If Data Science was once the sole space of analysts and data scientists, Augmented Data Science represents the democratized perspective on this area. With Augmented Data Science, the average business user can draw in with cutting-edge analytics tools that take into account Automated Machine Learning (AutoML) and leverage refined analytical techniques and algorithms in a guided environment that utilizes auto-proposals and recommendations to lead users through the unpredictable universe of data science with ease and intuitive tools.

As companies are progressively standardizing on augmented analytics, a related model is coming to fruition in the data and analytics market – augmented data management. The innovation is changing the information of the data management landscape and the role of data professionals.

Augmented data management utilizes AI and machine learning to make enterprise data management disciplines, for example, information quality and integration, metadata management, master data management, and database management frameworks, “self-arranging and self-tuning,” as indicated by Gartner.

Artificial intelligence and machine learning are the two tools that broadly drive modern enterprise At the same time, data is additionally at the cutting edge of business initiatives to improve growth today. Consolidate the two, and you have some genuine power in your hands: augmented data management.

Artificial intelligence resembles the steroid of everything technology, fueling up whatever you began with. Augmented data management is no special case for this. The augmented data management process utilizes ML and AI to naturally refine information or, as Gartner puts it, self-configure and self-tune. In doing as such, ML and AI drive effectiveness and productivity in the work environment.

#augmented analytics #big data #latest news #data science

The Importance of Augmented Data Management for Businesses
2.45 GEEK