Postdoc positions in Computational Neuroimaging
2x post-doctoral positions in Computational Neuroimaging at the Adaptive Brain Lab (Univ of Cambridge; http://www.abg.psychol.cam.ac.uk), University of Cambridge, UK.
Opportunity to work with our cross-disciplinary team on a new Wellcome Trust funded Collaborative award that bridges work across species (humans, rodents) and scales (local circuits, global networks) to uncover the network and neurochemical mechanisms that support learning and brain plasticity. Successful applicants will be integrated in a diverse collaborative team of international experts and will receive cross-disciplinary training in innovative methodologies at the interface of neuroscience, neurotechnology and computational science.
For details and to apply online see:
https://www.jobs.cam.ac.uk/job/32242/:
For Informal enquiries please contact Prof Zoe Kourtzi (zk240@cam.ac.uk) with CV and brief statement of background skills and research interests.
✔️ @ApplyTime
2x post-doctoral positions in Computational Neuroimaging at the Adaptive Brain Lab (Univ of Cambridge; http://www.abg.psychol.cam.ac.uk), University of Cambridge, UK.
Opportunity to work with our cross-disciplinary team on a new Wellcome Trust funded Collaborative award that bridges work across species (humans, rodents) and scales (local circuits, global networks) to uncover the network and neurochemical mechanisms that support learning and brain plasticity. Successful applicants will be integrated in a diverse collaborative team of international experts and will receive cross-disciplinary training in innovative methodologies at the interface of neuroscience, neurotechnology and computational science.
For details and to apply online see:
https://www.jobs.cam.ac.uk/job/32242/:
For Informal enquiries please contact Prof Zoe Kourtzi (zk240@cam.ac.uk) with CV and brief statement of background skills and research interests.
✔️ @ApplyTime
www.jobs.cam.ac.uk
Research Associate x 2 (Fixed Term) - Job Opportunities - University of Cambridge
Research Associate x 2 (Fixed Term) in the Department of Psychology at the University of Cambridge.
Two Postdoctoral Scholar Positions at Washington University in St. Louis
We are looking for two highly motivated postdoctoral scholars to work on NSF and DoD funded projects. One postdoctoral scholar will use human single-neuron recordings to study the neural circuits underlying social attention, and the other postdoctoral scholar will use multimodal neuroimaging techniques to study social behavior and brain networks in people with autism. The research will be conducted in a highly collaborative environment using state-of-the-art equipment, facilities, and analytical methods. The postdoctoral scholars will collaborate with an established team of investigators within and outside WashU and have ample opportunity to learn new techniques and methods.
Applicants must hold a Ph.D. in systems, cognitive, or computational neuroscience, or in physics, electrical engineering, or computer science, with relevant research expertise in neuroscience. Applicants must also have strong programming (Matlab or similar) skills. Individuals with previous human intracranial EEG expertise and/or macaque single-neuron recordings that wish to expand into human single-unit recordings are encouraged to apply.
Our lab combines multimodal and advanced measurement techniques with sophisticated computational approaches to understand the neural mechanisms and neural computations underlying social attention, face processing, emotion, memory, and decision making. Overarching questions involve how the brain figures out what is important in the environment, how socially relevant stimuli pop out and attract attention, how faces are processed and represented in general, and how memory is modulated by attention. We are particularly interested in the neural computations underlying these cognitive processes: multimodal approaches allow us to investigate these questions from the microscopic single-neuron and neural circuit level using our state-of-the-art human single-neuron recordings as well as macroscopic level using fMRI, EEG, and intracranial EEG (sEEG and ECoG). These multimodal experimental approaches are powered by sophisticated computational approaches that can deal with complex and large datasets.
The Wang Neuroscience Lab is housed in the Mallinckrodt Institute of Radiology (MIR) at the Washington University School of Medicine (WUSM) in St Louis. WUSM is a world class research intensive academic health center that is consistently ranked among the nation’s research-oriented medical schools. Additionally, it is nationally known for its attractive campus, which borders residential neighborhoods and one of the nation’s largest urban parks. St. Louis is consistently rated a Forbes most affordable city with vibrant music, food and park scene, and has one of the fastest growing start-up communities with impressive accelerator and incubator services available through the Biogenerator, Cambridge Innovation Center, and Cortex Innovation District.
Shuo Wang, Ph.D.
Assistant Professor
Washington University in St. Louis
https://sites.wustl.edu/wanglab/
✔️ @ApplyTime
We are looking for two highly motivated postdoctoral scholars to work on NSF and DoD funded projects. One postdoctoral scholar will use human single-neuron recordings to study the neural circuits underlying social attention, and the other postdoctoral scholar will use multimodal neuroimaging techniques to study social behavior and brain networks in people with autism. The research will be conducted in a highly collaborative environment using state-of-the-art equipment, facilities, and analytical methods. The postdoctoral scholars will collaborate with an established team of investigators within and outside WashU and have ample opportunity to learn new techniques and methods.
Applicants must hold a Ph.D. in systems, cognitive, or computational neuroscience, or in physics, electrical engineering, or computer science, with relevant research expertise in neuroscience. Applicants must also have strong programming (Matlab or similar) skills. Individuals with previous human intracranial EEG expertise and/or macaque single-neuron recordings that wish to expand into human single-unit recordings are encouraged to apply.
Our lab combines multimodal and advanced measurement techniques with sophisticated computational approaches to understand the neural mechanisms and neural computations underlying social attention, face processing, emotion, memory, and decision making. Overarching questions involve how the brain figures out what is important in the environment, how socially relevant stimuli pop out and attract attention, how faces are processed and represented in general, and how memory is modulated by attention. We are particularly interested in the neural computations underlying these cognitive processes: multimodal approaches allow us to investigate these questions from the microscopic single-neuron and neural circuit level using our state-of-the-art human single-neuron recordings as well as macroscopic level using fMRI, EEG, and intracranial EEG (sEEG and ECoG). These multimodal experimental approaches are powered by sophisticated computational approaches that can deal with complex and large datasets.
The Wang Neuroscience Lab is housed in the Mallinckrodt Institute of Radiology (MIR) at the Washington University School of Medicine (WUSM) in St Louis. WUSM is a world class research intensive academic health center that is consistently ranked among the nation’s research-oriented medical schools. Additionally, it is nationally known for its attractive campus, which borders residential neighborhoods and one of the nation’s largest urban parks. St. Louis is consistently rated a Forbes most affordable city with vibrant music, food and park scene, and has one of the fastest growing start-up communities with impressive accelerator and incubator services available through the Biogenerator, Cambridge Innovation Center, and Cortex Innovation District.
Shuo Wang, Ph.D.
Assistant Professor
Washington University in St. Louis
https://sites.wustl.edu/wanglab/
✔️ @ApplyTime
Wang Neuroscience Lab
Neuroscience lab by Shuo Wang
Postdoctoral Associate for the Morality Lab at Boston College
Position category: Post-doctoral
Name of lab: Morality Lab
Supervisor: Liane Young
Open until filled
Denoscription:
The Morality Lab at Boston College, led by Liane Young, is seeking a postdoctoral associate. Applications will be reviewed on a rolling basis until the position has been filled, with the position starting as early as January 2022 and no later than July 2022.
Boston College is a research university with a strong and growing psychology department, located in an academic hub city with many opportunities for cross-lab collaboration. Members of the Morality Lab research diverse topics related to social and moral cognition; for example, the impact of social norms on virtuous behavior, social learning and prediction error, the tradeoff between principles of moral obligation and impartiality, perceptions of reputation signaling and norm signaling, and judgments of others’ actions vs. words. The lab uses behavioral methods (e.g., online data collection), fMRI, TMS, and computational modeling, in both typical and atypical populations, adults and children. Learn more by visiting https://moralitylab.bc.edu/.
This position is fully funded for one year and is renewable for two additional years, contingent on performance. Salary is competitive and follows NIH stipend guidelines. Candidates of any background are encouraged to apply, but ideal candidates will have experience with neuroimaging techniques and analysis (SPM, FSL, etc.), as well as strong quantitative and programming skills (e.g., MATLAB, Python, R). Candidates whose work bridges disciplines (e.g., between developmental and moral psychology, or cognitive and social neuroscience), as in the case of our former postdoctoral associates, may also be particularly suited for this position.
To apply, please email Aditi Kodipady (kodipady@bc.edu) and Liane Young (liane.young@bc.edu) with a CV (noscriptd ‘LastName_CV’) and a statement of your current and future research interests. Please also provide contact information for three references and include “Morality Lab Postdoc Application 2022” in the subject line of any correspondence.
Review of applications will start immediately and proceed until the position is filled. Women, LGBTQ and under-represented minority applicants are encouraged to apply. Boston College is An Equal Opportunity/Affirmative Action Employer. In addition to comprehensive health and dental insurance plans, Boston College offers many other benefits, including various types of insurance coverage, tuition remission opportunities, a 401(k) plan match, and a significant number of paid holidays and vacation days.
✔️ @ApplyTime
Position category: Post-doctoral
Name of lab: Morality Lab
Supervisor: Liane Young
Open until filled
Denoscription:
The Morality Lab at Boston College, led by Liane Young, is seeking a postdoctoral associate. Applications will be reviewed on a rolling basis until the position has been filled, with the position starting as early as January 2022 and no later than July 2022.
Boston College is a research university with a strong and growing psychology department, located in an academic hub city with many opportunities for cross-lab collaboration. Members of the Morality Lab research diverse topics related to social and moral cognition; for example, the impact of social norms on virtuous behavior, social learning and prediction error, the tradeoff between principles of moral obligation and impartiality, perceptions of reputation signaling and norm signaling, and judgments of others’ actions vs. words. The lab uses behavioral methods (e.g., online data collection), fMRI, TMS, and computational modeling, in both typical and atypical populations, adults and children. Learn more by visiting https://moralitylab.bc.edu/.
