Companies Home Search Profile

Recommender Systems with Machine Learning

Focused View

AI Sciences,AI Sciences Team

6:09:16

201 View
  • 1. AI Sciences Introduction.mp4
    01:30
  • 2. Instructor Introduction.mp4
    02:42
  • 3. Overview of Recommender Systems.mp4
    02:13
  • 4. Fundamentals of Recommender Systems.mp4
    02:00
  • 5. Project Overview.mp4
    01:07
  • 6. Request for Your Honest Review.mp4
    01:18
  • 7. Links for the Course's Materials and Codes.html
  • 1. Links for the Course's Materials and Codes.html
  • 2. Recommender Systems Overview.mp4
    02:51
  • 3. Introduction to Recommender Systems.mp4
    03:10
  • 4. Recommender Systems Process and Goals.mp4
    05:07
  • 5. Generations of Recommender Systems.mp4
    02:50
  • 6. Nexus of AI and Reccommender Systems.mp4
    05:58
  • 7. Applications and Real World Challenges.mp4
    04:34
  • 8. Deep content-based recommender systems belong to the which generation.html
  • 9. Which processsystem is used behind the spotify new song suggestion.html
  • 10. Companies use recommender systems to boost their …… primarily.html
  • 11. What is the primary goal of recommender systems.html
  • 12. Which are the challenges for recommender systems.html
  • 1. Links for the Course's Materials and Codes.html
  • 2. Overview.mp4
    04:03
  • 3. Taxanomy of Recommender Systems.mp4
    09:07
  • 4. ICM.mp4
    04:13
  • 5. User Rating Matrix.mp4
    05:30
  • 6. Quality of Recommender System.mp4
    11:16
  • 7. Online Evaluation Techniques.mp4
    06:19
  • 8. Offline Evaluation Techniques.mp4
    05:23
  • 9. Data Partitioning.mp4
    06:53
  • 10. Important Parameters.mp4
    03:32
  • 11. Error Metric Computation.mp4
    05:20
  • 12. Content Based Filtering.mp4
    04:34
  • 13. Collaborative Filtering and User Based Collaborative Filtering.mp4
    05:25
  • 14. Item Model and Memory Based Collaborative Filtering.mp4
    06:08
  • 15. The values in the item content matrix are in.html
  • 16. Online evaluation techniques for recommender systems are based on.html
  • 17. Why are recommendation engines becoming popular.html
  • 18. What are the challenges in Content Based Filtering.html
  • 19. What are different Recommendation Engine techniques.html
  • 1. Links for the Course's Materials and Codes.html
  • 2. Overview.mp4
    03:06
  • 3. Benifits of Machine Learning.mp4
    07:47
  • 4. Guidelines for ML.mp4
    05:07
  • 5. Design Approaches for ML.mp4
    05:05
  • 6. Content Based Filtering.mp4
    03:01
  • 7. Data Prepration for Content Based Filtering.mp4
    07:55
  • 8. Data Manipulation for Content Based Filtering.mp4
    11:49
  • 9. Exploring Genres in Content Based Filtering.mp4
    12:26
  • 10. tf-idf Matrix.mp4
    10:52
  • 11. Recommendation Engine.mp4
    09:21
  • 12. Making Recommendations.mp4
    08:46
  • 13. Item Based Collaborative Filtering.mp4
    04:53
  • 14. Item Based Filtering Data Prepration.mp4
    13:01
  • 15. Age Distribution for Users.mp4
    07:28
  • 16. Collaborative Filtering using KNN.mp4
    16:55
  • 17. Geographic Filtering.mp4
    03:30
  • 18. KNN Implementation.mp4
    09:05
  • 19. Making Recommendations with Collaborative Filtering.mp4
    12:23
  • 20. User Based Collaborative Filtering.mp4
    02:40
  • 21. Identify the correct recommendation system's algorithm(s) from given options.html
  • 22. Which of the following businesses would be least likely to use Machine Learning based Recommendation Engine.html
  • 23. What are the key features of User-driven strategies.html
  • 24. Machine Learning based recommender systems identify which of the following behavioral attributes of the customers.html
  • 25. Benefits of machine learning for recommender systems include.html
  • 1. Links for the Course's Materials and Codes.html
  • 2. Project Introduction.mp4
    02:19
  • 3. Dataset Usage.mp4
    04:52
  • 4. Missing Values.mp4
    05:07
  • 5. Exploring Genres.mp4
    07:07
  • 6. Occurence Count.mp4
    06:21
  • 7. tf-idf Implementation.mp4
    05:50
  • 8. Similarity Index.mp4
    02:00
  • 9. Fuzzywuzzy Implementaion.mp4
    04:04
  • 10. Find Closest Title.mp4
    04:09
  • 11. Making Recommendations.mp4
    09:53
  • 1. Links for the Course's Materials and Codes.html
  • 2. Project Introduction.mp4
    02:05
  • 3. Dataset Discussion.mp4
    05:32
  • 4. Rating Plot.mp4
    05:05
  • 5. Count.mp4
    05:09
  • 6. Logrithm of Count.mp4
    05:22
  • 7. Active Users and Popular Movies.mp4
    08:49
  • 8. Create Collaborative Filter.mp4
    04:46
  • 9. KNN Implementation.mp4
    05:14
  • 10. Making Recommendations.mp4
    05:59
  • 11. THANK YOU Bonus Video.mp4
    01:20
  • Description


    Build Recommender Systems for Real World Applications using Machine Learning

    What You'll Learn?


