Predicting Structured Data

Predicting Structured Data
Author :
Publisher : MIT Press
Total Pages : 361
Release :
ISBN-10 : 9780262026178
ISBN-13 : 0262026171
Rating : 4/5 (78 Downloads)

Synopsis Predicting Structured Data by : Neural Information Processing Systems Foundation

State-of-the-art algorithms and theory in a novel domain of machine learning, prediction when the output has structure.

Deep Learning with Structured Data

Deep Learning with Structured Data
Author :
Publisher : Simon and Schuster
Total Pages : 262
Release :
ISBN-10 : 9781638357179
ISBN-13 : 163835717X
Rating : 4/5 (79 Downloads)

Synopsis Deep Learning with Structured Data by : Mark Ryan

Deep Learning with Structured Data teaches you powerful data analysis techniques for tabular data and relational databases. Summary Deep learning offers the potential to identify complex patterns and relationships hidden in data of all sorts. Deep Learning with Structured Data shows you how to apply powerful deep learning analysis techniques to the kind of structured, tabular data you'll find in the relational databases that real-world businesses depend on. Filled with practical, relevant applications, this book teaches you how deep learning can augment your existing machine learning and business intelligence systems. Purchase of the print book includes a free eBook in PDF, Kindle, and ePub formats from Manning Publications. About the technology Here’s a dirty secret: Half of the time in most data science projects is spent cleaning and preparing data. But there’s a better way: Deep learning techniques optimized for tabular data and relational databases deliver insights and analysis without requiring intense feature engineering. Learn the skills to unlock deep learning performance with much less data filtering, validating, and scrubbing. About the book Deep Learning with Structured Data teaches you powerful data analysis techniques for tabular data and relational databases. Get started using a dataset based on the Toronto transit system. As you work through the book, you’ll learn how easy it is to set up tabular data for deep learning, while solving crucial production concerns like deployment and performance monitoring. What's inside When and where to use deep learning The architecture of a Keras deep learning model Training, deploying, and maintaining models Measuring performance About the reader For readers with intermediate Python and machine learning skills. About the author Mark Ryan is a Data Science Manager at Intact Insurance. He holds a Master's degree in Computer Science from the University of Toronto. Table of Contents 1 Why deep learning with structured data? 2 Introduction to the example problem and Pandas dataframes 3 Preparing the data, part 1: Exploring and cleansing the data 4 Preparing the data, part 2: Transforming the data 5 Preparing and building the model 6 Training the model and running experiments 7 More experiments with the trained model 8 Deploying the model 9 Recommended next steps

Advanced Structured Prediction

Advanced Structured Prediction
Author :
Publisher : MIT Press
Total Pages : 430
Release :
ISBN-10 : 9780262028370
ISBN-13 : 0262028379
Rating : 4/5 (70 Downloads)

Synopsis Advanced Structured Prediction by : Sebastian Nowozin

An overview of recent work in the field of structured prediction, the building of predictive machine learning models for interrelated and dependent outputs. The goal of structured prediction is to build machine learning models that predict relational information that itself has structure, such as being composed of multiple interrelated parts. These models, which reflect prior knowledge, task-specific relations, and constraints, are used in fields including computer vision, speech recognition, natural language processing, and computational biology. They can carry out such tasks as predicting a natural language sentence, or segmenting an image into meaningful components. These models are expressive and powerful, but exact computation is often intractable. A broad research effort in recent years has aimed at designing structured prediction models and approximate inference and learning procedures that are computationally efficient. This volume offers an overview of this recent research in order to make the work accessible to a broader research community. The chapters, by leading researchers in the field, cover a range of topics, including research trends, the linear programming relaxation approach, innovations in probabilistic modeling, recent theoretical progress, and resource-aware learning. Contributors Jonas Behr, Yutian Chen, Fernando De La Torre, Justin Domke, Peter V. Gehler, Andrew E. Gelfand, Sébastien Giguère, Amir Globerson, Fred A. Hamprecht, Minh Hoai, Tommi Jaakkola, Jeremy Jancsary, Joseph Keshet, Marius Kloft, Vladimir Kolmogorov, Christoph H. Lampert, François Laviolette, Xinghua Lou, Mario Marchand, André F. T. Martins, Ofer Meshi, Sebastian Nowozin, George Papandreou, Daniel Průša, Gunnar Rätsch, Amélie Rolland, Bogdan Savchynskyy, Stefan Schmidt, Thomas Schoenemann, Gabriele Schweikert, Ben Taskar, Sinisa Todorovic, Max Welling, David Weiss, Thomáš Werner, Alan Yuille, Stanislav Živný

Smart Health

Smart Health
Author :
Publisher : Springer Nature
Total Pages : 397
Release :
ISBN-10 : 9783030344825
ISBN-13 : 3030344827
Rating : 4/5 (25 Downloads)

Synopsis Smart Health by : Hsinchun Chen

This book constitutes the thoroughly refereed conference proceedings of the International Conference for Smart Health, ICSH 2019, held in Shenzhen, China, in July 2019. The 34 full papers and 1 short papers presented were carefully reviewed and selected from 43 submissions. In this book a lively exchange and collaborations between the growing international smart health research scholars and communities has been introduced, and to advance our understanding about the technical, practical, economic, behavioral, and social issues center on smart health . The selected papers are organized into the following topics: Precision Medicine and Telehealth, Social, Psychosocial and Behavioral Determinants of Health, Data science, Analytics, Clinical and Business Intelligence, Clinical Informatics and Clinician Engagement.