This position is fully funded for one year and is renewable for two additional years, contingent on performance. Salary is competitive and follows NIH stipend guidelines. Candidates of any background are encouraged to apply, but ideal candidates will have experience with neuroimaging techniques and analysis (SPM, FSL, etc.), as well as strong quantitative and programming skills (e.g., MATLAB, Python, R). Candidates whose work bridges disciplines (e.g., between developmental and moral psychology, or cognitive and social neuroscience), as in the case of our former postdoctoral associates, may also be particularly suited for this position.
To apply, please email Aditi Kodipady (kodipady@bc.edu) and Liane Young (liane.young@bc.edu) with a CV (noscriptd ‘LastName_CV’) and a statement of your current and future research interests. Please also provide contact information for three references and include “Morality Lab Postdoc Application 2022” in the subject line of any correspondence.
Review of applications will start immediately and proceed until the position is filled. Women, LGBTQ and under-represented minority applicants are encouraged to apply. Boston College is An Equal Opportunity/Affirmative Action Employer. In addition to comprehensive health and dental insurance plans, Boston College offers many other benefits, including various types of insurance coverage, tuition remission opportunities, a 401(k) plan match, and a significant number of paid holidays and vacation days.
✔️ @ApplyTime
Fully-funded PhD positions in Robotics at Purdue CS
The Cognitive Robot Autonomy and Learning (CoRAL) Lab (https://purdue-corallab.github.io/) in the Department of Computer Science at Purdue University (www.purdue.edu), under the direction of Prof. Ahmed Qureshi (https://qureshiahmed.github.io/), is looking to fill multiple Ph.D. positions starting Fall'2022 in robotics, computer vision, and machine learning for projects including, but not limited to:
Planning for Scalable Reinforcement Learning
Optimization-based Multi-agent Task and Motion planning
Learning-based Deformable Object Manipulation
Fast Visual Navigation in Dynamic, Adversarial Environments
Multimodal Tactile-Visual Active Sensing
Vision-based Semantic Robot Grasping & Control
Human-centered Robot Mobile Manipulation for Collaboration Tasks
Differentiable Simulation for Visuomotor Control
Interested candidates must apply officially through the Purdue CS admission portal (https://www.cs.purdue.edu/graduate/admission/steps.html) before Dec 20, 2021, for the Fall 2022 session, and mention Prof. Ahmed Qureshi as a potential advisor.
In addition, please also email a single pdf of the following documents to ahqureshi.purdue@gmail.com with the subject line "[jobs] Ph.D. Fall 2022 - <your name>":
a cover letter
copies of up to three of your relevant scientific papers, if applicable
Applicants are encouraged to include a link to their personal website or multimedia portfolio in the email and provide section-wise TOEFL /IELTS scores in the cover letter.
Any candidate with proven experience and a healthy publication record is encouraged to apply. However, a strong preference will be given to candidates with publication in the following or other similar venues: CVPR, ICCV, NeurIPS, ICML, ICLR, RSS, ICRA, IROS, SIGGRAPH, etc.
Some relevant links for additional information:
Purdue is ranked among the top 5 most innovative schools, top 20 in computer science, and top 4 in Engineering within the USA: https://www.purdue.edu/newsroom/releases/2020/Q3/u.s.-news-and-world-report-rankings-purdue-nations-5th-most-innovative-school.html
CS Department: https://www.cs.purdue.edu/
✔️ @ApplyTime
The Cognitive Robot Autonomy and Learning (CoRAL) Lab (https://purdue-corallab.github.io/) in the Department of Computer Science at Purdue University (www.purdue.edu), under the direction of Prof. Ahmed Qureshi (https://qureshiahmed.github.io/), is looking to fill multiple Ph.D. positions starting Fall'2022 in robotics, computer vision, and machine learning for projects including, but not limited to:
Planning for Scalable Reinforcement Learning
Optimization-based Multi-agent Task and Motion planning
Learning-based Deformable Object Manipulation
Fast Visual Navigation in Dynamic, Adversarial Environments
Multimodal Tactile-Visual Active Sensing
Vision-based Semantic Robot Grasping & Control
Human-centered Robot Mobile Manipulation for Collaboration Tasks
Differentiable Simulation for Visuomotor Control
Interested candidates must apply officially through the Purdue CS admission portal (https://www.cs.purdue.edu/graduate/admission/steps.html) before Dec 20, 2021, for the Fall 2022 session, and mention Prof. Ahmed Qureshi as a potential advisor.
In addition, please also email a single pdf of the following documents to ahqureshi.purdue@gmail.com with the subject line "[jobs] Ph.D. Fall 2022 - <your name>":
a cover letter
copies of up to three of your relevant scientific papers, if applicable
Applicants are encouraged to include a link to their personal website or multimedia portfolio in the email and provide section-wise TOEFL /IELTS scores in the cover letter.
Any candidate with proven experience and a healthy publication record is encouraged to apply. However, a strong preference will be given to candidates with publication in the following or other similar venues: CVPR, ICCV, NeurIPS, ICML, ICLR, RSS, ICRA, IROS, SIGGRAPH, etc.
