In the coming years, with the growing popularity and use of data generated by sensors, the data management systems of nearly every industry will begin to strain with growing volumes. No matter if you’re looking to gain insight from personal healthcare monitors that track fitness, industrial applications for manufactures or even application logs that can augment customer information, our system architectures will need to be re-examined to deal with this new data revolution. Moreover, it’s not just the volume, but type of insights that we will be asked to provide. While it may have always been enough to know “what has happened”, it will be increasingly important to understand “what will happen” as your organization strives to use analytics to increase revenue and optimize efficiency.
You may also like
Empowering Business Users: The Rise of Self-Service Analytics and AI
Self-service analytics revolutionizes how organizations harness data, making insights accessible to business users through AI-powered tools.
AI, Data, and the Future: Trends, Innovations, and Insights You Can’t Miss!
Hyperight Read Source: Midjourney Context is everything in human communication. AI models, however, struggle with context. Last year, OpenAI’s GPT-4 made strides in understanding context by integrating visual and...
EU’s Historic €200B Investment: What It Means for Europe’s AI Future
European Commission has launched a €200 billion initiative to place Europe at the forefront of AI innovation, marking the largest AI investment in history.
Add comment