Deep Learning for Genomics

Deep Learning for Genomics
Author :
Publisher : Packt Publishing Ltd
Total Pages : 270
Release :
ISBN-10 : 9781804613016
ISBN-13 : 1804613010
Rating : 4/5 (16 Downloads)

Synopsis Deep Learning for Genomics by : Upendra Kumar Devisetty

Learn concepts, methodologies, and applications of deep learning for building predictive models from complex genomics data sets to overcome challenges in the life sciences and biotechnology industries Key FeaturesApply deep learning algorithms to solve real-world problems in the field of genomicsExtract biological insights from deep learning models built from genomic datasetsTrain, tune, evaluate, deploy, and monitor deep learning models for enabling predictions in genomicsBook Description Deep learning has shown remarkable promise in the field of genomics; however, there is a lack of a skilled deep learning workforce in this discipline. This book will help researchers and data scientists to stand out from the rest of the crowd and solve real-world problems in genomics by developing the necessary skill set. Starting with an introduction to the essential concepts, this book highlights the power of deep learning in handling big data in genomics. First, you'll learn about conventional genomics analysis, then transition to state-of-the-art machine learning-based genomics applications, and finally dive into deep learning approaches for genomics. The book covers all of the important deep learning algorithms commonly used by the research community and goes into the details of what they are, how they work, and their practical applications in genomics. The book dedicates an entire section to operationalizing deep learning models, which will provide the necessary hands-on tutorials for researchers and any deep learning practitioners to build, tune, interpret, deploy, evaluate, and monitor deep learning models from genomics big data sets. By the end of this book, you'll have learned about the challenges, best practices, and pitfalls of deep learning for genomics. What you will learnDiscover the machine learning applications for genomicsExplore deep learning concepts and methodologies for genomics applicationsUnderstand supervised deep learning algorithms for genomics applicationsGet to grips with unsupervised deep learning with autoencodersImprove deep learning models using generative modelsOperationalize deep learning models from genomics datasetsVisualize and interpret deep learning modelsUnderstand deep learning challenges, pitfalls, and best practicesWho this book is for This deep learning book is for machine learning engineers, data scientists, and academicians practicing in the field of genomics. It assumes that readers have intermediate Python programming knowledge, basic knowledge of Python libraries such as NumPy and Pandas to manipulate and parse data, Matplotlib, and Seaborn for visualizing data, along with a base in genomics and genomic analysis concepts.

Hands-On Big Data Modeling

Hands-On Big Data Modeling
Author :
Publisher : Packt Publishing Ltd
Total Pages : 293
Release :
ISBN-10 : 9781788626088
ISBN-13 : 1788626087
Rating : 4/5 (88 Downloads)

Synopsis Hands-On Big Data Modeling by : James Lee

Solve all big data problems by learning how to create efficient data models Key FeaturesCreate effective models that get the most out of big dataApply your knowledge to datasets from Twitter and weather data to learn big dataTackle different data modeling challenges with expert techniques presented in this bookBook Description Modeling and managing data is a central focus of all big data projects. In fact, a database is considered to be effective only if you have a logical and sophisticated data model. This book will help you develop practical skills in modeling your own big data projects and improve the performance of analytical queries for your specific business requirements. To start with, you’ll get a quick introduction to big data and understand the different data modeling and data management platforms for big data. Then you’ll work with structured and semi-structured data with the help of real-life examples. Once you’ve got to grips with the basics, you’ll use the SQL Developer Data Modeler to create your own data models containing different file types such as CSV, XML, and JSON. You’ll also learn to create graph data models and explore data modeling with streaming data using real-world datasets. By the end of this book, you’ll be able to design and develop efficient data models for varying data sizes easily and efficiently. What you will learnGet insights into big data and discover various data modelsExplore conceptual, logical, and big data modelsUnderstand how to model data containing different file typesRun through data modeling with examples of Twitter, Bitcoin, IMDB and weather data modelingCreate data models such as Graph Data and Vector SpaceModel structured and unstructured data using Python and RWho this book is for This book is great for programmers, geologists, biologists, and every professional who deals with spatial data. If you want to learn how to handle GIS, GPS, and remote sensing data, then this book is for you. Basic knowledge of R and QGIS would be helpful.

