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Postdoctoral Research Associate Position in Developmental Cognitive Neuroscience

Laboratory for Child Brain Development

Department of Psychiatry, Child and Adolescent Division, Washington University- St. Louis



The Laboratory for Child Brain Development (LCBD-PI: Dr. Susan Perlman) has up to two openings for a postdoctoral training position to collaborate on several NIH funded studies. The applicant’s main appointment will be in the Laboratory for Child Brain Development (https://www.childbrainlab.com) in the Washington University- St. Louis, School of Medicine, Department of Psychiatry, William Greenleaf Elliot Division of Child and Adolescent Psychiatry (https://childpsychiatry.wustl.edu/). The LCBD is dedicated to using multi-modal methodology to understand the trajectories of emotional development from infancy to middle childhood (with a strong preschool focus) in order to predict the onset of mental disorder.

The postdoc will have the opportunity to train in multi-modal neuroimaging methods including MRI, NIRS, EEG. Behavioral (Eye-tracking, clinical interview), physiology (RSA), and immunology measures (hair and salivary cortisol, inflammatory markers) also included in our research program. Opportunities for publication include three main studies:

The EmoGrow Project: This study followed 4-5 year old children for two years to examine how early temperament predicts the onset of psychopathology and how the parent-child relationship can buffer these negative outcomes. Data collection has finished in the complete sample of 151 children and includes MRI, NIRS, and behavioral methods (parent-child) interaction. This longitudinal data set is available for immediate data analysis and publication.
The CARE Study: This longitudinal project, which began data collection in winter 2021, is designed to study the biological unfolding of early-life stress as a precursor to psychopathology. We will employ intensive, state-of-the-art, multi-modal, neurodevelopmental measurement in a sample of 225 4-6 year-old children and their parent, including fMRI, interpersonal neural synchronization between parent and child using fNIRS, facial expression and behavioral coding, hair and salivary cortisol, and measurement of inflammatory markers. The CARE study recruits children experiencing attachment-related stress as a model for the biological unfolding of stress, while also examining external stressors and those that occur throughout the course of the study. In this longitudinal study, families will be followed every 6 months across a 1.5 year time period.
Parent-to-Child Anxiety Transmission: A new, longitudinal project, which has recently begun, will examine parental transmission of anxiety to preschool children. This project includes fNIRS (parent-child interpersonal neural synchronization), EEG, and behavioral coding and will focus on parent-child interaction and socialization of anxious behaviors through child observation. A subaim of the study focuses on anxiety transmission in fathers.
Additional collaborative studies investigate neural processes underlying emotion regulation in autism spectrum disorder, child overcontrolled temperament and development within the parent-child relationship, and neural processes underlying executive function in children experiencing early adversity. The postdoc will also have ample opportunity to design their own studies and collect a novel data set.

The postdoctoral fellow will be an integral member of the scientific team at the Laboratory for Child Brain Development and will have rich opportunities to publish and present at conferences using all available laboratory data. The fellow will also be encouraged and supported to develop supplementary studies via the NIH NRSA and/or K Award mechanisms in addition to smaller foundation grants. The postdoctoral fellow will develop, implement, and disseminate cutting-edge fMRI and fNIRS analysis tools through Dr. Perlman’s Laboratory for Child Brain Development and in collaboration with local and national collaborators.
The Washington University-St. Louis, Department of Psychiatry provides an ideal training environment for postdoctoral fellows, including the Career and Research Development Seminars designed to promote the professional, career development, and grantsmanship skills necessary to launch an independent career through the NIH K Award mechanism. Wash U is home to a thriving neuroimaging community and is a leader in developmental psychopathology research. St. Louis and the local surrounding areas offer an affordable, diverse, and family-friendly community with rich university resources.

Position requires a PhD or MD/PhD in a neuroscience, psychology, computer science, or engineering related field. The ideal candidate will have fluency in MATLAB, Python, R, or related language and expertise in fMRI, fNIRS, or EEG and will be able to implement cutting-edge neuroimaging analysis techniques such as network analyses, Multi-Variate Pattern Analysis, or hyperscanning. The successful candidate will have an excellent publication record with demonstrated interest in developmental cognitive neuroscience and will combine a collaborative orientation with the ability to function well independently.

The postdoctoral fellowship positions are open immediately, however, a later start date can be made to accommodate spring PHD graduates. The fellow will be asked to commit to a minimum of 2 years on the project, however, the position may be extended up to 5 years contingent upon progress. To apply please send a cover letter, C.V., and names and contact information of three references to: Susan Perlman, Ph.D. at [email protected]. Questions can be addressed to Dr. Perlman directly.





----------------------------------------------------------

Susan B. Perlman, Ph.D.

Director Laboratory for Child Brain Development

Associate Professor

Washington University-St. Louis
Postdoc at the University of Edinburgh in human-in-the-loop machine learning
We have an open postdoc position in the School of Informatics at the University of Edinburgh on the topic of human-in-the-loop machine learning.

