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International Relations Office Dear University Partners, We would like to welcome your undergraduate students to apply for a Summer Research Attachment at National University of Singapore (NUS) which will take place from May/June to September 2015 for a period of minimum 8 weeks. Longer attachments of 12 weeks are strongly encouraged. Your students are welcome to apply for a position from a list of pre-defined research projects below. If your students are interested in projects outside this list, they are encouraged to browse the websites of NUS faculties and research institutes and identify a project/research area that interests them or a faculty member they wish to work with. Faculty of Engineering http://www.eng.nus.edu.sg/research/R_focus.htm Faculty of Science http://www.science.nus.edu.sg/about-fos/aboutfos-overview/departments School of Computing http://www.comp.nus.edu.sg/research/ Faculty of Arts and Social Sciences http://www.fas.nus.edu.sg/research/index.html School of Business http://bschool.nus.edu.sg/FacultyDepartments/ExpertiseGuide/tabid/589/Default.aspx School of Design and Environment http://www.sde.nus.edu.sg/rsh/SDE_rsh_overview.html Faculty of Law http://law.nus.edu.sg/research_publications/research_area.asp University-level Research Institutes/Centres http://www.nus.edu.sg/dpr/research/university.html Deadlines and Important Dates: Students Nomination to NUS: Selection by NUS faculties: 8 March 2015 18 March 2015 Application Procedure The following documents are required of students who wish to apply for a research attachment at NUS. - NUS Application Form (Annex 1) - Updated CV - A Recommendation Letter - A Copy of Academic Transcript 3rd Storey, Unit 03-03, Shaw Foundation Alumni House, 11 Kent Ridge Drive, Singapore 119244 Tel: (65) 6516 4356 Fax: (65) 6778 0177 Website: www.nus.edu.sg/iro Company Registration Number: 200604346E Research Projects List 2015 (for undergraduate students only) Project Number Research Title Number of Vacancies Host Department 1. Family and Population Studies in Asia 2 Centre for Family and Population Research (CFPR), Faculty of Arts and Social Sciences 2. Integrating Safety Considerations into Construction Process Simulations 2 Department of Building, School of Design and Environment 3. Evaluation of an Individualised Mobility Analysis and Rehabilitation System (iMARS) 2 Department of Computer Science, School of Computing 4. Migrating out of Poverty Research Programme Consortium: Intra-household Dynamics, Migration Industry and Policy Processes 1 5. The Application of Data Mining to Support Performance Analysis in Urban Design/Planning: A Case Study 1 Department of Architecture, School of Design and Environment 6. Contributing to the Development of a Shape Grammar Interpreter 1 Department of Architecture, School of Design and Environment 7. Cooperative Brains: EEG Hyper-Connectivity Between Operator Pairs whilst Actively Performing Demanding Interdependent Goaloriented Tasks 1 Singapore Institute for Neurotechnology (SINAPSE), Cognitive Engineering Laboratory 8. Characterisation of Brain States in Multi-task, Multi-workload Experiments: Machine Learning Techniques for EEG Signal Analysis 1 Singapore Institute for Neurotechnology (SINAPSE), Cognitive Engineering Laboratory 9. Neural Bases of Creativity 1 Singapore Institute for Neurotechnology (SINAPSE), Cognitive Engineering Laboratory 1 Singapore Institute for Neurotechnology (SINAPSE), Cognitive Engineering Laboratory 2 Singapore Institute for Neurotechnology (SINAPSE), Cognitive Engineering Laboratory 10. 11. Social Brains: EEG Hyper-connectivity between Operator Pairs whilst Actively Performing Demanding Interdependent GoalOriented Tasks Concurrent EEG/fMRI: Neuroimaging Of Brain Activity and Connectivity with High Spatial And Temporal Resolution Asia Research Institute 12. Dynamic Connectomics of Lower Limb Motor Cortex for Exoskeleton Robots 1 Singapore Institute for Neurotechnology (SINAPSE), Cognitive Engineering Laboratory 13. The Controlled Activation of Carbon-Boron Bonds 1 Department of Chemistry, Faculty of Science Total Number of Projects Available: 13 Page 2 of 18 PROJECT 1 Research Title: Family and Population Studies in Asia Supervisor / Department: Professor Yeung Wei-Jun, Jean Centre for Family and Population Research (CFPR), Faculty of Arts and Social Sciences Link to host’s online bio / research page: http://www.fas.nus.edu.sg/cfpr/ http://profile.nus.edu.sg/fass/socywj/stf_socywj.htm Project Description: Work involved includes: Assist in data analysis that involves China and India’s population and family changes Literature review for research projects prepare documentation for the study, administrative work involved in the project, descriptive statistic work if possible Assist in the work related to summer training workshops offered by CFPR CFPR has many interdisciplinary faculty members who can supervise the intern. Learning Objectives: 1. 2. 