Modern AI systems require efficient training workflows, scalable data pipelines, and deployment strategies that meet real-world performance constraints. In this course, you'll learn how to optimize machine learning workflows and deploy AI models in production environments, including edge devices.

Optimizing AI Workflows and Deploying Edge Models

Optimizing AI Workflows and Deploying Edge Models
This course is part of Eyes on AI - Computer Vision Engineering Professional Certificate

Instructor: Professionals from the Industry
Access provided by Kalinga Institute of Industrial Technology
Recommended experience
What you'll learn
Implement and optimize neural network components using PyTorch tensor operations and automatic differentiation
Analyze ML workflow performance using experiment metrics, visualization tools, and GPU utilization insights
Build efficient data pipelines and deploy optimized AI models to edge environments
Skills you'll gain
Details to know

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March 2026
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There are 9 modules in this course
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Felipe M.

Jennifer J.

Larry W.

Chaitanya A.
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