Please get in contact if you have an interest in computer vision, machine learning, or explainable AI. This is part of an exciting wider project which aims to develop new foundations for advancing autonomy in AI systems through human-AI collaboration.

More details can be found in the job ad:
https://edin.ac/3DKeL0T

For expressions of interest, or questions, please contact:
Oisin Mac Aodha - oisin.macaodha _ @ _ ed.ac.uk
--------------------------------------------------------------------------
2 PostDoc openings at IIT Genoa in Machine Learning and Perception for
Legged Robots
--------------------------------------------------------------------------
The Dynamic Legged Systems research line (DLS lab) of Istituto Italiano
di Tecnologia (IIT), (web: https://es.sonicurlprotection-fra.com/click?PV=2&MSGID=202112101630290101586&URLID=5&ESV=10.0.10.6443&IV=AC16158E50F342085A721A9ED69F73E9&TT=1639153830078&ESN=6UfYB7rsdfuCfCcTuMzaevG2iPiua5FHVMMQ2ta5%2B6A%3D&KV=1536961729280&B64_ENCODED_URL=aHR0cDovL2Rscy5paXQuaXQ&HK=4A41826DD20975FB17DD0AE08DDC75BAA0B5B63F98182F5813DAB47899ACC524), an English-language
research Institute is looking for 2 highly-motivated and ambitious
postdoctoral researchers to work in the field of legged robots focusing
on (Position 1) Machine Learning, (Position 2) Perception for real-world
applications. The DLS lab conducts world-leading research and
development of legged robots for challenging environments.
The candidates are expected to (co-) tutor PhD and master students in
their related research areas and take leading roles in ongoing and
future projects.

Requirements:
The successful candidate must have a strong background in either
machine learning or perception (or a combination of them) with
experience on real robots.

For a detailed list of requirements and info on how to apply, visit:
https://es.sonicurlprotection-fra.com/click?PV=2&MSGID=202112101630290101586&URLID=4&ESV=10.0.10.6443&IV=8C2CEA6869D14826D02C8222A4E968AD&TT=1639153830078&ESN=Hzz9MTMYTehs2TAR5wnzvyl8DmPrXfI19rOHmyXXrgM%3D&KV=1536961729280&B64_ENCODED_URL=aHR0cDovL2Rscy5paXQuaXQvb3BlbmluZ3M&HK=E9FC772F1E1988231B187DAFCF4DBF817FAF0EF3241156D7E29ADC71657286AB
Incomplete applications will be ignored.

-For News visit our facebook or twitter page:
https://es.sonicurlprotection-fra.com/click?PV=2&MSGID=202112101630290101586&URLID=3&ESV=10.0.10.6443&IV=0EFB00EB24F79049DD0808CE424FA911&TT=1639153830078&ESN=EBhbLX5AU9KItuF3WNTTotRZ2tVvoyzomErtwkCFclc%3D&KV=1536961729280&B64_ENCODED_URL=aHR0cHM6Ly93d3cuZmFjZWJvb2suY29tL2lpdERMU2xhYi8&HK=0BD8FB4CD270438DD1ADD66844AD161DF229E4C709BF4E2DA2A9016A81BE9EB8
https://es.sonicurlprotection-fra.com/click?PV=2&MSGID=202112101630290101586&URLID=2&ESV=10.0.10.6443&IV=18CBA8F85C3C9D5F8490D15E5C4918F7&TT=1639153830078&ESN=aSZvmkmIy3oxYwMviA8%2FBa%2BEklhCMH7EjEFVlRy3HK4%3D&KV=1536961729280&B64_ENCODED_URL=aHR0cHM6Ly93d3cudHdpdHRlci5jb20vaWl0RExTbGFiLw&HK=1825D66EDA0A8EB4FA4A090CC23E32211C021D992EF26AFB70B31C7AF6F8FAA1

Best regards,
Claudio

--
Claudio Semini, PhD
Head of Dynamic Legged Systems Lab
Istituto Italiano di Tecnologia (IIT)
Via S. Quirico 19D, 16163 Genoa, Italy
phone: +39 010 2898 283
email: [email protected]
web: https://es.sonicurlprotection-fra.com/click?PV=2&MSGID=202112101630290101586&URLID=1&ESV=10.0.10.6443&IV=6DDBFB31357BF1D3D7A5339819C2521C&TT=1639153830078&ESN=Jtl17s2DrJDBqRK7wYj%2BoV%2BrXMQk0ayGMx56HTuM9lc%3D&KV=1536961729280&B64_ENCODED_URL=aHR0cDovL2Rscy5paXQuaXQ&HK=7B8425359C7D9F89D69CF622DBEB0E74C36FEEDFDCB4C99049F37AECC5F61645
www.iit.it/people/claudio-semini
PhD position: Data Augmentation and Low Resource Language Processing
at Saarland University
=============================================================

(Computer Science, Computational Linguistics or similar)


For automatic language processing (especially for languages like German), hardly any tools are available to automatically generate the datasets (data augmentation) to assist low-resource machine learning. In cooperation with our partners, we will explore algorithms for generating domain-specific synthetic speech and language data and also perform research on algorithms that can robustly train language models and natural language understanding modules in order to create neural network based dialog systems with minimal manually created domain specific training data.


