Machine Learning: Make Your Own Recommender System PDF

Machine Learning: Make Your Own Recommender System PDF

Name:
Machine Learning: Make Your Own Recommender System PDF

Published Date:
03/19/2024

Status:
[ Active ]

Description:

Publisher:
PACKT - Packt Publishing, Inc.

Document status:
Active

Format:
Electronic (PDF)

Delivery time:
10 minutes

Delivery time (for Russian version):
200 business days

SKU:

Choose Document Language:
$3.9
Need Help?
ISBN: 9781835882061

Launch into machine learning with our course and learn to create advanced recommender systems, ensuring ethical use and maximizing user satisfaction.

Key Features:

* Navigate Scikit-Learn effortlessly

* Create advanced recommender systems

* Understand ethical AI development

Book Description:

With an introductory overview, the course prepares you for a deep dive into the practical application of Scikit-Learn and the datasets that bring theories to life. From the basics of machine learning to the intricate details of setting up a sandbox environment, this course covers the essential groundwork for any aspiring data scientist.

The course focuses on developing your skills in working with data, implementing data reduction techniques, and understanding the intricacies of item-based and user-based collaborative filtering, along with content-based filtering. These core methodologies are crucial for creating accurate and efficient recommender systems that cater to the unique preferences of users. Practical examples and evaluations further solidify your learning, making complex concepts accessible and manageable.

The course wraps up by addressing the critical topics of privacy, ethics in machine learning, and the exciting future of recommender systems. This holistic approach ensures that you not only gain technical proficiency but also consider the broader implications of your work in this field. With a final look at further resources, your journey into machine learning and recommender systems is just beginning, armed with the knowledge and tools to explore new horizons.

What you will learn:

* Build data-driven recommender systems

* Implement collaborative filtering techniques

* Apply content-based filtering methods

* Evaluate recommender system performance

* Address privacy and ethical considerations

* Anticipate future recommender system trends

Who this book is for:

This course is ideal for aspiring data scientists and technical professionals with a basic understanding of Python programming and a keen interest in machine learning. This course lays the groundwork for those looking to specialize in building sophisticated recommender systems.

Author: Oliver Theobald


Edition : 1.
File Size : 1 file , 4.7 MB
Number of Pages : 131
Published : 03/19/2024
isbn : 9781835882061

History


Related products

WebRTC Cookbook
Published Date: 02/25/2015
$9.9
Practical Machine Learning
Published Date: 01/30/2016
$12.6
KVM Virtualization Cookbook
Published Date: 06/16/2017
$12.9
Instant PLC Programming with RSLogix 5000
Published Date: 10/25/2013
$6.6

Best-Selling Products

NG AMBP 051
Published Date: 09/01/2010
Asset Management Business Procedure - The Implementation of Construction (Design & Management) Regulations (CDM) 2007. Delivery of Asset Management Maintenance Delivery Electricity Minor Schemes
$138
NG AMBP 051
Published Date: 08/01/2015
Asset Management Business Procedure - Implementation of Construction (Design & Management) Regulations (CDM) 2015. Delivery of ETAM Operation Projects and Temporary Works Coordination for Construction
$138
NG AMBP 130
Published Date: 06/01/2018
Asset Management Business Procedure - Management of OHL Work in ETO Operations
$138
NG AMBP 130
Published Date: 02/01/2011
Asset Management Business Procedure - Guidance for Planning of Work on or Near to High Voltage Overhead Lines
$138
NG AMBP 136
Published Date: 10/01/2013
Asset Management Business Procedure - Working at Height Standards – Overhead Lines
NG AMBP 136
Published Date: 01/01/2015
Asset Management Business Procedure - Working at Height Standards – Overhead Lines
$138