Graduate Training Program in Computer Science
①Computer Science and Technology (Academic Master)
I. Cultivation Objectives
Closely integrating with the needs of China's economic and social development and science and technology development, facing the actual needs of enterprise (industry) engineering, cultivating and practicing socialist core values, adhering to the principle of establishing moral values as the foundation, cultivating talents with solid theoretical foundations, mastering the basic theories, knowledge and skills in the field of computer technology, and having the ability to solve complex engineering and technological problems, carry out engineering and technological innovations, and organize engineering and technological research and development work. It also aims to cultivate high-level engineering technology and engineering management talents with a high sense of social responsibility and the ability to solve complex engineering technology problems, carry out engineering technology innovation and organize engineering technology research and development work.
In view of the cultivation orientation of cultivating leading talents in engineering technology, engineering doctoral degree holders in this technical field should have the following knowledge, abilities and qualities:
(1) Requirements for basic qualities: recipients of doctoral degree in engineering should support the leadership of the Communist Party of China (CPC), love the motherland, and have a high sense of social responsibility; serve the scientific and technological progress and social development; and abide by the academic code of ethics and engineering ethics.
(2) Basic Knowledge Requirements: Candidates for doctoral degree in engineering should have a broad and solid foundation in mathematics and natural sciences, master systematic and in-depth expertise in the field of computer technology, be familiar with the development trends and frontiers in related technology fields, master related humanities, social sciences and engineering management, and be proficient in a foreign language.
(3) Requirements for basic ability: Doctor of Engineering degree holders should have the ability to apply knowledge in the field of computer technology to solve complex engineering problems, carry out engineering and technological innovation, organize engineering and technological research and development as well as good communication and coordination ability, and possess international vision and cross-cultural communication ability.
Ⅱ. Introduction of Major and Research Direction
Computer technology refers to the technical methods and means used in the field of computer, its hardware technology, software technology and application technology. Computer technology has obvious comprehensive characteristics, which is closely integrated with electronic engineering, applied physics, mechanical engineering, modern communication technology and mathematics, etc., and is a research field with rapid development and wide application.
Main research directions:
(1) DNA Computing
Focusing on the application needs of DNA computing in the field of artificial intelligence, through the design of novel DNA reaction mechanisms, the construction of dynamically controllable large-scale cascade circuits and programmable logic circuits, we give a new method of reasoning and planning, learning and recognition of intelligences based on DNA computing, and achieve the experimental validation of DNA biochemical reaction of Boolean networks, neural networks, classification and discrimination and other basic AI functional modules. It is expected to provide theoretical and technical support for the application of DNA computing in the field of artificial intelligence, thus providing new methods and ideas for the development of artificial intelligence. This direction has been approved by the National Natural Science Foundation of China's Artificial Intelligence Emergency Management Project and the Key Project of National Defense Science and Technology Innovation of the Military Science and Technology Commission.
(2) Networked Vehicles
Focusing on the application needs of group intelligence theory for networked vehicles, and the scientific problems of coexistence, cooperation and cognition of manned and unmanned vehicles, we will study the group intelligence decision-making theory and methodology for networked vehicles, develop the machine learning theory of coexistence, cooperation and cognition of group intelligence, make breakthroughs in the key technology of open-world group intelligence, and establish a prototype validation platform for vehicle-mounted intelligent terminals and road-side intelligent terminals of networked vehicles with independent intellectual property rights. The project is approved as a key project of national defense science and technology innovation by the Military Science and Technology Commission and a key project of NSFC-Liaoning Province Joint Fund.
(3) Natural Language Processing
With the rapid development of the Internet, especially the rise of social media, it enables us to use natural language processing and machine learning techniques for text mining to obtain potential, valuable and novel knowledge patterns. The research in this direction focuses on two main aspects. The first is text sentiment analysis, sentiment analysis and opinion mining based on cognitive linguistics and natural language processing techniques, including group sentiment analysis and individual sentiment analysis, public opinion analysis, and monitoring and prediction of emergencies. The second is machine translation, which makes use of the rich bilingual corpus on the Internet and deep learning and other technologies to carry out machine translation in cross-language information retrieval, instance-based machine translation system and knowledge mining based on large-scale corpus, mainly for the field of Chinese-Japanese translation. It has been approved two projects of National Key R&D Programme and one key project of National Natural Science.
