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Self-Service Data Analytics and Governance for Managers. Nathan E. MyersЧитать онлайн книгу.

Self-Service Data Analytics and Governance for Managers - Nathan E. Myers


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for an increasing number of data analytics–assisted processes. A risk mitigation framework is needed that would address the reallocation of control risk to the end-user in the decentralized processing environment. Since process owners, themselves, oversee many facets of their processing, it is not appropriate for IT alone to administer and maintain governance for data analytics programs. As a complement to systems governance, a framework must be developed to pull together the mature elements of system controls to marry them with the unique profiles, risks, and capabilities of emerging self-service data analytics tools. This framework must be threaded and interconnected throughout the firm, championed and sponsored by firm leadership, and must provide for robust project governance, investment governance, and risk governance.

      In the following chapters, we will take a very practical approach to getting readers comfortable with data analytics technologies and practices: surveying operations to uncover use cases with significant benefits warranting prioritization and investment, matching tools to opportunities, and deriving an achievable digital roadmap. We will introduce you to emerging technology that is markedly transforming the processing environment. Later, we will demonstrate the use of one prominent data analytics tool, Alteryx, to bring you aboard the journey. Perhaps most importantly, we will get you thinking about how to prepare your organization by establishing key governance steps now, so that you maintain control as your organization adopts self-service data analytics and business intelligence tooling at scale. In months of research prior to writing this book, your authors failed to identify an existing comprehensive governance framework that is suited entirely for self-service data analytics. Accordingly, in this book, we will draw from more mature and established frameworks (data governance, system governance, and model governance) to build a foundational governance model that can grow with your footprint, as your organization embarks on its inevitable digital journey.

      Companies pursue digital transformation as part of an overall overhaul of business models, as legacy models no longer apply in the current technology-driven environment. As notable technology companies have disrupted entire industries over the past two decades, service companies have pursued digital transformation to remain relevant, develop a competitive edge, and to integrate successful technology innovations into their overall strategy. Many companies regard data as one of their most valuable assets, and digital transformation initiatives are often centered around creating systems and processes to unlock this value. Some of the top reasons that organizations undertake the effort is to unlock data value, to better understand their customers, and to improve products and services. Within finance, accounting, and operations functions, digital transformation initiatives have been more focused on value creation through process control, efficiency savings, and improved reporting.

      Increased job satisfaction and full resource actualization can occur when employees focus on tasks that enhance value for the organization, rather than on mundane, redundant, and low value-added processing steps and activities. By reducing the proportion of time that individuals spend on the manual tail performed outside of systems (data staging, cleansing, enriching, reformatting, and processing), relative to the time spent performing value-added analysis to generate actionable business insights, employees can more readily create value. Organizations benefit through increased process stability and productivity, while employees benefit from increased focus, increased engagement, and true process ownership. In some cases, advanced analytics can be applied to use machine learning and artificial intelligence models for decision-making. New applications of advanced analytics emerge daily and are limited only by the collective imagination, but in large spreadsheet processing plants, “small” automation efforts aimed at improving control and realizing efficiencies and cost savings one process at a time will come to the fore. Self-service data analytics tooling can enable these efforts and will largely be the focus of this book.

      Internet of Things

      One of your authors was a houseguest in a luxury Manhattan apartment roughly 15 years ago, in 2005. He recalls being shown around and impressed that previously stand-alone items were now connected and controlled by the internet. One specific appliance that caught his eye was the refrigerator, which featured a small TV monitor on its door. The homeowner explained that with his “connected” fridge, he was able to maintain an inventory of what necessities were on hand and could easily make a list of the items he needed to purchase. He could even place an online order to have those items delivered. This was an amazing step forward at that time.

      Now, any number of items in our homes are connected to the internet – smart TVs, thermostats, security cameras and home alarms, door locks and garage door openers, lightbulbs, a variety of Amazon Alexa and Google Home hubs, stereos and speaker systems, and far more. Looking forward another 15 years, we predict that readers of future editions of this book may not even recall the age when these connected “things” were not in our homes and relied on to provide the weather forecast, to recommend items for our shopping lists, and to consume streaming podcasts, music stations, and video content. Clearly, we are interacting with and consuming data at an unseen level, but on the flip side, we are generating consumer data at an explosive clip.


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