    • • Learn the about basics of recommender systems
    • • Learn the basics impact of recommender systems with integrated artificial intelligence
    • • Learn about the major challenges and applications of recommender systems
    • • Learn the basic taxonomy of recommender systems
    • • Learn the impact of overfitting, underfitting, bias and variance
    • • Learn the fundamental concepts of content based filtering and collaborative filtering
    • • Learn the hands-on development of recommender system using machine learning topologies with python
    • • Learn building the recommender system for various recommender system applications such as Spotify song recommending systems using machine learning and python
    • • Hands on experience to build content-based recommender systems with machine learning and python
    • • Hands on experience to build item-based recommender systems using machine learning techniques and python
    • • Learn to model k-nearest neighbors-based recommender engine for various types of applications of recommender systems in python
    • • And much more…

    Who is this for?


  • • People who want to advance their skills in applied machine learning
  • • People who want to master relation of data analysis with machine learning
  • • People who want to build customized recommender systems for their applications
  • • People who want to implement machine learning algorithms for recommender systems
  • • Individuals who are passionate about recommender systems specially content based and collaborative filtering-based recommenders
  • • Machine Learning Practitioners
  • • Research Scholars
  • • Data Scientists
  • More details


    Description

    Comprehensive Course Description:

    Have you ever thought how YouTube adjust your feed as per your favorite content?

    Ever wondered! Why is your Netflix recommending you your favorite TV shows?

    Have you ever wanted to build a customized recommender system for yourself?

    If Yes! Than this is the course you are looking for.

    You might have searched for many relevant courses, but this course is different!

    This course is a complete package for the beginners to learn the basics of recommender systems, its applications and building it from scratch by using machine learning with python. Every module has engaging content covering necessary theoretical concepts with a complete practical approach is used in along with brief theoretical concepts. At the end of every module, we assign you a quiz, the solution to the quizzes is also available in the next video.

    We will be starting with the theoretical concepts of recommender systems, after providing you the basic knowledge of recommender systems. You will be able to learn about the important taxonomies of recommender systems which are actually the basic building block of it.

    This complete package will enable you to learn the basic to advance mechanism of developing recommender system by using machine learning with python. We’ll be using Python as a programming language in this course, which is the hottest language nowadays if we talk about machine leaning. Python will be taught from elementary level up to an advanced level so that any machine learning concept can be implemented.

    This comprehensive course will be your guide to learning how to use the power of Python to evaluate your recommender systems datasets based on user ratings, user choices, music genres, categories of movies, and their year of release. Moreover, a practical approach will be adopted to build content-based filtering and collaborative filtering techniques for recommender systems where hands on experience will be developed.

    We’ll learn all the basic and necessary concepts for the applied recommender systems models along with the machine learning models. Moreover, various projects have been included in this course to develop a very useful experience for yourselves.

    Machine learning has been ranked as one of the hottest jobs on Glassdoor, and the average salary of a machine learning engineer is over $110,000 in the United States, according to Indeed! Machine Learning is a rewarding career that allows you to solve some of the world's most interesting problems!

    This course is designed for both beginners with some programming experience or even those who know nothing about Data Analysis, ML and RNNs!

    This comprehensive course is comparable to other Recommender Systems using Machine Learning courses that usually cost thousands of dollars, but now you can learn all that information at a fraction of the cost in only one course! With over 6 hours of HD video lectures that are divided into many videos and detailed code notebooks for every address this is one of the most comprehensive courses for Recommender Systems using Machine Learning on Udemy!

    Why Should You Enroll in This Course?

    The course is crafted to help you understand not only the role and impact of recommender systems in real world applications but it provides a very unique hands on experience on developing complete recommender systems engines for your customized dataset by using various projects. This straightforward learning by doing course will help you in mastering the concepts and methodology with regards to Python.

    This course is:

    · Easy to understand.

    · Expressive and self-explanatory

    · To the point

    · Practical with live coding

    · A complete package with three in depth projects covering complete course contents

    · Thorough, covering the most advanced and recently discovered machine learning models by renowned data scientists and AI practitioners

    Teaching Is Our Passion:

    We focus on creating online tutorials that encourage learning by doing. We aim to provide you with more than a superficial look at practical approach towards building recommender systems using machine learning from the perspective of content-based filtering and collaborative filtering. For instance, this course has two projects in the final module which will help you to see for yourself via experimentation the practical implementation of machine learning with data analysis on the real-world datasets of movies and Spotify songs. We have worked extra hard to ensure you understand the concepts clearly. We want you to have a sound understanding of the basics before you move onward to the more complex concepts. The course materials that make certain you accomplish all this include high-quality video content, course notes, meaningful course materials, handouts, and evaluation exercises. You can also get in touch with our friendly team in case of any queries.


