Remove Data Engineering Remove Organization Remove Training
article thumbnail

Data engineers vs. data scientists

O'Reilly Media - Data

It’s important to understand the differences between a data engineer and a data scientist. Misunderstanding or not knowing these differences are making teams fail or underperform with big data. I think some of these misconceptions come from the diagrams that are used to describe data scientists and data engineers.

article thumbnail

IT leaders: What’s the gameplan as tech badly outpaces talent?

CIO

According to a survey conducted by FTI Consulting on behalf of UST, a digital transformation consultancy, 99% of senior IT decision makers say their companies are deploying AI, with more than half using and integrating it throughout their organizations, and 93% say that AI will be essential to success in the next five years.

article thumbnail

Ready to transform how your IT organization drives business outcomes with AIOps?

CIO

With situational insights, IT operations, SREs, DevOps, and platform engineering teams can reduce time to remediation and quickly restore services with a pre-built set of automations. Are you ready to transform your IT organization with AIOps? Beneath the surface, however, are some crucial gaps.

article thumbnail

The future of data: A 5-pillar approach to modern data management

CIO

A similar transformation has occurred with data. More than 20 years ago, data within organizations was like scattered rocks on early Earth. It was not alive because the business knowledge required to turn data into value was confined to individuals minds, Excel sheets or lost in analog signals.

Data 167
article thumbnail

Data & Analytics Maturity Model Workshop Series

Speaker: Dave Mariani, Co-founder & Chief Technology Officer, AtScale; Bob Kelly, Director of Education and Enablement, AtScale

Check out this new instructor-led training workshop series to help advance your organization's data & analytics maturity. Given how data changes fast, there’s a clear need for a measuring stick for data and analytics maturity. Workshop video modules include: Breaking down data silos.

article thumbnail

Comprehensive data management for AI: The next-gen data management engine that will drive AI to new heights

CIO

The core of their problem is applying AI technology to the data they already have, whether in the cloud, on their premises, or more likely both. Imagine that you’re a data engineer. You export, move, and centralize your data for training purposes with all the associated time and capacity inefficiencies that entails.

article thumbnail

The key to operational AI: Modern data architecture

CIO

Recent research shows that 67% of enterprises are using generative AI to create new content and data based on learned patterns; 50% are using predictive AI, which employs machine learning (ML) algorithms to forecast future events; and 45% are using deep learning, a subset of ML that powers both generative and predictive models.