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

RESEARCH & RESOURCES

Featured Webinars

Upcoming Webinars

  • Expert Panel: Real-Time Analytics Use Cases and Architectures

    In this expert panel, TDWI senior research director James Kobielus will discuss the chief enterprise use cases for real-time analytics and the principal architectural considerations for data, analytics, and IT professionals seeking to optimize their infrastructures for these applications. December 9, 2024 Register

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

Six Best Practices for Gaining Value from Enterprise Reports Using Next-Generation Analytics

Valuable organizational data about a company’s business and its customers is often found in reports. This might include financial statements, billing invoices, healthcare patient records, or statements of benefits. Such data is often stored in a company’s enterprise content management (ECM) systems.

Fern Halper, Ph.D.


In-Memory Computing: Expanding the Platform Horizon Beyond the Database

In-memory database management systems have matured to the point where they predictably promise accelerated application performance. By adopting alternative storage layouts amenable to in-memory processing, these databases take advantage of efficient use of available memory to reduce or even eliminate the data latencies typically associated with significantly slower disk-based storage media.

David Loshin


Eight Considerations for Utilizing Big Data Analytics with Hadoop

As companies seek to gain competitive advantage by utilizing analytics, a change is occurring in terms of the data and infrastructure that supports it. A number of technology factors—including big data, Hadoop, and advances in analytics—are coming together to form the fabric of an evolving analytics ecosystem. Advanced analytics, in particular, are becoming more important as companies embrace big data. This includes techniques such as advanced visualization and machine learning that can be particularly beneficial in big data discovery and analysis.

Fern Halper, Ph.D.


Evolving Data Warehouse Architectures in the Age of Big Data Analytics

The complexity of data warehouse environments has increased dramatically in recent years with the arrival of data warehouse appliances, columnar database management systems, NoSQL databases, Hadoop, and tools for multiple forms of advanced analytics or real-time operation. The new vendor and open source platforms come in response to users’ growing demands for platforms optimized for various forms of big data, analytics, real-time operation, and the workloads that go with them.

Philip Russom, Ph.D.


Analytics at the Speed of Business: Delivering Real-Time Insight from Data Streams

Find out how your organization can achieve new advantages through the visualization and analysis of real-time data and event streams. Today, leading firms in industries such as financial services, healthcare, energy, telecom, manufacturing, government, and more are capturing insights from data and event streams and delivering real-time analytics for both human and automated decisions.

David Stodder


Seven Data Discovery Steps for Improving Information Delivery and Accuracy

Know your data. With today’s information-driven business projects, no maxim could be more true. Yet many organizations lack fundamental knowledge about their data—and the situation is getting tougher as “big data” sources grow in size and variety and manual documentation efforts can’t keep pace. Good data knowledge is critical to defining business objects such as customers and products within and across data sources. Clear understanding of data assets, data relationships, and how sources map to target schema can be a vital business accelerator. Poor understanding leads to higher costs, embarrassing mistakes, regulatory errors, and data quality problems that damage daily decision making.

David Stodder


Preparing Data for Analytics

There’s a fair amount of confusion about how best to collect, integrate, and preprocess data for the purposes of advanced analytics. Many business intelligence and data warehouse professionals think it’s the same as the traditional ETL practices they have applied to their report-oriented data warehouses for years. And some database administrators think it’s just a matter of dumping large volumes of data into a highly scalable repository.

Philip Russom, Ph.D.


TDWI Membership

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

Find the right level of Membership for you.