AIST
Calendar
Foundation
Steel News
Search WWW
Login
Toggle navigation
About AIST
Membership
Local Member Chapters
Technology Committees
Conferences & Expositions
Industry Resources
Publications & Advertising
Students & Faculty
×
Store Home
Cart Summary
+ Show
- Hide
0 item(s) ($0.00)
Your cart is empty.
Open Invoices
×
Click the box next to each open invoice to add it to your cart.
Date
Invoice
Description
Balance
In Cart
×
Membership & Subscriptions
Join AIST
Renew My Membership
Print Journal Subscription
Digital Journal Subscription
Print & Digital Journal Subscription
Full Digital Subscription
Events
AISTech
All Events
Annual Events
Member Chapters
Technology Committees
Technology Training
Webinars
Product Search
All Products
AIST Transactions
Books
Conference Proceedings
Industry Data
Iron & Steel Technology
About the AIST Resource Center
Product Details:
Leveraging AI-Powered Large Language Models to Improve Operational Safety and Efficiency in the Metal and Steel Industry
The metal and steel industry faces persistent challenges in enhancing operational safety, efficiency and complex decision-making processes. This article explores the transformative potential of generative artificial intelligence (AI), with a focus on multimodal large language models (LLMs), to address these challenges. Unlike traditional predictive and prescriptive AI, generative AI enables new possibilities by integrating and synthesizing unstructured data (text, images, video) with domain specific knowledge. Two case studies highlight practical applications: (1) A Vision AI system leveraging integrated LLMs to monitor electric arc furnace operations, identifying key operational events and potential safety hazards; (2) A generative AI approach for project scheduling optimization, achieving near-optimal performance for small- to mediumsized projects. The study emphasizes generative AI’s ability to enhance decision automation, reduce reliance on manual oversight, and drive innovation in safety and efficiency. Challenges regarding accuracy, scalability and consistency are discussed, alongside recommendations for future advancements in agent-based refinement techniques.
Product:
2026/05 AIST Iron & Steel Technology May
Additional Product Info
Product Code:
PR-PM0526-3
Author:
Yale Zhang, Zahid Mohammed, Zaid Marfatia, Anish Shah
Date:
May 01, 2026
Format:
PDF
Member Price:
$25.00
Non-Member Price:
$35.00
Your Price:
$35.00
Available for Immediate Download
Item added to cart!
×
Item
Qty
Price
Subtotal
View Cart/Enter Coupon
Checkout
Your cart is empty.