Data Simplification PDF Download

Are you looking for read ebook online? Search for your book and save it on your Kindle device, PC, phones or tablets. Download Data Simplification PDF full book. Access full book title Data Simplification by Jules J. Berman. Download full books in PDF and EPUB format.

Data Simplification

Data Simplification PDF Author: Jules J. Berman
Publisher: Morgan Kaufmann
ISBN: 0128038543
Category : Computers
Languages : en
Pages : 400

Book Description
Data Simplification: Taming Information With Open Source Tools addresses the simple fact that modern data is too big and complex to analyze in its native form. Data simplification is the process whereby large and complex data is rendered usable. Complex data must be simplified before it can be analyzed, but the process of data simplification is anything but simple, requiring a specialized set of skills and tools. This book provides data scientists from every scientific discipline with the methods and tools to simplify their data for immediate analysis or long-term storage in a form that can be readily repurposed or integrated with other data. Drawing upon years of practical experience, and using numerous examples and use cases, Jules Berman discusses the principles, methods, and tools that must be studied and mastered to achieve data simplification, open source tools, free utilities and snippets of code that can be reused and repurposed to simplify data, natural language processing and machine translation as a tool to simplify data, and data summarization and visualization and the role they play in making data useful for the end user. Discusses data simplification principles, methods, and tools that must be studied and mastered Provides open source tools, free utilities, and snippets of code that can be reused and repurposed to simplify data Explains how to best utilize indexes to search, retrieve, and analyze textual data Shows the data scientist how to apply ontologies, classifications, classes, properties, and instances to data using tried and true methods

Data Simplification

Data Simplification PDF Author: Jules J. Berman
Publisher: Morgan Kaufmann
ISBN: 0128038543
Category : Computers
Languages : en
Pages : 400

Book Description
Data Simplification: Taming Information With Open Source Tools addresses the simple fact that modern data is too big and complex to analyze in its native form. Data simplification is the process whereby large and complex data is rendered usable. Complex data must be simplified before it can be analyzed, but the process of data simplification is anything but simple, requiring a specialized set of skills and tools. This book provides data scientists from every scientific discipline with the methods and tools to simplify their data for immediate analysis or long-term storage in a form that can be readily repurposed or integrated with other data. Drawing upon years of practical experience, and using numerous examples and use cases, Jules Berman discusses the principles, methods, and tools that must be studied and mastered to achieve data simplification, open source tools, free utilities and snippets of code that can be reused and repurposed to simplify data, natural language processing and machine translation as a tool to simplify data, and data summarization and visualization and the role they play in making data useful for the end user. Discusses data simplification principles, methods, and tools that must be studied and mastered Provides open source tools, free utilities, and snippets of code that can be reused and repurposed to simplify data Explains how to best utilize indexes to search, retrieve, and analyze textual data Shows the data scientist how to apply ontologies, classifications, classes, properties, and instances to data using tried and true methods

Data Simplification

Data Simplification PDF Author: Jules J. Berman
Publisher: Morgan Kaufmann Publishers
ISBN: 9780128037812
Category :
Languages : en
Pages : 398

Book Description
Data Simplification: Taming Information With Open Source Tools addresses the simple fact that modern data is too big and complex to analyze in its native form. Data simplification is the process whereby large and complex data is rendered usable. Complex data must be simplified before it can be analyzed, but the process of data simplification is anything but simple, requiring a specialized set of skills and tools. This book provides data scientists from every scientific discipline with the methods and tools to simplify their data for immediate analysis or long-term storage in a form that can be readily repurposed or integrated with other data. Drawing upon years of practical experience, and using numerous examples and use cases, Jules Berman discusses the principles, methods, and tools that must be studied and mastered to achieve data simplification, open source tools, free utilities and snippets of code that can be reused and repurposed to simplify data, natural language processing and machine translation as a tool to simplify data, and data summarization and visualization and the role they play in making data useful for the end user. Discusses data simplification principles, methods, and tools that must be studied and mastered Provides open source tools, free utilities, and snippets of code that can be reused and repurposed to simplify data Explains how to best utilize indexes to search, retrieve, and analyze textual data Shows the data scientist how to apply ontologies, classifications, classes, properties, and instances to data using tried and true methods

Digital Simplified

Digital Simplified PDF Author: Raj Vattikuti
Publisher: Imagine and Wonder
ISBN: 1637610718
Category : Business & Economics
Languages : en
Pages : 195

