Natural Language Processing Chapter 18 : Recognize Handwritten Digits Using Neural Networks
Summary: Fundamentals of Machine Learning discusses the basics of python, use of python in computing and provides a general outlook on machine learning. This book provides an insight into concepts such as linear regression with one variable, linear algebra, and linear regression with multiple inputs. The classification with logistics regression model, regularization, neural networks, decision trees are explained in this book. The introduction to several concepts of machine learning such as component analysis, classification using k-Nearest Algorithm, k Means Clustering, computing with Tensor flow and natural language processing have been explained. This book explains the fundamental concepts of machine learning.
List(s) this item appears in: Newly Acquired E-Books
Tags from this library: No tags from this library for this title. Log in to add tags.
    Average rating: 0.0 (0 votes)
Item type Current location Collection Shelving location Call number Copy number Status Date due Barcode
E-Books E-Books Cavite State University - CCAT Campus
Electronic Resources ER EBOP QA 76.73 R88 2020 (Browse shelf) 1 copy Available EBOP0000004

To access the E-Book : https://www.bibliotex.com/ (Log-in/Register is required).

Includes bibliographical references and index.

Chapter 1 : Introduction to Python.
Chapter 2 : Computing things With Python
Chapter 3 : A General Outlook on Machine Learning
Chapter 4 : Elements of Machine Learning
Chapter 5 : Linear Regression with One Variable
Chapter 6 : A General Review on Linear Algebra
Chapter 7 : Linear Regression with Multiple Inputs/Features
Chapter 8 : Classification Using Logistic Regression Model
Chapter 9 : Regularization
Chapter 10 : Introduction to Neural Networks
Chapter 11 : Introduction to Decision Trees and Random Forest
Chapter 12 : Principal Component Analysis
Chapter 13 : Classification Using K-Nearest Neighbor Algorithm
Chapter 14 : Introduction to Kmeans Clustering
Chapter 15 : Computing with TensorFlow : Introduction and Basics
Chapter 16 : TensorFLow : Activation Functions and Optimization
Chapter 17 : Introduction to Natural Language Processing
Chapter 18 : Recognize Handwritten Digits Using Neural Networks

Fundamentals of Machine Learning discusses the basics of python, use of python in computing and provides a general outlook on machine learning. This book provides an insight into concepts such as linear regression with one variable, linear algebra, and linear regression with multiple inputs. The classification with logistics regression model, regularization, neural networks, decision trees are explained in this book. The introduction to several concepts of machine learning such as component analysis, classification using k-Nearest Algorithm, k Means Clustering, computing with Tensor flow and natural language processing have been explained. This book explains the fundamental concepts of machine learning.

EBOP00004 1

In English text.

There are no comments on this title.

to post a comment.

Click on an image to view it in the image viewer

Powered by Koha