Remove Data Governance Remove Digital Transformation Remove Experimentation Remove Forecasting
article thumbnail

Rebranding IT for the modernized IT mission

CIO Business Intelligence

That definition was well ahead of its time and forecasted the current era’s machine learning and generative AI capabilities. After all, many C-suite leaders and employees have an outdated impression of what IT departments do today, which may undermine the CIO’s digital transformation , change management, and other strategic objectives. “We

IT 136
article thumbnail

3 force multipliers for digital transformation

CIO Business Intelligence

While digital initiatives and talent are the board directors’ top strategic business priorities in 2023-2024, IT spending is forecasted to grow by only 2.4% The message to CIOs is to do more with less, and the implication is that CIOs must look at digital transformation initiatives differently than in years past.

Insiders

Sign Up for our Newsletter

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

Trending Sources

article thumbnail

7 steps for turning shadow IT into a competitive edge

CIO Business Intelligence

CIOs need a way to capture lightweight business cases or forecast business value to help prioritize new opportunities. The most successful programs go beyond rolling out tools by establishing governance in citizen data science programs while taking steps to reduce data debt.

IT 137
article thumbnail

PODCAST: COVID19 | Redefining Digital Enterprises – Episode 2: How Data & Analytics Can Help in a Downturn

bridgei2i

So, in our AI to Impact podcast, we’ll now be focusing on conversations with business leaders, digital transformation advisors, as well as AI and analytics thought leaders to discuss the impact of COVID-19 on enterprises, and how enterprises can recalibrate their focus for continuity and resilience. Aruna: Got it. Aruna: Got it.

article thumbnail

How to choose the best AI platform

IBM Big Data Hub

AI platforms assist with a multitude of tasks ranging from enforcing data governance to better workload distribution to the accelerated construction of machine learning models. Automated development: With AutoAI , beginners can quickly get started and more advanced data scientists can accelerate experimentation in AI development.