By using tdwi.org website you agree to our use of cookies as described in our cookie policy. Learn More

RESEARCH & RESOURCES

Featured Webinars

  • From Migration to Modernization: Boosting Your Data Infrastructure for Success

    Join this TDWI webinar, with Fern Halper, TDWI’s VP of research; Arnab Sen, VP of data engineering at Tredence; and Sami Akbay, group product manager – data and analytics at Google, to learn how to transition from legacy systems to modern, cloud-based infrastructures, democratize data across the organization, boost operational efficiency, and enable advanced technologies for sustained growth. October 22, 2024

  • Driving Data Quality at Scale with High-Performance Observability

    In this webinar, TDWI senior research director James Kobielus will discuss the value of observability, lineage analysis, and other tools for driving data quality at scale in the cloud. October 24, 2024

  • Building Sophisticated AI Business Applications in the Cloud

    In this webinar, TDWI senior research director Fern Halper will provide an overview of best practices for building sophisticated, high-performance, and low-latency AI business applications in the cloud. October 29, 2024

Upcoming Webinars

International Broadcasts

TDWI Webinars on Big Data, Business Intelligence, Data Warehousing & Analytics

TDWI Webinars deliver unbiased information on pertinent issues in the big data, business intelligence, data warehousing, and analytics industry. Each live Webinar is roughly one hour in length and includes an interactive question-and-answer session following the presentation.


On Demand

The Role of Hadoop in BI and Data Warehousing

Increasing interest in using Hadoop for data management, transformation, and analysis has led to significant development efforts by commercial vendors to enhance and extend the open source Apache Hadoop framework and offer a range of different Hadoop solutions. Many of these solutions can be used to enhance and extend the current BI and data warehousing environment.

Colin White


Architecture Matters: Real-Time In-Memory Technologies Do Not Make Data Warehousing Obsolete

For years, experienced data warehousing (DW) consultants and analysts have advocated the need for a well-thought-out architecture for designing and implementing large-scale DW environments. The benefits from these architectures are well documented, but enterprises are faced with new and disruptive demands from their business users. The question becomes: How do we maintain a stable analytical environment, yet bring in the technological innovations so desperately needed?

Claudia Imhoff, Ph.D.


Data Management Best Practices in the Age of Big Data and Real-Time Operations

The incremental movement toward real-time operation is the most influential trend today in data-driven IT disciplines such as business intelligence (BI), data warehousing (DW), and data integration (DI). From a technology viewpoint, collecting, processing, and delivering data is hard enough; doing it in real time requires effort that is downright Herculean. Thanks to the big data phenomenon, the volume of data continues to swell, exacerbating the situation.

Philip Russom, Ph.D.


Forward-Looking BI: The Next Step in the Analytics Journey

Reports and dashboards that utilize historical data to gain insight are just the beginning of a company’s analytics journey. Advances in technology including predictive capabilities can help organizations gain competitive advantage by helping them discover trends, patterns, and relationships in data and guide their next course of action. In the past, predictive analytics has been the realm of statisticians and other quantitative individuals and was often separated from BI activities.

Fern Halper, Ph.D.


Five Hot Trends for Enabling Your Data Management and Decision-Making Environment

Big data analytics, mobile devices, cloud-based solutions, self-service BI, and predictive analytics—these are the major trends impacting today’s decision-making environments. Exciting, yes, but enabling these trends can also be quite disruptive to traditional data management processes and the implementers, analysts, and decision makers themselves.

Claudia Imhoff, Ph.D.


Achieving Faster and More Agile BI and Analytics with Virtual Data Processing

Speed, agility, and intelligence are competitive advantages that nearly all organizations seek. To seize these advantages, organizations require timely, diverse, complete, and accurate data. Unfortunately, traditional data warehouse extraction, transformation, and loading (ETL) processes are not fast enough. They put too much burden on ETL developers to understand every nuance of every data source, and it’s getting worse as Hadoop and other big data sources become part of the mix. How can organizations take advantage of new big data sources to deliver complete and diverse views of data—and get beyond the limits of traditional data warehouses?

David Stodder


Cloud BI: Demystifying the Issues

Cloud BI has been positioned as the next evolution in business intelligence because of the advantages it provides in terms of flexibility and elasticity. However, there is still confusion in the market around moving to a cloud model, and cloud BI adoption has been slow, although interest seems to be increasing. For instance, in a recent TDWI survey, a majority of respondents were either already using the cloud or were considering it for BI and analytics.

Fern Halper, Ph.D.


TDWI Membership

Get immediate access to training discounts, video library, research, and more.

Find the right level of Membership for you.