3. Number of vacancies: 2 Description of student required: Literature review on factors that affect China and India’s population change Project documentation and research analysis Administration in the Centre for Family and Population Research Faculty / School Field of Specialisation Arts and Social Sciences Prerequisites and other requirements (if any): Nil Financial Support (from host): Nil Page 3 of 18 Chinese Language Chinese Studies Economics Geography Psychology Social Work Sociology PROJECT 2 Research Title: Integrating Safety Considerations into Construction Process Simulations Supervisor / Department: Assistant Professor Goh Yang Miang Department of Building, School of Design and Environment Link to host’s online bio / research page: http://www.bdg.nus.edu.sg/People/Faculty/staff_bdggym.htm The aim is for the interns to model processes in a construction site or precast yard in Singapore and use the model to improve the efficiency of the processes while balancing safety concerns. The students are expected to conduct the following tasks under the guidance of a full-time research assistant and the reporting officer: Project Description: 1. 2. 3. 4. Learning Objectives: 1. 2. 3. Number of vacancies: 2 Description of student required: Prerequisites and other requirements (if any): Financial Support (from host): Identify and document the key processes of the site Collect data from sites, e.g. time taken for different activities, number of plants used, common unsafe behaviours and safety rules Derive probability functions of different parameters and heuristic rules used by workers Develop a hybrid simulation model of the work process Appreciate the factors influencing productivity Appreciate the factors influencing construction safety and health Develop a simple simulation model of construction activities Faculty / School Field of Specialisation Business Operations & Supply Chain Management Computing Business Analytics Design and Environment Project & Facilities Management Engineering Civil Computer Engineering Science Industrial & Systems - Able to communicate in English and willing to work on construction sites - Knowledge of basic statistics and probability - Experience in simulation (e.g. discrete event simulation) and/or Java programming preferred Nil Page 4 of 18 PROJECT 3 Research Title: Evaluation of an Individualised Mobility Analysis and Rehabilitation System (iMARS) Supervisor / Department: Associate Professor Wang Ye Department of Computer Science, School of Computing Link to host’s online bio / research page: www.smcnus.org Project Description: This project is in line with two of the core themes of the laboratory: (1) leveraging mobile (“smart”) technology platforms to create personalised solutions for healthcare delivery; and (2) translating large quantities of (meta)data into metrics and interfaces that are directly relevant to the needs of doctors, therapists, and researchers for various healthcare applications. Learning Objectives: 1. 2. Number of vacancies: 2 Effective communication within a multidisciplinary research team Designing and/or testing technology solutions in populations with special considerations (e.g., the elderly, patients) Faculty / School Field of Specialisation Computer Science E-Commerce Computer Engineering Information Systems Computing Description of student required: Engineering Computer Electrical Science Physics (Physics in Technology) Statistics Design and Environment Industrial Design Prerequisites and other requirements (if any): - Financial Support (from host): Motivated and self-driven ability to tackle new or unfamiliar concepts Ability to draw on skills and techniques from multiple disciplines (computer science, rehabilitation science, biostatistics) Willing to ask questions Familiar with designing and/or testing technology solutions in populations with special considerations (e.g., the elderly, patients) Excellent written and spoken English Background in programming (MATLAB/Python/Octave, SQL, Java, iOS/Android), smartphone app design, signal processing of sensor and/or accelerometry data and machine learning techniques is an advantage Nil Page 5 of 18 PROJECT 4 Research Title: Migrating Out of Poverty Research Programme Consortium: Intra-household Dynamics, Migration Industry and Policy Processes Supervisor / Department: Professor Brenda Yeoh Asia Research Institute Link to host’s online bio / research page: http://www.ari.nus.edu.sg/people_details.asp?peopleid=121&categoryid Project Description: The Research Assistant will be required to assist in the following tasks: Library research and literature review relating to migration and poverty alleviation in South and Southeast Asia Editing and formatting documents/reports Assisting with questionnaire design and conducting surveys in Singapore Transcribing and/or translation work for qualitative interviews Organising academic workshops and dissemination meetings Simple clerical/office duties such as photocopying and scanning 1. Learning Objectives: 2. 