Building blocks for AI: Inside the data science hierarchy of needs
When it comes to implementing artificial intelligence (AI), keep your eyes on a critical piece of the puzzle: data integration. If your data foundation for AI isn’t strong enough, problems will emerge for AI, machine learning (ML) and data science projects.
Start leading the charge in AI with cutting-edge data integration. Get our handy infographic, “AI’s Backbone: Mastering the Data Science Hierarchy of Needs,” to learn:
An overview of the data science hierarchy of needs
Prerequisites for AI success and key players
The pivotal role of data integration and how to master it