Data Stream Management

Data Stream Management
Author: Lukasz Golab
Publisher: Morgan & Claypool Publishers
Total Pages: 65
Release: 2010
Genre: Computers
ISBN: 1608452727

In this lecture many applications process high volumes of streaming data, among them Internet traffic analysis, financial tickers, and transaction log mining. In general, a data stream is an unbounded data set that is produced incrementally over time, rather than being available in full before its processing begins. In this lecture, we give an overview of recent research in stream processing, ranging from answering simple queries on high-speed streams to loading real-time data feeds into a streaming warehouse for off-line analysis. We will discuss two types of systems for end-to-end stream processing: Data Stream Management Systems (DSMSs) and Streaming Data Warehouses (SDWs). A traditional database management system typically processes a stream of ad-hoc queries over relatively static data. In contrast, a DSMS evaluates static (long-running) queries on streaming data, making a single pass over the data and using limited working memory. In the first part of this lecture, we will discuss research problems in DSMSs, such as continuous query languages, non-blocking query operators that continually react to new data, and continuous query optimization. The second part covers SDWs, which combine the real-time response of a DSMS by loading new data as soon as they arrive with a data warehouse's ability to manage Terabytes of historical data on secondary storage. Table of Contents: Introduction / Data Stream Management Systems / Streaming Data Warehouses / Conclusions

Data Stream Management

Data Stream Management
Author: Minos Garofalakis
Publisher: Springer
Total Pages: 528
Release: 2016-07-11
Genre: Computers
ISBN: 354028608X

This volume focuses on the theory and practice of data stream management, and the novel challenges this emerging domain poses for data-management algorithms, systems, and applications. The collection of chapters, contributed by authorities in the field, offers a comprehensive introduction to both the algorithmic/theoretical foundations of data streams, as well as the streaming systems and applications built in different domains. A short introductory chapter provides a brief summary of some basic data streaming concepts and models, and discusses the key elements of a generic stream query processing architecture. Subsequently, Part I focuses on basic streaming algorithms for some key analytics functions (e.g., quantiles, norms, join aggregates, heavy hitters) over streaming data. Part II then examines important techniques for basic stream mining tasks (e.g., clustering, classification, frequent itemsets). Part III discusses a number of advanced topics on stream processing algorithms, and Part IV focuses on system and language aspects of data stream processing with surveys of influential system prototypes and language designs. Part V then presents some representative applications of streaming techniques in different domains (e.g., network management, financial analytics). Finally, the volume concludes with an overview of current data streaming products and new application domains (e.g. cloud computing, big data analytics, and complex event processing), and a discussion of future directions in this exciting field. The book provides a comprehensive overview of core concepts and technological foundations, as well as various systems and applications, and is of particular interest to students, lecturers and researchers in the area of data stream management.

Data Streams

Data Streams
Author: S. Muthukrishnan
Publisher: Now Publishers Inc
Total Pages: 136
Release: 2005
Genre: Computers
ISBN: 193301914X

In the data stream scenario, input arrives very rapidly and there is limited memory to store the input. Algorithms have to work with one or few passes over the data, space less than linear in the input size or time significantly less than the input size. In the past few years, a new theory has emerged for reasoning about algorithms that work within these constraints on space, time, and number of passes. Some of the methods rely on metric embeddings, pseudo-random computations, sparse approximation theory and communication complexity. The applications for this scenario include IP network traffic analysis, mining text message streams and processing massive data sets in general. Researchers in Theoretical Computer Science, Databases, IP Networking and Computer Systems are working on the data stream challenges.

Data Stream Management

Data Stream Management
Author: Lukasz Golab
Publisher: Springer Nature
Total Pages: 65
Release: 2022-06-01
Genre: Computers
ISBN: 3031018370

Many applications process high volumes of streaming data, among them Internet traffic analysis, financial tickers, and transaction log mining. In general, a data stream is an unbounded data set that is produced incrementally over time, rather than being available in full before its processing begins. In this lecture, we give an overview of recent research in stream processing, ranging from answering simple queries on high-speed streams to loading real-time data feeds into a streaming warehouse for off-line analysis. We will discuss two types of systems for end-to-end stream processing: Data Stream Management Systems (DSMSs) and Streaming Data Warehouses (SDWs). A traditional database management system typically processes a stream of ad-hoc queries over relatively static data. In contrast, a DSMS evaluates static (long-running) queries on streaming data, making a single pass over the data and using limited working memory. In the first part of this lecture, we will discuss research problems in DSMSs, such as continuous query languages, non-blocking query operators that continually react to new data, and continuous query optimization. The second part covers SDWs, which combine the real-time response of a DSMS by loading new data as soon as they arrive with a data warehouse's ability to manage Terabytes of historical data on secondary storage. Table of Contents: Introduction / Data Stream Management Systems / Streaming Data Warehouses / Conclusions

Data Streams

Data Streams
Author: Charu C. Aggarwal
Publisher: Springer Science & Business Media
Total Pages: 365
Release: 2007-04-03
Genre: Computers
ISBN: 0387475346

This book primarily discusses issues related to the mining aspects of data streams and it is unique in its primary focus on the subject. This volume covers mining aspects of data streams comprehensively: each contributed chapter contains a survey on the topic, the key ideas in the field for that particular topic, and future research directions. The book is intended for a professional audience composed of researchers and practitioners in industry. This book is also appropriate for advanced-level students in computer science.