3. Number of vacancies: Develop library research skills leading to a better understanding of migration, development and poverty issues in Southeast Asia Learn fieldwork skills through participation in a research project that combines quantitative and qualitative research Acquire teamwork and cross-cultural sensibilities by working in a transnational research team involving academics and NGO practitioners 1 Faculty / School Description of student required: Arts and Social Sciences Prerequisites and other requirements (if any): - Financial Support (from host): Nil Field of Specialisation Geography Sociology South Asian Studies Southeast Asian Studies Ability to speak Bahasa Indonesia is an advantage Research interests in migration and Southeast Asia preferred Page 6 of 18 PROJECT 5 Research Title: The Application of Data Mining to Support Performance Analysis in Urban Design/Planning: A Case Study Supervisor / Department: Associate Professor Rudi Stouffs Department of Architecture, School of Design and Environment Link to host’s online bio / research page: http://www.arch.nus.edu.sg/people/cv/rudi.htm The student will apply his/her knowledge and skills of urban planning or design towards the development and execution of a case study involving data mining to support performance analysis for urban planning or design. The student will assist a PhD researcher, whose research is focused on investigating and demonstrating the applicability of data mining to urban planning and design, with the development of a case study to demonstrate a specific application of data mining in the context of performance analysis for urban planning or design. Project Description: The student may introduce an urban planning/design brief/solution that he/she has worked on previously, or select a brief from urban planning or design education at NUS. In relationship to this brief, and in consultation with the PhD researcher, the student will identify one or more performance aspects that would benefit from the application of a performance analysis technique or tool to quantitatively (and qualitatively) assess this or these performance aspects. Subsequently, the investigation is focused on any barriers that may impede the assessment of these performance aspects or the application of selected performance analysis techniques or tools is. For example, these could be missing input data for a particular tool or technique, e.g., the lack of sufficiently detailed design data. Subsequently, an approach will be devised to use data mining in overcoming these barriers. For example, input data may be synthesised from other data sets, or cases may be extracted from other data sets for the application of case-based reasoning. The final objective is to develop a computational workflow, in collaboration with the PhD researcher, which applies data mining to enable the quantitative (and qualitative) assessment of one or more performance aspects within an urban planning or design case study. The work will mainly consist of these five steps: 1. Collect urban information in relation to the brief 2. Identify the issues to be investigated 3. Define the analyses to be performed 4. Identify where data mining may assist the analysis and design process 5. Identify a computational workflow that ties everything together Learning Objectives: 1. 2. 3. Number of vacancies: Description of student required: Prerequisites and other requirements (if any): Financial Support (from host): The application of performance analysis to urban planning or design Insight into the use of data mining to alleviate data issues in urban planning or design Contribute to research 1 Faculty / School Field of Specialisation Design and Environment Architecture Urban design or planning skills Nil Page 7 of 18 PROJECT 6 Research Title: Contributing to the Development of a Shape Grammar Interpreter Supervisor / Department: Associate Professor Rudi Stouffs Department of Architecture, School of Design and Environment Link to host’s online bio / research page: http://www.arch.nus.edu.sg/people/cv/rudi.htm The student will contribute to the development of a Shape Grammar Interpreter. Shape grammars are a formal rewriting system for producing languages of shapes. Shape grammars commonly consider only shapes composed of line segments and points, the latter with labels as attributes, but the concept of shape grammars can easily be extended to other types of data relevant to design. “Sortal grammars” are a formalism (or rather, a class of formalisms) for design grammars that extends on shape grammars and “colour grammars”, both of which allow for (a limited) variation in the formalism they prescribe. Shape grammar interpreters are difficult to implement. Part of the difficulty stems from technical considerations, e.g., relating to representational, mainly geometric, issues and relating to emergence. Recognising emergent shapes requires determining a transformation under which a shape is a part of the original shape. Another part of the difficulty is developing ways of enabling designers to employ grammatical rules in a manner that does not impede their act of designing. The latter is not a focus of this project, though enabling others to use the shape grammar interpreter here developed in addressing this difficulty is. Project Description: SortalGI is a “sortal grammar” interpreter under development for the processing programming environment. The student will contribute to the development of this grammar interpreter in one of three possible ways, to be selected based on the student’s skills and interests: 1. Addressing known technical problems of the grammar interpreter in the Java language. Student will gain an understanding of the workings of the grammar interpreter and of its implementation architecture, and develop and implement technical solutions for existing issues 2. Re-implementing parts of the grammar interpreter in the Python language. Student will gain an understanding of the workings of the grammar interpreter and its implementation architecture, and develop and implement a similar architecture in Python 3. Exploring the use of Rosetta, a Programming Language for Generative Design, to enable access to the grammar interpreter in the Java language from the Python language. Student will gain a specific understanding of Rosetta and a general understanding of grammar interpreters, and develop and implement basic access to the grammar interpreter in the Java language from the Python language. Learning Objectives: 1. 2. 3. Number of vacancies: Gain an understanding of the workings of a shape grammar interpreter Contribute to the continued development of the SortalGI “sortal grammar” interpreter Contribute to research 1 Page 8 of 18 Description of student required: Faculty / School Computing Field of Specialisation Any Science Applied Mathematics Prerequisites and other requirements (if any): Computer programming (Java and/or Python) Financial Support (from host): Nil Page 9 of 18 PROJECT 7 Research Title: Cooperative Brains: EEG Hyper-Connectivity Between Operator Pairs whilst Actively Performing Demanding Interdependent Goal-oriented Tasks Supervisor / Department: Professor Tassos Bezerianos Singapore Institute for Neurotechnology (SINAPSE), Cognitive Engineering Lab. Link to host’s online bio / research page: http://www.sinapseinstitute.org/projects/cognitiveengr/ Project Description: Functional neuroimaging has been a major tool for cognitive neuroscience, experimental psychology, and psychiatry. Non-invasive high-resolution imaging would provide tremendous benefits to better understanding of the brain mechanisms behind mental processes, such as perception, attention, learning, etc. Although the traditional approach of functional neuroimaging is usually applied to a single participant at a time, there has been the emerging field of using functional neuroimaging to record the neural activity of multiple participants performing a task at the same time. The Cognitive Engineering Group in SINAPSE has previously conducted experiments exploring the interactions of pilot-copilot pairs during operation of a NASA flight simulator. The interaction between the brains was quantified by the temporal sequence of localised electrical activity sources. The Cognitive Engineering Group in SINAPSE will develop a physics engine within a flight simulator to control for the pilot-copilot collaboration, and a new method to quantify the hyper connectivity between pilot and copilot, combining their previous analysis using source localisation with graph theoretical approach on cross-participants functional connectivity patterns. The Cognitive Engineering Group in SINAPSE is seeking highly motivated and committed student for the data analysis of EEG and complex behavioural data. The candidate is expected to be confident with applied mathematics and programming for the data analysis using Matlab and shell scripts. Learning Objectives: 1. 2. 3. Number of vacancies 1 Description of student required: Understand the experiment design for hyper connectivity studies Obtain the skills of electro-physiological signal processing Obtain the skills for hyper connectivity analysis Faculty / School Computing Field of Specialisation Computer Science Engineering Computer Electrical Science Applied Mathematics Mathematics Physics Statistics Prerequisites and other requirements (if any): Knowledge of MATLAB, shell scripts, Signal Processing ToolBox Financial Support (from host): Nil Page 10 of 18 PROJECT 8 Research Title: Characterisation of Brain States in Multi-task, Multi-workload Experiments: Machine Learning Techniques for EEG Signal Analysis Supervisor / Department: Professor Tassos Bezerianos Singapore Institute for Neurotechnology (SINAPSE), Cognitive Engineering Lab. Link to host’s online bio / research page: http://www.sinapseinstitute.org/projects/cognitiveengr/ The association of functional connectivity patterns with particular cognitive tasks has long been a topic of interest in neuroscience. However, the highdimensionality of the pairwise functional connectivity limits