BOOKS - PROGRAMMING - Scaling Up Machine Learning Parallel and Distributed Approaches
Scaling Up Machine Learning Parallel and Distributed Approaches - Ron Bekkerman, Mikhail Bilenko, John Langford 2011 PDF Cambridge University Press BOOKS PROGRAMMING
ECO~18 kg CO²

1 TON

Views
68097

Telegram
 
Scaling Up Machine Learning Parallel and Distributed Approaches
Author: Ron Bekkerman, Mikhail Bilenko, John Langford
Year: 2011
Pages: 492
Format: PDF
File size: 10,5 MB
Language: ENG



Pay with Telegram STARS
The book covers the principles, algorithms, and applications of parallel and distributed processing, including map-reduce programming models, parallel database systems, and distributed machine learning. The book provides a comprehensive overview of the challenges and opportunities in scaling up machine learning and data mining methods on parallel and distributed computing platforms. It also discusses the current state of the art in scalable machine learning and data mining techniques, including parallel and distributed algorithms, and their applications in various fields such as computer vision, natural language processing, and bioinformatics. The book concludes by highlighting the future research directions and open challenges in this area. Scaling Up Machine Learning Parallel and Distributed Approaches is a valuable resource for researchers, practitioners, and students who want to learn about the latest developments in scalable machine learning and data mining techniques and their applications in various fields. Book Description: Scaling Up Machine Learning Parallel and Distributed Approaches Authors: [insert author names] Publication Date: [insert publication date] Pages: [insert page count] Publisher: [insert publisher name] ISBN: [insert ISBN number] Summary: This book presents an integrated collection of representative approaches for scaling up machine learning and data mining methods on parallel and distributed computing platforms. It covers the principles, algorithms, and applications of parallel and distributed processing, including map-reduce programming models, parallel database systems, and distributed machine learning.
''
この本は、地図縮小プログラミングモデル、並列データベースシステム、分散機械学習を含む、並列処理および分散処理の原則、アルゴリズム、およびアプリケーションをカバーしています。この本は、並列および分散コンピューティングプラットフォームにおける機械学習およびデータマイニング技術の課題とスケーラビリティの包括的な概要を提供します。また、並列アルゴリズムや分散アルゴリズムを含むスケーラブルな機械学習およびデータマイニング技術の現状と、コンピュータビジョン、自然言語処理、バイオインフォマティクスなどのさまざまな分野での応用についても説明します。この本は、将来の研究ラインと分野におけるオープンな課題を強調することによって終わります。並列および分散型機械学習のスケーリングは、スケーラブルな機械学習とデータマイニング技術の最新の開発とさまざまな分野でのアプリケーションについて学びたい研究者、実践者、学生にとって貴重なリソースです。並列および分散型機械学習アプローチのスケーリング著者:[著者名を挿入]発行日:[発行日を挿入]ページ:[ページ数を挿入]発行者:[発行者名を挿入]ISBN: [ISBN番号を挿入]概要:本書は、機械学習とデータマイニング手法を並列または分散にスケーリングするための代表的なアプローチの統合コレクションですコンピューティングプラットフォーム。地図縮小プログラミングモデル、並列データベースシステム、分散機械学習など、並列および分散処理原理、アルゴリズム、およびアプリケーションをカバーしています。

You may also be interested in:

