Resurrecting a Recommendations Platform
Offered By: Strange Loop Conference via YouTube
Course Description
Overview
Explore the complexities of implementing a deep learning model for recommendations while maintaining a legacy platform serving millions of customers. Dive into the three-tiered approach for a successful recommendations platform: data, machine learning, and A/B testing. Learn about efficient data collection pipelines, avoiding the "pipeline jungle construct," and holistic data flow management. Discover how to build, train, and evaluate models using the data tier, and understand the importance of A/B testing before exposing algorithms to a large customer base. Compare the legacy platform to the current cloud-based system, examining how these changes improved reliability and stability. Gain insights from Leemay Nassery's experience in resurrecting a recommendations platform while balancing the challenges of limited infrastructure and personnel resources.
Syllabus
"Resurrecting a Recommendations Platform" by Leemay Nassery
Taught by
Strange Loop Conference
Tags
Related Courses
Neural Networks for Machine LearningUniversity of Toronto via Coursera 機器學習技法 (Machine Learning Techniques)
National Taiwan University via Coursera Machine Learning Capstone: An Intelligent Application with Deep Learning
University of Washington via Coursera Прикладные задачи анализа данных
Moscow Institute of Physics and Technology via Coursera Leading Ambitious Teaching and Learning
Microsoft via edX