its usefulness in some real-time applications. In an earlier completed study conducted by the Cognitive Engineering Group in SINAPSE, the methodology of tensor subspace analysis (TSA) was used to reduce the initial high-dimensionality of the pairwise coupling in the original functional connectivity network to a space of condensed descriptive power, which would significantly decrease the computational cost and facilitate the differentiation of brain states. The Group has previously tried to classify mental workload based on a single-task design where task difficulty was parametrically varied across blocks. However, it is unclear whether the Group’s method can be generalised across subjects or tasks. Project Description: The goal of this study is thus to utilise multiple task and workload levels in an attempt to create a more general classifier of mental workload. The Cognitive Engineering Group in SINAPSE is seeking highly motivated and committed student for the data analysis of EEG and complex behavioural data. The candidate is expected to be confident with applied mathematics and programming for the data analysis using Matlab and shell scripts. Learning Objectives: 1. 2. 3. Number of vacancies: 1 Obtain the skills of electro-physiological signal processing Obtain the skills of electro-physiological functional connectivity analysis Obtain the skills for machine learning Faculty / School Field of Specialisation Computing Description required: of student Engineering Computer Science Knowledge of MATLAB, Shell scripts, Signal Processing and Computational Intelligence ToolBox required Computer Electrical Knowledge of MATLAB, Shell scripts, Signal Processing and Computational Intelligence ToolBox required Science Prerequisites and requirements (if any): other Financial Support (from host): Statistics As above Nil Page 11 of 18 PROJECT 9 Research Title: Neural Bases of Creativity Supervisor / Department: Professor Tassos Bezerianos Singapore Institute for Neurotechnology (SINAPSE), Cognitive Engineering Lab. Link to host’s online bio / research page: http://www.sinapseinstitute.org/projects/cognitiveengr/ Innovation is a key quality of leadership and an indispensable property of evolutionary procedures. Creative ideas, as the basis of innovation, are intrinsic mental processes of the human species that played a crucial role in human evolution and resulted to great social, technological and medical breakthroughs. The Cognitive Engineering group in the Singapore Institute for Neurotechnology (SINAPSE) is currently using sophisticated, multi-modal imaging methods to study the brain at work so as to study the neural bases of creative thinking. The Cognitive Engineering group is interested in studying neural processes leading to creative ideas by mapping and comparing the brain networks that are activated during generating new creative ideas and during recalling already existing ones. Brain mapping will be based on experimental data collected with electroencephalography (EEG) and will be analysed in terms of functional connectivity measures and graph theoretic properties. Project Description: The Cognitive Engineering Group in SINAPSE is seeking a highly motivated and committed student to assist in collection and analysis of EEG data as a subproject of this ongoing work. The ideal candidate should have a background in psychology or neuroscience and a keen interest in working in the rapidlygrowing field of cognitive neuroscience. Previous experience working with human experimental participants is desirable. Learning Objectives: 1. 2. 3. Number of vacancies 1 Understand the electro-physiological mechanism of creative thinking Obtain the skills of electro-physiological signal processing Become familiar with graph theory models Faculty / School Field of Specialisation Psychology Arts and Social Sciences Knowledge of MATLAB, Shell scripts required Description required: of student Computer Science Computer Engineering Computing Knowledge of MATLAB, Shell scripts and Signal Processing ToolBox required Engineering Bioengineering Computer Electrical Knowledge of MATLAB, Shell scripts and Signal Processing ToolBox required Prerequisites and requirements (if any): other Financial Support (from host): As above Nil Page 12 of 18 PROJECT 10 Research Title: Social Brains: EEG Hyper-connectivity between Operator Pairs whilst Actively Performing Demanding Interdependent Goal-Oriented Tasks Supervisor / Department: Professor Tassos Bezerianos Singapore Institute for Neurotechnology (SINAPSE), Cognitive Engineering Lab. Link to host’s online bio / research page: http://www.sinapseinstitute.org/projects/cognitiveengr/ Functional neuroimaging has been a major tool for cognitive neuroscience, experimental psychology, and psychiatry. Non-invasive high-resolution imaging would provide tremendous benefits to better understanding of the brain mechanisms behind mental processes, such as perception, attention, learning, etc. Although the traditional approach of functional neuroimaging is