    Course Content:

    We'll teach you how to program with Python, how to use machine learning concepts to develop recommender systems! Here are just a few of the topics that we will be learning:

    1. Course Overview

    2. Motivation for Recommender Systems

    â–ª Recommender Systems Process

    â–ª Goals of Recommender Systems

    â–ª Generations of Recommender Systems

    â–ª Nexus of Recommender Systems with Artificial Intelligence

    â–ª Real World Challenges of Recommender Systems

    â–ª Applications of Recommender Systems

    3. Basics of Recommender Systems

    â–ª Taxonomy of Recommender Systems

    â–ª Item-context Matrix

    â–ª User-Rating Matrix

    â–ª Inferring Preferences

    â–ª Quality of Recommender Systems

    â–ª Online and Offline Evaluation Techniques

    â–ª Dataset Partitioning

    â–ª Overfitting

    â–ª Error Matrix

    â–ª Content-based Filtering

    â–ª Collaborative Filtering

    â–ª User-based and Item-based Collaborative Filtering

    4. Recommender Systems with Machine Learning

    â–ª Machine Learning in Recommender Systems

    â–ª Benefits of Machine Learning in Recommender Systems

    â–ª Design Approaches for Recommender Systems using Machine Learning

    â–ª Guidelines for Machine Learning based Recommender Systems

    â–ª Hands on- Practical Approach for Content Based Filtering using Machine Learning

    â–ª Hands on- Practical Approach for Item based Collaborative Filtering using Machine Learning

    5. Project 1: Songs Recommendation System for a Music Application using Machine Learning

    6. Project 2: Movie Recommendation System using K-nearest Neighbors Algorithm

    Enroll in the course and become a recommender systems expert today!


    After completing this course successfully, you will be able to:

    · Relate the concepts and theories for recommender systems in various domains

    · Understand and implement machine learning models for building real world recommendation systems

    · Understand evaluate the machine learning models

    Who this course is for:

    · People who want to advance their skills in applied machine learning

    · People who want to master relation of data analysis with machine learning

    · People who want to build customized recommender systems for their applications

    · People who want to implement machine learning algorithms for recommender systems

    · Individuals who are passionate about recommender systems specially content based and collaborative filtering-based recommenders

    · Machine Learning Practitioners

    · Research Scholars

    · Data Scientists

    Who this course is for:

    • • People who want to advance their skills in applied machine learning
    • • People who want to master relation of data analysis with machine learning
    • • People who want to build customized recommender systems for their applications
    • • People who want to implement machine learning algorithms for recommender systems
    • • Individuals who are passionate about recommender systems specially content based and collaborative filtering-based recommenders
    • • Machine Learning Practitioners
    • • Research Scholars
    • • Data Scientists

    User Reviews
    Rating
    0
    0
    0
    0
    0
    average 0
    Total votes0
    Focused display
    Category
    We are a group of experts, PhDs and Practitioners of Artificial Intelligence, Computer Science, Machine Learning, and Statistics. Some of us work in big companies like Amazon, Google, Facebook, Microsoft, KPMG, BCG, and IBM.We decided to produce a series of courses mainly dedicated to beginners and newcomers on the techniques and methods of Machine Learning, Statistics, Artificial Intelligence, and Data Science. Initially, our objective was to help only those who wish to understand these techniques more easily and to be able to start without too much theory and without a long reading. Today we also publish a more complete course on some topics for a wider audience.Our courses have had phenomenal success. Our Courses have helped more than 100,000 students to master AI and Data Science.
    AI Sciences Team
    AI Sciences Team
    Instructor's Courses
    We are a group of experts, PhDs and Practitioners of Artificial Intelligence, Computer Science, Machine Learning, and Statistics. Some of us work in big companies like Amazon, Google, Facebook, Microsoft, KPMG, BCG, and IBM.We decided to produce a series of courses mainly dedicated to beginners and newcomers on the techniques and methods of Machine Learning, Statistics, Artificial Intelligence, and Data Science. Initially, our objective was to help only those who wish to understand these techniques more easily and to be able to start without too much theory and without a long reading. Today we also publish a more complete course on some topics for a wider audience.Our courses have had phenomenal success. Our Courses have helped more than 100,000 students to master AI and Data Science.
    Students take courses primarily to improve job-related skills.Some courses generate credit toward technical certification. Udemy has made a special effort to attract corporate trainers seeking to create coursework for employees of their company.
    • language english
    • Training sessions 64
    • duration 6:09:16
    • Release Date 2022/12/24