Knowledge Technologies
Subject COMP30018 (2014)
Note: This is an archived Handbook entry from 2014.
Credit Points: | 12.50 |
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Level: | 3 (Undergraduate) |
Dates & Locations: | This subject is not offered in 2014. |
Time Commitment: | Contact Hours: 36 hours, comprising of two 1-hour lectures and one 1-hour workshop per week Total Time Commitment: 170 hours |
Prerequisites: | One of the following: Subject Study Period Commencement: Credit Points: |
Corequisites: | None |
Recommended Background Knowledge: | None |
Non Allowed Subjects: | Students cannot enrol in and gain credit for this subject and: Subject 433-352 Data on the Web |
Core Participation Requirements: |
For the purposes of considering request for Reasonable Adjustments under the Disability Standards for Education (Cwth 2005), and Student Support and Engagement Policy, academic requirements for this subject are articulated in the Subject Overview, Learning Outcomes, Assessment and Generic Skills sections of this entry. It is University policy to take all reasonable steps to minimise the impact of disability upon academic study, and reasonable adjustments will be made to enhance a student's participation in the University's programs. Students who feel their disability may impact on meeting the requirements of this subject are encouraged to discuss this matter with a Faculty Student Adviser and Student Equity and Disability Support: http://services.unimelb.edu.au/disability |
Subject Overview: |
AIMS Much of the world's knowledge is stored in the form of unstructured data (e.g. text) or implicitly in structured data (e.g. databases). In this subject students will learn algorithms and data structures for extracting, retrieving and storing explicit knowledge from various data sources, with a focus on the web. The aim of this subject is to introduce students to knowledge technologies and give them exposure to what applied research is all about.
INDICATIVE CONTENT Topics include: data encoding and markup, web crawling, clustering, regular expressions, pattern mining, Bayesian learning, instance-based learning, document indexing, database storage and indexing, and text retrieval. Examples of projects that students complete are:
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Learning Outcomes: |
INTENDED LEARNING OUTCOMES (ILO) Having completed this unit the student is expected to describe and apply the fundamentals of knowledge systems, including data acquisition and aggregation, knowledge extraction, text retrieval, machine learning and data mining On completion of this subject the student is expected to:
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Assessment: |
Hurdle requirement: To pass the subject, students must obtain at least:
Intended Learning Outcome (ILO) 1 is addressed in the projects (applied) and the mid-semester test and final exam (theoretical). ILO 2 is addressed in the projects (through using a range of systems that are provided to students or that students experiment with themselves). ILO 3 is also addressed in the projects (which are generally themed around projects underway at the University, to give them a more applied feel).
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Prescribed Texts: | TBA |
Breadth Options: | This subject potentially can be taken as a breadth subject component for the following courses: You should visit learn more about breadth subjects and read the breadth requirements for your degree, and should discuss your choice with your student adviser, before deciding on your subjects. |
Fees Information: | Subject EFTSL, Level, Discipline & Census Date |
Generic Skills: |
On completion of this subject, students should have developed the following skills:
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Notes: |
LEARNING AND TEACHING METHODS The subject is delivered through a combination of lectures and tutorials. One feature of the subject is that the projects are designed to be relatively open-ended and broad enough that students have scope to get hands-on experience implementing the breadth of material covered in the subject, as well as building off the subject content in innovating their own methods/researching related methods from the research literature and implementing them themselves.
INDICATIVE KEY LEARNING RESOURCES Students will have access to lecture slides, readings relating to the lecture materials (both from a textbook and conference/journal papers), tutorial worksheets with worked solutions for all numeric problems, and sample reports to use in writing the project reports. Students are permitted to do their programming in any language and any programming environment/OS, and are giving the option of working in a team (with suitably increased expectations on what they are required to do). In recent years, the projects have been hosted on Kaggle, supporting a live “scoreboard” for student systems, and giving the projects more of a real-world feel.
CAREERS / INDUSTRY LINKS The knowledge technologies industry (encompassing machine learning, data science, natural language processing and information retrieval) has been growing rapidly over the past two decades, with key industry players including Google, Microsoft, Amazon, Facebook and Twitter. Google sponsors a prize for the highest-achieving student in the subject each year, underling its interest in the subject material. There have been guest lecturers in the subject from organisations including Palantir Technologies and NICTA. |
Related Majors/Minors/Specialisations: |
B-ENG Software Engineering stream Computer Science Computer Science Computer Science Computer Science Computing and Software Systems Master of Engineering (Software with Business) Master of Engineering (Software) Science credit subjects* for pre-2008 BSc, BASc and combined degree science courses Science-credited subjects - new generation B-SCI and B-ENG. Selective subjects for B-BMED |
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