Some relevant links for additional information:
Purdue is ranked among the top 5 most innovative schools, top 20 in computer science, and top 4 in Engineering within the USA: https://www.purdue.edu/newsroom/releases/2020/Q3/u.s.-news-and-world-report-rankings-purdue-nations-5th-most-innovative-school.html
CS Department: https://www.cs.purdue.edu/
✔️ @ApplyTime
www.purdue.edu
U.S. News & World Report rankings: Purdue nation’s 5th-most innovative school
Purdue University is the fifth-most innovative school in the country in the latest U.S. News & World Report rankings, released Monday (Sept. 14). It’s a one-spot improvement over last year’s rankings, with Purdue overtaking Stanford University for the fifth…
Fully funded robotics Ph.D. positions in Fall 2022 at George Mason University
The RobotiXX lab at the Department of Computer Science, George Mason University in the Washington, D.C. area (https://www2.gmu.edu/), is looking for self-motivated Ph.D. students in the area of robotics starting Fall 2022. The candidate will be supported with full tuition and stipends.
At RobotiXX lab, we perform robotics research at the intersection of motion planning and machine learning, with a specific focus on deployable field robotics. Any candidate with relevant experience in robotics, motion planning, and machine learning is encouraged to apply. Hands-on knowledge in robotics hardware, field experience, and a good publication record is strongly preferred.
The selected candidates will conduct independent research to develop highly capable and intelligent mobile robots that are robustly deployable in the real world with minimal human supervision, and publish papers in top-tier robotics conferences and journals. To apply, please visit George Mason University's admission website (https://www2.gmu.edu/admissions-aid) and send a single PDF of the following documents to Dr. Xuesu Xiao, incoming Assistant Professor in Fall 2022 (xiao@cs.utexas.edu): 1. cover letter, 2. curriculum vitae, 3. trannoscript, 4. three references, 5. relevant publications, 6. other relevant materials, with the subject line “[jobs] YOUR AFFILIATION - YOUR NAME”.
For more information, please see the lab’s research statement (https://www.cs.utexas.edu/~xiao/xuesu_website_files/Research_Statement.pdf), YouTube Channel (https://www.youtube.com/channel/UCCePdJzWg35eml4WRGkX3GQ/videos), and website (https://www.cs.utexas.edu/~xiao/).
Thanks
Xuesu Xiao
-----------------------
Xuesu Xiao, Ph.D.
--
Incoming Assistant Professor (Fall 2022)
Department of Computer Science
George Mason University
✔️ @ApplyTime
The RobotiXX lab at the Department of Computer Science, George Mason University in the Washington, D.C. area (https://www2.gmu.edu/), is looking for self-motivated Ph.D. students in the area of robotics starting Fall 2022. The candidate will be supported with full tuition and stipends.
At RobotiXX lab, we perform robotics research at the intersection of motion planning and machine learning, with a specific focus on deployable field robotics. Any candidate with relevant experience in robotics, motion planning, and machine learning is encouraged to apply. Hands-on knowledge in robotics hardware, field experience, and a good publication record is strongly preferred.
The selected candidates will conduct independent research to develop highly capable and intelligent mobile robots that are robustly deployable in the real world with minimal human supervision, and publish papers in top-tier robotics conferences and journals. To apply, please visit George Mason University's admission website (https://www2.gmu.edu/admissions-aid) and send a single PDF of the following documents to Dr. Xuesu Xiao, incoming Assistant Professor in Fall 2022 (xiao@cs.utexas.edu): 1. cover letter, 2. curriculum vitae, 3. trannoscript, 4. three references, 5. relevant publications, 6. other relevant materials, with the subject line “[jobs] YOUR AFFILIATION - YOUR NAME”.
For more information, please see the lab’s research statement (https://www.cs.utexas.edu/~xiao/xuesu_website_files/Research_Statement.pdf), YouTube Channel (https://www.youtube.com/channel/UCCePdJzWg35eml4WRGkX3GQ/videos), and website (https://www.cs.utexas.edu/~xiao/).
Thanks
Xuesu Xiao
-----------------------
Xuesu Xiao, Ph.D.
--
Incoming Assistant Professor (Fall 2022)
Department of Computer Science
George Mason University
✔️ @ApplyTime
George Mason University
George Mason University | A Top 50 Public R1 Research University
George Mason University has become Virginia’s largest, most diverse, and highest-ranked university for innovation by rejecting the traditional university model of exclusivity. We proudly admit every student who is academically ready for our top-tier research…
Research scientist positions in ML at NEC Labs in Princeton
The NEC Labs Machine Learning Department in Princeton, NJ, has openings for
researchers with a passion for developing the next generation of
machine intelligence. Expertise in machine learning with a proven
track record of original research as well as a keen sense for
developing practical applications are prerequisites for this position.
The Machine Learning Department has been at the forefront of research
in such areas as deep learning, support vector machines, and semantic
analysis for almost two decades. Many technologies developed in our
group have been released as innovative products and services of NEC,
such as systems for recruiting, surveillance, inspection of
manufactured goods, and digital pathology. In addition to contributing
to NEC’s business, our research is published in premier venues. Among
the challenges we are tackling now are, how to move machine learning
to more abstract reasoning, and how this can enable new applications
in smart manufacturing, safe cities, and personalized healthcare.
http://www.nec-labs.com/research-departments/machine-learning/machine-learning-home
POSITION REQUIREMENTS
• PhD in computer science, statistics, or equivalent
• Research experience in machine learning with strong publication record
• Strong algorithm and numeric computation background
• Programming experience in Python, Lua, C++, or other languages
• Experience with deep learning libraries and platforms a plus, e.g.
