Item type | Current library | Collection | Shelving location | Call number | Status | Date due | Barcode | Item holds | |
---|---|---|---|---|---|---|---|---|---|
Books | BITS Pilani Hyderabad | 650 | General Stack (For lending) | 658.4720 BUL-L (Browse shelf(Opens below)) | Available | 46221 |
Browsing BITS Pilani Hyderabad shelves, Shelving location: General Stack (For lending), Collection: 650 Close shelf browser (Hides shelf browser)
No cover image available | ||||||||
658.46068 KAR-D Marketing your consulting or professional services : a step by step program of proven marketing techniques / | 658.47 SIN-R Industrial security management / | 658.47 SIN-R Security awareness and importance of training / | 658.4720 BUL-L AI meets BI : artificial intelligence and business intelligence / | 658.472 ERI-R Building business intelligence applications with .NET / | 658.472 LEB-P Applied microsoft business intelligence / | 658.472 MIN-M Big data, big analytics : |
With the emergence of Artificial Intelligence (AI) in the business world, a new era of Business Intelligence (BI) has been ushered in to create real-world business solutions using analytics. BI developers and practitioners now have tools and technologies to create systems and solutions to guide effective decision-making. Decisions can be made based on more reliable and accurate information and intelligence, which can lead to valuable, actionable insights for business. Previously, BI professionals were stymied by bad or incomplete data, poorly architected solutions, or even outright incapable systems or resources. With the advent of AI, BI has new possibilities for effectiveness. This is a long-awaited phase for practitioners and developers and, moreover, for executives and leaders relying on knowledgeable and intelligent decision-making for their organizations.
Beginning with an outline of the traditional methods for implementing BI in the enterprise and how BI has evolved into using self-service analytics, data discovery, and most recently AI, AI Meets BI first lays out the three typical architectures of the first, second, and third generations of BI. It then takes an in-depth look at various types of analytics and highlights how each of these can be implemented using AI-enabled algorithms and deep learning models.
The crux of the book is four industry use cases. They describe how an enterprise can access, assess, and perform data analytics by discovering data, defining key metrics that enable the same, defining governance rules, and activating metadata for AI/ML recommendations. Explaining the implementation specifics of each of these four use cases using various AI-enabled machine learning and deep learning algorithms, this book provides complete code for each of the implementations, along with the output of the code, supplemented by visuals that aid in BI-enabled decision-making.
Concluding with a brief discussion of the cognitive computing aspects of AI, the book looks at future trends, including augmented analytics, automated and autonomous BI, and the security and governance of AI-powered BI.
There are no comments on this title.