Highlights
Author of (Topics) : Advanced Materials Processing, Strip Casting, Additive Manufacturing, Process Optimization, Big Data Analytics in Engineering, Sustainable Manufacturing, Machine Learning in Manufacturing
Role at AI-Innovate: Data Analyst
Specialized In:
- Predictive Modeling for Manufacturing
- Big Data Analysis in Production Processes
- Strip Casting & Additive Manufacturing
- AI-Driven Process Optimization
- Materials Characterization
- Advanced Aluminum Alloys
- Sustainable Manufacturing Technologies
Expert Quote
“I chose to pursue my doctorate in Materials Engineering because I want to be at the forefront of developing the next generation of tools for manufacturing, to help reduce waste and improve efficiency at scale. AI is a powerful tool emerging from its infancy into everyday use, and it can be leveraged to make big impacts in engineering challenges, including waste reduction, quality assurance and process optimization.”
Professional Experience
Mary Gallerneault is a PhD candidate in the Department of Mechanical & Materials Engineering at Queen’s University, where she specializes in the integration of artificial intelligence and big data analytics into advanced manufacturing processes. Her research focuses on developing predictive models that optimize production workflows in strip casting and additive manufacturing. Her technical foundation was established through her undergraduate studies in Materials Engineering at McMaster University and her master’s research in Chemical Engineering at Queen’s University, providing her with cross-disciplinary expertise that bridges materials science, machine learning, and industrial engineering.
Prior to pursuing her doctorate, Mary worked in several industries: INVISTA, the National Research Council of Canada, Rivian, and various STEM start-ups. This diverse industry background provided her with practical insights into the challenges facing modern manufacturing and inspired her transition back to academia to develop research-driven solutions with real-world applications. Her doctoral research develops predictive models that provide real-time feedback to production processes, enabling manufacturers to optimize efficiency, reduce waste, and improve quality assurance at scale.
Her research philosophy centers on the practical application of emerging AI technologies to solve longstanding challenges in manufacturing. Beyond her research contributions, Mary volunteers with several STEM outreach and education organizations. Her mission is to advance both the technical capabilities of modern manufacturing and the accessibility of engineering education to diverse communities.
Education
Latest Posts From Mary Gallerneault

Deep Learning in AI Vision Systems : A 2026 Guide
Artificial intelligence has transformed modern vision systems from simple image-processing tools into intelligent platforms capable of understanding visual information, identifying

AI-Powered Weld Defect Detection : A 2026 Complete Guide
A bad weld hardly goes unnoticed. It turns into rework, delays, failed inspections, or problems that show up later when

PCB Defect Detection Using AI: A Practical Guide
A single missed solder defect can turn a finished board into a field failure, a warranty claim, or a recall.

Choosing an Automated Optical Inspection Machine: Essential Factors to Consider
In modern manufacturing, the difference between catching a defect and missing it is the difference between profit and recall. The

