百家乐怎么玩-澳门百家乐官网娱乐城网址_网上百家乐是不是真的_全讯网888 (中国)·官方网站

COURSES >>>


MNE8121 - Advanced Machine Learning and Quantum Computation for Engineering

Offering Academic Unit
Department of Mechanical Engineering
Credit Units
3
Course Duration
One Semester
Pre-cursor(s)
Linear Algebra
Equivalent Course(s)
MNE6128 Advanced Machine Learning and Quantum Computation for Engineering
Course Offering Term*:
Not offering in current academic year

* The offering term is subject to change without prior notice
 
Course Aims

Computers have been the workhorses of modern society in every aspect. And mechanical engineers always use computer to do many kinds of computational work including control, robotics, fluid mechanics, heat transfer, ...etc. However, with the ever-changing technology, there are more and more numerical methods and algorithms been developed, and even a new type of computer structure is invented - quantum computer. Therefore, this course aims to equip our students to better understand these new tools and to face the coming challenges in the future. This course will introduce two most advanced topics in the computational field, namely, machine learning and quantum computation.

Machining learning and artificial intelligence play more and more important roles in current engineering disciplines. This course will introduce the basics of machine learning and explore how such advanced techniques can be applied in the mechanical engineering field. Students will learn the art and science of Machine Learning from the fundamentals to state-of-the-art models. A strong emphasis is put on the principles of problem solving, and how machine learning techniques can be used to tackle practical engineering problems. The students will complete the course with the confidence to explore these topics further and apply them to other areas of interest themselves.

Students should have linear algebra knowledge and some programming background to understand the course content. We will use Matlab/Python as a medium to implement the machine learning models.

Quantum computer can perform computations much faster than classical computer on certain type of problems, which starts a new page in computation history. Many problems that are intractable on classical computers may be tractable with the aid of quantum computing. This course will introduce different quantum computer hardware designs and mainly focus on quantum computing algorithms. We will start from the basic knowledge of qubits to fundamental quantum algorithms such as quantum Fourier transform, Shor's algorithm, Grover's algorithma?|etc. Recent developed algorithms will be introduced as well, such as quantum machine learning, imaginary time control, quantum chemistry applications...etc. Especially quantum machine learning as a new rising topic will serve as connecting bridge between classical machine learning and quantum computing. With these new tools and knowledge, quantum computers will become a powerful tool for our students to face the rapid changing challenges in this whole new era.


Assessment (Indicative only, please check the detailed course information)

Continuous Assessment: 60%
Examination: 40%

For a student to pass the course, at least 30% of the maximum mark for both coursework and examination should be obtained.

Examination Duration: 2 hours
 
Detailed Course Information

MNE8121.pdf

一直对百家乐官网很感兴趣.zibo太阳城娱乐城 | 宝坻区| 澳门百家乐官网信誉| 百家乐官网庄闲几率| 百家乐笑话| 百家乐游戏必赢法| 三元玄空24山坐向开门| LV百家乐客户端LV| 大佬娱乐城怎么样| 德州扑克大赛视频| 百家乐官网作弊手段| 大发888游戏平台hg dafa888gw| 现场百家乐官网玩法| 百家乐官网六手变化混合赢家打| 威尼斯人娱乐城在线赌博网站| 百家乐技巧| 玩百家乐官网怎么能赢吗| 优博代理| 网上百家乐赌博犯法吗| 百家乐赌场视频| 百家乐官网打法分析| 金龙棋牌下载| 百家乐官网免费注册| 磐石市| 百家乐百胜注码法| 百家乐官网稳一点的押法| 广州百家乐官网赌场| 百家乐官网打鱼秘| 罗山县| 澳门百家乐技巧经| 赣州市| 有百家乐官网的棋牌游戏| 卓达太阳城希望之洲| 百家乐官网高命中投注| ea百家乐打水| 百家乐官网龙虎台布| 大发百家乐官网游戏| 永利百家乐的玩法技巧和规则| 百家乐官网平注赢钱法| 尊龙网站| 百家乐真人游戏娱乐场|