PyTorch, TensorFlow, or Caffe
For more information about NEC Labs, please access:
www.nec-labs.com/research-departments/machine-learning/machine-learning-home
and submit your CV and research statement through our career center at
https://www.appone.com/MainInfoReq.asp?R_ID=4141735
✔️ @ApplyTime
The NEC Labs Machine Learning Department in Princeton, NJ, has openings for
researchers with a passion for developing the next generation of
machine intelligence. Expertise in machine learning with a proven
track record of original research as well as a keen sense for
developing practical applications are prerequisites for this position.
The Machine Learning Department has been at the forefront of research
in such areas as deep learning, support vector machines, and semantic
analysis for almost two decades. Many technologies developed in our
group have been released as innovative products and services of NEC,
such as systems for recruiting, surveillance, inspection of
manufactured goods, and digital pathology. In addition to contributing
to NEC’s business, our research is published in premier venues. Among
the challenges we are tackling now are, how to move machine learning
to more abstract reasoning, and how this can enable new applications
in smart manufacturing, safe cities, and personalized healthcare.
http://www.nec-labs.com/research-departments/machine-learning/machine-learning-home
POSITION REQUIREMENTS
• PhD in computer science, statistics, or equivalent
• Research experience in machine learning with strong publication record
• Strong algorithm and numeric computation background
• Programming experience in Python, Lua, C++, or other languages
• Experience with deep learning libraries and platforms a plus, e.g.
PyTorch, TensorFlow, or Caffe
For more information about NEC Labs, please access:
www.nec-labs.com/research-departments/machine-learning/machine-learning-home
and submit your CV and research statement through our career center at
https://www.appone.com/MainInfoReq.asp?R_ID=4141735
✔️ @ApplyTime
Appone
Job Information: ML - Researcher Job
The Machine Learning Department has openings for researchers with a passion for developing the next generation of machine intelligence. Expertise in machine learning with a proven track record of original research as well as a keen sense for developing practical…
Research Assistant Position at Columbia (NYC)
Research Assistant Position
The Laboratory for Computational Psychiatry and Translational Neuroscience (PI: Kiyohito Iigaya) at Columbia University Irving Medical Center is seeking a full-time Research Assistant position. We are a new laboratory interested in advancing our understanding of fundamental neuroscience and translating the findings to clinical applications using computational methods.
The ideal candidate will develop and perform online (e.g., Amazon M-Turk) and in-person (e.g., fMRI) studies with human volunteers. We are particularly interested in a well-organized individual who has excellent programming skills.
Our Lab is located at the New York State Psychiatric Institute and Department of Psychiatry at Columbia University Irving Medical Center in NYC.
Click here to apply.
https://opportunities.columbia.edu/en-us/job/520298/research-assistant
Best wishes,
Kyo Iigaya
---------------------------------
Kiyohito Iigaya, Ph.D.
Assistant Professor of Neurobiology (in Psychiatry)
Columbia University Irving Medical Center
ki2151@columbia.edu
✔️ @ApplyTime
Research Assistant Position
The Laboratory for Computational Psychiatry and Translational Neuroscience (PI: Kiyohito Iigaya) at Columbia University Irving Medical Center is seeking a full-time Research Assistant position. We are a new laboratory interested in advancing our understanding of fundamental neuroscience and translating the findings to clinical applications using computational methods.
The ideal candidate will develop and perform online (e.g., Amazon M-Turk) and in-person (e.g., fMRI) studies with human volunteers. We are particularly interested in a well-organized individual who has excellent programming skills.
Our Lab is located at the New York State Psychiatric Institute and Department of Psychiatry at Columbia University Irving Medical Center in NYC.
Click here to apply.
https://opportunities.columbia.edu/en-us/job/520298/research-assistant
Best wishes,
Kyo Iigaya
---------------------------------
Kiyohito Iigaya, Ph.D.
Assistant Professor of Neurobiology (in Psychiatry)
Columbia University Irving Medical Center
ki2151@columbia.edu
✔️ @ApplyTime
opportunities.columbia.edu
Careers at Columbia | Careers at Columbia
Columbia University is the global leader in academic learning and research, attracting diverse professionals who are passionate about making a difference. Our faculty and staff enjoy a stimulating
Post-doc in Conversational Recommendation at U. of Toronto
I have a new opening for a post-doc in Conversational Recommendation at U. of Toronto.
The research will focus on machine learning methodologies leveraging recent advances in recommender systems and applied NLP.
Post-docs are expected to publish in top research venues, to produce high-quality deliverable code for use by research funding partners, and to help provide supervision for a team of graduate students working on the same project.
Deadline: the candidate should be able to start on or before Feb 1, 2021.