We are anticipating the availability of a PhD position in this area starting May of 2022.


Ideal candidates for the position would have:


1. A good understanding of natural language processing


2. Excellent knowledge of machine learning


3. Excellent programming skills


4. Masters degree in Computer Science, Computational Linguistics or similar


Salary: The PhD position will be 75% of full time on the German E13 scale (TV-L) which is about 3055€ per month before tax and social security contributions. The appointments will be for three years with possible extensions subject to follow-up funding.


About the department: The department of Language Science and Technology at Saarland University is one of the leading departments in the speech and language area in Europe. The flagship project at the moment is the CRC on Information Density and Linguistic Encoding. It also runs a significant number of European and nationally funded projects. In total, it has seven faculty and around 50 postdoctoral researchers and PhD students. The department is part of the Saarland Informatics Campus. With 900 researchers, two Max Planck instituts and the German Research Center for Artificial Intelligence, it is one of the leading locations for Informatics in Germany and Europe.


How to apply: Please send us a letter of motivation, your CV, your transcripts, if available a list of publications, and the names and contact information of at least two references, as a single PDF or a link to a PDF if the file size is more than 3 MB.


Please apply latest by January 15th, 2022. Earlier applications are welcome!


Contact: Applications and any further inquiries regarding the project should be directed to [email protected]
Research position | Deadline: 31 Dec
Väestöliitto is part of Social networks, fertility and wellbeing in ageing populations: Building demographic resilience in Finland (NetResilience) consortium, and is now recruiting a researcher.

Väestöliitto and University of Turku are recruiting a postdoctoral or senior researcher to study couple relations and family dynamics in old age. The position is available at the Population Research Institute, Väestöliitto – Family Federation of Finland in Helsinki, 2022-2024 (around three years).

The position is also associated with the international research project NetResilience. The employment relationship will be formed 50 % to Population Research Institute and 50 % to University of Turku.

The selected candidate should hold a PhD or have a PhD thesis near completion in social sciences, e.g. demography, sociology, statistics, psychology, ecology, or related disciplines, and is interested in ageing, families, social relations and wellbeing. Candidate should have strong statistical expertise in quantitative data analysis, experience of working with survey or register data, and excellent skills in writing academic English. Fluency in Finnish or Swedish is also a plus, but not obligatory. Experience of SHARE or social network analysis is a plus.

Tentative starting date: 1 Jan 2022
Application deadline: 31 December 2021 (Extended deadline)
More information here.
Postdoctoral position at Cardiff University
Location: Cardiff, UK

Deadline for applications: 5th January 2022

Start date: 1st May 2022 (or as soon as possible thereafter)

Duration: 30 months

Keywords: natural language processing, representation learning, commonsense reasoning



Details about the post

Applications are invited for a postdoctoral research associate post to work on the EPSRC Open Fellowship project ReStoRe (Reasoning about Structured Story Representations), which is focused on story-level language understanding. The aim of this post is to develop methods for learning graph-structured representations of stories, where nodes correspond to entities and events, and edges indicate relationships. More specifically, the focus will be on learning sparse and interpretable vector representations of these entities, events and relationships. These vector representations will then form the basis for implementing common sense reasoning strategies, allowing us to fill the gap between what is explicitly stated in a story and what a human reader would infer by “reading between the lines”. More details about the post and instructions on how to apply are available here:



https://krb-sjobs.brassring.com/TGnewUI/Search/home/HomeWithPreLoad?partnerid=30011&siteid=5460&PageType=JobDetails&jobid=1897761



Background about the ReStoRe project

When we read a story as a human, we build up a mental model of what is described. Such mental models are crucial for reading comprehension. They allow us to relate the story to our earlier experiences, to make inferences that require combining information from different sentences, and to interpret ambiguous sentences correctly. Crucially, mental models capture more information than what is literally mentioned in the story. They are representations of the situations that are described, rather than the text itself, and they are constructed by combining the story text with our commonsense understanding of how the world works.



The field of Natural Language Processing (NLP) has made rapid progress in the last few years, but the focus has largely been on sentence-level representations. Stories, such as news articles, social media posts or medical case reports, are essentially modelled as collections of sentences. As a result, current systems struggle with the ambiguity of language, since the correct interpretation of a word or sentence can often only be inferred by taking its broader story context into account. They are also severely limited in their ability to solve problems where information from different sentences needs to be combined. As a final example, current systems struggle to identify correspondences between related stories (e.g. different news articles about the same event), especially if they are written from a different perspective.



