Deploying TinyML Models at Scale: Insights on Monitoring and Automation
Offered By: tinyML via YouTube
Course Description
Overview
Explore the evolution and practical implementation of TinyML models in large-scale deployments with Alessandro Grande, Head of Product at Edge Impulse. Gain insights into the critical importance of continuous model monitoring for maintaining reliability in machine learning applications, particularly in extensive IoT deployments. Learn strategies for sustaining a continuous lifecycle for ML models to address unpredictable changes and ensure long-term success. Examine a real-world health-related use case focusing on the HIFE AI cough monitoring system, and discover best practices for data collection, preparation, and efficient labeling using advanced tools like ChatGPT 4.0. Understand the significance of building scalable infrastructure for automated ML development, including the implementation of CI/CD pipelines to enhance lifecycle management, security, and scalability of ML models from the outset.
Syllabus
Deploying TinyML Models at Scale: Insights on Monitoring and Automation - Alessandro Grande
Taught by
tinyML
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