Home | About Us | Courses | Units | Student resources | Research |
IT Support | Staff directory | A-Z index |
M O N A T A R |
InfoTech Unit Avatar |
2019 06 14 10:45:05: Dinh Phung opened FIT5219 - Assessment/Summary edit screen 2019 06 14 10:45:20: Dinh Phung updated FIT5219 - Assessment/Summary 2019 06 14 10:45:55: Dinh Phung opened FIT5219 - DateOfIntroduction edit screen 2019 06 14 10:46:05: Dinh Phung updated FIT5219 - DateOfIntroduction
This field records the Chief Examiner for unit approval purposes. It does not publish, and can only be edited by Faculty Office staff
To update the published Chief Examiner, you will need to update the Faculty Information/Contact Person field below.
NB: This view restricted to entries modified on or after 19990401000000
Addressing the need for AI education and deep learning in particular, this unit is designed to be a successive, advanced unit to the level-5 Deep Learning 5215 unit. While foundations of Deep Learning have been covered in FIT3181 (undergrad) and FIT5215 (post-grad), there is currently no follow-up unit to cover more advanced knowledge in deep learning at Monash. In addition, with the provisional launch of the Master of AI (AI), this unit will be essential to the education of AI. The unit will place an emphasis on modern techniques machine learning, deep learning and AI systems including deep reinforcement learning, deep generative models and how they might be applied in sophisticated AI-based applications in computer vision and language technology. Learning activities will focus on designing deep neural networks and CNN-based systems for image classification, representation learning on different types of structured, unstructured and semi-structured data, deep generative models, cognitive vision/language systems and deep reinforcement learning.
Upon successful completion of this unit students should be able to:
020119
Deep learning (DL) is one of the most highly sought after skills in AI. It is one of the most important breakthroughs in technology and has become a driving force for AI research and applications. This course will focus on advanced learning and cognitive systems which uses modern knowledge in deep learning, machine learning, computer vision and language technology to build AI applications. It covers the foundation as well as advanced knowledge in deep learning and related disciplines. Deep neural networks, Convolutional networks, RNNs, LSTM, GRU and optimization techniques such as Adam, Dropout, BatchNorm will be covered. It then focuses on modern techniques including deep reinforcement learning, deep generative models and how they might be applied in computer vision and language technology tasks. Learning activities include designing deep neural networks and CNN-based systems for image/video classification, representation learning on different types of structured, unstructured and semi-structured data, deep generative models, cognitive vision/language systems and deep reinforcement learning.
Examination (2 hours and 10 minutes): 40%; In-semester assessment: 60%
Minimum total expected workload equals 12 hours per week comprising:
A minimum of 8 hours per week of personal study for completing lab/tutorial activities, assignments, private study and revision.
2021
Clayton
12 Jun 2019 | Jeanette Niehus | Admin: New unit |
12 Jun 2019 | Jeanette Niehus | FIT5219 Chief Examiner Approval, ( proxy school approval ) |
12 Jun 2019 | Jeanette Niehus | FEC Approval |
12 Jun 2019 | Jeanette Niehus | FacultyBoard Approval - Approved at FEC 3/19, 11/6/2019 |
This version:
Copyright © 2022 Monash University ABN 12 377 614 012 – Caution – CRICOS Provider Number: 00008C Last updated: 20 January 2020 – Maintained by eSolutions Service desk – Privacy – Accessibility information |