(4) Knowledge Graph
Knowledge Graph is a large-scale semantic network with entities or concepts as nodes connected through semantic relationships. By discovering the association between entities and integrating semi-structured and unstructured data, knowledge graph can help machines to understand data, explain phenomena, and knowledge reasoning, so as to discover deep relationships and achieve knowledge mining. The research in this direction has two aspects. Firstly, knowledge graph construction and application for biomedical field, for medical literature, electronic medical records, etc., through named entity recognition, gene-disease-drug relationship extraction, construction of medical knowledge graph, knowledge mining, so as to put forward relevant medical hypotheses. Secondly, oriented to the field of intelligent justice, it constructs judicial knowledge atlas and carries out research on key technologies of intelligent assisted prosecutorial case handling, intending to break through key technical difficulties such as decomposition of facts in multi-person, multi-section cases, analysis of evidence association, automatic summary generation of case facts, calibration of judicial documents, and intelligent assistance in sentencing recommendations. It has been approved as a national key research and development programme project.
(5) New Generation Internet System
With the continuous expansion of the scale of Internet users and the rapid development of applications, the original system in flexibility, security, intelligence, integration and other aspects of the great challenges faced by the powerful countries have a new generation of Internet system of national strategic research layout. This research direction is mainly based on software-defined network, AI-driven network, computing network fusion system, intelligent network situational awareness and other key technologies, for the deep integration of the Internet and the real economy to create an intelligent network infrastructure system, to practice the national strategy of network power, to promote the landing of the smart city, and to promote the development of the national economy and the overall progress of society.
②Computer Technology (Professional Master)
I. Cultivation Objectives
With the fundamental task of promoting moral education and the goal of cultivating high-level top-notch innovative talents with international vision for the development of "double first-class" of the university, the programme aims to cultivate students who are able to adapt to the needs of the development of computer science and technology and the construction of the national economy, who have the spirit of innovation and the ability of practice, and who can engage in computer science research and development in the scientific research departments, educational units, enterprises, institutions, technology and administrative departments. They are capable of engaging in computer science research and application in scientific research departments, educational units, enterprises, technical and administrative departments. Degree recipients should master solid and broad basic theories and systematic expertise in computer science and technology related disciplines; master a foreign language, be able to read foreign materials in this field proficiently, and have a certain degree of listening and written expression ability; be familiar with the current situation and trend of science and technology in the research direction, and be able to independently carry out research in this discipline and related disciplines, and make creative achievements.
Ⅱ. Introduction of Major and Research Direction
(1) Theoretical Computer Science
In response to the development needs of new fields, two new research directions, namely, time-varying network optimization theory and complex system theory, have been established on the basis of the time-varying characteristics of algorithms, topological variability, uncertainty, nonlinearity and other basic scientific problems.
(2) Internet of Things Technology and Application
Comprehensive intelligent traffic system, wireless sensor network and other research basis, established the Internet of Things technology research direction.
(3) Information Retrieval and Natural Language Processing
Taking the advantages of algorithm analysis and design, integrating machine learning and natural language processing technology, we have carried out fruitful research and applications on Web search, Web community discovery, Web vertical search, and Web information credibility.
(4) Network and Cloud Computing
Research on cloud data system architecture supporting on-line transaction processing and analysis processing, as a basis for establishing a cloud data center with high throughput rate and node adaptive load balancing.
③Artificial Intelligence (Academic Master)
I. Cultivation Objectives
This programme is based on the fundamental task of cultivating moral integrity, and aims to cultivate high-level top-notch innovative talents with international perspectives for the construction of "double first-class" of the university. Degree holders should have a theoretical foundation of both arts and sciences, a sound and systematic knowledge structure; have a broad international vision and be able to use a foreign language proficiently; be familiar with the cutting-edge dynamics of AI theoretical research and engineering technology, and have a certain degree of independent learning and active innovation ability; have strong theoretical analysis ability, the ability to solve major engineering problems in the field of AI, and the ability to resolve key scientific problems through the intersection of disciplines; and be able to combine theories with theories to solve the key scientific problems in the field of AI. They have strong theoretical analysis ability, the ability to solve major engineering problems in the field of artificial intelligence and the ability to cross disciplines to solve key scientific problems, and are able to engage in scientific research or specialized engineering work in combination with practical problems related to artificial intelligence; they have a certain degree of academic ethics, humanistic qualities, and team spirit.
