FIT5215《Deep learning》是 莫纳什大学 的公开课程页面。当前可确认的信息包括 6 学分,难度 难,公开通过率 68%。 页面已整理 13 周教学安排,9 个重点考核,方便你快速判断工作量、考核结构和适配度。 课程简介摘要:Modern machine learning provides core underlying theory and techniques。
Minimum total expected workload to achieve the learning outcomes for this unit is 144 hours per semester typically comprising a mixture of scheduled online and face to face learning activities and independent study. Independent study may include associated reading and preparation for scheduled teaching activities.
Develop and apply deep neural networks, convolutional neural networks, recurrent neural networks and different optimisation strategies for training them;
Describe the life cycle of a machine leaning system, what is involved in designing such systems and strategy to maintain them;
Describe what deep learning (DL) is, access what makes DL work or fail and where they should be applied;
Develop unsupervised feature learning models and representation learning models.