Book Description
"As a technologist, entrepreneur, and philanthropist, Raj Vattikuti has the ideal background to outline the steps of creating a Digital Strategy. Ram Charan is one of the world's most influential consultants who brings deep business insight and understanding of digital business. Together Raj and Ram explain the benefits and pitfalls of various approaches and why standing still means failure. This book explains how a digital business thinks, operates with agility, develops deeper customer relationships, and appropriately uses technology. It also emphasizes that developing a Digital Strategy is an ongoing process to sustain a competitive advantage and provides a template to help business compete in a digital economy. This book offers a practical perspective from decades of partnering with various businesses across many sectors and outlines how to create value for your customers and business." Jacques Nasser AC "Raj Vattikuti and Ram Charan have seen what so many others have missed- that real digital transformation starts and ends with the business. The central lessons of their book are what every leader needs to hear: Give digital ownership to the business. Take an agile, iterative approach to investment. Design an innovation process based on experimentation. Push for speed and build digital products in weeks, not years. Shift the culture to empower employees, collaborate across silos, and focus on outcomes. This is how digital transformation delivers lasting growth. If you are leading a legacy business today, you cannot afford anything less!" David L. Rogers, global bestselling author of "The Digital Transformation Playbook" "This book is a game changer: no longer will the IT department be seen as disconnected from digital imperatives. Data ultimately should determine the direction of business strategy, capital allocation, and how to assess competitive threats and opportunities. Raj and Ram present the business case for driving digital solutions through innovative IT platforms which keep the plane afloat while installing a new digital engine." Dennis Carey, Vice Chairman Korn Ferry, Founder The Prium and The CEO-Academy

Data Abstraction and Pattern Identification in Time-series Data

Data Abstraction and Pattern Identification in Time-series Data PDF Author: Prithiviraj Muthumanickam
Publisher: Linköping University Electronic Press
ISBN: 9179299652
Category :
Languages : en
Pages : 58

Book Description
Data sources such as simulations, sensor networks across many application domains generate large volumes of time-series data which exhibit characteristics that evolve over time. Visual data analysis methods can help us in exploring and understanding the underlying patterns present in time-series data but, due to their ever-increasing size, the visual data analysis process can become complex. Large data sets can be handled using data abstraction techniques by transforming the raw data into a simpler format while, at the same time, preserving significant features that are important for the user. When dealing with time-series data, abstraction techniques should also take into account the underlying temporal characteristics. This thesis focuses on different data abstraction and pattern identification methods particularly in the cases of large 1D time-series and 2D spatio-temporal time-series data which exhibit spatiotemporal discontinuity. Based on the dimensionality and characteristics of the data, this thesis proposes a variety of efficient data-adaptive and user-controlled data abstraction methods that transform the raw data into a symbol sequence. The transformation of raw time-series into a symbol sequence can act as input to different sequence analysis methods from data mining and machine learning communities to identify interesting patterns of user behavior. In the case of very long duration 1D time-series, locally adaptive and user-controlled data approximation methods were presented to simplify the data, while at the same time retaining the perceptually important features. The simplified data were converted into a symbol sequence and a sketch-based pattern identification was then used to identify patterns in the symbolic data using regular expression based pattern matching. The method was applied to financial time-series and patterns such as head-and-shoulders, double and triple-top patterns were identified using hand drawn sketches in an interactive manner. Through data smoothing, the data approximation step also enables visualization of inherent patterns in the time-series representation while at the same time retaining perceptually important points. Very long duration 2D spatio-temporal eye tracking data sets that exhibit spatio-temporal discontinuity was transformed into symbolic data using scalable clustering and hierarchical cluster merging processes, each of which can be parallelized. The raw data is transformed into a symbol sequence with each symbol representing a region of interest in the eye gaze data. The identified regions of interest can also be displayed in a Space-Time Cube (STC) that captures both the temporal and contextual information. Through interactive filtering, zooming and geometric transformation, the STC representation along with linked views enables interactive data exploration. Using different sequence analysis methods, the symbol sequences are analyzed further to identify temporal patterns in the data set. Data collected from air traffic control officers from the domain of Air traffic control were used as application examples to demonstrate the results.