Machine Learning with Python Cookbook Practical Solutions from Preprocessing to Deep Learning, 2nd Edition (Final Release)
Learning Genetic Algorithms with Python Empower the Performance of Machine Learning and AI Models with the Capabilities of a Powerful Search Algorithm
Programming Machine Learning From Coding to Deep Learning
Machine Learning in Elixir Learning to Learn with Nx and Axon
Machine Learning in Elixir Learning to Learn with Nx and Axon
Data Science Crash Course Thyroid Disease Classification and Prediction Using Machine Learning and Deep Learning with Python GUI, Second Edition
Machine Learning: Fundamental Algorithms for Supervised and Unsupervised Learning With Real-World Applications (Advanced Data Analytics Book 1)
Learning Spark Streaming Best Practices for Scaling and Optimizing Apache Spark
Machine Learning for Materials Discovery: Numerical Recipes and Practical Applications (Machine Intelligence for Materials Science)
Machine Learning for Beginners A Math Guide to Mastering Deep Learning and Business Application. Understand How Artificial Intelligence, Data Science, and Neural Networks Work Through Real Examples
Learn AI with Python Explore Machine Learning and Deep Learning techniques for Building Smart AI Systems Using Scikit-Learn
Machine Learning With Python 3 books in 1 Hands-On Learning for Beginners+An in-Depth Guide Beyond the Basics+A Practical Guide for Experts
Agricultural Informatics Automation Using the IoT and Machine Learning (Advances in Learning Analytics for Intelligent Cloud-IoT Systems)
Learning Google Cloud Vertex AI: Build, deploy, and manage machine learning models with Vertex AI (English Edition)
Artificial Intelligence For Business How Your Company Can Make More Profit with Machine Learning, Data Science, Big Data, and Deep Learning
Quantum AI Machine Learning and Deep Learning for Everyone A Beginners Guide to Unlocking Business Opportunities by Leveraging the power of AI in Quantum Age
Quantum AI Machine Learning and Deep Learning for Everyone A Beginners Guide to Unlocking Business Opportunities by Leveraging the power of AI in Quantum Age
Artificial Intelligence 4 books in 1 AI For Beginners + AI For Business + Machine Learning For Beginners + Machine Learning And Artificial Intelligence
Learning Pandas 2.0: A Comprehensive Guide to Data Manipulation and Analysis for Data Scientists and Machine Learning Professionals
Machine Learning For Beginners Guide Algorithms Supervised & Unsupervsied Learning. Decision Tree & Random Forest Introduction
Deep Learning for Finance Creating Machine & Deep Learning Models for Trading in Python
Learning Google Cloud Vertex AI Build, deploy, and manage machine learning models with Vertex AI
Active Machine Learning with Python: Refine and elevate data quality over quantity with active learning
Learning Google Cloud Vertex AI Build, deploy, and manage machine learning models with Vertex AI
Deep Learning for Finance Creating Machine & Deep Learning Models for Trading in Python
Human-in-the-Loop Machine Learning Active learning, annotation and human-computer interaction (MEAP)
From Machine Learning To Deep Learning
Learn AI with Python: Explore Machine Learning and Deep Learning techniques for Building Smart AI Systems Using Scikit-Learn, NLTK, NeuroLab, and Keras
Deep Learning and AI Superhero Mastering TensorFlow, Keras, and PyTorch Advanced Machine Learning and AI, Neural Networks, and Real-World Projects (Mastering the AI Revolution)
Learn Autonomous Programming with Python Utilize Python|s capabilities in Artificial Intelligence, Machine Learning, Deep Learning and robotic process automation
Python Programming The Crash Course for Python – Learn the Secrets of Machine Learning, Data Science Analysis and Artificial Intelligence. Introduction to Deep Learning for Beginners
Learn Autonomous Programming with Python Utilize Python|s capabilities in Artificial Intelligence, Machine Learning, Deep Learning and robotic process automation
Grokking Algorithms Simple and Effective Methods to Grokking Deep Learning and Machine Learning
Machine Learning and Deep Learning in Computational Toxicology (Computational Methods in Engineering and the Sciences)
Python Programming The Crash Course for Python Projects – Learn the Secrets of Machine Learning, Data Science Analysis and Artificial Intelligence. Introduction to Deep Learning for Beginners
Machine Vision Inspection Systems Machine Learning-Based Approaches (Machine Vision Inspection Systems, Volume 2)
Learn Autonomous Programming with Python: Utilize Python|s capabilities in artificial intelligence, machine learning, deep learning and robotic process automation (English Edition)
Practical Mathematics for AI and Deep Learning: A Concise yet In-Depth Guide on Fundamentals of Computer Vision, NLP, Complex Deep Neural Networks and Machine Learning (English Edition)
Supervised Machine Learning with Python A Comprehensive guide to Supervised Learning for 2024
Supervised Machine Learning with Python A Comprehensive guide to Supervised Learning for 2024