Ⅱ. Introduction of Major and Research Direction
Dalian University of Technology (DUT) has integrated the strengths of several AI-related disciplines of Control Science and Engineering, Computer Science and Technology, Mathematics, Information and Communication Engineering, and Bioengineering. DUT has established the School of Artificial Intelligence in 2019, which focuses on the frontier field of AI and carries out talent training and scientific research. In the same year, the university was awarded the first batch of undergraduate majors in AI, and it was one of the first colleges and universities in China to build AI-related majors. The School of Artificial Intelligence relies on a number of provincial and ministerial key laboratories and engineering technology research centres in the Department of Electronic Information and Electrical Engineering. With strong faculty and research strength, it has a group of experts with a high reputation among domestic and foreign counterparts, forming a reasonably structured academic echelon.
Artificial Intelligence is a cross-discipline aiming at the automation of intelligent behaviors, with the characteristics of generality of research objects, symbolization of problem representations, and versatility of research methods. Artificial Intelligence is gradually developed and perfected in the intersection and fusion of control science and engineering, computer science and technology, information and communication engineering, mathematics and many other disciplines, and belongs to a typical deep cross-discipline. Artificial Intelligence is a typical instrumental and methodological "cross-cutting interdisciplinary discipline" formed on the basis of extensive interdisciplinary research and with the common point of various material structures, levels, and forms of movement as the object of research, and it is a strategic technology that leads the future.
The orientation of this major is to face the major national needs, facing the cutting-edge scientific problems of related disciplines, serving China's economic and social and scientific and technological development, especially serving the economic revitalization of the Northeast China, carrying out research on the basic theories and key technologies of Artificial Intelligence, obtaining the international leading scientific research results, cultivating innovative talents, and contributing to the development of national economic construction and national defense cause. In recent years, this major has obvious characteristics and advantages in the research directions of industrial internet system of intelligent factory, active safety control of engine, information perception understanding and processing of speech, image, vision and other information in complex scenes, optimization and decision-making of production process in process industry, control and collaboration of unmanned system. In recent years, he has published more than 300 papers in authoritative journals in related fields, and has undertaken a number of important scientific research projects from national and local government departments and enterprises, including the National Science and Technology Major Project, the National Key R&D Programme, the National Natural Science Foundation of China's key projects, and the surface projects, etc. He has received a number of national and provincial and ministerial awards. It has won many national and provincial awards.
The discipline focuses on international exchanges and cooperation, and undertakes a number of international cooperation projects of the State Fund Committee, the Ministry of Education, etc. Teachers of the discipline have gone abroad for academic exchanges and carried out short-term collaborative scientific research for more than a hundred times. The department maintains long-term academic and research cooperation with many overseas masters, and has invited experts and scholars from abroad to give lectures to the teachers and students of the department and carry out cooperative scientific researches in China. We attach importance to the combination of industry, academia and research, and have signed internship agreements with Huawei, Baidu, Neusoft and other famous enterprises at home and abroad, and built DUT-HPI teaching base with Hasso Plattner Institute of Digital Engineering of the University of Potsdam, Germany, as well as established long-term and stable cooperation with many universities in the U.S.A., the U.K., Japan, Finland and other countries. It has hosted many academic conferences at home and abroad.
Main research directions and their contents:
(1) Machine Learning
It mainly includes statistical learning theory, deep reinforcement learning, unsupervised learning, semi-supervised learning, active learning and other theories and methods of research, and it carries out complex scenes of speech, image, vision and other information perception understanding and processing of applied research.
(2) Multimedia and Big Data Mining Direction
The research areas are cross-media unified representation, association understanding and knowledge mining, knowledge graph construction and learning, knowledge evolution and reasoning, intelligent description and generation, privacy protection learning and other theories and methods of research.
(3) Natural Language Understanding and Processing
Focusing on the core technologies of syntactic logic of natural language, character conceptual representation and in-depth semantic analysis, it mainly includes the research contents of the foundation of natural language processing, sentiment analysis, machine translation, knowledge mapping, information retrieval, human-computer dialogue, and text mining.
