BOOKS - Machine Learning in Python for Process and Equipment Condition Monitoring, an...
Machine Learning in Python for Process and Equipment Condition Monitoring, and Predictive Maintenance From Data to Process Insights - Ankur Kumar, Jesus Flores-Cerrillo 2024-01-13 PDF Leanpub BOOKS
ECO~15 kg CO²

1 TON

Views
40563

Telegram
 
Machine Learning in Python for Process and Equipment Condition Monitoring, and Predictive Maintenance From Data to Process Insights
Author: Ankur Kumar, Jesus Flores-Cerrillo
Year: 2024-01-13
Pages: 361
Format: PDF
File size: 18.0 MB
Language: ENG



Pay with Telegram STARS
The book "Machine Learning in Python for Process and Equipment Condition Monitoring and Predictive Maintenance" is a comprehensive guide to using machine learning techniques in Python to monitor and predict the condition of processes and equipment in various industries. The book covers the entire spectrum of machine learning, from data collection and preprocessing to model selection and deployment, providing readers with a solid foundation in the field. The book begins by discussing the importance of condition monitoring and predictive maintenance in various industries, such as manufacturing, oil and gas, and power generation. It highlights the challenges faced by these industries, including equipment failure, downtime, and safety risks, and how machine learning can help address these challenges. The book then delves into the fundamentals of machine learning, explaining key concepts such as supervised and unsupervised learning, regression, classification, clustering, and neural networks. The next section of the book focuses on data preprocessing, which is a critical step in any machine learning application. It covers data cleaning, feature engineering, normalization, and transformation, emphasizing the need for high-quality data to achieve accurate predictions. The book also introduces several Python libraries commonly used in machine learning, such as NumPy, SciPy, and pandas.
''

You may also be interested in:

Modern Approaches in Machine Learning v.4
The Latest Research AI and Machine Learning
Handbook of Evolutionary Machine Learning
Artificial Intelligence and Machine Learning
Secrets of Machine Learning: How It Works
Machine Learning Contests: A Guidebook
Intro To Machine Learning with PyTorch
Machine Learning for Causal Inference
Machine Learning Engineering in Action
Machine Learning for Physics and Astronomy
Handbook of Evolutionary Machine Learning
Machine Learning for Business Analytics
Algorithmic Aspects of Machine Learning
Source Separation and Machine Learning
Intro To Machine Learning with PyTorch
Machine Learning for Planetary Science
Machine Learning for Healthcare Applications
Managing Machine Learning Projects
Machine Learning in 2D Materials Science
Machine Learning for Emotion Analysis
Adversarial Robustness for Machine Learning
.NET Core For Machine Learning
Mitigating Bias in Machine Learning
Machine Learning with R, 4th Edition
Principles of Machine Learning The Three Perspectives
Applied Machine Learning Using mlr3 in R
Machine Learning Crash Course for Engineers
Machine Learning and Metaheuristic Computation
Hands-On Machine Learning from Scratch
Machine Learning a Concise Introduction
Probabilistic Machine Learning An Introduction
Machine Learning Algorithms Simplified
Applied Machine Learning Using mlr3 in R
Data Science and Machine Learning
Zero to Hero in Machine Learning Part 1
Machine Learning in 2D Materials Science
Privacy-Preserving Machine Learning
Practicing Trustworthy Machine Learning
Model-Based Machine Learning
Machine Learning for Causal Inference