BOOKS - PROGRAMMING - Practical Machine Learning Innovations in Recommendation
Practical Machine Learning Innovations in Recommendation - Ted Dunning, Ellen Friedman 2014 PDF O;kav_1Reilly Media BOOKS PROGRAMMING
ECO~11 kg CO²

1 TON

Views
5150

Telegram
 
Practical Machine Learning Innovations in Recommendation
Author: Ted Dunning, Ellen Friedman
Year: 2014
Pages: 56
Format: PDF
File size: 10,1 MB
Language: ENG



Pay with Telegram STARS
''

You may also be interested in:

Ultimate Step by Step Guide to Deep Learning Using Python Artificial Intelligence and Neural Network Concepts Explained in Simple Terms (Ultimate Step by Step Guide to Machine Learning Book 2)
Practical GraphQL: Learning Full-Stack
Practical Deep Reinforcement Learning with Python
Practical Deep Learning for Cloud and Mobile
Learning HTTP/2 A Practical Guide for Beginners
Enhancing Learning with Effective Practical Science 11-16
Machine Learning Projects for .NET Developers by Mathias Brandewinder (2015-06-29)
Machine Learning-based Design and Optimization of High-Speed Circuits
Artificial Intelligence and Machine Learning for Smart Community: Concepts and Applications
Information-Driven Machine Learning Data Science as an Engineering Discipline
Machine Learning for Business Using Amazon SageMaker and Jupyter (MEAP Edition)
Introduction to Machine Learning with Applications in Information Security 2nd Edition
Data Science Fusion Integrating Maths, Python, and Machine Learning
Big Data Analysis Using Machine Learning for Social Scientists and Criminologists
Machine Learning and Cryptographic Solutions for Data Protection and Network Security
Data-Driven Computational Neuroscience Machine Learning and Statistical Models
MATLAB Statistics and Machine Learning Toolbox User’s Guide (R2022b)
Machine Learning and Cryptographic Solutions for Data Protection and Network Security
Digital Watermarking for Machine Learning Model: Techniques, Protocols and Applications
Machine Learning with Noisy Labels Definitions, Theory, Techniques and Solutions
Machine Learning and Probabilistic Graphical Models for Decision Support Systems
Machine Learning with Noisy Labels Definitions, Theory, Techniques and Solutions
Effective Machine Learning Teams Best Practices for ML Practitioners (Fifth Early Release)
Artificial Intelligence and Machine Learning with R Applications in the Field of Business Analytics
AI at the Edge: Solving Real-World Problems with Embedded Machine Learning
Modern Approaches in Machine Learning and Cognitive Science A Walkthrough Volume 4
The WebGPU Sourcebook High-Performance Graphics and Machine Learning in the Browser
Machine Learning For Absolute Beginners A Plain English Introduction, Third Edition
Machine Learning Toolbox for Social Scientists Applied Predictive Analytics with R
Machine Learning Bookcamp: Build a portfolio of real-life projects
Scaling Python with Dask From Data Science to Machine Learning (Final)
A Brief Introduction to Machine Learning for Engineers (Foundations and Trends(r) in Signal Processing)
Machine Learning Hands-On for Developers and Technical Professionals, 2nd Edition
Machine Learning in Business An Introduction to the World of Data Science Second Edition
Modern Approaches in Machine Learning and Cognitive Science A Walkthrough Volume 4
Behavior Analysis with Machine Learning and R A Sensors and Data Driven Approach
MLOps with Ray Best Practices and Strategies for Adopting Machine Learning Operations
The WebGPU Sourcebook: High-Performance Graphics and Machine Learning in the Browser
Hands-On Machine Learning with R (Chapman & Hall/CRC The R Series)
MATLAB Statistics and Machine Learning Toolbox User’s Guide (R2023b)