Hasil Pencarian  ::  Simpan CSV :: Kembali

Hasil Pencarian

Ditemukan 29652 dokumen yang sesuai dengan query
cover
"Principles of big data helps readers avoid the common mistakes that endanger all big data projects. By stressing simple, fundamental concepts, this book teaches readers how to organize large volumes of complex data, and how to achieve data permanence when the content of the data is constantly changing. General methods for data verification and validation, as specifically applied to big data resources, are stressed throughout the book. The book demonstrates how adept analysts can find relationships among data objects held in disparate big data resources, when the data objects are endowed with semantic support (i.e., organized in classes of uniquely identified data objects). Readers will learn how their data can be integrated with data from other resources, and how the data extracted from big data resources can be used for purposes beyond those imagined by the data creators."
Waltham, MA: Morgan Kaufmann, 2013
e20427176
eBooks  Universitas Indonesia Library
cover
Berman, Jules J.
""Principles of Big Data helps readers avoid the common mistakes that endanger all Big Data projects. By stressing simple, fundamental concepts, this book teaches readers how to organize large volumes of complex data, and how to achieve data permanence when the content of the data is constantly changing. General methods for data verification and validation, as specifically applied to Big Data resources, are stressed throughout the book. The book demonstrates how adept analysts can find relationships among data objects held in disparate Big Data resources, when the data objects are endowed with semantic support (i.e., organized in classes of uniquely identified data objects). Readers will learn how their data can be integrated with data from other resources, and how the data extracted from Big Data resources can be used for purposes beyond those imagined by the data creators. . Learn general methods for specifying Big Data in a way that is understandable to humans and to computers. . Avoid the pitfalls in Big D"
Amsterdam: Morgan Kaufmann , 2013
005.74 BER p
Buku Teks SO  Universitas Indonesia Library
cover
"Big data analytics will assist managers in providing an overview of the drivers for introducing big data technology into the organization and for understanding the types of business problems best suited to big data analytics solutions, understanding the value drivers and benefits, strategic planning, developing a pilot, and eventually planning to integrate back into production within the enterprise."
Waltham, MA: Elsevier, 2013
e20426807
eBooks  Universitas Indonesia Library
cover
McKnight, William
"Information management ; gaining a competitive advantage with data is about making smart decisions to make the most of company information. Expert author William McKnight develops the value proposition for information in the enterprise and succinctly outlines the numerous forms of data storage. Information Management will enlighten you, challenge your preconceived notions, and help activate information in the enterprise. Get the big picture on managing data so that your team can make smart decisions by understanding how everything from workload allocation to data stores fits together.
The practical, hands-on guidance in this book includes :
Part 1: The importance of information management and analytics to business, and how data warehouses are used.
Part 2: The technologies and data that advance an organization, and extend data warehouses and related functionality.
Part 3: Big Data and NoSQL, and how technologies like Hadoop enable management of new forms of data.
Part 4: Pulls it all together, while addressing topics of agile development, modern business intelligence, and organizational change management."
Waltham, MA: Morgan Kaufmann, 2014
e20427137
eBooks  Universitas Indonesia Library
cover
"Data warehousing in the age of the big data will help you and your organization make the most of unstructured data with your existing data warehouse.
As big data continues to revolutionize how we use data, it doesn't have to create more confusion. Expert author Krish Krishnan helps you make sense of how big data fits into the world of data warehousing in clear and concise detail. The book is presented in three distinct parts. Part 1 discusses big data, its technologies and use cases from early adopters. Part 2 addresses data warehousing, its shortcomings, and new architecture options, workloads, and integration techniques for Big Data and the data warehouse. Part 3 deals with data governance, data visualization, information life-cycle management, data scientists, and implementing a big data–ready data warehouse. Extensive appendixes include case studies from vendor implementations and a special segment on how we can build a healthcare information factory."
Waltham, MA: Morgan Kaufmann, 2013
e20426924
eBooks  Universitas Indonesia Library
cover
Nainggolan, Dicky R.M.
