Remove 2030 Remove Cost-Benefit Remove Data-driven Remove Internet of Things
article thumbnail

Sustainability trends: 5 issues to watch in 2024

IBM Big Data Hub

These efforts are often driven by stakeholder expectations, regulatory requirements and the recognition that sustainable business practices can improve the bottom line. These efforts often go hand in hand with broader corporate sustainability initiatives and can lead to significant cost savings and improved environmental performance.

article thumbnail

AI this Earth Day: Top opportunities to advance sustainability initiatives

IBM Big Data Hub

To drive real change, it’s crucial for individuals, industries, organizations and governments to work together, using data and technology to uncover new opportunities that will help advance sustainability initiatives across the globe. The world is behind on addressing climate change.

IoT 80
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

Sustainable IT: A crisis needing leadership and change

CIO Business Intelligence

My first step in that process is sharing some of the great insights I learned with all of you. The rapid expansion of the Internet of Things (IoT), fueled by generative AI, is putting increasing pressure on data centers worldwide. This aspect is about data usage, privacy, and responsible technology innovation.

IT 98
article thumbnail

Six EAM trends pushing the oil and gas industries forward

IBM Big Data Hub

through 2030. It offers a holistic view, providing critical data about asset condition, location and efficiency. More recently, these systems have integrated advanced technologies like Internet of Things (IoT), artificial intelligence (AI) and machine learning (ML) to enable predictive analytics and real-time monitoring.

article thumbnail

Conversational AI use cases for enterprises

IBM Big Data Hub

DL models can improve over time through further training and exposure to more data. Predictive analytics integrates with NLP, ML and DL to enhance decision-making capabilities, extract insights, and use historical data to forecast future behavior, preferences and trends. billion by 2030.