To address these fundamental challenges, we need a method to learn story-level representations that can act as an analogue to mental models. Intuitively, there are two steps involved in learning such story representations: first we need to model what is literally mentioned in the story, and then we need some form of commonsense reasoning to fill in the gaps. In practice, however, these two steps are closely interrelated: interpreting what is mentioned in the story requires a model of the story context, but constructing this model requires an interpretation of what is mentioned.
The solution that is proposed in this fellowship is based on representations called story graphs. These story graphs encode the events that occur, the entities involved, and the relationships that hold between these entities and events. A story can then be viewed as an incomplete specification of a story graph, similar to how a symbolic knowledge base corresponds to an incomplete specification of a possible world. The proposed framework will allow us to reason about textual information in a principled way. It will lead to significant improvements in NLP tasks where a commonsense understanding is required of the situations that are described, or where information from multiple sentences or documents needs to be combined. It will furthermore enable a step change in applications that directly rely on structured text representations, such as situational understanding, information retrieval systems for the legal, medical and news domains, and tools for inferring business insights from news stories and social media feeds.
4 PhD positions in Machine Learning/
Machine Reasoning


The Center for Applied Autonomous Sensor Systems (AASS), at Örebro University
(Sweden), is offering up to four PhD positions in Computer Science with the
focus on Machine Learning, Machine Reasoning, or integration of both.

Research at AASS is strongly focused on developing autonomous systems that can
collaborate with humans. We study methods for interpreting sensor data,
transforming sensor data into symbolic representations, integrating symbolic
and sub-symbolic methods, knowledge representation and awareness of humans,
social context, and norms for interaction.

Some of the positions in this call will be part of the Wallenberg AI,
Autonomous Systems and Software Program (WASP), Sweden's largest ever
individual research program, and a major national initiative for strategic
basic research, education, and faculty recruitment. The vision of WASP is
excellent research and competence in artificial intelligence, autonomous
systems, and software for the benefit of Swedish industry. For more
information about the research and other activities conducted within WASP
please visit: https://wasp-sweden.org/. In this case, the PhD students will
belong to the graduate school within WASP, which provides the skills needed to
analyze, develop, and contribute to the interdisciplinary area of AI,
autonomous systems, and software.

For further information on eligibility, funding and the application process
please visit:
https://www.oru.se/jobba-hos-oss/lediga-jobb/jobbannons/?jid=20210399

If you require any further information, feel free to contact me by email:
[email protected]

The application deadline is 2022-01-10. We look forward to receiving your
application!


Kind regards,
Marjan Alirezaie


Assistant Professor,
Machine Perception & Interaction Lab (MPI)<https://mpi.aass.oru.se/>
Örebro University, Örebro Sweden
Tel: +46 19 303785
PhD position in robot swarms

*Ph.D. Position in Robot Swarms*







The Computer Science & Engineering Department (CSE) at Lehigh University
(LU) has *a fully funded Ph.D. opening* in the areas of Robot Swarms.
Currently, active research topics include Multi-Robot Systems, Control
Algorithms, and Computational Geometry.



We are looking for excellent applicants with a Bachelor's or Master’s
degree in Electrical Engineering, Mechanical Engineering, Computer Science,
or related areas who are motivated to carry out leading research in
Robotics. The candidate should have a strong background and interest in one
or several of the following areas: algorithm design, control theory, aerial
robotics, and robot design. The candidates should be motivated and capable
of creatively working in a team environment.





*How to apply:* Please contact Prof. David Saldaña to discuss your
application and informal inquiries by email ([email protected]),
mentioning your background and briefly stating your motivation.

More information:
https://urldefense.com/v3/__https://davidsaldana.co__;!!LIr3w8kk_Xxm!74iEx1LZ2OACTOFMkINeMtcNAloYtR960kbDJ7T-UcwyhWeWLt9K8hoK64JKMOpddMQBVqBP$





Formal applications need to be submitted on the CSE System:

https://urldefense.com/v3/__https://engineering.lehigh.edu/cse/academics/graduate/admissions__;!!LIr3w8kk_Xxm!74iEx1LZ2OACTOFMkINeMtcNAloYtR960kbDJ7T-UcwyhWeWLt9K8hoK64JKMOpddIsRsGPW$
Postdoctoral Scholar at the University of California Santa Barbara



The Yu Emotion Science, or YES Lab (https://yeslab.psych.ucsb.edu/), within the Department of Psychological and Brain Sciences at the University of California, Santa Barbara (https://psych.ucsb.edu/), is seeking applications for an open, full-time Postdoctoral Scholar position with an anticipated start date of July 1, 2022, although the start date is flexible.

The Postdoctoral Scholar will work closely with the Principal Investigator, Dr. Hongbo Yu, to establish the lab in its new home at UCSB. The duties of the Postdoctoral Scholar will include study design and execution (e.g., programming online and laboratory tasks, collecting and analyzing behavioral and neuroimaging data), writing up research papers and grant applications, presenting research projects within the department and on conferences, and supervising undergraduate and graduate students.