If you are interested, please email ssanner@cs.toronto.edu with the following:
(a) your CV (clearly listing all publications and date PhD granted / expected),
(b) your github public account link with projects that I can browse (if you don't have this, please do not apply),
(c) 1-2 sentences in your email stating your interests in conversational recommendation and why you think you would be appropriate for the position.
Dr. Scott P. Sanner
Associate Professor, Industrial Engineering
Cross-appointed, Computer Science
Faculty Affiliate, Vector Institute
University of Toronto, Toronto, ON, Canada
Email: ssanner@cs.toronto.edu
Website: http://d3m.mie.utoronto.ca/
✔️ @ApplyTime
I have a new opening for a post-doc in Conversational Recommendation at U. of Toronto.
The research will focus on machine learning methodologies leveraging recent advances in recommender systems and applied NLP.
Post-docs are expected to publish in top research venues, to produce high-quality deliverable code for use by research funding partners, and to help provide supervision for a team of graduate students working on the same project.
Deadline: the candidate should be able to start on or before Feb 1, 2021.
If you are interested, please email ssanner@cs.toronto.edu with the following:
(a) your CV (clearly listing all publications and date PhD granted / expected),
(b) your github public account link with projects that I can browse (if you don't have this, please do not apply),
(c) 1-2 sentences in your email stating your interests in conversational recommendation and why you think you would be appropriate for the position.
Dr. Scott P. Sanner
Associate Professor, Industrial Engineering
Cross-appointed, Computer Science
Faculty Affiliate, Vector Institute
University of Toronto, Toronto, ON, Canada
Email: ssanner@cs.toronto.edu
Website: http://d3m.mie.utoronto.ca/
✔️ @ApplyTime
Dear all,
Several faculty members of the Vector Institute in Canada work on reinforcement learning, sequential decision making, and closely related research areas. Each of us is affiliated with one of the Canadian universities, but we are all affiliated with the Vector Institute and often collaborate with each other. Most of our students are located at the Vector Institute, which is a thriving environment for machine learning research.
We plan to recruit several graduate students this year. If you are interested in reinforcement learning research, please apply through our respective departments. We welcome both domestic and international students.
The name of faculty members who work on RL-related topics are as follows. Please check their webpages to find the best match based on your interests, and particular instructions that they may have for prospective students.
Amir-massoud Farahmand (Department of Computer Science, University of Toronto). Interests: Theoretical RL, Model-based RL, Risk and Robustness (Prospective Students)
Angela Schoellig (Institute for Aerospace Studies, University of Toronto). Interests: Robot Control and Learning; Reinforcement Learning for Robotics; Mobile Manipulation; Self Driving and Flying
Animesh Garg (Department of Computer Science, University of Toronto). Interests: Generalizable Autonomy for Robotics, Reinforcement Learning, Optimal Control, Causal Decision Making, Neural Architectures for Decision Making (Prospective Students)
Florian Shkurti (Department of Computer Science, University of Toronto). Interests: Machine learning for planning and control, Robotics, Inverse RL, Imitation Learning
Jeff Clune (Computer Science, University of British Columbia). Interests: Deep Reinforcement Learning, AI-Generating Algorithms
Joseph J. Williams (Departments of Computer Science, Statistical Sciences, and Psychology, University of Toronto). Interests: Multi-armed bandits for healthcare and education (Prospective Students)
Pascal Poupart (School of Computer Science, University of Waterloo). Interests: Partially Observable Reinforcement Learning, Bayesian Reinforcement Learning, Causal Reinforcement Learning, Federated Reinforcement Learning, Object-Oriented Reinforcement Learning, Reinforcement Learning in Natural Language Processing
Daniel M. Roy (Department of Statistical Sciences and Computer Science, University of Toronto). Interests: Theory for worst case and adaptive online learning, bandits, and, in the future, RL. Prospective students should apply to both CS and Statistics, if appropriate.
Scott Sanner (Department of Mechanical and Industrial Engineering, Cross-appointed in Department of Computer Science, University of Toronto). Interests: Data-driven Decision Making, Sequential Decision Optimization
Sheila McIlraith (Department of Computer Science, University of Toronto). Interests: Sequential decision making and reinforcement learning, Program synthesis, Human-compatible AI
Please note that, because of the high volume of inquiries, some of the listed faculty may not be able to respond to individual emails from prospective students. This should not be interpreted as a lack of interest. It is sufficient to mention their names in your application, and they will closely look at your application.
Each department has its own webpage, admission deadline and requirements. Please check them for the updated information.
University of Toronto
Computer Science (Admission – Deadline: December 1)
Mechanical and Industrial Engineering (Admission – Deadline: Jan 1, 2022)
University of Toronto Institute for Aerospace Studies (Admission – Deadline: December 15, 2021 (fee); January 15, 2022 (application material))
University of Waterloo (Computer Science) (Admission – Deadline: December 15)
University of British Columbia (Computer Science) (Admission – Deadline: December 15)
Several faculty members of the Vector Institute in Canada work on reinforcement learning, sequential decision making, and closely related research areas. Each of us is affiliated with one of the Canadian universities, but we are all affiliated with the Vector Institute and often collaborate with each other. Most of our students are located at the Vector Institute, which is a thriving environment for machine learning research.