"Data are the prominent elements in scientific researches and approaches. Data Science methodology is used to select and to prepare enormous numbers of data for further processing and analysing. Big Data technology collects vast amount of data from many sources in order to exploit the information and to visualise trend or to discover a certain phenomenon in the past, present, or in the future at high speed processing capability. Predictive analytics provides in-depth analytical insights and the emerging of machine learning brings the data analytics to a higher level by processing raw data with artificial intelligence technology. Predictive analytics and machine learning produce visual reports for decision makers and stake-holders. Regarding cyberspace security, big data promises the opportunities in order to prevent and to detect any advanced cyber-attacks by using internal and external security data."
Bogor: Universitas Pertahanan Indonesia, 2017
345 JPUPI 7:2 (2017)
Artikel Jurnal  Universitas Indonesia Library
cover
Atal Malviya
"In today’s fast growing digital world, the web, mobile, social networks and other digital platforms are producing enormous amounts of data that hold intelligence and valuable information. Correctly used it has the power to create sustainable value in different forms for businesses. The commonly used term for this data is Big Data, which includes structured, unstructured and hybrid structured data. However, Big Data is of limited value unless insightful information can be extracted from the sources of data.
The solution is Big Data analytics, and how managers and executives can capture value from this vast resource of information and insights. This book develops a simple framework and a non-technical approach to help the reader understand, digest and analyze data, and produce meaningful analytics to make informed decisions. It will support value creation within businesses, from customer care to product innovation, from sales and marketing to operational performance.
The authors provide multiple case studies on global industries and business units, chapter summaries and discussion questions for the reader to consider and explore. Big Data for Managers also presents small cases and challenges for the reader to work on – making this a thorough and practical guide for students and managers."
New York: Routledge, 2019
e20529009
eBooks  Universitas Indonesia Library
cover
Nainggolan, Dicky R.M.
"Data merupakan unsur terpenting dalam setiap penelitian dan pendekatan ilmiah. Metodologi sains data digunakan untuk memilah, memilih dan mempersiapkan sejumlah data untuk diproses dan dianalisis. Teknologi big data mampu mengumpulkan data dengan sangat banyak dari berbagai sumber dengan tujuan untuk mendapatkan informasi dengan visualisasi tren atau menyingkapkan pengetahuan dari suatu peristiwa yang terjadi baik dimasa lalu, sekarang, maupun akan datang dengan kecepatan pemrosesan data sangat tinggi. Analisis prediktif memberikan wawasan analisis lebih dalam dan kemunculan machine learning membawa analisis data ke tingkat yang lebih tinggi dengan bantuan teknologi kecerdasan buatan dalam tahap pemrosesan data mentah. Analisis prediktif dan machine learning menghasilkan laporan berbentuk visual untuk pengambil keputusan dan pemangku kepentingan. Berkenaan dengan keamanan siber, big data menjanjikan kesempatan dalam rangka untuk mencegah dan mendeteksi setiap serangan canggih siber dengan memanfaatkan data keamanan internal dan eksternal."
Bogor: Universitas Pertahanan Indonesia, 2017
345 JPUPI 7:2 (2017)
Artikel Jurnal  Universitas Indonesia Library
cover
Eka Kurnia Sari
"Perkembangan sistem teknologi telekomunikasi yang semakin canggih dan kompleks memicu meningkatnya kegagalan ataupun kesalahan sistem dalam sistem jaringan utama dan sistem pendukung layanan telekomunikasi, serta kesalahan yang terjadi pada bisnis proses dan sumber daya manusia yang terkait. Kegagalan dan kesalahan ini menyembabkan kerugian yang ditanggung perusahaan, kerugian yang ditimbulkan dengan istilah revenue leakage atau kebocoran pendapatan. Revenue Assurance memegang peranan penting dalam pengendalian terhadap resiko revenue leakage dengan membuat kontrol dalam mendeteksi dan mencegah terjadinya kebocoran agar mampu meminimalkan biaya dan memaksimalkan potensi pendapatan. Dalam tesis ini dikembangkan metode untuk menganalisis Big data CDR untuk mengoptimalkan proses analisis pada revenue assurance control dengan menggunakan algoritma K-means Clustering. Algortima ini mengelompokkan obyek pengamatan dalam beberapa kategori yang diindikasikan sebagai titik kebocoran. Hasil kelompok yang dihasilkan dengan kategori yang beresiko tinggi memiliki anggota yang sedikit dengan tingkat nilai evaluasi akurasi cluster, R-Squared, sekitar 90%.

In the telco industry, Revenue Assurance plays an important role to assure the company revenue from leakage. the revenue chain is established across the process and whole sophisticated system that technologically complex to provide the unstoppable services. This case increasing the probability of system or process failure leads to the leakage. Hence necessary the revenue assurance control to detect and prevent it then it can help to minimize cost and maximize revenue. In this thesis, developed the analysis method in big data CDR to optimize analysis process at revenue assurance control using K-means Clustering algorithm. The use of the K-means clustering algorithm method able to group the object areas with high risk indications of leakage. The cluster result of high risk of leakage is having low amount of member, and the cluster evaluation result of R-Squared giving the good value about 90%."
Depok: Fakultas Teknik Universitas Indonesia, 2021
T-pdf
UI - Tesis Membership  Universitas Indonesia Library
cover
New York: Springer, 2008
005.74 SHA
Buku Teks SO  Universitas Indonesia Library
<<   1 2 3 4 5 6 7 8 9 10   >>