91传媒

THE COMPREHENSIVE GUIDE TO BUILDING, ORCHESTRATING, AND MANAGING EDGE AI IMPLEMENTATIONS AT SCALE

a man sitting at a desk on the computer

If you鈥檙e thinking of investing in next-generations technologies to operationalize edge AI, you鈥檙e in good company. In fact, 鈥渂y 2026, at least 50% of edge computing deployments will involve machine learning (ML), compared with 5% in 2022.鈥

These edge deployments are being used in transportation, utilities, manufacturing, retail, healthcare, and other industries for AI inferencing of sensor data to enable quicker decision making at the edge 鈥 resulting in higher efficiency and reduced safety and security risks.

However, there are still many barriers to large-scale edge adoption. Specialty hardware devices can be difficult to design and distribute to far edge locations around the world. There are also lifecycle challenges with managing and orchestrating large edge fleets long after they鈥檝e been deployed.

In this comprehensive (and we mean comprehensive) guide, we鈥檒l discuss the benefits of edge AI solutions and the challenges with implementing them. We鈥檒l also cover ways 91传媒 can help build, orchestrate, and manage large-scale edge fleets.

SUBSCRIBE
Subscribe to the 91传媒 I/O Newsletter for a periodic digest of all things apps, opps, and infrastructure.
This site is protected by reCAPTCHA and the Google听听补苍诲听听补辫辫濒测.