The YES Lab seeks to understand the relation between emotion and morality, and how they are implemented in the brain. To answer these questions, we adopt a wide range of methods, including behavioral experiments, neuroimaging, computational modeling, psychophysiological recording (e.g., eye-tracking, skin conductance, etc.), and natural language processing. We also emphasize an interdisciplinary approach. Our research is inspired by and has implications for philosophy, behavioral economics, psychiatry, history, and anthropology.

The Postdoctoral Scholar will have the opportunity to build connections with stellar scientists within the broader area of brain/mind research by participating in activities at the SAGE Center for the Study of the Mind (https://www.sagecenter.ucsb.edu). Successful applicants will also have the opportunities to engage further with the SAGE Center through the SAGE Junior Fellows Program (https://www.sagecenter.ucsb.edu/fellowships).

The University is especially interested in candidates who can contribute to the diversity and excellence of the academic community through research, teaching, and service as appropriate to the position

Apply link: https://recruit.ap.ucsb.edu/JPF02144

Help contact: [email protected]

QUALIFICATIONS
Basic qualifications (required at time of application)

Applicants must have completed all requirements for a PhD (or equivalent) except the dissertation at the time of application in psychology, cognitive neuroscience, computer science, or a related field.

Additional qualifications (required at time of start)

Five years minimum research experience (including the years towards doctoral degree) in psychology, cognitive neuroscience, computer science, or a related field, supported by a strong publication record, is required.

PhD must be conferred by the start of appointment.

Preferred qualifications

Applicants with training and experience in a subset of these areas will be given priority: advanced functional MRI analysis (e.g., pattern-based classification, representational similarity analysis, functional connectivity) and data sharing (e.g., BIDS and OpenNeuro), computational modeling of behavioral and neural data, natural language processing, strong theoretical training in social psychology, moral cognition and moral philosophy. The qualified applicant should be proficient in at least one, preferably multiple, programming language (e.g., MATLAB, Python, R) and be willing to learn others when needed.



APPLICATION REQUIREMENTS

Document requirements

Curriculum Vitae - Your most recently updated C.V.
Cover Letter - Describing your qualifications, research interests and career goals
Representative Publication #1
Representative Publication #2
Reference requirements

2 required (contact information only)
Applicants that are strongly considered will have their references contacted prior to selection for interview.

Apply link: https://recruit.ap.ucsb.edu/JPF02144

Help contact: [email protected]

CAMPUS INFORMATION
The University of California is an Equal Opportunity/Affirmative Action Employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability status, protected veteran status, or any other characteristic protected by law.

As a condition of employment, you will be required to comply with the University of California SARS-CoV-2 (COVID-19) Vaccination Program Policy https://policy.ucop.edu/doc/5000695/SARS-CoV-2_Covid-19. All Covered Individuals under the policy must provide proof of Full Vaccination or, if applicable, submit a request for Exception (based on Medical Exemption, Disability, and/or Religious Objection) or Deferral (based on pregnancy) no later than the applicable deadline. New University of California employees must (a) provide proof of receiving at least one dose of a COVID-19 Vaccine no later than 14 calendar days after their first date of employment and provide proof of Full Vaccination no later than eight weeks after their first date of employment; or (b) if applicable, submit a request for Exception or Deferral no later than 14 calendar days after their first date of employment. (Capitalized terms in this paragraph are defined in the policy.) Federal, state, or local public health directives may impose additional requirements.

JOB LOCATION

Santa Barbara, CA
Fully-funded Ph.D. student position in Interactive Music Systems using Machine Learning and AI at Chalmers in Sweden

Dear all,

We would like to remind that the deadline for this Ph.D. position is soon: 18 December, 2021.

We are excited to share our new Ph.D. student position in Interactive Music Systems using Machine Learning and AI at Chalmers University of Technology in Gothenburg, Sweden. The research focus is understanding interactivity in interdisciplinary musical practices. The selected candidate will take part in the development of novel interactive systems of machine learning and artificial intelligence for musical applications such as live performances, artwork installations and musical production. This position is fully-funded for five years, which is the full duration of the studies, covering 80% research and 20% teaching duties.

The position is hosted at the Interaction Design Unit (IxD) Computer Science and Engineering (CSE) Department The CSE department is now expanding the IxD division with a new research group in Interactive AI in Music. The current members of this new research group are Assistant Professor Kıvanç Tatar and Professor Palle Dahlstedt. The research perspective centers on aesthetics, ethics, and societal aspects of Artificial Intelligence. The creation of this new research group, as well as this Ph.D. position, is funded by the The Wallenberg AI, Autonomous Systems and Software Program – Humanities and Society (WASP-HS).

Please feel free to contact me ([email protected]) or Palle Dahlstedt ([email protected]) if you have questions, and please do share the call to people who might be interested.