Data Stream Management System a Complete Guide

Data Stream Management System a Complete Guide
Author: Gerardus Blokdyk
Publisher: 5starcooks
Total Pages: 278
Release: 2018-07-21
Genre:
ISBN: 9780655317593

Does Data stream management system appropriately measure and monitor risk? What are the expected benefits of Data stream management system to the business? Can we do Data stream management system without complex (expensive) analysis? Is the Data stream management system scope manageable? What are the rough order estimates on cost savings/opportunities that Data stream management system brings? This one-of-a-kind Data stream management system self-assessment will make you the principal Data stream management system domain veteran by revealing just what you need to know to be fluent and ready for any Data stream management system challenge. How do I reduce the effort in the Data stream management system work to be done to get problems solved? How can I ensure that plans of action include every Data stream management system task and that every Data stream management system outcome is in place? How will I save time investigating strategic and tactical options and ensuring Data stream management system costs are low? How can I deliver tailored Data stream management system advice instantly with structured going-forward plans? There's no better guide through these mind-expanding questions than acclaimed best-selling author Gerard Blokdyk. Blokdyk ensures all Data stream management system essentials are covered, from every angle: the Data stream management system self-assessment shows succinctly and clearly that what needs to be clarified to organize the required activities and processes so that Data stream management system outcomes are achieved. Contains extensive criteria grounded in past and current successful projects and activities by experienced Data stream management system practitioners. Their mastery, combined with the easy elegance of the self-assessment, provides its superior value to you in knowing how to ensure the outcome of any efforts in Data stream management system are maximized with professional results. Your purchase includes access details to the Data stream management system self-assessment dashboard download which gives you your dynamically prioritized projects-ready tool and shows you exactly what to do next. Your exclusive instant access details can be found in your book. You will receive the following contents with New and Updated specific criteria: - The latest quick edition of the book in PDF - The latest complete edition of the book in PDF, which criteria correspond to the criteria in... - The Self-Assessment Excel Dashboard, and... - Example pre-filled Self-Assessment Excel Dashboard to get familiar with results generation ...plus an extra, special, resource that helps you with project managing. INCLUDES LIFETIME SELF ASSESSMENT UPDATES Every self assessment comes with Lifetime Updates and Lifetime Free Updated Books. Lifetime Updates is an industry-first feature which allows you to receive verified self assessment updates, ensuring you always have the most accurate information at your fingertips.

Data Stream Management System

Data Stream Management System
Author: Gerard Blokdyk
Publisher: Createspace Independent Publishing Platform
Total Pages: 140
Release: 2018-05-25
Genre:
ISBN: 9781719556743

How did the Data stream management system manager receive input to the development of a Data stream management system improvement plan and the estimated completion dates/times of each activity? Who will be responsible for making the decisions to include or exclude requested changes once Data stream management system is underway? Are there any constraints known that bear on the ability to perform Data stream management system work? How is the team addressing them? When a Data stream management system manager recognizes a problem, what options are available? Do we monitor the Data stream management system decisions made and fine tune them as they evolve? This exclusive Data stream management system self-assessment will make you the assured Data stream management system domain auditor by revealing just what you need to know to be fluent and ready for any Data stream management system challenge. How do I reduce the effort in the Data stream management system work to be done to get problems solved? How can I ensure that plans of action include every Data stream management system task and that every Data stream management system outcome is in place? How will I save time investigating strategic and tactical options and ensuring Data stream management system costs are low? How can I deliver tailored Data stream management system advice instantly with structured going-forward plans? There's no better guide through these mind-expanding questions than acclaimed best-selling author Gerard Blokdyk. Blokdyk ensures all Data stream management system essentials are covered, from every angle: the Data stream management system self-assessment shows succinctly and clearly that what needs to be clarified to organize the required activities and processes so that Data stream management system outcomes are achieved. Contains extensive criteria grounded in past and current successful projects and activities by experienced Data stream management system practitioners. Their mastery, combined with the easy elegance of the self-assessment, provides its superior value to you in knowing how to ensure the outcome of any efforts in Data stream management system are maximized with professional results. Your purchase includes access details to the Data stream management system self-assessment dashboard download which gives you your dynamically prioritized projects-ready tool and shows you exactly what to do next. Your exclusive instant access details can be found in your book.