We plan to recruit several graduate students this year. If you are interested in reinforcement learning research, please apply through our respective departments. We welcome both domestic and international students.
The name of faculty members who work on RL-related topics are as follows. Please check their webpages to find the best match based on your interests, and particular instructions that they may have for prospective students.
Amir-massoud Farahmand (Department of Computer Science, University of Toronto). Interests: Theoretical RL, Model-based RL, Risk and Robustness (Prospective Students)
Angela Schoellig (Institute for Aerospace Studies, University of Toronto). Interests: Robot Control and Learning; Reinforcement Learning for Robotics; Mobile Manipulation; Self Driving and Flying
Animesh Garg (Department of Computer Science, University of Toronto). Interests: Generalizable Autonomy for Robotics, Reinforcement Learning, Optimal Control, Causal Decision Making, Neural Architectures for Decision Making (Prospective Students)
Florian Shkurti (Department of Computer Science, University of Toronto). Interests: Machine learning for planning and control, Robotics, Inverse RL, Imitation Learning
Jeff Clune (Computer Science, University of British Columbia). Interests: Deep Reinforcement Learning, AI-Generating Algorithms
Joseph J. Williams (Departments of Computer Science, Statistical Sciences, and Psychology, University of Toronto). Interests: Multi-armed bandits for healthcare and education (Prospective Students)
Pascal Poupart (School of Computer Science, University of Waterloo). Interests: Partially Observable Reinforcement Learning, Bayesian Reinforcement Learning, Causal Reinforcement Learning, Federated Reinforcement Learning, Object-Oriented Reinforcement Learning, Reinforcement Learning in Natural Language Processing
Daniel M. Roy (Department of Statistical Sciences and Computer Science, University of Toronto). Interests: Theory for worst case and adaptive online learning, bandits, and, in the future, RL. Prospective students should apply to both CS and Statistics, if appropriate.
Scott Sanner (Department of Mechanical and Industrial Engineering, Cross-appointed in Department of Computer Science, University of Toronto). Interests: Data-driven Decision Making, Sequential Decision Optimization
Sheila McIlraith (Department of Computer Science, University of Toronto). Interests: Sequential decision making and reinforcement learning, Program synthesis, Human-compatible AI
Please note that, because of the high volume of inquiries, some of the listed faculty may not be able to respond to individual emails from prospective students. This should not be interpreted as a lack of interest. It is sufficient to mention their names in your application, and they will closely look at your application.
Each department has its own webpage, admission deadline and requirements. Please check them for the updated information.
University of Toronto
Computer Science (Admission – Deadline: December 1)
Mechanical and Industrial Engineering (Admission – Deadline: Jan 1, 2022)
University of Toronto Institute for Aerospace Studies (Admission – Deadline: December 15, 2021 (fee); January 15, 2022 (application material))
University of Waterloo (Computer Science) (Admission – Deadline: December 15)
University of British Columbia (Computer Science) (Admission – Deadline: December 15)
In addition to these faculty members whose work has a significant focus on RL, there are many other researchers at the Vector Institute who work on other aspects of machine learning and deep learning, including fundamental algorithm design, representation learning, generative models, optimization, theory of ML and DL, computer vision, privacy, fairness, intersection of quantum computing and ML, and applications in healthcare, material design, music, etc. You can find their names here.
About Vector Institute
The Vector Institute is an independent non-profit corporation, with Faculty Members and Affiliates from the University of Toronto, University of Waterloo, University of Guelph, Dalhousie University, and other Canadian universities. It is supported with generous funding from the provincial and federal governments, as well as Canadian industry sponsors. The Vector Institute is located in the MaRS Discovery District building, spanning nearly the entire 7th floor and overlooking downtown Toronto and the beautiful Queen’s Park. On any given day, the Vector Institute houses over a hundred students, dozens of Faculty Members, supported with state-of-the-art compute power, and dedicated professional staff. The daily life and concentration of expertise in the Institute fosters collaboration and the exchange of ideas among its members through talks, seminar series, visitors, and tutorials. The Vector Institute’s vision is to drive excellence in the creation of artificial intelligence, to use it to foster economic growth, and to improve the lives of Canadians. To that end, the Vector Institute has close ties to both academia and industry.
Best Regards,
Amir-massoud Farahmand on behalf of my colleagues
About Vector Institute
The Vector Institute is an independent non-profit corporation, with Faculty Members and Affiliates from the University of Toronto, University of Waterloo, University of Guelph, Dalhousie University, and other Canadian universities. It is supported with generous funding from the provincial and federal governments, as well as Canadian industry sponsors. The Vector Institute is located in the MaRS Discovery District building, spanning nearly the entire 7th floor and overlooking downtown Toronto and the beautiful Queen’s Park. On any given day, the Vector Institute houses over a hundred students, dozens of Faculty Members, supported with state-of-the-art compute power, and dedicated professional staff. The daily life and concentration of expertise in the Institute fosters collaboration and the exchange of ideas among its members through talks, seminar series, visitors, and tutorials. The Vector Institute’s vision is to drive excellence in the creation of artificial intelligence, to use it to foster economic growth, and to improve the lives of Canadians. To that end, the Vector Institute has close ties to both academia and industry.