We are looking forward to receiving your applications. The full details of this position and the link to the application portal can be found at the official call page:

https://www.chalmers.se/en/about-chalmers/Working-at-Chalmers/Vacancies/Pages/default.aspx?rmpage=job&rmjob=9976&rmlang=UK

Thank you,

PS: Apologies for cross-posting.

--
Kıvanç Tatar, Ph.D., M.Mus., B.Sc.
Musician|Artist|Researcher in Artificial Intelligence for Music and Interactive Arts
+
Assistant Professor in Interactive AI
Department of Computer Science and Engineering | Interaction Design Unit
Chalmers University of Technology
Gothenburg, Sweden
+
WASP-HS Fellow
The Wallenberg AI, Autonomous Systems and Software Program - Humanities and Society

https://kivanctatar.com/
PhD Programme in Machine Learning at IIST
Dear all,

The Indian Institute of Space Science and Technology (IIST) Thiruvananthapuram, invites applications for PhD programme in the field of Machine Learning. For more details please visit www.iist.ac.in

Regards,
Dr. S. Sumitra
Associate Professor
Department of Mathematics
IIST
PhD Studentships (Graduate Teaching
Assistants)

****** Apologies for cross-posting. Please feel free to redistribute. ******

PhD studentships (Graduate Teaching Assistant) are available at Edge
Hill University, UK. The deadline for the application is on Monday 17
January 2022. For more information, including eligibility, entry
requirements and how to apply, navigate to
https://urldefense.com/v3/__https://jobs.edgehill.ac.uk/vacancy.aspx?ref=EHGT253-1121-N__;!!LIr3w8kk_Xxm!6Kohm1T05W7K9B3oR59DJi6vMwr26X-RPplOIa-Kpwq1sQfGQAA0lu86Wkl1QGXdVgyO-T7e$

You are encouraged to discuss your choice of research topics with me
([email protected]) before applying. Your PhD topics can be in
the areas of #deeplearning #comutervision #ai #robotics
#videoanalytics #machinelearning

Selected recent publications are:
1. An attention-driven hierarchical multi-scale representation for
visual recognition, BMVC 2021.
2. Attend and Guide (AG-Net): A Keypoints-Driven Attention-Based Deep
Network for Image Recognition, IEEE Trans. on Image Processing 2021.
3. Context-aware Attentional Pooling (CAP) for Fine-grained Visual
Classification. AAAI 2021.
4. Attentional Learn-able Pooling for Human Activity Recognition, ICRA 2021.
5. Coarse Temporal Attention Network (CTA-Net) for Driver’s Activity
Recognition. WACV 2021.
6. Orderly Disorder in Point Cloud Domain. ECCV 2020
7. Unsupervised Monocular Depth Estimation for Night-time Images using
Adversarial Domain Feature Adaptation. ECCV 2020
8. Rotation Axis Focused Attention Network (RAFA-Net) for Estimating
Head Pose. ACCV 2020.
9. Regional Attention Network (RAN) for Head Pose and Fine-grained
Gesture Recognition. IEEE Trans. on Affective Computing 2020.
10. Deep CNN, Body Pose and Body-Object Interaction Features for
Drivers' Activity Monitoring. IEEE Trans. on Intelligent
Transportation Systems 2020.

Kind regards,
Ardhendu
--------------------------
Dr Ardhendu Behera
Reader (Associate Professor) in Computer Vision & AI
Department of Computer Science
Edge Hill University, Ormskirk, Lancashire, L39 4QP
Publications (Google Scholar)
https://urldefense.com/v3/__https://www.edgehill.ac.uk/computerscience/__;!!LIr3w8kk_Xxm!6Kohm1T05W7K9B3oR59DJi6vMwr26X-RPplOIa-Kpwq1sQfGQAA0lu86Wkl1QGXdVucozWU3$
https://urldefense.com/v3/__https://computing.edgehill.ac.uk/*abehera/__;fg!!LIr3w8kk_Xxm!6Kohm1T05W7K9B3oR59DJi6vMwr26X-RPplOIa-Kpwq1sQfGQAA0lu86Wkl1QGXdVjUWgB3F$
T: +44 (0) 1695 65 7270
Research Fellow/Senior Research Fellow in Computer Vision, Spatial Audio and Audio-Visual AI
Vision, Speech & Signal Processing
Location: Guildford
Salary: £33,309 to £50,296 per annum
Fixed Term
Post Type: Full Time
Closing Date: 23.59 hours GMT on Friday 17 December 2021
Reference: 073621
Join a new research partnership with the BBC at the Centre for Vision, Speech and Signal Processing (CVSSP), University of Surrey.

This is an exciting opportunity for an outstanding researcher in Computer Vision, Audio and/or Audio-Visual AI to join CVSSP as part of a major new five-year research partnership with the BBC to realise Future Personalised Media Experiences.