Machine Learning for Data Streams

Machine Learning for Data Streams
Author: Albert Bifet
Publisher: MIT Press
Total Pages: 255
Release: 2018-03-16
Genre: Computers
ISBN: 0262346052

A hands-on approach to tasks and techniques in data stream mining and real-time analytics, with examples in MOA, a popular freely available open-source software framework. Today many information sources—including sensor networks, financial markets, social networks, and healthcare monitoring—are so-called data streams, arriving sequentially and at high speed. Analysis must take place in real time, with partial data and without the capacity to store the entire data set. This book presents algorithms and techniques used in data stream mining and real-time analytics. Taking a hands-on approach, the book demonstrates the techniques using MOA (Massive Online Analysis), a popular, freely available open-source software framework, allowing readers to try out the techniques after reading the explanations. The book first offers a brief introduction to the topic, covering big data mining, basic methodologies for mining data streams, and a simple example of MOA. More detailed discussions follow, with chapters on sketching techniques, change, classification, ensemble methods, regression, clustering, and frequent pattern mining. Most of these chapters include exercises, an MOA-based lab session, or both. Finally, the book discusses the MOA software, covering the MOA graphical user interface, the command line, use of its API, and the development of new methods within MOA. The book will be an essential reference for readers who want to use data stream mining as a tool, researchers in innovation or data stream mining, and programmers who want to create new algorithms for MOA.

Data Stream Management System A Complete Guide - 2020 Edition

Data Stream Management System A Complete Guide - 2020 Edition
Author: Gerardus Blokdyk
Publisher: 5starcooks
Total Pages: 308
Release: 2020-05-15
Genre:
ISBN: 9781867405108

Why improve in the first place? What does your signature ensure? Are you aware of what could cause a problem? How do you recognize an Data Stream Management System objection? What are the long-term Data Stream Management System goals? This premium Data Stream Management System self-assessment will make you the established Data Stream Management System domain expert by revealing just what you need to know to be fluent and ready for any Data Stream Management System challenge. How do I reduce the effort in the Data Stream Management System work to be done to get problems solved? How can I ensure that plans of action include every Data Stream Management System task and that every Data Stream Management System outcome is in place? How will I save time investigating strategic and tactical options and ensuring Data Stream Management System costs are low? How can I deliver tailored Data Stream Management System advice instantly with structured going-forward plans? There's no better guide through these mind-expanding questions than acclaimed best-selling author Gerard Blokdyk. Blokdyk ensures all Data Stream Management System essentials are covered, from every angle: the Data Stream Management System self-assessment shows succinctly and clearly that what needs to be clarified to organize the required activities and processes so that Data Stream Management System outcomes are achieved. Contains extensive criteria grounded in past and current successful projects and activities by experienced Data Stream Management System practitioners. Their mastery, combined with the easy elegance of the self-assessment, provides its superior value to you in knowing how to ensure the outcome of any efforts in Data Stream Management System are maximized with professional results. Your purchase includes access details to the Data Stream Management System self-assessment dashboard download which gives you your dynamically prioritized projects-ready tool and shows you exactly what to do next. Your exclusive instant access details can be found in your book. You will receive the following contents with New and Updated specific criteria: - The latest quick edition of the book in PDF - The latest complete edition of the book in PDF, which criteria correspond to the criteria in... - The Self-Assessment Excel Dashboard - Example pre-filled Self-Assessment Excel Dashboard to get familiar with results generation - In-depth and specific Data Stream Management System Checklists - Project management checklists and templates to assist with implementation INCLUDES LIFETIME SELF ASSESSMENT UPDATES Every self assessment comes with Lifetime Updates and Lifetime Free Updated Books. Lifetime Updates is an industry-first feature which allows you to receive verified self assessment updates, ensuring you always have the most accurate information at your fingertips.

Data Management in Pervasive Systems

Data Management in Pervasive Systems
Author: Francesco Colace
Publisher: Springer
Total Pages: 380
Release: 2015-10-17
Genre: Computers
ISBN: 3319200623

This book contributes to illustrating the methodological and technological issues of data management in Pervasive Systems by using the DataBenc project as the running case study for a variety of research contributions: sensor data management, user-originated data operation and reasoning, multimedia data management, data analytics and reasoning for event detection and decision making, context modelling and control, automatic data and service tailoring for personalization and recommendation. The book is organized into the following main parts: i) multimedia information management; ii) sensor data streams and storage; iii) social networks as information sources; iv) context awareness and personalization. The case study is used throughout the book as a reference example.