This course is part of the UCLA Henry Samueli School of Engineering and Applied Science (HSSEAS) Master of Science in Engineering Online (MSOL) program. It is available only to students pre-approved by HSSEAS. For more information visit msol.ucla.edu.
CS 260D Large-Scale Machine Learning. (Instructor: Mirzasoleiman, B.) Lecture, four hours; discussion, two hours; outside study six hours. Requisite: course M146. To alleviate costs and improve robustness and generalization performance of modern machine learning models, it becomes crucial to develop methods with strong theoretical guarantees to warrant efficient, accurate, and robust learning. Discussion of advanced topics and state-of-the-art research to improve efficiency, robustness, and scalability of machine learning algorithms on large data. Topics include advanced optimization, variance reduction, distributed training, federated learning, data summarization, robust learning, neural network pruning, neural architecture search, neural network quantization.
Restricted course.
1. Please contact the Master of Science Online (MSOL) program at admissions@seas.ucla.edu or (310) 825-6542 for approval.
2. Once approved, you may submit a petition to enroll (PTE) request through this website. Click "add to cart" to apply for enrollment.
Refund Deadline
Refunds only available from August 12, 2024 to October 11, 2024
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