(4) Intelligent Control Theory and Technology
This direction is related to researches on intelligent control theory and its applications, focusing on the research and development of new methods and technologies, with an emphasis on the applied research of intelligent control theory and technology in the fields of intelligent factory industrial internet system, active safety control of engine, optimization and decision-making of production process in process industry, and control and collaboration of unmanned system.
(5) Intelligent System and Robot Direction
To conduct research on theories and methods of intelligent perception, modelling, cognition and autonomous adaptation for unstructured and diverse open environments, and to enhance the long-term autonomous performance and cross-domain collaboration capability of robots and other intelligent systems.
(6) Brain Science and Brain-Like Intelligence
To create more capable brain-like machine learning algorithms by using in-depth research and understanding of brain representations, transformations and learning rules, focusing on novel detection of neural signals, brain advanced cognitive functions and computational models, brain-computer interfaces and hybrid intelligence, brain-like machine learning and neural computation.
(7) Research Direction of Intelligent Perception and Computation
It mainly explores the potential mechanism of generating intelligence, the learning method of simulated intelligence, the basic theory of computational intelligence, and the basic theory of intelligent perception such as multi-sensor human-computer interaction, and carries out the theoretical and applied research in the directions of pattern recognition, visual computation, machine learning, and data mining for large-scale multimodal data.
(8) Artificial Intelligence Cross-direction
This direction conducts researches on basic theories and technological applications related to the intersection of artificial intelligence. Focusing on the industrial, medical and marine fields, the research direction will cover interdisciplinary researches about control, computers, communications, mathematics and other interdisciplinary fields, with the application background of intelligent manufacturing of high-end equipment, intelligent perception and optimal decision-making of industrial processes, and intelligent control of medical robots.
④ Artificial Intelligence (Professional Master)
I. Cultivation Objectives
This programme aims to cultivate high-level talents who can engage in the management, design and related engineering and technology work in the field of artificial intelligence. It closely integrates with the needs of China's economic and social and scientific and technological development, especially serves the economic revitalization of the Northeast China, faces the engineering reality of enterprises (industries), cultivates and practices the socialist core values, adheres to the fundamental principle of establishing morality, cultivates the talents with a solid theoretical foundation of the relevant professional fields, masters the basic theories, basic knowledge and skills in the field of Artificial Intelligence, and possesses the outstanding practical problem solving ability and good professionalism. Composite senior applied talents. The recipients of the master's degree in engineering shall have the following knowledge, abilities and qualities:
(1) Requirements on basic quality: Professional engineering degree holders should support the leadership of the CPC, love the motherland, abide by the law, have a high sense of social responsibility to serve the country and the people, good professional ethics and entrepreneurial spirit, scientific and rigorous and pragmatic learning attitude and working style, and be physically and mentally healthy.
(2) Basic Knowledge Requirements: Professional engineering degree holders should have a solid knowledge base in mathematics, control, computer and other disciplines, master the basic theories, basic knowledge and skills in the field of artificial intelligence, be familiar with the relevant norms in the professional field, and have the ability to independently take up the special technical work in the field of artificial intelligence, such as project planning, project design, project implementation, project research, project development, project management, etc., and have good professional ethics. They should have the ability to independently undertake engineering planning, engineering design, engineering implementation, engineering research, engineering development, engineering management and other specialized technical work in the field of artificial intelligence; they should have good professional ethics and dedication; they should have a scientific, rigorous and pragmatic learning attitude and working style.
(3) Requirements for basic competence: Professional engineering degree holders shall have the ability to analyze and solve AI engineering problems independently by applying relevant knowledge in the field of AI, the ability to track new theories, new knowledge and new technologies in AI and related fields and the ability to innovate in engineering technology, and the ability to proficiently master a foreign language and have an international outlook and the ability to communicate cross-culturally.
Ⅱ. Introduction of Major and Research Direction
Dalian University of Technology (DUT) integrated the strengths of several AI-related disciplines within the university and established the "School of Artificial Intelligence at DUT" in 2019, which is aimed at the frontiers of AI and carries out talent training and scientific research. In the same year, the university was awarded the first batch of undergraduate majors in artificial intelligence, and it was one of the first colleges and universities in China to build artificial intelligence majors. The School of Artificial Intelligence relies on a number of provincial and ministerial key laboratories and engineering technology research centers in the Department of Electronic Information and Electrical Engineering. With strong faculty and research strength, it has a group of experts with high reputation among domestic and foreign counterparts, forming a reasonably structured academic echelon. In recent years, the university has undertaken a number of important scientific research projects from national and local government departments and enterprises and institutions, including the National Science and Technology Major Special Project, the National Key Research and Development Programme, the National Natural Science Foundation of China's key projects, surface projects and so on.