The goal of the research partnership is to realise future personalised content creation and delivery at scale for the public at home or on the move. CVSSP research will address the key challenges for personalised content creation and rendering by advancing computer vision, audio analysis and audio-visual AI to transform captured 2D video to object-based media. Research will advance automatic online understanding, reconstruction and neural rendering of complex dynamic real-world scenes and events. This will enable a new generation of personalised media content which adapts to user requirements and interests. The new partnership with the BBC and creative industry partners will position the UK to lead future personalised media experiences.

The Centre for Vision, Speech and Signal Processing (CVSSP) at the University of Surrey is ranked first in the UK for computer vision and recognised worldwide for pioneering new technologies in audio and vision. The centre leads ground-breaking research in audio-visual AI and machine perception for the benefit of people and society through technological innovations in healthcare, security, entertainment, robotics and communications. Over the past two decades, CVSSP has pioneered advances in 3D and 4D computer vision and spatial audio which have enabled award-winning technologies for content production in TV, film, games and immersive entertainment.

BBC R&D (bbc.co.uk/rd) has a worldwide reputation for developments in media technology going back over 90 years and has worked closely with CVSSP for over 20 years. It has pioneered the development of object-based media, working closely with programme-makers and technology teams across the BBC. Recent work has included object-based audio delivery across multiple synchronised devices for sports and drama, and AI for recognising wildlife for natural history.

The Research Fellow B will be an experienced researcher with an excellent track-record of publication in leading academic forums and post-doctoral research leadership. The successful candidate will take an active role in leading the research programme, contributing novel machine learning approaches to real-world dynamic scene understanding and reconstruction from video, and co-supervision of post-doctoral and PhD researchers.

The Research Fellow A will hold a PhD in computer vision, audio and/or audio-visual AI with a track-record of publication in leading academic forums. The successful candidate will contribute novel machine learning approaches advancing audio-visual AI to transform video of real-world scenes to object-based representation and neural rendering. The post-holder will collaborate with the team and project partners to realise personalised media experiences.

The post is at the core of a research team working together with the BBC, University and industry partners to realise personalised object-based media experiences at scale for offline content and live events. These posts will enable individuals to advance knowledge in computer vision, audio and machine learning and raise their own academic and research profile by joining Europe’s largest research centre in this field. All posts will initially be offered for a fixed term contract for up 3 years which is extendable for the 5-year duration of the partnership.
The University of Surrey is a global university with a world-class research profile and an enterprising spirit, located in one of the safest counties in England, within 35 minutes of London by train and minutes away from the Surrey Hills, an Area of Outstanding Natural Beauty. Recent investments have seen the opening of a world-class Sports Park and important updates to central facilities.

We can offer a generous renumeration package, which includes relocation assistance where appropriate, an attractive research environment, the latest teaching facilities and access to a variety of staff development opportunities.

How to apply

Informal enquiries are welcomed by Professor Adrian Hilton by email ([email protected]) or via the University of Surrey jobs website https://jobs.surrey.ac.uk/Vacancies.aspx

Further details and the application portal can be found from below:

https://jobs.surrey.ac.uk/vacancy.aspx?ref=073621


Please feel free to share this advert to those who might be interested.

Thanks for your attentions.

Best wishes,

Wenwu



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Professor Wenwu Wang
Centre for Vision Speech and Signal Processing
Department of Electronic Engineering
University of Surrey
Guildford GU2 7XH
United Kingdom
Phone: +44 (0) 1483 686039
Fax: +44 (0) 1483 686031
Email: [email protected]
https://personal.ee.surrey.ac.uk/Personal/W.Wang/
Fully Funded PhD and Research Associate Position
Dear colleagues,

Cross-Caps Lab at IIIT Delhi, India has openings for outstanding students with an interest in speech/audio processing, machine-learning and deep-learning. To initiate discussion, please send an expression of interest email with the subject "Interest: PhD/RA with Cross-Caps" at abrol[at]iiitd.ac.in with your CV if you have relevant research experience.

Cross-Caps Lab: https://bit.ly/38UqDk1

PhD Openings:
This PhD opening is suitable for a candidate with a strong background in one of these or related areas: functional approximation theory, harmonic analysis, random matrix theory or information theory applied to inverse problems in speech/audio processing. Visit the lab page and see recent publications for a detailed view of ongoing projects and related works.
There are two openings one being open-ended to develop theories of deep learning while the other one is focused on explainability, bias and fairness in speech/audio applications.

Research Associate (RA):
This position is in the area of Topological Data Analysis in collaboration with IIT Delhi. The position is for a 2 year joint IIITD-IITD project on developing methods to evaluate transfer learning in deep models. Applicants will have or be close to completing, a Masters in (applied) topology, geometry or numerical linear algebra. Foundation in topics such as harmonic analysis, machine learning or deep learning is a plus. Experience in computer programming and computational mathematics is desirable. There is a possibility for the strong candidate to join as a regular PhD student.


