Remove Data-driven Remove Metadata Remove Workshop
article thumbnail

Making OT-IT integration a reality with new data architectures and generative AI

CIO Business Intelligence

Manufacturers have long held a data-driven vision for the future of their industry. It’s one where near real-time data flows seamlessly between IT and operational technology (OT) systems. Legacy data management is holding back manufacturing transformation Until now, however, this vision has remained out of reach.

article thumbnail

What Are ChatGPT and Its Friends?

O'Reilly on Data

BLOOM An open source model developed by the BigScience workshop. But Transformers have some other important advantages: Transformers don’t require training data to be labeled; that is, you don’t need metadata that specifies what each sentence in the training data means. The final point needs to be unpacked a bit.

IT 346
Insiders

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

article thumbnail

IBM named a leader in the 2022 Gartner® Magic Quadrant™ for Data Integration Tools

IBM Big Data Hub

The only question is, how do you ensure effective ways of breaking down data silos and bringing data together for self-service access? It starts by modernizing your data integration capabilities – ensuring disparate data sources and cloud environments can come together to deliver data in real time and fuel AI initiatives.

article thumbnail

Data Governance Framework: Three Steps to Successful & Sustainable Implementation

erwin

A strong data governance framework is central to the success of any data-driven organization because it ensures this valuable asset is properly maintained, protected and maximized. But despite this fact, enterprises often face push back when implementing a new data governance initiative or trying to mature an existing one.

article thumbnail

Stream multi-tenant data with Amazon MSK

AWS Big Data

Real-time data streaming has become prominent in today’s world of instantaneous digital experiences. Processing these data streams in real time is key to delivering responsive and personalized solutions, and maximizes the value of data by processing it as close to the event time as possible.

Modeling 103
article thumbnail

Themes and Conferences per Pacoid, Episode 10

Domino Data Lab

Co-chair Paco Nathan provides highlights of Rev 2 , a data science leaders summit. We held Rev 2 May 23-24 in NYC, as the place where “data science leaders and their teams come to learn from each other.” Nick Elprin, CEO and co-founder of Domino Data Lab. First item on our checklist: did Rev 2 address how to lead data teams?

article thumbnail

How Amazon GTTS runs large-scale ETL jobs on AWS using Amazon MWAA

AWS Big Data

INSITE applications are in general data intensive. They ingest and transform large volumes of data in different formats and processing patterns (such as batch and near real time) from various sources internal and external to Amazon. To enable and meet these requirements, GTTS built its own data platform.