IBM Datacap and Box Datasheet
Capture documents to and from Box with automatic classification and data extraction to streamline business processes.
View IBM's privacy policy here
Capture documents to and from Box with automatic classification and data extraction to streamline business processes.
View IBM's privacy policy here
Leverage technological advances such as search and exploration, advanced content analytics, and cognitive capabilities with Watson Explorer
View IBM's privacy policy here
This IDC Case Study examines how Honda implemented a cognitive system using text analytics to help it respond faster to customer feedback.
View IBM's privacy policy here
This report explores a Best-in-Class approach to MDM that centralizes the management of data.
View IBM's privacy policy here
View IBM's privacy policy here
This white paper discusses the top three challenges in big data environments and how IBM InfoSphere Big Match for Hadoop helps address them.
View IBM's privacy policy here
How can organizations tap into the vast flow of data, weed out the information that matters, and then link that meaningful sentiment to specific customers? This ebook explores how an enhanced 360-degree view of the customer optimizes and facilitates more personalized customer interactions.
View IBM's privacy policy here
View IBM's privacy policy here
To help enterprises create trusted insight as the volume, velocity and variety of data continue to explode, IBM combines the power of IBM InfoSphere Master Data Management with the IBM big data portfolio.
View IBM's privacy policy here
A solid information integration and governance program should include automated discovery, profiling and understanding of diverse data sets. IBM InfoSphere is designed to do all of these things by evolving information integration and governance to meet the challenges presented by big data.
View IBM's privacy policy here
Apache Hadoop technology is transforming the economics and dynamics of big data initiatives by supporting new processes and architectures that can help cut costs, increase revenue and create competitive advantage. An effective big data integration solution delivers simplicity, speed, scalability, functionality and governance to produce consumable data. To cut through this misinformation and develop an adoption plan for your Hadoop big data project, you must follow a best practices approach that takes into account emerging technologies, scalability requirements, and current resources and skill levels.
Read the white paper and learn:
Help your organization minimize risks and costs and maximize ROI for your Hadoop projects.
View IBM's privacy policy here
View IBM's privacy policy here
View IBM's privacy policy here
IBM InfoSphere Information Server connects to many new ‘at rest’ and streaming big data sources, scales natively on Hadoop.
View IBM's privacy policy here
View IBM's privacy policy here