General Eligibility (To apply in Cross-Caps Lab)
Candidates should have Bachelors/Masters in Mathematics/ECE/CSE or related disciplines. Minimum 7.5 CGPA in UG and PG degrees. Strong coding skill in Python and publications in top-tier AI/ML conferences/journals is desirable. Experience with deep learning frameworks and/or speech and audio tools such as Kaldi, Speech-Brain, TF-ASR, Festival is a plus.


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Dr. Vinayak Abrol
Assistant Professor, Infosys Center for AI
CSE Department, IIITD Delhi, India
1. Postdoctoral / Junior Scientist position in complex networks and information theory is available to join the Complex Networks and Brain Dynamics group for the project: “Network modelling of complex systems: from correlation graphs to information hypergraphs“ funded by the Czech Science Foundation. More information and application at https://www.cs.cas.cz/job-offer/postdoc-junior-position-Hlinka5-2021/en

2. Postdoctoral / Junior Scientist position in Multimodal Neuroimaging Machine Learning is available to join the Complex Networks and Brain Dynamics group for the project: “Predicting functional outcome in schizophrenia from multimodal neuroimaging and clinical data“ funded by the Czech Health Research Council. More information and application at https://www.cs.cas.cz/job-offer/postdoc-junior-position-Hlinka6-2021/en
Do not hesitate to contact the principal investigator for informal inquiries concerning the position: Ing. Mgr. Jaroslav Hlinka, Ph.D., [email protected].

Jaroslav Hlinka
Head of the Department of Complex Systems
Institute of Computer Science
Czech Academy of Sciences
Pod Vodarenskou vezi 2
Prague 8, 182 07, Czech Republic

Web: https://cs.cas.cz/hlinka
Funded PhD in Reliable Uncertainties for Machine Learning at Ulster University, UK
Blindly trusting the predictions made by a machine learning model can lead to disaster. A more cautious approach is to consider the uncertainty in a model’s predictions (the “predictive uncertainty”), before taking any action based on them. However, just as we should not blindly trust a model’s predictions, nor should we blindly trust a model’s predictive uncertainties either, otherwise it may provide the user with nothing but a false sense of security.

Having a reliable predictive uncertainty is important in a growing number of applications. For example, electrical grid operators routinely make forecasts concerning the energy output from renewable sources, such as solar and wind. Reliably quantifying the uncertainty in these forecasts [1] enables the renewable energies to be incorporated into the grid more intelligently.

Recently, methods have been proposed which can “calibrate” the predictive uncertainty of a model [2,3] to ensure it is neither over-confident (consistently under-estimating predictive uncertainty) nor under-confident (consistently over-estimating predictive uncertainty). This PhD project, based in the AI Research Centre at Ulster University, will develop further algorithms in this important research area, optimized for a number of different high-impact applications across science and engineering that require reliable predictive uncertainty.

The exact research challenges to be addressed in this project can be tailored to the interests and experience of the PhD candidate.

The application deadline is Monday 7 February 2022

Further details, including levels of funding and how to apply, are available here: https://www.ulster.ac.uk/doctoralcollege/find-a-phd/1045021

For informal queries on this project, please contact Dr Glenn Hawe: [email protected]

References
[1] Zelikman, E. et al. (2020). Short-term solar irradiance forecasting using calibrated probabilistic models, arXiv:2010.04715.

[2] Kuleshov, V. et al. (2018). “Accurate uncertainties for deep learning using calibrated regression,” in International Conference on Machine Learning. PMLR, 2018, pp. 2796–2804.

[3] Zelikman et al. (2020). “CRUDE: Calibrating regression uncertainty distributions empirically,” arXiv preprint arXiv:2005.12496, 2020
2 year POSTDOC POSITION AT UNIVERSITY OF EDINBURGH
Dear all,
this is a post-doc opportunity on integrating causality and knowledge graphs for misinformation.

Project title: Causal Knowledge Graphs for Reasoning about Counterfactual Claims

The School of Informatics, University of Edinburgh invites applications for a post-doctoral Research Associate position under the supervision of Dr Björn Ross and Dr Vaishak Belle. The postholder will be part of the new Edinburgh Laboratory for Integrated Artificial Intelligence, the SMASH group and the Belle Lab.

Current AI approaches to misinformation detection often learn to recognise paraphrases of previously seen claims. Detecting new misinformation is much harder, and linguistic cues are not enough to distinguish fact from fiction. Our approach is grounded in knowledge graphs and the logic of causality. However, this approach has its own challenges. Much of the misinformation encountered is not limited to simple factual statements that can be tested against a structured representation of knowledge but it consists of more complex claims such as counterfactual statements. To address this problem, we integrate approaches from different subfields of computer science, namely, computational logic, deep learning and natural language processing.

The position is for 24 months. The post closes at 5pm UK time on 23 January 2022.

Grade UE07, salary range: £34,304 - £40,92

Access application at https://twitter.com/bjoernross/status/1469273157156618256