Artificial Intelligence is a cross-discipline aiming at the automation of intelligent behaviors. AI is characterized by the generality of the research object, the symbolic representation of the problem, and the versatility of the research method. AI is gradually developed and perfected in the intersection and integration of many disciplines such as control science and engineering, computer science and technology, information and communication engineering, mathematics, etc., and belongs to a typical deep cross-discipline. Artificial intelligence is essentially typical interdisciplinary research on the basis of a wide range of interdisciplinary research, with a variety of material structure, levels, forms of movement and other common points as the object of study and the formation of instrumental, methodological "cross-cutting cross-disciplinary", is to lead the future of strategic technology. The Department of Artificial Intelligence is oriented to the major needs of the country and the frontier scientific problems of related disciplines, and carries out research on theories, key technologies and applications. In recent years, this major has obvious characteristics and advantages in the research direction of intelligent control of complex systems, computer vision, intelligent robotic systems, high-dimensional numerical analysis and optimization. Attaching importance to international academic exchanges and the combination of industry, academia and research, it has signed internship practice agreements with Huawei, Baidu, Neusoft and other famous enterprises at home and abroad, and has built a DUT-HPI teaching base in cooperation with the Hasso Plattner Institute for Digital Engineering of the University of Potsdam, Germany, and established long-term and stable cooperative relationships with many universities in the United States, the United Kingdom, Japan, Finland and so on. It has hosted many academic conferences at home and abroad.
Main research directions and their contents:
(1) Machine Learning
It mainly carries out statistical learning theory, deep reinforcement learning, unsupervised learning, semi-supervised learning, active learning and other theories and methods of research, and to carry out complex scenes of speech, image, vision and other information perception understanding and processing of applied research.
(2) Multimedia and Big Data Mining Direction
The research areas are cross-media unified representation, association understanding and knowledge mining, knowledge graph construction and learning, knowledge evolution and reasoning, intelligent description and generation, privacy protection learning and other theoretical and methodological research.
(3) Natural Language Understanding and Processing
Focusing on the core technologies of syntactic logic of natural language, character conceptual representation and deep semantic analysis, it mainly includes research on the foundation of natural language processing, sentiment analysis, machine translation, knowledge graph, information retrieval, human-machine dialogue, and text mining.
(4) Intelligent Control Theory and Technology
Research on intelligent control theory and its application, focusing on the research and development of new methods and technologies, with emphasis on the applied research of intelligent control theory and technology in the fields of intelligent factory industrial internet system, active safety control of engine, optimization and decision-making of production process in process industry, and control and collaboration of unmanned system.
(5) Intelligent System and Robot Direction
To conduct research on theories and methods of intelligent perception, modelling, cognition and autonomous adaptation for unstructured and diverse open environments, and to enhance the long-term autonomous performance and cross-domain collaboration capability of robots and other intelligent systems.
(6) Brain Science and Brain-Like Intelligence
To create more capable brain-like machine learning algorithms by using in-depth research and understanding of brain representations, transformations and learning rules, focusing on novel detection of neural signals, brain advanced cognitive functions and computational models, brain-computer interfaces and hybrid intelligence, brain-like machine learning and neural computation.
(7) Research Direction of Intelligent Perception and Computation
We mainly explore the potential mechanism of generating intelligence, the learning method of simulated intelligence, the basic theory of computational intelligence, and the basic theory of intelligent perception such as multi-sensor human-computer interaction, and carry out the theoretical and applied research in the directions of pattern recognition, visual computation, machine learning, and data mining for large-scale multimodal data.
(8) Artificial Intelligence
In this direction, we aim to carry out researches on basic theories and technical applications related to the intersection of artificial intelligence. Focusing on the industrial, medical and marine fields, it covers interdisciplinary research on control, computer, communication, mathematics and other cross-disciplinary fields with the application background of intelligent manufacturing of high-end equipment, intelligent perception and optimal decision-making of industrial processes, and intelligent control of medical robots.