Digital Imaging for Cultural Heritage Preservation

Digital Imaging for Cultural Heritage Preservation PDF Author: Filippo Stanco
Publisher: CRC Press
ISBN: 1439821739
Category : Computers
Languages : en
Pages : 525

Book Description
This edition presents the most prominent topics and applications of digital image processing, analysis, and computer graphics in the field of cultural heritage preservation. The text assumes prior knowledge of digital image processing and computer graphics fundamentals. Each chapter contains a table of contents, illustrations, and figures that elucidate the presented concepts in detail, as well as a chapter summary and a bibliography for further reading. Well-known experts cover a wide range of topics and related applications, including spectral imaging, automated restoration, computational reconstruction, digital reproduction, and 3D models.

Analytics and Big Data for Accountants

Analytics and Big Data for Accountants PDF Author: Jim Lindell
Publisher: John Wiley & Sons
ISBN: 1119512360
Category : Computers
Languages : en
Pages : 243

Book Description
Analytics is the new force driving business. Tools have been created to measure program impacts and ROI, visualize data and business processes, and uncover the relationship between key performance indicators, many using the unprecedented amount of data now flowing into organizations. Featuring updated examples and surveys, this dynamic book covers leading-edge topics in analytics and finance. It is packed with useful tips and practical guidance you can apply immediately. This book prepares accountants to: Deal with major trends in predictive analytics, optimization, correlation of metrics, and big data. Interpret and manage new trends in analytics techniques affecting your organization. Use new tools for data analytics. Critically interpret analytics reports and advise decision makers.

Making Life Easy for Citizens and Businesses in Portugal Administrative Simplification and e-Government

Making Life Easy for Citizens and Businesses in Portugal Administrative Simplification and e-Government PDF Author: OECD
Publisher: OECD Publishing
ISBN: 926404826X
Category :
Languages : en
Pages : 214

Book Description
Analyses administrative simplification and e-government in Portugal, showing how e-government can be used as a lever for broader administrative simplification by making service delivery more coherent and efficient.

The Design of Management Information Systems for Mental Health Organizations

The Design of Management Information Systems for Mental Health Organizations PDF Author: Robert L. Chapman
Publisher:
ISBN:
Category : Information storage and retrieval systems
Languages : en
Pages : 140

Book Description


Topological Data Analysis for Scientific Visualization

Topological Data Analysis for Scientific Visualization PDF Author: Julien Tierny
Publisher: Springer
ISBN: 3319715070
Category : Mathematics
Languages : en
Pages : 158

Book Description
Combining theoretical and practical aspects of topology, this book provides a comprehensive and self-contained introduction to topological methods for the analysis and visualization of scientific data. Theoretical concepts are presented in a painstaking but intuitive manner, with numerous high-quality color illustrations. Key algorithms for the computation and simplification of topological data representations are described in detail, and their application is carefully demonstrated in a chapter dedicated to concrete use cases. With its fine balance between theory and practice, "Topological Data Analysis for Scientific Visualization" constitutes an appealing introduction to the increasingly important topic of topological data analysis for lecturers, students and researchers.

Automatic Text Simplification

Automatic Text Simplification PDF Author: Horacio Saggion
Publisher: Springer Nature
ISBN: 3031021665
Category : Computers
Languages : en
Pages : 121

Book Description
Thanks to the availability of texts on the Web in recent years, increased knowledge and information have been made available to broader audiences. However, the way in which a text is written—its vocabulary, its syntax—can be difficult to read and understand for many people, especially those with poor literacy, cognitive or linguistic impairment, or those with limited knowledge of the language of the text. Texts containing uncommon words or long and complicated sentences can be difficult to read and understand by people as well as difficult to analyze by machines. Automatic text simplification is the process of transforming a text into another text which, ideally conveying the same message, will be easier to read and understand by a broader audience. The process usually involves the replacement of difficult or unknown phrases with simpler equivalents and the transformation of long and syntactically complex sentences into shorter and less complex ones. Automatic text simplification, a research topic which started 20 years ago, now has taken on a central role in natural language processing research not only because of the interesting challenges it posesses but also because of its social implications. This book presents past and current research in text simplification, exploring key issues including automatic readability assessment, lexical simplification, and syntactic simplification. It also provides a detailed account of machine learning techniques currently used in simplification, describes full systems designed for specific languages and target audiences, and offers available resources for research and development together with text simplification evaluation techniques.