理学硕士

In Artificial Intelligence

关于计划

AI is playing an increasingly important role in all aspects of the modern world. From infrastructure and education to healthcare and climate change the importance of AI cannot be overemphasised. There is now a persistent demand for graduates from a variety of backgrounds who have the expertise and training needed to responsibly use AI technologies to combat some of the world’s greatest challenges. This course has been designed and developed by a team of experts to produce agile, flexible and dynamic graduates with the right blend of training, education and management skills to meet the demands of industry in a variety of areas.

计划亮点

The MSc Artificial Intelligence (AI) is a conversion MSc, designed for students from a broad range of disciplines who wish to enhance their existing knowledge and skills in order to open up career opportunities in AI.

Students will be trained in industry-standard tools like R/RStudio, SAS, Python, and SQL, and will learn to develop apps and dashboards using Quarto and Shiny.

计划
模块

Human intelligence involves a continuous process of sensing, analysing, reasoning, and adaptation. In this course, we will focus on studying algorithms (both learning and optimization), which could be used to develop an artificial intelligence (AI) system. Given the limited time, we will try to eliminate mathematical proofs, as much as possible, and focus more on the theory and implementation using different programming languages.

This module looks at different data processing and mining techniques and state of the art data processing and mining tools. The topics include introduction to data mining and knowledge discovery process, data collection and processing with various data types from variety of sources, social web mining. The module will look at a variety of techniques and trends in data mining.

This module’s main emphasis is on the fundamentals of deep machine learning (ML), covering both basic and advanced concepts, including philosophy, linear algebra, big data, optimization, and information theory.

The material in this module is carefully designed to meet students’ needs and requirements for the programme of study alongside essential project management skills dictating research activities. Students will be exposed to a wide variety of tools, techniques, methodologies and processes in the field of project management. Ethical and legal aspects of project planning and management will also be discussed.

This module introduces students to research, and methodologies used to underpin scientific work, data analysis, hypothesis’ establishment and artefact validation in understanding research on an appropriate subject discipline. The material in this module is carefully designed to meet students’ needs and requirements for the programme of study. This module covers traditional approaches in literature review as essential preparation for the project stage and draws expertise from other departments within the University.

This is an introductory course in statistics for data science and as such it assumes little prior knowledge of the subject. This module introduces the basics of descriptive statistics (including graphical methods), estimation, linear regression models and inferential statistics. Appropriate software tools will be used to will be used to extract insights from data.

Intelligent agents are programs that can perceive their environment through sensors and can change the state of their environment through actuators. Environments can be fully software based such as a computer game in which an agent can learn how to play or a physical real-world environment where the agent controls a robot and helps it to navigate around obstacles to reach its destination. One technique that sets the training of an agent apart from others is in the way data are presented to the agent. Traditional techniques (such as artificial neural networks or decision tree induction) normally involve presenting data, referred to as a training set, to the training algorithm. A training set consists of records, each one having a number of inputs and an output. The aim of training is for the algorithm to output the correct value to associated with its inputs. Training involves repeatedly presenting the training set to the training algorithm until it gets no better at mapping inputs to output.

This module is designed as an introduction to some of the central concepts and tools used in Data Science. As such it includes discussions on data capture, maintenance, processing, analysis and communication. A series of real-world case studies will be discussed, and state of the art software and algorithms will be used as tools within these case studies.

Whether you decide to progress to further study or to a career in industry, one of the most important skills expected of a Data Scientist is the ability to work creatively under the appropriate guidance of an organisation. It is therefore essential that you use and develop the skills and knowledge gained from other modules and from your wider educational and/or working background in a major integrative exercise. You will be expected to develop an idea (guided by a member of academic staff) and demonstrate your ability to develop it further, producing a suitable artefact by applying your technical, analytical, practical and managerial skills in an integrated manner.

课程详情

学习方式和时间

全职 12 个月

兼职 12 个月

摄入量

SOC 日期:

Jan / Sep

师生平均比例

1:150 (课堂授课)

注册

接收日期前 1 个月

评估

100% 课程作业

毕业要求

- 必须通过所有模块。.
- 总出勤率必须达到 90%(国际学生)和 75%(本地学生)。.

工作机会

毕业生可以选择(但不限于)在这些部门/行业发展:
Robotics Engineer
Computer Vision Engineer
AI Consultant
Data Scientist
AI Ethics Specialist

入学要求

留学生/本地学生
年龄
 至少 19 岁
 

学术最低入学要求

  • A UK bachelor’s degree classification of 2:2 or above (or equivalent) in any discipline and GCSE Grade 4 in Mathematics or equivalent
  • 其他资格将根据具体情况进行评估,最终决定权在大学。.

英语最低入学要求

IELTS 6.5 or equivalent
 
申请程序
您可前往 EAIM Balestier 校区或将申请表邮寄至:East Asia Institute of Management, 9 Ah Hood Road, Singapore 329975。

课程费用

EAIM 为您的未来提供支持--立即了解我们的红宝石周年纪念补助金。.

国际学生 S$
学费

27,572.64

23,662.81

管理费
1,199.00
申请费
588.60
学费总额

29,360.24

25,450.41

本地学生(全日制) S$
学费

27,572.64

23,662.81

管理费
1,199.00
申请费
163.50
学费总额

28,935.14

25,025.31

本地学生(非全日制) S$
学费

23,125.44

19,000.88

管理费
1,199.00
申请费
163.50
学费总额

24,487.94

20,363.38

  • 申请费为一次性缴费,不予退还。.
  • 管理费包括 STP 费用、FPS 保险、医疗保险等。.
  • 所有价格均已包含 9% 的商品及服务税 (GST)。.
  • 所有价格均适用于 2025 年 6 月.
  • 每班至少达到 10 人。.
  • 可能需要支付其他杂费。(请点击 这里 了解更多信息)。
  • 研究补助金 条款和条件 申请。.

相关课程

立即加入我们

今天就通过 EAIM 发掘您的潜能!

滚动至顶部