Developing A Path To Data Dominance

Download Developing A Path To Data Dominance PDF/ePub or read online books in Mobi eBooks. Click Download or Read Online button to get Developing A Path To Data Dominance book now. This website allows unlimited access to, at the time of writing, more than 1.5 million titles, including hundreds of thousands of titles in various foreign languages.
Developing a Path to Data Dominance

Most existing companies struggle currently because they lack the tools and strategies to move product departments into independent platforms that can be retrofitted to form dynamic new products based on consumer demands. This book provides managers and professionals with the necessary approaches for designing software and hardware architectures to support data platform organizations. Specifically, it demonstrates how to automate the decomposition of existing platforms into smaller parts that can be reused to form new variations. This task requires significant analysis and design methodologies and procedures to create an infrastructure based on data as opposed to products. These new knowledge bases allow data-centric professionals to pursue actions that can better predict and respond to the unexpected. Featuring case examples from companies such as Lego, FedEx, General Electric (GE), Pfizer, P&G and more, this book is appropriate for C-level executives engaged in the digital transformation of their firms; entrepreneurs of digital platform companies; and senior software engineers that need to design Internet of Things (IoT) devices and integrate them with block chain and multi-cloud architectures. In addition, this book is also useful for graduate-level coursework in data science.
Data Envelopment Analysis (DEA) Methods for Maximizing Efficiency

In today's highly competitive and rapidly evolving global landscape, the quest for efficiency has become a crucial factor in determining the success of organizations across various industries. Data Envelopment Analysis (DEA) Methods for Maximizing Efficiency is a comprehensive guide that delves into the powerful mathematical tool of DEA, is designed to assess the relative efficiency of decision-making units (DMUs), and provides valuable insights for performance improvement. This book presents a systematic overview of DEA models and techniques, from fundamental concepts to advanced methods, showcasing their practical applications through real-world examples and case studies. Catering to a broad audience, this book is designed for students, researchers, consultants, decision-makers, and enthusiasts in the field of efficiency analysis and performance measurement. Consultants and practitioners will gain practical insights for applying DEA in various contexts, and decision-makers will be equipped to make informed decisions for maximizing efficiency. Additionally, individuals with a general interest in data analysis and performance measurement will find this book accessible and informative. This book covers a wide range of topics, including mathematical foundations of DEA, DEA models and variations, DEA efficiency and productivity measures, DEA applications in various industries such as healthcare, finance, supply chain management, environmental management, education management, and public sector management.
Political Economy of Artificial Intelligence

Author: Bhabani Shankar Nayak
language: en
Publisher: Springer Nature
Release Date: 2024-06-29
This book explores how artificial intelligence, the platform economy, and big data will impact economic development and societal change. It outlines how artificial intelligence is used as a capitalist tool that aids the corporate monopoly and creates alienating development. The ways in which artificial intelligence effects governance, economies, and global societies is also discussed, with particular attention given to how it undermines various forms of democracy. This book aims to challenge established theories on artificial intelligence and technological singularity and highlight how they create new forms of capital accumulation. It will be relevant to students and researchers interested in the economic and social impact of artificial intelligence.