usually applied to a single participant at a time, there has been the emerging field of using functional neuroimaging to record the neural activity of multiple participants performing a task at the same time. The Cognitive Engineering Group in SINAPSE has previously conducted experiments exploring the interactions of pilot-copilot pairs during operation of a NASA flight simulator. The interaction between the brains was quantified by the temporal sequence of localised electrical activity sources. The Cognitive Engineering Group in SINAPSE will develop a physics engine within a flight simulator to control for the pilot-copilot interactions, and a new method to quantify the neural hyper connectivity extending their previous analysis using source localisation to graph theoretical approach on cross participant function connectivity. Project Description: The Cognitive Engineering Group in SINAPSE is seeking highly motivated and committed student for the data analysis of EEG and complex behavioural data. The candidate is expected to be confident with applied mathematics and programming for the data analysis using Matlab and shell scripts. Learning Objectives: 1. 2. 3. Number of vacancies: 1 Understand the experiment design for hyper connectivity studies Obtain the skills of electro-physiological signal processing Obtain the skills for hyper connectivity analysis Faculty / School Field of Specialisation Computer Science Computing Knowledge of MATLAB, Shell scripts required Description required: of student Computer Electrical Engineering Knowledge of MATLAB, Shell scripts and Signal Processing required Science Prerequisites and requirements (if any): other Financial Support (from host): Statistics As above Nil Page 13 of 18 PROJECT 11 Research Title: Concurrent EEG/fMRI: Neuroimaging Of Brain Activity and Connectivity with High Spatial And Temporal Resolution Supervisor / Department: Professor Tassos Bezerianos Singapore Institute for Neurotechnology (SINAPSE), Cognitive Engineering Lab. Link to host’s online bio / research page: http://www.sinapseinstitute.org/projects/cognitiveengr/ Functional neuroimaging has been a major tool for cognitive neuroscience, experimental psychology, and psychiatry. Among non-invasive imaging techniques, EEG and fMRI provide tremendous benefits to better understanding of the brain mechanisms behind mental processes, such as perception, attention, learning, etc. Although they both have limitations when used alone, their combination becomes a powerful tool for studying brain functions with high spatial and temporal resolution. Project Description: The Cognitive Engineering Group in SINAPSE uses concurrent EEG/fMRI recordings to investigate brain activity and connectivity responsible for mental fatigue. For multi-modal data analysis, the Group is first looking for an effective method to remove gradient artefacts and BCG artefacts from EEG signals acquired inside the MRI scanner. After the data is cleaned, cortical connectivity patterns from each modality, i.e., electrophysiological and metabolic, will be investigated based on graph theoretical analysis. The Group is also developing advanced methods to implement multi-modal data fusion. The Cognitive Engineering Group in SINAPSE is seeking a highly motivated and committed student for EEG/fMRI data analysis. The candidate is expected to be confident with applied mathematics and programming for the data analysis using Matlab and shell scripts. Students who are familiar with machine learning techniques are also welcome. Learning Objectives: 1. 2. 3. Number of vacancies Understand the neural mechanism of mental fatigue Obtain the skills of electro-physiological signal processing and EEG/fMRI data analysis Develop a suitable method for EEG/fMRI data fusion 2 Faculty / School Arts and Social Sciences Computing Description of student required: Field of Specialisation Psychology Computer Science Knowledge of MATLAB, shell scripts, Signal Processing ToolBox required Computer Electrical Engineering Knowledge of MATLAB, shell scripts, Signal Processing ToolBox required Science Applied Mathematics Mathematics Physics Statistics Knowledge of MATLAB, Shell Scripts, Machine Learning ToolBox required Page 14 of 18 Prerequisites and other requirements (if any): As above Financial Support (from host): Nil Page 15 of 18 PROJECT 12 Research Title: Dynamic Connectomics of Lower Limb Motor Cortex for Exoskeleton Robots Supervisor / Department: Professor Tassos Bezerianos Singapore Institute for Neurotechnology (SINAPSE), Cognitive Engineering Lab. Link to host’s online bio / research page: http://www.sinapseinstitute.org/projects/cognitiveengr/ The purpose of the research is to apply machine learning on brain (EEG) and muscle (EMG) signals to improve control strategies of lower limb exoskeleton, which might help lower limb rehabilitation for stoke patients. In this stage of the research, the aim is to find a way to make use of machine learning techniques to identify different lower limbs (leg) activities. Project Description: EEG will be recorded during the experiments when the participants raise their legs or imaging doing it. After signal processing, the data will be used for feature extraction and classification. The Cognitive Engineering Group in SINAPSE is seeking highly motivated and committed student to assist us processing and classifying the EEG data. The candidate is expected to be confident with applied mathematics and programming for data analysis using Matlab or Python, a prior knowledge of machine learning will be a plus. 1. Learning Objectives: Number of vacancies: 2. 