Integrating Artificial Intelligence and Machine Learning with Blockchain Security

Integrating Artificial Intelligence and Machine Learning with Blockchain Security
Author :
Publisher : Cambridge Scholars Publishing
Total Pages : 302
Release :
ISBN-10 : 9781527530126
ISBN-13 : 1527530124
Rating : 4/5 (26 Downloads)

Synopsis Integrating Artificial Intelligence and Machine Learning with Blockchain Security by : D. Jeya Mala

Due to its transparency and dependability in secure online transactions, blockchain technology has grown in prominence in recent years. Several industries, including those of finance, healthcare, energy and utilities, manufacturing, retail marketing, entertainment and media, supply chains, e-commerce, and e-business, among others, use blockchain technology. In order to enable intelligent decision-making to prevent security assaults, particularly in permission-less blockchain platforms, artificial intelligence (AI) techniques and machine learning (ML) algorithms are used. By exploring the numerous use cases and security methods used in each of them, this book offers insight on the application of AI and ML in blockchain security principles. The book argues that it is crucial to include artificial intelligence and machine learning techniques in blockchain technology in order to increase security.

Business Process Management

Business Process Management
Author :
Publisher : Springer
Total Pages : 449
Release :
ISBN-10 : 9783319453484
ISBN-13 : 3319453483
Rating : 4/5 (84 Downloads)

Synopsis Business Process Management by : Marcello La Rosa

This book constitutes the proceedings of the 14th International Conference on Business Process Management, BPM 2016, held in Rio de Janeiro, Brazil, in September 2016. The focus of the conference covers a range of papers focusing on automated discovery, conformance checking, modeling foundations, understandability of process representations, runtime management and predictive monitoring. The topics selected by the authors demonstrate an increasing interest of the research community in the area of process mining, resonated by an equally fast-growing uptake by different industry sectors.

Machine Learning for Time Series Forecasting with Python

Machine Learning for Time Series Forecasting with Python
Author :
Publisher : John Wiley & Sons
Total Pages : 224
Release :
ISBN-10 : 9781119682370
ISBN-13 : 1119682371
Rating : 4/5 (70 Downloads)

Synopsis Machine Learning for Time Series Forecasting with Python by : Francesca Lazzeri

Learn how to apply the principles of machine learning to time series modeling with this indispensable resource Machine Learning for Time Series Forecasting with Python is an incisive and straightforward examination of one of the most crucial elements of decision-making in finance, marketing, education, and healthcare: time series modeling. Despite the centrality of time series forecasting, few business analysts are familiar with the power or utility of applying machine learning to time series modeling. Author Francesca Lazzeri, a distinguished machine learning scientist and economist, corrects that deficiency by providing readers with comprehensive and approachable explanation and treatment of the application of machine learning to time series forecasting. Written for readers who have little to no experience in time series forecasting or machine learning, the book comprehensively covers all the topics necessary to: Understand time series forecasting concepts, such as stationarity, horizon, trend, and seasonality Prepare time series data for modeling Evaluate time series forecasting models’ performance and accuracy Understand when to use neural networks instead of traditional time series models in time series forecasting Machine Learning for Time Series Forecasting with Python is full real-world examples, resources and concrete strategies to help readers explore and transform data and develop usable, practical time series forecasts. Perfect for entry-level data scientists, business analysts, developers, and researchers, this book is an invaluable and indispensable guide to the fundamental and advanced concepts of machine learning applied to time series modeling.

The Mathematics of Learning: How Machines Understand and Evolve

The Mathematics of Learning: How Machines Understand and Evolve
Author :
Publisher : Raghava Appikatla
Total Pages : 132
Release :
ISBN-10 :
ISBN-13 :
Rating : 4/5 ( Downloads)

Synopsis The Mathematics of Learning: How Machines Understand and Evolve by : Kevin Simmons

Imagine a world where machines learn and adapt, not through human programming, but through their own experiences. This is the world of machine learning, a field transforming how we interact with technology. This book unveils the fascinating mathematics behind this revolution, offering a clear and accessible guide for anyone curious about the algorithms that power our smartphones, self-driving cars, and even medical diagnoses. You'll discover how machines learn from data, identify patterns, and make predictions. We explore the core concepts of linear algebra, calculus, and probability theory, demystifying these often intimidating topics with clear explanations and engaging examples. From the fundamentals of neural networks to the intricacies of deep learning, this book provides a comprehensive foundation for understanding the mathematical underpinnings of modern AI. This book is perfect for students, professionals, or anyone with a thirst for knowledge about the future of technology. Whether you're a tech enthusiast looking to understand the inner workings of AI, a data scientist seeking to deepen your expertise, or simply curious about how machines learn, this book will equip you with the necessary tools and insights. Unlock the secrets of machine learning and become a part of the exciting journey towards a more intelligent future.