Best Regards,
Amir-massoud Farahmand on behalf of my colleagues
PhD in Reinforcement Learning, Differential Privacy or Fairness
We are looking for a PhD student to join our group on reinforcement
learning and decision making under uncertainty more generally, at the
University of Neuchatel, Switzerland ( https://www.unine.ch/ ). We
are particularly interested in candidates with a strong mathematical
background. Prior research experience as documented by your Masters
thesis is required. Within the area, we are looking for candidates
with a strong research interest in the following fields
- Reinforcement learning and decision making under uncertainty:
1. Exploration in reinforcement learning.
2. Decision making nuder partial information.
3. Representations of uncertainty in decision making.
4. Theory of reinforcement learning (e.g. PAC/regret bounds)
5. Bayesian inference and approximate Bayesian methods.
- Social aspect of machine learning
1. Theory of differntial privacy.
2. Algorithms for differentially private machine learning.
3. Algorithms for fairness in machine learning.
4. Interactions between machine learning and game theory.
5. Inference of human models of fairness or privacy.
The main supervisor will be Christos Dimitrakakis <
https://sites.google.com/site/christosdimitrakakis >
Examples of our group's past and current research can be found on arxiv:
https://arxiv.org/search/?searchtype=author&query=Dimitrakakis%2C+C.
The student will have the opportunity to visit and work with other group
members at the University of Oslo, Norway (
https://www.mn.uio.no/ifi/english/people/aca/chridim/index.html ) and
Chalmers University of Technology, Sweden (
http://www.cse.chalmers.se/~chrdimi/ ). While the group is currently
geographically distributed, there will be plenty of opportunities for
exchanges.
The PhD candidate must have a strong technical background, including:
1. Thorough knowledge of calculus and linear algebra.
2. A good theoretical background in probability and statistics/machine
learning.
3. Practical experience with at least one programming language.
The candidate's background will be mainly assessed through their MSc
thesis and trannoscripts, and secondarily through an interview.
>>>> Application Information <<<<<
*Starting date* 1 Februrary 2022 or soon afterwards.
*Application deadline* 30 November 2021.
To apply sen an email to christos.dimitrakakis@gmail.com with the
subject 'PhD Neuchatel'.
An application must include:
1. A statement of research interests and motivation relevant to the
position.
2. A CV with a list of references.
3. Your MSc thesis or another research work demonstrating your academic
writing.
4. A degree trannoscript.
Feel free to include any other additional information.
We are looking for a PhD student to join our group on reinforcement
learning and decision making under uncertainty more generally, at the
University of Neuchatel, Switzerland ( https://www.unine.ch/ ). We
are particularly interested in candidates with a strong mathematical
background. Prior research experience as documented by your Masters
thesis is required. Within the area, we are looking for candidates
with a strong research interest in the following fields
- Reinforcement learning and decision making under uncertainty:
1. Exploration in reinforcement learning.
2. Decision making nuder partial information.
3. Representations of uncertainty in decision making.
4. Theory of reinforcement learning (e.g. PAC/regret bounds)
5. Bayesian inference and approximate Bayesian methods.
- Social aspect of machine learning
1. Theory of differntial privacy.
2. Algorithms for differentially private machine learning.
3. Algorithms for fairness in machine learning.
4. Interactions between machine learning and game theory.
5. Inference of human models of fairness or privacy.
The main supervisor will be Christos Dimitrakakis <
https://sites.google.com/site/christosdimitrakakis >
Examples of our group's past and current research can be found on arxiv:
https://arxiv.org/search/?searchtype=author&query=Dimitrakakis%2C+C.
The student will have the opportunity to visit and work with other group
members at the University of Oslo, Norway (
https://www.mn.uio.no/ifi/english/people/aca/chridim/index.html ) and
Chalmers University of Technology, Sweden (
http://www.cse.chalmers.se/~chrdimi/ ). While the group is currently
geographically distributed, there will be plenty of opportunities for
exchanges.
The PhD candidate must have a strong technical background, including:
1. Thorough knowledge of calculus and linear algebra.
2. A good theoretical background in probability and statistics/machine
learning.
3. Practical experience with at least one programming language.
The candidate's background will be mainly assessed through their MSc
thesis and trannoscripts, and secondarily through an interview.
>>>> Application Information <<<<<
*Starting date* 1 Februrary 2022 or soon afterwards.
*Application deadline* 30 November 2021.
To apply sen an email to christos.dimitrakakis@gmail.com with the
subject 'PhD Neuchatel'.
An application must include:
1. A statement of research interests and motivation relevant to the
position.
2. A CV with a list of references.
3. Your MSc thesis or another research work demonstrating your academic
writing.
4. A degree trannoscript.
Feel free to include any other additional information.
Université de Neuchâtel
Venez étudier à l'Université de Neuchâtel. Découvrez nos quatre facultés et nos nombreuses formations en bachelor et en master.