3. Understand how research looks like in the field of neural science/engineering Obtain the skills of electro-physiological signal processing Obtain the basic machine learning skills for classification/feature extraction 1 Faculty / School Field of Specialisation Computer Science Computing Good Math background required Description of student required: Computer Electrical Engineering Knowledge of Signal processing, Machine learning required Science Prerequisites and other requirements (if any): As above Financial Support (from host): Nil Statistics Page 16 of 18 PROJECT 13 Research Title: The Controlled Activation of Carbon-Boron Bonds Supervisor / Department: Assistant Professor Rowan Young Department of Chemistry, Faculty of Science Link to host’s online bio / research page: http://www.chemistry.nus.edu.sg/people/academic_staff/youngdr.html Project Description: The controlled formation and cleavage of Carbon-Boron bonds has played a crucial role in the ongoing development of organic chemistry over the previous few decades. The cleavage of Carbon-Boron bonds has led to new methodologies for not only the formation of Carbon-Boron bonds but for the instalment of practically any functional group. Furthermore, protocols for the formation of Carbon-Boron bonds from readily available and largely inert Carbon-Hydrogen bonds under mild reaction conditions have matured over the last 10 years. The installation of Boronate groups through such methods offers unique selectivity and functional group tolerance not otherwise achievable via other common carbon-boron bond forming methods. Key to both the formation and cleavage of Carbon-Boron bonds is the transmetalation of organic groups either from or to Boron. Despite the importance of the transmetalation step in organoborane based reactions, the way in which this occurs is still debated, with contradictory experimental evidence arising from even subtle variations in reaction conditions. Although such mechanisms have been studied extensively in silico, experimental evidence rests largely on kinetic evidence, and mechanistic model systems are under-represented for this important reaction step. This project endeavours to develop pincer based ligands to lend understanding to Carbon-Boron bond breaking and (through micro-reversibility) bond forming reactions. Furthermore, alternate reaction pathways induced by conformational demands encroached by the pincer systems will be explored with the possibility of developing novel carbon-carbon bond forming methodologies. Systems will be designed to create divergent reaction pathways incurring transmetalation via either sigma-bond metathesis or oxidative addition of a Carbon-Boron bond. Learning Objectives: 1. 2. 3. Number of vacancies: Description of student required: Acquire laboratory techniques for air-sensitive chemistry Gain fundamental knowledge and understanding of organometallic transformation Acquire the ability to plan, conduct and present research 1 Faculty / School Field of Specialisation Science Prerequisites and other requirements (if any): Enrolled as a Chemistry major Financial Support (from host): Nil Chemistry Page 17 of 18 International Relations Office ANNEX 1: NUS Application Form SUMMER UNDERGRADUATE RESEARCH EXCHANGE PROGRAMME NUS APPLICATION FORM Personal Information Title (* Select one from drop-down list) Mr/Ms/Mrs* Last Name Date of Birth (dd/mm/yy) Nationality Gender(* Select one from drop-down list) Female/Male* Email Address First Name Permanent Postal Address Mobile Number (including country code) Current Studies School/ Faculty/ Department Name of the University Name of the Degree Currently Pursued Major and Minor (if any) Current Year of University Studies Expected Graduation Date (mm/yy) Proposed Research Attachment at National University of Singapore (NUS) I’d like to apply for a research project predefined in the Research Project List. I’d like to apply for a research project outside the Research Project List. Research Subject Host Institute/Laboratory Researcher’s Name or Email Address 1 2 3 Proposed Research Start Date (dd/mm/yy) Proposed Research End Date (dd/mm/yy) A statement discussing research subjects, motivation and relevant qualifications and skills (500 words maximum) 3rd Storey, Unit 03-03, Shaw Foundation Alumni House, 11 Kent Ridge Drive, Singapore 119244 Tel: (65) 6516 4356 Fax: (65) 6778 0177 Website: www.nus.edu.sg/iro Company Registration Number: 200604346E