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FIT5215 Deep learning

Chief Examiner

This field records the Chief Examiner for unit approval purposes. It does not publish, and can only be edited by Faculty Office staff

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Dinh Phung

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Unit Code, Name, Abbreviation

FIT5215 Deep learning (28 Mar 2019, 1:08pm) [Deep learning (28 Mar 2019, 1:09pm)]

Reasons for Introduction

Reasons for Introduction (28 Mar 2019, 1:09pm)

This unit will be a core elective in the Master of Artificial Intelligence to be introduced in 2020.

Deep learning (DL) has become increasingly important in modern machine learning and AI systems. The job market and industry constantly look for skills in DL. The fundamental knowledge of DL arguably becomes the core knowledge in data science (DS), machine learning and AI. At Monash, this topic has been touched upon only scarcely across some DS units. Moreover, there is currently NO deep learning unit being offered at the graduate level. The proposal of this new unit is to address this situation and to offer a unified deep learning unit to students, bridging the important knowledge and skill gap in this fast- growing area, in particularly for graduate students.

Reasons for Change (17 Mar 2021, 4:34pm)

11/11/2019: Removing FIT5201 from prerequisite units, and removing the prerequisite knowledge statement. Entry into C6007 and the core units FIT5047 and FIT5197 cover the required knowledge. Effective 2020.

18/09/2020 - Admin: Update to include new assessment and teaching approach fields as per Handbook requirements.

29/09/2021 - Admin: Update to assessment to include both Semester 2 and Term 3 information.

17/03/2021 - Admin: Adding Reasons for Change - change to prerequisites and corequisites as per email discussion with DDE.

Objectives

Objectives (28 Mar 2019, 1:11pm)

At the completion of this unit, students should be able to:

  1. Describe the life cycle of a machine leaning system, what is involved in designing such systems and strategy to maintain them.
  2. Describe what deep learning (DL) is, access what makes DL work or fail and where they should be applied.
  3. Develop and apply deep neural networks, convolutional neural networks, recurrent neural networks and different optimization strategies for training them.
  4. Develop unsupervised feature learning models and representation learning models.

Unit Content

ASCED Discipline Group Classification (28 Mar 2019, 1:12pm)

020119 Artificial Intelligence

Synopsis (28 Mar 2019, 1:12pm)

Modern machine learning provides core underlying theory and techniques to data science and artificial intelligence. This unit is for students to develop practical knowledge of modern machine learning and deep learning and how they can be used in real-world settings such as image recognition or text clustering via neural embeddings. Learning activities will focus on designing machine learning systems, a broad landscape of supervised and unsupervised learning methods with a focus on modern deep learning knowledge for data analytics including deep neural networks, representation learning and embedding methods, and deep models used for time-series data which are rapidly used in science and industry.

Prescribed Reading (for new units) (18 Sep 2020, 12:27pm)

Teaching Methods

Mode (28 Mar 2019, 1:12pm)

On-campus

Assessment

Assessment Summary (29 Sep 2020, 11:23am)

Examination (2 hours): 40%; In-semester assessment: 60%

Semester

  1. Assignment 1 - 20% - ULO: ?
  2. In-semester test 1 - 10% - ULO: ?
  3. In-semester test 2 - 10% - ULO: ?
  4. Assignment 2 - 20% - ULO: ?
  5. Examination - 40% - ULO: ?

Term 3

  1. Assessment 1a - 20% - ULO: 1, 2
  2. Assessment 1b - 20% - ULO: 3, 4
  3. Assessment 2 - 20% - ULO: 1, 2, 3, 4
  4. Final exam - 40% - ULO: 1, 2, 3, 4

Workloads

Credit Points (28 Mar 2019, 1:18pm)

6

Workload Requirements (28 Mar 2019, 1:19pm)

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

Resource Requirements

Teaching Responsibility (Callista Entry) (28 Mar 2019, 1:22pm)

FIT

Prerequisites

Prerequisite Units (13 Mar 2021, 11:21am)

FIT9133 or FIT9136

Corequisites (13 Mar 2021, 11:23am)

FIT5197 or FIT5047

Proposed year of Introduction (for new units) (28 Mar 2019, 1:23pm)

2020

Location of Offering (28 Mar 2019, 1:24pm)

Clayton

Faculty Information

Proposer

Jeanette Niehus

Approvals

School: 18 Mar 2021 (Jeanette Niehus)
Faculty Education Committee: 18 Mar 2021 (Jeanette Niehus)
Faculty Board: 18 Mar 2021 (Jeanette Niehus)
ADT:
Faculty Manager:
Dean's Advisory Council:
Other:

Version History

28 Mar 2019 Jeanette Niehus New unit proposal; modified LocationOfOffering
10 Apr 2019 Jeanette Niehus
12 Jun 2019 Jeanette Niehus FIT5215 Chief Examiner Approval, ( proxy school approval )
12 Jun 2019 Jeanette Niehus FEC Approval
12 Jun 2019 Jeanette Niehus FacultyBoard Approval - Approved at FEC 2/19, 17/4/2019
11 Nov 2019 Emma Nash modified ReasonsForIntroduction/RChange; modified ReasonsForIntroduction/RChange; modified Prerequisites/PreReqUnits; modified Prerequisites/PreReqKnowledge
11 Nov 2019 Emma Nash FIT5215 Chief Examiner Approval, ( proxy school approval )
11 Nov 2019 Emma Nash FEC Approval
11 Nov 2019 Emma Nash FacultyBoard Approval - Approved at FEC 5/19.
18 Sep 2020 Joshua Daniel modified ReasonsForIntroduction/RChange; modified UnitContent/PrescribedReading; modified Assessment/Summary
29 Sep 2020 Jeanette Niehus Admin: modified ReasonsForIntroduction/RChange; modified Assessment/Summary
13 Mar 2021 Dinh Phung modified Prerequisites/PreReqUnits; modified Corequisites
17 Mar 2021 Jeanette Niehus Admin: modified ReasonsForIntroduction/RChange
18 Mar 2021 Jeanette Niehus FIT5215 Chief Examiner Approval, ( proxy school approval )
18 Mar 2021 Jeanette Niehus FEC Approval
18 Mar 2021 Jeanette Niehus FacultyBoard Approval - Executively approved by DDE (18/03/2021)

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