Deploying AI With an Event-Driven Platform

This is an article from DZone's 2022 Enterprise AI Trend Report.

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Today, many large organizations are deploying artificial intelligence (AI) models with an event-driven platform in order to solve two common challenges of leveraging enterprise AI. First, to meet their data needs, enterprises often require a variety of model types that are built on different machine learning (ML), deep learning, and AI languages, frameworks, tools, and systems. These models are tied to various ways of deployment, using tools such as PyTorch, scikit-learn, XGBoost, DJL.AI, spaCy, TensorFlow, ONNX, PMML, Apache MXNet, and H2O. As a result, developers and data engineers need to deploy their models in diverse deployment environments with varying characteristics and restrictions, which makes accessing and managing the models complicated.