How developers can simplify feature engineering

To build true AI tools, you need to get your hands dirty with data. The challenge? Traditional data architectures often act like stubborn filing cabinets; they simply can’t handle the amount of unstructured data we generate.

From generative AI-driven customer service and recommendation engines to AI-powered drone deliveries and supply chain optimization, Fortune 500 retailers like Walmart deploy dozens of AI and machine learning (ML) models, each reading and producing unique combinations of data sets. This variability requires custom data ingestion, storage, processing, and transformation components.